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73 Commits

Author SHA1 Message Date
Will Miao
b509f27cb7 chore(release): bump version to v1.0.10 2026-05-31 09:39:26 +08:00
Will Miao
5c2ef48917 fix(aria2): apply certifi CA bundle to aria2c via --ca-certificate
When certifi is available, pass its CA bundle path as --ca-certificate
to the aria2c subprocess so that aria2 downloads use the same
certificate store as Python aiohttp downloads. Graceful fallback when
certifi is not installed.
2026-05-30 21:47:13 +08:00
Will Miao
ad2bd82c67 fix(downloader): use certifi CA bundle as SSL fallback and log SSL error diagnostics
- Prefer certifi's CA bundle in aiohttp SSL context with graceful
  fallback to system default when certifi is unavailable
- Add is_ssl_cert_verify_error() helper for SSL cert failure detection
- Log actionable error message (pip install --upgrade certifi /
  pip install pip-system-certs) when SSL certificate verification fails
- Apply same diagnostic logging to aria2 redirect resolution path
2026-05-30 21:28:18 +08:00
willmiao
17ba350153 docs: auto-update supporters list in README 2026-05-28 13:47:09 +00:00
Will Miao
60175334b5 chore(release): bump version to v1.0.9 2026-05-28 21:46:46 +08:00
Will Miao
f65a01df00 feat(recipe): add bulk Repair Metadata for Selected operation to recipes page
Adds a new bulk operation in the recipes page that allows users to select
multiple recipes and repair their metadata in batch.

Backend:
- New POST /api/lm/recipes/repair-bulk endpoint accepting recipe_ids array
- repair_recipes_bulk handler iterates repair_recipe_by_id for each recipe
- Response includes per-recipe updated data for frontend card refresh

Frontend:
- Bulk context menu: new 'Repair Metadata for Selected' item in Metadata section
- BulkManager.repairSelectedRecipes() with loading/toast flow
- Uses VirtualScroller.updateSingleItem() per repaired recipe (no full reload)
- Visibility controlled via repairMetadata actionConfig flag

Locales:
- Added repairMetadata, repairBulkComplete, repairBulkSkipped, repairBulkFailed
- Translated across all 9 supported languages
2026-05-28 20:16:59 +08:00
Will Miao
430e24d70b fix(ui): hide skip-metadata-refresh bulk menu items for recipes 2026-05-28 19:11:49 +08:00
Will Miao
14f0c48fdd fix(recipe): detect and repair corrupted checkpoints in repair flow
Add corruption detection to _repair_single_recipe: if checkpoint.modelVersionId matches any LoRA's modelVersionId, the checkpoint is corrupted (a LoRA was saved as checkpoint). Clear the checkpoint and remove the matching LoRA entry, then let enrichment re-resolve the correct checkpoint from CivitAI metadata.

This fixes the retroactive repair path for the modelVersionIds[0] fallback bug.
2026-05-28 17:19:27 +08:00
Will Miao
34791c2ad7 fix(recipe): use resources type field to identify checkpoint instead of modelVersionIds[0]
When importing a CivitAI image as a recipe, modelVersionIds[0] was blindly used as the checkpoint version ID. This array mixes checkpoints and LoRAs without ordering guarantees, causing LoRAs to be saved as the recipe checkpoint.

Fix by:
1. Removing the modelVersionIds[0] fallback in _download_remote_media
2. Parsing resources entries with type:"model" as the checkpoint
3. Adding model type validation in populate_checkpoint_from_civitai

Also add 2 tests for the new behavior and fix 3 tests whose mocks lacked the required model.type field.
2026-05-28 15:46:38 +08:00
Will Miao
3f6824eef6 fix(example-images): exclude failed_models from check_pending_models pending count
Previously check_pending_models() only skipped models already in
processed_models, so models that had permanently failed (no CivitAI
images available, download errors) were forever reported as "pending".
This caused repeated auto-download cycles with no actual work to do.

Co-Authored-By: Claude Opus 4.7 <noreply@anthropic.com>
2026-05-28 12:00:25 +08:00
Will Miao
3919dfa3f4 fix(metadata): suppress rate-limit propagation when model already confirmed deleted
When CivitAI returns 404 (ResourceNotFoundError) and a fallback provider
like CivArchive subsequently rate-limits, the ChainedMetadataProvider
now suppresses the RateLimitError instead of propagating it. Previously,
the rate-limit error would bubble up through _refresh_single_model and
cause the outer retry loop to re-process the same model repeatedly,
producing dozens of duplicate "Model X is no longer available" log
messages and wasting API quota.

