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63 Commits

Author SHA1 Message Date
Will Miao
61c31ecbd0 fix: exclude __init__.py from pytest collection to prevent CI import errors 2026-03-19 14:43:45 +08:00
Will Miao
1ae1b0d607 refactor: move No LoRA feature from LoRA Pool to Lora Cycler widget
Move the 'empty/no LoRA' cycling functionality from the LoRA Pool node
to the Lora Cycler widget for cleaner architecture:

Frontend changes:
- Add include_no_lora field to CyclerConfig interface
- Add includeNoLora state and logic to useLoraCyclerState composable
- Add toggle UI in LoraCyclerSettingsView with special styling
- Show 'No LoRA' entry in LoraListModal when enabled
- Update LoraCyclerWidget to integrate new logic

Backend changes:
- lora_cycler.py reads include_no_lora from config
- Calculate effective_total_count (actual count + 1 when enabled)
- Return empty lora_stack when on No LoRA position
- Return actual LoRA count in total_count (not effective count)

Reverted files to pre-PR state:
- lora_loader.py, lora_pool.py, lora_randomizer.py, lora_stacker.py
- lora_routes.py, lora_service.py
- LoraPoolWidget.vue and related files

Related to PR #861

Co-authored-by: dogatech <dogatech@dogatech.home>
2026-03-19 14:19:49 +08:00
dogatech
8dd849892d Allow for empty lora (no loras option) in Lora Pool 2026-03-19 09:23:03 +08:00
Will Miao
03e1fa75c5 feat: auto-focus URL input when batch import modal opens 2026-03-18 22:33:45 +08:00
Will Miao
fefcaa4a45 fix: improve Civitai recipe import by extracting EXIF when API metadata is empty
- Add validation to check if Civitai API metadata contains recipe fields
- Fall back to EXIF extraction when API returns empty metadata (meta.meta=null)
- Improve error messages to distinguish between missing metadata and unsupported format
- Add _has_recipe_fields() helper method to validate metadata content

This fixes import failures for Civitai images where the API returns
metadata wrapper but no actual generation parameters (e.g., images
edited in Photoshop that lost their original generation metadata)
2026-03-18 22:30:36 +08:00
Will Miao
701a6a6c44 refactor: remove GGUF loading logic from CheckpointLoaderLM
GGUF models are pure Unet models and should be handled by UNETLoaderLM.
2026-03-18 21:36:07 +08:00
Will Miao
0ef414d17e feat: standardize Checkpoint/Unet loader names and use OS-native path separators
- Rename nodes to 'Checkpoint Loader (LoraManager)' and 'Unet Loader (LoraManager)'\n- Use os.sep for relative path formatting in model COMBO inputs\n- Update path matching to be robust across OS separators\n- Update docstrings and comments
2026-03-18 21:33:19 +08:00
Will Miao
75dccaef87 test: fix cache validator tests to account for new hash_status field and side effects 2026-03-18 21:10:56 +08:00
Will Miao
7e87ec9521 fix: persist hash_status in model cache to support lazy hashing on restart 2026-03-18 21:07:40 +08:00
Will Miao
46522edb1b refactor: simplify GGUF import helper with dynamic path detection
- Add _get_gguf_path() to dynamically derive ComfyUI-GGUF path from current file location
- Remove Strategy 2 and 3, keeping only Strategy 1 (sys.modules path-based lookup)
- Remove hard-coded absolute paths
- Streamline logging output
- Code cleanup: reduced from 235 to 154 lines
2026-03-18 19:55:54 +08:00
Will Miao
2dae4c1291 fix: isolate extra unet paths from checkpoints to prevent type misclassification
Refactor _prepare_checkpoint_paths() to return a tuple instead of having
side effects on instance variables. This prevents extra unet paths from
being incorrectly classified as checkpoints when processing extra paths.

- Changed return type from List[str] to Tuple[List[str], List[str], List[str]]
  (all_paths, checkpoint_roots, unet_roots)
- Updated _init_checkpoint_paths() and _apply_library_paths() callers
- Fixed extra paths processing to properly isolate main and extra roots
- Updated test_checkpoint_path_overlap.py tests for new API

This ensures models in extra unet paths are correctly identified as
diffusion_model type and don't appear in checkpoints list.
2026-03-17 22:03:57 +08:00
Will Miao
70c150bd80 fix(services): implement stable sorting for model and recipe caches
Add file_path as a tie-breaker for all sort modes in ModelCache, BaseModelService, LoraService, and RecipeCache to ensure deterministic ordering when primary keys are identical. Resolves issue #859.
2026-03-17 14:20:23 +08:00
Will Miao
9e81c33f8a fix(utils): make sanitize_folder_name idempotent by combining strip/rstrip calls 2026-03-17 11:24:59 +08:00
Will Miao
22c0dbd734 feat(recipes): persist 'Skip images without metadata' choice in batch import 2026-03-17 11:01:41 +08:00
Will Miao
d0c58472be fix(i18n): add missing common.actions.close translation key 2026-03-17 09:57:27 +08:00
Will Miao
b3c530bf36 fix(autocomplete): handle multi-word tag matching with normalized spaces
- Replace multiple consecutive spaces with single underscore for tag matching
  (e.g., 'looking  to   the side' → 'looking_to_the_side')
- Support prefix/suffix matching for flexible multi-word autocomplete
  (e.g., 'looking to the' → 'looking_to_the_side')
- Add comprehensive test coverage for multi-word scenarios

Test coverage:
- Multi-word exact match (Danbooru convention)
- Partial match with last token replacement
- Command mode with multi-word phrases
- Multiple consecutive spaces handling
- Backend LOG10 popularity weight validation

Fixes: 'looking to the side' input now correctly replaces with
'looking_to_the_side, ' (or 'looking to the side, ' with space replacement)
2026-03-17 09:34:01 +08:00
Will Miao
b5a0725d2c fix(autocomplete): improve tag search ranking with popularity-based sorting
- Add LOG10(post_count) weighting to BM25 score for better relevance ranking
- Prioritize tag_name prefix matches above alias matches using CASE statement
- Remove frontend re-scoring logic to trust backend排序 results
- Fix pagination consistency: page N+1 scores <= page N minimum score

Key improvements:
- '1girl' (6M posts) now ranks #1 instead of #149 for search '1'
- tag_name prefix matches always appear before alias matches
- Popular tags rank higher than obscure ones with same prefix
- Consistent ordering across pagination boundaries

Test coverage:
- Add test_search_tag_name_prefix_match_priority
- Add test_search_ranks_popular_tags_higher
- Add test_search_pagination_ordering_consistency
- Add test_search_rank_score_includes_popularity_weight
- Update test data with 15 tags starting with '1'

Fixes issues with autocomplete dropdown showing inconsistent results
when scrolling through paginated search results.
2026-03-16 19:09:07 +08:00
Will Miao
ef38bda04f docs: remove redundant example metadata files (#856)
- Delete examples/metadata/ directory and all example files
  - Real metadata.json files in model roots are better examples
  - Examples were artificial and could become outdated
  - Maintenance burden outweighs benefit

- Remove 'Complete Examples' section from docs/metadata-json-schema.md
- Remove reference to example files in 'See Also' section

Rationale:
Users have access to real-world metadata.json files in their actual
model directories, which contain complete Civitai API responses with
authentic data structures (images arrays with prompts, files with hashes,
creator information, etc.). These are more valuable than simplified
artificial examples.
2026-03-16 09:41:58 +08:00
Will Miao
58713ea6e0 fix(top-menu): use dynamic imports to eliminate deprecation warnings
- Replace static imports of deprecated ComfyButton and ComfyButtonGroup with dynamic imports
- Only loads legacy API files when frontend version < 1.33.9 (backward compatibility path)
- Frontend >= 1.33.9 users no longer see deprecation warnings since legacy code is never loaded
- Preserves full backward compatibility for older ComfyUI frontend versions
- All existing tests pass (159 JS + 65 Vue tests)
2026-03-16 09:41:58 +08:00
Will Miao
8b91920058 docs: add comprehensive metadata.json schema documentation (#856)
- Create docs/metadata-json-schema.md with complete field reference
  - All base fields for LoRA, Checkpoint, and Embedding models
  - Complete civitai object structure with Used vs Stored field classification
  - Model-level fields (allowCommercialUse, allowDerivatives, etc.)
  - Creator fields (username, image)
  - customImages structure with actual field names and types
  - Field behavior categories (Auto-Updated, Set Once, User-Editable)

- Add .specs/metadata.schema.json for programmatic validation
  - JSON Schema draft-07 format
  - oneOf schemas for each model type
  - Definitions for civitaiObject and usageTips

- Add example metadata files for each model type
  - lora-civitai.json: LoRA with full Civitai data
  - lora-custom.json: User-defined LoRA with trigger words
  - lora-no-triggerwords.json: LoRA without trigger words
  - checkpoint-civitai.json: Checkpoint from Civitai
  - embedding-custom.json: Custom embedding

Key clarifications:
  - modified: Import timestamp (Set Once, never changes after import)
  - size: File size at import time (Set Once)
  - base_model: Optional with actual values (SDXL 1.0, Flux.1 D, etc.)
  - model_type: Used in metadata.json (not sub_type which is internal)
  - allowCommercialUse: ["Image", "Video", "RentCivit", "Rent"]
  - civitai.files/images: Marked as Used by Lora Manager
  - User-editable fields clearly documented (model_name, tags, etc.)
2026-03-16 09:41:58 +08:00
Will Miao
ee466113d5 feat: implement batch import recipe functionality (frontend + backend fixes)
Backend fixes:
- Add missing API route for /api/lm/recipes/batch-import/progress (GET)
- Add missing API route for /api/lm/recipes/batch-import/directory (POST)
- Add missing API route for /api/lm/recipes/browse-directory (POST)
- Register WebSocket endpoint for batch import progress
- Fix skip_no_metadata default value (True -> False) to allow no-LoRA imports
- Add items array to BatchImportProgress.to_dict() for detailed results

Frontend implementation:
- Create BatchImportManager.js with complete batch import workflow
- Add directory browser UI for selecting folders
- Add batch import modal with URL list and directory input modes
- Implement real-time progress tracking (WebSocket + HTTP polling)
- Add results summary with success/failed/skipped statistics
- Add expandable details view showing individual item status
- Auto-refresh recipe list after import completion

UI improvements:
- Add spinner animation for importing status
- Simplify results summary UI to match progress stats styling
- Fix current item text alignment
- Fix dark theme styling for directory browser button
- Fix batch import button styling consistency

Translations:
- Add batch import related i18n keys to all locale files
- Run sync_translation_keys.py to sync all translations

Fixes:
- Batch import now allows images without LoRAs (matches single import behavior)
- Progress endpoint now returns complete items array with status details
- Results view correctly displays skipped items with error messages
2026-03-16 09:41:58 +08:00
Will Miao
f86651652c feat(batch-import): implement backend batch import service with adaptive concurrency
- Add BatchImportService with concurrent execution using asyncio.gather
- Implement AdaptiveConcurrencyController with dynamic adjustment
- Add input validation for URLs and local paths
- Support duplicate detection via skip_duplicates parameter
- Add WebSocket progress broadcasting for real-time updates
- Create comprehensive unit tests for batch import functionality
- Update API handlers and route registrations
- Add i18n translation keys for batch import UI
2026-03-16 09:41:58 +08:00
Will Miao
c89d4dae85 fix(extra-paths): support trigger words for LoRAs in extra folder paths, fixes #860
- Update get_lora_info() to check both loras_roots and extra_loras_roots
- Add fallback logic to return trigger words even if path not in recognized roots
- Ensure Trigger Word Toggle node displays trigger words for LoRAs from extra folder paths

Fixes issue where LoRAs added from extra folder paths would not show their trigger words in connected Trigger Word Toggle nodes.
2026-03-16 09:38:21 +08:00
pixelpaws
55a18d401b Merge pull request #858 from botchedchuckle/patch-1
Fix: Escape HTML in Prompt/NegativePrompt for MetadataPanel
2026-03-14 14:43:46 +08:00
botchedchuckle
7570936c75 Fix: Escape HTML in Prompt/NegativePrompt for MetadataPanel
* Fixed a bug where `prompt` and `negativePrompt` were both being
  added directly to HTML without escaping them. Given prompts are
  allowed to have HTML characters (e.g. `<lora:something:0.75>`), by
  forgetting to escape them some tags were missing in the metadata
  views for example images using those characters.
2026-03-13 01:29:04 -07:00
Will Miao
4fcf641d57 fix(bulk-context-menu): escape special characters in data-filepath selector to support double quotes in filenames (#845) 2026-03-12 08:49:10 +08:00
Will Miao
5c29e26c4e fix(top-menu): add backward compatibility for actionBarButtons API (#853)
- Implement version detection using __COMFYUI_FRONTEND_VERSION__ and /system_stats API
- Add version parsing and comparison utilities
- Dynamically register extension based on frontend version
- Use actionBarButtons API for frontend >= 1.33.9
- Fallback to legacy ComfyButton approach for older versions
- Add comprehensive version detection tests
2026-03-12 07:41:29 +08:00
Will Miao
ee765a6d22 fix(sidebar): escape folder names and paths to support double quotes
- Import and use escapeHtml and escapeAttribute in SidebarManager.js
- Escape data-path and title attributes in folder tree and breadcrumbs
- Use CSS.escape() for attribute selectors in updateTreeSelection
- Fixes issue #843 where folders with double quotes broke navigation
2026-03-11 23:33:11 +08:00
Will Miao
c02f603ed2 fix(autocomplete): add wheel event handler for canvas zoom support
Add @wheel event listener to AutocompleteTextWidget textarea to enable canvas zoom when textarea has no scrollbar.

The onWheel handler:
- Forwards pinch-to-zoom (ctrl+wheel) to canvas
- Passes horizontal scroll to canvas
- When textarea has vertical scrollbar: lets textarea scroll
- When textarea has NO scrollbar: forwards to canvas for zoom

Behavior now matches ComfyUI built-in multiline widget.

Fixes #850
2026-03-11 20:58:01 +08:00
Will Miao
ee84b30023 Fix node selector z-index issue in recipe modal
Change node-selector z-index from 1000 to var(--z-overlay) (2000)
to ensure the model selector UI appears above the recipe modal
when sending checkpoints to workflow with multiple targets.
2026-03-09 19:29:13 +08:00
Will Miao
97979d9e7c fix(send-to-workflow): strip file extension before searching relative paths
Backend _relative_path_matches_tokens() removes extensions from paths
before matching (commit 43f6bfab). This fix ensures frontend also
removes extensions from search terms to avoid matching failures.

Fixes issue where send model to workflow would receive absolute
paths instead of relative paths because the API returned empty
results when searching with file extension.
2026-03-09 15:49:37 +08:00
Will Miao
cda271890a feat(workflow-template): add new tab template workflow with auto-zoom
- Add GET /api/lm/example-workflows endpoint to list available templates
- Add GET /api/lm/example-workflows/{filename} to retrieve specific workflow
- Add 'New Tab Template Workflow' setting in LoRA Manager settings
- Automatically apply 80% zoom level when loading template workflows
- Override workflow's saved view settings to prevent visual zoom flicker

The feature allows users to select a template workflow from example_workflows/
directory to load when creating new workflow tabs, with a hardcoded 0.8 zoom
level for better initial view experience.
2026-03-08 21:03:14 +08:00
Will Miao
2fbe6c8843 fix(autocomplete): fix dropdown width calculation bug
Temporarily remove width constraints when measuring content to prevent
scrollWidth from being limited by narrow container. This fixes the issue
where dropdown width was incorrectly calculated as ~120px.

Also update test to match maxItems default value (100).
2026-03-07 23:23:26 +08:00
Will Miao
4fb07370dd fix(tests): add offset parameter to MockTagFTSIndex.search()
Add missing offset parameter to MockTagFTSIndex to support
pagination changes from commit a802a89.

- Update search() signature to include offset=0
- Implement pagination logic with offset/limit slicing
2026-03-07 23:10:00 +08:00
Will Miao
43f6bfab36 fix(autocomplete): strip file extensions from model names in search suggestions
Remove .safetensors/.ckpt/.pt/.bin extensions from model names in autocomplete
suggestions to improve UX and search relevance:

Frontend (web/comfyui/autocomplete.js):
- Add _getDisplayText() helper to strip extensions from model paths
- Update _matchItem() to match against filename without extension
- Update render() and createItemElement() to display clean names

Backend (py/services/base_model_service.py):
- Add _remove_model_extension() helper method
- Update _relative_path_matches_tokens() to ignore extensions in matching
- Update _relative_path_sort_key() to sort based on names without extensions

Tests (tests/services/test_relative_path_search.py):
- Add tests to verify 's' and 'safe' queries don't match all .safetensors files

Fixes issue where typing 's' would match all .safetensors files and cluttered
suggestions with redundant extension names.
2026-03-07 23:07:10 +08:00
Will Miao
a802a89ff9 feat(autocomplete): implement virtual scrolling and pagination
- Add virtual scrolling with configurable visible items (default: 15)
- Implement pagination with offset/limit for backend APIs
- Support loading more items on scroll
- Fix width calculation for suggestions dropdown
- Update backend services to support offset parameter

Files modified:
- web/comfyui/autocomplete.js (virtual scroll, pagination)
- py/services/base_model_service.py (offset support)
- py/services/custom_words_service.py (offset support)
- py/services/tag_fts_index.py (offset support)
- py/routes/handlers/model_handlers.py (offset param)
- py/routes/handlers/misc_handlers.py (offset param)
2026-03-07 22:17:26 +08:00
Will Miao
343dd91e4b feat(ui): improve clear button UX in autocomplete text widget
Move clear button from top-right to bottom-right to avoid

obscuring text content. Add hover visibility for cleaner UI.

Reserve bottom padding in textarea for button placement.
2026-03-07 21:09:59 +08:00
Will Miao
3756f88368 feat(autocomplete): improve multi-word tag search with query normalization
Implement search query variation generation to improve matching for multi-word tags:
- Generate multiple query forms: original, underscore (spaces->_), no-space, last token
- Execute up to 4 parallel queries with result merging and deduplication
- Add smart matching with symbol-insensitive comparison (blue hair matches blue_hair)
- Sort results with exact matches prioritized over partial matches

This allows users to type natural language queries like 'looking to the side' and
find tags like 'Looking_to_the_side' while maintaining backward compatibility
with continuous typing workflows.
2026-03-07 20:24:35 +08:00
Will Miao
acc625ead3 feat(recipes): add sync changes dropdown menu for recipe refresh
- Add syncChanges() function to recipeApi.js for quick refresh without cache rebuild
- Implement dropdown menu UI in recipes page with quick refresh and full rebuild options
- Add initDropdowns() method to RecipeManager for dropdown interaction handling
- Update AGENTS.md with more precise instruction about running sync_translation_keys.py
- Integrate sync changes functionality as default refresh behavior
2026-03-04 20:31:58 +08:00
Will Miao
f402505f97 i18n: complete TODO translations in locale files
- Add missing translations for modelTypes, recipe refresh, and sync notifications
- Translate for all supported languages (zh-CN, zh-TW, ja, ko, fr, de, es, ru, he)
- Run sync_translation_keys.py to ensure key consistency
2026-03-04 20:27:21 +08:00
Will Miao
4d8113464c perf(recipe_scanner): eliminate event loop blocking during cache rebuild
Refactor force_refresh path to use thread pool execution instead of blocking
the event loop shared with ComfyUI. Key changes:

- Fix 1: Route force_refresh through _initialize_recipe_cache_sync() in thread pool
- Fix 2: Add GIL release points (time.sleep(0)) every 100 files in sync loops
- Fix 3: Move RecipeCache.resort() to thread pool via run_in_executor
- Fix 4: Persist cache automatically after force_refresh
- Fix 5: Increase yield frequency in _enrich_cache_metadata (every recipe)

This eliminates the ~5 minute freeze when rebuilding 30K recipe cache.

Fixes performance issue where ComfyUI became unresponsive during recipe
scanning due to shared Python event loop blocking.
2026-03-04 15:10:46 +08:00
Will Miao
1ed503a6b5 docs: add lazy hash computation to v1.0.0 release notes 2026-03-04 07:41:19 +08:00
Will Miao
d67914e095 docs: update portable package download link to v1.0.0 2026-03-03 22:06:29 +08:00
Will Miao
2c810306fb feat: implement automated supporter recognition in README
- Add scripts/update_supporters.py to generate supporter list from JSON
- Set up GitHub Action to auto-update README.md on supporters.json change
- Update README.md with placeholders and personalized gratitude message
2026-03-03 21:52:08 +08:00
Will Miao
dd94c6b31a chore: add v1.0.0 release notes and update version in pyproject.toml 2026-03-03 21:19:50 +08:00
Will Miao
1a0edec712 feat: enhance supporters modal with auto-scrolling and visual improvements
- Add auto-scrolling functionality to supporters list with user interaction controls (pause on hover, manual scroll)
- Implement gradient overlays at top/bottom for credits-like appearance
- Style custom scrollbar with subtle hover effects for better UX
- Adjust padding and positioning to ensure all supporters remain visible during scroll
2026-03-03 21:18:12 +08:00
Will Miao
7ba9b998d3 fix(stats): resolve dashboard initialization race condition and test failure
- Refactor StatisticsManager to return promises from initializeVisualizations and initializeLists
- Update fetchAndRenderList to use the fetchData wrapper for consistent mocking
- Update statistics dashboard test to include mock data for paginated model-usage-list endpoint
2026-03-03 15:08:33 +08:00
Will Miao
8c5d5a8ca0 feat(stats): implement infinite scrolling and paginated model usage lists (fixes #812)
- Add get_model_usage_list API endpoint for paginated stats
- Replace static rendering with client-side infinite scroll logic
- Add scrollbars and max-height to model usage lists
2026-03-03 15:00:01 +08:00
Will Miao
672e4cff90 fix(move): reset manual folder selection when using default path (fixes #836) 2026-03-02 23:29:16 +08:00
Will Miao
c2716e3c39 fix(i18n): resolve missing translation keys and complete multi-language support
- Add missing keys 'common.cancel', 'common.confirm', and 'sidebar.dragDrop.noDragState' to en.json
- Synchronize all locale files using sync_translation_keys.py
- Complete translations for zh-CN, zh-TW, ja, ru, de, fr, es, ko, and he
- Implement sidebar drag-and-drop folder creation with visual feedback and input validation
- Optimize MoveManager to use resetAndReload for consistent UI state after moving models
- Fix recursive visibility check for root folder in MoveManager
2026-03-02 22:02:47 +08:00
Will Miao
b72cf7ba98 feat(showcase): optimize CivitAI media URLs for better performance
- Add CivitAI URL utility with optimization strategies for showcase and thumbnail modes
- Replace /original=true with /optimized=true for showcase videos to reduce bandwidth
- Remove redundant crossorigin and referrerpolicy attributes from video elements
- Use media type detection to apply appropriate optimization (image vs video)
- Integrate URL optimization into showcase rendering for improved loading times
2026-03-02 14:05:44 +08:00
Will Miao
bde11b153f fix(preview): resolve CORS error when setting CivitAI remote media as preview
- Add new endpoint POST /api/lm/{prefix}/set-preview-from-url to handle
  remote image downloads server-side, avoiding CORS issues
- Use rewrite_preview_url() to download optimized smaller images (450px width)
- Use Downloader service for reliable downloads with retry logic and proxy support
- Update frontend to call new endpoint instead of fetching images in browser

fixes #837
2026-03-02 13:21:18 +08:00
Will Miao
8b924b1551 feat: add draggable attribute to recipe card elements
- Set draggable=true on recipe card div elements to enable drag-and-drop functionality
- This allows users to drag recipe cards for reordering or other interactions
2026-03-02 10:28:36 +08:00
Will Miao
ce08935b1e fix(showcase): support middle-click and left-click to expand showcase
Fix showcase expansion to work with both left-click and middle-click (drag scroll).

Problem: The scroll-indicator click events were only bound when the carousel
was in expanded state. Initial collapsed state meant no click handlers were
attached, so clicking did nothing.

Solution:
- Extract scroll-indicator event binding into separate bindScrollIndicatorEvents()
- Call bindScrollIndicatorEvents() immediately when showcase loads, regardless
  of collapsed state
- Separate handlers for left-click (click event) and middle-click (mousedown
  event) to avoid double-triggering

Changes:
- Add bindScrollIndicatorEvents() function for early event binding
- Use click event for left mouse button (button 0)
- Use mousedown event for middle mouse button (button 1)
- Update loadExampleImages() to bind events immediately
- Update initShowcaseContent() to use the new function
2026-03-02 08:44:15 +08:00
Will Miao
24fcbeaf76 Skip performance tests by default
- Add 'performance' marker to pytest.ini
- Add pytestmark to test_cache_performance.py
- Use -m 'not performance' by default in addopts
- Allows manual execution with 'pytest -m performance'
2026-02-28 21:46:20 +08:00
Will Miao
c9e5ea42cb Fix null-safety issues and apply code formatting
Bug fixes:
- Add null guards for base_models_roots/embeddings_roots in backup cleanup
- Fix null-safety initialization of extra_unet_roots

Formatting:
- Apply consistent code style across Python files
- Fix line wrapping, quote consistency, and trailing commas
- Add type ignore comments for dynamic/platform-specific code
2026-02-28 21:38:41 +08:00
Will Miao
b005961ee5 feat(ui): improve changelog styling and spacing
- Remove left padding from changelog content container
- Add consistent padding to all changelog items
- Simplify latest changelog item styling by removing redundant padding
- Maintain visual distinction for latest items with background and border
2026-02-28 20:47:44 +08:00
Will Miao
ce03bbbc4e fix(frontend): defer LoadingManager DOM initialization to resolve i18n warning
Delay DOM creation in LoadingManager constructor to first use time,
ensuring window.i18n is ready before translate() is called.

This eliminates the 'i18n not available' console warning during
module initialization while maintaining correct translations
for cancel button and loading status text.
2026-02-28 20:30:16 +08:00
Will Miao
78b55d10ba refactor: move supporters loading to separate API endpoint
- Add SupportersHandler in misc_handlers.py to serve /api/lm/supporters
- Register new endpoint in misc_route_registrar.py
- Remove supporters from page load template context in model_handlers.py
- Create supportersService.js for frontend data fetching
- Update Header.js to fetch supporters when support modal opens
- Modify support_modal.html to use client-side rendering

This change improves page load performance by loading supporters data
on-demand instead of during initial page render.
2026-02-28 20:14:20 +08:00
Will Miao
77a2215e62 Fix lazy hash calculation for checkpoints in extra paths
- Allow empty sha256 when hash_status is 'pending' in cache entry validator
- Add on-demand hash calculation during bulk metadata refresh for checkpoints
  with pending hash status
- Add comprehensive tests for both fixes

Fixes issue where checkpoints in extra paths were not visible in UI and
not processed during bulk metadata refresh due to empty sha256.
2026-02-27 19:19:16 +08:00
pixelpaws
31901f1f0e Merge pull request #829 from willmiao/feature/lazy-hash-checkpoints
feat: lazy hash calculation for checkpoints
2026-02-27 11:02:39 +08:00
Will Miao
12a789ef96 fix(extra-folder-paths): fix extra folder paths support for checkpoint and unet roots
- Fix config.py: save and restore main paths when processing extra folder paths to prevent
  _prepare_checkpoint_paths from overwriting checkpoints_roots and unet_roots
- Fix lora_manager.py: apply library settings during initialization to load extra folder paths
  in ComfyUI plugin mode
- Fix checkpoint_routes.py: merge checkpoints/unet roots with extra paths in API endpoints
- Add logging for extra folder paths

Fixes issue where extra folder paths were not recognized for checkpoints and unet models.
2026-02-27 10:37:15 +08:00
Will Miao
d50bbe71c2 fix(extra-folder-paths): fix extra folder paths support for checkpoint and unet roots
- Fix config.py: save and restore main paths when processing extra folder paths to prevent
  _prepare_checkpoint_paths from overwriting checkpoints_roots and unet_roots
- Fix lora_manager.py: apply library settings during initialization to load extra folder paths
  in ComfyUI plugin mode
- Fix checkpoint_routes.py: merge checkpoints/unet roots with extra paths in API endpoints
- Add logging for extra folder paths

Fixes issue where extra folder paths were not recognized for checkpoints and unet models.
2026-02-27 10:27:29 +08:00
127 changed files with 16119 additions and 2929 deletions

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@@ -0,0 +1,153 @@
# Recipe Batch Import Feature Design
## Overview
Enable users to import multiple images as recipes in a single operation, rather than processing them individually. This feature addresses the need for efficient bulk recipe creation from existing image collections.
## Architecture
```
┌─────────────────────────────────────────────────────────────────┐
│ Frontend │
├─────────────────────────────────────────────────────────────────┤
│ BatchImportManager.js │
│ ├── InputCollector (收集URL列表/目录路径) │
│ ├── ConcurrencyController (自适应并发控制) │
│ ├── ProgressTracker (进度追踪) │
│ └── ResultAggregator (结果汇总) │
├─────────────────────────────────────────────────────────────────┤
│ batch_import_modal.html │
│ └── 批量导入UI组件 │
├─────────────────────────────────────────────────────────────────┤
│ batch_import_progress.css │
│ └── 进度显示样式 │
└─────────────────────────────────────────────────────────────────┘
┌─────────────────────────────────────────────────────────────────┐
│ Backend │
├─────────────────────────────────────────────────────────────────┤
│ py/routes/handlers/recipe_handlers.py │
│ ├── start_batch_import() - 启动批量导入 │
│ ├── get_batch_import_progress() - 查询进度 │
│ └── cancel_batch_import() - 取消导入 │
├─────────────────────────────────────────────────────────────────┤
│ py/services/batch_import_service.py │
│ ├── 自适应并发执行 │
│ ├── 结果汇总 │
│ └── WebSocket进度广播 │
└─────────────────────────────────────────────────────────────────┘
```
## API Endpoints
| 端点 | 方法 | 说明 |
|------|------|------|
| `/api/lm/recipes/batch-import/start` | POST | 启动批量导入,返回 operation_id |
| `/api/lm/recipes/batch-import/progress` | GET | 查询进度状态 |
| `/api/lm/recipes/batch-import/cancel` | POST | 取消导入 |
## Backend Implementation Details
### BatchImportService
Location: `py/services/batch_import_service.py`
Key classes:
- `BatchImportItem`: Dataclass for individual import item
- `BatchImportProgress`: Dataclass for tracking progress
- `BatchImportService`: Main service class
Features:
- Adaptive concurrency control (adjusts based on success/failure rate)
- WebSocket progress broadcasting
- Graceful error handling (individual failures don't stop the batch)
- Result aggregation
### WebSocket Message Format
```json
{
"type": "batch_import_progress",
"operation_id": "xxx",
"total": 50,
"completed": 23,
"success": 21,
"failed": 2,
"skipped": 0,
"current_item": "image_024.png",
"status": "running"
}
```
### Input Types
1. **URL List**: Array of URLs (http/https)
2. **Local Paths**: Array of local file paths
3. **Directory**: Path to directory with optional recursive flag
### Error Handling
- Invalid URLs/paths: Skip and record error
- Download failures: Record error, continue
- Metadata extraction failures: Mark as "no metadata"
- Duplicate detection: Option to skip duplicates
## Frontend Implementation Details (TODO)
### UI Components
1. **BatchImportModal**: Main modal with tabs for URLs/Directory input
2. **ProgressDisplay**: Real-time progress bar and status
3. **ResultsSummary**: Final results with success/failure breakdown
### Adaptive Concurrency Controller
```javascript
class AdaptiveConcurrencyController {
constructor(options = {}) {
this.minConcurrency = options.minConcurrency || 1;
this.maxConcurrency = options.maxConcurrency || 5;
this.currentConcurrency = options.initialConcurrency || 3;
}
adjustConcurrency(taskDuration, success) {
if (success && taskDuration < 1000 && this.currentConcurrency < this.maxConcurrency) {
this.currentConcurrency = Math.min(this.currentConcurrency + 1, this.maxConcurrency);
}
if (!success || taskDuration > 10000) {
this.currentConcurrency = Math.max(this.currentConcurrency - 1, this.minConcurrency);
}
return this.currentConcurrency;
}
}
```
## File Structure
```
Backend (implemented):
├── py/services/batch_import_service.py # 后端服务
├── py/routes/handlers/batch_import_handler.py # API处理器 (added to recipe_handlers.py)
├── tests/services/test_batch_import_service.py # 单元测试
└── tests/routes/test_batch_import_routes.py # API集成测试
Frontend (TODO):
├── static/js/managers/BatchImportManager.js # 主管理器
├── static/js/managers/batch/ # 子模块
│ ├── ConcurrencyController.js # 并发控制
│ ├── ProgressTracker.js # 进度追踪
│ └── ResultAggregator.js # 结果汇总
├── static/css/components/batch-import-modal.css # 样式
└── templates/components/batch_import_modal.html # Modal模板
```
## Implementation Status
- [x] Backend BatchImportService
- [x] Backend API handlers
- [x] WebSocket progress broadcasting
- [x] Unit tests
- [x] Integration tests
- [ ] Frontend BatchImportManager
- [ ] Frontend UI components
- [ ] E2E tests

31
.github/workflows/update-supporters.yml vendored Normal file
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@@ -0,0 +1,31 @@
name: Update Supporters in README
on:
push:
paths:
- 'data/supporters.json'
branches:
- main
workflow_dispatch: # Allow manual trigger
jobs:
update-readme:
runs-on: ubuntu-latest
permissions:
contents: write
steps:
- uses: actions/checkout@v4
- name: Set up Python
uses: actions/setup-python@v5
with:
python-version: '3.10'
- name: Update README
run: python scripts/update_supporters.py
- name: Commit and push changes
uses: stefanzweifel/git-auto-commit-action@v5
with:
commit_message: "docs: auto-update supporters list in README"
file_pattern: "README.md"

464
.specs/metadata.schema.json Normal file
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@@ -0,0 +1,464 @@
{
"$schema": "http://json-schema.org/draft-07/schema#",
"$id": "https://github.com/willmiao/ComfyUI-Lora-Manager/.specs/metadata.schema.json",
"title": "ComfyUI LoRa Manager Model Metadata",
"description": "Schema for .metadata.json sidecar files used by ComfyUI LoRa Manager",
"type": "object",
"oneOf": [
{
"title": "LoRA Model Metadata",
"properties": {
"file_name": {
"type": "string",
"description": "Filename without extension"
},
"model_name": {
"type": "string",
"description": "Display name of the model"
},
"file_path": {
"type": "string",
"description": "Full absolute path to the model file"
},
"size": {
"type": "integer",
"minimum": 0,
"description": "File size in bytes at time of import/download"
},
"modified": {
"type": "number",
"description": "Unix timestamp when model was imported/added (Date Added)"
},
"sha256": {
"type": "string",
"pattern": "^[a-f0-9]{64}$",
"description": "SHA256 hash of the model file (lowercase)"
},
"base_model": {
"type": "string",
"description": "Base model type (SD1.5, SD2.1, SDXL, SD3, Flux, Unknown, etc.)"
},
"preview_url": {
"type": "string",
"description": "Path to preview image file"
},
"preview_nsfw_level": {
"type": "integer",
"minimum": 0,
"default": 0,
"description": "NSFW level using bitmask values: 0 (none), 1 (PG), 2 (PG13), 4 (R), 8 (X), 16 (XXX), 32 (Blocked)"
},
"notes": {
"type": "string",
"default": "",
"description": "User-defined notes"
},
"from_civitai": {
"type": "boolean",
"default": true,
"description": "Whether the model originated from Civitai"
},
"civitai": {
"$ref": "#/definitions/civitaiObject"
},
"tags": {
"type": "array",
"items": {
"type": "string"
},
"default": [],
"description": "Model tags"
},
"modelDescription": {
"type": "string",
"default": "",
"description": "Full model description"
},
"civitai_deleted": {
"type": "boolean",
"default": false,
"description": "Whether the model was deleted from Civitai"
},
"favorite": {
"type": "boolean",
"default": false,
"description": "Whether the model is marked as favorite"
},
"exclude": {
"type": "boolean",
"default": false,
"description": "Whether to exclude from cache/scanning"
},
"db_checked": {
"type": "boolean",
"default": false,
"description": "Whether checked against archive database"
},
"skip_metadata_refresh": {
"type": "boolean",
"default": false,
"description": "Skip this model during bulk metadata refresh"
},
"metadata_source": {
"type": ["string", "null"],
"enum": ["civitai_api", "civarchive", "archive_db", null],
"default": null,
"description": "Last provider that supplied metadata"
},
"last_checked_at": {
"type": "number",
"default": 0,
"description": "Unix timestamp of last metadata check"
},
"hash_status": {
"type": "string",
"enum": ["pending", "calculating", "completed", "failed"],
"default": "completed",
"description": "Hash calculation status"
},
"usage_tips": {
"type": "string",
"default": "{}",
"description": "JSON string containing recommended usage parameters (LoRA only)"
}
},
"required": [
"file_name",
"model_name",
"file_path",
"size",
"modified",
"sha256",
"base_model"
],
"additionalProperties": true
},
{
"title": "Checkpoint Model Metadata",
"properties": {
"file_name": {
"type": "string"
},
"model_name": {
"type": "string"
},
"file_path": {
"type": "string"
},
"size": {
"type": "integer",
"minimum": 0
},
"modified": {
"type": "number"
},
"sha256": {
"type": "string",
"pattern": "^[a-f0-9]{64}$"
},
"base_model": {
"type": "string"
},
"preview_url": {
"type": "string"
},
"preview_nsfw_level": {
"type": "integer",
"minimum": 0,
"maximum": 3,
"default": 0
},
"notes": {
"type": "string",
"default": ""
},
"from_civitai": {
"type": "boolean",
"default": true
},
"civitai": {
"$ref": "#/definitions/civitaiObject"
},
"tags": {
"type": "array",
"items": {
"type": "string"
},
"default": []
},
"modelDescription": {
"type": "string",
"default": ""
},
"civitai_deleted": {
"type": "boolean",
"default": false
},
"favorite": {
"type": "boolean",
"default": false
},
"exclude": {
"type": "boolean",
"default": false
},
"db_checked": {
"type": "boolean",
"default": false
},
"skip_metadata_refresh": {
"type": "boolean",
"default": false
},
"metadata_source": {
"type": ["string", "null"],
"enum": ["civitai_api", "civarchive", "archive_db", null],
"default": null
},
"last_checked_at": {
"type": "number",
"default": 0
},
"hash_status": {
"type": "string",
"enum": ["pending", "calculating", "completed", "failed"],
"default": "completed"
},
"sub_type": {
"type": "string",
"default": "checkpoint",
"description": "Model sub-type (checkpoint, diffusion_model, etc.)"
}
},
"required": [
"file_name",
"model_name",
"file_path",
"size",
"modified",
"sha256",
"base_model"
],
"additionalProperties": true
},
{
"title": "Embedding Model Metadata",
"properties": {
"file_name": {
"type": "string"
},
"model_name": {
"type": "string"
},
"file_path": {
"type": "string"
},
"size": {
"type": "integer",
"minimum": 0
},
"modified": {
"type": "number"
},
"sha256": {
"type": "string",
"pattern": "^[a-f0-9]{64}$"
},
"base_model": {
"type": "string"
},
"preview_url": {
"type": "string"
},
"preview_nsfw_level": {
"type": "integer",
"minimum": 0,
"maximum": 3,
"default": 0
},
"notes": {
"type": "string",
"default": ""
},
"from_civitai": {
"type": "boolean",
"default": true
},
"civitai": {
"$ref": "#/definitions/civitaiObject"
},
"tags": {
"type": "array",
"items": {
"type": "string"
},
"default": []
},
"modelDescription": {
"type": "string",
"default": ""
},
"civitai_deleted": {
"type": "boolean",
"default": false
},
"favorite": {
"type": "boolean",
"default": false
},
"exclude": {
"type": "boolean",
"default": false
},
"db_checked": {
"type": "boolean",
"default": false
},
"skip_metadata_refresh": {
"type": "boolean",
"default": false
},
"metadata_source": {
"type": ["string", "null"],
"enum": ["civitai_api", "civarchive", "archive_db", null],
"default": null
},
"last_checked_at": {
"type": "number",
"default": 0
},
"hash_status": {
"type": "string",
"enum": ["pending", "calculating", "completed", "failed"],
"default": "completed"
},
"sub_type": {
"type": "string",
"default": "embedding",
"description": "Model sub-type"
}
},
"required": [
"file_name",
"model_name",
"file_path",
"size",
"modified",
"sha256",
"base_model"
],
"additionalProperties": true
}
],
"definitions": {
"civitaiObject": {
"type": "object",
"default": {},
"description": "Civitai/CivArchive API data and user-defined fields",
"properties": {
"id": {
"type": "integer",
"description": "Version ID from Civitai"
},
"modelId": {
"type": "integer",
"description": "Model ID from Civitai"
},
"name": {
"type": "string",
"description": "Version name"
},
"description": {
"type": "string",
"description": "Version description"
},
"baseModel": {
"type": "string",
"description": "Base model type from Civitai"
},
"type": {
"type": "string",
"description": "Model type (checkpoint, embedding, etc.)"
},
"trainedWords": {
"type": "array",
"items": {
"type": "string"
},
"description": "Trigger words for the model (from API or user-defined)"
},
"customImages": {
"type": "array",
"items": {
"type": "object"
},
"description": "Custom example images added by user"
},
"model": {
"type": "object",
"properties": {
"name": {
"type": "string"
},
"description": {
"type": "string"
},
"tags": {
"type": "array",
"items": {
"type": "string"
}
}
}
},
"files": {
"type": "array",
"items": {
"type": "object"
}
},
"images": {
"type": "array",
"items": {
"type": "object"
}
},
"creator": {
"type": "object"
}
},
"additionalProperties": true
},
"usageTips": {
"type": "object",
"description": "Structure for usage_tips JSON string (LoRA models)",
"properties": {
"strength_min": {
"type": "number",
"description": "Minimum recommended model strength"
},
"strength_max": {
"type": "number",
"description": "Maximum recommended model strength"
},
"strength_range": {
"type": "string",
"description": "Human-readable strength range"
},
"strength": {
"type": "number",
"description": "Single recommended strength value"
},
"clip_strength": {
"type": "number",
"description": "Recommended CLIP/embedding strength"
},
"clip_skip": {
"type": "integer",
"description": "Recommended CLIP skip value"
}
},
"additionalProperties": true
}
}
}

View File

@@ -135,7 +135,7 @@ npm run test:coverage # Generate coverage report
- ALWAYS use English for comments (per copilot-instructions.md)
- Dual mode: ComfyUI plugin (folder_paths) vs standalone (settings.json)
- Detection: `os.environ.get("LORA_MANAGER_STANDALONE", "0") == "1"`
- Run `python scripts/sync_translation_keys.py` after UI string updates
- Run `python scripts/sync_translation_keys.py` after adding UI strings to `locales/en.json`
- Symlinks require normalized paths
## Frontend UI Architecture

File diff suppressed because one or more lines are too long

View File

@@ -1,6 +1,8 @@
try: # pragma: no cover - import fallback for pytest collection
from .py.lora_manager import LoraManager
from .py.nodes.lora_loader import LoraLoaderLM, LoraTextLoaderLM
from .py.nodes.checkpoint_loader import CheckpointLoaderLM
from .py.nodes.unet_loader import UNETLoaderLM
from .py.nodes.trigger_word_toggle import TriggerWordToggleLM
from .py.nodes.prompt import PromptLM
from .py.nodes.text import TextLM
@@ -27,12 +29,12 @@ except (
PromptLM = importlib.import_module("py.nodes.prompt").PromptLM
TextLM = importlib.import_module("py.nodes.text").TextLM
LoraManager = importlib.import_module("py.lora_manager").LoraManager
LoraLoaderLM = importlib.import_module(
"py.nodes.lora_loader"
).LoraLoaderLM
LoraTextLoaderLM = importlib.import_module(
"py.nodes.lora_loader"
).LoraTextLoaderLM
LoraLoaderLM = importlib.import_module("py.nodes.lora_loader").LoraLoaderLM
LoraTextLoaderLM = importlib.import_module("py.nodes.lora_loader").LoraTextLoaderLM
CheckpointLoaderLM = importlib.import_module(
"py.nodes.checkpoint_loader"
).CheckpointLoaderLM
UNETLoaderLM = importlib.import_module("py.nodes.unet_loader").UNETLoaderLM
TriggerWordToggleLM = importlib.import_module(
"py.nodes.trigger_word_toggle"
).TriggerWordToggleLM
@@ -49,9 +51,7 @@ except (
LoraRandomizerLM = importlib.import_module(
"py.nodes.lora_randomizer"
).LoraRandomizerLM
LoraCyclerLM = importlib.import_module(
"py.nodes.lora_cycler"
).LoraCyclerLM
LoraCyclerLM = importlib.import_module("py.nodes.lora_cycler").LoraCyclerLM
init_metadata_collector = importlib.import_module("py.metadata_collector").init
NODE_CLASS_MAPPINGS = {
@@ -59,6 +59,8 @@ NODE_CLASS_MAPPINGS = {
TextLM.NAME: TextLM,
LoraLoaderLM.NAME: LoraLoaderLM,
LoraTextLoaderLM.NAME: LoraTextLoaderLM,
CheckpointLoaderLM.NAME: CheckpointLoaderLM,
UNETLoaderLM.NAME: UNETLoaderLM,
TriggerWordToggleLM.NAME: TriggerWordToggleLM,
LoraStackerLM.NAME: LoraStackerLM,
SaveImageLM.NAME: SaveImageLM,

627
data/supporters.json Normal file
View File

@@ -0,0 +1,627 @@
{
"specialThanks": [
"dispenser",
"EbonEagle",
"DanielMagPizza",
"Scott R"
],
"allSupporters": [
"Insomnia Art Designs",
"megakirbs",
"Brennok",
"wackop",
"2018cfh",
"Takkan",
"stone9k",
"$MetaSamsara",
"itismyelement",
"onesecondinosaur",
"Carl G.",
"Rosenthal",
"Francisco Tatis",
"Tobi_Swagg",
"Andrew Wilson",
"Greybush",
"Gooohokrbe",
"Ricky Carter",
"JongWon Han",
"OldBones",
"VantAI",
"runte3221",
"FreelancerZ",
"Julian V",
"Edgar Tejeda",
"Birdy",
"Liam MacDougal",
"Fraser Cross",
"Polymorphic Indeterminate",
"Marc Whiffen",
"Kiba",
"Jorge Hussni",
"Reno Lam",
"Skalabananen",
"esthe",
"sig",
"Christian Byrne",
"DM",
"Sen314",
"Estragon",
"J\\B/ 8r0wns0n",
"Snaggwort",
"Arlecchino Shion",
"ClockDaemon",
"KD",
"Omnidex",
"Tyler Trebuchon",
"Release Cabrakan",
"confiscated Zyra",
"SG",
"carozzz",
"James Dooley",
"zenbound",
"Buzzard",
"jmack",
"Adam Shaw",
"Tee Gee",
"Mark Corneglio",
"SarcasticHashtag",
"Anthony Rizzo",
"tarek helmi",
"Cosmosis",
"iamresist",
"RedrockVP",
"Wolffen",
"FloPro4Sho",
"James Todd",
"Steven Pfeiffer",
"Tim",
"Timmy",
"Johnny",
"Lisster",
"Michael Wong",
"Illrigger",
"whudunit",
"Tom Corrigan",
"JackieWang",
"fnkylove",
"Steven Owens",
"Yushio",
"Vik71it",
"lh qwe",
"Echo",
"Lilleman",
"Robert Stacey",
"PM",
"Todd Keck",
"Briton Heilbrun",
"Mozzel",
"Gingko Biloba",
"Felipe dos Santos",
"Penfore",
"BadassArabianMofo",
"Sterilized",
"Pascal Dahle",
"Markus",
"quarz",
"Greg",
"Douglas Gaspar",
"JSST",
"AlexDuKaNa",
"George",
"lmsupporter",
"Phil",
"Charles Blakemore",
"IamAyam",
"wfpearl",
"Rob Williams",
"Baekdoosixt",
"Jonathan Ross",
"Jack B Nimble",
"Nazono_hito",
"Melville Parrish",
"daniel dove",
"Lustre",
"JW Sin",
"contrite831",
"Alex",
"bh",
"Marlon Daniels",
"Starkselle",
"Aaron Bleuer",
"LacesOut!",
"Graham Colehour",
"M Postkasse",
"Tomohiro Baba",
"David Ortega",
"ASLPro3D",
"Jacob Hoehler",
"FinalyFree",
"Weasyl",
"Lex Song",
"Cory Paza",
"Tak",
"Gonzalo Andre Allendes Lopez",
"Zach Gonser",
"Big Red",
"Jimmy Ledbetter",
"Luc Job",
"dl0901dm",
"Philip Hempel",
"corde",
"Nick Walker",
"Bishoujoker",
"conner",
"aai",
"Yaboi",
"Tori",
"wildnut",
"Princess Bright Eyes",
"Damon Cunliffe",
"CryptoTraderJK",
"Davaitamin",
"AbstractAss",
"ViperC",
"Aleksander Wujczyk",
"AM Kuro",
"jean jahren",
"Ran C",
"tedcor",
"S Sang",
"MagnaInsomnia",
"Akira_HentAI",
"Karl P.",
"Gordon Cole",
"yuxz69",
"MadSpin",
"andrew.tappan",
"dw",
"N/A",
"The Spawn",
"graysock",
"Greenmoustache",
"zounic",
"Gamalonia",
"fancypants",
"Vir",
"Joboshy",
"Digital",
"JaxMax",
"takyamtom",
"Bohemian Corporal",
"奚明 刘",
"Dan",
"Seth Christensen",
"Jwk0205",
"Bro Xie",
"Draven T",
"yer fey",
"batblue",
"carey6409",
"Olive",
"太郎 ゲーム",
"Some Guy Named Barry",
"jinxedx",
"Aquatic Coffee",
"Max Marklund",
"AELOX",
"Dankin",
"Nicfit23",
"Noora",
"ethanfel",
"wamekukyouzin",
"drum matthieu",
"Dogmaster",
"Matt Wenzel",
"Mattssn",
"Frank Nitty",
"John Saveas",
"Focuschannel",
"Christopher Michel",
"Serge Bekenkamp",
"LeoZero",
"Antonio Pontes",
"ApathyJones",
"nahinahi9",
"Anthony Faxlandez",
"Dustin Chen",
"dan",
"Blackfish95",
"Mouthlessman",
"Steam Steam",
"Paul Kroll",
"otaku fra",
"semicolon drainpipe",
"Thesharingbrother",
"Fotek Design",
"Bas Imagineer",
"Pat Hen",
"ResidentDeviant",
"Adam Taylor",
"JC",
"Weird_With_A_Beard",
"Prompt Pirate",
"Pozadine1",
"uwutismxd",
"Qarob",
"AIGooner",
"inbijiburu",
"decoy",
"Luc",
"ProtonPrince",
"DiffDuck",
"elu3199",
"Nick “Loadstone” D",
"Hasturkun",
"Jon Sandman",
"Ubivis",
"CloudValley",
"thesoftwaredruid",
"wundershark",
"mr_dinosaur",
"Tyrswood",
"linnfrey",
"zenobeus",
"Jackthemind",
"Stryker",
"Pkrsky",
"raf8osz",
"blikkies",
"Josef Lanzl",
"Griffin Dahlberg",
"준희 김",
"Error_Rule34_Not_found",
"Gerald Welly",
"Shock Shockor",
"Roslynd",
"Geolog",
"Goldwaters",
"Neco28",
"Zude",
"Cristian Vazquez",
"Kyler",
"Magic Noob",
"aRtFuL_DodGeR",
"X",
"DougPeterson",
"Jeff",
"Bruce",
"CrimsonDX",
"Kevin John Duck",
"Kevin Christopher",
"Ouro Boros",
"DarkSunset",
"dd",
"Billy Gladky",
"Probis",
"shrshpp",
"Dušan Ryban",
"ItsGeneralButtNaked",
"sjon kreutz",
"Nimess",
"John Statham",
"Youguang",
"Nihongasuki",
"Metryman55",
"andrewzpong",
"FrxzenSnxw",
"BossGame",
"Ray Wing",
"Ranzitho",
"Gus",
"地獄の禄",
"MJG",
"David LaVallee",
"ae",
"Tr4shP4nda",
"WRL_SPR",
"capn",
"Joseph",
"lrdchs",
"Mirko Katzula",
"dan",
"Piccio08",
"kumakichi",
"cppbel",
"starbugx",
"Moon Knight",
"몽타주",
"Kland",
"Hailshem",
"ryoma",
"John Martin",
"Chris",
"Brian M",
"Nerezza",
"sanborondon",
"moranqianlong",
"Taylor Funk",
"aezin",
"Thought2Form",
"jcay015",
"Kevin Picco",
"Erik Lopez",
"Mateo Curić",
"Haru Yotu",
"Eris3D",
"m",
"Pierce McBride",
"Joshua Gray",
"Mikko Hemilä",
"Matura Arbeit",
"Jamie Ogletree",
"TBitz33",
"Emil Bernhoff",
"a _",
"SendingRavens",
"James Coleman",
"Martial",
"battu",
"Emil Andersson",
"Chad Idk",
"Michael Docherty",
"Yuji Kaneko",
"elitassj",
"Jacob Winter",
"Jordan Shaw",
"Sam",
"Rops Alot",
"SRDB",
"g unit",
"Ace Ventura",
"David",
"Meilo",
"Pen Bouryoung",
"shinonomeiro",
"Snille",
"MaartenAlbers",
"khanh duy",
"xybrightsummer",
"jreedatchison",
"PhilW",
"momokai",
"Janik",
"kudari",
"Naomi Hale Danchi",
"dc7431",
"ken",
"Inversity",
"Crocket",
"AIVORY3D",
"epicgamer0020690",
"Joshua Porrata",
"Cruel",
"keemun",
"SuBu",
"RedPIXel",
"MRBlack",
"Kevinj",
"Wind",
"Nexus",
"Mitchell Robson",
"Ramneek“Guy”Ashok",
"squid_actually",
"Nat_20",
"Kiyoe",
"Edward Weeks",
"kyoumei",
"RadStorm04",
"JohnDoe42054",
"BillyHill",
"humptynutz",
"emyth",
"michael.isaza",
"Kalnei",
"chriphost",
"KitKatM",
"socrasteeze",
"ResidentDeviant",
"Scott",
"gzmzmvp",
"Welkor",
"hayden",
"Richard",
"ahoystan",
"Leland Saunders",
"Andrew",
"Bob Barker",
"Robert Wegemund",
"Littlehuggy",
"Gregory Kozhemiak",
"mrjuan",
"Aeternyx",
"Brian Buie",
"YOU SINWOO",
"Sadlip",
"ja s",
"Eric Whitney",
"Doug Mason",
"Joey Callahan",
"Ivan Tadic",
"y2Rxy7FdXzWo",
"Jeremy Townsend",
"Mike Simone",
"Sean voets",
"Owen Gwosdz",
"Morgandel",
"Thomas Wanner",
"Kyron Mahan",
"Theerat Jiramate",
"Noah",
"Jacob McDaniel",
"kevin stoddard",
"Sloan Steddy",
"Jack Dole",
"Ezokewn",
"Temikus",
"Artokun",
"Michael Taylor",
"Derek Baker",
"Michael Anthony Scott",
"Atilla Berke Pekduyar",
"Maso",
"Nathan",
"Decx _",
"Kevin Wallace",
"Matheus Couto",
"Paul Hartsuyker",
"ChicRic",
"mercur",
"J C",
"Distortik",
"Yves Poezevara",
"Teriak47",
"Just me",
"Raf Stahelin",
"Вячеслав Маринин",
"Cola Matthew",
"OniNoKen",
"Iain Wisely",
"Zertens",
"NOHOW",
"Apo",
"nekotxt",
"choowkee",
"Clusters",
"ibrahim",
"Highlandrise",
"philcoraz",
"mztn",
"ImagineerNL",
"MrAcrtosSursus",
"al300680",
"pixl",
"Robin",
"chahknoir",
"Marcus thronico",
"nd",
"keno94d",
"James Melzer",
"Bartleby",
"Renvertere",
"Rahuy",
"Hermann003",
"D",
"Foolish",
"RevyHiep",
"Captain_Swag",
"obkircher",
"Tree Tagger",
"gwyar",
"D",
"edgecase",
"Neoxena",
"mrmhalo",
"dg",
"Whitepinetrader",
"Maarten Harms",
"OrganicArtifact",
"四糸凜音",
"MudkipMedkitz",
"Israel",
"deanbrian",
"POPPIN",
"Muratoraccio",
"SelfishMedic",
"Ginnie",
"Alex Wortman",
"Cody",
"adderleighn",
"Raku",
"smart.edge5178",
"emadsultan",
"InformedViewz",
"CHKeeho80",
"Bubbafett",
"leaf",
"Menard",
"Skyfire83",
"Adam Rinehart",
"D",
"Pitpe11",
"TheD1rtyD03",
"EnragedAntelope",
"moonpetal",
"SomeDude",
"g9p0o",
"nanana",
"TheHolySheep",
"Monte Won",
"SpringBootisTrash",
"carsten",
"ikok",
"Buecyb99",
"4IXplr0r3r",
"Coeur+de+cochon",
"David Schenck",
"han b",
"Nico",
"Wolfe7D1",
"Banana Joe",
"_ G3n",
"Donovan Jenkins",
"Ink Temptation",
"edk",
"Michael Eid",
"beersandbacon",
"Maximilian Pyko",
"Invis",
"Kalli Core",
"Justin Houston",
"james",
"elleshar666",
"OrochiNights",
"Michael Zhu",
"ACTUALLY_the_Real_Willem_Dafoe",
"gonzalo",
"Seraphy",
"雨の心 落",
"AllTimeNoobie",
"jumpd",
"John C",
"Kauffy",
"Rim",
"Dismem",
"EpicElric",
"John J Linehan",
"Xan Dionysus",
"Nathan lee",
"Mewtora",
"Elliot E",
"Middo",
"Forbidden Atelier",
"Edward Kennedy",
"Justin Blaylock",
"Adictedtohumping",
"Devil Lude",
"Nick Kage",
"Towelie",
"Vane Holzer",
"psytrax",
"Cyrus Fett",
"Jean-françois SEMA",
"Kurt",
"hexxish",
"giani kidd",
"CptNeo",
"notedfakes",
"Chase Kwon",
"Goober719",
"Eric Ketchum",
"Chad Barnes",
"NICHOLAS BAXLEY",
"Michael Scott",
"James Ming",
"vanditking",
"kripitonga",
"Rizzi",
"nimin",
"OMAR LUCIANO",
"Jo+Example",
"BrentBertram",
"eumelzocker",
"dxjaymz",
"L C",
"Dude"
],
"totalCount": 620
}

View File

@@ -0,0 +1,363 @@
# metadata.json Schema Documentation
This document defines the complete schema for `.metadata.json` files used by Lora Manager. These sidecar files store model metadata alongside model files (LoRA, Checkpoint, Embedding).
## Overview
- **File naming**: `<model_name>.metadata.json` (e.g., `my_lora.safetensors``my_lora.metadata.json`)
- **Format**: JSON with UTF-8 encoding
- **Purpose**: Store model metadata, tags, descriptions, preview images, and Civitai/CivArchive integration data
- **Extensibility**: Unknown fields are preserved via `_unknown_fields` mechanism for forward compatibility
---
## Base Fields (All Model Types)
These fields are present in all model metadata files.
| Field | Type | Required | Auto-Updated | Description |
|-------|------|----------|--------------|-------------|
| `file_name` | string | ✅ Yes | ✅ Yes | Filename without extension (e.g., `"my_lora"`) |
| `model_name` | string | ✅ Yes | ❌ No | Display name of the model. **Default**: `file_name` if no other source |
| `file_path` | string | ✅ Yes | ✅ Yes | Full absolute path to the model file (normalized with `/` separators) |
| `size` | integer | ✅ Yes | ❌ No | File size in bytes. **Set at**: Initial scan or download completion. Does not change thereafter. |
| `modified` | float | ✅ Yes | ❌ No | **Import timestamp** — Unix timestamp when the model was first imported/added to the system. Used for "Date Added" sorting. Does not change after initial creation. |
| `sha256` | string | ⚠️ Conditional | ✅ Yes | SHA256 hash of the model file (lowercase). **LoRA**: Required. **Checkpoint**: May be empty when `hash_status="pending"` (lazy hash calculation) |
| `base_model` | string | ❌ No | ❌ No | Base model type. **Examples**: `"SD 1.5"`, `"SDXL 1.0"`, `"SDXL Lightning"`, `"Flux.1 D"`, `"Flux.1 S"`, `"Flux.1 Krea"`, `"Illustrious"`, `"Pony"`, `"AuraFlow"`, `"Kolors"`, `"ZImageTurbo"`, `"Wan Video"`, etc. **Default**: `"Unknown"` or `""` |
| `preview_url` | string | ❌ No | ✅ Yes | Path to preview image file |
| `preview_nsfw_level` | integer | ❌ No | ❌ No | NSFW level using **bitmask values** from Civitai: `1` (PG), `2` (PG13), `4` (R), `8` (X), `16` (XXX), `32` (Blocked). **Default**: `0` (none) |
| `notes` | string | ❌ No | ❌ No | User-defined notes |
| `from_civitai` | boolean | ❌ No (default: `true`) | ❌ No | Whether the model originated from Civitai |
| `civitai` | object | ❌ No | ⚠️ Partial | Civitai/CivArchive API data and user-defined fields |
| `tags` | array[string] | ❌ No | ⚠️ Partial | Model tags (merged from API and user input) |
| `modelDescription` | string | ❌ No | ⚠️ Partial | Full model description (from API or user) |
| `civitai_deleted` | boolean | ❌ No (default: `false`) | ❌ No | Whether the model was deleted from Civitai |
| `favorite` | boolean | ❌ No (default: `false`) | ❌ No | Whether the model is marked as favorite |
| `exclude` | boolean | ❌ No (default: `false`) | ❌ No | Whether to exclude from cache/scanning. User can set from `false` to `true` (currently no UI to revert) |
| `db_checked` | boolean | ❌ No (default: `false`) | ❌ No | Whether checked against archive database |
| `skip_metadata_refresh` | boolean | ❌ No (default: `false`) | ❌ No | Skip this model during bulk metadata refresh |
| `metadata_source` | string\|null | ❌ No | ✅ Yes | Last provider that supplied metadata (see below) |
| `last_checked_at` | float | ❌ No (default: `0`) | ✅ Yes | Unix timestamp of last metadata check |
| `hash_status` | string | ❌ No (default: `"completed"`) | ✅ Yes | Hash calculation status: `"pending"`, `"calculating"`, `"completed"`, `"failed"` |
---
## Model-Specific Fields
### LoRA Models
LoRA models do not have a `model_type` field in metadata.json. The type is inferred from context or `civitai.type` (e.g., `"LoRA"`, `"LoCon"`, `"DoRA"`).
| Field | Type | Required | Auto-Updated | Description |
|-------|------|----------|--------------|-------------|
| `usage_tips` | string (JSON) | ❌ No (default: `"{}"`) | ❌ No | JSON string containing recommended usage parameters |
**`usage_tips` JSON structure:**
```json
{
"strength_min": 0.3,
"strength_max": 0.8,
"strength_range": "0.3-0.8",
"strength": 0.6,
"clip_strength": 0.5,
"clip_skip": 2
}
```
| Key | Type | Description |
|-----|------|-------------|
| `strength_min` | number | Minimum recommended model strength |
| `strength_max` | number | Maximum recommended model strength |
| `strength_range` | string | Human-readable strength range |
| `strength` | number | Single recommended strength value |
| `clip_strength` | number | Recommended CLIP/embedding strength |
| `clip_skip` | integer | Recommended CLIP skip value |
---
### Checkpoint Models
| Field | Type | Required | Auto-Updated | Description |
|-------|------|----------|--------------|-------------|
| `model_type` | string | ❌ No (default: `"checkpoint"`) | ❌ No | Model type: `"checkpoint"`, `"diffusion_model"` |
---
### Embedding Models
| Field | Type | Required | Auto-Updated | Description |
|-------|------|----------|--------------|-------------|
| `model_type` | string | ❌ No (default: `"embedding"`) | ❌ No | Model type: `"embedding"` |
---
## The `civitai` Field Structure
The `civitai` object stores the complete Civitai/CivArchive API response. Lora Manager preserves all fields from the API for future compatibility and extracts specific fields for use in the application.
### Version-Level Fields (Civitai API)
**Fields Used by Lora Manager:**
| Field | Type | Description |
|-------|------|-------------|
| `id` | integer | Version ID |
| `modelId` | integer | Parent model ID |
| `name` | string | Version name (e.g., `"v1.0"`, `"v2.0-pruned"`) |
| `nsfwLevel` | integer | NSFW level (bitmask: 1=PG, 2=PG13, 4=R, 8=X, 16=XXX, 32=Blocked) |
| `baseModel` | string | Base model (e.g., `"SDXL 1.0"`, `"Flux.1 D"`, `"Illustrious"`, `"Pony"`) |
| `trainedWords` | array[string] | **Trigger words** for the model |
| `type` | string | Model type (`"LoRA"`, `"Checkpoint"`, `"TextualInversion"`) |
| `earlyAccessEndsAt` | string\|null | Early access end date (used for update notifications) |
| `description` | string | Version description (HTML) |
| `model` | object | Parent model object (see Model-Level Fields below) |
| `creator` | object | Creator information (see Creator Fields below) |
| `files` | array[object] | File list with hashes, sizes, download URLs (used for metadata extraction) |
| `images` | array[object] | Image list with metadata, prompts, NSFW levels (used for preview/examples) |
**Fields Stored but Not Currently Used:**
| Field | Type | Description |
|-------|------|-------------|
| `createdAt` | string (ISO 8601) | Creation timestamp |
| `updatedAt` | string (ISO 8601) | Last update timestamp |
| `status` | string | Version status (e.g., `"Published"`, `"Draft"`) |
| `publishedAt` | string (ISO 8601) | Publication timestamp |
| `baseModelType` | string | Base model type (e.g., `"Standard"`, `"Inpaint"`, `"Refiner"`) |
| `earlyAccessConfig` | object | Early access configuration |
| `uploadType` | string | Upload type (`"Created"`, `"FineTuned"`, etc.) |
| `usageControl` | string | Usage control setting |
| `air` | string | Artifact ID (URN format: `urn:air:sdxl:lora:civitai:122359@135867`) |
| `stats` | object | Download count, ratings, thumbs up count |
| `videos` | array[object] | Video list |
| `downloadUrl` | string | Direct download URL |
| `trainingStatus` | string\|null | Training status (for on-site training) |
| `trainingDetails` | object\|null | Training configuration |
### Model-Level Fields (`civitai.model.*`)
**Fields Used by Lora Manager:**
| Field | Type | Description |
|-------|------|-------------|
| `name` | string | Model name |
| `type` | string | Model type (`"LoRA"`, `"Checkpoint"`, `"TextualInversion"`) |
| `description` | string | Model description (HTML, used for `modelDescription`) |
| `tags` | array[string] | Model tags (used for `tags` field) |
| `allowNoCredit` | boolean | License: allow use without credit |
| `allowCommercialUse` | array[string] | License: allowed commercial uses. **Values**: `"Image"` (sell generated images), `"Video"` (sell generated videos), `"RentCivit"` (rent on Civitai), `"Rent"` (rent elsewhere) |
| `allowDerivatives` | boolean | License: allow derivatives |
| `allowDifferentLicense` | boolean | License: allow different license |
**Fields Stored but Not Currently Used:**
| Field | Type | Description |
|-------|------|-------------|
| `nsfw` | boolean | Model NSFW flag |
| `poi` | boolean | Person of Interest flag |
### Creator Fields (`civitai.creator.*`)
Both fields are used by Lora Manager:
| Field | Type | Description |
|-------|------|-------------|
| `username` | string | Creator username (used for author display and search) |
| `image` | string | Creator avatar URL (used for display) |
### Model Type Field (Top-Level, Outside `civitai`)
| Field | Type | Values | Description |
|-------|------|--------|-------------|
| `model_type` | string | `"checkpoint"`, `"diffusion_model"`, `"embedding"` | Stored in metadata.json for Checkpoint and Embedding models. **Note**: LoRA models do not have this field; type is inferred from `civitai.type` or context. |
### User-Defined Fields (Within `civitai`)
For models not from Civitai or user-added data:
| Field | Type | Description |
|-------|------|-------------|
| `trainedWords` | array[string] | **Trigger words** — manually added by user |
| `customImages` | array[object] | Custom example images added by user |
### customImages Structure
Each custom image entry has the following structure:
```json
{
"url": "",
"id": "short_id",
"nsfwLevel": 0,
"width": 832,
"height": 1216,
"type": "image",
"meta": {
"prompt": "...",
"negativePrompt": "...",
"steps": 20,
"cfgScale": 7,
"seed": 123456
},
"hasMeta": true,
"hasPositivePrompt": true
}
```
| Field | Type | Description |
|-------|------|-------------|
| `url` | string | Empty for local custom images |
| `id` | string | Short ID or filename |
| `nsfwLevel` | integer | NSFW level (bitmask) |
| `width` | integer | Image width in pixels |
| `height` | integer | Image height in pixels |
| `type` | string | `"image"` or `"video"` |
| `meta` | object\|null | Generation metadata (prompt, seed, etc.) extracted from image |
| `hasMeta` | boolean | Whether metadata is available |
| `hasPositivePrompt` | boolean | Whether a positive prompt is available |
### Minimal Non-Civitai Example
```json
{
"civitai": {
"trainedWords": ["my_trigger_word"]
}
}
```
### Non-Civitai Example Without Trigger Words
```json
{
"civitai": {}
}
```
### Example: User-Added Custom Images
```json
{
"civitai": {
"trainedWords": ["custom_style"],
"customImages": [
{
"url": "",
"id": "example_1",
"nsfwLevel": 0,
"width": 832,
"height": 1216,
"type": "image",
"meta": {
"prompt": "example prompt",
"seed": 12345
},
"hasMeta": true,
"hasPositivePrompt": true
}
]
}
}
```
---
## Metadata Source Values
The `metadata_source` field indicates which provider last updated the metadata:
| Value | Source |
|-------|--------|
| `"civitai_api"` | Civitai API |
| `"civarchive"` | CivArchive API |
| `"archive_db"` | Metadata Archive Database |
| `null` | No external source (user-defined only) |
---
## Auto-Update Behavior
### Fields Updated During Scanning
These fields are automatically synchronized with the filesystem:
- `file_name` — Updated if actual filename differs
- `file_path` — Normalized and updated if path changes
- `preview_url` — Updated if preview file is moved/removed
- `sha256` — Updated during hash calculation (when `hash_status="pending"`)
- `hash_status` — Updated during hash calculation
- `last_checked_at` — Timestamp of scan
- `metadata_source` — Set based on metadata provider
### Fields Set Once (Immutable After Import)
These fields are set when the model is first imported/scanned and **never change** thereafter:
- `modified` — Import timestamp (used for "Date Added" sorting)
- `size` — File size at time of import/download
### User-Editable Fields
These fields can be edited by users at any time through the Lora Manager UI or by manually editing the metadata.json file:
- `model_name` — Display name
- `tags` — Model tags
- `modelDescription` — Model description
- `notes` — User notes
- `favorite` — Favorite flag
- `exclude` — Exclude from scanning (user can set `false``true`, currently no UI to revert)
- `skip_metadata_refresh` — Skip during bulk refresh
- `civitai.trainedWords` — Trigger words
- `civitai.customImages` — Custom example images
- `usage_tips` — Usage recommendations (LoRA only)
---
## Field Reference by Behavior
### Required Fields (Must Always Exist)
- `file_name`
- `model_name` (defaults to `file_name` if not provided)
- `file_path`
- `size`
- `modified`
- `sha256` (LoRA: always required; Checkpoint: may be empty when `hash_status="pending"`)
### Optional Fields with Defaults
| Field | Default |
|-------|---------|
| `base_model` | `"Unknown"` or `""` |
| `preview_nsfw_level` | `0` |
| `from_civitai` | `true` |
| `civitai` | `{}` |
| `tags` | `[]` |
| `modelDescription` | `""` |
| `notes` | `""` |
| `civitai_deleted` | `false` |
| `favorite` | `false` |
| `exclude` | `false` |
| `db_checked` | `false` |
| `skip_metadata_refresh` | `false` |
| `metadata_source` | `null` |
| `last_checked_at` | `0` |
| `hash_status` | `"completed"` |
| `usage_tips` | `"{}"` (LoRA only) |
| `model_type` | `"checkpoint"` or `"embedding"` (not present in LoRA models) |
---
## Version History
| Version | Date | Changes |
|---------|------|---------|
| 1.0 | 2026-03 | Initial schema documentation |
---
## See Also
- [JSON Schema Definition](../.specs/metadata.schema.json) — Formal JSON Schema for validation

