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313 Commits

Author SHA1 Message Date
Will Miao
4882721387 Update version to 0.8.15 and add release notes for enhanced features and improvements 2025-05-16 16:13:37 +08:00
Will Miao
06a8850c0c Add more wiki images 2025-05-16 15:54:52 +08:00
Will Miao
370aa06c67 Refactor duplicates banner styles for improved layout and responsiveness 2025-05-16 15:47:08 +08:00
Will Miao
c9fa0564e7 Update images 2025-05-16 11:36:37 +08:00
Will Miao
2ba7a0ceba Add keyboard navigation support and related styles for enhanced user experience 2025-05-15 20:17:57 +08:00
Will Miao
276aedfbb9 Set 'from_civitai' flag to True when updating local metadata with CivitAI data 2025-05-15 16:50:32 +08:00
Will Miao
c193c75674 Fix misleading error message for invalid civitai api key or early access deny 2025-05-15 13:46:46 +08:00
Will Miao
a562ba3746 Fix TriggerWord Toggle not updating when all LoRAs are disabled 2025-05-15 10:30:46 +08:00
Will Miao
2fedd572ff Add header drag functionality for proportional strength adjustment of LoRAs 2025-05-15 10:12:46 +08:00
Will Miao
db0b49c427 Refactor load_metadata to use save_metadata for updating metadata files 2025-05-15 09:49:30 +08:00
Will Miao
03a6f8111c Add functionality to copy and send LoRA/Recipe syntax to workflow
- Implemented copy functionality for LoRA and Recipe syntax in context menus.
- Added options to send LoRA and Recipe to workflow in both append and replace modes.
- Updated HTML templates to include new context menu items for sending actions.
2025-05-15 07:01:50 +08:00
Will Miao
925ad7b3e0 Add user-select: none to prevent text selection on cards and control elements 2025-05-15 05:36:56 +08:00
Will Miao
bf793d5b8b Refactor Lora and Recipe card event handling: replace copy functionality with direct send to ComfyUI workflow, update UI elements, and enhance sendLoraToWorkflow to support recipe syntax. 2025-05-14 23:51:00 +08:00
Will Miao
64a906ca5e Add Lora syntax send to comfyui functionality: implement API endpoint and frontend integration for sending and updating LoRA codes in ComfyUI nodes. 2025-05-14 21:09:36 +08:00
Will Miao
99b36442bb Enhance metadata processing in ModelScanner: prevent intermediate writes, restore missing civitai data, and ensure base_model consistency. #185 2025-05-14 19:16:58 +08:00
Will Miao
3c5164d510 Update screenshot 2025-05-13 22:56:51 +08:00
Will Miao
ec4b5a4d45 Update release notes and version to v0.8.14: add virtualized scrolling, compact display mode, and enhanced LoRA node functionality. 2025-05-13 22:50:32 +08:00
Will Miao
78e1901779 Add compact mode settings and styles for improved layout control. Fixes #33 2025-05-13 21:40:37 +08:00
Will Miao
cb539314de Ensure full LoRA node chain is considered when updating TriggerWord Toggle nodes 2025-05-13 20:33:52 +08:00
Will Miao
c7627fe0de Remove no longer needed ref files. 2025-05-13 17:57:59 +08:00
Will Miao
84bfad7ce5 Enhance model deletion handling in UI: integrate virtual scroller updates and remove legacy UI card removal logic. 2025-05-13 17:50:28 +08:00
Will Miao
3e06938b05 Add enableDataWindowing option to VirtualScroller for improved control over data fetching. (Disable data windowing for now) 2025-05-13 17:13:17 +08:00
Will Miao
4f712fec14 Reduce default delay in model processing from 0.2 to 0.1 seconds for improved responsiveness. 2025-05-13 15:30:09 +08:00
Will Miao
c5c9659c76 Update refreshModels to pass folder update flag to resetAndReloadFunction 2025-05-13 15:25:40 +08:00
Will Miao
d6e175c1f1 Add API endpoints for retrieving LoRA notes and trigger words; enhance context menu with copy options. Supports #177 2025-05-13 15:14:25 +08:00
Will Miao
88088e1071 Restructure the code of loras_widget into smaller, more manageable modules. 2025-05-13 14:42:28 +08:00
Will Miao
958ddbca86 Fix workaround for saved value retrieval in Loras widget to address custom nodes issue. Fixes https://github.com/willmiao/ComfyUI-Lora-Manager/issues/176 2025-05-13 12:27:18 +08:00
Will Miao
6670fd28f4 Add sync functionality for clipStrength when collapsed in Loras widget. https://github.com/willmiao/ComfyUI-Lora-Manager/issues/176 2025-05-13 11:45:13 +08:00
pixelpaws
1e59c31de3 Merge pull request #184 from willmiao/vscroll
Add virtual scroll
2025-05-12 22:27:40 +08:00
Will Miao
c966dbbbbc Enhance DuplicatesManager and VirtualScroller to manage virtual scrolling state and improve rendering logic 2025-05-12 21:31:03 +08:00
Will Miao
af8f5ba04e Implement client-side placeholder handling for empty recipe grid and remove server-side conditional rendering 2025-05-12 21:20:28 +08:00
Will Miao
b741ed0b3b Refactor recipe and checkpoint management to implement virtual scrolling and improve state handling 2025-05-12 20:07:47 +08:00
Will Miao
01ba3c14f8 Implement virtual scrolling for model loading and checkpoint management 2025-05-12 17:47:57 +08:00
Will Miao
d13b1a83ad checkpoint 2025-05-12 16:44:45 +08:00
Will Miao
303477db70 update 2025-05-12 14:50:10 +08:00
Will Miao
311e89e9e7 checkpoint 2025-05-12 13:59:11 +08:00
Will Miao
8546cfe714 checkpoint 2025-05-12 10:25:58 +08:00
Will Miao
e6f4d84b9a Merge branch 'main' of https://github.com/willmiao/ComfyUI-Lora-Manager 2025-05-11 18:50:53 +08:00
Will Miao
ce7e422169 Revert "refactor: streamline LoraCard event handling and implement virtual scrolling for improved performance"
This reverts commit 5dd8d905fa.
2025-05-11 18:50:19 +08:00
pixelpaws
e5aec80984 Merge pull request #179 from jakerdy/patch-1
[Fix] `/api/chekcpoints/info/{name}` change misspelled method call
2025-05-11 17:10:40 +08:00
Jak Erdy
6d97817390 [Fix] /api/chekcpoints/info/{name} change misspelled method call
If you call:
`http://127.0.0.1:8188/api/checkpoints/info/some_name`
You will get error, that there is no method `get_checkpoint_info_by_name` in `scanner`.
Lookslike it wasn't fixed after refactoring or something. Now it works as expected.
2025-05-10 17:38:10 +07:00
Will Miao
d516f22159 Merge branch 'main' of https://github.com/willmiao/ComfyUI-Lora-Manager 2025-05-10 07:34:06 +08:00
pixelpaws
e918c18ca2 Create FUNDING.yml 2025-05-09 20:17:35 +08:00
Will Miao
5dd8d905fa refactor: streamline LoraCard event handling and implement virtual scrolling for improved performance 2025-05-09 16:33:34 +08:00
Will Miao
1121d1ee6c Revert "update"
This reverts commit 4793f096af.
2025-05-09 16:14:10 +08:00
Will Miao
4793f096af update 2025-05-09 15:42:56 +08:00
Will Miao
7b5b4ce082 refactor: enhance CFGGuider handling and add CFGGuiderExtractor for improved metadata extraction. Fixes https://github.com/willmiao/ComfyUI-Lora-Manager/issues/172 2025-05-09 13:50:22 +08:00
Will Miao
fa08c9c3e4 Update version to 0.8.13; enhance recipe management and source tracking features in release notes 2025-05-09 11:38:46 +08:00
pixelpaws
d0d5eb956a Merge pull request #174 from willmiao/dev
Dev
2025-05-09 11:06:47 +08:00
Will Miao
969f949330 refactor(lora-loader, lora-stacker, loras-widget): enhance handling of model and clip strengths; update formatting and UI interactions. Fixes https://github.com/willmiao/ComfyUI-Lora-Manager/issues/171 2025-05-09 11:05:59 +08:00
Will Miao
9169bbd04d refactor(widget-serialization): remove dummy items from serialization which was a fix to ComfyUI issues 2025-05-08 20:25:26 +08:00
Will Miao
99463ad01c refactor(import-modal): remove outdated duplicate styles and clean up modal button layout 2025-05-08 20:16:25 +08:00
pixelpaws
f1d6b0feda Merge pull request #173 from willmiao/dev
Dev
2025-05-08 18:33:52 +08:00
Will Miao
e33da50278 refactor: update duplicate recipe management; simplify UI and remove deprecated functions 2025-05-08 18:33:19 +08:00
Will Miao
4034eb3221 feat: implement duplicate recipe detection and management; add UI for marking duplicates for deletion 2025-05-08 17:29:58 +08:00
Will Miao
75a95f0109 refactor: enhance recipe fingerprint calculation and return detailed recipe information; remove unnecessary console logs in import managers 2025-05-08 16:54:49 +08:00
Will Miao
92fdc16fe6 feat(modals): implement duplicate delete confirmation modal and enhance deletion workflow 2025-05-08 16:17:52 +08:00
Will Miao
23fa2995c8 refactor(import): Implement DownloadManager, FolderBrowser, ImageProcessor, and RecipeDataManager for enhanced recipe import functionality
- Added DownloadManager to handle saving recipes and downloading missing LoRAs.
- Introduced FolderBrowser for selecting LoRA root directories and managing folder navigation.
- Created ImageProcessor for handling image uploads and URL inputs for recipe analysis.
- Developed RecipeDataManager to manage recipe details, including metadata and LoRA information.
- Implemented ImportStepManager to control the flow of the import process and manage UI steps.
- Added utility function for formatting file sizes for better user experience.
2025-05-08 15:41:13 +08:00
Will Miao
59aefdff77 feat: implement duplicate detection and management features; add UI components and styles for duplicates 2025-05-08 15:13:14 +08:00
Will Miao
e92ab9e3cc refactor: add endpoints for finding duplicates and bulk deletion of recipes; enhance fingerprint calculation and handling 2025-05-07 19:34:27 +08:00
Will Miao
e3bf1f763c refactor: remove workflow parsing module and associated files for cleanup 2025-05-07 17:13:30 +08:00
Will Miao
1c6e9d0b69 refactor: enhance hash processing in AutomaticMetadataParser for improved key handling 2025-05-07 05:29:16 +08:00
Will Miao
bfd4eb3e11 refactor: update import paths for config in AutomaticMetadataParser and RecipeFormatParser. Fixes https://github.com/willmiao/ComfyUI-Lora-Manager/issues/168 2025-05-07 04:39:06 +08:00
Will Miao
c9f902a8af Refactor recipe metadata parser package for ComfyUI-Lora-Manager
- Implemented the base class `RecipeMetadataParser` for parsing recipe metadata from user comments.
- Created a factory class `RecipeParserFactory` to instantiate appropriate parser based on user comment content.
- Developed multiple parser classes: `ComfyMetadataParser`, `AutomaticMetadataParser`, `MetaFormatParser`, and `RecipeFormatParser` to handle different metadata formats.
- Introduced constants for generation parameters and valid LoRA types.
- Enhanced error handling and logging throughout the parsing process.
- Added functionality to populate LoRA and checkpoint information from Civitai API responses.
- Structured the output of parsed metadata to include prompts, LoRAs, generation parameters, and model information.
2025-05-06 21:11:25 +08:00
Will Miao
0b67510ec9 refactor: remove StandardMetadataParser and ImageSaverMetadataParser, integrate AutomaticMetadataParser for improved metadata handling 2025-05-06 17:51:44 +08:00
Will Miao
b5cd320e8b Update 'natsort' to dependencies in pyproject.toml 2025-05-06 08:59:48 +08:00
pixelpaws
deb25b4987 Merge pull request #166 from Rauks/add-natural-sort
fix: use natural sorting when sorting by name
2025-05-06 08:58:19 +08:00
pixelpaws
4612da264a Merge pull request #167 from willmiao/dev
Dev
2025-05-06 08:28:20 +08:00
Karl Woditsch
59b67e1e10 fix: use natural sorting when sorting by name 2025-05-05 22:25:50 +02:00
Will Miao
5fad936b27 feat: implement recipe card update functionality after modal edits 2025-05-05 23:17:58 +08:00
Will Miao
e376a45dea refactor: remove unused source URL tooltip from RecipeModal component 2025-05-05 21:11:52 +08:00
Will Miao
fd593bb61d feat: add source URL functionality to recipe modal, including dynamic display and editing options 2025-05-05 20:50:32 +08:00
Will Miao
71b97d5974 fix: update recipe data structure to include source_path from metadata and improve loading messages 2025-05-05 18:15:59 +08:00
Will Miao
2b405ae164 fix: update load_metadata to set preview_nsfw_level based on civitai data. Fixes https://github.com/willmiao/ComfyUI-Lora-Manager/issues/53 2025-05-05 15:46:37 +08:00
Will Miao
2fe4736b69 fix: update ImageSaverMetadataParser to improve metadata matching and parsing logic. https://github.com/willmiao/ComfyUI-Lora-Manager/issues/104 2025-05-05 14:41:56 +08:00
Will Miao
184f8ca6cf feat: add local image analysis functionality and update import modal for URL/local path input. Fixes https://github.com/willmiao/ComfyUI-Lora-Manager/issues/140 2025-05-05 11:35:20 +08:00
Will Miao
1ff2019dde fix: update model type checks to include LoCon and lycoris in API routes. Fixes https://github.com/willmiao/ComfyUI-Lora-Manager/issues/159 2025-05-05 07:48:08 +08:00
Will Miao
a3d8261686 fix: remove console log and update file extension handling for LoRA syntax. Fixes https://github.com/willmiao/ComfyUI-Lora-Manager/issues/158 2025-05-04 08:52:35 +08:00
Will Miao
7d0600976e fix: enhance pointer event handling for progress panel visibility 2025-05-04 08:08:59 +08:00
Will Miao
e1e6e4f3dc feat: update version to 0.8.12 and enhance release notes in README 2025-05-03 17:21:21 +08:00
pixelpaws
fba2853773 Merge pull request #157 from willmiao/dev
Dev
2025-05-03 17:07:48 +08:00
Will Miao
48df7e1078 Refactor code structure for improved readability and maintainability 2025-05-03 17:06:57 +08:00
Will Miao
235dcd5fa6 feat: enhance metadata panel visibility handling in showcase view 2025-05-03 16:41:47 +08:00
Will Miao
2027db7411 feat: refactor model deletion functionality with confirmation modal 2025-05-03 16:31:17 +08:00
Will Miao
611dd33c75 feat: add model exclution functionality frontend 2025-05-03 16:14:09 +08:00
Will Miao
ec1c92a714 feat: add model exclusion functionality with new API endpoints and metadata handling 2025-05-02 22:36:50 +08:00
Will Miao
6ac78156ac feat: comment out "View Details" option in context menus for checkpoints and recipes 2025-05-02 20:59:06 +08:00
pixelpaws
e94b74e92d Merge pull request #156 from willmiao/dev
Dev
2025-05-02 19:35:25 +08:00
Will Miao
2bbec47f63 feat: update WeChat and Alipay QR code to use WebP format for improved performance 2025-05-02 19:34:40 +08:00
pixelpaws
b5ddf4c953 Merge pull request #155 from Rauks/add-base-models
feat: Add "HiDream" and "LTXV" base models
2025-05-02 19:17:18 +08:00
Will Miao
44be75aeef feat: add WeChat and Alipay support section with QR code toggle functionality 2025-05-02 19:15:54 +08:00
Karl Woditsch
2c03759b5d feat: Add "HiDream" and "LTXV" base models 2025-05-02 11:56:10 +02:00
Will Miao
2e3da03723 feat: update metadata panel visibility logic to show on media hover and add rendering calculations 2025-05-02 17:53:15 +08:00
Will Miao
6e96fbcda7 feat: enhance alphabet bar with toggle functionality and visual indicators 2025-05-01 20:50:31 +08:00
Will Miao
d1fd5b7f27 feat: implement alphabet filtering feature with letter counts and UI components v1 2025-05-01 20:07:12 +08:00
Will Miao
9dbcc105e7 feat: add model metadata refresh functionality and enhance download progress tracking. https://github.com/willmiao/ComfyUI-Lora-Manager/issues/151 2025-05-01 18:57:29 +08:00
Will Miao
5cd5a82ddc feat: add creator information to model metadata handling 2025-05-01 15:56:57 +08:00
Will Miao
88c1892dc9 feat: enhance model metadata fetching to include creator information 2025-05-01 15:30:05 +08:00
Will Miao
3c1b181675 fix: enhance version comparison by ignoring suffixes in semantic version strings 2025-05-01 07:47:09 +08:00
Will Miao
6777dc16ca fix: update version to 0.8.11-bugfix in pyproject.toml 2025-05-01 06:19:03 +08:00
Will Miao
3833647dfe refactor: remove unused tkinter imports from misc_routes.py. Fixes https://github.com/willmiao/ComfyUI-Lora-Manager/issues/150 2025-05-01 06:06:20 +08:00
Will Miao
b6c47f0cce feat: update version to 0.8.11 and add release notes for offline image support and download system improvements 2025-04-30 19:35:57 +08:00
Will Miao
d308c7ac60 feat: enhance A1111MetadataParser to improve metadata extraction and parsing logic. https://github.com/willmiao/ComfyUI-Lora-Manager/issues/148 2025-04-30 19:09:47 +08:00
Will Miao
947c757aa5 Revert the incorrect changes 2025-04-30 19:09:00 +08:00
pixelpaws
5ee5bd7d36 Merge pull request #149 from willmiao/dev
Dev
2025-04-30 16:05:38 +08:00
Will Miao
d9c4ae92cd Add GPL-3.0 license 2025-04-30 16:04:41 +08:00
Will Miao
e1efff19f0 feat: add mini progress circle to progress panel when collapsed 2025-04-30 15:42:01 +08:00
Will Miao
61f723a1f5 feat: add back-to-top button and update its positioning 2025-04-30 14:46:43 +08:00
Will Miao
b32756932b feat: initialize example images manager on app startup and streamline event listener setup 2025-04-30 14:17:39 +08:00
Will Miao
cb5e64d26b feat: enhance example images downloading by adding local file processing before remote download 2025-04-30 13:56:29 +08:00
Will Miao
f36febf10a fix: create independent session for downloading example images to prevent interference 2025-04-30 13:35:12 +08:00
Will Miao
26d9a9caa6 refactor: streamline example images download functionality and UI updates 2025-04-30 13:20:44 +08:00
Will Miao
cb876cf77e Implement saving model example images locally. Fixes https://github.com/willmiao/ComfyUI-Lora-Manager/issues/88 2025-04-29 22:41:18 +08:00
Will Miao
4789711910 feat: enhance metadata processing by refining primary sampler selection and adding CLIPTextEncodeFlux extractor. Fixes https://github.com/willmiao/ComfyUI-Lora-Manager/issues/146 2025-04-29 06:31:21 +08:00
Will Miao
4064980505 fix: update tutorial link for v0.8.10 release in README 2025-04-28 19:36:55 +08:00
pixelpaws
f9b8f2d22c Merge pull request #145 from mobedoor/main
Make workflow folder compatible with ComfyUI Browse Templates screen
2025-04-28 19:26:46 +08:00
mobedoor
6a95aadc53 Make workflow folder compatible with ComfyUI Browse Templates screen 2025-04-28 16:13:19 +05:00
Will Miao
f9f08f082d Update the installation instructions to include the one-click portable package option. 2025-04-28 18:38:24 +08:00
Will Miao
0817901bef feat: update README and pyproject.toml for v0.8.10 release; add standalone mode and portable edition features 2025-04-28 18:24:02 +08:00
Will Miao
ac22172e53 Update requirements for standalone mode 2025-04-28 15:14:11 +08:00
Will Miao
fd87fbf31e Update workflow 2025-04-28 07:08:35 +08:00
Will Miao
554be0908f feat: add dynamic filename format patterns for Save Image Node in README 2025-04-28 07:01:33 +08:00
Will Miao
eaec4e5f13 feat: update README and settings.json.example for standalone mode; enhance standalone.py to redirect status requests to loras page 2025-04-27 09:41:33 +08:00
Will Miao
0e7ba27a7d feat: enhance Civitai resource extraction in StandardMetadataParser for improved JSON handling. Fixes https://github.com/willmiao/ComfyUI-Lora-Manager/issues/141 2025-04-26 22:12:40 +08:00
Will Miao
c551f5c23b feat: update README with standalone mode instructions and add settings.json.example file 2025-04-26 20:39:24 +08:00
pixelpaws
5159657ae5 Merge pull request #142 from willmiao/dev
Dev
2025-04-26 20:25:26 +08:00
Will Miao
d35db7df72 feat: add standalone mode for LoRA Manager with setup instructions 2025-04-26 20:23:27 +08:00
Will Miao
2b5399c559 feat: enhance folder path retrieval for diffusion models and improve warning messages 2025-04-26 20:08:00 +08:00
Will Miao
9e61bbbd8e feat: improve warning management by removing existing deleted LoRAs and early access warnings 2025-04-26 19:46:48 +08:00
Will Miao
7ce5857cd5 feat: implement standalone mode support with mock modules and path handling 2025-04-26 19:14:38 +08:00
Will Miao
38fbae99fd feat: limit maximum height of loras widget to accommodate up to 5 entries. Fixes https://github.com/willmiao/ComfyUI-Lora-Manager/issues/109 2025-04-26 12:00:36 +08:00
Will Miao
b0a9d44b0c Add support for SamplerCustomAdvanced node in metadata extraction 2025-04-26 09:40:44 +08:00
Will Miao
b4e22cd375 feat: update release notes and version to 0.8.9 with new favorites system and UI enhancements 2025-04-25 22:13:16 +08:00
Will Miao
9bc92736a7 feat: enhance session management by ensuring freshness and optimizing connection parameters 2025-04-25 20:54:25 +08:00
pixelpaws
111b34d05c Merge pull request #138 from willmiao/dev
feat: implement theme management with auto-detection and user prefere…
2025-04-25 19:47:17 +08:00
Will Miao
07d9599a2f feat: implement theme management with auto-detection and user preference storage. Fixes https://github.com/willmiao/ComfyUI-Lora-Manager/issues/137 2025-04-25 19:39:11 +08:00
pixelpaws
d8194f211d Merge pull request #136 from willmiao/dev
Dev
2025-04-25 17:56:26 +08:00
Will Miao
51a6374c33 feat: add favorites filtering functionality across models and UI components 2025-04-25 17:55:33 +08:00
Will Miao
aa6c6035b6 refactor: consolidate save model metadata functionality across APIs 2025-04-25 13:31:01 +08:00
Will Miao
44b4a7ffbb fix: update requirements to include 'toml' and correct pip install command in README. Fixes https://github.com/willmiao/ComfyUI-Lora-Manager/issues/134 2025-04-25 10:26:01 +08:00
Will Miao
e5bb018d22 feat: integrate Font Awesome resources locally. Fixes https://github.com/willmiao/ComfyUI-Lora-Manager/issues/131
- Replace CDN references with local resources
- Download and include Font Awesome CSS and webfonts in project
- Remove CDN preconnect as resources are now served locally
- Improve reliability for users with limited network access
2025-04-25 10:09:20 +08:00
Will Miao
79b8a6536e docs: Update README to clarify contribution guidelines and acknowledge project inspirations 2025-04-25 09:48:00 +08:00
Will Miao
3de31cd06a feat: Add functionality to move civitai.info file during model relocation 2025-04-25 09:41:23 +08:00
Will Miao
c579b54d40 fix: Preserve original path separators when mapping real paths in Config. Fixes https://github.com/willmiao/ComfyUI-Lora-Manager/issues/132 2025-04-25 09:33:07 +08:00
Will Miao
0a52575e8b feat: Enhance model file retrieval by ensuring primary model is selected from files list. Fixes https://github.com/willmiao/ComfyUI-Lora-Manager/issues/127 2025-04-25 05:45:29 +08:00
Will Miao
23c9a98f66 feat: Add endpoint for scanning and rebuilding recipe cache, and update UI to use new refresh method 2025-04-24 13:23:31 +08:00
Will Miao
796fc33b5b feat: Optimize TCP connection parameters and enhance logging for download operations 2025-04-22 19:43:37 +08:00
Will Miao
dc4c11ddd2 feat: Update release notes and version to 0.8.8 with new features and bug fixes 2025-04-22 13:29:00 +08:00
pixelpaws
d389e4d5d4 Merge pull request #122 from willmiao/dev
Dev
2025-04-22 09:40:05 +08:00
Will Miao
8cb78ad931 feat: Add route for retrieving current usage statistics 2025-04-22 09:39:00 +08:00
Will Miao
85f987d15c feat: Centralize clipboard functionality with copyToClipboard utility across components 2025-04-22 09:33:05 +08:00
Will Miao
b12079e0f6 feat: Implement usage statistics tracking with backend integration and route setup 2025-04-22 08:56:34 +08:00
pixelpaws
dcf5c6167a Merge pull request #121 from willmiao/dev
Dev
2025-04-21 15:44:23 +08:00
Will Miao
b395d3f487 fix: Update filename formatting in save_images method to ensure unique filenames for batch images 2025-04-21 15:42:49 +08:00
Will Miao
37662cad10 Update workflow 2025-04-21 15:42:49 +08:00
pixelpaws
aa1673063d Merge pull request #120 from willmiao/dev
feat: Enhance LoraManager by updating trigger words handling and dyna…
2025-04-21 06:52:16 +08:00
Will Miao
f51f49eb60 feat: Enhance LoraManager by updating trigger words handling and dynamically loading widget modules. 2025-04-21 06:49:51 +08:00
pixelpaws
54c9bac961 Merge pull request #119 from willmiao/dev
Dev
2025-04-20 22:29:28 +08:00
Will Miao
e70fd73bdd feat: Implement trigger words API and update frontend integration for LoraManager. Fixes https://github.com/willmiao/ComfyUI-Lora-Manager/issues/43 2025-04-20 22:27:53 +08:00
Will Miao
9bb9e7b64d refactor: Extract common methods for Lora handling into utils.py and update references in lora_loader.py and lora_stacker.py 2025-04-20 21:35:36 +08:00
pixelpaws
f64c03543a Merge pull request #116 from matrunchyk/main
Prevent duplicates of root folders when using symlinks
2025-04-20 17:05:08 +08:00
Will Miao
51374de1a1 fix: Update version to 0.8.7-bugfix2 in pyproject.toml for clarity on bug fixes 2025-04-20 15:04:24 +08:00
Will Miao
afcc12f263 fix: Update populate_lora_from_civitai method to accept a tuple for Civitai API response. Fixes https://github.com/willmiao/ComfyUI-Lora-Manager/issues/117 2025-04-20 15:01:23 +08:00
Your Name
88c5482366 Merge branch 'main' of https://github.com/willmiao/ComfyUI-Lora-Manager 2025-04-19 21:47:41 +03:00
Your Name
bbf7295c32 Prevent duplicates of root folders when using symlinks 2025-04-19 21:42:01 +03:00
Will Miao
ca5e23e68c fix: Update version to 0.8.7-bugfix in pyproject.toml for clarity on bug fixes 2025-04-19 23:02:50 +08:00
Will Miao
eadb1487ae feat: Refactor metadata formatting to use helper function for conditional parameter addition 2025-04-19 23:00:09 +08:00
Will Miao
1faa70fc77 feat: Implement filename-based hash retrieval in LoraScanner and ModelScanner for improved compatibility 2025-04-19 21:12:26 +08:00
Will Miao
30d7c007de fix: Correct metadata restoration logic to ensure file info is fetched when metadata is missing 2025-04-19 20:51:23 +08:00
Will Miao
f54f6a4402 feat: Enhance metadata handling by restoring missing civitai data and extracting tags and descriptions from version info 2025-04-19 11:35:42 +08:00
Will Miao
7b41cdec65 feat: Add civitai_deleted attribute to BaseModelMetadata for tracking deletion status from Civitai 2025-04-19 09:30:43 +08:00
Will Miao
fb6a652a57 feat: Add checkpoint hash retrieval and enhance metadata formatting in SaveImage class 2025-04-18 23:55:45 +08:00
Will Miao
ea34d753c1 refactor: Remove unnecessary workflow data logging and streamline saveRecipeDirectly function for legacy loras widget 2025-04-18 21:52:26 +08:00
Will Miao
2bc46e708e feat: Update release notes and version to 0.8.7 with enhancements and bug fixes 2025-04-18 19:03:00 +08:00
Will Miao
96e3b5b7b3 feat: Refactor Civitai model API routes and enhance RecipeContextMenu for missing LoRAs handling 2025-04-18 16:44:26 +08:00
Will Miao
fafbafa5e1 feat: Enhance copyTriggerWord function with modern clipboard API and fallback for non-secure contexts. Fixes https://github.com/willmiao/ComfyUI-Lora-Manager/issues/110 2025-04-18 14:56:27 +08:00
Will Miao
be8605d8c6 feat: Enhance CivitaiClient and ApiRoutes to handle model version errors and improve metadata fetching. Fixes https://github.com/willmiao/ComfyUI-Lora-Manager/issues/112 2025-04-18 14:44:53 +08:00
Will Miao
061660d47a feat: Increase maximum allowed trigger words from 10 to 30. Fixes https://github.com/willmiao/ComfyUI-Lora-Manager/issues/109 2025-04-18 11:25:41 +08:00
pixelpaws
2ed6dbb344 Merge pull request #111 from willmiao/dev
Dev
2025-04-18 10:55:07 +08:00
Will Miao
4766b45746 feat: Update SaveImage node to modify default lossless_webp setting and adjust save_kwargs for image formats 2025-04-18 10:52:39 +08:00
Will Miao
0734252e98 feat: Enhance VAEDecodeExtractor to improve image caching and metadata handling 2025-04-18 10:03:26 +08:00
Will Miao
91b4827c1d feat: Enhance image retrieval in MetadataRegistry and update recipe routes to process images from metadata 2025-04-18 09:24:48 +08:00
Will Miao
df6d56ce66 feat: Add IMAGES category to constants and enhance metadata handling in node extractors 2025-04-18 07:12:43 +08:00
Will Miao
f0203c96ab feat: Simplify format_metadata method by removing custom_prompt parameter and update related function calls 2025-04-18 05:34:42 +08:00
Will Miao
bccabe40c0 feat: Enhance KSamplerAdvancedExtractor to include additional sampling parameters and update metadata processing 2025-04-18 05:29:36 +08:00
Will Miao
c2f599b4ff feat: Update node extractors to include UNETLoaderExtractor and enhance metadata handling for guidance parameters 2025-04-17 22:05:40 +08:00
Will Miao
5fd069d70d feat: Enhance checkpoint processing in format_metadata to handle non-string types safely 2025-04-17 09:38:20 +08:00
Will Miao
32d34d1748 feat: Enhance trace_node_input method with depth tracking and target class filtering; add FluxGuidanceExtractor for guidance parameter extraction 2025-04-17 08:06:21 +08:00
Will Miao
18eb605605 feat: Refactor metadata processing to use constants for category keys and improve structure 2025-04-17 06:23:31 +08:00
Will Miao
4fdc88e9e1 feat: Enhance LoraLoaderExtractor to extract base filename from lora_name input 2025-04-16 22:19:38 +08:00
Will Miao
4c69d8d3a8 feat: Integrate metadata collection in RecipeRoutes and simplify saveRecipeDirectly function 2025-04-16 22:15:46 +08:00
Will Miao
d4b2dd0ec1 refactor: Rename to_comfyui_format method to to_dict and update references in save_image.py 2025-04-16 21:42:54 +08:00
Will Miao
181f78421b feat: Standardize LoRA extraction format and enhance input handling in node extractors 2025-04-16 21:20:56 +08:00
Will Miao
8ed38527d0 feat: Implement metadata collection and processing framework with debug node for verification 2025-04-16 20:04:26 +08:00
Will Miao
c4c926070d fix: Update optimize_image method to handle image validation and error logging, and adjust metadata preservation logic. 2025-04-15 12:31:17 +08:00
Will Miao
ed87411e0d refactor: Change logging level from info to debug for service initialization and file monitoring 2025-04-15 11:48:37 +08:00
Will Miao
4ec2a448ab feat: Improve date formatting in filename generation with zero-padding and two-digit year support. Fixes https://github.com/willmiao/ComfyUI-Lora-Manager/issues/102 2025-04-15 10:46:57 +08:00
Will Miao
73d01da94e feat: Enhance model preview version management with localStorage support 2025-04-15 10:35:50 +08:00
pixelpaws
df8e02157a Merge pull request #103 from willmiao/dev
feat: Add drag functionality for strength adjustment in LoRA entries.…
2025-04-15 08:57:52 +08:00
Will Miao
6e513ed32a feat: Add drag functionality for strength adjustment in LoRA entries. Fixes https://github.com/willmiao/ComfyUI-Lora-Manager/issues/101 2025-04-15 08:56:19 +08:00
pixelpaws
325ef6327d Merge pull request #99 from willmiao/dev
Dev
2025-04-14 20:27:18 +08:00
Will Miao
46700e5ad0 feat: Refactor infinite scroll initialization for improved observer handling and sentinel management 2025-04-14 20:25:44 +08:00
Will Miao
d1e21fa345 feat: Implement context menus for checkpoints and recipes, including metadata refresh and NSFW level management 2025-04-14 15:37:36 +08:00
Will Miao
cede387783 Bump version to 0.8.6 in pyproject.toml 2025-04-14 08:42:00 +08:00
Will Miao
b206427d50 feat: Update README to include enhanced checkpoint management features and improved initial loading details 2025-04-14 08:40:42 +08:00
Will Miao
47d96e2037 feat: Simplify recipe page initialization and enhance error handling for recipe cache loading 2025-04-14 07:03:34 +08:00
Will Miao
e51f7cc1a7 feat: Enhance checkpoint download manager to save active folder preference and update UI accordingly 2025-04-13 22:12:18 +08:00
Will Miao
40381d4b11 feat: Optimize session management and enhance download functionality with resumable support 2025-04-13 21:51:21 +08:00
Will Miao
76fc9e5a3d feat: Add WebSocket support for checkpoint download progress and update related components 2025-04-13 21:31:01 +08:00
Will Miao
9822f2c614 feat: Add Civitai model version retrieval for Checkpoints and update error handling in download managers 2025-04-13 20:36:19 +08:00
Will Miao
8854334ab5 Add tip images 2025-04-13 18:46:44 +08:00
Will Miao
53080844d2 feat: Refactor progress bar classes for initialization component to improve clarity and avoid conflicts 2025-04-13 18:42:36 +08:00
Will Miao
76fd722e33 feat: Improve card layout by adding overflow hidden and fixing flexbox sizing issues 2025-04-13 18:20:15 +08:00
Will Miao
fa27513f76 feat: Enhance infinite scroll functionality with improved observer settings and scroll event handling 2025-04-13 17:58:14 +08:00
Will Miao
72c6f91130 feat: Update initialization component with loading progress and tips carousel 2025-04-13 14:03:02 +08:00
Will Miao
5918f35b8b feat: Add keyboard shortcuts for search input focus and selection 2025-04-13 13:12:32 +08:00
Will Miao
0b11e6e6d0 feat: Enhance initialization component with progress tracking and UI improvements 2025-04-13 12:58:38 +08:00
Will Miao
a043b487bd feat: Add initialization progress WebSocket and UI components
- Implement WebSocket route for initialization progress updates
- Create initialization component with progress bar and stages
- Add styles for initialization UI
- Update base template to include initialization component
- Enhance model scanner to broadcast progress during initialization
2025-04-13 10:41:27 +08:00
pixelpaws
3982489e67 Merge pull request #97 from willmiao/dev
feat: Enhance checkpoint handling by initializing paths and adding st…
2025-04-12 19:10:13 +08:00
Will Miao
5f3c515323 feat: Enhance checkpoint handling by initializing paths and adding static routes 2025-04-12 19:06:17 +08:00
pixelpaws
6e1297d734 Merge pull request #96 from willmiao/dev
Dev
2025-04-12 17:01:07 +08:00
Will Miao
8f3cbdd257 fix: Simplify session item retrieval in loadMoreModels function 2025-04-12 16:54:27 +08:00
Will Miao
2fc06ae64e Refactor file name update in Lora card
- Updated the setupFileNameEditing function to pass the new file name in the updates object when calling updateLoraCard.
- Removed the page reload after file name change to improve user experience.
- Enhanced the updateLoraCard function to handle the 'file_name' update, ensuring the dataset reflects the new file name correctly.
2025-04-12 16:35:35 +08:00
Will Miao
515aa1d2bd fix: Improve error logging and update lora monitor path handling 2025-04-12 16:24:29 +08:00
Will Miao
ff7a36394a refactor: Optimize event handling for folder tags using delegation 2025-04-12 16:15:29 +08:00
Will Miao
5261ab249a Fix checkpoints sort_by 2025-04-12 13:39:32 +08:00
Will Miao
c3192351da feat: Add support for reading SHA256 from .sha256 file in get_file_info function 2025-04-12 11:59:40 +08:00
Will Miao
ce30d067a6 feat: Import and expose loadMoreLoras function in LoraPageManager 2025-04-12 11:46:26 +08:00
Will Miao
e84a8a72c5 feat: Add save metadata route and update checkpoint card functionality 2025-04-12 11:18:21 +08:00
Will Miao
10a4fe04d1 refactor: Update API endpoint for saving model metadata to use consistent route structure 2025-04-12 09:03:34 +08:00
Will Miao
d5ce6441e3 refactor: Simplify service initialization in LoraRoutes and RecipeRoutes, and adjust logging level in ServiceRegistry 2025-04-12 09:01:09 +08:00
Will Miao
a8d21fb1d6 refactor: Remove unused service imports and add new route for scanning LoRA files 2025-04-12 07:49:11 +08:00
Will Miao
9277d8d8f8 refactor: Disable file monitoring functionality with ENABLE_FILE_MONITORING flag 2025-04-12 06:47:47 +08:00
Will Miao
0618541527 checkpoint 2025-04-11 20:22:12 +08:00
Will Miao
1db49a4dd4 refactor: Enhance checkpoint download functionality with new modal and manager integration 2025-04-11 18:25:37 +08:00
Will Miao
3df96034a1 refactor: Consolidate model handling functions into baseModelApi for better code reuse and organization 2025-04-11 14:35:56 +08:00
Will Miao
e991dc061d refactor: Implement common endpoint handlers for model management in ModelRouteUtils and update routes in CheckpointsRoutes 2025-04-11 12:06:05 +08:00
Will Miao
56670066c7 refactor: Optimize preview image handling by converting to webp format and improving error logging 2025-04-11 11:17:49 +08:00
Will Miao
31d27ff3fa refactor: Extract model-related utility functions into ModelRouteUtils for better code organization 2025-04-11 10:54:19 +08:00
Will Miao
297ff0dd25 refactor: Improve download handling for previews and optimize image conversion in DownloadManager 2025-04-11 09:00:58 +08:00
Will Miao
b0a5b48fb2 refactor: Enhance preview file handling and add update_preview_in_cache method for ModelScanner 2025-04-11 08:43:21 +08:00
Will Miao
ac244e6ad9 refactor: Replace hardcoded image width with CARD_PREVIEW_WIDTH constant for consistency 2025-04-11 08:19:19 +08:00
Will Miao
7393e92b21 refactor: Consolidate preview file extensions into constants for improved maintainability 2025-04-11 06:19:15 +08:00
Will Miao
86810d9f03 refactor: Remove move_model method from LoraScanner class to streamline code 2025-04-11 06:05:19 +08:00
Will Miao
18aa8d11ad refactor: Remove showToast call from clearCustomFilter method in LorasControls 2025-04-11 05:59:32 +08:00
Will Miao
fafec56f09 refactor: Rename update_single_lora_cache to update_single_model_cache for consistency 2025-04-11 05:52:56 +08:00
Will Miao
129ca9da81 feat: Implement checkpoint modal functionality with metadata editing, showcase display, and utility functions
- Added ModelMetadata.js for handling model metadata editing, including model name, base model, and file name.
- Introduced ShowcaseView.js to manage the display of images and videos in the checkpoint modal, including NSFW filtering and lazy loading.
- Created index.js as the main entry point for the checkpoint modal, integrating various components and functionalities.
- Developed utils.js for utility functions related to file size formatting and tag rendering.
- Enhanced user experience with editable fields, toast notifications, and improved showcase scrolling.
2025-04-10 22:59:09 +08:00
Will Miao
cbfb9ac87c Enhance CheckpointModal: Implement detailed checkpoint display, editable fields, and showcase functionality 2025-04-10 22:25:40 +08:00
Will Miao
42309edef4 Refactor visibility toggle: Remove toggleApiKeyVisibility function and update related button in modals 2025-04-10 21:43:56 +08:00
Will Miao
559e57ca46 Enhance CheckpointCard: Implement NSFW content handling, toggle blur functionality, and improve video autoplay behavior 2025-04-10 21:28:34 +08:00
Will Miao
311bf1f157 Add support for '.gguf' file extension in CheckpointScanner 2025-04-10 21:15:12 +08:00
Will Miao
131c3cc324 Add Civitai metadata fetching functionality for checkpoints
- Implement fetchCivitai API method to retrieve metadata from Civitai.
- Enhance CheckpointsControls to include fetch from Civitai functionality.
- Update PageControls to register fetch from Civitai event listener for both LoRAs and Checkpoints.
2025-04-10 21:07:17 +08:00
Will Miao
152ec0da0d Refactor Checkpoints functionality: Integrate loadMoreCheckpoints API, remove CheckpointSearchManager, and enhance FilterManager for improved checkpoint loading and filtering. 2025-04-10 19:57:04 +08:00
Will Miao
ee04df40c3 Refactor controls and pagination for Checkpoints and LoRAs: Implement unified PageControls, enhance API integration, and improve event handling for better user experience. 2025-04-10 19:41:02 +08:00
Will Miao
252e90a633 Enhance Checkpoints Manager: Implement API integration for checkpoints, add filtering and sorting options, and improve UI components for better user experience 2025-04-10 16:04:08 +08:00
Will Miao
048d486fa6 Refactor cache initialization in LoraManager and RecipeScanner for improved background processing and error handling 2025-04-10 11:34:19 +08:00
Will Miao
8fdfb68741 checkpoint 2025-04-10 09:08:51 +08:00
Will Miao
64c9e4aeca Update version to 0.8.5 and add release notes for enhanced features and improvements 2025-04-09 11:41:38 +08:00
Will Miao
08b90e8767 Update toast messages to clarify settings update notifications 2025-04-09 11:29:02 +08:00
Will Miao
0206613f9e Update NSFW level filter to include 'R' rating for improved content moderation 2025-04-09 11:25:52 +08:00
Will Miao
ae0629628e Enhance settings modal with video autoplay on hover option and improve layout. Fixes https://github.com/willmiao/ComfyUI-Lora-Manager/issues/92 2025-04-09 11:18:30 +08:00
Will Miao
785b2e7287 style: Add padding to recipe list to prevent item cutoff on hover 2025-04-08 13:51:00 +08:00
Will Miao
43e3d0552e style: Update filter indicator and button styles for improved UI consistency
feat: Add pulse animation to filter indicators in Lora and recipe management
refactor: Change filter-active button to a div for better semantic structure
2025-04-08 13:45:15 +08:00
Will Miao
801aa2e876 Enhance Lora and recipe integration with improved filtering and UI updates
- Added support for filtering LoRAs by hash in both API and UI components.
- Implemented session storage management for custom filter states when navigating between recipes and LoRAs.
- Introduced a new button in the recipe modal to view associated LoRAs, enhancing user navigation.
- Updated CSS styles for new UI elements, including a custom filter indicator and LoRA view button.
- Refactored existing JavaScript components to streamline the handling of filter parameters and improve maintainability.
2025-04-08 12:23:51 +08:00
Will Miao
bddc7a438d feat: Add Lora recipes retrieval and filtering functionality
- Implemented a new API endpoint to fetch recipes associated with a specific Lora by its hash.
- Enhanced the recipe scanning logic to support filtering by Lora hash and bypassing other filters.
- Added a new method to retrieve a recipe by its ID with formatted metadata.
- Created a new RecipeTab component to display recipes in the Lora modal.
- Introduced session storage utilities for managing custom filter states.
- Updated the UI to include a custom filter indicator and loading/error states for recipes.
- Refactored existing recipe management logic to accommodate new features and improve maintainability.
2025-04-07 21:53:39 +08:00
Will Miao
b8c78a68e7 refactor: remove unused recipe card CSS styles 2025-04-07 20:36:58 +08:00
Will Miao
49219f4447 feat: Refactor LoraModal into modular components
- Added ShowcaseView.js for rendering LoRA model showcase content with NSFW filtering and lazy loading.
- Introduced TriggerWords.js to manage trigger words, including editing, adding, and saving functionality.
- Created index.js as the main entry point for the LoraModal, integrating all components and functionalities.
- Implemented utils.js for utility functions such as file size formatting and tag rendering.
- Enhanced user experience with editable fields, tooltips, and improved event handling for trigger words and presets.
2025-04-07 15:36:13 +08:00
Will Miao
59b1abb719 Update version to 0.8.4 and add release notes for node layout improvements and bug fixes 2025-04-07 14:49:34 +08:00
Will Miao
3e2cfb552b Refactor image saving logic for batch processing and unique filename generation. Fixes https://github.com/willmiao/ComfyUI-Lora-Manager/issues/79 2025-04-07 14:37:39 +08:00
Will Miao
779be1b8d0 Refactor loras_widget styles for improved layout consistency 2025-04-07 13:42:31 +08:00
Will Miao
faf74de238 Enhance model move functionality with detailed error handling and user feedback 2025-04-07 11:14:56 +08:00
Will Miao
50a51c2e79 Refactor Lora widget and dynamic module loading
- Updated lora_loader.js to dynamically import the appropriate loras widget based on ComfyUI version, enhancing compatibility and maintainability.
- Enhanced loras_widget.js with improved height management and styling for better user experience.
- Introduced utility functions in utils.js for version checking and dynamic imports, streamlining widget loading processes.
- Improved overall structure and readability of the code, ensuring better performance and easier future updates.
2025-04-07 09:02:36 +08:00
Will Miao
d31e641496 Add dynamic tags widget selection based on ComfyUI version
- Introduced a mechanism to dynamically import either the legacy or modern tags widget based on the ComfyUI frontend version.
- Updated the `addTagsWidget` function in both `tags_widget.js` and `legacy_tags_widget.js` to enhance tag rendering and widget height management.
- Improved styling and layout for tags, ensuring better alignment and responsiveness.
- Added a new serialization method to handle potential issues with ComfyUI's serialization process.
- Enhanced the overall user experience by providing a more modern and flexible tags widget implementation.
2025-04-07 08:42:20 +08:00
Will Miao
f2d36f5be9 Refactor DownloadManager and LoraFileHandler for improved file monitoring
- Simplified the path handling in DownloadManager by directly adding normalized paths to the ignore list.
- Updated LoraFileHandler to utilize a set for ignore paths, enhancing performance and clarity.
- Implemented debouncing for modified file events to prevent duplicate processing and improve efficiency.
- Enhanced the handling of file creation, modification, and deletion events for .safetensors files, ensuring accurate processing and logging.
- Adjusted cache operations to streamline the addition and removal of files based on real paths.
2025-04-06 22:27:55 +08:00
Will Miao
0b55f61fac Refactor LoraFileHandler to use real file paths for monitoring
- Updated the file monitoring logic to store and verify real file paths instead of mapped paths, ensuring accurate existence checks.
- Enhanced logging for error handling and processing actions, including detailed error messages with exception info.
- Adjusted cache operations to reflect the use of normalized paths for consistency in add/remove actions.
- Improved handling of ignore paths by removing successfully processed files from the ignore list.
2025-04-05 12:10:46 +08:00
pixelpaws
4156dcbafd Merge pull request #83 from willmiao/dev
Dev
2025-04-05 05:28:22 +08:00
Will Miao
36e6ac2362 Add CheckpointMetadata class for enhanced model metadata management
- Introduced a new CheckpointMetadata dataclass to encapsulate metadata for checkpoint models.
- Included fields for file details, model specifications, and additional attributes such as resolution and architecture.
- Implemented a __post_init__ method to initialize tags as an empty list if not provided, ensuring consistent data handling.
2025-04-05 05:16:52 +08:00
Will Miao
9613199152 Enhance SaveImage functionality with custom prompt support
- Added a new optional parameter `custom_prompt` to the SaveImage class methods to allow users to override the default prompt.
- Updated the `format_metadata` method to utilize the custom prompt if provided.
- Modified the `save_images` and `process_image` methods to accept and pass the custom prompt through the workflow processing.
2025-04-04 07:47:46 +08:00
pixelpaws
14328d7496 Merge pull request #77 from willmiao/dev
Add reconnect functionality for deleted LoRAs in recipe modal
2025-04-03 16:56:04 +08:00
Will Miao
6af12d1acc Add reconnect functionality for deleted LoRAs in recipe modal
- Introduced a new API endpoint to reconnect deleted LoRAs to local files.
- Updated RecipeModal to include UI elements for reconnecting LoRAs, including input fields and buttons.
- Enhanced CSS styles for deleted badges and reconnect containers to improve user experience.
- Implemented event handling for reconnect actions, including input validation and API calls.
- Updated recipe data handling to reflect changes after reconnecting LoRAs.
2025-04-03 16:55:19 +08:00
pixelpaws
9b44e49879 Merge pull request #75 from willmiao/dev
Enhance file monitoring for LoRA files
2025-04-03 11:10:29 +08:00
Will Miao
afee18f146 Enhance file monitoring for LoRA files
- Added a method to map symbolic links back to actual paths in the Config class.
- Improved file creation handling in LoraFileHandler to check for file size and existence before processing.
- Introduced handling for file modification events to update the ignore list and schedule updates.
- Increased debounce delay in _process_changes to allow for file downloads to complete.
- Enhanced action processing to prioritize 'add' actions and verify file existence before adding to cache.
2025-04-03 11:09:30 +08:00
Will Miao
f007369a66 Bump version to v0.8.3 2025-04-02 20:18:51 +08:00
pixelpaws
9a9c166dbe Merge pull request #74 from willmiao/dev
Dev
2025-04-02 20:15:11 +08:00
Will Miao
2f90e32dbf Delete unused files 2025-04-02 20:11:41 +08:00
Will Miao
26355ccb79 chore: remove .vscode from git 2025-04-02 20:09:58 +08:00
Will Miao
27ea3c0c8e chore: add .vscode to gitignore 2025-04-02 20:09:08 +08:00
Will Miao
5aa35b211a Update README and update_logs 2025-04-02 20:03:18 +08:00
Will Miao
92450385d2 Update README 2025-04-02 20:00:04 +08:00
Will Miao
8d15e23f3c Add markdown support for changelog in modal
- Introduced a simple markdown parser to convert markdown syntax in changelog items to HTML.
- Updated modal CSS to style markdown elements, enhancing the presentation of changelog items.
- Improved user experience by allowing formatted text in changelog, including bold, italic, code, and links.
2025-04-02 19:36:52 +08:00
Will Miao
73686d4146 Enhance modal and settings functionality with default LoRA root selection
- Updated modal styles for improved layout and added select control for default LoRA root.
- Modified DownloadManager, ImportManager, MoveManager, and SettingsManager to retrieve and set the default LoRA root from storage.
- Introduced asynchronous loading of LoRA roots in SettingsManager to dynamically populate the select options.
- Improved user experience by allowing users to set a default LoRA root for downloads, imports, and moves.
2025-04-02 17:37:16 +08:00
Will Miao
0499ca1300 Update process_node function to ignore type checking
- Added a type: ignore comment to the process_node function to suppress type checking errors.
- Removed the README.md file as it is no longer needed.
2025-04-02 17:02:11 +08:00
Will Miao
234c942f34 Refactor transform functions and update node mappers
- Moved and redefined transform functions for KSampler, EmptyLatentImage, CLIPTextEncode, and FluxGuidance to improve organization and maintainability.
- Updated NODE_MAPPERS to include new input tracking for clip_skip in KSampler and added new transform functions for LatentUpscale and CLIPSetLastLayer.
- Enhanced the transform_sampler_custom_advanced function to handle clip_skip extraction from model inputs.
2025-04-02 17:01:10 +08:00
Will Miao
aec218ba00 Enhance SaveImage class with filename formatting and multiple image support
- Updated the INPUT_TYPES to accept multiple images and modified the corresponding processing methods.
- Introduced a new format_filename method to handle dynamic filename generation using metadata patterns.
- Replaced save_workflow_json with embed_workflow for better clarity in saving workflow metadata.
- Improved directory handling and filename generation logic to ensure proper file saving.
2025-04-02 15:08:36 +08:00
Will Miao
b508f51fcf checkpoint 2025-04-02 14:13:53 +08:00
Will Miao
435628ea59 Refactor WorkflowParser by removing unused methods 2025-04-02 14:13:24 +08:00
Will Miao
4933dbfb87 Refactor ExifUtils by removing unused methods and imports
- Removed the extract_user_comment and update_user_comment methods to streamline the ExifUtils class.
- Cleaned up unnecessary imports and reduced code complexity, focusing on essential functionality for image metadata extraction.
2025-04-02 11:14:05 +08:00
Will Miao
5a93c40b79 Refactor logging levels and improve mapper registration
- Changed warning logs to debug logs in CivitaiClient and RecipeScanner for better log granularity.
- Updated the mapper registration function name for clarity and adjusted related logging messages.
- Enhanced extension loading process to automatically register mappers from NODE_MAPPERS_EXT, improving modularity and maintainability.
2025-04-02 10:29:31 +08:00
Will Miao
a8ec5af037 checkpoint 2025-04-02 06:05:24 +08:00
Will Miao
27db60ce68 checkpoint 2025-04-01 19:17:43 +08:00
Will Miao
195866b00d Implement KJNodes extension with new mappers and transform functions
- Added KJNodes mappers for JoinStrings, StringConstantMultiline, and EmptyLatentImagePresets.
- Introduced transform functions to handle string joining, string constants, and dimension extraction with optional inversion.
- Registered new mappers and logged successful registration for better traceability.
2025-04-01 16:22:57 +08:00
Will Miao
60575b6546 checkpoint 2025-04-01 08:38:49 +08:00
pixelpaws
350b81d678 Merge pull request #64 from richardhristov/main
Remember sort by name/date in LoRAs page
2025-03-31 20:16:29 +08:00
Will Miao
cc95314dae Bump version to v0.8.2 2025-03-30 20:53:22 +08:00
Will Miao
3f97087abb Update unauthorized access error message 2025-03-30 20:15:50 +08:00
Will Miao
f04af2de21 Add Civitai model retrieval and missing LoRAs download functionality
- Introduced new API endpoints for fetching Civitai model details by model version ID or hash.
- Enhanced the download manager to support downloading LoRAs using model version ID or hash, improving flexibility.
- Updated RecipeModal to handle missing LoRAs, allowing users to download them directly from the recipe interface.
- Added tooltip and click functionality for missing LoRAs status, enhancing user experience.
- Improved error handling for missing LoRAs download process, providing clearer feedback to users.
2025-03-30 19:45:03 +08:00
Richard Hristov
e7871bf843 Remember sort by name/date in LoRAs page 2025-03-29 17:11:53 +02:00
Will Miao
8e3308039a Refactor Lora handling in RecipeRoutes and enhance RecipeManager
- Updated Lora filtering logic in RecipeRoutes to skip deleted LoRAs without exclusion checks, improving performance and clarity.
- Enhanced condition for fetching cached LoRAs to ensure valid data is processed.
- Added toggleApiKeyVisibility function to RecipeManager, improving API key management in the UI.
2025-03-29 19:11:13 +08:00
Will Miao
b65350b7cb Add update functionality for recipe metadata in RecipeRoutes and RecipeModal
- Introduced a new API endpoint to update recipe metadata, allowing users to modify recipe titles and tags.
- Enhanced RecipeModal to support inline editing of recipe titles and tags, improving user interaction.
- Updated RecipeCard to reflect changes in recipe metadata, ensuring consistency across the application.
- Improved error handling for metadata updates to provide clearer feedback to users.
2025-03-29 18:46:19 +08:00
Will Miao
069ebce895 Add recipe syntax endpoint and update RecipeCard and RecipeModal for syntax fetching
- Introduced a new API endpoint to retrieve recipe syntax for LoRAs, allowing for better integration with the frontend.
- Updated RecipeCard to fetch recipe syntax from the backend instead of generating it locally.
- Modified RecipeModal to store the recipe ID and fetch syntax when the copy button is clicked, improving user experience.
- Enhanced error handling for fetching recipe syntax to provide clearer feedback to users.
2025-03-29 15:38:49 +08:00
Will Miao
63aa4e188e Add rename functionality for LoRA files and enhance UI for editing file names
- Introduced a new API endpoint to rename LoRA files, including validation and error handling for file paths and names.
- Updated the RecipeScanner to reflect changes in LoRA filenames across recipe files and cache.
- Enhanced the LoraModal UI to allow inline editing of file names with improved user interaction and validation.
- Added CSS styles for the editing interface to improve visual feedback during file name editing.
2025-03-29 09:25:41 +08:00
Will Miao
c31c9c16cf Enhance LoraScanner and file_utils for improved metadata handling
- Updated LoraScanner to first attempt to create metadata from .civitai.info files, improving metadata extraction from existing files.
- Added error handling for reading .civitai.info files and fallback to generating metadata using get_file_info if necessary.
- Refactored file_utils to expose find_preview_file function and added logic to utilize SHA256 from existing .json files to avoid recalculation.
- Improved overall robustness of metadata loading and preview file retrieval processes.
2025-03-28 16:27:59 +08:00
Will Miao
5a8a402fdc Enhance LoraRoutes and templates for improved cache initialization handling
- Updated LoraRoutes to better check cache initialization status and handle loading states.
- Added logging for successful cache loading and error handling for cache retrieval failures.
- Enhanced base.html and loras.html templates to display a loading spinner and initialization notice during cache setup.
- Improved user experience by ensuring the loading notice is displayed appropriately based on initialization state.
2025-03-28 15:04:35 +08:00
218 changed files with 32241 additions and 10047 deletions

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.github/FUNDING.yml vendored Normal file
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# These are supported funding model platforms
ko_fi: pixelpawsai
custom: ['paypal.me/pixelpawsai']

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__pycache__/
settings.json
output/*
py/run_test.py
py/run_test.py
.vscode/

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LICENSE
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possible use to the public, the best way to achieve this is to make it
free software which everyone can redistribute and change under these terms.
To do so, attach the following notices to the program. It is safest
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ComfyUI Lora Manager - A ComfyUI custom node for managing models
Copyright (C) 2025 Will Miao
This program is free software: you can redistribute it and/or modify
it under the terms of the GNU General Public License as published by
the Free Software Foundation, either version 3 of the License, or
(at your option) any later version.
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Also add information on how to contact you by electronic and paper mail.
If the program does terminal interaction, make it output a short
notice like this when it starts in an interactive mode:
ComfyUI Lora Manager Copyright (C) 2025 Will Miao
This program comes with ABSOLUTELY NO WARRANTY; for details type `show w'.
This is free software, and you are welcome to redistribute it
under certain conditions; type `show c' for details.
The hypothetical commands `show w' and `show c' should show the appropriate
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You should also get your employer (if you work as a programmer) or school,
if any, to sign a "copyright disclaimer" for the program, if necessary.
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into proprietary programs. If your program is a subroutine library, you
may consider it more useful to permit linking proprietary applications with
the library. If this is what you want to do, use the GNU Lesser General
Public License instead of this License. But first, please read
<https://www.gnu.org/licenses/why-not-lgpl.html>.

238
README.md
View File

@@ -6,20 +6,106 @@
[![Release](https://img.shields.io/github/v/release/willmiao/ComfyUI-Lora-Manager?include_prereleases&color=blue&logo=github)](https://github.com/willmiao/ComfyUI-Lora-Manager/releases)
[![Release Date](https://img.shields.io/github/release-date/willmiao/ComfyUI-Lora-Manager?color=green&logo=github)](https://github.com/willmiao/ComfyUI-Lora-Manager/releases)
A comprehensive toolset that streamlines organizing, downloading, and applying LoRA models in ComfyUI. With powerful features like recipe management and one-click workflow integration, working with LoRAs becomes faster, smoother, and significantly easier. Access the interface at: `http://localhost:8188/loras`
A comprehensive toolset that streamlines organizing, downloading, and applying LoRA models in ComfyUI. With powerful features like recipe management, checkpoint organization, and one-click workflow integration, working with models becomes faster, smoother, and significantly easier. Access the interface at: `http://localhost:8188/loras`
![Interface Preview](https://github.com/willmiao/ComfyUI-Lora-Manager/blob/main/static/images/screenshot.png)
![One-Click Integration](https://github.com/willmiao/ComfyUI-Lora-Manager/blob/main/static/images/one-click-send.jpg)
## 📺 Tutorial: One-Click LoRA Integration
Watch this quick tutorial to learn how to use the new one-click LoRA integration feature:
[![One-Click LoRA Integration Tutorial](https://img.youtube.com/vi/qS95OjX3e70/0.jpg)](https://youtu.be/qS95OjX3e70)
[![LoRA Manager v0.8.0 - New Recipe Feature & Bulk Operations](https://img.youtube.com/vi/noN7f_ER7yo/0.jpg)](https://youtu.be/noN7f_ER7yo)
[![LoRA Manager v0.8.10 - Checkpoint Management, Standalone Mode, and New Features!](https://img.youtube.com/vi/VKvTlCB78h4/0.jpg)](https://youtu.be/VKvTlCB78h4)
---
## Release Notes
### v0.8.15
* **Enhanced One-Click Integration** - Replaced copy button with direct send button allowing LoRAs/recipes to be sent directly to your current ComfyUI workflow without needing to paste
* **Flexible Workflow Integration** - Click to append LoRAs/recipes to existing loader nodes or Shift+click to replace content, with additional right-click menu options for "Send to Workflow (Append)" or "Send to Workflow (Replace)"
* **Improved LoRA Loader Controls** - Added header drag functionality for proportional strength adjustment of all LoRAs simultaneously (including CLIP strengths when expanded)
* **Keyboard Navigation Support** - Implemented Page Up/Down for page scrolling, Home key to jump to top, and End key to jump to bottom for faster browsing through large collections
### v0.8.14
* **Virtualized Scrolling** - Completely rebuilt rendering mechanism for smooth browsing with no lag or freezing, now supporting virtually unlimited model collections with optimized layouts for large displays, improving space utilization and user experience
* **Compact Display Mode** - Added space-efficient view option that displays more cards per row (7 on 1080p, 8 on 2K, 10 on 4K)
* **Enhanced LoRA Node Functionality** - Comprehensive improvements to LoRA loader/stacker nodes including real-time trigger word updates (reflecting any change anywhere in the LoRA chain for precise updates) and expanded context menu with "Copy Notes" and "Copy Trigger Words" options for faster workflow
### v0.8.13
* **Enhanced Recipe Management** - Added "Find duplicates" feature to identify and batch delete duplicate recipes with duplicate detection notifications during imports
* **Improved Source Tracking** - Source URLs are now saved with recipes imported via URL, allowing users to view original content with one click or manually edit links
* **Advanced LoRA Control** - Double-click LoRAs in Loader/Stacker nodes to access expanded CLIP strength controls for more precise adjustments of model and CLIP strength separately
* **Lycoris Model Support** - Added compatibility with Lycoris models for expanded creative options
* **Bug Fixes & UX Improvements** - Resolved various issues and enhanced overall user experience with numerous optimizations
### v0.8.12
* **Enhanced Model Discovery** - Added alphabetical navigation bar to LoRAs page for faster browsing through large collections
* **Optimized Example Images** - Improved download logic to automatically refresh stale metadata before fetching example images
* **Model Exclusion System** - New right-click option to exclude specific LoRAs or checkpoints from management
* **Improved Showcase Experience** - Enhanced interaction in LoRA and checkpoint showcase areas for better usability
### v0.8.11
* **Offline Image Support** - Added functionality to download and save all model example images locally, ensuring access even when offline or if images are removed from CivitAI or the site is down
* **Resilient Download System** - Implemented pause/resume capability with checkpoint recovery that persists through restarts or unexpected exits
* **Bug Fixes & Stability** - Resolved various issues to enhance overall reliability and performance
### v0.8.10
* **Standalone Mode** - Run LoRA Manager independently from ComfyUI for a lightweight experience that works even with other stable diffusion interfaces
* **Portable Edition** - New one-click portable version for easy startup and updates in standalone mode
* **Enhanced Metadata Collection** - Added support for SamplerCustomAdvanced node in the metadata collector module
* **Improved UI Organization** - Optimized Lora Loader node height to display up to 5 LoRAs at once with scrolling capability for larger collections
### v0.8.9
* **Favorites System** - New functionality to bookmark your favorite LoRAs and checkpoints for quick access and better organization
* **Enhanced UI Controls** - Increased model card button sizes for improved usability and easier interaction
* **Smoother Page Transitions** - Optimized interface switching between pages, eliminating flash issues particularly noticeable in dark theme
* **Bug Fixes & Stability** - Resolved various issues to enhance overall reliability and performance
### v0.8.8
* **Real-time TriggerWord Updates** - Enhanced TriggerWord Toggle node to instantly update when connected Lora Loader or Lora Stacker nodes change, without requiring workflow execution
* **Optimized Metadata Recovery** - Improved utilization of existing .civitai.info files for faster initialization and preservation of metadata from models deleted from CivitAI
* **Migration Acceleration** - Further speed improvements for users transitioning from A1111/Forge environments
* **Bug Fixes & Stability** - Resolved various issues to enhance overall reliability and performance
### v0.8.7
* **Enhanced Context Menu** - Added comprehensive context menu functionality to Recipes and Checkpoints pages for improved workflow
* **Interactive LoRA Strength Control** - Implemented drag functionality in LoRA Loader for intuitive strength adjustment
* **Metadata Collector Overhaul** - Rebuilt metadata collection system with optimized architecture for better performance
* **Improved Save Image Node** - Enhanced metadata capture and image saving performance with the new metadata collector
* **Streamlined Recipe Saving** - Optimized Save Recipe functionality to work independently without requiring Preview Image nodes
* **Bug Fixes & Stability** - Resolved various issues to enhance overall reliability and performance
### v0.8.6 Major Update
* **Checkpoint Management** - Added comprehensive management for model checkpoints including scanning, searching, filtering, and deletion
* **Enhanced Metadata Support** - New capabilities for retrieving and managing checkpoint metadata with improved operations
* **Improved Initial Loading** - Optimized cache initialization with visual progress indicators for better user experience
### v0.8.5
* **Enhanced LoRA & Recipe Connectivity** - Added Recipes tab in LoRA details to see all recipes using a specific LoRA
* **Improved Navigation** - New shortcuts to jump between related LoRAs and Recipes with one-click navigation
* **Video Preview Controls** - Added "Autoplay Videos on Hover" setting to optimize performance and reduce resource usage
* **UI Experience Refinements** - Smoother transitions between related content pages
### v0.8.4
* **Node Layout Improvements** - Fixed layout issues with LoRA Loader and Trigger Words Toggle nodes in newer ComfyUI frontend versions
* **Recipe LoRA Reconnection** - Added ability to reconnect deleted LoRAs in recipes by clicking the "deleted" badge in recipe details
* **Bug Fixes & Stability** - Resolved various issues for improved reliability
### v0.8.3
* **Enhanced Workflow Parser** - Rebuilt workflow analysis engine with improved support for ComfyUI core nodes and easier extensibility
* **Improved Recipe System** - Refined the experimental Save Recipe functionality with better workflow integration
* **New Save Image Node** - Added experimental node with metadata support for perfect CivitAI compatibility
* Supports dynamic filename prefixes with variables [1](https://github.com/nkchocoai/ComfyUI-SaveImageWithMetaData?tab=readme-ov-file#filename_prefix)
* **Default LoRA Root Setting** - Added configuration option for setting your preferred LoRA directory
### v0.8.2
* **Faster Initialization for Forge Users** - Improved first-run efficiency by utilizing existing `.json` and `.civitai.info` files from Forges CivitAI helper extension, making migration smoother.
* **LoRA Filename Editing** - Added support for renaming LoRA files directly within LoRA Manager.
* **Recipe Editing** - Users can now edit recipe names and tags.
* **Retain Deleted LoRAs in Recipes** - Deleted LoRAs will remain listed in recipes, allowing future functionality to reconnect them once re-obtained.
* **Download Missing LoRAs from Recipes** - Easily fetch missing LoRAs associated with a recipe.
### v0.8.1
* **Base Model Correction** - Added support for modifying base model associations to fix incorrect metadata for non-CivitAI LoRAs
* **LoRA Loader Flexibility** - Made CLIP input optional for model-only workflows like Hunyuan video generation
@@ -35,52 +121,6 @@ Watch this quick tutorial to learn how to use the new one-click LoRA integration
* **Enhanced UI & UX** - Improved interface design and user experience
* **Bug Fixes & Stability** - Resolved various issues and enhanced overall performance
### v0.7.37
* Added NSFW content control settings (blur mature content and SFW-only filter)
* Implemented intelligent blur effects for previews and showcase media
* Added manual content rating option through context menu
* Enhanced user experience with configurable content visibility
* Fixed various bugs and improved stability
### v0.7.36
* Enhanced LoRA details view with model descriptions and tags display
* Added tag filtering system for improved model discovery
* Implemented editable trigger words functionality
* Improved TriggerWord Toggle node with new group mode option for granular control
* Added new Lora Stacker node with cross-compatibility support (works with efficiency nodes, ComfyRoll, easy-use, etc.)
* Fixed several bugs
### v0.7.35-beta
* Added base model filtering
* Implemented bulk operations (copy syntax, move multiple LoRAs)
* Added ability to edit LoRA model names in details view
* Added update checker with notification system
* Added support modal for user feedback and community links
### v0.7.33
* Enhanced LoRA Loader node with visual strength adjustment widgets
* Added toggle switches for LoRA enable/disable
* Implemented image tooltips for LoRA preview
* Added TriggerWord Toggle node with visual word selection
* Fixed various bugs and improved stability
### v0.7.3
* Added "Lora Loader (LoraManager)" custom node for workflows
* Implemented one-click LoRA integration
* Added direct copying of LoRA syntax from manager interface
* Added automatic preset strength value application
* Added automatic trigger word loading
### v0.7.0
* Added direct CivitAI integration for downloading LoRAs
* Implemented version selection for model downloads
* Added target folder selection for downloads
* Added context menu with quick actions
* Added force refresh for CivitAI data
* Implemented LoRA movement between folders
* Added personal usage tips and notes for LoRAs
* Improved performance for details window
[View Update History](./update_logs.md)
---
@@ -113,6 +153,12 @@ Watch this quick tutorial to learn how to use the new one-click LoRA integration
- Trigger words at a glance
- One-click workflow integration with preset values
- 🔄 **Checkpoint Management**
- Scan and organize checkpoint models
- Filter and search your collection
- View and edit metadata
- Clean up and manage disk space
- 🧩 **LoRA Recipes**
- Save and share favorite LoRA combinations
- Preserve generation parameters for future reference
@@ -124,24 +170,32 @@ Watch this quick tutorial to learn how to use the new one-click LoRA integration
- Context menu for quick actions
- Custom notes and usage tips
- Multi-folder support
- Visual progress indicators during initialization
---
## Installation
### Option 1: **ComfyUI Manager** (Recommended)
### Option 1: **ComfyUI Manager** (Recommended for ComfyUI users)
1. Open **ComfyUI**.
2. Go to **Manager > Custom Node Manager**.
3. Search for `lora-manager`.
4. Click **Install**.
### Option 2: **Manual Installation**
### Option 2: **Portable Standalone Edition** (No ComfyUI required)
1. Download the [Portable Package](https://github.com/willmiao/ComfyUI-Lora-Manager/releases/download/v0.8.10/lora_manager_portable.7z)
2. Copy the provided `settings.json.example` file to create a new file named `settings.json` in `comfyui-lora-manager` folder
3. Edit `settings.json` to include your correct model folder paths and CivitAI API key
4. Run run.bat
### Option 3: **Manual Installation**
```bash
git clone https://github.com/willmiao/ComfyUI-Lora-Manager.git
cd ComfyUI-Lora-Manager
pip install requirements.txt
pip install -r requirements.txt
```
## Usage
@@ -162,11 +216,89 @@ pip install requirements.txt
- Paste into the Lora Loader node's text input
- The node will automatically apply preset strength and trigger words
### Filename Format Patterns for Save Image Node
The Save Image Node supports dynamic filename generation using pattern codes. You can customize how your images are named using the following format patterns:
#### Available Pattern Codes
- `%seed%` - Inserts the generation seed number
- `%width%` - Inserts the image width
- `%height%` - Inserts the image height
- `%pprompt:N%` - Inserts the positive prompt (limited to N characters)
- `%nprompt:N%` - Inserts the negative prompt (limited to N characters)
- `%model:N%` - Inserts the model/checkpoint name (limited to N characters)
- `%date%` - Inserts current date/time as "yyyyMMddhhmmss"
- `%date:FORMAT%` - Inserts date using custom format with:
- `yyyy` - 4-digit year
- `yy` - 2-digit year
- `MM` - 2-digit month
- `dd` - 2-digit day
- `hh` - 2-digit hour
- `mm` - 2-digit minute
- `ss` - 2-digit second
#### Examples
- `image_%seed%``image_1234567890`
- `gen_%width%x%height%``gen_512x768`
- `%model:10%_%seed%``dreamshape_1234567890`
- `%date:yyyy-MM-dd%``2025-04-28`
- `%pprompt:20%_%seed%``beautiful landscape_1234567890`
- `%model%_%date:yyMMdd%_%seed%``dreamshaper_v8_250428_1234567890`
You can combine multiple patterns to create detailed, organized filenames for your generated images.
### Standalone Mode
You can now run LoRA Manager independently from ComfyUI:
1. **For ComfyUI users**:
- Launch ComfyUI with LoRA Manager at least once to initialize the necessary path information in the `settings.json` file.
- Make sure dependencies are installed: `pip install -r requirements.txt`
- From your ComfyUI root directory, run:
```bash
python custom_nodes\comfyui-lora-manager\standalone.py
```
- Access the interface at: `http://localhost:8188/loras`
- You can specify a different host or port with arguments:
```bash
python custom_nodes\comfyui-lora-manager\standalone.py --host 127.0.0.1 --port 9000
```
2. **For non-ComfyUI users**:
- Copy the provided `settings.json.example` file to create a new file named `settings.json`
- Edit `settings.json` to include your correct model folder paths and CivitAI API key
- Install required dependencies: `pip install -r requirements.txt`
- Run standalone mode:
```bash
python standalone.py
```
- Access the interface through your browser at: `http://localhost:8188/loras`
This standalone mode provides a lightweight option for managing your model and recipe collection without needing to run the full ComfyUI environment, making it useful even for users who primarily use other stable diffusion interfaces.
---
## Contributing
If you have suggestions, bug reports, or improvements, feel free to open an issue or contribute directly to the codebase. Pull requests are always welcome!
Thank you for your interest in contributing to ComfyUI LoRA Manager! As this project is currently in its early stages and undergoing rapid development and refactoring, we are temporarily not accepting pull requests.
However, your feedback and ideas are extremely valuable to us:
- Please feel free to open issues for any bugs you encounter
- Submit feature requests through GitHub issues
- Share your suggestions for improvements
We appreciate your understanding and look forward to potentially accepting code contributions once the project architecture stabilizes.
---
## Credits
This project has been inspired by and benefited from other excellent ComfyUI extensions:
- [ComfyUI-SaveImageWithMetaData](https://github.com/nkchocoai/ComfyUI-SaveImageWithMetaData) - For the image metadata functionality
- [rgthree-comfy](https://github.com/rgthree/rgthree-comfy) - For the lora loader functionality
---
@@ -176,6 +308,8 @@ If you find this project helpful, consider supporting its development:
[![ko-fi](https://ko-fi.com/img/githubbutton_sm.svg)](https://ko-fi.com/pixelpawsai)
WeChat: [Click to view QR code](https://raw.githubusercontent.com/willmiao/ComfyUI-Lora-Manager/main/static/images/wechat-qr.webp)
## 💬 Community
Join our Discord community for support, discussions, and updates:

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@@ -2,17 +2,24 @@ from .py.lora_manager import LoraManager
from .py.nodes.lora_loader import LoraManagerLoader
from .py.nodes.trigger_word_toggle import TriggerWordToggle
from .py.nodes.lora_stacker import LoraStacker
# from .py.nodes.save_image import SaveImage
from .py.nodes.save_image import SaveImage
from .py.nodes.debug_metadata import DebugMetadata
# Import metadata collector to install hooks on startup
from .py.metadata_collector import init as init_metadata_collector
NODE_CLASS_MAPPINGS = {
LoraManagerLoader.NAME: LoraManagerLoader,
TriggerWordToggle.NAME: TriggerWordToggle,
LoraStacker.NAME: LoraStacker,
# SaveImage.NAME: SaveImage
SaveImage.NAME: SaveImage,
DebugMetadata.NAME: DebugMetadata
}
WEB_DIRECTORY = "./web/comfyui"
# Initialize metadata collector
init_metadata_collector()
# Register routes on import
LoraManager.add_routes()
__all__ = ['NODE_CLASS_MAPPINGS', 'WEB_DIRECTORY']

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@@ -3,6 +3,11 @@ import platform
import folder_paths # type: ignore
from typing import List
import logging
import sys
import json
# Check if running in standalone mode
standalone_mode = 'nodes' not in sys.modules
logger = logging.getLogger(__name__)
@@ -17,9 +22,47 @@ class Config:
# 静态路由映射字典, target to route mapping
self._route_mappings = {}
self.loras_roots = self._init_lora_paths()
self.temp_directory = folder_paths.get_temp_directory()
self.checkpoints_roots = self._init_checkpoint_paths()
# 在初始化时扫描符号链接
self._scan_symbolic_links()
if not standalone_mode:
# Save the paths to settings.json when running in ComfyUI mode
self.save_folder_paths_to_settings()
def save_folder_paths_to_settings(self):
"""Save folder paths to settings.json for standalone mode to use later"""
try:
# Check if we're running in ComfyUI mode (not standalone)
if hasattr(folder_paths, "get_folder_paths") and not isinstance(folder_paths, type):
# Get all relevant paths
lora_paths = folder_paths.get_folder_paths("loras")
checkpoint_paths = folder_paths.get_folder_paths("checkpoints")
diffuser_paths = folder_paths.get_folder_paths("diffusers")
unet_paths = folder_paths.get_folder_paths("unet")
# Load existing settings
settings_path = os.path.join(os.path.dirname(os.path.dirname(__file__)), 'settings.json')
settings = {}
if os.path.exists(settings_path):
with open(settings_path, 'r', encoding='utf-8') as f:
settings = json.load(f)
# Update settings with paths
settings['folder_paths'] = {
'loras': lora_paths,
'checkpoints': checkpoint_paths,
'diffusers': diffuser_paths,
'unet': unet_paths
}
# Save settings
with open(settings_path, 'w', encoding='utf-8') as f:
json.dump(settings, f, indent=2)
logger.info("Saved folder paths to settings.json")
except Exception as e:
logger.warning(f"Failed to save folder paths: {e}")
def _is_link(self, path: str) -> bool:
try:
@@ -39,9 +82,12 @@ class Config:
return False
def _scan_symbolic_links(self):
"""扫描所有 LoRA 根目录中的符号链接"""
"""扫描所有 LoRA 和 Checkpoint 根目录中的符号链接"""
for root in self.loras_roots:
self._scan_directory_links(root)
for root in self.checkpoints_roots:
self._scan_directory_links(root)
def _scan_directory_links(self, root: str):
"""递归扫描目录中的符号链接"""
@@ -73,7 +119,7 @@ class Config:
"""添加静态路由映射"""
normalized_path = os.path.normpath(path).replace(os.sep, '/')
self._route_mappings[normalized_path] = route
logger.info(f"Added route mapping: {normalized_path} -> {route}")
# logger.info(f"Added route mapping: {normalized_path} -> {route}")
def map_path_to_link(self, path: str) -> str:
"""将目标路径映射回符号链接路径"""
@@ -85,24 +131,80 @@ class Config:
mapped_path = normalized_path.replace(target_path, link_path, 1)
return mapped_path
return path
def map_link_to_path(self, link_path: str) -> str:
"""将符号链接路径映射回实际路径"""
normalized_link = os.path.normpath(link_path).replace(os.sep, '/')
# 检查路径是否包含在任何映射的目标路径中
for target_path, link_path in self._path_mappings.items():
if normalized_link.startswith(target_path):
# 如果路径以目标路径开头,则替换为实际路径
mapped_path = normalized_link.replace(target_path, link_path, 1)
return mapped_path
return link_path
def _init_lora_paths(self) -> List[str]:
"""Initialize and validate LoRA paths from ComfyUI settings"""
paths = sorted(set(path.replace(os.sep, "/")
for path in folder_paths.get_folder_paths("loras")
if os.path.exists(path)), key=lambda p: p.lower())
print("Found LoRA roots:", "\n - " + "\n - ".join(paths))
if not paths:
raise ValueError("No valid loras folders found in ComfyUI configuration")
# 初始化路径映射
for path in paths:
real_path = os.path.normpath(os.path.realpath(path)).replace(os.sep, '/')
if real_path != path:
self.add_path_mapping(path, real_path)
return paths
try:
raw_paths = folder_paths.get_folder_paths("loras")
# Normalize and resolve symlinks, store mapping from resolved -> original
path_map = {}
for path in raw_paths:
if os.path.exists(path):
real_path = os.path.normpath(os.path.realpath(path)).replace(os.sep, '/')
path_map[real_path] = path_map.get(real_path, path.replace(os.sep, "/")) # preserve first seen
# Now sort and use only the deduplicated real paths
unique_paths = sorted(path_map.values(), key=lambda p: p.lower())
logger.info("Found LoRA roots:" + ("\n - " + "\n - ".join(unique_paths) if unique_paths else "[]"))
if not unique_paths:
logger.warning("No valid loras folders found in ComfyUI configuration")
return []
for original_path in unique_paths:
real_path = os.path.normpath(os.path.realpath(original_path)).replace(os.sep, '/')
if real_path != original_path:
self.add_path_mapping(original_path, real_path)
return unique_paths
except Exception as e:
logger.warning(f"Error initializing LoRA paths: {e}")
return []
def _init_checkpoint_paths(self) -> List[str]:
"""Initialize and validate checkpoint paths from ComfyUI settings"""
try:
# Get checkpoint paths from folder_paths
checkpoint_paths = folder_paths.get_folder_paths("checkpoints")
diffusion_paths = folder_paths.get_folder_paths("diffusers")
unet_paths = folder_paths.get_folder_paths("unet")
# Combine all checkpoint-related paths
all_paths = checkpoint_paths + diffusion_paths + unet_paths
# Filter and normalize paths
paths = sorted(set(path.replace(os.sep, "/")
for path in all_paths
if os.path.exists(path)), key=lambda p: p.lower())
logger.info("Found checkpoint roots:" + ("\n - " + "\n - ".join(paths) if paths else "[]"))
if not paths:
logger.warning("No valid checkpoint folders found in ComfyUI configuration")
return []
# 初始化路径映射,与 LoRA 路径处理方式相同
for path in paths:
real_path = os.path.normpath(os.path.realpath(path)).replace(os.sep, '/')
if real_path != path:
self.add_path_mapping(path, real_path)
return paths
except Exception as e:
logger.warning(f"Error initializing checkpoint paths: {e}")
return []
def get_preview_static_url(self, preview_path: str) -> str:
"""Convert local preview path to static URL"""

View File

@@ -1,20 +1,23 @@
import asyncio
import os
from server import PromptServer # type: ignore
from .config import config
from .routes.lora_routes import LoraRoutes
from .routes.api_routes import ApiRoutes
from .routes.recipe_routes import RecipeRoutes
from .routes.checkpoints_routes import CheckpointsRoutes
from .services.lora_scanner import LoraScanner
from .services.recipe_scanner import RecipeScanner
from .services.file_monitor import LoraFileMonitor
from .services.lora_cache import LoraCache
from .services.recipe_cache import RecipeCache
from .routes.update_routes import UpdateRoutes
from .routes.misc_routes import MiscRoutes
from .services.service_registry import ServiceRegistry
from .services.settings_manager import settings
import logging
import sys
import os
logger = logging.getLogger(__name__)
# Check if we're in standalone mode
STANDALONE_MODE = 'nodes' not in sys.modules
class LoraManager:
"""Main entry point for LoRA Manager plugin"""
@@ -23,7 +26,17 @@ class LoraManager:
"""Initialize and register all routes"""
app = PromptServer.instance.app
added_targets = set() # 用于跟踪已添加的目标路径
# Configure aiohttp access logger to be less verbose
logging.getLogger('aiohttp.access').setLevel(logging.WARNING)
added_targets = set() # Track already added target paths
# Add static route for example images if the path exists in settings
example_images_path = settings.get('example_images_path')
logger.info(f"Example images path: {example_images_path}")
if example_images_path and os.path.exists(example_images_path):
app.router.add_static('/example_images_static', example_images_path)
logger.info(f"Added static route for example images: /example_images_static -> {example_images_path}")
# Add static routes for each lora root
for idx, root in enumerate(config.loras_roots, start=1):
@@ -35,102 +48,152 @@ class LoraManager:
if link == root:
real_root = target
break
# 为原始路径添加静态路由
# Add static route for original path
app.router.add_static(preview_path, real_root)
logger.info(f"Added static route {preview_path} -> {real_root}")
# 记录路由映射
# Record route mapping
config.add_route_mapping(real_root, preview_path)
added_targets.add(real_root)
# 为符号链接的目标路径添加额外的静态路由
link_idx = 1
# Add static routes for each checkpoint root
for idx, root in enumerate(config.checkpoints_roots, start=1):
preview_path = f'/checkpoints_static/root{idx}/preview'
real_root = root
if root in config._path_mappings.values():
for target, link in config._path_mappings.items():
if link == root:
real_root = target
break
# Add static route for original path
app.router.add_static(preview_path, real_root)
logger.info(f"Added static route {preview_path} -> {real_root}")
# Record route mapping
config.add_route_mapping(real_root, preview_path)
added_targets.add(real_root)
# Add static routes for symlink target paths
link_idx = {
'lora': 1,
'checkpoint': 1
}
for target_path, link_path in config._path_mappings.items():
if target_path not in added_targets:
route_path = f'/loras_static/link_{link_idx}/preview'
# Determine if this is a checkpoint or lora link based on path
is_checkpoint = any(cp_root in link_path for cp_root in config.checkpoints_roots)
is_checkpoint = is_checkpoint or any(cp_root in target_path for cp_root in config.checkpoints_roots)
if is_checkpoint:
route_path = f'/checkpoints_static/link_{link_idx["checkpoint"]}/preview'
link_idx["checkpoint"] += 1
else:
route_path = f'/loras_static/link_{link_idx["lora"]}/preview'
link_idx["lora"] += 1
app.router.add_static(route_path, target_path)
logger.info(f"Added static route for link target {route_path} -> {target_path}")
config.add_route_mapping(target_path, route_path)
added_targets.add(target_path)
link_idx += 1
# Add static route for plugin assets
app.router.add_static('/loras_static', config.static_path)
# Setup feature routes
routes = LoraRoutes()
lora_routes = LoraRoutes()
checkpoints_routes = CheckpointsRoutes()
# Setup file monitoring
monitor = LoraFileMonitor(routes.scanner, config.loras_roots)
monitor.start()
routes.setup_routes(app)
# Initialize routes
lora_routes.setup_routes(app)
checkpoints_routes.setup_routes(app)
ApiRoutes.setup_routes(app, monitor)
ApiRoutes.setup_routes(app)
RecipeRoutes.setup_routes(app)
UpdateRoutes.setup_routes(app)
MiscRoutes.setup_routes(app) # Register miscellaneous routes
# Store monitor in app for cleanup
app['lora_monitor'] = monitor
# Schedule cache initialization using the application's startup handler
app.on_startup.append(lambda app: cls._schedule_cache_init(routes.scanner, routes.recipe_scanner))
# Schedule service initialization
app.on_startup.append(lambda app: cls._initialize_services())
# Add cleanup
app.on_shutdown.append(cls._cleanup)
app.on_shutdown.append(ApiRoutes.cleanup)
@classmethod
async def _schedule_cache_init(cls, scanner: LoraScanner, recipe_scanner: RecipeScanner):
"""Schedule cache initialization in the running event loop"""
async def _initialize_services(cls):
"""Initialize all services using the ServiceRegistry"""
try:
# 创建低优先级的初始化任务
lora_task = asyncio.create_task(cls._initialize_lora_cache(scanner), name='lora_cache_init')
# Ensure aiohttp access logger is configured with reduced verbosity
logging.getLogger('aiohttp.access').setLevel(logging.WARNING)
# Schedule recipe cache initialization with a delay to let lora scanner initialize first
recipe_task = asyncio.create_task(cls._initialize_recipe_cache(recipe_scanner, delay=2), name='recipe_cache_init')
# Initialize CivitaiClient first to ensure it's ready for other services
civitai_client = await ServiceRegistry.get_civitai_client()
# Get file monitors through ServiceRegistry
lora_monitor = await ServiceRegistry.get_lora_monitor()
checkpoint_monitor = await ServiceRegistry.get_checkpoint_monitor()
# Start monitors
lora_monitor.start()
logger.debug("Lora monitor started")
# Make sure checkpoint monitor has paths before starting
await checkpoint_monitor.initialize_paths()
checkpoint_monitor.start()
logger.debug("Checkpoint monitor started")
# Register DownloadManager with ServiceRegistry
download_manager = await ServiceRegistry.get_download_manager()
# Initialize WebSocket manager
ws_manager = await ServiceRegistry.get_websocket_manager()
# Initialize scanners in background
lora_scanner = await ServiceRegistry.get_lora_scanner()
checkpoint_scanner = await ServiceRegistry.get_checkpoint_scanner()
# Initialize recipe scanner if needed
recipe_scanner = await ServiceRegistry.get_recipe_scanner()
# Initialize metadata collector if not in standalone mode
if not STANDALONE_MODE:
from .metadata_collector import init as init_metadata
init_metadata()
logger.debug("Metadata collector initialized")
# Create low-priority initialization tasks
asyncio.create_task(lora_scanner.initialize_in_background(), name='lora_cache_init')
asyncio.create_task(checkpoint_scanner.initialize_in_background(), name='checkpoint_cache_init')
asyncio.create_task(recipe_scanner.initialize_in_background(), name='recipe_cache_init')
logger.info("LoRA Manager: All services initialized and background tasks scheduled")
except Exception as e:
logger.error(f"LoRA Manager: Error scheduling cache initialization: {e}")
@classmethod
async def _initialize_lora_cache(cls, scanner: LoraScanner):
"""Initialize lora cache in background"""
try:
# 设置初始缓存占位
scanner._cache = LoraCache(
raw_data=[],
sorted_by_name=[],
sorted_by_date=[],
folders=[]
)
# 分阶段加载缓存
await scanner.get_cached_data(force_refresh=True)
except Exception as e:
logger.error(f"LoRA Manager: Error initializing lora cache: {e}")
@classmethod
async def _initialize_recipe_cache(cls, scanner: RecipeScanner, delay: float = 2.0):
"""Initialize recipe cache in background with a delay"""
try:
# Wait for the specified delay to let lora scanner initialize first
await asyncio.sleep(delay)
# Set initial empty cache
scanner._cache = RecipeCache(
raw_data=[],
sorted_by_name=[],
sorted_by_date=[]
)
# Force refresh to load the actual data
await scanner.get_cached_data(force_refresh=True)
except Exception as e:
logger.error(f"LoRA Manager: Error initializing recipe cache: {e}")
logger.error(f"LoRA Manager: Error initializing services: {e}", exc_info=True)
@classmethod
async def _cleanup(cls, app):
"""Cleanup resources"""
if 'lora_monitor' in app:
app['lora_monitor'].stop()
"""Cleanup resources using ServiceRegistry"""
try:
logger.info("LoRA Manager: Cleaning up services")
# Get monitors from ServiceRegistry
lora_monitor = await ServiceRegistry.get_service("lora_monitor")
if lora_monitor:
lora_monitor.stop()
logger.info("Stopped LoRA monitor")
checkpoint_monitor = await ServiceRegistry.get_service("checkpoint_monitor")
if checkpoint_monitor:
checkpoint_monitor.stop()
logger.info("Stopped checkpoint monitor")
# Close CivitaiClient gracefully
civitai_client = await ServiceRegistry.get_service("civitai_client")
if civitai_client:
await civitai_client.close()
logger.info("Closed CivitaiClient connection")
except Exception as e:
logger.error(f"Error during cleanup: {e}", exc_info=True)

View File

@@ -0,0 +1,32 @@
import os
import importlib
import sys
# Check if running in standalone mode
standalone_mode = 'nodes' not in sys.modules
if not standalone_mode:
from .metadata_hook import MetadataHook
from .metadata_registry import MetadataRegistry
def init():
# Install hooks to collect metadata during execution
MetadataHook.install()
# Initialize registry
registry = MetadataRegistry()
print("ComfyUI Metadata Collector initialized")
def get_metadata(prompt_id=None):
"""Helper function to get metadata from the registry"""
registry = MetadataRegistry()
return registry.get_metadata(prompt_id)
else:
# Standalone mode - provide dummy implementations
def init():
print("ComfyUI Metadata Collector disabled in standalone mode")
def get_metadata(prompt_id=None):
"""Dummy implementation for standalone mode"""
return {}

View File

@@ -0,0 +1,14 @@
"""Constants used by the metadata collector"""
# Metadata collection constants
# Metadata categories
MODELS = "models"
PROMPTS = "prompts"
SAMPLING = "sampling"
LORAS = "loras"
SIZE = "size"
IMAGES = "images"
# Complete list of categories to track
METADATA_CATEGORIES = [MODELS, PROMPTS, SAMPLING, LORAS, SIZE, IMAGES]

View File

@@ -0,0 +1,123 @@
import sys
import inspect
from .metadata_registry import MetadataRegistry
class MetadataHook:
"""Install hooks for metadata collection"""
@staticmethod
def install():
"""Install hooks to collect metadata during execution"""
try:
# Import ComfyUI's execution module
execution = None
try:
# Try direct import first
import execution # type: ignore
except ImportError:
# Try to locate from system modules
for module_name in sys.modules:
if module_name.endswith('.execution'):
execution = sys.modules[module_name]
break
# If we can't find the execution module, we can't install hooks
if execution is None:
print("Could not locate ComfyUI execution module, metadata collection disabled")
return
# Store the original _map_node_over_list function
original_map_node_over_list = execution._map_node_over_list
# Define the wrapped _map_node_over_list function
def map_node_over_list_with_metadata(obj, input_data_all, func, allow_interrupt=False, execution_block_cb=None, pre_execute_cb=None):
# Only collect metadata when calling the main function of nodes
if func == obj.FUNCTION and hasattr(obj, '__class__'):
try:
# Get the current prompt_id from the registry
registry = MetadataRegistry()
prompt_id = registry.current_prompt_id
if prompt_id is not None:
# Get node class type
class_type = obj.__class__.__name__
# Unique ID might be available through the obj if it has a unique_id field
node_id = getattr(obj, 'unique_id', None)
if node_id is None and pre_execute_cb:
# Try to extract node_id through reflection on GraphBuilder.set_default_prefix
frame = inspect.currentframe()
while frame:
if 'unique_id' in frame.f_locals:
node_id = frame.f_locals['unique_id']
break
frame = frame.f_back
# Record inputs before execution
if node_id is not None:
registry.record_node_execution(node_id, class_type, input_data_all, None)
except Exception as e:
print(f"Error collecting metadata (pre-execution): {str(e)}")
# Execute the original function
results = original_map_node_over_list(obj, input_data_all, func, allow_interrupt, execution_block_cb, pre_execute_cb)
# After execution, collect outputs for relevant nodes
if func == obj.FUNCTION and hasattr(obj, '__class__'):
try:
# Get the current prompt_id from the registry
registry = MetadataRegistry()
prompt_id = registry.current_prompt_id
if prompt_id is not None:
# Get node class type
class_type = obj.__class__.__name__
# Unique ID might be available through the obj if it has a unique_id field
node_id = getattr(obj, 'unique_id', None)
if node_id is None and pre_execute_cb:
# Try to extract node_id through reflection
frame = inspect.currentframe()
while frame:
if 'unique_id' in frame.f_locals:
node_id = frame.f_locals['unique_id']
break
frame = frame.f_back
# Record outputs after execution
if node_id is not None:
registry.update_node_execution(node_id, class_type, results)
except Exception as e:
print(f"Error collecting metadata (post-execution): {str(e)}")
return results
# Also hook the execute function to track the current prompt_id
original_execute = execution.execute
def execute_with_prompt_tracking(*args, **kwargs):
if len(args) >= 7: # Check if we have enough arguments
server, prompt, caches, node_id, extra_data, executed, prompt_id = args[:7]
registry = MetadataRegistry()
# Start collection if this is a new prompt
if not registry.current_prompt_id or registry.current_prompt_id != prompt_id:
registry.start_collection(prompt_id)
# Store the dynprompt reference for node lookups
if hasattr(prompt, 'original_prompt'):
registry.set_current_prompt(prompt)
# Execute the original function
return original_execute(*args, **kwargs)
# Replace the functions
execution._map_node_over_list = map_node_over_list_with_metadata
execution.execute = execute_with_prompt_tracking
# Make map_node_over_list public to avoid it being hidden by hooks
execution.map_node_over_list = original_map_node_over_list
print("Metadata collection hooks installed for runtime values")
except Exception as e:
print(f"Error installing metadata hooks: {str(e)}")

View File

@@ -0,0 +1,295 @@
import json
import sys
# Check if running in standalone mode
standalone_mode = 'nodes' not in sys.modules
from .constants import MODELS, PROMPTS, SAMPLING, LORAS, SIZE
class MetadataProcessor:
"""Process and format collected metadata"""
@staticmethod
def find_primary_sampler(metadata):
"""Find the primary KSampler node (with highest denoise value)"""
primary_sampler = None
primary_sampler_id = None
max_denoise = -1 # Track the highest denoise value
# First, check for SamplerCustomAdvanced
prompt = metadata.get("current_prompt")
if prompt and prompt.original_prompt:
for node_id, node_info in prompt.original_prompt.items():
if node_info.get("class_type") == "SamplerCustomAdvanced":
# Found a SamplerCustomAdvanced node
if node_id in metadata.get(SAMPLING, {}):
return node_id, metadata[SAMPLING][node_id]
# Next, check for KSamplerAdvanced with add_noise="enable"
for node_id, sampler_info in metadata.get(SAMPLING, {}).items():
parameters = sampler_info.get("parameters", {})
add_noise = parameters.get("add_noise")
# If add_noise is "enable", this is likely the primary sampler for KSamplerAdvanced
if add_noise == "enable":
primary_sampler = sampler_info
primary_sampler_id = node_id
break
# If no specialized sampler found, find the sampler with highest denoise value
if primary_sampler is None:
for node_id, sampler_info in metadata.get(SAMPLING, {}).items():
parameters = sampler_info.get("parameters", {})
denoise = parameters.get("denoise")
# If denoise exists and is higher than current max, use this sampler
if denoise is not None and denoise > max_denoise:
max_denoise = denoise
primary_sampler = sampler_info
primary_sampler_id = node_id
return primary_sampler_id, primary_sampler
@staticmethod
def trace_node_input(prompt, node_id, input_name, target_class=None, max_depth=10):
"""
Trace an input connection from a node to find the source node
Parameters:
- prompt: The prompt object containing node connections
- node_id: ID of the starting node
- input_name: Name of the input to trace
- target_class: Optional class name to search for (e.g., "CLIPTextEncode")
- max_depth: Maximum depth to follow the node chain to prevent infinite loops
Returns:
- node_id of the found node, or None if not found
"""
if not prompt or not prompt.original_prompt or node_id not in prompt.original_prompt:
return None
# For depth tracking
current_depth = 0
current_node_id = node_id
current_input = input_name
while current_depth < max_depth:
if current_node_id not in prompt.original_prompt:
return None
node_inputs = prompt.original_prompt[current_node_id].get("inputs", {})
if current_input not in node_inputs:
return None
input_value = node_inputs[current_input]
# Input connections are formatted as [node_id, output_index]
if isinstance(input_value, list) and len(input_value) >= 2:
found_node_id = input_value[0] # Connected node_id
# If we're looking for a specific node class
if target_class and prompt.original_prompt[found_node_id].get("class_type") == target_class:
return found_node_id
# If we're not looking for a specific class or haven't found it yet
if not target_class:
return found_node_id
# Continue tracing through intermediate nodes
current_node_id = found_node_id
# For most conditioning nodes, the input we want to follow is named "conditioning"
if "conditioning" in prompt.original_prompt[current_node_id].get("inputs", {}):
current_input = "conditioning"
else:
# If there's no "conditioning" input, we can't trace further
return found_node_id if not target_class else None
else:
# We've reached a node with no further connections
return None
current_depth += 1
# If we've reached max depth without finding target_class
return None
@staticmethod
def find_primary_checkpoint(metadata):
"""Find the primary checkpoint model in the workflow"""
if not metadata.get(MODELS):
return None
# In most workflows, there's only one checkpoint, so we can just take the first one
for node_id, model_info in metadata.get(MODELS, {}).items():
if model_info.get("type") == "checkpoint":
return model_info.get("name")
return None
@staticmethod
def extract_generation_params(metadata):
"""Extract generation parameters from metadata using node relationships"""
params = {
"prompt": "",
"negative_prompt": "",
"seed": None,
"steps": None,
"cfg_scale": None,
"guidance": None, # Add guidance parameter
"sampler": None,
"scheduler": None,
"checkpoint": None,
"loras": "",
"size": None,
"clip_skip": None
}
# Get the prompt object for node relationship tracing
prompt = metadata.get("current_prompt")
# Find the primary KSampler node
primary_sampler_id, primary_sampler = MetadataProcessor.find_primary_sampler(metadata)
# Directly get checkpoint from metadata instead of tracing
checkpoint = MetadataProcessor.find_primary_checkpoint(metadata)
if checkpoint:
params["checkpoint"] = checkpoint
if primary_sampler:
# Extract sampling parameters
sampling_params = primary_sampler.get("parameters", {})
# Handle both seed and noise_seed
params["seed"] = sampling_params.get("seed") if sampling_params.get("seed") is not None else sampling_params.get("noise_seed")
params["steps"] = sampling_params.get("steps")
params["cfg_scale"] = sampling_params.get("cfg")
params["sampler"] = sampling_params.get("sampler_name")
params["scheduler"] = sampling_params.get("scheduler")
# Trace connections from the primary sampler
if prompt and primary_sampler_id:
# Check if this is a SamplerCustomAdvanced node
is_custom_advanced = False
if prompt.original_prompt and primary_sampler_id in prompt.original_prompt:
is_custom_advanced = prompt.original_prompt[primary_sampler_id].get("class_type") == "SamplerCustomAdvanced"
if is_custom_advanced:
# For SamplerCustomAdvanced, trace specific inputs
# 1. Trace sigmas input to find BasicScheduler
scheduler_node_id = MetadataProcessor.trace_node_input(prompt, primary_sampler_id, "sigmas", "BasicScheduler", max_depth=5)
if scheduler_node_id and scheduler_node_id in metadata.get(SAMPLING, {}):
scheduler_params = metadata[SAMPLING][scheduler_node_id].get("parameters", {})
params["steps"] = scheduler_params.get("steps")
params["scheduler"] = scheduler_params.get("scheduler")
# 2. Trace sampler input to find KSamplerSelect
sampler_node_id = MetadataProcessor.trace_node_input(prompt, primary_sampler_id, "sampler", "KSamplerSelect", max_depth=5)
if sampler_node_id and sampler_node_id in metadata.get(SAMPLING, {}):
sampler_params = metadata[SAMPLING][sampler_node_id].get("parameters", {})
params["sampler"] = sampler_params.get("sampler_name")
# 3. Trace guider input for CFGGuider, FluxGuidance and CLIPTextEncode
guider_node_id = MetadataProcessor.trace_node_input(prompt, primary_sampler_id, "guider", max_depth=5)
if guider_node_id and guider_node_id in prompt.original_prompt:
# Check if the guider node is a CFGGuider
if prompt.original_prompt[guider_node_id].get("class_type") == "CFGGuider":
# Extract cfg value from the CFGGuider
if guider_node_id in metadata.get(SAMPLING, {}):
cfg_params = metadata[SAMPLING][guider_node_id].get("parameters", {})
params["cfg_scale"] = cfg_params.get("cfg")
# Find CLIPTextEncode for positive prompt
positive_node_id = MetadataProcessor.trace_node_input(prompt, guider_node_id, "positive", "CLIPTextEncode", max_depth=10)
if positive_node_id and positive_node_id in metadata.get(PROMPTS, {}):
params["prompt"] = metadata[PROMPTS][positive_node_id].get("text", "")
# Find CLIPTextEncode for negative prompt
negative_node_id = MetadataProcessor.trace_node_input(prompt, guider_node_id, "negative", "CLIPTextEncode", max_depth=10)
if negative_node_id and negative_node_id in metadata.get(PROMPTS, {}):
params["negative_prompt"] = metadata[PROMPTS][negative_node_id].get("text", "")
else:
# Look for FluxGuidance along the guider path
flux_node_id = MetadataProcessor.trace_node_input(prompt, guider_node_id, "conditioning", "FluxGuidance", max_depth=5)
if flux_node_id and flux_node_id in metadata.get(SAMPLING, {}):
flux_params = metadata[SAMPLING][flux_node_id].get("parameters", {})
params["guidance"] = flux_params.get("guidance")
# Find CLIPTextEncode for positive prompt (through conditioning)
positive_node_id = MetadataProcessor.trace_node_input(prompt, guider_node_id, "conditioning", "CLIPTextEncode", max_depth=10)
if positive_node_id and positive_node_id in metadata.get(PROMPTS, {}):
params["prompt"] = metadata[PROMPTS][positive_node_id].get("text", "")
else:
# Original tracing for standard samplers
# Trace positive prompt - look specifically for CLIPTextEncode
positive_node_id = MetadataProcessor.trace_node_input(prompt, primary_sampler_id, "positive", "CLIPTextEncode", max_depth=10)
if positive_node_id and positive_node_id in metadata.get(PROMPTS, {}):
params["prompt"] = metadata[PROMPTS][positive_node_id].get("text", "")
else:
# If CLIPTextEncode is not found, try to find CLIPTextEncodeFlux
positive_flux_node_id = MetadataProcessor.trace_node_input(prompt, primary_sampler_id, "positive", "CLIPTextEncodeFlux", max_depth=10)
if positive_flux_node_id and positive_flux_node_id in metadata.get(PROMPTS, {}):
params["prompt"] = metadata[PROMPTS][positive_flux_node_id].get("text", "")
# Also extract guidance value if present in the sampling data
if positive_flux_node_id in metadata.get(SAMPLING, {}):
flux_params = metadata[SAMPLING][positive_flux_node_id].get("parameters", {})
if "guidance" in flux_params:
params["guidance"] = flux_params.get("guidance")
# Find any FluxGuidance nodes in the positive conditioning path
flux_node_id = MetadataProcessor.trace_node_input(prompt, primary_sampler_id, "positive", "FluxGuidance", max_depth=5)
if flux_node_id and flux_node_id in metadata.get(SAMPLING, {}):
flux_params = metadata[SAMPLING][flux_node_id].get("parameters", {})
params["guidance"] = flux_params.get("guidance")
# Trace negative prompt - look specifically for CLIPTextEncode
negative_node_id = MetadataProcessor.trace_node_input(prompt, primary_sampler_id, "negative", "CLIPTextEncode", max_depth=10)
if negative_node_id and negative_node_id in metadata.get(PROMPTS, {}):
params["negative_prompt"] = metadata[PROMPTS][negative_node_id].get("text", "")
# Size extraction is same for all sampler types
# Check if the sampler itself has size information (from latent_image)
if primary_sampler_id in metadata.get(SIZE, {}):
width = metadata[SIZE][primary_sampler_id].get("width")
height = metadata[SIZE][primary_sampler_id].get("height")
if width and height:
params["size"] = f"{width}x{height}"
# Extract LoRAs using the standardized format
lora_parts = []
for node_id, lora_info in metadata.get(LORAS, {}).items():
# Access the lora_list from the standardized format
lora_list = lora_info.get("lora_list", [])
for lora in lora_list:
name = lora.get("name", "unknown")
strength = lora.get("strength", 1.0)
lora_parts.append(f"<lora:{name}:{strength}>")
params["loras"] = " ".join(lora_parts)
# Set default clip_skip value
params["clip_skip"] = "1" # Common default
return params
@staticmethod
def to_dict(metadata):
"""Convert extracted metadata to the ComfyUI output.json format"""
if standalone_mode:
# Return empty dictionary in standalone mode
return {}
params = MetadataProcessor.extract_generation_params(metadata)
# Convert all values to strings to match output.json format
for key in params:
if params[key] is not None:
params[key] = str(params[key])
return params
@staticmethod
def to_json(metadata):
"""Convert metadata to JSON string"""
params = MetadataProcessor.to_dict(metadata)
return json.dumps(params, indent=4)

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import time
from nodes import NODE_CLASS_MAPPINGS
from .node_extractors import NODE_EXTRACTORS, GenericNodeExtractor
from .constants import METADATA_CATEGORIES, IMAGES
class MetadataRegistry:
"""A singleton registry to store and retrieve workflow metadata"""
_instance = None
def __new__(cls):
if cls._instance is None:
cls._instance = super().__new__(cls)
cls._instance._reset()
return cls._instance
def _reset(self):
self.current_prompt_id = None
self.current_prompt = None
self.metadata = {}
self.prompt_metadata = {}
self.executed_nodes = set()
# Node-level cache for metadata
self.node_cache = {}
# Limit the number of stored prompts
self.max_prompt_history = 3
# Categories we want to track and retrieve from cache
self.metadata_categories = METADATA_CATEGORIES
def _clean_old_prompts(self):
"""Clean up old prompt metadata, keeping only recent ones"""
if len(self.prompt_metadata) <= self.max_prompt_history:
return
# Sort all prompt_ids by timestamp
sorted_prompts = sorted(
self.prompt_metadata.keys(),
key=lambda pid: self.prompt_metadata[pid].get("timestamp", 0)
)
# Remove oldest records
prompts_to_remove = sorted_prompts[:len(sorted_prompts) - self.max_prompt_history]
for pid in prompts_to_remove:
del self.prompt_metadata[pid]
def start_collection(self, prompt_id):
"""Begin metadata collection for a new prompt"""
self.current_prompt_id = prompt_id
self.executed_nodes = set()
self.prompt_metadata[prompt_id] = {
category: {} for category in METADATA_CATEGORIES
}
# Add additional metadata fields
self.prompt_metadata[prompt_id].update({
"execution_order": [],
"current_prompt": None, # Will store the prompt object
"timestamp": time.time()
})
# Clean up old prompt data
self._clean_old_prompts()
def set_current_prompt(self, prompt):
"""Set the current prompt object reference"""
self.current_prompt = prompt
if self.current_prompt_id and self.current_prompt_id in self.prompt_metadata:
# Store the prompt in the metadata for later relationship tracing
self.prompt_metadata[self.current_prompt_id]["current_prompt"] = prompt
def get_metadata(self, prompt_id=None):
"""Get collected metadata for a prompt"""
key = prompt_id if prompt_id is not None else self.current_prompt_id
if key not in self.prompt_metadata:
return {}
metadata = self.prompt_metadata[key]
# If we have a current prompt object, check for non-executed nodes
prompt_obj = metadata.get("current_prompt")
if prompt_obj and hasattr(prompt_obj, "original_prompt"):
original_prompt = prompt_obj.original_prompt
# Fill in missing metadata from cache for nodes that weren't executed
self._fill_missing_metadata(key, original_prompt)
return self.prompt_metadata.get(key, {})
def _fill_missing_metadata(self, prompt_id, original_prompt):
"""Fill missing metadata from cache for non-executed nodes"""
if not original_prompt:
return
executed_nodes = self.executed_nodes
metadata = self.prompt_metadata[prompt_id]
# Iterate through nodes in the original prompt
for node_id, node_data in original_prompt.items():
# Skip if already executed in this run
if node_id in executed_nodes:
continue
# Get the node type from the prompt (this is the key in NODE_CLASS_MAPPINGS)
prompt_class_type = node_data.get("class_type")
if not prompt_class_type:
continue
# Convert to actual class name (which is what we use in our cache)
class_type = prompt_class_type
if prompt_class_type in NODE_CLASS_MAPPINGS:
class_obj = NODE_CLASS_MAPPINGS[prompt_class_type]
class_type = class_obj.__name__
# Create cache key using the actual class name
cache_key = f"{node_id}:{class_type}"
# Check if this node type is relevant for metadata collection
if class_type in NODE_EXTRACTORS:
# Check if we have cached metadata for this node
if cache_key in self.node_cache:
cached_data = self.node_cache[cache_key]
# Apply cached metadata to the current metadata
for category in self.metadata_categories:
if category in cached_data and node_id in cached_data[category]:
if node_id not in metadata[category]:
metadata[category][node_id] = cached_data[category][node_id]
def record_node_execution(self, node_id, class_type, inputs, outputs):
"""Record information about a node's execution"""
if not self.current_prompt_id:
return
# Add to execution order and mark as executed
if node_id not in self.executed_nodes:
self.executed_nodes.add(node_id)
self.prompt_metadata[self.current_prompt_id]["execution_order"].append(node_id)
# Process inputs to simplify working with them
processed_inputs = {}
for input_name, input_values in inputs.items():
if isinstance(input_values, list) and len(input_values) > 0:
# For single values, just use the first one (most common case)
processed_inputs[input_name] = input_values[0]
else:
processed_inputs[input_name] = input_values
# Extract node-specific metadata
extractor = NODE_EXTRACTORS.get(class_type, GenericNodeExtractor)
extractor.extract(
node_id,
processed_inputs,
outputs,
self.prompt_metadata[self.current_prompt_id]
)
# Cache this node's metadata
self._cache_node_metadata(node_id, class_type)
def update_node_execution(self, node_id, class_type, outputs):
"""Update node metadata with output information"""
if not self.current_prompt_id:
return
# Process outputs to make them more usable
processed_outputs = outputs
# Use the same extractor to update with outputs
extractor = NODE_EXTRACTORS.get(class_type, GenericNodeExtractor)
if hasattr(extractor, 'update'):
extractor.update(
node_id,
processed_outputs,
self.prompt_metadata[self.current_prompt_id]
)
# Update the cached metadata for this node
self._cache_node_metadata(node_id, class_type)
def _cache_node_metadata(self, node_id, class_type):
"""Cache the metadata for a specific node"""
if not self.current_prompt_id or not node_id or not class_type:
return
# Create a cache key combining node_id and class_type
cache_key = f"{node_id}:{class_type}"
# Create a shallow copy of the node's metadata
node_metadata = {}
current_metadata = self.prompt_metadata[self.current_prompt_id]
for category in self.metadata_categories:
if category in current_metadata and node_id in current_metadata[category]:
if category not in node_metadata:
node_metadata[category] = {}
node_metadata[category][node_id] = current_metadata[category][node_id]
# Save to cache if we have any metadata for this node
if any(node_metadata.values()):
self.node_cache[cache_key] = node_metadata
def clear_unused_cache(self):
"""Clean up node_cache entries that are no longer in use"""
# Collect all node_ids currently in prompt_metadata
active_node_ids = set()
for prompt_data in self.prompt_metadata.values():
for category in self.metadata_categories:
if category in prompt_data:
active_node_ids.update(prompt_data[category].keys())
# Find cache keys that are no longer needed
keys_to_remove = []
for cache_key in self.node_cache:
node_id = cache_key.split(':')[0]
if node_id not in active_node_ids:
keys_to_remove.append(cache_key)
# Remove cache entries that are no longer needed
for key in keys_to_remove:
del self.node_cache[key]
def clear_metadata(self, prompt_id=None):
"""Clear metadata for a specific prompt or reset all data"""
if prompt_id is not None:
if prompt_id in self.prompt_metadata:
del self.prompt_metadata[prompt_id]
# Clean up cache after removing prompt
self.clear_unused_cache()
else:
# Reset all data
self._reset()
def get_first_decoded_image(self, prompt_id=None):
"""Get the first decoded image result"""
key = prompt_id if prompt_id is not None else self.current_prompt_id
if key not in self.prompt_metadata:
return None
metadata = self.prompt_metadata[key]
if IMAGES in metadata and "first_decode" in metadata[IMAGES]:
image_data = metadata[IMAGES]["first_decode"]["image"]
# If it's an image batch or tuple, handle various formats
if isinstance(image_data, (list, tuple)) and len(image_data) > 0:
# Return first element of list/tuple
return image_data[0]
# If it's a tensor, return as is for processing in the route handler
return image_data
# If no image is found in the current metadata, try to find it in the cache
# This handles the case where VAEDecode was cached by ComfyUI and not executed
prompt_obj = metadata.get("current_prompt")
if prompt_obj and hasattr(prompt_obj, "original_prompt"):
original_prompt = prompt_obj.original_prompt
for node_id, node_data in original_prompt.items():
class_type = node_data.get("class_type")
if class_type and class_type in NODE_CLASS_MAPPINGS:
class_obj = NODE_CLASS_MAPPINGS[class_type]
class_name = class_obj.__name__
# Check if this is a VAEDecode node
if class_name == "VAEDecode":
# Try to find this node in the cache
cache_key = f"{node_id}:{class_name}"
if cache_key in self.node_cache:
cached_data = self.node_cache[cache_key]
if IMAGES in cached_data and node_id in cached_data[IMAGES]:
image_data = cached_data[IMAGES][node_id]["image"]
# Handle different image formats
if isinstance(image_data, (list, tuple)) and len(image_data) > 0:
return image_data[0]
return image_data
return None

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import os
from .constants import MODELS, PROMPTS, SAMPLING, LORAS, SIZE, IMAGES
class NodeMetadataExtractor:
"""Base class for node-specific metadata extraction"""
@staticmethod
def extract(node_id, inputs, outputs, metadata):
"""Extract metadata from node inputs/outputs"""
pass
@staticmethod
def update(node_id, outputs, metadata):
"""Update metadata with node outputs after execution"""
pass
class GenericNodeExtractor(NodeMetadataExtractor):
"""Default extractor for nodes without specific handling"""
@staticmethod
def extract(node_id, inputs, outputs, metadata):
pass
class CheckpointLoaderExtractor(NodeMetadataExtractor):
@staticmethod
def extract(node_id, inputs, outputs, metadata):
if not inputs or "ckpt_name" not in inputs:
return
model_name = inputs.get("ckpt_name")
if model_name:
metadata[MODELS][node_id] = {
"name": model_name,
"type": "checkpoint",
"node_id": node_id
}
class CLIPTextEncodeExtractor(NodeMetadataExtractor):
@staticmethod
def extract(node_id, inputs, outputs, metadata):
if not inputs or "text" not in inputs:
return
text = inputs.get("text", "")
metadata[PROMPTS][node_id] = {
"text": text,
"node_id": node_id
}
class SamplerExtractor(NodeMetadataExtractor):
@staticmethod
def extract(node_id, inputs, outputs, metadata):
if not inputs:
return
sampling_params = {}
for key in ["seed", "steps", "cfg", "sampler_name", "scheduler", "denoise"]:
if key in inputs:
sampling_params[key] = inputs[key]
metadata[SAMPLING][node_id] = {
"parameters": sampling_params,
"node_id": node_id
}
# Extract latent image dimensions if available
if "latent_image" in inputs and inputs["latent_image"] is not None:
latent = inputs["latent_image"]
if isinstance(latent, dict) and "samples" in latent:
# Extract dimensions from latent tensor
samples = latent["samples"]
if hasattr(samples, "shape") and len(samples.shape) >= 3:
# Correct shape interpretation: [batch_size, channels, height/8, width/8]
# Multiply by 8 to get actual pixel dimensions
height = int(samples.shape[2] * 8)
width = int(samples.shape[3] * 8)
if SIZE not in metadata:
metadata[SIZE] = {}
metadata[SIZE][node_id] = {
"width": width,
"height": height,
"node_id": node_id
}
class KSamplerAdvancedExtractor(NodeMetadataExtractor):
@staticmethod
def extract(node_id, inputs, outputs, metadata):
if not inputs:
return
sampling_params = {}
for key in ["noise_seed", "steps", "cfg", "sampler_name", "scheduler", "add_noise"]:
if key in inputs:
sampling_params[key] = inputs[key]
metadata[SAMPLING][node_id] = {
"parameters": sampling_params,
"node_id": node_id
}
# Extract latent image dimensions if available
if "latent_image" in inputs and inputs["latent_image"] is not None:
latent = inputs["latent_image"]
if isinstance(latent, dict) and "samples" in latent:
# Extract dimensions from latent tensor
samples = latent["samples"]
if hasattr(samples, "shape") and len(samples.shape) >= 3:
# Correct shape interpretation: [batch_size, channels, height/8, width/8]
# Multiply by 8 to get actual pixel dimensions
height = int(samples.shape[2] * 8)
width = int(samples.shape[3] * 8)
if SIZE not in metadata:
metadata[SIZE] = {}
metadata[SIZE][node_id] = {
"width": width,
"height": height,
"node_id": node_id
}
class LoraLoaderExtractor(NodeMetadataExtractor):
@staticmethod
def extract(node_id, inputs, outputs, metadata):
if not inputs or "lora_name" not in inputs:
return
lora_name = inputs.get("lora_name")
# Extract base filename without extension from path
lora_name = os.path.splitext(os.path.basename(lora_name))[0]
strength_model = round(float(inputs.get("strength_model", 1.0)), 2)
# Use the standardized format with lora_list
metadata[LORAS][node_id] = {
"lora_list": [
{
"name": lora_name,
"strength": strength_model
}
],
"node_id": node_id
}
class ImageSizeExtractor(NodeMetadataExtractor):
@staticmethod
def extract(node_id, inputs, outputs, metadata):
if not inputs:
return
width = inputs.get("width", 512)
height = inputs.get("height", 512)
if SIZE not in metadata:
metadata[SIZE] = {}
metadata[SIZE][node_id] = {
"width": width,
"height": height,
"node_id": node_id
}
class LoraLoaderManagerExtractor(NodeMetadataExtractor):
@staticmethod
def extract(node_id, inputs, outputs, metadata):
if not inputs:
return
active_loras = []
# Process lora_stack if available
if "lora_stack" in inputs:
lora_stack = inputs.get("lora_stack", [])
for lora_path, model_strength, clip_strength in lora_stack:
# Extract lora name from path (following the format in lora_loader.py)
lora_name = os.path.splitext(os.path.basename(lora_path))[0]
active_loras.append({
"name": lora_name,
"strength": model_strength
})
# Process loras from inputs
if "loras" in inputs:
loras_data = inputs.get("loras", [])
# Handle new format: {'loras': {'__value__': [...]}}
if isinstance(loras_data, dict) and '__value__' in loras_data:
loras_list = loras_data['__value__']
# Handle old format: {'loras': [...]}
elif isinstance(loras_data, list):
loras_list = loras_data
else:
loras_list = []
# Filter for active loras
for lora in loras_list:
if isinstance(lora, dict) and lora.get("active", True) and not lora.get("_isDummy", False):
active_loras.append({
"name": lora.get("name", ""),
"strength": float(lora.get("strength", 1.0))
})
if active_loras:
metadata[LORAS][node_id] = {
"lora_list": active_loras,
"node_id": node_id
}
class FluxGuidanceExtractor(NodeMetadataExtractor):
@staticmethod
def extract(node_id, inputs, outputs, metadata):
if not inputs or "guidance" not in inputs:
return
guidance_value = inputs.get("guidance")
# Store the guidance value in SAMPLING category
if node_id not in metadata[SAMPLING]:
metadata[SAMPLING][node_id] = {"parameters": {}, "node_id": node_id}
metadata[SAMPLING][node_id]["parameters"]["guidance"] = guidance_value
class UNETLoaderExtractor(NodeMetadataExtractor):
@staticmethod
def extract(node_id, inputs, outputs, metadata):
if not inputs or "unet_name" not in inputs:
return
model_name = inputs.get("unet_name")
if model_name:
metadata[MODELS][node_id] = {
"name": model_name,
"type": "checkpoint",
"node_id": node_id
}
class VAEDecodeExtractor(NodeMetadataExtractor):
@staticmethod
def extract(node_id, inputs, outputs, metadata):
pass
@staticmethod
def update(node_id, outputs, metadata):
# Ensure IMAGES category exists
if IMAGES not in metadata:
metadata[IMAGES] = {}
# Save image data under node ID index to be captured by caching mechanism
metadata[IMAGES][node_id] = {
"node_id": node_id,
"image": outputs
}
# Only set first_decode if it hasn't been recorded yet
if "first_decode" not in metadata[IMAGES]:
metadata[IMAGES]["first_decode"] = metadata[IMAGES][node_id]
class KSamplerSelectExtractor(NodeMetadataExtractor):
@staticmethod
def extract(node_id, inputs, outputs, metadata):
if not inputs or "sampler_name" not in inputs:
return
sampling_params = {}
if "sampler_name" in inputs:
sampling_params["sampler_name"] = inputs["sampler_name"]
metadata[SAMPLING][node_id] = {
"parameters": sampling_params,
"node_id": node_id
}
class BasicSchedulerExtractor(NodeMetadataExtractor):
@staticmethod
def extract(node_id, inputs, outputs, metadata):
if not inputs:
return
sampling_params = {}
for key in ["scheduler", "steps", "denoise"]:
if key in inputs:
sampling_params[key] = inputs[key]
metadata[SAMPLING][node_id] = {
"parameters": sampling_params,
"node_id": node_id
}
class SamplerCustomAdvancedExtractor(NodeMetadataExtractor):
@staticmethod
def extract(node_id, inputs, outputs, metadata):
if not inputs:
return
sampling_params = {}
# Handle noise.seed as seed
if "noise" in inputs and inputs["noise"] is not None and hasattr(inputs["noise"], "seed"):
noise = inputs["noise"]
sampling_params["seed"] = noise.seed
metadata[SAMPLING][node_id] = {
"parameters": sampling_params,
"node_id": node_id
}
# Extract latent image dimensions if available
if "latent_image" in inputs and inputs["latent_image"] is not None:
latent = inputs["latent_image"]
if isinstance(latent, dict) and "samples" in latent:
# Extract dimensions from latent tensor
samples = latent["samples"]
if hasattr(samples, "shape") and len(samples.shape) >= 3:
# Correct shape interpretation: [batch_size, channels, height/8, width/8]
# Multiply by 8 to get actual pixel dimensions
height = int(samples.shape[2] * 8)
width = int(samples.shape[3] * 8)
if SIZE not in metadata:
metadata[SIZE] = {}
metadata[SIZE][node_id] = {
"width": width,
"height": height,
"node_id": node_id
}
import json
class CLIPTextEncodeFluxExtractor(NodeMetadataExtractor):
@staticmethod
def extract(node_id, inputs, outputs, metadata):
if not inputs or "clip_l" not in inputs or "t5xxl" not in inputs:
return
clip_l_text = inputs.get("clip_l", "")
t5xxl_text = inputs.get("t5xxl", "")
# Create JSON string with T5 content first, then CLIP-L
combined_text = json.dumps({
"T5": t5xxl_text,
"CLIP-L": clip_l_text
})
metadata[PROMPTS][node_id] = {
"text": combined_text,
"node_id": node_id
}
# Extract guidance value if available
if "guidance" in inputs:
guidance_value = inputs.get("guidance")
# Store the guidance value in SAMPLING category
if SAMPLING not in metadata:
metadata[SAMPLING] = {}
if node_id not in metadata[SAMPLING]:
metadata[SAMPLING][node_id] = {"parameters": {}, "node_id": node_id}
metadata[SAMPLING][node_id]["parameters"]["guidance"] = guidance_value
class CFGGuiderExtractor(NodeMetadataExtractor):
@staticmethod
def extract(node_id, inputs, outputs, metadata):
if not inputs or "cfg" not in inputs:
return
cfg_value = inputs.get("cfg")
# Store the cfg value in SAMPLING category
if SAMPLING not in metadata:
metadata[SAMPLING] = {}
if node_id not in metadata[SAMPLING]:
metadata[SAMPLING][node_id] = {"parameters": {}, "node_id": node_id}
metadata[SAMPLING][node_id]["parameters"]["cfg"] = cfg_value
# Registry of node-specific extractors
NODE_EXTRACTORS = {
# Sampling
"KSampler": SamplerExtractor,
"KSamplerAdvanced": KSamplerAdvancedExtractor,
"SamplerCustomAdvanced": SamplerCustomAdvancedExtractor, # Updated to use dedicated extractor
# Sampling Selectors
"KSamplerSelect": KSamplerSelectExtractor, # Add KSamplerSelect
"BasicScheduler": BasicSchedulerExtractor, # Add BasicScheduler
# Loaders
"CheckpointLoaderSimple": CheckpointLoaderExtractor,
"UNETLoader": UNETLoaderExtractor, # Updated to use dedicated extractor
"LoraLoader": LoraLoaderExtractor,
"LoraManagerLoader": LoraLoaderManagerExtractor,
# Conditioning
"CLIPTextEncode": CLIPTextEncodeExtractor,
"CLIPTextEncodeFlux": CLIPTextEncodeFluxExtractor, # Add CLIPTextEncodeFlux
# Latent
"EmptyLatentImage": ImageSizeExtractor,
# Flux
"FluxGuidance": FluxGuidanceExtractor, # Add FluxGuidance
"CFGGuider": CFGGuiderExtractor, # Add CFGGuider
# Image
"VAEDecode": VAEDecodeExtractor, # Added VAEDecode extractor
# Add other nodes as needed
}

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import logging
from ..metadata_collector.metadata_processor import MetadataProcessor
logger = logging.getLogger(__name__)
class DebugMetadata:
NAME = "Debug Metadata (LoraManager)"
CATEGORY = "Lora Manager/utils"
DESCRIPTION = "Debug node to verify metadata_processor functionality"
@classmethod
def INPUT_TYPES(cls):
return {
"required": {
"images": ("IMAGE",),
},
}
RETURN_TYPES = ("STRING",)
RETURN_NAMES = ("metadata_json",)
FUNCTION = "process_metadata"
def process_metadata(self, images):
try:
# Get the current execution context's metadata
from ..metadata_collector import get_metadata
metadata = get_metadata()
# Use the MetadataProcessor to convert it to JSON string
metadata_json = MetadataProcessor.to_json(metadata)
return (metadata_json,)
except Exception as e:
logger.error(f"Error processing metadata: {e}")
return ("{}",) # Return empty JSON object in case of error

View File

@@ -1,11 +1,8 @@
import logging
from nodes import LoraLoader
from comfy.comfy_types import IO # type: ignore
from ..services.lora_scanner import LoraScanner
from ..config import config
import asyncio
import os
from .utils import FlexibleOptionalInputType, any_type
from .utils import FlexibleOptionalInputType, any_type, get_lora_info, extract_lora_name, get_loras_list
logger = logging.getLogger(__name__)
@@ -32,48 +29,6 @@ class LoraManagerLoader:
RETURN_TYPES = ("MODEL", "CLIP", IO.STRING, IO.STRING)
RETURN_NAMES = ("MODEL", "CLIP", "trigger_words", "loaded_loras")
FUNCTION = "load_loras"
async def get_lora_info(self, lora_name):
"""Get the lora path and trigger words from cache"""
scanner = await LoraScanner.get_instance()
cache = await scanner.get_cached_data()
for item in cache.raw_data:
if item.get('file_name') == lora_name:
file_path = item.get('file_path')
if file_path:
for root in config.loras_roots:
root = root.replace(os.sep, '/')
if file_path.startswith(root):
relative_path = os.path.relpath(file_path, root).replace(os.sep, '/')
# Get trigger words from civitai metadata
civitai = item.get('civitai', {})
trigger_words = civitai.get('trainedWords', []) if civitai else []
return relative_path, trigger_words
return lora_name, [] # Fallback if not found
def extract_lora_name(self, lora_path):
"""Extract the lora name from a lora path (e.g., 'IL\\aorunIllstrious.safetensors' -> 'aorunIllstrious')"""
# Get the basename without extension
basename = os.path.basename(lora_path)
return os.path.splitext(basename)[0]
def _get_loras_list(self, kwargs):
"""Helper to extract loras list from either old or new kwargs format"""
if 'loras' not in kwargs:
return []
loras_data = kwargs['loras']
# Handle new format: {'loras': {'__value__': [...]}}
if isinstance(loras_data, dict) and '__value__' in loras_data:
return loras_data['__value__']
# Handle old format: {'loras': [...]}
elif isinstance(loras_data, list):
return loras_data
# Unexpected format
else:
logger.warning(f"Unexpected loras format: {type(loras_data)}")
return []
def load_loras(self, model, text, **kwargs):
"""Loads multiple LoRAs based on the kwargs input and lora_stack."""
@@ -89,27 +44,38 @@ class LoraManagerLoader:
model, clip = LoraLoader().load_lora(model, clip, lora_path, model_strength, clip_strength)
# Extract lora name for trigger words lookup
lora_name = self.extract_lora_name(lora_path)
_, trigger_words = asyncio.run(self.get_lora_info(lora_name))
lora_name = extract_lora_name(lora_path)
_, trigger_words = asyncio.run(get_lora_info(lora_name))
all_trigger_words.extend(trigger_words)
loaded_loras.append(f"{lora_name}: {model_strength}")
# Add clip strength to output if different from model strength
if abs(model_strength - clip_strength) > 0.001:
loaded_loras.append(f"{lora_name}: {model_strength},{clip_strength}")
else:
loaded_loras.append(f"{lora_name}: {model_strength}")
# Then process loras from kwargs with support for both old and new formats
loras_list = self._get_loras_list(kwargs)
loras_list = get_loras_list(kwargs)
for lora in loras_list:
if not lora.get('active', False):
continue
lora_name = lora['name']
strength = float(lora['strength'])
model_strength = float(lora['strength'])
# Get clip strength - use model strength as default if not specified
clip_strength = float(lora.get('clipStrength', model_strength))
# Get lora path and trigger words
lora_path, trigger_words = asyncio.run(self.get_lora_info(lora_name))
lora_path, trigger_words = asyncio.run(get_lora_info(lora_name))
# Apply the LoRA using the resolved path
model, clip = LoraLoader().load_lora(model, clip, lora_path, strength, strength)
loaded_loras.append(f"{lora_name}: {strength}")
# Apply the LoRA using the resolved path with separate strengths
model, clip = LoraLoader().load_lora(model, clip, lora_path, model_strength, clip_strength)
# Include clip strength in output if different from model strength
if abs(model_strength - clip_strength) > 0.001:
loaded_loras.append(f"{lora_name}: {model_strength},{clip_strength}")
else:
loaded_loras.append(f"{lora_name}: {model_strength}")
# Add trigger words to collection
all_trigger_words.extend(trigger_words)
@@ -117,8 +83,23 @@ class LoraManagerLoader:
# use ',, ' to separate trigger words for group mode
trigger_words_text = ",, ".join(all_trigger_words) if all_trigger_words else ""
# Format loaded_loras as <lora:lora_name:strength> separated by spaces
formatted_loras = " ".join([f"<lora:{name.split(':')[0].strip()}:{str(strength).strip()}>"
for name, strength in [item.split(':') for item in loaded_loras]])
# Format loaded_loras with support for both formats
formatted_loras = []
for item in loaded_loras:
parts = item.split(":")
lora_name = parts[0].strip()
strength_parts = parts[1].strip().split(",")
if len(strength_parts) > 1:
# Different model and clip strengths
model_str = strength_parts[0].strip()
clip_str = strength_parts[1].strip()
formatted_loras.append(f"<lora:{lora_name}:{model_str}:{clip_str}>")
else:
# Same strength for both
model_str = strength_parts[0].strip()
formatted_loras.append(f"<lora:{lora_name}:{model_str}>")
formatted_loras_text = " ".join(formatted_loras)
return (model, clip, trigger_words_text, formatted_loras)
return (model, clip, trigger_words_text, formatted_loras_text)

View File

@@ -3,7 +3,7 @@ from ..services.lora_scanner import LoraScanner
from ..config import config
import asyncio
import os
from .utils import FlexibleOptionalInputType, any_type
from .utils import FlexibleOptionalInputType, any_type, get_lora_info, extract_lora_name, get_loras_list
import logging
logger = logging.getLogger(__name__)
@@ -29,48 +29,6 @@ class LoraStacker:
RETURN_TYPES = ("LORA_STACK", IO.STRING, IO.STRING)
RETURN_NAMES = ("LORA_STACK", "trigger_words", "active_loras")
FUNCTION = "stack_loras"
async def get_lora_info(self, lora_name):
"""Get the lora path and trigger words from cache"""
scanner = await LoraScanner.get_instance()
cache = await scanner.get_cached_data()
for item in cache.raw_data:
if item.get('file_name') == lora_name:
file_path = item.get('file_path')
if file_path:
for root in config.loras_roots:
root = root.replace(os.sep, '/')
if file_path.startswith(root):
relative_path = os.path.relpath(file_path, root).replace(os.sep, '/')
# Get trigger words from civitai metadata
civitai = item.get('civitai', {})
trigger_words = civitai.get('trainedWords', []) if civitai else []
return relative_path, trigger_words
return lora_name, [] # Fallback if not found
def extract_lora_name(self, lora_path):
"""Extract the lora name from a lora path (e.g., 'IL\\aorunIllstrious.safetensors' -> 'aorunIllstrious')"""
# Get the basename without extension
basename = os.path.basename(lora_path)
return os.path.splitext(basename)[0]
def _get_loras_list(self, kwargs):
"""Helper to extract loras list from either old or new kwargs format"""
if 'loras' not in kwargs:
return []
loras_data = kwargs['loras']
# Handle new format: {'loras': {'__value__': [...]}}
if isinstance(loras_data, dict) and '__value__' in loras_data:
return loras_data['__value__']
# Handle old format: {'loras': [...]}
elif isinstance(loras_data, list):
return loras_data
# Unexpected format
else:
logger.warning(f"Unexpected loras format: {type(loras_data)}")
return []
def stack_loras(self, text, **kwargs):
"""Stacks multiple LoRAs based on the kwargs input without loading them."""
@@ -80,39 +38,49 @@ class LoraStacker:
# Process existing lora_stack if available
lora_stack = kwargs.get('lora_stack', None)
if lora_stack:
if (lora_stack):
stack.extend(lora_stack)
# Get trigger words from existing stack entries
for lora_path, _, _ in lora_stack:
lora_name = self.extract_lora_name(lora_path)
_, trigger_words = asyncio.run(self.get_lora_info(lora_name))
lora_name = extract_lora_name(lora_path)
_, trigger_words = asyncio.run(get_lora_info(lora_name))
all_trigger_words.extend(trigger_words)
# Process loras from kwargs with support for both old and new formats
loras_list = self._get_loras_list(kwargs)
loras_list = get_loras_list(kwargs)
for lora in loras_list:
if not lora.get('active', False):
continue
lora_name = lora['name']
model_strength = float(lora['strength'])
clip_strength = model_strength # Using same strength for both as in the original loader
# Get clip strength - use model strength as default if not specified
clip_strength = float(lora.get('clipStrength', model_strength))
# Get lora path and trigger words
lora_path, trigger_words = asyncio.run(self.get_lora_info(lora_name))
lora_path, trigger_words = asyncio.run(get_lora_info(lora_name))
# Add to stack without loading
# replace '/' with os.sep to avoid different OS path format
stack.append((lora_path.replace('/', os.sep), model_strength, clip_strength))
active_loras.append((lora_name, model_strength))
active_loras.append((lora_name, model_strength, clip_strength))
# Add trigger words to collection
all_trigger_words.extend(trigger_words)
# use ',, ' to separate trigger words for group mode
trigger_words_text = ",, ".join(all_trigger_words) if all_trigger_words else ""
# Format active_loras as <lora:lora_name:strength> separated by spaces
active_loras_text = " ".join([f"<lora:{name}:{str(strength).strip()}>"
for name, strength in active_loras])
# Format active_loras with support for both formats
formatted_loras = []
for name, model_strength, clip_strength in active_loras:
if abs(model_strength - clip_strength) > 0.001:
# Different model and clip strengths
formatted_loras.append(f"<lora:{name}:{str(model_strength).strip()}:{str(clip_strength).strip()}>")
else:
# Same strength for both
formatted_loras.append(f"<lora:{name}:{str(model_strength).strip()}>")
active_loras_text = " ".join(formatted_loras)
return (stack, trigger_words_text, active_loras_text)