The model is NOT permanently marked as ignored — its last_checked_at
timestamp is preserved, so it will be retried on the next refresh cycle
when the rate limit has cleared and CivArchive may still have the data.

Co-Authored-By: Claude Opus 4.7 <noreply@anthropic.com>
2026-05-28 11:56:22 +08:00
Will Miao
7124b5293f chore(settings): remove unused example_images config, add unet folder_paths example 2026-05-27 19:58:56 +08:00
Will Miao
d2a04f8993 fix(model-hash-index): clean up AutoV2 entry in remove_by_hash 2026-05-27 19:38:08 +08:00
pixelpaws
7027a7c270 Merge pull request #946 from 1756141021/fix/autov2-hash-matching
fix: match local LoRAs by AutoV2 hash when Civitai model is deleted
2026-05-27 19:20:31 +08:00
hein
0a1d7dfd4c fix: match local LoRAs by AutoV2 hash when Civitai model is deleted
When recipe metadata contains AutoV2 hashes (10-char short hash from
image metadata) and the Civitai API cannot resolve them to SHA256
(model deleted, API offline), the local hash index failed to match
because it only stored full SHA256 hashes.

AutoV2 is simply SHA256[:10], so we derive it automatically in
add_entry() — no extra file I/O or schema changes needed.

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-05-27 14:15:01 +08:00
Will Miao
3962b1a96d fix(civitai): fall back to direct version fetch when modelVersions is empty for newly published models 2026-05-27 06:40:13 +08:00
Will Miao
8b856276bf fix(ui): escape HTML entities in parseMarkdown to prevent swallowed angle brackets 2026-05-27 06:40:13 +08:00
willmiao
c97c802956 docs: auto-update supporters list in README 2026-05-26 13:27:45 +00:00
Will Miao
24e2909627 chore(release): bump version to v1.0.8 2026-05-26 21:27:29 +08:00
Will Miao
b768f1368f fix(i18n): update aria2 annotation from experimental to recommended across all locales 2026-05-26 20:22:25 +08:00
Will Miao
37ccd29fc0 feat(modal): make version name editable in model modal (#931) 2026-05-26 20:16:35 +08:00
Will Miao
7416080cfb fix(civitai): retry transient server errors and cache version info to reduce 504 timeouts
CivitaiClient._make_request now retries 5xx/524/network errors up to 3 times with exponential backoff (1s, 2s) before giving up to the fallback provider chain.

get_model_version_info gains an in-memory OrderedDict cache (LRU, max 500 entries) so duplicate lookups of the same version ID within a single import/scan flow return instantly without a redundant API call.

Ultraworked with [Sisyphus](https://github.com/code-yeongyu/oh-my-openagent)

Co-authored-by: Sisyphus <clio-agent@sisyphuslabs.ai>
2026-05-26 16:09:08 +08:00
Will Miao
26be187d42 fix(i18n): translate remaining loraSyntaxFormat TODO keys across all locales
Ultraworked with [Sisyphus](https://github.com/code-yeongyu/oh-my-openagent)

Co-authored-by: Sisyphus <clio-agent@sisyphuslabs.ai>
2026-05-26 06:15:57 +08:00
Will Miao
d7caa1fa47 fix(license): remove cascading commercial-use bit encoding, clarify Allow Selling label (#941)
- _resolve_commercial_bits() no longer has Sell-implies-Image
  cascading; each CommercialUse value sets only its own bit,
  matching CivitAI's modern array-format API.
- Keep filter tag label as 'Allow Selling' for brevity; add
  title/tooltip 'Allow selling generated images' on hover.
- Same tooltip treatment for 'No Credit Required'.
- Add i18n keys for both tooltips across all 10 locales.
2026-05-26 06:02:17 +08:00
Will Miao
2629fcce23 fix(doctor): add i18n translations for check items, action buttons, and labels
Ultraworked with [Sisyphus](https://github.com/code-yeongyu/oh-my-openagent)

Co-authored-by: Sisyphus <clio-agent@sisyphuslabs.ai>
2026-05-25 22:35:48 +08:00
Will Miao
438e7d07b9 fix(i18n): add missing conflictConfirm.detail and conflictConfirm.impact keys to all locales
These keys are referenced in DoctorManager.js via translate() calls but were never added to any locale file, causing the i18n regression test to fail.