View File

@@ -1,8 +1,11 @@
{
"common": {
"cancel": "Abbrechen",
"confirm": "Bestätigen",
"actions": {
"save": "Speichern",
"cancel": "Abbrechen",
"confirm": "Bestätigen",
"delete": "Löschen",
"move": "Verschieben",
"refresh": "Aktualisieren",
@@ -11,7 +14,8 @@
"backToTop": "Nach oben",
"settings": "Einstellungen",
"help": "Hilfe",
"add": "Hinzufügen"
"add": "Hinzufügen",
"close": "Schließen"
},
"status": {
"loading": "Wird geladen...",
@@ -219,7 +223,7 @@
"presetNamePlaceholder": "Voreinstellungsname...",
"baseModel": "Basis-Modell",
"modelTags": "Tags (Top 20)",
"modelTypes": "Model Types",
"modelTypes": "Modelltypen",
"license": "Lizenz",
"noCreditRequired": "Kein Credit erforderlich",
"allowSellingGeneratedContent": "Verkauf erlaubt",
@@ -361,6 +365,23 @@
"defaultEmbeddingRootHelp": "Legen Sie den Standard-Embedding-Stammordner für Downloads, Importe und Verschiebungen fest",
"noDefault": "Kein Standard"
},
"extraFolderPaths": {
"title": "Zusätzliche Ordnerpfade",
"help": "Fügen Sie zusätzliche Modellordner außerhalb der Standardpfade von ComfyUI hinzu. Diese Pfade werden separat gespeichert und zusammen mit den Standardordnern gescannt.",
"description": "Konfigurieren Sie zusätzliche Ordner zum Scannen von Modellen. Diese Pfade sind spezifisch für LoRA Manager und werden mit den Standardpfaden von ComfyUI zusammengeführt.",
"modelTypes": {
"lora": "LoRA-Pfade",
"checkpoint": "Checkpoint-Pfade",
"unet": "Diffusionsmodell-Pfade",
"embedding": "Embedding-Pfade"
},
"pathPlaceholder": "/pfad/zu/extra/modellen",
"saveSuccess": "Zusätzliche Ordnerpfade aktualisiert.",
"saveError": "Fehler beim Aktualisieren der zusätzlichen Ordnerpfade: {message}",
"validation": {
"duplicatePath": "Dieser Pfad ist bereits konfiguriert"
}
},
"priorityTags": {
"title": "Prioritäts-Tags",
"description": "Passen Sie die Tag-Prioritätsreihenfolge für jeden Modelltyp an (z. B. character, concept, style(toon|toon_style))",
@@ -485,23 +506,6 @@
"proxyPassword": "Passwort (optional)",
"proxyPasswordPlaceholder": "passwort",
"proxyPasswordHelp": "Passwort für die Proxy-Authentifizierung (falls erforderlich)"
},
"extraFolderPaths": {
"title": "Zusätzliche Ordnerpfade",
"help": "Fügen Sie zusätzliche Modellordner außerhalb der Standardpfade von ComfyUI hinzu. Diese Pfade werden separat gespeichert und zusammen mit den Standardordnern gescannt.",
"description": "Konfigurieren Sie zusätzliche Ordner zum Scannen von Modellen. Diese Pfade sind spezifisch für LoRA Manager und werden mit den Standardpfaden von ComfyUI zusammengeführt.",
"modelTypes": {
"lora": "LoRA-Pfade",
"checkpoint": "Checkpoint-Pfade",
"unet": "Diffusionsmodell-Pfade",
"embedding": "Embedding-Pfade"
},
"pathPlaceholder": "/pfad/zu/extra/modellen",
"saveSuccess": "Zusätzliche Ordnerpfade aktualisiert.",
"saveError": "Fehler beim Aktualisieren der zusätzlichen Ordnerpfade: {message}",
"validation": {
"duplicatePath": "Dieser Pfad ist bereits konfiguriert"
}
}
},
"loras": {
@@ -682,7 +686,11 @@
"lorasCountAsc": "Wenigste"
},
"refresh": {
"title": "Rezeptliste aktualisieren"
"title": "Rezeptliste aktualisieren",
"quick": "Änderungen synchronisieren",
"quickTooltip": "Änderungen synchronisieren - schnelle Aktualisierung ohne Cache-Neubau",
"full": "Cache neu aufbauen",
"fullTooltip": "Cache neu aufbauen - vollständiger Rescan aller Rezeptdateien"
},
"filteredByLora": "Gefiltert nach LoRA",
"favorites": {
@@ -722,6 +730,64 @@
"failed": "Rezept-Reparatur fehlgeschlagen: {message}",
"missingId": "Rezept kann nicht repariert werden: Fehlende Rezept-ID"
}
},
"batchImport": {
"title": "[TODO: Translate] Batch Import Recipes",
"action": "[TODO: Translate] Batch Import",
"urlList": "[TODO: Translate] URL List",
"directory": "[TODO: Translate] Directory",
"urlDescription": "[TODO: Translate] Enter image URLs or local file paths (one per line). Each will be imported as a recipe.",
"directoryDescription": "[TODO: Translate] Enter a directory path to import all images from that folder.",
"urlsLabel": "[TODO: Translate] Image URLs or Local Paths",
"urlsPlaceholder": "[TODO: Translate] https://civitai.com/images/...\nhttps://civitai.com/images/...\nC:/path/to/image.png\n...",
"urlsHint": "[TODO: Translate] Enter one URL or path per line",
"directoryPath": "[TODO: Translate] Directory Path",
"directoryPlaceholder": "[TODO: Translate] /path/to/images/folder",
"browse": "[TODO: Translate] Browse",
"recursive": "[TODO: Translate] Include subdirectories",
"tagsOptional": "[TODO: Translate] Tags (optional, applied to all recipes)",
"tagsPlaceholder": "[TODO: Translate] Enter tags separated by commas",
"tagsHint": "[TODO: Translate] Tags will be added to all imported recipes",
"skipNoMetadata": "[TODO: Translate] Skip images without metadata",
"skipNoMetadataHelp": "[TODO: Translate] Images without LoRA metadata will be skipped automatically.",
"start": "[TODO: Translate] Start Import",
"startImport": "[TODO: Translate] Start Import",
"importing": "[TODO: Translate] Importing...",
"progress": "[TODO: Translate] Progress",
"total": "[TODO: Translate] Total",
"success": "[TODO: Translate] Success",
"failed": "[TODO: Translate] Failed",
"skipped": "[TODO: Translate] Skipped",
"current": "[TODO: Translate] Current",
"currentItem": "[TODO: Translate] Current",
"preparing": "[TODO: Translate] Preparing...",
"cancel": "[TODO: Translate] Cancel",
"cancelImport": "[TODO: Translate] Cancel",
"cancelled": "[TODO: Translate] Import cancelled",
"completed": "[TODO: Translate] Import completed",
"completedWithErrors": "[TODO: Translate] Completed with errors",
"completedSuccess": "[TODO: Translate] Successfully imported {count} recipe(s)",
"successCount": "[TODO: Translate] Successful",
"failedCount": "[TODO: Translate] Failed",
"skippedCount": "[TODO: Translate] Skipped",
"totalProcessed": "[TODO: Translate] Total processed",
"viewDetails": "[TODO: Translate] View Details",
"newImport": "[TODO: Translate] New Import",
"manualPathEntry": "[TODO: Translate] Please enter the directory path manually. File browser is not available in this browser.",
"batchImportDirectorySelected": "[TODO: Translate] Directory selected: {name}. You may need to enter the full path manually.",
"batchImportManualEntryRequired": "[TODO: Translate] File browser not available. Please enter the directory path manually.",
"backToParent": "[TODO: Translate] Back to parent directory",
"folders": "[TODO: Translate] Folders",
"folderCount": "[TODO: Translate] {count} folders",
"imageFiles": "[TODO: Translate] Image Files",
"images": "[TODO: Translate] images",
"imageCount": "[TODO: Translate] {count} images",
"selectFolder": "[TODO: Translate] Select This Folder",
"errors": {
"enterUrls": "[TODO: Translate] Please enter at least one URL or path",
"enterDirectory": "[TODO: Translate] Please enter a directory path",
"startFailed": "[TODO: Translate] Failed to start import: {message}"
}
}
},
"checkpoints": {
@@ -750,7 +816,17 @@
"collapseAllDisabled": "Im Listenmodus nicht verfügbar",
"dragDrop": {
"unableToResolveRoot": "Zielpfad für das Verschieben konnte nicht ermittelt werden.",
"moveUnsupported": "Move is not supported for this item."
"moveUnsupported": "Verschieben wird für dieses Element nicht unterstützt.",
"createFolderHint": "Loslassen, um einen neuen Ordner zu erstellen",
"newFolderName": "Neuer Ordnername",
"folderNameHint": "Eingabetaste zum Bestätigen, Escape zum Abbrechen",
"emptyFolderName": "Bitte geben Sie einen Ordnernamen ein",
"invalidFolderName": "Ordnername enthält ungültige Zeichen",
"noDragState": "Kein ausstehender Ziehvorgang gefunden"
},
"empty": {
"noFolders": "Keine Ordner gefunden",
"dragHint": "Elemente hierher ziehen, um Ordner zu erstellen"
}
},
"statistics": {
@@ -1342,7 +1418,14 @@
"showWechatQR": "WeChat QR-Code anzeigen",
"hideWechatQR": "WeChat QR-Code ausblenden"
},
"footer": "Vielen Dank, dass Sie LoRA Manager verwenden! ❤️"
"footer": "Vielen Dank, dass Sie LoRA Manager verwenden! ❤️",
"supporters": {
"title": "Danke an alle Unterstützer",
"subtitle": "Danke an {count} Unterstützer, die dieses Projekt möglich gemacht haben",
"specialThanks": "Besonderer Dank",
"allSupporters": "Alle Unterstützer",
"totalCount": "{count} Unterstützer insgesamt"
}
},
"toast": {
"general": {
@@ -1376,6 +1459,8 @@
"loadFailed": "Fehler beim Laden der {modelType}s: {message}",
"refreshComplete": "Aktualisierung abgeschlossen",
"refreshFailed": "Fehler beim Aktualisieren der Rezepte: {message}",
"syncComplete": "Synchronisation abgeschlossen",
"syncFailed": "Fehler beim Synchronisieren der Rezepte: {message}",
"updateFailed": "Fehler beim Aktualisieren des Rezepts: {error}",
"updateError": "Fehler beim Aktualisieren des Rezepts: {message}",
"nameSaved": "Rezept \"{name}\" erfolgreich gespeichert",
@@ -1412,7 +1497,14 @@
"recipeSaveFailed": "Fehler beim Speichern des Rezepts: {error}",
"importFailed": "Import fehlgeschlagen: {message}",
"folderTreeFailed": "Fehler beim Laden des Ordnerbaums",
"folderTreeError": "Fehler beim Laden des Ordnerbaums"
"folderTreeError": "Fehler beim Laden des Ordnerbaums",
"batchImportFailed": "[TODO: Translate] Failed to start batch import: {message}",
"batchImportCancelling": "[TODO: Translate] Cancelling batch import...",
"batchImportCancelFailed": "[TODO: Translate] Failed to cancel batch import: {message}",
"batchImportNoUrls": "[TODO: Translate] Please enter at least one URL or file path",
"batchImportNoDirectory": "[TODO: Translate] Please enter a directory path",
"batchImportBrowseFailed": "[TODO: Translate] Failed to browse directory: {message}",
"batchImportDirectorySelected": "[TODO: Translate] Directory selected: {path}"
},
"models": {
"noModelsSelected": "Keine Modelle ausgewählt",

View File

@@ -1,8 +1,11 @@
{
"common": {
"cancel": "Cancel",
"confirm": "Confirm",
"actions": {
"save": "Save",
"cancel": "Cancel",
"confirm": "Confirm",
"delete": "Delete",
"move": "Move",
"refresh": "Refresh",
@@ -11,7 +14,8 @@
"backToTop": "Back to top",
"settings": "Settings",
"help": "Help",
"add": "Add"
"add": "Add",
"close": "Close"
},
"status": {
"loading": "Loading...",
@@ -682,7 +686,11 @@
"lorasCountAsc": "Least"
},
"refresh": {
"title": "Refresh recipe list"
"title": "Refresh recipe list",
"quick": "Sync Changes",
"quickTooltip": "Sync changes - quick refresh without rebuilding cache",
"full": "Rebuild Cache",
"fullTooltip": "Rebuild cache - full rescan of all recipe files"
},
"filteredByLora": "Filtered by LoRA",
"favorites": {
@@ -722,6 +730,64 @@
"failed": "Failed to repair recipe: {message}",
"missingId": "Cannot repair recipe: Missing recipe ID"
}
},
"batchImport": {
"title": "Batch Import Recipes",
"action": "Batch Import",
"urlList": "URL List",
"directory": "Directory",
"urlDescription": "Enter image URLs or local file paths (one per line). Each will be imported as a recipe.",
"directoryDescription": "Enter a directory path to import all images from that folder.",
"urlsLabel": "Image URLs or Local Paths",
"urlsPlaceholder": "https://civitai.com/images/...\nhttps://civitai.com/images/...\nC:/path/to/image.png\n...",
"urlsHint": "Enter one URL or path per line",
"directoryPath": "Directory Path",
"directoryPlaceholder": "/path/to/images/folder",
"browse": "Browse",
"recursive": "Include subdirectories",
"tagsOptional": "Tags (optional, applied to all recipes)",
"tagsPlaceholder": "Enter tags separated by commas",
"tagsHint": "Tags will be added to all imported recipes",
"skipNoMetadata": "Skip images without metadata",
"skipNoMetadataHelp": "Images without LoRA metadata will be skipped automatically.",
"start": "Start Import",
"startImport": "Start Import",
"importing": "Importing...",
"progress": "Progress",
"total": "Total",
"success": "Success",
"failed": "Failed",
"skipped": "Skipped",
"current": "Current",
"currentItem": "Current",
"preparing": "Preparing...",
"cancel": "Cancel",
"cancelImport": "Cancel",
"cancelled": "Import cancelled",
"completed": "Import completed",
"completedWithErrors": "Completed with errors",
"completedSuccess": "Successfully imported {count} recipe(s)",
"successCount": "Successful",
"failedCount": "Failed",
"skippedCount": "Skipped",
"totalProcessed": "Total processed",
"viewDetails": "View Details",
"newImport": "New Import",
"manualPathEntry": "Please enter the directory path manually. File browser is not available in this browser.",
"batchImportDirectorySelected": "Directory selected: {path}",
"batchImportManualEntryRequired": "File browser not available. Please enter the directory path manually.",
"backToParent": "Back to parent directory",
"folders": "Folders",
"folderCount": "{count} folders",
"imageFiles": "Image Files",
"images": "images",
"imageCount": "{count} images",
"selectFolder": "Select This Folder",
"errors": {
"enterUrls": "Please enter at least one URL or path",
"enterDirectory": "Please enter a directory path",
"startFailed": "Failed to start import: {message}"
}
}
},
"checkpoints": {
@@ -750,7 +816,17 @@
"collapseAllDisabled": "Not available in list view",
"dragDrop": {
"unableToResolveRoot": "Unable to determine destination path for move.",
"moveUnsupported": "Move is not supported for this item."
"moveUnsupported": "Move is not supported for this item.",
"createFolderHint": "Release to create new folder",
"newFolderName": "New folder name",
"folderNameHint": "Press Enter to confirm, Escape to cancel",
"emptyFolderName": "Please enter a folder name",
"invalidFolderName": "Folder name contains invalid characters",
"noDragState": "No pending drag operation found"
},
"empty": {
"noFolders": "No folders found",
"dragHint": "Drag items here to create folders"
}
},
"statistics": {
@@ -1342,7 +1418,14 @@
"showWechatQR": "Show WeChat QR Code",
"hideWechatQR": "Hide WeChat QR Code"
},
"footer": "Thank you for using LoRA Manager! ❤️"
"footer": "Thank you for using LoRA Manager! ❤️",
"supporters": {
"title": "Thank You To Our Supporters",
"subtitle": "Thanks to {count} supporters who made this project possible",
"specialThanks": "Special Thanks",
"allSupporters": "All Supporters",
"totalCount": "{count} supporters in total"
}
},
"toast": {
"general": {
@@ -1376,6 +1459,8 @@
"loadFailed": "Failed to load {modelType}s: {message}",
"refreshComplete": "Refresh complete",
"refreshFailed": "Failed to refresh recipes: {message}",
"syncComplete": "Sync complete",
"syncFailed": "Failed to sync recipes: {message}",
"updateFailed": "Failed to update recipe: {error}",
"updateError": "Error updating recipe: {message}",
"nameSaved": "Recipe \"{name}\" saved successfully",
@@ -1412,7 +1497,14 @@
"recipeSaveFailed": "Failed to save recipe: {error}",
"importFailed": "Import failed: {message}",
"folderTreeFailed": "Failed to load folder tree",
"folderTreeError": "Error loading folder tree"
"folderTreeError": "Error loading folder tree",
"batchImportFailed": "Failed to start batch import: {message}",
"batchImportCancelling": "Cancelling batch import...",
"batchImportCancelFailed": "Failed to cancel batch import: {message}",
"batchImportNoUrls": "Please enter at least one URL or file path",
"batchImportNoDirectory": "Please enter a directory path",
"batchImportBrowseFailed": "Failed to browse directory: {message}",
"batchImportDirectorySelected": "Directory selected: {path}"
},
"models": {
"noModelsSelected": "No models selected",

View File

@@ -1,8 +1,11 @@
{
"common": {
"cancel": "Cancelar",
"confirm": "Confirmar",
"actions": {
"save": "Guardar",
"cancel": "Cancelar",
"confirm": "Confirmar",
"delete": "Eliminar",
"move": "Mover",
"refresh": "Actualizar",
@@ -11,7 +14,8 @@
"backToTop": "Volver arriba",
"settings": "Configuración",
"help": "Ayuda",
"add": "Añadir"
"add": "Añadir",
"close": "Cerrar"
},
"status": {
"loading": "Cargando...",
@@ -219,7 +223,7 @@
"presetNamePlaceholder": "Nombre del preajuste...",
"baseModel": "Modelo base",
"modelTags": "Etiquetas (Top 20)",
"modelTypes": "Model Types",
"modelTypes": "Tipos de modelos",
"license": "Licencia",
"noCreditRequired": "Sin crédito requerido",
"allowSellingGeneratedContent": "Venta permitida",
@@ -361,6 +365,23 @@
"defaultEmbeddingRootHelp": "Establecer el directorio raíz predeterminado de embedding para descargas, importaciones y movimientos",
"noDefault": "Sin predeterminado"
},
"extraFolderPaths": {
"title": "Rutas de carpetas adicionales",
"help": "Agregue carpetas de modelos adicionales fuera de las rutas estándar de ComfyUI. Estas rutas se almacenan por separado y se escanean junto con las carpetas predeterminadas.",
"description": "Configure carpetas adicionales para escanear modelos. Estas rutas son específicas de LoRA Manager y se fusionarán con las rutas predeterminadas de ComfyUI.",
"modelTypes": {
"lora": "Rutas de LoRA",
"checkpoint": "Rutas de Checkpoint",
"unet": "Rutas de modelo de difusión",
"embedding": "Rutas de Embedding"
},
"pathPlaceholder": "/ruta/a/modelos/extra",
"saveSuccess": "Rutas de carpetas adicionales actualizadas.",
"saveError": "Error al actualizar las rutas de carpetas adicionales: {message}",
"validation": {
"duplicatePath": "Esta ruta ya está configurada"
}
},
"priorityTags": {
"title": "Etiquetas prioritarias",
"description": "Personaliza el orden de prioridad de etiquetas para cada tipo de modelo (p. ej., character, concept, style(toon|toon_style))",
@@ -485,23 +506,6 @@
"proxyPassword": "Contraseña (opcional)",
"proxyPasswordPlaceholder": "contraseña",
"proxyPasswordHelp": "Contraseña para autenticación de proxy (si es necesario)"
},
"extraFolderPaths": {
"title": "Rutas de carpetas adicionales",
"help": "Agregue carpetas de modelos adicionales fuera de las rutas estándar de ComfyUI. Estas rutas se almacenan por separado y se escanean junto con las carpetas predeterminadas.",
"description": "Configure carpetas adicionales para escanear modelos. Estas rutas son específicas de LoRA Manager y se fusionarán con las rutas predeterminadas de ComfyUI.",
"modelTypes": {
"lora": "Rutas de LoRA",
"checkpoint": "Rutas de Checkpoint",
"unet": "Rutas de modelo de difusión",
"embedding": "Rutas de Embedding"
},
"pathPlaceholder": "/ruta/a/modelos/extra",
"saveSuccess": "Rutas de carpetas adicionales actualizadas.",
"saveError": "Error al actualizar las rutas de carpetas adicionales: {message}",
"validation": {
"duplicatePath": "Esta ruta ya está configurada"
}
}
},
"loras": {
@@ -682,7 +686,11 @@
"lorasCountAsc": "Menos"
},
"refresh": {
"title": "Actualizar lista de recetas"
"title": "Actualizar lista de recetas",
"quick": "Sincronizar cambios",
"quickTooltip": "Sincronizar cambios - actualización rápida sin reconstruir caché",
"full": "Reconstruir caché",
"fullTooltip": "Reconstruir caché - reescaneo completo de todos los archivos de recetas"
},
"filteredByLora": "Filtrado por LoRA",
"favorites": {
@@ -722,6 +730,64 @@
"failed": "Error al reparar la receta: {message}",
"missingId": "No se puede reparar la receta: falta el ID de la receta"
}
},
"batchImport": {
"title": "[TODO: Translate] Batch Import Recipes",
"action": "[TODO: Translate] Batch Import",
"urlList": "[TODO: Translate] URL List",
"directory": "[TODO: Translate] Directory",
"urlDescription": "[TODO: Translate] Enter image URLs or local file paths (one per line). Each will be imported as a recipe.",
"directoryDescription": "[TODO: Translate] Enter a directory path to import all images from that folder.",
"urlsLabel": "[TODO: Translate] Image URLs or Local Paths",
"urlsPlaceholder": "[TODO: Translate] https://civitai.com/images/...\nhttps://civitai.com/images/...\nC:/path/to/image.png\n...",
"urlsHint": "[TODO: Translate] Enter one URL or path per line",
"directoryPath": "[TODO: Translate] Directory Path",
"directoryPlaceholder": "[TODO: Translate] /path/to/images/folder",
"browse": "[TODO: Translate] Browse",
"recursive": "[TODO: Translate] Include subdirectories",
"tagsOptional": "[TODO: Translate] Tags (optional, applied to all recipes)",
"tagsPlaceholder": "[TODO: Translate] Enter tags separated by commas",
"tagsHint": "[TODO: Translate] Tags will be added to all imported recipes",
"skipNoMetadata": "[TODO: Translate] Skip images without metadata",
"skipNoMetadataHelp": "[TODO: Translate] Images without LoRA metadata will be skipped automatically.",
"start": "[TODO: Translate] Start Import",
"startImport": "[TODO: Translate] Start Import",
"importing": "[TODO: Translate] Importing...",
"progress": "[TODO: Translate] Progress",
"total": "[TODO: Translate] Total",
"success": "[TODO: Translate] Success",
"failed": "[TODO: Translate] Failed",
"skipped": "[TODO: Translate] Skipped",
"current": "[TODO: Translate] Current",
"currentItem": "[TODO: Translate] Current",
"preparing": "[TODO: Translate] Preparing...",
"cancel": "[TODO: Translate] Cancel",
"cancelImport": "[TODO: Translate] Cancel",
"cancelled": "[TODO: Translate] Import cancelled",
"completed": "[TODO: Translate] Import completed",
"completedWithErrors": "[TODO: Translate] Completed with errors",
"completedSuccess": "[TODO: Translate] Successfully imported {count} recipe(s)",
"successCount": "[TODO: Translate] Successful",
"failedCount": "[TODO: Translate] Failed",
"skippedCount": "[TODO: Translate] Skipped",
"totalProcessed": "[TODO: Translate] Total processed",
"viewDetails": "[TODO: Translate] View Details",
"newImport": "[TODO: Translate] New Import",
"manualPathEntry": "[TODO: Translate] Please enter the directory path manually. File browser is not available in this browser.",
"batchImportDirectorySelected": "[TODO: Translate] Directory selected: {name}. You may need to enter the full path manually.",
"batchImportManualEntryRequired": "[TODO: Translate] File browser not available. Please enter the directory path manually.",
"backToParent": "[TODO: Translate] Back to parent directory",
"folders": "[TODO: Translate] Folders",
"folderCount": "[TODO: Translate] {count} folders",
"imageFiles": "[TODO: Translate] Image Files",
"images": "[TODO: Translate] images",
"imageCount": "[TODO: Translate] {count} images",
"selectFolder": "[TODO: Translate] Select This Folder",
"errors": {
"enterUrls": "[TODO: Translate] Please enter at least one URL or path",
"enterDirectory": "[TODO: Translate] Please enter a directory path",
"startFailed": "[TODO: Translate] Failed to start import: {message}"
}
}
},
"checkpoints": {
@@ -750,7 +816,17 @@
"collapseAllDisabled": "No disponible en vista de lista",
"dragDrop": {
"unableToResolveRoot": "No se puede determinar la ruta de destino para el movimiento.",
"moveUnsupported": "Move is not supported for this item."
"moveUnsupported": "El movimiento no es compatible con este elemento.",
"createFolderHint": "Suelta para crear una nueva carpeta",
"newFolderName": "Nombre de la nueva carpeta",
"folderNameHint": "Presiona Enter para confirmar, Escape para cancelar",
"emptyFolderName": "Por favor, introduce un nombre de carpeta",
"invalidFolderName": "El nombre de la carpeta contiene caracteres no válidos",
"noDragState": "No se encontró ninguna operación de arrastre pendiente"
},
"empty": {
"noFolders": "No se encontraron carpetas",
"dragHint": "Arrastra elementos aquí para crear carpetas"
}
},
"statistics": {
@@ -1342,7 +1418,14 @@
"showWechatQR": "Mostrar código QR de WeChat",
"hideWechatQR": "Ocultar código QR de WeChat"
},
"footer": "¡Gracias por usar el gestor de LoRA! ❤️"
"footer": "¡Gracias por usar el gestor de LoRA! ❤️",
"supporters": {
"title": "Gracias a todos los seguidores",
"subtitle": "Gracias a {count} seguidores que hicieron este proyecto posible",
"specialThanks": "Agradecimientos especiales",
"allSupporters": "Todos los seguidores",
"totalCount": "{count} seguidores en total"
}
},
"toast": {
"general": {
@@ -1376,6 +1459,8 @@
"loadFailed": "Error al cargar {modelType}s: {message}",
"refreshComplete": "Actualización completa",
"refreshFailed": "Error al actualizar recetas: {message}",
"syncComplete": "Sincronización completa",
"syncFailed": "Error al sincronizar recetas: {message}",
"updateFailed": "Error al actualizar receta: {error}",
"updateError": "Error actualizando receta: {message}",
"nameSaved": "Receta \"{name}\" guardada exitosamente",
@@ -1412,7 +1497,14 @@
"recipeSaveFailed": "Error al guardar receta: {error}",
"importFailed": "Importación falló: {message}",
"folderTreeFailed": "Error al cargar árbol de carpetas",
"folderTreeError": "Error cargando árbol de carpetas"
"folderTreeError": "Error cargando árbol de carpetas",
"batchImportFailed": "[TODO: Translate] Failed to start batch import: {message}",
"batchImportCancelling": "[TODO: Translate] Cancelling batch import...",
"batchImportCancelFailed": "[TODO: Translate] Failed to cancel batch import: {message}",
"batchImportNoUrls": "[TODO: Translate] Please enter at least one URL or file path",
"batchImportNoDirectory": "[TODO: Translate] Please enter a directory path",
"batchImportBrowseFailed": "[TODO: Translate] Failed to browse directory: {message}",
"batchImportDirectorySelected": "[TODO: Translate] Directory selected: {path}"
},
"models": {
"noModelsSelected": "No hay modelos seleccionados",

View File

@@ -1,8 +1,11 @@
{
"common": {
"cancel": "Annuler",
"confirm": "Confirmer",
"actions": {
"save": "Enregistrer",
"cancel": "Annuler",
"confirm": "Confirmer",
"delete": "Supprimer",
"move": "Déplacer",
"refresh": "Actualiser",
@@ -11,7 +14,8 @@
"backToTop": "Retour en haut",
"settings": "Paramètres",
"help": "Aide",
"add": "Ajouter"
"add": "Ajouter",
"close": "Fermer"
},
"status": {
"loading": "Chargement...",
@@ -219,7 +223,7 @@
"presetNamePlaceholder": "Nom du préréglage...",
"baseModel": "Modèle de base",
"modelTags": "Tags (Top 20)",
"modelTypes": "Model Types",
"modelTypes": "Types de modèles",
"license": "Licence",
"noCreditRequired": "Crédit non requis",
"allowSellingGeneratedContent": "Vente autorisée",
@@ -361,6 +365,23 @@
"defaultEmbeddingRootHelp": "Définir le répertoire racine embedding par défaut pour les téléchargements, imports et déplacements",
"noDefault": "Aucun par défaut"
},
"extraFolderPaths": {
"title": "Chemins de dossiers supplémentaires",
"help": "Ajoutez des dossiers de modèles supplémentaires en dehors des chemins standard de ComfyUI. Ces chemins sont stockés séparément et analysés aux côtés des dossiers par défaut.",
"description": "Configurez des dossiers supplémentaires pour l'analyse de modèles. Ces chemins sont spécifiques à LoRA Manager et seront fusionnés avec les chemins par défaut de ComfyUI.",
"modelTypes": {
"lora": "Chemins LoRA",
"checkpoint": "Chemins Checkpoint",
"unet": "Chemins de modèle de diffusion",
"embedding": "Chemins Embedding"
},
"pathPlaceholder": "/chemin/vers/modèles/supplémentaires",
"saveSuccess": "Chemins de dossiers supplémentaires mis à jour.",
"saveError": "Échec de la mise à jour des chemins de dossiers supplémentaires: {message}",
"validation": {
"duplicatePath": "Ce chemin est déjà configuré"
}
},
"priorityTags": {
"title": "Étiquettes prioritaires",
"description": "Personnalisez l'ordre de priorité des étiquettes pour chaque type de modèle (par ex. : character, concept, style(toon|toon_style))",
@@ -485,23 +506,6 @@
"proxyPassword": "Mot de passe (optionnel)",
"proxyPasswordPlaceholder": "mot_de_passe",
"proxyPasswordHelp": "Mot de passe pour l'authentification proxy (si nécessaire)"
},
"extraFolderPaths": {
"title": "Chemins de dossiers supplémentaires",
"help": "Ajoutez des dossiers de modèles supplémentaires en dehors des chemins standard de ComfyUI. Ces chemins sont stockés séparément et analysés aux côtés des dossiers par défaut.",
"description": "Configurez des dossiers supplémentaires pour l'analyse de modèles. Ces chemins sont spécifiques à LoRA Manager et seront fusionnés avec les chemins par défaut de ComfyUI.",
"modelTypes": {
"lora": "Chemins LoRA",
"checkpoint": "Chemins Checkpoint",
"unet": "Chemins de modèle de diffusion",
"embedding": "Chemins Embedding"
},
"pathPlaceholder": "/chemin/vers/modèles/supplémentaires",
"saveSuccess": "Chemins de dossiers supplémentaires mis à jour.",
"saveError": "Échec de la mise à jour des chemins de dossiers supplémentaires: {message}",
"validation": {
"duplicatePath": "Ce chemin est déjà configuré"
}
}
},
"loras": {
@@ -682,7 +686,11 @@
"lorasCountAsc": "Moins"
},
"refresh": {
"title": "Actualiser la liste des recipes"
"title": "Actualiser la liste des recipes",
"quick": "Synchroniser les changements",
"quickTooltip": "Synchroniser les changements - actualisation rapide sans reconstruire le cache",
"full": "Reconstruire le cache",
"fullTooltip": "Reconstruire le cache - rescan complet de tous les fichiers de recipes"
},
"filteredByLora": "Filtré par LoRA",
"favorites": {
@@ -722,6 +730,64 @@
"failed": "Échec de la réparation de la recette : {message}",
"missingId": "Impossible de réparer la recette : ID de recette manquant"
}
},
"batchImport": {
"title": "[TODO: Translate] Batch Import Recipes",
"action": "[TODO: Translate] Batch Import",
"urlList": "[TODO: Translate] URL List",
"directory": "[TODO: Translate] Directory",
"urlDescription": "[TODO: Translate] Enter image URLs or local file paths (one per line). Each will be imported as a recipe.",
"directoryDescription": "[TODO: Translate] Enter a directory path to import all images from that folder.",
"urlsLabel": "[TODO: Translate] Image URLs or Local Paths",
"urlsPlaceholder": "[TODO: Translate] https://civitai.com/images/...\nhttps://civitai.com/images/...\nC:/path/to/image.png\n...",
"urlsHint": "[TODO: Translate] Enter one URL or path per line",
"directoryPath": "[TODO: Translate] Directory Path",
"directoryPlaceholder": "[TODO: Translate] /path/to/images/folder",
"browse": "[TODO: Translate] Browse",
"recursive": "[TODO: Translate] Include subdirectories",
"tagsOptional": "[TODO: Translate] Tags (optional, applied to all recipes)",
"tagsPlaceholder": "[TODO: Translate] Enter tags separated by commas",
"tagsHint": "[TODO: Translate] Tags will be added to all imported recipes",
"skipNoMetadata": "[TODO: Translate] Skip images without metadata",
"skipNoMetadataHelp": "[TODO: Translate] Images without LoRA metadata will be skipped automatically.",
"start": "[TODO: Translate] Start Import",
"startImport": "[TODO: Translate] Start Import",
"importing": "[TODO: Translate] Importing...",
"progress": "[TODO: Translate] Progress",
"total": "[TODO: Translate] Total",
"success": "[TODO: Translate] Success",
"failed": "[TODO: Translate] Failed",
"skipped": "[TODO: Translate] Skipped",
"current": "[TODO: Translate] Current",
"currentItem": "[TODO: Translate] Current",
"preparing": "[TODO: Translate] Preparing...",
"cancel": "[TODO: Translate] Cancel",
"cancelImport": "[TODO: Translate] Cancel",
"cancelled": "[TODO: Translate] Import cancelled",
"completed": "[TODO: Translate] Import completed",
"completedWithErrors": "[TODO: Translate] Completed with errors",
"completedSuccess": "[TODO: Translate] Successfully imported {count} recipe(s)",
"successCount": "[TODO: Translate] Successful",
"failedCount": "[TODO: Translate] Failed",
"skippedCount": "[TODO: Translate] Skipped",
"totalProcessed": "[TODO: Translate] Total processed",
"viewDetails": "[TODO: Translate] View Details",
"newImport": "[TODO: Translate] New Import",
"manualPathEntry": "[TODO: Translate] Please enter the directory path manually. File browser is not available in this browser.",
"batchImportDirectorySelected": "[TODO: Translate] Directory selected: {name}. You may need to enter the full path manually.",
"batchImportManualEntryRequired": "[TODO: Translate] File browser not available. Please enter the directory path manually.",
"backToParent": "[TODO: Translate] Back to parent directory",
"folders": "[TODO: Translate] Folders",
"folderCount": "[TODO: Translate] {count} folders",
"imageFiles": "[TODO: Translate] Image Files",
"images": "[TODO: Translate] images",
"imageCount": "[TODO: Translate] {count} images",
"selectFolder": "[TODO: Translate] Select This Folder",
"errors": {
"enterUrls": "[TODO: Translate] Please enter at least one URL or path",
"enterDirectory": "[TODO: Translate] Please enter a directory path",
"startFailed": "[TODO: Translate] Failed to start import: {message}"
}
}
},
"checkpoints": {
@@ -750,7 +816,17 @@
"collapseAllDisabled": "Non disponible en vue liste",
"dragDrop": {
"unableToResolveRoot": "Impossible de déterminer le chemin de destination pour le déplacement.",
"moveUnsupported": "Move is not supported for this item."
"moveUnsupported": "Le déplacement n'est pas pris en charge pour cet élément.",
"createFolderHint": "Relâcher pour créer un nouveau dossier",
"newFolderName": "Nom du nouveau dossier",
"folderNameHint": "Appuyez sur Entrée pour confirmer, Échap pour annuler",
"emptyFolderName": "Veuillez saisir un nom de dossier",
"invalidFolderName": "Le nom du dossier contient des caractères invalides",
"noDragState": "Aucune opération de glissement en attente trouvée"
},
"empty": {
"noFolders": "Aucun dossier trouvé",
"dragHint": "Faites glisser des éléments ici pour créer des dossiers"
}
},
"statistics": {
@@ -1342,7 +1418,14 @@
"showWechatQR": "Afficher le QR Code WeChat",
"hideWechatQR": "Masquer le QR Code WeChat"
},
"footer": "Merci d'utiliser le Gestionnaire LoRA ! ❤️"
"footer": "Merci d'utiliser le Gestionnaire LoRA ! ❤️",
"supporters": {
"title": "Merci à tous les supporters",
"subtitle": "Merci aux {count} supporters qui ont rendu ce projet possible",
"specialThanks": "Remerciements spéciaux",
"allSupporters": "Tous les supporters",
"totalCount": "{count} supporters au total"
}
},
"toast": {
"general": {
@@ -1376,6 +1459,8 @@
"loadFailed": "Échec du chargement des {modelType}s : {message}",
"refreshComplete": "Actualisation terminée",
"refreshFailed": "Échec de l'actualisation des recipes : {message}",
"syncComplete": "Synchronisation terminée",
"syncFailed": "Échec de la synchronisation des recipes : {message}",
"updateFailed": "Échec de la mise à jour de la recipe : {error}",
"updateError": "Erreur lors de la mise à jour de la recipe : {message}",
"nameSaved": "Recipe \"{name}\" sauvegardée avec succès",
@@ -1412,7 +1497,14 @@
"recipeSaveFailed": "Échec de la sauvegarde de la recipe : {error}",
"importFailed": "Échec de l'importation : {message}",
"folderTreeFailed": "Échec du chargement de l'arborescence des dossiers",
"folderTreeError": "Erreur lors du chargement de l'arborescence des dossiers"
"folderTreeError": "Erreur lors du chargement de l'arborescence des dossiers",
"batchImportFailed": "[TODO: Translate] Failed to start batch import: {message}",
"batchImportCancelling": "[TODO: Translate] Cancelling batch import...",
"batchImportCancelFailed": "[TODO: Translate] Failed to cancel batch import: {message}",
"batchImportNoUrls": "[TODO: Translate] Please enter at least one URL or file path",
"batchImportNoDirectory": "[TODO: Translate] Please enter a directory path",
"batchImportBrowseFailed": "[TODO: Translate] Failed to browse directory: {message}",
"batchImportDirectorySelected": "[TODO: Translate] Directory selected: {path}"
},
"models": {
"noModelsSelected": "Aucun modèle sélectionné",

View File

@@ -1,17 +1,21 @@
{
"common": {
"cancel": "ביטול",
"confirm": "אישור",
"actions": {
"save": "שמור",
"save": "שמירה",
"cancel": "ביטול",
"delete": "מחק",
"move": עבר",
"refresh": "רענן",
"back": "חזור",
"confirm": "אישור",
"delete": "מחיקה",
"move": "העברה",
"refresh": ענון",
"back": "חזרה",
"next": "הבא",
"backToTop": "חזור למעלה",
"backToTop": "חזרה למעלה",
"settings": "הגדרות",
"help": "עזרה",
"add": "הוסף"
"add": "הוספה",
"close": "סגור"
},
"status": {
"loading": "טוען...",
@@ -219,7 +223,7 @@
"presetNamePlaceholder": "שם קביעה מראש...",
"baseModel": "מודל בסיס",
"modelTags": "תגיות (20 המובילות)",
"modelTypes": "Model Types",
"modelTypes": "סוגי מודלים",
"license": "רישיון",
"noCreditRequired": "ללא קרדיט נדרש",
"allowSellingGeneratedContent": "אפשר מכירה",
@@ -361,6 +365,23 @@
"defaultEmbeddingRootHelp": "הגדר את ספריית השורש המוגדרת כברירת מחדל של embedding להורדות, ייבוא והעברות",
"noDefault": "אין ברירת מחדל"
},
"extraFolderPaths": {
"title": "נתיבי תיקיות נוספים",
"help": "הוסף תיקיות מודלים נוספות מחוץ לנתיבים הסטנדרטיים של ComfyUI. נתיבים אלה נשמרים בנפרד ונסרקים לצד תיקיות ברירת המחדל.",
"description": "הגדר תיקיות נוספות לסריקת מודלים. נתיבים אלה ספציפיים ל-LoRA Manager וימוזגו עם נתיבי ברירת המחדל של ComfyUI.",
"modelTypes": {
"lora": "נתיבי LoRA",
"checkpoint": "נתיבי Checkpoint",
"unet": "נתיבי מודל דיפוזיה",
"embedding": "נתיבי Embedding"
},
"pathPlaceholder": "/נתיב/למודלים/נוספים",
"saveSuccess": "נתיבי תיקיות נוספים עודכנו.",
"saveError": "נכשל בעדכון נתיבי תיקיות נוספים: {message}",
"validation": {
"duplicatePath": "נתיב זה כבר מוגדר"
}
},
"priorityTags": {
"title": "תגיות עדיפות",
"description": "התאם את סדר העדיפות של התגיות עבור כל סוג מודל (לדוגמה: character, concept, style(toon|toon_style))",
@@ -485,23 +506,6 @@
"proxyPassword": "סיסמה (אופציונלי)",
"proxyPasswordPlaceholder": "password",
"proxyPasswordHelp": "סיסמה לאימות מול הפרוקסי (אם נדרש)"
},
"extraFolderPaths": {
"title": "נתיבי תיקיות נוספים",
"help": "הוסף תיקיות מודלים נוספות מחוץ לנתיבים הסטנדרטיים של ComfyUI. נתיבים אלה נשמרים בנפרד ונסרקים לצד תיקיות ברירת המחדל.",
"description": "הגדר תיקיות נוספות לסריקת מודלים. נתיבים אלה ספציפיים ל-LoRA Manager וימוזגו עם נתיבי ברירת המחדל של ComfyUI.",
"modelTypes": {
"lora": "נתיבי LoRA",
"checkpoint": "נתיבי Checkpoint",
"unet": "נתיבי מודל דיפוזיה",
"embedding": "נתיבי Embedding"
},
"pathPlaceholder": "/נתיב/למודלים/נוספים",
"saveSuccess": "נתיבי תיקיות נוספים עודכנו.",
"saveError": "נכשל בעדכון נתיבי תיקיות נוספים: {message}",
"validation": {
"duplicatePath": "נתיב זה כבר מוגדר"
}
}
},
"loras": {
@@ -682,7 +686,11 @@
"lorasCountAsc": "הכי פחות"
},
"refresh": {
"title": "רענן רשימת מתכונים"
"title": "רענן רשימת מתכונים",
"quick": "סנכרן שינויים",
"quickTooltip": "סנכרן שינויים - רענון מהיר ללא בניית מטמון מחדש",
"full": "בנה מטמון מחדש",
"fullTooltip": "בנה מטמון מחדש - סריקה מחדש מלאה של כל קבצי המתכונים"
},
"filteredByLora": "מסונן לפי LoRA",
"favorites": {
@@ -722,6 +730,64 @@
"failed": "תיקון המתכון נכשל: {message}",
"missingId": "לא ניתן לתקן את המתכון: חסר מזהה מתכון"
}
},
"batchImport": {
"title": "[TODO: Translate] Batch Import Recipes",
"action": "[TODO: Translate] Batch Import",
"urlList": "[TODO: Translate] URL List",
"directory": "[TODO: Translate] Directory",
"urlDescription": "[TODO: Translate] Enter image URLs or local file paths (one per line). Each will be imported as a recipe.",
"directoryDescription": "[TODO: Translate] Enter a directory path to import all images from that folder.",
"urlsLabel": "[TODO: Translate] Image URLs or Local Paths",
"urlsPlaceholder": "[TODO: Translate] https://civitai.com/images/...\nhttps://civitai.com/images/...\nC:/path/to/image.png\n...",
"urlsHint": "[TODO: Translate] Enter one URL or path per line",
"directoryPath": "[TODO: Translate] Directory Path",
"directoryPlaceholder": "[TODO: Translate] /path/to/images/folder",
"browse": "[TODO: Translate] Browse",
"recursive": "[TODO: Translate] Include subdirectories",
"tagsOptional": "[TODO: Translate] Tags (optional, applied to all recipes)",
"tagsPlaceholder": "[TODO: Translate] Enter tags separated by commas",
"tagsHint": "[TODO: Translate] Tags will be added to all imported recipes",
"skipNoMetadata": "[TODO: Translate] Skip images without metadata",
"skipNoMetadataHelp": "[TODO: Translate] Images without LoRA metadata will be skipped automatically.",
"start": "[TODO: Translate] Start Import",
"startImport": "[TODO: Translate] Start Import",
"importing": "[TODO: Translate] Importing...",
"progress": "[TODO: Translate] Progress",
"total": "[TODO: Translate] Total",
"success": "[TODO: Translate] Success",
"failed": "[TODO: Translate] Failed",
"skipped": "[TODO: Translate] Skipped",
"current": "[TODO: Translate] Current",
"currentItem": "[TODO: Translate] Current",
"preparing": "[TODO: Translate] Preparing...",
"cancel": "[TODO: Translate] Cancel",
"cancelImport": "[TODO: Translate] Cancel",
"cancelled": "[TODO: Translate] Import cancelled",
"completed": "[TODO: Translate] Import completed",
"completedWithErrors": "[TODO: Translate] Completed with errors",
"completedSuccess": "[TODO: Translate] Successfully imported {count} recipe(s)",
"successCount": "[TODO: Translate] Successful",
"failedCount": "[TODO: Translate] Failed",
"skippedCount": "[TODO: Translate] Skipped",
"totalProcessed": "[TODO: Translate] Total processed",
"viewDetails": "[TODO: Translate] View Details",
"newImport": "[TODO: Translate] New Import",
"manualPathEntry": "[TODO: Translate] Please enter the directory path manually. File browser is not available in this browser.",
"batchImportDirectorySelected": "[TODO: Translate] Directory selected: {name}. You may need to enter the full path manually.",
"batchImportManualEntryRequired": "[TODO: Translate] File browser not available. Please enter the directory path manually.",
"backToParent": "[TODO: Translate] Back to parent directory",
"folders": "[TODO: Translate] Folders",
"folderCount": "[TODO: Translate] {count} folders",
"imageFiles": "[TODO: Translate] Image Files",
"images": "[TODO: Translate] images",
"imageCount": "[TODO: Translate] {count} images",
"selectFolder": "[TODO: Translate] Select This Folder",
"errors": {
"enterUrls": "[TODO: Translate] Please enter at least one URL or path",
"enterDirectory": "[TODO: Translate] Please enter a directory path",
"startFailed": "[TODO: Translate] Failed to start import: {message}"
}
}
},
"checkpoints": {
@@ -750,7 +816,17 @@
"collapseAllDisabled": "לא זמין בתצוגת רשימה",
"dragDrop": {
"unableToResolveRoot": "לא ניתן לקבוע את נתיב היעד להעברה.",
"moveUnsupported": "Move is not supported for this item."
"moveUnsupported": "העברה אינה נתמכת עבור פריט זה.",
"createFolderHint": "שחרר כדי ליצור תיקייה חדשה",
"newFolderName": "שם תיקייה חדשה",
"folderNameHint": "הקש Enter לאישור, Escape לביטול",
"emptyFolderName": "אנא הזן שם תיקייה",
"invalidFolderName": "שם התיקייה מכיל תווים לא חוקיים",
"noDragState": "לא נמצאה פעולת גרירה ממתינה"
},
"empty": {
"noFolders": "לא נמצאו תיקיות",
"dragHint": "גרור פריטים לכאן כדי ליצור תיקיות"
}
},
"statistics": {
@@ -1342,7 +1418,14 @@
"showWechatQR": "הצג קוד QR של WeChat",
"hideWechatQR": "הסתר קוד QR של WeChat"
},
"footer": "תודה על השימוש במנהל LoRA! ❤️"
"footer": "תודה על השימוש במנהל LoRA! ❤️",
"supporters": {
"title": "תודה לכל התומכים",
"subtitle": "תודה ל־{count} תומכים שהפכו את הפרויקט הזה לאפשרי",
"specialThanks": "תודה מיוחדת",
"allSupporters": "כל התומכים",
"totalCount": "{count} תומכים בסך הכל"
}
},
"toast": {
"general": {
@@ -1376,6 +1459,8 @@
"loadFailed": "טעינת {modelType}s נכשלה: {message}",
"refreshComplete": "הרענון הושלם",
"refreshFailed": "רענון המתכונים נכשל: {message}",
"syncComplete": "הסנכרון הושלם",
"syncFailed": "סנכרון המתכונים נכשל: {message}",
"updateFailed": "עדכון המתכון נכשל: {error}",
"updateError": "שגיאה בעדכון המתכון: {message}",
"nameSaved": "המתכון \"{name}\" נשמר בהצלחה",
@@ -1412,7 +1497,14 @@
"recipeSaveFailed": "שמירת המתכון נכשלה: {error}",
"importFailed": "הייבוא נכשל: {message}",
"folderTreeFailed": "טעינת עץ התיקיות נכשלה",
"folderTreeError": "שגיאה בטעינת עץ התיקיות"
"folderTreeError": "שגיאה בטעינת עץ התיקיות",
"batchImportFailed": "[TODO: Translate] Failed to start batch import: {message}",
"batchImportCancelling": "[TODO: Translate] Cancelling batch import...",
"batchImportCancelFailed": "[TODO: Translate] Failed to cancel batch import: {message}",
"batchImportNoUrls": "[TODO: Translate] Please enter at least one URL or file path",
"batchImportNoDirectory": "[TODO: Translate] Please enter a directory path",
"batchImportBrowseFailed": "[TODO: Translate] Failed to browse directory: {message}",
"batchImportDirectorySelected": "[TODO: Translate] Directory selected: {path}"
},
"models": {
"noModelsSelected": "לא נבחרו מודלים",

View File

@@ -1,17 +1,21 @@
{
"common": {
"cancel": "キャンセル",
"confirm": "確認",
"actions": {
"save": "保存",
"cancel": "キャンセル",
"confirm": "確認",
"delete": "削除",
"move": "移動",
"refresh": "更新",
"back": "戻る",
"next": "次へ",
"backToTop": "トップ戻る",
"backToTop": "トップ戻る",
"settings": "設定",
"help": "ヘルプ",
"add": "追加"
"add": "追加",
"close": "閉じる"
},
"status": {
"loading": "読み込み中...",
@@ -219,7 +223,7 @@
"presetNamePlaceholder": "プリセット名...",
"baseModel": "ベースモデル",
"modelTags": "タグ上位20",
"modelTypes": "Model Types",
"modelTypes": "モデルタイプ",
"license": "ライセンス",
"noCreditRequired": "クレジット不要",
"allowSellingGeneratedContent": "販売許可",
@@ -361,6 +365,23 @@
"defaultEmbeddingRootHelp": "ダウンロード、インポート、移動用のデフォルトembeddingルートディレクトリを設定",
"noDefault": "デフォルトなし"
},
"extraFolderPaths": {
"title": "追加フォルダーパス",
"help": "ComfyUIの標準パスの外部に追加のモデルフォルダを追加します。これらのパスは別々に保存され、デフォルトのフォルダと一緒にスキャンされます。",
"description": "モデルをスキャンするための追加フォルダを設定します。これらのパスはLoRA Manager固有であり、ComfyUIのデフォルトパスとマージされます。",
"modelTypes": {
"lora": "LoRAパス",
"checkpoint": "Checkpointパス",
"unet": "Diffusionモデルパス",
"embedding": "Embeddingパス"
},
"pathPlaceholder": "/追加モデルへのパス",
"saveSuccess": "追加フォルダーパスを更新しました。",
"saveError": "追加フォルダーパスの更新に失敗しました: {message}",
"validation": {
"duplicatePath": "このパスはすでに設定されています"
}
},
"priorityTags": {
"title": "優先タグ",
"description": "各モデルタイプのタグ優先順位をカスタマイズします (例: character, concept, style(toon|toon_style))",
@@ -485,23 +506,6 @@
"proxyPassword": "パスワード(任意)",
"proxyPasswordPlaceholder": "パスワード",
"proxyPasswordHelp": "プロキシ認証用のパスワード(必要な場合)"
},
"extraFolderPaths": {
"title": "追加フォルダーパス",
"help": "ComfyUIの標準パスの外部に追加のモデルフォルダを追加します。これらのパスは別々に保存され、デフォルトのフォルダと一緒にスキャンされます。",
"description": "モデルをスキャンするための追加フォルダを設定します。これらのパスはLoRA Manager固有であり、ComfyUIのデフォルトパスとマージされます。",
"modelTypes": {
"lora": "LoRAパス",
"checkpoint": "Checkpointパス",
"unet": "Diffusionモデルパス",
"embedding": "Embeddingパス"
},
"pathPlaceholder": "/追加モデルへのパス",
"saveSuccess": "追加フォルダーパスを更新しました。",
"saveError": "追加フォルダーパスの更新に失敗しました: {message}",
"validation": {
"duplicatePath": "このパスはすでに設定されています"
}
}
},
"loras": {
@@ -682,7 +686,11 @@
"lorasCountAsc": "少ない順"
},
"refresh": {
"title": "レシピリストを更新"
"title": "レシピリストを更新",
"quick": "変更を同期",
"quickTooltip": "変更を同期 - キャッシュを再構築せずにクイック更新",
"full": "キャッシュを再構築",
"fullTooltip": "キャッシュを再構築 - すべてのレシピファイルを完全に再スキャン"
},
"filteredByLora": "LoRAでフィルタ済み",
"favorites": {
@@ -722,6 +730,64 @@
"failed": "レシピの修復に失敗しました: {message}",
"missingId": "レシピを修復できません: レシピIDがありません"
}
},
"batchImport": {
"title": "[TODO: Translate] Batch Import Recipes",
"action": "[TODO: Translate] Batch Import",
"urlList": "[TODO: Translate] URL List",
"directory": "[TODO: Translate] Directory",
"urlDescription": "[TODO: Translate] Enter image URLs or local file paths (one per line). Each will be imported as a recipe.",
"directoryDescription": "[TODO: Translate] Enter a directory path to import all images from that folder.",
"urlsLabel": "[TODO: Translate] Image URLs or Local Paths",
"urlsPlaceholder": "[TODO: Translate] https://civitai.com/images/...\nhttps://civitai.com/images/...\nC:/path/to/image.png\n...",
"urlsHint": "[TODO: Translate] Enter one URL or path per line",
"directoryPath": "[TODO: Translate] Directory Path",
"directoryPlaceholder": "[TODO: Translate] /path/to/images/folder",
"browse": "[TODO: Translate] Browse",
"recursive": "[TODO: Translate] Include subdirectories",
"tagsOptional": "[TODO: Translate] Tags (optional, applied to all recipes)",
"tagsPlaceholder": "[TODO: Translate] Enter tags separated by commas",
"tagsHint": "[TODO: Translate] Tags will be added to all imported recipes",
"skipNoMetadata": "[TODO: Translate] Skip images without metadata",
"skipNoMetadataHelp": "[TODO: Translate] Images without LoRA metadata will be skipped automatically.",
"start": "[TODO: Translate] Start Import",
"startImport": "[TODO: Translate] Start Import",
"importing": "[TODO: Translate] Importing...",
"progress": "[TODO: Translate] Progress",
"total": "[TODO: Translate] Total",
"success": "[TODO: Translate] Success",
"failed": "[TODO: Translate] Failed",
"skipped": "[TODO: Translate] Skipped",
"current": "[TODO: Translate] Current",
"currentItem": "[TODO: Translate] Current",
"preparing": "[TODO: Translate] Preparing...",
"cancel": "[TODO: Translate] Cancel",
"cancelImport": "[TODO: Translate] Cancel",
"cancelled": "[TODO: Translate] Import cancelled",
"completed": "[TODO: Translate] Import completed",
"completedWithErrors": "[TODO: Translate] Completed with errors",
"completedSuccess": "[TODO: Translate] Successfully imported {count} recipe(s)",
"successCount": "[TODO: Translate] Successful",
"failedCount": "[TODO: Translate] Failed",
"skippedCount": "[TODO: Translate] Skipped",
"totalProcessed": "[TODO: Translate] Total processed",
"viewDetails": "[TODO: Translate] View Details",
"newImport": "[TODO: Translate] New Import",
"manualPathEntry": "[TODO: Translate] Please enter the directory path manually. File browser is not available in this browser.",
"batchImportDirectorySelected": "[TODO: Translate] Directory selected: {name}. You may need to enter the full path manually.",
"batchImportManualEntryRequired": "[TODO: Translate] File browser not available. Please enter the directory path manually.",
"backToParent": "[TODO: Translate] Back to parent directory",
"folders": "[TODO: Translate] Folders",
"folderCount": "[TODO: Translate] {count} folders",
"imageFiles": "[TODO: Translate] Image Files",
"images": "[TODO: Translate] images",
"imageCount": "[TODO: Translate] {count} images",
"selectFolder": "[TODO: Translate] Select This Folder",
"errors": {
"enterUrls": "[TODO: Translate] Please enter at least one URL or path",
"enterDirectory": "[TODO: Translate] Please enter a directory path",
"startFailed": "[TODO: Translate] Failed to start import: {message}"
}
}
},
"checkpoints": {
@@ -750,7 +816,17 @@
"collapseAllDisabled": "リストビューでは利用できません",
"dragDrop": {
"unableToResolveRoot": "移動先のパスを特定できません。",
"moveUnsupported": "Move is not supported for this item."
"moveUnsupported": "この項目の移動はサポートされていません。",
"createFolderHint": "放して新しいフォルダを作成",
"newFolderName": "新しいフォルダ名",
"folderNameHint": "Enterで確定、Escでキャンセル",
"emptyFolderName": "フォルダ名を入力してください",
"invalidFolderName": "フォルダ名に無効な文字が含まれています",
"noDragState": "保留中のドラッグ操作が見つかりません"
},
"empty": {
"noFolders": "フォルダが見つかりません",
"dragHint": "ここへアイテムをドラッグしてフォルダを作成します"
}
},
"statistics": {
@@ -1342,7 +1418,14 @@
"showWechatQR": "WeChat QRコードを表示",
"hideWechatQR": "WeChat QRコードを非表示"
},
"footer": "LoRA Managerをご利用いただきありがとうございます ❤️"
"footer": "LoRA Managerをご利用いただきありがとうございます ❤️",
"supporters": {
"title": "サポーターの皆様に感謝",
"subtitle": "{count} 名のサポーターの皆様に、このプロジェクトを実現していただきありがとうございます",
"specialThanks": "特別感謝",
"allSupporters": "全サポーター",
"totalCount": "サポーター {count} 名"
}
},
"toast": {
"general": {
@@ -1376,6 +1459,8 @@
"loadFailed": "{modelType}の読み込みに失敗しました:{message}",
"refreshComplete": "更新完了",
"refreshFailed": "レシピの更新に失敗しました:{message}",
"syncComplete": "同期完了",
"syncFailed": "レシピの同期に失敗しました:{message}",
"updateFailed": "レシピの更新に失敗しました:{error}",
"updateError": "レシピ更新エラー:{message}",
"nameSaved": "レシピ\"{name}\"が正常に保存されました",
@@ -1412,7 +1497,14 @@
"recipeSaveFailed": "レシピの保存に失敗しました:{error}",
"importFailed": "インポートに失敗しました:{message}",
"folderTreeFailed": "フォルダツリーの読み込みに失敗しました",
"folderTreeError": "フォルダツリー読み込みエラー"
"folderTreeError": "フォルダツリー読み込みエラー",
"batchImportFailed": "[TODO: Translate] Failed to start batch import: {message}",
"batchImportCancelling": "[TODO: Translate] Cancelling batch import...",
"batchImportCancelFailed": "[TODO: Translate] Failed to cancel batch import: {message}",
"batchImportNoUrls": "[TODO: Translate] Please enter at least one URL or file path",
"batchImportNoDirectory": "[TODO: Translate] Please enter a directory path",
"batchImportBrowseFailed": "[TODO: Translate] Failed to browse directory: {message}",
"batchImportDirectorySelected": "[TODO: Translate] Directory selected: {path}"
},
"models": {
"noModelsSelected": "モデルが選択されていません",

View File

@@ -1,8 +1,11 @@
{
"common": {
"cancel": "취소",
"confirm": "확인",
"actions": {
"save": "저장",
"cancel": "취소",
"confirm": "확인",
"delete": "삭제",
"move": "이동",
"refresh": "새로고침",
@@ -11,7 +14,8 @@
"backToTop": "맨 위로",
"settings": "설정",
"help": "도움말",
"add": "추가"
"add": "추가",
"close": "닫기"
},
"status": {
"loading": "로딩 중...",
@@ -219,7 +223,7 @@
"presetNamePlaceholder": "프리셋 이름...",
"baseModel": "베이스 모델",
"modelTags": "태그 (상위 20개)",
"modelTypes": "Model Types",
"modelTypes": "모델 유형",
"license": "라이선스",
"noCreditRequired": "크레딧 표기 없음",
"allowSellingGeneratedContent": "판매 허용",
@@ -361,6 +365,23 @@
"defaultEmbeddingRootHelp": "다운로드, 가져오기 및 이동을 위한 기본 Embedding 루트 디렉토리를 설정합니다",
"noDefault": "기본값 없음"
},
"extraFolderPaths": {
"title": "추가 폴다 경로",
"help": "ComfyUI의 표준 경로 외부에 추가 모델 폴드를 추가하세요. 이러한 경로는 별도로 저장되며 기본 폴와 함께 스캔됩니다.",
"description": "모델을 스캔하기 위한 추가 폴를 설정하세요. 이러한 경로는 LoRA Manager 특유의 것이며 ComfyUI의 기본 경로와 병합됩니다.",
"modelTypes": {
"lora": "LoRA 경로",
"checkpoint": "Checkpoint 경로",
"unet": "Diffusion 모델 경로",
"embedding": "Embedding 경로"
},
"pathPlaceholder": "/추가/모델/경로",
"saveSuccess": "추가 폴다 경로가 업데이트되었습니다.",
"saveError": "추가 폴다 경로 업데이트 실패: {message}",
"validation": {
"duplicatePath": "이 경로는 이미 구성되어 있습니다"
}
},
"priorityTags": {
"title": "우선순위 태그",
"description": "모델 유형별 태그 우선순위를 사용자 지정합니다(예: character, concept, style(toon|toon_style)).",
@@ -485,23 +506,6 @@
"proxyPassword": "비밀번호 (선택사항)",
"proxyPasswordPlaceholder": "password",
"proxyPasswordHelp": "프록시 인증에 필요한 비밀번호 (필요한 경우)"
},
"extraFolderPaths": {
"title": "추가 폴다 경로",
"help": "ComfyUI의 표준 경로 외부에 추가 모델 폴드를 추가하세요. 이러한 경로는 별도로 저장되며 기본 폴와 함께 스캔됩니다.",
"description": "모델을 스캔하기 위한 추가 폴를 설정하세요. 이러한 경로는 LoRA Manager 특유의 것이며 ComfyUI의 기본 경로와 병합됩니다.",
"modelTypes": {
"lora": "LoRA 경로",
"checkpoint": "Checkpoint 경로",
"unet": "Diffusion 모델 경로",
"embedding": "Embedding 경로"
},
"pathPlaceholder": "/추가/모델/경로",
"saveSuccess": "추가 폴다 경로가 업데이트되었습니다.",
"saveError": "추가 폴다 경로 업데이트 실패: {message}",
"validation": {
"duplicatePath": "이 경로는 이미 구성되어 있습니다"
}
}
},
"loras": {
@@ -682,7 +686,11 @@
"lorasCountAsc": "적은순"
},
"refresh": {
"title": "레시피 목록 새로고침"
"title": "레시피 목록 새로고침",
"quick": "변경 사항 동기화",
"quickTooltip": "변경 사항 동기화 - 캐시를 재구성하지 않고 빠른 새로고침",
"full": "캐시 재구성",
"fullTooltip": "캐시 재구성 - 모든 레시피 파일을 완전히 다시 스캔"
},
"filteredByLora": "LoRA로 필터링됨",
"favorites": {
@@ -722,6 +730,64 @@
"failed": "레시피 복구 실패: {message}",
"missingId": "레시피를 복구할 수 없음: 레시피 ID 누락"
}
},
"batchImport": {
"title": "[TODO: Translate] Batch Import Recipes",
"action": "[TODO: Translate] Batch Import",
"urlList": "[TODO: Translate] URL List",
"directory": "[TODO: Translate] Directory",
"urlDescription": "[TODO: Translate] Enter image URLs or local file paths (one per line). Each will be imported as a recipe.",
"directoryDescription": "[TODO: Translate] Enter a directory path to import all images from that folder.",
"urlsLabel": "[TODO: Translate] Image URLs or Local Paths",
"urlsPlaceholder": "[TODO: Translate] https://civitai.com/images/...\nhttps://civitai.com/images/...\nC:/path/to/image.png\n...",
"urlsHint": "[TODO: Translate] Enter one URL or path per line",
"directoryPath": "[TODO: Translate] Directory Path",
"directoryPlaceholder": "[TODO: Translate] /path/to/images/folder",
"browse": "[TODO: Translate] Browse",
"recursive": "[TODO: Translate] Include subdirectories",
"tagsOptional": "[TODO: Translate] Tags (optional, applied to all recipes)",
"tagsPlaceholder": "[TODO: Translate] Enter tags separated by commas",
"tagsHint": "[TODO: Translate] Tags will be added to all imported recipes",
"skipNoMetadata": "[TODO: Translate] Skip images without metadata",
"skipNoMetadataHelp": "[TODO: Translate] Images without LoRA metadata will be skipped automatically.",
"start": "[TODO: Translate] Start Import",
"startImport": "[TODO: Translate] Start Import",
"importing": "[TODO: Translate] Importing...",
"progress": "[TODO: Translate] Progress",
"total": "[TODO: Translate] Total",
"success": "[TODO: Translate] Success",
"failed": "[TODO: Translate] Failed",
"skipped": "[TODO: Translate] Skipped",
"current": "[TODO: Translate] Current",
"currentItem": "[TODO: Translate] Current",
"preparing": "[TODO: Translate] Preparing...",
"cancel": "[TODO: Translate] Cancel",
"cancelImport": "[TODO: Translate] Cancel",
"cancelled": "[TODO: Translate] Import cancelled",
"completed": "[TODO: Translate] Import completed",
"completedWithErrors": "[TODO: Translate] Completed with errors",
"completedSuccess": "[TODO: Translate] Successfully imported {count} recipe(s)",
"successCount": "[TODO: Translate] Successful",
"failedCount": "[TODO: Translate] Failed",
"skippedCount": "[TODO: Translate] Skipped",
"totalProcessed": "[TODO: Translate] Total processed",
"viewDetails": "[TODO: Translate] View Details",
"newImport": "[TODO: Translate] New Import",
"manualPathEntry": "[TODO: Translate] Please enter the directory path manually. File browser is not available in this browser.",
"batchImportDirectorySelected": "[TODO: Translate] Directory selected: {name}. You may need to enter the full path manually.",
"batchImportManualEntryRequired": "[TODO: Translate] File browser not available. Please enter the directory path manually.",
"backToParent": "[TODO: Translate] Back to parent directory",
"folders": "[TODO: Translate] Folders",
"folderCount": "[TODO: Translate] {count} folders",
"imageFiles": "[TODO: Translate] Image Files",
"images": "[TODO: Translate] images",
"imageCount": "[TODO: Translate] {count} images",
"selectFolder": "[TODO: Translate] Select This Folder",
"errors": {
"enterUrls": "[TODO: Translate] Please enter at least one URL or path",
"enterDirectory": "[TODO: Translate] Please enter a directory path",
"startFailed": "[TODO: Translate] Failed to start import: {message}"
}
}
},
"checkpoints": {
@@ -750,7 +816,17 @@
"collapseAllDisabled": "목록 보기에서는 사용할 수 없습니다",
"dragDrop": {
"unableToResolveRoot": "이동할 대상 경로를 확인할 수 없습니다.",
"moveUnsupported": "Move is not supported for this item."
"moveUnsupported": "이 항목은 이동을 지원하지 않습니다.",
"createFolderHint": "놓아서 새 폴더 만들기",
"newFolderName": "새 폴더 이름",
"folderNameHint": "Enter를 눌러 확인, Escape를 눌러 취소",
"emptyFolderName": "폴더 이름을 입력하세요",
"invalidFolderName": "폴더 이름에 잘못된 문자가 포함되어 있습니다",
"noDragState": "보류 중인 드래그 작업을 찾을 수 없습니다"
},
"empty": {
"noFolders": "폴더를 찾을 수 없습니다",
"dragHint": "항목을 여기로 드래그하여 폴더를 만듭니다"
}
},
"statistics": {
@@ -1342,7 +1418,14 @@
"showWechatQR": "WeChat QR 코드 표시",
"hideWechatQR": "WeChat QR 코드 숨기기"
},
"footer": "LoRA Manager를 사용해주셔서 감사합니다! ❤️"
"footer": "LoRA Manager를 사용해주셔서 감사합니다! ❤️",
"supporters": {
"title": "후원자 분들께 감사드립니다",
"subtitle": "이 프로젝트를 가능하게 해준 {count}명의 후원자분들께 감사드립니다",
"specialThanks": "특별 감사",
"allSupporters": "모든 후원자",
"totalCount": "총 {count}명의 후원자"
}
},
"toast": {
"general": {
@@ -1376,6 +1459,8 @@
"loadFailed": "{modelType} 로딩 실패: {message}",
"refreshComplete": "새로고침 완료",
"refreshFailed": "레시피 새로고침 실패: {message}",
"syncComplete": "동기화 완료",
"syncFailed": "레시피 동기화 실패: {message}",
"updateFailed": "레시피 업데이트 실패: {error}",
"updateError": "레시피 업데이트 오류: {message}",
"nameSaved": "레시피 \"{name}\"이 성공적으로 저장되었습니다",
@@ -1412,7 +1497,14 @@
"recipeSaveFailed": "레시피 저장 실패: {error}",
"importFailed": "가져오기 실패: {message}",
"folderTreeFailed": "폴더 트리 로딩 실패",
"folderTreeError": "폴더 트리 로딩 오류"
"folderTreeError": "폴더 트리 로딩 오류",
"batchImportFailed": "[TODO: Translate] Failed to start batch import: {message}",
"batchImportCancelling": "[TODO: Translate] Cancelling batch import...",
"batchImportCancelFailed": "[TODO: Translate] Failed to cancel batch import: {message}",
"batchImportNoUrls": "[TODO: Translate] Please enter at least one URL or file path",
"batchImportNoDirectory": "[TODO: Translate] Please enter a directory path",
"batchImportBrowseFailed": "[TODO: Translate] Failed to browse directory: {message}",
"batchImportDirectorySelected": "[TODO: Translate] Directory selected: {path}"
},
"models": {
"noModelsSelected": "선택된 모델이 없습니다",