View File

@@ -1,16 +1,44 @@
import json
from server import PromptServer # type: ignore
import os
import asyncio
import re
import numpy as np
import folder_paths # type: ignore
from ..services.lora_scanner import LoraScanner
from ..services.checkpoint_scanner import CheckpointScanner
from ..metadata_collector.metadata_processor import MetadataProcessor
from ..metadata_collector import get_metadata
from PIL import Image, PngImagePlugin
import piexif
class SaveImage:
NAME = "Save Image (LoraManager)"
CATEGORY = "Lora Manager/utils"
DESCRIPTION = "Experimental node to display image preview and print prompt and extra_pnginfo"
DESCRIPTION = "Save images with embedded generation metadata in compatible format"
def __init__(self):
self.output_dir = folder_paths.get_output_directory()
self.type = "output"
self.prefix_append = ""
self.compress_level = 4
self.counter = 0
# Add pattern format regex for filename substitution
pattern_format = re.compile(r"(%[^%]+%)")
@classmethod
def INPUT_TYPES(cls):
return {
"required": {
"image": ("IMAGE",),
"images": ("IMAGE",),
"filename_prefix": ("STRING", {"default": "ComfyUI"}),
"file_format": (["png", "jpeg", "webp"],),
},
"optional": {
"lossless_webp": ("BOOLEAN", {"default": False}),
"quality": ("INT", {"default": 100, "min": 1, "max": 100}),
"embed_workflow": ("BOOLEAN", {"default": False}),
"add_counter_to_filename": ("BOOLEAN", {"default": True}),
},
"hidden": {
"prompt": "PROMPT",
@@ -19,23 +47,381 @@ class SaveImage:
}
RETURN_TYPES = ("IMAGE",)
RETURN_NAMES = ("image",)
RETURN_NAMES = ("images",)
FUNCTION = "process_image"
OUTPUT_NODE = True
def process_image(self, image, prompt=None, extra_pnginfo=None):
# Print the prompt information
print("SaveImage Node - Prompt:")
if prompt:
print(json.dumps(prompt, indent=2))
else:
print("No prompt information available")
async def get_lora_hash(self, lora_name):
"""Get the lora hash from cache"""
scanner = await LoraScanner.get_instance()
# Print the extra_pnginfo
print("\nSaveImage Node - Extra PNG Info:")
if extra_pnginfo:
print(json.dumps(extra_pnginfo, indent=2))
else:
print("No extra PNG info available")
# Use the new direct filename lookup method
hash_value = scanner.get_hash_by_filename(lora_name)
if hash_value:
return hash_value
# Fallback to old method for compatibility
cache = await scanner.get_cached_data()
for item in cache.raw_data:
if item.get('file_name') == lora_name:
return item.get('sha256')
return None
async def get_checkpoint_hash(self, checkpoint_path):
"""Get the checkpoint hash from cache"""
scanner = await CheckpointScanner.get_instance()
# Return the image unchanged
return (image,)
if not checkpoint_path:
return None
# Extract basename without extension
checkpoint_name = os.path.basename(checkpoint_path)
checkpoint_name = os.path.splitext(checkpoint_name)[0]
# Try direct filename lookup first
hash_value = scanner.get_hash_by_filename(checkpoint_name)
if hash_value:
return hash_value
# Fallback to old method for compatibility
cache = await scanner.get_cached_data()
normalized_path = checkpoint_path.replace('\\', '/')
for item in cache.raw_data:
if item.get('file_name') == checkpoint_name and item.get('file_path').endswith(normalized_path):
return item.get('sha256')
return None
async def format_metadata(self, metadata_dict):
"""Format metadata in the requested format similar to userComment example"""
if not metadata_dict:
return ""
# Helper function to only add parameter if value is not None
def add_param_if_not_none(param_list, label, value):
if value is not None:
param_list.append(f"{label}: {value}")
# Extract the prompt and negative prompt
prompt = metadata_dict.get('prompt', '')
negative_prompt = metadata_dict.get('negative_prompt', '')
# Extract loras from the prompt if present
loras_text = metadata_dict.get('loras', '')
lora_hashes = {}
# If loras are found, add them on a new line after the prompt
if loras_text:
prompt_with_loras = f"{prompt}\n{loras_text}"
# Extract lora names from the format <lora:name:strength>
lora_matches = re.findall(r'<lora:([^:]+):([^>]+)>', loras_text)
# Get hash for each lora
for lora_name, strength in lora_matches:
hash_value = await self.get_lora_hash(lora_name)
if hash_value:
lora_hashes[lora_name] = hash_value
else:
prompt_with_loras = prompt
# Format the first part (prompt and loras)
metadata_parts = [prompt_with_loras]
# Add negative prompt
if negative_prompt:
metadata_parts.append(f"Negative prompt: {negative_prompt}")
# Format the second part (generation parameters)
params = []
# Add standard parameters in the correct order
if 'steps' in metadata_dict:
add_param_if_not_none(params, "Steps", metadata_dict.get('steps'))
# Combine sampler and scheduler information
sampler_name = None
scheduler_name = None
if 'sampler' in metadata_dict:
sampler = metadata_dict.get('sampler')
# Convert ComfyUI sampler names to user-friendly names
sampler_mapping = {
'euler': 'Euler',
'euler_ancestral': 'Euler a',
'dpm_2': 'DPM2',
'dpm_2_ancestral': 'DPM2 a',
'heun': 'Heun',
'dpm_fast': 'DPM fast',
'dpm_adaptive': 'DPM adaptive',
'lms': 'LMS',
'dpmpp_2s_ancestral': 'DPM++ 2S a',
'dpmpp_sde': 'DPM++ SDE',
'dpmpp_sde_gpu': 'DPM++ SDE',
'dpmpp_2m': 'DPM++ 2M',
'dpmpp_2m_sde': 'DPM++ 2M SDE',
'dpmpp_2m_sde_gpu': 'DPM++ 2M SDE',
'ddim': 'DDIM'
}
sampler_name = sampler_mapping.get(sampler, sampler)
if 'scheduler' in metadata_dict:
scheduler = metadata_dict.get('scheduler')
scheduler_mapping = {
'normal': 'Simple',
'karras': 'Karras',
'exponential': 'Exponential',
'sgm_uniform': 'SGM Uniform',
'sgm_quadratic': 'SGM Quadratic'
}
scheduler_name = scheduler_mapping.get(scheduler, scheduler)
# Add combined sampler and scheduler information
if sampler_name:
if scheduler_name:
params.append(f"Sampler: {sampler_name} {scheduler_name}")
else:
params.append(f"Sampler: {sampler_name}")
# CFG scale (Use guidance if available, otherwise fall back to cfg_scale or cfg)
if 'guidance' in metadata_dict:
add_param_if_not_none(params, "CFG scale", metadata_dict.get('guidance'))
elif 'cfg_scale' in metadata_dict:
add_param_if_not_none(params, "CFG scale", metadata_dict.get('cfg_scale'))
elif 'cfg' in metadata_dict:
add_param_if_not_none(params, "CFG scale", metadata_dict.get('cfg'))
# Seed
if 'seed' in metadata_dict:
add_param_if_not_none(params, "Seed", metadata_dict.get('seed'))
# Size
if 'size' in metadata_dict:
add_param_if_not_none(params, "Size", metadata_dict.get('size'))
# Model info
if 'checkpoint' in metadata_dict:
# Ensure checkpoint is a string before processing
checkpoint = metadata_dict.get('checkpoint')
if checkpoint is not None:
# Get model hash
model_hash = await self.get_checkpoint_hash(checkpoint)
# Extract basename without path
checkpoint_name = os.path.basename(checkpoint)
# Remove extension if present
checkpoint_name = os.path.splitext(checkpoint_name)[0]
# Add model hash if available
if model_hash:
params.append(f"Model hash: {model_hash[:10]}, Model: {checkpoint_name}")
else:
params.append(f"Model: {checkpoint_name}")
# Add LoRA hashes if available
if lora_hashes:
lora_hash_parts = []
for lora_name, hash_value in lora_hashes.items():
lora_hash_parts.append(f"{lora_name}: {hash_value}")
if lora_hash_parts:
params.append(f"Lora hashes: \"{', '.join(lora_hash_parts)}\"")
# Combine all parameters with commas
metadata_parts.append(", ".join(params))
# Join all parts with a new line
return "\n".join(metadata_parts)
# credit to nkchocoai
# Add format_filename method to handle pattern substitution
def format_filename(self, filename, metadata_dict):
"""Format filename with metadata values"""
if not metadata_dict:
return filename
result = re.findall(self.pattern_format, filename)
for segment in result:
parts = segment.replace("%", "").split(":")
key = parts[0]
if key == "seed" and 'seed' in metadata_dict:
filename = filename.replace(segment, str(metadata_dict.get('seed', '')))
elif key == "width" and 'size' in metadata_dict:
size = metadata_dict.get('size', 'x')
w = size.split('x')[0] if isinstance(size, str) else size[0]
filename = filename.replace(segment, str(w))
elif key == "height" and 'size' in metadata_dict:
size = metadata_dict.get('size', 'x')
h = size.split('x')[1] if isinstance(size, str) else size[1]
filename = filename.replace(segment, str(h))
elif key == "pprompt" and 'prompt' in metadata_dict:
prompt = metadata_dict.get('prompt', '').replace("\n", " ")
if len(parts) >= 2:
length = int(parts[1])
prompt = prompt[:length]
filename = filename.replace(segment, prompt.strip())
elif key == "nprompt" and 'negative_prompt' in metadata_dict:
prompt = metadata_dict.get('negative_prompt', '').replace("\n", " ")
if len(parts) >= 2:
length = int(parts[1])
prompt = prompt[:length]
filename = filename.replace(segment, prompt.strip())
elif key == "model" and 'checkpoint' in metadata_dict:
model = metadata_dict.get('checkpoint', '')
model = os.path.splitext(os.path.basename(model))[0]
if len(parts) >= 2:
length = int(parts[1])
model = model[:length]
filename = filename.replace(segment, model)
elif key == "date":
from datetime import datetime
now = datetime.now()
date_table = {
"yyyy": f"{now.year:04d}",
"yy": f"{now.year % 100:02d}",
"MM": f"{now.month:02d}",
"dd": f"{now.day:02d}",
"hh": f"{now.hour:02d}",
"mm": f"{now.minute:02d}",
"ss": f"{now.second:02d}",
}
if len(parts) >= 2:
date_format = parts[1]
for k, v in date_table.items():
date_format = date_format.replace(k, v)
filename = filename.replace(segment, date_format)
else:
date_format = "yyyyMMddhhmmss"
for k, v in date_table.items():
date_format = date_format.replace(k, v)
filename = filename.replace(segment, date_format)
return filename
def save_images(self, images, filename_prefix, file_format, prompt=None, extra_pnginfo=None,
lossless_webp=True, quality=100, embed_workflow=False, add_counter_to_filename=True):
"""Save images with metadata"""
results = []
# Get metadata using the metadata collector
raw_metadata = get_metadata()
metadata_dict = MetadataProcessor.to_dict(raw_metadata)
# Get or create metadata asynchronously
metadata = asyncio.run(self.format_metadata(metadata_dict))
# Process filename_prefix with pattern substitution
filename_prefix = self.format_filename(filename_prefix, metadata_dict)
# Get initial save path info once for the batch
full_output_folder, filename, counter, subfolder, processed_prefix = folder_paths.get_save_image_path(
filename_prefix, self.output_dir, images[0].shape[1], images[0].shape[0]
)
# Create directory if it doesn't exist
if not os.path.exists(full_output_folder):
os.makedirs(full_output_folder, exist_ok=True)
# Process each image with incrementing counter
for i, image in enumerate(images):
# Convert the tensor image to numpy array
img = 255. * image.cpu().numpy()
img = Image.fromarray(np.clip(img, 0, 255).astype(np.uint8))
# Generate filename with counter if needed
base_filename = filename
if add_counter_to_filename:
# Use counter + i to ensure unique filenames for all images in batch
current_counter = counter + i
base_filename += f"_{current_counter:05}_"
# Set file extension and prepare saving parameters
if file_format == "png":
file = base_filename + ".png"
file_extension = ".png"
# Remove "optimize": True to match built-in node behavior
save_kwargs = {"compress_level": self.compress_level}
pnginfo = PngImagePlugin.PngInfo()
elif file_format == "jpeg":
file = base_filename + ".jpg"
file_extension = ".jpg"
save_kwargs = {"quality": quality, "optimize": True}
elif file_format == "webp":
file = base_filename + ".webp"
file_extension = ".webp"
# Add optimization param to control performance
save_kwargs = {"quality": quality, "lossless": lossless_webp, "method": 0}
# Full save path
file_path = os.path.join(full_output_folder, file)
# Save the image with metadata
try:
if file_format == "png":
if metadata:
pnginfo.add_text("parameters", metadata)
if embed_workflow and extra_pnginfo is not None:
workflow_json = json.dumps(extra_pnginfo["workflow"])
pnginfo.add_text("workflow", workflow_json)
save_kwargs["pnginfo"] = pnginfo
img.save(file_path, format="PNG", **save_kwargs)
elif file_format == "jpeg":
# For JPEG, use piexif
if metadata:
try:
exif_dict = {'Exif': {piexif.ExifIFD.UserComment: b'UNICODE\0' + metadata.encode('utf-16be')}}
exif_bytes = piexif.dump(exif_dict)
save_kwargs["exif"] = exif_bytes
except Exception as e:
print(f"Error adding EXIF data: {e}")
img.save(file_path, format="JPEG", **save_kwargs)
elif file_format == "webp":
# For WebP, also use piexif for metadata
if metadata:
try:
exif_dict = {'Exif': {piexif.ExifIFD.UserComment: b'UNICODE\0' + metadata.encode('utf-16be')}}
exif_bytes = piexif.dump(exif_dict)
save_kwargs["exif"] = exif_bytes
except Exception as e:
print(f"Error adding EXIF data: {e}")
img.save(file_path, format="WEBP", **save_kwargs)
results.append({
"filename": file,
"subfolder": subfolder,
"type": self.type
})
except Exception as e:
print(f"Error saving image: {e}")
return results
def process_image(self, images, filename_prefix="ComfyUI", file_format="png", prompt=None, extra_pnginfo=None,
lossless_webp=True, quality=100, embed_workflow=False, add_counter_to_filename=True):
"""Process and save image with metadata"""
# Make sure the output directory exists
os.makedirs(self.output_dir, exist_ok=True)
# Ensure images is always a list of images
if len(images.shape) == 3: # Single image (height, width, channels)
images = [images]
else: # Multiple images (batch, height, width, channels)
images = [img for img in images]
# Save all images
results = self.save_images(
images,
filename_prefix,
file_format,
prompt,
extra_pnginfo,
lossless_webp,
quality,
embed_workflow,
add_counter_to_filename
)
return (images,)

View File

@@ -47,10 +47,10 @@ class TriggerWordToggle:
trigger_words = trigger_words_data if isinstance(trigger_words_data, str) else ""
# Send trigger words to frontend
PromptServer.instance.send_sync("trigger_word_update", {
"id": id,
"message": trigger_words
})
# PromptServer.instance.send_sync("trigger_word_update", {
# "id": id,
# "message": trigger_words
# })
filtered_triggers = trigger_words

View File

@@ -30,4 +30,55 @@ class FlexibleOptionalInputType(dict):
return True
any_type = AnyType("*")
any_type = AnyType("*")
# Common methods extracted from lora_loader.py and lora_stacker.py
import os
import logging
import asyncio
from ..services.lora_scanner import LoraScanner
from ..config import config
logger = logging.getLogger(__name__)
async def get_lora_info(lora_name):
"""Get the lora path and trigger words from cache"""
scanner = await LoraScanner.get_instance()
cache = await scanner.get_cached_data()
for item in cache.raw_data:
if item.get('file_name') == lora_name:
file_path = item.get('file_path')
if file_path:
for root in config.loras_roots:
root = root.replace(os.sep, '/')
if file_path.startswith(root):
relative_path = os.path.relpath(file_path, root).replace(os.sep, '/')
# Get trigger words from civitai metadata
civitai = item.get('civitai', {})
trigger_words = civitai.get('trainedWords', []) if civitai else []
return relative_path, trigger_words
return lora_name, [] # Fallback if not found
def extract_lora_name(lora_path):
"""Extract the lora name from a lora path (e.g., 'IL\\aorunIllstrious.safetensors' -> 'aorunIllstrious')"""
# Get the basename without extension
basename = os.path.basename(lora_path)
return os.path.splitext(basename)[0]
def get_loras_list(kwargs):
"""Helper to extract loras list from either old or new kwargs format"""
if 'loras' not in kwargs:
return []
loras_data = kwargs['loras']
# Handle new format: {'loras': {'__value__': [...]}}
if isinstance(loras_data, dict) and '__value__' in loras_data:
return loras_data['__value__']
# Handle old format: {'loras': [...]}
elif isinstance(loras_data, list):
return loras_data
# Unexpected format
else:
logger.warning(f"Unexpected loras format: {type(loras_data)}")
return []

22
py/recipes/__init__.py Normal file
View File

@@ -0,0 +1,22 @@
"""Recipe metadata parser package for ComfyUI-Lora-Manager."""
from .base import RecipeMetadataParser
from .factory import RecipeParserFactory
from .constants import GEN_PARAM_KEYS, VALID_LORA_TYPES
from .parsers import (
RecipeFormatParser,
ComfyMetadataParser,
MetaFormatParser,
AutomaticMetadataParser
)
__all__ = [
'RecipeMetadataParser',
'RecipeParserFactory',
'GEN_PARAM_KEYS',
'VALID_LORA_TYPES',
'RecipeFormatParser',
'ComfyMetadataParser',
'MetaFormatParser',
'AutomaticMetadataParser'
]

181
py/recipes/base.py Normal file
View File

@@ -0,0 +1,181 @@
"""Base classes for recipe parsers."""
import json
import logging
import os
import re
from typing import Dict, List, Any, Optional, Tuple
from abc import ABC, abstractmethod
from ..config import config
from .constants import VALID_LORA_TYPES
logger = logging.getLogger(__name__)
class RecipeMetadataParser(ABC):
"""Interface for parsing recipe metadata from image user comments"""
METADATA_MARKER = None
@abstractmethod
def is_metadata_matching(self, user_comment: str) -> bool:
"""Check if the user comment matches the metadata format"""
pass
@abstractmethod
async def parse_metadata(self, user_comment: str, recipe_scanner=None, civitai_client=None) -> Dict[str, Any]:
"""
Parse metadata from user comment and return structured recipe data
Args:
user_comment: The EXIF UserComment string from the image
recipe_scanner: Optional recipe scanner instance for local LoRA lookup
civitai_client: Optional Civitai client for fetching model information
Returns:
Dict containing parsed recipe data with standardized format
"""
pass
async def populate_lora_from_civitai(self, lora_entry: Dict[str, Any], civitai_info_tuple: Tuple[Dict[str, Any], Optional[str]],
recipe_scanner=None, base_model_counts=None, hash_value=None) -> Optional[Dict[str, Any]]:
"""
Populate a lora entry with information from Civitai API response
Args:
lora_entry: The lora entry to populate
civitai_info_tuple: The response tuple from Civitai API (data, error_msg)
recipe_scanner: Optional recipe scanner for local file lookup
base_model_counts: Optional dict to track base model counts
hash_value: Optional hash value to use if not available in civitai_info
Returns:
The populated lora_entry dict if type is valid, None otherwise
"""
try:
# Unpack the tuple to get the actual data
civitai_info, error_msg = civitai_info_tuple if isinstance(civitai_info_tuple, tuple) else (civitai_info_tuple, None)
if not civitai_info or civitai_info.get("error") == "Model not found":
# Model not found or deleted
lora_entry['isDeleted'] = True
lora_entry['thumbnailUrl'] = '/loras_static/images/no-preview.png'
return lora_entry
# Get model type and validate
model_type = civitai_info.get('model', {}).get('type', '').lower()
lora_entry['type'] = model_type
if model_type not in VALID_LORA_TYPES:
logger.debug(f"Skipping non-LoRA model type: {model_type}")
return None
# Check if this is an early access lora
if civitai_info.get('earlyAccessEndsAt'):
# Convert earlyAccessEndsAt to a human-readable date
early_access_date = civitai_info.get('earlyAccessEndsAt', '')
lora_entry['isEarlyAccess'] = True
lora_entry['earlyAccessEndsAt'] = early_access_date
# Update model name if available
if 'model' in civitai_info and 'name' in civitai_info['model']:
lora_entry['name'] = civitai_info['model']['name']
# Update version if available
if 'name' in civitai_info:
lora_entry['version'] = civitai_info.get('name', '')
# Get thumbnail URL from first image
if 'images' in civitai_info and civitai_info['images']:
lora_entry['thumbnailUrl'] = civitai_info['images'][0].get('url', '')
# Get base model
current_base_model = civitai_info.get('baseModel', '')
lora_entry['baseModel'] = current_base_model
# Update base model counts if tracking them
if base_model_counts is not None and current_base_model:
base_model_counts[current_base_model] = base_model_counts.get(current_base_model, 0) + 1
# Get download URL
lora_entry['downloadUrl'] = civitai_info.get('downloadUrl', '')
# Process file information if available
if 'files' in civitai_info:
# Find the primary model file (type="Model" and primary=true) in the files list
model_file = next((file for file in civitai_info.get('files', [])
if file.get('type') == 'Model' and file.get('primary') == True), None)
if model_file:
# Get size
lora_entry['size'] = model_file.get('sizeKB', 0) * 1024
# Get SHA256 hash
sha256 = model_file.get('hashes', {}).get('SHA256', hash_value)
if sha256:
lora_entry['hash'] = sha256.lower()
# Check if exists locally
if recipe_scanner and lora_entry['hash']:
lora_scanner = recipe_scanner._lora_scanner
exists_locally = lora_scanner.has_lora_hash(lora_entry['hash'])
if exists_locally:
try:
local_path = lora_scanner.get_lora_path_by_hash(lora_entry['hash'])
lora_entry['existsLocally'] = True
lora_entry['localPath'] = local_path
lora_entry['file_name'] = os.path.splitext(os.path.basename(local_path))[0]
# Get thumbnail from local preview if available
lora_cache = await lora_scanner.get_cached_data()
lora_item = next((item for item in lora_cache.raw_data
if item['sha256'].lower() == lora_entry['hash'].lower()), None)
if lora_item and 'preview_url' in lora_item:
lora_entry['thumbnailUrl'] = config.get_preview_static_url(lora_item['preview_url'])
except Exception as e:
logger.error(f"Error getting local lora path: {e}")
else:
# For missing LoRAs, get file_name from model_file.name
file_name = model_file.get('name', '')
lora_entry['file_name'] = os.path.splitext(file_name)[0] if file_name else ''
except Exception as e:
logger.error(f"Error populating lora from Civitai info: {e}")
return lora_entry
async def populate_checkpoint_from_civitai(self, checkpoint: Dict[str, Any], civitai_info: Dict[str, Any]) -> Dict[str, Any]:
"""
Populate checkpoint information from Civitai API response
Args:
checkpoint: The checkpoint entry to populate
civitai_info: The response from Civitai API
Returns:
The populated checkpoint dict
"""
try:
if civitai_info and civitai_info.get("error") != "Model not found":
# Update model name if available
if 'model' in civitai_info and 'name' in civitai_info['model']:
checkpoint['name'] = civitai_info['model']['name']
# Update version if available
if 'name' in civitai_info:
checkpoint['version'] = civitai_info.get('name', '')
# Get thumbnail URL from first image
if 'images' in civitai_info and civitai_info['images']:
checkpoint['thumbnailUrl'] = civitai_info['images'][0].get('url', '')
# Get base model
checkpoint['baseModel'] = civitai_info.get('baseModel', '')
# Get download URL
checkpoint['downloadUrl'] = civitai_info.get('downloadUrl', '')
else:
# Model not found or deleted
checkpoint['isDeleted'] = True
except Exception as e:
logger.error(f"Error populating checkpoint from Civitai info: {e}")
return checkpoint

16
py/recipes/constants.py Normal file
View File

@@ -0,0 +1,16 @@
"""Constants used across recipe parsers."""
# Constants for generation parameters
GEN_PARAM_KEYS = [
'prompt',
'negative_prompt',
'steps',
'sampler',
'cfg_scale',
'seed',
'size',
'clip_skip',
]
# Valid Lora types
VALID_LORA_TYPES = ['lora', 'locon']

43
py/recipes/factory.py Normal file
View File

@@ -0,0 +1,43 @@
"""Factory for creating recipe metadata parsers."""
import logging
from .parsers import (
RecipeFormatParser,
ComfyMetadataParser,
MetaFormatParser,
AutomaticMetadataParser
)
from .base import RecipeMetadataParser
logger = logging.getLogger(__name__)
class RecipeParserFactory:
"""Factory for creating recipe metadata parsers"""
@staticmethod
def create_parser(user_comment: str) -> RecipeMetadataParser:
"""
Create appropriate parser based on the user comment content
Args:
user_comment: The EXIF UserComment string from the image
Returns:
Appropriate RecipeMetadataParser implementation
"""
# Try ComfyMetadataParser first since it requires valid JSON
try:
if ComfyMetadataParser().is_metadata_matching(user_comment):
return ComfyMetadataParser()
except Exception:
# If JSON parsing fails, move on to other parsers
pass
if RecipeFormatParser().is_metadata_matching(user_comment):
return RecipeFormatParser()
elif AutomaticMetadataParser().is_metadata_matching(user_comment):
return AutomaticMetadataParser()
elif MetaFormatParser().is_metadata_matching(user_comment):
return MetaFormatParser()
else:
return None

View File

@@ -0,0 +1,13 @@
"""Recipe parsers package."""
from .recipe_format import RecipeFormatParser
from .comfy import ComfyMetadataParser
from .meta_format import MetaFormatParser
from .automatic import AutomaticMetadataParser
__all__ = [
'RecipeFormatParser',
'ComfyMetadataParser',
'MetaFormatParser',
'AutomaticMetadataParser',
]

View File

@@ -0,0 +1,304 @@
"""Parser for Automatic1111 metadata format."""
import re
import json
import logging
from typing import Dict, Any
from ..base import RecipeMetadataParser
from ..constants import GEN_PARAM_KEYS
logger = logging.getLogger(__name__)
class AutomaticMetadataParser(RecipeMetadataParser):
"""Parser for Automatic1111 metadata format"""
METADATA_MARKER = r"Steps: \d+"
# Regular expressions for extracting specific metadata
HASHES_REGEX = r', Hashes:\s*({[^}]+})'
LORA_HASHES_REGEX = r', Lora hashes:\s*"([^"]+)"'
CIVITAI_RESOURCES_REGEX = r', Civitai resources:\s*(\[\{.*?\}\])'
CIVITAI_METADATA_REGEX = r', Civitai metadata:\s*(\{.*?\})'
EXTRANETS_REGEX = r'<(lora|hypernet):([a-zA-Z0-9_\.\-]+):([0-9.]+)>'
MODEL_HASH_PATTERN = r'Model hash: ([a-zA-Z0-9]+)'
VAE_HASH_PATTERN = r'VAE hash: ([a-zA-Z0-9]+)'
def is_metadata_matching(self, user_comment: str) -> bool:
"""Check if the user comment matches the Automatic1111 format"""
return re.search(self.METADATA_MARKER, user_comment) is not None
async def parse_metadata(self, user_comment: str, recipe_scanner=None, civitai_client=None) -> Dict[str, Any]:
"""Parse metadata from Automatic1111 format"""
try:
# Split on Negative prompt if it exists
if "Negative prompt:" in user_comment:
parts = user_comment.split('Negative prompt:', 1)
prompt = parts[0].strip()
negative_and_params = parts[1] if len(parts) > 1 else ""
else:
# No negative prompt section
param_start = re.search(self.METADATA_MARKER, user_comment)
if param_start:
prompt = user_comment[:param_start.start()].strip()
negative_and_params = user_comment[param_start.start():]
else:
prompt = user_comment.strip()
negative_and_params = ""
# Initialize metadata
metadata = {
"prompt": prompt,
"loras": []
}
# Extract negative prompt and parameters
if negative_and_params:
# If we split on "Negative prompt:", check for params section
if "Negative prompt:" in user_comment:
param_start = re.search(r'Steps: ', negative_and_params)
if param_start:
neg_prompt = negative_and_params[:param_start.start()].strip()
metadata["negative_prompt"] = neg_prompt
params_section = negative_and_params[param_start.start():]
else:
metadata["negative_prompt"] = negative_and_params.strip()
params_section = ""
else:
# No negative prompt, entire section is params
params_section = negative_and_params
# Extract generation parameters
if params_section:
# Extract Civitai resources
civitai_resources_match = re.search(self.CIVITAI_RESOURCES_REGEX, params_section)
if civitai_resources_match:
try:
civitai_resources = json.loads(civitai_resources_match.group(1))
metadata["civitai_resources"] = civitai_resources
params_section = params_section.replace(civitai_resources_match.group(0), '')
except json.JSONDecodeError:
logger.error("Error parsing Civitai resources JSON")
# Extract Hashes
hashes_match = re.search(self.HASHES_REGEX, params_section)
if hashes_match:
try:
hashes = json.loads(hashes_match.group(1))
# Process hash keys
processed_hashes = {}
for key, value in hashes.items():
# Convert Model: or LORA: prefix to lowercase if present
if ':' in key:
prefix, name = key.split(':', 1)
prefix = prefix.lower()
else:
prefix = ''
name = key
# Clean up the name part
if '/' in name:
name = name.split('/')[-1] # Get last part after /
if '.safetensors' in name:
name = name.split('.safetensors')[0] # Remove .safetensors
# Reconstruct the key
new_key = f"{prefix}:{name}" if prefix else name
processed_hashes[new_key] = value
metadata["hashes"] = processed_hashes
# Remove hashes from params section to not interfere with other parsing
params_section = params_section.replace(hashes_match.group(0), '')
except json.JSONDecodeError:
logger.error("Error parsing hashes JSON")
# Extract Lora hashes in alternative format
lora_hashes_match = re.search(self.LORA_HASHES_REGEX, params_section)
if not hashes_match and lora_hashes_match:
try:
lora_hashes_str = lora_hashes_match.group(1)
lora_hash_entries = lora_hashes_str.split(', ')
# Initialize hashes dict if it doesn't exist
if "hashes" not in metadata:
metadata["hashes"] = {}
# Parse each lora hash entry (format: "name: hash")
for entry in lora_hash_entries:
if ': ' in entry:
lora_name, lora_hash = entry.split(': ', 1)
# Add as lora type in the same format as regular hashes
metadata["hashes"][f"lora:{lora_name}"] = lora_hash.strip()
# Remove lora hashes from params section
params_section = params_section.replace(lora_hashes_match.group(0), '')
except Exception as e:
logger.error(f"Error parsing Lora hashes: {e}")
# Extract basic parameters
param_pattern = r'([A-Za-z\s]+): ([^,]+)'
params = re.findall(param_pattern, params_section)
gen_params = {}
for key, value in params:
clean_key = key.strip().lower().replace(' ', '_')
# Skip if not in recognized gen param keys
if clean_key not in GEN_PARAM_KEYS:
continue
# Convert numeric values
if clean_key in ['steps', 'seed']:
try:
gen_params[clean_key] = int(value.strip())
except ValueError:
gen_params[clean_key] = value.strip()
elif clean_key in ['cfg_scale']:
try:
gen_params[clean_key] = float(value.strip())
except ValueError:
gen_params[clean_key] = value.strip()
else:
gen_params[clean_key] = value.strip()
# Extract size if available and add to gen_params if a recognized key
size_match = re.search(r'Size: (\d+)x(\d+)', params_section)
if size_match and 'size' in GEN_PARAM_KEYS:
width, height = size_match.groups()
gen_params['size'] = f"{width}x{height}"
# Add prompt and negative_prompt to gen_params if they're in GEN_PARAM_KEYS
if 'prompt' in GEN_PARAM_KEYS and 'prompt' in metadata:
gen_params['prompt'] = metadata['prompt']
if 'negative_prompt' in GEN_PARAM_KEYS and 'negative_prompt' in metadata:
gen_params['negative_prompt'] = metadata['negative_prompt']
metadata["gen_params"] = gen_params
# Extract LoRA information
loras = []
base_model_counts = {}
# First use Civitai resources if available (more reliable source)
if metadata.get("civitai_resources"):
for resource in metadata.get("civitai_resources", []):
if resource.get("type") in ["lora", "lycoris", "hypernet"] and resource.get("modelVersionId"):
# Initialize lora entry
lora_entry = {
'id': str(resource.get("modelVersionId")),
'modelId': str(resource.get("modelId")) if resource.get("modelId") else None,
'name': resource.get("modelName", "Unknown LoRA"),
'version': resource.get("modelVersionName", ""),
'type': resource.get("type", "lora"),
'weight': round(float(resource.get("weight", 1.0)), 2),
'existsLocally': False,
'thumbnailUrl': '/loras_static/images/no-preview.png',
'baseModel': '',
'size': 0,
'downloadUrl': '',
'isDeleted': False
}
# Get additional info from Civitai
if civitai_client:
try:
civitai_info = await civitai_client.get_model_version_info(resource.get("modelVersionId"))
populated_entry = await self.populate_lora_from_civitai(
lora_entry,
civitai_info,
recipe_scanner,
base_model_counts
)
if populated_entry is None:
continue # Skip invalid LoRA types
lora_entry = populated_entry
except Exception as e:
logger.error(f"Error fetching Civitai info for LoRA {lora_entry['name']}: {e}")
loras.append(lora_entry)
# If no LoRAs from Civitai resources or to supplement, extract from metadata["hashes"]
if not loras or len(loras) == 0:
# Extract lora weights from extranet tags in prompt (for later use)
lora_weights = {}
lora_matches = re.findall(self.EXTRANETS_REGEX, prompt)
for lora_type, lora_name, lora_weight in lora_matches:
key = f"{lora_type}:{lora_name}"
lora_weights[key] = round(float(lora_weight), 2)
# Use hashes from metadata as the primary source
if metadata.get("hashes"):
for hash_key, lora_hash in metadata.get("hashes", {}).items():
# Only process lora or hypernet types
if not hash_key.startswith(("lora:", "hypernet:")):
continue
lora_type, lora_name = hash_key.split(':', 1)
# Get weight from extranet tags if available, else default to 1.0
weight = lora_weights.get(hash_key, 1.0)
# Initialize lora entry
lora_entry = {
'name': lora_name,
'type': lora_type, # 'lora' or 'hypernet'
'weight': weight,
'hash': lora_hash,
'existsLocally': False,
'localPath': None,
'file_name': lora_name,
'thumbnailUrl': '/loras_static/images/no-preview.png',
'baseModel': '',
'size': 0,
'downloadUrl': '',
'isDeleted': False
}
# Try to get info from Civitai
if civitai_client:
try:
if lora_hash:
# If we have hash, use it for lookup
civitai_info = await civitai_client.get_model_by_hash(lora_hash)
else:
civitai_info = None
populated_entry = await self.populate_lora_from_civitai(
lora_entry,
civitai_info,
recipe_scanner,
base_model_counts,
lora_hash
)
if populated_entry is None:
continue # Skip invalid LoRA types
lora_entry = populated_entry
except Exception as e:
logger.error(f"Error fetching Civitai info for LoRA {lora_name}: {e}")
loras.append(lora_entry)
# Try to get base model from resources or make educated guess
base_model = None
if base_model_counts:
# Use the most common base model from the loras
base_model = max(base_model_counts.items(), key=lambda x: x[1])[0]
# Prepare final result structure
# Make sure gen_params only contains recognized keys
filtered_gen_params = {}
for key in GEN_PARAM_KEYS:
if key in metadata.get("gen_params", {}):
filtered_gen_params[key] = metadata["gen_params"][key]
result = {
'base_model': base_model,
'loras': loras,
'gen_params': filtered_gen_params,
'from_automatic_metadata': True
}
return result
except Exception as e:
logger.error(f"Error parsing Automatic1111 metadata: {e}", exc_info=True)
return {"error": str(e), "loras": []}

216
py/recipes/parsers/comfy.py Normal file
View File

@@ -0,0 +1,216 @@
"""Parser for ComfyUI metadata format."""
import re
import json
import logging
from typing import Dict, Any
from ..base import RecipeMetadataParser
from ..constants import GEN_PARAM_KEYS
logger = logging.getLogger(__name__)
class ComfyMetadataParser(RecipeMetadataParser):
"""Parser for Civitai ComfyUI metadata JSON format"""
METADATA_MARKER = r"class_type"
def is_metadata_matching(self, user_comment: str) -> bool:
"""Check if the user comment matches the ComfyUI metadata format"""
try:
data = json.loads(user_comment)
# Check if it contains class_type nodes typical of ComfyUI workflow
return isinstance(data, dict) and any(isinstance(v, dict) and 'class_type' in v for v in data.values())
except (json.JSONDecodeError, TypeError):
return False
async def parse_metadata(self, user_comment: str, recipe_scanner=None, civitai_client=None) -> Dict[str, Any]:
"""Parse metadata from Civitai ComfyUI metadata format"""
try:
data = json.loads(user_comment)
loras = []
# Find all LoraLoader nodes
lora_nodes = {k: v for k, v in data.items() if isinstance(v, dict) and v.get('class_type') == 'LoraLoader'}
if not lora_nodes:
return {"error": "No LoRA information found in this ComfyUI workflow", "loras": []}
# Process each LoraLoader node
for node_id, node in lora_nodes.items():
if 'inputs' not in node or 'lora_name' not in node['inputs']:
continue
lora_name = node['inputs'].get('lora_name', '')
# Parse the URN to extract model ID and version ID
# Format: "urn:air:sdxl:lora:civitai:1107767@1253442"
lora_id_match = re.search(r'civitai:(\d+)@(\d+)', lora_name)
if not lora_id_match:
continue
model_id = lora_id_match.group(1)
model_version_id = lora_id_match.group(2)
# Get strength from node inputs
weight = node['inputs'].get('strength_model', 1.0)
# Initialize lora entry with default values
lora_entry = {
'id': model_version_id,
'modelId': model_id,
'name': f"Lora {model_id}", # Default name
'version': '',
'type': 'lora',
'weight': weight,
'existsLocally': False,
'localPath': None,
'file_name': '',
'hash': '',
'thumbnailUrl': '/loras_static/images/no-preview.png',
'baseModel': '',
'size': 0,
'downloadUrl': '',
'isDeleted': False
}
# Get additional info from Civitai if client is available
if civitai_client:
try:
civitai_info_tuple = await civitai_client.get_model_version_info(model_version_id)
# Populate lora entry with Civitai info
populated_entry = await self.populate_lora_from_civitai(
lora_entry,
civitai_info_tuple,
recipe_scanner
)
if populated_entry is None:
continue # Skip invalid LoRA types
lora_entry = populated_entry
except Exception as e:
logger.error(f"Error fetching Civitai info for LoRA: {e}")
loras.append(lora_entry)
# Find checkpoint info
checkpoint_nodes = {k: v for k, v in data.items() if isinstance(v, dict) and v.get('class_type') == 'CheckpointLoaderSimple'}
checkpoint = None
checkpoint_id = None
checkpoint_version_id = None
if checkpoint_nodes:
# Get the first checkpoint node
checkpoint_node = next(iter(checkpoint_nodes.values()))
if 'inputs' in checkpoint_node and 'ckpt_name' in checkpoint_node['inputs']:
checkpoint_name = checkpoint_node['inputs']['ckpt_name']
# Parse checkpoint URN
checkpoint_match = re.search(r'civitai:(\d+)@(\d+)', checkpoint_name)
if checkpoint_match:
checkpoint_id = checkpoint_match.group(1)
checkpoint_version_id = checkpoint_match.group(2)
checkpoint = {
'id': checkpoint_version_id,
'modelId': checkpoint_id,
'name': f"Checkpoint {checkpoint_id}",
'version': '',
'type': 'checkpoint'
}
# Get additional checkpoint info from Civitai
if civitai_client:
try:
civitai_info_tuple = await civitai_client.get_model_version_info(checkpoint_version_id)
civitai_info, _ = civitai_info_tuple if isinstance(civitai_info_tuple, tuple) else (civitai_info_tuple, None)
# Populate checkpoint with Civitai info
checkpoint = await self.populate_checkpoint_from_civitai(checkpoint, civitai_info)
except Exception as e:
logger.error(f"Error fetching Civitai info for checkpoint: {e}")
# Extract generation parameters
gen_params = {}
# First try to get from extraMetadata
if 'extraMetadata' in data:
try:
# extraMetadata is a JSON string that needs to be parsed
extra_metadata = json.loads(data['extraMetadata'])
# Map fields from extraMetadata to our standard format
mapping = {
'prompt': 'prompt',
'negativePrompt': 'negative_prompt',
'steps': 'steps',
'sampler': 'sampler',
'cfgScale': 'cfg_scale',
'seed': 'seed'
}
for src_key, dest_key in mapping.items():
if src_key in extra_metadata:
gen_params[dest_key] = extra_metadata[src_key]
# If size info is available, format as "width x height"
if 'width' in extra_metadata and 'height' in extra_metadata:
gen_params['size'] = f"{extra_metadata['width']}x{extra_metadata['height']}"
except Exception as e:
logger.error(f"Error parsing extraMetadata: {e}")
# If extraMetadata doesn't have all the info, try to get from nodes
if not gen_params or len(gen_params) < 3: # At least we want prompt, negative_prompt, and steps
# Find positive prompt node
positive_nodes = {k: v for k, v in data.items() if isinstance(v, dict) and
v.get('class_type', '').endswith('CLIPTextEncode') and
v.get('_meta', {}).get('title') == 'Positive'}
if positive_nodes:
positive_node = next(iter(positive_nodes.values()))
if 'inputs' in positive_node and 'text' in positive_node['inputs']:
gen_params['prompt'] = positive_node['inputs']['text']
# Find negative prompt node
negative_nodes = {k: v for k, v in data.items() if isinstance(v, dict) and
v.get('class_type', '').endswith('CLIPTextEncode') and
v.get('_meta', {}).get('title') == 'Negative'}
if negative_nodes:
negative_node = next(iter(negative_nodes.values()))
if 'inputs' in negative_node and 'text' in negative_node['inputs']:
gen_params['negative_prompt'] = negative_node['inputs']['text']
# Find KSampler node for other parameters
ksampler_nodes = {k: v for k, v in data.items() if isinstance(v, dict) and v.get('class_type') == 'KSampler'}
if ksampler_nodes:
ksampler_node = next(iter(ksampler_nodes.values()))
if 'inputs' in ksampler_node:
inputs = ksampler_node['inputs']
if 'sampler_name' in inputs:
gen_params['sampler'] = inputs['sampler_name']
if 'steps' in inputs:
gen_params['steps'] = inputs['steps']
if 'cfg' in inputs:
gen_params['cfg_scale'] = inputs['cfg']
if 'seed' in inputs:
gen_params['seed'] = inputs['seed']
# Determine base model from loras info
base_model = None
if loras:
# Use the most common base model from loras
base_models = [lora['baseModel'] for lora in loras if lora.get('baseModel')]
if base_models:
from collections import Counter
base_model_counts = Counter(base_models)
base_model = base_model_counts.most_common(1)[0][0]
return {
'base_model': base_model,
'loras': loras,
'checkpoint': checkpoint,
'gen_params': gen_params,
'from_comfy_metadata': True
}
except Exception as e:
logger.error(f"Error parsing ComfyUI metadata: {e}", exc_info=True)
return {"error": str(e), "loras": []}

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"""Parser for meta format (Lora_N Model hash) metadata."""
import re
import logging
from typing import Dict, Any
from ..base import RecipeMetadataParser
from ..constants import GEN_PARAM_KEYS
logger = logging.getLogger(__name__)
class MetaFormatParser(RecipeMetadataParser):
"""Parser for images with meta format metadata (Lora_N Model hash format)"""
METADATA_MARKER = r'Lora_\d+ Model hash:'
def is_metadata_matching(self, user_comment: str) -> bool:
"""Check if the user comment matches the metadata format"""
return re.search(self.METADATA_MARKER, user_comment, re.IGNORECASE | re.DOTALL) is not None
async def parse_metadata(self, user_comment: str, recipe_scanner=None, civitai_client=None) -> Dict[str, Any]:
"""Parse metadata from images with meta format metadata"""
try:
# Extract prompt and negative prompt
parts = user_comment.split('Negative prompt:', 1)
prompt = parts[0].strip()
# Initialize metadata
metadata = {"prompt": prompt, "loras": []}
# Extract negative prompt and parameters if available
if len(parts) > 1:
negative_and_params = parts[1]
# Extract negative prompt - everything until the first parameter (usually "Steps:")
param_start = re.search(r'([A-Za-z]+): ', negative_and_params)
if param_start:
neg_prompt = negative_and_params[:param_start.start()].strip()
metadata["negative_prompt"] = neg_prompt
params_section = negative_and_params[param_start.start():]
else:
params_section = negative_and_params
# Extract key-value parameters (Steps, Sampler, Seed, etc.)
param_pattern = r'([A-Za-z_0-9 ]+): ([^,]+)'
params = re.findall(param_pattern, params_section)
for key, value in params:
clean_key = key.strip().lower().replace(' ', '_')
metadata[clean_key] = value.strip()
# Extract LoRA information
# Pattern to match lora entries: Lora_0 Model name: ArtVador I.safetensors, Lora_0 Model hash: 08f7133a58, etc.
lora_pattern = r'Lora_(\d+) Model name: ([^,]+), Lora_\1 Model hash: ([^,]+), Lora_\1 Strength model: ([^,]+), Lora_\1 Strength clip: ([^,]+)'
lora_matches = re.findall(lora_pattern, user_comment)
# If the regular pattern doesn't match, try a more flexible approach
if not lora_matches:
# First find all Lora indices
lora_indices = set(re.findall(r'Lora_(\d+)', user_comment))
# For each index, extract the information
for idx in lora_indices:
lora_info = {}
# Extract model name
name_match = re.search(f'Lora_{idx} Model name: ([^,]+)', user_comment)
if name_match:
lora_info['name'] = name_match.group(1).strip()
# Extract model hash
hash_match = re.search(f'Lora_{idx} Model hash: ([^,]+)', user_comment)
if hash_match:
lora_info['hash'] = hash_match.group(1).strip()
# Extract strength model
strength_model_match = re.search(f'Lora_{idx} Strength model: ([^,]+)', user_comment)
if strength_model_match:
lora_info['strength_model'] = float(strength_model_match.group(1).strip())
# Extract strength clip
strength_clip_match = re.search(f'Lora_{idx} Strength clip: ([^,]+)', user_comment)
if strength_clip_match:
lora_info['strength_clip'] = float(strength_clip_match.group(1).strip())
# Only add if we have at least name and hash
if 'name' in lora_info and 'hash' in lora_info:
lora_matches.append((idx, lora_info['name'], lora_info['hash'],
str(lora_info.get('strength_model', 1.0)),
str(lora_info.get('strength_clip', 1.0))))
# Process LoRAs
base_model_counts = {}
loras = []
for match in lora_matches:
if len(match) == 5: # Regular pattern match
idx, name, hash_value, strength_model, strength_clip = match
else: # Flexible approach match
continue # Should not happen now
# Clean up the values
name = name.strip()
if name.endswith('.safetensors'):
name = name[:-12] # Remove .safetensors extension
hash_value = hash_value.strip()
weight = float(strength_model) # Use model strength as weight
# Initialize lora entry with default values
lora_entry = {
'name': name,
'type': 'lora',
'weight': weight,
'existsLocally': False,
'localPath': None,
'file_name': name,
'hash': hash_value,
'thumbnailUrl': '/loras_static/images/no-preview.png',
'baseModel': '',
'size': 0,
'downloadUrl': '',
'isDeleted': False
}
# Get info from Civitai by hash if available
if civitai_client and hash_value:
try:
civitai_info = await civitai_client.get_model_by_hash(hash_value)
# Populate lora entry with Civitai info
populated_entry = await self.populate_lora_from_civitai(
lora_entry,
civitai_info,
recipe_scanner,
base_model_counts,
hash_value
)
if populated_entry is None:
continue # Skip invalid LoRA types
lora_entry = populated_entry
except Exception as e:
logger.error(f"Error fetching Civitai info for LoRA hash {hash_value}: {e}")
loras.append(lora_entry)
# Extract model information
model = None
if 'model' in metadata:
model = metadata['model']
# Set base_model to the most common one from civitai_info
base_model = None
if base_model_counts:
base_model = max(base_model_counts.items(), key=lambda x: x[1])[0]
# Extract generation parameters for recipe metadata
gen_params = {}
for key in GEN_PARAM_KEYS:
if key in metadata:
gen_params[key] = metadata.get(key, '')
# Try to extract size information if available
if 'width' in metadata and 'height' in metadata:
gen_params['size'] = f"{metadata['width']}x{metadata['height']}"
return {
'base_model': base_model,
'loras': loras,
'gen_params': gen_params,
'raw_metadata': metadata,
'from_meta_format': True
}
except Exception as e:
logger.error(f"Error parsing meta format metadata: {e}", exc_info=True)
return {"error": str(e), "loras": []}

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"""Parser for dedicated recipe metadata format."""
import re
import json
import logging
from typing import Dict, Any
from ...config import config
from ..base import RecipeMetadataParser
from ..constants import GEN_PARAM_KEYS
logger = logging.getLogger(__name__)
class RecipeFormatParser(RecipeMetadataParser):
"""Parser for images with dedicated recipe metadata format"""
# Regular expression pattern for extracting recipe metadata
METADATA_MARKER = r'Recipe metadata: (\{.*\})'
def is_metadata_matching(self, user_comment: str) -> bool:
"""Check if the user comment matches the metadata format"""
return re.search(self.METADATA_MARKER, user_comment, re.IGNORECASE | re.DOTALL) is not None
async def parse_metadata(self, user_comment: str, recipe_scanner=None, civitai_client=None) -> Dict[str, Any]:
"""Parse metadata from images with dedicated recipe metadata format"""
try:
# Extract recipe metadata from user comment
try:
# Look for recipe metadata section
recipe_match = re.search(self.METADATA_MARKER, user_comment, re.IGNORECASE | re.DOTALL)
if not recipe_match:
recipe_metadata = None
else:
recipe_json = recipe_match.group(1)
recipe_metadata = json.loads(recipe_json)
except Exception as e:
logger.error(f"Error extracting recipe metadata: {e}")
recipe_metadata = None
if not recipe_metadata:
return {"error": "No recipe metadata found", "loras": []}
# Process the recipe metadata
loras = []
for lora in recipe_metadata.get('loras', []):
# Convert recipe lora format to frontend format
lora_entry = {
'id': lora.get('modelVersionId', ''),
'name': lora.get('modelName', ''),
'version': lora.get('modelVersionName', ''),
'type': 'lora',
'weight': lora.get('strength', 1.0),
'file_name': lora.get('file_name', ''),
'hash': lora.get('hash', '')
}
# Check if this LoRA exists locally by SHA256 hash
if lora.get('hash') and recipe_scanner:
lora_scanner = recipe_scanner._lora_scanner
exists_locally = lora_scanner.has_lora_hash(lora['hash'])
if exists_locally:
lora_cache = await lora_scanner.get_cached_data()
lora_item = next((item for item in lora_cache.raw_data if item['sha256'].lower() == lora['hash'].lower()), None)
if lora_item:
lora_entry['existsLocally'] = True
lora_entry['localPath'] = lora_item['file_path']
lora_entry['file_name'] = lora_item['file_name']
lora_entry['size'] = lora_item['size']
lora_entry['thumbnailUrl'] = config.get_preview_static_url(lora_item['preview_url'])
else:
lora_entry['existsLocally'] = False
lora_entry['localPath'] = None
# Try to get additional info from Civitai if we have a model version ID
if lora.get('modelVersionId') and civitai_client:
try:
civitai_info_tuple = await civitai_client.get_model_version_info(lora['modelVersionId'])
# Populate lora entry with Civitai info
populated_entry = await self.populate_lora_from_civitai(
lora_entry,
civitai_info_tuple,
recipe_scanner,
None, # No need to track base model counts
lora['hash']
)
if populated_entry is None:
continue # Skip invalid LoRA types
lora_entry = populated_entry
except Exception as e:
logger.error(f"Error fetching Civitai info for LoRA: {e}")
lora_entry['thumbnailUrl'] = '/loras_static/images/no-preview.png'
loras.append(lora_entry)
logger.info(f"Found {len(loras)} loras in recipe metadata")
# Filter gen_params to only include recognized keys
filtered_gen_params = {}
if 'gen_params' in recipe_metadata:
for key, value in recipe_metadata['gen_params'].items():
if key in GEN_PARAM_KEYS:
filtered_gen_params[key] = value
return {
'base_model': recipe_metadata.get('base_model', ''),
'loras': loras,
'gen_params': filtered_gen_params,
'tags': recipe_metadata.get('tags', []),
'title': recipe_metadata.get('title', ''),
'from_recipe_metadata': True
}
except Exception as e:
logger.error(f"Error parsing recipe format metadata: {e}", exc_info=True)
return {"error": str(e), "loras": []}

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@@ -1,37 +1,495 @@
import os
from aiohttp import web
import json
import jinja2
from aiohttp import web
import logging
import asyncio
from ..utils.routes_common import ModelRouteUtils
from ..utils.constants import NSFW_LEVELS
from ..services.websocket_manager import ws_manager
from ..services.service_registry import ServiceRegistry
from ..config import config
from ..services.settings_manager import settings
from ..utils.utils import fuzzy_match
logger = logging.getLogger(__name__)
logging.getLogger('asyncio').setLevel(logging.CRITICAL)
class CheckpointsRoutes:
"""Route handlers for Checkpoints management endpoints"""
"""API routes for checkpoint management"""
def __init__(self):
self.scanner = None # Will be initialized in setup_routes
self.template_env = jinja2.Environment(
loader=jinja2.FileSystemLoader(config.templates_path),
autoescape=True
)
self.download_manager = None # Will be initialized in setup_routes
self._download_lock = asyncio.Lock()
async def initialize_services(self):
"""Initialize services from ServiceRegistry"""
self.scanner = await ServiceRegistry.get_checkpoint_scanner()
self.download_manager = await ServiceRegistry.get_download_manager()
def setup_routes(self, app):
"""Register routes with the aiohttp app"""
# Schedule service initialization on app startup
app.on_startup.append(lambda _: self.initialize_services())
app.router.add_get('/checkpoints', self.handle_checkpoints_page)
app.router.add_get('/api/checkpoints', self.get_checkpoints)
app.router.add_post('/api/checkpoints/fetch-all-civitai', self.fetch_all_civitai)
app.router.add_get('/api/checkpoints/base-models', self.get_base_models)
app.router.add_get('/api/checkpoints/top-tags', self.get_top_tags)
app.router.add_get('/api/checkpoints/scan', self.scan_checkpoints)
app.router.add_get('/api/checkpoints/info/{name}', self.get_checkpoint_info)
app.router.add_get('/api/checkpoints/roots', self.get_checkpoint_roots)
app.router.add_get('/api/checkpoints/civitai/versions/{model_id}', self.get_civitai_versions) # Add new route
# Add new routes for model management similar to LoRA routes
app.router.add_post('/api/checkpoints/delete', self.delete_model)
app.router.add_post('/api/checkpoints/exclude', self.exclude_model) # Add new exclude endpoint
app.router.add_post('/api/checkpoints/fetch-civitai', self.fetch_civitai)
app.router.add_post('/api/checkpoints/replace-preview', self.replace_preview)
app.router.add_post('/api/checkpoints/download', self.download_checkpoint)
app.router.add_post('/api/checkpoints/save-metadata', self.save_metadata) # Add new route
# Add new WebSocket endpoint for checkpoint progress
app.router.add_get('/ws/checkpoint-progress', ws_manager.handle_checkpoint_connection)
async def get_checkpoints(self, request):
"""Get paginated checkpoint data"""
try:
# Parse query parameters
page = int(request.query.get('page', '1'))
page_size = min(int(request.query.get('page_size', '20')), 100)
sort_by = request.query.get('sort_by', 'name')
folder = request.query.get('folder', None)
search = request.query.get('search', None)
fuzzy_search = request.query.get('fuzzy_search', 'false').lower() == 'true'
base_models = request.query.getall('base_model', [])
tags = request.query.getall('tag', [])
favorites_only = request.query.get('favorites_only', 'false').lower() == 'true' # Add favorites_only parameter
# Process search options
search_options = {
'filename': request.query.get('search_filename', 'true').lower() == 'true',
'modelname': request.query.get('search_modelname', 'true').lower() == 'true',
'tags': request.query.get('search_tags', 'false').lower() == 'true',
'recursive': request.query.get('recursive', 'false').lower() == 'true',
}
# Process hash filters if provided
hash_filters = {}
if 'hash' in request.query:
hash_filters['single_hash'] = request.query['hash']
elif 'hashes' in request.query:
try:
hash_list = json.loads(request.query['hashes'])
if isinstance(hash_list, list):
hash_filters['multiple_hashes'] = hash_list
except (json.JSONDecodeError, TypeError):
pass
# Get data from scanner
result = await self.get_paginated_data(
page=page,
page_size=page_size,
sort_by=sort_by,
folder=folder,
search=search,
fuzzy_search=fuzzy_search,
base_models=base_models,
tags=tags,
search_options=search_options,
hash_filters=hash_filters,
favorites_only=favorites_only # Pass favorites_only parameter
)
# Format response items
formatted_result = {
'items': [self._format_checkpoint_response(cp) for cp in result['items']],
'total': result['total'],
'page': result['page'],
'page_size': result['page_size'],
'total_pages': result['total_pages']
}
# Return as JSON
return web.json_response(formatted_result)
except Exception as e:
logger.error(f"Error in get_checkpoints: {e}", exc_info=True)
return web.json_response({"error": str(e)}, status=500)
async def get_paginated_data(self, page, page_size, sort_by='name',
folder=None, search=None, fuzzy_search=False,
base_models=None, tags=None,
search_options=None, hash_filters=None,
favorites_only=False): # Add favorites_only parameter with default False
"""Get paginated and filtered checkpoint data"""
cache = await self.scanner.get_cached_data()
# Get default search options if not provided
if search_options is None:
search_options = {
'filename': True,
'modelname': True,
'tags': False,
'recursive': False,
}
# Get the base data set
filtered_data = cache.sorted_by_date if sort_by == 'date' else cache.sorted_by_name
# Apply hash filtering if provided (highest priority)
if hash_filters:
single_hash = hash_filters.get('single_hash')
multiple_hashes = hash_filters.get('multiple_hashes')
if single_hash:
# Filter by single hash
single_hash = single_hash.lower() # Ensure lowercase for matching
filtered_data = [
cp for cp in filtered_data
if cp.get('sha256', '').lower() == single_hash
]
elif multiple_hashes:
# Filter by multiple hashes
hash_set = set(hash.lower() for hash in multiple_hashes) # Convert to set for faster lookup
filtered_data = [
cp for cp in filtered_data
if cp.get('sha256', '').lower() in hash_set
]
# Jump to pagination
total_items = len(filtered_data)
start_idx = (page - 1) * page_size
end_idx = min(start_idx + page_size, total_items)
result = {
'items': filtered_data[start_idx:end_idx],
'total': total_items,
'page': page,
'page_size': page_size,
'total_pages': (total_items + page_size - 1) // page_size
}
return result
# Apply SFW filtering if enabled in settings
if settings.get('show_only_sfw', False):
filtered_data = [
cp for cp in filtered_data
if not cp.get('preview_nsfw_level') or cp.get('preview_nsfw_level') < NSFW_LEVELS['R']
]
# Apply favorites filtering if enabled
if favorites_only:
filtered_data = [
cp for cp in filtered_data
if cp.get('favorite', False) is True
]
# Apply folder filtering
if folder is not None:
if search_options.get('recursive', False):
# Recursive folder filtering - include all subfolders
filtered_data = [
cp for cp in filtered_data
if cp['folder'].startswith(folder)
]
else:
# Exact folder filtering
filtered_data = [
cp for cp in filtered_data
if cp['folder'] == folder
]
# Apply base model filtering
if base_models and len(base_models) > 0:
filtered_data = [
cp for cp in filtered_data
if cp.get('base_model') in base_models
]
# Apply tag filtering
if tags and len(tags) > 0:
filtered_data = [
cp for cp in filtered_data
if any(tag in cp.get('tags', []) for tag in tags)
]
# Apply search filtering
if search:
search_results = []
for cp in filtered_data:
# Search by file name
if search_options.get('filename', True):
if fuzzy_search:
if fuzzy_match(cp.get('file_name', ''), search):
search_results.append(cp)
continue
elif search.lower() in cp.get('file_name', '').lower():
search_results.append(cp)
continue
# Search by model name
if search_options.get('modelname', True):
if fuzzy_search:
if fuzzy_match(cp.get('model_name', ''), search):
search_results.append(cp)
continue
elif search.lower() in cp.get('model_name', '').lower():
search_results.append(cp)
continue
# Search by tags
if search_options.get('tags', False) and 'tags' in cp:
if any((fuzzy_match(tag, search) if fuzzy_search else search.lower() in tag.lower()) for tag in cp['tags']):
search_results.append(cp)
continue
filtered_data = search_results
# Calculate pagination
total_items = len(filtered_data)
start_idx = (page - 1) * page_size
end_idx = min(start_idx + page_size, total_items)
result = {
'items': filtered_data[start_idx:end_idx],
'total': total_items,
'page': page,
'page_size': page_size,
'total_pages': (total_items + page_size - 1) // page_size
}
return result
def _format_checkpoint_response(self, checkpoint):
"""Format checkpoint data for API response"""
return {
"model_name": checkpoint["model_name"],
"file_name": checkpoint["file_name"],
"preview_url": config.get_preview_static_url(checkpoint.get("preview_url", "")),
"preview_nsfw_level": checkpoint.get("preview_nsfw_level", 0),
"base_model": checkpoint.get("base_model", ""),
"folder": checkpoint["folder"],
"sha256": checkpoint.get("sha256", ""),
"file_path": checkpoint["file_path"].replace(os.sep, "/"),
"file_size": checkpoint.get("size", 0),
"modified": checkpoint.get("modified", ""),
"tags": checkpoint.get("tags", []),
"modelDescription": checkpoint.get("modelDescription", ""),
"from_civitai": checkpoint.get("from_civitai", True),
"notes": checkpoint.get("notes", ""),
"model_type": checkpoint.get("model_type", "checkpoint"),
"favorite": checkpoint.get("favorite", False),
"civitai": ModelRouteUtils.filter_civitai_data(checkpoint.get("civitai", {}))
}
async def fetch_all_civitai(self, request: web.Request) -> web.Response:
"""Fetch CivitAI metadata for all checkpoints in the background"""
try:
cache = await self.scanner.get_cached_data()
total = len(cache.raw_data)
processed = 0
success = 0
needs_resort = False
# Prepare checkpoints to process
to_process = [
cp for cp in cache.raw_data
if cp.get('sha256') and (not cp.get('civitai') or 'id' not in cp.get('civitai')) and cp.get('from_civitai', True)
]
total_to_process = len(to_process)
# Send initial progress
await ws_manager.broadcast({
'status': 'started',
'total': total_to_process,
'processed': 0,
'success': 0
})
# Process each checkpoint
for cp in to_process:
try:
original_name = cp.get('model_name')
if await ModelRouteUtils.fetch_and_update_model(
sha256=cp['sha256'],
file_path=cp['file_path'],
model_data=cp,
update_cache_func=self.scanner.update_single_model_cache
):
success += 1
if original_name != cp.get('model_name'):
needs_resort = True
processed += 1
# Send progress update
await ws_manager.broadcast({
'status': 'processing',
'total': total_to_process,
'processed': processed,
'success': success,
'current_name': cp.get('model_name', 'Unknown')
})
except Exception as e:
logger.error(f"Error fetching CivitAI data for {cp['file_path']}: {e}")
if needs_resort:
await cache.resort(name_only=True)
# Send completion message
await ws_manager.broadcast({
'status': 'completed',
'total': total_to_process,
'processed': processed,
'success': success
})
return web.json_response({
"success": True,
"message": f"Successfully updated {success} of {processed} processed checkpoints (total: {total})"
})
except Exception as e:
# Send error message
await ws_manager.broadcast({
'status': 'error',
'error': str(e)
})
logger.error(f"Error in fetch_all_civitai for checkpoints: {e}")
return web.Response(text=str(e), status=500)
async def get_top_tags(self, request: web.Request) -> web.Response:
"""Handle request for top tags sorted by frequency"""
try:
# Parse query parameters
limit = int(request.query.get('limit', '20'))
# Validate limit
if limit < 1 or limit > 100:
limit = 20 # Default to a reasonable limit
# Get top tags
top_tags = await self.scanner.get_top_tags(limit)
return web.json_response({
'success': True,
'tags': top_tags
})
except Exception as e:
logger.error(f"Error getting top tags: {str(e)}", exc_info=True)
return web.json_response({
'success': False,
'error': 'Internal server error'
}, status=500)
async def get_base_models(self, request: web.Request) -> web.Response:
"""Get base models used in loras"""
try:
# Parse query parameters
limit = int(request.query.get('limit', '20'))
# Validate limit
if limit < 1 or limit > 100:
limit = 20 # Default to a reasonable limit
# Get base models
base_models = await self.scanner.get_base_models(limit)
return web.json_response({
'success': True,
'base_models': base_models
})
except Exception as e:
logger.error(f"Error retrieving base models: {e}")
return web.json_response({
'success': False,
'error': str(e)
}, status=500)
async def scan_checkpoints(self, request):
"""Force a rescan of checkpoint files"""
try:
await self.scanner.get_cached_data(force_refresh=True)
return web.json_response({"status": "success", "message": "Checkpoint scan completed"})
except Exception as e:
logger.error(f"Error in scan_checkpoints: {e}", exc_info=True)
return web.json_response({"error": str(e)}, status=500)
async def get_checkpoint_info(self, request):
"""Get detailed information for a specific checkpoint by name"""
try:
name = request.match_info.get('name', '')
checkpoint_info = await self.scanner.get_model_info_by_name(name)
if checkpoint_info:
return web.json_response(checkpoint_info)
else:
return web.json_response({"error": "Checkpoint not found"}, status=404)
except Exception as e:
logger.error(f"Error in get_checkpoint_info: {e}", exc_info=True)
return web.json_response({"error": str(e)}, status=500)
async def handle_checkpoints_page(self, request: web.Request) -> web.Response:
"""Handle GET /checkpoints request"""
try:
template = self.template_env.get_template('checkpoints.html')
rendered = template.render(
is_initializing=False,
settings=settings,
request=request
# Check if the CheckpointScanner is initializing
# It's initializing if the cache object doesn't exist yet,
# OR if the scanner explicitly says it's initializing (background task running).
is_initializing = (
self.scanner._cache is None or
(hasattr(self.scanner, '_is_initializing') and self.scanner._is_initializing)
)
if is_initializing:
# If still initializing, return loading page
template = self.template_env.get_template('checkpoints.html')
rendered = template.render(
folders=[], # 空文件夹列表
is_initializing=True, # 新增标志
settings=settings, # Pass settings to template
request=request # Pass the request object to the template
)
logger.info("Checkpoints page is initializing, returning loading page")
else:
# 正常流程 - 获取已经初始化好的缓存数据
try:
cache = await self.scanner.get_cached_data(force_refresh=False)
template = self.template_env.get_template('checkpoints.html')
rendered = template.render(
folders=cache.folders,
is_initializing=False,
settings=settings, # Pass settings to template
request=request # Pass the request object to the template
)
except Exception as cache_error:
logger.error(f"Error loading checkpoints cache data: {cache_error}")
# 如果获取缓存失败,也显示初始化页面
template = self.template_env.get_template('checkpoints.html')
rendered = template.render(
folders=[],
is_initializing=True,
settings=settings,
request=request
)
logger.info("Checkpoints cache error, returning initialization page")
return web.Response(
text=rendered,
content_type='text/html'
)
except Exception as e:
logger.error(f"Error handling checkpoints request: {e}", exc_info=True)
return web.Response(
@@ -39,6 +497,198 @@ class CheckpointsRoutes:
status=500
)
def setup_routes(self, app: web.Application):
"""Register routes with the application"""
app.router.add_get('/checkpoints', self.handle_checkpoints_page)
async def delete_model(self, request: web.Request) -> web.Response:
"""Handle checkpoint model deletion request"""
return await ModelRouteUtils.handle_delete_model(request, self.scanner)
async def exclude_model(self, request: web.Request) -> web.Response:
"""Handle checkpoint model exclusion request"""
return await ModelRouteUtils.handle_exclude_model(request, self.scanner)
async def fetch_civitai(self, request: web.Request) -> web.Response:
"""Handle CivitAI metadata fetch request for checkpoints"""
return await ModelRouteUtils.handle_fetch_civitai(request, self.scanner)
async def replace_preview(self, request: web.Request) -> web.Response:
"""Handle preview image replacement for checkpoints"""
return await ModelRouteUtils.handle_replace_preview(request, self.scanner)
async def download_checkpoint(self, request: web.Request) -> web.Response:
"""Handle checkpoint download request"""
async with self._download_lock:
# Get the download manager from service registry if not already initialized
if self.download_manager is None:
self.download_manager = await ServiceRegistry.get_download_manager()
try:
data = await request.json()
# Create progress callback that uses checkpoint-specific WebSocket
async def progress_callback(progress):
await ws_manager.broadcast_checkpoint_progress({
'status': 'progress',
'progress': progress
})
# Check which identifier is provided
download_url = data.get('download_url')
model_hash = data.get('model_hash')
model_version_id = data.get('model_version_id')
# Validate that at least one identifier is provided
if not any([download_url, model_hash, model_version_id]):
return web.Response(
status=400,
text="Missing required parameter: Please provide either 'download_url', 'hash', or 'modelVersionId'"
)
result = await self.download_manager.download_from_civitai(
download_url=download_url,
model_hash=model_hash,
model_version_id=model_version_id,
save_dir=data.get('checkpoint_root'),
relative_path=data.get('relative_path', ''),
progress_callback=progress_callback,
model_type="checkpoint"
)
if not result.get('success', False):
error_message = result.get('error', 'Unknown error')
# Return 401 for early access errors
if 'early access' in error_message.lower():
logger.warning(f"Early access download failed: {error_message}")
return web.Response(
status=401,
text=f"Early Access Restriction: {error_message}"
)
return web.Response(status=500, text=error_message)
return web.json_response(result)
except Exception as e:
error_message = str(e)
# Check if this might be an early access error
if '401' in error_message:
logger.warning(f"Early access error (401): {error_message}")
return web.Response(
status=401,
text="Early Access Restriction: This model requires purchase. Please ensure you have purchased early access and are logged in to Civitai."
)
logger.error(f"Error downloading checkpoint: {error_message}")
return web.Response(status=500, text=error_message)
async def get_checkpoint_roots(self, request):
"""Return the checkpoint root directories"""
try:
if self.scanner is None:
self.scanner = await ServiceRegistry.get_checkpoint_scanner()
roots = self.scanner.get_model_roots()
return web.json_response({
"success": True,
"roots": roots
})
except Exception as e:
logger.error(f"Error getting checkpoint roots: {e}", exc_info=True)
return web.json_response({
"success": False,
"error": str(e)
}, status=500)
async def save_metadata(self, request: web.Request) -> web.Response:
"""Handle saving metadata updates for checkpoints"""
try:
if self.scanner is None:
self.scanner = await ServiceRegistry.get_checkpoint_scanner()
data = await request.json()
file_path = data.get('file_path')
if not file_path:
return web.Response(text='File path is required', status=400)
# Remove file path from data to avoid saving it
metadata_updates = {k: v for k, v in data.items() if k != 'file_path'}
# Get metadata file path
metadata_path = os.path.splitext(file_path)[0] + '.metadata.json'
# Load existing metadata
metadata = await ModelRouteUtils.load_local_metadata(metadata_path)
# Update metadata
metadata.update(metadata_updates)
# Save updated metadata
with open(metadata_path, 'w', encoding='utf-8') as f:
json.dump(metadata, f, indent=2, ensure_ascii=False)
# Update cache
await self.scanner.update_single_model_cache(file_path, file_path, metadata)
# If model_name was updated, resort the cache
if 'model_name' in metadata_updates:
cache = await self.scanner.get_cached_data()
await cache.resort(name_only=True)
return web.json_response({'success': True})
except Exception as e:
logger.error(f"Error saving checkpoint metadata: {e}", exc_info=True)
return web.Response(text=str(e), status=500)
async def get_civitai_versions(self, request: web.Request) -> web.Response:
"""Get available versions for a Civitai checkpoint model with local availability info"""
try:
if self.scanner is None:
self.scanner = await ServiceRegistry.get_checkpoint_scanner()
# Get the civitai client from service registry
civitai_client = await ServiceRegistry.get_civitai_client()
model_id = request.match_info['model_id']
response = await civitai_client.get_model_versions(model_id)
if not response or not response.get('modelVersions'):
return web.Response(status=404, text="Model not found")
versions = response.get('modelVersions', [])
model_type = response.get('type', '')
# Check model type - should be Checkpoint
if (model_type.lower() != 'checkpoint'):
return web.json_response({
'error': f"Model type mismatch. Expected Checkpoint, got {model_type}"
}, status=400)
# Check local availability for each version
for version in versions:
# Find the primary model file (type="Model" and primary=true) in the files list
model_file = next((file for file in version.get('files', [])
if file.get('type') == 'Model' and file.get('primary') == True), None)
# If no primary file found, try to find any model file
if not model_file:
model_file = next((file for file in version.get('files', [])
if file.get('type') == 'Model'), None)
if model_file:
sha256 = model_file.get('hashes', {}).get('SHA256')
if sha256:
# Set existsLocally and localPath at the version level
version['existsLocally'] = self.scanner.has_hash(sha256)
if version['existsLocally']:
version['localPath'] = self.scanner.get_path_by_hash(sha256)
# Also set the model file size at the version level for easier access
version['modelSizeKB'] = model_file.get('sizeKB')
else:
# No model file found in this version
version['existsLocally'] = False
return web.json_response(versions)
except Exception as e:
logger.error(f"Error fetching checkpoint model versions: {e}")
return web.Response(status=500, text=str(e))

View File

@@ -1,12 +1,11 @@
import os
from aiohttp import web
import jinja2
from typing import Dict, List
from typing import Dict
import logging
from ..services.lora_scanner import LoraScanner
from ..services.recipe_scanner import RecipeScanner
from ..config import config
from ..services.settings_manager import settings # Add this import
from ..services.settings_manager import settings
from ..services.service_registry import ServiceRegistry # Add ServiceRegistry import
logger = logging.getLogger(__name__)
logging.getLogger('asyncio').setLevel(logging.CRITICAL)
@@ -15,13 +14,19 @@ class LoraRoutes:
"""Route handlers for LoRA management endpoints"""
def __init__(self):
self.scanner = LoraScanner()
self.recipe_scanner = RecipeScanner(self.scanner)
# Initialize service references as None, will be set during async init
self.scanner = None
self.recipe_scanner = None
self.template_env = jinja2.Environment(
loader=jinja2.FileSystemLoader(config.templates_path),
autoescape=True
)
async def init_services(self):
"""Initialize services from ServiceRegistry"""
self.scanner = await ServiceRegistry.get_lora_scanner()
self.recipe_scanner = await ServiceRegistry.get_recipe_scanner()
def format_lora_data(self, lora: Dict) -> Dict:
"""Format LoRA data for template rendering"""
return {
@@ -58,32 +63,49 @@ class LoraRoutes:
async def handle_loras_page(self, request: web.Request) -> web.Response:
"""Handle GET /loras request"""
try:
# 不等待缓存数据,直接检查缓存状态
# Ensure services are initialized
await self.init_services()
# Check if the LoraScanner is initializing
# It's initializing if the cache object doesn't exist yet,
# OR if the scanner explicitly says it's initializing (background task running).
is_initializing = (
self.scanner._cache is None and
(self.scanner._initialization_task is not None and
not self.scanner._initialization_task.done())
self.scanner._cache is None or
(hasattr(self.scanner, '_is_initializing') and self.scanner._is_initializing)
)
if is_initializing:
# 如果正在初始化,返回一个只包含加载提示的页面
# If still initializing, return loading page
template = self.template_env.get_template('loras.html')
rendered = template.render(
folders=[], # 空文件夹列表
is_initializing=True, # 新增标志
settings=settings, # Pass settings to template
request=request # Pass the request object to the template
folders=[],
is_initializing=True,
settings=settings,
request=request
)
logger.info("Loras page is initializing, returning loading page")
else:
# 正常流程
cache = await self.scanner.get_cached_data()
template = self.template_env.get_template('loras.html')
rendered = template.render(
folders=cache.folders,
is_initializing=False,
settings=settings, # Pass settings to template
request=request # Pass the request object to the template
)
# Normal flow - get data from initialized cache
try:
cache = await self.scanner.get_cached_data(force_refresh=False)
template = self.template_env.get_template('loras.html')
rendered = template.render(
folders=cache.folders,
is_initializing=False,
settings=settings,
request=request
)
except Exception as cache_error:
logger.error(f"Error loading cache data: {cache_error}")
template = self.template_env.get_template('loras.html')
rendered = template.render(
folders=[],
is_initializing=True,
settings=settings,
request=request
)
logger.info("Cache error, returning initialization page")
return web.Response(
text=rendered,
@@ -100,32 +122,30 @@ class LoraRoutes:
async def handle_recipes_page(self, request: web.Request) -> web.Response:
"""Handle GET /loras/recipes request"""
try:
# Check cache initialization status
is_initializing = (
self.recipe_scanner._cache is None and
(self.recipe_scanner._initialization_task is not None and
not self.recipe_scanner._initialization_task.done())
)
if is_initializing:
# If initializing, return a loading page
# Ensure services are initialized
await self.init_services()
# Skip initialization check and directly try to get cached data
try:
# Recipe scanner will initialize cache if needed
await self.recipe_scanner.get_cached_data(force_refresh=False)
template = self.template_env.get_template('recipes.html')
rendered = template.render(
recipes=[], # Frontend will load recipes via API
is_initializing=False,
settings=settings,
request=request
)
except Exception as cache_error:
logger.error(f"Error loading recipe cache data: {cache_error}")
# Still keep error handling - show initializing page on error
template = self.template_env.get_template('recipes.html')
rendered = template.render(
is_initializing=True,
settings=settings,
request=request # Pass the request object to the template
)
else:
# return empty recipes
recipes_data = []
template = self.template_env.get_template('recipes.html')
rendered = template.render(
recipes=recipes_data,
is_initializing=False,
settings=settings,
request=request # Pass the request object to the template
request=request
)
logger.info("Recipe cache error, returning initialization page")
return web.Response(
text=rendered,
@@ -157,5 +177,13 @@ class LoraRoutes:
def setup_routes(self, app: web.Application):
"""Register routes with the application"""
# Add an app startup handler to initialize services
app.on_startup.append(self._on_startup)
# Register routes
app.router.add_get('/loras', self.handle_loras_page)
app.router.add_get('/loras/recipes', self.handle_recipes_page)
async def _on_startup(self, app):
"""Initialize services when the app starts"""
await self.init_services()