Added to all 10 locales: en, zh-CN, zh-TW, ja, ko, ru, de, fr, es, he.

Ultraworked with [Sisyphus](https://github.com/code-yeongyu/oh-my-openagent)

Co-authored-by: Sisyphus <clio-agent@sisyphuslabs.ai>
2026-05-25 22:25:13 +08:00
Will Miao
e9932ea870 feat(tags): add right-click context menu with copy for trigger word tags
- Add showTagContextMenu() with Copy option for all tags,
  plus Edit Group for multi-item group tags
- Attach contextmenu listener to simple tags
- Move group tag contextmenu outside items.length > 1 guard so
  single-child groups also get the context menu (bugfix)
- Clean up hanging context menu on re-render
2026-05-25 22:16:54 +08:00
Will Miao
5dd8b96422 fix(autocomplete): reactively refresh lora syntax format cache on settings change (#917)
The autocomplete module cached the lora_syntax_format value at module load
but never updated it when the setting changed, causing autocomplete to
always insert legacy A1111 format even when 'full path' was configured.

- Expose refreshLoraSyntaxFormat() to re-fetch the setting from the API
- Listen for cross-tab 'storage' events to react to settings saved in
  the standalone web UI
- Listen for 'visibilitychange' to refresh when the user switches back
  to the ComfyUI tab
- Wire SettingsManager.saveSetting() to set a localStorage key when
  lora_syntax_format changes, triggering the storage event
2026-05-25 22:03:56 +08:00
Will Miao
5e1cf68bbd fix(settings): sync loraSyntaxFormat select value from state on modal open (#917)
was missing the line to set the
select element's value from ,
causing the dropdown to always show the first option ("Full Path")
when reopening the settings modal, regardless of the persisted value.
Runtime behavior was unaffected since  reads from
the state directly.
2026-05-25 21:35:15 +08:00
Will Miao
1044fa3c83 feat(doctor): improve duplicate filename conflict UX with confirm modal, syntax-format nav, and i18n
- Remove [LoRAs] prefix noise from conflict detail display
- Limit inline conflict groups to 5, show remainder count
- Add 'Switch to Full Path Syntax' action in conflict card
- Add confirmation modal before resolving conflicts (shows rename strategy)
- Register resolveFilenameConflictsModal in ModalManager (fix no-op showModal)
- Switch to Interface section and add highlight animation on syntax-format nav
- Sync and translate conflictConfirm strings across all 10 locales
2026-05-25 21:25:35 +08:00
Will Miao
397892bb7f fix(recipe): treat transient server errors (524/5xx) as non-fatal in image info fetch
Extend _is_transient_server_error() check introduced in 15dfaed4 to
get_image_info(), so Cloudflare 524 and generic 5xx errors during
remote recipe import are logged as info instead of error and do not
produce scary tracebacks.

Same pattern as get_model_versions() - transient upstream failures
return None gracefully rather than being logged as errors.
2026-05-25 08:35:35 +08:00
Will Miao
f105500740 feat(doctor): suppress duplicate filename warnings when full path syntax is active (#917) 2026-05-22 22:35:06 +08:00
Will Miao
806555cf06 fix(test): update autocomplete test expectations for legacy lora syntax format (#917) 2026-05-22 21:56:38 +08:00
Will Miao
5cd7204101 fix(autocomplete): prevent blur-on-click race condition causing dropped selection (#939)
Add mousedown(e.preventDefault()) on dropdown items to prevent the textarea blur event from firing before click. Without this, the blur handler's formatAutocompleteTextOnBlur() modifies text with unmatched commas (e.g. "<lora:X:1>,search") and triggers hide() via suppressAutocompleteOnce, removing the item from the DOM before the click handler can execute.