View File

@@ -1,8 +1,11 @@
{
"common": {
"cancel": "Отмена",
"confirm": "Подтвердить",
"actions": {
"save": "Сохранить",
"cancel": "Отмена",
"confirm": "Подтвердить",
"delete": "Удалить",
"move": "Переместить",
"refresh": "Обновить",
@@ -11,7 +14,8 @@
"backToTop": "Наверх",
"settings": "Настройки",
"help": "Справка",
"add": "Добавить"
"add": "Добавить",
"close": "Закрыть"
},
"status": {
"loading": "Загрузка...",
@@ -219,7 +223,7 @@
"presetNamePlaceholder": "Имя пресета...",
"baseModel": "Базовая модель",
"modelTags": "Теги (Топ 20)",
"modelTypes": "Model Types",
"modelTypes": "Типы моделей",
"license": "Лицензия",
"noCreditRequired": "Без указания авторства",
"allowSellingGeneratedContent": "Продажа разрешена",
@@ -361,6 +365,23 @@
"defaultEmbeddingRootHelp": "Установить корневую папку embedding по умолчанию для загрузок, импорта и перемещений",
"noDefault": "Не задано"
},
"extraFolderPaths": {
"title": "Дополнительные пути к папкам",
"help": "Добавьте дополнительные папки моделей за пределами стандартных путей ComfyUI. Эти пути хранятся отдельно и сканируются вместе с папками по умолчанию.",
"description": "Настройте дополнительные папки для сканирования моделей. Эти пути специфичны для LoRA Manager и будут объединены с путями по умолчанию ComfyUI.",
"modelTypes": {
"lora": "Пути LoRA",
"checkpoint": "Пути Checkpoint",
"unet": "Пути моделей диффузии",
"embedding": "Пути Embedding"
},
"pathPlaceholder": "/путь/к/дополнительным/моделям",
"saveSuccess": "Дополнительные пути к папкам обновлены.",
"saveError": "Не удалось обновить дополнительные пути к папкам: {message}",
"validation": {
"duplicatePath": "Этот путь уже настроен"
}
},
"priorityTags": {
"title": "Приоритетные теги",
"description": "Настройте порядок приоритетов тегов для каждого типа моделей (например, character, concept, style(toon|toon_style)).",
@@ -485,23 +506,6 @@
"proxyPassword": "Пароль (необязательно)",
"proxyPasswordPlaceholder": "пароль",
"proxyPasswordHelp": "Пароль для аутентификации на прокси (если требуется)"
},
"extraFolderPaths": {
"title": "Дополнительные пути к папкам",
"help": "Добавьте дополнительные папки моделей за пределами стандартных путей ComfyUI. Эти пути хранятся отдельно и сканируются вместе с папками по умолчанию.",
"description": "Настройте дополнительные папки для сканирования моделей. Эти пути специфичны для LoRA Manager и будут объединены с путями по умолчанию ComfyUI.",
"modelTypes": {
"lora": "Пути LoRA",
"checkpoint": "Пути Checkpoint",
"unet": "Пути моделей диффузии",
"embedding": "Пути Embedding"
},
"pathPlaceholder": "/путь/к/дополнительным/моделям",
"saveSuccess": "Дополнительные пути к папкам обновлены.",
"saveError": "Не удалось обновить дополнительные пути к папкам: {message}",
"validation": {
"duplicatePath": "Этот путь уже настроен"
}
}
},
"loras": {
@@ -682,7 +686,11 @@
"lorasCountAsc": "Меньше всего"
},
"refresh": {
"title": "Обновить список рецептов"
"title": "Обновить список рецептов",
"quick": "Синхронизировать изменения",
"quickTooltip": "Синхронизировать изменения - быстрое обновление без перестроения кэша",
"full": "Перестроить кэш",
"fullTooltip": "Перестроить кэш - полное повторное сканирование всех файлов рецептов"
},
"filteredByLora": "Фильтр по LoRA",
"favorites": {
@@ -722,6 +730,64 @@
"failed": "Не удалось восстановить рецепт: {message}",
"missingId": "Не удалось восстановить рецепт: отсутствует ID рецепта"
}
},
"batchImport": {
"title": "[TODO: Translate] Batch Import Recipes",
"action": "[TODO: Translate] Batch Import",
"urlList": "[TODO: Translate] URL List",
"directory": "[TODO: Translate] Directory",
"urlDescription": "[TODO: Translate] Enter image URLs or local file paths (one per line). Each will be imported as a recipe.",
"directoryDescription": "[TODO: Translate] Enter a directory path to import all images from that folder.",
"urlsLabel": "[TODO: Translate] Image URLs or Local Paths",
"urlsPlaceholder": "[TODO: Translate] https://civitai.com/images/...\nhttps://civitai.com/images/...\nC:/path/to/image.png\n...",
"urlsHint": "[TODO: Translate] Enter one URL or path per line",
"directoryPath": "[TODO: Translate] Directory Path",
"directoryPlaceholder": "[TODO: Translate] /path/to/images/folder",
"browse": "[TODO: Translate] Browse",
"recursive": "[TODO: Translate] Include subdirectories",
"tagsOptional": "[TODO: Translate] Tags (optional, applied to all recipes)",
"tagsPlaceholder": "[TODO: Translate] Enter tags separated by commas",
"tagsHint": "[TODO: Translate] Tags will be added to all imported recipes",
"skipNoMetadata": "[TODO: Translate] Skip images without metadata",
"skipNoMetadataHelp": "[TODO: Translate] Images without LoRA metadata will be skipped automatically.",
"start": "[TODO: Translate] Start Import",
"startImport": "[TODO: Translate] Start Import",
"importing": "[TODO: Translate] Importing...",
"progress": "[TODO: Translate] Progress",
"total": "[TODO: Translate] Total",
"success": "[TODO: Translate] Success",
"failed": "[TODO: Translate] Failed",
"skipped": "[TODO: Translate] Skipped",
"current": "[TODO: Translate] Current",
"currentItem": "[TODO: Translate] Current",
"preparing": "[TODO: Translate] Preparing...",
"cancel": "[TODO: Translate] Cancel",
"cancelImport": "[TODO: Translate] Cancel",
"cancelled": "[TODO: Translate] Import cancelled",
"completed": "[TODO: Translate] Import completed",
"completedWithErrors": "[TODO: Translate] Completed with errors",
"completedSuccess": "[TODO: Translate] Successfully imported {count} recipe(s)",
"successCount": "[TODO: Translate] Successful",
"failedCount": "[TODO: Translate] Failed",
"skippedCount": "[TODO: Translate] Skipped",
"totalProcessed": "[TODO: Translate] Total processed",
"viewDetails": "[TODO: Translate] View Details",
"newImport": "[TODO: Translate] New Import",
"manualPathEntry": "[TODO: Translate] Please enter the directory path manually. File browser is not available in this browser.",
"batchImportDirectorySelected": "[TODO: Translate] Directory selected: {name}. You may need to enter the full path manually.",
"batchImportManualEntryRequired": "[TODO: Translate] File browser not available. Please enter the directory path manually.",
"backToParent": "[TODO: Translate] Back to parent directory",
"folders": "[TODO: Translate] Folders",
"folderCount": "[TODO: Translate] {count} folders",
"imageFiles": "[TODO: Translate] Image Files",
"images": "[TODO: Translate] images",
"imageCount": "[TODO: Translate] {count} images",
"selectFolder": "[TODO: Translate] Select This Folder",
"errors": {
"enterUrls": "[TODO: Translate] Please enter at least one URL or path",
"enterDirectory": "[TODO: Translate] Please enter a directory path",
"startFailed": "[TODO: Translate] Failed to start import: {message}"
}
}
},
"checkpoints": {
@@ -750,7 +816,17 @@
"collapseAllDisabled": "Недоступно в виде списка",
"dragDrop": {
"unableToResolveRoot": "Не удалось определить путь назначения для перемещения.",
"moveUnsupported": "Move is not supported for this item."
"moveUnsupported": "Перемещение этого элемента не поддерживается.",
"createFolderHint": "Отпустите, чтобы создать новую папку",
"newFolderName": "Имя новой папки",
"folderNameHint": "Нажмите Enter для подтверждения, Escape для отмены",
"emptyFolderName": "Пожалуйста, введите имя папки",
"invalidFolderName": "Имя папки содержит недопустимые символы",
"noDragState": "Ожидающая операция перетаскивания не найдена"
},
"empty": {
"noFolders": "Папки не найдены",
"dragHint": "Перетащите элементы сюда, чтобы создать папки"
}
},
"statistics": {
@@ -1342,7 +1418,14 @@
"showWechatQR": "Показать QR-код WeChat",
"hideWechatQR": "Скрыть QR-код WeChat"
},
"footer": "Спасибо за использование LoRA Manager! ❤️"
"footer": "Спасибо за использование LoRA Manager! ❤️",
"supporters": {
"title": "Спасибо всем сторонникам",
"subtitle": "Спасибо {count} сторонникам, которые сделали этот проект возможным",
"specialThanks": "Особая благодарность",
"allSupporters": "Все сторонники",
"totalCount": "Всего {count} сторонников"
}
},
"toast": {
"general": {
@@ -1376,6 +1459,8 @@
"loadFailed": "Не удалось загрузить {modelType}s: {message}",
"refreshComplete": "Обновление завершено",
"refreshFailed": "Не удалось обновить рецепты: {message}",
"syncComplete": "Синхронизация завершена",
"syncFailed": "Не удалось синхронизировать рецепты: {message}",
"updateFailed": "Не удалось обновить рецепт: {error}",
"updateError": "Ошибка обновления рецепта: {message}",
"nameSaved": "Рецепт \"{name}\" успешно сохранен",
@@ -1412,7 +1497,14 @@
"recipeSaveFailed": "Не удалось сохранить рецепт: {error}",
"importFailed": "Импорт не удался: {message}",
"folderTreeFailed": "Не удалось загрузить дерево папок",
"folderTreeError": "Ошибка загрузки дерева папок"
"folderTreeError": "Ошибка загрузки дерева папок",
"batchImportFailed": "[TODO: Translate] Failed to start batch import: {message}",
"batchImportCancelling": "[TODO: Translate] Cancelling batch import...",
"batchImportCancelFailed": "[TODO: Translate] Failed to cancel batch import: {message}",
"batchImportNoUrls": "[TODO: Translate] Please enter at least one URL or file path",
"batchImportNoDirectory": "[TODO: Translate] Please enter a directory path",
"batchImportBrowseFailed": "[TODO: Translate] Failed to browse directory: {message}",
"batchImportDirectorySelected": "[TODO: Translate] Directory selected: {path}"
},
"models": {
"noModelsSelected": "Модели не выбраны",

View File

@@ -1,8 +1,11 @@
{
"common": {
"cancel": "取消",
"confirm": "确认",
"actions": {
"save": "保存",
"cancel": "取消",
"confirm": "确认",
"delete": "删除",
"move": "移动",
"refresh": "刷新",
@@ -11,7 +14,8 @@
"backToTop": "返回顶部",
"settings": "设置",
"help": "帮助",
"add": "添加"
"add": "添加",
"close": "关闭"
},
"status": {
"loading": "加载中...",
@@ -159,11 +163,11 @@
"error": "清理示例图片文件夹失败:{message}"
},
"fetchMissingLicenses": {
"label": "Refresh license metadata",
"loading": "Refreshing license metadata for {typePlural}...",
"success": "Updated license metadata for {count} {typePlural}",
"none": "All {typePlural} already have license metadata",
"error": "Failed to refresh license metadata for {typePlural}: {message}"
"label": "刷新许可证元数据",
"loading": "正在刷新 {typePlural} 的许可证元数据...",
"success": "已更新 {count} {typePlural} 的许可证元数据",
"none": "所有 {typePlural} 都已具备许可证元数据",
"error": "刷新 {typePlural} 的许可证元数据失败:{message}"
},
"repairRecipes": {
"label": "修复配方数据",
@@ -219,7 +223,7 @@
"presetNamePlaceholder": "预设名称...",
"baseModel": "基础模型",
"modelTags": "标签前20",
"modelTypes": "Model Types",
"modelTypes": "模型类型",
"license": "许可证",
"noCreditRequired": "无需署名",
"allowSellingGeneratedContent": "允许销售",
@@ -361,6 +365,23 @@
"defaultEmbeddingRootHelp": "设置下载、导入和移动时的默认 Embedding 根目录",
"noDefault": "无默认"
},
"extraFolderPaths": {
"title": "额外文件夹路径",
"help": "在 ComfyUI 的标准路径之外添加额外的模型文件夹。这些路径单独存储,并与默认文件夹一起扫描。",
"description": "配置额外的文件夹以扫描模型。这些路径是 LoRA Manager 特有的,将与 ComfyUI 的默认路径合并。",
"modelTypes": {
"lora": "LoRA 路径",
"checkpoint": "Checkpoint 路径",
"unet": "Diffusion 模型路径",
"embedding": "Embedding 路径"
},
"pathPlaceholder": "/额外/模型/路径",
"saveSuccess": "额外文件夹路径已更新。",
"saveError": "更新额外文件夹路径失败:{message}",
"validation": {
"duplicatePath": "此路径已配置"
}
},
"priorityTags": {
"title": "优先标签",
"description": "为每种模型类型自定义标签优先级顺序 (例如: character, concept, style(toon|toon_style))",
@@ -485,23 +506,6 @@
"proxyPassword": "密码 (可选)",
"proxyPasswordPlaceholder": "密码",
"proxyPasswordHelp": "代理认证的密码 (如果需要)"
},
"extraFolderPaths": {
"title": "额外文件夹路径",
"help": "在 ComfyUI 的标准路径之外添加额外的模型文件夹。这些路径单独存储,并与默认文件夹一起扫描。",
"description": "配置额外的文件夹以扫描模型。这些路径是 LoRA Manager 特有的,将与 ComfyUI 的默认路径合并。",
"modelTypes": {
"lora": "LoRA 路径",
"checkpoint": "Checkpoint 路径",
"unet": "Diffusion 模型路径",
"embedding": "Embedding 路径"
},
"pathPlaceholder": "/额外/模型/路径",
"saveSuccess": "额外文件夹路径已更新。",
"saveError": "更新额外文件夹路径失败:{message}",
"validation": {
"duplicatePath": "此路径已配置"
}
}
},
"loras": {
@@ -682,7 +686,11 @@
"lorasCountAsc": "最少"
},
"refresh": {
"title": "刷新配方列表"
"title": "刷新配方列表",
"quick": "同步变更",
"quickTooltip": "同步变更 - 快速刷新而不重建缓存",
"full": "重建缓存",
"fullTooltip": "重建缓存 - 重新扫描所有配方文件"
},
"filteredByLora": "按 LoRA 筛选",
"favorites": {
@@ -722,6 +730,64 @@
"failed": "修复配方失败:{message}",
"missingId": "无法修复配方:缺少配方 ID"
}
},
"batchImport": {
"title": "批量导入配方",
"action": "批量导入",
"urlList": "[TODO: Translate] URL List",
"directory": "[TODO: Translate] Directory",
"urlDescription": "[TODO: Translate] Enter image URLs or local file paths (one per line). Each will be imported as a recipe.",
"directoryDescription": "输入目录路径以导入该文件夹中的所有图片。",
"urlsLabel": "图片 URL 或本地路径",
"urlsPlaceholder": "https://civitai.com/images/...\nhttps://civitai.com/images/...\nC:/path/to/image.png\n...",
"urlsHint": "[TODO: Translate] Enter one URL or path per line",
"directoryPath": "[TODO: Translate] Directory Path",
"directoryPlaceholder": "/图片/文件夹/路径",
"browse": "[TODO: Translate] Browse",
"recursive": "[TODO: Translate] Include subdirectories",
"tagsOptional": "标签(可选,应用于所有配方)",
"tagsPlaceholder": "[TODO: Translate] Enter tags separated by commas",
"tagsHint": "[TODO: Translate] Tags will be added to all imported recipes",
"skipNoMetadata": "跳过无元数据的图片",
"skipNoMetadataHelp": "没有 LoRA 元数据的图片将自动跳过。",
"start": "[TODO: Translate] Start Import",
"startImport": "开始导入",
"importing": "正在导入配方...",
"progress": "进度",
"total": "[TODO: Translate] Total",
"success": "[TODO: Translate] Success",
"failed": "[TODO: Translate] Failed",
"skipped": "[TODO: Translate] Skipped",
"current": "[TODO: Translate] Current",
"currentItem": "当前",
"preparing": "准备中...",
"cancel": "[TODO: Translate] Cancel",
"cancelImport": "取消",
"cancelled": "批量导入已取消",
"completed": "导入完成",
"completedWithErrors": "[TODO: Translate] Completed with errors",
"completedSuccess": "成功导入 {count} 个配方",
"successCount": "成功",
"failedCount": "失败",
"skippedCount": "跳过",
"totalProcessed": "总计处理",
"viewDetails": "[TODO: Translate] View Details",
"newImport": "[TODO: Translate] New Import",
"manualPathEntry": "[TODO: Translate] Please enter the directory path manually. File browser is not available in this browser.",
"batchImportDirectorySelected": "[TODO: Translate] Directory selected: {name}. You may need to enter the full path manually.",
"batchImportManualEntryRequired": "[TODO: Translate] File browser not available. Please enter the directory path manually.",
"backToParent": "[TODO: Translate] Back to parent directory",
"folders": "[TODO: Translate] Folders",
"folderCount": "[TODO: Translate] {count} folders",
"imageFiles": "[TODO: Translate] Image Files",
"images": "[TODO: Translate] images",
"imageCount": "[TODO: Translate] {count} images",
"selectFolder": "[TODO: Translate] Select This Folder",
"errors": {
"enterUrls": "请至少输入一个 URL 或路径",
"enterDirectory": "请输入目录路径",
"startFailed": "启动导入失败:{message}"
}
}
},
"checkpoints": {
@@ -750,7 +816,17 @@
"collapseAllDisabled": "列表视图下不可用",
"dragDrop": {
"unableToResolveRoot": "无法确定移动的目标路径。",
"moveUnsupported": "Move is not supported for this item."
"moveUnsupported": "Move is not supported for this item.",
"createFolderHint": "释放以创建新文件夹",
"newFolderName": "新文件夹名称",
"folderNameHint": "按 Enter 确认Escape 取消",
"emptyFolderName": "请输入文件夹名称",
"invalidFolderName": "文件夹名称包含无效字符",
"noDragState": "未找到待处理的拖放操作"
},
"empty": {
"noFolders": "未找到文件夹",
"dragHint": "拖拽项目到此处以创建文件夹"
}
},
"statistics": {
@@ -1342,7 +1418,14 @@
"showWechatQR": "显示微信二维码",
"hideWechatQR": "隐藏微信二维码"
},
"footer": "感谢使用 LoRA 管理器!❤️"
"footer": "感谢使用 LoRA 管理器!❤️",
"supporters": {
"title": "感谢所有支持者",
"subtitle": "感谢 {count} 位支持者让这个项目成为可能",
"specialThanks": "特别感谢",
"allSupporters": "所有支持者",
"totalCount": "共 {count} 位支持者"
}
},
"toast": {
"general": {
@@ -1376,6 +1459,8 @@
"loadFailed": "加载 {modelType} 失败:{message}",
"refreshComplete": "刷新完成",
"refreshFailed": "刷新配方失败:{message}",
"syncComplete": "同步完成",
"syncFailed": "同步配方失败:{message}",
"updateFailed": "更新配方失败:{error}",
"updateError": "更新配方出错:{message}",
"nameSaved": "配方“{name}”保存成功",
@@ -1412,7 +1497,14 @@
"recipeSaveFailed": "保存配方失败:{error}",
"importFailed": "导入失败:{message}",
"folderTreeFailed": "加载文件夹树失败",
"folderTreeError": "加载文件夹树出错"
"folderTreeError": "加载文件夹树出错",
"batchImportFailed": "[TODO: Translate] Failed to start batch import: {message}",
"batchImportCancelling": "[TODO: Translate] Cancelling batch import...",
"batchImportCancelFailed": "[TODO: Translate] Failed to cancel batch import: {message}",
"batchImportNoUrls": "[TODO: Translate] Please enter at least one URL or file path",
"batchImportNoDirectory": "[TODO: Translate] Please enter a directory path",
"batchImportBrowseFailed": "[TODO: Translate] Failed to browse directory: {message}",
"batchImportDirectorySelected": "[TODO: Translate] Directory selected: {path}"
},
"models": {
"noModelsSelected": "未选中模型",

View File

@@ -1,8 +1,11 @@
{
"common": {
"cancel": "取消",
"confirm": "確認",
"actions": {
"save": "儲存",
"cancel": "取消",
"confirm": "確認",
"delete": "刪除",
"move": "移動",
"refresh": "重新整理",
@@ -11,7 +14,8 @@
"backToTop": "回到頂部",
"settings": "設定",
"help": "說明",
"add": "新增"
"add": "新增",
"close": "關閉"
},
"status": {
"loading": "載入中...",
@@ -219,7 +223,7 @@
"presetNamePlaceholder": "預設名稱...",
"baseModel": "基礎模型",
"modelTags": "標籤(前 20",
"modelTypes": "Model Types",
"modelTypes": "模型類型",
"license": "授權",
"noCreditRequired": "無需署名",
"allowSellingGeneratedContent": "允許銷售",
@@ -361,6 +365,23 @@
"defaultEmbeddingRootHelp": "設定下載、匯入和移動時的預設 Embedding 根目錄",
"noDefault": "未設定預設"
},
"extraFolderPaths": {
"title": "額外資料夾路徑",
"help": "在 ComfyUI 的標準路徑之外新增額外的模型資料夾。這些路徑單獨儲存,並與預設資料夾一起掃描。",
"description": "設定額外的資料夾以掃描模型。這些路徑是 LoRA Manager 特有的,將與 ComfyUI 的預設路徑合併。",
"modelTypes": {
"lora": "LoRA 路徑",
"checkpoint": "Checkpoint 路徑",
"unet": "Diffusion 模型路徑",
"embedding": "Embedding 路徑"
},
"pathPlaceholder": "/額外/模型/路徑",
"saveSuccess": "額外資料夾路徑已更新。",
"saveError": "更新額外資料夾路徑失敗:{message}",
"validation": {
"duplicatePath": "此路徑已設定"
}
},
"priorityTags": {
"title": "優先標籤",
"description": "為每種模型類型自訂標籤的優先順序 (例如: character, concept, style(toon|toon_style))",
@@ -485,23 +506,6 @@
"proxyPassword": "密碼(選填)",
"proxyPasswordPlaceholder": "password",
"proxyPasswordHelp": "代理驗證所需的密碼(如有需要)"
},
"extraFolderPaths": {
"title": "額外資料夾路徑",
"help": "在 ComfyUI 的標準路徑之外新增額外的模型資料夾。這些路徑單獨儲存,並與預設資料夾一起掃描。",
"description": "設定額外的資料夾以掃描模型。這些路徑是 LoRA Manager 特有的,將與 ComfyUI 的預設路徑合併。",
"modelTypes": {
"lora": "LoRA 路徑",
"checkpoint": "Checkpoint 路徑",
"unet": "Diffusion 模型路徑",
"embedding": "Embedding 路徑"
},
"pathPlaceholder": "/額外/模型/路徑",
"saveSuccess": "額外資料夾路徑已更新。",
"saveError": "更新額外資料夾路徑失敗:{message}",
"validation": {
"duplicatePath": "此路徑已設定"
}
}
},
"loras": {
@@ -682,7 +686,11 @@
"lorasCountAsc": "最少"
},
"refresh": {
"title": "重新整理配方列表"
"title": "重新整理配方列表",
"quick": "同步變更",
"quickTooltip": "同步變更 - 快速重新整理而不重建快取",
"full": "重建快取",
"fullTooltip": "重建快取 - 重新掃描所有配方檔案"
},
"filteredByLora": "已依 LoRA 篩選",
"favorites": {
@@ -722,6 +730,64 @@
"failed": "修復配方失敗:{message}",
"missingId": "無法修復配方:缺少配方 ID"
}
},
"batchImport": {
"title": "[TODO: Translate] Batch Import Recipes",
"action": "[TODO: Translate] Batch Import",
"urlList": "[TODO: Translate] URL List",
"directory": "[TODO: Translate] Directory",
"urlDescription": "[TODO: Translate] Enter image URLs or local file paths (one per line). Each will be imported as a recipe.",
"directoryDescription": "[TODO: Translate] Enter a directory path to import all images from that folder.",
"urlsLabel": "[TODO: Translate] Image URLs or Local Paths",
"urlsPlaceholder": "[TODO: Translate] https://civitai.com/images/...\nhttps://civitai.com/images/...\nC:/path/to/image.png\n...",
"urlsHint": "[TODO: Translate] Enter one URL or path per line",
"directoryPath": "[TODO: Translate] Directory Path",
"directoryPlaceholder": "[TODO: Translate] /path/to/images/folder",
"browse": "[TODO: Translate] Browse",
"recursive": "[TODO: Translate] Include subdirectories",
"tagsOptional": "[TODO: Translate] Tags (optional, applied to all recipes)",
"tagsPlaceholder": "[TODO: Translate] Enter tags separated by commas",
"tagsHint": "[TODO: Translate] Tags will be added to all imported recipes",
"skipNoMetadata": "[TODO: Translate] Skip images without metadata",
"skipNoMetadataHelp": "[TODO: Translate] Images without LoRA metadata will be skipped automatically.",
"start": "[TODO: Translate] Start Import",
"startImport": "[TODO: Translate] Start Import",
"importing": "[TODO: Translate] Importing...",
"progress": "[TODO: Translate] Progress",
"total": "[TODO: Translate] Total",
"success": "[TODO: Translate] Success",
"failed": "[TODO: Translate] Failed",
"skipped": "[TODO: Translate] Skipped",
"current": "[TODO: Translate] Current",
"currentItem": "[TODO: Translate] Current",
"preparing": "[TODO: Translate] Preparing...",
"cancel": "[TODO: Translate] Cancel",
"cancelImport": "[TODO: Translate] Cancel",
"cancelled": "[TODO: Translate] Import cancelled",
"completed": "[TODO: Translate] Import completed",
"completedWithErrors": "[TODO: Translate] Completed with errors",
"completedSuccess": "[TODO: Translate] Successfully imported {count} recipe(s)",
"successCount": "[TODO: Translate] Successful",
"failedCount": "[TODO: Translate] Failed",
"skippedCount": "[TODO: Translate] Skipped",
"totalProcessed": "[TODO: Translate] Total processed",
"viewDetails": "[TODO: Translate] View Details",
"newImport": "[TODO: Translate] New Import",
"manualPathEntry": "[TODO: Translate] Please enter the directory path manually. File browser is not available in this browser.",
"batchImportDirectorySelected": "[TODO: Translate] Directory selected: {name}. You may need to enter the full path manually.",
"batchImportManualEntryRequired": "[TODO: Translate] File browser not available. Please enter the directory path manually.",
"backToParent": "[TODO: Translate] Back to parent directory",
"folders": "[TODO: Translate] Folders",
"folderCount": "[TODO: Translate] {count} folders",
"imageFiles": "[TODO: Translate] Image Files",
"images": "[TODO: Translate] images",
"imageCount": "[TODO: Translate] {count} images",
"selectFolder": "[TODO: Translate] Select This Folder",
"errors": {
"enterUrls": "[TODO: Translate] Please enter at least one URL or path",
"enterDirectory": "[TODO: Translate] Please enter a directory path",
"startFailed": "[TODO: Translate] Failed to start import: {message}"
}
}
},
"checkpoints": {
@@ -750,7 +816,17 @@
"collapseAllDisabled": "列表檢視下不可用",
"dragDrop": {
"unableToResolveRoot": "無法確定移動的目標路徑。",
"moveUnsupported": "Move is not supported for this item."
"moveUnsupported": "Move is not supported for this item.",
"createFolderHint": "放開以建立新資料夾",
"newFolderName": "新資料夾名稱",
"folderNameHint": "按 Enter 確認Escape 取消",
"emptyFolderName": "請輸入資料夾名稱",
"invalidFolderName": "資料夾名稱包含無效字元",
"noDragState": "未找到待處理的拖放操作"
},
"empty": {
"noFolders": "未找到資料夾",
"dragHint": "將項目拖到此處以建立資料夾"
}
},
"statistics": {
@@ -1342,7 +1418,14 @@
"showWechatQR": "顯示微信二維碼",
"hideWechatQR": "隱藏微信二維碼"
},
"footer": "感謝您使用 LoRA 管理器!❤️"
"footer": "感謝您使用 LoRA 管理器!❤️",
"supporters": {
"title": "感謝所有支持者",
"subtitle": "感謝 {count} 位支持者讓這個專案成為可能",
"specialThanks": "特別感謝",
"allSupporters": "所有支持者",
"totalCount": "共 {count} 位支持者"
}
},
"toast": {
"general": {
@@ -1376,6 +1459,8 @@
"loadFailed": "載入 {modelType} 失敗:{message}",
"refreshComplete": "刷新完成",
"refreshFailed": "刷新配方失敗:{message}",
"syncComplete": "同步完成",
"syncFailed": "同步配方失敗:{message}",
"updateFailed": "更新配方失敗:{error}",
"updateError": "更新配方錯誤:{message}",
"nameSaved": "配方「{name}」已成功儲存",
@@ -1412,7 +1497,14 @@
"recipeSaveFailed": "儲存配方失敗:{error}",
"importFailed": "匯入失敗:{message}",
"folderTreeFailed": "載入資料夾樹狀結構失敗",
"folderTreeError": "載入資料夾樹狀結構錯誤"
"folderTreeError": "載入資料夾樹狀結構錯誤",
"batchImportFailed": "[TODO: Translate] Failed to start batch import: {message}",
"batchImportCancelling": "[TODO: Translate] Cancelling batch import...",
"batchImportCancelFailed": "[TODO: Translate] Failed to cancel batch import: {message}",
"batchImportNoUrls": "[TODO: Translate] Please enter at least one URL or file path",
"batchImportNoDirectory": "[TODO: Translate] Please enter a directory path",
"batchImportBrowseFailed": "[TODO: Translate] Failed to browse directory: {message}",
"batchImportDirectorySelected": "[TODO: Translate] Directory selected: {path}"
},
"models": {
"noModelsSelected": "未選擇模型",

View File

@@ -2,7 +2,7 @@ import os
import platform
import threading
from pathlib import Path
import folder_paths # type: ignore
import folder_paths # type: ignore
from typing import Any, Dict, Iterable, List, Mapping, Optional, Set, Tuple
import logging
import json
@@ -10,16 +10,23 @@ import urllib.parse
import time
from .utils.cache_paths import CacheType, get_cache_file_path, get_legacy_cache_paths
from .utils.settings_paths import ensure_settings_file, get_settings_dir, load_settings_template
from .utils.settings_paths import (
ensure_settings_file,
get_settings_dir,
load_settings_template,
)
# Use an environment variable to control standalone mode
standalone_mode = os.environ.get("LORA_MANAGER_STANDALONE", "0") == "1" or os.environ.get("HF_HUB_DISABLE_TELEMETRY", "0") == "0"
standalone_mode = (
os.environ.get("LORA_MANAGER_STANDALONE", "0") == "1"
or os.environ.get("HF_HUB_DISABLE_TELEMETRY", "0") == "0"
)
logger = logging.getLogger(__name__)
def _normalize_folder_paths_for_comparison(
folder_paths: Mapping[str, Iterable[str]]
folder_paths: Mapping[str, Iterable[str]],
) -> Dict[str, Set[str]]:
"""Normalize folder paths for comparison across libraries."""
@@ -49,7 +56,7 @@ def _normalize_folder_paths_for_comparison(
def _normalize_library_folder_paths(
library_payload: Mapping[str, Any]
library_payload: Mapping[str, Any],
) -> Dict[str, Set[str]]:
"""Return normalized folder paths extracted from a library payload."""
@@ -76,9 +83,15 @@ class Config:
"""Global configuration for LoRA Manager"""
def __init__(self):
self.templates_path = os.path.join(os.path.dirname(os.path.dirname(__file__)), 'templates')
self.static_path = os.path.join(os.path.dirname(os.path.dirname(__file__)), 'static')
self.i18n_path = os.path.join(os.path.dirname(os.path.dirname(__file__)), 'locales')
self.templates_path = os.path.join(
os.path.dirname(os.path.dirname(__file__)), "templates"
)
self.static_path = os.path.join(
os.path.dirname(os.path.dirname(__file__)), "static"
)
self.i18n_path = os.path.join(
os.path.dirname(os.path.dirname(__file__)), "locales"
)
# Path mapping dictionary, target to link mapping
self._path_mappings: Dict[str, str] = {}
# Normalized preview root directories used to validate preview access
@@ -152,17 +165,21 @@ class Config:
default_library = libraries.get("default", {})
target_folder_paths = {
'loras': list(self.loras_roots),
'checkpoints': list(self.checkpoints_roots or []),
'unet': list(self.unet_roots or []),
'embeddings': list(self.embeddings_roots or []),
"loras": list(self.loras_roots),
"checkpoints": list(self.checkpoints_roots or []),
"unet": list(self.unet_roots or []),
"embeddings": list(self.embeddings_roots or []),
}
normalized_target_paths = _normalize_folder_paths_for_comparison(target_folder_paths)
normalized_target_paths = _normalize_folder_paths_for_comparison(
target_folder_paths
)
normalized_default_paths: Optional[Dict[str, Set[str]]] = None
if isinstance(default_library, Mapping):
normalized_default_paths = _normalize_library_folder_paths(default_library)
normalized_default_paths = _normalize_library_folder_paths(
default_library
)
if (
not comfy_library
@@ -185,13 +202,19 @@ class Config:
default_lora_root = self.loras_roots[0]
default_checkpoint_root = comfy_library.get("default_checkpoint_root", "")
if (not default_checkpoint_root and self.checkpoints_roots and
len(self.checkpoints_roots) == 1):
if (
not default_checkpoint_root
and self.checkpoints_roots
and len(self.checkpoints_roots) == 1
):
default_checkpoint_root = self.checkpoints_roots[0]
default_embedding_root = comfy_library.get("default_embedding_root", "")
if (not default_embedding_root and self.embeddings_roots and
len(self.embeddings_roots) == 1):
if (
not default_embedding_root
and self.embeddings_roots
and len(self.embeddings_roots) == 1
):
default_embedding_root = self.embeddings_roots[0]
metadata = dict(comfy_library.get("metadata", {}))
@@ -216,11 +239,12 @@ class Config:
try:
if os.path.islink(path):
return True
if platform.system() == 'Windows':
if platform.system() == "Windows":
try:
import ctypes
FILE_ATTRIBUTE_REPARSE_POINT = 0x400
attrs = ctypes.windll.kernel32.GetFileAttributesW(str(path))
attrs = ctypes.windll.kernel32.GetFileAttributesW(str(path)) # type: ignore[attr-defined]
return attrs != -1 and (attrs & FILE_ATTRIBUTE_REPARSE_POINT)
except Exception as e:
logger.error(f"Error checking Windows reparse point: {e}")
@@ -233,18 +257,19 @@ class Config:
"""Check if a directory entry is a symlink, including Windows junctions."""
if entry.is_symlink():
return True
if platform.system() == 'Windows':
if platform.system() == "Windows":
try:
import ctypes
FILE_ATTRIBUTE_REPARSE_POINT = 0x400
attrs = ctypes.windll.kernel32.GetFileAttributesW(entry.path)
attrs = ctypes.windll.kernel32.GetFileAttributesW(entry.path) # type: ignore[attr-defined]
return attrs != -1 and (attrs & FILE_ATTRIBUTE_REPARSE_POINT)
except Exception:
pass
return False
def _normalize_path(self, path: str) -> str:
return os.path.normpath(path).replace(os.sep, '/')
return os.path.normpath(path).replace(os.sep, "/")
def _get_symlink_cache_path(self) -> Path:
canonical_path = get_cache_file_path(CacheType.SYMLINK, create_dir=True)
@@ -278,19 +303,18 @@ class Config:
if self._entry_is_symlink(entry):
try:
target = os.path.realpath(entry.path)
direct_symlinks.append([
self._normalize_path(entry.path),
self._normalize_path(target)
])
direct_symlinks.append(
[
self._normalize_path(entry.path),
self._normalize_path(target),
]
)
except OSError:
pass
except (OSError, PermissionError):
pass
return {
"roots": unique_roots,
"direct_symlinks": sorted(direct_symlinks)
}
return {"roots": unique_roots, "direct_symlinks": sorted(direct_symlinks)}
def _initialize_symlink_mappings(self) -> None:
start = time.perf_counter()
@@ -307,10 +331,14 @@ class Config:
cached_fingerprint = self._cached_fingerprint
# Check 1: First-level symlinks unchanged (catches new symlinks at root)
fingerprint_valid = cached_fingerprint and current_fingerprint == cached_fingerprint
fingerprint_valid = (
cached_fingerprint and current_fingerprint == cached_fingerprint
)
# Check 2: All cached mappings still valid (catches changes at any depth)
mappings_valid = self._validate_cached_mappings() if fingerprint_valid else False
mappings_valid = (
self._validate_cached_mappings() if fingerprint_valid else False
)
if fingerprint_valid and mappings_valid:
return
@@ -370,7 +398,9 @@ class Config:
for target, link in cached_mappings.items():
if not isinstance(target, str) or not isinstance(link, str):
continue
normalized_mappings[self._normalize_path(target)] = self._normalize_path(link)
normalized_mappings[self._normalize_path(target)] = self._normalize_path(
link
)
self._path_mappings = normalized_mappings
@@ -391,7 +421,9 @@ class Config:
parent_dir = loaded_path.parent
if parent_dir.name == "cache" and not any(parent_dir.iterdir()):
parent_dir.rmdir()
logger.info("Removed empty legacy cache directory: %s", parent_dir)
logger.info(
"Removed empty legacy cache directory: %s", parent_dir
)
except Exception:
pass
@@ -402,7 +434,9 @@ class Config:
exc,
)
else:
logger.info("Symlink cache loaded with %d mappings", len(self._path_mappings))
logger.info(
"Symlink cache loaded with %d mappings", len(self._path_mappings)
)
return True
@@ -414,7 +448,7 @@ class Config:
"""
for target, link in self._path_mappings.items():
# Convert normalized paths back to OS paths
link_path = link.replace('/', os.sep)
link_path = link.replace("/", os.sep)
# Check if symlink still exists
if not self._is_link(link_path):
@@ -427,7 +461,9 @@ class Config:
if actual_target != target:
logger.debug(
"Symlink target changed: %s -> %s (cached: %s)",
link_path, actual_target, target
link_path,
actual_target,
target,
)
return False
except OSError:
@@ -446,7 +482,11 @@ class Config:
try:
with cache_path.open("w", encoding="utf-8") as handle:
json.dump(payload, handle, ensure_ascii=False, indent=2)
logger.debug("Symlink cache saved to %s with %d mappings", cache_path, len(self._path_mappings))
logger.debug(
"Symlink cache saved to %s with %d mappings",
cache_path,
len(self._path_mappings),
)
except Exception as exc:
logger.info("Failed to write symlink cache %s: %s", cache_path, exc)
@@ -494,13 +534,13 @@ class Config:
self.add_path_mapping(entry.path, target_path)
except Exception as inner_exc:
logger.debug(
"Error processing directory entry %s: %s", entry.path, inner_exc
"Error processing directory entry %s: %s",
entry.path,
inner_exc,
)
except Exception as e:
logger.error(f"Error scanning links in {root}: {e}")
def add_path_mapping(self, link_path: str, target_path: str):
"""Add a symbolic link path mapping
target_path: actual target path
@@ -594,26 +634,31 @@ class Config:
preview_roots.update(self._expand_preview_root(target))
preview_roots.update(self._expand_preview_root(link))
self._preview_root_paths = {path for path in preview_roots if path.is_absolute()}
self._preview_root_paths = {
path for path in preview_roots if path.is_absolute()
}
logger.debug(
"Preview roots rebuilt: %d paths from %d lora roots (%d extra), %d checkpoint roots (%d extra), %d embedding roots (%d extra), %d symlink mappings",
len(self._preview_root_paths),
len(self.loras_roots or []), len(self.extra_loras_roots or []),
len(self.base_models_roots or []), len(self.extra_checkpoints_roots or []),
len(self.embeddings_roots or []), len(self.extra_embeddings_roots or []),
len(self.loras_roots or []),
len(self.extra_loras_roots or []),
len(self.base_models_roots or []),
len(self.extra_checkpoints_roots or []),
len(self.embeddings_roots or []),
len(self.extra_embeddings_roots or []),
len(self._path_mappings),
)
def map_path_to_link(self, path: str) -> str:
"""Map a target path back to its symbolic link path"""
normalized_path = os.path.normpath(path).replace(os.sep, '/')
normalized_path = os.path.normpath(path).replace(os.sep, "/")
# Check if the path is contained in any mapped target path
for target_path, link_path in self._path_mappings.items():
# Match whole path components to avoid prefix collisions (e.g., /a/b vs /a/bc)
if normalized_path == target_path:
return link_path
if normalized_path.startswith(target_path + '/'):
if normalized_path.startswith(target_path + "/"):
# If the path starts with the target path, replace with link path
mapped_path = normalized_path.replace(target_path, link_path, 1)
return mapped_path
@@ -621,14 +666,14 @@ class Config:
def map_link_to_path(self, link_path: str) -> str:
"""Map a symbolic link path back to the actual path"""
normalized_link = os.path.normpath(link_path).replace(os.sep, '/')
normalized_link = os.path.normpath(link_path).replace(os.sep, "/")
# Check if the path is contained in any mapped target path
for target_path, link_path_mapped in self._path_mappings.items():
# Match whole path components
if normalized_link == link_path_mapped:
return target_path
if normalized_link.startswith(link_path_mapped + '/'):
if normalized_link.startswith(link_path_mapped + "/"):
# If the path starts with the link path, replace with actual path
mapped_path = normalized_link.replace(link_path_mapped, target_path, 1)
return mapped_path
@@ -641,8 +686,8 @@ class Config:
continue
if not os.path.exists(path):
continue
real_path = os.path.normpath(os.path.realpath(path)).replace(os.sep, '/')
normalized = os.path.normpath(path).replace(os.sep, '/')
real_path = os.path.normpath(os.path.realpath(path)).replace(os.sep, "/")
normalized = os.path.normpath(path).replace(os.sep, "/")
if real_path not in dedup:
dedup[real_path] = normalized
return dedup
@@ -652,7 +697,9 @@ class Config:
unique_paths = sorted(path_map.values(), key=lambda p: p.lower())
for original_path in unique_paths:
real_path = os.path.normpath(os.path.realpath(original_path)).replace(os.sep, '/')
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)
@@ -660,7 +707,13 @@ class Config:
def _prepare_checkpoint_paths(
self, checkpoint_paths: Iterable[str], unet_paths: Iterable[str]
) -> List[str]:
) -> Tuple[List[str], List[str], List[str]]:
"""Prepare checkpoint paths and return (all_roots, checkpoint_roots, unet_roots).
Returns:
Tuple of (all_unique_paths, checkpoint_only_paths, unet_only_paths)
This method does NOT modify instance variables - callers must set them.
"""
checkpoint_map = self._dedupe_existing_paths(checkpoint_paths)
unet_map = self._dedupe_existing_paths(unet_paths)
@@ -674,7 +727,7 @@ class Config:
"Please fix your ComfyUI path configuration to separate these folders. "
"Falling back to 'checkpoints' for backward compatibility. "
"Overlapping real paths: %s",
[checkpoint_map.get(rp, rp) for rp in overlapping_real_paths]
[checkpoint_map.get(rp, rp) for rp in overlapping_real_paths],
)
# Remove overlapping paths from unet_map to prioritize checkpoints
for rp in overlapping_real_paths:
@@ -690,22 +743,26 @@ class Config:
checkpoint_values = set(checkpoint_map.values())
unet_values = set(unet_map.values())
self.checkpoints_roots = [p for p in unique_paths if p in checkpoint_values]
self.unet_roots = [p for p in unique_paths if p in unet_values]
checkpoint_roots = [p for p in unique_paths if p in checkpoint_values]
unet_roots = [p for p in unique_paths if p in unet_values]
for original_path in unique_paths:
real_path = os.path.normpath(os.path.realpath(original_path)).replace(os.sep, '/')
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
return unique_paths, checkpoint_roots, unet_roots
def _prepare_embedding_paths(self, raw_paths: Iterable[str]) -> List[str]:
path_map = self._dedupe_existing_paths(raw_paths)
unique_paths = sorted(path_map.values(), key=lambda p: p.lower())
for original_path in unique_paths:
real_path = os.path.normpath(os.path.realpath(original_path)).replace(os.sep, '/')
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)
@@ -719,28 +776,61 @@ class Config:
self._path_mappings.clear()
self._preview_root_paths = set()
lora_paths = folder_paths.get('loras', []) or []
checkpoint_paths = folder_paths.get('checkpoints', []) or []
unet_paths = folder_paths.get('unet', []) or []
embedding_paths = folder_paths.get('embeddings', []) or []
lora_paths = folder_paths.get("loras", []) or []
checkpoint_paths = folder_paths.get("checkpoints", []) or []
unet_paths = folder_paths.get("unet", []) or []
embedding_paths = folder_paths.get("embeddings", []) or []
self.loras_roots = self._prepare_lora_paths(lora_paths)
self.base_models_roots = self._prepare_checkpoint_paths(checkpoint_paths, unet_paths)
(
self.base_models_roots,
self.checkpoints_roots,
self.unet_roots,
) = self._prepare_checkpoint_paths(checkpoint_paths, unet_paths)
self.embeddings_roots = self._prepare_embedding_paths(embedding_paths)
# Process extra paths (only for LoRA Manager, not shared with ComfyUI)
extra_paths = extra_folder_paths or {}
extra_lora_paths = extra_paths.get('loras', []) or []
extra_checkpoint_paths = extra_paths.get('checkpoints', []) or []
extra_unet_paths = extra_paths.get('unet', []) or []
extra_embedding_paths = extra_paths.get('embeddings', []) or []
extra_lora_paths = extra_paths.get("loras", []) or []
extra_checkpoint_paths = extra_paths.get("checkpoints", []) or []
extra_unet_paths = extra_paths.get("unet", []) or []
extra_embedding_paths = extra_paths.get("embeddings", []) or []
self.extra_loras_roots = self._prepare_lora_paths(extra_lora_paths)
self.extra_checkpoints_roots = self._prepare_checkpoint_paths(extra_checkpoint_paths, extra_unet_paths)
self.extra_embeddings_roots = self._prepare_embedding_paths(extra_embedding_paths)
# extra_unet_roots is set by _prepare_checkpoint_paths (access unet_roots before it's reset)
unet_roots_value: List[str] = getattr(self, 'unet_roots', None) or []
self.extra_unet_roots = unet_roots_value
(
_,
self.extra_checkpoints_roots,
self.extra_unet_roots,
) = self._prepare_checkpoint_paths(extra_checkpoint_paths, extra_unet_paths)
self.extra_embeddings_roots = self._prepare_embedding_paths(
extra_embedding_paths
)
# Log extra folder paths
if self.extra_loras_roots:
logger.info(
"Found extra LoRA roots:"
+ "\n - "
+ "\n - ".join(self.extra_loras_roots)
)
if self.extra_checkpoints_roots:
logger.info(
"Found extra checkpoint roots:"
+ "\n - "
+ "\n - ".join(self.extra_checkpoints_roots)
)
if self.extra_unet_roots:
logger.info(
"Found extra diffusion model roots:"
+ "\n - "
+ "\n - ".join(self.extra_unet_roots)
)
if self.extra_embeddings_roots:
logger.info(
"Found extra embedding roots:"
+ "\n - "
+ "\n - ".join(self.extra_embeddings_roots)
)
self._initialize_symlink_mappings()
@@ -749,7 +839,10 @@ class Config:
try:
raw_paths = folder_paths.get_folder_paths("loras")
unique_paths = self._prepare_lora_paths(raw_paths)
logger.info("Found LoRA roots:" + ("\n - " + "\n - ".join(unique_paths) if unique_paths else "[]"))
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")
@@ -765,12 +858,21 @@ class Config:
try:
raw_checkpoint_paths = folder_paths.get_folder_paths("checkpoints")
raw_unet_paths = folder_paths.get_folder_paths("unet")
unique_paths = self._prepare_checkpoint_paths(raw_checkpoint_paths, raw_unet_paths)
(
unique_paths,
self.checkpoints_roots,
self.unet_roots,
) = self._prepare_checkpoint_paths(raw_checkpoint_paths, raw_unet_paths)
logger.info("Found checkpoint roots:" + ("\n - " + "\n - ".join(unique_paths) if unique_paths else "[]"))
logger.info(
"Found checkpoint roots:"
+ ("\n - " + "\n - ".join(unique_paths) if unique_paths else "[]")
)
if not unique_paths:
logger.warning("No valid checkpoint folders found in ComfyUI configuration")
logger.warning(
"No valid checkpoint folders found in ComfyUI configuration"
)
return []
return unique_paths
@@ -783,10 +885,15 @@ class Config:
try:
raw_paths = folder_paths.get_folder_paths("embeddings")
unique_paths = self._prepare_embedding_paths(raw_paths)
logger.info("Found embedding roots:" + ("\n - " + "\n - ".join(unique_paths) if unique_paths else "[]"))
logger.info(
"Found embedding roots:"
+ ("\n - " + "\n - ".join(unique_paths) if unique_paths else "[]")
)
if not unique_paths:
logger.warning("No valid embeddings folders found in ComfyUI configuration")
logger.warning(
"No valid embeddings folders found in ComfyUI configuration"
)
return []
return unique_paths
@@ -798,9 +905,9 @@ class Config:
if not preview_path:
return ""
normalized = os.path.normpath(preview_path).replace(os.sep, '/')
encoded_path = urllib.parse.quote(normalized, safe='')
return f'/api/lm/previews?path={encoded_path}'
normalized = os.path.normpath(preview_path).replace(os.sep, "/")
encoded_path = urllib.parse.quote(normalized, safe="")
return f"/api/lm/previews?path={encoded_path}"
def is_preview_path_allowed(self, preview_path: str) -> bool:
"""Return ``True`` if ``preview_path`` is within an allowed directory.
@@ -875,14 +982,18 @@ class Config:
normalized_link = self._normalize_path(str(current))
self._path_mappings[normalized_target] = normalized_link
self._preview_root_paths.update(self._expand_preview_root(normalized_target))
self._preview_root_paths.update(self._expand_preview_root(normalized_link))
self._preview_root_paths.update(
self._expand_preview_root(normalized_target)
)
self._preview_root_paths.update(
self._expand_preview_root(normalized_link)
)
logger.debug(
"Discovered deep symlink: %s -> %s (preview path: %s)",
normalized_link,
normalized_target,
preview_path
preview_path,
)
return True
@@ -900,8 +1011,16 @@ class Config:
def apply_library_settings(self, library_config: Mapping[str, object]) -> None:
"""Update runtime paths to match the provided library configuration."""
folder_paths = library_config.get('folder_paths') if isinstance(library_config, Mapping) else {}
extra_folder_paths = library_config.get('extra_folder_paths') if isinstance(library_config, Mapping) else None
folder_paths = (
library_config.get("folder_paths")
if isinstance(library_config, Mapping)
else {}
)
extra_folder_paths = (
library_config.get("extra_folder_paths")
if isinstance(library_config, Mapping)
else None
)
if not isinstance(folder_paths, Mapping):
folder_paths = {}
if not isinstance(extra_folder_paths, Mapping):
@@ -911,9 +1030,12 @@ class Config:
logger.info(
"Applied library settings with %d lora roots (%d extra), %d checkpoint roots (%d extra), and %d embedding roots (%d extra)",
len(self.loras_roots or []), len(self.extra_loras_roots or []),
len(self.base_models_roots or []), len(self.extra_checkpoints_roots or []),
len(self.embeddings_roots or []), len(self.extra_embeddings_roots or []),
len(self.loras_roots or []),
len(self.extra_loras_roots or []),
len(self.base_models_roots or []),
len(self.extra_checkpoints_roots or []),
len(self.embeddings_roots or []),
len(self.extra_embeddings_roots or []),
)
def get_library_registry_snapshot(self) -> Dict[str, object]:
@@ -933,5 +1055,6 @@ class Config:
logger.debug("Failed to collect library registry snapshot: %s", exc)
return {"active_library": "", "libraries": {}}
# Global config instance
config = Config()

View File

@@ -5,16 +5,22 @@ import logging
from .utils.logging_config import setup_logging
# Check if we're in standalone mode
standalone_mode = os.environ.get("LORA_MANAGER_STANDALONE", "0") == "1" or os.environ.get("HF_HUB_DISABLE_TELEMETRY", "0") == "0"
standalone_mode = (
os.environ.get("LORA_MANAGER_STANDALONE", "0") == "1"
or os.environ.get("HF_HUB_DISABLE_TELEMETRY", "0") == "0"
)
# Only setup logging prefix if not in standalone mode
if not standalone_mode:
setup_logging()
from server import PromptServer # type: ignore
from server import PromptServer # type: ignore
from .config import config
from .services.model_service_factory import ModelServiceFactory, register_default_model_types
from .services.model_service_factory import (
ModelServiceFactory,
register_default_model_types,
)
from .routes.recipe_routes import RecipeRoutes
from .routes.stats_routes import StatsRoutes
from .routes.update_routes import UpdateRoutes
@@ -61,6 +67,7 @@ class _SettingsProxy:
settings = _SettingsProxy()
class LoraManager:
"""Main entry point for LoRA Manager plugin"""
@@ -76,7 +83,8 @@ class LoraManager:
(
idx
for idx, middleware in enumerate(app.middlewares)
if getattr(middleware, "__name__", "") == "block_external_middleware"
if getattr(middleware, "__name__", "")
== "block_external_middleware"
),
None,
)
@@ -84,7 +92,9 @@ class LoraManager:
if block_middleware_index is None:
app.middlewares.append(relax_csp_for_remote_media)
else:
app.middlewares.insert(block_middleware_index, relax_csp_for_remote_media)
app.middlewares.insert(
block_middleware_index, relax_csp_for_remote_media
)
# Increase allowed header sizes so browsers with large localhost cookie
# jars (multiple UIs on 127.0.0.1) don't trip aiohttp's 8KB default
@@ -105,7 +115,7 @@ class LoraManager:
app._handler_args = updated_handler_args
# Configure aiohttp access logger to be less verbose
logging.getLogger('aiohttp.access').setLevel(logging.WARNING)
logging.getLogger("aiohttp.access").setLevel(logging.WARNING)
# Add specific suppression for connection reset errors
class ConnectionResetFilter(logging.Filter):
@@ -124,19 +134,23 @@ class LoraManager:
asyncio_logger.addFilter(ConnectionResetFilter())
# Add static route for example images if the path exists in settings
example_images_path = settings.get('example_images_path')
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}")
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 route for locales JSON files
if os.path.exists(config.i18n_path):
app.router.add_static('/locales', config.i18n_path)
logger.info(f"Added static route for locales: /locales -> {config.i18n_path}")
app.router.add_static("/locales", config.i18n_path)
logger.info(
f"Added static route for locales: /locales -> {config.i18n_path}"
)
# Add static route for plugin assets
app.router.add_static('/loras_static', config.static_path)
app.router.add_static("/loras_static", config.static_path)
# Register default model types with the factory
register_default_model_types()
@@ -154,9 +168,11 @@ class LoraManager:
PreviewRoutes.setup_routes(app)
# Setup WebSocket routes that are shared across all model types
app.router.add_get('/ws/fetch-progress', ws_manager.handle_connection)
app.router.add_get('/ws/download-progress', ws_manager.handle_download_connection)
app.router.add_get('/ws/init-progress', ws_manager.handle_init_connection)
app.router.add_get("/ws/fetch-progress", ws_manager.handle_connection)
app.router.add_get(
"/ws/download-progress", ws_manager.handle_download_connection
)
app.router.add_get("/ws/init-progress", ws_manager.handle_init_connection)
# Schedule service initialization
app.on_startup.append(lambda app: cls._initialize_services())
@@ -168,6 +184,39 @@ class LoraManager:
async def _initialize_services(cls):
"""Initialize all services using the ServiceRegistry"""
try:
# Apply library settings to load extra folder paths before scanning
# Only apply if extra paths haven't been loaded yet (preserves test mocks)
try:
from .services.settings_manager import get_settings_manager
settings_manager = get_settings_manager()
library_name = settings_manager.get_active_library_name()
libraries = settings_manager.get_libraries()
if library_name and library_name in libraries:
library_config = libraries[library_name]
# Only apply settings if extra paths are not already configured
# This preserves values set by tests via monkeypatch
extra_paths = library_config.get("extra_folder_paths", {})
has_extra_paths = (
config.extra_loras_roots
or config.extra_checkpoints_roots
or config.extra_unet_roots
or config.extra_embeddings_roots
)
if not has_extra_paths and any(extra_paths.values()):
config.apply_library_settings(library_config)
logger.info(
"Applied library settings for '%s' with extra paths: loras=%s, checkpoints=%s, embeddings=%s",
library_name,
extra_paths.get("loras", []),
extra_paths.get("checkpoints", []),
extra_paths.get("embeddings", []),
)
except Exception as exc:
logger.warning(
"Failed to apply library settings during initialization: %s", exc
)
# Initialize CivitaiClient first to ensure it's ready for other services
await ServiceRegistry.get_civitai_client()
@@ -175,6 +224,7 @@ class LoraManager:
await ServiceRegistry.get_download_manager()
from .services.metadata_service import initialize_metadata_providers
await initialize_metadata_providers()
# Initialize WebSocket manager
@@ -190,39 +240,58 @@ class LoraManager:
# Create low-priority initialization tasks
init_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(embedding_scanner.initialize_in_background(), name='embedding_cache_init'),
asyncio.create_task(recipe_scanner.initialize_in_background(), name='recipe_cache_init')
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(
embedding_scanner.initialize_in_background(),
name="embedding_cache_init",
),
asyncio.create_task(
recipe_scanner.initialize_in_background(), name="recipe_cache_init"
),
]
await ExampleImagesMigration.check_and_run_migrations()
# Schedule post-initialization tasks to run after scanners complete
asyncio.create_task(
cls._run_post_initialization_tasks(init_tasks),
name='post_init_tasks'
cls._run_post_initialization_tasks(init_tasks), name="post_init_tasks"
)
logger.debug("LoRA Manager: All services initialized and background tasks scheduled")
logger.debug(
"LoRA Manager: All services initialized and background tasks scheduled"
)
except Exception as e:
logger.error(f"LoRA Manager: Error initializing services: {e}", exc_info=True)
logger.error(
f"LoRA Manager: Error initializing services: {e}", exc_info=True
)
@classmethod
async def _run_post_initialization_tasks(cls, init_tasks):
"""Run post-initialization tasks after all scanners complete"""
try:
logger.debug("LoRA Manager: Waiting for scanner initialization to complete...")
logger.debug(
"LoRA Manager: Waiting for scanner initialization to complete..."
)
# Wait for all scanner initialization tasks to complete
await asyncio.gather(*init_tasks, return_exceptions=True)
logger.debug("LoRA Manager: Scanner initialization completed, starting post-initialization tasks...")
logger.debug(
"LoRA Manager: Scanner initialization completed, starting post-initialization tasks..."
)
# Run post-initialization tasks
post_tasks = [
asyncio.create_task(cls._cleanup_backup_files(), name='cleanup_bak_files'),
asyncio.create_task(
cls._cleanup_backup_files(), name="cleanup_bak_files"
),
# Add more post-initialization tasks here as needed
# asyncio.create_task(cls._another_post_task(), name='another_task'),
]
@@ -234,14 +303,20 @@ class LoraManager:
for i, result in enumerate(results):
task_name = post_tasks[i].get_name()
if isinstance(result, Exception):
logger.error(f"Post-initialization task '{task_name}' failed: {result}")
logger.error(
f"Post-initialization task '{task_name}' failed: {result}"
)
else:
logger.debug(f"Post-initialization task '{task_name}' completed successfully")
logger.debug(
f"Post-initialization task '{task_name}' completed successfully"
)
logger.debug("LoRA Manager: All post-initialization tasks completed")
except Exception as e:
logger.error(f"LoRA Manager: Error in post-initialization tasks: {e}", exc_info=True)
logger.error(
f"LoRA Manager: Error in post-initialization tasks: {e}", exc_info=True
)
@classmethod
async def _cleanup_backup_files(cls):
@@ -252,8 +327,8 @@ class LoraManager:
# Collect all model roots
all_roots = set()
all_roots.update(config.loras_roots)
all_roots.update(config.base_models_roots)
all_roots.update(config.embeddings_roots)
all_roots.update(config.base_models_roots or [])
all_roots.update(config.embeddings_roots or [])
total_deleted = 0
total_size_freed = 0
@@ -263,12 +338,17 @@ class LoraManager:
continue
try:
deleted_count, size_freed = await cls._cleanup_backup_files_in_directory(root_path)
(
deleted_count,
size_freed,
) = await cls._cleanup_backup_files_in_directory(root_path)
total_deleted += deleted_count
total_size_freed += size_freed
if deleted_count > 0:
logger.debug(f"Cleaned up {deleted_count} .bak files in {root_path} (freed {size_freed / (1024*1024):.2f} MB)")
logger.debug(
f"Cleaned up {deleted_count} .bak files in {root_path} (freed {size_freed / (1024 * 1024):.2f} MB)"
)
except Exception as e:
logger.error(f"Error cleaning up .bak files in {root_path}: {e}")
@@ -277,7 +357,9 @@ class LoraManager:
await asyncio.sleep(0.01)
if total_deleted > 0:
logger.debug(f"Backup cleanup completed: removed {total_deleted} .bak files, freed {total_size_freed / (1024*1024):.2f} MB total")
logger.debug(
f"Backup cleanup completed: removed {total_deleted} .bak files, freed {total_size_freed / (1024 * 1024):.2f} MB total"
)
else:
logger.debug("Backup cleanup completed: no .bak files found")
@@ -310,7 +392,9 @@ class LoraManager:
with os.scandir(path) as it:
for entry in it:
try:
if entry.is_file(follow_symlinks=True) and entry.name.endswith('.bak'):
if entry.is_file(
follow_symlinks=True
) and entry.name.endswith(".bak"):
file_size = entry.stat().st_size
os.remove(entry.path)
deleted_count += 1
@@ -321,7 +405,9 @@ class LoraManager:
cleanup_recursive(entry.path)
except Exception as e:
logger.warning(f"Could not delete .bak file {entry.path}: {e}")
logger.warning(
f"Could not delete .bak file {entry.path}: {e}"
)
except Exception as e:
logger.error(f"Error scanning directory {path} for .bak files: {e}")
@@ -339,21 +425,21 @@ class LoraManager:
service = ExampleImagesCleanupService()
result = await service.cleanup_example_image_folders()
if result.get('success'):
if result.get("success"):
logger.debug(
"Manual example images cleanup completed: moved=%s",
result.get('moved_total'),
result.get("moved_total"),
)
elif result.get('partial_success'):
elif result.get("partial_success"):
logger.warning(
"Manual example images cleanup partially succeeded: moved=%s failures=%s",
result.get('moved_total'),
result.get('move_failures'),
result.get("moved_total"),
result.get("move_failures"),
)
else:
logger.debug(
"Manual example images cleanup skipped or failed: %s",
result.get('error', 'no changes'),
result.get("error", "no changes"),
)
return result
@@ -361,9 +447,9 @@ class LoraManager:
except Exception as e: # pragma: no cover - defensive guard
logger.error(f"Error during example images cleanup: {e}", exc_info=True)
return {
'success': False,
'error': str(e),
'error_code': 'unexpected_error',
"success": False,
"error": str(e),
"error_code": "unexpected_error",
}
@classmethod

View File

@@ -4,7 +4,10 @@ import logging
logger = logging.getLogger(__name__)
# Check if running in standalone mode
standalone_mode = os.environ.get("LORA_MANAGER_STANDALONE", "0") == "1" or os.environ.get("HF_HUB_DISABLE_TELEMETRY", "0") == "0"
standalone_mode = (
os.environ.get("LORA_MANAGER_STANDALONE", "0") == "1"
or os.environ.get("HF_HUB_DISABLE_TELEMETRY", "0") == "0"
)
if not standalone_mode:
from .metadata_hook import MetadataHook
@@ -19,7 +22,7 @@ if not standalone_mode:
logger.info("ComfyUI Metadata Collector initialized")
def get_metadata(prompt_id=None):
def get_metadata(prompt_id=None): # type: ignore[no-redef]
"""Helper function to get metadata from the registry"""
registry = MetadataRegistry()
return registry.get_metadata(prompt_id)
@@ -28,6 +31,6 @@ else:
def init():
logger.info("ComfyUI Metadata Collector disabled in standalone mode")
def get_metadata(prompt_id=None):
def get_metadata(prompt_id=None): # type: ignore[no-redef]
"""Dummy implementation for standalone mode"""
return {}

View File

@@ -1,10 +1,12 @@
import time
from nodes import NODE_CLASS_MAPPINGS
from nodes import NODE_CLASS_MAPPINGS # type: ignore
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):
@@ -37,11 +39,13 @@ class MetadataRegistry:
# Sort all prompt_ids by timestamp
sorted_prompts = sorted(
self.prompt_metadata.keys(),
key=lambda pid: self.prompt_metadata[pid].get("timestamp", 0)
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]
prompts_to_remove = sorted_prompts[
: len(sorted_prompts) - self.max_prompt_history
]
for pid in prompts_to_remove:
del self.prompt_metadata[pid]
@@ -53,11 +57,13 @@ class MetadataRegistry:
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()
})
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()
@@ -125,7 +131,9 @@ class MetadataRegistry:
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]
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"""
@@ -135,7 +143,9 @@ class MetadataRegistry:
# 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)
self.prompt_metadata[self.current_prompt_id]["execution_order"].append(
node_id
)
# Process inputs to simplify working with them
processed_inputs = {}
@@ -152,7 +162,7 @@ class MetadataRegistry:
node_id,
processed_inputs,
outputs,
self.prompt_metadata[self.current_prompt_id]
self.prompt_metadata[self.current_prompt_id],
)
# Cache this node's metadata
@@ -168,11 +178,9 @@ class MetadataRegistry:
# Use the same extractor to update with outputs
extractor = NODE_EXTRACTORS.get(class_type, GenericNodeExtractor)
if hasattr(extractor, 'update'):
if hasattr(extractor, "update"):
extractor.update(
node_id,
processed_outputs,
self.prompt_metadata[self.current_prompt_id]
node_id, processed_outputs, self.prompt_metadata[self.current_prompt_id]
)
# Update the cached metadata for this node
@@ -214,7 +222,7 @@ class MetadataRegistry:
# Find cache keys that are no longer needed
keys_to_remove = []
for cache_key in self.node_cache:
node_id = cache_key.split(':')[0]
node_id = cache_key.split(":")[0]
if node_id not in active_node_ids:
keys_to_remove.append(cache_key)
@@ -270,7 +278,10 @@ class MetadataRegistry:
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:
if (
isinstance(image_data, (list, tuple))
and len(image_data) > 0
):
return image_data[0]
return image_data

View File

@@ -0,0 +1,119 @@
import logging
import os
from typing import List, Tuple
import comfy.sd
import folder_paths
from ..utils.utils import get_checkpoint_info_absolute, _format_model_name_for_comfyui
logger = logging.getLogger(__name__)
class CheckpointLoaderLM:
"""Checkpoint Loader with support for extra folder paths
Loads checkpoints from both standard ComfyUI folders and LoRA Manager's
extra folder paths, providing a unified interface for checkpoint loading.
"""
NAME = "Checkpoint Loader (LoraManager)"
CATEGORY = "Lora Manager/loaders"
@classmethod
def INPUT_TYPES(s):
# Get list of checkpoint names from scanner (includes extra folder paths)
checkpoint_names = s._get_checkpoint_names()
return {
"required": {
"ckpt_name": (
checkpoint_names,
{"tooltip": "The name of the checkpoint (model) to load."},
),
}
}
RETURN_TYPES = ("MODEL", "CLIP", "VAE")
RETURN_NAMES = ("MODEL", "CLIP", "VAE")
OUTPUT_TOOLTIPS = (
"The model used for denoising latents.",
"The CLIP model used for encoding text prompts.",
"The VAE model used for encoding and decoding images to and from latent space.",
)
FUNCTION = "load_checkpoint"
@classmethod
def _get_checkpoint_names(cls) -> List[str]:
"""Get list of checkpoint names from scanner cache in ComfyUI format (relative path with extension)"""
try:
from ..services.service_registry import ServiceRegistry
import asyncio
async def _get_names():
scanner = await ServiceRegistry.get_checkpoint_scanner()
cache = await scanner.get_cached_data()
# Get all model roots for calculating relative paths
model_roots = scanner.get_model_roots()
# Filter only checkpoint type (not diffusion_model) and format names
names = []
for item in cache.raw_data:
if item.get("sub_type") == "checkpoint":
file_path = item.get("file_path", "")
if file_path:
# Format using relative path with OS-native separator
formatted_name = _format_model_name_for_comfyui(
file_path, model_roots
)
if formatted_name:
names.append(formatted_name)
return sorted(names)
try:
loop = asyncio.get_running_loop()
import concurrent.futures
def run_in_thread():
new_loop = asyncio.new_event_loop()
asyncio.set_event_loop(new_loop)
try:
return new_loop.run_until_complete(_get_names())
finally:
new_loop.close()
with concurrent.futures.ThreadPoolExecutor() as executor:
future = executor.submit(run_in_thread)
return future.result()
except RuntimeError:
return asyncio.run(_get_names())
except Exception as e:
logger.error(f"Error getting checkpoint names: {e}")
return []
def load_checkpoint(self, ckpt_name: str) -> Tuple:
"""Load a checkpoint by name, supporting extra folder paths
Args:
ckpt_name: The name of the checkpoint to load (relative path with extension)
Returns:
Tuple of (MODEL, CLIP, VAE)
"""
# Get absolute path from cache using ComfyUI-style name
ckpt_path, metadata = get_checkpoint_info_absolute(ckpt_name)
if metadata is None:
raise FileNotFoundError(
f"Checkpoint '{ckpt_name}' not found in LoRA Manager cache. "
"Make sure the checkpoint is indexed and try again."
)
# Load regular checkpoint using ComfyUI's API
logger.info(f"Loading checkpoint from: {ckpt_path}")
out = comfy.sd.load_checkpoint_guess_config(
ckpt_path,
output_vae=True,
output_clip=True,
embedding_directory=folder_paths.get_folder_paths("embeddings"),
)
return out[:3]

View File

@@ -0,0 +1,161 @@
"""
Helper module to safely import ComfyUI-GGUF modules.
This module provides a robust way to import ComfyUI-GGUF functionality
regardless of how ComfyUI loaded it.
"""
import sys
import os
import importlib.util
import logging
from typing import Optional, Tuple, Any
logger = logging.getLogger(__name__)
def _get_gguf_path() -> str:
"""Get the path to ComfyUI-GGUF based on this file's location.
Since ComfyUI-Lora-Manager and ComfyUI-GGUF are both in custom_nodes/,
we can derive the GGUF path from our own location.
"""
# This file is at: custom_nodes/ComfyUI-Lora-Manager/py/nodes/gguf_import_helper.py
# ComfyUI-GGUF is at: custom_nodes/ComfyUI-GGUF
current_file = os.path.abspath(__file__)
# Go up 4 levels: nodes -> py -> ComfyUI-Lora-Manager -> custom_nodes
custom_nodes_dir = os.path.dirname(
os.path.dirname(os.path.dirname(os.path.dirname(current_file)))
)
return os.path.join(custom_nodes_dir, "ComfyUI-GGUF")
def _find_gguf_module() -> Optional[Any]:
"""Find ComfyUI-GGUF module in sys.modules.
ComfyUI registers modules using the full path with dots replaced by _x_.
"""
gguf_path = _get_gguf_path()
sys_module_name = gguf_path.replace(".", "_x_")
logger.debug(f"[GGUF Import] Looking for module '{sys_module_name}' in sys.modules")
if sys_module_name in sys.modules:
logger.info(f"[GGUF Import] Found module: '{sys_module_name}'")
return sys.modules[sys_module_name]
logger.debug(f"[GGUF Import] Module not found: '{sys_module_name}'")
return None
def _load_gguf_modules_directly() -> Optional[Any]:
"""Load ComfyUI-GGUF modules directly from file paths."""
gguf_path = _get_gguf_path()
logger.info(f"[GGUF Import] Direct Load: Attempting to load from '{gguf_path}'")
if not os.path.exists(gguf_path):
logger.warning(f"[GGUF Import] Path does not exist: {gguf_path}")
return None
try:
namespace = "ComfyUI_GGUF_Dynamic"
init_path = os.path.join(gguf_path, "__init__.py")
if not os.path.exists(init_path):
logger.warning(f"[GGUF Import] __init__.py not found at '{init_path}'")
return None
logger.debug(f"[GGUF Import] Loading from '{init_path}'")
spec = importlib.util.spec_from_file_location(namespace, init_path)
if not spec or not spec.loader:
logger.error(f"[GGUF Import] Failed to create spec for '{init_path}'")
return None
package = importlib.util.module_from_spec(spec)
package.__path__ = [gguf_path]
sys.modules[namespace] = package
spec.loader.exec_module(package)
logger.debug(f"[GGUF Import] Loaded main package '{namespace}'")
# Load submodules
loaded = []
for submod_name in ["loader", "ops", "nodes"]:
submod_path = os.path.join(gguf_path, f"{submod_name}.py")
if os.path.exists(submod_path):
submod_spec = importlib.util.spec_from_file_location(
f"{namespace}.{submod_name}", submod_path
)
if submod_spec and submod_spec.loader:
submod = importlib.util.module_from_spec(submod_spec)
submod.__package__ = namespace
sys.modules[f"{namespace}.{submod_name}"] = submod
submod_spec.loader.exec_module(submod)
setattr(package, submod_name, submod)
loaded.append(submod_name)
logger.debug(f"[GGUF Import] Loaded submodule '{submod_name}'")
logger.info(f"[GGUF Import] Direct Load success: {loaded}")
return package
except Exception as e:
logger.error(f"[GGUF Import] Direct Load failed: {e}", exc_info=True)
return None
def get_gguf_modules() -> Tuple[Any, Any, Any]:
"""Get ComfyUI-GGUF modules (loader, ops, nodes).
Returns:
Tuple of (loader_module, ops_module, nodes_module)
Raises:
RuntimeError: If ComfyUI-GGUF cannot be found or loaded.
"""
logger.debug("[GGUF Import] Starting module search...")
# Try to find already loaded module first
gguf_module = _find_gguf_module()
if gguf_module is None:
logger.info("[GGUF Import] Not found in sys.modules, trying direct load...")
gguf_module = _load_gguf_modules_directly()
if gguf_module is None:
raise RuntimeError(
"ComfyUI-GGUF is not installed. "
"Please install from https://github.com/city96/ComfyUI-GGUF"
)
# Extract submodules
loader = getattr(gguf_module, "loader", None)
ops = getattr(gguf_module, "ops", None)
nodes = getattr(gguf_module, "nodes", None)
if loader is None or ops is None or nodes is None:
missing = [
name
for name, mod in [("loader", loader), ("ops", ops), ("nodes", nodes)]
if mod is None
]
raise RuntimeError(f"ComfyUI-GGUF missing submodules: {missing}")
logger.debug("[GGUF Import] All modules loaded successfully")
return loader, ops, nodes
def get_gguf_sd_loader():
"""Get the gguf_sd_loader function from ComfyUI-GGUF."""
loader, _, _ = get_gguf_modules()
return getattr(loader, "gguf_sd_loader")
def get_ggml_ops():
"""Get the GGMLOps class from ComfyUI-GGUF."""
_, ops, _ = get_gguf_modules()
return getattr(ops, "GGMLOps")
def get_gguf_model_patcher():
"""Get the GGUFModelPatcher class from ComfyUI-GGUF."""
_, _, nodes = get_gguf_modules()
return getattr(nodes, "GGUFModelPatcher")

View File

@@ -56,6 +56,9 @@ class LoraCyclerLM:
clip_strength = float(cycler_config.get("clip_strength", 1.0))
sort_by = "filename"
# Include "no lora" option
include_no_lora = cycler_config.get("include_no_lora", False)
# Dual-index mechanism for batch queue synchronization
execution_index = cycler_config.get("execution_index") # Can be None
# next_index_from_config = cycler_config.get("next_index") # Not used on backend
@@ -71,7 +74,10 @@ class LoraCyclerLM:
total_count = len(lora_list)
if total_count == 0:
# Calculate effective total count (includes no lora option if enabled)
effective_total_count = total_count + 1 if include_no_lora else total_count
if total_count == 0 and not include_no_lora:
logger.warning("[LoraCyclerLM] No LoRAs available in pool")
return {
"result": ([],),
@@ -93,42 +99,66 @@ class LoraCyclerLM:
else:
actual_index = current_index
# Clamp index to valid range (1-based)
clamped_index = max(1, min(actual_index, total_count))
# Clamp index to valid range (1-based, includes no lora if enabled)
clamped_index = max(1, min(actual_index, effective_total_count))
# Get LoRA at current index (convert to 0-based for list access)
current_lora = lora_list[clamped_index - 1]
# Check if current index is the "no lora" option (last position when include_no_lora is True)
is_no_lora = include_no_lora and clamped_index == effective_total_count
# Build LORA_STACK with single LoRA
lora_path, _ = get_lora_info(current_lora["file_name"])
if not lora_path:
logger.warning(
f"[LoraCyclerLM] Could not find path for LoRA: {current_lora['file_name']}"
)
if is_no_lora:
# "No LoRA" option - return empty stack
lora_stack = []
current_lora_name = "No LoRA"
current_lora_filename = "No LoRA"
else:
# Normalize path separators
lora_path = lora_path.replace("/", os.sep)
lora_stack = [(lora_path, model_strength, clip_strength)]
# Get LoRA at current index (convert to 0-based for list access)
current_lora = lora_list[clamped_index - 1]
current_lora_name = current_lora["file_name"]
current_lora_filename = current_lora["file_name"]
# Build LORA_STACK with single LoRA
if current_lora["file_name"] == "None":
lora_path = None
else:
lora_path, _ = get_lora_info(current_lora["file_name"])
if not lora_path:
if current_lora["file_name"] != "None":
logger.warning(
f"[LoraCyclerLM] Could not find path for LoRA: {current_lora['file_name']}"
)
lora_stack = []
else:
# Normalize path separators
lora_path = lora_path.replace("/", os.sep)
lora_stack = [(lora_path, model_strength, clip_strength)]
# Calculate next index (wrap to 1 if at end)
next_index = clamped_index + 1
if next_index > total_count:
if next_index > effective_total_count:
next_index = 1
# Get next LoRA for UI display (what will be used next generation)
next_lora = lora_list[next_index - 1]
next_display_name = next_lora["file_name"]
is_next_no_lora = include_no_lora and next_index == effective_total_count
if is_next_no_lora:
next_display_name = "No LoRA"
next_lora_filename = "No LoRA"
else:
next_lora = lora_list[next_index - 1]
next_display_name = next_lora["file_name"]
next_lora_filename = next_lora["file_name"]
return {
"result": (lora_stack,),
"ui": {
"current_index": [clamped_index],
"next_index": [next_index],
"total_count": [total_count],
"current_lora_name": [current_lora["file_name"]],
"current_lora_filename": [current_lora["file_name"]],
"total_count": [
total_count
], # Return actual LoRA count, not effective_total_count
"current_lora_name": [current_lora_name],
"current_lora_filename": [current_lora_filename],
"next_lora_name": [next_display_name],
"next_lora_filename": [next_lora["file_name"]],
"next_lora_filename": [next_lora_filename],
},
}