830
py/routes/misc_routes.py Normal file
View File

@@ -0,0 +1,830 @@
import logging
import os
import asyncio
import json
import time
import aiohttp
from server import PromptServer # type: ignore
from aiohttp import web
from ..services.settings_manager import settings
from ..utils.usage_stats import UsageStats
from ..services.service_registry import ServiceRegistry
from ..utils.exif_utils import ExifUtils
from ..utils.constants import EXAMPLE_IMAGE_WIDTH, SUPPORTED_MEDIA_EXTENSIONS
from ..services.civitai_client import CivitaiClient
from ..utils.routes_common import ModelRouteUtils
logger = logging.getLogger(__name__)
# Download status tracking
download_task = None
is_downloading = False
download_progress = {
'total': 0,
'completed': 0,
'current_model': '',
'status': 'idle', # idle, running, paused, completed, error
'errors': [],
'last_error': None,
'start_time': None,
'end_time': None,
'processed_models': set(), # Track models that have been processed
'refreshed_models': set() # Track models that had metadata refreshed
}
class MiscRoutes:
"""Miscellaneous routes for various utility functions"""
@staticmethod
def setup_routes(app):
"""Register miscellaneous routes"""
app.router.add_post('/api/settings', MiscRoutes.update_settings)
# Usage stats routes
app.router.add_post('/api/update-usage-stats', MiscRoutes.update_usage_stats)
app.router.add_get('/api/get-usage-stats', MiscRoutes.get_usage_stats)
# Example images download routes
app.router.add_post('/api/download-example-images', MiscRoutes.download_example_images)
app.router.add_get('/api/example-images-status', MiscRoutes.get_example_images_status)
app.router.add_post('/api/pause-example-images', MiscRoutes.pause_example_images)
app.router.add_post('/api/resume-example-images', MiscRoutes.resume_example_images)
# Lora code update endpoint
app.router.add_post('/api/update-lora-code', MiscRoutes.update_lora_code)
@staticmethod
async def update_settings(request):
"""Update application settings"""
try:
data = await request.json()
# Validate and update settings
for key, value in data.items():
# Special handling for example_images_path - verify path exists
if key == 'example_images_path' and value:
if not os.path.exists(value):
return web.json_response({
'success': False,
'error': f"Path does not exist: {value}"
})
# Path changed - server restart required for new path to take effect
old_path = settings.get('example_images_path')
if old_path != value:
logger.info(f"Example images path changed to {value} - server restart required")
# Save to settings
settings.set(key, value)
return web.json_response({'success': True})
except Exception as e:
logger.error(f"Error updating settings: {e}", exc_info=True)
return web.Response(status=500, text=str(e))
@staticmethod
async def update_usage_stats(request):
"""
Update usage statistics based on a prompt_id
Expects a JSON body with:
{
"prompt_id": "string"
}
"""
try:
# Parse the request body
data = await request.json()
prompt_id = data.get('prompt_id')
if not prompt_id:
return web.json_response({
'success': False,
'error': 'Missing prompt_id'
}, status=400)
# Call the UsageStats to process this prompt_id synchronously
usage_stats = UsageStats()
await usage_stats.process_execution(prompt_id)
return web.json_response({
'success': True
})
except Exception as e:
logger.error(f"Failed to update usage stats: {e}", exc_info=True)
return web.json_response({
'success': False,
'error': str(e)
}, status=500)
@staticmethod
async def get_usage_stats(request):
"""Get current usage statistics"""
try:
usage_stats = UsageStats()
stats = await usage_stats.get_stats()
return web.json_response({
'success': True,
'data': stats
})
except Exception as e:
logger.error(f"Failed to get usage stats: {e}", exc_info=True)
return web.json_response({
'success': False,
'error': str(e)
}, status=500)
@staticmethod
async def download_example_images(request):
"""
Download example images for models from Civitai
Expects a JSON body with:
{
"output_dir": "path/to/output", # Base directory to save example images
"optimize": true, # Whether to optimize images (default: true)
"model_types": ["lora", "checkpoint"], # Model types to process (default: both)
"delay": 1.0 # Delay between downloads to avoid rate limiting (default: 1.0)
}
"""
global download_task, is_downloading, download_progress
if is_downloading:
# Create a copy for JSON serialization
response_progress = download_progress.copy()
response_progress['processed_models'] = list(download_progress['processed_models'])
response_progress['refreshed_models'] = list(download_progress['refreshed_models'])
return web.json_response({
'success': False,
'error': 'Download already in progress',
'status': response_progress
}, status=400)
try:
# Parse the request body
data = await request.json()
output_dir = data.get('output_dir')
optimize = data.get('optimize', True)
model_types = data.get('model_types', ['lora', 'checkpoint'])
delay = float(data.get('delay', 0.1)) # Default to 0.1 seconds
if not output_dir:
return web.json_response({
'success': False,
'error': 'Missing output_dir parameter'
}, status=400)
# Create the output directory
os.makedirs(output_dir, exist_ok=True)
# Initialize progress tracking
download_progress['total'] = 0
download_progress['completed'] = 0
download_progress['current_model'] = ''
download_progress['status'] = 'running'
download_progress['errors'] = []
download_progress['last_error'] = None
download_progress['start_time'] = time.time()
download_progress['end_time'] = None
# Get the processed models list from a file if it exists
progress_file = os.path.join(output_dir, '.download_progress.json')
if os.path.exists(progress_file):
try:
with open(progress_file, 'r', encoding='utf-8') as f:
saved_progress = json.load(f)
download_progress['processed_models'] = set(saved_progress.get('processed_models', []))
logger.info(f"Loaded previous progress, {len(download_progress['processed_models'])} models already processed")
except Exception as e:
logger.error(f"Failed to load progress file: {e}")
download_progress['processed_models'] = set()
else:
download_progress['processed_models'] = set()
# Start the download task
is_downloading = True
download_task = asyncio.create_task(
MiscRoutes._download_all_example_images(
output_dir,
optimize,
model_types,
delay
)
)
# Create a copy for JSON serialization
response_progress = download_progress.copy()
response_progress['processed_models'] = list(download_progress['processed_models'])
response_progress['refreshed_models'] = list(download_progress['refreshed_models'])
return web.json_response({
'success': True,
'message': 'Download started',
'status': response_progress
})
except Exception as e:
logger.error(f"Failed to start example images download: {e}", exc_info=True)
return web.json_response({
'success': False,
'error': str(e)
}, status=500)
@staticmethod
async def get_example_images_status(request):
"""Get the current status of example images download"""
global download_progress
# Create a copy of the progress dict with the set converted to a list for JSON serialization
response_progress = download_progress.copy()
response_progress['processed_models'] = list(download_progress['processed_models'])
response_progress['refreshed_models'] = list(download_progress['refreshed_models'])
return web.json_response({
'success': True,
'is_downloading': is_downloading,
'status': response_progress
})
@staticmethod
async def pause_example_images(request):
"""Pause the example images download"""
global download_progress
if not is_downloading:
return web.json_response({
'success': False,
'error': 'No download in progress'
}, status=400)
download_progress['status'] = 'paused'
return web.json_response({
'success': True,
'message': 'Download paused'
})
@staticmethod
async def resume_example_images(request):
"""Resume the example images download"""
global download_progress
if not is_downloading:
return web.json_response({
'success': False,
'error': 'No download in progress'
}, status=400)
if download_progress['status'] == 'paused':
download_progress['status'] = 'running'
return web.json_response({
'success': True,
'message': 'Download resumed'
})
else:
return web.json_response({
'success': False,
'error': f"Download is in '{download_progress['status']}' state, cannot resume"
}, status=400)
@staticmethod
async def _refresh_model_metadata(model_hash, model_name, scanner_type, scanner):
"""Refresh model metadata from CivitAI
Args:
model_hash: SHA256 hash of the model
model_name: Name of the model (for logging)
scanner_type: Type of scanner ('lora' or 'checkpoint')
scanner: Scanner instance for this model type
Returns:
bool: True if metadata was successfully refreshed, False otherwise
"""
global download_progress
try:
# Find the model in the scanner cache
cache = await scanner.get_cached_data()
model_data = None
for item in cache.raw_data:
if item.get('sha256') == model_hash:
model_data = item
break
if not model_data:
logger.warning(f"Model {model_name} with hash {model_hash} not found in cache")
return False
file_path = model_data.get('file_path')
if not file_path:
logger.warning(f"Model {model_name} has no file path")
return False
# Track that we're refreshing this model
download_progress['refreshed_models'].add(model_hash)
# Use ModelRouteUtils to refresh the metadata
async def update_cache_func(old_path, new_path, metadata):
return await scanner.update_single_model_cache(old_path, new_path, metadata)
success = await ModelRouteUtils.fetch_and_update_model(
model_hash,
file_path,
model_data,
update_cache_func
)
if success:
logger.info(f"Successfully refreshed metadata for {model_name}")
return True
else:
logger.warning(f"Failed to refresh metadata for {model_name}")
return False
except Exception as e:
error_msg = f"Error refreshing metadata for {model_name}: {str(e)}"
logger.error(error_msg, exc_info=True)
download_progress['errors'].append(error_msg)
download_progress['last_error'] = error_msg
return False
@staticmethod
async def _process_model_images(model_hash, model_name, model_images, model_dir, optimize, independent_session, delay):
"""Process and download images for a single model
Args:
model_hash: SHA256 hash of the model
model_name: Name of the model
model_images: List of image objects from CivitAI
model_dir: Directory to save images to
optimize: Whether to optimize images
independent_session: aiohttp session for downloads
delay: Delay between downloads
Returns:
bool: True if all images were processed successfully, False otherwise
"""
global download_progress
model_success = True
for i, image in enumerate(model_images, 1):
image_url = image.get('url')
if not image_url:
continue
# Get image filename from URL
image_filename = os.path.basename(image_url.split('?')[0])
image_ext = os.path.splitext(image_filename)[1].lower()
# Handle both images and videos
is_image = image_ext in SUPPORTED_MEDIA_EXTENSIONS['images']
is_video = image_ext in SUPPORTED_MEDIA_EXTENSIONS['videos']
if not (is_image or is_video):
logger.debug(f"Skipping unsupported file type: {image_filename}")
continue
save_filename = f"image_{i}{image_ext}"
# Check if already downloaded
save_path = os.path.join(model_dir, save_filename)
if os.path.exists(save_path):
logger.debug(f"File already exists: {save_path}")
continue
# Download the file
try:
logger.debug(f"Downloading {save_filename} for {model_name}")
# Direct download using the independent session
async with independent_session.get(image_url, timeout=60) as response:
if response.status == 200:
if is_image and optimize:
# For images, optimize if requested
image_data = await response.read()
optimized_data, ext = ExifUtils.optimize_image(
image_data,
target_width=EXAMPLE_IMAGE_WIDTH,
format='webp',
quality=85,
preserve_metadata=False
)
# Update save filename if format changed
if ext == '.webp':
save_filename = os.path.splitext(save_filename)[0] + '.webp'
save_path = os.path.join(model_dir, save_filename)
# Save the optimized image
with open(save_path, 'wb') as f:
f.write(optimized_data)
else:
# For videos or unoptimized images, save directly
with open(save_path, 'wb') as f:
async for chunk in response.content.iter_chunked(8192):
if chunk:
f.write(chunk)
elif response.status == 404:
error_msg = f"Failed to download file: {image_url}, status code: 404 - Model metadata might be stale"
logger.warning(error_msg)
download_progress['errors'].append(error_msg)
download_progress['last_error'] = error_msg
model_success = False # Mark model as failed due to 404
# Return early to trigger metadata refresh attempt
return False, True # (success, is_stale_metadata)
else:
error_msg = f"Failed to download file: {image_url}, status code: {response.status}"
logger.warning(error_msg)
download_progress['errors'].append(error_msg)
download_progress['last_error'] = error_msg
model_success = False # Mark model as failed
# Add a delay between downloads for remote files only
await asyncio.sleep(delay)
except Exception as e:
error_msg = f"Error downloading file {image_url}: {str(e)}"
logger.error(error_msg)
download_progress['errors'].append(error_msg)
download_progress['last_error'] = error_msg
model_success = False # Mark model as failed
return model_success, False # (success, is_stale_metadata)
@staticmethod
async def _process_local_example_images(model_file_path, model_file_name, model_name, model_dir, optimize):
"""Process local example images for a model
Args:
model_file_path: Path to the model file
model_file_name: Filename of the model
model_name: Name of the model
model_dir: Directory to save processed images to
optimize: Whether to optimize images
Returns:
bool: True if local images were processed successfully, False otherwise
"""
global download_progress
try:
model_dir_path = os.path.dirname(model_file_path)
local_images = []
# Look for files with pattern: filename.example.*.ext
if model_file_name:
example_prefix = f"{model_file_name}.example."
if os.path.exists(model_dir_path):
for file in os.listdir(model_dir_path):
file_lower = file.lower()
if file_lower.startswith(example_prefix.lower()):
file_ext = os.path.splitext(file_lower)[1]
is_supported = (file_ext in SUPPORTED_MEDIA_EXTENSIONS['images'] or
file_ext in SUPPORTED_MEDIA_EXTENSIONS['videos'])
if is_supported:
local_images.append(os.path.join(model_dir_path, file))
# Process local images if found
if local_images:
logger.info(f"Found {len(local_images)} local example images for {model_name}")
for i, local_image_path in enumerate(local_images, 1):
local_ext = os.path.splitext(local_image_path)[1].lower()
save_filename = f"image_{i}{local_ext}"
save_path = os.path.join(model_dir, save_filename)
# Skip if already exists in output directory
if os.path.exists(save_path):
logger.debug(f"File already exists in output: {save_path}")
continue
# Handle image processing based on file type and optimize setting
is_image = local_ext in SUPPORTED_MEDIA_EXTENSIONS['images']
if is_image and optimize:
# Optimize the image
with open(local_image_path, 'rb') as img_file:
image_data = img_file.read()
optimized_data, ext = ExifUtils.optimize_image(
image_data,
target_width=EXAMPLE_IMAGE_WIDTH,
format='webp',
quality=85,
preserve_metadata=False
)
# Update save filename if format changed
if ext == '.webp':
save_filename = os.path.splitext(save_filename)[0] + '.webp'
save_path = os.path.join(model_dir, save_filename)
# Save the optimized image
with open(save_path, 'wb') as f:
f.write(optimized_data)
else:
# For videos or unoptimized images, copy directly
with open(local_image_path, 'rb') as src_file:
with open(save_path, 'wb') as dst_file:
dst_file.write(src_file.read())
return True
return False
except Exception as e:
error_msg = f"Error processing local examples for {model_name}: {str(e)}"
logger.error(error_msg)
download_progress['errors'].append(error_msg)
download_progress['last_error'] = error_msg
return False
@staticmethod
async def _download_all_example_images(output_dir, optimize, model_types, delay):
"""Download example images for all models
Args:
output_dir: Base directory to save example images
optimize: Whether to optimize images
model_types: List of model types to process
delay: Delay between downloads to avoid rate limiting
"""
global is_downloading, download_progress
# Create an independent session for downloading example images
# This avoids interference with the CivitAI client's session
connector = aiohttp.TCPConnector(
ssl=True,
limit=3,
force_close=False,
enable_cleanup_closed=True
)
timeout = aiohttp.ClientTimeout(total=None, connect=60, sock_read=60)
# Create a dedicated session just for this download task
independent_session = aiohttp.ClientSession(
connector=connector,
trust_env=True,
timeout=timeout
)
try:
# Get the scanners
scanners = []
if 'lora' in model_types:
lora_scanner = await ServiceRegistry.get_lora_scanner()
scanners.append(('lora', lora_scanner))
if 'checkpoint' in model_types:
checkpoint_scanner = await ServiceRegistry.get_checkpoint_scanner()
scanners.append(('checkpoint', checkpoint_scanner))
# Get all models from all scanners
all_models = []
for scanner_type, scanner in scanners:
cache = await scanner.get_cached_data()
if cache and cache.raw_data:
for model in cache.raw_data:
# Only process models with images and a valid sha256
if model.get('civitai') and model.get('civitai', {}).get('images') and model.get('sha256'):
all_models.append((scanner_type, model, scanner))
# Update total count
download_progress['total'] = len(all_models)
logger.info(f"Found {download_progress['total']} models with example images")
# Process each model
for scanner_type, model, scanner in all_models:
# Check if download is paused
while download_progress['status'] == 'paused':
await asyncio.sleep(1)
# Check if download should continue
if download_progress['status'] != 'running':
logger.info(f"Download stopped: {download_progress['status']}")
break
model_hash = model.get('sha256', '').lower()
model_name = model.get('model_name', 'Unknown')
model_file_path = model.get('file_path', '')
model_file_name = model.get('file_name', '')
try:
# Update current model info
download_progress['current_model'] = f"{model_name} ({model_hash[:8]})"
# Skip if already processed
if model_hash in download_progress['processed_models']:
logger.debug(f"Skipping already processed model: {model_name}")
download_progress['completed'] += 1
continue
# Create model directory
model_dir = os.path.join(output_dir, model_hash)
os.makedirs(model_dir, exist_ok=True)
# Process images for this model
images = model.get('civitai', {}).get('images', [])
if not images:
logger.debug(f"No images found for model: {model_name}")
download_progress['processed_models'].add(model_hash)
download_progress['completed'] += 1
continue
# First check if we have local example images for this model
local_images_processed = False
if model_file_path:
local_images_processed = await MiscRoutes._process_local_example_images(
model_file_path,
model_file_name,
model_name,
model_dir,
optimize
)
if local_images_processed:
# Mark as successfully processed if all local images were processed
download_progress['processed_models'].add(model_hash)
logger.info(f"Successfully processed local examples for {model_name}")
# If we didn't process local images, download from remote
if not local_images_processed:
# Try to download images
model_success, is_stale_metadata = await MiscRoutes._process_model_images(
model_hash,
model_name,
images,
model_dir,
optimize,
independent_session,
delay
)
# If metadata is stale (404 error), try to refresh it and download again
if is_stale_metadata and model_hash not in download_progress['refreshed_models']:
logger.info(f"Metadata seems stale for {model_name}, attempting to refresh...")
# Refresh metadata from CivitAI
refresh_success = await MiscRoutes._refresh_model_metadata(
model_hash,
model_name,
scanner_type,
scanner
)
if refresh_success:
# Get updated model data
updated_cache = await scanner.get_cached_data()
updated_model = None
for item in updated_cache.raw_data:
if item.get('sha256') == model_hash:
updated_model = item
break
if updated_model and updated_model.get('civitai', {}).get('images'):
# Try downloading with updated metadata
logger.info(f"Retrying download with refreshed metadata for {model_name}")
updated_images = updated_model.get('civitai', {}).get('images', [])
# Retry download with new images
model_success, _ = await MiscRoutes._process_model_images(
model_hash,
model_name,
updated_images,
model_dir,
optimize,
independent_session,
delay
)
# Only mark model as processed if all images downloaded successfully
if model_success:
download_progress['processed_models'].add(model_hash)
else:
logger.warning(f"Model {model_name} had download errors, will not mark as completed")
# Save progress to file periodically
if download_progress['completed'] % 10 == 0 or download_progress['completed'] == download_progress['total'] - 1:
progress_file = os.path.join(output_dir, '.download_progress.json')
with open(progress_file, 'w', encoding='utf-8') as f:
json.dump({
'processed_models': list(download_progress['processed_models']),
'refreshed_models': list(download_progress['refreshed_models']),
'completed': download_progress['completed'],
'total': download_progress['total'],
'last_update': time.time()
}, f, indent=2)
except Exception as e:
error_msg = f"Error processing model {model.get('model_name')}: {str(e)}"
logger.error(error_msg, exc_info=True)
download_progress['errors'].append(error_msg)
download_progress['last_error'] = error_msg
# Update progress
download_progress['completed'] += 1
# Mark as completed
download_progress['status'] = 'completed'
download_progress['end_time'] = time.time()
logger.info(f"Example images download completed: {download_progress['completed']}/{download_progress['total']} models processed")
except Exception as e:
error_msg = f"Error during example images download: {str(e)}"
logger.error(error_msg, exc_info=True)
download_progress['errors'].append(error_msg)
download_progress['last_error'] = error_msg
download_progress['status'] = 'error'
download_progress['end_time'] = time.time()
finally:
# Close the independent session
try:
await independent_session.close()
except Exception as e:
logger.error(f"Error closing download session: {e}")
# Save final progress to file
try:
progress_file = os.path.join(output_dir, '.download_progress.json')
with open(progress_file, 'w', encoding='utf-8') as f:
json.dump({
'processed_models': list(download_progress['processed_models']),
'refreshed_models': list(download_progress['refreshed_models']),
'completed': download_progress['completed'],
'total': download_progress['total'],
'last_update': time.time(),
'status': download_progress['status']
}, f, indent=2)
except Exception as e:
logger.error(f"Failed to save progress file: {e}")
# Set download status to not downloading
is_downloading = False
@staticmethod
async def update_lora_code(request):
"""
Update Lora code in ComfyUI nodes
Expects a JSON body with:
{
"node_ids": [123, 456], # List of node IDs to update
"lora_code": "<lora:modelname:1.0>", # The Lora code to send
"mode": "append" # or "replace" - whether to append or replace existing code
}
"""
try:
# Parse the request body
data = await request.json()
node_ids = data.get('node_ids', [])
lora_code = data.get('lora_code', '')
mode = data.get('mode', 'append')
if not node_ids or not lora_code:
return web.json_response({
'success': False,
'error': 'Missing node_ids or lora_code parameter'
}, status=400)
# Send the lora code update to each node
results = []
for node_id in node_ids:
try:
# Send the message to the frontend
PromptServer.instance.send_sync("lora_code_update", {
"id": node_id,
"lora_code": lora_code,
"mode": mode
})
results.append({
'node_id': node_id,
'success': True
})
except Exception as e:
logger.error(f"Error sending lora code to node {node_id}: {e}")
results.append({
'node_id': node_id,
'success': False,
'error': str(e)
})
return web.json_response({
'success': True,
'results': results
})
except Exception as e:
logger.error(f"Failed to update lora code: {e}", exc_info=True)
return web.json_response({
'success': False,
'error': str(e)
}, status=500)

File diff suppressed because it is too large Load Diff

View File

@@ -150,11 +150,16 @@ class UpdateRoutes:
"""
Compare two semantic version strings
Returns True if version2 is newer than version1
Ignores any suffixes after '-' (e.g., -bugfix, -alpha)
"""
try:
# Clean version strings - remove any suffix after '-'
v1_clean = version1.split('-')[0]
v2_clean = version2.split('-')[0]
# Split versions into components
v1_parts = [int(x) for x in version1.split('.')]
v2_parts = [int(x) for x in version2.split('.')]
v1_parts = [int(x) for x in v1_clean.split('.')]
v2_parts = [int(x) for x in v2_clean.split('.')]
# Ensure both have 3 components (major.minor.patch)
while len(v1_parts) < 3:

View File

@@ -0,0 +1,131 @@
import os
import logging
import asyncio
from typing import List, Dict, Optional, Set
import folder_paths # type: ignore
from ..utils.models import CheckpointMetadata
from ..config import config
from .model_scanner import ModelScanner
from .model_hash_index import ModelHashIndex
from .service_registry import ServiceRegistry
logger = logging.getLogger(__name__)
class CheckpointScanner(ModelScanner):
"""Service for scanning and managing checkpoint files"""
_instance = None
_lock = asyncio.Lock()
def __new__(cls):
if cls._instance is None:
cls._instance = super().__new__(cls)
return cls._instance
def __init__(self):
if not hasattr(self, '_initialized'):
# Define supported file extensions
file_extensions = {'.safetensors', '.ckpt', '.pt', '.pth', '.sft', '.gguf'}
super().__init__(
model_type="checkpoint",
model_class=CheckpointMetadata,
file_extensions=file_extensions,
hash_index=ModelHashIndex()
)
self._checkpoint_roots = self._init_checkpoint_roots()
self._initialized = True
@classmethod
async def get_instance(cls):
"""Get singleton instance with async support"""
async with cls._lock:
if cls._instance is None:
cls._instance = cls()
return cls._instance
def _init_checkpoint_roots(self) -> List[str]:
"""Initialize checkpoint roots from ComfyUI settings"""
# Get both checkpoint and diffusion_models paths
checkpoint_paths = folder_paths.get_folder_paths("checkpoints")
diffusion_paths = folder_paths.get_folder_paths("diffusion_models")
# Combine, normalize and deduplicate paths
all_paths = set()
for path in checkpoint_paths + diffusion_paths:
if os.path.exists(path):
norm_path = path.replace(os.sep, "/")
all_paths.add(norm_path)
# Sort for consistent order
sorted_paths = sorted(all_paths, key=lambda p: p.lower())
return sorted_paths
def get_model_roots(self) -> List[str]:
"""Get checkpoint root directories"""
return self._checkpoint_roots
async def scan_all_models(self) -> List[Dict]:
"""Scan all checkpoint directories and return metadata"""
all_checkpoints = []
# Create scan tasks for each directory
scan_tasks = []
for root in self._checkpoint_roots:
task = asyncio.create_task(self._scan_directory(root))
scan_tasks.append(task)
# Wait for all tasks to complete
for task in scan_tasks:
try:
checkpoints = await task
all_checkpoints.extend(checkpoints)
except Exception as e:
logger.error(f"Error scanning checkpoint directory: {e}")
return all_checkpoints
async def _scan_directory(self, root_path: str) -> List[Dict]:
"""Scan a directory for checkpoint files"""
checkpoints = []
original_root = root_path
async def scan_recursive(path: str, visited_paths: set):
try:
real_path = os.path.realpath(path)
if real_path in visited_paths:
logger.debug(f"Skipping already visited path: {path}")
return
visited_paths.add(real_path)
with os.scandir(path) as it:
entries = list(it)
for entry in entries:
try:
if entry.is_file(follow_symlinks=True):
# Check if file has supported extension
ext = os.path.splitext(entry.name)[1].lower()
if ext in self.file_extensions:
file_path = entry.path.replace(os.sep, "/")
await self._process_single_file(file_path, original_root, checkpoints)
await asyncio.sleep(0)
elif entry.is_dir(follow_symlinks=True):
# For directories, continue scanning with original path
await scan_recursive(entry.path, visited_paths)
except Exception as e:
logger.error(f"Error processing entry {entry.path}: {e}")
except Exception as e:
logger.error(f"Error scanning {path}: {e}")
await scan_recursive(root_path, set())
return checkpoints
async def _process_single_file(self, file_path: str, root_path: str, checkpoints: list):
"""Process a single checkpoint file and add to results"""
try:
result = await self._process_model_file(file_path, root_path)
if result:
checkpoints.append(result)
except Exception as e:
logger.error(f"Error processing {file_path}: {e}")

View File

@@ -3,6 +3,7 @@ import aiohttp
import os
import json
import logging
import asyncio
from email.parser import Parser
from typing import Optional, Dict, Tuple, List
from urllib.parse import unquote
@@ -11,21 +12,64 @@ from ..utils.models import LoraMetadata
logger = logging.getLogger(__name__)
class CivitaiClient:
_instance = None
_lock = asyncio.Lock()
@classmethod
async def get_instance(cls):
"""Get singleton instance of CivitaiClient"""
async with cls._lock:
if cls._instance is None:
cls._instance = cls()
return cls._instance
def __init__(self):
# Check if already initialized for singleton pattern
if hasattr(self, '_initialized'):
return
self._initialized = True
self.base_url = "https://civitai.com/api/v1"
self.headers = {
'User-Agent': 'ComfyUI-LoRA-Manager/1.0'
}
self._session = None
self._session_created_at = None
# Set default buffer size to 1MB for higher throughput
self.chunk_size = 1024 * 1024
@property
async def session(self) -> aiohttp.ClientSession:
"""Lazy initialize the session"""
if self._session is None:
connector = aiohttp.TCPConnector(ssl=True)
trust_env = True # 允许使用系统环境变量中的代理设置
self._session = aiohttp.ClientSession(connector=connector, trust_env=trust_env)
# Optimize TCP connection parameters
connector = aiohttp.TCPConnector(
ssl=True,
limit=3, # Further reduced from 5 to 3
ttl_dns_cache=0, # Disabled DNS caching completely
force_close=False, # Keep connections for reuse
enable_cleanup_closed=True
)
trust_env = True # Allow using system environment proxy settings
# Configure timeout parameters
timeout = aiohttp.ClientTimeout(total=None, connect=60, sock_read=60)
self._session = aiohttp.ClientSession(
connector=connector,
trust_env=trust_env,
timeout=timeout
)
self._session_created_at = datetime.now()
return self._session
async def _ensure_fresh_session(self):
"""Refresh session if it's been open too long"""
if self._session is not None:
if not hasattr(self, '_session_created_at') or \
(datetime.now() - self._session_created_at).total_seconds() > 300: # 5 minutes
await self.close()
self._session = None
return await self.session
def _parse_content_disposition(self, header: str) -> str:
"""Parse filename from content-disposition header"""
@@ -71,21 +115,22 @@ class CivitaiClient:
Returns:
Tuple[bool, str]: (success, save_path or error message)
"""
session = await self.session
logger.debug(f"Resolving DNS for: {url}")
session = await self._ensure_fresh_session()
try:
headers = self._get_request_headers()
# Add Range header to allow resumable downloads
headers['Accept-Encoding'] = 'identity' # Disable compression for better chunked downloads
logger.debug(f"Starting download from: {url}")
async with session.get(url, headers=headers, allow_redirects=True) as response:
if response.status != 200:
# Handle 401 unauthorized responses
if response.status == 401:
logger.warning(f"Unauthorized access to resource: {url} (Status 401)")
# Check if this is an API key issue (has Set-Cookie headers)
if 'Set-Cookie' in response.headers:
return False, "Invalid or missing CivitAI API key. Please check your API key in settings."
# Otherwise it's an early access restriction
return False, "Early access restriction: You must purchase early access to download this LoRA."
return False, "Invalid or missing CivitAI API key, or early access restriction."
# Handle other client errors that might be permission-related
if response.status == 403:
@@ -93,6 +138,7 @@ class CivitaiClient:
return False, "Access forbidden: You don't have permission to download this file."
# Generic error response for other status codes
logger.error(f"Download failed for {url} with status {response.status}")
return False, f"Download failed with status {response.status}"
# Get filename from content-disposition header
@@ -106,16 +152,23 @@ class CivitaiClient:
# Get total file size for progress calculation
total_size = int(response.headers.get('content-length', 0))
current_size = 0
last_progress_report_time = datetime.now()
# Stream download to file with progress updates
# Stream download to file with progress updates using larger buffer
with open(save_path, 'wb') as f:
async for chunk in response.content.iter_chunked(8192):
async for chunk in response.content.iter_chunked(self.chunk_size):
if chunk:
f.write(chunk)
current_size += len(chunk)
if progress_callback and total_size:
# Limit progress update frequency to reduce overhead
now = datetime.now()
time_diff = (now - last_progress_report_time).total_seconds()
if progress_callback and total_size and time_diff >= 0.5:
progress = (current_size / total_size) * 100
await progress_callback(progress)
last_progress_report_time = now
# Ensure 100% progress is reported
if progress_callback:
@@ -123,13 +176,16 @@ class CivitaiClient:
return True, save_path
except aiohttp.ClientError as e:
logger.error(f"Network error during download: {e}")
return False, f"Network error: {str(e)}"
except Exception as e:
logger.error(f"Download error: {e}")
return False, str(e)
async def get_model_by_hash(self, model_hash: str) -> Optional[Dict]:
try:
session = await self.session
session = await self._ensure_fresh_session()
async with session.get(f"{self.base_url}/model-versions/by-hash/{model_hash}") as response:
if response.status == 200:
return await response.json()
@@ -140,7 +196,7 @@ class CivitaiClient:
async def download_preview_image(self, image_url: str, save_path: str):
try:
session = await self.session
session = await self._ensure_fresh_session()
async with session.get(image_url) as response:
if response.status == 200:
content = await response.read()
@@ -155,33 +211,63 @@ class CivitaiClient:
async def get_model_versions(self, model_id: str) -> List[Dict]:
"""Get all versions of a model with local availability info"""
try:
session = await self.session # 等待获取 session
session = await self._ensure_fresh_session() # Use fresh session
async with session.get(f"{self.base_url}/models/{model_id}") as response:
if response.status != 200:
return None
data = await response.json()
return data.get('modelVersions', [])
# Also return model type along with versions
return {
'modelVersions': data.get('modelVersions', []),
'type': data.get('type', '')
}
except Exception as e:
logger.error(f"Error fetching model versions: {e}")
return None
async def get_model_version_info(self, version_id: str) -> Optional[Dict]:
"""Fetch model version metadata from Civitai"""
async def get_model_version_info(self, version_id: str) -> Tuple[Optional[Dict], Optional[str]]:
"""Fetch model version metadata from Civitai
Args:
version_id: The Civitai model version ID
Returns:
Tuple[Optional[Dict], Optional[str]]: A tuple containing:
- The model version data or None if not found
- An error message if there was an error, or None on success
"""
try:
session = await self.session
session = await self._ensure_fresh_session()
url = f"{self.base_url}/model-versions/{version_id}"
headers = self._get_request_headers()
logger.debug(f"Resolving DNS for model version info: {url}")
async with session.get(url, headers=headers) as response:
if response.status == 200:
return await response.json()
return None
logger.debug(f"Successfully fetched model version info for: {version_id}")
return await response.json(), None
# Handle specific error cases
if response.status == 404:
# Try to parse the error message
try:
error_data = await response.json()
error_msg = error_data.get('error', f"Model not found (status 404)")
logger.warning(f"Model version not found: {version_id} - {error_msg}")
return None, error_msg
except:
return None, "Model not found (status 404)"
# Other error cases
logger.error(f"Failed to fetch model info for {version_id} (status {response.status})")
return None, f"Failed to fetch model info (status {response.status})"
except Exception as e:
logger.error(f"Error fetching model version info: {e}")
return None
error_msg = f"Error fetching model version info: {e}"
logger.error(error_msg)
return None, error_msg
async def get_model_metadata(self, model_id: str) -> Tuple[Optional[Dict], int]:
"""Fetch model metadata (description and tags) from Civitai API
"""Fetch model metadata (description, tags, and creator info) from Civitai API
Args:
model_id: The Civitai model ID
@@ -192,7 +278,7 @@ class CivitaiClient:
- The HTTP status code from the request
"""
try:
session = await self.session
session = await self._ensure_fresh_session()
headers = self._get_request_headers()
url = f"{self.base_url}/models/{model_id}"
@@ -208,10 +294,14 @@ class CivitaiClient:
# Extract relevant metadata
metadata = {
"description": data.get("description") or "No model description available",
"tags": data.get("tags", [])
"tags": data.get("tags", []),
"creator": {
"username": data.get("creator", {}).get("username"),
"image": data.get("creator", {}).get("image")
}
}
if metadata["description"] or metadata["tags"]:
if metadata["description"] or metadata["tags"] or metadata["creator"]["username"]:
return metadata, status_code
else:
logger.warning(f"No metadata found for model {model_id}")
@@ -236,14 +326,13 @@ class CivitaiClient:
async def _get_hash_from_civitai(self, model_version_id: str) -> Optional[str]:
"""Get hash from Civitai API"""
try:
if not self._session:
session = await self._ensure_fresh_session()
if not session:
return None
logger.info(f"Fetching model version info from Civitai for ID: {model_version_id}")
version_info = await self._session.get(f"{self.base_url}/model-versions/{model_version_id}")
version_info = await session.get(f"{self.base_url}/model-versions/{model_version_id}")
if not version_info or not version_info.json().get('files'):
logger.warning(f"No files found in version info for ID: {model_version_id}")
return None
# Get hash from the first file
@@ -253,7 +342,6 @@ class CivitaiClient:
hash_value = file_info['hashes']['SHA256'].lower()
return hash_value
logger.warning(f"No SHA256 hash found in version info for ID: {model_version_id}")
return None
except Exception as e:
logger.error(f"Error getting hash from Civitai: {e}")

View File

@@ -1,20 +1,79 @@
import logging
import os
import json
from typing import Optional, Dict
import asyncio
from typing import Optional, Dict, Any
from .civitai_client import CivitaiClient
from .file_monitor import LoraFileMonitor
from ..utils.models import LoraMetadata
from ..utils.models import LoraMetadata, CheckpointMetadata
from ..utils.constants import CARD_PREVIEW_WIDTH
from ..utils.exif_utils import ExifUtils
from .service_registry import ServiceRegistry
# Download to temporary file first
import tempfile
logger = logging.getLogger(__name__)
class DownloadManager:
def __init__(self, file_monitor: Optional[LoraFileMonitor] = None):
self.civitai_client = CivitaiClient()
self.file_monitor = file_monitor
_instance = None
_lock = asyncio.Lock()
@classmethod
async def get_instance(cls):
"""Get singleton instance of DownloadManager"""
async with cls._lock:
if cls._instance is None:
cls._instance = cls()
return cls._instance
async def download_from_civitai(self, download_url: str, save_dir: str, relative_path: str = '',
progress_callback=None) -> Dict:
def __init__(self):
# Check if already initialized for singleton pattern
if hasattr(self, '_initialized'):
return
self._initialized = True
self._civitai_client = None # Will be lazily initialized
async def _get_civitai_client(self):
"""Lazily initialize CivitaiClient from registry"""
if self._civitai_client is None:
self._civitai_client = await ServiceRegistry.get_civitai_client()
return self._civitai_client
async def _get_lora_monitor(self):
"""Get the lora file monitor from registry"""
return await ServiceRegistry.get_lora_monitor()
async def _get_checkpoint_monitor(self):
"""Get the checkpoint file monitor from registry"""
return await ServiceRegistry.get_checkpoint_monitor()
async def _get_lora_scanner(self):
"""Get the lora scanner from registry"""
return await ServiceRegistry.get_lora_scanner()
async def _get_checkpoint_scanner(self):
"""Get the checkpoint scanner from registry"""
return await ServiceRegistry.get_checkpoint_scanner()
async def download_from_civitai(self, download_url: str = None, model_hash: str = None,
model_version_id: str = None, save_dir: str = None,
relative_path: str = '', progress_callback=None,
model_type: str = "lora") -> Dict:
"""Download model from Civitai
Args:
download_url: Direct download URL for the model
model_hash: SHA256 hash of the model
model_version_id: Civitai model version ID
save_dir: Directory to save the model to
relative_path: Relative path within save_dir
progress_callback: Callback function for progress updates
model_type: Type of model ('lora' or 'checkpoint')
Returns:
Dict with download result
"""
try:
# Update save directory with relative path if provided
if relative_path:
@@ -22,13 +81,31 @@ class DownloadManager:
# Create directory if it doesn't exist
os.makedirs(save_dir, exist_ok=True)
# Get version info
version_id = download_url.split('/')[-1]
version_info = await self.civitai_client.get_model_version_info(version_id)
if not version_info:
return {'success': False, 'error': 'Failed to fetch model metadata'}
# Get civitai client
civitai_client = await self._get_civitai_client()
# Check if this is an early access LoRA
# Get version info based on the provided identifier
version_info = None
error_msg = None
if model_hash:
# Get model by hash
version_info = await civitai_client.get_model_by_hash(model_hash)
elif model_version_id:
# Use model version ID directly
version_info, error_msg = await civitai_client.get_model_version_info(model_version_id)
elif download_url:
# Extract version ID from download URL
version_id = download_url.split('/')[-1]
version_info, error_msg = await civitai_client.get_model_version_info(version_id)
if not version_info:
if error_msg and "model not found" in error_msg.lower():
return {'success': False, 'error': f'Model not found on Civitai: {error_msg}'}
return {'success': False, 'error': error_msg or 'Failed to fetch model metadata'}
# Check if this is an early access model
if version_info.get('earlyAccessEndsAt'):
early_access_date = version_info.get('earlyAccessEndsAt', '')
# Convert to a readable date if possible
@@ -36,12 +113,12 @@ class DownloadManager:
from datetime import datetime
date_obj = datetime.fromisoformat(early_access_date.replace('Z', '+00:00'))
formatted_date = date_obj.strftime('%Y-%m-%d')
early_access_msg = f"This LoRA requires early access payment (until {formatted_date}). "
early_access_msg = f"This model requires early access payment (until {formatted_date}). "
except:
early_access_msg = "This LoRA requires early access payment. "
early_access_msg = "This model requires early access payment. "
early_access_msg += "Please ensure you have purchased early access and are logged in to Civitai."
logger.warning(f"Early access LoRA detected: {version_info.get('name', 'Unknown')}")
logger.warning(f"Early access model detected: {version_info.get('name', 'Unknown')}")
# We'll still try to download, but log a warning and prepare for potential failure
if progress_callback:
@@ -51,50 +128,47 @@ class DownloadManager:
if progress_callback:
await progress_callback(0)
# 2. 获取文件信息
# 2. Get file information
file_info = next((f for f in version_info.get('files', []) if f.get('primary')), None)
if not file_info:
return {'success': False, 'error': 'No primary file found in metadata'}
# 3. 准备下载
# 3. Prepare download
file_name = file_info['name']
save_path = os.path.join(save_dir, file_name)
file_size = file_info.get('sizeKB', 0) * 1024
# 4. 通知文件监控系统 - 使用规范化路径和文件大小
if self.file_monitor and self.file_monitor.handler:
# Add both the normalized path and potential alternative paths
normalized_path = save_path.replace(os.sep, '/')
self.file_monitor.handler.add_ignore_path(normalized_path, file_size)
# Also add the path with file extension variations (.safetensors)
if not normalized_path.endswith('.safetensors'):
safetensors_path = os.path.splitext(normalized_path)[0] + '.safetensors'
self.file_monitor.handler.add_ignore_path(safetensors_path, file_size)
logger.debug(f"Added download path to ignore list: {normalized_path} (size: {file_size} bytes)")
# 4. Notify file monitor - use normalized path and file size
# file monitor is despreted, so we don't need to use it
# 5. 准备元数据
metadata = LoraMetadata.from_civitai_info(version_info, file_info, save_path)
# 5. Prepare metadata based on model type
if model_type == "checkpoint":
metadata = CheckpointMetadata.from_civitai_info(version_info, file_info, save_path)
logger.info(f"Creating CheckpointMetadata for {file_name}")
else:
metadata = LoraMetadata.from_civitai_info(version_info, file_info, save_path)
logger.info(f"Creating LoraMetadata for {file_name}")
# 5.1 获取并更新模型标签和描述信息
# 5.1 Get and update model tags, description and creator info
model_id = version_info.get('modelId')
if model_id:
model_metadata, _ = await self.civitai_client.get_model_metadata(str(model_id))
model_metadata, _ = await civitai_client.get_model_metadata(str(model_id))
if model_metadata:
if model_metadata.get("tags"):
metadata.tags = model_metadata.get("tags", [])
if model_metadata.get("description"):
metadata.modelDescription = model_metadata.get("description", "")
if model_metadata.get("creator"):
metadata.civitai["creator"] = model_metadata.get("creator")
# 6. 开始下载流程
# 6. Start download process
result = await self._execute_download(
download_url=download_url,
download_url=file_info.get('downloadUrl', ''),
save_dir=save_dir,
metadata=metadata,
version_info=version_info,
relative_path=relative_path,
progress_callback=progress_callback
progress_callback=progress_callback,
model_type=model_type
)
return result
@@ -108,10 +182,12 @@ class DownloadManager:
return {'success': False, 'error': str(e)}
async def _execute_download(self, download_url: str, save_dir: str,
metadata: LoraMetadata, version_info: Dict,
relative_path: str, progress_callback=None) -> Dict:
metadata, version_info: Dict,
relative_path: str, progress_callback=None,
model_type: str = "lora") -> Dict:
"""Execute the actual download process including preview images and model files"""
try:
civitai_client = await self._get_civitai_client()
save_path = metadata.file_path
metadata_path = os.path.splitext(save_path)[0] + '.metadata.json'
@@ -122,20 +198,61 @@ class DownloadManager:
if progress_callback:
await progress_callback(1) # 1% progress for starting preview download
preview_ext = '.mp4' if images[0].get('type') == 'video' else '.png'
preview_path = os.path.splitext(save_path)[0] + '.preview' + preview_ext
if await self.civitai_client.download_preview_image(images[0]['url'], preview_path):
metadata.preview_url = preview_path.replace(os.sep, '/')
metadata.preview_nsfw_level = images[0].get('nsfwLevel', 0)
with open(metadata_path, 'w', encoding='utf-8') as f:
json.dump(metadata.to_dict(), f, indent=2, ensure_ascii=False)
# Check if it's a video or an image
is_video = images[0].get('type') == 'video'
if (is_video):
# For videos, use .mp4 extension
preview_ext = '.mp4'
preview_path = os.path.splitext(save_path)[0] + preview_ext
# Download video directly
if await civitai_client.download_preview_image(images[0]['url'], preview_path):
metadata.preview_url = preview_path.replace(os.sep, '/')
metadata.preview_nsfw_level = images[0].get('nsfwLevel', 0)
with open(metadata_path, 'w', encoding='utf-8') as f:
json.dump(metadata.to_dict(), f, indent=2, ensure_ascii=False)
else:
# For images, use WebP format for better performance
with tempfile.NamedTemporaryFile(suffix='.png', delete=False) as temp_file:
temp_path = temp_file.name
# Download the original image to temp path
if await civitai_client.download_preview_image(images[0]['url'], temp_path):
# Optimize and convert to WebP
preview_path = os.path.splitext(save_path)[0] + '.webp'
# Use ExifUtils to optimize and convert the image
optimized_data, _ = ExifUtils.optimize_image(
image_data=temp_path,
target_width=CARD_PREVIEW_WIDTH,
format='webp',
quality=85,
preserve_metadata=False
)
# Save the optimized image
with open(preview_path, 'wb') as f:
f.write(optimized_data)
# Update metadata
metadata.preview_url = preview_path.replace(os.sep, '/')
metadata.preview_nsfw_level = images[0].get('nsfwLevel', 0)
with open(metadata_path, 'w', encoding='utf-8') as f:
json.dump(metadata.to_dict(), f, indent=2, ensure_ascii=False)
# Remove temporary file
try:
os.unlink(temp_path)
except Exception as e:
logger.warning(f"Failed to delete temp file: {e}")
# Report preview download completion
if progress_callback:
await progress_callback(3) # 3% progress after preview download
# Download model file with progress tracking
success, result = await self.civitai_client._download_file(
success, result = await civitai_client._download_file(
download_url,
save_dir,
os.path.basename(save_path),
@@ -149,15 +266,22 @@ class DownloadManager:
os.remove(path)
return {'success': False, 'error': result}
# 4. 更新文件信息(大小和修改时间)
# 4. Update file information (size and modified time)
metadata.update_file_info(save_path)
# 5. 最终更新元数据
# 5. Final metadata update
with open(metadata_path, 'w', encoding='utf-8') as f:
json.dump(metadata.to_dict(), f, indent=2, ensure_ascii=False)
# 6. update lora cache
cache = await self.file_monitor.scanner.get_cached_data()
# 6. Update cache based on model type
if model_type == "checkpoint":
scanner = await self._get_checkpoint_scanner()
logger.info(f"Updating checkpoint cache for {save_path}")
else:
scanner = await self._get_lora_scanner()
logger.info(f"Updating lora cache for {save_path}")
cache = await scanner.get_cached_data()
metadata_dict = metadata.to_dict()
metadata_dict['folder'] = relative_path
cache.raw_data.append(metadata_dict)
@@ -166,11 +290,8 @@ class DownloadManager:
all_folders.add(relative_path)
cache.folders = sorted(list(all_folders), key=lambda x: x.lower())
# Update the hash index with the new LoRA entry
self.file_monitor.scanner._hash_index.add_entry(metadata_dict['sha256'], metadata_dict['file_path'])
# Update the hash index with the new LoRA entry
self.file_monitor.scanner._hash_index.add_entry(metadata_dict['sha256'], metadata_dict['file_path'])
# Update the hash index with the new model entry
scanner._hash_index.add_entry(metadata_dict['sha256'], metadata_dict['file_path'])
# Report 100% completion
if progress_callback:

View File

@@ -1,114 +1,202 @@
from operator import itemgetter
import os
import logging
import asyncio
import time
from watchdog.observers import Observer
from watchdog.events import FileSystemEventHandler, FileCreatedEvent, FileDeletedEvent
from typing import List
from watchdog.events import FileSystemEventHandler
from typing import List, Dict, Set, Optional
from threading import Lock
from .lora_scanner import LoraScanner
from ..config import config
from .service_registry import ServiceRegistry
logger = logging.getLogger(__name__)
class LoraFileHandler(FileSystemEventHandler):
"""Handler for LoRA file system events"""
# Configuration constant to control file monitoring functionality
ENABLE_FILE_MONITORING = False
class BaseFileHandler(FileSystemEventHandler):
"""Base handler for file system events"""
def __init__(self, scanner: LoraScanner, loop: asyncio.AbstractEventLoop):
self.scanner = scanner
self.loop = loop # 存储事件循环引用
self.pending_changes = set() # 待处理的变更
self.lock = Lock() # 线程安全锁
self.update_task = None # 异步更新任务
self._ignore_paths = {} # Change to dictionary to store expiration times
self._min_ignore_timeout = 5 # minimum timeout in seconds
self._download_speed = 1024 * 1024 # assume 1MB/s as base speed
def __init__(self, loop: asyncio.AbstractEventLoop):
self.loop = loop # Store event loop reference
self.pending_changes = set() # Pending changes
self.lock = Lock() # Thread-safe lock
self.update_task = None # Async update task
self._ignore_paths = set() # Paths to ignore
self._min_ignore_timeout = 5 # Minimum timeout in seconds
self._download_speed = 1024 * 1024 # Assume 1MB/s as base speed
# Track modified files with timestamps for debouncing
self.modified_files: Dict[str, float] = {}
self.debounce_timer = None
self.debounce_delay = 3.0 # Seconds to wait after last modification
# Track files already scheduled for processing
self.scheduled_files: Set[str] = set()
# File extensions to monitor - should be overridden by subclasses
self.file_extensions = set()
def _should_ignore(self, path: str) -> bool:
"""Check if path should be ignored"""
real_path = os.path.realpath(path) # Resolve any symbolic links
normalized_path = real_path.replace(os.sep, '/')
# Also check with backslashes for Windows compatibility
alt_path = real_path.replace('/', '\\')
# 使用传入的事件循环而不是尝试获取当前线程的事件循环
current_time = self.loop.time()
# Check if path is in ignore list and not expired
if normalized_path in self._ignore_paths and self._ignore_paths[normalized_path] > current_time:
return True
# Also check alternative path format
if alt_path in self._ignore_paths and self._ignore_paths[alt_path] > current_time:
return True
return False
return real_path.replace(os.sep, '/') in self._ignore_paths
def add_ignore_path(self, path: str, file_size: int = 0):
"""Add path to ignore list with dynamic timeout based on file size"""
real_path = os.path.realpath(path) # Resolve any symbolic links
normalized_path = real_path.replace(os.sep, '/')
self._ignore_paths.add(real_path.replace(os.sep, '/'))
# Calculate timeout based on file size
# For small files, use minimum timeout
# For larger files, estimate download time + buffer
if file_size > 0:
# Estimate download time in seconds (size / speed) + buffer
estimated_time = (file_size / self._download_speed) + 10
timeout = max(self._min_ignore_timeout, estimated_time)
else:
timeout = self._min_ignore_timeout
current_time = self.loop.time()
expiration_time = current_time + timeout
# Store both normalized and alternative path formats
self._ignore_paths[normalized_path] = expiration_time
# Also store with backslashes for Windows compatibility
alt_path = real_path.replace('/', '\\')
self._ignore_paths[alt_path] = expiration_time
logger.debug(f"Added ignore path: {normalized_path} (expires in {timeout:.1f}s)")
# Short timeout (e.g. 5 seconds) is sufficient to ignore the CREATE event
timeout = 5
self.loop.call_later(
timeout,
self._remove_ignore_path,
normalized_path
self._ignore_paths.discard,
real_path.replace(os.sep, '/')
)
def _remove_ignore_path(self, path: str):
"""Remove path from ignore list after timeout"""
if path in self._ignore_paths:
del self._ignore_paths[path]
logger.debug(f"Removed ignore path: {path}")
# Also remove alternative path format
alt_path = path.replace('/', '\\')
if alt_path in self._ignore_paths:
del self._ignore_paths[alt_path]
def on_created(self, event):
if event.is_directory or not event.src_path.endswith('.safetensors'):
if event.is_directory:
return
if self._should_ignore(event.src_path):
# Handle appropriate files based on extensions
file_ext = os.path.splitext(event.src_path)[1].lower()
if file_ext in self.file_extensions:
if self._should_ignore(event.src_path):
return
# Process this file directly and ignore subsequent modifications
normalized_path = os.path.realpath(event.src_path).replace(os.sep, '/')
if normalized_path not in self.scheduled_files:
logger.info(f"File created: {event.src_path}")
self.scheduled_files.add(normalized_path)
self._schedule_update('add', event.src_path)
# Ignore modifications for a short period after creation
self.loop.call_later(
self.debounce_delay * 2,
self.scheduled_files.discard,
normalized_path
)
def on_modified(self, event):
if event.is_directory:
return
logger.info(f"LoRA file created: {event.src_path}")
self._schedule_update('add', event.src_path)
# Only process files with supported extensions
file_ext = os.path.splitext(event.src_path)[1].lower()
if file_ext in self.file_extensions:
if self._should_ignore(event.src_path):
return
normalized_path = os.path.realpath(event.src_path).replace(os.sep, '/')
# Skip if this file is already scheduled for processing
if normalized_path in self.scheduled_files:
return
# Update the timestamp for this file
self.modified_files[normalized_path] = time.time()
# Cancel any existing timer
if self.debounce_timer:
self.debounce_timer.cancel()
# Set a new timer to process modified files after debounce period
self.debounce_timer = self.loop.call_later(
self.debounce_delay,
self.loop.call_soon_threadsafe,
self._process_modified_files
)
def _process_modified_files(self):
"""Process files that have been modified after debounce period"""
current_time = time.time()
files_to_process = []
# Find files that haven't been modified for debounce_delay seconds
for file_path, last_modified in list(self.modified_files.items()):
if current_time - last_modified >= self.debounce_delay:
# Only process if not already scheduled
if file_path not in self.scheduled_files:
files_to_process.append(file_path)
self.scheduled_files.add(file_path)
# Auto-remove from scheduled list after reasonable time
self.loop.call_later(
self.debounce_delay * 2,
self.scheduled_files.discard,
file_path
)
del self.modified_files[file_path]
# Process stable files
for file_path in files_to_process:
logger.info(f"Processing modified file: {file_path}")
self._schedule_update('add', file_path)
def on_deleted(self, event):
if event.is_directory or not event.src_path.endswith('.safetensors'):
if event.is_directory:
return
file_ext = os.path.splitext(event.src_path)[1].lower()
if file_ext not in self.file_extensions:
return
if self._should_ignore(event.src_path):
return
logger.info(f"LoRA file deleted: {event.src_path}")
# Remove from scheduled files if present
normalized_path = os.path.realpath(event.src_path).replace(os.sep, '/')
self.scheduled_files.discard(normalized_path)
logger.info(f"File deleted: {event.src_path}")
self._schedule_update('remove', event.src_path)
def _schedule_update(self, action: str, file_path: str): #file_path is a real path
def on_moved(self, event):
"""Handle file move/rename events"""
src_ext = os.path.splitext(event.src_path)[1].lower()
dest_ext = os.path.splitext(event.dest_path)[1].lower()
# If destination has supported extension, treat as new file
if dest_ext in self.file_extensions:
if self._should_ignore(event.dest_path):
return
normalized_path = os.path.realpath(event.dest_path).replace(os.sep, '/')
# Only process if not already scheduled
if normalized_path not in self.scheduled_files:
logger.info(f"File renamed/moved to: {event.dest_path}")
self.scheduled_files.add(normalized_path)
self._schedule_update('add', event.dest_path)
# Auto-remove from scheduled list after reasonable time
self.loop.call_later(
self.debounce_delay * 2,
self.scheduled_files.discard,
normalized_path
)
# If source was a supported file, treat it as deleted
if src_ext in self.file_extensions:
if self._should_ignore(event.src_path):
return
normalized_path = os.path.realpath(event.src_path).replace(os.sep, '/')
self.scheduled_files.discard(normalized_path)
logger.info(f"File moved/renamed from: {event.src_path}")
self._schedule_update('remove', event.src_path)
def _schedule_update(self, action: str, file_path: str):
"""Schedule a cache update"""
with self.lock:
# 使用 config 中的方法映射路径
# Use config method to map path
mapped_path = config.map_path_to_link(file_path)
normalized_path = mapped_path.replace(os.sep, '/')
self.pending_changes.add((action, normalized_path))
@@ -119,7 +207,20 @@ class LoraFileHandler(FileSystemEventHandler):
"""Create update task in the event loop"""
if self.update_task is None or self.update_task.done():
self.update_task = asyncio.create_task(self._process_changes())
async def _process_changes(self, delay: float = 2.0):
"""Process pending changes with debouncing - should be implemented by subclasses"""
raise NotImplementedError("Subclasses must implement _process_changes")
class LoraFileHandler(BaseFileHandler):
"""Handler for LoRA file system events"""
def __init__(self, loop: asyncio.AbstractEventLoop):
super().__init__(loop)
# Set supported file extensions for LoRAs
self.file_extensions = {'.safetensors'}
async def _process_changes(self, delay: float = 2.0):
"""Process pending changes with debouncing"""
await asyncio.sleep(delay)
@@ -132,46 +233,54 @@ class LoraFileHandler(FileSystemEventHandler):
if not changes:
return
logger.info(f"Processing {len(changes)} file changes")
logger.info(f"Processing {len(changes)} LoRA file changes")
cache = await self.scanner.get_cached_data()
# Get scanner through ServiceRegistry
scanner = await ServiceRegistry.get_lora_scanner()
cache = await scanner.get_cached_data()
needs_resort = False
new_folders = set()
for action, file_path in changes:
try:
if action == 'add':
# Scan new file
lora_data = await self.scanner.scan_single_lora(file_path)
if lora_data:
# Update tags count
for tag in lora_data.get('tags', []):
self.scanner._tags_count[tag] = self.scanner._tags_count.get(tag, 0) + 1
# Check if file already exists in cache
existing = next((item for item in cache.raw_data if item['file_path'] == file_path), None)
if existing:
logger.info(f"File {file_path} already in cache, skipping")
continue
cache.raw_data.append(lora_data)
new_folders.add(lora_data['folder'])
# Scan new file
model_data = await scanner.scan_single_model(file_path)
if model_data:
# Update tags count
for tag in model_data.get('tags', []):
scanner._tags_count[tag] = scanner._tags_count.get(tag, 0) + 1
cache.raw_data.append(model_data)
new_folders.add(model_data['folder'])
# Update hash index
if 'sha256' in lora_data:
self.scanner._hash_index.add_entry(
lora_data['sha256'],
lora_data['file_path']
if 'sha256' in model_data:
scanner._hash_index.add_entry(
model_data['sha256'],
model_data['file_path']
)
needs_resort = True
elif action == 'remove':
# Find the lora to remove so we can update tags count
lora_to_remove = next((item for item in cache.raw_data if item['file_path'] == file_path), None)
if lora_to_remove:
# Find the model to remove so we can update tags count
model_to_remove = next((item for item in cache.raw_data if item['file_path'] == file_path), None)
if model_to_remove:
# Update tags count by reducing counts
for tag in lora_to_remove.get('tags', []):
if tag in self.scanner._tags_count:
self.scanner._tags_count[tag] = max(0, self.scanner._tags_count[tag] - 1)
if self.scanner._tags_count[tag] == 0:
del self.scanner._tags_count[tag]
for tag in model_to_remove.get('tags', []):
if tag in scanner._tags_count:
scanner._tags_count[tag] = max(0, scanner._tags_count[tag] - 1)
if scanner._tags_count[tag] == 0:
del scanner._tags_count[tag]
# Remove from cache and hash index
logger.info(f"Removing {file_path} from cache")
self.scanner._hash_index.remove_by_path(file_path)
scanner._hash_index.remove_by_path(file_path)
cache.raw_data = [
item for item in cache.raw_data
if item['file_path'] != file_path
@@ -189,62 +298,245 @@ class LoraFileHandler(FileSystemEventHandler):
cache.folders = sorted(list(all_folders), key=lambda x: x.lower())
except Exception as e:
logger.error(f"Error in process_changes: {e}")
logger.error(f"Error in process_changes for LoRA: {e}")
class LoraFileMonitor:
"""Monitor for LoRA file changes"""
class CheckpointFileHandler(BaseFileHandler):
"""Handler for checkpoint file system events"""
def __init__(self, scanner: LoraScanner, roots: List[str]):
self.scanner = scanner
scanner.set_file_monitor(self)
def __init__(self, loop: asyncio.AbstractEventLoop):
super().__init__(loop)
# Set supported file extensions for checkpoints
self.file_extensions = {'.safetensors', '.ckpt', '.pt', '.pth', '.sft', '.gguf'}
async def _process_changes(self, delay: float = 2.0):
"""Process pending changes with debouncing for checkpoint files"""
await asyncio.sleep(delay)
try:
with self.lock:
changes = self.pending_changes.copy()
self.pending_changes.clear()
if not changes:
return
logger.info(f"Processing {len(changes)} checkpoint file changes")
# Get scanner through ServiceRegistry
scanner = await ServiceRegistry.get_checkpoint_scanner()
cache = await scanner.get_cached_data()
needs_resort = False
new_folders = set()
for action, file_path in changes:
try:
if action == 'add':
# Check if file already exists in cache
existing = next((item for item in cache.raw_data if item['file_path'] == file_path), None)
if existing:
logger.info(f"File {file_path} already in cache, skipping")
continue
# Scan new file
model_data = await scanner.scan_single_model(file_path)
if model_data:
# Update tags count if applicable
for tag in model_data.get('tags', []):
scanner._tags_count[tag] = scanner._tags_count.get(tag, 0) + 1
cache.raw_data.append(model_data)
new_folders.add(model_data['folder'])
# Update hash index
if 'sha256' in model_data:
scanner._hash_index.add_entry(
model_data['sha256'],
model_data['file_path']
)
needs_resort = True
elif action == 'remove':
# Find the model to remove so we can update tags count
model_to_remove = next((item for item in cache.raw_data if item['file_path'] == file_path), None)
if model_to_remove:
# Update tags count by reducing counts
for tag in model_to_remove.get('tags', []):
if tag in scanner._tags_count:
scanner._tags_count[tag] = max(0, scanner._tags_count[tag] - 1)
if scanner._tags_count[tag] == 0:
del scanner._tags_count[tag]
# Remove from cache and hash index
logger.info(f"Removing {file_path} from checkpoint cache")
scanner._hash_index.remove_by_path(file_path)
cache.raw_data = [
item for item in cache.raw_data
if item['file_path'] != file_path
]
needs_resort = True
except Exception as e:
logger.error(f"Error processing checkpoint {action} for {file_path}: {e}")
if needs_resort:
await cache.resort()
# Update folder list
all_folders = set(cache.folders) | new_folders
cache.folders = sorted(list(all_folders), key=lambda x: x.lower())
except Exception as e:
logger.error(f"Error in process_changes for checkpoint: {e}")
class BaseFileMonitor:
"""Base class for file monitoring"""
def __init__(self, monitor_paths: List[str]):
self.observer = Observer()
self.loop = asyncio.get_event_loop()
self.handler = LoraFileHandler(scanner, self.loop)
# 使用已存在的路径映射
self.monitor_paths = set()
for root in roots:
self.monitor_paths.add(os.path.realpath(root).replace(os.sep, '/'))
# Process monitor paths
for path in monitor_paths:
self.monitor_paths.add(os.path.realpath(path).replace(os.sep, '/'))
# 添加所有已映射的目标路径
# Add mapped paths from config
for target_path in config._path_mappings.keys():
self.monitor_paths.add(target_path)
def start(self):
"""Start monitoring"""
for path_info in self.monitor_paths:
"""Start file monitoring"""
if not ENABLE_FILE_MONITORING:
logger.debug("File monitoring is disabled via ENABLE_FILE_MONITORING setting")
return
for path in self.monitor_paths:
try:
if isinstance(path_info, tuple):
# 对于链接,监控目标路径
_, target_path = path_info
self.observer.schedule(self.handler, target_path, recursive=True)
logger.info(f"Started monitoring target path: {target_path}")
else:
# 对于普通路径,直接监控
self.observer.schedule(self.handler, path_info, recursive=True)
logger.info(f"Started monitoring: {path_info}")
self.observer.schedule(self.handler, path, recursive=True)
logger.info(f"Started monitoring: {path}")
except Exception as e:
logger.error(f"Error monitoring {path_info}: {e}")
logger.error(f"Error monitoring {path}: {e}")
self.observer.start()
def stop(self):
"""Stop monitoring"""
"""Stop file monitoring"""
if not ENABLE_FILE_MONITORING:
return
self.observer.stop()
self.observer.join()
def rescan_links(self):
"""重新扫描链接(当添加新的链接时调用)"""
"""Rescan links when new ones are added"""
if not ENABLE_FILE_MONITORING:
return
# Find new paths not yet being monitored
new_paths = set()
for path in self.monitor_paths.copy():
self._add_link_targets(path)
for path in config._path_mappings.keys():
real_path = os.path.realpath(path).replace(os.sep, '/')
if real_path not in self.monitor_paths:
new_paths.add(real_path)
self.monitor_paths.add(real_path)
# 添加新发现的路径到监控
new_paths = self.monitor_paths - set(self.observer.watches.keys())
# Add new paths to monitoring
for path in new_paths:
try:
self.observer.schedule(self.handler, path, recursive=True)
logger.info(f"Added new monitoring path: {path}")
except Exception as e:
logger.error(f"Error adding new monitor for {path}: {e}")
logger.error(f"Error adding new monitor for {path}: {e}")
class LoraFileMonitor(BaseFileMonitor):
"""Monitor for LoRA file changes"""
_instance = None
_lock = asyncio.Lock()
def __new__(cls, monitor_paths=None):
if cls._instance is None:
cls._instance = super().__new__(cls)
return cls._instance
def __init__(self, monitor_paths=None):
if not hasattr(self, '_initialized'):
if monitor_paths is None:
from ..config import config
monitor_paths = config.loras_roots
super().__init__(monitor_paths)
self.handler = LoraFileHandler(self.loop)
self._initialized = True
@classmethod
async def get_instance(cls):
"""Get singleton instance with async support"""
async with cls._lock:
if cls._instance is None:
from ..config import config
cls._instance = cls(config.loras_roots)
return cls._instance
class CheckpointFileMonitor(BaseFileMonitor):
"""Monitor for checkpoint file changes"""
_instance = None
_lock = asyncio.Lock()
def __new__(cls, monitor_paths=None):
if cls._instance is None:
cls._instance = super().__new__(cls)
return cls._instance
def __init__(self, monitor_paths=None):
if not hasattr(self, '_initialized'):
if monitor_paths is None:
# Get checkpoint roots from scanner
monitor_paths = []
# We'll initialize monitor paths later when scanner is available
super().__init__(monitor_paths or [])
self.handler = CheckpointFileHandler(self.loop)
self._initialized = True
@classmethod
async def get_instance(cls):
"""Get singleton instance with async support"""
async with cls._lock:
if cls._instance is None:
cls._instance = cls([])
# Now get checkpoint roots from scanner
from .checkpoint_scanner import CheckpointScanner
scanner = await CheckpointScanner.get_instance()
monitor_paths = scanner.get_model_roots()
# Update monitor paths - but don't actually monitor them
for path in monitor_paths:
real_path = os.path.realpath(path).replace(os.sep, '/')
cls._instance.monitor_paths.add(real_path)
return cls._instance
def start(self):
"""Override start to check global enable flag"""
if not ENABLE_FILE_MONITORING:
logger.debug("Checkpoint file monitoring is disabled via ENABLE_FILE_MONITORING setting")
return
logger.debug("Checkpoint file monitoring is temporarily disabled")
# Skip the actual monitoring setup
pass
async def initialize_paths(self):
"""Initialize monitor paths from scanner - currently disabled"""
if not ENABLE_FILE_MONITORING:
logger.debug("Checkpoint path initialization skipped (monitoring disabled)")
return
logger.debug("Checkpoint file path initialization skipped (monitoring disabled)")
pass

View File

@@ -2,6 +2,7 @@ import asyncio
from typing import List, Dict
from dataclasses import dataclass
from operator import itemgetter
from natsort import natsorted
@dataclass
class LoraCache:
@@ -17,7 +18,7 @@ class LoraCache:
async def resort(self, name_only: bool = False):
"""Resort all cached data views"""
async with self._lock:
self.sorted_by_name = sorted(
self.sorted_by_name = natsorted(
self.raw_data,
key=lambda x: x['model_name'].lower() # Case-insensitive sort
)