Fixes #939
2026-05-22 21:50:26 +08:00
Will Miao
3b602a3698 feat(lora): add lora_syntax_format setting for syntax version toggle (#917)
Adds lora_syntax_format setting (full/legacy) that controls whether <lora:...> syntax uses relative paths (full) or filename only (legacy). Default is legacy for backward compatibility with A1111 convention. The full path format (<lora:relative/path/filename:strength>) enables lossless model resolution across subfolders.

Ultraworked with Sisyphus (https://github.com/code-yeongyu/oh-my-openagent)

Co-authored-by: Sisyphus <clio-agent@sisyphuslabs.ai>
2026-05-22 21:03:29 +08:00
Will Miao
15dfaed462 fix(api): treat transient server errors (524/5xx) as non-fatal in model updates (#935)
Teach CivitaiClient.get_model_versions() to recognise Cloudflare 524, generic
5xx, and connection-level errors as transient failures and return None
instead of raising RuntimeError, so a single upstream glitch does not
block the entire batch update or produce a scary traceback.

Also downgrade the generic except Exception log level in
ModelUpdateService._refresh_single_model() from error (with exc_info)
to warning (message only), since the full traceback is already logged
upstream in CivitaiClient.

Ultraworked with [Sisyphus](https://github.com/code-yeongyu/oh-my-openagent)

Co-authored-by: Sisyphus <clio-agent@sisyphuslabs.ai>
2026-05-22 07:05:06 +08:00
Will Miao
0e51851025 fix(preview): stream video files manually to avoid Windows sendfile crash
aiohttp's FileResponse uses _sendfile_native on Windows (IOCP-based), which crashes with ov.getresult() when the client disconnects mid-transfer. This happens constantly when users scroll through a gallery of animated previews (video files like .mp4/.webm).

Detect video extensions and stream manually via StreamResponse + chunked reads instead, gracefully handling ConnectionResetError. Images continue using FileResponse (small files, sendfile works fine).

Ultraworked with [Sisyphus](https://github.com/code-yeongyu/oh-my-openagent)

Co-authored-by: Sisyphus <clio-agent@sisyphuslabs.ai>
2026-05-21 09:12:10 +08:00
Will Miao
0d0f4defca feat(recipes): enable bulk Add Tags to Selected for recipes (#934)
- Set addTags: true in recipes bulk action config
- Add _saveRecipeTags() helper using recipe API endpoint
- Replace mode: saves tags array directly via PUT recipe/update
- Append mode: merges with existing tags from virtual scroller
- Shows bulk Add Tags modal & target menu item on recipes page
2026-05-20 23:14:38 +08:00
Will Miao
818fa34a48 fix(ui): auto-focus tag input and flush uncommitted text on save (#934)
- ModelModal (ModelTags.js): auto-focus input on entering tag edit mode
- ModelModal (ModelTags.js): flush uncommitted input text as tag on Save
- Bulk Add Tags (BulkManager.js): same two fixes
- RecipeModal already handled both cases correctly
2026-05-20 23:06:40 +08:00
Will Miao
78303b2a5e feat(ui): merge user tags into auto-tag badges and refresh on tag edit (#918)
- Layer 2 fallback: user tags overlapping with auto-tag categories
  (HIGH/LOW/I2V/T2V/TI2V/Lightning/Turbo) are merged into auto_tags,
  providing manual override when filename-based detection fails.
  Matching is case-insensitive so "high"/"High"/"HIGH" all work.
- Refresh on tag edit: save_metadata and add_tags handlers now return
  recalculated auto_tags in the response; the frontend passes them to
  VirtualScroller.updateSingleItem so badges update immediately without
  requiring a page reload.
- 8 new test cases for Layer 2 fallback and case-insensitive matching.
2026-05-20 22:48:44 +08:00
Will Miao
9ce56dd40c feat(lora): support relative paths in <lora:folder/name:strength> syntax (#917)
Autocomplete, copy/send-to-workflow, and recipe syntax now emit
<lora:folder/name:strength> instead of <lora:name:strength>, using
relative paths to disambiguate identically-named loras in different
subfolders without requiring file renames.

Backend: 3-tier hybrid resolution (path → bare → basename fallback)
across get_lora_info, get_lora_info_absolute, get_model_preview_url,
get_model_civitai_url, get_model_info_by_name, get_lora_metadata_by_filename,
and get_hash_by_filename. Also fix get_random_loras and get_cycler_list
to return path-prefixed names for randomizer/cycler consistency.