View File

@@ -1,8 +1,9 @@
import json
import os
import re
from typing import Any, Dict, Optional
import numpy as np
import folder_paths # type: ignore
import folder_paths # type: ignore
from ..services.service_registry import ServiceRegistry
from ..metadata_collector.metadata_processor import MetadataProcessor
from ..metadata_collector import get_metadata
@@ -12,6 +13,7 @@ import logging
logger = logging.getLogger(__name__)
class SaveImageLM:
NAME = "Save Image (LoraManager)"
CATEGORY = "Lora Manager/utils"
@@ -32,33 +34,51 @@ class SaveImageLM:
return {
"required": {
"images": ("IMAGE",),
"filename_prefix": ("STRING", {
"default": "ComfyUI",
"tooltip": "Base filename for saved images. Supports format patterns like %seed%, %width%, %height%, %model%, etc."
}),
"file_format": (["png", "jpeg", "webp"], {
"tooltip": "Image format to save as. PNG preserves quality, JPEG is smaller, WebP balances size and quality."
}),
"filename_prefix": (
"STRING",
{
"default": "ComfyUI",
"tooltip": "Base filename for saved images. Supports format patterns like %seed%, %width%, %height%, %model%, etc.",
},
),
"file_format": (
["png", "jpeg", "webp"],
{
"tooltip": "Image format to save as. PNG preserves quality, JPEG is smaller, WebP balances size and quality."
},
),
},
"optional": {
"lossless_webp": ("BOOLEAN", {
"default": False,
"tooltip": "When enabled, saves WebP images with lossless compression. Results in larger files but no quality loss."
}),
"quality": ("INT", {
"default": 100,
"min": 1,
"max": 100,
"tooltip": "Compression quality for JPEG and lossy WebP formats (1-100). Higher values mean better quality but larger files."
}),
"embed_workflow": ("BOOLEAN", {
"default": False,
"tooltip": "Embeds the complete workflow data into the image metadata. Only works with PNG and WebP formats."
}),
"add_counter_to_filename": ("BOOLEAN", {
"default": True,
"tooltip": "Adds an incremental counter to filenames to prevent overwriting previous images."
}),
"lossless_webp": (
"BOOLEAN",
{
"default": False,
"tooltip": "When enabled, saves WebP images with lossless compression. Results in larger files but no quality loss.",
},
),
"quality": (
"INT",
{
"default": 100,
"min": 1,
"max": 100,
"tooltip": "Compression quality for JPEG and lossy WebP formats (1-100). Higher values mean better quality but larger files.",
},
),
"embed_workflow": (
"BOOLEAN",
{
"default": False,
"tooltip": "Embeds the complete workflow data into the image metadata. Only works with PNG and WebP formats.",
},
),
"add_counter_to_filename": (
"BOOLEAN",
{
"default": True,
"tooltip": "Adds an incremental counter to filenames to prevent overwriting previous images.",
},
),
},
"hidden": {
"id": "UNIQUE_ID",
@@ -77,9 +97,10 @@ class SaveImageLM:
scanner = ServiceRegistry.get_service_sync("lora_scanner")
# Use the new direct filename lookup method
hash_value = scanner.get_hash_by_filename(lora_name)
if hash_value:
return hash_value
if scanner is not None:
hash_value = scanner.get_hash_by_filename(lora_name)
if hash_value:
return hash_value
return None
@@ -95,9 +116,10 @@ class SaveImageLM:
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
if scanner is not None:
hash_value = scanner.get_hash_by_filename(checkpoint_name)
if hash_value:
return hash_value
return None
@@ -112,11 +134,11 @@ class SaveImageLM:
param_list.append(f"{label}: {value}")
# Extract the prompt and negative prompt
prompt = metadata_dict.get('prompt', '')
negative_prompt = metadata_dict.get('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', '')
loras_text = metadata_dict.get("loras", "")
lora_hashes = {}
# If loras are found, add them on a new line after the prompt
@@ -124,7 +146,7 @@ class SaveImageLM:
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)
lora_matches = re.findall(r"<lora:([^:]+):([^>]+)>", loras_text)
# Get hash for each lora
for lora_name, strength in lora_matches:
@@ -145,43 +167,43 @@ class SaveImageLM:
params = []
# Add standard parameters in the correct order
if 'steps' in metadata_dict:
add_param_if_not_none(params, "Steps", metadata_dict.get('steps'))
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')
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'
"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')
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'
"normal": "Simple",
"karras": "Karras",
"exponential": "Exponential",
"sgm_uniform": "SGM Uniform",
"sgm_quadratic": "SGM Quadratic",
}
scheduler_name = scheduler_mapping.get(scheduler, scheduler)
@@ -193,25 +215,25 @@ class SaveImageLM:
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'))
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'))
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'))
if "size" in metadata_dict:
add_param_if_not_none(params, "Size", metadata_dict.get("size"))
# Model info
if 'checkpoint' in metadata_dict:
if "checkpoint" in metadata_dict:
# Ensure checkpoint is a string before processing
checkpoint = metadata_dict.get('checkpoint')
checkpoint = metadata_dict.get("checkpoint")
if checkpoint is not None:
# Get model hash
model_hash = self.get_checkpoint_hash(checkpoint)
@@ -223,7 +245,9 @@ class SaveImageLM:
# Add model hash if available
if model_hash:
params.append(f"Model hash: {model_hash[:10]}, Model: {checkpoint_name}")
params.append(
f"Model hash: {model_hash[:10]}, Model: {checkpoint_name}"
)
else:
params.append(f"Model: {checkpoint_name}")
@@ -234,7 +258,7 @@ class SaveImageLM:
lora_hash_parts.append(f"{lora_name}: {hash_value[:10]}")
if lora_hash_parts:
params.append(f"Lora hashes: \"{', '.join(lora_hash_parts)}\"")
params.append(f'Lora hashes: "{", ".join(lora_hash_parts)}"')
# Combine all parameters with commas
metadata_parts.append(", ".join(params))
@@ -254,30 +278,30 @@ class SaveImageLM:
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]
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]
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", " ")
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", " ")
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":
model_value = metadata_dict.get('checkpoint')
model_value = metadata_dict.get("checkpoint")
if isinstance(model_value, (bytes, os.PathLike)):
model_value = str(model_value)
@@ -291,6 +315,7 @@ class SaveImageLM:
filename = filename.replace(segment, model)
elif key == "date":
from datetime import datetime
now = datetime.now()
date_table = {
"yyyy": f"{now.year:04d}",
@@ -314,8 +339,19 @@ class SaveImageLM:
return filename
def save_images(self, images, filename_prefix, file_format, id, prompt=None, extra_pnginfo=None,
lossless_webp=True, quality=100, embed_workflow=False, add_counter_to_filename=True):
def save_images(
self,
images,
filename_prefix,
file_format,
id,
prompt=None,
extra_pnginfo=None,
lossless_webp=True,
quality=100,
embed_workflow=False,
add_counter_to_filename=True,
):
"""Save images with metadata"""
results = []
@@ -329,8 +365,10 @@ class SaveImageLM:
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]
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
@@ -340,7 +378,7 @@ class SaveImageLM:
# 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 = 255.0 * image.cpu().numpy()
img = Image.fromarray(np.clip(img, 0, 255).astype(np.uint8))
# Generate filename with counter if needed
@@ -351,6 +389,9 @@ class SaveImageLM:
base_filename += f"_{current_counter:05}_"
# Set file extension and prepare saving parameters
file: str
save_kwargs: Dict[str, Any]
pnginfo: Optional[PngImagePlugin.PngInfo] = None
if file_format == "png":
file = base_filename + ".png"
file_extension = ".png"
@@ -365,7 +406,13 @@ class SaveImageLM:
file = base_filename + ".webp"
file_extension = ".webp"
# Add optimization param to control performance
save_kwargs = {"quality": quality, "lossless": lossless_webp, "method": 0}
save_kwargs = {
"quality": quality,
"lossless": lossless_webp,
"method": 0,
}
else:
raise ValueError(f"Unsupported file format: {file_format}")
# Full save path
file_path = os.path.join(full_output_folder, file)
@@ -373,6 +420,7 @@ class SaveImageLM:
# Save the image with metadata
try:
if file_format == "png":
assert pnginfo is not None
if metadata:
pnginfo.add_text("parameters", metadata)
if embed_workflow and extra_pnginfo is not None:
@@ -384,7 +432,12 @@ class SaveImageLM:
# For JPEG, use piexif
if metadata:
try:
exif_dict = {'Exif': {piexif.ExifIFD.UserComment: b'UNICODE\0' + metadata.encode('utf-16be')}}
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:
@@ -396,12 +449,18 @@ class SaveImageLM:
exif_dict = {}
if metadata:
exif_dict['Exif'] = {piexif.ExifIFD.UserComment: b'UNICODE\0' + metadata.encode('utf-16be')}
exif_dict["Exif"] = {
piexif.ExifIFD.UserComment: b"UNICODE\0"
+ metadata.encode("utf-16be")
}
# Add workflow if needed
if embed_workflow and extra_pnginfo is not None:
workflow_json = json.dumps(extra_pnginfo["workflow"])
exif_dict['0th'] = {piexif.ImageIFD.ImageDescription: "Workflow:" + workflow_json}
exif_dict["0th"] = {
piexif.ImageIFD.ImageDescription: "Workflow:"
+ workflow_json
}
exif_bytes = piexif.dump(exif_dict)
save_kwargs["exif"] = exif_bytes
@@ -410,19 +469,28 @@ class SaveImageLM:
img.save(file_path, format="WEBP", **save_kwargs)
results.append({
"filename": file,
"subfolder": subfolder,
"type": self.type
})
results.append(
{"filename": file, "subfolder": subfolder, "type": self.type}
)
except Exception as e:
logger.error(f"Error saving image: {e}")
return results
def process_image(self, images, id, filename_prefix="ComfyUI", file_format="png", prompt=None, extra_pnginfo=None,
lossless_webp=True, quality=100, embed_workflow=False, add_counter_to_filename=True):
def process_image(
self,
images,
id,
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)
@@ -448,7 +516,7 @@ class SaveImageLM:
lossless_webp,
quality,
embed_workflow,
add_counter_to_filename
add_counter_to_filename,
)
return (images,)

203
py/nodes/unet_loader.py Normal file
View File

@@ -0,0 +1,203 @@
import logging
import os
from typing import List, Tuple
import torch
import comfy.sd
from ..utils.utils import get_checkpoint_info_absolute, _format_model_name_for_comfyui
logger = logging.getLogger(__name__)
class UNETLoaderLM:
"""UNET Loader with support for extra folder paths
Loads diffusion models/UNets from both standard ComfyUI folders and LoRA Manager's
extra folder paths, providing a unified interface for UNET loading.
Supports both regular diffusion models and GGUF format models.
"""
NAME = "Unet Loader (LoraManager)"
CATEGORY = "Lora Manager/loaders"
@classmethod
def INPUT_TYPES(s):
# Get list of unet names from scanner (includes extra folder paths)
unet_names = s._get_unet_names()
return {
"required": {
"unet_name": (
unet_names,
{"tooltip": "The name of the diffusion model to load."},
),
"weight_dtype": (
["default", "fp8_e4m3fn", "fp8_e4m3fn_fast", "fp8_e5m2"],
{"tooltip": "The dtype to use for the model weights."},
),
}
}
RETURN_TYPES = ("MODEL",)
RETURN_NAMES = ("MODEL",)
OUTPUT_TOOLTIPS = ("The model used for denoising latents.",)
FUNCTION = "load_unet"
@classmethod
def _get_unet_names(cls) -> List[str]:
"""Get list of diffusion model names from scanner cache in ComfyUI format (relative path with extension)"""
try:
from ..services.service_registry import ServiceRegistry
import asyncio
async def _get_names():
scanner = await ServiceRegistry.get_checkpoint_scanner()
cache = await scanner.get_cached_data()
# Get all model roots for calculating relative paths
model_roots = scanner.get_model_roots()
# Filter only diffusion_model type and format names
names = []
for item in cache.raw_data:
if item.get("sub_type") == "diffusion_model":
file_path = item.get("file_path", "")
if file_path:
# Format using relative path with OS-native separator
formatted_name = _format_model_name_for_comfyui(
file_path, model_roots
)
if formatted_name:
names.append(formatted_name)
return sorted(names)
try:
loop = asyncio.get_running_loop()
import concurrent.futures
def run_in_thread():
new_loop = asyncio.new_event_loop()
asyncio.set_event_loop(new_loop)
try:
return new_loop.run_until_complete(_get_names())
finally:
new_loop.close()
with concurrent.futures.ThreadPoolExecutor() as executor:
future = executor.submit(run_in_thread)
return future.result()
except RuntimeError:
return asyncio.run(_get_names())
except Exception as e:
logger.error(f"Error getting unet names: {e}")
return []
def load_unet(self, unet_name: str, weight_dtype: str) -> Tuple:
"""Load a diffusion model by name, supporting extra folder paths
Args:
unet_name: The name of the diffusion model to load (relative path with extension)
weight_dtype: The dtype to use for model weights
Returns:
Tuple of (MODEL,)
"""
# Get absolute path from cache using ComfyUI-style name
unet_path, metadata = get_checkpoint_info_absolute(unet_name)
if metadata is None:
raise FileNotFoundError(
f"Diffusion model '{unet_name}' not found in LoRA Manager cache. "
"Make sure the model is indexed and try again."
)
# Check if it's a GGUF model
if unet_path.endswith(".gguf"):
return self._load_gguf_unet(unet_path, unet_name, weight_dtype)
# Load regular diffusion model using ComfyUI's API
logger.info(f"Loading diffusion model from: {unet_path}")
# Build model options based on weight_dtype
model_options = {}
if weight_dtype == "fp8_e4m3fn":
model_options["dtype"] = torch.float8_e4m3fn
elif weight_dtype == "fp8_e4m3fn_fast":
model_options["dtype"] = torch.float8_e4m3fn
model_options["fp8_optimizations"] = True
elif weight_dtype == "fp8_e5m2":
model_options["dtype"] = torch.float8_e5m2
model = comfy.sd.load_diffusion_model(unet_path, model_options=model_options)
return (model,)
def _load_gguf_unet(
self, unet_path: str, unet_name: str, weight_dtype: str
) -> Tuple:
"""Load a GGUF format diffusion model
Args:
unet_path: Absolute path to the GGUF file
unet_name: Name of the model for error messages
weight_dtype: The dtype to use for model weights
Returns:
Tuple of (MODEL,)
"""
from .gguf_import_helper import get_gguf_modules
# Get ComfyUI-GGUF modules using helper (handles various import scenarios)
try:
loader_module, ops_module, nodes_module = get_gguf_modules()
gguf_sd_loader = getattr(loader_module, "gguf_sd_loader")
GGMLOps = getattr(ops_module, "GGMLOps")
GGUFModelPatcher = getattr(nodes_module, "GGUFModelPatcher")
except RuntimeError as e:
raise RuntimeError(f"Cannot load GGUF model '{unet_name}'. {str(e)}")
logger.info(f"Loading GGUF diffusion model from: {unet_path}")
try:
# Load GGUF state dict
sd, extra = gguf_sd_loader(unet_path)
# Prepare kwargs for metadata if supported
kwargs = {}
import inspect
valid_params = inspect.signature(
comfy.sd.load_diffusion_model_state_dict
).parameters
if "metadata" in valid_params:
kwargs["metadata"] = extra.get("metadata", {})
# Setup custom operations with GGUF support
ops = GGMLOps()
# Handle weight_dtype for GGUF models
if weight_dtype in ("default", None):
ops.Linear.dequant_dtype = None
elif weight_dtype in ["target"]:
ops.Linear.dequant_dtype = weight_dtype
else:
ops.Linear.dequant_dtype = getattr(torch, weight_dtype, None)
# Load the model
model = comfy.sd.load_diffusion_model_state_dict(
sd, model_options={"custom_operations": ops}, **kwargs
)
if model is None:
raise RuntimeError(
f"Could not detect model type for GGUF diffusion model: {unet_path}"
)
# Wrap with GGUFModelPatcher
model = GGUFModelPatcher.clone(model)
return (model,)
except Exception as e:
logger.error(f"Error loading GGUF diffusion model '{unet_name}': {e}")
raise RuntimeError(
f"Failed to load GGUF diffusion model '{unet_name}': {str(e)}"
)

View File

@@ -1,33 +1,35 @@
class AnyType(str):
"""A special class that is always equal in not equal comparisons. Credit to pythongosssss"""
"""A special class that is always equal in not equal comparisons. Credit to pythongosssss"""
def __ne__(self, __value: object) -> bool:
return False
def __ne__(self, __value: object) -> bool:
return False
# Credit to Regis Gaughan, III (rgthree)
class FlexibleOptionalInputType(dict):
"""A special class to make flexible nodes that pass data to our python handlers.
"""A special class to make flexible nodes that pass data to our python handlers.
Enables both flexible/dynamic input types (like for Any Switch) or a dynamic number of inputs
(like for Any Switch, Context Switch, Context Merge, Power Lora Loader, etc).
Enables both flexible/dynamic input types (like for Any Switch) or a dynamic number of inputs
(like for Any Switch, Context Switch, Context Merge, Power Lora Loader, etc).
Note, for ComfyUI, all that's needed is the `__contains__` override below, which tells ComfyUI
that our node will handle the input, regardless of what it is.
Note, for ComfyUI, all that's needed is the `__contains__` override below, which tells ComfyUI
that our node will handle the input, regardless of what it is.
However, with https://github.com/comfyanonymous/ComfyUI/pull/2666 a large change would occur
requiring more details on the input itself. There, we need to return a list/tuple where the first
item is the type. This can be a real type, or use the AnyType for additional flexibility.
However, with https://github.com/comfyanonymous/ComfyUI/pull/2666 a large change would occur
requiring more details on the input itself. There, we need to return a list/tuple where the first
item is the type. This can be a real type, or use the AnyType for additional flexibility.
This should be forwards compatible unless more changes occur in the PR.
"""
def __init__(self, type):
self.type = type
This should be forwards compatible unless more changes occur in the PR.
"""
def __getitem__(self, key):
return (self.type, )
def __init__(self, type):
self.type = type
def __contains__(self, key):
return True
def __getitem__(self, key):
return (self.type,)
def __contains__(self, key):
return True
any_type = AnyType("*")
@@ -37,25 +39,27 @@ import os
import logging
import copy
import sys
import folder_paths
import folder_paths # type: ignore
logger = logging.getLogger(__name__)
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:
if "loras" not in kwargs:
return []
loras_data = kwargs['loras']
loras_data = kwargs["loras"]
# Handle new format: {'loras': {'__value__': [...]}}
if isinstance(loras_data, dict) and '__value__' in loras_data:
return loras_data['__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
@@ -64,23 +68,25 @@ def get_loras_list(kwargs):
logger.warning(f"Unexpected loras format: {type(loras_data)}")
return []
def load_state_dict_in_safetensors(path, device="cpu", filter_prefix=""):
"""Simplified version of load_state_dict_in_safetensors that just loads from a local path"""
import safetensors.torch
state_dict = {}
with safetensors.torch.safe_open(path, framework="pt", device=device) as f:
with safetensors.torch.safe_open(path, framework="pt", device=device) as f: # type: ignore[attr-defined]
for k in f.keys():
if filter_prefix and not k.startswith(filter_prefix):
continue
state_dict[k.removeprefix(filter_prefix)] = f.get_tensor(k)
return state_dict
def to_diffusers(input_lora):
"""Simplified version of to_diffusers for Flux LoRA conversion"""
import torch
from diffusers.utils.state_dict_utils import convert_unet_state_dict_to_peft
from diffusers.loaders import FluxLoraLoaderMixin
from diffusers.loaders import FluxLoraLoaderMixin # type: ignore[attr-defined]
if isinstance(input_lora, str):
tensors = load_state_dict_in_safetensors(input_lora, device="cpu")
@@ -97,10 +103,15 @@ def to_diffusers(input_lora):
return new_tensors
def nunchaku_load_lora(model, lora_name, lora_strength):
"""Load a Flux LoRA for Nunchaku model"""
# Get full path to the LoRA file. Allow both direct paths and registered LoRA names.
lora_path = lora_name if os.path.isfile(lora_name) else folder_paths.get_full_path("loras", lora_name)
lora_path = (
lora_name
if os.path.isfile(lora_name)
else folder_paths.get_full_path("loras", lora_name)
)
if not lora_path or not os.path.isfile(lora_path):
logger.warning("Skipping LoRA '%s' because it could not be found", lora_name)
return model
@@ -118,7 +129,9 @@ def nunchaku_load_lora(model, lora_name, lora_strength):
ret_model_wrapper.loras = [*model_wrapper.loras, (lora_path, lora_strength)]
else:
# Fallback to legacy logic
logger.warning("Please upgrade ComfyUI-nunchaku to 1.1.0 or above for better LoRA support. Falling back to legacy loading logic.")
logger.warning(
"Please upgrade ComfyUI-nunchaku to 1.1.0 or above for better LoRA support. Falling back to legacy loading logic."
)
transformer = model_wrapper.model
# Save the transformer temporarily

View File

@@ -6,17 +6,18 @@ from .parsers import (
ComfyMetadataParser,
MetaFormatParser,
AutomaticMetadataParser,
CivitaiApiMetadataParser
CivitaiApiMetadataParser,
)
from .base import RecipeMetadataParser
logger = logging.getLogger(__name__)
class RecipeParserFactory:
"""Factory for creating recipe metadata parsers"""
@staticmethod
def create_parser(metadata) -> RecipeMetadataParser:
def create_parser(metadata) -> RecipeMetadataParser | None:
"""
Create appropriate parser based on the metadata content
@@ -38,6 +39,7 @@ class RecipeParserFactory:
# Convert dict to string for other parsers that expect string input
try:
import json
metadata_str = json.dumps(metadata)
except Exception as e:
logger.debug(f"Failed to convert dict to JSON string: {e}")

View File

@@ -9,6 +9,7 @@ from ...services.metadata_service import get_default_metadata_provider
logger = logging.getLogger(__name__)
class CivitaiApiMetadataParser(RecipeMetadataParser):
"""Parser for Civitai image metadata format"""
@@ -40,7 +41,7 @@ class CivitaiApiMetadataParser(RecipeMetadataParser):
"width",
"height",
"Model",
"Model hash"
"Model hash",
)
return any(key in payload for key in civitai_image_fields)
@@ -50,7 +51,9 @@ class CivitaiApiMetadataParser(RecipeMetadataParser):
# Check for LoRA hash patterns
hashes = metadata.get("hashes")
if isinstance(hashes, dict) and any(str(key).lower().startswith("lora:") for key in hashes):
if isinstance(hashes, dict) and any(
str(key).lower().startswith("lora:") for key in hashes
):
return True
# Check nested meta object (common in CivitAI image responses)
@@ -61,22 +64,28 @@ class CivitaiApiMetadataParser(RecipeMetadataParser):
# Also check for LoRA hash patterns in nested meta
hashes = nested_meta.get("hashes")
if isinstance(hashes, dict) and any(str(key).lower().startswith("lora:") for key in hashes):
if isinstance(hashes, dict) and any(
str(key).lower().startswith("lora:") for key in hashes
):
return True
return False
async def parse_metadata(self, metadata, recipe_scanner=None, civitai_client=None) -> Dict[str, Any]:
async def parse_metadata( # type: ignore[override]
self, user_comment, recipe_scanner=None, civitai_client=None
) -> Dict[str, Any]:
"""Parse metadata from Civitai image format
Args:
metadata: The metadata from the image (dict)
user_comment: The metadata from the image (dict)
recipe_scanner: Optional recipe scanner service
civitai_client: Optional Civitai API client (deprecated, use metadata_provider instead)
Returns:
Dict containing parsed recipe data
"""
metadata: Dict[str, Any] = user_comment # type: ignore[assignment]
metadata = user_comment
try:
# Get metadata provider instead of using civitai_client directly
metadata_provider = await get_default_metadata_provider()
@@ -103,11 +112,11 @@ class CivitaiApiMetadataParser(RecipeMetadataParser):
# Initialize result structure
result = {
'base_model': None,
'loras': [],
'model': None,
'gen_params': {},
'from_civitai_image': True
"base_model": None,
"loras": [],
"model": None,
"gen_params": {},
"from_civitai_image": True,
}
# Track already added LoRAs to prevent duplicates
@@ -148,16 +157,25 @@ class CivitaiApiMetadataParser(RecipeMetadataParser):
result["base_model"] = metadata["baseModel"]
elif "Model hash" in metadata and metadata_provider:
model_hash = metadata["Model hash"]
model_info, error = await metadata_provider.get_model_by_hash(model_hash)
model_info, error = await metadata_provider.get_model_by_hash(
model_hash
)
if model_info:
result["base_model"] = model_info.get("baseModel", "")
elif "Model" in metadata and isinstance(metadata.get("resources"), list):
# Try to find base model in resources
for resource in metadata.get("resources", []):
if resource.get("type") == "model" and resource.get("name") == metadata.get("Model"):
if resource.get("type") == "model" and resource.get(
"name"
) == metadata.get("Model"):
# This is likely the checkpoint model
if metadata_provider and resource.get("hash"):
model_info, error = await metadata_provider.get_model_by_hash(resource.get("hash"))
(
model_info,
error,
) = await metadata_provider.get_model_by_hash(
resource.get("hash")
)
if model_info:
result["base_model"] = model_info.get("baseModel", "")
@@ -176,7 +194,9 @@ class CivitaiApiMetadataParser(RecipeMetadataParser):
# Skip LoRAs without proper identification (hash or modelVersionId)
if not lora_hash and not resource.get("modelVersionId"):
logger.debug(f"Skipping LoRA resource '{resource.get('name', 'Unknown')}' - no hash or modelVersionId")
logger.debug(
f"Skipping LoRA resource '{resource.get('name', 'Unknown')}' - no hash or modelVersionId"
)
continue
# Skip if we've already added this LoRA by hash
@@ -184,31 +204,33 @@ class CivitaiApiMetadataParser(RecipeMetadataParser):
continue
lora_entry = {
'name': resource.get("name", "Unknown LoRA"),
'type': "lora",
'weight': float(resource.get("weight", 1.0)),
'hash': lora_hash,
'existsLocally': False,
'localPath': None,
'file_name': resource.get("name", "Unknown"),
'thumbnailUrl': '/loras_static/images/no-preview.png',
'baseModel': '',
'size': 0,
'downloadUrl': '',
'isDeleted': False
"name": resource.get("name", "Unknown LoRA"),
"type": "lora",
"weight": float(resource.get("weight", 1.0)),
"hash": lora_hash,
"existsLocally": False,
"localPath": None,
"file_name": resource.get("name", "Unknown"),
"thumbnailUrl": "/loras_static/images/no-preview.png",
"baseModel": "",
"size": 0,
"downloadUrl": "",
"isDeleted": False,
}
# Try to get info from Civitai if hash is available
if lora_entry['hash'] and metadata_provider:
if lora_entry["hash"] and metadata_provider:
try:
civitai_info = await metadata_provider.get_model_by_hash(lora_hash)
civitai_info = (
await metadata_provider.get_model_by_hash(lora_hash)
)
populated_entry = await self.populate_lora_from_civitai(
lora_entry,
civitai_info,
recipe_scanner,
base_model_counts,
lora_hash
lora_hash,
)
if populated_entry is None:
@@ -217,10 +239,14 @@ class CivitaiApiMetadataParser(RecipeMetadataParser):
lora_entry = populated_entry
# If we have a version ID from Civitai, track it for deduplication
if 'id' in lora_entry and lora_entry['id']:
added_loras[str(lora_entry['id'])] = len(result["loras"])
if "id" in lora_entry and lora_entry["id"]:
added_loras[str(lora_entry["id"])] = len(
result["loras"]
)
except Exception as e:
logger.error(f"Error fetching Civitai info for LoRA hash {lora_entry['hash']}: {e}")
logger.error(
f"Error fetching Civitai info for LoRA hash {lora_entry['hash']}: {e}"
)
# Track by hash if we have it
if lora_hash:
@@ -229,7 +255,9 @@ class CivitaiApiMetadataParser(RecipeMetadataParser):
result["loras"].append(lora_entry)
# Process civitaiResources array
if "civitaiResources" in metadata and isinstance(metadata["civitaiResources"], list):
if "civitaiResources" in metadata and isinstance(
metadata["civitaiResources"], list
):
for resource in metadata["civitaiResources"]:
# Get resource type and identifier
resource_type = str(resource.get("type") or "").lower()
@@ -237,32 +265,39 @@ class CivitaiApiMetadataParser(RecipeMetadataParser):
if resource_type == "checkpoint":
checkpoint_entry = {
'id': resource.get("modelVersionId", 0),
'modelId': resource.get("modelId", 0),
'name': resource.get("modelName", "Unknown Checkpoint"),
'version': resource.get("modelVersionName", ""),
'type': resource.get("type", "checkpoint"),
'existsLocally': False,
'localPath': None,
'file_name': resource.get("modelName", ""),
'hash': resource.get("hash", "") or "",
'thumbnailUrl': '/loras_static/images/no-preview.png',
'baseModel': '',
'size': 0,
'downloadUrl': '',
'isDeleted': False
"id": resource.get("modelVersionId", 0),
"modelId": resource.get("modelId", 0),
"name": resource.get("modelName", "Unknown Checkpoint"),
"version": resource.get("modelVersionName", ""),
"type": resource.get("type", "checkpoint"),
"existsLocally": False,
"localPath": None,
"file_name": resource.get("modelName", ""),
"hash": resource.get("hash", "") or "",
"thumbnailUrl": "/loras_static/images/no-preview.png",
"baseModel": "",
"size": 0,
"downloadUrl": "",
"isDeleted": False,
}
if version_id and metadata_provider:
try:
civitai_info = await metadata_provider.get_model_version_info(version_id)
civitai_info = (
await metadata_provider.get_model_version_info(
version_id
)
)
checkpoint_entry = await self.populate_checkpoint_from_civitai(
checkpoint_entry,
civitai_info
checkpoint_entry = (
await self.populate_checkpoint_from_civitai(
checkpoint_entry, civitai_info
)
)
except Exception as e:
logger.error(f"Error fetching Civitai info for checkpoint version {version_id}: {e}")
logger.error(
f"Error fetching Civitai info for checkpoint version {version_id}: {e}"
)
if result["model"] is None:
result["model"] = checkpoint_entry
@@ -275,31 +310,35 @@ class CivitaiApiMetadataParser(RecipeMetadataParser):
# Initialize lora entry
lora_entry = {
'id': resource.get("modelVersionId", 0),
'modelId': resource.get("modelId", 0),
'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
"id": resource.get("modelVersionId", 0),
"modelId": resource.get("modelId", 0),
"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,
}
# Try to get info from Civitai if modelVersionId is available
if version_id and metadata_provider:
try:
# Use get_model_version_info instead of get_model_version
civitai_info = await metadata_provider.get_model_version_info(version_id)
civitai_info = (
await metadata_provider.get_model_version_info(
version_id
)
)
populated_entry = await self.populate_lora_from_civitai(
lora_entry,
civitai_info,
recipe_scanner,
base_model_counts
base_model_counts,
)
if populated_entry is None:
@@ -307,7 +346,9 @@ class CivitaiApiMetadataParser(RecipeMetadataParser):
lora_entry = populated_entry
except Exception as e:
logger.error(f"Error fetching Civitai info for model version {version_id}: {e}")
logger.error(
f"Error fetching Civitai info for model version {version_id}: {e}"
)
# Track this LoRA in our deduplication dict
if version_id:
@@ -316,10 +357,15 @@ class CivitaiApiMetadataParser(RecipeMetadataParser):
result["loras"].append(lora_entry)
# Process additionalResources array
if "additionalResources" in metadata and isinstance(metadata["additionalResources"], list):
if "additionalResources" in metadata and isinstance(
metadata["additionalResources"], list
):
for resource in metadata["additionalResources"]:
# Skip resources that aren't LoRAs or LyCORIS
if resource.get("type") not in ["lora", "lycoris"] and "type" not in resource:
if (
resource.get("type") not in ["lora", "lycoris"]
and "type" not in resource
):
continue
lora_type = resource.get("type", "lora")
@@ -337,31 +383,35 @@ class CivitaiApiMetadataParser(RecipeMetadataParser):
continue
lora_entry = {
'name': name,
'type': lora_type,
'weight': float(resource.get("strength", 1.0)),
'hash': "",
'existsLocally': False,
'localPath': None,
'file_name': name,
'thumbnailUrl': '/loras_static/images/no-preview.png',
'baseModel': '',
'size': 0,
'downloadUrl': '',
'isDeleted': False
"name": name,
"type": lora_type,
"weight": float(resource.get("strength", 1.0)),
"hash": "",
"existsLocally": False,
"localPath": None,
"file_name": name,
"thumbnailUrl": "/loras_static/images/no-preview.png",
"baseModel": "",
"size": 0,
"downloadUrl": "",
"isDeleted": False,
}
# If we have a version ID and metadata provider, try to get more info
if version_id and metadata_provider:
try:
# Use get_model_version_info with the version ID
civitai_info = await metadata_provider.get_model_version_info(version_id)
civitai_info = (
await metadata_provider.get_model_version_info(
version_id
)
)
populated_entry = await self.populate_lora_from_civitai(
lora_entry,
civitai_info,
recipe_scanner,
base_model_counts
base_model_counts,
)
if populated_entry is None:
@@ -373,7 +423,9 @@ class CivitaiApiMetadataParser(RecipeMetadataParser):
if version_id:
added_loras[version_id] = len(result["loras"])
except Exception as e:
logger.error(f"Error fetching Civitai info for model ID {version_id}: {e}")
logger.error(
f"Error fetching Civitai info for model ID {version_id}: {e}"
)
result["loras"].append(lora_entry)
@@ -390,30 +442,32 @@ class CivitaiApiMetadataParser(RecipeMetadataParser):
continue
lora_entry = {
'name': lora_name,
'type': "lora",
'weight': 1.0,
'hash': lora_hash,
'existsLocally': False,
'localPath': None,
'file_name': lora_name,
'thumbnailUrl': '/loras_static/images/no-preview.png',
'baseModel': '',
'size': 0,
'downloadUrl': '',
'isDeleted': False
"name": lora_name,
"type": "lora",
"weight": 1.0,
"hash": lora_hash,
"existsLocally": False,
"localPath": None,
"file_name": lora_name,
"thumbnailUrl": "/loras_static/images/no-preview.png",
"baseModel": "",
"size": 0,
"downloadUrl": "",
"isDeleted": False,
}
if metadata_provider:
try:
civitai_info = await metadata_provider.get_model_by_hash(lora_hash)
civitai_info = await metadata_provider.get_model_by_hash(
lora_hash
)
populated_entry = await self.populate_lora_from_civitai(
lora_entry,
civitai_info,
recipe_scanner,
base_model_counts,
lora_hash
lora_hash,
)
if populated_entry is None:
@@ -421,20 +475,27 @@ class CivitaiApiMetadataParser(RecipeMetadataParser):
lora_entry = populated_entry
if 'id' in lora_entry and lora_entry['id']:
added_loras[str(lora_entry['id'])] = len(result["loras"])
if "id" in lora_entry and lora_entry["id"]:
added_loras[str(lora_entry["id"])] = len(result["loras"])
except Exception as e:
logger.error(f"Error fetching Civitai info for LoRA hash {lora_hash}: {e}")
logger.error(
f"Error fetching Civitai info for LoRA hash {lora_hash}: {e}"
)
added_loras[lora_hash] = len(result["loras"])
result["loras"].append(lora_entry)
# Check for LoRA info in the format "Lora_0 Model hash", "Lora_0 Model name", etc.
lora_index = 0
while f"Lora_{lora_index} Model hash" in metadata and f"Lora_{lora_index} Model name" in metadata:
while (
f"Lora_{lora_index} Model hash" in metadata
and f"Lora_{lora_index} Model name" in metadata
):
lora_hash = metadata[f"Lora_{lora_index} Model hash"]
lora_name = metadata[f"Lora_{lora_index} Model name"]
lora_strength_model = float(metadata.get(f"Lora_{lora_index} Strength model", 1.0))
lora_strength_model = float(
metadata.get(f"Lora_{lora_index} Strength model", 1.0)
)
# Skip if we've already added this LoRA by hash
if lora_hash and lora_hash in added_loras:
@@ -442,31 +503,33 @@ class CivitaiApiMetadataParser(RecipeMetadataParser):
continue
lora_entry = {
'name': lora_name,
'type': "lora",
'weight': lora_strength_model,
'hash': lora_hash,
'existsLocally': False,
'localPath': None,
'file_name': lora_name,
'thumbnailUrl': '/loras_static/images/no-preview.png',
'baseModel': '',
'size': 0,
'downloadUrl': '',
'isDeleted': False
"name": lora_name,
"type": "lora",
"weight": lora_strength_model,
"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 hash is available
if lora_entry['hash'] and metadata_provider:
if lora_entry["hash"] and metadata_provider:
try:
civitai_info = await metadata_provider.get_model_by_hash(lora_hash)
civitai_info = await metadata_provider.get_model_by_hash(
lora_hash
)
populated_entry = await self.populate_lora_from_civitai(
lora_entry,
civitai_info,
recipe_scanner,
base_model_counts,
lora_hash
lora_hash,
)
if populated_entry is None:
@@ -476,10 +539,12 @@ class CivitaiApiMetadataParser(RecipeMetadataParser):
lora_entry = populated_entry
# If we have a version ID from Civitai, track it for deduplication
if 'id' in lora_entry and lora_entry['id']:
added_loras[str(lora_entry['id'])] = len(result["loras"])
if "id" in lora_entry and lora_entry["id"]:
added_loras[str(lora_entry["id"])] = len(result["loras"])
except Exception as e:
logger.error(f"Error fetching Civitai info for LoRA hash {lora_entry['hash']}: {e}")
logger.error(
f"Error fetching Civitai info for LoRA hash {lora_entry['hash']}: {e}"
)
# Track by hash if we have it
if lora_hash:
@@ -491,7 +556,9 @@ class CivitaiApiMetadataParser(RecipeMetadataParser):
# If base model wasn't found earlier, use the most common one from LoRAs
if not result["base_model"] and base_model_counts:
result["base_model"] = max(base_model_counts.items(), key=lambda x: x[1])[0]
result["base_model"] = max(
base_model_counts.items(), key=lambda x: x[1]
)[0]
return result

View File

@@ -1,4 +1,5 @@
"""Base infrastructure shared across recipe routes."""
from __future__ import annotations
import logging
@@ -16,12 +17,14 @@ from ..services.recipes import (
RecipePersistenceService,
RecipeSharingService,
)
from ..services.batch_import_service import BatchImportService
from ..services.server_i18n import server_i18n
from ..services.service_registry import ServiceRegistry
from ..services.settings_manager import get_settings_manager
from ..utils.constants import CARD_PREVIEW_WIDTH
from ..utils.exif_utils import ExifUtils
from .handlers.recipe_handlers import (
BatchImportHandler,
RecipeAnalysisHandler,
RecipeHandlerSet,
RecipeListingHandler,
@@ -116,7 +119,10 @@ class BaseRecipeRoutes:
recipe_scanner_getter = lambda: self.recipe_scanner
civitai_client_getter = lambda: self.civitai_client
standalone_mode = os.environ.get("LORA_MANAGER_STANDALONE", "0") == "1" or os.environ.get("HF_HUB_DISABLE_TELEMETRY", "0") == "0"
standalone_mode = (
os.environ.get("LORA_MANAGER_STANDALONE", "0") == "1"
or os.environ.get("HF_HUB_DISABLE_TELEMETRY", "0") == "0"
)
if not standalone_mode:
from ..metadata_collector import get_metadata # type: ignore[import-not-found]
from ..metadata_collector.metadata_processor import ( # type: ignore[import-not-found]
@@ -190,6 +196,22 @@ class BaseRecipeRoutes:
sharing_service=sharing_service,
)
from ..services.websocket_manager import ws_manager
batch_import_service = BatchImportService(
analysis_service=analysis_service,
persistence_service=persistence_service,
ws_manager=ws_manager,
logger=logger,
)
batch_import = BatchImportHandler(
ensure_dependencies_ready=self.ensure_dependencies_ready,
recipe_scanner_getter=recipe_scanner_getter,
civitai_client_getter=civitai_client_getter,
logger=logger,
batch_import_service=batch_import_service,
)
return RecipeHandlerSet(
page_view=page_view,
listing=listing,
@@ -197,4 +219,5 @@ class BaseRecipeRoutes:
management=management,
analysis=analysis,
sharing=sharing,
batch_import=batch_import,
)

View File

@@ -1,5 +1,5 @@
import logging
from typing import Dict
from typing import Dict, List, Set
from aiohttp import web
from .base_model_routes import BaseModelRoutes
@@ -82,12 +82,22 @@ class CheckpointRoutes(BaseModelRoutes):
return web.json_response({"error": str(e)}, status=500)
async def get_checkpoints_roots(self, request: web.Request) -> web.Response:
"""Return the list of checkpoint roots from config"""
"""Return the list of checkpoint roots from config (including extra paths)"""
try:
roots = config.checkpoints_roots
# Merge checkpoints_roots with extra_checkpoints_roots, preserving order and removing duplicates
roots: List[str] = []
roots.extend(config.checkpoints_roots or [])
roots.extend(config.extra_checkpoints_roots or [])
# Remove duplicates while preserving order
seen: set = set()
unique_roots: List[str] = []
for root in roots:
if root and root not in seen:
seen.add(root)
unique_roots.append(root)
return web.json_response({
"success": True,
"roots": roots
"roots": unique_roots
})
except Exception as e:
logger.error(f"Error getting checkpoint roots: {e}", exc_info=True)
@@ -97,12 +107,22 @@ class CheckpointRoutes(BaseModelRoutes):
}, status=500)
async def get_unet_roots(self, request: web.Request) -> web.Response:
"""Return the list of unet roots from config"""
"""Return the list of unet roots from config (including extra paths)"""
try:
roots = config.unet_roots
# Merge unet_roots with extra_unet_roots, preserving order and removing duplicates
roots: List[str] = []
roots.extend(config.unet_roots or [])
roots.extend(config.extra_unet_roots or [])
# Remove duplicates while preserving order
seen: set = set()
unique_roots: List[str] = []
for root in roots:
if root and root not in seen:
seen.add(root)
unique_roots.append(root)
return web.json_response({
"success": True,
"roots": roots
"roots": unique_roots
})
except Exception as e:
logger.error(f"Error getting unet roots: {e}", exc_info=True)

View File

@@ -9,6 +9,7 @@ objects that can be composed by the route controller.
from __future__ import annotations
import asyncio
import json
import logging
import os
import subprocess
@@ -218,20 +219,149 @@ class HealthCheckHandler:
return web.json_response({"status": "ok"})
class SupportersHandler:
"""Handler for supporters data."""
def __init__(self, logger: logging.Logger | None = None) -> None:
self._logger = logger or logging.getLogger(__name__)
def _load_supporters(self) -> dict:
"""Load supporters data from JSON file."""
try:
current_file = os.path.abspath(__file__)
root_dir = os.path.dirname(
os.path.dirname(os.path.dirname(os.path.dirname(current_file)))
)
supporters_path = os.path.join(root_dir, "data", "supporters.json")
if os.path.exists(supporters_path):
with open(supporters_path, "r", encoding="utf-8") as f:
return json.load(f)
except Exception as e:
self._logger.debug(f"Failed to load supporters data: {e}")
return {"specialThanks": [], "allSupporters": [], "totalCount": 0}
async def get_supporters(self, request: web.Request) -> web.Response:
"""Return supporters data as JSON."""
try:
supporters = self._load_supporters()
return web.json_response({"success": True, "supporters": supporters})
except Exception as exc:
self._logger.error("Error loading supporters: %s", exc, exc_info=True)
return web.json_response({"success": False, "error": str(exc)}, status=500)
class ExampleWorkflowsHandler:
"""Handler for example workflow templates."""
def __init__(self, logger: logging.Logger | None = None) -> None:
self._logger = logger or logging.getLogger(__name__)
def _get_workflows_dir(self) -> str:
"""Get the example workflows directory path."""
current_file = os.path.abspath(__file__)
root_dir = os.path.dirname(
os.path.dirname(os.path.dirname(os.path.dirname(current_file)))
)
return os.path.join(root_dir, "example_workflows")
def _format_workflow_name(self, filename: str) -> str:
"""Convert filename to human-readable name."""
name = os.path.splitext(filename)[0]
name = name.replace("_", " ")
return name
async def get_example_workflows(self, request: web.Request) -> web.Response:
"""Return list of available example workflows."""
try:
workflows_dir = self._get_workflows_dir()
workflows = [
{
"value": "Default",
"label": "Default (Blank)",
"path": None,
}
]
if os.path.exists(workflows_dir):
for filename in sorted(os.listdir(workflows_dir)):
if filename.endswith(".json"):
workflows.append(
{
"value": filename,
"label": self._format_workflow_name(filename),
"path": f"example_workflows/{filename}",
}
)
return web.json_response({"success": True, "workflows": workflows})
except Exception as exc:
self._logger.error(
"Error listing example workflows: %s", exc, exc_info=True
)
return web.json_response({"success": False, "error": str(exc)}, status=500)
async def get_example_workflow(self, request: web.Request) -> web.Response:
"""Return a specific example workflow JSON content."""
try:
filename = request.match_info.get("filename")
if not filename:
return web.json_response(
{"success": False, "error": "Filename not provided"}, status=400
)
if filename == "Default":
return web.json_response(
{
"success": True,
"workflow": {
"last_node_id": 0,
"last_link_id": 0,
"nodes": [],
"links": [],
"groups": [],
"config": {},
"extra": {},
"version": 0.4,
},
}
)
workflows_dir = self._get_workflows_dir()
filepath = os.path.join(workflows_dir, filename)
if not os.path.exists(filepath):
return web.json_response(
{"success": False, "error": f"Workflow not found: {filename}"},
status=404,
)
with open(filepath, "r", encoding="utf-8") as f:
workflow = json.load(f)
return web.json_response({"success": True, "workflow": workflow})
except Exception as exc:
self._logger.error("Error loading example workflow: %s", exc, exc_info=True)
return web.json_response({"success": False, "error": str(exc)}, status=500)
class SettingsHandler:
"""Sync settings between backend and frontend."""
# Settings keys that should NOT be synced to frontend.
# All other settings are synced by default.
_NO_SYNC_KEYS = frozenset({
# Internal/performance settings (not used by frontend)
"hash_chunk_size_mb",
"download_stall_timeout_seconds",
# Complex internal structures retrieved via separate endpoints
"folder_paths",
"libraries",
"active_library",
})
_NO_SYNC_KEYS = frozenset(
{
# Internal/performance settings (not used by frontend)
"hash_chunk_size_mb",
"download_stall_timeout_seconds",
# Complex internal structures retrieved via separate endpoints
"folder_paths",
"libraries",
"active_library",
}
)
_PROXY_KEYS = {
"proxy_enabled",
@@ -1186,6 +1316,7 @@ class CustomWordsHandler:
def __init__(self) -> None:
from ...services.custom_words_service import get_custom_words_service
self._service = get_custom_words_service()
async def search_custom_words(self, request: web.Request) -> web.Response:
@@ -1194,6 +1325,7 @@ class CustomWordsHandler:
Query parameters:
search: The search term to match against.
limit: Maximum number of results to return (default: 20).
offset: Number of results to skip (default: 0).
category: Optional category filter. Can be:
- A category name (e.g., "character", "artist", "general")
- Comma-separated category IDs (e.g., "4,11" for character)
@@ -1203,6 +1335,7 @@ class CustomWordsHandler:
try:
search_term = request.query.get("search", "")
limit = int(request.query.get("limit", "20"))
offset = max(0, int(request.query.get("offset", "0")))
category_param = request.query.get("category", "")
enriched_param = request.query.get("enriched", "").lower() == "true"
@@ -1212,13 +1345,14 @@ class CustomWordsHandler:
categories = self._parse_category_param(category_param)
results = self._service.search_words(
search_term, limit, categories=categories, enriched=enriched_param
search_term,
limit,
offset=offset,
categories=categories,
enriched=enriched_param,
)
return web.json_response({
"success": True,
"words": results
})
return web.json_response({"success": True, "words": results})
except Exception as exc:
logger.error("Error searching custom words: %s", exc, exc_info=True)
return web.json_response({"error": str(exc)}, status=500)
@@ -1482,6 +1616,8 @@ class MiscHandlerSet:
metadata_archive: MetadataArchiveHandler,
filesystem: FileSystemHandler,
custom_words: CustomWordsHandler,
supporters: SupportersHandler,
example_workflows: ExampleWorkflowsHandler,
) -> None:
self.health = health
self.settings = settings
@@ -1494,6 +1630,8 @@ class MiscHandlerSet:
self.metadata_archive = metadata_archive
self.filesystem = filesystem
self.custom_words = custom_words
self.supporters = supporters
self.example_workflows = example_workflows
def to_route_mapping(
self,
@@ -1522,6 +1660,9 @@ class MiscHandlerSet:
"open_file_location": self.filesystem.open_file_location,
"open_settings_location": self.filesystem.open_settings_location,
"search_custom_words": self.custom_words.search_custom_words,
"get_supporters": self.supporters.get_supporters,
"get_example_workflows": self.example_workflows.get_example_workflows,
"get_example_workflow": self.example_workflows.get_example_workflow,
}

View File

@@ -66,6 +66,23 @@ class ModelPageView:
self._logger = logger
self._app_version = self._get_app_version()
def _load_supporters(self) -> dict:
"""Load supporters data from JSON file."""
try:
current_file = os.path.abspath(__file__)
root_dir = os.path.dirname(
os.path.dirname(os.path.dirname(os.path.dirname(current_file)))
)
supporters_path = os.path.join(root_dir, "data", "supporters.json")
if os.path.exists(supporters_path):
with open(supporters_path, "r", encoding="utf-8") as f:
return json.load(f)
except Exception as e:
self._logger.debug(f"Failed to load supporters data: {e}")
return {"specialThanks": [], "allSupporters": [], "totalCount": 0}
def _get_app_version(self) -> str:
version = "1.0.0"
short_hash = "stable"
@@ -391,12 +408,18 @@ class ModelManagementHandler:
if not sha256 or hash_status != "completed":
# For checkpoints, calculate hash on-demand
scanner = self._service.scanner
if hasattr(scanner, 'calculate_hash_for_model'):
self._logger.info(f"Lazy hash calculation triggered for {file_path}")
if hasattr(scanner, "calculate_hash_for_model"):
self._logger.info(
f"Lazy hash calculation triggered for {file_path}"
)
sha256 = await scanner.calculate_hash_for_model(file_path)
if not sha256:
return web.json_response(
{"success": False, "error": "Failed to calculate SHA256 hash"}, status=500
{
"success": False,
"error": "Failed to calculate SHA256 hash",
},
status=500,
)
# Update model_data with new hash
model_data["sha256"] = sha256
@@ -524,6 +547,153 @@ class ModelManagementHandler:
self._logger.error("Error replacing preview: %s", exc, exc_info=True)
return web.Response(text=str(exc), status=500)
async def set_preview_from_url(self, request: web.Request) -> web.Response:
"""Set a preview image from a remote URL (e.g., CivitAI)."""
try:
from ...utils.civitai_utils import rewrite_preview_url
from ...services.downloader import get_downloader
data = await request.json()
model_path = data.get("model_path")
image_url = data.get("image_url")
nsfw_level = data.get("nsfw_level", 0)
if not model_path:
return web.json_response(
{"success": False, "error": "Model path is required"}, status=400
)
if not image_url:
return web.json_response(
{"success": False, "error": "Image URL is required"}, status=400
)
# Rewrite URL to use optimized rendition if it's a Civitai URL
optimized_url, was_rewritten = rewrite_preview_url(
image_url, media_type="image"
)
if was_rewritten and optimized_url:
self._logger.info(
f"Rewritten preview URL to optimized version: {optimized_url}"
)
else:
optimized_url = image_url
# Download the image using the Downloader service
self._logger.info(
f"Downloading preview from {optimized_url} for {model_path}"
)
downloader = await get_downloader()
success, preview_data, headers = await downloader.download_to_memory(
optimized_url, use_auth=False, return_headers=True
)
if not success:
return web.json_response(
{
"success": False,
"error": f"Failed to download image: {preview_data}",
},
status=502,
)
# preview_data is bytes when success is True
preview_bytes = (
preview_data
if isinstance(preview_data, bytes)
else preview_data.encode("utf-8")
)
# Determine content type from response headers
content_type = (
headers.get("Content-Type", "image/jpeg") if headers else "image/jpeg"
)
# Extract original filename from URL
original_filename = None
if "?" in image_url:
url_path = image_url.split("?")[0]
else:
url_path = image_url
original_filename = url_path.split("/")[-1] if "/" in url_path else None
result = await self._preview_service.replace_preview(
model_path=model_path,
preview_data=preview_data,
content_type=content_type,
original_filename=original_filename,
nsfw_level=nsfw_level,
update_preview_in_cache=self._service.scanner.update_preview_in_cache,
metadata_loader=self._metadata_sync.load_local_metadata,
)
return web.json_response(
{
"success": True,
"preview_url": config.get_preview_static_url(
result["preview_path"]
),
"preview_nsfw_level": result["preview_nsfw_level"],
}
)
except Exception as exc:
self._logger.error("Error setting preview from URL: %s", exc, exc_info=True)
return web.json_response({"success": False, "error": str(exc)}, status=500)
if not image_url:
return web.json_response(
{"success": False, "error": "Image URL is required"}, status=400
)
# Download the image from the remote URL
self._logger.info(f"Downloading preview from {image_url} for {model_path}")
async with aiohttp.ClientSession() as session:
async with session.get(image_url) as response:
if response.status != 200:
return web.json_response(
{
"success": False,
"error": f"Failed to download image: HTTP {response.status}",
},
status=502,
)
content_type = response.headers.get("Content-Type", "image/jpeg")
preview_data = await response.read()
# Extract original filename from URL
original_filename = None
if "?" in image_url:
url_path = image_url.split("?")[0]
else:
url_path = image_url
original_filename = (
url_path.split("/")[-1] if "/" in url_path else None
)
result = await self._preview_service.replace_preview(
model_path=model_path,
preview_data=preview_bytes,
content_type=content_type,
original_filename=original_filename,
nsfw_level=nsfw_level,
update_preview_in_cache=self._service.scanner.update_preview_in_cache,
metadata_loader=self._metadata_sync.load_local_metadata,
)
return web.json_response(
{
"success": True,
"preview_url": config.get_preview_static_url(
result["preview_path"]
),
"preview_nsfw_level": result["preview_nsfw_level"],
}
)
except Exception as exc:
self._logger.error("Error setting preview from URL: %s", exc, exc_info=True)
return web.json_response({"success": False, "error": str(exc)}, status=500)
async def save_metadata(self, request: web.Request) -> web.Response:
try:
data = await request.json()
@@ -814,9 +984,7 @@ class ModelQueryHandler:
# Format response
group = {"hash": sha256, "models": []}
for model in sorted_models:
group["models"].append(
await self._service.format_response(model)
)
group["models"].append(await self._service.format_response(model))
# Only include groups with 2+ models after filtering
if len(group["models"]) > 1:
@@ -845,7 +1013,9 @@ class ModelQueryHandler:
"favorites_only": request.query.get("favorites_only", "").lower() == "true",
}
def _apply_duplicate_filters(self, models: List[Dict[str, Any]], filters: Dict[str, Any]) -> List[Dict[str, Any]]:
def _apply_duplicate_filters(
self, models: List[Dict[str, Any]], filters: Dict[str, Any]
) -> List[Dict[str, Any]]:
"""Apply filters to a list of models within a duplicate group."""
result = models
@@ -886,7 +1056,9 @@ class ModelQueryHandler:
return result
def _sort_duplicate_group(self, models: List[Dict[str, Any]]) -> List[Dict[str, Any]]:
def _sort_duplicate_group(
self, models: List[Dict[str, Any]]
) -> List[Dict[str, Any]]:
"""Sort models: originals first (left), copies (with -????. pattern) last (right)."""
if len(models) <= 1:
return models
@@ -1096,8 +1268,11 @@ class ModelQueryHandler:
async def get_relative_paths(self, request: web.Request) -> web.Response:
try:
search = request.query.get("search", "").strip()
limit = min(int(request.query.get("limit", "15")), 50)
matching_paths = await self._service.search_relative_paths(search, limit)
limit = min(int(request.query.get("limit", "15")), 100)
offset = max(0, int(request.query.get("offset", "0")))
matching_paths = await self._service.search_relative_paths(
search, limit, offset
)
return web.json_response(
{"success": True, "relative_paths": matching_paths}
)
@@ -1171,10 +1346,13 @@ class ModelDownloadHandler:
data["source"] = source
if file_params_json:
import json
try:
data["file_params"] = json.loads(file_params_json)
except json.JSONDecodeError:
self._logger.warning("Invalid file_params JSON: %s", file_params_json)
self._logger.warning(
"Invalid file_params JSON: %s", file_params_json
)
loop = asyncio.get_event_loop()
future = loop.create_future()
@@ -1905,7 +2083,8 @@ class ModelUpdateHandler:
from dataclasses import replace
new_record = replace(
record, versions=list(version_map.values()),
record,
versions=list(version_map.values()),
)
# Optionally persist to database for caching
@@ -2120,6 +2299,7 @@ class ModelUpdateHandler:
if version.early_access_ends_at:
try:
from datetime import datetime, timezone
ea_date = datetime.fromisoformat(
version.early_access_ends_at.replace("Z", "+00:00")
)
@@ -2127,7 +2307,7 @@ class ModelUpdateHandler:
except (ValueError, AttributeError):
# If date parsing fails, treat as active EA (conservative)
is_early_access = True
elif getattr(version, 'is_early_access', False):
elif getattr(version, "is_early_access", False):
# Fallback to basic EA flag from bulk API
is_early_access = True
@@ -2207,6 +2387,7 @@ class ModelHandlerSet:
"fetch_all_civitai": self.civitai.fetch_all_civitai,
"relink_civitai": self.management.relink_civitai,
"replace_preview": self.management.replace_preview,
"set_preview_from_url": self.management.set_preview_from_url,
"save_metadata": self.management.save_metadata,
"add_tags": self.management.add_tags,
"rename_model": self.management.rename_model,

View File

@@ -1,4 +1,5 @@
"""Dedicated handler objects for recipe-related routes."""
from __future__ import annotations
import json
@@ -8,6 +9,7 @@ import re
import asyncio
import tempfile
from dataclasses import dataclass
from pathlib import Path
from typing import Any, Awaitable, Callable, Dict, List, Mapping, Optional
from aiohttp import web
@@ -29,6 +31,7 @@ from ...utils.exif_utils import ExifUtils
from ...recipes.merger import GenParamsMerger
from ...recipes.enrichment import RecipeEnricher
from ...services.websocket_manager import ws_manager as default_ws_manager
from ...services.batch_import_service import BatchImportService
Logger = logging.Logger
EnsureDependenciesCallable = Callable[[], Awaitable[None]]
@@ -46,8 +49,11 @@ class RecipeHandlerSet:
management: "RecipeManagementHandler"
analysis: "RecipeAnalysisHandler"
sharing: "RecipeSharingHandler"
batch_import: "BatchImportHandler"
def to_route_mapping(self) -> Mapping[str, Callable[[web.Request], Awaitable[web.StreamResponse]]]:
def to_route_mapping(
self,
) -> Mapping[str, Callable[[web.Request], Awaitable[web.StreamResponse]]]:
"""Expose handler coroutines keyed by registrar handler names."""
return {
@@ -81,6 +87,11 @@ class RecipeHandlerSet:
"cancel_repair": self.management.cancel_repair,
"repair_recipe": self.management.repair_recipe,
"get_repair_progress": self.management.get_repair_progress,
"start_batch_import": self.batch_import.start_batch_import,
"get_batch_import_progress": self.batch_import.get_batch_import_progress,
"cancel_batch_import": self.batch_import.cancel_batch_import,
"start_directory_import": self.batch_import.start_directory_import,
"browse_directory": self.batch_import.browse_directory,
}
@@ -170,8 +181,10 @@ class RecipeListingHandler:
search_options = {
"title": request.query.get("search_title", "true").lower() == "true",
"tags": request.query.get("search_tags", "true").lower() == "true",
"lora_name": request.query.get("search_lora_name", "true").lower() == "true",
"lora_model": request.query.get("search_lora_model", "true").lower() == "true",
"lora_name": request.query.get("search_lora_name", "true").lower()
== "true",
"lora_model": request.query.get("search_lora_model", "true").lower()
== "true",
"prompt": request.query.get("search_prompt", "true").lower() == "true",
}
@@ -246,7 +259,9 @@ class RecipeListingHandler:
return web.json_response({"error": "Recipe not found"}, status=404)
return web.json_response(recipe)
except Exception as exc:
self._logger.error("Error retrieving recipe details: %s", exc, exc_info=True)
self._logger.error(
"Error retrieving recipe details: %s", exc, exc_info=True
)
return web.json_response({"error": str(exc)}, status=500)
def format_recipe_file_url(self, file_path: str) -> str:
@@ -256,7 +271,9 @@ class RecipeListingHandler:
if static_url:
return static_url
except Exception as exc: # pragma: no cover - logging path
self._logger.error("Error formatting recipe file URL: %s", exc, exc_info=True)
self._logger.error(
"Error formatting recipe file URL: %s", exc, exc_info=True
)
return "/loras_static/images/no-preview.png"
return "/loras_static/images/no-preview.png"
@@ -293,7 +310,9 @@ class RecipeQueryHandler:
for tag in recipe.get("tags", []) or []:
tag_counts[tag] = tag_counts.get(tag, 0) + 1
sorted_tags = [{"tag": tag, "count": count} for tag, count in tag_counts.items()]
sorted_tags = [
{"tag": tag, "count": count} for tag, count in tag_counts.items()
]
sorted_tags.sort(key=lambda entry: entry["count"], reverse=True)
return web.json_response({"success": True, "tags": sorted_tags[:limit]})
except Exception as exc:
@@ -313,9 +332,14 @@ class RecipeQueryHandler:
for recipe in getattr(cache, "raw_data", []):
base_model = recipe.get("base_model")
if base_model:
base_model_counts[base_model] = base_model_counts.get(base_model, 0) + 1
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 = [
{"name": model, "count": count}
for model, count in base_model_counts.items()
]
sorted_models.sort(key=lambda entry: entry["count"], reverse=True)
return web.json_response({"success": True, "base_models": sorted_models})
except Exception as exc:
@@ -345,7 +369,9 @@ class RecipeQueryHandler:
folders = await recipe_scanner.get_folders()
return web.json_response({"success": True, "folders": folders})
except Exception as exc:
self._logger.error("Error retrieving recipe folders: %s", exc, exc_info=True)
self._logger.error(
"Error retrieving recipe folders: %s", exc, exc_info=True
)
return web.json_response({"success": False, "error": str(exc)}, status=500)
async def get_folder_tree(self, request: web.Request) -> web.Response:
@@ -358,7 +384,9 @@ class RecipeQueryHandler:
folder_tree = await recipe_scanner.get_folder_tree()
return web.json_response({"success": True, "tree": folder_tree})
except Exception as exc:
self._logger.error("Error retrieving recipe folder tree: %s", exc, exc_info=True)
self._logger.error(
"Error retrieving recipe folder tree: %s", exc, exc_info=True
)
return web.json_response({"success": False, "error": str(exc)}, status=500)
async def get_unified_folder_tree(self, request: web.Request) -> web.Response:
@@ -371,7 +399,9 @@ class RecipeQueryHandler:
folder_tree = await recipe_scanner.get_folder_tree()
return web.json_response({"success": True, "tree": folder_tree})
except Exception as exc:
self._logger.error("Error retrieving unified recipe folder tree: %s", exc, exc_info=True)
self._logger.error(
"Error retrieving unified recipe folder tree: %s", exc, exc_info=True
)
return web.json_response({"success": False, "error": str(exc)}, status=500)
async def get_recipes_for_lora(self, request: web.Request) -> web.Response:
@@ -383,7 +413,9 @@ class RecipeQueryHandler:
lora_hash = request.query.get("hash")
if not lora_hash:
return web.json_response({"success": False, "error": "Lora hash is required"}, status=400)
return web.json_response(
{"success": False, "error": "Lora hash is required"}, status=400
)
matching_recipes = await recipe_scanner.get_recipes_for_lora(lora_hash)
return web.json_response({"success": True, "recipes": matching_recipes})
@@ -400,7 +432,9 @@ class RecipeQueryHandler:
self._logger.info("Manually triggering recipe cache rebuild")
await recipe_scanner.get_cached_data(force_refresh=True)
return web.json_response({"success": True, "message": "Recipe cache refreshed successfully"})
return web.json_response(
{"success": True, "message": "Recipe cache refreshed successfully"}
)
except Exception as exc:
self._logger.error("Error refreshing recipe cache: %s", exc, exc_info=True)
return web.json_response({"success": False, "error": str(exc)}, status=500)
@@ -429,7 +463,9 @@ class RecipeQueryHandler:
"id": recipe.get("id"),
"title": recipe.get("title"),
"file_url": recipe.get("file_url")
or self._format_recipe_file_url(recipe.get("file_path", "")),
or self._format_recipe_file_url(
recipe.get("file_path", "")
),
"modified": recipe.get("modified"),
"created_date": recipe.get("created_date"),
"lora_count": len(recipe.get("loras", [])),
@@ -437,7 +473,9 @@ class RecipeQueryHandler:
)
if len(recipes) >= 2:
recipes.sort(key=lambda entry: entry.get("modified", 0), reverse=True)
recipes.sort(
key=lambda entry: entry.get("modified", 0), reverse=True
)
response_data.append(
{
"type": "fingerprint",
@@ -460,7 +498,9 @@ class RecipeQueryHandler:
"id": recipe.get("id"),
"title": recipe.get("title"),
"file_url": recipe.get("file_url")
or self._format_recipe_file_url(recipe.get("file_path", "")),
or self._format_recipe_file_url(
recipe.get("file_path", "")
),
"modified": recipe.get("modified"),
"created_date": recipe.get("created_date"),
"lora_count": len(recipe.get("loras", [])),
@@ -468,7 +508,9 @@ class RecipeQueryHandler:
)
if len(recipes) >= 2:
recipes.sort(key=lambda entry: entry.get("modified", 0), reverse=True)
recipes.sort(
key=lambda entry: entry.get("modified", 0), reverse=True
)
response_data.append(
{
"type": "source_url",
@@ -479,9 +521,13 @@ class RecipeQueryHandler:
)
response_data.sort(key=lambda entry: entry["count"], reverse=True)
return web.json_response({"success": True, "duplicate_groups": response_data})
return web.json_response(
{"success": True, "duplicate_groups": response_data}
)
except Exception as exc:
self._logger.error("Error finding duplicate recipes: %s", exc, exc_info=True)
self._logger.error(
"Error finding duplicate recipes: %s", exc, exc_info=True
)
return web.json_response({"success": False, "error": str(exc)}, status=500)
async def get_recipe_syntax(self, request: web.Request) -> web.Response:
@@ -498,9 +544,13 @@ class RecipeQueryHandler:
return web.json_response({"error": "Recipe not found"}, status=404)
if not syntax_parts:
return web.json_response({"error": "No LoRAs found in this recipe"}, status=400)
return web.json_response(
{"error": "No LoRAs found in this recipe"}, status=400
)
return web.json_response({"success": True, "syntax": " ".join(syntax_parts)})
return web.json_response(
{"success": True, "syntax": " ".join(syntax_parts)}
)
except Exception as exc:
self._logger.error("Error generating recipe syntax: %s", exc, exc_info=True)
return web.json_response({"error": str(exc)}, status=500)
@@ -561,11 +611,17 @@ class RecipeManagementHandler:
await self._ensure_dependencies_ready()
recipe_scanner = self._recipe_scanner_getter()
if recipe_scanner is None:
return web.json_response({"success": False, "error": "Recipe scanner unavailable"}, status=503)
return web.json_response(
{"success": False, "error": "Recipe scanner unavailable"},
status=503,
)
# Check if already running
if self._ws_manager.is_recipe_repair_running():
return web.json_response({"success": False, "error": "Recipe repair already in progress"}, status=409)
return web.json_response(
{"success": False, "error": "Recipe repair already in progress"},
status=409,
)
recipe_scanner.reset_cancellation()
@@ -579,11 +635,12 @@ class RecipeManagementHandler:
progress_callback=progress_callback
)
except Exception as e:
self._logger.error(f"Error in recipe repair task: {e}", exc_info=True)
await self._ws_manager.broadcast_recipe_repair_progress({
"status": "error",
"error": str(e)
})
self._logger.error(
f"Error in recipe repair task: {e}", exc_info=True
)
await self._ws_manager.broadcast_recipe_repair_progress(
{"status": "error", "error": str(e)}
)
finally:
# Keep the final status for a while so the UI can see it
await asyncio.sleep(5)
@@ -593,7 +650,9 @@ class RecipeManagementHandler:
asyncio.create_task(run_repair())
return web.json_response({"success": True, "message": "Recipe repair started"})
return web.json_response(
{"success": True, "message": "Recipe repair started"}
)
except Exception as exc:
self._logger.error("Error starting recipe repair: %s", exc, exc_info=True)
return web.json_response({"success": False, "error": str(exc)}, status=500)
@@ -603,10 +662,15 @@ class RecipeManagementHandler:
await self._ensure_dependencies_ready()
recipe_scanner = self._recipe_scanner_getter()
if recipe_scanner is None:
return web.json_response({"success": False, "error": "Recipe scanner unavailable"}, status=503)
return web.json_response(
{"success": False, "error": "Recipe scanner unavailable"},
status=503,
)
recipe_scanner.cancel_task()
return web.json_response({"success": True, "message": "Cancellation requested"})
return web.json_response(
{"success": True, "message": "Cancellation requested"}
)
except Exception as exc:
self._logger.error("Error cancelling recipe repair: %s", exc, exc_info=True)
return web.json_response({"success": False, "error": str(exc)}, status=500)
@@ -616,7 +680,10 @@ class RecipeManagementHandler:
await self._ensure_dependencies_ready()
recipe_scanner = self._recipe_scanner_getter()
if recipe_scanner is None:
return web.json_response({"success": False, "error": "Recipe scanner unavailable"}, status=503)
return web.json_response(
{"success": False, "error": "Recipe scanner unavailable"},
status=503,
)
recipe_id = request.match_info["recipe_id"]
result = await recipe_scanner.repair_recipe_by_id(recipe_id)
@@ -632,12 +699,13 @@ class RecipeManagementHandler:
progress = self._ws_manager.get_recipe_repair_progress()
if progress:
return web.json_response({"success": True, "progress": progress})
return web.json_response({"success": False, "message": "No repair in progress"}, status=404)
return web.json_response(
{"success": False, "message": "No repair in progress"}, status=404
)
except Exception as exc:
self._logger.error("Error getting repair progress: %s", exc, exc_info=True)
return web.json_response({"success": False, "error": str(exc)}, status=500)
async def import_remote_recipe(self, request: web.Request) -> web.Response:
try:
await self._ensure_dependencies_ready()
@@ -658,7 +726,9 @@ class RecipeManagementHandler:
if not resources_raw:
raise RecipeValidationError("Missing required field: resources")
checkpoint_entry, lora_entries = self._parse_resources_payload(resources_raw)
checkpoint_entry, lora_entries = self._parse_resources_payload(
resources_raw
)
gen_params_request = self._parse_gen_params(params.get("gen_params"))
# 2. Initial Metadata Construction
@@ -666,7 +736,7 @@ class RecipeManagementHandler:
"base_model": params.get("base_model", "") or "",
"loras": lora_entries,
"gen_params": gen_params_request or {},
"source_url": image_url
"source_url": image_url,
}
source_path = params.get("source_path")
@@ -681,14 +751,20 @@ class RecipeManagementHandler:
# Try to resolve base model from checkpoint if not explicitly provided
if not metadata["base_model"]:
base_model_from_metadata = await self._resolve_base_model_from_checkpoint(checkpoint_entry)
base_model_from_metadata = (
await self._resolve_base_model_from_checkpoint(checkpoint_entry)
)
if base_model_from_metadata:
metadata["base_model"] = base_model_from_metadata
tags = self._parse_tags(params.get("tags"))
# 3. Download Image
image_bytes, extension, civitai_meta_from_download = await self._download_remote_media(image_url)
(
image_bytes,
extension,
civitai_meta_from_download,
) = await self._download_remote_media(image_url)
# 4. Extract Embedded Metadata
# Note: We still extract this here because Enricher currently expects 'gen_params' to already be populated
@@ -706,16 +782,24 @@ class RecipeManagementHandler:
# Let's extract embedded metadata first
embedded_gen_params = {}
try:
with tempfile.NamedTemporaryFile(suffix=extension, delete=False) as temp_img:
with tempfile.NamedTemporaryFile(
suffix=extension, delete=False
) as temp_img:
temp_img.write(image_bytes)
temp_img_path = temp_img.name
try:
raw_embedded = ExifUtils.extract_image_metadata(temp_img_path)
if raw_embedded:
parser = self._analysis_service._recipe_parser_factory.create_parser(raw_embedded)
parser = (
self._analysis_service._recipe_parser_factory.create_parser(
raw_embedded
)
)
if parser:
parsed_embedded = await parser.parse_metadata(raw_embedded, recipe_scanner=recipe_scanner)
parsed_embedded = await parser.parse_metadata(
raw_embedded, recipe_scanner=recipe_scanner
)
if parsed_embedded and "gen_params" in parsed_embedded:
embedded_gen_params = parsed_embedded["gen_params"]
else:
@@ -724,7 +808,9 @@ class RecipeManagementHandler:
if os.path.exists(temp_img_path):
os.unlink(temp_img_path)
except Exception as exc:
self._logger.warning("Failed to extract embedded metadata during import: %s", exc)
self._logger.warning(
"Failed to extract embedded metadata during import: %s", exc
)
# Pre-populate gen_params with embedded data so Enricher treats it as the "base" layer
if embedded_gen_params:
@@ -739,7 +825,7 @@ class RecipeManagementHandler:
await RecipeEnricher.enrich_recipe(
recipe=metadata,
civitai_client=civitai_client,
request_params=gen_params_request # Pass explicit request params here to override
request_params=gen_params_request, # Pass explicit request params here to override
)
# If we got civitai_meta from download but Enricher didn't fetch it (e.g. not a civitai URL or failed),
@@ -762,7 +848,9 @@ class RecipeManagementHandler:
except RecipeDownloadError as exc:
return web.json_response({"error": str(exc)}, status=400)
except Exception as exc:
self._logger.error("Error importing recipe from remote source: %s", exc, exc_info=True)
self._logger.error(
"Error importing recipe from remote source: %s", exc, exc_info=True
)
return web.json_response({"error": str(exc)}, status=500)
async def delete_recipe(self, request: web.Request) -> web.Response:
@@ -816,7 +904,11 @@ class RecipeManagementHandler:
target_path = data.get("target_path")
if not recipe_id or not target_path:
return web.json_response(
{"success": False, "error": "recipe_id and target_path are required"}, status=400
{
"success": False,
"error": "recipe_id and target_path are required",
},
status=400,
)
result = await self._persistence_service.move_recipe(
@@ -845,7 +937,11 @@ class RecipeManagementHandler:
target_path = data.get("target_path")
if not recipe_ids or not target_path:
return web.json_response(
{"success": False, "error": "recipe_ids and target_path are required"}, status=400
{
"success": False,
"error": "recipe_ids and target_path are required",
},
status=400,
)
result = await self._persistence_service.move_recipes_bulk(
@@ -934,7 +1030,9 @@ class RecipeManagementHandler:
except RecipeValidationError as exc:
return web.json_response({"error": str(exc)}, status=400)
except Exception as exc:
self._logger.error("Error saving recipe from widget: %s", exc, exc_info=True)
self._logger.error(
"Error saving recipe from widget: %s", exc, exc_info=True
)
return web.json_response({"error": str(exc)}, status=500)
async def _parse_save_payload(self, reader) -> dict[str, Any]:
@@ -1006,7 +1104,9 @@ class RecipeManagementHandler:
raise RecipeValidationError("gen_params payload must be an object")
return parsed
def _parse_resources_payload(self, payload_raw: str) -> tuple[Optional[Dict[str, Any]], List[Dict[str, Any]]]:
def _parse_resources_payload(
self, payload_raw: str
) -> tuple[Optional[Dict[str, Any]], List[Dict[str, Any]]]:
try:
payload = json.loads(payload_raw)
except json.JSONDecodeError as exc:
@@ -1066,10 +1166,14 @@ class RecipeManagementHandler:
civitai_match = re.match(r"https://civitai\.com/images/(\d+)", image_url)
if civitai_match:
if civitai_client is None:
raise RecipeDownloadError("Civitai client unavailable for image download")
raise RecipeDownloadError(
"Civitai client unavailable for image download"
)
image_info = await civitai_client.get_image_info(civitai_match.group(1))
if not image_info:
raise RecipeDownloadError("Failed to fetch image information from Civitai")
raise RecipeDownloadError(
"Failed to fetch image information from Civitai"
)
media_url = image_info.get("url")
if not media_url:
@@ -1083,18 +1187,24 @@ class RecipeManagementHandler:
else:
download_url = media_url
success, result = await downloader.download_file(download_url, temp_path, use_auth=False)
success, result = await downloader.download_file(
download_url, temp_path, use_auth=False
)
if not success:
raise RecipeDownloadError(f"Failed to download image: {result}")
# Extract extension from URL
url_path = download_url.split('?')[0].split('#')[0]
url_path = download_url.split("?")[0].split("#")[0]
extension = os.path.splitext(url_path)[1].lower()
if not extension:
extension = ".webp" # Default to webp if unknown
extension = ".webp" # Default to webp if unknown
with open(temp_path, "rb") as file_obj:
return file_obj.read(), extension, image_info.get("meta") if civitai_match and image_info else None
return (
file_obj.read(),
extension,
image_info.get("meta") if civitai_match and image_info else None,
)
except RecipeDownloadError:
raise
except RecipeValidationError:
@@ -1108,14 +1218,15 @@ class RecipeManagementHandler:
except FileNotFoundError:
pass
def _safe_int(self, value: Any) -> int:
try:
return int(value)
except (TypeError, ValueError):
return 0
async def _resolve_base_model_from_checkpoint(self, checkpoint_entry: Dict[str, Any]) -> str:
async def _resolve_base_model_from_checkpoint(
self, checkpoint_entry: Dict[str, Any]
) -> str:
version_id = self._safe_int(checkpoint_entry.get("modelVersionId"))
if not version_id:
@@ -1134,7 +1245,9 @@ class RecipeManagementHandler:
base_model = version_info.get("baseModel") or ""
return str(base_model) if base_model is not None else ""
except Exception as exc: # pragma: no cover - defensive logging
self._logger.warning("Failed to resolve base model from checkpoint metadata: %s", exc)
self._logger.warning(
"Failed to resolve base model from checkpoint metadata: %s", exc
)
return ""
@@ -1279,5 +1392,311 @@ class RecipeSharingHandler:
except RecipeNotFoundError as exc:
return web.json_response({"error": str(exc)}, status=404)
except Exception as exc:
self._logger.error("Error downloading shared recipe: %s", exc, exc_info=True)
self._logger.error(
"Error downloading shared recipe: %s", exc, exc_info=True
)
return web.json_response({"error": str(exc)}, status=500)
class BatchImportHandler:
"""Handle batch import operations for recipes."""
def __init__(
self,
*,
ensure_dependencies_ready: EnsureDependenciesCallable,
recipe_scanner_getter: RecipeScannerGetter,
civitai_client_getter: CivitaiClientGetter,
logger: Logger,
batch_import_service: BatchImportService,
) -> None:
self._ensure_dependencies_ready = ensure_dependencies_ready
self._recipe_scanner_getter = recipe_scanner_getter
self._civitai_client_getter = civitai_client_getter
self._logger = logger
self._batch_import_service = batch_import_service
async def start_batch_import(self, request: web.Request) -> web.Response:
try:
await self._ensure_dependencies_ready()
if self._batch_import_service.is_import_running():
return web.json_response(
{"success": False, "error": "Batch import already in progress"},
status=409,
)
data = await request.json()
items = data.get("items", [])
tags = data.get("tags", [])
skip_no_metadata = data.get("skip_no_metadata", False)
if not items:
return web.json_response(
{"success": False, "error": "No items provided"},
status=400,
)
for item in items:
if not item.get("source"):
return web.json_response(
{
"success": False,
"error": "Each item must have a 'source' field",
},
status=400,
)
operation_id = await self._batch_import_service.start_batch_import(
recipe_scanner_getter=self._recipe_scanner_getter,
civitai_client_getter=self._civitai_client_getter,
items=items,
tags=tags,
skip_no_metadata=skip_no_metadata,
)
return web.json_response(
{
"success": True,
"operation_id": operation_id,
}
)
except RecipeValidationError as exc:
return web.json_response({"success": False, "error": str(exc)}, status=400)
except Exception as exc:
self._logger.error("Error starting batch import: %s", exc, exc_info=True)
return web.json_response({"success": False, "error": str(exc)}, status=500)
async def start_directory_import(self, request: web.Request) -> web.Response:
try:
await self._ensure_dependencies_ready()
if self._batch_import_service.is_import_running():
return web.json_response(
{"success": False, "error": "Batch import already in progress"},
status=409,
)
data = await request.json()
directory = data.get("directory")
recursive = data.get("recursive", True)
tags = data.get("tags", [])
skip_no_metadata = data.get("skip_no_metadata", True)
if not directory:
return web.json_response(
{"success": False, "error": "Directory path is required"},
status=400,
)
operation_id = await self._batch_import_service.start_directory_import(
recipe_scanner_getter=self._recipe_scanner_getter,
civitai_client_getter=self._civitai_client_getter,
directory=directory,
recursive=recursive,
tags=tags,
skip_no_metadata=skip_no_metadata,
)
return web.json_response(
{
"success": True,
"operation_id": operation_id,
}
)
except RecipeValidationError as exc:
return web.json_response({"success": False, "error": str(exc)}, status=400)
except Exception as exc:
self._logger.error(
"Error starting directory import: %s", exc, exc_info=True
)
return web.json_response({"success": False, "error": str(exc)}, status=500)
async def get_batch_import_progress(self, request: web.Request) -> web.Response:
try:
operation_id = request.query.get("operation_id")
if not operation_id:
return web.json_response(
{"success": False, "error": "operation_id is required"},
status=400,
)
progress = self._batch_import_service.get_progress(operation_id)
if not progress:
return web.json_response(
{"success": False, "error": "Operation not found"},
status=404,
)
return web.json_response(
{
"success": True,
"progress": progress.to_dict(),
}
)
except Exception as exc:
self._logger.error(
"Error getting batch import progress: %s", exc, exc_info=True
)
return web.json_response({"success": False, "error": str(exc)}, status=500)
async def cancel_batch_import(self, request: web.Request) -> web.Response:
try:
data = await request.json()
operation_id = data.get("operation_id")
if not operation_id:
return web.json_response(
{"success": False, "error": "operation_id is required"},
status=400,
)
cancelled = self._batch_import_service.cancel_import(operation_id)
if not cancelled:
return web.json_response(
{
"success": False,
"error": "Operation not found or already completed",
},
status=404,
)
return web.json_response(
{"success": True, "message": "Cancellation requested"}
)
except Exception as exc:
self._logger.error("Error cancelling batch import: %s", exc, exc_info=True)
return web.json_response({"success": False, "error": str(exc)}, status=500)
async def browse_directory(self, request: web.Request) -> web.Response:
"""Browse a directory and return its contents (subdirectories and files)."""
try:
data = await request.json()
directory_path = data.get("path", "")
if not directory_path:
return web.json_response(
{"success": False, "error": "Directory path is required"},
status=400,
)
# Normalize the path
path = Path(directory_path).expanduser().resolve()
# Security check: ensure path is within allowed directories
# Allow common image/model directories
allowed_roots = [
Path.home(),
Path("/"), # Allow browsing from root for flexibility
]
# Check if path is within any allowed root
is_allowed = False
for root in allowed_roots:
try:
path.relative_to(root)
is_allowed = True
break
except ValueError:
continue
if not is_allowed:
return web.json_response(
{"success": False, "error": "Access denied to this directory"},
status=403,
)
if not path.exists():
return web.json_response(
{"success": False, "error": "Directory does not exist"},
status=404,
)
if not path.is_dir():
return web.json_response(
{"success": False, "error": "Path is not a directory"},
status=400,
)
# List directory contents
directories = []
image_files = []
image_extensions = {
".jpg",
".jpeg",
".png",
".gif",
".webp",
".bmp",
".tiff",
".tif",
}
try:
for item in path.iterdir():
try:
if item.is_dir():
# Skip hidden directories and common system folders
if not item.name.startswith(".") and item.name not in [
"__pycache__",
"node_modules",
]:
directories.append(
{
"name": item.name,
"path": str(item),
"is_parent": False,
}
)
elif item.is_file() and item.suffix.lower() in image_extensions:
image_files.append(
{
"name": item.name,
"path": str(item),
"size": item.stat().st_size,
}
)
except (PermissionError, OSError):
# Skip files/directories we can't access
continue
# Sort directories and files alphabetically
directories.sort(key=lambda x: x["name"].lower())
image_files.sort(key=lambda x: x["name"].lower())
# Add parent directory if not at root
parent_path = path.parent
show_parent = str(path) != str(path.root)
return web.json_response(
{
"success": True,
"current_path": str(path),
"parent_path": str(parent_path) if show_parent else None,
"directories": directories,
"image_files": image_files,
"image_count": len(image_files),
"directory_count": len(directories),
}
)
except PermissionError:
return web.json_response(
{"success": False, "error": "Permission denied"},
status=403,
)
except OSError as exc:
return web.json_response(
{"success": False, "error": f"Error reading directory: {str(exc)}"},
status=500,
)
except json.JSONDecodeError:
return web.json_response(
{"success": False, "error": "Invalid JSON"},
status=400,
)
except Exception as exc:
self._logger.error("Error browsing directory: %s", exc, exc_info=True)
return web.json_response({"success": False, "error": str(exc)}, status=500)