View File

@@ -3,21 +3,23 @@ import os
import logging
import asyncio
import shutil
from typing import List, Dict, Optional
from dataclasses import dataclass
from operator import itemgetter
import time
import re
from typing import List, Dict, Optional, Set
from ..utils.models import LoraMetadata
from ..config import config
from ..utils.file_utils import load_metadata, get_file_info
from .lora_cache import LoraCache
from .lora_hash_index import LoraHashIndex
from .model_scanner import ModelScanner
from .model_hash_index import ModelHashIndex # Changed from LoraHashIndex to ModelHashIndex
from .settings_manager import settings
from ..utils.constants import NSFW_LEVELS
from ..utils.utils import fuzzy_match
from .service_registry import ServiceRegistry
import sys
logger = logging.getLogger(__name__)
class LoraScanner:
class LoraScanner(ModelScanner):
"""Service for scanning and managing LoRA files"""
_instance = None
@@ -29,20 +31,20 @@ class LoraScanner:
return cls._instance
def __init__(self):
# 确保初始化只执行一次
# Ensure initialization happens only once
if not hasattr(self, '_initialized'):
self._cache: Optional[LoraCache] = None
self._hash_index = LoraHashIndex()
self._initialization_lock = asyncio.Lock()
self._initialization_task: Optional[asyncio.Task] = None
# Define supported file extensions
file_extensions = {'.safetensors'}
# Initialize parent class with ModelHashIndex
super().__init__(
model_type="lora",
model_class=LoraMetadata,
file_extensions=file_extensions,
hash_index=ModelHashIndex() # Changed from LoraHashIndex to ModelHashIndex
)
self._initialized = True
self.file_monitor = None # Add this line
self._tags_count = {} # Add a dictionary to store tag counts
def set_file_monitor(self, monitor):
"""Set file monitor instance"""
self.file_monitor = monitor
@classmethod
async def get_instance(cls):
"""Get singleton instance with async support"""
@@ -50,92 +52,79 @@ class LoraScanner:
if cls._instance is None:
cls._instance = cls()
return cls._instance
async def get_cached_data(self, force_refresh: bool = False) -> LoraCache:
"""Get cached LoRA data, refresh if needed"""
async with self._initialization_lock:
def get_model_roots(self) -> List[str]:
"""Get lora root directories"""
return config.loras_roots
async def scan_all_models(self) -> List[Dict]:
"""Scan all LoRA directories and return metadata"""
all_loras = []
# Create scan tasks for each directory
scan_tasks = []
for lora_root in self.get_model_roots():
task = asyncio.create_task(self._scan_directory(lora_root))
scan_tasks.append(task)
# 如果缓存未初始化但需要响应请求,返回空缓存
if self._cache is None and not force_refresh:
return LoraCache(
raw_data=[],
sorted_by_name=[],
sorted_by_date=[],
folders=[]
)
# 如果正在初始化,等待完成
if self._initialization_task and not self._initialization_task.done():
try:
await self._initialization_task
except Exception as e:
logger.error(f"Cache initialization failed: {e}")
self._initialization_task = None
if (self._cache is None or force_refresh):
# Wait for all tasks to complete
for task in scan_tasks:
try:
loras = await task
all_loras.extend(loras)
except Exception as e:
logger.error(f"Error scanning directory: {e}")
# 创建新的初始化任务
if not self._initialization_task or self._initialization_task.done():
self._initialization_task = asyncio.create_task(self._initialize_cache())
return all_loras
async def _scan_directory(self, root_path: str) -> List[Dict]:
"""Scan a single directory for LoRA files"""
loras = []
original_root = root_path # Save original root path
async def scan_recursive(path: str, visited_paths: set):
"""Recursively scan directory, avoiding circular symlinks"""
try:
real_path = os.path.realpath(path)
if real_path in visited_paths:
logger.debug(f"Skipping already visited path: {path}")
return
visited_paths.add(real_path)
try:
await self._initialization_task
except Exception as e:
logger.error(f"Cache initialization failed: {e}")
# 如果缓存已存在,继续使用旧缓存
if self._cache is None:
raise # 如果没有缓存,则抛出异常
return self._cache
with os.scandir(path) as it:
entries = list(it)
for entry in entries:
try:
if entry.is_file(follow_symlinks=True) and any(entry.name.endswith(ext) for ext in self.file_extensions):
# Use original path instead of real path
file_path = entry.path.replace(os.sep, "/")
await self._process_single_file(file_path, original_root, loras)
await asyncio.sleep(0)
elif entry.is_dir(follow_symlinks=True):
# For directories, continue scanning with original path
await scan_recursive(entry.path, visited_paths)
except Exception as e:
logger.error(f"Error processing entry {entry.path}: {e}")
except Exception as e:
logger.error(f"Error scanning {path}: {e}")
async def _initialize_cache(self) -> None:
"""Initialize or refresh the cache"""
await scan_recursive(root_path, set())
return loras
async def _process_single_file(self, file_path: str, root_path: str, loras: list):
"""Process a single file and add to results list"""
try:
# Clear existing hash index
self._hash_index.clear()
# Clear existing tags count
self._tags_count = {}
# Scan for new data
raw_data = await self.scan_all_loras()
# Build hash index and tags count
for lora_data in raw_data:
if 'sha256' in lora_data and 'file_path' in lora_data:
self._hash_index.add_entry(lora_data['sha256'].lower(), lora_data['file_path'])
# Count tags
if 'tags' in lora_data and lora_data['tags']:
for tag in lora_data['tags']:
self._tags_count[tag] = self._tags_count.get(tag, 0) + 1
# Update cache
self._cache = LoraCache(
raw_data=raw_data,
sorted_by_name=[],
sorted_by_date=[],
folders=[]
)
# Call resort_cache to create sorted views
await self._cache.resort()
self._initialization_task = None
logger.info("LoRA Manager: Cache initialization completed")
result = await self._process_model_file(file_path, root_path)
if result:
loras.append(result)
except Exception as e:
logger.error(f"LoRA Manager: Error initializing cache: {e}")
self._cache = LoraCache(
raw_data=[],
sorted_by_name=[],
sorted_by_date=[],
folders=[]
)
logger.error(f"Error processing {file_path}: {e}")
async def get_paginated_data(self, page: int, page_size: int, sort_by: str = 'name',
folder: str = None, search: str = None, fuzzy: bool = False,
folder: str = None, search: str = None, fuzzy_search: bool = False,
base_models: list = None, tags: list = None,
search_options: dict = None) -> Dict:
search_options: dict = None, hash_filters: dict = None,
favorites_only: bool = False, first_letter: str = None) -> Dict:
"""Get paginated and filtered lora data
Args:
@@ -144,10 +133,13 @@ class LoraScanner:
sort_by: Sort method ('name' or 'date')
folder: Filter by folder path
search: Search term
fuzzy: Use fuzzy matching for search
fuzzy_search: Use fuzzy matching for search
base_models: List of base models to filter by
tags: List of tags to filter by
search_options: Dictionary with search options (filename, modelname, tags, recursive)
hash_filters: Dictionary with hash filtering options (single_hash or multiple_hashes)
favorites_only: Filter for favorite models only
first_letter: Filter by first letter of model name
"""
cache = await self.get_cached_data()
@@ -157,90 +149,119 @@ class LoraScanner:
'filename': True,
'modelname': True,
'tags': False,
'recursive': False
'recursive': False,
}
# Get the base data set
filtered_data = cache.sorted_by_date if sort_by == 'date' else cache.sorted_by_name
# Apply hash filtering if provided (highest priority)
if hash_filters:
single_hash = hash_filters.get('single_hash')
multiple_hashes = hash_filters.get('multiple_hashes')
if single_hash:
# Filter by single hash
single_hash = single_hash.lower() # Ensure lowercase for matching
filtered_data = [
lora for lora in filtered_data
if lora.get('sha256', '').lower() == single_hash
]
elif multiple_hashes:
# Filter by multiple hashes
hash_set = set(hash.lower() for hash in multiple_hashes) # Convert to set for faster lookup
filtered_data = [
lora for lora in filtered_data
if lora.get('sha256', '').lower() in hash_set
]
# Jump to pagination
total_items = len(filtered_data)
start_idx = (page - 1) * page_size
end_idx = min(start_idx + page_size, total_items)
result = {
'items': filtered_data[start_idx:end_idx],
'total': total_items,
'page': page,
'page_size': page_size,
'total_pages': (total_items + page_size - 1) // page_size
}
return result
# Apply SFW filtering if enabled
if settings.get('show_only_sfw', False):
filtered_data = [
item for item in filtered_data
if not item.get('preview_nsfw_level') or item.get('preview_nsfw_level') < NSFW_LEVELS['R']
lora for lora in filtered_data
if not lora.get('preview_nsfw_level') or lora.get('preview_nsfw_level') < NSFW_LEVELS['R']
]
# Apply favorites filtering if enabled
if favorites_only:
filtered_data = [
lora for lora in filtered_data
if lora.get('favorite', False) is True
]
# Apply first letter filtering
if first_letter:
filtered_data = self._filter_by_first_letter(filtered_data, first_letter)
# Apply folder filtering
if folder is not None:
if search_options.get('recursive', False):
# Recursive mode: match all paths starting with this folder
# Recursive folder filtering - include all subfolders
filtered_data = [
item for item in filtered_data
if item['folder'].startswith(folder + '/') or item['folder'] == folder
lora for lora in filtered_data
if lora['folder'].startswith(folder)
]
else:
# Non-recursive mode: match exact folder
# Exact folder filtering
filtered_data = [
item for item in filtered_data
if item['folder'] == folder
lora for lora in filtered_data
if lora['folder'] == folder
]
# Apply base model filtering
if base_models and len(base_models) > 0:
filtered_data = [
item for item in filtered_data
if item.get('base_model') in base_models
lora for lora in filtered_data
if lora.get('base_model') in base_models
]
# Apply tag filtering
if tags and len(tags) > 0:
filtered_data = [
item for item in filtered_data
if any(tag in item.get('tags', []) for tag in tags)
lora for lora in filtered_data
if any(tag in lora.get('tags', []) for tag in tags)
]
# Apply search filtering
if search:
search_results = []
for item in filtered_data:
# Check filename if enabled
if search_options.get('filename', True):
if fuzzy:
if fuzzy_match(item.get('file_name', ''), search):
search_results.append(item)
continue
else:
if search.lower() in item.get('file_name', '').lower():
search_results.append(item)
continue
# Check model name if enabled
if search_options.get('modelname', True):
if fuzzy:
if fuzzy_match(item.get('model_name', ''), search):
search_results.append(item)
continue
else:
if search.lower() in item.get('model_name', '').lower():
search_results.append(item)
continue
# Check tags if enabled
if search_options.get('tags', False) and item.get('tags'):
found_tag = False
for tag in item['tags']:
if fuzzy:
if fuzzy_match(tag, search):
found_tag = True
break
else:
if search.lower() in tag.lower():
found_tag = True
break
if found_tag:
search_results.append(item)
search_opts = search_options or {}
for lora in filtered_data:
# Search by file name
if search_opts.get('filename', True):
if fuzzy_match(lora.get('file_name', ''), search):
search_results.append(lora)
continue
# Search by model name
if search_opts.get('modelname', True):
if fuzzy_match(lora.get('model_name', ''), search):
search_results.append(lora)
continue
# Search by tags
if search_opts.get('tags', False) and 'tags' in lora:
if any(fuzzy_match(tag, search) for tag in lora['tags']):
search_results.append(lora)
continue
filtered_data = search_results
# Calculate pagination
@@ -258,325 +279,100 @@ class LoraScanner:
return result
def invalidate_cache(self):
"""Invalidate the current cache"""
self._cache = None
async def scan_all_loras(self) -> List[Dict]:
"""Scan all LoRA directories and return metadata"""
all_loras = []
def _filter_by_first_letter(self, data, letter):
"""Filter data by first letter of model name
# 分目录异步扫描
scan_tasks = []
for loras_root in config.loras_roots:
task = asyncio.create_task(self._scan_directory(loras_root))
scan_tasks.append(task)
for task in scan_tasks:
try:
loras = await task
all_loras.extend(loras)
except Exception as e:
logger.error(f"Error scanning directory: {e}")
return all_loras
async def _scan_directory(self, root_path: str) -> List[Dict]:
"""Scan a single directory for LoRA files"""
loras = []
original_root = root_path # 保存原始根路径
async def scan_recursive(path: str, visited_paths: set):
"""递归扫描目录,避免循环链接"""
try:
real_path = os.path.realpath(path)
if real_path in visited_paths:
logger.debug(f"Skipping already visited path: {path}")
return
visited_paths.add(real_path)
with os.scandir(path) as it:
entries = list(it)
for entry in entries:
try:
if entry.is_file(follow_symlinks=True) and entry.name.endswith('.safetensors'):
# 使用原始路径而不是真实路径
file_path = entry.path.replace(os.sep, "/")
await self._process_single_file(file_path, original_root, loras)
await asyncio.sleep(0)
elif entry.is_dir(follow_symlinks=True):
# 对于目录,使用原始路径继续扫描
await scan_recursive(entry.path, visited_paths)
except Exception as e:
logger.error(f"Error processing entry {entry.path}: {e}")
except Exception as e:
logger.error(f"Error scanning {path}: {e}")
await scan_recursive(root_path, set())
return loras
async def _process_single_file(self, file_path: str, root_path: str, loras: list):
"""处理单个文件并添加到结果列表"""
try:
result = await self._process_lora_file(file_path, root_path)
if result:
loras.append(result)
except Exception as e:
logger.error(f"Error processing {file_path}: {e}")
async def _process_lora_file(self, file_path: str, root_path: str) -> Dict:
"""Process a single LoRA file and return its metadata"""
# Try loading existing metadata
metadata = await load_metadata(file_path)
if metadata is None:
# Create new metadata if none exists
metadata = await get_file_info(file_path)
# Convert to dict and add folder info
lora_data = metadata.to_dict()
# Try to fetch missing metadata from Civitai if needed
await self._fetch_missing_metadata(file_path, lora_data)
rel_path = os.path.relpath(file_path, root_path)
folder = os.path.dirname(rel_path)
lora_data['folder'] = folder.replace(os.path.sep, '/')
return lora_data
async def _fetch_missing_metadata(self, file_path: str, lora_data: Dict) -> None:
"""Fetch missing description and tags from Civitai if needed
Args:
file_path: Path to the lora file
lora_data: Lora metadata dictionary to update
Special handling:
- '#': Numbers (0-9)
- '@': Special characters (not alphanumeric)
- '': CJK characters
"""
try:
# Skip if already marked as deleted on Civitai
if lora_data.get('civitai_deleted', False):
logger.debug(f"Skipping metadata fetch for {file_path}: marked as deleted on Civitai")
return
# Check if we need to fetch additional metadata from Civitai
needs_metadata_update = False
model_id = None
# Check if we have Civitai model ID but missing metadata
if lora_data.get('civitai'):
# Try to get model ID directly from the correct location
model_id = lora_data['civitai'].get('modelId')
if model_id:
model_id = str(model_id)
# Check if tags are missing or empty
tags_missing = not lora_data.get('tags') or len(lora_data.get('tags', [])) == 0
# Check if description is missing or empty
desc_missing = not lora_data.get('modelDescription') or lora_data.get('modelDescription') in (None, "")
needs_metadata_update = tags_missing or desc_missing
# Fetch missing metadata if needed
if needs_metadata_update and model_id:
logger.debug(f"Fetching missing metadata for {file_path} with model ID {model_id}")
from ..services.civitai_client import CivitaiClient
client = CivitaiClient()
# Get metadata and status code
model_metadata, status_code = await client.get_model_metadata(model_id)
await client.close()
# Handle 404 status (model deleted from Civitai)
if status_code == 404:
logger.warning(f"Model {model_id} appears to be deleted from Civitai (404 response)")
# Mark as deleted to avoid future API calls
lora_data['civitai_deleted'] = True
# Save the updated metadata back to file
metadata_path = os.path.splitext(file_path)[0] + '.metadata.json'
with open(metadata_path, 'w', encoding='utf-8') as f:
json.dump(lora_data, f, indent=2, ensure_ascii=False)
# Process valid metadata if available
elif model_metadata:
logger.debug(f"Updating metadata for {file_path} with model ID {model_id}")
# Update tags if they were missing
if model_metadata.get('tags') and (not lora_data.get('tags') or len(lora_data.get('tags', [])) == 0):
lora_data['tags'] = model_metadata['tags']
# Update description if it was missing
if model_metadata.get('description') and (not lora_data.get('modelDescription') or lora_data.get('modelDescription') in (None, "")):
lora_data['modelDescription'] = model_metadata['description']
# Save the updated metadata back to file
metadata_path = os.path.splitext(file_path)[0] + '.metadata.json'
with open(metadata_path, 'w', encoding='utf-8') as f:
json.dump(lora_data, f, indent=2, ensure_ascii=False)
except Exception as e:
logger.error(f"Failed to update metadata from Civitai for {file_path}: {e}")
async def update_preview_in_cache(self, file_path: str, preview_url: str) -> bool:
"""Update preview URL in cache for a specific lora
filtered_data = []
Args:
file_path: The file path of the lora to update
preview_url: The new preview URL
Returns:
bool: True if the update was successful, False if cache doesn't exist or lora wasn't found
"""
if self._cache is None:
return False
return await self._cache.update_preview_url(file_path, preview_url)
async def scan_single_lora(self, file_path: str) -> Optional[Dict]:
"""Scan a single LoRA file and return its metadata"""
try:
if not os.path.exists(os.path.realpath(file_path)):
return None
for lora in data:
model_name = lora.get('model_name', '')
if not model_name:
continue
# 获取基本文件信息
metadata = await get_file_info(file_path)
if not metadata:
return None
first_char = model_name[0].upper()
if letter == '#' and first_char.isdigit():
filtered_data.append(lora)
elif letter == '@' and not first_char.isalnum():
# Special characters (not alphanumeric)
filtered_data.append(lora)
elif letter == '' and self._is_cjk_character(first_char):
# CJK characters
filtered_data.append(lora)
elif letter.upper() == first_char:
# Regular alphabet matching
filtered_data.append(lora)
folder = self._calculate_folder(file_path)
# 确保 folder 字段存在
metadata_dict = metadata.to_dict()
metadata_dict['folder'] = folder or ''
return metadata_dict
except Exception as e:
logger.error(f"Error scanning {file_path}: {e}")
return None
return filtered_data
def _calculate_folder(self, file_path: str) -> str:
"""Calculate the folder path for a LoRA file"""
# 使用原始路径计算相对路径
for root in config.loras_roots:
if file_path.startswith(root):
rel_path = os.path.relpath(file_path, root)
return os.path.dirname(rel_path).replace(os.path.sep, '/')
return ''
async def move_model(self, source_path: str, target_path: str) -> bool:
"""Move a model and its associated files to a new location"""
try:
# 保持原始路径格式
source_path = source_path.replace(os.sep, '/')
target_path = target_path.replace(os.sep, '/')
# 其余代码保持不变
base_name = os.path.splitext(os.path.basename(source_path))[0]
source_dir = os.path.dirname(source_path)
os.makedirs(target_path, exist_ok=True)
target_lora = os.path.join(target_path, f"{base_name}.safetensors").replace(os.sep, '/')
# 使用真实路径进行文件操作
real_source = os.path.realpath(source_path)
real_target = os.path.realpath(target_lora)
file_size = os.path.getsize(real_source)
if self.file_monitor:
self.file_monitor.handler.add_ignore_path(
real_source,
file_size
)
self.file_monitor.handler.add_ignore_path(
real_target,
file_size
)
# 使用真实路径进行文件操作
shutil.move(real_source, real_target)
# Move associated files
source_metadata = os.path.join(source_dir, f"{base_name}.metadata.json")
if os.path.exists(source_metadata):
target_metadata = os.path.join(target_path, f"{base_name}.metadata.json")
shutil.move(source_metadata, target_metadata)
metadata = await self._update_metadata_paths(target_metadata, target_lora)
# Move preview file if exists
preview_extensions = ['.preview.png', '.preview.jpeg', '.preview.jpg', '.preview.mp4',
'.png', '.jpeg', '.jpg', '.mp4']
for ext in preview_extensions:
source_preview = os.path.join(source_dir, f"{base_name}{ext}")
if os.path.exists(source_preview):
target_preview = os.path.join(target_path, f"{base_name}{ext}")
shutil.move(source_preview, target_preview)
break
# Update cache
await self.update_single_lora_cache(source_path, target_lora, metadata)
return True
except Exception as e:
logger.error(f"Error moving model: {e}", exc_info=True)
return False
async def update_single_lora_cache(self, original_path: str, new_path: str, metadata: Dict) -> bool:
cache = await self.get_cached_data()
# Find the existing item to remove its tags from count
existing_item = next((item for item in cache.raw_data if item['file_path'] == original_path), None)
if existing_item and 'tags' in existing_item:
for tag in existing_item.get('tags', []):
if tag in self._tags_count:
self._tags_count[tag] = max(0, self._tags_count[tag] - 1)
if self._tags_count[tag] == 0:
del self._tags_count[tag]
# Remove old path from hash index if exists
self._hash_index.remove_by_path(original_path)
# Remove the old entry from raw_data
cache.raw_data = [
item for item in cache.raw_data
if item['file_path'] != original_path
def _is_cjk_character(self, char):
"""Check if character is a CJK character"""
# Define Unicode ranges for CJK characters
cjk_ranges = [
(0x4E00, 0x9FFF), # CJK Unified Ideographs
(0x3400, 0x4DBF), # CJK Unified Ideographs Extension A
(0x20000, 0x2A6DF), # CJK Unified Ideographs Extension B
(0x2A700, 0x2B73F), # CJK Unified Ideographs Extension C
(0x2B740, 0x2B81F), # CJK Unified Ideographs Extension D
(0x2B820, 0x2CEAF), # CJK Unified Ideographs Extension E
(0x2CEB0, 0x2EBEF), # CJK Unified Ideographs Extension F
(0x30000, 0x3134F), # CJK Unified Ideographs Extension G
(0xF900, 0xFAFF), # CJK Compatibility Ideographs
(0x3300, 0x33FF), # CJK Compatibility
(0x3200, 0x32FF), # Enclosed CJK Letters and Months
(0x3100, 0x312F), # Bopomofo
(0x31A0, 0x31BF), # Bopomofo Extended
(0x3040, 0x309F), # Hiragana
(0x30A0, 0x30FF), # Katakana
(0x31F0, 0x31FF), # Katakana Phonetic Extensions
(0xAC00, 0xD7AF), # Hangul Syllables
(0x1100, 0x11FF), # Hangul Jamo
(0xA960, 0xA97F), # Hangul Jamo Extended-A
(0xD7B0, 0xD7FF), # Hangul Jamo Extended-B
]
if metadata:
# If this is an update to an existing path (not a move), ensure folder is preserved
if original_path == new_path:
# Find the folder from existing entries or calculate it
existing_folder = next((item['folder'] for item in cache.raw_data
if item['file_path'] == original_path), None)
if existing_folder:
metadata['folder'] = existing_folder
else:
metadata['folder'] = self._calculate_folder(new_path)
else:
# For moved files, recalculate the folder
metadata['folder'] = self._calculate_folder(new_path)
# Add the updated metadata to raw_data
cache.raw_data.append(metadata)
# Update hash index with new path
if 'sha256' in metadata:
self._hash_index.add_entry(metadata['sha256'].lower(), new_path)
# Update folders list
all_folders = set(item['folder'] for item in cache.raw_data)
cache.folders = sorted(list(all_folders), key=lambda x: x.lower())
# Update tags count with the new/updated tags
if 'tags' in metadata:
for tag in metadata.get('tags', []):
self._tags_count[tag] = self._tags_count.get(tag, 0) + 1
code_point = ord(char)
return any(start <= code_point <= end for start, end in cjk_ranges)
async def get_letter_counts(self):
"""Get count of models for each letter of the alphabet"""
cache = await self.get_cached_data()
data = cache.sorted_by_name
# Resort cache
await cache.resort()
# Define letter categories
letters = {
'#': 0, # Numbers
'A': 0, 'B': 0, 'C': 0, 'D': 0, 'E': 0, 'F': 0, 'G': 0, 'H': 0,
'I': 0, 'J': 0, 'K': 0, 'L': 0, 'M': 0, 'N': 0, 'O': 0, 'P': 0,
'Q': 0, 'R': 0, 'S': 0, 'T': 0, 'U': 0, 'V': 0, 'W': 0, 'X': 0,
'Y': 0, 'Z': 0,
'@': 0, # Special characters
'': 0 # CJK characters
}
return True
# Count models for each letter
for lora in data:
model_name = lora.get('model_name', '')
if not model_name:
continue
first_char = model_name[0].upper()
if first_char.isdigit():
letters['#'] += 1
elif first_char in letters:
letters[first_char] += 1
elif self._is_cjk_character(first_char):
letters[''] += 1
elif not first_char.isalnum():
letters['@'] += 1
return letters
async def _update_metadata_paths(self, metadata_path: str, lora_path: str) -> Dict:
"""Update file paths in metadata file"""
@@ -604,49 +400,21 @@ class LoraScanner:
except Exception as e:
logger.error(f"Error updating metadata paths: {e}", exc_info=True)
# Add new methods for hash index functionality
# Lora-specific hash index functionality
def has_lora_hash(self, sha256: str) -> bool:
"""Check if a LoRA with given hash exists"""
return self._hash_index.has_hash(sha256.lower())
return self.has_hash(sha256)
def get_lora_path_by_hash(self, sha256: str) -> Optional[str]:
"""Get file path for a LoRA by its hash"""
return self._hash_index.get_path(sha256.lower())
return self.get_path_by_hash(sha256)
def get_lora_hash_by_path(self, file_path: str) -> Optional[str]:
"""Get hash for a LoRA by its file path"""
return self._hash_index.get_hash(file_path)
return self.get_hash_by_path(file_path)
def get_preview_url_by_hash(self, sha256: str) -> Optional[str]:
"""Get preview static URL for a LoRA by its hash"""
# Get the file path first
file_path = self._hash_index.get_path(sha256.lower())
if not file_path:
return None
# Determine the preview file path (typically same name with different extension)
base_name = os.path.splitext(file_path)[0]
preview_extensions = ['.preview.png', '.preview.jpeg', '.preview.jpg', '.preview.mp4',
'.png', '.jpeg', '.jpg', '.mp4']
for ext in preview_extensions:
preview_path = f"{base_name}{ext}"
if os.path.exists(preview_path):
# Convert to static URL using config
return config.get_preview_static_url(preview_path)
return None
# Add new method to get top tags
async def get_top_tags(self, limit: int = 20) -> List[Dict[str, any]]:
"""Get top tags sorted by count
Args:
limit: Maximum number of tags to return
Returns:
List of dictionaries with tag name and count, sorted by count
"""
"""Get top tags sorted by count"""
# Make sure cache is initialized
await self.get_cached_data()
@@ -661,14 +429,7 @@ class LoraScanner:
return sorted_tags[:limit]
async def get_base_models(self, limit: int = 20) -> List[Dict[str, any]]:
"""Get base models used in loras sorted by frequency
Args:
limit: Maximum number of base models to return
Returns:
List of dictionaries with base model name and count, sorted by count
"""
"""Get base models used in loras sorted by frequency"""
# Make sure cache is initialized
cache = await self.get_cached_data()

View File

@@ -0,0 +1,65 @@
import asyncio
from typing import List, Dict
from dataclasses import dataclass
from operator import itemgetter
from natsort import natsorted
@dataclass
class ModelCache:
"""Cache structure for model data"""
raw_data: List[Dict]
sorted_by_name: List[Dict]
sorted_by_date: List[Dict]
folders: List[str]
def __post_init__(self):
self._lock = asyncio.Lock()
async def resort(self, name_only: bool = False):
"""Resort all cached data views"""
async with self._lock:
self.sorted_by_name = natsorted(
self.raw_data,
key=lambda x: x['model_name'].lower() # Case-insensitive sort
)
if not name_only:
self.sorted_by_date = sorted(
self.raw_data,
key=itemgetter('modified'),
reverse=True
)
# Update folder list
all_folders = set(l['folder'] for l in self.raw_data)
self.folders = sorted(list(all_folders), key=lambda x: x.lower())
async def update_preview_url(self, file_path: str, preview_url: str) -> bool:
"""Update preview_url for a specific model in all cached data
Args:
file_path: The file path of the model to update
preview_url: The new preview URL
Returns:
bool: True if the update was successful, False if the model wasn't found
"""
async with self._lock:
# Update in raw_data
for item in self.raw_data:
if item['file_path'] == file_path:
item['preview_url'] = preview_url
break
else:
return False # Model not found
# Update in sorted lists (references to the same dict objects)
for item in self.sorted_by_name:
if item['file_path'] == file_path:
item['preview_url'] = preview_url
break
for item in self.sorted_by_date:
if item['file_path'] == file_path:
item['preview_url'] = preview_url
break
return True

View File

@@ -0,0 +1,96 @@
from typing import Dict, Optional, Set
import os
class ModelHashIndex:
"""Index for looking up models by hash or path"""
def __init__(self):
self._hash_to_path: Dict[str, str] = {}
self._filename_to_hash: Dict[str, str] = {} # Changed from path_to_hash to filename_to_hash
def add_entry(self, sha256: str, file_path: str) -> None:
"""Add or update hash index entry"""
if not sha256 or not file_path:
return
# Ensure hash is lowercase for consistency
sha256 = sha256.lower()
# Extract filename without extension
filename = self._get_filename_from_path(file_path)
# Remove old path mapping if hash exists
if sha256 in self._hash_to_path:
old_path = self._hash_to_path[sha256]
old_filename = self._get_filename_from_path(old_path)
if old_filename in self._filename_to_hash:
del self._filename_to_hash[old_filename]
# Remove old hash mapping if filename exists
if filename in self._filename_to_hash:
old_hash = self._filename_to_hash[filename]
if old_hash in self._hash_to_path:
del self._hash_to_path[old_hash]
# Add new mappings
self._hash_to_path[sha256] = file_path
self._filename_to_hash[filename] = sha256
def _get_filename_from_path(self, file_path: str) -> str:
"""Extract filename without extension from path"""
return os.path.splitext(os.path.basename(file_path))[0]
def remove_by_path(self, file_path: str) -> None:
"""Remove entry by file path"""
filename = self._get_filename_from_path(file_path)
if filename in self._filename_to_hash:
hash_val = self._filename_to_hash[filename]
if hash_val in self._hash_to_path:
del self._hash_to_path[hash_val]
del self._filename_to_hash[filename]
def remove_by_hash(self, sha256: str) -> None:
"""Remove entry by hash"""
sha256 = sha256.lower()
if sha256 in self._hash_to_path:
path = self._hash_to_path[sha256]
filename = self._get_filename_from_path(path)
if filename in self._filename_to_hash:
del self._filename_to_hash[filename]
del self._hash_to_path[sha256]
def has_hash(self, sha256: str) -> bool:
"""Check if hash exists in index"""
return sha256.lower() in self._hash_to_path
def get_path(self, sha256: str) -> Optional[str]:
"""Get file path for a hash"""
return self._hash_to_path.get(sha256.lower())
def get_hash(self, file_path: str) -> Optional[str]:
"""Get hash for a file path"""
filename = self._get_filename_from_path(file_path)
return self._filename_to_hash.get(filename)
def get_hash_by_filename(self, filename: str) -> Optional[str]:
"""Get hash for a filename without extension"""
# Strip extension if present to make the function more flexible
filename = os.path.splitext(filename)[0]
return self._filename_to_hash.get(filename)
def clear(self) -> None:
"""Clear all entries"""
self._hash_to_path.clear()
self._filename_to_hash.clear()
def get_all_hashes(self) -> Set[str]:
"""Get all hashes in the index"""
return set(self._hash_to_path.keys())
def get_all_filenames(self) -> Set[str]:
"""Get all filenames in the index"""
return set(self._filename_to_hash.keys())
def __len__(self) -> int:
"""Get number of entries"""
return len(self._hash_to_path)

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import json
import os
import logging
import asyncio
import time
import shutil
from typing import List, Dict, Optional, Type, Set
from ..utils.model_utils import determine_base_model
from ..utils.models import BaseModelMetadata
from ..config import config
from ..utils.file_utils import load_metadata, get_file_info, find_preview_file, save_metadata
from .model_cache import ModelCache
from .model_hash_index import ModelHashIndex
from ..utils.constants import PREVIEW_EXTENSIONS
from .service_registry import ServiceRegistry
from .websocket_manager import ws_manager
logger = logging.getLogger(__name__)
class ModelScanner:
"""Base service for scanning and managing model files"""
_lock = asyncio.Lock()
def __init__(self, model_type: str, model_class: Type[BaseModelMetadata], file_extensions: Set[str], hash_index: Optional[ModelHashIndex] = None):
"""Initialize the scanner
Args:
model_type: Type of model (lora, checkpoint, etc.)
model_class: Class used to create metadata instances
file_extensions: Set of supported file extensions including the dot (e.g. {'.safetensors'})
hash_index: Hash index instance (optional)
"""
self.model_type = model_type
self.model_class = model_class
self.file_extensions = file_extensions
self._cache = None
self._hash_index = hash_index or ModelHashIndex()
self._tags_count = {} # Dictionary to store tag counts
self._is_initializing = False # Flag to track initialization state
self._excluded_models = [] # List to track excluded models
# Register this service
asyncio.create_task(self._register_service())
async def _register_service(self):
"""Register this instance with the ServiceRegistry"""
service_name = f"{self.model_type}_scanner"
await ServiceRegistry.register_service(service_name, self)
async def initialize_in_background(self) -> None:
"""Initialize cache in background using thread pool"""
try:
# Set initial empty cache to avoid None reference errors
if self._cache is None:
self._cache = ModelCache(
raw_data=[],
sorted_by_name=[],
sorted_by_date=[],
folders=[]
)
# Set initializing flag to true
self._is_initializing = True
# Determine the page type based on model type
page_type = 'loras' if self.model_type == 'lora' else 'checkpoints'
# First, count all model files to track progress
await ws_manager.broadcast_init_progress({
'stage': 'scan_folders',
'progress': 0,
'details': f"Scanning {self.model_type} folders...",
'scanner_type': self.model_type,
'pageType': page_type
})
# Count files in a separate thread to avoid blocking
loop = asyncio.get_event_loop()
total_files = await loop.run_in_executor(
None, # Use default thread pool
self._count_model_files # Run file counting in thread
)
await ws_manager.broadcast_init_progress({
'stage': 'count_models',
'progress': 1, # Changed from 10 to 1
'details': f"Found {total_files} {self.model_type} files",
'scanner_type': self.model_type,
'pageType': page_type
})
start_time = time.time()
# Use thread pool to execute CPU-intensive operations with progress reporting
await loop.run_in_executor(
None, # Use default thread pool
self._initialize_cache_sync, # Run synchronous version in thread
total_files, # Pass the total file count for progress reporting
page_type # Pass the page type for progress reporting
)
# Send final progress update
await ws_manager.broadcast_init_progress({
'stage': 'finalizing',
'progress': 99, # Changed from 95 to 99
'details': f"Finalizing {self.model_type} cache...",
'scanner_type': self.model_type,
'pageType': page_type
})
logger.info(f"{self.model_type.capitalize()} cache initialized in {time.time() - start_time:.2f} seconds. Found {len(self._cache.raw_data)} models")
# Send completion message
await asyncio.sleep(0.5) # Small delay to ensure final progress message is sent
await ws_manager.broadcast_init_progress({
'stage': 'finalizing',
'progress': 100,
'status': 'complete',
'details': f"Completed! Found {len(self._cache.raw_data)} {self.model_type} files.",
'scanner_type': self.model_type,
'pageType': page_type
})
except Exception as e:
logger.error(f"{self.model_type.capitalize()} Scanner: Error initializing cache in background: {e}")
finally:
# Always clear the initializing flag when done
self._is_initializing = False
def _count_model_files(self) -> int:
"""Count all model files with supported extensions in all roots
Returns:
int: Total number of model files found
"""
total_files = 0
visited_real_paths = set()
for root_path in self.get_model_roots():
if not os.path.exists(root_path):
continue
def count_recursive(path):
nonlocal total_files
try:
real_path = os.path.realpath(path)
if real_path in visited_real_paths:
return
visited_real_paths.add(real_path)
with os.scandir(path) as it:
for entry in it:
try:
if entry.is_file(follow_symlinks=True):
ext = os.path.splitext(entry.name)[1].lower()
if ext in self.file_extensions:
total_files += 1
elif entry.is_dir(follow_symlinks=True):
count_recursive(entry.path)
except Exception as e:
logger.error(f"Error counting files in entry {entry.path}: {e}")
except Exception as e:
logger.error(f"Error counting files in {path}: {e}")
count_recursive(root_path)
return total_files
def _initialize_cache_sync(self, total_files=0, page_type='loras'):
"""Synchronous version of cache initialization for thread pool execution"""
try:
# Create a new event loop for this thread
loop = asyncio.new_event_loop()
asyncio.set_event_loop(loop)
# Create a synchronous method to bypass the async lock
def sync_initialize_cache():
# Track progress
processed_files = 0
last_progress_time = time.time()
last_progress_percent = 0
# We need a wrapper around scan_all_models to track progress
# This is a local function that will run in our thread's event loop
async def scan_with_progress():
nonlocal processed_files, last_progress_time, last_progress_percent
# For storing raw model data
all_models = []
# Process each model root
for root_path in self.get_model_roots():
if not os.path.exists(root_path):
continue
# Track visited paths to avoid symlink loops
visited_paths = set()
# Recursively process directory
async def scan_dir_with_progress(path):
nonlocal processed_files, last_progress_time, last_progress_percent
try:
real_path = os.path.realpath(path)
if real_path in visited_paths:
return
visited_paths.add(real_path)
with os.scandir(path) as it:
entries = list(it)
for entry in entries:
try:
if entry.is_file(follow_symlinks=True):
ext = os.path.splitext(entry.name)[1].lower()
if ext in self.file_extensions:
file_path = entry.path.replace(os.sep, "/")
result = await self._process_model_file(file_path, root_path)
if result:
all_models.append(result)
# Update progress counter
processed_files += 1
# Update progress periodically (not every file to avoid excessive updates)
current_time = time.time()
if total_files > 0 and (current_time - last_progress_time > 0.5 or processed_files == total_files):
# Adjusted progress calculation
progress_percent = min(99, int(1 + (processed_files / total_files) * 98))
if progress_percent > last_progress_percent:
last_progress_percent = progress_percent
last_progress_time = current_time
# Send progress update through websocket
await ws_manager.broadcast_init_progress({
'stage': 'process_models',
'progress': progress_percent,
'details': f"Processing {self.model_type} files: {processed_files}/{total_files}",
'scanner_type': self.model_type,
'pageType': page_type
})
elif entry.is_dir(follow_symlinks=True):
await scan_dir_with_progress(entry.path)
except Exception as e:
logger.error(f"Error processing entry {entry.path}: {e}")
except Exception as e:
logger.error(f"Error scanning {path}: {e}")
# Process the root path
await scan_dir_with_progress(root_path)
return all_models
# Run the progress-tracking scan function
raw_data = loop.run_until_complete(scan_with_progress())
# Update hash index and tags count
for model_data in raw_data:
if 'sha256' in model_data and 'file_path' in model_data:
self._hash_index.add_entry(model_data['sha256'].lower(), model_data['file_path'])
# Count tags
if 'tags' in model_data and model_data['tags']:
for tag in model_data['tags']:
self._tags_count[tag] = self._tags_count.get(tag, 0) + 1
# Update cache
self._cache.raw_data = raw_data
loop.run_until_complete(self._cache.resort())
return self._cache
# Run our sync initialization that avoids lock conflicts
return sync_initialize_cache()
except Exception as e:
logger.error(f"Error in thread-based {self.model_type} cache initialization: {e}")
finally:
# Clean up the event loop
loop.close()
async def get_cached_data(self, force_refresh: bool = False) -> ModelCache:
"""Get cached model data, refresh if needed"""
# If cache is not initialized, return an empty cache
# Actual initialization should be done via initialize_in_background
if self._cache is None and not force_refresh:
return ModelCache(
raw_data=[],
sorted_by_name=[],
sorted_by_date=[],
folders=[]
)
# If force refresh is requested, initialize the cache directly
if (force_refresh):
if self._cache is None:
# For initial creation, do a full initialization
await self._initialize_cache()
else:
# For subsequent refreshes, use fast reconciliation
await self._reconcile_cache()
return self._cache
async def _initialize_cache(self) -> None:
"""Initialize or refresh the cache"""
self._is_initializing = True # Set flag
try:
start_time = time.time()
# Clear existing hash index
self._hash_index.clear()
# Clear existing tags count
self._tags_count = {}
# Determine the page type based on model type
page_type = 'loras' if self.model_type == 'lora' else 'checkpoints'
# Scan for new data
raw_data = await self.scan_all_models()
# Build hash index and tags count
for model_data in raw_data:
if 'sha256' in model_data and 'file_path' in model_data:
self._hash_index.add_entry(model_data['sha256'].lower(), model_data['file_path'])
# Count tags
if 'tags' in model_data and model_data['tags']:
for tag in model_data['tags']:
self._tags_count[tag] = self._tags_count.get(tag, 0) + 1
# Update cache
self._cache = ModelCache(
raw_data=raw_data,
sorted_by_name=[],
sorted_by_date=[],
folders=[]
)
# Resort cache
await self._cache.resort()
logger.info(f"{self.model_type.capitalize()} Scanner: Cache initialization completed in {time.time() - start_time:.2f} seconds, found {len(raw_data)} models")
except Exception as e:
logger.error(f"{self.model_type.capitalize()} Scanner: Error initializing cache: {e}")
# Ensure cache is at least an empty structure on error
if self._cache is None:
self._cache = ModelCache(
raw_data=[],
sorted_by_name=[],
sorted_by_date=[],
folders=[]
)
finally:
self._is_initializing = False # Unset flag
async def _reconcile_cache(self) -> None:
"""Fast cache reconciliation - only process differences between cache and filesystem"""
self._is_initializing = True # Set flag for reconciliation duration
try:
start_time = time.time()
logger.info(f"{self.model_type.capitalize()} Scanner: Starting fast cache reconciliation...")
# Get current cached file paths
cached_paths = {item['file_path'] for item in self._cache.raw_data}
path_to_item = {item['file_path']: item for item in self._cache.raw_data}
# Track found files and new files
found_paths = set()
new_files = []
# Scan all model roots
for root_path in self.get_model_roots():
if not os.path.exists(root_path):
continue
# Track visited real paths to avoid symlink loops
visited_real_paths = set()
# Recursively scan directory
for root, _, files in os.walk(root_path, followlinks=True):
real_root = os.path.realpath(root)
if real_root in visited_real_paths:
continue
visited_real_paths.add(real_root)
for file in files:
ext = os.path.splitext(file)[1].lower()
if ext in self.file_extensions:
# Construct paths exactly as they would be in cache
file_path = os.path.join(root, file).replace(os.sep, '/')
# Check if this file is already in cache
if file_path in cached_paths:
found_paths.add(file_path)
continue
if file_path in self._excluded_models:
continue
# Try case-insensitive match on Windows
if os.name == 'nt':
lower_path = file_path.lower()
matched = False
for cached_path in cached_paths:
if cached_path.lower() == lower_path:
found_paths.add(cached_path)
matched = True
break
if matched:
continue
# This is a new file to process
new_files.append(file_path)
# Yield control periodically
await asyncio.sleep(0)
# Process new files in batches
total_added = 0
if new_files:
logger.info(f"{self.model_type.capitalize()} Scanner: Found {len(new_files)} new files to process")
batch_size = 50
for i in range(0, len(new_files), batch_size):
batch = new_files[i:i+batch_size]
for path in batch:
try:
model_data = await self.scan_single_model(path)
if model_data:
# Add to cache
self._cache.raw_data.append(model_data)
# Update hash index if available
if 'sha256' in model_data and 'file_path' in model_data:
self._hash_index.add_entry(model_data['sha256'].lower(), model_data['file_path'])
# Update tags count
if 'tags' in model_data and model_data['tags']:
for tag in model_data['tags']:
self._tags_count[tag] = self._tags_count.get(tag, 0) + 1
total_added += 1
except Exception as e:
logger.error(f"Error adding {path} to cache: {e}")
# Yield control after each batch
await asyncio.sleep(0)
# Find missing files (in cache but not in filesystem)
missing_files = cached_paths - found_paths
total_removed = 0
if missing_files:
logger.info(f"{self.model_type.capitalize()} Scanner: Found {len(missing_files)} files to remove from cache")
# Process files to remove
for path in missing_files:
try:
model_to_remove = path_to_item[path]
# Update tags count
for tag in model_to_remove.get('tags', []):
if tag in self._tags_count:
self._tags_count[tag] = max(0, self._tags_count[tag] - 1)
if self._tags_count[tag] == 0:
del self._tags_count[tag]
# Remove from hash index
self._hash_index.remove_by_path(path)
total_removed += 1
except Exception as e:
logger.error(f"Error removing {path} from cache: {e}")
# Update cache data
self._cache.raw_data = [item for item in self._cache.raw_data if item['file_path'] not in missing_files]
# Resort cache if changes were made
if total_added > 0 or total_removed > 0:
# Update folders list
all_folders = set(item.get('folder', '') for item in self._cache.raw_data)
self._cache.folders = sorted(list(all_folders), key=lambda x: x.lower())
# Resort cache
await self._cache.resort()
logger.info(f"{self.model_type.capitalize()} Scanner: Cache reconciliation completed in {time.time() - start_time:.2f} seconds. Added {total_added}, removed {total_removed} models.")
except Exception as e:
logger.error(f"{self.model_type.capitalize()} Scanner: Error reconciling cache: {e}", exc_info=True)
finally:
self._is_initializing = False # Unset flag
# These methods should be implemented in child classes
async def scan_all_models(self) -> List[Dict]:
"""Scan all model directories and return metadata"""
raise NotImplementedError("Subclasses must implement scan_all_models")
def get_model_roots(self) -> List[str]:
"""Get model root directories"""
raise NotImplementedError("Subclasses must implement get_model_roots")
async def scan_single_model(self, file_path: str) -> Optional[Dict]:
"""Scan a single model file and return its metadata"""
try:
if not os.path.exists(os.path.realpath(file_path)):
return None
# Get basic file info
metadata = await self._get_file_info(file_path)
if not metadata:
return None
folder = self._calculate_folder(file_path)
# Ensure folder field exists
metadata_dict = metadata.to_dict()
metadata_dict['folder'] = folder or ''
return metadata_dict
except Exception as e:
logger.error(f"Error scanning {file_path}: {e}")
return None
async def _get_file_info(self, file_path: str) -> Optional[BaseModelMetadata]:
"""Get model file info and metadata (extensible for different model types)"""
return await get_file_info(file_path, self.model_class)
def _calculate_folder(self, file_path: str) -> str:
"""Calculate the folder path for a model file"""
for root in self.get_model_roots():
if file_path.startswith(root):
rel_path = os.path.relpath(file_path, root)
return os.path.dirname(rel_path).replace(os.path.sep, '/')
return ''
# Common methods shared between scanners
async def _process_model_file(self, file_path: str, root_path: str) -> Dict:
"""Process a single model file and return its metadata"""
needs_metadata_update = False
original_save_metadata = save_metadata
# Temporarily override save_metadata to prevent intermediate writes
async def no_op_save(*args, **kwargs):
nonlocal needs_metadata_update
needs_metadata_update = True
return None
# Use a context manager to temporarily replace save_metadata
from contextlib import contextmanager
@contextmanager
def prevent_metadata_writes():
nonlocal needs_metadata_update
# Replace the function temporarily
import sys
from .. import utils
original = utils.file_utils.save_metadata
utils.file_utils.save_metadata = no_op_save
try:
yield
finally:
# Restore the original function
utils.file_utils.save_metadata = original
# Process with write prevention
with prevent_metadata_writes():
metadata = await load_metadata(file_path, self.model_class)
if metadata is None:
civitai_info_path = f"{os.path.splitext(file_path)[0]}.civitai.info"
if os.path.exists(civitai_info_path):
try:
with open(civitai_info_path, 'r', encoding='utf-8') as f:
version_info = json.load(f)
file_info = next((f for f in version_info.get('files', []) if f.get('primary')), None)
if file_info:
file_name = os.path.splitext(os.path.basename(file_path))[0]
file_info['name'] = file_name
metadata = self.model_class.from_civitai_info(version_info, file_info, file_path)
metadata.preview_url = find_preview_file(file_name, os.path.dirname(file_path))
needs_metadata_update = True
logger.debug(f"Created metadata from .civitai.info for {file_path}")
except Exception as e:
logger.error(f"Error creating metadata from .civitai.info for {file_path}: {e}")
else:
# Check if metadata exists but civitai field is empty - try to restore from civitai.info
if metadata.civitai is None or metadata.civitai == {}:
civitai_info_path = f"{os.path.splitext(file_path)[0]}.civitai.info"
if os.path.exists(civitai_info_path):
try:
with open(civitai_info_path, 'r', encoding='utf-8') as f:
version_info = json.load(f)
logger.debug(f"Restoring missing civitai data from .civitai.info for {file_path}")
metadata.civitai = version_info
needs_metadata_update = True
# Ensure tags are also updated if they're missing
if (not metadata.tags or len(metadata.tags) == 0) and 'model' in version_info:
if 'tags' in version_info['model']:
metadata.tags = version_info['model']['tags']
needs_metadata_update = True
# Also restore description if missing
if (not metadata.modelDescription or metadata.modelDescription == "") and 'model' in version_info:
if 'description' in version_info['model']:
metadata.modelDescription = version_info['model']['description']
needs_metadata_update = True
except Exception as e:
logger.error(f"Error restoring civitai data from .civitai.info for {file_path}: {e}")
# Check if base_model is consistent with civitai baseModel
if metadata.civitai and 'baseModel' in metadata.civitai:
civitai_base_model = determine_base_model(metadata.civitai['baseModel'])
if metadata.base_model != civitai_base_model:
logger.debug(f"Updating base_model from {metadata.base_model} to {civitai_base_model} for {file_path}")
metadata.base_model = civitai_base_model
needs_metadata_update = True
if metadata is None:
metadata = await self._get_file_info(file_path)
needs_metadata_update = True
# Continue processing
model_data = metadata.to_dict() if metadata else None
# Skip excluded models
if model_data and model_data.get('exclude', False):
self._excluded_models.append(model_data['file_path'])
return None
# Fetch missing metadata from Civitai if needed (with write prevention)
with prevent_metadata_writes():
await self._fetch_missing_metadata(file_path, model_data)
rel_path = os.path.relpath(file_path, root_path)
folder = os.path.dirname(rel_path)
model_data['folder'] = folder.replace(os.path.sep, '/')
# Only save metadata if needed
if needs_metadata_update and metadata:
await original_save_metadata(file_path, metadata)
return model_data
async def _fetch_missing_metadata(self, file_path: str, model_data: Dict) -> None:
"""Fetch missing description and tags from Civitai if needed"""
try:
if model_data.get('civitai_deleted', False):
logger.debug(f"Skipping metadata fetch for {file_path}: marked as deleted on Civitai")
return
needs_metadata_update = False
model_id = None
if model_data.get('civitai'):
model_id = model_data['civitai'].get('modelId')
if model_id:
model_id = str(model_id)
tags_missing = not model_data.get('tags') or len(model_data.get('tags', [])) == 0
desc_missing = not model_data.get('modelDescription') or model_data.get('modelDescription') in (None, "")
# TODO: not for now, but later we should check if the creator is missing
# creator_missing = not model_data.get('civitai', {}).get('creator')
creator_missing = False
needs_metadata_update = tags_missing or desc_missing or creator_missing
if needs_metadata_update and model_id:
logger.debug(f"Fetching missing metadata for {file_path} with model ID {model_id}")
from ..services.civitai_client import CivitaiClient
client = CivitaiClient()
model_metadata, status_code = await client.get_model_metadata(model_id)
await client.close()
if status_code == 404:
logger.warning(f"Model {model_id} appears to be deleted from Civitai (404 response)")
model_data['civitai_deleted'] = True
metadata_path = os.path.splitext(file_path)[0] + '.metadata.json'
with open(metadata_path, 'w', encoding='utf-8') as f:
json.dump(model_data, f, indent=2, ensure_ascii=False)
elif model_metadata:
logger.debug(f"Updating metadata for {file_path} with model ID {model_id}")
if model_metadata.get('tags') and (not model_data.get('tags') or len(model_data.get('tags', [])) == 0):
model_data['tags'] = model_metadata['tags']
if model_metadata.get('description') and (not model_data.get('modelDescription') or model_data.get('modelDescription') in (None, "")):
model_data['modelDescription'] = model_metadata['description']
model_data['civitai']['creator'] = model_metadata['creator']
# Create a metadata object and save it using save_metadata
metadata_obj = self.model_class.from_dict(model_data)
await save_metadata(file_path, metadata_obj)
except Exception as e:
logger.error(f"Failed to update metadata from Civitai for {file_path}: {e}")
async def _scan_directory(self, root_path: str) -> List[Dict]:
"""Base implementation for directory scanning"""
models = []
original_root = root_path
async def scan_recursive(path: str, visited_paths: set):
try:
real_path = os.path.realpath(path)
if real_path in visited_paths:
logger.debug(f"Skipping already visited path: {path}")
return
visited_paths.add(real_path)
with os.scandir(path) as it:
entries = list(it)
for entry in entries:
try:
if entry.is_file(follow_symlinks=True):
ext = os.path.splitext(entry.name)[1].lower()
if ext in self.file_extensions:
file_path = entry.path.replace(os.sep, "/")
await self._process_single_file(file_path, original_root, models)
await asyncio.sleep(0)
elif entry.is_dir(follow_symlinks=True):
await scan_recursive(entry.path, visited_paths)
except Exception as e:
logger.error(f"Error processing entry {entry.path}: {e}")
except Exception as e:
logger.error(f"Error scanning {path}: {e}")
await scan_recursive(root_path, set())
return models
async def _process_single_file(self, file_path: str, root_path: str, models_list: list):
"""Process a single file and add to results list"""
try:
result = await self._process_model_file(file_path, root_path)
if result:
models_list.append(result)
except Exception as e:
logger.error(f"Error processing {file_path}: {e}")
async def move_model(self, source_path: str, target_path: str) -> bool:
"""Move a model and its associated files to a new location"""
try:
source_path = source_path.replace(os.sep, '/')
target_path = target_path.replace(os.sep, '/')
file_ext = os.path.splitext(source_path)[1]
if not file_ext or file_ext.lower() not in self.file_extensions:
logger.error(f"Invalid file extension for model: {file_ext}")
return False
base_name = os.path.splitext(os.path.basename(source_path))[0]
source_dir = os.path.dirname(source_path)
os.makedirs(target_path, exist_ok=True)
target_file = os.path.join(target_path, f"{base_name}{file_ext}").replace(os.sep, '/')
real_source = os.path.realpath(source_path)
real_target = os.path.realpath(target_file)
file_size = os.path.getsize(real_source)
# Get the appropriate file monitor through ServiceRegistry
if self.model_type == "lora":
monitor = await ServiceRegistry.get_lora_monitor()
elif self.model_type == "checkpoint":
monitor = await ServiceRegistry.get_checkpoint_monitor()
else:
monitor = None
if monitor:
monitor.handler.add_ignore_path(
real_source,
file_size
)
monitor.handler.add_ignore_path(
real_target,
file_size
)
shutil.move(real_source, real_target)
source_metadata = os.path.join(source_dir, f"{base_name}.metadata.json")
metadata = None
if os.path.exists(source_metadata):
target_metadata = os.path.join(target_path, f"{base_name}.metadata.json")
shutil.move(source_metadata, target_metadata)
metadata = await self._update_metadata_paths(target_metadata, target_file)
# Move civitai.info file if exists
source_civitai = os.path.join(source_dir, f"{base_name}.civitai.info")
if os.path.exists(source_civitai):
target_civitai = os.path.join(target_path, f"{base_name}.civitai.info")
shutil.move(source_civitai, target_civitai)
for ext in PREVIEW_EXTENSIONS:
source_preview = os.path.join(source_dir, f"{base_name}{ext}")
if os.path.exists(source_preview):
target_preview = os.path.join(target_path, f"{base_name}{ext}")
shutil.move(source_preview, target_preview)
break
await self.update_single_model_cache(source_path, target_file, metadata)
return True
except Exception as e:
logger.error(f"Error moving model: {e}", exc_info=True)
return False
async def _update_metadata_paths(self, metadata_path: str, model_path: str) -> Dict:
"""Update file paths in metadata file"""
try:
with open(metadata_path, 'r', encoding='utf-8') as f:
metadata = json.load(f)
metadata['file_path'] = model_path.replace(os.sep, '/')
if 'preview_url' in metadata:
preview_dir = os.path.dirname(model_path)
preview_name = os.path.splitext(os.path.basename(metadata['preview_url']))[0]
preview_ext = os.path.splitext(metadata['preview_url'])[1]
new_preview_path = os.path.join(preview_dir, f"{preview_name}{preview_ext}")
metadata['preview_url'] = new_preview_path.replace(os.sep, '/')
with open(metadata_path, 'w', encoding='utf-8') as f:
json.dump(metadata, f, indent=2, ensure_ascii=False)
return metadata
except Exception as e:
logger.error(f"Error updating metadata paths: {e}", exc_info=True)
return None
async def update_single_model_cache(self, original_path: str, new_path: str, metadata: Dict) -> bool:
"""Update cache after a model has been moved or modified"""
cache = await self.get_cached_data()
existing_item = next((item for item in cache.raw_data if item['file_path'] == original_path), None)
if existing_item and 'tags' in existing_item:
for tag in existing_item.get('tags', []):
if tag in self._tags_count:
self._tags_count[tag] = max(0, self._tags_count[tag] - 1)
if self._tags_count[tag] == 0:
del self._tags_count[tag]
self._hash_index.remove_by_path(original_path)
cache.raw_data = [
item for item in cache.raw_data
if item['file_path'] != original_path
]
if metadata:
if original_path == new_path:
existing_folder = next((item['folder'] for item in cache.raw_data
if item['file_path'] == original_path), None)
if existing_folder:
metadata['folder'] = existing_folder
else:
metadata['folder'] = self._calculate_folder(new_path)
else:
metadata['folder'] = self._calculate_folder(new_path)
cache.raw_data.append(metadata)
if 'sha256' in metadata:
self._hash_index.add_entry(metadata['sha256'].lower(), new_path)
all_folders = set(item['folder'] for item in cache.raw_data)
cache.folders = sorted(list(all_folders), key=lambda x: x.lower())
if 'tags' in metadata:
for tag in metadata.get('tags', []):
self._tags_count[tag] = self._tags_count.get(tag, 0) + 1
await cache.resort()
return True
def has_hash(self, sha256: str) -> bool:
"""Check if a model with given hash exists"""
return self._hash_index.has_hash(sha256.lower())
def get_path_by_hash(self, sha256: str) -> Optional[str]:
"""Get file path for a model by its hash"""
return self._hash_index.get_path(sha256.lower())
def get_hash_by_path(self, file_path: str) -> Optional[str]:
"""Get hash for a model by its file path"""
return self._hash_index.get_hash(file_path)
def get_hash_by_filename(self, filename: str) -> Optional[str]:
"""Get hash for a model by its filename without path"""
return self._hash_index.get_hash_by_filename(filename)
# TODO: Adjust this method to use metadata instead of finding the file
def get_preview_url_by_hash(self, sha256: str) -> Optional[str]:
"""Get preview static URL for a model by its hash"""
file_path = self._hash_index.get_path(sha256.lower())
if not file_path:
return None
base_name = os.path.splitext(file_path)[0]
for ext in PREVIEW_EXTENSIONS:
preview_path = f"{base_name}{ext}"
if os.path.exists(preview_path):
return config.get_preview_static_url(preview_path)
return None
async def get_top_tags(self, limit: int = 20) -> List[Dict[str, any]]:
"""Get top tags sorted by count"""
await self.get_cached_data()
sorted_tags = sorted(
[{"tag": tag, "count": count} for tag, count in self._tags_count.items()],
key=lambda x: x['count'],
reverse=True
)
return sorted_tags[:limit]
async def get_base_models(self, limit: int = 20) -> List[Dict[str, any]]:
"""Get base models sorted by frequency"""
cache = await self.get_cached_data()
base_model_counts = {}
for model in cache.raw_data:
if 'base_model' in model and model['base_model']:
base_model = model['base_model']
base_model_counts[base_model] = base_model_counts.get(base_model, 0) + 1
sorted_models = [{'name': model, 'count': count} for model, count in base_model_counts.items()]
sorted_models.sort(key=lambda x: x['count'], reverse=True)
return sorted_models[:limit]
async def get_model_info_by_name(self, name):
"""Get model information by name"""
try:
cache = await self.get_cached_data()
for model in cache.raw_data:
if model.get("file_name") == name:
return model
return None
except Exception as e:
logger.error(f"Error getting model info by name: {e}", exc_info=True)
return None
def get_excluded_models(self) -> List[str]:
"""Get list of excluded model file paths"""
return self._excluded_models.copy()
async def update_preview_in_cache(self, file_path: str, preview_url: str) -> bool:
"""Update preview URL in cache for a specific lora
Args:
file_path: The file path of the lora to update
preview_url: The new preview URL
Returns:
bool: True if the update was successful, False if cache doesn't exist or lora wasn't found
"""
if self._cache is None:
return False
return await self._cache.update_preview_url(file_path, preview_url)

View File

@@ -2,6 +2,7 @@ import asyncio
from typing import List, Dict
from dataclasses import dataclass
from operator import itemgetter
from natsort import natsorted
@dataclass
class RecipeCache:
@@ -16,7 +17,7 @@ class RecipeCache:
async def resort(self, name_only: bool = False):
"""Resort all cached data views"""
async with self._lock:
self.sorted_by_name = sorted(
self.sorted_by_name = natsorted(
self.raw_data,
key=lambda x: x.get('title', '').lower() # Case-insensitive sort
)
@@ -37,18 +38,18 @@ class RecipeCache:
Returns:
bool: True if the update was successful, False if the recipe wasn't found
"""
async with self._lock:
# Update in raw_data
for item in self.raw_data:
if item.get('id') == recipe_id:
item.update(metadata)
break
else:
return False # Recipe not found
# Resort to reflect changes
await self.resort()
return True
# Update in raw_data
for item in self.raw_data:
if item.get('id') == recipe_id:
item.update(metadata)
break
else:
return False # Recipe not found
# Resort to reflect changes
await self.resort()
return True
async def add_recipe(self, recipe_data: Dict) -> None:
"""Add a new recipe to the cache

View File

@@ -2,12 +2,14 @@ import os
import logging
import asyncio
import json
from typing import List, Dict, Optional, Any
import time
from typing import List, Dict, Optional, Any, Tuple
from ..config import config
from .recipe_cache import RecipeCache
from .service_registry import ServiceRegistry
from .lora_scanner import LoraScanner
from .civitai_client import CivitaiClient
from ..utils.utils import fuzzy_match
from natsort import natsorted
import sys
logger = logging.getLogger(__name__)
@@ -18,11 +20,22 @@ class RecipeScanner:
_instance = None
_lock = asyncio.Lock()
@classmethod
async def get_instance(cls, lora_scanner: Optional[LoraScanner] = None):
"""Get singleton instance of RecipeScanner"""
async with cls._lock:
if cls._instance is None:
if not lora_scanner:
# Get lora scanner from service registry if not provided
lora_scanner = await ServiceRegistry.get_lora_scanner()
cls._instance = cls(lora_scanner)
return cls._instance
def __new__(cls, lora_scanner: Optional[LoraScanner] = None):
if cls._instance is None:
cls._instance = super().__new__(cls)
cls._instance._lora_scanner = lora_scanner
cls._instance._civitai_client = CivitaiClient()
cls._instance._civitai_client = None # Will be lazily initialized
return cls._instance
def __init__(self, lora_scanner: Optional[LoraScanner] = None):
@@ -35,9 +48,148 @@ class RecipeScanner:
if lora_scanner:
self._lora_scanner = lora_scanner
self._initialized = True
# Initialization will be scheduled by LoraManager
async def _get_civitai_client(self):
"""Lazily initialize CivitaiClient from registry"""
if self._civitai_client is None:
self._civitai_client = await ServiceRegistry.get_civitai_client()
return self._civitai_client
async def initialize_in_background(self) -> None:
"""Initialize cache in background using thread pool"""
try:
# Set initial empty cache to avoid None reference errors
if self._cache is None:
self._cache = RecipeCache(
raw_data=[],
sorted_by_name=[],
sorted_by_date=[]
)
# Mark as initializing to prevent concurrent initializations
self._is_initializing = True
try:
# Start timer
start_time = time.time()
# Use thread pool to execute CPU-intensive operations
loop = asyncio.get_event_loop()
cache = await loop.run_in_executor(
None, # Use default thread pool
self._initialize_recipe_cache_sync # Run synchronous version in thread
)
# Calculate elapsed time and log it
elapsed_time = time.time() - start_time
recipe_count = len(cache.raw_data) if cache and hasattr(cache, 'raw_data') else 0
logger.info(f"Recipe cache initialized in {elapsed_time:.2f} seconds. Found {recipe_count} recipes")
finally:
# Mark initialization as complete regardless of outcome
self._is_initializing = False
except Exception as e:
logger.error(f"Recipe Scanner: Error initializing cache in background: {e}")
def _initialize_recipe_cache_sync(self):
"""Synchronous version of recipe cache initialization for thread pool execution"""
try:
# Create a new event loop for this thread
loop = asyncio.new_event_loop()
asyncio.set_event_loop(loop)
# Create a synchronous method to bypass the async lock
def sync_initialize_cache():
# We need to implement scan_all_recipes logic synchronously here
# instead of calling the async method to avoid event loop issues
recipes = []
recipes_dir = self.recipes_dir
if not recipes_dir or not os.path.exists(recipes_dir):
logger.warning(f"Recipes directory not found: {recipes_dir}")
return recipes
# Get all recipe JSON files in the recipes directory
recipe_files = []
for root, _, files in os.walk(recipes_dir):
recipe_count = sum(1 for f in files if f.lower().endswith('.recipe.json'))
if recipe_count > 0:
for file in files:
if file.lower().endswith('.recipe.json'):
recipe_files.append(os.path.join(root, file))
# Process each recipe file
for recipe_path in recipe_files:
try:
with open(recipe_path, 'r', encoding='utf-8') as f:
recipe_data = json.load(f)
# Validate recipe data
if not recipe_data or not isinstance(recipe_data, dict):
logger.warning(f"Invalid recipe data in {recipe_path}")
continue
# Ensure required fields exist
required_fields = ['id', 'file_path', 'title']
if not all(field in recipe_data for field in required_fields):
logger.warning(f"Missing required fields in {recipe_path}")
continue
# Ensure the image file exists
image_path = recipe_data.get('file_path')
if not os.path.exists(image_path):
recipe_dir = os.path.dirname(recipe_path)
image_filename = os.path.basename(image_path)
alternative_path = os.path.join(recipe_dir, image_filename)
if os.path.exists(alternative_path):
recipe_data['file_path'] = alternative_path
# Ensure loras array exists
if 'loras' not in recipe_data:
recipe_data['loras'] = []
# Ensure gen_params exists
if 'gen_params' not in recipe_data:
recipe_data['gen_params'] = {}
# Add to list without async operations
recipes.append(recipe_data)
except Exception as e:
logger.error(f"Error loading recipe file {recipe_path}: {e}")
import traceback
traceback.print_exc(file=sys.stderr)
# Update cache with the collected data
self._cache.raw_data = recipes
# Create a simplified resort function that doesn't use await
if hasattr(self._cache, "resort"):
try:
# Sort by name
self._cache.sorted_by_name = natsorted(
self._cache.raw_data,
key=lambda x: x.get('title', '').lower()
)
# Sort by date (modified or created)
self._cache.sorted_by_date = sorted(
self._cache.raw_data,
key=lambda x: x.get('modified', x.get('created_date', 0)),
reverse=True
)
except Exception as e:
logger.error(f"Error sorting recipe cache: {e}")
return self._cache
# Run our sync initialization that avoids lock conflicts
return sync_initialize_cache()
except Exception as e:
logger.error(f"Error in thread-based recipe cache initialization: {e}")
return self._cache if hasattr(self, '_cache') else None
finally:
# Clean up the event loop
loop.close()
@property
def recipes_dir(self) -> str:
"""Get path to recipes directory"""
@@ -60,49 +212,48 @@ class RecipeScanner:
if self._is_initializing and not force_refresh:
return self._cache or RecipeCache(raw_data=[], sorted_by_name=[], sorted_by_date=[])
# Try to acquire the lock with a timeout to prevent deadlocks
try:
async with self._initialization_lock:
# Check again after acquiring the lock
if self._cache is not None and not force_refresh:
return self._cache
# Mark as initializing to prevent concurrent initializations
self._is_initializing = True
try:
# Remove dependency on lora scanner initialization
# Scan for recipe data directly
raw_data = await self.scan_all_recipes()
# If force refresh is requested, initialize the cache directly
if force_refresh:
# Try to acquire the lock with a timeout to prevent deadlocks
try:
async with self._initialization_lock:
# Mark as initializing to prevent concurrent initializations
self._is_initializing = True
# Update cache
self._cache = RecipeCache(
raw_data=raw_data,
sorted_by_name=[],
sorted_by_date=[]
)
try:
# Scan for recipe data directly
raw_data = await self.scan_all_recipes()
# Update cache
self._cache = RecipeCache(
raw_data=raw_data,
sorted_by_name=[],
sorted_by_date=[]
)
# Resort cache
await self._cache.resort()
return self._cache
# Resort cache
await self._cache.resort()
return self._cache
except Exception as e:
logger.error(f"Recipe Manager: Error initializing cache: {e}", exc_info=True)
# Create empty cache on error
self._cache = RecipeCache(
raw_data=[],
sorted_by_name=[],
sorted_by_date=[]
)
return self._cache
finally:
# Mark initialization as complete
self._is_initializing = False
except Exception as e:
logger.error(f"Recipe Manager: Error initializing cache: {e}", exc_info=True)
# Create empty cache on error
self._cache = RecipeCache(
raw_data=[],
sorted_by_name=[],
sorted_by_date=[]
)
return self._cache
finally:
# Mark initialization as complete
self._is_initializing = False
except Exception as e:
logger.error(f"Unexpected error in get_cached_data: {e}")
except Exception as e:
logger.error(f"Unexpected error in get_cached_data: {e}")
return self._cache or RecipeCache(raw_data=[], sorted_by_name=[], sorted_by_date=[])
# Return the cache (may be empty or partially initialized)
return self._cache or RecipeCache(raw_data=[], sorted_by_name=[], sorted_by_date=[])
async def scan_all_recipes(self) -> List[Dict]:
"""Scan all recipe JSON files and return metadata"""
@@ -171,6 +322,20 @@ class RecipeScanner:
# Update lora information with local paths and availability
await self._update_lora_information(recipe_data)
# Calculate and update fingerprint if missing
if 'loras' in recipe_data and 'fingerprint' not in recipe_data:
from ..utils.utils import calculate_recipe_fingerprint
fingerprint = calculate_recipe_fingerprint(recipe_data['loras'])
recipe_data['fingerprint'] = fingerprint
# Write updated recipe data back to file
try:
with open(recipe_path, 'w', encoding='utf-8') as f:
json.dump(recipe_data, f, indent=4, ensure_ascii=False)
logger.info(f"Added fingerprint to recipe: {recipe_path}")
except Exception as e:
logger.error(f"Error writing updated recipe with fingerprint: {e}")
return recipe_data
except Exception as e:
@@ -191,6 +356,10 @@ class RecipeScanner:
metadata_updated = False
for lora in recipe_data['loras']:
# Skip deleted loras that were already marked
if lora.get('isDeleted', False):
continue
# Skip if already has complete information
if 'hash' in lora and 'file_name' in lora and lora['file_name']:
continue
@@ -206,12 +375,19 @@ class RecipeScanner:
metadata_updated = True
else:
# If not in cache, fetch from Civitai
hash_from_civitai = await self._get_hash_from_civitai(model_version_id)
if hash_from_civitai:
lora['hash'] = hash_from_civitai
metadata_updated = True
result = await self._get_hash_from_civitai(model_version_id)
if isinstance(result, tuple):
hash_from_civitai, is_deleted = result
if hash_from_civitai:
lora['hash'] = hash_from_civitai
metadata_updated = True
elif is_deleted:
# Mark the lora as deleted if it was not found on Civitai
lora['isDeleted'] = True
logger.warning(f"Marked lora with modelVersionId {model_version_id} as deleted")
metadata_updated = True
else:
logger.warning(f"Could not get hash for modelVersionId {model_version_id}")
logger.debug(f"Could not get hash for modelVersionId {model_version_id}")
# If has hash but no file_name, look up in lora library
if 'hash' in lora and (not lora.get('file_name') or not lora['file_name']):
@@ -255,42 +431,32 @@ class RecipeScanner:
async def _get_hash_from_civitai(self, model_version_id: str) -> Optional[str]:
"""Get hash from Civitai API"""
try:
if not self._civitai_client:
# Get CivitaiClient from ServiceRegistry
civitai_client = await self._get_civitai_client()
if not civitai_client:
logger.error("Failed to get CivitaiClient from ServiceRegistry")
return None
version_info = await self._civitai_client.get_model_version_info(model_version_id)
version_info, error_msg = await civitai_client.get_model_version_info(model_version_id)
if not version_info or not version_info.get('files'):
logger.warning(f"No files found in version info for ID: {model_version_id}")
return None
if not version_info:
if error_msg and "model not found" in error_msg.lower():
logger.warning(f"Model with version ID {model_version_id} was not found on Civitai - marking as deleted")
return None, True # Return None hash and True for isDeleted flag
else:
logger.debug(f"Could not get hash for modelVersionId {model_version_id}: {error_msg}")
return None, False # Return None hash but not marked as deleted
# Get hash from the first file
for file_info in version_info.get('files', []):
if file_info.get('hashes', {}).get('SHA256'):
return file_info['hashes']['SHA256']
return file_info['hashes']['SHA256'], False # Return hash with False for isDeleted flag
logger.warning(f"No SHA256 hash found in version info for ID: {model_version_id}")
return None
logger.debug(f"No SHA256 hash found in version info for ID: {model_version_id}")
return None, False
except Exception as e:
logger.error(f"Error getting hash from Civitai: {e}")
return None
async def _get_model_version_name(self, model_version_id: str) -> Optional[str]:
"""Get model version name from Civitai API"""
try:
if not self._civitai_client:
return None
version_info = await self._civitai_client.get_model_version_info(model_version_id)
if version_info and 'name' in version_info:
return version_info['name']
logger.warning(f"No version name found for modelVersionId {model_version_id}")
return None
except Exception as e:
logger.error(f"Error getting model version name from Civitai: {e}")
return None
return None, False
async def _determine_base_model(self, loras: List[Dict]) -> Optional[str]:
"""Determine the most common base model among LoRAs"""
@@ -330,7 +496,7 @@ class RecipeScanner:
logger.error(f"Error getting base model for lora: {e}")
return None
async def get_paginated_data(self, page: int, page_size: int, sort_by: str = 'date', search: str = None, filters: dict = None, search_options: dict = None):
async def get_paginated_data(self, page: int, page_size: int, sort_by: str = 'date', search: str = None, filters: dict = None, search_options: dict = None, lora_hash: str = None, bypass_filters: bool = True):
"""Get paginated and filtered recipe data
Args:
@@ -340,69 +506,89 @@ class RecipeScanner:
search: Search term
filters: Dictionary of filters to apply
search_options: Dictionary of search options to apply
lora_hash: Optional SHA256 hash of a LoRA to filter recipes by
bypass_filters: If True, ignore other filters when a lora_hash is provided
"""
cache = await self.get_cached_data()
# Get base dataset
filtered_data = cache.sorted_by_date if sort_by == 'date' else cache.sorted_by_name
# Apply search filter
if search:
# Default search options if none provided
if not search_options:
search_options = {
'title': True,
'tags': True,
'lora_name': True,
'lora_model': True
}
# Special case: Filter by LoRA hash (takes precedence if bypass_filters is True)
if lora_hash:
# Filter recipes that contain this LoRA hash
filtered_data = [
item for item in filtered_data
if 'loras' in item and any(
lora.get('hash', '').lower() == lora_hash.lower()
for lora in item['loras']
)
]
# Build the search predicate based on search options
def matches_search(item):
# Search in title if enabled
if search_options.get('title', True):
if fuzzy_match(str(item.get('title', '')), search):
return True
# Search in tags if enabled
if search_options.get('tags', True) and 'tags' in item:
for tag in item['tags']:
if fuzzy_match(tag, search):
return True
# Search in lora file names if enabled
if search_options.get('lora_name', True) and 'loras' in item:
for lora in item['loras']:
if fuzzy_match(str(lora.get('file_name', '')), search):
return True
# Search in lora model names if enabled
if search_options.get('lora_model', True) and 'loras' in item:
for lora in item['loras']:
if fuzzy_match(str(lora.get('modelName', '')), search):
return True
# No match found
return False
# Filter the data using the search predicate
filtered_data = [item for item in filtered_data if matches_search(item)]
if bypass_filters:
# Skip other filters if bypass_filters is True
pass
# Otherwise continue with normal filtering after applying LoRA hash filter
# Apply additional filters
if filters:
# Filter by base model
if 'base_model' in filters and filters['base_model']:
filtered_data = [
item for item in filtered_data
if item.get('base_model', '') in filters['base_model']
]
# Skip further filtering if we're only filtering by LoRA hash with bypass enabled
if not (lora_hash and bypass_filters):
# Apply search filter
if search:
# Default search options if none provided
if not search_options:
search_options = {
'title': True,
'tags': True,
'lora_name': True,
'lora_model': True
}
# Build the search predicate based on search options
def matches_search(item):
# Search in title if enabled
if search_options.get('title', True):
if fuzzy_match(str(item.get('title', '')), search):
return True
# Search in tags if enabled
if search_options.get('tags', True) and 'tags' in item:
for tag in item['tags']:
if fuzzy_match(tag, search):
return True
# Search in lora file names if enabled
if search_options.get('lora_name', True) and 'loras' in item:
for lora in item['loras']:
if fuzzy_match(str(lora.get('file_name', '')), search):
return True
# Search in lora model names if enabled
if search_options.get('lora_model', True) and 'loras' in item:
for lora in item['loras']:
if fuzzy_match(str(lora.get('modelName', '')), search):
return True
# No match found
return False
# Filter the data using the search predicate
filtered_data = [item for item in filtered_data if matches_search(item)]
# Filter by tags
if 'tags' in filters and filters['tags']:
filtered_data = [
item for item in filtered_data
if any(tag in item.get('tags', []) for tag in filters['tags'])
]
# Apply additional filters
if filters:
# Filter by base model
if 'base_model' in filters and filters['base_model']:
filtered_data = [
item for item in filtered_data
if item.get('base_model', '') in filters['base_model']
]
# Filter by tags
if 'tags' in filters and filters['tags']:
filtered_data = [
item for item in filtered_data
if any(tag in item.get('tags', []) for tag in filters['tags'])
]
# Calculate pagination
total_items = len(filtered_data)
@@ -430,3 +616,260 @@ class RecipeScanner:
}
return result
async def get_recipe_by_id(self, recipe_id: str) -> dict:
"""Get a single recipe by ID with all metadata and formatted URLs
Args:
recipe_id: The ID of the recipe to retrieve
Returns:
Dict containing the recipe data or None if not found
"""
if not recipe_id:
return None
# Get all recipes from cache
cache = await self.get_cached_data()
# Find the recipe with the specified ID
recipe = next((r for r in cache.raw_data if str(r.get('id', '')) == recipe_id), None)
if not recipe:
return None
# Format the recipe with all needed information
formatted_recipe = {**recipe} # Copy all fields
# Format file path to URL
if 'file_path' in formatted_recipe:
formatted_recipe['file_url'] = self._format_file_url(formatted_recipe['file_path'])
# Format dates for display
for date_field in ['created_date', 'modified']:
if date_field in formatted_recipe:
formatted_recipe[f"{date_field}_formatted"] = self._format_timestamp(formatted_recipe[date_field])
# Add lora metadata
if 'loras' in formatted_recipe:
for lora in formatted_recipe['loras']:
if 'hash' in lora and lora['hash']:
lora_hash = lora['hash'].lower()
lora['inLibrary'] = self._lora_scanner.has_lora_hash(lora_hash)
lora['preview_url'] = self._lora_scanner.get_preview_url_by_hash(lora_hash)
lora['localPath'] = self._lora_scanner.get_lora_path_by_hash(lora_hash)
return formatted_recipe
def _format_file_url(self, file_path: str) -> str:
"""Format file path as URL for serving in web UI"""
if not file_path:
return '/loras_static/images/no-preview.png'
try:
# Format file path as a URL that will work with static file serving
recipes_dir = os.path.join(config.loras_roots[0], "recipes").replace(os.sep, '/')
if file_path.replace(os.sep, '/').startswith(recipes_dir):
relative_path = os.path.relpath(file_path, config.loras_roots[0]).replace(os.sep, '/')
return f"/loras_static/root1/preview/{relative_path}"
# If not in recipes dir, try to create a valid URL from the file name
file_name = os.path.basename(file_path)
return f"/loras_static/root1/preview/recipes/{file_name}"
except Exception as e:
logger.error(f"Error formatting file URL: {e}")
return '/loras_static/images/no-preview.png'
def _format_timestamp(self, timestamp: float) -> str:
"""Format timestamp for display"""
from datetime import datetime
return datetime.fromtimestamp(timestamp).strftime('%Y-%m-%d %H:%M:%S')
async def update_recipe_metadata(self, recipe_id: str, metadata: dict) -> bool:
"""Update recipe metadata (like title and tags) in both file system and cache
Args:
recipe_id: The ID of the recipe to update
metadata: Dictionary containing metadata fields to update (title, tags, etc.)
Returns:
bool: True if successful, False otherwise
"""
import os
import json
# First, find the recipe JSON file path
recipe_json_path = os.path.join(self.recipes_dir, f"{recipe_id}.recipe.json")
if not os.path.exists(recipe_json_path):
return False
try:
# Load existing recipe data
with open(recipe_json_path, 'r', encoding='utf-8') as f:
recipe_data = json.load(f)
# Update fields
for key, value in metadata.items():
recipe_data[key] = value
# Save updated recipe
with open(recipe_json_path, 'w', encoding='utf-8') as f:
json.dump(recipe_data, f, indent=4, ensure_ascii=False)
# Update the cache if it exists
if self._cache is not None:
await self._cache.update_recipe_metadata(recipe_id, metadata)
# If the recipe has an image, update its EXIF metadata
from ..utils.exif_utils import ExifUtils
image_path = recipe_data.get('file_path')
if image_path and os.path.exists(image_path):
ExifUtils.append_recipe_metadata(image_path, recipe_data)
return True
except Exception as e:
import logging
logging.getLogger(__name__).error(f"Error updating recipe metadata: {e}", exc_info=True)
return False
async def update_lora_filename_by_hash(self, hash_value: str, new_file_name: str) -> Tuple[int, int]:
"""Update file_name in all recipes that contain a LoRA with the specified hash.
Args:
hash_value: The SHA256 hash value of the LoRA
new_file_name: The new file_name to set
Returns:
Tuple[int, int]: (number of recipes updated in files, number of recipes updated in cache)
"""
if not hash_value or not new_file_name:
return 0, 0
# Always use lowercase hash for consistency
hash_value = hash_value.lower()
# Get recipes directory
recipes_dir = self.recipes_dir
if not recipes_dir or not os.path.exists(recipes_dir):
logger.warning(f"Recipes directory not found: {recipes_dir}")
return 0, 0
# Check if cache is initialized
cache_initialized = self._cache is not None
cache_updated_count = 0
file_updated_count = 0
# Get all recipe JSON files in the recipes directory
recipe_files = []
for root, _, files in os.walk(recipes_dir):
for file in files:
if file.lower().endswith('.recipe.json'):
recipe_files.append(os.path.join(root, file))
# Process each recipe file
for recipe_path in recipe_files:
try:
# Load the recipe data
with open(recipe_path, 'r', encoding='utf-8') as f:
recipe_data = json.load(f)
# Skip if no loras or invalid structure
if not recipe_data or not isinstance(recipe_data, dict) or 'loras' not in recipe_data:
continue
# Check if any lora has matching hash
file_updated = False
for lora in recipe_data.get('loras', []):
if 'hash' in lora and lora['hash'].lower() == hash_value:
# Update file_name
old_file_name = lora.get('file_name', '')
lora['file_name'] = new_file_name
file_updated = True
logger.info(f"Updated file_name in recipe {recipe_path}: {old_file_name} -> {new_file_name}")
# If updated, save the file
if file_updated:
with open(recipe_path, 'w', encoding='utf-8') as f:
json.dump(recipe_data, f, indent=4, ensure_ascii=False)
file_updated_count += 1
# Also update in cache if it exists
if cache_initialized:
recipe_id = recipe_data.get('id')
if recipe_id:
for cache_item in self._cache.raw_data:
if cache_item.get('id') == recipe_id:
# Replace loras array with updated version
cache_item['loras'] = recipe_data['loras']
cache_updated_count += 1
break
except Exception as e:
logger.error(f"Error updating recipe file {recipe_path}: {e}")
import traceback
traceback.print_exc(file=sys.stderr)
# Resort cache if updates were made
if cache_initialized and cache_updated_count > 0:
await self._cache.resort()
logger.info(f"Resorted recipe cache after updating {cache_updated_count} items")
return file_updated_count, cache_updated_count
async def find_recipes_by_fingerprint(self, fingerprint: str) -> list:
"""Find recipes with a matching fingerprint
Args:
fingerprint: The recipe fingerprint to search for
Returns:
List of recipe details that match the fingerprint
"""
if not fingerprint:
return []
# Get all recipes from cache
cache = await self.get_cached_data()
# Find recipes with matching fingerprint
matching_recipes = []
for recipe in cache.raw_data:
if recipe.get('fingerprint') == fingerprint:
recipe_details = {
'id': recipe.get('id'),
'title': recipe.get('title'),
'file_url': self._format_file_url(recipe.get('file_path')),
'modified': recipe.get('modified'),
'created_date': recipe.get('created_date'),
'lora_count': len(recipe.get('loras', []))
}
matching_recipes.append(recipe_details)
return matching_recipes
async def find_all_duplicate_recipes(self) -> dict:
"""Find all recipe duplicates based on fingerprints
Returns:
Dictionary where keys are fingerprints and values are lists of recipe IDs
"""
# Get all recipes from cache
cache = await self.get_cached_data()
# Group recipes by fingerprint
fingerprint_groups = {}
for recipe in cache.raw_data:
fingerprint = recipe.get('fingerprint')
if not fingerprint:
continue
if fingerprint not in fingerprint_groups:
fingerprint_groups[fingerprint] = []
fingerprint_groups[fingerprint].append(recipe.get('id'))
# Filter to only include groups with more than one recipe
duplicate_groups = {k: v for k, v in fingerprint_groups.items() if len(v) > 1}
return duplicate_groups