Frontend: autocomplete, copyLoraSyntax, handleSendToWorkflow emit
folder-prefixed syntax. extract_lora_name preserves relative paths.

Saved image metadata (<lora:...> in EXIF) intentionally keeps basename-only
for compatibility with A1111/Forge ecosystem.
2026-05-20 19:39:12 +08:00
Will Miao
33e5f3d85d fix(#933): compute SHA256 locally when CivitAI API returns empty hashes 2026-05-18 18:30:33 +08:00
Will Miao
031d5e4f40 fix(doctor): exclude checkpoints/embeddings from duplicate filename detection (#934)
Duplicate filename detection is only relevant for LoRAs, which use
basename-only syntax (<lora:name:strength>). Checkpoints and diffusion
models reference files via relative paths with extensions, so filename
conflicts there are false positives — there is no resolution ambiguity.

Both _log_duplicate_filename_summary() and DoctorHandler's
_check_filename_conflicts() now skip scanners with model_type != 'lora'.
2026-05-18 13:57:28 +08:00
willmiao
4ff5774e34 docs: auto-update supporters list in README 2026-05-17 12:40:26 +00:00
Will Miao
94e1a8ac7b chore(release): bump version to v1.0.7 2026-05-17 20:40:13 +08:00
Will Miao
cc20d3b992 feat(ui): auto-detect HIGH/LOW badges and auto-tag filters (#918)
- Backend auto-tag extraction service: detect HIGH/LOW (Wan-only), I2V/T2V/TI2V,
  Lightning/Turbo from filename, base_model, and CivitAI version name
- HIGH/LOW badge in card footer (inline before version name), color-coded:
  blue for HIGH, teal for LOW; abbreviated to H/L in medium/compact density
- Auto-tag filter panel (I2V, T2V, TI2V, Lightning, Turbo) with tri-state
  include/exclude filtering
- Full filter pipeline: FilterCriteria → ModelFilterSet → baseModelApi params
- AUTO_TAG_GROUPS exported for frontend use
- 19 unit tests for auto-tag extraction edge cases
2026-05-17 17:45:12 +08:00
Will Miao
a74cbe7aa2 fix(test): sync civitai bulk test with nsfw param 2026-05-16 22:15:55 +08:00
Will Miao
94edfaa190 fix(import): discover all resources from CivitAI modelVersionIds
CivitAI image API returns modelVersionIds at the root level of the
response (not inside meta), containing ALL model version IDs across
all resources (checkpoint + LoRAs). Two bugs prevented LoRAs from
being discovered:

1. _download_remote_media only extracted the first modelVersionId for
   enrichment, dropping the rest.
2. CivitAI API meta parsing only ran as an EXIF fallback, but most
   images have embedded EXIF metadata (prompt, steps, etc.), so the
   fallback was never triggered.
3. When civitai_meta_raw itself has a nested 'meta' key, unwrapping
   it stripped the injected modelVersionIds.

Also fixed gen_params merge: API gen_params now overlays EXIF at the
field level instead of full replacement, preserving EXIF-only fields
like detailed generation parameters.
2026-05-16 22:12:30 +08:00
Will Miao
31c54ff068 fix(civitai): add nsfw param to user-models and batch-ids queries (#930)
The CivitAI /api/v1/models endpoint defaults to filtering out NSFW
content when the nsfw query parameter is omitted. Both get_user_models()
and get_model_versions_bulk() hit this endpoint without passing nsfw=true,
causing models whose nsfwLevel doesn't include the PG bit to be silently
dropped from results.

Add nsfw=true to both call sites so all browsing levels are returned.
2026-05-16 20:15:03 +08:00
Will Miao
21872a8e9e fix(ui): default_active in group mode should not propagate to children; hide group badge/edit for single-child groups (#929) 2026-05-16 16:52:06 +08:00
Will Miao
612612f1c7 feat(ui): add Open Source URL action to recipe modal header, align header styles with model modal 2026-05-16 16:11:14 +08:00
Will Miao
ff240db5b1 chore: reduce remote recipe import log verbosity, demote detail fields to debug 2026-05-15 21:04:09 +08:00
Will Miao
bcfed4b874 feat(ui): use recipes terminology in bulk delete confirmation for recipes page
The bulk delete confirmation modal always displayed "models" in its
text (title, message, countMessage) regardless of the current page
type. On the recipes page this is misleading since users are managing
recipes, not models.