View File

@@ -26,6 +26,7 @@ MISC_ROUTE_DEFINITIONS: tuple[RouteDefinition, ...] = (
RouteDefinition("GET", "/api/lm/settings/libraries", "get_settings_libraries"),
RouteDefinition("POST", "/api/lm/settings/libraries/activate", "activate_library"),
RouteDefinition("GET", "/api/lm/health-check", "health_check"),
RouteDefinition("GET", "/api/lm/supporters", "get_supporters"),
RouteDefinition("POST", "/api/lm/open-file-location", "open_file_location"),
RouteDefinition("POST", "/api/lm/update-usage-stats", "update_usage_stats"),
RouteDefinition("GET", "/api/lm/get-usage-stats", "get_usage_stats"),
@@ -37,12 +38,24 @@ MISC_ROUTE_DEFINITIONS: tuple[RouteDefinition, ...] = (
RouteDefinition("GET", "/api/lm/get-registry", "get_registry"),
RouteDefinition("GET", "/api/lm/check-model-exists", "check_model_exists"),
RouteDefinition("GET", "/api/lm/civitai/user-models", "get_civitai_user_models"),
RouteDefinition("POST", "/api/lm/download-metadata-archive", "download_metadata_archive"),
RouteDefinition("POST", "/api/lm/remove-metadata-archive", "remove_metadata_archive"),
RouteDefinition("GET", "/api/lm/metadata-archive-status", "get_metadata_archive_status"),
RouteDefinition("GET", "/api/lm/model-versions-status", "get_model_versions_status"),
RouteDefinition(
"POST", "/api/lm/download-metadata-archive", "download_metadata_archive"
),
RouteDefinition(
"POST", "/api/lm/remove-metadata-archive", "remove_metadata_archive"
),
RouteDefinition(
"GET", "/api/lm/metadata-archive-status", "get_metadata_archive_status"
),
RouteDefinition(
"GET", "/api/lm/model-versions-status", "get_model_versions_status"
),
RouteDefinition("POST", "/api/lm/settings/open-location", "open_settings_location"),
RouteDefinition("GET", "/api/lm/custom-words/search", "search_custom_words"),
RouteDefinition("GET", "/api/lm/example-workflows", "get_example_workflows"),
RouteDefinition(
"GET", "/api/lm/example-workflows/{filename}", "get_example_workflow"
),
)
@@ -66,7 +79,11 @@ class MiscRouteRegistrar:
definitions: Iterable[RouteDefinition] = MISC_ROUTE_DEFINITIONS,
) -> None:
for definition in definitions:
self._bind(definition.method, definition.path, handler_lookup[definition.handler_name])
self._bind(
definition.method,
definition.path,
handler_lookup[definition.handler_name],
)
def _bind(self, method: str, path: str, handler: Callable) -> None:
add_method_name = self._METHOD_MAP[method.upper()]

View File

@@ -19,6 +19,7 @@ from ..services.downloader import get_downloader
from ..utils.usage_stats import UsageStats
from .handlers.misc_handlers import (
CustomWordsHandler,
ExampleWorkflowsHandler,
FileSystemHandler,
HealthCheckHandler,
LoraCodeHandler,
@@ -29,6 +30,7 @@ from .handlers.misc_handlers import (
NodeRegistry,
NodeRegistryHandler,
SettingsHandler,
SupportersHandler,
TrainedWordsHandler,
UsageStatsHandler,
build_service_registry_adapter,
@@ -37,9 +39,10 @@ from .misc_route_registrar import MiscRouteRegistrar
logger = logging.getLogger(__name__)
standalone_mode = os.environ.get("LORA_MANAGER_STANDALONE", "0") == "1" or os.environ.get(
"HF_HUB_DISABLE_TELEMETRY", "0"
) == "0"
standalone_mode = (
os.environ.get("LORA_MANAGER_STANDALONE", "0") == "1"
or os.environ.get("HF_HUB_DISABLE_TELEMETRY", "0") == "0"
)
class MiscRoutes:
@@ -74,7 +77,9 @@ class MiscRoutes:
self._node_registry = node_registry or NodeRegistry()
self._standalone_mode = standalone_mode_flag
self._handler_mapping: Mapping[str, Callable[[web.Request], Awaitable[web.StreamResponse]]] | None = None
self._handler_mapping: (
Mapping[str, Callable[[web.Request], Awaitable[web.StreamResponse]]] | None
) = None
@staticmethod
def setup_routes(app: web.Application) -> None:
@@ -86,7 +91,9 @@ class MiscRoutes:
registrar = self._registrar_factory(app)
registrar.register_routes(self._ensure_handler_mapping())
def _ensure_handler_mapping(self) -> Mapping[str, Callable[[web.Request], Awaitable[web.StreamResponse]]]:
def _ensure_handler_mapping(
self,
) -> Mapping[str, Callable[[web.Request], Awaitable[web.StreamResponse]]]:
if self._handler_mapping is None:
handler_set = self._create_handler_set()
self._handler_mapping = handler_set.to_route_mapping()
@@ -119,6 +126,8 @@ class MiscRoutes:
metadata_provider_factory=self._metadata_provider_factory,
)
custom_words = CustomWordsHandler()
supporters = SupportersHandler()
example_workflows = ExampleWorkflowsHandler()
return self._handler_set_factory(
health=health,
@@ -132,6 +141,8 @@ class MiscRoutes:
metadata_archive=metadata_archive,
filesystem=filesystem,
custom_words=custom_words,
supporters=supporters,
example_workflows=example_workflows,
)

View File

@@ -1,4 +1,5 @@
"""Route registrar for model endpoints."""
from __future__ import annotations
from dataclasses import dataclass
@@ -27,6 +28,9 @@ COMMON_ROUTE_DEFINITIONS: tuple[RouteDefinition, ...] = (
RouteDefinition("POST", "/api/lm/{prefix}/fetch-all-civitai", "fetch_all_civitai"),
RouteDefinition("POST", "/api/lm/{prefix}/relink-civitai", "relink_civitai"),
RouteDefinition("POST", "/api/lm/{prefix}/replace-preview", "replace_preview"),
RouteDefinition(
"POST", "/api/lm/{prefix}/set-preview-from-url", "set_preview_from_url"
),
RouteDefinition("POST", "/api/lm/{prefix}/save-metadata", "save_metadata"),
RouteDefinition("POST", "/api/lm/{prefix}/add-tags", "add_tags"),
RouteDefinition("POST", "/api/lm/{prefix}/rename", "rename_model"),
@@ -36,7 +40,9 @@ COMMON_ROUTE_DEFINITIONS: tuple[RouteDefinition, ...] = (
RouteDefinition("POST", "/api/lm/{prefix}/move_models_bulk", "move_models_bulk"),
RouteDefinition("GET", "/api/lm/{prefix}/auto-organize", "auto_organize_models"),
RouteDefinition("POST", "/api/lm/{prefix}/auto-organize", "auto_organize_models"),
RouteDefinition("GET", "/api/lm/{prefix}/auto-organize-progress", "get_auto_organize_progress"),
RouteDefinition(
"GET", "/api/lm/{prefix}/auto-organize-progress", "get_auto_organize_progress"
),
RouteDefinition("GET", "/api/lm/{prefix}/top-tags", "get_top_tags"),
RouteDefinition("GET", "/api/lm/{prefix}/base-models", "get_base_models"),
RouteDefinition("GET", "/api/lm/{prefix}/model-types", "get_model_types"),
@@ -44,30 +50,60 @@ COMMON_ROUTE_DEFINITIONS: tuple[RouteDefinition, ...] = (
RouteDefinition("GET", "/api/lm/{prefix}/roots", "get_model_roots"),
RouteDefinition("GET", "/api/lm/{prefix}/folders", "get_folders"),
RouteDefinition("GET", "/api/lm/{prefix}/folder-tree", "get_folder_tree"),
RouteDefinition("GET", "/api/lm/{prefix}/unified-folder-tree", "get_unified_folder_tree"),
RouteDefinition(
"GET", "/api/lm/{prefix}/unified-folder-tree", "get_unified_folder_tree"
),
RouteDefinition("GET", "/api/lm/{prefix}/find-duplicates", "find_duplicate_models"),
RouteDefinition("GET", "/api/lm/{prefix}/find-filename-conflicts", "find_filename_conflicts"),
RouteDefinition(
"GET", "/api/lm/{prefix}/find-filename-conflicts", "find_filename_conflicts"
),
RouteDefinition("GET", "/api/lm/{prefix}/get-notes", "get_model_notes"),
RouteDefinition("GET", "/api/lm/{prefix}/preview-url", "get_model_preview_url"),
RouteDefinition("GET", "/api/lm/{prefix}/civitai-url", "get_model_civitai_url"),
RouteDefinition("GET", "/api/lm/{prefix}/metadata", "get_model_metadata"),
RouteDefinition("GET", "/api/lm/{prefix}/model-description", "get_model_description"),
RouteDefinition(
"GET", "/api/lm/{prefix}/model-description", "get_model_description"
),
RouteDefinition("GET", "/api/lm/{prefix}/relative-paths", "get_relative_paths"),
RouteDefinition("GET", "/api/lm/{prefix}/civitai/versions/{model_id}", "get_civitai_versions"),
RouteDefinition("GET", "/api/lm/{prefix}/civitai/model/version/{modelVersionId}", "get_civitai_model_by_version"),
RouteDefinition("GET", "/api/lm/{prefix}/civitai/model/hash/{hash}", "get_civitai_model_by_hash"),
RouteDefinition("POST", "/api/lm/{prefix}/updates/refresh", "refresh_model_updates"),
RouteDefinition("POST", "/api/lm/{prefix}/updates/fetch-missing-license", "fetch_missing_civitai_license_data"),
RouteDefinition("POST", "/api/lm/{prefix}/updates/ignore", "set_model_update_ignore"),
RouteDefinition("POST", "/api/lm/{prefix}/updates/ignore-version", "set_version_update_ignore"),
RouteDefinition("GET", "/api/lm/{prefix}/updates/status/{model_id}", "get_model_update_status"),
RouteDefinition("GET", "/api/lm/{prefix}/updates/versions/{model_id}", "get_model_versions"),
RouteDefinition(
"GET", "/api/lm/{prefix}/civitai/versions/{model_id}", "get_civitai_versions"
),
RouteDefinition(
"GET",
"/api/lm/{prefix}/civitai/model/version/{modelVersionId}",
"get_civitai_model_by_version",
),
RouteDefinition(
"GET", "/api/lm/{prefix}/civitai/model/hash/{hash}", "get_civitai_model_by_hash"
),
RouteDefinition(
"POST", "/api/lm/{prefix}/updates/refresh", "refresh_model_updates"
),
RouteDefinition(
"POST",
"/api/lm/{prefix}/updates/fetch-missing-license",
"fetch_missing_civitai_license_data",
),
RouteDefinition(
"POST", "/api/lm/{prefix}/updates/ignore", "set_model_update_ignore"
),
RouteDefinition(
"POST", "/api/lm/{prefix}/updates/ignore-version", "set_version_update_ignore"
),
RouteDefinition(
"GET", "/api/lm/{prefix}/updates/status/{model_id}", "get_model_update_status"
),
RouteDefinition(
"GET", "/api/lm/{prefix}/updates/versions/{model_id}", "get_model_versions"
),
RouteDefinition("POST", "/api/lm/download-model", "download_model"),
RouteDefinition("GET", "/api/lm/download-model-get", "download_model_get"),
RouteDefinition("GET", "/api/lm/cancel-download-get", "cancel_download_get"),
RouteDefinition("GET", "/api/lm/pause-download", "pause_download_get"),
RouteDefinition("GET", "/api/lm/resume-download", "resume_download_get"),
RouteDefinition("GET", "/api/lm/download-progress/{download_id}", "get_download_progress"),
RouteDefinition(
"GET", "/api/lm/download-progress/{download_id}", "get_download_progress"
),
RouteDefinition("POST", "/api/lm/{prefix}/cancel-task", "cancel_task"),
RouteDefinition("GET", "/{prefix}", "handle_models_page"),
)
@@ -94,12 +130,18 @@ class ModelRouteRegistrar:
definitions: Iterable[RouteDefinition] = COMMON_ROUTE_DEFINITIONS,
) -> None:
for definition in definitions:
self._bind_route(definition.method, definition.build_path(prefix), handler_lookup[definition.handler_name])
self._bind_route(
definition.method,
definition.build_path(prefix),
handler_lookup[definition.handler_name],
)
def add_route(self, method: str, path: str, handler: Callable) -> None:
self._bind_route(method, path, handler)
def add_prefixed_route(self, method: str, path_template: str, prefix: str, handler: Callable) -> None:
def add_prefixed_route(
self, method: str, path_template: str, prefix: str, handler: Callable
) -> None:
self._bind_route(method, path_template.replace("{prefix}", prefix), handler)
def _bind_route(self, method: str, path: str, handler: Callable) -> None:

View File

@@ -1,4 +1,5 @@
"""Route registrar for recipe endpoints."""
from __future__ import annotations
from dataclasses import dataclass
@@ -22,7 +23,9 @@ ROUTE_DEFINITIONS: tuple[RouteDefinition, ...] = (
RouteDefinition("GET", "/api/lm/recipe/{recipe_id}", "get_recipe"),
RouteDefinition("GET", "/api/lm/recipes/import-remote", "import_remote_recipe"),
RouteDefinition("POST", "/api/lm/recipes/analyze-image", "analyze_uploaded_image"),
RouteDefinition("POST", "/api/lm/recipes/analyze-local-image", "analyze_local_image"),
RouteDefinition(
"POST", "/api/lm/recipes/analyze-local-image", "analyze_local_image"
),
RouteDefinition("POST", "/api/lm/recipes/save", "save_recipe"),
RouteDefinition("DELETE", "/api/lm/recipe/{recipe_id}", "delete_recipe"),
RouteDefinition("GET", "/api/lm/recipes/top-tags", "get_top_tags"),
@@ -30,9 +33,13 @@ ROUTE_DEFINITIONS: tuple[RouteDefinition, ...] = (
RouteDefinition("GET", "/api/lm/recipes/roots", "get_roots"),
RouteDefinition("GET", "/api/lm/recipes/folders", "get_folders"),
RouteDefinition("GET", "/api/lm/recipes/folder-tree", "get_folder_tree"),
RouteDefinition("GET", "/api/lm/recipes/unified-folder-tree", "get_unified_folder_tree"),
RouteDefinition(
"GET", "/api/lm/recipes/unified-folder-tree", "get_unified_folder_tree"
),
RouteDefinition("GET", "/api/lm/recipe/{recipe_id}/share", "share_recipe"),
RouteDefinition("GET", "/api/lm/recipe/{recipe_id}/share/download", "download_shared_recipe"),
RouteDefinition(
"GET", "/api/lm/recipe/{recipe_id}/share/download", "download_shared_recipe"
),
RouteDefinition("GET", "/api/lm/recipe/{recipe_id}/syntax", "get_recipe_syntax"),
RouteDefinition("PUT", "/api/lm/recipe/{recipe_id}/update", "update_recipe"),
RouteDefinition("POST", "/api/lm/recipe/move", "move_recipe"),
@@ -40,13 +47,26 @@ ROUTE_DEFINITIONS: tuple[RouteDefinition, ...] = (
RouteDefinition("POST", "/api/lm/recipe/lora/reconnect", "reconnect_lora"),
RouteDefinition("GET", "/api/lm/recipes/find-duplicates", "find_duplicates"),
RouteDefinition("POST", "/api/lm/recipes/bulk-delete", "bulk_delete"),
RouteDefinition("POST", "/api/lm/recipes/save-from-widget", "save_recipe_from_widget"),
RouteDefinition(
"POST", "/api/lm/recipes/save-from-widget", "save_recipe_from_widget"
),
RouteDefinition("GET", "/api/lm/recipes/for-lora", "get_recipes_for_lora"),
RouteDefinition("GET", "/api/lm/recipes/scan", "scan_recipes"),
RouteDefinition("POST", "/api/lm/recipes/repair", "repair_recipes"),
RouteDefinition("POST", "/api/lm/recipes/cancel-repair", "cancel_repair"),
RouteDefinition("POST", "/api/lm/recipe/{recipe_id}/repair", "repair_recipe"),
RouteDefinition("GET", "/api/lm/recipes/repair-progress", "get_repair_progress"),
RouteDefinition("POST", "/api/lm/recipes/batch-import/start", "start_batch_import"),
RouteDefinition(
"GET", "/api/lm/recipes/batch-import/progress", "get_batch_import_progress"
),
RouteDefinition(
"POST", "/api/lm/recipes/batch-import/cancel", "cancel_batch_import"
),
RouteDefinition(
"POST", "/api/lm/recipes/batch-import/directory", "start_directory_import"
),
RouteDefinition("POST", "/api/lm/recipes/browse-directory", "browse_directory"),
)
@@ -63,7 +83,9 @@ class RecipeRouteRegistrar:
def __init__(self, app: web.Application) -> None:
self._app = app
def register_routes(self, handler_lookup: Mapping[str, Callable[[web.Request], object]]) -> None:
def register_routes(
self, handler_lookup: Mapping[str, Callable[[web.Request], object]]
) -> None:
for definition in ROUTE_DEFINITIONS:
handler = handler_lookup[definition.handler_name]
self._bind_route(definition.method, definition.path, handler)

View File

@@ -209,6 +209,80 @@ class StatsRoutes:
'error': str(e)
}, status=500)
async def get_model_usage_list(self, request: web.Request) -> web.Response:
"""Get paginated model usage list for infinite scrolling"""
try:
await self.init_services()
model_type = request.query.get('type', 'lora')
sort_order = request.query.get('sort', 'desc')
try:
limit = int(request.query.get('limit', '50'))
offset = int(request.query.get('offset', '0'))
except ValueError:
limit = 50
offset = 0
# Get usage statistics
usage_data = await self.usage_stats.get_stats()
# Select proper cache and usage dict based on type
if model_type == 'lora':
cache = await self.lora_scanner.get_cached_data()
type_usage_data = usage_data.get('loras', {})
elif model_type == 'checkpoint':
cache = await self.checkpoint_scanner.get_cached_data()
type_usage_data = usage_data.get('checkpoints', {})
elif model_type == 'embedding':
cache = await self.embedding_scanner.get_cached_data()
type_usage_data = usage_data.get('embeddings', {})
else:
return web.json_response({'success': False, 'error': f"Invalid model type: {model_type}"}, status=400)
# Create list of all models
all_models = []
for item in cache.raw_data:
sha256 = item.get('sha256')
usage_info = type_usage_data.get(sha256, {}) if sha256 else {}
usage_count = usage_info.get('total', 0) if isinstance(usage_info, dict) else 0
all_models.append({
'name': item.get('model_name', 'Unknown'),
'usage_count': usage_count,
'base_model': item.get('base_model', 'Unknown'),
'preview_url': config.get_preview_static_url(item.get('preview_url', '')),
'folder': item.get('folder', '')
})
# Sort the models
reverse = (sort_order == 'desc')
all_models.sort(key=lambda x: (x['usage_count'], x['name'].lower()), reverse=reverse)
if not reverse:
# If asc, sort by usage_count ascending, but keep name ascending
all_models.sort(key=lambda x: (x['usage_count'], x['name'].lower()))
else:
all_models.sort(key=lambda x: (-x['usage_count'], x['name'].lower()))
# Slice for pagination
paginated_models = all_models[offset:offset + limit]
return web.json_response({
'success': True,
'data': {
'items': paginated_models,
'total': len(all_models),
'type': model_type
}
})
except Exception as e:
logger.error(f"Error getting model usage list: {e}", exc_info=True)
return web.json_response({
'success': False,
'error': str(e)
}, status=500)
async def get_base_model_distribution(self, request: web.Request) -> web.Response:
"""Get base model distribution statistics"""
try:
@@ -530,6 +604,7 @@ class StatsRoutes:
# Register API routes
app.router.add_get('/api/lm/stats/collection-overview', self.get_collection_overview)
app.router.add_get('/api/lm/stats/usage-analytics', self.get_usage_analytics)
app.router.add_get('/api/lm/stats/model-usage-list', self.get_model_usage_list)
app.router.add_get('/api/lm/stats/base-model-distribution', self.get_base_model_distribution)
app.router.add_get('/api/lm/stats/tag-analytics', self.get_tag_analytics)
app.router.add_get('/api/lm/stats/storage-analytics', self.get_storage_analytics)

View File

@@ -1,5 +1,6 @@
from abc import ABC, abstractmethod
import asyncio
import re
from typing import Any, Dict, List, Optional, Type, TYPE_CHECKING
import logging
import os
@@ -207,7 +208,11 @@ class BaseModelService(ABC):
reverse = sort_params.order == "desc"
annotated.sort(
key=lambda x: (x.get("usage_count", 0), x.get("model_name", "").lower()),
key=lambda x: (
x.get("usage_count", 0),
x.get("model_name", "").lower(),
x.get("file_path", "").lower()
),
reverse=reverse,
)
return annotated
@@ -383,7 +388,9 @@ class BaseModelService(ABC):
# Check user setting for hiding early access updates
hide_early_access = False
try:
hide_early_access = bool(self.settings.get("hide_early_access_updates", False))
hide_early_access = bool(
self.settings.get("hide_early_access_updates", False)
)
except Exception:
hide_early_access = False
@@ -413,7 +420,11 @@ class BaseModelService(ABC):
bulk_method = getattr(self.update_service, "has_updates_bulk", None)
if callable(bulk_method):
try:
resolved = await bulk_method(self.model_type, ordered_ids, hide_early_access=hide_early_access)
resolved = await bulk_method(
self.model_type,
ordered_ids,
hide_early_access=hide_early_access,
)
except Exception as exc:
logger.error(
"Failed to resolve update status in bulk for %s models (%s): %s",
@@ -426,7 +437,9 @@ class BaseModelService(ABC):
if resolved is None:
tasks = [
self.update_service.has_update(self.model_type, model_id, hide_early_access=hide_early_access)
self.update_service.has_update(
self.model_type, model_id, hide_early_access=hide_early_access
)
for model_id in ordered_ids
]
results = await asyncio.gather(*tasks, return_exceptions=True)
@@ -590,9 +603,15 @@ class BaseModelService(ABC):
continue
# Filter by valid sub-types based on scanner type
if self.model_type == "lora" and normalized_type not in VALID_LORA_SUB_TYPES:
if (
self.model_type == "lora"
and normalized_type not in VALID_LORA_SUB_TYPES
):
continue
if self.model_type == "checkpoint" and normalized_type not in VALID_CHECKPOINT_SUB_TYPES:
if (
self.model_type == "checkpoint"
and normalized_type not in VALID_CHECKPOINT_SUB_TYPES
):
continue
type_counts[normalized_type] = type_counts.get(normalized_type, 0) + 1
@@ -807,38 +826,61 @@ class BaseModelService(ABC):
return include_terms, exclude_terms
@staticmethod
def _remove_model_extension(path: str) -> str:
"""Remove model file extension (.safetensors, .ckpt, .pt, .bin) for cleaner matching."""
return re.sub(r"\.(safetensors|ckpt|pt|bin)$", "", path, flags=re.IGNORECASE)
@staticmethod
def _relative_path_matches_tokens(
path_lower: str, include_terms: List[str], exclude_terms: List[str]
) -> bool:
"""Determine whether a relative path string satisfies include/exclude tokens."""
if any(term and term in path_lower for term in exclude_terms):
"""Determine whether a relative path string satisfies include/exclude tokens.
Matches against the path without extension to avoid matching .safetensors
when searching for 's'.
"""
# Use path without extension for matching
path_for_matching = BaseModelService._remove_model_extension(path_lower)
if any(term and term in path_for_matching for term in exclude_terms):
return False
for term in include_terms:
if term and term not in path_lower:
if term and term not in path_for_matching:
return False
return True
@staticmethod
def _relative_path_sort_key(relative_path: str, include_terms: List[str]) -> tuple:
"""Sort paths by how well they satisfy the include tokens."""
path_lower = relative_path.lower()
"""Sort paths by how well they satisfy the include tokens.
Sorts based on path without extension for consistent ordering.
"""
# Use path without extension for sorting
path_for_sorting = BaseModelService._remove_model_extension(
relative_path.lower()
)
prefix_hits = sum(
1 for term in include_terms if term and path_lower.startswith(term)
1 for term in include_terms if term and path_for_sorting.startswith(term)
)
match_positions = [
path_lower.find(term)
path_for_sorting.find(term)
for term in include_terms
if term and term in path_lower
if term and term in path_for_sorting
]
first_match_index = min(match_positions) if match_positions else 0
return (-prefix_hits, first_match_index, len(relative_path), path_lower)
return (
-prefix_hits,
first_match_index,
len(path_for_sorting),
path_for_sorting,
)
async def search_relative_paths(
self, search_term: str, limit: int = 15
self, search_term: str, limit: int = 15, offset: int = 0
) -> List[str]:
"""Search model relative file paths for autocomplete functionality"""
cache = await self.scanner.get_cached_data()
@@ -849,6 +891,7 @@ class BaseModelService(ABC):
# Get model roots for path calculation
model_roots = self.scanner.get_model_roots()
# Collect all matching paths first (needed for proper sorting and offset)
for model in cache.raw_data:
file_path = model.get("file_path", "")
if not file_path:
@@ -877,12 +920,12 @@ class BaseModelService(ABC):
):
matching_paths.append(relative_path)
if len(matching_paths) >= limit * 2: # Get more for better sorting
break
# Sort by relevance (prefix and earliest hits first, then by length and alphabetically)
matching_paths.sort(
key=lambda relative: self._relative_path_sort_key(relative, include_terms)
)
return matching_paths[:limit]
# Apply offset and limit
start = min(offset, len(matching_paths))
end = min(start + limit, len(matching_paths))
return matching_paths[start:end]

View File

@@ -0,0 +1,593 @@
"""Batch import service for importing multiple images as recipes."""
from __future__ import annotations
import asyncio
import logging
import os
import time
import uuid
from dataclasses import dataclass, field
from enum import Enum
from typing import Any, Callable, Dict, List, Optional, Set
from aiohttp import web
from .recipes import (
RecipeAnalysisService,
RecipePersistenceService,
RecipeValidationError,
RecipeDownloadError,
RecipeNotFoundError,
)
class ImportItemType(Enum):
"""Type of import item."""
URL = "url"
LOCAL_PATH = "local_path"
class ImportStatus(Enum):
"""Status of an individual import item."""
PENDING = "pending"
PROCESSING = "processing"
SUCCESS = "success"
FAILED = "failed"
SKIPPED = "skipped"
@dataclass
class BatchImportItem:
"""Represents a single item to import."""
id: str
source: str
item_type: ImportItemType
status: ImportStatus = ImportStatus.PENDING
error_message: Optional[str] = None
recipe_name: Optional[str] = None
recipe_id: Optional[str] = None
duration: float = 0.0
@dataclass
class BatchImportProgress:
"""Tracks progress of a batch import operation."""
operation_id: str
total: int
completed: int = 0
success: int = 0
failed: int = 0
skipped: int = 0
current_item: str = ""
status: str = "pending"
started_at: float = field(default_factory=time.time)
finished_at: Optional[float] = None
items: List[BatchImportItem] = field(default_factory=list)
tags: List[str] = field(default_factory=list)
skip_no_metadata: bool = False
skip_duplicates: bool = False
def to_dict(self) -> Dict[str, Any]:
return {
"operation_id": self.operation_id,
"total": self.total,
"completed": self.completed,
"success": self.success,
"failed": self.failed,
"skipped": self.skipped,
"current_item": self.current_item,
"status": self.status,
"started_at": self.started_at,
"finished_at": self.finished_at,
"progress_percent": round((self.completed / self.total) * 100, 1)
if self.total > 0
else 0,
"items": [
{
"id": item.id,
"source": item.source,
"item_type": item.item_type.value,
"status": item.status.value,
"error_message": item.error_message,
"recipe_name": item.recipe_name,
"recipe_id": item.recipe_id,
"duration": item.duration,
}
for item in self.items
],
}
class AdaptiveConcurrencyController:
"""Adjusts concurrency based on task performance."""
def __init__(
self,
min_concurrency: int = 1,
max_concurrency: int = 5,
initial_concurrency: int = 3,
) -> None:
self.min_concurrency = min_concurrency
self.max_concurrency = max_concurrency
self.current_concurrency = initial_concurrency
self._task_durations: List[float] = []
self._recent_errors = 0
self._recent_successes = 0
def record_result(self, duration: float, success: bool) -> None:
self._task_durations.append(duration)
if len(self._task_durations) > 10:
self._task_durations.pop(0)
if success:
self._recent_successes += 1
if duration < 1.0 and self.current_concurrency < self.max_concurrency:
self.current_concurrency = min(
self.current_concurrency + 1, self.max_concurrency
)
elif duration > 10.0 and self.current_concurrency > self.min_concurrency:
self.current_concurrency = max(
self.current_concurrency - 1, self.min_concurrency
)
else:
self._recent_errors += 1
if self.current_concurrency > self.min_concurrency:
self.current_concurrency = max(
self.current_concurrency - 1, self.min_concurrency
)
def reset_counters(self) -> None:
self._recent_errors = 0
self._recent_successes = 0
def get_semaphore(self) -> asyncio.Semaphore:
return asyncio.Semaphore(self.current_concurrency)
class BatchImportService:
"""Service for batch importing images as recipes."""
SUPPORTED_EXTENSIONS: Set[str] = {".jpg", ".jpeg", ".png", ".webp", ".gif", ".bmp"}
def __init__(
self,
*,
analysis_service: RecipeAnalysisService,
persistence_service: RecipePersistenceService,
ws_manager: Any,
logger: logging.Logger,
) -> None:
self._analysis_service = analysis_service
self._persistence_service = persistence_service
self._ws_manager = ws_manager
self._logger = logger
self._active_operations: Dict[str, BatchImportProgress] = {}
self._cancellation_flags: Dict[str, bool] = {}
self._concurrency_controller = AdaptiveConcurrencyController()
def is_import_running(self, operation_id: Optional[str] = None) -> bool:
if operation_id:
progress = self._active_operations.get(operation_id)
return progress is not None and progress.status in ("pending", "running")
return any(
p.status in ("pending", "running") for p in self._active_operations.values()
)
def get_progress(self, operation_id: str) -> Optional[BatchImportProgress]:
return self._active_operations.get(operation_id)
def cancel_import(self, operation_id: str) -> bool:
if operation_id in self._active_operations:
self._cancellation_flags[operation_id] = True
return True
return False
def _validate_url(self, url: str) -> bool:
import re
url_pattern = re.compile(
r"^https?://"
r"(?:(?:[A-Z0-9](?:[A-Z0-9-]{0,61}[A-Z0-9])?\.)+[A-Z]{2,6}\.?|"
r"localhost|"
r"\d{1,3}\.\d{1,3}\.\d{1,3}\.\d{1,3})"
r"(?::\d+)?"
r"(?:/?|[/?]\S+)$",
re.IGNORECASE,
)
return url_pattern.match(url) is not None
def _validate_local_path(self, path: str) -> bool:
try:
normalized = os.path.normpath(path)
if not os.path.isabs(normalized):
return False
if ".." in normalized:
return False
return True
except Exception:
return False
def _is_duplicate_source(
self,
source: str,
item_type: ImportItemType,
recipe_scanner: Any,
) -> bool:
try:
cache = recipe_scanner.get_cached_data_sync()
if not cache:
return False
for recipe in getattr(cache, "raw_data", []):
source_path = recipe.get("source_path") or recipe.get("source_url")
if source_path and source_path == source:
return True
return False
except Exception:
self._logger.warning("Failed to check for duplicates", exc_info=True)
return False
async def start_batch_import(
self,
*,
recipe_scanner_getter: Callable[[], Any],
civitai_client_getter: Callable[[], Any],
items: List[Dict[str, str]],
tags: Optional[List[str]] = None,
skip_no_metadata: bool = False,
skip_duplicates: bool = False,
) -> str:
operation_id = str(uuid.uuid4())
import_items = []
for idx, item in enumerate(items):
source = item.get("source", "")
item_type_str = item.get("type", "url")
if item_type_str == "url" or source.startswith(("http://", "https://")):
item_type = ImportItemType.URL
else:
item_type = ImportItemType.LOCAL_PATH
batch_import_item = BatchImportItem(
id=f"{operation_id}_{idx}",
source=source,
item_type=item_type,
)
import_items.append(batch_import_item)
progress = BatchImportProgress(
operation_id=operation_id,
total=len(import_items),
items=import_items,
tags=tags or [],
skip_no_metadata=skip_no_metadata,
skip_duplicates=skip_duplicates,
)
self._active_operations[operation_id] = progress
self._cancellation_flags[operation_id] = False
asyncio.create_task(
self._run_batch_import(
operation_id=operation_id,
recipe_scanner_getter=recipe_scanner_getter,
civitai_client_getter=civitai_client_getter,
)
)
return operation_id
async def start_directory_import(
self,
*,
recipe_scanner_getter: Callable[[], Any],
civitai_client_getter: Callable[[], Any],
directory: str,
recursive: bool = True,
tags: Optional[List[str]] = None,
skip_no_metadata: bool = False,
skip_duplicates: bool = False,
) -> str:
image_paths = await self._discover_images(directory, recursive)
items = [{"source": path, "type": "local_path"} for path in image_paths]
return await self.start_batch_import(
recipe_scanner_getter=recipe_scanner_getter,
civitai_client_getter=civitai_client_getter,
items=items,
tags=tags,
skip_no_metadata=skip_no_metadata,
skip_duplicates=skip_duplicates,
)
async def _discover_images(
self,
directory: str,
recursive: bool = True,
) -> List[str]:
if not os.path.isdir(directory):
raise RecipeValidationError(f"Directory not found: {directory}")
image_paths: List[str] = []
if recursive:
for root, _, files in os.walk(directory):
for filename in files:
if self._is_supported_image(filename):
image_paths.append(os.path.join(root, filename))
else:
for filename in os.listdir(directory):
filepath = os.path.join(directory, filename)
if os.path.isfile(filepath) and self._is_supported_image(filename):
image_paths.append(filepath)
return sorted(image_paths)
def _is_supported_image(self, filename: str) -> bool:
ext = os.path.splitext(filename)[1].lower()
return ext in self.SUPPORTED_EXTENSIONS
async def _run_batch_import(
self,
*,
operation_id: str,
recipe_scanner_getter: Callable[[], Any],
civitai_client_getter: Callable[[], Any],
) -> None:
progress = self._active_operations.get(operation_id)
if not progress:
return
progress.status = "running"
await self._broadcast_progress(progress)
self._concurrency_controller = AdaptiveConcurrencyController()
async def process_item(item: BatchImportItem) -> None:
if self._cancellation_flags.get(operation_id, False):
return
progress.current_item = (
os.path.basename(item.source)
if item.item_type == ImportItemType.LOCAL_PATH
else item.source[:50]
)
item.status = ImportStatus.PROCESSING
await self._broadcast_progress(progress)
start_time = time.time()
try:
result = await self._import_single_item(
item=item,
recipe_scanner_getter=recipe_scanner_getter,
civitai_client_getter=civitai_client_getter,
tags=progress.tags,
skip_no_metadata=progress.skip_no_metadata,
skip_duplicates=progress.skip_duplicates,
semaphore=self._concurrency_controller.get_semaphore(),
)
duration = time.time() - start_time
item.duration = duration
self._concurrency_controller.record_result(
duration, result.get("success", False)
)
if result.get("success"):
item.status = ImportStatus.SUCCESS
item.recipe_name = result.get("recipe_name")
item.recipe_id = result.get("recipe_id")
progress.success += 1
elif result.get("skipped"):
item.status = ImportStatus.SKIPPED
item.error_message = result.get("error")
progress.skipped += 1
else:
item.status = ImportStatus.FAILED
item.error_message = result.get("error")
progress.failed += 1
except Exception as e:
self._logger.error(f"Error importing {item.source}: {e}")
item.status = ImportStatus.FAILED
item.error_message = str(e)
item.duration = time.time() - start_time
progress.failed += 1
self._concurrency_controller.record_result(item.duration, False)
progress.completed += 1
await self._broadcast_progress(progress)
tasks = [process_item(item) for item in progress.items]
await asyncio.gather(*tasks, return_exceptions=True)
if self._cancellation_flags.get(operation_id, False):
progress.status = "cancelled"
else:
progress.status = "completed"
progress.finished_at = time.time()
progress.current_item = ""
await self._broadcast_progress(progress)
await asyncio.sleep(5)
self._cleanup_operation(operation_id)
async def _import_single_item(
self,
*,
item: BatchImportItem,
recipe_scanner_getter: Callable[[], Any],
civitai_client_getter: Callable[[], Any],
tags: List[str],
skip_no_metadata: bool,
skip_duplicates: bool,
semaphore: asyncio.Semaphore,
) -> Dict[str, Any]:
async with semaphore:
recipe_scanner = recipe_scanner_getter()
if recipe_scanner is None:
return {"success": False, "error": "Recipe scanner unavailable"}
try:
if item.item_type == ImportItemType.URL:
if not self._validate_url(item.source):
return {
"success": False,
"error": f"Invalid URL format: {item.source}",
}
if skip_duplicates:
if self._is_duplicate_source(
item.source, item.item_type, recipe_scanner
):
return {
"success": False,
"skipped": True,
"error": "Duplicate source URL",
}
civitai_client = civitai_client_getter()
analysis_result = await self._analysis_service.analyze_remote_image(
url=item.source,
recipe_scanner=recipe_scanner,
civitai_client=civitai_client,
)
else:
if not self._validate_local_path(item.source):
return {
"success": False,
"error": f"Invalid or unsafe path: {item.source}",
}
if not os.path.exists(item.source):
return {
"success": False,
"error": f"File not found: {item.source}",
}
if skip_duplicates:
if self._is_duplicate_source(
item.source, item.item_type, recipe_scanner
):
return {
"success": False,
"skipped": True,
"error": "Duplicate source path",
}
analysis_result = await self._analysis_service.analyze_local_image(
file_path=item.source,
recipe_scanner=recipe_scanner,
)
payload = analysis_result.payload
if payload.get("error"):
if skip_no_metadata and "No metadata" in payload.get("error", ""):
return {
"success": False,
"skipped": True,
"error": payload["error"],
}
return {"success": False, "error": payload["error"]}
loras = payload.get("loras", [])
if not loras:
if skip_no_metadata:
return {
"success": False,
"skipped": True,
"error": "No LoRAs found in image",
}
# When skip_no_metadata is False, allow importing images without LoRAs
# Continue with empty loras list
recipe_name = self._generate_recipe_name(item, payload)
all_tags = list(set(tags + (payload.get("tags", []) or [])))
metadata = {
"base_model": payload.get("base_model", ""),
"loras": loras,
"gen_params": payload.get("gen_params", {}),
"source_path": item.source,
}
if payload.get("checkpoint"):
metadata["checkpoint"] = payload["checkpoint"]
image_bytes = None
image_base64 = payload.get("image_base64")
if item.item_type == ImportItemType.LOCAL_PATH:
with open(item.source, "rb") as f:
image_bytes = f.read()
image_base64 = None
save_result = await self._persistence_service.save_recipe(
recipe_scanner=recipe_scanner,
image_bytes=image_bytes,
image_base64=image_base64,
name=recipe_name,
tags=all_tags,
metadata=metadata,
extension=payload.get("extension"),
)
if save_result.status == 200:
return {
"success": True,
"recipe_name": recipe_name,
"recipe_id": save_result.payload.get("id"),
}
else:
return {
"success": False,
"error": save_result.payload.get(
"error", "Failed to save recipe"
),
}
except RecipeValidationError as e:
return {"success": False, "error": str(e)}
except RecipeDownloadError as e:
return {"success": False, "error": str(e)}
except RecipeNotFoundError as e:
return {"success": False, "skipped": True, "error": str(e)}
except Exception as e:
self._logger.error(
f"Unexpected error importing {item.source}: {e}", exc_info=True
)
return {"success": False, "error": str(e)}
def _generate_recipe_name(
self, item: BatchImportItem, payload: Dict[str, Any]
) -> str:
if item.item_type == ImportItemType.LOCAL_PATH:
base_name = os.path.splitext(os.path.basename(item.source))[0]
return base_name[:100]
else:
loras = payload.get("loras", [])
if loras:
first_lora = loras[0].get("name", "Recipe")
return f"Import - {first_lora}"[:100]
return f"Imported Recipe {item.id[:8]}"
async def _broadcast_progress(self, progress: BatchImportProgress) -> None:
await self._ws_manager.broadcast(
{
"type": "batch_import_progress",
**progress.to_dict(),
}
)
def _cleanup_operation(self, operation_id: str) -> None:
if operation_id in self._cancellation_flags:
del self._cancellation_flags[operation_id]

View File

@@ -58,6 +58,7 @@ class CacheEntryValidator:
'preview_nsfw_level': (0, False),
'notes': ('', False),
'usage_tips': ('', False),
'hash_status': ('completed', False),
}
@classmethod
@@ -90,13 +91,31 @@ class CacheEntryValidator:
errors: List[str] = []
repaired = False
# If auto_repair is on, we work on a copy. If not, we still need a safe way to check fields.
working_entry = dict(entry) if auto_repair else entry
# Determine effective hash_status for validation logic
hash_status = entry.get('hash_status')
if hash_status is None:
if auto_repair:
working_entry['hash_status'] = 'completed'
repaired = True
hash_status = 'completed'
for field_name, (default_value, is_required) in cls.CORE_FIELDS.items():
value = working_entry.get(field_name)
# Get current value from the original entry to avoid side effects during validation
value = entry.get(field_name)
# Check if field is missing or None
if value is None:
# Special case: sha256 can be None/empty if hash_status is pending
if field_name == 'sha256' and hash_status == 'pending':
if auto_repair:
working_entry[field_name] = ''
repaired = True
continue
if is_required:
errors.append(f"Required field '{field_name}' is missing or None")
if auto_repair:
@@ -107,6 +126,10 @@ class CacheEntryValidator:
# Validate field type and value
field_error = cls._validate_field(field_name, value, default_value)
if field_error:
# Special case: allow empty string for sha256 if pending
if field_name == 'sha256' and hash_status == 'pending' and value == '':
continue
errors.append(field_error)
if auto_repair:
working_entry[field_name] = cls._get_default_copy(default_value)
@@ -125,23 +148,32 @@ class CacheEntryValidator:
)
# Special validation: sha256 must not be empty for required field
# BUT allow empty sha256 when hash_status is pending (lazy hash calculation)
sha256 = working_entry.get('sha256', '')
# Use the effective hash_status we determined earlier
if not sha256 or (isinstance(sha256, str) and not sha256.strip()):
errors.append("Required field 'sha256' is empty")
# Cannot repair empty sha256 - entry is invalid
return ValidationResult(
is_valid=False,
repaired=repaired,
errors=errors,
entry=working_entry if auto_repair else None
)
# Allow empty sha256 for lazy hash calculation (checkpoints)
if hash_status != 'pending':
errors.append("Required field 'sha256' is empty")
# Cannot repair empty sha256 - entry is invalid
return ValidationResult(
is_valid=False,
repaired=repaired,
errors=errors,
entry=working_entry if auto_repair else None
)
# Normalize sha256 to lowercase if needed
if isinstance(sha256, str):
normalized_sha = sha256.lower().strip()
if normalized_sha != sha256:
working_entry['sha256'] = normalized_sha
repaired = True
if auto_repair:
working_entry['sha256'] = normalized_sha
repaired = True
else:
# If not auto-repairing, we don't consider case difference as a "critical error"
# that invalidates the entry, but we also don't mark it repaired.
pass
# Determine if entry is valid
# Entry is valid if no critical required field errors remain after repair

View File

@@ -13,20 +13,33 @@ from .model_hash_index import ModelHashIndex
logger = logging.getLogger(__name__)
class CheckpointScanner(ModelScanner):
"""Service for scanning and managing checkpoint files"""
def __init__(self):
# Define supported file extensions
file_extensions = {'.ckpt', '.pt', '.pt2', '.bin', '.pth', '.safetensors', '.pkl', '.sft', '.gguf'}
file_extensions = {
".ckpt",
".pt",
".pt2",
".bin",
".pth",
".safetensors",
".pkl",
".sft",
".gguf",
}
super().__init__(
model_type="checkpoint",
model_class=CheckpointMetadata,
file_extensions=file_extensions,
hash_index=ModelHashIndex()
hash_index=ModelHashIndex(),
)
async def _create_default_metadata(self, file_path: str) -> Optional[CheckpointMetadata]:
async def _create_default_metadata(
self, file_path: str
) -> Optional[CheckpointMetadata]:
"""Create default metadata for checkpoint without calculating hash (lazy hash).
Checkpoints are typically large (10GB+), so we skip hash calculation during initial
@@ -59,7 +72,7 @@ class CheckpointScanner(ModelScanner):
modelDescription="",
sub_type="checkpoint",
from_civitai=False, # Mark as local model since no hash yet
hash_status="pending" # Mark hash as pending
hash_status="pending", # Mark hash as pending
)
# Save the created metadata
@@ -69,7 +82,9 @@ class CheckpointScanner(ModelScanner):
return metadata
except Exception as e:
logger.error(f"Error creating default checkpoint metadata for {file_path}: {e}")
logger.error(
f"Error creating default checkpoint metadata for {file_path}: {e}"
)
return None
async def calculate_hash_for_model(self, file_path: str) -> Optional[str]:
@@ -90,7 +105,9 @@ class CheckpointScanner(ModelScanner):
return None
# Load current metadata
metadata, _ = await MetadataManager.load_metadata(file_path, self.model_class)
metadata, _ = await MetadataManager.load_metadata(
file_path, self.model_class
)
if metadata is None:
logger.error(f"No metadata found for {file_path}")
return None
@@ -122,7 +139,9 @@ class CheckpointScanner(ModelScanner):
logger.error(f"Error calculating hash for {file_path}: {e}")
# Update status to failed
try:
metadata, _ = await MetadataManager.load_metadata(file_path, self.model_class)
metadata, _ = await MetadataManager.load_metadata(
file_path, self.model_class
)
if metadata:
metadata.hash_status = "failed"
await MetadataManager.save_metadata(file_path, metadata)
@@ -130,7 +149,9 @@ class CheckpointScanner(ModelScanner):
pass
return None
async def calculate_all_pending_hashes(self, progress_callback=None) -> Dict[str, int]:
async def calculate_all_pending_hashes(
self, progress_callback=None
) -> Dict[str, int]:
"""Calculate hashes for all checkpoints with pending hash status.
If cache is not initialized, scans filesystem directly for metadata files
@@ -148,22 +169,23 @@ class CheckpointScanner(ModelScanner):
if cache and cache.raw_data:
# Use cache if available
pending_models = [
item for item in cache.raw_data
if item.get('hash_status') != 'completed' or not item.get('sha256')
item
for item in cache.raw_data
if item.get("hash_status") != "completed" or not item.get("sha256")
]
else:
# Cache not initialized, scan filesystem directly
pending_models = await self._find_pending_models_from_filesystem()
if not pending_models:
return {'completed': 0, 'failed': 0, 'total': 0}
return {"completed": 0, "failed": 0, "total": 0}
total = len(pending_models)
completed = 0
failed = 0
for i, model_data in enumerate(pending_models):
file_path = model_data.get('file_path')
file_path = model_data.get("file_path")
if not file_path:
continue
@@ -183,11 +205,7 @@ class CheckpointScanner(ModelScanner):
except Exception:
pass
return {
'completed': completed,
'failed': failed,
'total': total
}
return {"completed": completed, "failed": failed, "total": total}
async def _find_pending_models_from_filesystem(self) -> List[Dict[str, Any]]:
"""Scan filesystem for checkpoint metadata files with pending hash status."""
@@ -199,21 +217,21 @@ class CheckpointScanner(ModelScanner):
for dirpath, _dirnames, filenames in os.walk(root_path):
for filename in filenames:
if not filename.endswith('.metadata.json'):
if not filename.endswith(".metadata.json"):
continue
metadata_path = os.path.join(dirpath, filename)
try:
with open(metadata_path, 'r', encoding='utf-8') as f:
with open(metadata_path, "r", encoding="utf-8") as f:
data = json.load(f)
# Check if hash is pending
hash_status = data.get('hash_status', 'completed')
sha256 = data.get('sha256', '')
hash_status = data.get("hash_status", "completed")
sha256 = data.get("sha256", "")
if hash_status != 'completed' or not sha256:
if hash_status != "completed" or not sha256:
# Find corresponding model file
model_name = filename.replace('.metadata.json', '')
model_name = filename.replace(".metadata.json", "")
model_path = None
# Look for model file with matching name
@@ -224,29 +242,58 @@ class CheckpointScanner(ModelScanner):
break
if model_path:
pending_models.append({
'file_path': model_path.replace(os.sep, '/'),
'hash_status': hash_status,
'sha256': sha256,
**{k: v for k, v in data.items() if k not in ['file_path', 'hash_status', 'sha256']}
})
pending_models.append(
{
"file_path": model_path.replace(os.sep, "/"),
"hash_status": hash_status,
"sha256": sha256,
**{
k: v
for k, v in data.items()
if k
not in [
"file_path",
"hash_status",
"sha256",
]
},
}
)
except (json.JSONDecodeError, Exception) as e:
logger.debug(f"Error reading metadata file {metadata_path}: {e}")
logger.debug(
f"Error reading metadata file {metadata_path}: {e}"
)
continue
return pending_models
def _resolve_sub_type(self, root_path: Optional[str]) -> Optional[str]:
"""Resolve the sub-type based on the root path."""
"""Resolve the sub-type based on the root path.
Checks both standard ComfyUI paths and LoRA Manager's extra folder paths.
"""
if not root_path:
return None
# Check standard ComfyUI checkpoint paths
if config.checkpoints_roots and root_path in config.checkpoints_roots:
return "checkpoint"
# Check extra checkpoint paths
if (
config.extra_checkpoints_roots
and root_path in config.extra_checkpoints_roots
):
return "checkpoint"
# Check standard ComfyUI unet paths
if config.unet_roots and root_path in config.unet_roots:
return "diffusion_model"
# Check extra unet paths
if config.extra_unet_roots and root_path in config.extra_unet_roots:
return "diffusion_model"
return None
def adjust_metadata(self, metadata, file_path, root_path):

View File

@@ -3,13 +3,17 @@ import copy
import logging
import os
from typing import Any, Optional, Dict, Tuple, List, Sequence
from .model_metadata_provider import CivitaiModelMetadataProvider, ModelMetadataProviderManager
from .model_metadata_provider import (
CivitaiModelMetadataProvider,
ModelMetadataProviderManager,
)
from .downloader import get_downloader
from .errors import RateLimitError, ResourceNotFoundError
from ..utils.civitai_utils import resolve_license_payload
logger = logging.getLogger(__name__)
class CivitaiClient:
_instance = None
_lock = asyncio.Lock()
@@ -23,13 +27,15 @@ class CivitaiClient:
# Register this client as a metadata provider
provider_manager = await ModelMetadataProviderManager.get_instance()
provider_manager.register_provider('civitai', CivitaiModelMetadataProvider(cls._instance), True)
provider_manager.register_provider(
"civitai", CivitaiModelMetadataProvider(cls._instance), True
)
return cls._instance
def __init__(self):
# Check if already initialized for singleton pattern
if hasattr(self, '_initialized'):
if hasattr(self, "_initialized"):
return
self._initialized = True
@@ -76,7 +82,9 @@ class CivitaiClient:
if isinstance(meta, dict) and "comfy" in meta:
meta.pop("comfy", None)
async def download_file(self, url: str, save_dir: str, default_filename: str, progress_callback=None) -> Tuple[bool, str]:
async def download_file(
self, url: str, save_dir: str, default_filename: str, progress_callback=None
) -> Tuple[bool, str]:
"""Download file with resumable downloads and retry mechanism
Args:
@@ -97,34 +105,41 @@ class CivitaiClient:
save_path=save_path,
progress_callback=progress_callback,
use_auth=True, # Enable CivitAI authentication
allow_resume=True
allow_resume=True,
)
return success, result
async def get_model_by_hash(self, model_hash: str) -> Tuple[Optional[Dict], Optional[str]]:
async def get_model_by_hash(
self, model_hash: str
) -> Tuple[Optional[Dict], Optional[str]]:
try:
success, version = await self._make_request(
'GET',
"GET",
f"{self.base_url}/model-versions/by-hash/{model_hash}",
use_auth=True
use_auth=True,
)
if not success:
message = str(version)
if "not found" in message.lower():
return None, "Model not found"
logger.error("Failed to fetch model info for %s: %s", model_hash[:10], message)
logger.error(
"Failed to fetch model info for %s: %s", model_hash[:10], message
)
return None, message
model_id = version.get('modelId')
if model_id:
model_data = await self._fetch_model_data(model_id)
if model_data:
self._enrich_version_with_model_data(version, model_data)
if isinstance(version, dict):
model_id = version.get("modelId")
if model_id:
model_data = await self._fetch_model_data(model_id)
if model_data:
self._enrich_version_with_model_data(version, model_data)
self._remove_comfy_metadata(version)
return version, None
self._remove_comfy_metadata(version)
return version, None
else:
return None, "Invalid response format"
except RateLimitError:
raise
except Exception as exc:
@@ -136,12 +151,12 @@ class CivitaiClient:
downloader = await get_downloader()
success, content, headers = await downloader.download_to_memory(
image_url,
use_auth=False # Preview images don't need auth
use_auth=False, # Preview images don't need auth
)
if success:
# Ensure directory exists
os.makedirs(os.path.dirname(save_path), exist_ok=True)
with open(save_path, 'wb') as f:
with open(save_path, "wb") as f:
f.write(content)
return True
return False
@@ -175,19 +190,17 @@ class CivitaiClient:
"""Get all versions of a model with local availability info"""
try:
success, result = await self._make_request(
'GET',
f"{self.base_url}/models/{model_id}",
use_auth=True
"GET", f"{self.base_url}/models/{model_id}", use_auth=True
)
if success:
# Also return model type along with versions
return {
'modelVersions': result.get('modelVersions', []),
'type': result.get('type', ''),
'name': result.get('name', '')
"modelVersions": result.get("modelVersions", []),
"type": result.get("type", ""),
"name": result.get("name", ""),
}
message = self._extract_error_message(result)
if message and 'not found' in message.lower():
if message and "not found" in message.lower():
raise ResourceNotFoundError(f"Resource not found for model {model_id}")
if message:
raise RuntimeError(message)
@@ -221,15 +234,15 @@ class CivitaiClient:
try:
query = ",".join(normalized_ids)
success, result = await self._make_request(
'GET',
"GET",
f"{self.base_url}/models",
use_auth=True,
params={'ids': query},
params={"ids": query},
)
if not success:
return None
items = result.get('items') if isinstance(result, dict) else None
items = result.get("items") if isinstance(result, dict) else None
if not isinstance(items, list):
return {}
@@ -237,19 +250,19 @@ class CivitaiClient:
for item in items:
if not isinstance(item, dict):
continue
model_id = item.get('id')
model_id = item.get("id")
try:
normalized_id = int(model_id)
except (TypeError, ValueError):
continue
payload[normalized_id] = {
'modelVersions': item.get('modelVersions', []),
'type': item.get('type', ''),
'name': item.get('name', ''),
'allowNoCredit': item.get('allowNoCredit'),
'allowCommercialUse': item.get('allowCommercialUse'),
'allowDerivatives': item.get('allowDerivatives'),
'allowDifferentLicense': item.get('allowDifferentLicense'),
"modelVersions": item.get("modelVersions", []),
"type": item.get("type", ""),
"name": item.get("name", ""),
"allowNoCredit": item.get("allowNoCredit"),
"allowCommercialUse": item.get("allowCommercialUse"),
"allowDerivatives": item.get("allowDerivatives"),
"allowDifferentLicense": item.get("allowDifferentLicense"),
}
return payload
except RateLimitError:
@@ -258,7 +271,9 @@ class CivitaiClient:
logger.error(f"Error fetching model versions in bulk: {exc}")
return None
async def get_model_version(self, model_id: int = None, version_id: int = None) -> Optional[Dict]:
async def get_model_version(
self, model_id: int = None, version_id: int = None
) -> Optional[Dict]:
"""Get specific model version with additional metadata."""
try:
if model_id is None and version_id is not None:
@@ -281,7 +296,7 @@ class CivitaiClient:
if version is None:
return None
model_id = version.get('modelId')
model_id = version.get("modelId")
if not model_id:
logger.error(f"No modelId found in version {version_id}")
return None
@@ -293,7 +308,9 @@ class CivitaiClient:
self._remove_comfy_metadata(version)
return version
async def _get_version_with_model_id(self, model_id: int, version_id: Optional[int]) -> Optional[Dict]:
async def _get_version_with_model_id(
self, model_id: int, version_id: Optional[int]
) -> Optional[Dict]:
model_data = await self._fetch_model_data(model_id)
if not model_data:
return None
@@ -302,8 +319,12 @@ class CivitaiClient:
if target_version is None:
return None
target_version_id = target_version.get('id')
version = await self._fetch_version_by_id(target_version_id) if target_version_id else None
target_version_id = target_version.get("id")
version = (
await self._fetch_version_by_id(target_version_id)
if target_version_id
else None
)
if version is None:
model_hash = self._extract_primary_model_hash(target_version)
@@ -315,7 +336,9 @@ class CivitaiClient:
)
if version is None:
version = self._build_version_from_model_data(target_version, model_id, model_data)
version = self._build_version_from_model_data(
target_version, model_id, model_data
)
self._enrich_version_with_model_data(version, model_data)
self._remove_comfy_metadata(version)
@@ -323,9 +346,7 @@ class CivitaiClient:
async def _fetch_model_data(self, model_id: int) -> Optional[Dict]:
success, data = await self._make_request(
'GET',
f"{self.base_url}/models/{model_id}",
use_auth=True
"GET", f"{self.base_url}/models/{model_id}", use_auth=True
)
if success:
return data
@@ -337,9 +358,7 @@ class CivitaiClient:
return None
success, version = await self._make_request(
'GET',
f"{self.base_url}/model-versions/{version_id}",
use_auth=True
"GET", f"{self.base_url}/model-versions/{version_id}", use_auth=True
)
if success:
return version
@@ -352,9 +371,7 @@ class CivitaiClient:
return None
success, version = await self._make_request(
'GET',
f"{self.base_url}/model-versions/by-hash/{model_hash}",
use_auth=True
"GET", f"{self.base_url}/model-versions/by-hash/{model_hash}", use_auth=True
)
if success:
return version
@@ -362,16 +379,17 @@ class CivitaiClient:
logger.warning(f"Failed to fetch version by hash {model_hash}")
return None
def _select_target_version(self, model_data: Dict, model_id: int, version_id: Optional[int]) -> Optional[Dict]:
model_versions = model_data.get('modelVersions', [])
def _select_target_version(
self, model_data: Dict, model_id: int, version_id: Optional[int]
) -> Optional[Dict]:
model_versions = model_data.get("modelVersions", [])
if not model_versions:
logger.warning(f"No model versions found for model {model_id}")
return None
if version_id is not None:
target_version = next(
(item for item in model_versions if item.get('id') == version_id),
None
(item for item in model_versions if item.get("id") == version_id), None
)
if target_version is None:
logger.warning(
@@ -383,41 +401,45 @@ class CivitaiClient:
return model_versions[0]
def _extract_primary_model_hash(self, version_entry: Dict) -> Optional[str]:
for file_info in version_entry.get('files', []):
if file_info.get('type') == 'Model' and file_info.get('primary'):
hashes = file_info.get('hashes', {})
model_hash = hashes.get('SHA256')
for file_info in version_entry.get("files", []):
if file_info.get("type") == "Model" and file_info.get("primary"):
hashes = file_info.get("hashes", {})
model_hash = hashes.get("SHA256")
if model_hash:
return model_hash
return None
def _build_version_from_model_data(self, version_entry: Dict, model_id: int, model_data: Dict) -> Dict:
def _build_version_from_model_data(
self, version_entry: Dict, model_id: int, model_data: Dict
) -> Dict:
version = copy.deepcopy(version_entry)
version.pop('index', None)
version['modelId'] = model_id
version['model'] = {
'name': model_data.get('name'),
'type': model_data.get('type'),
'nsfw': model_data.get('nsfw'),
'poi': model_data.get('poi')
version.pop("index", None)
version["modelId"] = model_id
version["model"] = {
"name": model_data.get("name"),
"type": model_data.get("type"),
"nsfw": model_data.get("nsfw"),
"poi": model_data.get("poi"),
}
return version
def _enrich_version_with_model_data(self, version: Dict, model_data: Dict) -> None:
model_info = version.get('model')
model_info = version.get("model")
if not isinstance(model_info, dict):
model_info = {}
version['model'] = model_info
version["model"] = model_info
model_info['description'] = model_data.get("description")
model_info['tags'] = model_data.get("tags", [])
version['creator'] = model_data.get("creator")
model_info["description"] = model_data.get("description")
model_info["tags"] = model_data.get("tags", [])
version["creator"] = model_data.get("creator")
license_payload = resolve_license_payload(model_data)
for field, value in license_payload.items():
model_info[field] = value
async def get_model_version_info(self, version_id: str) -> Tuple[Optional[Dict], Optional[str]]:
async def get_model_version_info(
self, version_id: str
) -> Tuple[Optional[Dict], Optional[str]]:
"""Fetch model version metadata from Civitai
Args:
@@ -432,14 +454,12 @@ class CivitaiClient:
url = f"{self.base_url}/model-versions/{version_id}"
logger.debug(f"Resolving DNS for model version info: {url}")
success, result = await self._make_request(
'GET',
url,
use_auth=True
)
success, result = await self._make_request("GET", url, use_auth=True)
if success:
logger.debug(f"Successfully fetched model version info for: {version_id}")
logger.debug(
f"Successfully fetched model version info for: {version_id}"
)
self._remove_comfy_metadata(result)
return result, None
@@ -472,11 +492,7 @@ class CivitaiClient:
url = f"{self.base_url}/images?imageId={image_id}&nsfw=X"
logger.debug(f"Fetching image info for ID: {image_id}")
success, result = await self._make_request(
'GET',
url,
use_auth=True
)
success, result = await self._make_request("GET", url, use_auth=True)
if success:
if result and "items" in result and len(result["items"]) > 0:
@@ -501,11 +517,7 @@ class CivitaiClient:
try:
url = f"{self.base_url}/models?username={username}"
success, result = await self._make_request(
'GET',
url,
use_auth=True
)
success, result = await self._make_request("GET", url, use_auth=True)
if not success:
logger.error("Failed to fetch models for %s: %s", username, result)