View File

@@ -0,0 +1,124 @@
import asyncio
import logging
from typing import Optional, Dict, Any, TypeVar, Type
logger = logging.getLogger(__name__)
T = TypeVar('T') # Define a type variable for service types
class ServiceRegistry:
"""Centralized registry for service singletons"""
_instance = None
_services: Dict[str, Any] = {}
_lock = asyncio.Lock()
@classmethod
def get_instance(cls):
"""Get singleton instance of the registry"""
if cls._instance is None:
cls._instance = cls()
return cls._instance
@classmethod
async def register_service(cls, service_name: str, service_instance: Any) -> None:
"""Register a service instance with the registry"""
registry = cls.get_instance()
async with cls._lock:
registry._services[service_name] = service_instance
logger.debug(f"Registered service: {service_name}")
@classmethod
async def get_service(cls, service_name: str) -> Any:
"""Get a service instance by name"""
registry = cls.get_instance()
async with cls._lock:
if service_name not in registry._services:
logger.debug(f"Service {service_name} not found in registry")
return None
return registry._services[service_name]
# Convenience methods for common services
@classmethod
async def get_lora_scanner(cls):
"""Get the LoraScanner instance"""
from .lora_scanner import LoraScanner
scanner = await cls.get_service("lora_scanner")
if scanner is None:
scanner = await LoraScanner.get_instance()
await cls.register_service("lora_scanner", scanner)
return scanner
@classmethod
async def get_checkpoint_scanner(cls):
"""Get the CheckpointScanner instance"""
from .checkpoint_scanner import CheckpointScanner
scanner = await cls.get_service("checkpoint_scanner")
if scanner is None:
scanner = await CheckpointScanner.get_instance()
await cls.register_service("checkpoint_scanner", scanner)
return scanner
@classmethod
async def get_lora_monitor(cls):
"""Get the LoraFileMonitor instance"""
from .file_monitor import LoraFileMonitor
monitor = await cls.get_service("lora_monitor")
if monitor is None:
monitor = await LoraFileMonitor.get_instance()
await cls.register_service("lora_monitor", monitor)
return monitor
@classmethod
async def get_checkpoint_monitor(cls):
"""Get the CheckpointFileMonitor instance"""
from .file_monitor import CheckpointFileMonitor
monitor = await cls.get_service("checkpoint_monitor")
if monitor is None:
monitor = await CheckpointFileMonitor.get_instance()
await cls.register_service("checkpoint_monitor", monitor)
return monitor
@classmethod
async def get_civitai_client(cls):
"""Get the CivitaiClient instance"""
from .civitai_client import CivitaiClient
client = await cls.get_service("civitai_client")
if client is None:
client = await CivitaiClient.get_instance()
await cls.register_service("civitai_client", client)
return client
@classmethod
async def get_download_manager(cls):
"""Get the DownloadManager instance"""
from .download_manager import DownloadManager
manager = await cls.get_service("download_manager")
if manager is None:
# We'll let DownloadManager.get_instance handle file_monitor parameter
manager = await DownloadManager.get_instance()
await cls.register_service("download_manager", manager)
return manager
@classmethod
async def get_recipe_scanner(cls):
"""Get the RecipeScanner instance"""
from .recipe_scanner import RecipeScanner
scanner = await cls.get_service("recipe_scanner")
if scanner is None:
lora_scanner = await cls.get_lora_scanner()
scanner = RecipeScanner(lora_scanner)
await cls.register_service("recipe_scanner", scanner)
return scanner
@classmethod
async def get_websocket_manager(cls):
"""Get the WebSocketManager instance"""
from .websocket_manager import ws_manager
manager = await cls.get_service("websocket_manager")
if manager is None:
# ws_manager is already a global instance in websocket_manager.py
from .websocket_manager import ws_manager
await cls.register_service("websocket_manager", ws_manager)
manager = ws_manager
return manager

View File

@@ -9,6 +9,8 @@ class WebSocketManager:
def __init__(self):
self._websockets: Set[web.WebSocketResponse] = set()
self._init_websockets: Set[web.WebSocketResponse] = set() # New set for initialization progress clients
self._checkpoint_websockets: Set[web.WebSocketResponse] = set() # New set for checkpoint download progress
async def handle_connection(self, request: web.Request) -> web.WebSocketResponse:
"""Handle new WebSocket connection"""
@@ -23,6 +25,34 @@ class WebSocketManager:
finally:
self._websockets.discard(ws)
return ws
async def handle_init_connection(self, request: web.Request) -> web.WebSocketResponse:
"""Handle new WebSocket connection for initialization progress"""
ws = web.WebSocketResponse()
await ws.prepare(request)
self._init_websockets.add(ws)
try:
async for msg in ws:
if msg.type == web.WSMsgType.ERROR:
logger.error(f'Init WebSocket error: {ws.exception()}')
finally:
self._init_websockets.discard(ws)
return ws
async def handle_checkpoint_connection(self, request: web.Request) -> web.WebSocketResponse:
"""Handle new WebSocket connection for checkpoint download progress"""
ws = web.WebSocketResponse()
await ws.prepare(request)
self._checkpoint_websockets.add(ws)
try:
async for msg in ws:
if msg.type == web.WSMsgType.ERROR:
logger.error(f'Checkpoint WebSocket error: {ws.exception()}')
finally:
self._checkpoint_websockets.discard(ws)
return ws
async def broadcast(self, data: Dict):
"""Broadcast message to all connected clients"""
@@ -34,10 +64,48 @@ class WebSocketManager:
await ws.send_json(data)
except Exception as e:
logger.error(f"Error sending progress: {e}")
async def broadcast_init_progress(self, data: Dict):
"""Broadcast initialization progress to connected clients"""
if not self._init_websockets:
return
# Ensure data has all required fields
if 'stage' not in data:
data['stage'] = 'processing'
if 'progress' not in data:
data['progress'] = 0
if 'details' not in data:
data['details'] = 'Processing...'
for ws in self._init_websockets:
try:
await ws.send_json(data)
except Exception as e:
logger.error(f"Error sending initialization progress: {e}")
async def broadcast_checkpoint_progress(self, data: Dict):
"""Broadcast checkpoint download progress to connected clients"""
if not self._checkpoint_websockets:
return
for ws in self._checkpoint_websockets:
try:
await ws.send_json(data)
except Exception as e:
logger.error(f"Error sending checkpoint progress: {e}")
def get_connected_clients_count(self) -> int:
"""Get number of connected clients"""
return len(self._websockets)
def get_init_clients_count(self) -> int:
"""Get number of initialization progress clients"""
return len(self._init_websockets)
def get_checkpoint_clients_count(self) -> int:
"""Get number of checkpoint progress clients"""
return len(self._checkpoint_websockets)
# Global instance
ws_manager = WebSocketManager()
ws_manager = WebSocketManager()

View File

@@ -5,4 +5,30 @@ NSFW_LEVELS = {
"X": 8,
"XXX": 16,
"Blocked": 32, # Probably not actually visible through the API without being logged in on model owner account?
}
# preview extensions
PREVIEW_EXTENSIONS = [
'.webp',
'.preview.webp',
'.preview.png',
'.preview.jpeg',
'.preview.jpg',
'.preview.mp4',
'.png',
'.jpeg',
'.jpg',
'.mp4'
]
# Card preview image width
CARD_PREVIEW_WIDTH = 480
# Width for optimized example images
EXAMPLE_IMAGE_WIDTH = 832
# Supported media extensions for example downloads
SUPPORTED_MEDIA_EXTENSIONS = {
'images': ['.jpg', '.jpeg', '.png', '.webp', '.gif'],
'videos': ['.mp4', '.webm']
}

View File

@@ -1,51 +1,16 @@
import piexif
import json
import logging
from typing import Dict, Optional, Any
from typing import Optional
from io import BytesIO
import os
from PIL import Image
import re
logger = logging.getLogger(__name__)
class ExifUtils:
"""Utility functions for working with EXIF data in images"""
@staticmethod
def extract_user_comment(image_path: str) -> Optional[str]:
"""Extract UserComment field from image EXIF data"""
try:
# First try to open as image to check format
with Image.open(image_path) as img:
if img.format not in ['JPEG', 'TIFF', 'WEBP']:
# For non-JPEG/TIFF/WEBP images, try to get EXIF through PIL
exif = img._getexif()
if exif and piexif.ExifIFD.UserComment in exif:
user_comment = exif[piexif.ExifIFD.UserComment]
if isinstance(user_comment, bytes):
if user_comment.startswith(b'UNICODE\0'):
return user_comment[8:].decode('utf-16be')
return user_comment.decode('utf-8', errors='ignore')
return user_comment
return None
# For JPEG/TIFF/WEBP, use piexif
exif_dict = piexif.load(image_path)
if piexif.ExifIFD.UserComment in exif_dict.get('Exif', {}):
user_comment = exif_dict['Exif'][piexif.ExifIFD.UserComment]
if isinstance(user_comment, bytes):
if user_comment.startswith(b'UNICODE\0'):
user_comment = user_comment[8:].decode('utf-16be')
else:
user_comment = user_comment.decode('utf-8', errors='ignore')
return user_comment
return None
except Exception as e:
return None
@staticmethod
def extract_image_metadata(image_path: str) -> Optional[str]:
"""Extract metadata from image including UserComment or parameters field
@@ -103,53 +68,6 @@ class ExifUtils:
logger.error(f"Error extracting image metadata: {e}", exc_info=True)
return None
@staticmethod
def update_user_comment(image_path: str, user_comment: str) -> str:
"""Update UserComment field in image EXIF data"""
try:
# Load the image and its EXIF data
with Image.open(image_path) as img:
# Get original format
img_format = img.format
# For WebP format, we need a different approach
if img_format == 'WEBP':
# WebP doesn't support standard EXIF through piexif
# We'll use PIL's exif parameter directly
exif_dict = {'Exif': {piexif.ExifIFD.UserComment: b'UNICODE\0' + user_comment.encode('utf-16be')}}
exif_bytes = piexif.dump(exif_dict)
# Save with the exif data
img.save(image_path, format='WEBP', exif=exif_bytes, quality=85)
return image_path
# For other formats, use the standard approach
try:
exif_dict = piexif.load(img.info.get('exif', b''))
except:
exif_dict = {'0th':{}, 'Exif':{}, 'GPS':{}, 'Interop':{}, '1st':{}}
# If no Exif dictionary exists, create one
if 'Exif' not in exif_dict:
exif_dict['Exif'] = {}
# Update the UserComment field - use UNICODE format
unicode_bytes = user_comment.encode('utf-16be')
user_comment_bytes = b'UNICODE\0' + unicode_bytes
exif_dict['Exif'][piexif.ExifIFD.UserComment] = user_comment_bytes
# Convert EXIF dict back to bytes
exif_bytes = piexif.dump(exif_dict)
# Save the image with updated EXIF data
img.save(image_path, exif=exif_bytes)
return image_path
except Exception as e:
logger.error(f"Error updating EXIF data in {image_path}: {e}")
return image_path
@staticmethod
def update_image_metadata(image_path: str, metadata: str) -> str:
"""Update metadata in image's EXIF data or parameters fields
@@ -285,7 +203,7 @@ class ExifUtils:
return user_comment[:recipe_marker_index] + user_comment[next_line_index:]
@staticmethod
def optimize_image(image_data, target_width=250, format='webp', quality=85, preserve_metadata=True):
def optimize_image(image_data, target_width=250, format='webp', quality=85, preserve_metadata=False):
"""
Optimize an image by resizing and converting to WebP format
@@ -300,304 +218,144 @@ class ExifUtils:
Tuple of (optimized_image_data, extension)
"""
try:
# Extract metadata if needed
# First validate the image data is usable
img = None
if isinstance(image_data, str) and os.path.exists(image_data):
# It's a file path - validate file
try:
with Image.open(image_data) as test_img:
# Verify the image can be fully loaded by accessing its size
width, height = test_img.size
# If we got here, the image is valid
img = Image.open(image_data)
except (IOError, OSError) as e:
logger.error(f"Invalid or corrupt image file: {image_data}: {e}")
raise ValueError(f"Cannot process corrupt image: {e}")
else:
# It's binary data - validate data
try:
with BytesIO(image_data) as temp_buf:
test_img = Image.open(temp_buf)
# Verify the image can be fully loaded
width, height = test_img.size
# If successful, reopen for processing
img = Image.open(BytesIO(image_data))
except Exception as e:
logger.error(f"Invalid binary image data: {e}")
raise ValueError(f"Cannot process corrupt image data: {e}")
# Extract metadata if needed and valid
metadata = None
if preserve_metadata:
if isinstance(image_data, str) and os.path.exists(image_data):
# It's a file path
metadata = ExifUtils.extract_image_metadata(image_data)
img = Image.open(image_data)
else:
# It's binary data
temp_img = BytesIO(image_data)
img = Image.open(temp_img)
# Save to a temporary file to extract metadata
import tempfile
with tempfile.NamedTemporaryFile(suffix='.jpg', delete=False) as temp_file:
temp_path = temp_file.name
temp_file.write(image_data)
metadata = ExifUtils.extract_image_metadata(temp_path)
os.unlink(temp_path)
else:
# Just open the image without extracting metadata
if isinstance(image_data, str) and os.path.exists(image_data):
img = Image.open(image_data)
else:
img = Image.open(BytesIO(image_data))
try:
if isinstance(image_data, str) and os.path.exists(image_data):
# For file path, extract directly
metadata = ExifUtils.extract_image_metadata(image_data)
else:
# For binary data, save to temp file first
import tempfile
with tempfile.NamedTemporaryFile(suffix='.jpg', delete=False) as temp_file:
temp_path = temp_file.name
temp_file.write(image_data)
try:
metadata = ExifUtils.extract_image_metadata(temp_path)
except Exception as e:
logger.warning(f"Failed to extract metadata from temp file: {e}")
finally:
# Clean up temp file
try:
os.unlink(temp_path)
except Exception:
pass
except Exception as e:
logger.warning(f"Failed to extract metadata, continuing without it: {e}")
# Continue without metadata
# Calculate new height to maintain aspect ratio
width, height = img.size
new_height = int(height * (target_width / width))
# Resize the image
resized_img = img.resize((target_width, new_height), Image.LANCZOS)
# Resize the image with error handling
try:
resized_img = img.resize((target_width, new_height), Image.LANCZOS)
except Exception as e:
logger.error(f"Failed to resize image: {e}")
# Return original image if resize fails
return image_data, '.jpg' if not isinstance(image_data, str) else os.path.splitext(image_data)[1]
# Save to BytesIO in the specified format
output = BytesIO()
# WebP format
# Set format and extension
if format.lower() == 'webp':
resized_img.save(output, format='WEBP', quality=quality)
extension = '.webp'
# JPEG format
save_format, extension = 'WEBP', '.webp'
elif format.lower() in ('jpg', 'jpeg'):
resized_img.save(output, format='JPEG', quality=quality)
extension = '.jpg'
# PNG format
save_format, extension = 'JPEG', '.jpg'
elif format.lower() == 'png':
resized_img.save(output, format='PNG', optimize=True)
extension = '.png'
save_format, extension = 'PNG', '.png'
else:
# Default to WebP
resized_img.save(output, format='WEBP', quality=quality)
extension = '.webp'
save_format, extension = 'WEBP', '.webp'
# Save with error handling
try:
if save_format == 'PNG':
resized_img.save(output, format=save_format, optimize=True)
else:
resized_img.save(output, format=save_format, quality=quality)
except Exception as e:
logger.error(f"Failed to save optimized image: {e}")
# Return original image if save fails
return image_data, '.jpg' if not isinstance(image_data, str) else os.path.splitext(image_data)[1]
# Get the optimized image data
optimized_data = output.getvalue()
# If we need to preserve metadata, write it to a temporary file
# Handle metadata preservation if requested and available
if preserve_metadata and metadata:
# For WebP format, we'll directly save with metadata
if format.lower() == 'webp':
# Create a new BytesIO with metadata
output_with_metadata = BytesIO()
# Create EXIF data with user comment
exif_dict = {'Exif': {piexif.ExifIFD.UserComment: b'UNICODE\0' + metadata.encode('utf-16be')}}
exif_bytes = piexif.dump(exif_dict)
# Save with metadata
resized_img.save(output_with_metadata, format='WEBP', exif=exif_bytes, quality=quality)
optimized_data = output_with_metadata.getvalue()
else:
# For other formats, use the temporary file approach
import tempfile
with tempfile.NamedTemporaryFile(suffix=extension, delete=False) as temp_file:
temp_path = temp_file.name
temp_file.write(optimized_data)
# Add the metadata back
ExifUtils.update_image_metadata(temp_path, metadata)
# Read the file with metadata
with open(temp_path, 'rb') as f:
optimized_data = f.read()
# Clean up
os.unlink(temp_path)
try:
if save_format == 'WEBP':
# For WebP format, directly save with metadata
try:
output_with_metadata = BytesIO()
exif_dict = {'Exif': {piexif.ExifIFD.UserComment: b'UNICODE\0' + metadata.encode('utf-16be')}}
exif_bytes = piexif.dump(exif_dict)
resized_img.save(output_with_metadata, format='WEBP', exif=exif_bytes, quality=quality)
optimized_data = output_with_metadata.getvalue()
except Exception as e:
logger.warning(f"Failed to add metadata to WebP, continuing without it: {e}")
else:
# For other formats, use temporary file
import tempfile
with tempfile.NamedTemporaryFile(suffix=extension, delete=False) as temp_file:
temp_path = temp_file.name
temp_file.write(optimized_data)
try:
# Add metadata
ExifUtils.update_image_metadata(temp_path, metadata)
# Read back the file
with open(temp_path, 'rb') as f:
optimized_data = f.read()
except Exception as e:
logger.warning(f"Failed to add metadata to image, continuing without it: {e}")
finally:
# Clean up temp file
try:
os.unlink(temp_path)
except Exception:
pass
except Exception as e:
logger.warning(f"Failed to preserve metadata: {e}, continuing with unmodified output")
return optimized_data, extension
except Exception as e:
logger.error(f"Error optimizing image: {e}", exc_info=True)
# Return original data if optimization fails
# Return original data if optimization completely fails
if isinstance(image_data, str) and os.path.exists(image_data):
with open(image_data, 'rb') as f:
return f.read(), os.path.splitext(image_data)[1]
return image_data, '.jpg'
@staticmethod
def _parse_comfyui_workflow(workflow_data: Any) -> Dict[str, Any]:
"""
Parse ComfyUI workflow data and extract relevant generation parameters
Args:
workflow_data: Raw workflow data (string or dict)
Returns:
Formatted generation parameters dictionary
"""
try:
# If workflow_data is a string, try to parse it as JSON
if isinstance(workflow_data, str):
try:
workflow_data = json.loads(workflow_data)
except json.JSONDecodeError:
logger.error("Failed to parse workflow data as JSON")
return {}
# Now workflow_data should be a dictionary
if not isinstance(workflow_data, dict):
logger.error(f"Workflow data is not a dictionary: {type(workflow_data)}")
return {}
# Initialize parameters dictionary with only the required fields
gen_params = {
"prompt": "",
"negative_prompt": "",
"steps": "",
"sampler": "",
"cfg_scale": "",
"seed": "",
"size": "",
"clip_skip": ""
}
# First pass: find the KSampler node to get basic parameters and node references
# Store node references to follow for prompts
positive_ref = None
negative_ref = None
for node_id, node_data in workflow_data.items():
if not isinstance(node_data, dict):
continue
# Extract node inputs if available
inputs = node_data.get("inputs", {})
if not inputs:
continue
# KSampler nodes contain most generation parameters and references to prompt nodes
if "KSampler" in node_data.get("class_type", ""):
# Extract basic sampling parameters
gen_params["steps"] = inputs.get("steps", "")
gen_params["cfg_scale"] = inputs.get("cfg", "")
gen_params["sampler"] = inputs.get("sampler_name", "")
gen_params["seed"] = inputs.get("seed", "")
if isinstance(gen_params["seed"], list) and len(gen_params["seed"]) > 1:
gen_params["seed"] = gen_params["seed"][1] # Use the actual value if it's a list
# Get references to positive and negative prompt nodes
positive_ref = inputs.get("positive", "")
negative_ref = inputs.get("negative", "")
# CLIPSetLastLayer contains clip_skip information
elif "CLIPSetLastLayer" in node_data.get("class_type", ""):
gen_params["clip_skip"] = inputs.get("stop_at_clip_layer", "")
if isinstance(gen_params["clip_skip"], int) and gen_params["clip_skip"] < 0:
# Convert negative layer index to positive clip skip value
gen_params["clip_skip"] = abs(gen_params["clip_skip"])
# Look for resolution information
elif "LatentImage" in node_data.get("class_type", "") or "Empty" in node_data.get("class_type", ""):
width = inputs.get("width", 0)
height = inputs.get("height", 0)
if width and height:
gen_params["size"] = f"{width}x{height}"
# Some nodes have resolution as a string like "832x1216 (0.68)"
resolution = inputs.get("resolution", "")
if isinstance(resolution, str) and "x" in resolution:
gen_params["size"] = resolution.split(" ")[0] # Extract just the dimensions
# Helper function to follow node references and extract text content
def get_text_from_node_ref(node_ref, workflow_data):
if not node_ref or not isinstance(node_ref, list) or len(node_ref) < 2:
return ""
node_id, slot_idx = node_ref
# If we can't find the node, return empty string
if node_id not in workflow_data:
return ""
node = workflow_data[node_id]
inputs = node.get("inputs", {})
# Direct text input in CLIP Text Encode nodes
if "CLIPTextEncode" in node.get("class_type", ""):
text = inputs.get("text", "")
if isinstance(text, str):
return text
elif isinstance(text, list) and len(text) >= 2:
# If text is a reference to another node, follow it
return get_text_from_node_ref(text, workflow_data)
# Other nodes might have text input with different field names
for field_name, field_value in inputs.items():
if field_name == "text" and isinstance(field_value, str):
return field_value
elif isinstance(field_value, list) and len(field_value) >= 2 and field_name in ["text"]:
# If it's a reference to another node, follow it
return get_text_from_node_ref(field_value, workflow_data)
return ""
# Extract prompts by following references from KSampler node
if positive_ref:
gen_params["prompt"] = get_text_from_node_ref(positive_ref, workflow_data)
if negative_ref:
gen_params["negative_prompt"] = get_text_from_node_ref(negative_ref, workflow_data)
# Fallback: if we couldn't extract prompts via references, use the traditional method
if not gen_params["prompt"] or not gen_params["negative_prompt"]:
for node_id, node_data in workflow_data.items():
if not isinstance(node_data, dict):
continue
inputs = node_data.get("inputs", {})
if not inputs:
continue
if "CLIPTextEncode" in node_data.get("class_type", ""):
# Check for negative prompt nodes
title = node_data.get("_meta", {}).get("title", "").lower()
prompt_text = inputs.get("text", "")
if isinstance(prompt_text, str):
if "negative" in title and not gen_params["negative_prompt"]:
gen_params["negative_prompt"] = prompt_text
elif prompt_text and not "negative" in title and not gen_params["prompt"]:
gen_params["prompt"] = prompt_text
return gen_params
except Exception as e:
logger.error(f"Error parsing ComfyUI workflow: {e}", exc_info=True)
return {}
@staticmethod
def extract_comfyui_gen_params(image_path: str) -> Dict[str, Any]:
"""
Extract ComfyUI workflow data from PNG images and format for recipe data
Only extracts the specific generation parameters needed for recipes.
Args:
image_path: Path to the ComfyUI-generated PNG image
Returns:
Dictionary containing formatted generation parameters
"""
try:
# Check if the file exists and is accessible
if not os.path.exists(image_path):
logger.error(f"Image file not found: {image_path}")
return {}
# Open the image to extract embedded workflow data
with Image.open(image_path) as img:
workflow_data = None
# For PNG images, look for the ComfyUI workflow data in PNG chunks
if img.format == 'PNG':
# Check standard metadata fields that might contain workflow
if 'parameters' in img.info:
workflow_data = img.info['parameters']
elif 'prompt' in img.info:
workflow_data = img.info['prompt']
else:
# Look for other potential field names that might contain workflow data
for key in img.info:
if isinstance(key, str) and ('workflow' in key.lower() or 'comfy' in key.lower()):
workflow_data = img.info[key]
break
# If no workflow data found in PNG chunks, try extract_image_metadata as fallback
if not workflow_data:
metadata = ExifUtils.extract_image_metadata(image_path)
if metadata and '{' in metadata and '}' in metadata:
# Try to extract JSON part
json_start = metadata.find('{')
json_end = metadata.rfind('}') + 1
workflow_data = metadata[json_start:json_end]
# Parse workflow data if found
if workflow_data:
return ExifUtils._parse_comfyui_workflow(workflow_data)
return {}
except Exception as e:
logger.error(f"Error extracting ComfyUI gen params from {image_path}: {e}", exc_info=True)
return {}
with open(image_data, 'rb') as f:
return f.read(), os.path.splitext(image_data)[1]
except Exception:
return image_data, '.jpg' # Last resort fallback
return image_data, '.jpg'

View File

@@ -2,12 +2,14 @@ import logging
import os
import hashlib
import json
from typing import Dict, Optional
import time
from typing import Dict, Optional, Type
from .model_utils import determine_base_model
from .lora_metadata import extract_lora_metadata
from .models import LoraMetadata
from .lora_metadata import extract_lora_metadata, extract_checkpoint_metadata
from .models import BaseModelMetadata, LoraMetadata, CheckpointMetadata
from .constants import PREVIEW_EXTENSIONS, CARD_PREVIEW_WIDTH
from .exif_utils import ExifUtils
logger = logging.getLogger(__name__)
@@ -15,35 +17,56 @@ async def calculate_sha256(file_path: str) -> str:
"""Calculate SHA256 hash of a file"""
sha256_hash = hashlib.sha256()
with open(file_path, "rb") as f:
for byte_block in iter(lambda: f.read(4096), b""):
for byte_block in iter(lambda: f.read(128 * 1024), b""):
sha256_hash.update(byte_block)
return sha256_hash.hexdigest()
def _find_preview_file(base_name: str, dir_path: str) -> str:
def find_preview_file(base_name: str, dir_path: str) -> str:
"""Find preview file for given base name in directory"""
preview_patterns = [
f"{base_name}.preview.png",
f"{base_name}.preview.jpg",
f"{base_name}.preview.jpeg",
f"{base_name}.preview.mp4",
f"{base_name}.png",
f"{base_name}.jpg",
f"{base_name}.jpeg",
f"{base_name}.mp4"
]
for pattern in preview_patterns:
full_pattern = os.path.join(dir_path, pattern)
for ext in PREVIEW_EXTENSIONS:
full_pattern = os.path.join(dir_path, f"{base_name}{ext}")
if os.path.exists(full_pattern):
# Check if this is an image and not already webp
if ext.lower().endswith(('.jpg', '.jpeg', '.png')) and not ext.lower().endswith('.webp'):
try:
# Optimize the image to webp format
webp_path = os.path.join(dir_path, f"{base_name}.webp")
# Use ExifUtils to optimize the image
with open(full_pattern, 'rb') as f:
image_data = f.read()
optimized_data, _ = ExifUtils.optimize_image(
image_data=image_data,
target_width=CARD_PREVIEW_WIDTH,
format='webp',
quality=85,
preserve_metadata=False # Changed from True to False
)
# Save the optimized webp file
with open(webp_path, 'wb') as f:
f.write(optimized_data)
logger.debug(f"Optimized preview image from {full_pattern} to {webp_path}")
return webp_path.replace(os.sep, "/")
except Exception as e:
logger.error(f"Error optimizing preview image {full_pattern}: {e}")
# Fall back to original file if optimization fails
return full_pattern.replace(os.sep, "/")
# Return the original path for webp images or non-image files
return full_pattern.replace(os.sep, "/")
return ""
def normalize_path(path: str) -> str:
"""Normalize file path to use forward slashes"""
return path.replace(os.sep, "/") if path else path
async def get_file_info(file_path: str) -> Optional[LoraMetadata]:
"""Get basic file information as LoraMetadata object"""
async def get_file_info(file_path: str, model_class: Type[BaseModelMetadata] = LoraMetadata) -> Optional[BaseModelMetadata]:
"""Get basic file information as a model metadata object"""
# First check if file actually exists and resolve symlinks
try:
real_path = os.path.realpath(file_path)
@@ -56,28 +79,81 @@ async def get_file_info(file_path: str) -> Optional[LoraMetadata]:
base_name = os.path.splitext(os.path.basename(file_path))[0]
dir_path = os.path.dirname(file_path)
preview_url = _find_preview_file(base_name, dir_path)
preview_url = find_preview_file(base_name, dir_path)
# Check if a .json file exists with SHA256 hash to avoid recalculation
json_path = f"{os.path.splitext(file_path)[0]}.json"
sha256 = None
if os.path.exists(json_path):
try:
with open(json_path, 'r', encoding='utf-8') as f:
json_data = json.load(f)
if 'sha256' in json_data:
sha256 = json_data['sha256'].lower()
logger.debug(f"Using SHA256 from .json file for {file_path}")
except Exception as e:
logger.error(f"Error reading .json file for {file_path}: {e}")
# If SHA256 is still not found, check for a .sha256 file
if sha256 is None:
sha256_file = f"{os.path.splitext(file_path)[0]}.sha256"
if os.path.exists(sha256_file):
try:
with open(sha256_file, 'r', encoding='utf-8') as f:
sha256 = f.read().strip().lower()
logger.debug(f"Using SHA256 from .sha256 file for {file_path}")
except Exception as e:
logger.error(f"Error reading .sha256 file for {file_path}: {e}")
try:
metadata = LoraMetadata(
file_name=base_name,
model_name=base_name,
file_path=normalize_path(file_path),
size=os.path.getsize(real_path),
modified=os.path.getmtime(real_path),
sha256=await calculate_sha256(real_path),
base_model="Unknown", # Will be updated later
usage_tips="",
notes="",
from_civitai=True,
preview_url=normalize_path(preview_url),
tags=[],
modelDescription=""
)
# If we didn't get SHA256 from the .json file, calculate it
if not sha256:
start_time = time.time()
sha256 = await calculate_sha256(real_path)
logger.debug(f"Calculated SHA256 for {file_path} in {time.time() - start_time:.2f} seconds")
# Create default metadata based on model class
if model_class == CheckpointMetadata:
metadata = CheckpointMetadata(
file_name=base_name,
model_name=base_name,
file_path=normalize_path(file_path),
size=os.path.getsize(real_path),
modified=os.path.getmtime(real_path),
sha256=sha256,
base_model="Unknown", # Will be updated later
preview_url=normalize_path(preview_url),
tags=[],
modelDescription="",
model_type="checkpoint"
)
# Extract checkpoint-specific metadata
# model_info = await extract_checkpoint_metadata(real_path)
# metadata.base_model = model_info['base_model']
# if 'model_type' in model_info:
# metadata.model_type = model_info['model_type']
else: # Default to LoraMetadata
metadata = LoraMetadata(
file_name=base_name,
model_name=base_name,
file_path=normalize_path(file_path),
size=os.path.getsize(real_path),
modified=os.path.getmtime(real_path),
sha256=sha256,
base_model="Unknown", # Will be updated later
usage_tips="{}",
preview_url=normalize_path(preview_url),
tags=[],
modelDescription=""
)
# Extract lora-specific metadata
model_info = await extract_lora_metadata(real_path)
metadata.base_model = model_info['base_model']
# create metadata file
base_model_info = await extract_lora_metadata(real_path)
metadata.base_model = base_model_info['base_model']
# Save metadata to file
await save_metadata(file_path, metadata)
return metadata
@@ -85,7 +161,7 @@ async def get_file_info(file_path: str) -> Optional[LoraMetadata]:
logger.error(f"Error getting file info for {file_path}: {e}")
return None
async def save_metadata(file_path: str, metadata: LoraMetadata) -> None:
async def save_metadata(file_path: str, metadata: BaseModelMetadata) -> None:
"""Save metadata to .metadata.json file"""
metadata_path = f"{os.path.splitext(file_path)[0]}.metadata.json"
try:
@@ -98,7 +174,7 @@ async def save_metadata(file_path: str, metadata: LoraMetadata) -> None:
except Exception as e:
print(f"Error saving metadata to {metadata_path}: {str(e)}")
async def load_metadata(file_path: str) -> Optional[LoraMetadata]:
async def load_metadata(file_path: str, model_class: Type[BaseModelMetadata] = LoraMetadata) -> Optional[BaseModelMetadata]:
"""Load metadata from .metadata.json file"""
metadata_path = f"{os.path.splitext(file_path)[0]}.metadata.json"
try:
@@ -121,11 +197,12 @@ async def load_metadata(file_path: str) -> Optional[LoraMetadata]:
data['file_path'] = normalize_path(file_path)
needs_update = True
# TODO: optimize preview image to webp format if not already done
preview_url = data.get('preview_url', '')
if not preview_url or not os.path.exists(preview_url):
base_name = os.path.splitext(os.path.basename(file_path))[0]
dir_path = os.path.dirname(file_path)
new_preview_url = normalize_path(_find_preview_file(base_name, dir_path))
new_preview_url = normalize_path(find_preview_file(base_name, dir_path))
if new_preview_url != preview_url:
data['preview_url'] = new_preview_url
needs_update = True
@@ -145,12 +222,32 @@ async def load_metadata(file_path: str) -> Optional[LoraMetadata]:
if 'modelDescription' not in data:
data['modelDescription'] = ""
needs_update = True
# For checkpoint metadata
if model_class == CheckpointMetadata and 'model_type' not in data:
data['model_type'] = "checkpoint"
needs_update = True
# For lora metadata
if model_class == LoraMetadata and 'usage_tips' not in data:
data['usage_tips'] = "{}"
needs_update = True
# Update preview_nsfw_level if needed
civitai_data = data.get('civitai', {})
civitai_images = civitai_data.get('images', []) if civitai_data else []
if (data.get('preview_url') and
data.get('preview_nsfw_level', 0) == 0 and
civitai_images and
civitai_images[0].get('nsfwLevel', 0) != 0):
data['preview_nsfw_level'] = civitai_images[0]['nsfwLevel']
# TODO: write to metadata file
# needs_update = True
if needs_update:
with open(metadata_path, 'w', encoding='utf-8') as f:
json.dump(data, f, indent=2, ensure_ascii=False)
save_metadata(file_path, model_class.from_dict(data))
return LoraMetadata.from_dict(data)
return model_class.from_dict(data)
except Exception as e:
print(f"Error loading metadata from {metadata_path}: {str(e)}")

View File

@@ -1,6 +1,10 @@
from safetensors import safe_open
from typing import Dict
from .model_utils import determine_base_model
import os
import logging
logger = logging.getLogger(__name__)
async def extract_lora_metadata(file_path: str) -> Dict:
"""Extract essential metadata from safetensors file"""
@@ -13,4 +17,67 @@ async def extract_lora_metadata(file_path: str) -> Dict:
return {"base_model": base_model}
except Exception as e:
print(f"Error reading metadata from {file_path}: {str(e)}")
return {"base_model": "Unknown"}
return {"base_model": "Unknown"}
async def extract_checkpoint_metadata(file_path: str) -> dict:
"""Extract metadata from a checkpoint file to determine model type and base model"""
try:
# Analyze filename for clues about the model
filename = os.path.basename(file_path).lower()
model_info = {
'base_model': 'Unknown',
'model_type': 'checkpoint'
}
# Detect base model from filename
if 'xl' in filename or 'sdxl' in filename:
model_info['base_model'] = 'SDXL'
elif 'sd3' in filename:
model_info['base_model'] = 'SD3'
elif 'sd2' in filename or 'v2' in filename:
model_info['base_model'] = 'SD2.x'
elif 'sd1' in filename or 'v1' in filename:
model_info['base_model'] = 'SD1.5'
# Detect model type from filename
if 'inpaint' in filename:
model_info['model_type'] = 'inpainting'
elif 'anime' in filename:
model_info['model_type'] = 'anime'
elif 'realistic' in filename:
model_info['model_type'] = 'realistic'
# Try to peek at the safetensors file structure if available
if file_path.endswith('.safetensors'):
import json
import struct
with open(file_path, 'rb') as f:
header_size = struct.unpack('<Q', f.read(8))[0]
header_json = f.read(header_size)
header = json.loads(header_json)
# Look for specific keys to identify model type
metadata = header.get('__metadata__', {})
if metadata:
# Try to determine if it's SDXL
if any(key.startswith('conditioner.embedders.1') for key in header):
model_info['base_model'] = 'SDXL'
# Look for model type info
if metadata.get('modelspec.architecture') == 'SD-XL':
model_info['base_model'] = 'SDXL'
elif metadata.get('modelspec.architecture') == 'SD-3':
model_info['base_model'] = 'SD3'
# Check for specific use case
if metadata.get('modelspec.purpose') == 'inpainting':
model_info['model_type'] = 'inpainting'
return model_info
except Exception as e:
logger.error(f"Error extracting checkpoint metadata for {file_path}: {e}")
# Return default values
return {'base_model': 'Unknown', 'model_type': 'checkpoint'}

View File

@@ -5,23 +5,25 @@ import os
from .model_utils import determine_base_model
@dataclass
class LoraMetadata:
"""Represents the metadata structure for a Lora model"""
file_name: str # The filename without extension of the lora
model_name: str # The lora's name defined by the creator, initially same as file_name
file_path: str # Full path to the safetensors file
class BaseModelMetadata:
"""Base class for all model metadata structures"""
file_name: str # The filename without extension
model_name: str # The model's name defined by the creator
file_path: str # Full path to the model file
size: int # File size in bytes
modified: float # Last modified timestamp
sha256: str # SHA256 hash of the file
base_model: str # Base model (SD1.5/SD2.1/SDXL/etc.)
base_model: str # Base model type (SD1.5/SD2.1/SDXL/etc.)
preview_url: str # Preview image URL
preview_nsfw_level: int = 0 # NSFW level of the preview image
usage_tips: str = "{}" # Usage tips for the model, json string
notes: str = "" # Additional notes
from_civitai: bool = True # Whether the lora is from Civitai
from_civitai: bool = True # Whether from Civitai
civitai: Optional[Dict] = None # Civitai API data if available
tags: List[str] = None # Model tags
modelDescription: str = "" # Full model description
civitai_deleted: bool = False # Whether deleted from Civitai
favorite: bool = False # Whether the model is a favorite
exclude: bool = False # Whether to exclude this model from the cache
def __post_init__(self):
# Initialize empty lists to avoid mutable default parameter issue
@@ -29,32 +31,11 @@ class LoraMetadata:
self.tags = []
@classmethod
def from_dict(cls, data: Dict) -> 'LoraMetadata':
"""Create LoraMetadata instance from dictionary"""
# Create a copy of the data to avoid modifying the input
def from_dict(cls, data: Dict) -> 'BaseModelMetadata':
"""Create instance from dictionary"""
data_copy = data.copy()
return cls(**data_copy)
@classmethod
def from_civitai_info(cls, version_info: Dict, file_info: Dict, save_path: str) -> 'LoraMetadata':
"""Create LoraMetadata instance from Civitai version info"""
file_name = file_info['name']
base_model = determine_base_model(version_info.get('baseModel', ''))
return cls(
file_name=os.path.splitext(file_name)[0],
model_name=version_info.get('model').get('name', os.path.splitext(file_name)[0]),
file_path=save_path.replace(os.sep, '/'),
size=file_info.get('sizeKB', 0) * 1024,
modified=datetime.now().timestamp(),
sha256=file_info['hashes'].get('SHA256', '').lower(),
base_model=base_model,
preview_url=None, # Will be updated after preview download
preview_nsfw_level=0, # Will be updated after preview download, it is decided by the nsfw level of the preview image
from_civitai=True,
civitai=version_info
)
def to_dict(self) -> Dict:
"""Convert to dictionary for JSON serialization"""
return asdict(self)
@@ -75,3 +56,77 @@ class LoraMetadata:
self.modified = os.path.getmtime(file_path)
self.file_path = file_path.replace(os.sep, '/')
@dataclass
class LoraMetadata(BaseModelMetadata):
"""Represents the metadata structure for a Lora model"""
usage_tips: str = "{}" # Usage tips for the model, json string
@classmethod
def from_civitai_info(cls, version_info: Dict, file_info: Dict, save_path: str) -> 'LoraMetadata':
"""Create LoraMetadata instance from Civitai version info"""
file_name = file_info['name']
base_model = determine_base_model(version_info.get('baseModel', ''))
# Extract tags and description if available
tags = []
description = ""
if 'model' in version_info:
if 'tags' in version_info['model']:
tags = version_info['model']['tags']
if 'description' in version_info['model']:
description = version_info['model']['description']
return cls(
file_name=os.path.splitext(file_name)[0],
model_name=version_info.get('model').get('name', os.path.splitext(file_name)[0]),
file_path=save_path.replace(os.sep, '/'),
size=file_info.get('sizeKB', 0) * 1024,
modified=datetime.now().timestamp(),
sha256=file_info['hashes'].get('SHA256', '').lower(),
base_model=base_model,
preview_url=None, # Will be updated after preview download
preview_nsfw_level=0, # Will be updated after preview download
from_civitai=True,
civitai=version_info,
tags=tags,
modelDescription=description
)
@dataclass
class CheckpointMetadata(BaseModelMetadata):
"""Represents the metadata structure for a Checkpoint model"""
model_type: str = "checkpoint" # Model type (checkpoint, inpainting, etc.)
@classmethod
def from_civitai_info(cls, version_info: Dict, file_info: Dict, save_path: str) -> 'CheckpointMetadata':
"""Create CheckpointMetadata instance from Civitai version info"""
file_name = file_info['name']
base_model = determine_base_model(version_info.get('baseModel', ''))
model_type = version_info.get('type', 'checkpoint')
# Extract tags and description if available
tags = []
description = ""
if 'model' in version_info:
if 'tags' in version_info['model']:
tags = version_info['model']['tags']
if 'description' in version_info['model']:
description = version_info['model']['description']
return cls(
file_name=os.path.splitext(file_name)[0],
model_name=version_info.get('model').get('name', os.path.splitext(file_name)[0]),
file_path=save_path.replace(os.sep, '/'),
size=file_info.get('sizeKB', 0) * 1024,
modified=datetime.now().timestamp(),
sha256=file_info['hashes'].get('SHA256', '').lower(),
base_model=base_model,
preview_url=None, # Will be updated after preview download
preview_nsfw_level=0,
from_civitai=True,
civitai=version_info,
model_type=model_type,
tags=tags,
modelDescription=description
)

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564
py/utils/routes_common.py Normal file
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@@ -0,0 +1,564 @@
import os
import json
import logging
from typing import Dict, List, Callable, Awaitable
from aiohttp import web
from .model_utils import determine_base_model
from .constants import PREVIEW_EXTENSIONS, CARD_PREVIEW_WIDTH
from ..config import config
from ..services.civitai_client import CivitaiClient
from ..utils.exif_utils import ExifUtils
from ..services.download_manager import DownloadManager
logger = logging.getLogger(__name__)
class ModelRouteUtils:
"""Shared utilities for model routes (LoRAs, Checkpoints, etc.)"""
@staticmethod
async def load_local_metadata(metadata_path: str) -> Dict:
"""Load local metadata file"""
if os.path.exists(metadata_path):
try:
with open(metadata_path, 'r', encoding='utf-8') as f:
return json.load(f)
except Exception as e:
logger.error(f"Error loading metadata from {metadata_path}: {e}")
return {}
@staticmethod
async def handle_not_found_on_civitai(metadata_path: str, local_metadata: Dict) -> None:
"""Handle case when model is not found on CivitAI"""
local_metadata['from_civitai'] = False
with open(metadata_path, 'w', encoding='utf-8') as f:
json.dump(local_metadata, f, indent=2, ensure_ascii=False)
@staticmethod
async def update_model_metadata(metadata_path: str, local_metadata: Dict,
civitai_metadata: Dict, client: CivitaiClient) -> None:
"""Update local metadata with CivitAI data"""
local_metadata['civitai'] = civitai_metadata
local_metadata['from_civitai'] = True
# Update model name if available
if 'model' in civitai_metadata:
if civitai_metadata.get('model', {}).get('name'):
local_metadata['model_name'] = civitai_metadata['model']['name']
# Fetch additional model metadata (description and tags) if we have model ID
model_id = civitai_metadata['modelId']
if model_id:
model_metadata, _ = await client.get_model_metadata(str(model_id))
if model_metadata:
local_metadata['modelDescription'] = model_metadata.get('description', '')
local_metadata['tags'] = model_metadata.get('tags', [])
local_metadata['civitai']['creator'] = model_metadata['creator']
# Update base model
local_metadata['base_model'] = determine_base_model(civitai_metadata.get('baseModel'))
# Update preview if needed
if not local_metadata.get('preview_url') or not os.path.exists(local_metadata['preview_url']):
first_preview = next((img for img in civitai_metadata.get('images', [])), None)
if first_preview:
# Determine if content is video or image
is_video = first_preview['type'] == 'video'
if is_video:
# For videos use .mp4 extension
preview_ext = '.mp4'
else:
# For images use .webp extension
preview_ext = '.webp'
base_name = os.path.splitext(os.path.splitext(os.path.basename(metadata_path))[0])[0]
preview_filename = base_name + preview_ext
preview_path = os.path.join(os.path.dirname(metadata_path), preview_filename)
if is_video:
# Download video as is
if await client.download_preview_image(first_preview['url'], preview_path):
local_metadata['preview_url'] = preview_path.replace(os.sep, '/')
local_metadata['preview_nsfw_level'] = first_preview.get('nsfwLevel', 0)
else:
# For images, download and then optimize to WebP
temp_path = preview_path + ".temp"
if await client.download_preview_image(first_preview['url'], temp_path):
try:
# Read the downloaded image
with open(temp_path, 'rb') as f:
image_data = f.read()
# Optimize and convert to WebP
optimized_data, _ = ExifUtils.optimize_image(
image_data=image_data,
target_width=CARD_PREVIEW_WIDTH,
format='webp',
quality=85,
preserve_metadata=False
)
# Save the optimized WebP image
with open(preview_path, 'wb') as f:
f.write(optimized_data)
# Update metadata
local_metadata['preview_url'] = preview_path.replace(os.sep, '/')
local_metadata['preview_nsfw_level'] = first_preview.get('nsfwLevel', 0)
# Remove the temporary file
if os.path.exists(temp_path):
os.remove(temp_path)
except Exception as e:
logger.error(f"Error optimizing preview image: {e}")
# If optimization fails, try to use the downloaded image directly
if os.path.exists(temp_path):
os.rename(temp_path, preview_path)
local_metadata['preview_url'] = preview_path.replace(os.sep, '/')
local_metadata['preview_nsfw_level'] = first_preview.get('nsfwLevel', 0)
# Save updated metadata
with open(metadata_path, 'w', encoding='utf-8') as f:
json.dump(local_metadata, f, indent=2, ensure_ascii=False)
@staticmethod
async def fetch_and_update_model(
sha256: str,
file_path: str,
model_data: dict,
update_cache_func: Callable[[str, str, Dict], Awaitable[bool]]
) -> bool:
"""Fetch and update metadata for a single model
Args:
sha256: SHA256 hash of the model file
file_path: Path to the model file
model_data: The model object in cache to update
update_cache_func: Function to update the cache with new metadata
Returns:
bool: True if successful, False otherwise
"""
client = CivitaiClient()
try:
metadata_path = os.path.splitext(file_path)[0] + '.metadata.json'
# Check if model metadata exists
local_metadata = await ModelRouteUtils.load_local_metadata(metadata_path)
# Fetch metadata from Civitai
civitai_metadata = await client.get_model_by_hash(sha256)
if not civitai_metadata:
# Mark as not from CivitAI if not found
local_metadata['from_civitai'] = False
model_data['from_civitai'] = False
with open(metadata_path, 'w', encoding='utf-8') as f:
json.dump(local_metadata, f, indent=2, ensure_ascii=False)
return False
# Update metadata
await ModelRouteUtils.update_model_metadata(
metadata_path,
local_metadata,
civitai_metadata,
client
)
# Update cache object directly
model_data.update({
'model_name': local_metadata.get('model_name'),
'preview_url': local_metadata.get('preview_url'),
'from_civitai': True,
'civitai': civitai_metadata
})
# Update cache using the provided function
await update_cache_func(file_path, file_path, local_metadata)
return True
except Exception as e:
logger.error(f"Error fetching CivitAI data: {e}")
return False
finally:
await client.close()
@staticmethod
def filter_civitai_data(data: Dict) -> Dict:
"""Filter relevant fields from CivitAI data"""
if not data:
return {}
fields = [
"id", "modelId", "name", "createdAt", "updatedAt",
"publishedAt", "trainedWords", "baseModel", "description",
"model", "images"
]
return {k: data[k] for k in fields if k in data}
@staticmethod
async def delete_model_files(target_dir: str, file_name: str, file_monitor=None) -> List[str]:
"""Delete model and associated files
Args:
target_dir: Directory containing the model files
file_name: Base name of the model file without extension
file_monitor: Optional file monitor to ignore delete events
Returns:
List of deleted file paths
"""
patterns = [
f"{file_name}.safetensors", # Required
f"{file_name}.metadata.json",
]
# Add all preview file extensions
for ext in PREVIEW_EXTENSIONS:
patterns.append(f"{file_name}{ext}")
deleted = []
main_file = patterns[0]
main_path = os.path.join(target_dir, main_file).replace(os.sep, '/')
if os.path.exists(main_path):
# Notify file monitor to ignore delete event if available
if file_monitor:
file_monitor.handler.add_ignore_path(main_path, 0)
# Delete file
os.remove(main_path)
deleted.append(main_path)
else:
logger.warning(f"Model file not found: {main_file}")
# Delete optional files
for pattern in patterns[1:]:
path = os.path.join(target_dir, pattern)
if os.path.exists(path):
try:
os.remove(path)
deleted.append(pattern)
except Exception as e:
logger.warning(f"Failed to delete {pattern}: {e}")
return deleted
@staticmethod
def get_multipart_ext(filename):
"""Get extension that may have multiple parts like .metadata.json"""
parts = filename.split(".")
if len(parts) > 2: # If contains multi-part extension
return "." + ".".join(parts[-2:]) # Take the last two parts, like ".metadata.json"
return os.path.splitext(filename)[1] # Otherwise take the regular extension, like ".safetensors"
# New common endpoint handlers
@staticmethod
async def handle_delete_model(request: web.Request, scanner) -> web.Response:
"""Handle model deletion request
Args:
request: The aiohttp request
scanner: The model scanner instance with cache management methods
Returns:
web.Response: The HTTP response
"""
try:
data = await request.json()
file_path = data.get('file_path')
if not file_path:
return web.Response(text='Model path is required', status=400)
target_dir = os.path.dirname(file_path)
file_name = os.path.splitext(os.path.basename(file_path))[0]
# Get the file monitor from the scanner if available
file_monitor = getattr(scanner, 'file_monitor', None)
deleted_files = await ModelRouteUtils.delete_model_files(
target_dir,
file_name,
file_monitor
)
# Remove from cache
cache = await scanner.get_cached_data()
cache.raw_data = [item for item in cache.raw_data if item['file_path'] != file_path]
await cache.resort()
# Update hash index if available
if hasattr(scanner, '_hash_index') and scanner._hash_index:
scanner._hash_index.remove_by_path(file_path)
return web.json_response({
'success': True,
'deleted_files': deleted_files
})
except Exception as e:
logger.error(f"Error deleting model: {e}", exc_info=True)
return web.Response(text=str(e), status=500)
@staticmethod
async def handle_fetch_civitai(request: web.Request, scanner) -> web.Response:
"""Handle CivitAI metadata fetch request
Args:
request: The aiohttp request
scanner: The model scanner instance with cache management methods
Returns:
web.Response: The HTTP response
"""
try:
data = await request.json()
metadata_path = os.path.splitext(data['file_path'])[0] + '.metadata.json'
# Check if model metadata exists
local_metadata = await ModelRouteUtils.load_local_metadata(metadata_path)
if not local_metadata or not local_metadata.get('sha256'):
return web.json_response({"success": False, "error": "No SHA256 hash found"}, status=400)
# Create a client for fetching from Civitai
client = CivitaiClient()
try:
# Fetch and update metadata
civitai_metadata = await client.get_model_by_hash(local_metadata["sha256"])
if not civitai_metadata:
await ModelRouteUtils.handle_not_found_on_civitai(metadata_path, local_metadata)
return web.json_response({"success": False, "error": "Not found on CivitAI"}, status=404)
await ModelRouteUtils.update_model_metadata(metadata_path, local_metadata, civitai_metadata, client)
# Update the cache
await scanner.update_single_model_cache(data['file_path'], data['file_path'], local_metadata)
return web.json_response({"success": True})
finally:
await client.close()
except Exception as e:
logger.error(f"Error fetching from CivitAI: {e}", exc_info=True)
return web.json_response({"success": False, "error": str(e)}, status=500)
@staticmethod
async def handle_replace_preview(request: web.Request, scanner) -> web.Response:
"""Handle preview image replacement request
Args:
request: The aiohttp request
scanner: The model scanner instance with methods to update cache
Returns:
web.Response: The HTTP response
"""
try:
reader = await request.multipart()
# Read preview file data
field = await reader.next()
if field.name != 'preview_file':
raise ValueError("Expected 'preview_file' field")
content_type = field.headers.get('Content-Type', 'image/png')
preview_data = await field.read()
# Read model path
field = await reader.next()
if field.name != 'model_path':
raise ValueError("Expected 'model_path' field")
model_path = (await field.read()).decode()
# Save preview file
base_name = os.path.splitext(os.path.basename(model_path))[0]
folder = os.path.dirname(model_path)
# Determine if content is video or image
if content_type.startswith('video/'):
# For videos, keep original format and use .mp4 extension
extension = '.mp4'
optimized_data = preview_data
else:
# For images, optimize and convert to WebP
optimized_data, _ = ExifUtils.optimize_image(
image_data=preview_data,
target_width=CARD_PREVIEW_WIDTH,
format='webp',
quality=85,
preserve_metadata=False
)
extension = '.webp' # Use .webp without .preview part
preview_path = os.path.join(folder, base_name + extension).replace(os.sep, '/')
with open(preview_path, 'wb') as f:
f.write(optimized_data)
# Update preview path in metadata
metadata_path = os.path.splitext(model_path)[0] + '.metadata.json'
if os.path.exists(metadata_path):
try:
with open(metadata_path, 'r', encoding='utf-8') as f:
metadata = json.load(f)
# Update preview_url directly in the metadata dict
metadata['preview_url'] = preview_path
with open(metadata_path, 'w', encoding='utf-8') as f:
json.dump(metadata, f, indent=2, ensure_ascii=False)
except Exception as e:
logger.error(f"Error updating metadata: {e}")
# Update preview URL in scanner cache
if hasattr(scanner, 'update_preview_in_cache'):
await scanner.update_preview_in_cache(model_path, preview_path)
return web.json_response({
"success": True,
"preview_url": config.get_preview_static_url(preview_path)
})
except Exception as e:
logger.error(f"Error replacing preview: {e}", exc_info=True)
return web.Response(text=str(e), status=500)
@staticmethod
async def handle_exclude_model(request: web.Request, scanner) -> web.Response:
"""Handle model exclusion request
Args:
request: The aiohttp request
scanner: The model scanner instance with cache management methods
Returns:
web.Response: The HTTP response
"""
try:
data = await request.json()
file_path = data.get('file_path')
if not file_path:
return web.Response(text='Model path is required', status=400)
# Update metadata to mark as excluded
metadata_path = os.path.splitext(file_path)[0] + '.metadata.json'
metadata = await ModelRouteUtils.load_local_metadata(metadata_path)
metadata['exclude'] = True
# Save updated metadata
with open(metadata_path, 'w', encoding='utf-8') as f:
json.dump(metadata, f, indent=2, ensure_ascii=False)
# Update cache
cache = await scanner.get_cached_data()
# Find and remove model from cache
model_to_remove = next((item for item in cache.raw_data if item['file_path'] == file_path), None)
if model_to_remove:
# Update tags count
for tag in model_to_remove.get('tags', []):
if tag in scanner._tags_count:
scanner._tags_count[tag] = max(0, scanner._tags_count[tag] - 1)
if scanner._tags_count[tag] == 0:
del scanner._tags_count[tag]
# Remove from hash index if available
if hasattr(scanner, '_hash_index') and scanner._hash_index:
scanner._hash_index.remove_by_path(file_path)
# Remove from cache data
cache.raw_data = [item for item in cache.raw_data if item['file_path'] != file_path]
await cache.resort()
# Add to excluded models list
scanner._excluded_models.append(file_path)
return web.json_response({
'success': True,
'message': f"Model {os.path.basename(file_path)} excluded"
})
except Exception as e:
logger.error(f"Error excluding model: {e}", exc_info=True)
return web.Response(text=str(e), status=500)
@staticmethod
async def handle_download_model(request: web.Request, download_manager: DownloadManager, model_type="lora") -> web.Response:
"""Handle model download request
Args:
request: The aiohttp request
download_manager: Instance of DownloadManager
model_type: Type of model ('lora' or 'checkpoint')
Returns:
web.Response: The HTTP response
"""
try:
data = await request.json()
# Create progress callback
async def progress_callback(progress):
from ..services.websocket_manager import ws_manager
await ws_manager.broadcast({
'status': 'progress',
'progress': progress
})
# Check which identifier is provided
download_url = data.get('download_url')
model_hash = data.get('model_hash')
model_version_id = data.get('model_version_id')
# Validate that at least one identifier is provided
if not any([download_url, model_hash, model_version_id]):
return web.Response(
status=400,
text="Missing required parameter: Please provide either 'download_url', 'hash', or 'modelVersionId'"
)
# Use the correct root directory based on model type
root_key = 'checkpoint_root' if model_type == 'checkpoint' else 'lora_root'
save_dir = data.get(root_key)
result = await download_manager.download_from_civitai(
download_url=download_url,
model_hash=model_hash,
model_version_id=model_version_id,
save_dir=save_dir,
relative_path=data.get('relative_path', ''),
progress_callback=progress_callback,
model_type=model_type
)
if not result.get('success', False):
error_message = result.get('error', 'Unknown error')
# Return 401 for early access errors
if 'early access' in error_message.lower():
logger.warning(f"Early access download failed: {error_message}")
return web.Response(
status=401, # Use 401 status code to match Civitai's response
text=f"Early Access Restriction: {error_message}"
)
return web.Response(status=500, text=error_message)
return web.json_response(result)
except Exception as e:
error_message = str(e)
# Check if this might be an early access error
if '401' in error_message:
logger.warning(f"Early access error (401): {error_message}")
return web.Response(
status=401,
text="Early Access Restriction: This model requires purchase. Please buy early access on Civitai.com."
)
logger.error(f"Error downloading {model_type}: {error_message}")
return web.Response(status=500, text=error_message)

273
py/utils/usage_stats.py Normal file
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@@ -0,0 +1,273 @@
import os
import json
import sys
import time
import asyncio
import logging
from typing import Dict, Set
from ..config import config
from ..services.service_registry import ServiceRegistry
# Check if running in standalone mode
standalone_mode = 'nodes' not in sys.modules
if not standalone_mode:
from ..metadata_collector.metadata_registry import MetadataRegistry
from ..metadata_collector.constants import MODELS, LORAS
logger = logging.getLogger(__name__)
class UsageStats:
"""Track usage statistics for models and save to JSON"""
_instance = None
_lock = asyncio.Lock() # For thread safety
# Default stats file name
STATS_FILENAME = "lora_manager_stats.json"
def __new__(cls):
if cls._instance is None:
cls._instance = super().__new__(cls)
cls._instance._initialized = False
return cls._instance
def __init__(self):
if self._initialized:
return
# Initialize stats storage
self.stats = {
"checkpoints": {}, # sha256 -> count
"loras": {}, # sha256 -> count
"total_executions": 0,
"last_save_time": 0
}
# Queue for prompt_ids to process
self.pending_prompt_ids = set()
# Load existing stats if available
self._stats_file_path = self._get_stats_file_path()
self._load_stats()
# Save interval in seconds
self.save_interval = 90 # 1.5 minutes
# Start background task to process queued prompt_ids
self._bg_task = asyncio.create_task(self._background_processor())
self._initialized = True
logger.info("Usage statistics tracker initialized")
def _get_stats_file_path(self) -> str:
"""Get the path to the stats JSON file"""
if not config.loras_roots or len(config.loras_roots) == 0:
# Fallback to temporary directory if no lora roots
return os.path.join(config.temp_directory, self.STATS_FILENAME)
# Use the first lora root
return os.path.join(config.loras_roots[0], self.STATS_FILENAME)
def _load_stats(self):
"""Load existing statistics from file"""
try:
if os.path.exists(self._stats_file_path):
with open(self._stats_file_path, 'r', encoding='utf-8') as f:
loaded_stats = json.load(f)
# Update our stats with loaded data
if isinstance(loaded_stats, dict):
# Update individual sections to maintain structure
if "checkpoints" in loaded_stats and isinstance(loaded_stats["checkpoints"], dict):
self.stats["checkpoints"] = loaded_stats["checkpoints"]
if "loras" in loaded_stats and isinstance(loaded_stats["loras"], dict):
self.stats["loras"] = loaded_stats["loras"]
if "total_executions" in loaded_stats:
self.stats["total_executions"] = loaded_stats["total_executions"]
logger.info(f"Loaded usage statistics from {self._stats_file_path}")
except Exception as e:
logger.error(f"Error loading usage statistics: {e}")
async def save_stats(self, force=False):
"""Save statistics to file"""
try:
# Only save if it's been at least save_interval since last save or force is True
current_time = time.time()
if not force and (current_time - self.stats.get("last_save_time", 0)) < self.save_interval:
return False
# Use a lock to prevent concurrent writes
async with self._lock:
# Update last save time
self.stats["last_save_time"] = current_time
# Create directory if it doesn't exist
os.makedirs(os.path.dirname(self._stats_file_path), exist_ok=True)
# Write to a temporary file first, then move it to avoid corruption
temp_path = f"{self._stats_file_path}.tmp"
with open(temp_path, 'w', encoding='utf-8') as f:
json.dump(self.stats, f, indent=2, ensure_ascii=False)
# Replace the old file with the new one
os.replace(temp_path, self._stats_file_path)
logger.debug(f"Saved usage statistics to {self._stats_file_path}")
return True
except Exception as e:
logger.error(f"Error saving usage statistics: {e}", exc_info=True)
return False
def register_execution(self, prompt_id):
"""Register a completed execution by prompt_id for later processing"""
if prompt_id:
self.pending_prompt_ids.add(prompt_id)
async def _background_processor(self):
"""Background task to process queued prompt_ids"""
try:
while True:
# Wait a short interval before checking for new prompt_ids
await asyncio.sleep(5) # Check every 5 seconds
# Process any pending prompt_ids
if self.pending_prompt_ids:
async with self._lock:
# Get a copy of the set and clear original
prompt_ids = self.pending_prompt_ids.copy()
self.pending_prompt_ids.clear()
# Process each prompt_id
registry = MetadataRegistry()
for prompt_id in prompt_ids:
try:
metadata = registry.get_metadata(prompt_id)
await self._process_metadata(metadata)
except Exception as e:
logger.error(f"Error processing prompt_id {prompt_id}: {e}")
# Periodically save stats
await self.save_stats()
except asyncio.CancelledError:
# Task was cancelled, clean up
await self.save_stats(force=True)
except Exception as e:
logger.error(f"Error in background processing task: {e}", exc_info=True)
# Restart the task after a delay if it fails
asyncio.create_task(self._restart_background_task())
async def _restart_background_task(self):
"""Restart the background task after a delay"""
await asyncio.sleep(30) # Wait 30 seconds before restarting
self._bg_task = asyncio.create_task(self._background_processor())
async def _process_metadata(self, metadata):
"""Process metadata from an execution"""
if not metadata or not isinstance(metadata, dict):
return
# Increment total executions count
self.stats["total_executions"] += 1
# Process checkpoints
if MODELS in metadata and isinstance(metadata[MODELS], dict):
await self._process_checkpoints(metadata[MODELS])
# Process loras
if LORAS in metadata and isinstance(metadata[LORAS], dict):
await self._process_loras(metadata[LORAS])
async def _process_checkpoints(self, models_data):
"""Process checkpoint models from metadata"""
try:
# Get checkpoint scanner service
checkpoint_scanner = await ServiceRegistry.get_checkpoint_scanner()
if not checkpoint_scanner:
logger.warning("Checkpoint scanner not available for usage tracking")
return
for node_id, model_info in models_data.items():
if not isinstance(model_info, dict):
continue
# Check if this is a checkpoint model
model_type = model_info.get("type")
if model_type == "checkpoint":
model_name = model_info.get("name")
if not model_name:
continue
# Clean up filename (remove extension if present)
model_filename = os.path.splitext(os.path.basename(model_name))[0]
# Get hash for this checkpoint
model_hash = checkpoint_scanner.get_hash_by_filename(model_filename)
if model_hash:
# Update stats for this checkpoint
self.stats["checkpoints"][model_hash] = self.stats["checkpoints"].get(model_hash, 0) + 1
except Exception as e:
logger.error(f"Error processing checkpoint usage: {e}", exc_info=True)
async def _process_loras(self, loras_data):
"""Process LoRA models from metadata"""
try:
# Get LoRA scanner service
lora_scanner = await ServiceRegistry.get_lora_scanner()
if not lora_scanner:
logger.warning("LoRA scanner not available for usage tracking")
return
for node_id, lora_info in loras_data.items():
if not isinstance(lora_info, dict):
continue
# Get the list of LoRAs from standardized format
lora_list = lora_info.get("lora_list", [])
for lora in lora_list:
if not isinstance(lora, dict):
continue
lora_name = lora.get("name")
if not lora_name:
continue
# Get hash for this LoRA
lora_hash = lora_scanner.get_hash_by_filename(lora_name)
if lora_hash:
# Update stats for this LoRA
self.stats["loras"][lora_hash] = self.stats["loras"].get(lora_hash, 0) + 1
except Exception as e:
logger.error(f"Error processing LoRA usage: {e}", exc_info=True)
async def get_stats(self):
"""Get current usage statistics"""
return self.stats
async def get_model_usage_count(self, model_type, sha256):
"""Get usage count for a specific model by hash"""
if model_type == "checkpoint":
return self.stats["checkpoints"].get(sha256, 0)
elif model_type == "lora":
return self.stats["loras"].get(sha256, 0)
return 0
async def process_execution(self, prompt_id):
"""Process a prompt execution immediately (synchronous approach)"""
if not prompt_id:
return
try:
# Process metadata for this prompt_id
registry = MetadataRegistry()
metadata = registry.get_metadata(prompt_id)
if metadata:
await self._process_metadata(metadata)
# Save stats if needed
await self.save_stats()
except Exception as e:
logger.error(f"Error processing prompt_id {prompt_id}: {e}", exc_info=True)