- Add bulkDeleteRecipes i18n keys to all 10 locale files
- Update showBulkDeleteModal() to detect currentPageType and use
  recipes-specific wording when on the recipes page
2026-05-15 20:55:02 +08:00
Will Miao
1352c6ecbe fix(recipes): fall back to Civitai API meta when EXIF is empty, enrich checkpoint in analyze_remote_image
- When downloaded Civitai image has no embedded EXIF, parse the
  already-fetched Civitai API meta (resources, hashes) directly
  instead of skipping parser altogether.
- Extract loras and model from parser output to fill metadata gaps
  when the primary import path doesn't provide them.
- Read modelVersionIds[0] as fallback when modelVersionId is None
  (Civitai API returns both but the singular form can be absent).
- Run RecipeEnricher in analyze_remote_image before returning, so
  the LM UI receives complete metadata including checkpoint with
  zero additional API calls (reuses the image_info already fetched).
2026-05-15 20:31:34 +08:00
Will Miao
30b01b8a92 fix(recipes): offload EXIF to thread pool, throttle concurrent imports, eliminate duplicate Civitai API call
- Wrap ExifUtils.extract_image_metadata() with asyncio.to_thread() in
  both import handlers and analysis_service to prevent Pillow/piexif
  from blocking ComfyUI's event loop during batch imports.
- Add asyncio.Semaphore(2) to import_remote_recipe and import_from_url
  endpoints to cap concurrent heavy work and prevent event loop starvation.
- Pre-fetch Civitai image_info during download and pass it to the recipe
  enricher, eliminating a redundant get_image_info() API round-trip.
2026-05-15 18:29:54 +08:00
Will Miao
a105cb322b fix(metadata): prune stale example-image entries when files are deleted on disk (#927) 2026-05-14 20:51:33 +08:00
Will Miao
3bf396d003 feat(recipes): add toggle to strip <lora:> tags when copying prompt/negative_prompt
Adds a compact inline toggle in the Generation Parameters section of the
Recipe Modal that, when enabled, strips <lora:name:weight> tags and
cleans up residual punctuation before copying to clipboard. The setting
persists across sessions via localStorage.
2026-05-13 11:47:02 +08:00
Will Miao
60cfb3b8e0 chore: add .sisyphus/ to .gitignore 2026-05-13 09:30:26 +08:00
Will Miao
6763abb83c fix(test): update test recipes to use source_path instead of source_url
Follow-up to 86118d06 which consolidated on source_path but missed updating these two tests.
2026-05-13 09:27:05 +08:00
Will Miao
5c53968caa refactor(download-history): rename mark_not_downloaded to mark_as_deleted
The method mark_not_downloaded() was misleading — it doesn't negate
'downloaded' history (the model was indeed downloaded before), but
rather sets is_deleted_override = 1 to indicate the version was
downloaded and subsequently deleted. This flag allows re-download when
the 'skip previously downloaded' setting is enabled.

Rename to mark_as_deleted() to accurately reflect its semantics.
2026-05-12 22:50:30 +08:00
Will Miao
b4f7dd75af fix(persistent-cache): persist scanner cache after model deletion
After deleting a model, the in-memory scanner cache was updated but the
SQLite persistent cache was not. On server restart, the stale persistent
cache caused check_model_version_exists() to return True, blocking
re-download with 'Model version already exists'.