View File

@@ -49,6 +49,7 @@ class CustomWordsService:
if self._tag_index is None:
try:
from .tag_fts_index import get_tag_fts_index
self._tag_index = get_tag_fts_index()
except Exception as e:
logger.warning(f"Failed to initialize TagFTSIndex: {e}")
@@ -59,14 +60,16 @@ class CustomWordsService:
self,
search_term: str,
limit: int = 20,
offset: int = 0,
categories: Optional[List[int]] = None,
enriched: bool = False
enriched: bool = False,
) -> List[Dict[str, Any]]:
"""Search tags using TagFTSIndex with category filtering.
Args:
search_term: The search term to match against.
limit: Maximum number of results to return.
offset: Number of results to skip.
categories: Optional list of category IDs to filter by.
enriched: If True, always return enriched results with category
and post_count (default behavior now).
@@ -76,7 +79,9 @@ class CustomWordsService:
"""
tag_index = self._get_tag_index()
if tag_index is not None:
results = tag_index.search(search_term, categories=categories, limit=limit)
results = tag_index.search(
search_term, categories=categories, limit=limit, offset=offset
)
return results
logger.debug("TagFTSIndex not available, returning empty results")

View File

@@ -10,7 +10,11 @@ import uuid
from typing import Dict, List, Optional, Set, Tuple
from urllib.parse import urlparse
from ..utils.models import LoraMetadata, CheckpointMetadata, EmbeddingMetadata
from ..utils.constants import CARD_PREVIEW_WIDTH, DIFFUSION_MODEL_BASE_MODELS, VALID_LORA_TYPES
from ..utils.constants import (
CARD_PREVIEW_WIDTH,
DIFFUSION_MODEL_BASE_MODELS,
VALID_LORA_TYPES,
)
from ..utils.civitai_utils import rewrite_preview_url
from ..utils.preview_selection import select_preview_media
from ..utils.utils import sanitize_folder_name
@@ -352,10 +356,12 @@ class DownloadManager:
# Check if this checkpoint should be treated as a diffusion model based on baseModel
is_diffusion_model = False
if model_type == "checkpoint":
base_model_value = version_info.get('baseModel', '')
base_model_value = version_info.get("baseModel", "")
if base_model_value in DIFFUSION_MODEL_BASE_MODELS:
is_diffusion_model = True
logger.info(f"baseModel '{base_model_value}' is a known diffusion model, routing to unet folder")
logger.info(
f"baseModel '{base_model_value}' is a known diffusion model, routing to unet folder"
)
# Case 2: model_version_id was None, check after getting version_info
if model_version_id is None:
@@ -476,8 +482,13 @@ class DownloadManager:
if is_primary:
# Find primary file
file_info = next(
(f for f in files if f.get("primary") and f.get("type") in ("Model", "Negative")),
None
(
f
for f in files
if f.get("primary")
and f.get("type") in ("Model", "Negative")
),
None,
)
else:
# Match by metadata
@@ -1220,7 +1231,13 @@ class DownloadManager:
entries: List = []
for index, file_path in enumerate(file_paths):
entry = base_metadata if index == 0 else copy.deepcopy(base_metadata)
entry.update_file_info(file_path)
# Update file paths without modifying size and modified timestamps
# modified should remain as the download start time (import time)
# size will be updated below to reflect actual downloaded file size
entry.file_path = file_path.replace(os.sep, "/")
entry.file_name = os.path.splitext(os.path.basename(file_path))[0]
# Update size to actual downloaded file size
entry.size = os.path.getsize(file_path)
entry.sha256 = await calculate_sha256(file_path)
entries.append(entry)

View File

@@ -516,12 +516,18 @@ class LoraService(BaseModelService):
if sort_by == "model_name":
available_loras = sorted(
available_loras,
key=lambda x: (x.get("model_name") or x.get("file_name", "")).lower()
key=lambda x: (
(x.get("model_name") or x.get("file_name", "")).lower(),
x.get("file_path", "").lower()
)
)
else: # Default to filename
available_loras = sorted(
available_loras,
key=lambda x: x.get("file_name", "").lower()
key=lambda x: (
x.get("file_name", "").lower(),
x.get("file_path", "").lower()
)
)
# Return minimal data needed for cycling

View File

@@ -221,33 +221,45 @@ class ModelCache:
start_time = time.perf_counter()
reverse = (order == 'desc')
if sort_key == 'name':
# Natural sort by configured display name, case-insensitive
# Natural sort by configured display name, case-insensitive, with file_path as tie-breaker
result = natsorted(
data,
key=lambda x: self._get_display_name(x).lower(),
key=lambda x: (
self._get_display_name(x).lower(),
x.get('file_path', '').lower()
),
reverse=reverse
)
elif sort_key == 'date':
# Sort by modified timestamp (use .get() with default to handle missing fields)
# Sort by modified timestamp, fallback to name and path for stability
result = sorted(
data,
key=lambda x: x.get('modified', 0.0),
key=lambda x: (
x.get('modified', 0.0),
self._get_display_name(x).lower(),
x.get('file_path', '').lower()
),
reverse=reverse
)
elif sort_key == 'size':
# Sort by file size (use .get() with default to handle missing fields)
# Sort by file size, fallback to name and path for stability
result = sorted(
data,
key=lambda x: x.get('size', 0),
key=lambda x: (
x.get('size', 0),
self._get_display_name(x).lower(),
x.get('file_path', '').lower()
),
reverse=reverse
)
elif sort_key == 'usage':
# Sort by usage count, fallback to 0, then name for stability
# Sort by usage count, fallback to 0, then name and path for stability
return sorted(
data,
key=lambda x: (
x.get('usage_count', 0),
self._get_display_name(x).lower()
self._get_display_name(x).lower(),
x.get('file_path', '').lower()
),
reverse=reverse
)

View File

@@ -56,6 +56,7 @@ class PersistentModelCache:
"exclude",
"db_checked",
"last_checked_at",
"hash_status",
)
_MODEL_UPDATE_COLUMNS: Tuple[str, ...] = _MODEL_COLUMNS[2:]
_instances: Dict[str, "PersistentModelCache"] = {}
@@ -186,6 +187,7 @@ class PersistentModelCache:
"civitai_deleted": bool(row["civitai_deleted"]),
"skip_metadata_refresh": bool(row["skip_metadata_refresh"]),
"license_flags": int(license_value),
"hash_status": row["hash_status"] or "completed",
}
raw_data.append(item)
@@ -449,6 +451,7 @@ class PersistentModelCache:
exclude INTEGER,
db_checked INTEGER,
last_checked_at REAL,
hash_status TEXT,
PRIMARY KEY (model_type, file_path)
);
@@ -496,6 +499,7 @@ class PersistentModelCache:
"skip_metadata_refresh": "INTEGER DEFAULT 0",
# Persisting without explicit flags should assume CivitAI's documented defaults (0b111001 == 57).
"license_flags": f"INTEGER DEFAULT {DEFAULT_LICENSE_FLAGS}",
"hash_status": "TEXT DEFAULT 'completed'",
}
for column, definition in required_columns.items():
@@ -570,6 +574,7 @@ class PersistentModelCache:
1 if item.get("exclude") else 0,
1 if item.get("db_checked") else 0,
float(item.get("last_checked_at") or 0.0),
item.get("hash_status", "completed"),
)
def _insert_model_sql(self) -> str:

View File

@@ -4,6 +4,7 @@ from dataclasses import dataclass
from operator import itemgetter
from natsort import natsorted
@dataclass
class RecipeCache:
"""Cache structure for Recipe data"""
@@ -21,11 +22,18 @@ class RecipeCache:
self.folder_tree = self.folder_tree or {}
async def resort(self, name_only: bool = False):
"""Resort all cached data views"""
"""Resort all cached data views in a thread pool to avoid blocking the event loop."""
async with self._lock:
self._resort_locked(name_only=name_only)
loop = asyncio.get_event_loop()
await loop.run_in_executor(
None,
self._resort_locked,
name_only,
)
async def update_recipe_metadata(self, recipe_id: str, metadata: Dict, *, resort: bool = True) -> bool:
async def update_recipe_metadata(
self, recipe_id: str, metadata: Dict, *, resort: bool = True
) -> bool:
"""Update metadata for a specific recipe in all cached data
Args:
@@ -37,7 +45,7 @@ class RecipeCache:
"""
async with self._lock:
for item in self.raw_data:
if str(item.get('id')) == str(recipe_id):
if str(item.get("id")) == str(recipe_id):
item.update(metadata)
if resort:
self._resort_locked()
@@ -52,7 +60,9 @@ class RecipeCache:
if resort:
self._resort_locked()
async def remove_recipe(self, recipe_id: str, *, resort: bool = False) -> Optional[Dict]:
async def remove_recipe(
self, recipe_id: str, *, resort: bool = False
) -> Optional[Dict]:
"""Remove a recipe from the cache by ID.
Args:
@@ -64,14 +74,16 @@ class RecipeCache:
async with self._lock:
for index, recipe in enumerate(self.raw_data):
if str(recipe.get('id')) == str(recipe_id):
if str(recipe.get("id")) == str(recipe_id):
removed = self.raw_data.pop(index)
if resort:
self._resort_locked()
return removed
return None
async def bulk_remove(self, recipe_ids: Iterable[str], *, resort: bool = False) -> List[Dict]:
async def bulk_remove(
self, recipe_ids: Iterable[str], *, resort: bool = False
) -> List[Dict]:
"""Remove multiple recipes from the cache."""
id_set = {str(recipe_id) for recipe_id in recipe_ids}
@@ -79,21 +91,25 @@ class RecipeCache:
return []
async with self._lock:
removed = [item for item in self.raw_data if str(item.get('id')) in id_set]
removed = [item for item in self.raw_data if str(item.get("id")) in id_set]
if not removed:
return []
self.raw_data = [item for item in self.raw_data if str(item.get('id')) not in id_set]
self.raw_data = [
item for item in self.raw_data if str(item.get("id")) not in id_set
]
if resort:
self._resort_locked()
return removed
async def replace_recipe(self, recipe_id: str, new_data: Dict, *, resort: bool = False) -> bool:
async def replace_recipe(
self, recipe_id: str, new_data: Dict, *, resort: bool = False
) -> bool:
"""Replace cached data for a recipe."""
async with self._lock:
for index, recipe in enumerate(self.raw_data):
if str(recipe.get('id')) == str(recipe_id):
if str(recipe.get("id")) == str(recipe_id):
self.raw_data[index] = new_data
if resort:
self._resort_locked()
@@ -105,7 +121,7 @@ class RecipeCache:
async with self._lock:
for recipe in self.raw_data:
if str(recipe.get('id')) == str(recipe_id):
if str(recipe.get("id")) == str(recipe_id):
return dict(recipe)
return None
@@ -115,16 +131,14 @@ class RecipeCache:
async with self._lock:
return [dict(item) for item in self.raw_data]
def _resort_locked(self, *, name_only: bool = False) -> None:
def _resort_locked(self, name_only: bool = False) -> None:
"""Sort cached views. Caller must hold ``_lock``."""
self.sorted_by_name = natsorted(
self.raw_data,
key=lambda x: x.get('title', '').lower()
key=lambda x: (x.get("title", "").lower(), x.get("file_path", "").lower()),
)
if not name_only:
self.sorted_by_date = sorted(
self.raw_data,
key=itemgetter('created_date', 'file_path'),
reverse=True
self.raw_data, key=itemgetter("created_date", "file_path"), reverse=True
)

File diff suppressed because it is too large Load Diff

View File

@@ -1,4 +1,5 @@
"""Services responsible for recipe metadata analysis."""
from __future__ import annotations
import base64
@@ -69,7 +70,9 @@ class RecipeAnalysisService:
try:
metadata = self._exif_utils.extract_image_metadata(temp_path)
if not metadata:
return AnalysisResult({"error": "No metadata found in this image", "loras": []})
return AnalysisResult(
{"error": "No metadata found in this image", "loras": []}
)
return await self._parse_metadata(
metadata,
@@ -105,7 +108,9 @@ class RecipeAnalysisService:
if civitai_match:
image_info = await civitai_client.get_image_info(civitai_match.group(1))
if not image_info:
raise RecipeDownloadError("Failed to fetch image information from Civitai")
raise RecipeDownloadError(
"Failed to fetch image information from Civitai"
)
image_url = image_info.get("url")
if not image_url:
@@ -114,13 +119,15 @@ class RecipeAnalysisService:
is_video = image_info.get("type") == "video"
# Use optimized preview URLs if possible
rewritten_url, _ = rewrite_preview_url(image_url, media_type=image_info.get("type"))
rewritten_url, _ = rewrite_preview_url(
image_url, media_type=image_info.get("type")
)
if rewritten_url:
image_url = rewritten_url
if is_video:
# Extract extension from URL
url_path = image_url.split('?')[0].split('#')[0]
url_path = image_url.split("?")[0].split("#")[0]
extension = os.path.splitext(url_path)[1].lower() or ".mp4"
else:
extension = ".jpg"
@@ -135,9 +142,17 @@ class RecipeAnalysisService:
and isinstance(metadata["meta"], dict)
):
metadata = metadata["meta"]
# Validate that metadata contains meaningful recipe fields
# If not, treat as None to trigger EXIF extraction from downloaded image
if isinstance(metadata, dict) and not self._has_recipe_fields(metadata):
self._logger.debug(
"Civitai API metadata lacks recipe fields, will extract from EXIF"
)
metadata = None
else:
# Basic extension detection for non-Civitai URLs
url_path = url.split('?')[0].split('#')[0]
url_path = url.split("?")[0].split("#")[0]
extension = os.path.splitext(url_path)[1].lower()
if extension in [".mp4", ".webm"]:
is_video = True
@@ -211,7 +226,9 @@ class RecipeAnalysisService:
image_bytes = self._convert_tensor_to_png_bytes(latest_image)
if image_bytes is None:
raise RecipeValidationError("Cannot handle this data shape from metadata registry")
raise RecipeValidationError(
"Cannot handle this data shape from metadata registry"
)
return AnalysisResult(
{
@@ -222,6 +239,22 @@ class RecipeAnalysisService:
# Internal helpers -------------------------------------------------
def _has_recipe_fields(self, metadata: dict[str, Any]) -> bool:
"""Check if metadata contains meaningful recipe-related fields."""
recipe_fields = {
"prompt",
"negative_prompt",
"resources",
"hashes",
"params",
"generationData",
"Workflow",
"prompt_type",
"positive",
"negative",
}
return any(field in metadata for field in recipe_fields)
async def _parse_metadata(
self,
metadata: dict[str, Any],
@@ -234,7 +267,12 @@ class RecipeAnalysisService:
) -> AnalysisResult:
parser = self._recipe_parser_factory.create_parser(metadata)
if parser is None:
payload = {"error": "No parser found for this image", "loras": []}
# Provide more specific error message based on metadata source
if not metadata:
error_msg = "This image does not contain any generation metadata (prompt, models, or parameters)"
else:
error_msg = "No parser found for this image"
payload = {"error": error_msg, "loras": []}
if include_image_base64 and image_path:
payload["image_base64"] = self._encode_file(image_path)
payload["is_video"] = is_video
@@ -257,7 +295,9 @@ class RecipeAnalysisService:
matching_recipes: list[str] = []
if fingerprint:
matching_recipes = await recipe_scanner.find_recipes_by_fingerprint(fingerprint)
matching_recipes = await recipe_scanner.find_recipes_by_fingerprint(
fingerprint
)
result["matching_recipes"] = matching_recipes
return AnalysisResult(result)
@@ -269,7 +309,10 @@ class RecipeAnalysisService:
raise RecipeDownloadError(f"Failed to download image from URL: {result}")
def _metadata_not_found_response(self, path: str) -> AnalysisResult:
payload: dict[str, Any] = {"error": "No metadata found in this image", "loras": []}
payload: dict[str, Any] = {
"error": "No metadata found in this image",
"loras": [],
}
if os.path.exists(path):
payload["image_base64"] = self._encode_file(path)
return AnalysisResult(payload)
@@ -305,7 +348,9 @@ class RecipeAnalysisService:
if hasattr(tensor_image, "shape"):
self._logger.debug(
"Tensor shape: %s, dtype: %s", tensor_image.shape, getattr(tensor_image, "dtype", None)
"Tensor shape: %s, dtype: %s",
tensor_image.shape,
getattr(tensor_image, "dtype", None),
)
import torch # type: ignore[import-not-found]

View File

@@ -69,7 +69,9 @@ class TagFTSIndex:
_DEFAULT_FILENAME = "tag_fts.sqlite"
_CSV_FILENAME = "danbooru_e621_merged.csv"
def __init__(self, db_path: Optional[str] = None, csv_path: Optional[str] = None) -> None:
def __init__(
self, db_path: Optional[str] = None, csv_path: Optional[str] = None
) -> None:
"""Initialize the FTS index.
Args:
@@ -92,7 +94,9 @@ class TagFTSIndex:
if directory:
os.makedirs(directory, exist_ok=True)
except Exception as exc:
logger.warning("Could not create FTS index directory %s: %s", directory, exc)
logger.warning(
"Could not create FTS index directory %s: %s", directory, exc
)
def _resolve_default_db_path(self) -> str:
"""Resolve the default database path."""
@@ -173,13 +177,15 @@ class TagFTSIndex:
# Set schema version
conn.execute(
"INSERT OR REPLACE INTO fts_metadata (key, value) VALUES (?, ?)",
("schema_version", str(SCHEMA_VERSION))
("schema_version", str(SCHEMA_VERSION)),
)
conn.commit()
self._schema_initialized = True
self._needs_rebuild = needs_rebuild
logger.debug("Tag FTS index schema initialized at %s", self._db_path)
logger.debug(
"Tag FTS index schema initialized at %s", self._db_path
)
finally:
conn.close()
except Exception as exc:
@@ -206,13 +212,20 @@ class TagFTSIndex:
row = cursor.fetchone()
if not row:
# Old schema without version, needs rebuild
logger.info("Migrating tag FTS index to schema version %d (adding alias support)", SCHEMA_VERSION)
logger.info(
"Migrating tag FTS index to schema version %d (adding alias support)",
SCHEMA_VERSION,
)
self._drop_old_tables(conn)
return True
current_version = int(row[0])
if current_version < SCHEMA_VERSION:
logger.info("Migrating tag FTS index from version %d to %d", current_version, SCHEMA_VERSION)
logger.info(
"Migrating tag FTS index from version %d to %d",
current_version,
SCHEMA_VERSION,
)
self._drop_old_tables(conn)
return True
@@ -246,7 +259,9 @@ class TagFTSIndex:
return
if not os.path.exists(self._csv_path):
logger.warning("CSV file not found at %s, cannot build tag index", self._csv_path)
logger.warning(
"CSV file not found at %s, cannot build tag index", self._csv_path
)
return
self._indexing_in_progress = True
@@ -314,22 +329,24 @@ class TagFTSIndex:
# Update metadata
conn.execute(
"INSERT OR REPLACE INTO fts_metadata (key, value) VALUES (?, ?)",
("last_build_time", str(time.time()))
("last_build_time", str(time.time())),
)
conn.execute(
"INSERT OR REPLACE INTO fts_metadata (key, value) VALUES (?, ?)",
("tag_count", str(total_inserted))
("tag_count", str(total_inserted)),
)
conn.execute(
"INSERT OR REPLACE INTO fts_metadata (key, value) VALUES (?, ?)",
("schema_version", str(SCHEMA_VERSION))
("schema_version", str(SCHEMA_VERSION)),
)
conn.commit()
elapsed = time.time() - start_time
logger.info(
"Tag FTS index built: %d tags indexed (%d with aliases) in %.2fs",
total_inserted, tags_with_aliases, elapsed
total_inserted,
tags_with_aliases,
elapsed,
)
finally:
conn.close()
@@ -350,7 +367,7 @@ class TagFTSIndex:
# Insert into tags table (with aliases)
conn.executemany(
"INSERT OR IGNORE INTO tags (tag_name, category, post_count, aliases) VALUES (?, ?, ?, ?)",
rows
rows,
)
# Build a map of tag_name -> aliases for FTS insertion
@@ -362,7 +379,7 @@ class TagFTSIndex:
placeholders = ",".join("?" * len(tag_names))
cursor = conn.execute(
f"SELECT rowid, tag_name FROM tags WHERE tag_name IN ({placeholders})",
tag_names
tag_names,
)
# Build FTS rows with (rowid, searchable_text) = (tags.rowid, "tag_name alias1 alias2 ...")
@@ -379,13 +396,17 @@ class TagFTSIndex:
alias = alias[1:] # Remove leading slash
if alias:
alias_parts.append(alias)
searchable_text = f"{tag_name} {' '.join(alias_parts)}" if alias_parts else tag_name
searchable_text = (
f"{tag_name} {' '.join(alias_parts)}" if alias_parts else tag_name
)
else:
searchable_text = tag_name
fts_rows.append((rowid, searchable_text))
if fts_rows:
conn.executemany("INSERT INTO tag_fts (rowid, searchable_text) VALUES (?, ?)", fts_rows)
conn.executemany(
"INSERT INTO tag_fts (rowid, searchable_text) VALUES (?, ?)", fts_rows
)
def ensure_ready(self) -> bool:
"""Ensure the index is ready, building if necessary.
@@ -420,21 +441,28 @@ class TagFTSIndex:
self,
query: str,
categories: Optional[List[int]] = None,
limit: int = 20
limit: int = 20,
offset: int = 0,
) -> List[Dict]:
"""Search tags using FTS5 with prefix matching.
Supports alias search: if the query matches an alias rather than
the tag_name, the result will include a "matched_alias" field.
Ranking is based on a combination of:
1. FTS5 bm25 relevance score (how well the text matches)
2. Post count (popularity)
3. Exact prefix match boost (tag_name starts with query)
Args:
query: The search query string.
categories: Optional list of category IDs to filter by.
limit: Maximum number of results to return.
offset: Number of results to skip.
Returns:
List of dictionaries with tag_name, category, post_count,
and optionally matched_alias.
rank_score, and optionally matched_alias.
"""
# Ensure index is ready (lazy initialization)
if not self.ensure_ready():
@@ -450,35 +478,67 @@ class TagFTSIndex:
if not fts_query:
return []
query_lower = query.lower().strip()
try:
with self._lock:
conn = self._connect(readonly=True)
try:
# Build the SQL query - now also fetch aliases for matched_alias detection
# Use subquery for category filter to ensure FTS is evaluated first
# Build the SQL query with bm25 ranking
# FTS5 bm25() returns negative scores, lower is better
# We use -bm25() to get higher=better scores
# Weights: -100.0 for exact matches, 1.0 for others
# Add LOG10(post_count) weighting to boost popular tags
# Use CASE to boost tag_name prefix matches above alias matches
if categories:
placeholders = ",".join("?" * len(categories))
sql = f"""
SELECT t.tag_name, t.category, t.post_count, t.aliases
FROM tags t
WHERE t.rowid IN (
SELECT rowid FROM tag_fts WHERE searchable_text MATCH ?
)
SELECT t.tag_name, t.category, t.post_count, t.aliases,
CASE
WHEN t.tag_name LIKE ? ESCAPE '\\' THEN 1
ELSE 0
END AS is_tag_name_match,
bm25(tag_fts, -100.0, 1.0, 1.0) + LOG10(t.post_count + 1) * 10.0 AS rank_score
FROM tag_fts
JOIN tags t ON tag_fts.rowid = t.rowid
WHERE tag_fts.searchable_text MATCH ?
AND t.category IN ({placeholders})
ORDER BY t.post_count DESC
LIMIT ?
ORDER BY is_tag_name_match DESC, rank_score DESC
LIMIT ? OFFSET ?
"""
params = [fts_query] + categories + [limit]
# Escape special LIKE characters and add wildcard
query_escaped = (
query_lower.lstrip("/")
.replace("\\", "\\\\")
.replace("%", "\\%")
.replace("_", "\\_")
)
params = (
[query_escaped + "%", fts_query]
+ categories
+ [limit, offset]
)
else:
sql = """
SELECT t.tag_name, t.category, t.post_count, t.aliases
FROM tag_fts f
JOIN tags t ON f.rowid = t.rowid
WHERE f.searchable_text MATCH ?
ORDER BY t.post_count DESC
LIMIT ?
SELECT t.tag_name, t.category, t.post_count, t.aliases,
CASE
WHEN t.tag_name LIKE ? ESCAPE '\\' THEN 1
ELSE 0
END AS is_tag_name_match,
bm25(tag_fts, -100.0, 1.0, 1.0) + LOG10(t.post_count + 1) * 10.0 AS rank_score
FROM tag_fts
JOIN tags t ON tag_fts.rowid = t.rowid
WHERE tag_fts.searchable_text MATCH ?
ORDER BY is_tag_name_match DESC, rank_score DESC
LIMIT ? OFFSET ?
"""
params = [fts_query, limit]
query_escaped = (
query_lower.lstrip("/")
.replace("\\", "\\\\")
.replace("%", "\\%")
.replace("_", "\\_")
)
params = [query_escaped + "%", fts_query, limit, offset]
cursor = conn.execute(sql, params)
results = []
@@ -487,8 +547,17 @@ class TagFTSIndex:
"tag_name": row[0],
"category": row[1],
"post_count": row[2],
"is_tag_name_match": row[4] == 1,
"rank_score": row[5],
}
# Set is_exact_prefix based on tag_name match
tag_name = row[0]
if tag_name.lower().startswith(query_lower.lstrip("/")):
result["is_exact_prefix"] = True
else:
result["is_exact_prefix"] = result["is_tag_name_match"]
# Check if search matched an alias rather than the tag_name
matched_alias = self._find_matched_alias(query, row[0], row[3])
if matched_alias:
@@ -502,7 +571,9 @@ class TagFTSIndex:
logger.debug("Tag FTS search error for query '%s': %s", query, exc)
return []
def _find_matched_alias(self, query: str, tag_name: str, aliases_str: str) -> Optional[str]:
def _find_matched_alias(
self, query: str, tag_name: str, aliases_str: str
) -> Optional[str]:
"""Find which alias matched the query, if any.
Args:

View File

@@ -47,8 +47,7 @@ class BulkMetadataRefreshUseCase:
to_process: Sequence[Dict[str, Any]] = [
model
for model in cache.raw_data
if model.get("sha256")
and not model.get("skip_metadata_refresh", False)
if not model.get("skip_metadata_refresh", False)
and not self._is_in_skip_path(model.get("folder", ""), skip_paths)
and (not model.get("civitai") or not model["civitai"].get("id"))
and not (
@@ -85,6 +84,36 @@ class BulkMetadataRefreshUseCase:
return {"success": False, "message": "Operation cancelled", "processed": processed, "updated": success, "total": total_models}
try:
original_name = model.get("model_name")
# Handle lazy hash calculation for models with pending hash status
sha256 = model.get("sha256", "")
hash_status = model.get("hash_status", "completed")
file_path = model.get("file_path")
if not sha256 and hash_status == "pending" and file_path:
self._logger.info(f"Calculating pending hash for {file_path}")
# Check if scanner has calculate_hash_for_model method (CheckpointScanner)
calculate_hash_method = getattr(self._service.scanner, "calculate_hash_for_model", None)
if calculate_hash_method:
sha256 = await calculate_hash_method(file_path)
if sha256:
model["sha256"] = sha256
model["hash_status"] = "completed"
else:
self._logger.error(f"Failed to calculate hash for {file_path}")
processed += 1
continue
else:
self._logger.warning(f"Scanner does not support lazy hash calculation for {file_path}")
processed += 1
continue
# Skip models without valid hash
if not model.get("sha256"):
self._logger.warning(f"Skipping model without hash: {file_path}")
processed += 1
continue
await MetadataManager.hydrate_model_data(model)
result, _ = await self._metadata_sync.fetch_and_update_model(
sha256=model["sha256"],

View File

@@ -4,32 +4,40 @@ from datetime import datetime
import os
from .model_utils import determine_base_model
@dataclass
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 # Timestamp when the model was added to the management system
sha256: str # SHA256 hash of the file
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
notes: str = "" # Additional notes
from_civitai: bool = True # Whether from Civitai
civitai: Dict[str, Any] = field(default_factory=dict) # Civitai API data if available
tags: List[str] = None # Model tags
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 # Timestamp when the model was added to the management system
sha256: str # SHA256 hash of the file
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
notes: str = "" # Additional notes
from_civitai: bool = True # Whether from Civitai
civitai: Dict[str, Any] = field(
default_factory=dict
) # 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
db_checked: bool = False # Whether checked in archive DB
skip_metadata_refresh: bool = False # Whether to skip this model during bulk metadata refresh
favorite: bool = False # Whether the model is a favorite
exclude: bool = False # Whether to exclude this model from the cache
db_checked: bool = False # Whether checked in archive DB
skip_metadata_refresh: bool = (
False # Whether to skip this model during bulk metadata refresh
)
metadata_source: Optional[str] = None # Last provider that supplied metadata
last_checked_at: float = 0 # Last checked timestamp
hash_status: str = "completed" # Hash calculation status: pending | calculating | completed | failed
_unknown_fields: Dict[str, Any] = field(default_factory=dict, repr=False, compare=False) # Store unknown fields
_unknown_fields: Dict[str, Any] = field(
default_factory=dict, repr=False, compare=False
) # Store unknown fields
def __post_init__(self):
# Initialize empty lists to avoid mutable default parameter issue
@@ -40,15 +48,15 @@ class BaseModelMetadata:
self.tags = []
@classmethod
def from_dict(cls, data: Dict) -> 'BaseModelMetadata':
def from_dict(cls, data: Dict) -> "BaseModelMetadata":
"""Create instance from dictionary"""
data_copy = data.copy()
# Use cached fields if available, otherwise compute them
if not hasattr(cls, '_known_fields_cache'):
if not hasattr(cls, "_known_fields_cache"):
known_fields = set()
for c in cls.mro():
if hasattr(c, '__annotations__'):
if hasattr(c, "__annotations__"):
known_fields.update(c.__annotations__.keys())
cls._known_fields_cache = known_fields
@@ -58,7 +66,11 @@ class BaseModelMetadata:
fields_to_use = {k: v for k, v in data_copy.items() if k in known_fields}
# Store unknown fields separately
unknown_fields = {k: v for k, v in data_copy.items() if k not in known_fields and not k.startswith('_')}
unknown_fields = {
k: v
for k, v in data_copy.items()
if k not in known_fields and not k.startswith("_")
}
# Create instance with known fields
instance = cls(**fields_to_use)
@@ -73,10 +85,10 @@ class BaseModelMetadata:
result = asdict(self)
# Remove private fields
result = {k: v for k, v in result.items() if not k.startswith('_')}
result = {k: v for k, v in result.items() if not k.startswith("_")}
# Add back unknown fields if they exist
if hasattr(self, '_unknown_fields'):
if hasattr(self, "_unknown_fields"):
result.update(self._unknown_fields)
return result
@@ -85,17 +97,29 @@ class BaseModelMetadata:
"""Update Civitai information"""
self.civitai = civitai_data
def update_file_info(self, file_path: str) -> None:
"""Update metadata with actual file information"""
def update_file_info(self, file_path: str, update_timestamps: bool = False) -> None:
"""
Update metadata with actual file information.
Args:
file_path: Path to the model file
update_timestamps: If True, update size and modified from filesystem.
If False (default), only update file_path and file_name.
Set to True only when file has been moved/relocated.
"""
if os.path.exists(file_path):
self.size = os.path.getsize(file_path)
self.modified = os.path.getmtime(file_path)
self.file_path = file_path.replace(os.sep, '/')
# Update file_name when file_path changes
if update_timestamps:
# Only update size and modified when file has been relocated
self.size = os.path.getsize(file_path)
self.modified = os.path.getmtime(file_path)
# Always update paths when this method is called
self.file_path = file_path.replace(os.sep, "/")
self.file_name = os.path.splitext(os.path.basename(file_path))[0]
@staticmethod
def generate_unique_filename(target_dir: str, base_name: str, extension: str, hash_provider: callable = None) -> str:
def generate_unique_filename(
target_dir: str, base_name: str, extension: str, hash_provider: callable = None
) -> str:
"""Generate a unique filename to avoid conflicts
Args:
@@ -136,115 +160,126 @@ class BaseModelMetadata:
return unique_filename
@dataclass
class LoraMetadata(BaseModelMetadata):
"""Represents the metadata structure for a Lora model"""
usage_tips: str = "{}" # Usage tips for the model, json string
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':
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.get('name', '')
base_model = determine_base_model(version_info.get('baseModel', ''))
file_name = file_info.get("name", "")
base_model = determine_base_model(version_info.get("baseModel", ""))
# Extract tags and description if available
tags = []
description = ""
model_data = version_info.get('model') or {}
if 'tags' in model_data:
tags = model_data['tags']
if 'description' in model_data:
description = model_data['description']
model_data = version_info.get("model") or {}
if "tags" in model_data:
tags = model_data["tags"]
if "description" in model_data:
description = model_data["description"]
return cls(
file_name=os.path.splitext(file_name)[0],
model_name=model_data.get('name', os.path.splitext(file_name)[0]),
file_path=save_path.replace(os.sep, '/'),
size=file_info.get('sizeKB', 0) * 1024,
model_name=model_data.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.get('hashes') or {}).get('SHA256', '').lower(),
sha256=(file_info.get("hashes") or {}).get("SHA256", "").lower(),
base_model=base_model,
preview_url='', # Will be updated after preview download
preview_nsfw_level=0, # Will be updated after preview download
preview_url="", # 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
modelDescription=description,
)
@dataclass
class CheckpointMetadata(BaseModelMetadata):
"""Represents the metadata structure for a Checkpoint model"""
sub_type: str = "checkpoint" # Model sub-type (checkpoint, diffusion_model, etc.)
@classmethod
def from_civitai_info(cls, version_info: Dict, file_info: Dict, save_path: str) -> 'CheckpointMetadata':
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.get('name', '')
base_model = determine_base_model(version_info.get('baseModel', ''))
sub_type = version_info.get('type', 'checkpoint')
file_name = file_info.get("name", "")
base_model = determine_base_model(version_info.get("baseModel", ""))
sub_type = version_info.get("type", "checkpoint")
# Extract tags and description if available
tags = []
description = ""
model_data = version_info.get('model') or {}
if 'tags' in model_data:
tags = model_data['tags']
if 'description' in model_data:
description = model_data['description']
model_data = version_info.get("model") or {}
if "tags" in model_data:
tags = model_data["tags"]
if "description" in model_data:
description = model_data["description"]
return cls(
file_name=os.path.splitext(file_name)[0],
model_name=model_data.get('name', os.path.splitext(file_name)[0]),
file_path=save_path.replace(os.sep, '/'),
size=file_info.get('sizeKB', 0) * 1024,
model_name=model_data.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.get('hashes') or {}).get('SHA256', '').lower(),
sha256=(file_info.get("hashes") or {}).get("SHA256", "").lower(),
base_model=base_model,
preview_url='', # Will be updated after preview download
preview_url="", # Will be updated after preview download
preview_nsfw_level=0,
from_civitai=True,
civitai=version_info,
sub_type=sub_type,
tags=tags,
modelDescription=description
modelDescription=description,
)
@dataclass
class EmbeddingMetadata(BaseModelMetadata):
"""Represents the metadata structure for an Embedding model"""
sub_type: str = "embedding"
@classmethod
def from_civitai_info(cls, version_info: Dict, file_info: Dict, save_path: str) -> 'EmbeddingMetadata':
def from_civitai_info(
cls, version_info: Dict, file_info: Dict, save_path: str
) -> "EmbeddingMetadata":
"""Create EmbeddingMetadata instance from Civitai version info"""
file_name = file_info.get('name', '')
base_model = determine_base_model(version_info.get('baseModel', ''))
sub_type = version_info.get('type', 'embedding')
file_name = file_info.get("name", "")
base_model = determine_base_model(version_info.get("baseModel", ""))
sub_type = version_info.get("type", "embedding")
# Extract tags and description if available
tags = []
description = ""
model_data = version_info.get('model') or {}
if 'tags' in model_data:
tags = model_data['tags']
if 'description' in model_data:
description = model_data['description']
model_data = version_info.get("model") or {}
if "tags" in model_data:
tags = model_data["tags"]
if "description" in model_data:
description = model_data["description"]
return cls(
file_name=os.path.splitext(file_name)[0],
model_name=model_data.get('name', os.path.splitext(file_name)[0]),
file_path=save_path.replace(os.sep, '/'),
size=file_info.get('sizeKB', 0) * 1024,
model_name=model_data.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.get('hashes') or {}).get('SHA256', '').lower(),
sha256=(file_info.get("hashes") or {}).get("SHA256", "").lower(),
base_model=base_model,
preview_url='', # Will be updated after preview download
preview_url="", # Will be updated after preview download
preview_nsfw_level=0,
from_civitai=True,
civitai=version_info,
sub_type=sub_type,
tags=tags,
modelDescription=description
modelDescription=description,
)

View File

@@ -7,24 +7,38 @@ from ..config import config
from ..services.settings_manager import get_settings_manager
import asyncio
def get_lora_info(lora_name):
"""Get the lora path and trigger words from cache"""
async def _get_lora_info_async():
scanner = await ServiceRegistry.get_lora_scanner()
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 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, '/')
# Check all lora roots including extra paths
all_roots = list(config.loras_roots or []) + list(
config.extra_loras_roots or []
)
for root in all_roots:
root = root.replace(os.sep, "/")
if file_path.startswith(root):
relative_path = os.path.relpath(file_path, root).replace(os.sep, '/')
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 []
civitai = item.get("civitai", {})
trigger_words = (
civitai.get("trainedWords", []) if civitai else []
)
return relative_path, trigger_words
# If not found in any root, return path with trigger words from cache
civitai = item.get("civitai", {})
trigger_words = civitai.get("trainedWords", []) if civitai else []
return file_path, trigger_words
return lora_name, []
try:
@@ -58,18 +72,19 @@ def get_lora_info_absolute(lora_name):
tuple: (absolute_path, trigger_words) where absolute_path is the full
file system path to the LoRA file, or original lora_name if not found
"""
async def _get_lora_info_absolute_async():
scanner = await ServiceRegistry.get_lora_scanner()
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 item.get("file_name") == lora_name:
file_path = item.get("file_path")
if file_path:
# Return absolute path directly
# Get trigger words from civitai metadata
civitai = item.get('civitai', {})
trigger_words = civitai.get('trainedWords', []) if civitai else []
civitai = item.get("civitai", {})
trigger_words = civitai.get("trainedWords", []) if civitai else []
return file_path, trigger_words
return lora_name, []
@@ -96,41 +111,152 @@ def get_lora_info_absolute(lora_name):
# No event loop is running, we can use asyncio.run()
return asyncio.run(_get_lora_info_absolute_async())
def fuzzy_match(text: str, pattern: str, threshold: float = 0.85) -> bool:
"""
Check if text matches pattern using fuzzy matching.
Returns True if similarity ratio is above threshold.
"""
if not pattern or not text:
return False
# Convert both to lowercase for case-insensitive matching
text = text.lower()
pattern = pattern.lower()
def get_checkpoint_info_absolute(checkpoint_name):
"""Get the absolute checkpoint path and metadata from cache
# Split pattern into words
search_words = pattern.split()
Supports ComfyUI-style model names (e.g., "folder/model_name.ext")
# Check each word
for word in search_words:
# First check if word is a substring (faster)
if word in text:
Args:
checkpoint_name: The model name, can be:
- ComfyUI format: "folder/model_name.safetensors"
- Simple name: "model_name"
Returns:
tuple: (absolute_path, metadata) where absolute_path is the full
file system path to the checkpoint file, or original checkpoint_name if not found,
metadata is the full model metadata dict or None
"""
async def _get_checkpoint_info_absolute_async():
from ..services.service_registry import ServiceRegistry
scanner = await ServiceRegistry.get_checkpoint_scanner()
cache = await scanner.get_cached_data()
# Get model roots for matching
model_roots = scanner.get_model_roots()
# Normalize the checkpoint name
normalized_name = checkpoint_name.replace(os.sep, "/")
for item in cache.raw_data:
file_path = item.get("file_path", "")
if not file_path:
continue
# If not found as substring, try fuzzy matching
# Check if any part of the text matches this word
found_match = False
for text_part in text.split():
ratio = SequenceMatcher(None, text_part, word).ratio()
if ratio >= threshold:
found_match = True
break
# Format the stored path as ComfyUI-style name
formatted_name = _format_model_name_for_comfyui(file_path, model_roots)
if not found_match:
return False
# Match by formatted name (normalize separators for robust comparison)
if formatted_name.replace(os.sep, "/") == normalized_name or formatted_name == checkpoint_name:
return file_path, item
# Also try matching by basename only (for backward compatibility)
file_name = item.get("file_name", "")
if (
file_name == checkpoint_name
or file_name == os.path.splitext(normalized_name)[0]
):
return file_path, item
return checkpoint_name, None
try:
# Check if we're already in an event loop
loop = asyncio.get_running_loop()
# If we're in a running loop, we need to use a different approach
# Create a new thread to run the async code
import concurrent.futures
def run_in_thread():
new_loop = asyncio.new_event_loop()
asyncio.set_event_loop(new_loop)
try:
return new_loop.run_until_complete(
_get_checkpoint_info_absolute_async()
)
finally:
new_loop.close()
with concurrent.futures.ThreadPoolExecutor() as executor:
future = executor.submit(run_in_thread)
return future.result()
except RuntimeError:
# No event loop is running, we can use asyncio.run()
return asyncio.run(_get_checkpoint_info_absolute_async())
def _format_model_name_for_comfyui(file_path: str, model_roots: list) -> str:
"""Format file path to ComfyUI-style model name (relative path with extension)
Example: /path/to/checkpoints/Illustrious/model.safetensors -> Illustrious/model.safetensors
Args:
file_path: Absolute path to the model file
model_roots: List of model root directories
Returns:
ComfyUI-style model name with relative path and extension
"""
# Find the matching root and get relative path
for root in model_roots:
try:
# Normalize paths for comparison
norm_file = os.path.normcase(os.path.abspath(file_path))
norm_root = os.path.normcase(os.path.abspath(root))
# Add trailing separator for prefix check
if not norm_root.endswith(os.sep):
norm_root += os.sep
if norm_file.startswith(norm_root):
# Use os.path.relpath to get relative path with OS-native separator
return os.path.relpath(file_path, root)
except (ValueError, TypeError):
continue
# If no root matches, just return the basename with extension
return os.path.basename(file_path)
def fuzzy_match(text: str, pattern: str, threshold: float = 0.85) -> bool:
"""
Check if text matches pattern using fuzzy matching.
Returns True if similarity ratio is above threshold.
"""
if not pattern or not text:
return False
# Convert both to lowercase for case-insensitive matching
text = text.lower()
pattern = pattern.lower()
# Split pattern into words
search_words = pattern.split()
# Check each word
for word in search_words:
# First check if word is a substring (faster)
if word in text:
continue
# If not found as substring, try fuzzy matching
# Check if any part of the text matches this word
found_match = False
for text_part in text.split():
ratio = SequenceMatcher(None, text_part, word).ratio()
if ratio >= threshold:
found_match = True
break
if not found_match:
return False
# All words found either as substrings or fuzzy matches
return True
# All words found either as substrings or fuzzy matches
return True
def sanitize_folder_name(name: str, replacement: str = "_") -> str:
"""Sanitize a folder name by removing or replacing invalid characters.
@@ -156,10 +282,13 @@ def sanitize_folder_name(name: str, replacement: str = "_") -> str:
# Collapse repeated replacement characters to a single instance
if replacement:
sanitized = re.sub(f"{re.escape(replacement)}+", replacement, sanitized)
sanitized = sanitized.strip(replacement)
# Remove trailing spaces or periods which are invalid on Windows
sanitized = sanitized.rstrip(" .")
# Combine stripping to be idempotent:
# Right side: strip replacement, space, and dot (Windows restriction)
# Left side: strip replacement and space (leading dots are allowed)
sanitized = sanitized.rstrip(" ." + replacement).lstrip(" " + replacement)
else:
# If no replacement, just strip spaces and dots from right, spaces from left
sanitized = sanitized.rstrip(" .").lstrip(" ")
if not sanitized:
return "unnamed"
@@ -213,11 +342,16 @@ def calculate_recipe_fingerprint(loras):
valid_loras.sort()
# Join in format hash1:strength1|hash2:strength2|...
fingerprint = "|".join([f"{hash_value}:{strength}" for hash_value, strength in valid_loras])
fingerprint = "|".join(
[f"{hash_value}:{strength}" for hash_value, strength in valid_loras]
)
return fingerprint
def calculate_relative_path_for_model(model_data: Dict, model_type: str = 'lora') -> str:
def calculate_relative_path_for_model(
model_data: Dict, model_type: str = "lora"
) -> str:
"""Calculate relative path for existing model using template from settings
Args:
@@ -233,54 +367,57 @@ def calculate_relative_path_for_model(model_data: Dict, model_type: str = 'lora'
# If template is empty, return empty path (flat structure)
if not path_template:
return ''
return ""
# Get base model name from model metadata
civitai_data = model_data.get('civitai', {})
civitai_data = model_data.get("civitai", {})
# For CivitAI models, prefer civitai data only if 'id' exists; for non-CivitAI models, use model_data directly
if civitai_data and civitai_data.get('id') is not None:
base_model = model_data.get('base_model', '')
if civitai_data and civitai_data.get("id") is not None:
base_model = model_data.get("base_model", "")
# Get author from civitai creator data
creator_info = civitai_data.get('creator') or {}
author = creator_info.get('username') or 'Anonymous'
creator_info = civitai_data.get("creator") or {}
author = creator_info.get("username") or "Anonymous"
else:
# Fallback to model_data fields for non-CivitAI models
base_model = model_data.get('base_model', '')
author = 'Anonymous' # Default for non-CivitAI models
base_model = model_data.get("base_model", "")
author = "Anonymous" # Default for non-CivitAI models
model_tags = model_data.get('tags', [])
model_tags = model_data.get("tags", [])
# Apply mapping if available
base_model_mappings = settings_manager.get('base_model_path_mappings', {})
base_model_mappings = settings_manager.get("base_model_path_mappings", {})
mapped_base_model = base_model_mappings.get(base_model, base_model)
# Convert all tags to lowercase to avoid case sensitivity issues on Windows
lowercase_tags = [tag.lower() for tag in model_tags if isinstance(tag, str)]
first_tag = settings_manager.resolve_priority_tag_for_model(lowercase_tags, model_type)
first_tag = settings_manager.resolve_priority_tag_for_model(
lowercase_tags, model_type
)
if not first_tag:
first_tag = 'no tags' # Default if no tags available
first_tag = "no tags" # Default if no tags available
# Format the template with available data
model_name = sanitize_folder_name(model_data.get('model_name', ''))
version_name = ''
model_name = sanitize_folder_name(model_data.get("model_name", ""))
version_name = ""
if isinstance(civitai_data, dict):
version_name = sanitize_folder_name(civitai_data.get('name') or '')
version_name = sanitize_folder_name(civitai_data.get("name") or "")
formatted_path = path_template
formatted_path = formatted_path.replace('{base_model}', mapped_base_model)
formatted_path = formatted_path.replace('{first_tag}', first_tag)
formatted_path = formatted_path.replace('{author}', author)
formatted_path = formatted_path.replace('{model_name}', model_name)
formatted_path = formatted_path.replace('{version_name}', version_name)
formatted_path = formatted_path.replace("{base_model}", mapped_base_model)
formatted_path = formatted_path.replace("{first_tag}", first_tag)
formatted_path = formatted_path.replace("{author}", author)
formatted_path = formatted_path.replace("{model_name}", model_name)
formatted_path = formatted_path.replace("{version_name}", version_name)
if model_type == 'embedding':
formatted_path = formatted_path.replace(' ', '_')
if model_type == "embedding":
formatted_path = formatted_path.replace(" ", "_")
return formatted_path
def remove_empty_dirs(path):
"""Recursively remove empty directories starting from the given path.

View File

@@ -1,7 +1,7 @@
[project]
name = "comfyui-lora-manager"
description = "Revolutionize your workflow with the ultimate LoRA companion for ComfyUI!"
version = "0.9.16"
version = "1.0.0"
license = {file = "LICENSE"}
dependencies = [
"aiohttp",

View File

@@ -1,5 +1,5 @@
[pytest]
addopts = -v --import-mode=importlib
addopts = -v --import-mode=importlib -m "not performance" --ignore=__init__.py
testpaths = tests
python_files = test_*.py
python_classes = Test*
@@ -12,5 +12,6 @@ markers =
asyncio: execute test within asyncio event loop
no_settings_dir_isolation: allow tests to use real settings paths
integration: integration tests requiring external resources
performance: performance benchmarks (slow, skip by default)
# Skip problematic directories to avoid import conflicts
norecursedirs = .git .tox dist build *.egg __pycache__ py .hypothesis

View File

@@ -0,0 +1,63 @@
import json
import os
import re
def update_readme():
# 1. Read JSON data
json_path = 'data/supporters.json'
if not os.path.exists(json_path):
print(f"Error: {json_path} not found.")
return
with open(json_path, 'r', encoding='utf-8') as f:
data = json.load(f)
# 2. Generate Markdown content
special_thanks = data.get('specialThanks', [])
all_supporters = data.get('allSupporters', [])
total_count = data.get('totalCount', len(all_supporters))
md_content = "\n### 🌟 Special Thanks\n\n"
if special_thanks:
md_content += ", ".join([f"**{name}**" for name in special_thanks]) + "\n\n"
else:
md_content += "*None yet*\n\n"
md_content += f"### 💖 Supporters ({total_count})\n\n"
if all_supporters:
# Using a details block for the long list of supporters
md_content += "<details>\n<summary>Click to view all awesome supporters</summary>\n<br>\n\n"
md_content += ", ".join(all_supporters)
md_content += "\n\n</details>\n"
else:
md_content += "*No supporters listed yet*\n"
# 3. Read existing README.md
readme_path = 'README.md'
with open(readme_path, 'r', encoding='utf-8') as f:
readme = f.read()
# 4. Replace content between placeholders
start_tag = '<!-- SUPPORTERS-START -->'
end_tag = '<!-- SUPPORTERS-END -->'
if start_tag not in readme or end_tag not in readme:
print(f"Error: Placeholders {start_tag} and {end_tag} not found in {readme_path}")
return
# Using non-regex replacement to avoid issues with special characters in names
parts = readme.split(start_tag)
before_start = parts[0]
after_start = parts[1].split(end_tag)
after_end = after_start[1]
new_readme = f"{before_start}{start_tag}\n{md_content}\n{end_tag}{after_end}"
# 5. Write back to README.md
with open(readme_path, 'w', encoding='utf-8') as f:
f.write(new_readme)
print(f"Successfully updated {readme_path} with {len(all_supporters)} supporters!")
if __name__ == '__main__':
update_readme()

View File

@@ -345,6 +345,7 @@ class StandaloneLoraManager(LoraManager):
"/ws/download-progress", ws_manager.handle_download_connection
)
app.router.add_get("/ws/init-progress", ws_manager.handle_init_connection)
app.router.add_get("/ws/batch-import-progress", ws_manager.handle_connection)
# Schedule service initialization
app.on_startup.append(lambda app: cls._initialize_services())

View File

@@ -68,6 +68,7 @@ body {
--space-1: calc(8px * 1);
--space-2: calc(8px * 2);
--space-3: calc(8px * 3);
--space-4: calc(8px * 4);
/* Z-index Scale */
--z-base: 10;
@@ -77,6 +78,7 @@ body {
/* Border Radius */
--border-radius-base: 12px;
--border-radius-md: 12px;
--border-radius-sm: 8px;
--border-radius-xs: 4px;

View File

@@ -0,0 +1,677 @@
/* Batch Import Modal Styles */
/* Step Containers */
.batch-import-step {
margin: var(--space-2) 0;
}
/* Section Description */
.section-description {
color: var(--text-color);
opacity: 0.8;
margin-bottom: var(--space-2);
font-size: 0.95em;
}
/* Hint Text */
.input-hint {
display: flex;
align-items: center;
gap: 6px;
color: var(--text-color);
opacity: 0.7;
font-size: 0.85em;
margin-top: 6px;
}
.input-hint i {
color: var(--lora-accent);
}
/* Textarea Styling */
#batchUrlInput {
width: 100%;
min-height: 120px;
padding: 12px;
border: 1px solid var(--border-color);
border-radius: var(--border-radius-xs);
background: var(--bg-color);
color: var(--text-color);
font-family: inherit;
font-size: 0.9em;
resize: vertical;
transition: border-color 0.2s, box-shadow 0.2s;
}
#batchUrlInput:focus {
outline: none;
border-color: var(--lora-accent);
box-shadow: 0 0 0 2px oklch(from var(--lora-accent) l c h / 0.2);
}
/* Checkbox Group */
.checkbox-group {
margin-top: var(--space-2);
}
.checkbox-label {
display: flex;
align-items: center;
gap: 10px;
cursor: pointer;
color: var(--text-color);
font-size: 0.95em;
user-select: none;
}
.checkbox-label input[type="checkbox"] {
display: none;
}
.checkmark {
width: 18px;
height: 18px;
border: 2px solid var(--border-color);
border-radius: 4px;
display: flex;
align-items: center;
justify-content: center;
transition: all 0.2s;
background: var(--bg-color);
}
.checkbox-label input[type="checkbox"]:checked + .checkmark {
background: var(--lora-accent);
border-color: var(--lora-accent);
}
.checkbox-label input[type="checkbox"]:checked + .checkmark::after {
content: '\f00c';
font-family: 'Font Awesome 6 Free';
font-weight: 900;
color: var(--lora-text);
font-size: 12px;
}
/* Batch Options */
.batch-options {
margin-top: var(--space-3);
padding-top: var(--space-3);
border-top: 1px solid var(--border-color);
}
/* Input with Button */
.input-with-button {
display: flex;
gap: 8px;
}
.input-with-button input {
flex: 1;
min-width: 0;
}
.input-with-button button {
flex-shrink: 0;
white-space: nowrap;
padding: 8px 16px;
background: var(--lora-accent);
color: var(--lora-text);
border: none;
border-radius: var(--border-radius-xs);
cursor: pointer;
transition: background-color 0.2s;
}
.input-with-button button:hover {
background: oklch(from var(--lora-accent) l c h / 0.9);
}
/* Dark theme adjustments for input-with-button */
[data-theme="dark"] .input-with-button button {
background: var(--lora-accent);
color: var(--lora-text);
}
[data-theme="dark"] .input-with-button button:hover {
background: oklch(from var(--lora-accent) calc(l - 0.1) c h);
}
/* Directory Browser */
.directory-browser {
margin-top: var(--space-3);
border: 1px solid var(--border-color);
border-radius: var(--border-radius-xs);
background: var(--lora-surface);
overflow: hidden;
}
.browser-header {
display: flex;
align-items: center;
gap: 10px;
padding: 10px 12px;
background: var(--bg-color);
border-bottom: 1px solid var(--border-color);
}
.back-btn {
display: flex;
align-items: center;
justify-content: center;
width: 32px;
height: 32px;
border: 1px solid var(--border-color);
border-radius: var(--border-radius-xs);
background: var(--card-bg);
color: var(--text-color);
cursor: pointer;
transition: all 0.2s;
}
.back-btn:hover {
border-color: var(--lora-accent);
background: var(--bg-color);
}
.back-btn:disabled {
opacity: 0.5;
cursor: not-allowed;
}
.current-path {
flex: 1;
padding: 6px 10px;
background: var(--card-bg);
border: 1px solid var(--border-color);
border-radius: var(--border-radius-xs);
font-size: 0.9em;
color: var(--text-color);
white-space: nowrap;
overflow: hidden;
text-overflow: ellipsis;
}
.browser-content {
max-height: 300px;
overflow-y: auto;
padding: 12px;
}
.browser-section {
margin-bottom: 16px;
}
.browser-section:last-child {
margin-bottom: 0;
}
.section-label {
display: flex;
align-items: center;
gap: 8px;
font-weight: 600;
font-size: 0.85em;
color: var(--text-color);
margin-bottom: 8px;
padding-bottom: 6px;
border-bottom: 1px solid var(--border-color);
}
.section-label i {
color: var(--lora-accent);
}
.folder-list,
.file-list {
display: flex;
flex-direction: column;
gap: 4px;
}
.folder-item,
.file-item {
display: flex;
align-items: center;
gap: 10px;
padding: 8px 10px;
border-radius: var(--border-radius-xs);
cursor: pointer;
transition: all 0.2s;
border: 1px solid transparent;
}
.folder-item:hover,
.file-item:hover {
background: var(--lora-surface-hover, oklch(from var(--lora-accent) l c h / 0.1));
border-color: var(--lora-accent);
}
.folder-item.selected,
.file-item.selected {
background: oklch(from var(--lora-accent) l c h / 0.15);
border-color: var(--lora-accent);
}
.folder-item i {
color: #fbbf24;
font-size: 1.1em;
}
.file-item i {
color: var(--text-color);
opacity: 0.6;
font-size: 1em;
}
.item-name {
flex: 1;
font-size: 0.9em;
color: var(--text-color);
white-space: nowrap;
overflow: hidden;
text-overflow: ellipsis;
}
.item-size {
font-size: 0.8em;
color: var(--text-color);
opacity: 0.6;
}
.browser-footer {
display: flex;
justify-content: space-between;
align-items: center;
padding: 10px 12px;
background: var(--bg-color);
border-top: 1px solid var(--border-color);
}
.stats {
font-size: 0.85em;
color: var(--text-color);
opacity: 0.8;
}
.stats span {
font-weight: 600;
color: var(--lora-accent);
}
/* Dark theme adjustments */
[data-theme="dark"] .directory-browser {
background: var(--card-bg);
}
[data-theme="dark"] .browser-header,
[data-theme="dark"] .browser-footer {
background: var(--lora-surface);
}
[data-theme="dark"] .folder-item i {
color: #fcd34d;
}
/* Progress Container */
.batch-progress-container {
padding: var(--space-3);
background: var(--lora-surface);
border-radius: var(--border-radius-sm);
margin-bottom: var(--space-3);
}
.progress-header {
display: flex;
justify-content: space-between;
align-items: center;
margin-bottom: var(--space-2);
}
.progress-status {
display: flex;
align-items: center;
gap: 10px;
}
.status-icon {
color: var(--lora-accent);
font-size: 1.1em;
}
.status-icon i {
animation: fa-spin 2s infinite linear;
}
.status-text {
font-weight: 500;
color: var(--text-color);
}
.progress-percentage {
font-size: 1.2em;
font-weight: 600;
color: var(--lora-accent);
}
/* Progress Bar */
.progress-bar-container {
height: 8px;
background: var(--bg-color);
border-radius: 4px;
overflow: hidden;
margin-bottom: var(--space-3);
}
.progress-bar {
height: 100%;
background: linear-gradient(90deg, var(--lora-accent), oklch(from var(--lora-accent) calc(l + 0.1) c h));
border-radius: 4px;
transition: width 0.3s ease;
}
/* Progress Stats */
.progress-stats {
display: grid;
grid-template-columns: repeat(4, 1fr);
gap: var(--space-2);
margin-bottom: var(--space-2);
}
.stat-item {
display: flex;
flex-direction: column;
align-items: center;
padding: var(--space-2);
background: var(--bg-color);
border-radius: var(--border-radius-xs);
border: 1px solid var(--border-color);
}
.stat-item.success {
border-left: 3px solid #00B87A;
}
.stat-item.failed {
border-left: 3px solid var(--lora-error);
}
.stat-item.skipped {
border-left: 3px solid var(--lora-warning);
}
.stat-label {
font-size: 0.8em;
color: var(--text-color);
opacity: 0.7;
margin-bottom: 4px;
}
.stat-value {
font-size: 1.4em;
font-weight: 600;
color: var(--text-color);
}
/* Current Item */
.current-item {
display: flex;
align-items: baseline;
gap: 10px;
padding: var(--space-2);
background: var(--bg-color);
border-radius: var(--border-radius-xs);
font-size: 0.9em;
}
.current-item-label {
color: var(--text-color);
opacity: 0.7;
flex-shrink: 0;
}
.current-item-name {
color: var(--text-color);
font-weight: 500;
flex: 1;
white-space: nowrap;
overflow: hidden;
text-overflow: ellipsis;
line-height: 1.2;
}
/* Results Container */
.batch-results-container {
padding: var(--space-3);
background: var(--lora-surface);
border-radius: var(--border-radius-sm);
margin-bottom: var(--space-3);
}
.results-header {
text-align: center;
margin-bottom: var(--space-3);
}
.results-icon {
font-size: 3em;
color: #00B87A;
margin-bottom: var(--space-1);
}
.results-icon.warning {
color: var(--lora-warning);
}
.results-icon.error {
color: var(--lora-error);
}
.results-title {
font-size: 1.3em;
font-weight: 600;
color: var(--text-color);
}
/* Results Summary - Matches progress-stats styling */
.results-summary {
display: grid;
grid-template-columns: repeat(4, 1fr);
gap: var(--space-2);
margin-bottom: var(--space-3);
}
.result-card {
display: flex;
flex-direction: column;
align-items: center;
padding: var(--space-2);
background: var(--bg-color);
border-radius: var(--border-radius-xs);
border: 1px solid var(--border-color);
text-align: center;
}
.result-card.success {
border-left: 3px solid #00B87A;
}
.result-card.failed {
border-left: 3px solid var(--lora-error);
}
.result-card.skipped {
border-left: 3px solid var(--lora-warning);
}
.result-label {
font-size: 0.8em;
color: var(--text-color);
opacity: 0.7;
margin-bottom: 4px;
}
.result-value {
font-size: 1.4em;
font-weight: 600;
color: var(--text-color);
}
/* Results Details */
.results-details {
border-top: 1px solid var(--border-color);
padding-top: var(--space-2);
}
.details-toggle {
display: flex;
align-items: center;
justify-content: center;
gap: 8px;
padding: 10px;
cursor: pointer;
color: var(--lora-accent);
font-weight: 500;
border-radius: var(--border-radius-xs);
transition: background 0.2s;
}
.details-toggle:hover {
background: oklch(from var(--lora-accent) l c h / 0.1);
}
.details-toggle i {
transition: transform 0.2s;
}
.details-toggle.expanded i {
transform: rotate(180deg);
}
.details-list {
max-height: 250px;
overflow-y: auto;
margin-top: var(--space-2);
background: var(--bg-color);
border-radius: var(--border-radius-xs);
border: 1px solid var(--border-color);
}
/* Result Item in Details */
.result-item {
display: flex;
align-items: center;
gap: 10px;
padding: 10px 12px;
border-bottom: 1px solid var(--border-color);
font-size: 0.9em;
}
.result-item:last-child {
border-bottom: none;
}
.result-item-status {
width: 24px;
height: 24px;
border-radius: 50%;
display: flex;
align-items: center;
justify-content: center;
font-size: 0.8em;
}
.result-item-status.success {
background: oklch(from #00B87A l c h / 0.2);
color: #00B87A;
}
.result-item-status.failed {
background: oklch(from var(--lora-error) l c h / 0.2);
color: var(--lora-error);
}
.result-item-status.skipped {
background: oklch(from var(--lora-warning) l c h / 0.2);
color: var(--lora-warning);
}
.result-item-info {
flex: 1;
min-width: 0;
}
.result-item-name {
font-weight: 500;
color: var(--text-color);
white-space: nowrap;
overflow: hidden;
text-overflow: ellipsis;
}
.result-item-error {
font-size: 0.8em;
color: var(--lora-error);
margin-top: 2px;
}
/* Responsive Adjustments */
@media (max-width: 768px) {
.progress-stats,
.results-summary {
grid-template-columns: repeat(2, 1fr);
}
.batch-progress-container,
.batch-results-container {
padding: var(--space-2);
}
}
/* Dark Theme Adjustments */
[data-theme="dark"] .batch-progress-container,
[data-theme="dark"] .batch-results-container {
background: var(--card-bg);
}
[data-theme="dark"] .stat-item,
[data-theme="dark"] .result-card,
[data-theme="dark"] .current-item,
[data-theme="dark"] .details-list {
background: var(--lora-surface);
}
/* Cancelled State */
.batch-progress-container.cancelled .progress-bar {
background: var(--lora-warning);
}
.batch-progress-container.cancelled .status-icon {
color: var(--lora-warning);
}
/* Error State */
.batch-progress-container.error .progress-bar {
background: var(--lora-error);
}
.batch-progress-container.error .status-icon {
color: var(--lora-error);
}
/* Completed State */
.batch-progress-container.completed .progress-bar {
background: #00B87A;
}
.batch-progress-container.completed .status-icon {
color: #00B87A;
}
.batch-progress-container.completed .status-icon i {
animation: none;
}
.batch-progress-container.completed .status-icon i::before {
content: '\f00c';
}

View File

@@ -130,7 +130,7 @@
max-height: 400px;
overflow-y: auto;
box-shadow: 0 2px 10px rgba(0, 0, 0, 0.2);
z-index: 1000;
z-index: var(--z-overlay);
display: none;
backdrop-filter: blur(10px);
}

View File

@@ -1,6 +1,26 @@
/* Support Modal Styles */
.support-modal {
max-width: 570px;
max-width: 1000px;
width: 90vw;
}
/* Two-column layout */
.support-container {
display: flex;
gap: var(--space-3);
min-height: 500px;
}
.support-left {
flex: 0 0 42%;
min-width: 0;
}
.support-right {
flex: 1;
min-width: 0;
border-left: 1px solid var(--lora-border);
padding-left: var(--space-4);
}
.support-header {
@@ -214,6 +234,11 @@
.support-links {
flex-direction: column;
}
.support-modal {
width: 95vw;
max-width: 95vw;
}
}
/* Civitai link styles */
@@ -240,3 +265,222 @@
border-color: var(--lora-accent);
box-shadow: 0 2px 4px rgba(0, 0, 0, 0.1);
}
/* Supporters Section Styles */
.supporters-section {
height: 100%;
display: flex;
flex-direction: column;
}
.supporters-header {
margin-bottom: var(--space-4);
}
.supporters-title {
display: flex;
align-items: center;
gap: var(--space-2);
margin: 0 0 var(--space-1) 0;
font-size: 1.3em !important;
color: var(--lora-accent) !important;
}
.supporters-title i {
opacity: 0.9;
}
.supporters-subtitle {
margin: 0;
font-size: 0.95em;
color: var(--text-color);
opacity: 0.6;
}
.supporters-group {
margin-bottom: var(--space-3);
}
.supporters-group-title {
display: flex;
align-items: center;
gap: 8px;
margin: 0 0 var(--space-2) 0;
font-size: 1em;
color: var(--text-color);
opacity: 0.8;
font-weight: 500;
}
.supporters-group-title i {
color: var(--lora-accent);
opacity: 0.7;
}
/* Special Thanks - Clean Card Style */
.special-thanks-group {
margin-bottom: var(--space-4);
}
.special-thanks-group .supporters-group-title {
margin-bottom: var(--space-3);
}
.special-thanks-group .supporters-group-title i {
color: #fbbf24;
}
.all-supporters-group .supporters-group-title i {
color: var(--lora-error);
opacity: 0.9;
}
.supporters-special-grid {
display: grid;
grid-template-columns: repeat(2, 1fr);
gap: var(--space-2);
}
.supporter-special-card {
display: flex;
align-items: center;
padding: var(--space-2) var(--space-3);
background: var(--card-bg);
border: 1px solid var(--border-color);
border-left: 3px solid var(--lora-accent);
border-radius: var(--border-radius-sm);
transition: all 0.2s ease;
cursor: default;
}
.supporter-special-card:hover {
border-color: var(--lora-accent);
border-left-color: var(--lora-accent);
box-shadow: 0 2px 8px rgba(0, 0, 0, 0.08);
transform: translateX(4px);
}
.supporter-special-card .supporter-special-name {
font-size: 1em;
font-weight: 500;
color: var(--text-color);
white-space: nowrap;
overflow: hidden;
text-overflow: ellipsis;
}
.supporter-special-card:hover .supporter-special-name {
color: var(--lora-accent);
}
/* All Supporters - Elegant Text Flow */
.all-supporters-group {
flex: 1;
display: flex;
flex-direction: column;
position: relative; /* Base for masks */
}
/* Optional: Fading effect for credits feel at top and bottom */
.all-supporters-group::before,
.all-supporters-group::after {
content: '';
position: absolute;
left: 0;
right: 0;
height: 40px;
pointer-events: none;
z-index: 2;
}
.all-supporters-group::before {
top: 30px; /* Below the title */
background: linear-gradient(to bottom, var(--lora-surface), transparent);
}
.all-supporters-group::after {
bottom: 0;
background: linear-gradient(to top, var(--lora-surface), transparent);
}
.all-supporters-group .supporters-group-title {
margin-bottom: var(--space-2);
}
.supporters-all-list {
display: flex;
flex-wrap: wrap;
align-items: baseline;
line-height: 2.2;
max-height: 550px;
overflow-y: auto;
padding: var(--space-2) 0 40px 0; /* Extra padding at bottom for final visibility */
color: var(--text-color);
scroll-behavior: auto; /* Ensure manual scroll is immediate */
}
/* Subtle scrollbar for credits look */
.supporters-all-list::-webkit-scrollbar {
width: 4px;
}
.supporters-all-list::-webkit-scrollbar-track {
background: transparent;
}
.supporters-all-list::-webkit-scrollbar-thumb {
background: rgba(0, 0, 0, 0.05);
border-radius: 4px;
}
.supporters-all-list:hover::-webkit-scrollbar-thumb {
background: rgba(0, 0, 0, 0.15);
}
.supporter-name-item {
font-size: 0.95em;
color: var(--text-color);
opacity: 0.85;
transition: all 0.2s ease;
white-space: nowrap;
cursor: default;
}
.supporter-name-item:hover {
opacity: 1;
color: var(--lora-accent);
}
.supporter-separator {
margin: 0 10px;
color: var(--text-color);
opacity: 0.25;
font-weight: 300;
user-select: none;
}
/* Responsive adjustments */
@media (max-width: 768px) {
.support-container {
flex-direction: column;
}
.support-left {
flex: 1;
}
.support-right {
border-left: none;
border-top: 1px solid var(--lora-border);
padding-left: 0;
padding-top: var(--space-3);
}
.supporters-all-list {
max-height: 200px;
}
.supporters-special-grid {
grid-template-columns: 1fr;
}
}

View File

@@ -250,12 +250,11 @@
.changelog-content {
max-height: 550px;
overflow-y: auto;
padding-left: var(--space-3);
}
.changelog-item {
margin-bottom: var(--space-2);
padding-bottom: var(--space-2);
padding: var(--space-2);
border-bottom: 1px solid var(--lora-border);
}
@@ -303,7 +302,6 @@
.changelog-item.latest {
background-color: rgba(66, 153, 225, 0.05);
border-radius: var(--border-radius-sm);
padding: var(--space-2);
border: 1px solid rgba(66, 153, 225, 0.2);
}

View File

@@ -573,3 +573,171 @@
.sidebar-tree-container::-webkit-scrollbar-thumb:hover {
background: var(--text-muted);
}
/* ===== Drag and Drop - Create Folder Zone ===== */
/* Empty state drag hint */
.sidebar-empty-hint {
margin-top: 12px;
font-size: 0.8em;
color: var(--text-muted);
display: flex;
align-items: center;
justify-content: center;
gap: 6px;
padding: 8px;
border-radius: var(--border-radius-xs);
background: oklch(var(--lora-accent-l) var(--lora-accent-c) var(--lora-accent-h) / 0.05);
border: 1px dashed oklch(var(--lora-accent-l) var(--lora-accent-c) var(--lora-accent-h) / 0.2);
}
.sidebar-empty-hint i {
font-size: 0.9em;
opacity: 0.8;
margin: 0;
display: inline;
}
/* Create folder drop zone */
.sidebar-create-folder-zone {
position: absolute;
bottom: 16px;
left: 16px;
right: 16px;
padding: 16px;
border: 2px dashed oklch(var(--lora-accent-l) var(--lora-accent-c) var(--lora-accent-h) / 0.4);
border-radius: var(--border-radius-xs);
background: oklch(var(--lora-accent-l) var(--lora-accent-c) var(--lora-accent-h) / 0.08);
opacity: 0;
transform: translateY(10px);
transition: all 0.2s ease;
pointer-events: none;
z-index: 10;
}
.sidebar-create-folder-zone.active {
opacity: 1;
transform: translateY(0);
}
.sidebar-create-folder-content {
display: flex;
flex-direction: column;
align-items: center;
gap: 8px;
color: var(--lora-accent);
font-size: 0.85em;
text-align: center;
}
.sidebar-create-folder-content i {
font-size: 1.5em;
opacity: 0.8;
}
/* Create folder input container */
.sidebar-create-folder-input-container {
position: absolute;
bottom: 16px;
left: 16px;
right: 16px;
padding: 12px;
background: var(--bg-color);
border: 1px solid var(--border-color);
border-radius: var(--border-radius-xs);
box-shadow: 0 3px 8px rgba(0, 0, 0, 0.15);
z-index: 20;
animation: slideUp 0.2s ease;
}
@keyframes slideUp {
from {
opacity: 0;
transform: translateY(10px);
}
to {
opacity: 1;
transform: translateY(0);
}
}
.sidebar-create-folder-input-wrapper {
display: flex;
align-items: center;
gap: 8px;
}
.sidebar-create-folder-input-wrapper > i {
color: var(--lora-accent);
font-size: 1em;
}
.sidebar-create-folder-input {
flex: 1;
padding: 6px 10px;
border: 1px solid var(--border-color);
border-radius: var(--border-radius-xs);
background: var(--bg-color);
color: var(--text-color);
font-size: 0.85em;
outline: none;
transition: all 0.2s ease;
}
.sidebar-create-folder-input:focus {
border-color: var(--lora-accent);
box-shadow: 0 0 0 2px oklch(var(--lora-accent-l) var(--lora-accent-c) var(--lora-accent-h) / 0.15);
}
.sidebar-create-folder-btn {
width: 28px;
height: 28px;
display: flex;
align-items: center;
justify-content: center;
border: none;
border-radius: var(--border-radius-xs);
cursor: pointer;
transition: all 0.2s ease;
background: transparent;
color: var(--text-muted);
}
.sidebar-create-folder-btn:hover {
background: var(--lora-surface);
color: var(--text-color);
}
.sidebar-create-folder-confirm:hover {
background: oklch(from var(--success-color) l c h / 0.15);
color: var(--success-color);
}
.sidebar-create-folder-cancel:hover {
background: oklch(from var(--error-color) l c h / 0.15);
color: var(--error-color);
}
.sidebar-create-folder-hint {
margin-top: 6px;
font-size: 0.75em;
color: var(--text-muted);
text-align: center;
opacity: 0.8;
}
/* Dragging state for sidebar */
.folder-sidebar.dragging-active {
border-color: oklch(var(--lora-accent-l) var(--lora-accent-c) var(--lora-accent-h) / 0.5);
box-shadow: 0 0 0 3px oklch(var(--lora-accent-l) var(--lora-accent-c) var(--lora-accent-h) / 0.1),
0 2px 8px rgba(0, 0, 0, 0.08);
}
.folder-sidebar.dragging-active .sidebar-tree-container {
background: oklch(var(--lora-accent-l) var(--lora-accent-c) var(--lora-accent-h) / 0.02);
}
/* Tree container positioning for create folder elements */
.sidebar-tree-container {
position: relative;
}