View File

@@ -114,3 +114,49 @@ def fuzzy_match(text: str, pattern: str, threshold: float = 0.7) -> bool:
# All words found either as substrings or fuzzy matches
return True
def calculate_recipe_fingerprint(loras):
"""
Calculate a unique fingerprint for a recipe based on its LoRAs.
The fingerprint is created by sorting LoRA hashes, filtering invalid entries,
normalizing strength values to 2 decimal places, and joining in format:
hash1:strength1|hash2:strength2|...
Args:
loras (list): List of LoRA dictionaries with hash and strength values
Returns:
str: The calculated fingerprint
"""
if not loras:
return ""
# Filter valid entries and extract hash and strength
valid_loras = []
for lora in loras:
# Skip excluded loras
if lora.get("exclude", False):
continue
# Get the hash - use modelVersionId as fallback if hash is empty
hash_value = lora.get("hash", "").lower()
if not hash_value and lora.get("isDeleted", False) and lora.get("modelVersionId"):
hash_value = lora.get("modelVersionId")
# Skip entries without a valid hash
if not hash_value:
continue
# Normalize strength to 2 decimal places (check both strength and weight fields)
strength = round(float(lora.get("strength", lora.get("weight", 1.0))), 2)
valid_loras.append((hash_value, strength))
# Sort by hash
valid_loras.sort()
# Join in format hash1:strength1|hash2:strength2|...
fingerprint = "|".join([f"{hash_value}:{strength}" for hash_value, strength in valid_loras])
return fingerprint