View File

@@ -196,6 +196,9 @@
display: flex;
flex-direction: column;
gap: 8px;
max-height: 400px;
overflow-y: auto;
padding-right: 4px;
}
.model-item {

View File

@@ -86,6 +86,7 @@ export function getApiEndpoints(modelType) {
// Preview management
replacePreview: `/api/lm/${modelType}/replace-preview`,
setPreviewFromUrl: `/api/lm/${modelType}/set-preview-from-url`,
// Query operations
scan: `/api/lm/${modelType}/scan`,

View File

@@ -307,6 +307,56 @@ export class BaseModelApiClient {
}
}
/**
* Set a preview from a remote URL (e.g., CivitAI)
* @param {string} filePath - Path to the model file
* @param {string} imageUrl - Remote image URL
* @param {number} nsfwLevel - NSFW level for the preview
*/
async setPreviewFromUrl(filePath, imageUrl, nsfwLevel = 0) {
try {
state.loadingManager.showSimpleLoading('Setting preview from URL...');
const response = await fetch(this.apiConfig.endpoints.setPreviewFromUrl, {
method: 'POST',
headers: { 'Content-Type': 'application/json' },
body: JSON.stringify({
model_path: filePath,
image_url: imageUrl,
nsfw_level: nsfwLevel
})
});
if (!response.ok) {
throw new Error('Failed to set preview from URL');
}
const data = await response.json();
const pageState = this.getPageState();
const timestamp = Date.now();
if (pageState.previewVersions) {
pageState.previewVersions.set(filePath, timestamp);
const storageKey = `${this.modelType}_preview_versions`;
saveMapToStorage(storageKey, pageState.previewVersions);
}
const updateData = {
preview_url: data.preview_url,
preview_nsfw_level: data.preview_nsfw_level
};
state.virtualScroller.updateSingleItem(filePath, updateData);
showToast('toast.api.previewUpdated', {}, 'success');
} catch (error) {
console.error('Error setting preview from URL:', error);
showToast('toast.api.previewUploadFailed', {}, 'error');
} finally {
state.loadingManager.hide();
}
}
async saveModelMetadata(filePath, data) {
try {
state.loadingManager.showSimpleLoading('Saving metadata...');

View File

@@ -259,6 +259,26 @@ export async function resetAndReload(updateFolders = false) {
});
}
/**
* Sync changes - quick refresh without rebuilding cache (similar to models page)
*/
export async function syncChanges() {
try {
state.loadingManager.showSimpleLoading('Syncing changes...');
// Simply reload the recipes without rebuilding cache
await resetAndReload();
showToast('toast.recipes.syncComplete', {}, 'success');
} catch (error) {
console.error('Error syncing recipes:', error);
showToast('toast.recipes.syncFailed', { message: error.message }, 'error');
} finally {
state.loadingManager.hide();
state.loadingManager.restoreProgressBar();
}
}
/**
* Refreshes the recipe list by first rebuilding the cache and then loading recipes
*/

View File

@@ -117,7 +117,10 @@ export class BulkContextMenu extends BaseContextMenu {
countSkipStatus(skipState) {
let count = 0;
for (const filePath of state.selectedModels) {
const card = document.querySelector(`.model-card[data-filepath="${filePath}"]`);
const escapedPath = window.CSS && typeof window.CSS.escape === 'function'
? window.CSS.escape(filePath)
: filePath.replace(/["\\]/g, '\\$&');
const card = document.querySelector(`.model-card[data-filepath="${escapedPath}"]`);
if (card) {
const isSkipped = card.dataset.skip_metadata_refresh === 'true';
if (isSkipped === skipState) {

View File

@@ -5,6 +5,7 @@ import { FilterManager } from '../managers/FilterManager.js';
import { initPageState } from '../state/index.js';
import { getStorageItem } from '../utils/storageHelpers.js';
import { updateElementAttribute } from '../utils/i18nHelpers.js';
import { renderSupporters } from '../services/supportersService.js';
/**
* Header.js - Manages the application header behavior across different pages
@@ -85,9 +86,15 @@ export class HeaderManager {
// Handle support toggle
const supportToggle = document.getElementById('supportToggleBtn');
if (supportToggle) {
supportToggle.addEventListener('click', () => {
supportToggle.addEventListener('click', async () => {
if (window.modalManager) {
window.modalManager.toggleModal('supportModal');
// Load supporters data when modal opens
try {
await renderSupporters();
} catch (error) {
console.error('Error loading supporters:', error);
}
}
});
}

View File

@@ -21,6 +21,7 @@ class RecipeCard {
createCardElement() {
const card = document.createElement('div');
card.className = 'model-card';
card.draggable = true;
card.dataset.filepath = this.recipe.file_path;
card.dataset.title = this.recipe.title;
card.dataset.nsfwLevel = this.recipe.preview_nsfw_level || 0;
@@ -200,8 +201,9 @@ class RecipeCard {
this.recipe.favorite = isFavorite;
// Re-find star icon in case of re-render during fault
const filePathForXpath = this.recipe.file_path.replace(/"/g, '&quot;');
const currentCard = card.ownerDocument.evaluate(
`.//*[@data-filepath="${this.recipe.file_path}"]`,
`.//*[@data-filepath="${filePathForXpath}"]`,
card.ownerDocument, null, XPathResult.FIRST_ORDERED_NODE_TYPE, null
).singleNodeValue || card;

View File

@@ -7,6 +7,7 @@ import { translate } from '../utils/i18nHelpers.js';
import { state } from '../state/index.js';
import { bulkManager } from '../managers/BulkManager.js';
import { showToast } from '../utils/uiHelpers.js';
import { escapeHtml, escapeAttribute } from './shared/utils.js';
export class SidebarManager {
constructor() {
@@ -29,11 +30,14 @@ export class SidebarManager {
this.draggedRootPath = null;
this.draggedFromBulk = false;
this.dragHandlersInitialized = false;
this.sidebarDragHandlersInitialized = false;
this.folderTreeElement = null;
this.currentDropTarget = null;
this.lastPageControls = null;
this.isDisabledBySetting = false;
this.initializationPromise = null;
this.isCreatingFolder = false;
this._pendingDragState = null; // 用于保存拖拽创建文件夹时的状态
// Bind methods
this.handleTreeClick = this.handleTreeClick.bind(this);
@@ -56,6 +60,12 @@ export class SidebarManager {
this.handleFolderDragOver = this.handleFolderDragOver.bind(this);
this.handleFolderDragLeave = this.handleFolderDragLeave.bind(this);
this.handleFolderDrop = this.handleFolderDrop.bind(this);
this.handleSidebarDragEnter = this.handleSidebarDragEnter.bind(this);
this.handleSidebarDragOver = this.handleSidebarDragOver.bind(this);
this.handleSidebarDragLeave = this.handleSidebarDragLeave.bind(this);
this.handleSidebarDrop = this.handleSidebarDrop.bind(this);
this.handleCreateFolderSubmit = this.handleCreateFolderSubmit.bind(this);
this.handleCreateFolderCancel = this.handleCreateFolderCancel.bind(this);
}
setHostPageControls(pageControls) {
@@ -118,19 +128,18 @@ export class SidebarManager {
this.removeEventHandlers();
this.clearAllDropHighlights();
if (this.dragHandlersInitialized) {
document.removeEventListener('dragstart', this.handleCardDragStart);
document.removeEventListener('dragend', this.handleCardDragEnd);
this.dragHandlersInitialized = false;
}
if (this.folderTreeElement) {
this.folderTreeElement.removeEventListener('dragenter', this.handleFolderDragEnter);
this.folderTreeElement.removeEventListener('dragover', this.handleFolderDragOver);
this.folderTreeElement.removeEventListener('dragleave', this.handleFolderDragLeave);
this.folderTreeElement.removeEventListener('drop', this.handleFolderDrop);
this.folderTreeElement = null;
}
this.resetDragState();
this.hideCreateFolderInput();
// Cleanup sidebar drag handlers
const sidebar = document.getElementById('folderSidebar');
if (sidebar && this.sidebarDragHandlersInitialized) {
sidebar.removeEventListener('dragenter', this.handleSidebarDragEnter);
sidebar.removeEventListener('dragover', this.handleSidebarDragOver);
sidebar.removeEventListener('dragleave', this.handleSidebarDragLeave);
sidebar.removeEventListener('drop', this.handleSidebarDrop);
this.sidebarDragHandlersInitialized = false;
}
// Reset state
this.pageControls = null;
@@ -233,6 +242,16 @@ export class SidebarManager {
this.folderTreeElement = folderTree;
}
// Add sidebar-level drag handlers for creating new folders
const sidebar = document.getElementById('folderSidebar');
if (sidebar && !this.sidebarDragHandlersInitialized) {
sidebar.addEventListener('dragenter', this.handleSidebarDragEnter);
sidebar.addEventListener('dragover', this.handleSidebarDragOver);
sidebar.addEventListener('dragleave', this.handleSidebarDragLeave);
sidebar.addEventListener('drop', this.handleSidebarDrop);
this.sidebarDragHandlersInitialized = true;
}
}
handleCardDragStart(event) {
@@ -271,6 +290,12 @@ export class SidebarManager {
}
card.classList.add('dragging');
// Add dragging state to sidebar for visual feedback
const sidebar = document.getElementById('folderSidebar');
if (sidebar) {
sidebar.classList.add('dragging-active');
}
}
handleCardDragEnd(event) {
@@ -278,6 +303,13 @@ export class SidebarManager {
if (card) {
card.classList.remove('dragging');
}
// Remove dragging state from sidebar
const sidebar = document.getElementById('folderSidebar');
if (sidebar) {
sidebar.classList.remove('dragging-active');
}
this.clearAllDropHighlights();
this.resetDragState();
}
@@ -417,7 +449,12 @@ export class SidebarManager {
}
async performDragMove(targetRelativePath) {
console.log('[SidebarManager] performDragMove called with targetRelativePath:', targetRelativePath);
console.log('[SidebarManager] draggedFilePaths:', this.draggedFilePaths);
console.log('[SidebarManager] draggedRootPath:', this.draggedRootPath);
if (!this.draggedFilePaths || this.draggedFilePaths.length === 0) {
console.log('[SidebarManager] performDragMove returning false - no draggedFilePaths');
return false;
}
@@ -428,12 +465,15 @@ export class SidebarManager {
}
if (this.apiClient?.apiConfig?.config?.supportsMove === false) {
console.log('[SidebarManager] performDragMove returning false - supportsMove is false');
showToast('toast.models.moveFailed', { message: translate('sidebar.dragDrop.moveUnsupported', {}, 'Move not supported for this page') }, 'error');
return false;
}
const rootPath = this.draggedRootPath ? this.draggedRootPath.replace(/\\/g, '/') : '';
console.log('[SidebarManager] rootPath:', rootPath);
if (!rootPath) {
console.log('[SidebarManager] performDragMove returning false - no rootPath');
showToast(
'toast.models.moveFailed',
{ message: translate('sidebar.dragDrop.unableToResolveRoot', {}, 'Unable to determine destination path for move.') },
@@ -446,15 +486,19 @@ export class SidebarManager {
const useBulkMove = this.draggedFromBulk || this.draggedFilePaths.length > 1;
try {
console.log('[SidebarManager] calling apiClient.move, useBulkMove:', useBulkMove);
if (useBulkMove) {
await this.apiClient.moveBulkModels(this.draggedFilePaths, destination);
} else {
await this.apiClient.moveSingleModel(this.draggedFilePaths[0], destination);
}
console.log('[SidebarManager] apiClient.move successful');
if (this.pageControls && typeof this.pageControls.resetAndReload === 'function') {
console.log('[SidebarManager] calling resetAndReload');
await this.pageControls.resetAndReload(true);
} else {
console.log('[SidebarManager] calling refresh');
await this.refresh();
}
@@ -462,10 +506,12 @@ export class SidebarManager {
bulkManager.toggleBulkMode();
}
console.log('[SidebarManager] performDragMove returning true');
return true;
} catch (error) {
console.error('Error moving model(s) via drag-and-drop:', error);
console.error('[SidebarManager] Error moving model(s) via drag-and-drop:', error);
showToast('toast.models.moveFailed', { message: error.message || 'Unknown error' }, 'error');
console.log('[SidebarManager] performDragMove returning false due to error');
return false;
}
}
@@ -476,6 +522,365 @@ export class SidebarManager {
this.draggedFromBulk = false;
}
// Version of performDragMove that accepts state as parameters (for create folder submit)
async performDragMoveWithState(targetRelativePath, draggedFilePaths, draggedRootPath, draggedFromBulk) {
console.log('[SidebarManager] performDragMoveWithState called with:', { targetRelativePath, draggedFilePaths, draggedRootPath, draggedFromBulk });
if (!draggedFilePaths || draggedFilePaths.length === 0) {
console.log('[SidebarManager] performDragMoveWithState returning false - no draggedFilePaths');
return false;
}
if (!this.apiClient) {
this.apiClient = this.pageControls?.getSidebarApiClient?.()
|| this.pageControls?.sidebarApiClient
|| getModelApiClient();
}
if (this.apiClient?.apiConfig?.config?.supportsMove === false) {
console.log('[SidebarManager] performDragMoveWithState returning false - supportsMove is false');
showToast('toast.models.moveFailed', { message: translate('sidebar.dragDrop.moveUnsupported', {}, 'Move not supported for this page') }, 'error');
return false;
}
const rootPath = draggedRootPath ? draggedRootPath.replace(/\\/g, '/') : '';
console.log('[SidebarManager] rootPath:', rootPath);
if (!rootPath) {
console.log('[SidebarManager] performDragMoveWithState returning false - no rootPath');
showToast(
'toast.models.moveFailed',
{ message: translate('sidebar.dragDrop.unableToResolveRoot', {}, 'Unable to determine destination path for move.') },
'error'
);
return false;
}
const destination = this.combineRootAndRelativePath(rootPath, targetRelativePath);
const useBulkMove = draggedFromBulk || draggedFilePaths.length > 1;
try {
console.log('[SidebarManager] calling apiClient.move, useBulkMove:', useBulkMove);
if (useBulkMove) {
await this.apiClient.moveBulkModels(draggedFilePaths, destination);
} else {
await this.apiClient.moveSingleModel(draggedFilePaths[0], destination);
}
console.log('[SidebarManager] apiClient.move successful');
if (this.pageControls && typeof this.pageControls.resetAndReload === 'function') {
console.log('[SidebarManager] calling resetAndReload');
await this.pageControls.resetAndReload(true);
} else {
console.log('[SidebarManager] calling refresh');
await this.refresh();
}
if (draggedFromBulk && state.bulkMode && typeof bulkManager?.toggleBulkMode === 'function') {
bulkManager.toggleBulkMode();
}
console.log('[SidebarManager] performDragMoveWithState returning true');
return true;
} catch (error) {
console.error('[SidebarManager] Error moving model(s) via drag-and-drop:', error);
showToast('toast.models.moveFailed', { message: error.message || 'Unknown error' }, 'error');
console.log('[SidebarManager] performDragMoveWithState returning false due to error');
return false;
}
}
// ===== Sidebar-level drag handlers for creating new folders =====
handleSidebarDragEnter(event) {
if (!this.draggedFilePaths || this.draggedFilePaths.length === 0) return;
const sidebar = document.getElementById('folderSidebar');
if (!sidebar) return;
// Only show create folder zone if not hovering over an existing folder
const folderElement = this.getFolderElementFromEvent(event);
if (folderElement) {
this.hideCreateFolderZone();
return;
}
// Check if drag is within the sidebar tree container area
const treeContainer = document.querySelector('.sidebar-tree-container');
if (treeContainer && treeContainer.contains(event.target)) {
event.preventDefault();
this.showCreateFolderZone();
}
}
handleSidebarDragOver(event) {
if (!this.draggedFilePaths || this.draggedFilePaths.length === 0) return;
const folderElement = this.getFolderElementFromEvent(event);
if (folderElement) {
this.hideCreateFolderZone();
return;
}
const treeContainer = document.querySelector('.sidebar-tree-container');
if (treeContainer && treeContainer.contains(event.target)) {
event.preventDefault();
if (event.dataTransfer) {
event.dataTransfer.dropEffect = 'move';
}
}
}
handleSidebarDragLeave(event) {
if (!this.draggedFilePaths || this.draggedFilePaths.length === 0) return;
const sidebar = document.getElementById('folderSidebar');
if (!sidebar) return;
const relatedTarget = event.relatedTarget instanceof Element ? event.relatedTarget : null;
// Only hide if leaving the sidebar entirely
if (!relatedTarget || !sidebar.contains(relatedTarget)) {
this.hideCreateFolderZone();
}
}
async handleSidebarDrop(event) {
if (!this.draggedFilePaths || this.draggedFilePaths.length === 0) return;
const folderElement = this.getFolderElementFromEvent(event);
if (folderElement) {
// Let the folder drop handler take over
return;
}
const treeContainer = document.querySelector('.sidebar-tree-container');
if (!treeContainer || !treeContainer.contains(event.target)) {
return;
}
event.preventDefault();
event.stopPropagation();
// Show create folder input
this.showCreateFolderInput();
}
showCreateFolderZone() {
if (this.isCreatingFolder) return;
const treeContainer = document.querySelector('.sidebar-tree-container');
if (!treeContainer) return;
let zone = document.getElementById('sidebarCreateFolderZone');
if (!zone) {
zone = document.createElement('div');
zone.id = 'sidebarCreateFolderZone';
zone.className = 'sidebar-create-folder-zone';
zone.innerHTML = `
<div class="sidebar-create-folder-content">
<i class="fas fa-plus-circle"></i>
<span>${translate('sidebar.dragDrop.createFolderHint', {}, 'Release to create new folder')}</span>
</div>
`;
treeContainer.appendChild(zone);
}
zone.classList.add('active');
}
hideCreateFolderZone() {
const zone = document.getElementById('sidebarCreateFolderZone');
if (zone) {
zone.classList.remove('active');
}
}
showCreateFolderInput() {
console.log('[SidebarManager] showCreateFolderInput called');
this.isCreatingFolder = true;
// 立即保存拖拽状态防止后续事件如blur清空状态
this._pendingDragState = {
filePaths: this.draggedFilePaths ? [...this.draggedFilePaths] : null,
rootPath: this.draggedRootPath,
fromBulk: this.draggedFromBulk
};
console.log('[SidebarManager] saved pending drag state:', this._pendingDragState);
this.hideCreateFolderZone();
const treeContainer = document.querySelector('.sidebar-tree-container');
if (!treeContainer) return;
// Remove existing input if any
this.hideCreateFolderInput();
const inputContainer = document.createElement('div');
inputContainer.id = 'sidebarCreateFolderInput';
inputContainer.className = 'sidebar-create-folder-input-container';
inputContainer.innerHTML = `
<div class="sidebar-create-folder-input-wrapper">
<i class="fas fa-folder-plus"></i>
<input type="text"
class="sidebar-create-folder-input"
placeholder="${translate('sidebar.dragDrop.newFolderName', {}, 'New folder name')}"
autofocus />
<button class="sidebar-create-folder-btn sidebar-create-folder-confirm" title="${translate('common.confirm', {}, 'Confirm')}">
<i class="fas fa-check"></i>
</button>
<button class="sidebar-create-folder-btn sidebar-create-folder-cancel" title="${translate('common.cancel', {}, 'Cancel')}">
<i class="fas fa-times"></i>
</button>
</div>
<div class="sidebar-create-folder-hint">
${translate('sidebar.dragDrop.folderNameHint', {}, 'Press Enter to confirm, Escape to cancel')}
</div>
`;
treeContainer.appendChild(inputContainer);
// Focus input
const input = inputContainer.querySelector('.sidebar-create-folder-input');
if (input) {
input.focus();
}
// Bind events
const confirmBtn = inputContainer.querySelector('.sidebar-create-folder-confirm');
const cancelBtn = inputContainer.querySelector('.sidebar-create-folder-cancel');
// Flag to prevent blur from canceling when clicking buttons
let isButtonClick = false;
confirmBtn?.addEventListener('mousedown', () => {
isButtonClick = true;
console.log('[SidebarManager] confirmBtn mousedown - isButtonClick set to true');
});
cancelBtn?.addEventListener('mousedown', () => {
isButtonClick = true;
console.log('[SidebarManager] cancelBtn mousedown - isButtonClick set to true');
});
confirmBtn?.addEventListener('click', (e) => {
console.log('[SidebarManager] confirmBtn click event triggered');
this.handleCreateFolderSubmit();
});
cancelBtn?.addEventListener('click', () => {
console.log('[SidebarManager] cancelBtn click event triggered');
this.handleCreateFolderCancel();
});
input?.addEventListener('keydown', (e) => {
console.log('[SidebarManager] input keydown:', e.key);
if (e.key === 'Enter') {
console.log('[SidebarManager] Enter pressed, calling handleCreateFolderSubmit');
this.handleCreateFolderSubmit();
} else if (e.key === 'Escape') {
console.log('[SidebarManager] Escape pressed, calling handleCreateFolderCancel');
this.handleCreateFolderCancel();
}
});
input?.addEventListener('blur', () => {
console.log('[SidebarManager] input blur event - isButtonClick:', isButtonClick);
// Delay to allow button clicks to process first
setTimeout(() => {
console.log('[SidebarManager] blur timeout - isButtonClick:', isButtonClick, 'activeElement:', document.activeElement?.className);
if (!isButtonClick && document.activeElement !== confirmBtn && document.activeElement !== cancelBtn) {
console.log('[SidebarManager] blur timeout - calling handleCreateFolderCancel');
this.handleCreateFolderCancel();
} else {
console.log('[SidebarManager] blur timeout - NOT canceling (button click detected)');
}
isButtonClick = false;
}, 200);
});
}
hideCreateFolderInput() {
console.log('[SidebarManager] hideCreateFolderInput called');
const inputContainer = document.getElementById('sidebarCreateFolderInput');
console.log('[SidebarManager] inputContainer:', inputContainer);
if (inputContainer) {
inputContainer.remove();
console.log('[SidebarManager] inputContainer removed');
}
this.isCreatingFolder = false;
console.log('[SidebarManager] isCreatingFolder set to false');
}
async handleCreateFolderSubmit() {
console.log('[SidebarManager] handleCreateFolderSubmit called');
const input = document.querySelector('#sidebarCreateFolderInput .sidebar-create-folder-input');
console.log('[SidebarManager] input element:', input);
if (!input) {
console.log('[SidebarManager] input not found, returning');
return;
}
const folderName = input.value.trim();
console.log('[SidebarManager] folderName:', folderName);
if (!folderName) {
showToast('sidebar.dragDrop.emptyFolderName', {}, 'warning');
return;
}
// Validate folder name (no slashes, no special chars)
if (/[\\/:*?"<>|]/.test(folderName)) {
showToast('sidebar.dragDrop.invalidFolderName', {}, 'error');
return;
}
// Build target path - use selected path as parent, or root if none selected
const parentPath = this.selectedPath || '';
const targetRelativePath = parentPath ? `${parentPath}/${folderName}` : folderName;
console.log('[SidebarManager] targetRelativePath:', targetRelativePath);
// 使用 showCreateFolderInput 时保存的拖拽状态
const pendingState = this._pendingDragState;
console.log('[SidebarManager] using pending drag state:', pendingState);
if (!pendingState || !pendingState.filePaths || pendingState.filePaths.length === 0) {
console.log('[SidebarManager] no pending drag state found, cannot proceed');
showToast('sidebar.dragDrop.noDragState', {}, 'error');
this.hideCreateFolderInput();
return;
}
this.hideCreateFolderInput();
// Perform the move with saved state
console.log('[SidebarManager] calling performDragMove with pending state');
const success = await this.performDragMoveWithState(targetRelativePath, pendingState.filePaths, pendingState.rootPath, pendingState.fromBulk);
console.log('[SidebarManager] performDragMove result:', success);
if (success) {
// Expand the parent folder to show the new folder
if (parentPath) {
this.expandedNodes.add(parentPath);
this.saveExpandedState();
}
// Refresh the tree to show the newly created folder
// restoreSelectedFolder() inside refresh() will maintain the current active folder
await this.refresh();
}
// 清理待处理的拖拽状态
this._pendingDragState = null;
this.resetDragState();
this.clearAllDropHighlights();
}
handleCreateFolderCancel() {
this.hideCreateFolderInput();
// 清理待处理的拖拽状态
this._pendingDragState = null;
this.resetDragState();
this.clearAllDropHighlights();
}
saveSelectedFolder() {
setStorageItem(`${this.pageType}_activeFolder`, this.selectedPath);
}
clearAllDropHighlights() {
const highlighted = document.querySelectorAll('.sidebar-tree-node-content.drop-target, .sidebar-node-content.drop-target');
highlighted.forEach((element) => element.classList.remove('drop-target'));
@@ -890,15 +1295,19 @@ export class SidebarManager {
const isExpanded = this.expandedNodes.has(currentPath);
const isSelected = this.selectedPath === currentPath;
const escapedPath = escapeAttribute(currentPath);
const escapedFolderName = escapeHtml(folderName);
const escapedTitle = escapeAttribute(folderName);
return `
<div class="sidebar-tree-node" data-path="${currentPath}">
<div class="sidebar-tree-node-content ${isSelected ? 'selected' : ''}" data-path="${currentPath}">
<div class="sidebar-tree-node" data-path="${escapedPath}">
<div class="sidebar-tree-node-content ${isSelected ? 'selected' : ''}" data-path="${escapedPath}">
<div class="sidebar-tree-expand-icon ${isExpanded ? 'expanded' : ''}"
style="${hasChildren ? '' : 'opacity: 0; pointer-events: none;'}">
<i class="fas fa-chevron-right"></i>
</div>
<i class="fas fa-folder sidebar-tree-folder-icon"></i>
<div class="sidebar-tree-folder-name" title="${folderName}">${folderName}</div>
<div class="sidebar-tree-folder-name" title="${escapedTitle}">${escapedFolderName}</div>
</div>
${hasChildren ? `
<div class="sidebar-tree-children ${isExpanded ? 'expanded' : ''}">
@@ -917,7 +1326,11 @@ export class SidebarManager {
folderTree.innerHTML = `
<div class="sidebar-tree-placeholder">
<i class="fas fa-folder-open"></i>
<div>No folders found</div>
<div>${translate('sidebar.empty.noFolders', {}, 'No folders found')}</div>
<div class="sidebar-empty-hint">
<i class="fas fa-hand-pointer"></i>
${translate('sidebar.empty.dragHint', {}, 'Drag items here to create folders')}
</div>
</div>
`;
}
@@ -934,12 +1347,15 @@ export class SidebarManager {
const foldersHtml = this.foldersList.map(folder => {
const displayName = folder === '' ? '/' : folder;
const isSelected = this.selectedPath === folder;
const escapedPath = escapeAttribute(folder);
const escapedDisplayName = escapeHtml(displayName);
const escapedTitle = escapeAttribute(displayName);
return `
<div class="sidebar-folder-item ${isSelected ? 'selected' : ''}" data-path="${folder}">
<div class="sidebar-node-content" data-path="${folder}">
<div class="sidebar-folder-item ${isSelected ? 'selected' : ''}" data-path="${escapedPath}">
<div class="sidebar-node-content" data-path="${escapedPath}">
<i class="fas fa-folder sidebar-folder-icon"></i>
<div class="sidebar-folder-name" title="${displayName}">${displayName}</div>
<div class="sidebar-folder-name" title="${escapedTitle}">${escapedDisplayName}</div>
</div>
</div>
`;
@@ -1162,7 +1578,8 @@ export class SidebarManager {
// Add selection to current path
if (this.selectedPath !== null && this.selectedPath !== undefined) {
const selectedItem = folderTree.querySelector(`[data-path="${this.selectedPath}"]`);
const escapedPathSelector = CSS.escape(this.selectedPath);
const selectedItem = folderTree.querySelector(`[data-path="${escapedPathSelector}"]`);
if (selectedItem) {
selectedItem.classList.add('selected');
}
@@ -1173,7 +1590,8 @@ export class SidebarManager {
});
if (this.selectedPath !== null && this.selectedPath !== undefined) {
const selectedNode = folderTree.querySelector(`[data-path="${this.selectedPath}"] .sidebar-tree-node-content`);
const escapedPathSelector = CSS.escape(this.selectedPath);
const selectedNode = folderTree.querySelector(`[data-path="${escapedPathSelector}"] .sidebar-tree-node-content`);
if (selectedNode) {
selectedNode.classList.add('selected');
this.expandPathParents(this.selectedPath);
@@ -1247,7 +1665,7 @@ export class SidebarManager {
const breadcrumbs = [`
<div class="breadcrumb-dropdown">
<span class="sidebar-breadcrumb-item ${isRootSelected ? 'active' : ''}" data-path="">
<i class="fas fa-home"></i> ${this.apiClient.apiConfig.config.displayName} root
<i class="fas fa-home"></i> ${escapeHtml(this.apiClient.apiConfig.config.displayName)} root
</span>
</div>
`];
@@ -1267,8 +1685,8 @@ export class SidebarManager {
</span>
<div class="breadcrumb-dropdown-menu">
${nextLevelFolders.map(folder => `
<div class="breadcrumb-dropdown-item" data-path="${folder}">
${folder}
<div class="breadcrumb-dropdown-item" data-path="${escapeAttribute(folder)}">
${escapeHtml(folder)}
</div>`).join('')
}
</div>
@@ -1284,12 +1702,14 @@ export class SidebarManager {
// Get siblings for this level
const siblings = this.getSiblingFolders(parts, index);
const escapedCurrentPath = escapeAttribute(currentPath);
const escapedPart = escapeHtml(part);
breadcrumbs.push(`<span class="sidebar-breadcrumb-separator">/</span>`);
breadcrumbs.push(`
<div class="breadcrumb-dropdown">
<span class="sidebar-breadcrumb-item ${isLast ? 'active' : ''}" data-path="${currentPath}">
${part}
<span class="sidebar-breadcrumb-item ${isLast ? 'active' : ''}" data-path="${escapedCurrentPath}">
${escapedPart}
${siblings.length > 1 ? `
<span class="breadcrumb-dropdown-indicator">
<i class="fas fa-caret-down"></i>
@@ -1298,11 +1718,14 @@ export class SidebarManager {
</span>
${siblings.length > 1 ? `
<div class="breadcrumb-dropdown-menu">
${siblings.map(folder => `
<div class="breadcrumb-dropdown-item ${folder === part ? 'active' : ''}"
data-path="${currentPath.replace(part, folder)}">
${folder}
</div>`).join('')
${siblings.map(folder => {
const siblingPath = parts.slice(0, index).concat(folder).join('/');
return `
<div class="breadcrumb-dropdown-item ${folder === part ? 'active' : ''}"
data-path="${escapeAttribute(siblingPath)}">
${escapeHtml(folder)}
</div>`;
}).join('')
}
</div>
` : ''}
@@ -1324,8 +1747,8 @@ export class SidebarManager {
</span>
<div class="breadcrumb-dropdown-menu">
${childFolders.map(folder => `
<div class="breadcrumb-dropdown-item" data-path="${currentPath}/${folder}">
${folder}
<div class="breadcrumb-dropdown-item" data-path="${escapeAttribute(currentPath + '/' + folder)}">
${escapeHtml(folder)}
</div>`).join('')
}
</div>

View File

@@ -846,8 +846,14 @@ function setupLoraSpecificFields(filePath) {
const currentPath = resolveFilePath();
if (!currentPath) return;
const loraCard = document.querySelector(`.model-card[data-filepath="${currentPath}"]`) ||
document.querySelector(`.model-card[data-filepath="${filePath}"]`);
const escapedCurrentPath = window.CSS && typeof window.CSS.escape === 'function'
? window.CSS.escape(currentPath)
: currentPath.replace(/["\\]/g, '\\$&');
const escapedFilePath = window.CSS && typeof window.CSS.escape === 'function'
? window.CSS.escape(filePath)
: filePath.replace(/["\\]/g, '\\$&');
const loraCard = document.querySelector(`.model-card[data-filepath="${escapedCurrentPath}"]`) ||
document.querySelector(`.model-card[data-filepath="${escapedFilePath}"]`);
const currentPresets = parsePresets(loraCard?.dataset.usage_tips);
if (key === 'strength_range') {

View File

@@ -49,7 +49,10 @@ function formatPresetKey(key) {
*/
window.removePreset = async function(key) {
const filePath = document.querySelector('#modelModal .modal-content .file-path').dataset.filepath;
const loraCard = document.querySelector(`.model-card[data-filepath="${filePath}"]`);
const escapedPath = window.CSS && typeof window.CSS.escape === 'function'
? window.CSS.escape(filePath)
: filePath.replace(/["\\]/g, '\\$&');
const loraCard = document.querySelector(`.model-card[data-filepath="${escapedPath}"]`);
const currentPresets = parsePresets(loraCard.dataset.usage_tips);
delete currentPresets[key];

View File

@@ -26,8 +26,7 @@ export function generateVideoWrapper(media, heightPercent, shouldBlur, nsfwText,
</button>
` : ''}
${mediaControlsHtml}
<video controls autoplay muted loop crossorigin="anonymous"
referrerpolicy="no-referrer"
<video controls autoplay muted loop
data-local-src="${localUrl || ''}"
data-remote-src="${remoteUrl}"
data-nsfw-level="${nsfwLevel}"

View File

@@ -529,15 +529,16 @@ function initSetPreviewHandlers(container) {
const file = new File([blob], 'preview.jpg', { type: blob.type });
// Use the existing baseModelApi uploadPreview method with nsfw level
await apiClient.uploadPreview(modelFilePath, file, modelType, nsfwLevel);
await apiClient.uploadPreview(modelFilePath, file, nsfwLevel);
} else {
// We need to download the remote file first
const response = await fetch(mediaElement.src);
const blob = await response.blob();
const file = new File([blob], 'preview.jpg', { type: blob.type });
// Remote file - send URL to backend to download (avoids CORS issues)
const imageUrl = mediaElement.src || mediaElement.dataset.remoteSrc;
if (!imageUrl) {
throw new Error('No image URL available');
}
// Use the existing baseModelApi uploadPreview method with nsfw level
await apiClient.uploadPreview(modelFilePath, file, modelType, nsfwLevel);
// Use the new setPreviewFromUrl method
await apiClient.setPreviewFromUrl(modelFilePath, imageUrl, nsfwLevel);
}
} catch (error) {
console.error('Error setting preview:', error);

View File

@@ -2,6 +2,7 @@
* MetadataPanel.js
* Generates metadata panels for showcase media items
*/
import { escapeHtml } from '../utils.js';
/**
* Generate metadata panel HTML
@@ -49,6 +50,7 @@ export function generateMetadataPanel(hasParams, hasPrompts, prompt, negativePro
}
if (prompt) {
prompt = escapeHtml(prompt);
content += `
<div class="metadata-row prompt-row">
<span class="metadata-label">Prompt:</span>
@@ -64,6 +66,7 @@ export function generateMetadataPanel(hasParams, hasPrompts, prompt, negativePro
}
if (negativePrompt) {
negativePrompt = escapeHtml(negativePrompt);
content += `
<div class="metadata-row prompt-row">
<span class="metadata-label">Negative Prompt:</span>

View File

@@ -16,6 +16,7 @@ import {
} from './MediaUtils.js';
import { generateMetadataPanel } from './MetadataPanel.js';
import { generateImageWrapper, generateVideoWrapper } from './MediaRenderers.js';
import { getShowcaseUrl } from '../../../utils/civitaiUtils.js';
export const showcaseListenerMetrics = {
wheelListeners: 0,
@@ -61,8 +62,14 @@ export async function loadExampleImages(images, modelHash) {
// Re-initialize the showcase event listeners
const carousel = showcaseTab.querySelector('.carousel');
if (carousel && !carousel.classList.contains('collapsed')) {
initShowcaseContent(carousel);
if (carousel) {
// Always bind scroll-indicator click events (even when collapsed)
bindScrollIndicatorEvents(carousel);
// Only initialize full showcase content when expanded
if (!carousel.classList.contains('collapsed')) {
initShowcaseContent(carousel);
}
}
// Initialize the example import functionality
@@ -152,10 +159,18 @@ function renderMediaItem(img, index, exampleFiles) {
// Find matching file in our list of actual files
let localFile = findLocalFile(img, index, exampleFiles);
const remoteUrl = img.url || '';
const localUrl = localFile ? localFile.path : '';
// Get original remote URL
const originalRemoteUrl = img.url || '';
// Determine media type for optimization
const isVideo = localFile ? localFile.is_video :
remoteUrl.endsWith('.mp4') || remoteUrl.endsWith('.webm');
originalRemoteUrl.endsWith('.mp4') || originalRemoteUrl.endsWith('.webm');
const mediaType = isVideo ? 'video' : 'image';
// Optimize CivitAI URLs for showcase display (full quality)
const remoteUrl = getShowcaseUrl(originalRemoteUrl, mediaType);
const localUrl = localFile ? localFile.path : '';
// Calculate appropriate aspect ratio
const aspectRatio = (img.height / img.width) * 100;
@@ -576,6 +591,41 @@ export function toggleShowcase(element) {
}
}
/**
* Bind scroll-indicator click events (works even when carousel is collapsed)
* @param {HTMLElement} carousel - The carousel element
*/
function bindScrollIndicatorEvents(carousel) {
if (!carousel) return;
const scrollIndicator = carousel.previousElementSibling;
if (scrollIndicator && scrollIndicator.classList.contains('scroll-indicator')) {
// Remove previous listeners to avoid duplicates
scrollIndicator.onclick = null;
scrollIndicator.removeEventListener('click', scrollIndicator._leftClickHandler);
scrollIndicator.removeEventListener('mousedown', scrollIndicator._middleClickHandler);
// Handler for left-click (button 0) - uses 'click' event
scrollIndicator._leftClickHandler = (event) => {
if (event.button === 0) {
event.preventDefault();
toggleShowcase(scrollIndicator);
}
};
// Handler for middle-click (button 1) - uses 'mousedown' event
scrollIndicator._middleClickHandler = (event) => {
if (event.button === 1) {
event.preventDefault();
toggleShowcase(scrollIndicator);
}
};
scrollIndicator.addEventListener('click', scrollIndicator._leftClickHandler);
scrollIndicator.addEventListener('mousedown', scrollIndicator._middleClickHandler);
}
}
/**
* Initialize all showcase content interactions
* @param {HTMLElement} carousel - The carousel element
@@ -589,15 +639,8 @@ export function initShowcaseContent(carousel) {
initMediaControlHandlers(carousel);
positionAllMediaControls(carousel);
// Bind scroll-indicator click to toggleShowcase
const scrollIndicator = carousel.previousElementSibling;
if (scrollIndicator && scrollIndicator.classList.contains('scroll-indicator')) {
// Remove previous click listeners to avoid duplicates
scrollIndicator.onclick = null;
scrollIndicator.removeEventListener('click', scrollIndicator._toggleShowcaseHandler);
scrollIndicator._toggleShowcaseHandler = () => toggleShowcase(scrollIndicator);
scrollIndicator.addEventListener('click', scrollIndicator._toggleShowcaseHandler);
}
// Bind scroll-indicator click events
bindScrollIndicatorEvents(carousel);
// Add window resize handler
const resizeHandler = () => positionAllMediaControls(carousel);

View File

@@ -0,0 +1,815 @@
import { modalManager } from './ModalManager.js';
import { showToast } from '../utils/uiHelpers.js';
import { translate } from '../utils/i18nHelpers.js';
import { WS_ENDPOINTS } from '../api/apiConfig.js';
import { getStorageItem, setStorageItem } from '../utils/storageHelpers.js';
/**
* Manager for batch importing recipes from multiple images
*/
export class BatchImportManager {
constructor() {
this.initialized = false;
this.inputMode = 'urls'; // 'urls' or 'directory'
this.operationId = null;
this.wsConnection = null;
this.pollingInterval = null;
this.progress = null;
this.results = null;
this.isCancelled = false;
}
/**
* Show the batch import modal
*/
showModal() {
if (!this.initialized) {
this.initialize();
}
this.resetState();
modalManager.showModal('batchImportModal');
}
/**
* Initialize the manager
*/
initialize() {
this.initialized = true;
// Add event listener for persisting "Skip images without metadata" choice
const skipNoMetadata = document.getElementById('batchSkipNoMetadata');
if (skipNoMetadata) {
skipNoMetadata.addEventListener('change', (e) => {
setStorageItem('batch_import_skip_no_metadata', e.target.checked);
});
}
}
/**
* Reset all state to initial values
*/
resetState() {
this.inputMode = 'urls';
this.operationId = null;
this.progress = null;
this.results = null;
this.isCancelled = false;
// Reset UI
this.showStep('batchInputStep');
this.toggleInputMode('urls');
// Clear inputs
const urlInput = document.getElementById('batchUrlInput');
if (urlInput) urlInput.value = '';
const directoryInput = document.getElementById('batchDirectoryInput');
if (directoryInput) directoryInput.value = '';
const tagsInput = document.getElementById('batchTagsInput');
if (tagsInput) tagsInput.value = '';
const skipNoMetadata = document.getElementById('batchSkipNoMetadata');
if (skipNoMetadata) {
// Load preference from storage, defaulting to true
skipNoMetadata.checked = getStorageItem('batch_import_skip_no_metadata', true);
}
const recursiveCheck = document.getElementById('batchRecursiveCheck');
if (recursiveCheck) recursiveCheck.checked = true;
// Reset progress UI
this.updateProgressUI({
total: 0,
completed: 0,
success: 0,
failed: 0,
skipped: 0,
progress_percent: 0,
current_item: '',
status: 'pending'
});
// Reset results
const detailsList = document.getElementById('batchDetailsList');
if (detailsList) {
detailsList.innerHTML = '';
detailsList.style.display = 'none';
}
const toggleIcon = document.getElementById('resultsToggleIcon');
if (toggleIcon) {
toggleIcon.classList.remove('expanded');
}
// Clean up any existing connections
this.cleanupConnections();
// Focus on the URL input field for better UX
setTimeout(() => {
const urlInput = document.getElementById('batchUrlInput');
if (urlInput) {
urlInput.focus();
}
}, 100);
}
/**
* Show a specific step in the modal
*/
showStep(stepId) {
document.querySelectorAll('.batch-import-step').forEach(step => {
step.style.display = 'none';
});
const step = document.getElementById(stepId);
if (step) {
step.style.display = 'block';
}
}
/**
* Toggle between URL list and directory input modes
*/
toggleInputMode(mode) {
this.inputMode = mode;
// Update toggle buttons
document.querySelectorAll('.toggle-btn[data-mode]').forEach(btn => {
btn.classList.remove('active');
});
const activeBtn = document.querySelector(`.toggle-btn[data-mode="${mode}"]`);
if (activeBtn) {
activeBtn.classList.add('active');
}
// Show/hide appropriate sections
const urlSection = document.getElementById('urlListSection');
const directorySection = document.getElementById('directorySection');
if (urlSection && directorySection) {
if (mode === 'urls') {
urlSection.style.display = 'block';
directorySection.style.display = 'none';
} else {
urlSection.style.display = 'none';
directorySection.style.display = 'block';
}
}
}
/**
* Start the batch import process
*/
async startImport() {
const data = this.collectInputData();
if (!this.validateInput(data)) {
return;
}
try {
// Show progress step
this.showStep('batchProgressStep');
// Start the import
const response = await this.sendStartRequest(data);
if (response.success) {
this.operationId = response.operation_id;
this.isCancelled = false;
// Connect to WebSocket for real-time updates
this.connectWebSocket();
// Start polling as fallback
this.startPolling();
} else {
showToast('toast.recipes.batchImportFailed', { message: response.error }, 'error');
this.showStep('batchInputStep');
}
} catch (error) {
console.error('Error starting batch import:', error);
showToast('toast.recipes.batchImportFailed', { message: error.message }, 'error');
this.showStep('batchInputStep');
}
}
/**
* Collect input data from the form
*/
collectInputData() {
const data = {
mode: this.inputMode,
tags: [],
skip_no_metadata: false
};
// Collect tags
const tagsInput = document.getElementById('batchTagsInput');
if (tagsInput && tagsInput.value.trim()) {
data.tags = tagsInput.value.split(',').map(t => t.trim()).filter(t => t);
}
// Collect skip_no_metadata
const skipNoMetadata = document.getElementById('batchSkipNoMetadata');
if (skipNoMetadata) {
data.skip_no_metadata = skipNoMetadata.checked;
}
if (this.inputMode === 'urls') {
const urlInput = document.getElementById('batchUrlInput');
if (urlInput) {
const urls = urlInput.value.split('\n')
.map(line => line.trim())
.filter(line => line.length > 0);
// Convert to items format
data.items = urls.map(url => ({
source: url,
type: this.detectUrlType(url)
}));
}
} else {
const directoryInput = document.getElementById('batchDirectoryInput');
if (directoryInput) {
data.directory = directoryInput.value.trim();
}
const recursiveCheck = document.getElementById('batchRecursiveCheck');
if (recursiveCheck) {
data.recursive = recursiveCheck.checked;
}
}
return data;
}
/**
* Detect if a URL is http or local path
*/
detectUrlType(url) {
if (url.startsWith('http://') || url.startsWith('https://')) {
return 'url';
}
return 'local_path';
}
/**
* Validate the input data
*/
validateInput(data) {
if (data.mode === 'urls') {
if (!data.items || data.items.length === 0) {
showToast('toast.recipes.batchImportNoUrls', {}, 'error');
return false;
}
} else {
if (!data.directory) {
showToast('toast.recipes.batchImportNoDirectory', {}, 'error');
return false;
}
}
return true;
}
/**
* Send the start batch import request
*/
async sendStartRequest(data) {
const endpoint = data.mode === 'urls'
? '/api/lm/recipes/batch-import/start'
: '/api/lm/recipes/batch-import/directory';
const response = await fetch(endpoint, {
method: 'POST',
headers: {
'Content-Type': 'application/json'
},
body: JSON.stringify(data)
});
return await response.json();
}
/**
* Connect to WebSocket for real-time progress updates
*/
connectWebSocket() {
const wsProtocol = window.location.protocol === 'https:' ? 'wss:' : 'ws:';
const wsUrl = `${wsProtocol}//${window.location.host}/ws/batch-import-progress?id=${this.operationId}`;
this.wsConnection = new WebSocket(wsUrl);
this.wsConnection.onopen = () => {
console.log('Connected to batch import progress WebSocket');
};
this.wsConnection.onmessage = (event) => {
try {
const data = JSON.parse(event.data);
if (data.type === 'batch_import_progress') {
this.handleProgressUpdate(data);
}
} catch (error) {
console.error('Error parsing WebSocket message:', error);
}
};
this.wsConnection.onerror = (error) => {
console.error('WebSocket error:', error);
};
this.wsConnection.onclose = () => {
console.log('WebSocket connection closed');
};
}
/**
* Start polling for progress updates (fallback)
*/
startPolling() {
this.pollingInterval = setInterval(async () => {
if (!this.operationId || this.isCancelled) {
return;
}
try {
const response = await fetch(`/api/lm/recipes/batch-import/progress?operation_id=${this.operationId}`);
const data = await response.json();
if (data.success && data.progress) {
this.handleProgressUpdate(data.progress);
}
} catch (error) {
console.error('Error polling progress:', error);
}
}, 1000);
}
/**
* Handle progress update from WebSocket or polling
*/
handleProgressUpdate(progress) {
this.progress = progress;
this.updateProgressUI(progress);
// Check if import is complete
if (progress.status === 'completed' || progress.status === 'cancelled' ||
(progress.total > 0 && progress.completed >= progress.total)) {
this.importComplete(progress);
}
}
/**
* Update the progress UI
*/
updateProgressUI(progress) {
// Update progress bar
const progressBar = document.getElementById('batchProgressBar');
if (progressBar) {
progressBar.style.width = `${progress.progress_percent || 0}%`;
}
// Update percentage
const progressPercent = document.getElementById('batchProgressPercent');
if (progressPercent) {
progressPercent.textContent = `${Math.round(progress.progress_percent || 0)}%`;
}
// Update stats
const totalCount = document.getElementById('batchTotalCount');
if (totalCount) totalCount.textContent = progress.total || 0;
const successCount = document.getElementById('batchSuccessCount');
if (successCount) successCount.textContent = progress.success || 0;
const failedCount = document.getElementById('batchFailedCount');
if (failedCount) failedCount.textContent = progress.failed || 0;
const skippedCount = document.getElementById('batchSkippedCount');
if (skippedCount) skippedCount.textContent = progress.skipped || 0;
// Update current item
const currentItem = document.getElementById('batchCurrentItem');
if (currentItem) {
currentItem.textContent = progress.current_item || '-';
}
// Update status text
const statusText = document.getElementById('batchStatusText');
if (statusText) {
if (progress.status === 'running') {
statusText.textContent = translate('recipes.batchImport.importing', {}, 'Importing...');
} else if (progress.status === 'completed') {
statusText.textContent = translate('recipes.batchImport.completed', {}, 'Import completed');
} else if (progress.status === 'cancelled') {
statusText.textContent = translate('recipes.batchImport.cancelled', {}, 'Import cancelled');
}
}
// Update container classes
const progressContainer = document.querySelector('.batch-progress-container');
if (progressContainer) {
progressContainer.classList.remove('completed', 'cancelled', 'error');
if (progress.status === 'completed') {
progressContainer.classList.add('completed');
} else if (progress.status === 'cancelled') {
progressContainer.classList.add('cancelled');
} else if (progress.failed > 0 && progress.failed === progress.total) {
progressContainer.classList.add('error');
}
}
}
/**
* Handle import completion
*/
importComplete(progress) {
this.cleanupConnections();
this.results = progress;
// Refresh recipes list to show newly imported recipes
if (window.recipeManager && typeof window.recipeManager.loadRecipes === 'function') {
window.recipeManager.loadRecipes();
}
// Show results step
this.showStep('batchResultsStep');
this.updateResultsUI(progress);
}
/**
* Update the results UI
*/
updateResultsUI(progress) {
// Update summary cards
const resultsTotal = document.getElementById('resultsTotal');
if (resultsTotal) resultsTotal.textContent = progress.total || 0;
const resultsSuccess = document.getElementById('resultsSuccess');
if (resultsSuccess) resultsSuccess.textContent = progress.success || 0;
const resultsFailed = document.getElementById('resultsFailed');
if (resultsFailed) resultsFailed.textContent = progress.failed || 0;
const resultsSkipped = document.getElementById('resultsSkipped');
if (resultsSkipped) resultsSkipped.textContent = progress.skipped || 0;
// Update header based on results
const resultsHeader = document.getElementById('batchResultsHeader');
if (resultsHeader) {
const icon = resultsHeader.querySelector('.results-icon i');
const title = resultsHeader.querySelector('.results-title');
if (this.isCancelled) {
if (icon) {
icon.className = 'fas fa-stop-circle';
icon.parentElement.classList.add('warning');
}
if (title) title.textContent = translate('recipes.batchImport.cancelled', {}, 'Import cancelled');
} else if (progress.failed === 0 && progress.success > 0) {
if (icon) {
icon.className = 'fas fa-check-circle';
icon.parentElement.classList.remove('warning', 'error');
}
if (title) title.textContent = translate('recipes.batchImport.completed', {}, 'Import completed');
} else if (progress.failed > 0 && progress.success === 0) {
if (icon) {
icon.className = 'fas fa-times-circle';
icon.parentElement.classList.add('error');
}
if (title) title.textContent = translate('recipes.batchImport.failed', {}, 'Import failed');
} else {
if (icon) {
icon.className = 'fas fa-exclamation-circle';
icon.parentElement.classList.add('warning');
}
if (title) title.textContent = translate('recipes.batchImport.completedWithErrors', {}, 'Completed with errors');
}
}
}
/**
* Toggle the results details visibility
*/
toggleResultsDetails() {
const detailsList = document.getElementById('batchDetailsList');
const toggleIcon = document.getElementById('resultsToggleIcon');
const toggle = document.querySelector('.details-toggle');
if (detailsList && toggleIcon) {
if (detailsList.style.display === 'none') {
detailsList.style.display = 'block';
toggleIcon.classList.add('expanded');
if (toggle) toggle.classList.add('expanded');
// Load details if not loaded
if (detailsList.children.length === 0 && this.results && this.results.items) {
this.loadResultsDetails(this.results.items);
}
} else {
detailsList.style.display = 'none';
toggleIcon.classList.remove('expanded');
if (toggle) toggle.classList.remove('expanded');
}
}
}
/**
* Load results details into the list
*/
loadResultsDetails(items) {
const detailsList = document.getElementById('batchDetailsList');
if (!detailsList) return;
detailsList.innerHTML = '';
items.forEach(item => {
const resultItem = document.createElement('div');
resultItem.className = 'result-item';
const statusClass = item.status === 'success' ? 'success' :
item.status === 'failed' ? 'failed' : 'skipped';
const statusIcon = item.status === 'success' ? 'check' :
item.status === 'failed' ? 'times' : 'forward';
resultItem.innerHTML = `
<div class="result-item-status ${statusClass}">
<i class="fas fa-${statusIcon}"></i>
</div>
<div class="result-item-info">
<div class="result-item-name">${this.escapeHtml(item.source || item.current_item || 'Unknown')}</div>
${item.error_message ? `<div class="result-item-error">${this.escapeHtml(item.error_message)}</div>` : ''}
</div>
`;
detailsList.appendChild(resultItem);
});
}
/**
* Cancel the current import
*/
async cancelImport() {
if (!this.operationId) return;
this.isCancelled = true;
try {
const response = await fetch('/api/lm/recipes/batch-import/cancel', {
method: 'POST',
headers: {
'Content-Type': 'application/json'
},
body: JSON.stringify({ operation_id: this.operationId })
});
const data = await response.json();
if (data.success) {
showToast('toast.recipes.batchImportCancelling', {}, 'info');
} else {
showToast('toast.recipes.batchImportCancelFailed', { message: data.error }, 'error');
}
} catch (error) {
console.error('Error cancelling import:', error);
showToast('toast.recipes.batchImportCancelFailed', { message: error.message }, 'error');
}
}
/**
* Close modal and reset state
*/
closeAndReset() {
this.cleanupConnections();
this.resetState();
modalManager.closeModal('batchImportModal');
}
/**
* Start a new import (from results step)
*/
startNewImport() {
this.resetState();
this.showStep('batchInputStep');
}
/**
* Toggle directory browser visibility
*/
toggleDirectoryBrowser() {
const browser = document.getElementById('batchDirectoryBrowser');
if (browser) {
const isVisible = browser.style.display !== 'none';
browser.style.display = isVisible ? 'none' : 'block';
if (!isVisible) {
// Load initial directory when opening
const currentPath = document.getElementById('batchDirectoryInput').value;
this.loadDirectory(currentPath || '/');
}
}
}
/**
* Load directory contents
*/
async loadDirectory(path) {
try {
const response = await fetch('/api/lm/recipes/browse-directory', {
method: 'POST',
headers: {
'Content-Type': 'application/json'
},
body: JSON.stringify({ path })
});
const data = await response.json();
if (data.success) {
this.renderDirectoryBrowser(data);
} else {
showToast('toast.recipes.batchImportBrowseFailed', { message: data.error }, 'error');
}
} catch (error) {
console.error('Error loading directory:', error);
showToast('toast.recipes.batchImportBrowseFailed', { message: error.message }, 'error');
}
}
/**
* Render directory browser UI
*/
renderDirectoryBrowser(data) {
const currentPathEl = document.getElementById('batchCurrentPath');
const folderList = document.getElementById('batchFolderList');
const fileList = document.getElementById('batchFileList');
const directoryCount = document.getElementById('batchDirectoryCount');
const imageCount = document.getElementById('batchImageCount');
if (currentPathEl) {
currentPathEl.textContent = data.current_path;
}
// Render folders
if (folderList) {
folderList.innerHTML = '';
// Add parent directory if available
if (data.parent_path) {
const parentItem = this.createFolderItem('..', data.parent_path, true);
folderList.appendChild(parentItem);
}
data.directories.forEach(dir => {
folderList.appendChild(this.createFolderItem(dir.name, dir.path));
});
}
// Render files
if (fileList) {
fileList.innerHTML = '';
data.image_files.forEach(file => {
fileList.appendChild(this.createFileItem(file.name, file.path, file.size));
});
}
// Update stats
if (directoryCount) {
directoryCount.textContent = data.directory_count;
}
if (imageCount) {
imageCount.textContent = data.image_count;
}
}
/**
* Create folder item element
*/
createFolderItem(name, path, isParent = false) {
const item = document.createElement('div');
item.className = 'folder-item';
item.dataset.path = path;
item.innerHTML = `
<i class="fas fa-folder${isParent ? '' : ''}"></i>
<span class="item-name">${this.escapeHtml(name)}</span>
`;
item.addEventListener('click', () => {
if (isParent) {
this.navigateToParentDirectory();
} else {
this.loadDirectory(path);
}
});
return item;
}
/**
* Create file item element
*/
createFileItem(name, path, size) {
const item = document.createElement('div');
item.className = 'file-item';
item.dataset.path = path;
item.innerHTML = `
<i class="fas fa-image"></i>
<span class="item-name">${this.escapeHtml(name)}</span>
<span class="item-size">${this.formatFileSize(size)}</span>
`;
return item;
}
/**
* Navigate to parent directory
*/
navigateToParentDirectory() {
const currentPath = document.getElementById('batchCurrentPath')?.textContent;
if (currentPath) {
// Get parent path using path manipulation
const lastSeparator = currentPath.lastIndexOf('/');
const parentPath = lastSeparator > 0 ? currentPath.substring(0, lastSeparator) : currentPath;
this.loadDirectory(parentPath);
}
}
/**
* Select current directory
*/
selectCurrentDirectory() {
const currentPath = document.getElementById('batchCurrentPath')?.textContent;
const directoryInput = document.getElementById('batchDirectoryInput');
if (currentPath && directoryInput) {
directoryInput.value = currentPath;
this.toggleDirectoryBrowser(); // Close browser
showToast('toast.recipes.batchImportDirectorySelected', { path: currentPath }, 'success');
}
}
/**
* Format file size for display
*/
formatFileSize(bytes) {
if (bytes === 0) return '0 B';
const k = 1024;
const sizes = ['B', 'KB', 'MB', 'GB'];
const i = Math.floor(Math.log(bytes) / Math.log(k));
return Math.round(bytes / Math.pow(k, i) * 10) / 10 + ' ' + sizes[i];
}
/**
* Escape HTML to prevent XSS
*/
escapeHtml(text) {
if (!text) return '';
const div = document.createElement('div');
div.textContent = text;
return div.innerHTML;
}
/**
* Browse for directory using File System Access API (deprecated - kept for compatibility)
*/
async browseDirectory() {
// Now redirects to the new directory browser
this.toggleDirectoryBrowser();
}
/**
* Clean up WebSocket and polling connections
*/
cleanupConnections() {
if (this.wsConnection) {
if (this.wsConnection.readyState === WebSocket.OPEN ||
this.wsConnection.readyState === WebSocket.CONNECTING) {
this.wsConnection.close();
}
this.wsConnection = null;
}
if (this.pollingInterval) {
clearInterval(this.pollingInterval);
this.pollingInterval = null;
}
}
/**
* Escape HTML to prevent XSS
*/
escapeHtml(text) {
if (!text) return '';
const div = document.createElement('div');
div.textContent = text;
return div.innerHTML;
}
}
// Create singleton instance
export const batchImportManager = new BatchImportManager();

View File

@@ -568,7 +568,8 @@ export class BulkManager {
}
deselectItem(filepath) {
const card = document.querySelector(`.model-card[data-filepath="${filepath}"]`);
const escapedPath = this.escapeAttributeValue(filepath);
const card = document.querySelector(`.model-card[data-filepath="${escapedPath}"]`);
if (card) {
card.classList.remove('selected');
}
@@ -632,7 +633,8 @@ export class BulkManager {
for (const filepath of state.selectedModels) {
const metadata = metadataCache.get(filepath);
if (metadata) {
const card = document.querySelector(`.model-card[data-filepath="${filepath}"]`);
const escapedPath = this.escapeAttributeValue(filepath);
const card = document.querySelector(`.model-card[data-filepath="${escapedPath}"]`);
if (card) {
this.updateMetadataCacheFromCard(filepath, card);
}

View File

@@ -8,6 +8,22 @@ export class LoadingManager {
return LoadingManager.instance;
}
// Delay DOM creation until first use to ensure i18n is ready
this._initialized = false;
this.overlay = null;
this.loadingContent = null;
this.progressBar = null;
this.statusText = null;
this.cancelButton = null;
this.onCancelCallback = null;
this.detailsContainer = null;
LoadingManager.instance = this;
}
_ensureInitialized() {
if (this._initialized) return;
this.overlay = document.getElementById('loading-overlay');
if (!this.overlay) {
@@ -53,7 +69,6 @@ export class LoadingManager {
this.loadingContent.appendChild(this.cancelButton);
}
this.onCancelCallback = null;
this.cancelButton.onclick = () => {
if (this.onCancelCallback) {
this.onCancelCallback();
@@ -62,12 +77,11 @@ export class LoadingManager {
}
};
this.detailsContainer = null; // Will be created when needed
LoadingManager.instance = this;
this._initialized = true;
}
show(message = 'Loading...', progress = 0) {
this._ensureInitialized();
this.overlay.style.display = 'flex';
this.setProgress(progress);
this.setStatus(message);
@@ -77,21 +91,25 @@ export class LoadingManager {
}
hide() {
if (!this._initialized) return;
this.overlay.style.display = 'none';
this.reset();
this.removeDetailsContainer();
}
setProgress(percent) {
if (!this._initialized) return;
this.progressBar.style.width = `${percent}%`;
this.progressBar.setAttribute('aria-valuenow', percent);
}
setStatus(message) {
if (!this._initialized) return;
this.statusText.textContent = message;
}
reset() {
if (!this._initialized) return;
this.setProgress(0);
this.setStatus('');
this.removeDetailsContainer();
@@ -100,6 +118,7 @@ export class LoadingManager {
}
showCancelButton(onCancel) {
this._ensureInitialized();
if (this.cancelButton) {
this.onCancelCallback = onCancel;
this.cancelButton.style.display = 'flex';
@@ -109,6 +128,7 @@ export class LoadingManager {
}
hideCancelButton() {
if (!this._initialized) return;
if (this.cancelButton) {
this.cancelButton.style.display = 'none';
this.onCancelCallback = null;
@@ -117,6 +137,7 @@ export class LoadingManager {
// Create a details container for enhanced progress display
createDetailsContainer() {
this._ensureInitialized();
// Remove existing container if any
this.removeDetailsContainer();
@@ -332,12 +353,14 @@ export class LoadingManager {
}
showSimpleLoading(message = 'Loading...') {
this._ensureInitialized();
this.overlay.style.display = 'flex';
this.progressBar.style.display = 'none';
this.setStatus(message);
}
restoreProgressBar() {
if (!this._initialized) return;
this.progressBar.style.display = 'block';
}
}

View File

@@ -134,6 +134,19 @@ export class ModalManager {
});
}
// Add batchImportModal registration
const batchImportModal = document.getElementById('batchImportModal');
if (batchImportModal) {
this.registerModal('batchImportModal', {
element: batchImportModal,
onClose: () => {
this.getModal('batchImportModal').element.style.display = 'none';
document.body.classList.remove('modal-open');
},
closeOnOutsideClick: true
});
}
// Add recipeModal registration
const recipeModal = document.getElementById('recipeModal');
if (recipeModal) {

View File

@@ -88,6 +88,11 @@ class MoveManager {
folderPathInput.value = '';
}
// Reset folder tree selection
if (this.folderTreeManager) {
this.folderTreeManager.clearSelection();
}
try {
// Fetch model roots
const modelRootSelect = document.getElementById('moveModelRoot');
@@ -286,6 +291,9 @@ class MoveManager {
if (recursive) {
// Visible if it's in activeFolder or any subfolder
// Special case for root: if activeFolder is empty, everything is visible in recursive mode
if (normalizedActive === '') return true;
return normalizedRelative === normalizedActive ||
normalizedRelative.startsWith(normalizedActive + '/');
} else {
@@ -305,7 +313,7 @@ class MoveManager {
}
// Get selected folder path from folder tree manager
const targetFolder = this.folderTreeManager.getSelectedPath();
const targetFolder = this.useDefaultPath ? '' : this.folderTreeManager.getSelectedPath();
let targetPath = selectedRoot;
if (targetFolder) {
@@ -315,81 +323,31 @@ class MoveManager {
try {
if (this.bulkFilePaths) {
// Bulk move mode
const results = await apiClient.moveBulkModels(this.bulkFilePaths, targetPath, this.useDefaultPath);
await apiClient.moveBulkModels(this.bulkFilePaths, targetPath, this.useDefaultPath);
// Update virtual scroller visibility/metadata
const pageState = getCurrentPageState();
if (state.virtualScroller) {
results.forEach(result => {
if (result.success) {
// Deselect moving item
bulkManager.deselectItem(result.original_file_path);
const newRelativeFolder = this._getRelativeFolder(result.new_file_path);
const isVisible = this._isModelVisible(newRelativeFolder, pageState);
if (!isVisible) {
state.virtualScroller.removeItemByFilePath(result.original_file_path);
} else {
const newFileNameWithExt = result.new_file_path.substring(result.new_file_path.lastIndexOf('/') + 1);
const baseFileName = newFileNameWithExt.substring(0, newFileNameWithExt.lastIndexOf('.'));
const updateData = {
file_path: result.new_file_path,
file_name: baseFileName,
folder: newRelativeFolder
};
// Only update sub_type if it's present in the cache_entry
if (result.cache_entry && result.cache_entry.sub_type) {
updateData.sub_type = result.cache_entry.sub_type;
}
state.virtualScroller.updateSingleItem(result.original_file_path, updateData);
}
}
});
}
// Deselect moving items
this.bulkFilePaths.forEach(path => bulkManager.deselectItem(path));
} else {
// Single move mode
const result = await apiClient.moveSingleModel(this.currentFilePath, targetPath, this.useDefaultPath);
await apiClient.moveSingleModel(this.currentFilePath, targetPath, this.useDefaultPath);
const pageState = getCurrentPageState();
if (result && result.new_file_path && state.virtualScroller) {
// Deselect moving item
bulkManager.deselectItem(this.currentFilePath);
const newRelativeFolder = this._getRelativeFolder(result.new_file_path);
const isVisible = this._isModelVisible(newRelativeFolder, pageState);
if (!isVisible) {
state.virtualScroller.removeItemByFilePath(this.currentFilePath);
} else {
const newFileNameWithExt = result.new_file_path.substring(result.new_file_path.lastIndexOf('/') + 1);
const baseFileName = newFileNameWithExt.substring(0, newFileNameWithExt.lastIndexOf('.'));
const updateData = {
file_path: result.new_file_path,
file_name: baseFileName,
folder: newRelativeFolder
};
// Only update sub_type if it's present in the cache_entry
if (result.cache_entry && result.cache_entry.sub_type) {
updateData.sub_type = result.cache_entry.sub_type;
}
state.virtualScroller.updateSingleItem(this.currentFilePath, updateData);
}
}
// Deselect moving item
bulkManager.deselectItem(this.currentFilePath);
}
// Refresh folder tags after successful move
sidebarManager.refresh();
// Refresh UI by reloading the current page, same as drag-and-drop behavior
// This ensures all metadata (like preview URLs) are correctly formatted by the backend
if (sidebarManager.pageControls && typeof sidebarManager.pageControls.resetAndReload === 'function') {
await sidebarManager.pageControls.resetAndReload(true);
} else if (sidebarManager.lastPageControls && typeof sidebarManager.lastPageControls.resetAndReload === 'function') {
await sidebarManager.lastPageControls.resetAndReload(true);
}
// Refresh folder tree in sidebar
await sidebarManager.refresh();
modalManager.closeModal('moveModal');
} catch (error) {
console.error('Error moving model(s):', error);
showToast('toast.models.moveFailed', { message: error.message }, 'error');

View File

@@ -1,13 +1,14 @@
// Recipe manager module
import { appCore } from './core.js';
import { ImportManager } from './managers/ImportManager.js';
import { BatchImportManager } from './managers/BatchImportManager.js';
import { RecipeModal } from './components/RecipeModal.js';
import { state, getCurrentPageState } from './state/index.js';
import { getSessionItem, removeSessionItem } from './utils/storageHelpers.js';
import { RecipeContextMenu } from './components/ContextMenu/index.js';
import { DuplicatesManager } from './components/DuplicatesManager.js';
import { refreshVirtualScroll } from './utils/infiniteScroll.js';
import { refreshRecipes, RecipeSidebarApiClient } from './api/recipeApi.js';
import { refreshRecipes, syncChanges, RecipeSidebarApiClient } from './api/recipeApi.js';
import { sidebarManager } from './components/SidebarManager.js';
class RecipePageControls {
@@ -27,7 +28,7 @@ class RecipePageControls {
return;
}
refreshVirtualScroll();
await syncChanges();
}
getSidebarApiClient() {
@@ -46,6 +47,10 @@ class RecipeManager {
// Initialize ImportManager
this.importManager = new ImportManager();
// Initialize BatchImportManager and make it globally accessible
this.batchImportManager = new BatchImportManager();
window.batchImportManager = this.batchImportManager;
// Initialize RecipeModal
this.recipeModal = new RecipeModal();
@@ -236,6 +241,70 @@ class RecipeManager {
refreshVirtualScroll();
});
}
// Initialize dropdown functionality for refresh button
this.initDropdowns();
}
initDropdowns() {
// Handle dropdown toggles
const dropdownToggles = document.querySelectorAll('.dropdown-toggle');
dropdownToggles.forEach(toggle => {
toggle.addEventListener('click', (e) => {
e.stopPropagation();
const dropdownGroup = toggle.closest('.dropdown-group');
// Close all other open dropdowns first
document.querySelectorAll('.dropdown-group.active').forEach(group => {
if (group !== dropdownGroup) {
group.classList.remove('active');
}
});
dropdownGroup.classList.toggle('active');
});
});
// Handle quick refresh option (Sync Changes)
const quickRefreshOption = document.querySelector('[data-action="quick-refresh"]');
if (quickRefreshOption) {
quickRefreshOption.addEventListener('click', (e) => {
e.stopPropagation();
this.pageControls.refreshModels(false);
this.closeDropdowns();
});
}
// Handle full rebuild option (Rebuild Cache)
const fullRebuildOption = document.querySelector('[data-action="full-rebuild"]');
if (fullRebuildOption) {
fullRebuildOption.addEventListener('click', (e) => {
e.stopPropagation();
this.pageControls.refreshModels(true);
this.closeDropdowns();
});
}
// Handle main refresh button (default: sync changes)
const refreshBtn = document.querySelector('[data-action="refresh"]');
if (refreshBtn) {
refreshBtn.addEventListener('click', () => {
this.pageControls.refreshModels(false);
});
}
// Close dropdowns when clicking outside
document.addEventListener('click', (e) => {
if (!e.target.closest('.dropdown-group')) {
this.closeDropdowns();
}
});
}
closeDropdowns() {
document.querySelectorAll('.dropdown-group.active').forEach(group => {
group.classList.remove('active');
});
}
// This method is kept for compatibility but now uses virtual scrolling

View File

@@ -0,0 +1,209 @@
/**
* Supporters service - Fetches and manages supporters data
*/
let supportersData = null;
let isLoading = false;
let loadPromise = null;
/**
* Fetch supporters data from the API
* @returns {Promise<Object>} Supporters data
*/
export async function fetchSupporters() {
// Return cached data if available
if (supportersData) {
return supportersData;
}
// Return existing promise if already loading
if (isLoading && loadPromise) {
return loadPromise;
}
isLoading = true;
loadPromise = fetch('/api/lm/supporters')
.then(response => {
if (!response.ok) {
throw new Error(`Failed to fetch supporters: ${response.statusText}`);
}
return response.json();
})
.then(data => {
if (data.success && data.supporters) {
supportersData = data.supporters;
return supportersData;
}
throw new Error(data.error || 'Failed to load supporters data');
})
.catch(error => {
console.error('Error loading supporters:', error);
// Return empty data on error
return {
specialThanks: [],
allSupporters: [],
totalCount: 0
};
})
.finally(() => {
isLoading = false;
loadPromise = null;
});
return loadPromise;
}
/**
* Clear cached supporters data
*/
export function clearSupportersCache() {
supportersData = null;
}
let autoScrollRequest = null;
let autoScrollTimeout = null;
let isUserInteracting = false;
let isHovering = false;
let currentScrollPos = 0;
/**
* Handle user interaction to stop auto-scroll
*/
function handleInteraction() {
isUserInteracting = true;
}
/**
* Handle mouse enter to pause auto-scroll
*/
function handleMouseEnter() {
isHovering = true;
}
/**
* Handle mouse leave to resume auto-scroll
*/
function handleMouseLeave() {
isHovering = false;
}
/**
* Initialize auto-scrolling for the supporters list like movie credits
* @param {HTMLElement} container The scrollable container
*/
function initAutoScroll(container) {
if (!container) return;
// Stop any existing animation and clear any pending timeout
if (autoScrollRequest) {
cancelAnimationFrame(autoScrollRequest);
autoScrollRequest = null;
}
if (autoScrollTimeout) {
clearTimeout(autoScrollTimeout);
autoScrollTimeout = null;
}
// Reset state for new scroll
isUserInteracting = false;
isHovering = false;
container.scrollTop = 0;
currentScrollPos = 0;
const scrollSpeed = 0.4; // Pixels per frame (~24px/sec at 60fps)
const step = () => {
// Stop animation if container is hidden or no longer in DOM
if (!container.offsetParent) {
autoScrollRequest = null;
return;
}
if (!isHovering && !isUserInteracting) {
const prevScrollTop = container.scrollTop;
currentScrollPos += scrollSpeed;
container.scrollTop = currentScrollPos;
// Check if we reached the bottom
if (container.scrollTop === prevScrollTop && currentScrollPos > 1) {
const isAtBottom = container.scrollTop + container.clientHeight >= container.scrollHeight - 1;
if (isAtBottom) {
autoScrollRequest = null;
return;
}
}
} else {
// Keep currentScrollPos in sync if user scrolls manually or pauses
currentScrollPos = container.scrollTop;
}
autoScrollRequest = requestAnimationFrame(step);
};
// Remove existing listeners before adding to avoid duplicates
container.removeEventListener('mouseenter', handleMouseEnter);
container.removeEventListener('mouseleave', handleMouseLeave);
container.removeEventListener('wheel', handleInteraction);
container.removeEventListener('touchstart', handleInteraction);
container.removeEventListener('mousedown', handleInteraction);
// Event listeners to handle user control
container.addEventListener('mouseenter', handleMouseEnter);
container.addEventListener('mouseleave', handleMouseLeave);
// Use { passive: true } for better scroll performance
container.addEventListener('wheel', handleInteraction, { passive: true });
container.addEventListener('touchstart', handleInteraction, { passive: true });
container.addEventListener('mousedown', handleInteraction);
// Initial delay before starting the credits-style scroll
autoScrollTimeout = setTimeout(() => {
if (container.scrollHeight > container.clientHeight) {
autoScrollRequest = requestAnimationFrame(step);
}
}, 1800);
}
/**
* Render supporters in the support modal
*/
export async function renderSupporters() {
const supporters = await fetchSupporters();
// Update subtitle with total count
const subtitleEl = document.getElementById('supportersSubtitle');
if (subtitleEl) {
const originalText = subtitleEl.textContent;
subtitleEl.textContent = originalText.replace(/\d+/, supporters.totalCount);
}
// Render special thanks
const specialThanksGrid = document.getElementById('specialThanksGrid');
if (specialThanksGrid && supporters.specialThanks) {
specialThanksGrid.innerHTML = supporters.specialThanks
.map(supporter => `
<div class="supporter-special-card" title="${supporter}">
<span class="supporter-special-name">${supporter}</span>
</div>
`)
.join('');
}
// Render all supporters
const supportersGrid = document.getElementById('supportersGrid');
if (supportersGrid && supporters.allSupporters) {
supportersGrid.innerHTML = supporters.allSupporters
.map((supporter, index, array) => {
const separator = index < array.length - 1
? '<span class="supporter-separator">·</span>'
: '';
return `
<span class="supporter-name-item" title="${supporter}">${supporter}</span>${separator}
`;
})
.join('');
// Initialize the auto-scroll effect
initAutoScroll(supportersGrid);
}
}

View File

@@ -10,6 +10,11 @@ export class StatisticsManager {
this.charts = {};
this.data = {};
this.initialized = false;
this.listStates = {
lora: { offset: 0, limit: 50, sort: 'desc', isLoading: false, hasMore: true },
checkpoint: { offset: 0, limit: 50, sort: 'desc', isLoading: false, hasMore: true },
embedding: { offset: 0, limit: 50, sort: 'desc', isLoading: false, hasMore: true }
};
}
async initialize() {
@@ -24,7 +29,7 @@ export class StatisticsManager {
await this.loadAllData();
// Initialize charts and visualizations
this.initializeVisualizations();
await this.initializeVisualizations();
this.initialized = true;
}
@@ -97,7 +102,7 @@ export class StatisticsManager {
return response.json();
}
initializeVisualizations() {
async initializeVisualizations() {
// Initialize metrics cards
this.renderMetricsCards();
@@ -105,7 +110,8 @@ export class StatisticsManager {
this.initializeCharts();
// Initialize lists and other components
this.renderTopModelsLists();
await this.initializeLists();
this.renderLargestModelsList();
this.renderTagCloud();
this.renderInsights();
}
@@ -548,86 +554,87 @@ export class StatisticsManager {
});
}
renderTopModelsLists() {
this.renderTopLorasList();
this.renderTopCheckpointsList();
this.renderTopEmbeddingsList();
this.renderLargestModelsList();
async initializeLists() {
const listTypes = [
{ type: 'lora', containerId: 'topLorasList' },
{ type: 'checkpoint', containerId: 'topCheckpointsList' },
{ type: 'embedding', containerId: 'topEmbeddingsList' }
];
const promises = listTypes.map(({ type, containerId }) => {
const container = document.getElementById(containerId);
if (container) {
// Handle infinite scrolling
container.addEventListener('scroll', () => {
if (container.scrollTop + container.clientHeight >= container.scrollHeight - 50) {
this.fetchAndRenderList(type, container);
}
});
// Initial fetch
return this.fetchAndRenderList(type, container);
}
return Promise.resolve();
});
await Promise.all(promises);
}
renderTopLorasList() {
const container = document.getElementById('topLorasList');
if (!container || !this.data.usage?.top_loras) return;
async fetchAndRenderList(type, container) {
const state = this.listStates[type];
if (state.isLoading || !state.hasMore) return;
const topLoras = this.data.usage.top_loras;
state.isLoading = true;
if (topLoras.length === 0) {
container.innerHTML = '<div class="loading-placeholder">No usage data available</div>';
return;
// Show loading indicator on initial load
if (state.offset === 0) {
container.innerHTML = '<div class="loading-placeholder"><i class="fas fa-spinner fa-spin"></i> Loading...</div>';
}
container.innerHTML = topLoras.map(lora => `
<div class="model-item">
<img src="${lora.preview_url || '/loras_static/images/no-preview.png'}"
alt="${lora.name}" class="model-preview"
onerror="this.src='/loras_static/images/no-preview.png'">
<div class="model-info">
<div class="model-name" title="${lora.name}">${lora.name}</div>
<div class="model-meta">${lora.base_model}${lora.folder}</div>
</div>
<div class="model-usage">${lora.usage_count}</div>
</div>
`).join('');
}
try {
const url = `/api/lm/stats/model-usage-list?type=${type}&sort=${state.sort}&offset=${state.offset}&limit=${state.limit}`;
const result = await this.fetchData(url);
renderTopCheckpointsList() {
const container = document.getElementById('topCheckpointsList');
if (!container || !this.data.usage?.top_checkpoints) return;
if (result.success) {
const items = result.data.items;
const topCheckpoints = this.data.usage.top_checkpoints;
// Remove loading indicator if it's the first page
if (state.offset === 0) {
container.innerHTML = '';
}
if (topCheckpoints.length === 0) {
container.innerHTML = '<div class="loading-placeholder">No usage data available</div>';
return;
if (items.length === 0 && state.offset === 0) {
container.innerHTML = '<div class="loading-placeholder">No models found</div>';
state.hasMore = false;
} else if (items.length < state.limit) {
state.hasMore = false;
}
const html = items.map(model => `
<div class="model-item">
<img src="${model.preview_url || '/loras_static/images/no-preview.png'}"
alt="${model.name}" class="model-preview"
onerror="this.src='/loras_static/images/no-preview.png'">
<div class="model-info">
<div class="model-name" title="${model.name}">${model.name}</div>
<div class="model-meta">${model.base_model}${model.folder || 'Root'}</div>
</div>
<div class="model-usage">${model.usage_count}</div>
</div>
`).join('');
container.insertAdjacentHTML('beforeend', html);
state.offset += state.limit;
}
} catch (error) {
console.error(`Error loading ${type} list:`, error);
if (state.offset === 0) {
container.innerHTML = '<div class="loading-placeholder">Error loading data</div>';
}
} finally {
state.isLoading = false;
}
container.innerHTML = topCheckpoints.map(checkpoint => `
<div class="model-item">
<img src="${checkpoint.preview_url || '/loras_static/images/no-preview.png'}"
alt="${checkpoint.name}" class="model-preview"
onerror="this.src='/loras_static/images/no-preview.png'">
<div class="model-info">
<div class="model-name" title="${checkpoint.name}">${checkpoint.name}</div>
<div class="model-meta">${checkpoint.base_model}${checkpoint.folder}</div>
</div>
<div class="model-usage">${checkpoint.usage_count}</div>
</div>
`).join('');
}
renderTopEmbeddingsList() {
const container = document.getElementById('topEmbeddingsList');
if (!container || !this.data.usage?.top_embeddings) return;
const topEmbeddings = this.data.usage.top_embeddings;
if (topEmbeddings.length === 0) {
container.innerHTML = '<div class="loading-placeholder">No usage data available</div>';
return;
}
container.innerHTML = topEmbeddings.map(embedding => `
<div class="model-item">
<img src="${embedding.preview_url || '/loras_static/images/no-preview.png'}"
alt="${embedding.name}" class="model-preview"
onerror="this.src='/loras_static/images/no-preview.png'">
<div class="model-info">
<div class="model-name" title="${embedding.name}">${embedding.name}</div>
<div class="model-meta">${embedding.base_model}${embedding.folder}</div>
</div>
<div class="model-usage">${embedding.usage_count}</div>
</div>
`).join('');
}
renderLargestModelsList() {

View File

@@ -0,0 +1,119 @@
/**
* CivitAI URL utilities
* Functions for working with CivitAI media URLs
*/
/**
* Optimization strategies for CivitAI URLs
*/
export const OptimizationMode = {
/** Full quality for showcase/display - uses /optimized=true only */
SHOWCASE: 'showcase',
/** Thumbnail size for cards - uses /width=450,optimized=true */
THUMBNAIL: 'thumbnail',
};
/**
* Rewrite Civitai preview URLs to use optimized renditions.
* Mirrors the backend's rewrite_preview_url() function from py/utils/civitai_utils.py
*
* @param {string|null} sourceUrl - Original preview URL from the Civitai API
* @param {string|null} mediaType - Optional media type hint ("image" or "video")
* @param {string} mode - Optimization mode ('showcase' or 'thumbnail')
* @returns {[string|null, boolean]} - Tuple of [rewritten URL or original, wasRewritten flag]
*/
export function rewriteCivitaiUrl(sourceUrl, mediaType = null, mode = OptimizationMode.THUMBNAIL) {
if (!sourceUrl) {
return [sourceUrl, false];
}
try {
const url = new URL(sourceUrl);
// Check if it's a CivitAI image domain
if (url.hostname.toLowerCase() !== 'image.civitai.com') {
return [sourceUrl, false];
}
// Determine replacement based on mode and media type
let replacement;
if (mode === OptimizationMode.SHOWCASE) {
// Full quality for showcase - no width restriction
replacement = '/optimized=true';
} else {
// Thumbnail mode with width restriction
replacement = '/width=450,optimized=true';
if (mediaType && mediaType.toLowerCase() === 'video') {
replacement = '/transcode=true,width=450,optimized=true';
}
}
// Replace /original=true with optimized version
if (!url.pathname.includes('/original=true')) {
return [sourceUrl, false];
}
const updatedPath = url.pathname.replace('/original=true', replacement, 1);
if (updatedPath === url.pathname) {
return [sourceUrl, false];
}
url.pathname = updatedPath;
return [url.toString(), true];
} catch (e) {
// Invalid URL
return [sourceUrl, false];
}
}
/**
* Get the optimized URL for a media item, falling back to original if not a CivitAI URL
*
* @param {string} url - Original URL
* @param {string} type - Media type ("image" or "video")
* @param {string} mode - Optimization mode ('showcase' or 'thumbnail')
* @returns {string} - Optimized URL or original URL
*/
export function getOptimizedUrl(url, type = 'image', mode = OptimizationMode.THUMBNAIL) {
const [optimizedUrl] = rewriteCivitaiUrl(url, type, mode);
return optimizedUrl || url;
}
/**
* Get showcase-optimized URL (full quality)
*
* @param {string} url - Original URL
* @param {string} type - Media type ("image" or "video")
* @returns {string} - Optimized URL for showcase display
*/
export function getShowcaseUrl(url, type = 'image') {
return getOptimizedUrl(url, type, OptimizationMode.SHOWCASE);
}
/**
* Get thumbnail-optimized URL (width=450)
*
* @param {string} url - Original URL
* @param {string} type - Media type ("image" or "video")
* @returns {string} - Optimized URL for thumbnail display
*/
export function getThumbnailUrl(url, type = 'image') {
return getOptimizedUrl(url, type, OptimizationMode.THUMBNAIL);
}
/**
* Check if a URL is from CivitAI
*
* @param {string} url - URL to check
* @returns {boolean} - True if it's a CivitAI URL
*/
export function isCivitaiUrl(url) {
if (!url) return false;
try {
const parsed = new URL(url);
return parsed.hostname.toLowerCase() === 'image.civitai.com';
} catch (e) {
return false;
}
}

View File

@@ -7,7 +7,10 @@ let pendingExcludePath = null;
export function showDeleteModal(filePath) {
pendingDeletePath = filePath;
const card = document.querySelector(`.model-card[data-filepath="${filePath}"]`);
const escapedPath = window.CSS && typeof window.CSS.escape === 'function'
? window.CSS.escape(filePath)
: filePath.replace(/["\\]/g, '\\$&');
const card = document.querySelector(`.model-card[data-filepath="${escapedPath}"]`);
const modelName = card ? card.dataset.name : filePath.split('/').pop();
const modal = modalManager.getModal('deleteModal').element;
const modelInfo = modal.querySelector('.delete-model-info');
@@ -47,7 +50,10 @@ export function closeDeleteModal() {
export function showExcludeModal(filePath) {
pendingExcludePath = filePath;
const card = document.querySelector(`.model-card[data-filepath="${filePath}"]`);
const escapedPath = window.CSS && typeof window.CSS.escape === 'function'
? window.CSS.escape(filePath)
: filePath.replace(/["\\]/g, '\\$&');
const card = document.querySelector(`.model-card[data-filepath="${escapedPath}"]`);
const modelName = card ? card.dataset.name : filePath.split('/').pop();
const modal = modalManager.getModal('excludeModal').element;
const modelInfo = modal.querySelector('.exclude-model-info');

View File

@@ -197,7 +197,10 @@ export function openCivitaiByMetadata(civitaiId, versionId, modelName = null) {
}
export function openCivitai(filePath) {
const loraCard = document.querySelector(`.model-card[data-filepath="${filePath}"]`);
const escapedPath = window.CSS && typeof window.CSS.escape === 'function'
? window.CSS.escape(filePath)
: filePath.replace(/["\\]/g, '\\$&');
const loraCard = document.querySelector(`.model-card[data-filepath="${escapedPath}"]`);
if (!loraCard) return;
const metaData = JSON.parse(loraCard.dataset.meta);
@@ -483,8 +486,12 @@ async function ensureRelativeModelPath(modelPath, collectionType) {
return modelPath;
}
// Remove model file extension (.safetensors, .ckpt, .pt, .bin) for cleaner matching
// Backend removes extensions from paths before matching, so search term should not include extension
const searchTerm = fileName.replace(/\.(safetensors|ckpt|pt|bin)$/i, '');
try {
const response = await fetch(`/api/lm/${collectionType}/relative-paths?search=${encodeURIComponent(fileName)}&limit=10`);
const response = await fetch(`/api/lm/${collectionType}/relative-paths?search=${encodeURIComponent(searchTerm)}&limit=10`);
if (!response.ok) {
return modelPath;
}

View File

@@ -0,0 +1,206 @@
<div id="batchImportModal" class="modal">
<div class="modal-content">
<div class="modal-header">
<button class="close" onclick="modalManager.closeModal('batchImportModal')">&times;</button>
<h2>{{ t('recipes.batchImport.title') }}</h2>
</div>
<!-- Step 1: Input Selection -->
<div class="batch-import-step" id="batchInputStep">
<div class="import-mode-toggle">
<button class="toggle-btn active" data-mode="urls" onclick="batchImportManager.toggleInputMode('urls')">
<i class="fas fa-link"></i> {{ t('recipes.batchImport.urlList') }}
</button>
<button class="toggle-btn" data-mode="directory" onclick="batchImportManager.toggleInputMode('directory')">
<i class="fas fa-folder"></i> {{ t('recipes.batchImport.directory') }}
</button>
</div>
<!-- URL List Section -->
<div class="import-section" id="urlListSection">
<p class="section-description">{{ t('recipes.batchImport.urlDescription') }}</p>
<div class="input-group">
<label for="batchUrlInput">{{ t('recipes.batchImport.urlsLabel') }}</label>
<textarea id="batchUrlInput" rows="8" placeholder="{{ t('recipes.batchImport.urlsPlaceholder') }}"></textarea>
<div class="input-hint">
<i class="fas fa-info-circle"></i>
{{ t('recipes.batchImport.urlsHint') }}
</div>
</div>
</div>
<!-- Directory Section -->
<div class="import-section" id="directorySection" style="display: none;">
<p class="section-description">{{ t('recipes.batchImport.directoryDescription') }}</p>
<div class="input-group">
<label for="batchDirectoryInput">{{ t('recipes.batchImport.directoryPath') }}</label>
<div class="input-with-button">
<input type="text" id="batchDirectoryInput" placeholder="{{ t('recipes.batchImport.directoryPlaceholder') }}" autocomplete="off">
<button class="secondary-btn" onclick="batchImportManager.toggleDirectoryBrowser()">
<i class="fas fa-folder-open"></i> {{ t('recipes.batchImport.browse') }}
</button>
</div>
</div>
<!-- Directory Browser -->
<div class="directory-browser" id="batchDirectoryBrowser" style="display: none;">
<div class="browser-header">
<button class="back-btn" onclick="batchImportManager.navigateToParentDirectory()" title="{{ t('recipes.batchImport.backToParent') }}">
<i class="fas fa-arrow-up"></i>
</button>
<div class="current-path" id="batchCurrentPath"></div>
</div>
<div class="browser-content">
<div class="browser-section">
<div class="section-label"><i class="fas fa-folder"></i> {{ t('recipes.batchImport.folders') }}</div>
<div class="folder-list" id="batchFolderList"></div>
</div>
<div class="browser-section">
<div class="section-label"><i class="fas fa-image"></i> {{ t('recipes.batchImport.imageFiles') }}</div>
<div class="file-list" id="batchFileList"></div>
</div>
</div>
<div class="browser-footer">
<div class="stats">
<span id="batchDirectoryCount">0</span> {{ t('recipes.batchImport.folders') }},
<span id="batchImageCount">0</span> {{ t('recipes.batchImport.images') }}
</div>
<button class="primary-btn" onclick="batchImportManager.selectCurrentDirectory()">
<i class="fas fa-check"></i> {{ t('recipes.batchImport.selectFolder') }}
</button>
</div>
</div>
<div class="checkbox-group">
<label class="checkbox-label">
<input type="checkbox" id="batchRecursiveCheck" checked>
<span class="checkmark"></span>
{{ t('recipes.batchImport.recursive') }}
</label>
</div>
</div>
<!-- Common Options -->
<div class="batch-options">
<div class="input-group">
<label for="batchTagsInput">{{ t('recipes.batchImport.tagsOptional') }}</label>
<input type="text" id="batchTagsInput" placeholder="{{ t('recipes.batchImport.tagsPlaceholder') }}">
<div class="input-hint">
<i class="fas fa-info-circle"></i>
{{ t('recipes.batchImport.tagsHint') }}
</div>
</div>
<div class="checkbox-group">
<label class="checkbox-label">
<input type="checkbox" id="batchSkipNoMetadata">
<span class="checkmark"></span>
{{ t('recipes.batchImport.skipNoMetadata') }}
</label>
</div>
</div>
<div class="modal-actions">
<button class="secondary-btn" onclick="modalManager.closeModal('batchImportModal')">{{ t('common.actions.cancel') }}</button>
<button class="primary-btn" id="batchImportStartBtn" onclick="batchImportManager.startImport()">
<i class="fas fa-play"></i> {{ t('recipes.batchImport.start') }}
</button>
</div>
</div>
<!-- Step 2: Progress -->
<div class="batch-import-step" id="batchProgressStep" style="display: none;">
<div class="batch-progress-container">
<div class="progress-header">
<div class="progress-status">
<span class="status-icon"><i class="fas fa-spinner fa-spin"></i></span>
<span class="status-text" id="batchStatusText">{{ t('recipes.batchImport.importing') }}</span>
</div>
<div class="progress-percentage" id="batchProgressPercent">0%</div>
</div>
<div class="progress-bar-container">
<div class="progress-bar" id="batchProgressBar" style="width: 0%"></div>
</div>
<div class="progress-stats">
<div class="stat-item">
<span class="stat-label">{{ t('recipes.batchImport.total') }}</span>
<span class="stat-value" id="batchTotalCount">0</span>
</div>
<div class="stat-item success">
<span class="stat-label">{{ t('recipes.batchImport.success') }}</span>
<span class="stat-value" id="batchSuccessCount">0</span>
</div>
<div class="stat-item failed">
<span class="stat-label">{{ t('recipes.batchImport.failed') }}</span>
<span class="stat-value" id="batchFailedCount">0</span>
</div>
<div class="stat-item skipped">
<span class="stat-label">{{ t('recipes.batchImport.skipped') }}</span>
<span class="stat-value" id="batchSkippedCount">0</span>
</div>
</div>
<div class="current-item" id="batchCurrentItemContainer">
<span class="current-item-label">{{ t('recipes.batchImport.current') }}</span>
<span class="current-item-name" id="batchCurrentItem">-</span>
</div>
</div>
<div class="modal-actions">
<button class="secondary-btn" id="batchCancelBtn" onclick="batchImportManager.cancelImport()">
<i class="fas fa-stop"></i> {{ t('recipes.batchImport.cancel') }}
</button>
</div>
</div>
<!-- Step 3: Results -->
<div class="batch-import-step" id="batchResultsStep" style="display: none;">
<div class="batch-results-container">
<div class="results-header" id="batchResultsHeader">
<div class="results-icon">
<i class="fas fa-check-circle"></i>
</div>
<div class="results-title">{{ t('recipes.batchImport.completed') }}</div>
</div>
<div class="results-summary">
<div class="result-card total">
<span class="result-label">{{ t('recipes.batchImport.total') }}</span>
<span class="result-value" id="resultsTotal">0</span>
</div>
<div class="result-card success">
<span class="result-label">{{ t('recipes.batchImport.success') }}</span>
<span class="result-value" id="resultsSuccess">0</span>
</div>
<div class="result-card failed">
<span class="result-label">{{ t('recipes.batchImport.failed') }}</span>
<span class="result-value" id="resultsFailed">0</span>
</div>
<div class="result-card skipped">
<span class="result-label">{{ t('recipes.batchImport.skipped') }}</span>
<span class="result-value" id="resultsSkipped">0</span>
</div>
</div>
<div class="results-details" id="batchResultsDetails">
<div class="details-toggle" onclick="batchImportManager.toggleResultsDetails()">
<i class="fas fa-chevron-down" id="resultsToggleIcon"></i>
<span>{{ t('recipes.batchImport.viewDetails') }}</span>
</div>
<div class="details-list" id="batchDetailsList" style="display: none;">
<!-- Details will be populated dynamically -->
</div>
</div>
</div>
<div class="modal-actions">
<button class="secondary-btn" onclick="batchImportManager.closeAndReset()">{{ t('common.actions.close') }}</button>
<button class="primary-btn" onclick="batchImportManager.startNewImport()">
<i class="fas fa-plus"></i> {{ t('recipes.batchImport.newImport') }}
</button>
</div>
</div>
</div>
</div>

View File

@@ -2,90 +2,133 @@
<div id="supportModal" class="modal">
<div class="modal-content support-modal">
<button class="close" onclick="modalManager.closeModal('supportModal')">&times;</button>
<div class="support-header">
<i class="fas fa-heart support-icon"></i>
<h2>{{ t('support.title') }}</h2>
</div>
<div class="support-content">
<p>{{ t('support.message') }}</p>
<div class="support-section">
<h3><i class="fas fa-comment"></i> {{ t('support.feedback.title') }}</h3>
<p>{{ t('support.feedback.description') }}</p>
<div class="support-links">
<a href="https://github.com/willmiao/ComfyUI-Lora-Manager/issues/new" class="social-link" target="_blank">
<i class="fab fa-github"></i>
<span>{{ t('support.links.submitGithubIssue') }}</span>
</a>
<a href="https://discord.gg/vcqNrWVFvM" class="social-link" target="_blank">
<i class="fab fa-discord"></i>
<span>{{ t('support.links.joinDiscord') }}</span>
</a>
<div class="support-container">
<!-- Left Side: Support Options -->
<div class="support-left">
<div class="support-header">
<i class="fas fa-heart support-icon"></i>
<h2>{{ t('support.title') }}</h2>
</div>
<div class="support-content">
<p>{{ t('support.message') }}</p>
<div class="support-section">
<h3><i class="fas fa-comment"></i> {{ t('support.feedback.title') }}</h3>
<p>{{ t('support.feedback.description') }}</p>
<div class="support-links">
<a href="https://github.com/willmiao/ComfyUI-Lora-Manager/issues/new" class="social-link" target="_blank">
<i class="fab fa-github"></i>
<span>{{ t('support.links.submitGithubIssue') }}</span>
</a>
<a href="https://discord.gg/vcqNrWVFvM" class="social-link" target="_blank">
<i class="fab fa-discord"></i>
<span>{{ t('support.links.joinDiscord') }}</span>
</a>
</div>
</div>
<div class="support-section">
<h3><i class="fas fa-rss"></i> {{ t('support.sections.followUpdates') }}</h3>
<div class="support-links">
<a href="https://www.youtube.com/@pixelpaws-ai" class="social-link" target="_blank">
<i class="fab fa-youtube"></i>
<span>{{ t('support.links.youtubeChannel') }}</span>
</a>
<a href="https://civitai.com/user/PixelPawsAI" class="social-link civitai-link" target="_blank">
<svg class="civitai-icon" viewBox="0 0 225 225" width="20" height="20">
<g transform="translate(0,225) scale(0.1,-0.1)" fill="currentColor">
<path d="M950 1899 c-96 -55 -262 -150 -367 -210 -106 -61 -200 -117 -208
-125 -13 -13 -15 -76 -15 -443 0 -395 1 -429 18 -443 9 -9 116 -73 237 -143
121 -70 283 -163 359 -208 76 -45 146 -80 155 -80 9 1 183 98 386 215 l370
215 2 444 3 444 -376 215 c-206 118 -378 216 -382 217 -4 1 -86 -43 -182 -98z
m346 -481 l163 -93 1 -57 0 -58 -89 0 c-87 0 -91 1 -166 44 l-78 45 -51 -30
c-28 -17 -61 -35 -73 -41 -21 -10 -23 -18 -23 -99 l0 -87 71 -41 c39 -23 73
-41 76 -41 3 0 37 18 75 40 68 39 72 40 164 40 l94 0 0 -53 c0 -60 23 -41
-198 -168 l-133 -77 -92 52 c-51 29 -126 73 -167 97 l-75 45 0 193 0 192 164
95 c91 52 167 94 169 94 2 0 78 -42 168 -92z"/>
</g>
</svg>
<span>{{ t('support.links.civitaiProfile') }}</span>
</a>
</div>
</div>
<div class="support-section">
<h3><i class="fas fa-coffee"></i> {{ t('support.sections.buyMeCoffee') }}</h3>
<p>{{ t('support.sections.coffeeDescription') }}</p>
<a href="https://ko-fi.com/pixelpawsai" class="kofi-button" target="_blank">
<i class="fas fa-mug-hot"></i>
<span>{{ t('support.links.supportKofi') }}</span>
</a>
</div>
<!-- Patreon Support Section -->
<div class="support-section">
<h3><i class="fab fa-patreon"></i> {{ t('support.sections.becomePatron') }}</h3>
<p>{{ t('support.sections.patronDescription') }}</p>
<a href="https://patreon.com/PixelPawsAI" class="patreon-button" target="_blank">
<i class="fab fa-patreon"></i>
<span>{{ t('support.links.supportPatreon') }}</span>
</a>
</div>
<!-- New section for Chinese payment methods -->
<div class="support-section">
<h3><i class="fas fa-qrcode"></i> {{ t('support.sections.wechatSupport') }}</h3>
<p>{{ t('support.sections.wechatDescription') }}</p>
<button class="secondary-btn qrcode-toggle" id="toggleQRCode">
<i class="fas fa-qrcode"></i>
<span class="toggle-text">{{ t('support.sections.showWechatQR') }}</span>
<i class="fas fa-chevron-down toggle-icon"></i>
</button>
<div class="qrcode-container" id="qrCodeContainer">
<img src="/loras_static/images/wechat-qr.webp" alt="WeChat Pay QR Code" class="qrcode-image">
</div>
</div>
<div class="support-footer">
<p>{{ t('support.footer') }}</p>
</div>
</div>
</div>
<div class="support-section">
<h3><i class="fas fa-rss"></i> {{ t('support.sections.followUpdates') }}</h3>
<div class="support-links">
<a href="https://www.youtube.com/@pixelpaws-ai" class="social-link" target="_blank">
<i class="fab fa-youtube"></i>
<span>{{ t('support.links.youtubeChannel') }}</span>
</a>
<a href="https://civitai.com/user/PixelPawsAI" class="social-link civitai-link" target="_blank">
<svg class="civitai-icon" viewBox="0 0 225 225" width="20" height="20">
<g transform="translate(0,225) scale(0.1,-0.1)" fill="currentColor">
<path d="M950 1899 c-96 -55 -262 -150 -367 -210 -106 -61 -200 -117 -208
-125 -13 -13 -15 -76 -15 -443 0 -395 1 -429 18 -443 9 -9 116 -73 237 -143
121 -70 283 -163 359 -208 76 -45 146 -80 155 -80 9 1 183 98 386 215 l370
215 2 444 3 444 -376 215 c-206 118 -378 216 -382 217 -4 1 -86 -43 -182 -98z
m346 -481 l163 -93 1 -57 0 -58 -89 0 c-87 0 -91 1 -166 44 l-78 45 -51 -30
c-28 -17 -61 -35 -73 -41 -21 -10 -23 -18 -23 -99 l0 -87 71 -41 c39 -23 73
-41 76 -41 3 0 37 18 75 40 68 39 72 40 164 40 l94 0 0 -53 c0 -60 23 -41
-198 -168 l-133 -77 -92 52 c-51 29 -126 73 -167 97 l-75 45 0 193 0 192 164
95 c91 52 167 94 169 94 2 0 78 -42 168 -92z"/>
</g>
</svg>
<span>{{ t('support.links.civitaiProfile') }}</span>
</a>
<!-- Right Side: Supporters -->
<div class="support-right">
<div class="supporters-section">
<div class="supporters-header">
<h2 class="supporters-title">
<i class="fas fa-hands-helping"></i>
{{ t('support.supporters.title') }}
</h2>
<p class="supporters-subtitle" id="supportersSubtitle">
{{ t('support.supporters.subtitle', count=0) }}
</p>
</div>
<!-- Special Thanks Section -->
<div class="supporters-group special-thanks-group">
<h3 class="supporters-group-title">
<i class="fas fa-star"></i>
{{ t('support.supporters.specialThanks') }}
</h3>
<div class="supporters-special-grid" id="specialThanksGrid">
<!-- Supporters will be loaded dynamically -->
</div>
</div>
<!-- All Supporters Section -->
<div class="supporters-group all-supporters-group">
<h3 class="supporters-group-title">
<i class="fas fa-heart"></i>
{{ t('support.supporters.allSupporters') }}
</h3>
<div class="supporters-all-list" id="supportersGrid">
<!-- Supporters will be loaded dynamically -->
</div>
</div>
</div>
</div>
<div class="support-section">
<h3><i class="fas fa-coffee"></i> {{ t('support.sections.buyMeCoffee') }}</h3>
<p>{{ t('support.sections.coffeeDescription') }}</p>
<a href="https://ko-fi.com/pixelpawsai" class="kofi-button" target="_blank">
<i class="fas fa-mug-hot"></i>
<span>{{ t('support.links.supportKofi') }}</span>
</a>
</div>
<!-- Patreon Support Section -->
<div class="support-section">
<h3><i class="fab fa-patreon"></i> {{ t('support.sections.becomePatron') }}</h3>
<p>{{ t('support.sections.patronDescription') }}</p>
<a href="https://patreon.com/PixelPawsAI" class="patreon-button" target="_blank">
<i class="fab fa-patreon"></i>
<span>{{ t('support.links.supportPatreon') }}</span>
</a>
</div>
<!-- New section for Chinese payment methods -->
<div class="support-section">
<h3><i class="fas fa-qrcode"></i> {{ t('support.sections.wechatSupport') }}</h3>
<p>{{ t('support.sections.wechatDescription') }}</p>
<button class="secondary-btn qrcode-toggle" id="toggleQRCode">
<i class="fas fa-qrcode"></i>
<span class="toggle-text">{{ t('support.sections.showWechatQR') }}</span>
<i class="fas fa-chevron-down toggle-icon"></i>
</button>
<div class="qrcode-container" id="qrCodeContainer">
<img src="/loras_static/images/wechat-qr.webp" alt="WeChat Pay QR Code" class="qrcode-image">
</div>
</div>
<div class="support-footer">
<p>{{ t('support.footer') }}</p>
</div>
</div>
</div>
</div>

View File

@@ -7,10 +7,12 @@
<link rel="stylesheet" href="/loras_static/css/components/card.css?v={{ version }}">
<link rel="stylesheet" href="/loras_static/css/components/recipe-modal.css?v={{ version }}">
<link rel="stylesheet" href="/loras_static/css/components/import-modal.css?v={{ version }}">
<link rel="stylesheet" href="/loras_static/css/components/batch-import-modal.css?v={{ version }}">
{% endblock %}
{% block additional_components %}
{% include 'components/import_modal.html' %}
{% include 'components/batch_import_modal.html' %}
{% include 'components/recipe_modal.html' %}
<div id="recipeContextMenu" class="context-menu" style="display: none;">
@@ -66,15 +68,29 @@
</optgroup>
</select>
</div>
<div title="{{ t('recipes.controls.refresh.title') }}" class="control-group">
<button onclick="recipeManager.refreshRecipes()"><i class="fas fa-sync"></i> {{
t('common.actions.refresh')
}}</button>
<div title="{{ t('recipes.controls.refresh.title') }}" class="control-group dropdown-group">
<button data-action="refresh" class="dropdown-main"><i class="fas fa-sync"></i> <span>{{
t('common.actions.refresh') }}</span></button>
<button class="dropdown-toggle" aria-label="Show refresh options">
<i class="fas fa-caret-down"></i>
</button>
<div class="dropdown-menu">
<div class="dropdown-item" data-action="quick-refresh" title="{{ t('recipes.controls.refresh.quickTooltip', default='Sync changes - quick refresh without rebuilding cache') }}">
<i class="fas fa-bolt"></i> <span>{{ t('loras.controls.refresh.quick', default='Sync Changes') }}</span>
</div>
<div class="dropdown-item" data-action="full-rebuild" title="{{ t('recipes.controls.refresh.fullTooltip', default='Rebuild cache - full rescan of all recipe files') }}">
<i class="fas fa-tools"></i> <span>{{ t('loras.controls.refresh.full', default='Rebuild Cache') }}</span>
</div>
</div>
</div>
<div title="{{ t('recipes.controls.import.title') }}" class="control-group">
<button onclick="importManager.showImportModal()"><i class="fas fa-file-import"></i> {{
t('recipes.controls.import.action') }}</button>
</div>
<div title="{{ t('recipes.batchImport.title') }}" class="control-group">
<button onclick="batchImportManager.showModal()"><i class="fas fa-layer-group"></i> {{
t('recipes.batchImport.action') }}</button>
</div>
<div class="control-group" title="{{ t('loras.controls.bulk.title') }}">
<button id="bulkOperationsBtn" data-action="bulk" title="{{ t('loras.controls.bulk.title') }}">
<i class="fas fa-th-large"></i> <span><span>{{ t('loras.controls.bulk.action') }}</span>

View File

@@ -36,8 +36,8 @@ class TestCheckpointPathOverlap:
config._preview_root_paths = set()
config._cached_fingerprint = None
# Call the method under test
result = config._prepare_checkpoint_paths(
# Call the method under test - now returns a tuple
all_paths, checkpoint_roots, unet_roots = config._prepare_checkpoint_paths(
[str(checkpoints_link)], [str(unet_link)]
)
@@ -50,21 +50,27 @@ class TestCheckpointPathOverlap:
]
assert len(warning_messages) == 1
assert "checkpoints" in warning_messages[0].lower()
assert "diffusion_models" in warning_messages[0].lower() or "unet" in warning_messages[0].lower()
assert (
"diffusion_models" in warning_messages[0].lower()
or "unet" in warning_messages[0].lower()
)
# Verify warning mentions backward compatibility fallback
assert "falling back" in warning_messages[0].lower() or "backward compatibility" in warning_messages[0].lower()
assert (
"falling back" in warning_messages[0].lower()
or "backward compatibility" in warning_messages[0].lower()
)
# Verify only one path is returned (deduplication still works)
assert len(result) == 1
assert len(all_paths) == 1
# Prioritizes checkpoints path for backward compatibility
assert _normalize(result[0]) == _normalize(str(checkpoints_link))
assert _normalize(all_paths[0]) == _normalize(str(checkpoints_link))
# Verify checkpoints_roots has the path (prioritized)
assert len(config.checkpoints_roots) == 1
assert _normalize(config.checkpoints_roots[0]) == _normalize(str(checkpoints_link))
# Verify checkpoint_roots has the path (prioritized)
assert len(checkpoint_roots) == 1
assert _normalize(checkpoint_roots[0]) == _normalize(str(checkpoints_link))
# Verify unet_roots is empty (overlapping paths removed)
assert config.unet_roots == []
assert unet_roots == []
def test_non_overlapping_paths_no_warning(
self, monkeypatch: pytest.MonkeyPatch, tmp_path, caplog
@@ -83,7 +89,7 @@ class TestCheckpointPathOverlap:
config._preview_root_paths = set()
config._cached_fingerprint = None
result = config._prepare_checkpoint_paths(
all_paths, checkpoint_roots, unet_roots = config._prepare_checkpoint_paths(
[str(checkpoints_dir)], [str(unet_dir)]
)
@@ -97,14 +103,14 @@ class TestCheckpointPathOverlap:
assert len(warning_messages) == 0
# Verify both paths are returned
assert len(result) == 2
normalized_result = [_normalize(p) for p in result]
assert len(all_paths) == 2
normalized_result = [_normalize(p) for p in all_paths]
assert _normalize(str(checkpoints_dir)) in normalized_result
assert _normalize(str(unet_dir)) in normalized_result
# Verify both roots are properly set
assert len(config.checkpoints_roots) == 1
assert len(config.unet_roots) == 1
assert len(checkpoint_roots) == 1
assert len(unet_roots) == 1
def test_partial_overlap_prioritizes_checkpoints(
self, monkeypatch: pytest.MonkeyPatch, tmp_path, caplog
@@ -129,9 +135,9 @@ class TestCheckpointPathOverlap:
config._cached_fingerprint = None
# One checkpoint path overlaps with one unet path
result = config._prepare_checkpoint_paths(
all_paths, checkpoint_roots, unet_roots = config._prepare_checkpoint_paths(
[str(shared_link), str(separate_checkpoint)],
[str(shared_link), str(separate_unet)]
[str(shared_link), str(separate_unet)],
)
# Verify warning was logged for the overlapping path
@@ -144,17 +150,20 @@ class TestCheckpointPathOverlap:
assert len(warning_messages) == 1
# Verify 3 unique paths (shared counted once as checkpoint, plus separate ones)
assert len(result) == 3
assert len(all_paths) == 3
# Verify the overlapping path appears in warning message
assert str(shared_link.name) in warning_messages[0] or str(shared_dir.name) in warning_messages[0]
assert (
str(shared_link.name) in warning_messages[0]
or str(shared_dir.name) in warning_messages[0]
)
# Verify checkpoints_roots includes both checkpoint paths (including the shared one)
assert len(config.checkpoints_roots) == 2
checkpoint_normalized = [_normalize(p) for p in config.checkpoints_roots]
# Verify checkpoint_roots includes both checkpoint paths (including the shared one)
assert len(checkpoint_roots) == 2
checkpoint_normalized = [_normalize(p) for p in checkpoint_roots]
assert _normalize(str(shared_link)) in checkpoint_normalized
assert _normalize(str(separate_checkpoint)) in checkpoint_normalized
# Verify unet_roots only includes the non-overlapping unet path
assert len(config.unet_roots) == 1
assert _normalize(config.unet_roots[0]) == _normalize(str(separate_unet))
assert len(unet_roots) == 1
assert _normalize(unet_roots[0]) == _normalize(str(separate_unet))

View File

@@ -90,7 +90,7 @@ describe('AutoComplete widget interactions', () => {
await vi.runAllTimersAsync();
await Promise.resolve();
expect(fetchApiMock).toHaveBeenCalledWith('/lm/loras/relative-paths?search=example&limit=20');
expect(fetchApiMock).toHaveBeenCalledWith('/lm/loras/relative-paths?search=example&limit=100');
const items = autoComplete.dropdown.querySelectorAll('.comfy-autocomplete-item');
expect(items).toHaveLength(1);
expect(autoComplete.dropdown.style.display).toBe('block');
@@ -156,4 +156,542 @@ describe('AutoComplete widget interactions', () => {
expect(highlighted).toContain('detail');
expect(highlighted).not.toMatch(/beta<\/span>/i);
});
it('handles arrow key navigation with virtual scrolling', async () => {
vi.useFakeTimers();
const mockItems = Array.from({ length: 50 }, (_, i) => `model_${i.toString().padStart(2, '0')}.safetensors`);
fetchApiMock.mockResolvedValue({
json: () => Promise.resolve({ success: true, relative_paths: mockItems }),
});
caretHelperInstance.getBeforeCursor.mockReturnValue('model');
caretHelperInstance.getCursorOffset.mockReturnValue({ left: 15, top: 25 });
const input = document.createElement('textarea');
document.body.append(input);
const { AutoComplete } = await import(AUTOCOMPLETE_MODULE);
const autoComplete = new AutoComplete(input, 'loras', {
debounceDelay: 0,
showPreview: false,
enableVirtualScroll: true,
itemHeight: 40,
visibleItems: 15,
pageSize: 20,
});
input.value = 'model';
input.dispatchEvent(new Event('input', { bubbles: true }));
await vi.runAllTimersAsync();
await Promise.resolve();
expect(autoComplete.items.length).toBeGreaterThan(0);
expect(autoComplete.selectedIndex).toBe(0);
const initialSelectedEl = autoComplete.contentContainer?.querySelector('.comfy-autocomplete-item-selected');
expect(initialSelectedEl).toBeDefined();
const arrowDownEvent = new KeyboardEvent('keydown', { key: 'ArrowDown', bubbles: true });
input.dispatchEvent(arrowDownEvent);
expect(autoComplete.selectedIndex).toBe(1);
const secondSelectedEl = autoComplete.contentContainer?.querySelector('.comfy-autocomplete-item-selected');
expect(secondSelectedEl).toBeDefined();
expect(secondSelectedEl?.dataset.index).toBe('1');
const arrowUpEvent = new KeyboardEvent('keydown', { key: 'ArrowUp', bubbles: true });
input.dispatchEvent(arrowUpEvent);
expect(autoComplete.selectedIndex).toBe(0);
const firstSelectedElAgain = autoComplete.contentContainer?.querySelector('.comfy-autocomplete-item-selected');
expect(firstSelectedElAgain).toBeDefined();
expect(firstSelectedElAgain?.dataset.index).toBe('0');
});
it('maintains selection when scrolling to invisible items', async () => {
vi.useFakeTimers();
const mockItems = Array.from({ length: 100 }, (_, i) => `item_${i.toString().padStart(3, '0')}.safetensors`);
fetchApiMock.mockResolvedValue({
json: () => Promise.resolve({ success: true, relative_paths: mockItems }),
});
caretHelperInstance.getBeforeCursor.mockReturnValue('item');
caretHelperInstance.getCursorOffset.mockReturnValue({ left: 15, top: 25 });
const input = document.createElement('textarea');
input.style.width = '400px';
input.style.height = '200px';
document.body.append(input);
const { AutoComplete } = await import(AUTOCOMPLETE_MODULE);
const autoComplete = new AutoComplete(input, 'loras', {
debounceDelay: 0,
showPreview: false,
enableVirtualScroll: true,
itemHeight: 40,
visibleItems: 15,
pageSize: 20,
});
input.value = 'item';
input.dispatchEvent(new Event('input', { bubbles: true }));
await vi.runAllTimersAsync();
await Promise.resolve();
expect(autoComplete.items.length).toBeGreaterThan(0);
autoComplete.selectedIndex = 14;
const scrollTopBefore = autoComplete.scrollContainer?.scrollTop || 0;
const arrowDownEvent = new KeyboardEvent('keydown', { key: 'ArrowDown', bubbles: true });
input.dispatchEvent(arrowDownEvent);
await vi.runAllTimersAsync();
await Promise.resolve();
expect(autoComplete.selectedIndex).toBe(15);
const selectedEl = autoComplete.contentContainer?.querySelector('.comfy-autocomplete-item-selected');
expect(selectedEl).toBeDefined();
expect(selectedEl?.dataset.index).toBe('15');
const scrollTopAfter = autoComplete.scrollContainer?.scrollTop || 0;
expect(scrollTopAfter).toBeGreaterThanOrEqual(scrollTopBefore);
});
it('replaces entire multi-word phrase when it matches selected tag (Danbooru convention)', async () => {
const mockTags = [
{ tag_name: 'looking_to_the_side', category: 0, post_count: 1234 },
{ tag_name: 'looking_away', category: 0, post_count: 5678 },
];
fetchApiMock.mockResolvedValue({
json: () => Promise.resolve({ success: true, words: mockTags }),
});
caretHelperInstance.getBeforeCursor.mockReturnValue('looking to the side');
caretHelperInstance.getCursorOffset.mockReturnValue({ left: 15, top: 25 });
const input = document.createElement('textarea');
input.value = 'looking to the side';
input.selectionStart = input.value.length;
input.focus = vi.fn();
input.setSelectionRange = vi.fn();
document.body.append(input);
const { AutoComplete } = await import(AUTOCOMPLETE_MODULE);
const autoComplete = new AutoComplete(input, 'prompt', {
debounceDelay: 0,
showPreview: false,
minChars: 1,
});
autoComplete.searchType = 'custom_words';
autoComplete.activeCommand = null;
autoComplete.items = mockTags;
autoComplete.selectedIndex = 0;
await autoComplete.insertSelection('looking_to_the_side');
expect(input.value).toBe('looking_to_the_side, ');
expect(autoComplete.dropdown.style.display).toBe('none');
expect(input.focus).toHaveBeenCalled();
});
it('replaces only last token when typing partial match (e.g., "hello 1gi" -> "1girl")', async () => {
const mockTags = [
{ tag_name: '1girl', category: 4, post_count: 500000 },
{ tag_name: '1boy', category: 4, post_count: 300000 },
];
fetchApiMock.mockResolvedValue({
json: () => Promise.resolve({ success: true, words: mockTags }),
});
caretHelperInstance.getBeforeCursor.mockReturnValue('hello 1gi');
caretHelperInstance.getCursorOffset.mockReturnValue({ left: 15, top: 25 });
const input = document.createElement('textarea');
input.value = 'hello 1gi';
input.selectionStart = input.value.length;
input.focus = vi.fn();
input.setSelectionRange = vi.fn();
document.body.append(input);
const { AutoComplete } = await import(AUTOCOMPLETE_MODULE);
const autoComplete = new AutoComplete(input, 'prompt', {
debounceDelay: 0,
showPreview: false,
minChars: 1,
});
autoComplete.searchType = 'custom_words';
autoComplete.activeCommand = null;
autoComplete.items = mockTags;
autoComplete.selectedIndex = 0;
autoComplete.currentSearchTerm = 'hello 1gi';
await autoComplete.insertSelection('1girl');
expect(input.value).toBe('hello 1girl, ');
});
it('replaces entire phrase for underscore tag match (e.g., "blue hair" -> "blue_hair")', async () => {
const mockTags = [
{ tag_name: 'blue_hair', category: 0, post_count: 45000 },
{ tag_name: 'blue_eyes', category: 0, post_count: 80000 },
];
fetchApiMock.mockResolvedValue({
json: () => Promise.resolve({ success: true, words: mockTags }),
});
caretHelperInstance.getBeforeCursor.mockReturnValue('blue hair');
caretHelperInstance.getCursorOffset.mockReturnValue({ left: 15, top: 25 });
const input = document.createElement('textarea');
input.value = 'blue hair';
input.selectionStart = input.value.length;
input.focus = vi.fn();
input.setSelectionRange = vi.fn();
document.body.append(input);
const { AutoComplete } = await import(AUTOCOMPLETE_MODULE);
const autoComplete = new AutoComplete(input, 'prompt', {
debounceDelay: 0,
showPreview: false,
minChars: 1,
});
autoComplete.searchType = 'custom_words';
autoComplete.activeCommand = null;
autoComplete.items = mockTags;
autoComplete.selectedIndex = 0;
autoComplete.currentSearchTerm = 'blue hair';
await autoComplete.insertSelection('blue_hair');
expect(input.value).toBe('blue_hair, ');
});
it('handles multi-word phrase with preceding text correctly', async () => {
const mockTags = [
{ tag_name: 'looking_to_the_side', category: 0, post_count: 1234 },
];
fetchApiMock.mockResolvedValue({
json: () => Promise.resolve({ success: true, words: mockTags }),
});
caretHelperInstance.getBeforeCursor.mockReturnValue('1girl, looking to the side');
caretHelperInstance.getCursorOffset.mockReturnValue({ left: 15, top: 25 });
const input = document.createElement('textarea');
input.value = '1girl, looking to the side';
input.selectionStart = input.value.length;
input.focus = vi.fn();
input.setSelectionRange = vi.fn();
document.body.append(input);
const { AutoComplete } = await import(AUTOCOMPLETE_MODULE);
const autoComplete = new AutoComplete(input, 'prompt', {
debounceDelay: 0,
showPreview: false,
minChars: 1,
});
autoComplete.searchType = 'custom_words';
autoComplete.activeCommand = null;
autoComplete.items = mockTags;
autoComplete.selectedIndex = 0;
autoComplete.currentSearchTerm = 'looking to the side';
await autoComplete.insertSelection('looking_to_the_side');
expect(input.value).toBe('1girl, looking_to_the_side, ');
});
it('replaces entire command and search term when using command mode with multi-word phrase', async () => {
const mockTags = [
{ tag_name: 'looking_to_the_side', category: 4, post_count: 1234 },
{ tag_name: 'looking_away', category: 4, post_count: 5678 },
];
fetchApiMock.mockResolvedValue({
json: () => Promise.resolve({ success: true, words: mockTags }),
});
// Simulate "/char looking to the side" input
caretHelperInstance.getBeforeCursor.mockReturnValue('/char looking to the side');
caretHelperInstance.getCursorOffset.mockReturnValue({ left: 15, top: 25 });
const input = document.createElement('textarea');
input.value = '/char looking to the side';
input.selectionStart = input.value.length;
input.focus = vi.fn();
input.setSelectionRange = vi.fn();
document.body.append(input);
const { AutoComplete } = await import(AUTOCOMPLETE_MODULE);
const autoComplete = new AutoComplete(input, 'prompt', {
debounceDelay: 0,
showPreview: false,
minChars: 1,
});
// Set up command mode state
autoComplete.searchType = 'custom_words';
autoComplete.activeCommand = { categories: [4, 11], label: 'Character' };
autoComplete.items = mockTags;
autoComplete.selectedIndex = 0;
autoComplete.currentSearchTerm = '/char looking to the side';
await autoComplete.insertSelection('looking_to_the_side');
// Command part should be replaced along with search term
expect(input.value).toBe('looking_to_the_side, ');
});
it('replaces only last token when multi-word query does not exactly match selected tag', async () => {
const mockTags = [
{ tag_name: 'blue_hair', category: 0, post_count: 45000 },
{ tag_name: 'blue_eyes', category: 0, post_count: 80000 },
];
fetchApiMock.mockResolvedValue({
json: () => Promise.resolve({ success: true, words: mockTags }),
});
// User types "looking to the blue" but selects "blue_hair" (doesn't match entire phrase)
caretHelperInstance.getBeforeCursor.mockReturnValue('looking to the blue');
caretHelperInstance.getCursorOffset.mockReturnValue({ left: 15, top: 25 });
const input = document.createElement('textarea');
input.value = 'looking to the blue';
input.selectionStart = input.value.length;
input.focus = vi.fn();
input.setSelectionRange = vi.fn();
document.body.append(input);
const { AutoComplete } = await import(AUTOCOMPLETE_MODULE);
const autoComplete = new AutoComplete(input, 'prompt', {
debounceDelay: 0,
showPreview: false,
minChars: 1,
});
autoComplete.searchType = 'custom_words';
autoComplete.activeCommand = null;
autoComplete.items = mockTags;
autoComplete.selectedIndex = 0;
autoComplete.currentSearchTerm = 'looking to the blue';
await autoComplete.insertSelection('blue_hair');
// Only "blue" should be replaced, not the entire phrase
expect(input.value).toBe('looking to the blue_hair, ');
});
it('handles multiple consecutive spaces in multi-word phrase correctly', async () => {
const mockTags = [
{ tag_name: 'looking_to_the_side', category: 0, post_count: 1234 },
];
fetchApiMock.mockResolvedValue({
json: () => Promise.resolve({ success: true, words: mockTags }),
});
// Input with multiple spaces between words
caretHelperInstance.getBeforeCursor.mockReturnValue('looking to the side');
caretHelperInstance.getCursorOffset.mockReturnValue({ left: 15, top: 25 });
const input = document.createElement('textarea');
input.value = 'looking to the side';
input.selectionStart = input.value.length;
input.focus = vi.fn();
input.setSelectionRange = vi.fn();
document.body.append(input);
const { AutoComplete } = await import(AUTOCOMPLETE_MODULE);
const autoComplete = new AutoComplete(input, 'prompt', {
debounceDelay: 0,
showPreview: false,
minChars: 1,
});
autoComplete.searchType = 'custom_words';
autoComplete.activeCommand = null;
autoComplete.items = mockTags;
autoComplete.selectedIndex = 0;
autoComplete.currentSearchTerm = 'looking to the side';
await autoComplete.insertSelection('looking_to_the_side');
// Multiple spaces should be normalized to single underscores for matching
expect(input.value).toBe('looking_to_the_side, ');
});
it('handles command mode with partial match replacing only last token', async () => {
const mockTags = [
{ tag_name: 'blue_hair', category: 0, post_count: 45000 },
];
fetchApiMock.mockResolvedValue({
json: () => Promise.resolve({ success: true, words: mockTags }),
});
// Command mode but selected tag doesn't match entire search phrase
caretHelperInstance.getBeforeCursor.mockReturnValue('/general looking to the blue');
caretHelperInstance.getCursorOffset.mockReturnValue({ left: 15, top: 25 });
const input = document.createElement('textarea');
input.value = '/general looking to the blue';
input.selectionStart = input.value.length;
input.focus = vi.fn();
input.setSelectionRange = vi.fn();
document.body.append(input);
const { AutoComplete } = await import(AUTOCOMPLETE_MODULE);
const autoComplete = new AutoComplete(input, 'prompt', {
debounceDelay: 0,
showPreview: false,
minChars: 1,
});
// Command mode with activeCommand
autoComplete.searchType = 'custom_words';
autoComplete.activeCommand = { categories: [0, 7], label: 'General' };
autoComplete.items = mockTags;
autoComplete.selectedIndex = 0;
autoComplete.currentSearchTerm = '/general looking to the blue';
await autoComplete.insertSelection('blue_hair');
// In command mode, the entire command + search term should be replaced
expect(input.value).toBe('blue_hair, ');
});
it('replaces entire phrase when selected tag starts with underscore version of search term (prefix match)', async () => {
const mockTags = [
{ tag_name: 'looking_to_the_side', category: 0, post_count: 1234 },
];
fetchApiMock.mockResolvedValue({
json: () => Promise.resolve({ success: true, words: mockTags }),
});
// User types partial phrase "looking to the" and selects "looking_to_the_side"
caretHelperInstance.getBeforeCursor.mockReturnValue('looking to the');
caretHelperInstance.getCursorOffset.mockReturnValue({ left: 15, top: 25 });
const input = document.createElement('textarea');
input.value = 'looking to the';
input.selectionStart = input.value.length;
input.focus = vi.fn();
input.setSelectionRange = vi.fn();
document.body.append(input);
const { AutoComplete } = await import(AUTOCOMPLETE_MODULE);
const autoComplete = new AutoComplete(input, 'prompt', {
debounceDelay: 0,
showPreview: false,
minChars: 1,
});
autoComplete.searchType = 'custom_words';
autoComplete.activeCommand = null;
autoComplete.items = mockTags;
autoComplete.selectedIndex = 0;
autoComplete.currentSearchTerm = 'looking to the';
await autoComplete.insertSelection('looking_to_the_side');
// Entire phrase should be replaced with selected tag (with underscores)
expect(input.value).toBe('looking_to_the_side, ');
});
it('inserts tag with underscores regardless of space replacement setting', async () => {
const mockTags = [
{ tag_name: 'blue_hair', category: 0, post_count: 45000 },
];
fetchApiMock.mockResolvedValue({
json: () => Promise.resolve({ success: true, words: mockTags }),
});
caretHelperInstance.getBeforeCursor.mockReturnValue('blue');
caretHelperInstance.getCursorOffset.mockReturnValue({ left: 15, top: 25 });
const input = document.createElement('textarea');
input.value = 'blue';
input.selectionStart = input.value.length;
input.focus = vi.fn();
input.setSelectionRange = vi.fn();
document.body.append(input);
const { AutoComplete } = await import(AUTOCOMPLETE_MODULE);
const autoComplete = new AutoComplete(input, 'prompt', {
debounceDelay: 0,
showPreview: false,
minChars: 1,
});
autoComplete.searchType = 'custom_words';
autoComplete.activeCommand = null;
autoComplete.items = mockTags;
autoComplete.selectedIndex = 0;
await autoComplete.insertSelection('blue_hair');
// Tag should be inserted with underscores, not spaces
expect(input.value).toBe('blue_hair, ');
});
it('replaces entire phrase when selected tag ends with underscore version of search term (suffix match)', async () => {
const mockTags = [
{ tag_name: 'looking_to_the_side', category: 0, post_count: 1234 },
];
fetchApiMock.mockResolvedValue({
json: () => Promise.resolve({ success: true, words: mockTags }),
});
// User types suffix "to the side" and selects "looking_to_the_side"
caretHelperInstance.getBeforeCursor.mockReturnValue('to the side');
caretHelperInstance.getCursorOffset.mockReturnValue({ left: 15, top: 25 });
const input = document.createElement('textarea');
input.value = 'to the side';
input.selectionStart = input.value.length;
input.focus = vi.fn();
input.setSelectionRange = vi.fn();
document.body.append(input);
const { AutoComplete } = await import(AUTOCOMPLETE_MODULE);
const autoComplete = new AutoComplete(input, 'prompt', {
debounceDelay: 0,
showPreview: false,
minChars: 1,
});
autoComplete.searchType = 'custom_words';
autoComplete.activeCommand = null;
autoComplete.items = mockTags;
autoComplete.selectedIndex = 0;
autoComplete.currentSearchTerm = 'to the side';
await autoComplete.insertSelection('looking_to_the_side');
// Entire phrase should be replaced with selected tag
expect(input.value).toBe('looking_to_the_side, ');
});
});

View File

@@ -0,0 +1,159 @@
import { beforeEach, describe, expect, it, vi } from 'vitest';
import { moveManager } from '../../../static/js/managers/MoveManager.js';
import { state } from '../../../static/js/state/index.js';
import { modalManager } from '../../../static/js/managers/ModalManager.js';
import { getModelApiClient } from '../../../static/js/api/modelApiFactory.js';
import * as storageHelpers from '../../../static/js/utils/storageHelpers.js';
// Mock dependencies
vi.mock('../../../static/js/state/index.js', () => ({
state: {
currentPageType: 'loras',
selectedModels: new Set(),
global: {
settings: {
download_path_templates: {
lora: '{base_model}/unstaged'
}
}
}
}
}));
vi.mock('../../../static/js/managers/ModalManager.js', () => ({
modalManager: {
showModal: vi.fn(),
closeModal: vi.fn()
}
}));
vi.mock('../../../static/js/api/modelApiFactory.js', () => ({
getModelApiClient: vi.fn()
}));
vi.mock('../../../static/js/utils/storageHelpers.js', () => ({
getStorageItem: vi.fn(),
setStorageItem: vi.fn()
}));
vi.mock('../../../static/js/utils/uiHelpers.js', () => ({
showToast: vi.fn()
}));
vi.mock('../../../static/js/utils/i18nHelpers.js', () => ({
translate: vi.fn(key => key)
}));
describe('MoveManager', () => {
let mockApiClient;
beforeEach(() => {
vi.clearAllMocks();
// Setup DOM
document.body.innerHTML = `
<div id="moveModal">
<h2 id="moveModalTitle"></h2>
<label id="moveRootLabel"></label>
<select id="moveModelRoot"></select>
<input type="checkbox" id="moveUseDefaultPath" />
<div id="moveManualPathSelection">
<input id="moveFolderPath" />
<div id="moveFolderTree"></div>
</div>
<div id="moveTargetPathDisplay"><span class="path-text"></span></div>
</div>
`;
mockApiClient = {
apiConfig: {
config: {
displayName: 'LoRA',
supportsMove: true
},
endpoints: {
moveModel: '/api/move'
}
},
modelType: 'loras',
fetchModelRoots: vi.fn().mockResolvedValue({ roots: ['/models/loras'] }),
fetchUnifiedFolderTree: vi.fn().mockResolvedValue({ success: true, tree: {} }),
moveSingleModel: vi.fn().mockResolvedValue({ success: true })
};
getModelApiClient.mockReturnValue(mockApiClient);
});
it('should reset folder selection when showing move modal', async () => {
// Manually set a selected path in folderTreeManager
moveManager.folderTreeManager.selectedPath = 'previous/path';
await moveManager.showMoveModal('some/file.safetensors');
expect(moveManager.folderTreeManager.getSelectedPath()).toBe('');
});
it('should ignore manual folder selection when useDefaultPath is true', async () => {
// Setup state
moveManager.useDefaultPath = true;
moveManager.currentFilePath = '/models/loras/flux/my-lora.safetensors';
document.getElementById('moveModelRoot').innerHTML = '<option value="/models/loras">/models/loras</option>';
document.getElementById('moveModelRoot').value = '/models/loras';
// Manually set a selected path despite useDefaultPath being true
moveManager.folderTreeManager.selectedPath = 'wrong/folder';
await moveManager.moveModel();
// Should call moveSingleModel with the root path, NOT including the 'wrong/folder'
expect(mockApiClient.moveSingleModel).toHaveBeenCalledWith(
'/models/loras/flux/my-lora.safetensors',
'/models/loras',
true
);
});
it('should include manual folder selection when useDefaultPath is false', async () => {
// Setup state
moveManager.useDefaultPath = false;
moveManager.currentFilePath = '/models/loras/flux/my-lora.safetensors';
document.getElementById('moveModelRoot').innerHTML = '<option value="/models/loras">/models/loras</option>';
document.getElementById('moveModelRoot').value = '/models/loras';
// Set a selected path
moveManager.folderTreeManager.selectedPath = 'my/organized/folder';
await moveManager.moveModel();
// Should call moveSingleModel with root + selected folder
expect(mockApiClient.moveSingleModel).toHaveBeenCalledWith(
'/models/loras/flux/my-lora.safetensors',
'/models/loras/my/organized/folder',
false
);
});
it('should handle bulk move and ignore manual folder selection when useDefaultPath is true', async () => {
// Setup state
moveManager.useDefaultPath = true;
moveManager.bulkFilePaths = [
'/models/loras/flux/lora1.safetensors',
'/models/loras/flux/lora2.safetensors'
];
document.getElementById('moveModelRoot').innerHTML = '<option value="/models/loras">/models/loras</option>';
document.getElementById('moveModelRoot').value = '/models/loras';
// Manually set a selected path
moveManager.folderTreeManager.selectedPath = 'wrong/folder';
mockApiClient.moveBulkModels = vi.fn().mockResolvedValue({ success: true });
await moveManager.moveModel();
// Should call moveBulkModels with the root path, NOT including the 'wrong/folder'
expect(mockApiClient.moveBulkModels).toHaveBeenCalledWith(
moveManager.bulkFilePaths,
'/models/loras',
true
);
});
});

View File

@@ -107,6 +107,33 @@ describe('Statistics dashboard rendering', () => {
],
},
},
'/api/lm/stats/model-usage-list?type=lora&sort=desc&offset=0&limit=50': {
success: true,
data: {
items: [
{ name: 'Lora A', base_model: 'SDXL', folder: 'loras', usage_count: 10, preview_url: '' },
],
total: 1,
},
},
'/api/lm/stats/model-usage-list?type=checkpoint&sort=desc&offset=0&limit=50': {
success: true,
data: {
items: [
{ name: 'Checkpoint A', base_model: 'SDXL', folder: 'checkpoints', usage_count: 5, preview_url: '' },
],
total: 1,
},
},
'/api/lm/stats/model-usage-list?type=embedding&sort=desc&offset=0&limit=50': {
success: true,
data: {
items: [
{ name: 'Embedding A', base_model: 'SDXL', folder: 'embeddings', usage_count: 7, preview_url: '' },
],
total: 1,
},
},
};
const { StatisticsManager } = await import(STATISTICS_MODULE);

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@@ -0,0 +1,172 @@
import { describe, it, expect } from 'vitest';
import {
rewriteCivitaiUrl,
getOptimizedUrl,
getShowcaseUrl,
getThumbnailUrl,
isCivitaiUrl,
OptimizationMode
} from '../../../static/js/utils/civitaiUtils.js';
describe('civitaiUtils', () => {
describe('OptimizationMode', () => {
it('should have correct mode values', () => {
expect(OptimizationMode.SHOWCASE).toBe('showcase');
expect(OptimizationMode.THUMBNAIL).toBe('thumbnail');
});
});
describe('rewriteCivitaiUrl', () => {
it('should rewrite image URLs with /original=true for thumbnail mode', () => {
const originalUrl = 'https://image.civitai.com/xG1nkqKTMzGDvpLrqFT7WA/abc123/original=true/12345.jpeg';
const [rewritten, wasRewritten] = rewriteCivitaiUrl(originalUrl, 'image', OptimizationMode.THUMBNAIL);
expect(wasRewritten).toBe(true);
expect(rewritten).toBe('https://image.civitai.com/xG1nkqKTMzGDvpLrqFT7WA/abc123/width=450,optimized=true/12345.jpeg');
});
it('should rewrite image URLs with /original=true for showcase mode (no width)', () => {
const originalUrl = 'https://image.civitai.com/xG1nkqKTMzGDvpLrqFT7WA/abc123/original=true/12345.jpeg';
const [rewritten, wasRewritten] = rewriteCivitaiUrl(originalUrl, 'image', OptimizationMode.SHOWCASE);
expect(wasRewritten).toBe(true);
expect(rewritten).toBe('https://image.civitai.com/xG1nkqKTMzGDvpLrqFT7WA/abc123/optimized=true/12345.jpeg');
});
it('should rewrite video URLs with /original=true for thumbnail mode', () => {
const originalUrl = 'https://image.civitai.com/xG1nkqKTMzGDvpLrqFT7WA/abc123/original=true/12345.mp4';
const [rewritten, wasRewritten] = rewriteCivitaiUrl(originalUrl, 'video', OptimizationMode.THUMBNAIL);
expect(wasRewritten).toBe(true);
expect(rewritten).toBe('https://image.civitai.com/xG1nkqKTMzGDvpLrqFT7WA/abc123/transcode=true,width=450,optimized=true/12345.mp4');
});
it('should rewrite video URLs with /original=true for showcase mode (no width/transcode)', () => {
const originalUrl = 'https://image.civitai.com/xG1nkqKTMzGDvpLrqFT7WA/abc123/original=true/12345.mp4';
const [rewritten, wasRewritten] = rewriteCivitaiUrl(originalUrl, 'video', OptimizationMode.SHOWCASE);
expect(wasRewritten).toBe(true);
expect(rewritten).toBe('https://image.civitai.com/xG1nkqKTMzGDvpLrqFT7WA/abc123/optimized=true/12345.mp4');
});
it('should default to thumbnail mode when mode is not specified', () => {
const originalUrl = 'https://image.civitai.com/xG1nkqKTMzGDvpLrqFT7WA/abc123/original=true/12345.jpeg';
const [rewritten, wasRewritten] = rewriteCivitaiUrl(originalUrl, 'image');
expect(wasRewritten).toBe(true);
expect(rewritten).toBe('https://image.civitai.com/xG1nkqKTMzGDvpLrqFT7WA/abc123/width=450,optimized=true/12345.jpeg');
});
it('should not rewrite URLs without /original=true', () => {
const originalUrl = 'https://image.civitai.com/xG1nkqKTMzGDvpLrqFT7WA/abc123/width=450/12345.jpeg';
const [rewritten, wasRewritten] = rewriteCivitaiUrl(originalUrl, 'image', OptimizationMode.THUMBNAIL);
expect(wasRewritten).toBe(false);
expect(rewritten).toBe(originalUrl);
});
it('should not rewrite non-CivitAI URLs', () => {
const originalUrl = 'https://example.com/image.jpg';
const [rewritten, wasRewritten] = rewriteCivitaiUrl(originalUrl, 'image', OptimizationMode.SHOWCASE);
expect(wasRewritten).toBe(false);
expect(rewritten).toBe(originalUrl);
});
it('should handle null/undefined URLs', () => {
const [rewritten1, wasRewritten1] = rewriteCivitaiUrl(null, 'image');
expect(wasRewritten1).toBe(false);
expect(rewritten1).toBe(null);
const [rewritten2, wasRewritten2] = rewriteCivitaiUrl(undefined, 'image');
expect(wasRewritten2).toBe(false);
expect(rewritten2).toBe(undefined);
});
it('should handle empty strings', () => {
const [rewritten, wasRewritten] = rewriteCivitaiUrl('', 'image');
expect(wasRewritten).toBe(false);
expect(rewritten).toBe('');
});
it('should handle invalid URLs gracefully', () => {
const [rewritten, wasRewritten] = rewriteCivitaiUrl('not-a-valid-url', 'image');
expect(wasRewritten).toBe(false);
expect(rewritten).toBe('not-a-valid-url');
});
});
describe('getOptimizedUrl', () => {
it('should return optimized URL for CivitAI images in thumbnail mode', () => {
const originalUrl = 'https://image.civitai.com/xG1nkqKTMzGDvpLrqFT7WA/abc123/original=true/12345.jpeg';
const optimized = getOptimizedUrl(originalUrl, 'image', OptimizationMode.THUMBNAIL);
expect(optimized).toBe('https://image.civitai.com/xG1nkqKTMzGDvpLrqFT7WA/abc123/width=450,optimized=true/12345.jpeg');
});
it('should return optimized URL for CivitAI images in showcase mode', () => {
const originalUrl = 'https://image.civitai.com/xG1nkqKTMzGDvpLrqFT7WA/abc123/original=true/12345.jpeg';
const optimized = getOptimizedUrl(originalUrl, 'image', OptimizationMode.SHOWCASE);
expect(optimized).toBe('https://image.civitai.com/xG1nkqKTMzGDvpLrqFT7WA/abc123/optimized=true/12345.jpeg');
});
it('should return original URL for non-CivitAI URLs', () => {
const originalUrl = 'https://example.com/image.jpg';
const optimized = getOptimizedUrl(originalUrl, 'image');
expect(optimized).toBe(originalUrl);
});
});
describe('getShowcaseUrl', () => {
it('should return showcase-optimized URL (full quality)', () => {
const originalUrl = 'https://image.civitai.com/xG1nkqKTMzGDvpLrqFT7WA/abc123/original=true/12345.jpeg';
const showcaseUrl = getShowcaseUrl(originalUrl, 'image');
expect(showcaseUrl).toBe('https://image.civitai.com/xG1nkqKTMzGDvpLrqFT7WA/abc123/optimized=true/12345.jpeg');
});
it('should handle videos for showcase', () => {
const originalUrl = 'https://image.civitai.com/xG1nkqKTMzGDvpLrqFT7WA/abc123/original=true/12345.mp4';
const showcaseUrl = getShowcaseUrl(originalUrl, 'video');
expect(showcaseUrl).toBe('https://image.civitai.com/xG1nkqKTMzGDvpLrqFT7WA/abc123/optimized=true/12345.mp4');
});
});
describe('getThumbnailUrl', () => {
it('should return thumbnail-optimized URL (width=450)', () => {
const originalUrl = 'https://image.civitai.com/xG1nkqKTMzGDvpLrqFT7WA/abc123/original=true/12345.jpeg';
const thumbnailUrl = getThumbnailUrl(originalUrl, 'image');
expect(thumbnailUrl).toBe('https://image.civitai.com/xG1nkqKTMzGDvpLrqFT7WA/abc123/width=450,optimized=true/12345.jpeg');
});
it('should handle videos for thumbnails', () => {
const originalUrl = 'https://image.civitai.com/xG1nkqKTMzGDvpLrqFT7WA/abc123/original=true/12345.mp4';
const thumbnailUrl = getThumbnailUrl(originalUrl, 'video');
expect(thumbnailUrl).toBe('https://image.civitai.com/xG1nkqKTMzGDvpLrqFT7WA/abc123/transcode=true,width=450,optimized=true/12345.mp4');
});
});
describe('isCivitaiUrl', () => {
it('should return true for CivitAI URLs', () => {
expect(isCivitaiUrl('https://image.civitai.com/something')).toBe(true);
expect(isCivitaiUrl('https://image.civitai.com/')).toBe(true);
});
it('should return false for non-CivitAI URLs', () => {
expect(isCivitaiUrl('https://example.com/image.jpg')).toBe(false);
expect(isCivitaiUrl('https://civitai.com/image.jpg')).toBe(false);
expect(isCivitaiUrl('')).toBe(false);
expect(isCivitaiUrl(null)).toBe(false);
expect(isCivitaiUrl(undefined)).toBe(false);
});
it('should handle invalid URLs gracefully', () => {
expect(isCivitaiUrl('not-a-url')).toBe(false);
});
});
});

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