View File

@@ -1,149 +0,0 @@
# ComfyUI Workflow Parser
本模块提供了一个灵活的解析系统可以从ComfyUI工作流中提取生成参数和LoRA信息。
## 设计理念
工作流解析器基于以下设计原则:
1. **模块化**: 每种节点类型由独立的mapper处理
2. **可扩展性**: 通过扩展系统轻松添加新的节点类型支持
3. **回溯**: 通过工作流图的模型输入路径跟踪LoRA节点
4. **灵活性**: 适应不同的ComfyUI工作流结构
## 主要组件
### 1. NodeMapper
`NodeMapper`是所有节点映射器的基类,定义了如何从工作流中提取节点信息:
```python
class NodeMapper:
def __init__(self, node_type: str, inputs_to_track: List[str]):
self.node_type = node_type
self.inputs_to_track = inputs_to_track
def process(self, node_id: str, node_data: Dict, workflow: Dict, parser) -> Any:
# 处理节点的通用逻辑
...
def transform(self, inputs: Dict) -> Any:
# 由子类覆盖以提供特定转换
return inputs
```
### 2. WorkflowParser
主要解析类,通过跟踪工作流图来提取参数:
```python
parser = WorkflowParser()
result = parser.parse_workflow("workflow.json")
```
### 3. 扩展系统
允许通过添加新的自定义mapper来扩展支持的节点类型:
```python
# 在py/workflow/ext/中添加自定义mapper模块
load_extensions() # 自动加载所有扩展
```
## 使用方法
### 基本用法
```python
from workflow.parser import parse_workflow
# 解析工作流并保存结果
result = parse_workflow("workflow.json", "output.json")
```
### 自定义解析
```python
from workflow.parser import WorkflowParser
from workflow.mappers import register_mapper, load_extensions
# 加载扩展
load_extensions()
# 创建解析器
parser = WorkflowParser(load_extensions_on_init=False) # 不自动加载扩展
# 解析工作流
result = parser.parse_workflow(workflow_data)
```
## 扩展系统
### 添加新的节点映射器
`py/workflow/ext/`目录中创建Python文件定义从`NodeMapper`继承的类:
```python
# example_mapper.py
from ..mappers import NodeMapper
class MyCustomNodeMapper(NodeMapper):
def __init__(self):
super().__init__(
node_type="MyCustomNode", # 节点的class_type
inputs_to_track=["param1", "param2"] # 要提取的参数
)
def transform(self, inputs: Dict) -> Any:
# 处理提取的参数
return {
"custom_param": inputs.get("param1", "default")
}
```
扩展系统会自动加载和注册这些映射器。
### LoraManager节点说明
LoraManager相关节点的处理方式:
1. **Lora Loader**: 处理`loras`数组,过滤出`active=true`的条目,和`lora_stack`输入
2. **Lora Stacker**: 处理`loras`数组和已有的`lora_stack`构建叠加的LoRA
3. **TriggerWord Toggle**: 从`toggle_trigger_words`中提取`active=true`的条目
## 输出格式
解析器生成的输出格式如下:
```json
{
"gen_params": {
"prompt": "...",
"negative_prompt": "",
"steps": "25",
"sampler": "dpmpp_2m",
"scheduler": "beta",
"cfg": "1",
"seed": "48",
"guidance": 3.5,
"size": "896x1152",
"clip_skip": "2"
},
"loras": "<lora:name1:0.9> <lora:name2:0.8>"
}
```
## 高级用法
### 直接注册映射器
```python
from workflow.mappers import register_mapper
from workflow.mappers import NodeMapper
# 创建自定义映射器
class CustomMapper(NodeMapper):
# ...实现映射器
# 注册映射器
register_mapper(CustomMapper())

View File

@@ -1,3 +0,0 @@
"""
ComfyUI workflow parsing module to extract generation parameters
"""

View File

@@ -1,58 +0,0 @@
"""
Command-line interface for the ComfyUI workflow parser
"""
import argparse
import json
import os
import logging
import sys
from .parser import parse_workflow
logging.basicConfig(
level=logging.INFO,
format='%(asctime)s - %(name)s - %(levelname)s - %(message)s',
handlers=[logging.StreamHandler()]
)
logger = logging.getLogger(__name__)
def main():
"""Entry point for the CLI"""
parser = argparse.ArgumentParser(description='Parse ComfyUI workflow files')
parser.add_argument('input', help='Input workflow JSON file path')
parser.add_argument('-o', '--output', help='Output JSON file path')
parser.add_argument('-p', '--pretty', action='store_true', help='Pretty print JSON output')
parser.add_argument('--debug', action='store_true', help='Enable debug logging')
args = parser.parse_args()
# Set logging level
if args.debug:
logging.getLogger().setLevel(logging.DEBUG)
# Validate input file
if not os.path.isfile(args.input):
logger.error(f"Input file not found: {args.input}")
sys.exit(1)
# Parse workflow
try:
result = parse_workflow(args.input, args.output)
# Print result to console if output file not specified
if not args.output:
if args.pretty:
print(json.dumps(result, indent=4))
else:
print(json.dumps(result))
else:
logger.info(f"Output saved to: {args.output}")
except Exception as e:
logger.error(f"Error parsing workflow: {e}")
if args.debug:
import traceback
traceback.print_exc()
sys.exit(1)
if __name__ == "__main__":
main()

View File

@@ -1,3 +0,0 @@
"""
Extension directory for custom node mappers
"""

View File

@@ -1,54 +0,0 @@
"""
Example extension mapper for demonstrating the extension system
"""
from typing import Dict, Any
from ..mappers import NodeMapper
class ExampleNodeMapper(NodeMapper):
"""Example mapper for custom nodes"""
def __init__(self):
super().__init__(
node_type="ExampleCustomNode",
inputs_to_track=["param1", "param2", "image"]
)
def transform(self, inputs: Dict) -> Dict:
"""Transform extracted inputs into the desired output format"""
result = {}
# Extract interesting parameters
if "param1" in inputs:
result["example_param1"] = inputs["param1"]
if "param2" in inputs:
result["example_param2"] = inputs["param2"]
# You can process the data in any way needed
return result
class VAEMapperExtension(NodeMapper):
"""Extension mapper for VAE nodes"""
def __init__(self):
super().__init__(
node_type="VAELoader",
inputs_to_track=["vae_name"]
)
def transform(self, inputs: Dict) -> Dict:
"""Extract VAE information"""
vae_name = inputs.get("vae_name", "")
# Remove path prefix if present
if "/" in vae_name or "\\" in vae_name:
# Get just the filename without path or extension
vae_name = vae_name.replace("\\", "/").split("/")[-1]
vae_name = vae_name.split(".")[0] # Remove extension
return {"vae": vae_name}
# Note: No need to register manually - extensions are automatically registered
# when the extension system loads this file

View File

@@ -1,37 +0,0 @@
"""
Main entry point for the workflow parser module
"""
import os
import sys
import logging
from typing import Dict, Optional, Union
# Add the parent directory to sys.path to enable imports
SCRIPT_DIR = os.path.dirname(os.path.abspath(__file__))
ROOT_DIR = os.path.abspath(os.path.join(SCRIPT_DIR, '..', '..'))
sys.path.insert(0, os.path.dirname(SCRIPT_DIR))
from .parser import parse_workflow
logger = logging.getLogger(__name__)
def parse_comfyui_workflow(
workflow_path: str,
output_path: Optional[str] = None
) -> Dict:
"""
Parse a ComfyUI workflow file and extract generation parameters
Args:
workflow_path: Path to the workflow JSON file
output_path: Optional path to save the output JSON
Returns:
Dictionary containing extracted parameters
"""
return parse_workflow(workflow_path, output_path)
if __name__ == "__main__":
# If run directly, use the CLI
from .cli import main
main()

View File

@@ -1,428 +0,0 @@
"""
Node mappers for ComfyUI workflow parsing
"""
import logging
import os
import importlib.util
import inspect
from typing import Dict, List, Any, Optional, Union, Type, Callable
logger = logging.getLogger(__name__)
# Global mapper registry
_MAPPER_REGISTRY: Dict[str, 'NodeMapper'] = {}
class NodeMapper:
"""Base class for node mappers that define how to extract information from a specific node type"""
def __init__(self, node_type: str, inputs_to_track: List[str]):
self.node_type = node_type
self.inputs_to_track = inputs_to_track
def process(self, node_id: str, node_data: Dict, workflow: Dict, parser: 'WorkflowParser') -> Any: # type: ignore
"""Process the node and extract relevant information"""
result = {}
for input_name in self.inputs_to_track:
if input_name in node_data.get("inputs", {}):
input_value = node_data["inputs"][input_name]
# Check if input is a reference to another node's output
if isinstance(input_value, list) and len(input_value) == 2:
# Format is [node_id, output_slot]
try:
ref_node_id, output_slot = input_value
# Convert node_id to string if it's an integer
if isinstance(ref_node_id, int):
ref_node_id = str(ref_node_id)
# Recursively process the referenced node
ref_value = parser.process_node(ref_node_id, workflow)
# Store the processed value
if ref_value is not None:
result[input_name] = ref_value
else:
# If we couldn't get a value from the reference, store the raw value
result[input_name] = input_value
except Exception as e:
logger.error(f"Error processing reference in node {node_id}, input {input_name}: {e}")
# If we couldn't process the reference, store the raw value
result[input_name] = input_value
else:
# Direct value
result[input_name] = input_value
# Apply any transformations
return self.transform(result)
def transform(self, inputs: Dict) -> Any:
"""Transform the extracted inputs - override in subclasses"""
return inputs
class KSamplerMapper(NodeMapper):
"""Mapper for KSampler nodes"""
def __init__(self):
super().__init__(
node_type="KSampler",
inputs_to_track=["seed", "steps", "cfg", "sampler_name", "scheduler",
"denoise", "positive", "negative", "latent_image",
"model", "clip_skip"]
)
def transform(self, inputs: Dict) -> Dict:
result = {
"seed": str(inputs.get("seed", "")),
"steps": str(inputs.get("steps", "")),
"cfg": str(inputs.get("cfg", "")),
"sampler": inputs.get("sampler_name", ""),
"scheduler": inputs.get("scheduler", ""),
}
# Process positive prompt
if "positive" in inputs:
result["prompt"] = inputs["positive"]
# Process negative prompt
if "negative" in inputs:
result["negative_prompt"] = inputs["negative"]
# Get dimensions from latent image
if "latent_image" in inputs and isinstance(inputs["latent_image"], dict):
width = inputs["latent_image"].get("width", 0)
height = inputs["latent_image"].get("height", 0)
if width and height:
result["size"] = f"{width}x{height}"
# Add clip_skip if present
if "clip_skip" in inputs:
result["clip_skip"] = str(inputs.get("clip_skip", ""))
return result
class EmptyLatentImageMapper(NodeMapper):
"""Mapper for EmptyLatentImage nodes"""
def __init__(self):
super().__init__(
node_type="EmptyLatentImage",
inputs_to_track=["width", "height", "batch_size"]
)
def transform(self, inputs: Dict) -> Dict:
width = inputs.get("width", 0)
height = inputs.get("height", 0)
return {"width": width, "height": height, "size": f"{width}x{height}"}
class EmptySD3LatentImageMapper(NodeMapper):
"""Mapper for EmptySD3LatentImage nodes"""
def __init__(self):
super().__init__(
node_type="EmptySD3LatentImage",
inputs_to_track=["width", "height", "batch_size"]
)
def transform(self, inputs: Dict) -> Dict:
width = inputs.get("width", 0)
height = inputs.get("height", 0)
return {"width": width, "height": height, "size": f"{width}x{height}"}
class CLIPTextEncodeMapper(NodeMapper):
"""Mapper for CLIPTextEncode nodes"""
def __init__(self):
super().__init__(
node_type="CLIPTextEncode",
inputs_to_track=["text", "clip"]
)
def transform(self, inputs: Dict) -> Any:
# Simply return the text
return inputs.get("text", "")
class LoraLoaderMapper(NodeMapper):
"""Mapper for LoraLoader nodes"""
def __init__(self):
super().__init__(
node_type="Lora Loader (LoraManager)",
inputs_to_track=["loras", "lora_stack"]
)
def transform(self, inputs: Dict) -> Dict:
# Fallback to loras array if text field doesn't exist or is invalid
loras_data = inputs.get("loras", [])
lora_stack = inputs.get("lora_stack", {}).get("lora_stack", [])
# Process loras array - filter active entries
lora_texts = []
# Check if loras_data is a list or a dict with __value__ key (new format)
if isinstance(loras_data, dict) and "__value__" in loras_data:
loras_list = loras_data["__value__"]
elif isinstance(loras_data, list):
loras_list = loras_data
else:
loras_list = []
# Process each active lora entry
for lora in loras_list:
logger.info(f"Lora: {lora}, active: {lora.get('active')}")
if isinstance(lora, dict) and lora.get("active", False):
lora_name = lora.get("name", "")
strength = lora.get("strength", 1.0)
lora_texts.append(f"<lora:{lora_name}:{strength}>")
# Process lora_stack if it exists and is a valid format (list of tuples)
if lora_stack and isinstance(lora_stack, list):
# If lora_stack is a reference to another node ([node_id, output_slot]),
# we don't process it here as it's already been processed recursively
if len(lora_stack) == 2 and isinstance(lora_stack[0], (str, int)) and isinstance(lora_stack[1], int):
# This is a reference to another node, already processed
pass
else:
# Format each entry from the stack (assuming it's a list of tuples)
for stack_entry in lora_stack:
lora_name = stack_entry[0]
strength = stack_entry[1]
lora_texts.append(f"<lora:{lora_name}:{strength}>")
# Join with spaces
combined_text = " ".join(lora_texts)
return {"loras": combined_text}
class LoraStackerMapper(NodeMapper):
"""Mapper for LoraStacker nodes"""
def __init__(self):
super().__init__(
node_type="Lora Stacker (LoraManager)",
inputs_to_track=["loras", "lora_stack"]
)
def transform(self, inputs: Dict) -> Dict:
loras_data = inputs.get("loras", [])
result_stack = []
# Handle existing stack entries
existing_stack = []
lora_stack_input = inputs.get("lora_stack", [])
# Handle different formats of lora_stack
if isinstance(lora_stack_input, dict) and "lora_stack" in lora_stack_input:
# Format from another LoraStacker node
existing_stack = lora_stack_input["lora_stack"]
elif isinstance(lora_stack_input, list):
# Direct list format or reference format [node_id, output_slot]
if len(lora_stack_input) == 2 and isinstance(lora_stack_input[0], (str, int)) and isinstance(lora_stack_input[1], int):
# This is likely a reference that was already processed
pass
else:
# Regular list of tuples/entries
existing_stack = lora_stack_input
# Add existing entries first
if existing_stack:
result_stack.extend(existing_stack)
# Process loras array - filter active entries
# Check if loras_data is a list or a dict with __value__ key (new format)
if isinstance(loras_data, dict) and "__value__" in loras_data:
loras_list = loras_data["__value__"]
elif isinstance(loras_data, list):
loras_list = loras_data
else:
loras_list = []
# Process each active lora entry
for lora in loras_list:
if isinstance(lora, dict) and lora.get("active", False):
lora_name = lora.get("name", "")
strength = float(lora.get("strength", 1.0))
result_stack.append((lora_name, strength))
return {"lora_stack": result_stack}
class JoinStringsMapper(NodeMapper):
"""Mapper for JoinStrings nodes"""
def __init__(self):
super().__init__(
node_type="JoinStrings",
inputs_to_track=["string1", "string2", "delimiter"]
)
def transform(self, inputs: Dict) -> str:
string1 = inputs.get("string1", "")
string2 = inputs.get("string2", "")
delimiter = inputs.get("delimiter", "")
return f"{string1}{delimiter}{string2}"
class StringConstantMapper(NodeMapper):
"""Mapper for StringConstant and StringConstantMultiline nodes"""
def __init__(self):
super().__init__(
node_type="StringConstantMultiline",
inputs_to_track=["string"]
)
def transform(self, inputs: Dict) -> str:
return inputs.get("string", "")
class TriggerWordToggleMapper(NodeMapper):
"""Mapper for TriggerWordToggle nodes"""
def __init__(self):
super().__init__(
node_type="TriggerWord Toggle (LoraManager)",
inputs_to_track=["toggle_trigger_words"]
)
def transform(self, inputs: Dict) -> str:
toggle_data = inputs.get("toggle_trigger_words", [])
# check if toggle_words is a list or a dict with __value__ key (new format)
if isinstance(toggle_data, dict) and "__value__" in toggle_data:
toggle_words = toggle_data["__value__"]
elif isinstance(toggle_data, list):
toggle_words = toggle_data
else:
toggle_words = []
# Filter active trigger words
active_words = []
for item in toggle_words:
if isinstance(item, dict) and item.get("active", False):
word = item.get("text", "")
if word and not word.startswith("__dummy"):
active_words.append(word)
# Join with commas
result = ", ".join(active_words)
return result
class FluxGuidanceMapper(NodeMapper):
"""Mapper for FluxGuidance nodes"""
def __init__(self):
super().__init__(
node_type="FluxGuidance",
inputs_to_track=["guidance", "conditioning"]
)
def transform(self, inputs: Dict) -> Dict:
result = {}
# Handle guidance parameter
if "guidance" in inputs:
result["guidance"] = inputs["guidance"]
# Handle conditioning (the prompt text)
if "conditioning" in inputs:
conditioning = inputs["conditioning"]
if isinstance(conditioning, str):
result["prompt"] = conditioning
else:
result["prompt"] = "Unknown prompt"
return result
# =============================================================================
# Mapper Registry Functions
# =============================================================================
def register_mapper(mapper: NodeMapper) -> None:
"""Register a node mapper in the global registry"""
_MAPPER_REGISTRY[mapper.node_type] = mapper
logger.debug(f"Registered mapper for node type: {mapper.node_type}")
def get_mapper(node_type: str) -> Optional[NodeMapper]:
"""Get a mapper for the specified node type"""
return _MAPPER_REGISTRY.get(node_type)
def get_all_mappers() -> Dict[str, NodeMapper]:
"""Get all registered mappers"""
return _MAPPER_REGISTRY.copy()
def register_default_mappers() -> None:
"""Register all default mappers"""
default_mappers = [
KSamplerMapper(),
EmptyLatentImageMapper(),
EmptySD3LatentImageMapper(),
CLIPTextEncodeMapper(),
LoraLoaderMapper(),
LoraStackerMapper(),
JoinStringsMapper(),
StringConstantMapper(),
TriggerWordToggleMapper(),
FluxGuidanceMapper()
]
for mapper in default_mappers:
register_mapper(mapper)
# =============================================================================
# Extension Loading
# =============================================================================
def load_extensions(ext_dir: str = None) -> None:
"""
Load mapper extensions from the specified directory
Each Python file in the directory will be loaded, and any NodeMapper subclasses
defined in those files will be automatically registered.
"""
# Use default path if none provided
if ext_dir is None:
# Get the directory of this file
current_dir = os.path.dirname(os.path.abspath(__file__))
ext_dir = os.path.join(current_dir, 'ext')
# Ensure the extension directory exists
if not os.path.exists(ext_dir):
os.makedirs(ext_dir, exist_ok=True)
logger.info(f"Created extension directory: {ext_dir}")
return
# Load each Python file in the extension directory
for filename in os.listdir(ext_dir):
if filename.endswith('.py') and not filename.startswith('_'):
module_path = os.path.join(ext_dir, filename)
module_name = f"workflow.ext.{filename[:-3]}" # Remove .py
try:
# Load the module
spec = importlib.util.spec_from_file_location(module_name, module_path)
if spec and spec.loader:
module = importlib.util.module_from_spec(spec)
spec.loader.exec_module(module)
# Find all NodeMapper subclasses in the module
for name, obj in inspect.getmembers(module):
if (inspect.isclass(obj) and issubclass(obj, NodeMapper)
and obj != NodeMapper and hasattr(obj, 'node_type')):
# Instantiate and register the mapper
mapper = obj()
register_mapper(mapper)
logger.info(f"Loaded extension mapper: {mapper.node_type} from {filename}")
except Exception as e:
logger.warning(f"Error loading extension {filename}: {e}")
# Initialize the registry with default mappers
register_default_mappers()

View File

@@ -1,196 +0,0 @@
"""
Main workflow parser implementation for ComfyUI
"""
import json
import logging
from typing import Dict, List, Any, Optional, Union, Set
from .mappers import get_mapper, get_all_mappers, load_extensions
from .utils import (
load_workflow, save_output, find_node_by_type,
trace_model_path
)
logger = logging.getLogger(__name__)
class WorkflowParser:
"""Parser for ComfyUI workflows"""
def __init__(self, load_extensions_on_init: bool = True):
"""Initialize the parser with mappers"""
self.processed_nodes: Set[str] = set() # Track processed nodes to avoid cycles
self.node_results_cache: Dict[str, Any] = {} # Cache for processed node results
# Load extensions if requested
if load_extensions_on_init:
load_extensions()
def process_node(self, node_id: str, workflow: Dict) -> Any:
"""Process a single node and extract relevant information"""
# Return cached result if available
if node_id in self.node_results_cache:
return self.node_results_cache[node_id]
# Check if we're in a cycle
if node_id in self.processed_nodes:
return None
# Mark this node as being processed (to detect cycles)
self.processed_nodes.add(node_id)
if node_id not in workflow:
self.processed_nodes.remove(node_id)
return None
node_data = workflow[node_id]
node_type = node_data.get("class_type")
result = None
mapper = get_mapper(node_type)
if mapper:
try:
result = mapper.process(node_id, node_data, workflow, self)
# Cache the result
self.node_results_cache[node_id] = result
except Exception as e:
logger.error(f"Error processing node {node_id} of type {node_type}: {e}", exc_info=True)
# Return a partial result or None depending on how we want to handle errors
result = {}
# Remove node from processed set to allow it to be processed again in a different context
self.processed_nodes.remove(node_id)
return result
def collect_loras_from_model(self, model_input: List, workflow: Dict) -> str:
"""Collect loras information from the model node chain"""
if not isinstance(model_input, list) or len(model_input) != 2:
return ""
model_node_id, _ = model_input
# Convert node_id to string if it's an integer
if isinstance(model_node_id, int):
model_node_id = str(model_node_id)
# Process the model node
model_result = self.process_node(model_node_id, workflow)
# If this is a Lora Loader node, return the loras text
if model_result and isinstance(model_result, dict) and "loras" in model_result:
return model_result["loras"]
# If not a lora loader, check the node's inputs for a model connection
node_data = workflow.get(model_node_id, {})
inputs = node_data.get("inputs", {})
# If this node has a model input, follow that path
if "model" in inputs and isinstance(inputs["model"], list):
return self.collect_loras_from_model(inputs["model"], workflow)
return ""
def parse_workflow(self, workflow_data: Union[str, Dict], output_path: Optional[str] = None) -> Dict:
"""
Parse the workflow and extract generation parameters
Args:
workflow_data: The workflow data as a dictionary or a file path
output_path: Optional path to save the output JSON
Returns:
Dictionary containing extracted parameters
"""
# Load workflow from file if needed
if isinstance(workflow_data, str):
workflow = load_workflow(workflow_data)
else:
workflow = workflow_data
# Reset the processed nodes tracker and cache
self.processed_nodes = set()
self.node_results_cache = {}
# Find the KSampler node
ksampler_node_id = find_node_by_type(workflow, "KSampler")
if not ksampler_node_id:
logger.warning("No KSampler node found in workflow")
return {}
# Start parsing from the KSampler node
result = {
"gen_params": {},
"loras": ""
}
# Process KSampler node to extract parameters
ksampler_result = self.process_node(ksampler_node_id, workflow)
if ksampler_result:
# Process the result
for key, value in ksampler_result.items():
# Special handling for the positive prompt from FluxGuidance
if key == "positive" and isinstance(value, dict):
# Extract guidance value
if "guidance" in value:
result["gen_params"]["guidance"] = value["guidance"]
# Extract prompt
if "prompt" in value:
result["gen_params"]["prompt"] = value["prompt"]
else:
# Normal handling for other values
result["gen_params"][key] = value
# Process the positive prompt node if it exists and we don't have a prompt yet
if "prompt" not in result["gen_params"] and "positive" in ksampler_result:
positive_value = ksampler_result.get("positive")
if isinstance(positive_value, str):
result["gen_params"]["prompt"] = positive_value
# Manually check for FluxGuidance if we don't have guidance value
if "guidance" not in result["gen_params"]:
flux_node_id = find_node_by_type(workflow, "FluxGuidance")
if flux_node_id:
# Get the direct input from the node
node_inputs = workflow[flux_node_id].get("inputs", {})
if "guidance" in node_inputs:
result["gen_params"]["guidance"] = node_inputs["guidance"]
# Extract loras from the model input of KSampler
ksampler_node = workflow.get(ksampler_node_id, {})
ksampler_inputs = ksampler_node.get("inputs", {})
if "model" in ksampler_inputs and isinstance(ksampler_inputs["model"], list):
loras_text = self.collect_loras_from_model(ksampler_inputs["model"], workflow)
if loras_text:
result["loras"] = loras_text
# Handle standard ComfyUI names vs our output format
if "cfg" in result["gen_params"]:
result["gen_params"]["cfg_scale"] = result["gen_params"].pop("cfg")
# Add clip_skip = 2 to match reference output if not already present
if "clip_skip" not in result["gen_params"]:
result["gen_params"]["clip_skip"] = "2"
# Ensure the prompt is a string and not a nested dictionary
if "prompt" in result["gen_params"] and isinstance(result["gen_params"]["prompt"], dict):
if "prompt" in result["gen_params"]["prompt"]:
result["gen_params"]["prompt"] = result["gen_params"]["prompt"]["prompt"]
# Save the result if requested
if output_path:
save_output(result, output_path)
return result
def parse_workflow(workflow_path: str, output_path: Optional[str] = None) -> Dict:
"""
Parse a ComfyUI workflow file and extract generation parameters
Args:
workflow_path: Path to the workflow JSON file
output_path: Optional path to save the output JSON
Returns:
Dictionary containing extracted parameters
"""
parser = WorkflowParser()
return parser.parse_workflow(workflow_path, output_path)

View File

@@ -1,63 +0,0 @@
"""
Test script for the ComfyUI workflow parser
"""
import os
import json
import logging
from .parser import parse_workflow
logging.basicConfig(
level=logging.INFO,
format='%(asctime)s - %(name)s - %(levelname)s - %(message)s',
handlers=[logging.StreamHandler()]
)
logger = logging.getLogger(__name__)
# Configure paths
SCRIPT_DIR = os.path.dirname(os.path.abspath(__file__))
ROOT_DIR = os.path.abspath(os.path.join(SCRIPT_DIR, '..', '..'))
REFS_DIR = os.path.join(ROOT_DIR, 'refs')
OUTPUT_DIR = os.path.join(ROOT_DIR, 'output')
def test_parse_flux_workflow():
"""Test parsing the flux example workflow"""
# Ensure output directory exists
os.makedirs(OUTPUT_DIR, exist_ok=True)
# Define input and output paths
input_path = os.path.join(REFS_DIR, 'flux_prompt.json')
output_path = os.path.join(OUTPUT_DIR, 'parsed_flux_output.json')
# Parse workflow
logger.info(f"Parsing workflow: {input_path}")
result = parse_workflow(input_path, output_path)
# Print result summary
logger.info(f"Output saved to: {output_path}")
logger.info(f"Parsing completed. Result summary:")
logger.info(f" LoRAs: {result.get('loras', '')}")
gen_params = result.get('gen_params', {})
logger.info(f" Prompt: {gen_params.get('prompt', '')[:50]}...")
logger.info(f" Steps: {gen_params.get('steps', '')}")
logger.info(f" Sampler: {gen_params.get('sampler', '')}")
logger.info(f" Size: {gen_params.get('size', '')}")
# Compare with reference output
ref_output_path = os.path.join(REFS_DIR, 'flux_output.json')
try:
with open(ref_output_path, 'r') as f:
ref_output = json.load(f)
# Simple validation
loras_match = result.get('loras', '') == ref_output.get('loras', '')
prompt_match = gen_params.get('prompt', '') == ref_output.get('gen_params', {}).get('prompt', '')
logger.info(f"Validation against reference:")
logger.info(f" LoRAs match: {loras_match}")
logger.info(f" Prompt match: {prompt_match}")
except Exception as e:
logger.warning(f"Failed to compare with reference output: {e}")
if __name__ == "__main__":
test_parse_flux_workflow()

View File

@@ -1,120 +0,0 @@
"""
Utility functions for ComfyUI workflow parsing
"""
import json
import os
import logging
from typing import Dict, List, Any, Optional, Union, Set, Tuple
logger = logging.getLogger(__name__)
def load_workflow(workflow_path: str) -> Dict:
"""Load a workflow from a JSON file"""
try:
with open(workflow_path, 'r', encoding='utf-8') as f:
return json.load(f)
except Exception as e:
logger.error(f"Error loading workflow from {workflow_path}: {e}")
raise
def save_output(output: Dict, output_path: str) -> None:
"""Save the parsed output to a JSON file"""
os.makedirs(os.path.dirname(os.path.abspath(output_path)), exist_ok=True)
try:
with open(output_path, 'w', encoding='utf-8') as f:
json.dump(output, f, indent=4)
except Exception as e:
logger.error(f"Error saving output to {output_path}: {e}")
raise
def find_node_by_type(workflow: Dict, node_type: str) -> Optional[str]:
"""Find a node of the specified type in the workflow"""
for node_id, node_data in workflow.items():
if node_data.get("class_type") == node_type:
return node_id
return None
def find_nodes_by_type(workflow: Dict, node_type: str) -> List[str]:
"""Find all nodes of the specified type in the workflow"""
return [node_id for node_id, node_data in workflow.items()
if node_data.get("class_type") == node_type]
def get_input_node_ids(workflow: Dict, node_id: str) -> Dict[str, Tuple[str, int]]:
"""
Get the node IDs for all inputs of the given node
Returns a dictionary mapping input names to (node_id, output_slot) tuples
"""
result = {}
if node_id not in workflow:
return result
node_data = workflow[node_id]
for input_name, input_value in node_data.get("inputs", {}).items():
# Check if this input is connected to another node
if isinstance(input_value, list) and len(input_value) == 2:
# Input is connected to another node's output
# Format: [node_id, output_slot]
ref_node_id, output_slot = input_value
result[input_name] = (str(ref_node_id), output_slot)
return result
def trace_model_path(workflow: Dict, start_node_id: str) -> List[str]:
"""
Trace the model path backward from KSampler to find all LoRA nodes
Args:
workflow: The workflow data
start_node_id: The starting node ID (usually KSampler)
Returns:
List of node IDs in the model path
"""
model_path_nodes = []
# Get the model input from the start node
if start_node_id not in workflow:
return model_path_nodes
# Track visited nodes to avoid cycles
visited = set()
# Stack for depth-first search
stack = []
# Get model input reference if available
start_node = workflow[start_node_id]
if "inputs" in start_node and "model" in start_node["inputs"] and isinstance(start_node["inputs"]["model"], list):
model_ref = start_node["inputs"]["model"]
stack.append(str(model_ref[0]))
# Perform depth-first search
while stack:
node_id = stack.pop()
# Skip if already visited
if node_id in visited:
continue
# Mark as visited
visited.add(node_id)
# Skip if node doesn't exist
if node_id not in workflow:
continue
node = workflow[node_id]
node_type = node.get("class_type", "")
# Add current node to result list if it's a LoRA node
if "Lora" in node_type:
model_path_nodes.append(node_id)
# Add all input nodes that have a "model" or "lora_stack" output to the stack
if "inputs" in node:
for input_name, input_value in node["inputs"].items():
if input_name in ["model", "lora_stack"] and isinstance(input_value, list) and len(input_value) == 2:
stack.append(str(input_value[0]))
return model_path_nodes

View File

@@ -1,7 +1,7 @@
[project]
name = "comfyui-lora-manager"
description = "LoRA Manager for ComfyUI - Access it at http://localhost:8188/loras for managing LoRA models with previews and metadata integration."
version = "0.8.1"
version = "0.8.15"
license = {file = "LICENSE"}
dependencies = [
"aiohttp",
@@ -11,7 +11,10 @@ dependencies = [
"beautifulsoup4",
"piexif",
"Pillow",
"requests"
"olefile", # for getting rid of warning message
"requests",
"toml",
"natsort"
]
[project.urls]

View File

@@ -2,13 +2,10 @@ a dynamic and dramatic digital artwork featuring a stylized anthropomorphic whit
Negative prompt:
Steps: 30, Sampler: Undefined, CFG scale: 3.5, Seed: 90300501, Size: 832x1216, Clip skip: 2, Created Date: 2025-03-05T13:51:18.1770234Z, Civitai resources: [{"type":"checkpoint","modelVersionId":691639,"modelName":"FLUX","modelVersionName":"Dev"},{"type":"lora","weight":0.4,"modelVersionId":1202162,"modelName":"Velvet\u0027s Mythic Fantasy Styles | Flux \u002B Pony \u002B illustrious","modelVersionName":"Flux Gothic Lines"},{"type":"lora","weight":0.8,"modelVersionId":1470588,"modelName":"Velvet\u0027s Mythic Fantasy Styles | Flux \u002B Pony \u002B illustrious","modelVersionName":"Flux Retro"},{"type":"lora","weight":0.75,"modelVersionId":746484,"modelName":"Elden Ring - Yoshitaka Amano","modelVersionName":"V1"},{"type":"lora","weight":0.2,"modelVersionId":914935,"modelName":"Ink-style","modelVersionName":"ink-dynamic"},{"type":"lora","weight":0.2,"modelVersionId":1189379,"modelName":"Painterly Fantasy by ChronoKnight - [FLUX \u0026 IL]","modelVersionName":"FLUX"},{"type":"lora","weight":0.2,"modelVersionId":757030,"modelName":"Mezzotint Artstyle for Flux - by Ethanar","modelVersionName":"V1"}], Civitai metadata: {}
<lora:ck-shadow-circuit-IL:0.78>,
masterpiece, best quality, good quality, very aesthetic, absurdres, newest, 8K, depth of field, focused subject,
dynamic angle, dutch angle, from below, epic half body portrait, gritty, wabi sabi, looking at viewer, woman is a geisha, parted lips,
holographic skin, holofoil glitter, faint, glowing, ethereal, neon hair, glowing hair, otherworldly glow, she is dangerous,
<lora:ck-nc-cyberpunk-IL-000011:0.4>
<lora:ck-neon-retrowave-IL:0.2>
<lora:ck-yoneyama-mai-IL-000014:0.4>
holographic skin, holofoil glitter, faint, glowing, ethereal, neon hair, glowing hair, otherworldly glow, she is dangerous
<lora:ck-shadow-circuit-IL:0.78>, <lora:ck-nc-cyberpunk-IL-000011:0.4>, <lora:ck-neon-retrowave-IL:0.2>, <lora:ck-yoneyama-mai-IL-000014:0.4>
Negative prompt: score_6, score_5, score_4, bad quality, worst quality, worst detail, sketch, censorship, furry, window, headphones,
Steps: 30, Sampler: Euler a, Schedule type: Simple, CFG scale: 7, Seed: 1405717592, Size: 832x1216, Model hash: 1ad6ca7f70, Model: waiNSFWIllustrious_v100, Denoising strength: 0.35, Hires CFG Scale: 5, Hires upscale: 1.3, Hires steps: 20, Hires upscaler: 4x-AnimeSharp, Lora hashes: "ck-shadow-circuit-IL: 88e247aa8c3d, ck-nc-cyberpunk-IL-000011: 935e6755554c, ck-neon-retrowave-IL: edafb9df7da1, ck-yoneyama-mai-IL-000014: 1b9305692a2e", Version: f2.0.1v1.10.1-1.10.1, Diffusion in Low Bits: Automatic (fp16 LoRA)

View File

@@ -1,13 +1,11 @@
{
"loras": "<lora:ck-neon-retrowave-IL-000012:0.8> <lora:aorunIllstrious:1> <lora:ck-shadow-circuit-IL-000012:0.78> <lora:MoriiMee_Gothic_Niji_Style_Illustrious_r1:0.45> <lora:ck-nc-cyberpunk-IL-000011:0.4>",
"gen_params": {
"prompt": "in the style of ck-rw, aorun, scales, makeup, bare shoulders, pointy ears, dress, claws, in the style of cksc, artist:moriimee, in the style of cknc, masterpiece, best quality, good quality, very aesthetic, absurdres, newest, 8K, depth of field, focused subject, close up, stylized, in gold and neon shades, wabi sabi, 1girl, rainbow angel wings, looking at viewer, dynamic angle, from below, from side, relaxing",
"negative_prompt": "bad quality, worst quality, worst detail, sketch ,signature, watermark, patreon logo, nsfw",
"steps": "20",
"sampler": "euler_ancestral",
"cfg_scale": "8",
"seed": "241",
"size": "832x1216",
"clip_skip": "2"
}
"prompt": "in the style of ck-rw, aorun, scales, makeup, bare shoulders, pointy ears, dress, claws, in the style of cksc, artist:moriimee, in the style of cknc, masterpiece, best quality, good quality, very aesthetic, absurdres, newest, 8K, depth of field, focused subject, close up, stylized, in gold and neon shades, wabi sabi, 1girl, rainbow angel wings, looking at viewer, dynamic angle, from below, from side, relaxing",
"negative_prompt": "bad quality, worst quality, worst detail, sketch ,signature, watermark, patreon logo, nsfw",
"steps": "20",
"sampler": "euler_ancestral",
"cfg_scale": "8",
"seed": "241",
"size": "832x1216",
"clip_skip": "2"
}

View File

@@ -1,75 +1,12 @@
{
"3": {
"inputs": {
"seed": 241,
"steps": 20,
"cfg": 8,
"sampler_name": "euler_ancestral",
"scheduler": "karras",
"denoise": 1,
"model": [
"56",
0
],
"positive": [
"6",
0
],
"negative": [
"7",
0
],
"latent_image": [
"5",
0
]
},
"class_type": "KSampler",
"_meta": {
"title": "KSampler"
}
},
"4": {
"inputs": {
"ckpt_name": "il\\waiNSFWIllustrious_v110.safetensors"
},
"class_type": "CheckpointLoaderSimple",
"_meta": {
"title": "Load Checkpoint"
}
},
"5": {
"inputs": {
"width": 832,
"height": 1216,
"batch_size": 1
},
"class_type": "EmptyLatentImage",
"_meta": {
"title": "Empty Latent Image"
}
},
"6": {
"inputs": {
"text": [
"22",
"301",
0
],
"clip": [
"56",
1
]
},
"class_type": "CLIPTextEncode",
"_meta": {
"title": "CLIP Text Encode (Prompt)"
}
},
"7": {
"inputs": {
"text": "bad quality, worst quality, worst detail, sketch ,signature, watermark, patreon logo, nsfw",
"clip": [
"56",
"299",
1
]
},
@@ -81,12 +18,12 @@
"8": {
"inputs": {
"samples": [
"3",
0
"13",
1
],
"vae": [
"4",
2
"10",
0
]
},
"class_type": "VAEDecode",
@@ -94,7 +31,230 @@
"title": "VAE Decode"
}
},
"14": {
"10": {
"inputs": {
"vae_name": "flux1\\ae.safetensors"
},
"class_type": "VAELoader",
"_meta": {
"title": "Load VAE"
}
},
"11": {
"inputs": {
"clip_name1": "t5xxl_fp8_e4m3fn.safetensors",
"clip_name2": "ViT-L-14-TEXT-detail-improved-hiT-GmP-TE-only-HF.safetensors",
"type": "flux",
"device": "default"
},
"class_type": "DualCLIPLoader",
"_meta": {
"title": "DualCLIPLoader"
}
},
"13": {
"inputs": {
"noise": [
"147",
0
],
"guider": [
"22",
0
],
"sampler": [
"16",
0
],
"sigmas": [
"17",
0
],
"latent_image": [
"48",
0
]
},
"class_type": "SamplerCustomAdvanced",
"_meta": {
"title": "SamplerCustomAdvanced"
}
},
"16": {
"inputs": {
"sampler_name": "dpmpp_2m"
},
"class_type": "KSamplerSelect",
"_meta": {
"title": "KSamplerSelect"
}
},
"17": {
"inputs": {
"scheduler": "beta",
"steps": [
"246",
0
],
"denoise": 1,
"model": [
"28",
0
]
},
"class_type": "BasicScheduler",
"_meta": {
"title": "BasicScheduler"
}
},
"22": {
"inputs": {
"model": [
"28",
0
],
"conditioning": [
"29",
0
]
},
"class_type": "BasicGuider",
"_meta": {
"title": "BasicGuider"
}
},
"28": {
"inputs": {
"max_shift": 1.1500000000000001,
"base_shift": 0.5,
"width": [
"48",
1
],
"height": [
"48",
2
],
"model": [
"299",
0
]
},
"class_type": "ModelSamplingFlux",
"_meta": {
"title": "ModelSamplingFlux"
}
},
"29": {
"inputs": {
"guidance": 3.5,
"conditioning": [
"6",
0
]
},
"class_type": "FluxGuidance",
"_meta": {
"title": "FluxGuidance"
}
},
"48": {
"inputs": {
"resolution": "832x1216 (0.68)",
"batch_size": 1,
"width_override": 0,
"height_override": 0
},
"class_type": "SDXLEmptyLatentSizePicker+",
"_meta": {
"title": "🔧 SDXL Empty Latent Size Picker"
}
},
"65": {
"inputs": {
"unet_name": "flux\\flux1-dev-fp8-e4m3fn.safetensors",
"weight_dtype": "fp8_e4m3fn_fast"
},
"class_type": "UNETLoader",
"_meta": {
"title": "Load Diffusion Model"
}
},
"147": {
"inputs": {
"noise_seed": 651532572596956
},
"class_type": "RandomNoise",
"_meta": {
"title": "RandomNoise"
}
},
"148": {
"inputs": {
"wildcard_text": "__some-prompts__",
"populated_text": "A surreal digital artwork showcases a forward-thinking inventor captivated by his intricate mechanical creation through a large magnifying glass. Viewed from an unconventional perspective, the scene reveals an eccentric assembly of gears, springs, and brass instruments within his workshop. Soft, ethereal light radiates from the invention, casting enigmatic shadows on the walls as time appears to bend around its metallic form, invoking a sense of curiosity, wonder, and exhilaration in discovery.",
"mode": "fixed",
"seed": 553084268162351,
"Select to add Wildcard": "Select the Wildcard to add to the text"
},
"class_type": "ImpactWildcardProcessor",
"_meta": {
"title": "ImpactWildcardProcessor"
}
},
"151": {
"inputs": {
"text": "A hyper-realistic close-up portrait of a young woman with shoulder-length black hair styled in edgy, futuristic layers, adorned with glowing tips. She wears mecha eyewear with a neon green visor that transitions into iridescent shades of teal and gold. The frame is sleek, with angular edges and fine mechanical detailing. Her expression is fierce and confident, with flawless skin highlighted by the neon reflections. She wears a high-tech bodysuit with integrated LED lines and metallic panels. The background depicts a hazy rendition of The Great Wave off Kanagawa by Hokusai, its powerful waves blending seamlessly with the neon tones, amplifying her intense, defiant aura."
},
"class_type": "Text Multiline",
"_meta": {
"title": "Text Multiline"
}
},
"191": {
"inputs": {
"text": "A cinematic, oil painting masterpiece captures the essence of impressionistic surrealism, inspired by Claude Monet. A mysterious woman in a flowing crimson dress stands at the edge of a tranquil lake, where lily pads shimmer under an ethereal, golden twilight. The waters surface reflects a dreamlike sky, its swirling hues of violet and sapphire melting together like liquid light. The thick, expressive brushstrokes lend depth to the scene, evoking a sense of nostalgia and quiet longing, as if the world itself is caught between reality and a fleeting dream. \nA mesmerizing oil painting masterpiece inspired by Salvador Dalí, blending surrealism with post-impressionist texture. A lone violinist plays atop a melting clock tower, his form distorted by the passage of time. The sky is a cascade of swirling, liquid oranges and deep blues, where floating staircases spiral endlessly into the horizon. The impasto technique gives depth and movement to the surreal elements, making time itself feel fluid, as if the world is dissolving into a dream. \nA stunning impressionistic oil painting evokes the spirit of Edvard Munch, capturing a solitary figure standing on a rain-soaked street, illuminated by the glow of flickering gas lamps. The swirling, chaotic strokes of deep blues and fiery reds reflect the turbulence of emotion, while the blurred reflections in the wet cobblestone suggest a merging of past and present. The faceless figure, draped in a dark overcoat, seems lost in thought, embodying the ephemeral nature of memory and time. \nA breathtaking oil painting masterpiece, inspired by Gustav Klimt, presents a celestial ballroom where faceless dancers swirl in an eternal waltz beneath a gilded, star-speckled sky. Their golden garments shimmer with intricate patterns, blending into the opulent mosaic floor that seems to stretch into infinity. The dreamlike composition, rich in warm amber and deep sapphire hues, captures an otherworldly elegance, as if the dancers are suspended in a moment that transcends time. \nA visionary oil painting inspired by Marc Chagall depicts a dreamlike cityscape where gravity ceases to exist. A couple floats above a crimson-tinted town, their forms dissolving into the swirling strokes of a vast, cerulean sky. The buildings below twist and bend in rhythmic motion, their windows glowing like tiny stars. The thick, textured brushwork conveys a sense of weightlessness and wonder, as if love itself has defied the laws of the universe. \nAn impressionistic oil painting in the style of J.M.W. Turner, depicting a ghostly ship sailing through a sea of swirling golden mist. The waves crash and dissolve into abstract, fiery strokes of orange and deep indigo, blurring the line between ocean and sky. The ship appears almost ethereal, as if drifting between worlds, lost in the ever-changing tides of memory and myth. The dynamic brushstrokes capture the relentless power of nature and the fleeting essence of time. \nA captivating oil painting masterpiece, infused with surrealist impressionism, portrays a grand library where books float midair, their pages unraveling into ribbons of light. The towering shelves twist into the heavens, vanishing into an infinite, starry void. A lone scholar, illuminated by the glow of a suspended lantern, reaches for a book that seems to pulse with life. The scene pulses with mystery, where the impasto textures bring depth to the interplay between knowledge and dreams. \nA luminous impressionistic oil painting captures the melancholic beauty of an abandoned carnival, its faded carousel horses frozen mid-gallop beneath a sky of swirling lavender and gold. The wind carries fragments of forgotten laughter through the empty fairground, where scattered ticket stubs and crumbling banners whisper tales of joy long past. The thick, textured brushstrokes blend nostalgia with an eerie dreamlike quality, as if the carnival exists only in the echoes of memory. \nA surreal oil painting in the spirit of René Magritte, featuring a towering lighthouse that emits not light, but cascading waterfalls from its peak. The swirling sky, painted in deep midnight blues, is punctuated by glowing, crescent moons that defy gravity. A lone figure stands at the waters edge, gazing up in quiet contemplation, as if caught between wonder and the unknown. The paintings rich textures and luminous colors create an enigmatic, dreamlike landscape. \nA striking impressionistic oil painting, reminiscent of Van Gogh, portrays a lone traveler on a winding cobblestone path, their silhouette bathed in the golden glow of lantern-lit cherry blossoms. The petals swirl through the night air like glowing embers, blending with the deep, rhythmic strokes of a star-filled indigo sky. The scene captures a feeling of wistful solitude, as if the traveler is walking not only through the city, but through the fleeting nature of time itself."
},
"class_type": "Text Multiline",
"_meta": {
"title": "Text Multiline"
}
},
"203": {
"inputs": {
"string1": [
"289",
0
],
"string2": [
"293",
0
],
"delimiter": ", "
},
"class_type": "JoinStrings",
"_meta": {
"title": "Join Strings"
}
},
"208": {
"inputs": {
"file_path": "",
"dictionary_name": "[filename]",
"label": "TextBatch",
"mode": "automatic",
"index": 0,
"multiline_text": [
"191",
0
]
},
"class_type": "Text Load Line From File",
"_meta": {
"title": "Text Load Line From File"
}
},
"226": {
"inputs": {
"images": [
"8",
@@ -106,60 +266,21 @@
"title": "Preview Image"
}
},
"19": {
"246": {
"inputs": {
"stop_at_clip_layer": -2,
"clip": [
"4",
1
]
"value": 25
},
"class_type": "CLIPSetLastLayer",
"class_type": "INTConstant",
"_meta": {
"title": "CLIP Set Last Layer"
"title": "Steps"
}
},
"21": {
"inputs": {
"string": "masterpiece, best quality, good quality, very aesthetic, absurdres, newest, 8K, depth of field, focused subject, close up, stylized, in gold and neon shades, wabi sabi, 1girl, rainbow angel wings, looking at viewer, dynamic angle, from below, from side, relaxing",
"strip_newlines": false
},
"class_type": "StringConstantMultiline",
"_meta": {
"title": "positive"
}
},
"22": {
"inputs": {
"string1": [
"55",
0
],
"string2": [
"21",
0
],
"delimiter": ", "
},
"class_type": "JoinStrings",
"_meta": {
"title": "Join Strings"
}
},
"55": {
"289": {
"inputs": {
"group_mode": true,
"toggle_trigger_words": [
{
"text": "in the style of ck-rw",
"active": true
},
{
"text": "in the style of cksc",
"active": true
},
{
"text": "artist:moriimee",
"text": "bo-exposure",
"active": true
},
{
@@ -173,9 +294,9 @@
"_isDummy": true
}
],
"orinalMessage": "in the style of ck-rw,, in the style of cksc,, artist:moriimee",
"orinalMessage": "bo-exposure",
"trigger_words": [
"56",
"299",
2
]
},
@@ -184,25 +305,58 @@
"title": "TriggerWord Toggle (LoraManager)"
}
},
"56": {
"293": {
"inputs": {
"text": "<lora:ck-shadow-circuit-IL-000012:0.78> <lora:MoriiMee_Gothic_Niji_Style_Illustrious_r1:0.45> <lora:ck-nc-cyberpunk-IL-000011:0.4>",
"input": 1,
"text1": [
"208",
0
],
"text2": [
"151",
0
]
},
"class_type": "easy textSwitch",
"_meta": {
"title": "Text Switch"
}
},
"297": {
"inputs": {
"text": ""
},
"class_type": "Lora Stacker (LoraManager)",
"_meta": {
"title": "Lora Stacker (LoraManager)"
}
},
"298": {
"inputs": {
"anything": [
"297",
0
]
},
"class_type": "easy showAnything",
"_meta": {
"title": "Show Any"
}
},
"299": {
"inputs": {
"text": "<lora:boFLUX Double Exposure Magic v2:0.8> <lora:FluxDFaeTasticDetails:0.65>",
"loras": [
{
"name": "ck-shadow-circuit-IL-000012",
"strength": 0.78,
"name": "boFLUX Double Exposure Magic v2",
"strength": 0.8,
"active": true
},
{
"name": "MoriiMee_Gothic_Niji_Style_Illustrious_r1",
"strength": 0.45,
"name": "FluxDFaeTasticDetails",
"strength": 0.65,
"active": true
},
{
"name": "ck-nc-cyberpunk-IL-000011",
"strength": 0.4,
"active": false
},
{
"name": "__dummy_item1__",
"strength": 0,
@@ -217,15 +371,15 @@
}
],
"model": [
"4",
"65",
0
],
"clip": [
"4",
1
"11",
0
],
"lora_stack": [
"57",
"297",
0
]
},
@@ -234,64 +388,14 @@
"title": "Lora Loader (LoraManager)"
}
},
"57": {
"301": {
"inputs": {
"text": "<lora:aorunIllstrious:1>",
"loras": [
{
"name": "aorunIllstrious",
"strength": "0.90",
"active": false
},
{
"name": "__dummy_item1__",
"strength": 0,
"active": false,
"_isDummy": true
},
{
"name": "__dummy_item2__",
"strength": 0,
"active": false,
"_isDummy": true
}
],
"lora_stack": [
"59",
0
]
"string": "A hyper-realistic close-up portrait of a young woman with shoulder-length black hair styled in edgy, futuristic layers, adorned with glowing tips. She wears mecha eyewear with a neon green visor that transitions into iridescent shades of teal and gold. The frame is sleek, with angular edges and fine mechanical detailing. Her expression is fierce and confident, with flawless skin highlighted by the neon reflections. She wears a high-tech bodysuit with integrated LED lines and metallic panels. The background depicts a hazy rendition of The Great Wave off Kanagawa by Hokusai, its powerful waves blending seamlessly with the neon tones, amplifying her intense, defiant aura.",
"strip_newlines": true
},
"class_type": "Lora Stacker (LoraManager)",
"class_type": "StringConstantMultiline",
"_meta": {
"title": "Lora Stacker (LoraManager)"
}
},
"59": {
"inputs": {
"text": "<lora:ck-neon-retrowave-IL-000012:0.8>",
"loras": [
{
"name": "ck-neon-retrowave-IL-000012",
"strength": 0.8,
"active": true
},
{
"name": "__dummy_item1__",
"strength": 0,
"active": false,
"_isDummy": true
},
{
"name": "__dummy_item2__",
"strength": 0,
"active": false,
"_isDummy": true
}
]
},
"class_type": "Lora Stacker (LoraManager)",
"_meta": {
"title": "Lora Stacker (LoraManager)"
"title": "String Constant Multiline"
}
}
}

View File

@@ -1,294 +0,0 @@
Loading workflow from D:\Workspace\ComfyUI\custom_nodes\ComfyUI-Lora-Manager\refs\prompt.json
Expected output from D:\Workspace\ComfyUI\custom_nodes\ComfyUI-Lora-Manager\refs\output.json
Expected output:
{
"loras": "<lora:ck-neon-retrowave-IL-000012:0.8> <lora:aorunIllstrious:1> <lora:ck-shadow-circuit-IL-000012:0.78> <lora:MoriiMee_Gothic_Niji_Style_Illustrious_r1:0.45> <lora:ck-nc-cyberpunk-IL-000011:0.4>",
"gen_params": {
"prompt": "in the style of ck-rw, aorun, scales, makeup, bare shoulders, pointy ears, dress, claws, in the style of cksc, artist:moriimee, in the style of cknc, masterpiece, best quality, good quality, very aesthetic, absurdres, newest, 8K, depth of field, focused subject, close up, stylized, in gold and neon shades, wabi sabi, 1girl, rainbow angel wings, looking at viewer, dynamic angle, from below, from side, relaxing",
"negative_prompt": "bad quality, worst quality, worst detail, sketch ,signature, watermark, patreon logo, nsfw",
"steps": "20",
"sampler": "euler_ancestral",
"cfg_scale": "8",
"seed": "241",
"size": "832x1216",
"clip_skip": "2"
}
}
Sampler node:
{
"inputs": {
"seed": 241,
"steps": 20,
"cfg": 8,
"sampler_name": "euler_ancestral",
"scheduler": "karras",
"denoise": 1,
"model": [
"56",
0
],
"positive": [
"6",
0
],
"negative": [
"7",
0
],
"latent_image": [
"5",
0
]
},
"class_type": "KSampler",
"_meta": {
"title": "KSampler"
}
}
Extracted parameters:
seed: 241
steps: 20
cfg_scale: 8
Positive node (6):
{
"inputs": {
"text": [
"22",
0
],
"clip": [
"56",
1
]
},
"class_type": "CLIPTextEncode",
"_meta": {
"title": "CLIP Text Encode (Prompt)"
}
}
Text node (22):
{
"inputs": {
"string1": [
"55",
0
],
"string2": [
"21",
0
],
"delimiter": ", "
},
"class_type": "JoinStrings",
"_meta": {
"title": "Join Strings"
}
}
String1 node (55):
{
"inputs": {
"group_mode": true,
"toggle_trigger_words": [
{
"text": "in the style of ck-rw",
"active": true
},
{
"text": "aorun, scales, makeup, bare shoulders, pointy ears",
"active": true
},
{
"text": "dress",
"active": true
},
{
"text": "claws",
"active": true
},
{
"text": "in the style of cksc",
"active": true
},
{
"text": "artist:moriimee",
"active": true
},
{
"text": "in the style of cknc",
"active": true
},
{
"text": "__dummy_item__",
"active": false,
"_isDummy": true
},
{
"text": "__dummy_item__",
"active": false,
"_isDummy": true
}
],
"orinalMessage": "in the style of ck-rw,, aorun, scales, makeup, bare shoulders, pointy ears,, dress,, claws,, in the style of cksc,, artist:moriimee,, in the style of cknc",
"trigger_words": [
"56",
2
]
},
"class_type": "TriggerWord Toggle (LoraManager)",
"_meta": {
"title": "TriggerWord Toggle (LoraManager)"
}
}
String2 node (21):
{
"inputs": {
"string": "masterpiece, best quality, good quality, very aesthetic, absurdres, newest, 8K, depth of field, focused subject, close up, stylized, in gold and neon shades, wabi sabi, 1girl, rainbow angel wings, looking at viewer, dynamic angle, from below, from side, relaxing",
"strip_newlines": false
},
"class_type": "StringConstantMultiline",
"_meta": {
"title": "positive"
}
}
Negative node (7):
{
"inputs": {
"text": "bad quality, worst quality, worst detail, sketch ,signature, watermark, patreon logo, nsfw",
"clip": [
"56",
1
]
},
"class_type": "CLIPTextEncode",
"_meta": {
"title": "CLIP Text Encode (Prompt)"
}
}
LoRA nodes (3):
LoRA node 56:
{
"inputs": {
"text": "<lora:ck-shadow-circuit-IL-000012:0.78> <lora:MoriiMee_Gothic_Niji_Style_Illustrious_r1:0.45> <lora:ck-nc-cyberpunk-IL-000011:0.4>",
"loras": [
{
"name": "ck-shadow-circuit-IL-000012",
"strength": 0.78,
"active": true
},
{
"name": "MoriiMee_Gothic_Niji_Style_Illustrious_r1",
"strength": 0.45,
"active": true
},
{
"name": "ck-nc-cyberpunk-IL-000011",
"strength": 0.4,
"active": true
},
{
"name": "__dummy_item1__",
"strength": 0,
"active": false,
"_isDummy": true
},
{
"name": "__dummy_item2__",
"strength": 0,
"active": false,
"_isDummy": true
}
],
"model": [
"4",
0
],
"clip": [
"4",
1
],
"lora_stack": [
"57",
0
]
},
"class_type": "Lora Loader (LoraManager)",
"_meta": {
"title": "Lora Loader (LoraManager)"
}
}
LoRA node 57:
{
"inputs": {
"text": "<lora:aorunIllstrious:1>",
"loras": [
{
"name": "aorunIllstrious",
"strength": "0.90",
"active": true
},
{
"name": "__dummy_item1__",
"strength": 0,
"active": false,
"_isDummy": true
},
{
"name": "__dummy_item2__",
"strength": 0,
"active": false,
"_isDummy": true
}
],
"lora_stack": [
"59",
0
]
},
"class_type": "Lora Stacker (LoraManager)",
"_meta": {
"title": "Lora Stacker (LoraManager)"
}
}
LoRA node 59:
{
"inputs": {
"text": "<lora:ck-neon-retrowave-IL-000012:0.8>",
"loras": [
{
"name": "ck-neon-retrowave-IL-000012",
"strength": 0.8,
"active": true
},
{
"name": "__dummy_item1__",
"strength": 0,
"active": false,
"_isDummy": true
},
{
"name": "__dummy_item2__",
"strength": 0,
"active": false,
"_isDummy": true
}
]
},
"class_type": "Lora Stacker (LoraManager)",
"_meta": {
"title": "Lora Stacker (LoraManager)"
}
}
Test completed.

View File

@@ -5,4 +5,9 @@ watchdog
beautifulsoup4
piexif
Pillow
requests
olefile
requests
toml
numpy
torch
natsort

14
settings.json.example Normal file
View File

@@ -0,0 +1,14 @@
{
"civitai_api_key": "your_civitai_api_key_here",
"show_only_sfw": false,
"folder_paths": {
"loras": [
"C:/path/to/your/loras_folder",
"C:/path/to/another/loras_folder"
],
"checkpoints": [
"C:/path/to/your/checkpoints_folder",
"C:/path/to/another/checkpoints_folder"
]
}
}

View File

@@ -1,25 +0,0 @@
import json
from py.workflow.parser import WorkflowParser
# Load workflow data
with open('refs/prompt.json', 'r') as f:
workflow_data = json.load(f)
# Parse workflow
parser = WorkflowParser()
try:
# Parse the workflow
result = parser.parse_workflow(workflow_data)
print("Parsing successful!")
# Print each component separately
print("\nGeneration Parameters:")
for k, v in result.get("gen_params", {}).items():
print(f" {k}: {v}")
print("\nLoRAs:")
print(result.get("loras", ""))
except Exception as e:
print(f"Error parsing workflow: {e}")
import traceback
traceback.print_exc()

358
standalone.py Normal file
View File

@@ -0,0 +1,358 @@
import os
import sys
import json
# Create mock folder_paths module BEFORE any other imports
class MockFolderPaths:
@staticmethod
def get_folder_paths(folder_name):
# Load paths from settings.json
settings_path = os.path.join(os.path.dirname(__file__), 'settings.json')
try:
if os.path.exists(settings_path):
with open(settings_path, 'r', encoding='utf-8') as f:
settings = json.load(f)
# For diffusion_models, combine unet and diffusers paths
if folder_name == "diffusion_models":
paths = []
if 'folder_paths' in settings:
if 'unet' in settings['folder_paths']:
paths.extend(settings['folder_paths']['unet'])
if 'diffusers' in settings['folder_paths']:
paths.extend(settings['folder_paths']['diffusers'])
# Filter out paths that don't exist
valid_paths = [p for p in paths if os.path.exists(p)]
if valid_paths:
return valid_paths
else:
print(f"Warning: No valid paths found for {folder_name}")
# For other folder names, return their paths directly
elif 'folder_paths' in settings and folder_name in settings['folder_paths']:
paths = settings['folder_paths'][folder_name]
valid_paths = [p for p in paths if os.path.exists(p)]
if valid_paths:
return valid_paths
else:
print(f"Warning: No valid paths found for {folder_name}")
except Exception as e:
print(f"Error loading folder paths from settings: {e}")
# Fallback to empty list if no paths found
return []
@staticmethod
def get_temp_directory():
return os.path.join(os.path.dirname(__file__), 'temp')
@staticmethod
def set_temp_directory(path):
os.makedirs(path, exist_ok=True)
return path
# Create mock server module with PromptServer
class MockPromptServer:
def __init__(self):
self.app = None
def send_sync(self, *args, **kwargs):
pass
# Create mock metadata_collector module
class MockMetadataCollector:
def init(self):
pass
def get_metadata(self, prompt_id=None):
return {}
# Initialize basic mocks before any imports
sys.modules['folder_paths'] = MockFolderPaths()
sys.modules['server'] = type('server', (), {'PromptServer': MockPromptServer()})
sys.modules['py.metadata_collector'] = MockMetadataCollector()
# Now we can safely import modules that depend on folder_paths and server
import argparse
import asyncio
import logging
from aiohttp import web
# Setup logging
logging.basicConfig(level=logging.INFO,
format='%(asctime)s - %(name)s - %(levelname)s - %(message)s')
logger = logging.getLogger("lora-manager-standalone")
# Configure aiohttp access logger to be less verbose
logging.getLogger('aiohttp.access').setLevel(logging.WARNING)
# Now we can import the global config from our local modules
from py.config import config
class StandaloneServer:
"""Server implementation for standalone mode"""
def __init__(self):
self.app = web.Application(logger=logger)
self.instance = self # Make it compatible with PromptServer.instance pattern
# Ensure the app's access logger is configured to reduce verbosity
self.app._subapps = [] # Ensure this exists to avoid AttributeError
# Configure access logging for the app
self.app.on_startup.append(self._configure_access_logger)
async def _configure_access_logger(self, app):
"""Configure access logger to reduce verbosity"""
logging.getLogger('aiohttp.access').setLevel(logging.WARNING)
# If using aiohttp>=3.8.0, configure access logger through app directly
if hasattr(app, 'access_logger'):
app.access_logger.setLevel(logging.WARNING)
async def setup(self):
"""Set up the standalone server"""
# Create placeholders for compatibility with ComfyUI's implementation
self.last_prompt_id = None
self.last_node_id = None
self.client_id = None
# Set up routes
self.setup_routes()
# Add startup and shutdown handlers
self.app.on_startup.append(self.on_startup)
self.app.on_shutdown.append(self.on_shutdown)
def setup_routes(self):
"""Set up basic routes"""
# Add a simple status endpoint
self.app.router.add_get('/', self.handle_status)
# Add static route for example images if the path exists in settings
settings_path = os.path.join(os.path.dirname(__file__), 'settings.json')
if os.path.exists(settings_path):
with open(settings_path, 'r', encoding='utf-8') as f:
settings = json.load(f)
example_images_path = settings.get('example_images_path')
logger.info(f"Example images path: {example_images_path}")
if example_images_path and os.path.exists(example_images_path):
self.app.router.add_static('/example_images_static', example_images_path)
logger.info(f"Added static route for example images: /example_images_static -> {example_images_path}")
async def handle_status(self, request):
"""Handle status request by redirecting to loras page"""
# Redirect to loras page instead of showing status
raise web.HTTPFound('/loras')
# Original JSON response (commented out)
# return web.json_response({
# "status": "running",
# "mode": "standalone",
# "loras_roots": config.loras_roots,
# "checkpoints_roots": config.checkpoints_roots
# })
async def on_startup(self, app):
"""Startup handler"""
logger.info("LoRA Manager standalone server starting...")
async def on_shutdown(self, app):
"""Shutdown handler"""
logger.info("LoRA Manager standalone server shutting down...")
def send_sync(self, event_type, data, sid=None):
"""Stub for compatibility with PromptServer"""
# In standalone mode, we don't have the same websocket system
pass
async def start(self, host='127.0.0.1', port=8188):
"""Start the server"""
runner = web.AppRunner(self.app)
await runner.setup()
site = web.TCPSite(runner, host, port)
await site.start()
# Log the server address with a clickable localhost URL regardless of the actual binding
logger.info(f"Server started at http://127.0.0.1:{port}")
# Keep the server running
while True:
await asyncio.sleep(3600) # Sleep for a long time
async def publish_loop(self):
"""Stub for compatibility with PromptServer"""
# This method exists in ComfyUI's server but we don't need it
pass
# After all mocks are in place, import LoraManager
from py.lora_manager import LoraManager
class StandaloneLoraManager(LoraManager):
"""Extended LoraManager for standalone mode"""
@classmethod
def add_routes(cls, server_instance):
"""Initialize and register all routes for standalone mode"""
app = server_instance.app
# Store app in a global-like location for compatibility
sys.modules['server'].PromptServer.instance = server_instance
# Configure aiohttp access logger to be less verbose
logging.getLogger('aiohttp.access').setLevel(logging.WARNING)
added_targets = set() # Track already added target paths
# Add static routes for each lora root
for idx, root in enumerate(config.loras_roots, start=1):
if not os.path.exists(root):
logger.warning(f"Lora root path does not exist: {root}")
continue
preview_path = f'/loras_static/root{idx}/preview'
# Check if this root is a link path in the mappings
real_root = root
for target, link in config._path_mappings.items():
if os.path.normpath(link) == os.path.normpath(root):
# If so, route should point to the target (real path)
real_root = target
break
# Normalize and standardize path display for consistency
display_root = real_root.replace('\\', '/')
# Add static route for original path - use the normalized path
app.router.add_static(preview_path, real_root)
logger.info(f"Added static route {preview_path} -> {display_root}")
# Record route mapping with normalized path
config.add_route_mapping(real_root, preview_path)
added_targets.add(os.path.normpath(real_root))
# Add static routes for each checkpoint root
for idx, root in enumerate(config.checkpoints_roots, start=1):
if not os.path.exists(root):
logger.warning(f"Checkpoint root path does not exist: {root}")
continue
preview_path = f'/checkpoints_static/root{idx}/preview'
# Check if this root is a link path in the mappings
real_root = root
for target, link in config._path_mappings.items():
if os.path.normpath(link) == os.path.normpath(root):
# If so, route should point to the target (real path)
real_root = target
break
# Normalize and standardize path display for consistency
display_root = real_root.replace('\\', '/')
# Add static route for original path
app.router.add_static(preview_path, real_root)
logger.info(f"Added static route {preview_path} -> {display_root}")
# Record route mapping
config.add_route_mapping(real_root, preview_path)
added_targets.add(os.path.normpath(real_root))
# Add static routes for symlink target paths that aren't already covered
link_idx = {
'lora': 1,
'checkpoint': 1
}
for target_path, link_path in config._path_mappings.items():
norm_target = os.path.normpath(target_path)
if norm_target not in added_targets:
# Determine if this is a checkpoint or lora link based on path
is_checkpoint = any(os.path.normpath(cp_root) in os.path.normpath(link_path) for cp_root in config.checkpoints_roots)
is_checkpoint = is_checkpoint or any(os.path.normpath(cp_root) in norm_target for cp_root in config.checkpoints_roots)
if is_checkpoint:
route_path = f'/checkpoints_static/link_{link_idx["checkpoint"]}/preview'
link_idx["checkpoint"] += 1
else:
route_path = f'/loras_static/link_{link_idx["lora"]}/preview'
link_idx["lora"] += 1
# Display path with forward slashes for consistency
display_target = target_path.replace('\\', '/')
app.router.add_static(route_path, target_path)
logger.info(f"Added static route for link target {route_path} -> {display_target}")
config.add_route_mapping(target_path, route_path)
added_targets.add(norm_target)
# Add static route for plugin assets
app.router.add_static('/loras_static', config.static_path)
# Setup feature routes
from py.routes.lora_routes import LoraRoutes
from py.routes.api_routes import ApiRoutes
from py.routes.recipe_routes import RecipeRoutes
from py.routes.checkpoints_routes import CheckpointsRoutes
from py.routes.update_routes import UpdateRoutes
from py.routes.misc_routes import MiscRoutes
lora_routes = LoraRoutes()
checkpoints_routes = CheckpointsRoutes()
# Initialize routes
lora_routes.setup_routes(app)
checkpoints_routes.setup_routes(app)
ApiRoutes.setup_routes(app)
RecipeRoutes.setup_routes(app)
UpdateRoutes.setup_routes(app)
MiscRoutes.setup_routes(app)
# Schedule service initialization
app.on_startup.append(lambda app: cls._initialize_services())
# Add cleanup
app.on_shutdown.append(cls._cleanup)
app.on_shutdown.append(ApiRoutes.cleanup)
def parse_args():
"""Parse command line arguments"""
parser = argparse.ArgumentParser(description="LoRA Manager Standalone Server")
parser.add_argument("--host", type=str, default="0.0.0.0",
help="Host address to bind the server to (default: 0.0.0.0)")
parser.add_argument("--port", type=int, default=8188,
help="Port to bind the server to (default: 8188, access via http://localhost:8188/loras)")
# parser.add_argument("--loras", type=str, nargs="+",
# help="Additional paths to LoRA model directories (optional if settings.json has paths)")
# parser.add_argument("--checkpoints", type=str, nargs="+",
# help="Additional paths to checkpoint model directories (optional if settings.json has paths)")
parser.add_argument("--log-level", type=str, default="INFO",
choices=["DEBUG", "INFO", "WARNING", "ERROR", "CRITICAL"],
help="Logging level")
return parser.parse_args()
async def main():
"""Main entry point for standalone mode"""
args = parse_args()
# Set log level
logging.getLogger().setLevel(getattr(logging, args.log_level))
# Explicitly configure aiohttp access logger regardless of selected log level
logging.getLogger('aiohttp.access').setLevel(logging.WARNING)
# Create the server instance
server = StandaloneServer()
# Initialize routes via the standalone lora manager
StandaloneLoraManager.add_routes(server)
# Set up and start the server
await server.setup()
await server.start(host=args.host, port=args.port)
if __name__ == "__main__":
try:
# Run the main function
asyncio.run(main())
except KeyboardInterrupt:
logger.info("Server stopped by user")

View File

@@ -38,7 +38,7 @@ html, body {
--lora-border: oklch(90% 0.02 256 / 0.15);
--lora-text: oklch(95% 0.02 256);
--lora-error: oklch(75% 0.32 29);
--lora-warning: oklch(75% 0.25 80); /* Add warning color for deleted LoRAs */
--lora-warning: oklch(75% 0.25 80); /* Modified to be used with oklch() */
/* Spacing Scale */
--space-1: calc(8px * 1);
@@ -59,6 +59,16 @@ html, body {
--scrollbar-width: 8px; /* 添加滚动条宽度变量 */
}
html[data-theme="dark"] {
background-color: #1a1a1a !important;
color-scheme: dark;
}
html[data-theme="light"] {
background-color: #ffffff !important;
color-scheme: light;
}
[data-theme="dark"] {
--bg-color: #1a1a1a;
--text-color: #e0e0e0;
@@ -69,7 +79,7 @@ html, body {
--lora-surface: oklch(25% 0.02 256 / 0.98);
--lora-border: oklch(90% 0.02 256 / 0.15);
--lora-text: oklch(98% 0.02 256);
--lora-warning: oklch(75% 0.25 80); /* Add warning color for dark theme too */
--lora-warning: oklch(75% 0.25 80); /* Modified to be used with oklch() */
}
body {

View File

@@ -0,0 +1,165 @@
/* Alphabet Bar Component */
.alphabet-bar-container {
position: fixed;
left: 0;
top: 50%;
transform: translateY(-50%);
z-index: 100;
display: flex;
transition: transform 0.3s ease;
}
.alphabet-bar-container.collapsed {
transform: translateY(-50%) translateX(-90%);
}
/* New visual indicator for when a letter is active and bar is collapsed */
.alphabet-bar-container.collapsed .toggle-alphabet-bar.has-active-letter {
border-color: var(--lora-accent);
background: oklch(var(--lora-accent) / 0.15);
}
.alphabet-bar-container.collapsed .toggle-alphabet-bar.has-active-letter::after {
content: '';
position: absolute;
top: 7px;
right: 7px;
width: 8px;
height: 8px;
background-color: var(--lora-accent);
border-radius: 50%;
animation: pulse-active 2s infinite;
}
@keyframes pulse-active {
0% { transform: scale(0.8); opacity: 0.7; }
50% { transform: scale(1.1); opacity: 1; }
100% { transform: scale(0.8); opacity: 0.7; }
}
.alphabet-bar {
background: var(--card-bg);
border: 1px solid var(--border-color);
border-radius: 0 var(--border-radius-xs) var(--border-radius-xs) 0;
padding: 8px 4px;
display: flex;
flex-direction: column;
gap: 6px;
align-items: center;
box-shadow: 2px 0 8px rgba(0, 0, 0, 0.1);
max-height: 80vh;
overflow-y: auto;
scrollbar-width: thin;
}
.alphabet-bar::-webkit-scrollbar {
width: 4px;
}
.alphabet-bar::-webkit-scrollbar-thumb {
background: var(--border-color);
border-radius: 4px;
}
.toggle-alphabet-bar {
background: var(--card-bg);
border: 1px solid var(--border-color);
border-left: none;
border-radius: 0 var(--border-radius-xs) var(--border-radius-xs) 0;
padding: 8px 4px;
cursor: pointer;
display: flex;
align-items: center;
justify-content: center;
color: var(--text-color);
width: 20px;
height: 40px;
align-self: center;
box-shadow: 2px 0 8px rgba(0, 0, 0, 0.1);
}
.toggle-alphabet-bar:hover {
background: var(--bg-hover);
}
.toggle-alphabet-bar i {
transition: transform 0.3s ease;
}
.alphabet-bar-container.collapsed .toggle-alphabet-bar i {
transform: rotate(180deg);
}
.letter-chip {
padding: 4px 2px;
border-radius: var(--border-radius-xs);
background: var(--bg-color);
color: var(--text-color);
cursor: pointer;
min-width: 24px;
text-align: center;
font-size: 0.85em;
transition: all 0.2s ease;
border: 1px solid var(--border-color);
}
.letter-chip:hover {
background: var(--lora-accent);
color: white;
transform: scale(1.1);
box-shadow: 0 2px 4px rgba(0, 0, 0, 0.1);
}
.letter-chip.active {
background: var(--lora-accent);
color: white;
border-color: var(--lora-accent);
}
.letter-chip.disabled {
opacity: 0.5;
pointer-events: none;
cursor: default;
}
/* Hide the count by default, only show in tooltip */
.letter-chip .count {
display: none;
}
.alphabet-bar-title {
font-size: 0.75em;
color: var(--text-color);
opacity: 0.7;
margin-bottom: 6px;
writing-mode: vertical-lr;
transform: rotate(180deg);
white-space: nowrap;
}
@media (max-width: 768px) {
.alphabet-bar-container {
transform: translateY(-50%) translateX(-90%);
}
.alphabet-bar-container.active {
transform: translateY(-50%) translateX(0);
}
.letter-chip {
padding: 3px 1px;
min-width: 20px;
font-size: 0.75em;
}
}
/* Keyframe animations for the active letter */
@keyframes pulse {
0% { transform: scale(1); }
50% { transform: scale(1.1); }
100% { transform: scale(1); }
}
.letter-chip.active {
animation: pulse 1s ease-in-out 1;
}

View File

@@ -1,12 +1,13 @@
/* 卡片网格布局 */
.card-grid {
display: grid;
grid-template-columns: repeat(auto-fill, minmax(260px, 1fr)); /* Adjusted from 320px */
gap: 12px; /* Reduced from var(--space-2) for tighter horizontal spacing */
grid-template-columns: repeat(auto-fill, minmax(260px, 1fr)); /* Base size */
gap: 12px; /* Consistent gap for both row and column spacing */
row-gap: 20px; /* Increase vertical spacing between rows */
margin-top: var(--space-2);
padding-top: 4px; /* 添加顶部内边距,为悬停动画提供空间 */
padding-bottom: 4px; /* 添加底部内边距,为悬停动画提供空间 */
max-width: 1400px; /* Container width control */
max-width: 1400px; /* Base container width */
margin-left: auto;
margin-right: auto;
}
@@ -17,12 +18,14 @@
border-radius: var(--border-radius-base);
backdrop-filter: blur(16px);
transition: transform 160ms ease-out;
aspect-ratio: 896/1152;
max-width: 260px; /* Adjusted from 320px to fit 5 cards */
aspect-ratio: 896/1152; /* Preserve aspect ratio */
max-width: 260px; /* Base size */
width: 100%;
margin: 0 auto;
cursor: pointer; /* Added from recipe-card */
display: flex; /* Added from recipe-card */
flex-direction: column; /* Added from recipe-card */
cursor: pointer;
display: flex;
flex-direction: column;
overflow: hidden;
}
.lora-card:hover {
@@ -35,6 +38,30 @@
outline-offset: 2px;
}
/* Responsive adjustments for 1440p screens (2K) */
@media (min-width: 2000px) {
.card-grid {
max-width: 1800px; /* Increased for 2K screens */
grid-template-columns: repeat(auto-fill, minmax(270px, 1fr));
}
.lora-card {
max-width: 270px;
}
}
/* Responsive adjustments for 4K screens */
@media (min-width: 3000px) {
.card-grid {
max-width: 2400px; /* Increased for 4K screens */
grid-template-columns: repeat(auto-fill, minmax(280px, 1fr));
}
.lora-card {
max-width: 280px;
}
}
/* Responsive adjustments */
@media (max-width: 1400px) {
.card-grid {
@@ -50,9 +77,31 @@
.card-preview {
position: relative;
width: 100%;
height: 100%;
height: 100%; /* This should work with aspect-ratio on parent */
border-radius: var(--border-radius-base);
overflow: hidden;
flex-shrink: 0; /* Prevent shrinking */
min-height: 0; /* Fix for potential flexbox sizing issue in Firefox */
}
/* Smaller text for compact mode */
.compact-mode .model-name {
font-size: 0.9em;
max-height: 2.4em;
}
.compact-mode .base-model-label {
font-size: 0.8em;
max-width: 110px;
}
.compact-mode .card-actions i {
font-size: 0.95em;
padding: 3px;
}
.compact-mode .model-info {
padding-bottom: 2px;
}
.card-preview img,
@@ -189,12 +238,43 @@
margin-left: var(--space-1);
cursor: pointer;
color: white;
transition: opacity 0.2s;
font-size: 0.9em;
transition: opacity 0.2s, transform 0.15s ease;
font-size: 1.0em; /* Increased from 0.9em for better visibility */
width: 16px; /* Fixed width for consistent spacing */
height: 16px; /* Fixed height for larger touch target */
display: flex;
align-items: center;
justify-content: center;
border-radius: 50%;
padding: 4px; /* Add padding to increase clickable area */
box-sizing: content-box; /* Ensure padding adds to dimensions */
position: relative; /* For proper positioning */
margin: 0; /* Reset margin */
}
.card-actions i::before {
position: absolute; /* Position the icon glyph */
top: 50%;
left: 50%;
transform: translate(-50%, -50%); /* Center the icon */
}
.card-actions {
display: flex;
gap: var(--space-1); /* Use gap instead of margin for spacing between icons */
align-items: center;
}
.card-actions i:hover {
opacity: 0.8;
opacity: 0.9;
transform: scale(1.1);
background-color: rgba(255, 255, 255, 0.1);
}
/* Style for active favorites */
.favorite-active {
color: #ffc107 !important; /* Gold color for favorites */
text-shadow: 0 0 5px rgba(255, 193, 7, 0.5);
}
/* 响应式设计 */
@@ -279,6 +359,25 @@
font-size: 0.85em;
}
/* Prevent text selection on cards and interactive elements */
.lora-card,
.lora-card *,
.card-actions,
.card-actions i,
.toggle-blur-btn,
.show-content-btn,
.card-preview img,
.card-preview video,
.card-footer,
.card-header,
.model-name,
.base-model-label {
-webkit-user-select: none;
-moz-user-select: none;
-ms-user-select: none;
user-select: none;
}
/* Recipe specific elements - migrated from recipe-card.css */
.recipe-indicator {
position: absolute;
@@ -328,4 +427,42 @@
padding: 2rem;
background: var(--lora-surface-alt);
border-radius: var(--border-radius-base);
}
/* Virtual scrolling specific styles - updated */
.virtual-scroll-item {
position: absolute;
box-sizing: border-box;
transition: transform 160ms ease-out;
margin: 0; /* Remove margins, positioning is handled by VirtualScroller */
width: 100%; /* Allow width to be set by the VirtualScroller */
}
.virtual-scroll-item:hover {
transform: translateY(-2px); /* Keep hover effect */
z-index: 1; /* Ensure hovered items appear above others */
}
/* When using virtual scroll, adjust container */
.card-grid.virtual-scroll {
display: block;
position: relative;
margin: 0 auto;
padding: 6px 0; /* Add top/bottom padding equivalent to card padding */
height: auto;
width: 100%;
max-width: 1400px; /* Keep the max-width from original grid */
}
/* For larger screens, allow more space for the cards */
@media (min-width: 2000px) {
.card-grid.virtual-scroll {
max-width: 1800px;
}
}
@media (min-width: 3000px) {
.card-grid.virtual-scroll {
max-width: 2400px;
}
}

View File

@@ -190,14 +190,6 @@
border-color: var(--lora-border);
}
/* Add disabled button styles */
.primary-btn.disabled {
background-color: var(--border-color);
color: var(--text-color);
opacity: 0.7;
cursor: not-allowed;
}
/* Enhance the local badge to make it more noticeable */
.version-item.exists-locally {
background: oklch(var(--lora-accent) / 0.05);

View File

@@ -0,0 +1,272 @@
/* Duplicates Management Styles */
/* Duplicates banner */
.duplicates-banner {
position: relative; /* Changed from sticky to relative */
width: 100%;
background-color: var(--card-bg);
color: var(--text-color);
border-bottom: 1px solid var(--border-color);
z-index: var(--z-overlay);
padding: 12px 0; /* Removed horizontal padding */
box-shadow: 0 2px 8px rgba(0, 0, 0, 0.15);
transition: all 0.3s ease;
margin-bottom: 20px; /* Add margin to create space below the banner */
}
.duplicates-banner .banner-content {
max-width: 1400px; /* Match the container max-width */
margin: 0 auto;
display: flex;
align-items: center;
gap: 12px;
padding: 0 16px; /* Move horizontal padding to the content */
}
/* Responsive container for larger screens - match container in layout.css */
@media (min-width: 2000px) {
.duplicates-banner .banner-content {
max-width: 1800px;
}
}
@media (min-width: 3000px) {
.duplicates-banner .banner-content {
max-width: 2400px;
}
}
.duplicates-banner i.fa-exclamation-triangle {
font-size: 18px;
color: oklch(var(--lora-warning));
}
.duplicates-banner .banner-actions {
margin-left: auto;
display: flex;
gap: 8px;
align-items: center;
}
.duplicates-banner button {
min-width: 100px;
display: flex;
align-items: center;
justify-content: center;
gap: 4px;
border-radius: var(--border-radius-xs);
padding: 4px 10px;
border: 1px solid var(--border-color);
background: var(--card-bg);
color: var(--text-color);
font-size: 0.85em;
transition: all 0.2s ease;
cursor: pointer;
box-shadow: 0 1px 2px rgba(0, 0, 0, 0.05);
}
.duplicates-banner button:hover {
border-color: var(--lora-accent);
background: var(--bg-color);
transform: translateY(-1px);
box-shadow: 0 3px 5px rgba(0, 0, 0, 0.08);
}
.duplicates-banner button.btn-exit {
min-width: unset;
width: 28px;
height: 28px;
padding: 0;
display: flex;
align-items: center;
justify-content: center;
border-radius: 50%;
}
.duplicates-banner button.disabled {
opacity: 0.5;
cursor: not-allowed;
}
/* Duplicate groups */
.duplicate-group {
position: relative;
border: 2px solid oklch(var(--lora-warning));
border-radius: var(--border-radius-base);
padding: 16px;
margin-bottom: 24px;
background: var(--card-bg);
}
.duplicate-group-header {
background-color: var(--bg-color);
color: var(--text-color);
border: 1px solid var(--border-color);
padding: 8px 16px;
border-radius: var(--border-radius-xs);
margin-bottom: 16px;
display: flex;
justify-content: space-between;
align-items: center;
}
.duplicate-group-header span:last-child {
display: flex;
gap: 8px;
align-items: center;
}
.duplicate-group-header button {
min-width: 80px;
display: flex;
align-items: center;
justify-content: center;
gap: 4px;
border-radius: var(--border-radius-xs);
padding: 4px 8px;
border: 1px solid var(--border-color);
background: var(--card-bg);
color: var(--text-color);
font-size: 0.85em;
transition: all 0.2s ease;
cursor: pointer;
box-shadow: 0 1px 2px rgba(0, 0, 0, 0.05);
margin-left: 8px;
}
.duplicate-group-header button:hover {
border-color: var(--lora-accent);
background: var(--bg-color);
transform: translateY(-1px);
box-shadow: 0 3px 5px rgba(0, 0, 0, 0.08);
}
.card-group-container {
display: flex;
flex-wrap: wrap;
gap: 16px;
justify-content: flex-start;
align-items: flex-start;
}
/* Make cards in duplicate groups have consistent width */
.card-group-container .lora-card {
flex: 0 0 auto;
width: 240px;
margin: 0;
cursor: pointer; /* Indicate the card is clickable */
}
/* Ensure the grid layout is only applied to the main recipe grid, not duplicate groups */
.duplicate-mode .card-grid {
display: block;
}
/* Scrollable container for large duplicate groups */
.card-group-container.scrollable {
max-height: 450px;
overflow-y: auto;
padding-right: 8px;
}
/* Add a toggle button to expand/collapse large duplicate groups */
.group-toggle-btn {
position: absolute;
right: 16px;
bottom: -12px;
background: var(--card-bg);
color: var(--text-color);
border: 1px solid var(--border-color);
border-radius: 50%;
width: 24px;
height: 24px;
display: flex;
align-items: center;
justify-content: center;
cursor: pointer;
z-index: 1;
box-shadow: 0 1px 3px rgba(0, 0, 0, 0.1);
transition: all 0.2s ease;
}
.group-toggle-btn:hover {
border-color: var(--lora-accent);
transform: translateY(-1px);
box-shadow: 0 3px 5px rgba(0, 0, 0, 0.08);
}
/* Duplicate card styling */
.lora-card.duplicate {
position: relative;
transition: all 0.2s ease;
}
.lora-card.duplicate:hover {
border-color: var(--lora-accent);
}
.lora-card.duplicate.latest {
border-style: solid;
border-color: oklch(var(--lora-warning));
}
.lora-card.duplicate-selected {
border: 2px solid oklch(var(--lora-accent));
box-shadow: 0 0 8px rgba(0, 0, 0, 0.2);
}
.lora-card .selector-checkbox {
position: absolute;
top: 10px;
right: 10px;
z-index: 10;
width: 20px;
height: 20px;
cursor: pointer;
}
/* Latest indicator */
.lora-card.duplicate.latest::after {
content: "Latest";
position: absolute;
top: 10px;
left: 10px;
background: oklch(var(--lora-accent));
color: white;
font-size: 12px;
padding: 2px 6px;
border-radius: var(--border-radius-xs);
z-index: 5;
}
/* Responsive adjustments */
@media (max-width: 768px) {
.duplicates-banner .banner-content {
flex-direction: column;
align-items: flex-start;
gap: 8px;
}
.duplicates-banner .banner-actions {
width: 100%;
margin-left: 0;
justify-content: space-between;
}
.duplicate-group-header {
flex-direction: column;
gap: 8px;
align-items: flex-start;
}
.duplicate-group-header span:last-child {
display: flex;
gap: 8px;
width: 100%;
}
.duplicate-group-header button {
margin-left: 0;
flex: 1;
}
}

View File

@@ -0,0 +1,84 @@
/* Filter indicator styles */
.control-group .filter-active {
display: flex;
align-items: center;
gap: 6px;
background: var(--lora-accent);
color: white;
border-radius: var(--border-radius-xs);
padding: 4px 10px;
transition: all 0.2s ease;
border: 1px solid var(--lora-accent);
cursor: pointer;
box-shadow: 0 1px 3px rgba(0, 0, 0, 0.1);
font-size: 0.85em;
}
.control-group .filter-active:hover {
opacity: 0.92;
transform: translateY(-1px);
box-shadow: 0 3px 5px rgba(0, 0, 0, 0.15);
}
.control-group .filter-active:active {
transform: translateY(0);
box-shadow: 0 1px 3px rgba(0, 0, 0, 0.1);
}
.control-group .filter-active i.fa-filter {
font-size: 0.9em;
margin-right: 2px;
opacity: 0.9;
}
.control-group .filter-active i.clear-filter {
transition: transform 0.2s ease, background-color 0.2s ease;
cursor: pointer;
margin-left: 4px;
border-radius: 50%;
font-size: 0.85em;
width: 16px;
height: 16px;
display: flex;
align-items: center;
justify-content: center;
}
.control-group .filter-active i.clear-filter:hover {
transform: scale(1.2);
background-color: rgba(255, 255, 255, 0.2);
}
.control-group .filter-active .lora-name {
font-weight: 500;
max-width: 150px;
overflow: hidden;
text-overflow: ellipsis;
white-space: nowrap;
}
/* Animation for filter indicator */
@keyframes filterPulse {
0% { transform: scale(1); box-shadow: 0 1px 3px rgba(0, 0, 0, 0.1); }
50% { transform: scale(1.03); box-shadow: 0 3px 8px rgba(0, 0, 0, 0.15); }
100% { transform: scale(1); box-shadow: 0 1px 3px rgba(0, 0, 0, 0.1); }
}
.filter-active.animate {
animation: filterPulse 0.6s ease;
}
/* Make responsive */
@media (max-width: 576px) {
.control-group .filter-active {
padding: 6px 10px;
}
.control-group .filter-active .lora-name {
max-width: 100px;
}
.control-group .filter-active:hover {
transform: none; /* Disable hover effects on mobile */
}
}

View File

@@ -291,7 +291,7 @@
gap: 8px;
padding: var(--space-1);
border: 1px solid var(--border-color);
border-radius: var(--border-radius-sm);
border-radius: var (--border-radius-sm);
background: var(--lora-surface);
}
@@ -733,3 +733,150 @@
font-size: 0.9em;
line-height: 1.4;
}
/* Duplicate Recipes Styles */
.duplicate-recipes-container {
margin-bottom: var(--space-3);
border-radius: var(--border-radius-sm);
overflow: hidden;
animation: fadeIn 0.3s ease-in-out;
}
@keyframes fadeIn {
from { opacity: 0; transform: translateY(-10px); }
to { opacity: 1; transform: translateY(0); }
}
.duplicate-warning {
display: flex;
align-items: flex-start;
gap: 12px;
padding: 12px 16px;
background: oklch(var(--lora-warning) / 0.1);
border: 1px solid var(--lora-warning);
border-radius: var(--border-radius-sm) var(--border-radius-sm) 0 0;
color: var(--text-color);
}
.duplicate-warning .warning-icon {
color: var(--lora-warning);
font-size: 1.2em;
padding-top: 2px;
}
.duplicate-warning .warning-content {
flex: 1;
}
.duplicate-warning .warning-title {
font-weight: 600;
margin-bottom: 4px;
}
.duplicate-warning .warning-text {
font-size: 0.9em;
line-height: 1.4;
display: flex;
justify-content: space-between;
align-items: center;
flex-wrap: wrap;
gap: 8px;
}
.toggle-duplicates-btn {
background: none;
border: none;
color: var(--lora-warning);
cursor: pointer;
font-size: 0.9em;
display: flex;
align-items: center;
gap: 6px;
padding: 4px 8px;
border-radius: var(--border-radius-xs);
}
.toggle-duplicates-btn:hover {
background: oklch(var(--lora-warning) / 0.1);
}
.duplicate-recipes-list {
display: grid;
grid-template-columns: repeat(auto-fill, minmax(150px, 1fr));
gap: 12px;
padding: 16px;
border: 1px solid var(--border-color);
border-top: none;
border-radius: 0 0 var(--border-radius-sm) var(--border-radius-sm);
background: var(--bg-color);
max-height: 300px;
overflow-y: auto;
transition: max-height 0.3s ease, padding 0.3s ease;
}
.duplicate-recipes-list.collapsed {
max-height: 0;
padding: 0 16px;
overflow: hidden;
}
.duplicate-recipe-card {
position: relative;
border-radius: var(--border-radius-sm);
overflow: hidden;
box-shadow: 0 2px 4px rgba(0, 0, 0, 0.1);
transition: transform 0.2s ease;
}
.duplicate-recipe-card:hover {
transform: translateY(-2px);
}
.duplicate-recipe-preview {
width: 100%;
position: relative;
aspect-ratio: 2/3;
background: var(--bg-color);
}
.duplicate-recipe-preview img {
width: 100%;
height: 100%;
object-fit: cover;
}
.duplicate-recipe-title {
position: absolute;
bottom: 0;
left: 0;
right: 0;
padding: 8px;
background: rgba(0, 0, 0, 0.7);
color: white;
font-size: 0.85em;
line-height: 1.3;
max-height: 50%;
overflow: hidden;
text-overflow: ellipsis;
display: -webkit-box;
-webkit-line-clamp: 2;
-webkit-box-orient: vertical;
}
.duplicate-recipe-details {
padding: 8px;
background: var(--bg-color);
font-size: 0.75em;
display: flex;
justify-content: space-between;
align-items: center;
color: var(--text-color);
opacity: 0.8;
}
.duplicate-recipe-date,
.duplicate-recipe-lora-count {
display: flex;
align-items: center;
gap: 4px;
}

View File

@@ -0,0 +1,359 @@
/* Initialization Component Styles */
.initialization-container {
width: 100%;
height: 100%;
padding: var(--space-3);
background: var(--lora-surface);
animation: fadeIn 0.3s ease-in-out;
display: flex;
align-items: center;
justify-content: center;
}
.initialization-content {
max-width: 800px;
width: 100%;
}
/* Override loading.css width for initialization component */
.initialization-container .loading-content {
width: 100%;
max-width: 100%;
background: transparent;
backdrop-filter: none;
border: none;
padding: 0;
}
.initialization-header {
text-align: center;
margin-bottom: var(--space-3);
}
.initialization-header h2 {
font-size: 1.8rem;
margin-bottom: var(--space-1);
color: var(--text-color);
}
.init-subtitle {
color: var(--text-color);
opacity: 0.8;
font-size: 1rem;
}
/* Progress Bar Styles specific to initialization */
.initialization-progress {
margin-bottom: var(--space-3);
}
/* Renamed container class */
.init-progress-container {
width: 100%; /* Use full width within its container */
height: 8px; /* Match height from previous .progress-bar-container */
background-color: var(--lora-border); /* Consistent background */
border-radius: 4px;
overflow: hidden;
margin: 0 auto var(--space-1); /* Center horizontally, add bottom margin */
}
/* Renamed progress bar class */
.init-progress-bar {
height: 100%;
/* Use a gradient consistent with the theme accent */
background: linear-gradient(90deg, var(--lora-accent) 0%, color-mix(in oklch, var(--lora-accent) 80%, transparent) 100%);
border-radius: 4px; /* Match container radius */
transition: width 0.3s ease;
width: 0%; /* Start at 0% */
}
/* Remove the old .progress-bar rule specific to initialization to avoid conflicts */
/* .progress-bar { ... } */
/* Progress Details */
.progress-details {
display: flex;
justify-content: space-between;
font-size: 0.9rem;
color: var(--text-color);
margin-top: var(--space-1);
padding: 0 2px;
}
#remainingTime {
font-style: italic;
color: var(--text-color);
opacity: 0.8;
}
/* Stages Styles */
.initialization-stages {
margin-bottom: var(--space-3);
}
.stage-item {
display: flex;
align-items: flex-start;
padding: var(--space-2);
border-radius: var(--border-radius-xs);
margin-bottom: var(--space-1);
transition: background-color 0.2s ease;
border: 1px solid transparent;
}
.stage-item.active {
background-color: rgba(var(--lora-accent), 0.1);
border-color: var(--lora-accent);
}
.stage-item.completed {
background-color: rgba(0, 150, 0, 0.05);
border-color: rgba(0, 150, 0, 0.2);
}
.stage-icon {
display: flex;
align-items: center;
justify-content: center;
width: 40px;
height: 40px;
background: var(--lora-border);
border-radius: 50%;
margin-right: var(--space-2);
}
.stage-item.active .stage-icon {
background: var(--lora-accent);
color: white;
}
.stage-item.completed .stage-icon {
background: rgb(0, 150, 0);
color: white;
}
.stage-content {
flex: 1;
}
.stage-content h4 {
margin: 0 0 5px 0;
font-size: 1rem;
color: var(--text-color);
}
.stage-details {
font-size: 0.85rem;
color: var(--text-color);
opacity: 0.8;
}
.stage-status {
display: flex;
align-items: center;
justify-content: center;
width: 24px;
height: 24px;
}
.stage-status.pending {
color: var(--text-color);
opacity: 0.5;
}
.stage-status.in-progress {
color: var(--lora-accent);
}
.stage-status.completed {
color: rgb(0, 150, 0);
}
/* Tips Container */
.tips-container {
margin-top: var(--space-3);
background: rgba(var(--lora-accent), 0.05);
border-radius: var(--border-radius-base);
padding: var(--space-2);
box-shadow: 0 2px 8px rgba(0, 0, 0, 0.05);
}
.tips-header {
display: flex;
align-items: center;
margin-bottom: var(--space-2);
padding-bottom: var(--space-1);
border-bottom: 1px solid var(--lora-border);
}
.tips-header i {
margin-right: 10px;
color: var(--lora-accent);
font-size: 1.2rem;
}
.tips-header h3 {
font-size: 1.2rem;
margin: 0;
color: var(--text-color);
}
/* Tip Carousel with Images */
.tips-content {
position: relative;
}
.tip-carousel {
position: relative;
height: 160px;
overflow: hidden;
}
.tip-item {
position: absolute;
width: 100%;
height: 100%;
display: flex;
opacity: 0;
transition: opacity 0.5s ease;
padding: 0;
border-radius: var(--border-radius-sm);
overflow: hidden;
}
.tip-item.active {
opacity: 1;
}
.tip-image {
width: 40%;
overflow: hidden;
display: flex;
align-items: center;
justify-content: center;
background-color: var(--lora-border);
}
.tip-image img {
width: 100%;
height: 100%;
object-fit: cover;
}
.tip-text {
width: 60%;
padding: var(--space-2);
display: flex;
flex-direction: column;
justify-content: center;
}
.tip-text h4 {
margin: 0 0 var(--space-1) 0;
font-size: 1.1rem;
color: var(--text-color);
}
.tip-text p {
margin: 0;
line-height: 1.5;
font-size: 0.9rem;
color: var(--text-color);
}
.tip-navigation {
display: flex;
justify-content: center;
margin-top: var(--space-2);
}
.tip-dot {
width: 10px;
height: 10px;
border-radius: 50%;
background-color: var(--lora-border);
margin: 0 5px;
cursor: pointer;
transition: background-color 0.2s ease, transform 0.2s ease;
}
.tip-dot:hover {
transform: scale(1.2);
}
.tip-dot.active {
background-color: var(--lora-accent);
}
/* Animation */
@keyframes fadeIn {
from {
opacity: 0;
transform: translateY(10px);
}
to {
opacity: 1;
transform: translateY(0);
}
}
/* Different stage status animations */
@keyframes pulse {
0% {
transform: scale(1);
}
50% {
transform: scale(1.2);
}
100% {
transform: scale(1);
}
}
.stage-item.active .stage-icon i {
animation: pulse 1s infinite;
}
/* Responsive Adjustments */
@media (max-width: 768px) {
.initialization-container {
padding: var(--space-2);
}
.stage-item {
padding: var(--space-1);
}
.stage-icon {
width: 32px;
height: 32px;
min-width: 32px;
}
.tip-item {
flex-direction: column;
height: 220px;
}
.tip-image, .tip-text {
width: 100%;
}
.tip-image {
height: 120px;
}
.tip-carousel {
height: 220px;
}
}
@media (prefers-reduced-motion: reduce) {
.initialization-container,
.tip-item,
.tip-dot {
transition: none;
animation: none;
}
}

View File

@@ -0,0 +1,96 @@
/* Keyboard navigation indicator and help */
.keyboard-nav-hint {
display: inline-flex;
align-items: center;
justify-content: center;
position: relative;
width: 32px;
height: 32px;
border-radius: 50%;
background: var(--card-bg);
border: 1px solid var(--border-color);
color: var(--text-color);
cursor: help;
transition: all 0.2s ease;
margin-left: 8px;
}
.keyboard-nav-hint:hover {
background: var(--lora-accent);
color: white;
transform: translateY(-2px);
box-shadow: 0 3px 5px rgba(0, 0, 0, 0.08);
}
.keyboard-nav-hint i {
font-size: 14px;
}
/* Tooltip styling */
.tooltip {
position: relative;
}
.tooltip .tooltiptext {
visibility: hidden;
width: 240px;
background-color: var(--lora-surface);
color: var(--text-color);
text-align: center;
border-radius: var(--border-radius-xs);
padding: 8px;
position: absolute;
z-index: 9999; /* 确保在卡片上方显示 */
left: 120%; /* 将tooltip显示在图标右侧 */
top: 50%; /* 垂直居中 */
transform: translateY(-50%); /* 垂直居中 */
opacity: 0;
transition: opacity 0.3s;
box-shadow: 0 3px 8px rgba(0, 0, 0, 0.15);
border: 1px solid var(--lora-border);
font-size: 0.85em;
line-height: 1.4;
}
.tooltip .tooltiptext::after {
content: "";
position: absolute;
top: 50%; /* 箭头垂直居中 */
right: 100%; /* 箭头在左侧 */
margin-top: -5px;
border-width: 5px;
border-style: solid;
border-color: transparent var(--lora-border) transparent transparent; /* 箭头指向左侧 */
}
.tooltip:hover .tooltiptext {
visibility: visible;
opacity: 1;
}
/* Keyboard shortcuts table */
.keyboard-shortcuts {
width: 100%;
border-collapse: collapse;
margin-top: 5px;
}
.keyboard-shortcuts td {
padding: 4px;
text-align: left;
}
.keyboard-shortcuts td:first-child {
font-weight: bold;
width: 40%;
}
.key {
display: inline-block;
background: var(--bg-color);
border: 1px solid var(--border-color);
border-radius: 3px;
padding: 1px 5px;
font-size: 0.8em;
box-shadow: 0 1px 2px rgba(0, 0, 0, 0.08);
}

View File

@@ -543,25 +543,53 @@
display: flex;
align-items: center;
gap: 8px;
cursor: pointer;
padding: 4px;
border-radius: var(--border-radius-xs);
transition: background-color 0.2s;
position: relative;
}
.file-name-wrapper:hover {
background: oklch(var(--lora-accent) / 0.1);
}
.file-name-wrapper i {
color: var(--text-color);
opacity: 0.5;
transition: opacity 0.2s;
.file-name-content {
padding: 2px 4px;
border-radius: var(--border-radius-xs);
border: 1px solid transparent;
flex: 1;
}
.file-name-wrapper:hover i {
opacity: 1;
color: var(--lora-accent);
.file-name-wrapper.editing .file-name-content {
border: 1px solid var(--lora-accent);
background: var(--bg-color);
outline: none;
}
.edit-file-name-btn {
background: transparent;
border: none;
color: var(--text-color);
opacity: 0;
cursor: pointer;
padding: 2px 5px;
border-radius: var(--border-radius-xs);
transition: all 0.2s ease;
margin-left: var(--space-1);
}
.edit-file-name-btn.visible,
.file-name-wrapper:hover .edit-file-name-btn {
opacity: 0.5;
}
.edit-file-name-btn:hover {
opacity: 0.8 !important;
background: rgba(0, 0, 0, 0.05);
}
[data-theme="dark"] .edit-file-name-btn:hover {
background: rgba(255, 255, 255, 0.05);
}
/* Base Model and Size combined styles */
@@ -835,7 +863,7 @@
}
.model-description-content blockquote {
border-left: 3px solid var(--lora-accent);
border-left: 3px solid var (--lora-accent);
padding-left: 1em;
margin-left: 0;
margin-right: 0;
@@ -1105,8 +1133,8 @@
pointer-events: none;
}
/* Show metadata panel only on hover */
.media-wrapper:hover .image-metadata-panel {
/* Show metadata panel only when the 'visible' class is added */
.media-wrapper .image-metadata-panel.visible {
transform: translateY(0);
opacity: 0.98;
pointer-events: auto;
@@ -1252,4 +1280,47 @@
font-size: 1.1em;
color: var(--lora-accent);
opacity: 0.8;
}
.view-all-btn {
display: flex;
align-items: center;
gap: 5px;
padding: 6px 12px;
background-color: var(--lora-accent);
color: var(--lora-text);
border: none;
border-radius: var(--border-radius-sm);
cursor: pointer;
transition: background-color 0.2s;
font-size: 13px;
}
.view-all-btn:hover {
opacity: 0.9;
}
/* Loading, error and empty states */
.recipes-loading,
.recipes-error,
.recipes-empty {
display: flex;
flex-direction: column;
align-items: center;
justify-content: center;
padding: 40px;
text-align: center;
min-height: 200px;
}
.recipes-loading i,
.recipes-error i,
.recipes-empty i {
font-size: 32px;
margin-bottom: 15px;
color: var(--lora-accent);
}
.recipes-error i {
color: var(--lora-error);
}

View File

@@ -44,26 +44,12 @@ body.modal-open {
}
/* Delete Modal specific styles */
.delete-modal-content {
max-width: 500px;
text-align: center;
}
.delete-message {
color: var(--text-color);
margin: var(--space-2) 0;
}
.delete-model-info {
background: var(--lora-surface);
border: 1px solid var(--lora-border);
border-radius: var(--border-radius-sm);
padding: var(--space-2);
margin: var(--space-2) 0;
color: var(--text-color);
word-break: break-all;
}
/* Update delete modal styles */
.delete-modal {
display: none; /* Set initial display to none */
@@ -92,7 +78,8 @@ body.modal-open {
animation: modalFadeIn 0.2s ease-out;
}
.delete-model-info {
.delete-model-info,
.exclude-model-info {
/* Update info display styling */
background: var(--lora-surface);
border: 1px solid var(--lora-border);
@@ -123,7 +110,7 @@ body.modal-open {
margin-top: var(--space-3);
}
.cancel-btn, .delete-btn {
.cancel-btn, .delete-btn, .exclude-btn {
padding: 8px var(--space-2);
border-radius: 6px;
border: none;
@@ -143,6 +130,12 @@ body.modal-open {
color: white;
}
/* Style for exclude button - different from delete button */
.exclude-btn {
background: var(--lora-accent, #4f46e5);
color: white;
}
.cancel-btn:hover {
background: var(--lora-border);
}
@@ -151,6 +144,11 @@ body.modal-open {
opacity: 0.9;
}
.exclude-btn:hover {
opacity: 0.9;
background: oklch(from var(--lora-accent, #4f46e5) l c h / 85%);
}
.modal-content h2 {
color: var(--text-color);
margin-bottom: var(--space-2);
@@ -196,7 +194,7 @@ body.modal-open {
}
.settings-modal {
max-width: 500px;
max-width: 650px; /* Further increased from 600px for more space */
}
/* Settings Links */
@@ -266,14 +264,22 @@ body.modal-open {
}
}
/* API key input specific styles */
.api-key-input {
width: 100%; /* Take full width of parent */
position: relative;
display: flex;
align-items: center;
}
.api-key-input input {
padding-right: 40px;
width: 100%;
padding: 6px 40px 6px 10px; /* Add left padding */
height: 32px;
border-radius: var(--border-radius-xs);
border: 1px solid var(--border-color);
background-color: var(--lora-surface);
color: var(--text-color);
}
.api-key-input .toggle-visibility {
@@ -294,8 +300,10 @@ body.modal-open {
.input-help {
font-size: 0.85em;
color: var(--text-color);
opacity: 0.8;
margin-top: 4px;
opacity: 0.7;
margin-top: 8px; /* Space between control and help */
line-height: 1.4;
width: 100%; /* Full width */
}
/* 统一各个 section 的样式 */
@@ -341,9 +349,8 @@ body.modal-open {
.setting-item {
display: flex;
justify-content: space-between;
align-items: flex-start;
margin-bottom: var(--space-2);
flex-direction: column; /* Changed to column for help text placement */
margin-bottom: var(--space-3); /* Increased to provide more spacing between items */
padding: var(--space-1);
border-radius: var(--border-radius-xs);
}
@@ -356,18 +363,68 @@ body.modal-open {
background: rgba(255, 255, 255, 0.05);
}
/* Control row with label and input together */
.setting-row {
display: flex;
flex-direction: row;
justify-content: space-between;
align-items: center;
width: 100%;
}
.setting-info {
flex: 1;
margin-bottom: 0;
width: 35%; /* Increased from 30% to prevent wrapping */
flex-shrink: 0; /* Prevent shrinking */
}
.setting-info label {
display: block;
margin-bottom: 4px;
font-weight: 500;
margin-bottom: 0;
white-space: nowrap; /* Prevent label wrapping */
}
.setting-control {
padding-left: var(--space-2);
width: 60%; /* Decreased slightly from 65% */
margin-bottom: 0;
display: flex;
justify-content: flex-end; /* Right-align all controls */
}
/* Select Control Styles */
.select-control {
width: 100%;
display: flex;
justify-content: flex-end;
}
.select-control select {
width: 100%;
max-width: 100%; /* Increased from 200px */
padding: 6px 10px;
border-radius: var(--border-radius-xs);
border: 1px solid var(--border-color);
background-color: var(--lora-surface);
color: var(--text-color);
font-size: 0.95em;
height: 32px;
}
/* Fix dark theme select dropdown text color */
[data-theme="dark"] .select-control select {
background-color: rgba(30, 30, 30, 0.9);
color: var(--text-color);
}
[data-theme="dark"] .select-control select option {
background-color: #2d2d2d;
color: var(--text-color);
}
.select-control select:focus {
border-color: var(--lora-accent);
outline: none;
}
/* Toggle Switch */
@@ -377,6 +434,7 @@ body.modal-open {
width: 50px;
height: 24px;
cursor: pointer;
margin-left: auto; /* Push to right side */
}
.toggle-switch input {
@@ -426,15 +484,6 @@ input:checked + .toggle-slider:before {
width: 22px;
}
/* Update input help styles */
.input-help {
font-size: 0.85em;
color: var(--text-color);
opacity: 0.7;
margin-top: 4px;
line-height: 1.4;
}
/* Blur effect for NSFW content */
.nsfw-blur {
filter: blur(12px);
@@ -445,6 +494,107 @@ input:checked + .toggle-slider:before {
filter: blur(8px);
}
/* Example Images Settings Styles */
.download-buttons {
justify-content: flex-start;
gap: var(--space-2);
}
.primary-btn {
display: flex;
align-items: center;
gap: 8px;
padding: 8px 16px;
background-color: var(--lora-accent);
color: var(--lora-text);
border: none;
border-radius: var(--border-radius-sm);
cursor: pointer;
transition: background-color 0.2s;
font-size: 0.95em;
}
.primary-btn:hover {
background-color: oklch(from var(--lora-accent) l c h / 85%);
color: var(--lora-text);
}
/* Secondary button styles */
.secondary-btn {
display: flex;
align-items: center;
gap: 8px;
padding: 8px 16px;
background-color: var(--card-bg);
color: var(--text-color);
border: 1px solid var(--border-color);
border-radius: var(--border-radius-sm);
cursor: pointer;
transition: all 0.2s;
font-size: 0.95em;
}
.secondary-btn:hover {
background-color: var(--border-color);
color: var(--text-color);
}
/* Disabled button styles */
.primary-btn.disabled {
opacity: 0.5;
cursor: not-allowed;
background-color: var(--lora-accent);
color: var(--lora-text);
pointer-events: none;
}
.secondary-btn.disabled {
opacity: 0.5;
cursor: not-allowed;
pointer-events: none;
}
/* Dark theme specific button adjustments */
[data-theme="dark"] .primary-btn:hover {
background-color: oklch(from var(--lora-accent) l c h / 75%);
}
[data-theme="dark"] .secondary-btn {
background-color: var(--lora-surface);
}
[data-theme="dark"] .secondary-btn:hover {
background-color: oklch(35% 0.02 256 / 0.98);
}
.primary-btn.disabled {
opacity: 0.5;
cursor: not-allowed;
}
.path-control {
display: flex;
gap: 8px;
align-items: center;
width: 100%;
}
.path-control input[type="text"] {
flex: 1;
padding: 6px 10px;
border-radius: var(--border-radius-xs);
border: 1px solid var(--border-color);
background-color: var(--lora-surface);
color: var (--text-color);
font-size: 0.95em;
height: 32px;
}
.primary-btn.disabled {
opacity: 0.5;
cursor: not-allowed;
}
/* Add styles for delete preview image */
.delete-preview {
max-width: 150px;
@@ -482,4 +632,54 @@ input:checked + .toggle-slider:before {
font-style: italic;
margin-top: var(--space-1);
text-align: center;
}
/* Add styles for markdown elements in changelog */
.changelog-item ul {
padding-left: 20px;
margin-top: 8px;
}
.changelog-item li {
margin-bottom: 6px;
line-height: 1.4;
}
.changelog-item strong {
font-weight: 600;
}
.changelog-item em {
font-style: italic;
}
.changelog-item code {
background: rgba(0, 0, 0, 0.05);
padding: 2px 4px;
border-radius: 3px;
font-family: monospace;
font-size: 0.9em;
}
[data-theme="dark"] .changelog-item code {
background: rgba(255, 255, 255, 0.1);
}
.changelog-item a {
color: var(--lora-accent);
text-decoration: none;
}
.changelog-item a:hover {
text-decoration: underline;
}
/* Add warning text style for settings */
.warning-text {
color: var(--lora-warning, #e67e22);
font-weight: 500;
}
[data-theme="dark"] .warning-text {
color: var(--lora-warning, #f39c12);
}

View File

@@ -0,0 +1,217 @@
/* Progress Panel Styles */
.progress-panel {
position: fixed;
bottom: 20px;
right: 20px;
width: 350px;
background: var(--lora-surface);
border: 1px solid var(--lora-border);
border-radius: var(--border-radius-sm);
box-shadow: 0 4px 12px rgba(0, 0, 0, 0.1);
z-index: calc(var(--z-modal) - 1);
transition: transform 0.3s ease, opacity 0.3s ease;
opacity: 0;
transform: translateY(20px);
pointer-events: none; /* Ignore mouse events when invisible */
}
.progress-panel.visible {
opacity: 1;
transform: translateY(0);
pointer-events: auto; /* Capture mouse events when visible */
}
.progress-panel.collapsed .progress-panel-content {
display: none;
}
.progress-panel.collapsed .progress-panel-header {
border-bottom: none;
padding-bottom: calc(var(--space-2) + 12px);
}
.progress-panel-header {
padding: var(--space-2);
display: flex;
justify-content: space-between;
align-items: center;
border-bottom: 1px solid var(--lora-border);
}
.progress-panel-title {
font-weight: 500;
color: var(--text-color);
display: flex;
align-items: center;
gap: 8px;
}
.progress-panel-actions {
display: flex;
gap: 6px;
}
.icon-button {
background: none;
border: none;
color: var(--text-color);
width: 24px;
height: 24px;
border-radius: 50%;
cursor: pointer;
display: flex;
align-items: center;
justify-content: center;
opacity: 0.6;
transition: all 0.2s;
position: relative;
}
.icon-button:hover {
opacity: 1;
background: rgba(0, 0, 0, 0.05);
}
[data-theme="dark"] .icon-button:hover {
background: rgba(255, 255, 255, 0.1);
}
.progress-panel-content {
padding: var(--space-2);
}
.download-progress-info {
margin-bottom: var(--space-2);
}
.progress-status {
display: flex;
justify-content: space-between;
margin-bottom: 8px;
font-size: 0.9em;
color: var(--text-color);
}
/* Use specific selectors to avoid conflicts with loading.css */
.progress-panel .progress-container {
width: 100%;
background-color: var(--lora-border);
border-radius: 4px;
overflow: hidden;
height: var(--space-1);
}
.progress-panel .progress-bar {
width: 0%;
height: 100%;
background-color: var(--lora-accent);
transition: width 0.5s ease;
}
.current-model-info {
background: var(--bg-color);
border-radius: var(--border-radius-xs);
padding: 8px;
margin-bottom: var(--space-2);
font-size: 0.95em;
}
.current-label {
font-size: 0.85em;
color: var(--text-color);
opacity: 0.7;
margin-bottom: 4px;
}
.current-model-name {
white-space: nowrap;
overflow: hidden;
text-overflow: ellipsis;
color: var(--text-color);
}
.download-stats {
display: flex;
justify-content: space-between;
margin-bottom: var(--space-2);
}
.stat-item {
font-size: 0.9em;
color: var(--text-color);
}
.stat-label {
opacity: 0.7;
margin-right: 4px;
}
.download-errors {
background: oklch(var(--lora-warning) / 0.1);
border: 1px solid var(--lora-warning);
border-radius: var(--border-radius-xs);
padding: var(--space-1);
max-height: 100px;
overflow-y: auto;
font-size: 0.85em;
}
.error-header {
color: var(--lora-warning);
font-weight: 500;
margin-bottom: 4px;
}
.error-list {
color: var(--text-color);
opacity: 0.85;
}
.hidden {
display: none !important;
}
/* Mini progress indicator on pause button when panel collapsed */
.mini-progress-container {
position: absolute;
top: 0;
left: 0;
width: 100%;
height: 100%;
border-radius: 50%;
pointer-events: none;
opacity: 0; /* Hide by default */
transition: opacity 0.2s ease;
}
/* Show mini progress when panel is collapsed */
.progress-panel.collapsed .mini-progress-container {
opacity: 1;
}
.mini-progress-circle {
stroke: var(--lora-accent);
fill: none;
stroke-width: 2.5;
stroke-linecap: round;
transform: rotate(-90deg);
transform-origin: center;
transition: stroke-dashoffset 0.3s ease;
}
.mini-progress-background {
stroke: var(--lora-border);
fill: none;
stroke-width: 2;
}
.progress-percent {
position: absolute;
top: 100%;
left: 50%;
transform: translateX(-50%);
font-size: 0.65em;
color: var(--text-color);
opacity: 0.8;
white-space: nowrap;
}

View File

@@ -1,184 +0,0 @@
.recipe-tag-container {
display: flex;
flex-wrap: wrap;
gap: 0.5rem;
margin-bottom: 1rem;
}
.recipe-tag {
background: var(--lora-surface-hover);
color: var(--lora-text-secondary);
padding: 0.25rem 0.5rem;
border-radius: var(--border-radius-sm);
font-size: 0.8rem;
cursor: pointer;
transition: all 0.2s ease;
}
.recipe-tag:hover, .recipe-tag.active {
background: var(--lora-primary);
color: var(--lora-text-on-primary);
}
.recipe-card {
position: relative;
background: var(--lora-surface);
border-radius: var(--border-radius-base);
overflow: hidden;
box-shadow: var(--shadow-sm);
transition: all 0.2s ease;
aspect-ratio: 896/1152;
cursor: pointer;
display: flex;
flex-direction: column;
}
.recipe-card:hover {
transform: translateY(-3px);
box-shadow: var(--shadow-md);
}
.recipe-card:focus-visible {
outline: 2px solid var(--lora-accent);
outline-offset: 2px;
}
.recipe-indicator {
position: absolute;
top: 6px;
left: 8px;
width: 24px;
height: 24px;
background: var(--lora-primary);
border-radius: 50%;
display: flex;
align-items: center;
justify-content: center;
color: white;
font-weight: bold;
z-index: 2;
}
.recipe-grid {
display: grid;
grid-template-columns: repeat(auto-fill, minmax(250px, 1fr));
gap: 1.5rem;
margin-top: 1.5rem;
}
.placeholder-message {
grid-column: 1 / -1;
text-align: center;
padding: 2rem;
background: var(--lora-surface-alt);
border-radius: var(--border-radius-base);
}
.card-preview {
position: relative;
width: 100%;
height: 100%;
border-radius: var(--border-radius-base);
overflow: hidden;
}
.card-preview img {
width: 100%;
height: 100%;
object-fit: cover;
object-position: center top;
}
.card-header {
position: absolute;
top: 0;
left: 0;
right: 0;
background: linear-gradient(oklch(0% 0 0 / 0.75), transparent 85%);
backdrop-filter: blur(8px);
color: white;
padding: var(--space-1);
display: flex;
justify-content: space-between;
align-items: center;
z-index: 1;
min-height: 20px;
}
.base-model-wrapper {
display: flex;
align-items: center;
gap: 8px;
margin-left: 32px;
}
.card-actions {
display: flex;
gap: 8px;
}
.card-actions i {
cursor: pointer;
opacity: 0.8;
transition: opacity 0.2s ease;
}
.card-actions i:hover {
opacity: 1;
}
.card-footer {
position: absolute;
bottom: 0;
left: 0;
right: 0;
background: linear-gradient(transparent 15%, oklch(0% 0 0 / 0.75));
backdrop-filter: blur(8px);
color: white;
padding: var(--space-1);
display: flex;
justify-content: space-between;
align-items: flex-start;
min-height: 32px;
gap: var(--space-1);
}
.lora-count {
display: flex;
align-items: center;
gap: 4px;
background: rgba(255, 255, 255, 0.2);
padding: 2px 8px;
border-radius: var(--border-radius-xs);
font-size: 0.85em;
position: relative;
}
.lora-count.ready {
background: rgba(46, 204, 113, 0.3);
}
.lora-count.missing {
background: rgba(231, 76, 60, 0.3);
}
/* 响应式设计 */
@media (max-width: 1400px) {
.recipe-grid {
grid-template-columns: repeat(auto-fill, minmax(240px, 1fr));
}
.recipe-card {
max-width: 240px;
}
}
@media (max-width: 768px) {
.recipe-grid {
grid-template-columns: minmax(260px, 1fr);
}
.recipe-card {
max-width: 100%;
}
}

View File

@@ -18,6 +18,110 @@
display: -webkit-box;
-webkit-line-clamp: 2;
-webkit-box-orient: vertical;
width: calc(100% - 20px);
}
/* Editable content styles */
.editable-content {
position: relative;
width: 100%;
display: flex;
align-items: center;
justify-content: space-between;
}
.editable-content.hide {
display: none;
}
.editable-content .content-text {
flex: 1;
min-width: 0;
overflow: hidden;
text-overflow: ellipsis;
}
.edit-icon {
background: none;
border: none;
color: var(--text-color);
opacity: 0;
cursor: pointer;
padding: 4px 8px;
margin-left: 8px;
border-radius: var(--border-radius-xs);
transition: all 0.2s;
flex-shrink: 0;
display: flex;
align-items: center;
justify-content: center;
}
.editable-content:hover .edit-icon {
opacity: 0.6;
}
.edit-icon:hover {
opacity: 1 !important;
background: var(--lora-surface);
}
/* Content editor styles */
.content-editor {
display: none;
width: 100%;
padding: 4px 0;
}
.content-editor.active {
display: flex;
align-items: center;
gap: 8px;
}
.content-editor input {
flex: 1;
background: var(--bg-color);
border: 1px solid var(--lora-border);
border-radius: var(--border-radius-xs);
padding: 6px 8px;
font-size: 1em;
color: var(--text-color);
min-width: 0;
}
.content-editor.tags-editor input {
font-size: 0.9em;
}
/* 删除不再需要的按钮样式 */
.editor-actions {
display: none;
}
/* Special styling for tags content */
.tags-content {
display: flex;
align-items: center;
flex-wrap: nowrap;
gap: 8px;
}
.tags-display {
display: flex;
flex-wrap: nowrap;
gap: 6px;
align-items: center;
flex: 1;
min-width: 0;
overflow: hidden;
}
.no-tags {
font-size: 0.85em;
color: var(--text-color);
opacity: 0.6;
font-style: italic;
}
/* Recipe Tags styles */
@@ -125,8 +229,10 @@
background: var(--lora-surface);
border: 1px solid var(--border-color);
display: flex;
flex-direction: column;
align-items: center;
justify-content: center;
position: relative;
}
.recipe-preview-container img,
@@ -142,6 +248,133 @@
object-fit: contain;
}
/* Source URL container */
.source-url-container {
position: absolute;
bottom: 0;
left: 0;
right: 0;
background: rgba(0, 0, 0, 0.5);
padding: 8px 12px;
display: flex;
justify-content: space-between;
align-items: center;
transition: transform 0.3s ease;
transform: translateY(100%);
}
.recipe-preview-container:hover .source-url-container {
transform: translateY(0);
}
.source-url-container.active {
transform: translateY(0);
}
.source-url-content {
display: flex;
align-items: center;
color: #fff;
flex: 1;
overflow: hidden;
font-size: 0.85em;
}
.source-url-icon {
margin-right: 8px;
flex-shrink: 0;
}
.source-url-text {
white-space: nowrap;
overflow: hidden;
text-overflow: ellipsis;
cursor: pointer;
flex: 1;
}
.source-url-edit-btn {
background: none;
border: none;
color: #fff;
cursor: pointer;
padding: 4px;
margin-left: 8px;
border-radius: var(--border-radius-xs);
opacity: 0.7;
transition: opacity 0.2s ease;
flex-shrink: 0;
}
.source-url-edit-btn:hover {
opacity: 1;
background: rgba(255, 255, 255, 0.1);
}
/* Source URL editor */
.source-url-editor {
display: none;
position: absolute;
bottom: 0;
left: 0;
right: 0;
background: var(--bg-color);
border-top: 1px solid var(--border-color);
padding: 12px;
flex-direction: column;
gap: 10px;
z-index: 5;
}
.source-url-editor.active {
display: flex;
}
.source-url-input {
width: 100%;
padding: 8px 10px;
border: 1px solid var(--border-color);
border-radius: var(--border-radius-xs);
background: var(--bg-color);
color: var(--text-color);
font-size: 0.9em;
}
.source-url-actions {
display: flex;
justify-content: flex-end;
gap: 8px;
}
.source-url-cancel-btn,
.source-url-save-btn {
padding: 6px 12px;
border-radius: var(--border-radius-xs);
font-size: 0.85em;
cursor: pointer;
border: none;
transition: all 0.2s;
}
.source-url-cancel-btn {
background: var(--bg-color);
color: var(--text-color);
border: 1px solid var(--border-color);
}
.source-url-save-btn {
background: var(--lora-accent);
color: white;
}
.source-url-cancel-btn:hover {
background: var(--lora-surface);
}
.source-url-save-btn:hover {
background: color-mix(in oklch, var(--lora-accent), black 10%);
}
/* Generation Parameters */
.recipe-gen-params {
height: 360px;
@@ -296,6 +529,27 @@
gap: var(--space-1);
}
/* View LoRAs button */
.view-loras-btn {
background: none;
border: none;
color: var(--text-color);
opacity: 0.7;
cursor: pointer;
padding: 4px 8px;
border-radius: var(--border-radius-xs);
transition: all 0.2s;
display: flex;
align-items: center;
justify-content: center;
}
.view-loras-btn:hover {
opacity: 1;
background: var(--lora-surface);
color: var(--lora-accent);
}
#recipeLorasCount {
font-size: 0.9em;
color: var(--text-color);
@@ -316,6 +570,7 @@
gap: 10px;
overflow-y: auto;
flex: 1;
padding-top: 4px; /* Add padding to prevent first item from being cut off when hovered */
}
.recipe-lora-item {
@@ -329,6 +584,14 @@
will-change: transform;
/* Create a new containing block for absolutely positioned descendants */
transform: translateZ(0);
cursor: pointer; /* Make it clear the item is clickable */
transition: transform 0.2s ease, box-shadow 0.2s ease, border-color 0.2s ease;
}
.recipe-lora-item:hover {
transform: translateY(-1px);
box-shadow: 0 2px 8px rgba(0, 0, 0, 0.08);
border-color: var(--lora-accent);
}
.recipe-lora-item.exists-locally {
@@ -340,6 +603,12 @@
border-left: 4px solid var(--lora-error);
}
.recipe-lora-item.is-deleted {
background: rgba(127, 127, 127, 0.05);
border-left: 4px solid #777;
opacity: 0.8;
}
.recipe-lora-thumbnail {
width: 46px;
height: 46px;
@@ -474,6 +743,170 @@
font-size: 0.9em;
}
/* Deleted badge with reconnect functionality */
.deleted-badge {
display: inline-flex;
align-items: center;
background: #777;
color: white;
padding: 3px 6px;
border-radius: var(--border-radius-xs);
font-size: 0.75em;
font-weight: 500;
white-space: nowrap;
flex-shrink: 0;
}
.deleted-badge i {
margin-right: 4px;
font-size: 0.9em;
}
/* Add reconnect functionality styles */
.deleted-badge.reconnectable {
position: relative;
cursor: pointer;
transition: background-color 0.2s ease;
}
.deleted-badge.reconnectable:hover {
background-color: var(--lora-accent);
}
.deleted-badge .reconnect-tooltip {
position: absolute;
display: none;
background-color: var(--card-bg);
color: var(--text-color);
padding: 8px 12px;
border-radius: var(--border-radius-xs);
border: 1px solid var(--border-color);
box-shadow: 0 2px 8px rgba(0, 0, 0, 0.1);
z-index: var(--z-overlay);
width: max-content;
max-width: 200px;
font-size: 0.85rem;
font-weight: normal;
top: calc(100% + 5px);
left: 0;
margin-left: -100px;
}
.deleted-badge.reconnectable:hover .reconnect-tooltip {
display: block;
}
/* LoRA reconnect container */
.lora-reconnect-container {
display: none;
flex-direction: column;
background: var(--lora-surface);
border: 1px solid var(--border-color);
border-radius: var(--border-radius-xs);
padding: 12px;
margin-top: 10px;
gap: 10px;
}
.lora-reconnect-container.active {
display: flex;
}
.reconnect-instructions {
display: flex;
flex-direction: column;
gap: 5px;
}
.reconnect-instructions p {
margin: 0;
font-size: 0.95em;
font-weight: 500;
color: var(--text-color);
}
.reconnect-instructions small {
color: var(--text-color);
opacity: 0.7;
font-size: 0.85em;
}
.reconnect-instructions code {
background: rgba(0, 0, 0, 0.1);
padding: 2px 4px;
border-radius: 3px;
font-family: monospace;
font-size: 0.9em;
}
[data-theme="dark"] .reconnect-instructions code {
background: rgba(255, 255, 255, 0.1);
}
.reconnect-form {
display: flex;
flex-direction: column;
gap: 10px;
}
.reconnect-input {
width: calc(100% - 20px);
padding: 8px 10px;
border: 1px solid var(--border-color);
border-radius: var(--border-radius-xs);
background: var(--bg-color);
color: var(--text-color);
font-size: 0.9em;
}
.reconnect-actions {
display: flex;
justify-content: flex-end;
gap: 8px;
}
.reconnect-cancel-btn,
.reconnect-confirm-btn {
padding: 6px 12px;
border-radius: var(--border-radius-xs);
font-size: 0.85em;
cursor: pointer;
border: none;
transition: all 0.2s;
}
.reconnect-cancel-btn {
background: var(--bg-color);
color: var(--text-color);
border: 1px solid var(--border-color);
}
.reconnect-confirm-btn {
background: var(--lora-accent);
color: white;
}
.reconnect-cancel-btn:hover {
background: var(--lora-surface);
}
.reconnect-confirm-btn:hover {
background: color-mix(in oklch, var(--lora-accent), black 10%);
}
/* Recipe status partial state */
.recipe-status.partial {
background: rgba(127, 127, 127, 0.1);
color: #777;
}
/* 标题输入框特定的样式 */
.title-input {
font-size: 1.2em !important; /* 调整为更合适的大小 */
line-height: 1.2;
font-weight: 500;
}
/* Responsive adjustments */
@media (max-width: 768px) {
.recipe-top-section {
@@ -502,7 +935,8 @@
/* Update the local-badge and missing-badge to be positioned within the badge-container */
.badge-container .local-badge,
.badge-container .missing-badge {
.badge-container .missing-badge,
.badge-container .deleted-badge {
position: static; /* Override absolute positioning */
transform: none; /* Remove the transform */
}
@@ -512,3 +946,46 @@
position: fixed; /* Keep as fixed for Chrome */
z-index: 100;
}
/* Add styles for missing LoRAs download feature */
.recipe-status.missing {
position: relative;
cursor: pointer;
transition: background-color 0.2s ease;
}
.recipe-status.missing:hover {
background-color: rgba(var(--lora-warning-rgb, 255, 165, 0), 0.2);
}
.recipe-status.missing .missing-tooltip {
position: absolute;
display: none;
background-color: var(--card-bg);
color: var(--text-color);
padding: 8px 12px;
border-radius: var(--border-radius-xs);
border: 1px solid var(--border-color);
box-shadow: 0 2px 8px rgba(0, 0, 0, 0.1);
z-index: var(--z-overlay);
width: max-content;
max-width: 200px;
font-size: 0.85rem;
font-weight: normal;
margin-left: -100px;
margin-top: -65px;
}
.recipe-status.missing:hover .missing-tooltip {
display: block;
}
.recipe-status.clickable {
cursor: pointer;
padding: 4px 8px;
border-radius: var(--border-radius-xs);
}
.recipe-status.clickable:hover {
background-color: rgba(var(--lora-warning-rgb, 255, 165, 0), 0.2);
}

View File

@@ -117,9 +117,50 @@
box-shadow: 0 4px 8px rgba(0, 0, 0, 0.1);
}
/* QR Code section styles */
.qrcode-toggle {
width: 100%;
margin-top: var(--space-2);
justify-content: center;
position: relative;
}
.qrcode-toggle .toggle-icon {
margin-left: 8px;
transition: transform 0.3s ease;
}
.qrcode-toggle.active .toggle-icon {
transform: rotate(180deg);
}
.qrcode-container {
max-height: 0;
overflow: hidden;
transition: max-height 0.4s ease, opacity 0.3s ease;
opacity: 0;
display: flex;
flex-direction: column;
align-items: center;
}
.qrcode-container.show {
max-height: 500px;
opacity: 1;
margin-top: var(--space-3);
}
.qrcode-image {
max-width: 80%;
height: auto;
border-radius: var(--border-radius-sm);
box-shadow: 0 2px 8px rgba(0, 0, 0, 0.1);
border: 1px solid var(--lora-border);
aspect-ratio: 1/1; /* Ensure proper aspect ratio for the square QR code */
}
.support-footer {
text-align: center;
margin-top: var(--space-1);
font-style: italic;
color: var(--text-color);
}

View File

@@ -15,6 +15,19 @@
z-index: var(--z-base);
}
/* Responsive container for larger screens */
@media (min-width: 2000px) {
.container {
max-width: 1800px;
}
}
@media (min-width: 3000px) {
.container {
max-width: 2400px;
}
}
.controls {
display: flex;
flex-direction: column;
@@ -22,6 +35,13 @@
margin-bottom: var(--space-2);
}
.controls-right {
display: flex;
align-items: center;
gap: 8px;
margin-left: auto; /* Push to the right */
}
.actions {
display: flex;
align-items: center;
@@ -38,6 +58,106 @@
flex-wrap: nowrap;
}
/* Action button styling */
.control-group {
position: relative;
}
.control-group button {
min-width: 100px;
display: flex;
align-items: center;
justify-content: center;
gap: 4px;
border-radius: var(--border-radius-xs);
padding: 4px 10px;
border: 1px solid var(--border-color);
background: var(--card-bg);
color: var(--text-color);
font-size: 0.85em;
transition: all 0.2s ease;
cursor: pointer;
box-shadow: 0 1px 2px rgba(0, 0, 0, 0.05);
}
.control-group button:hover {
border-color: var(--lora-accent);
background: var(--bg-color);
transform: translateY(-1px);
box-shadow: 0 3px 5px rgba(0, 0, 0, 0.08);
}
.control-group button:active {
transform: translateY(0);
box-shadow: 0 1px 2px rgba(0, 0, 0, 0.05);
}
.control-group button i {
opacity: 0.8;
transition: opacity 0.2s ease;
}
.control-group button:hover i {
opacity: 1;
}
/* Controls */
.control-group button.favorite-filter {
position: relative;
overflow: hidden;
}
.control-group button.favorite-filter.active {
background: var(--lora-accent);
color: white;
}
.control-group button.favorite-filter i {
margin-right: 4px;
color: #ffc107;
}
/* Active state for buttons that can be toggled */
.control-group button.active {
background: var(--lora-accent);
color: white;
border-color: var(--lora-accent);
}
/* Select dropdown styling */
.control-group select {
min-width: 100px;
padding: 4px 26px 4px 10px;
border-radius: var(--border-radius-xs);
border: 1px solid var(--border-color);
background-color: var(--card-bg);
color: var(--text-color);
font-size: 0.85em;
appearance: none;
-webkit-appearance: none;
-moz-appearance: none;
background-image: url("data:image/svg+xml;charset=UTF-8,%3csvg xmlns='http://www.w3.org/2000/svg' viewBox='0 0 24 24' fill='none' stroke='currentColor' stroke-width='2' stroke-linecap='round' stroke-linejoin='round'%3e%3cpolyline points='6 9 12 15 18 9'%3e%3c/polyline%3e%3c/svg%3e");
background-repeat: no-repeat;
background-position: right 6px center;
background-size: 14px;
cursor: pointer;
transition: all 0.2s ease;
box-shadow: 0 1px 2px rgba(0, 0, 0, 0.05);
}
.control-group select:hover {
border-color: var(--lora-accent);
background-color: var(--bg-color);
transform: translateY(-1px);
box-shadow: 0 3px 5px rgba(0, 0, 0, 0.08);
}
.control-group select:focus {
outline: none;
border-color: var(--lora-accent);
box-shadow: 0 0 0 2px oklch(var(--lora-accent) / 0.15);
}
/* Ensure hidden class works properly */
.hidden {
display: none !important;
@@ -86,12 +206,14 @@
justify-content: center;
cursor: pointer;
transition: all 0.3s ease;
box-shadow: 0 1px 2px rgba(0, 0, 0, 0.05);
}
.toggle-folders-btn:hover {
background: var(--lora-accent);
color: white;
transform: translateY(-2px);
box-shadow: 0 3px 6px rgba(0, 0, 0, 0.1);
}
.toggle-folders-btn i {
@@ -101,8 +223,9 @@
/* Icon-only button style */
.icon-only {
min-width: unset !important;
width: 36px !important;
width: 32px !important;
padding: 0 !important;
height: 32px !important;
}
/* Rotate icon when folders are collapsed */
@@ -133,29 +256,38 @@
cursor: pointer;
padding: 2px 8px;
margin: 2px;
border: 1px solid #ccc;
border: 1px solid var(--border-color);
border-radius: var(--border-radius-xs);
display: inline-block;
line-height: 1.2;
font-size: 14px;
background-color: var(--card-bg);
transition: all 0.2s ease;
}
.tag:hover {
border-color: var(--lora-accent);
background-color: oklch(var(--lora-accent) / 0.1);
transform: translateY(-1px);
}
.tag.active {
background-color: #007bff;
background-color: var(--lora-accent);
color: white;
border-color: var(--lora-accent);
}
/* Back to Top Button */
.back-to-top {
position: fixed;
bottom: 20px;
right: 20px;
bottom: 85px;
right: 30px;
width: 36px;
height: 36px;
border-radius: 50%;
background: var(--card-bg);
border: 1px solid var(--border-color);
color: var (--text-color);
color: var(--text-color);
display: flex;
align-items: center;
justify-content: center;
@@ -165,6 +297,7 @@
transform: translateY(10px);
transition: all 0.3s ease;
z-index: var(--z-overlay);
box-shadow: 0 2px 5px rgba(0, 0, 0, 0.1);
}
.back-to-top.visible {
@@ -174,9 +307,30 @@
}
.back-to-top:hover {
background: var (--lora-accent);
background: var(--lora-accent);
color: white;
transform: translateY(-2px);
box-shadow: 0 4px 8px rgba(0, 0, 0, 0.15);
}
/* Prevent text selection in control and header areas */
.tag,
.control-group button,
.control-group select,
.toggle-folders-btn,
.bulk-operations-panel,
.app-header,
.header-branding,
.app-title,
.main-nav,
.nav-item,
.header-actions button,
.header-controls,
.toggle-folders-container button {
-webkit-user-select: none;
-moz-user-select: none;
-ms-user-select: none;
user-select: none;
}
@media (max-width: 768px) {
@@ -191,11 +345,14 @@
width: 100%;
}
.controls-right {
width: 100%;
justify-content: flex-end;
margin-top: 8px;
}
.toggle-folders-container {
margin-left: 0;
width: 100%;
display: flex;
justify-content: flex-end;
}
.folder-tags-container {
@@ -203,19 +360,22 @@
}
.toggle-folders-btn:hover {
transform: none; /* 移动端下禁用hover效果 */
transform: none; /* Disable hover effects on mobile */
}
.control-group button:hover {
transform: none; /* Disable hover effects on mobile */
}
.control-group select:hover {
transform: none; /* Disable hover effects on mobile */
}
.tag:hover {
transform: none; /* Disable hover effects on mobile */
}
.back-to-top {
bottom: 60px; /* Give some extra space from bottom on mobile */
}
}
/* Standardize button widths in controls */
.control-group button {
min-width: 100px;
display: flex;
align-items: center;
justify-content: center;
gap: 6px;
}

View File

@@ -18,6 +18,12 @@
@import 'components/search-filter.css';
@import 'components/bulk.css';
@import 'components/shared.css';
@import 'components/filter-indicator.css';
@import 'components/initialization.css';
@import 'components/progress-panel.css';
@import 'components/alphabet-bar.css'; /* Add alphabet bar component */
@import 'components/duplicates.css'; /* Add duplicates component */
@import 'components/keyboard-nav.css'; /* Add keyboard navigation component */
.initialization-notice {
display: flex;

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