Add _persist_current_cache() calls in both deletion paths:
- ModelLifecycleService.delete_model() (used by versions tab delete)
- delete_model_version handler in MiscHandlers
2026-05-12 22:50:10 +08:00
Will Miao
86118d0654 fix(recipes): persist source_path in SQLite cache and eliminate source_url redundancy
- Add source_path column to PersistentRecipeCache SQLite schema with
  migration for existing databases (ALTER TABLE ADD COLUMN)
- Backfill source_path from recipe JSON files on first startup after
  migration to avoid requiring manual cache rebuild
- Remove all source_url recipe field references (import_remote_recipe,
  import_from_url, check_image_exists, enrichment, batch_import)
  and consolidate on source_path as the single source of truth
- Add civitai.green to supported Civitai page hosts
- Register check-image-exists and import-from-url recipe endpoints
2026-05-12 20:39:09 +08:00
Will Miao
df1410535e fix(ui): remove redundant Quick Refresh from Refresh split button dropdown
The main Refresh button and Quick Refresh dropdown item both called refreshModels(false). Split button dropdowns should only contain alternative actions (Hick's Law). Dropdown now has only Rebuild Cache (fullRebuild=true). Removed from 2 templates, 2 JS files, 1 test fixture, and 10 locale files.
2026-05-12 07:50:54 +08:00
Will Miao
75f74d54d8 feat(bulk): reorganize context menu with sections and submenu for workflow actions
Group 15 flat menu items into 5 logical sections (Workflow, Metadata,
Attributes, Organize, Download) with section headers to reduce cognitive
load. Nest the three workflow-related actions (Append, Replace, Copy
Syntax) into a single "Send to Workflow" hover-triggered submenu.

Add submenu infrastructure to BaseContextMenu with mouseover/mouseout
boundary detection, 250ms close delay, and viewport-aware positioning.

Co-Authored-By: Claude Opus 4.7 <noreply@anthropic.com>
2026-05-11 21:06:47 +08:00
Will Miao
ab6100f596 feat(bulk): add "Download Example Images" to bulk select context menu (#923)
Allows downloading example images only for selected models instead of
the entire library. Reuses the existing /api/lm/force-download-example-images
endpoint which already accepts an array of model hashes.

Co-Authored-By: Claude Opus 4.7 <noreply@anthropic.com>
2026-05-11 18:05:00 +08:00
Will Miao
5d3ab3bbf8 feat(showcase): click-to-view full-size image/video in recipe and model modals (#926)
- Add MediaViewer overlay for full-size image/video display with prev/next
  navigation, direction keys, counter, and adjacent preloading
- Recipe modal: click preview image/video opens full-size viewer
- Model showcase: click any example image/video opens viewer with full
  gallery navigation; blurred NSFW content opens directly to clear view
- Use Map<Element, number> for DOM-index mapping instead of URL comparison
  to avoid index mismatch from lazy-loaded vs data-attribute URLs
2026-05-10 22:22:24 +08:00
Will Miao
d9dc0dba8d perf(startup): load extra model paths during Config init to avoid double symlink scan
Move extra folder path resolution from _initialize_services (app.on_startup)
into Config.__init__ via new _load_extra_paths_from_settings() method.
This eliminates a redundant second symlink scan and consolidates all
'Found roots' / 'Found extra roots' logs into one contiguous block
during custom node import, before the ComfyUI server starts.
2026-05-08 14:55:53 +08:00
Will Miao
3631c5eb10 chore: bump version to 1.0.6 2026-05-07 18:59:00 +08:00
Will Miao
6d5b4b7312 fix(test): update drag interaction test to match 454210a4's renderFunction→setValue change
Commit 454210a4 replaced renderFunction() with widget.value setter +
widget.callback() in endDrag, so the test assertion should verify
callback invocation instead of the removed renderSpy call.
2026-05-07 11:03:38 +08:00
Will Miao
7803bd542d feat(base-models): add Ernie, Ernie Turbo, Nucleus base model types (#922)
- Ernie & Anima: auto-fetched via CivitaiBaseModelService from Civitai API
- Ernie Turbo & Nucleus: pre-added as hardcoded constants (not yet in Civitai API)
- Added abbreviations (ERNI, ETRB, NUCL) and category entries across all layers
2026-05-07 10:49:01 +08:00
Will Miao
f0a86dbbc0 feat(bulk): add bulk favorite/unfavorite toggle with context-sensitive single menu item
Replaces two separate menu items with a single smart item that dynamically
switches between 'Set as Favorite' and 'Remove from Favorites' based on
whether all selected items are already favorited. Shows a count badge
'(3/5)' when only some items are favorited in a mixed selection.

Supports all model types (LoRA, Checkpoint, Embedding) and recipes via
existing per-item save/update API — no backend changes needed.
2026-05-07 09:51:23 +08:00
Will Miao
682e964f89 fix(usage-control): enrich usageControl from CivitAI by-hash API for all model types
The model-level API (GET /api/v1/models/{id}) does not include usageControl
on version entries, causing generation-only models to show as downloadable.

Backend changes:
- Add get_model_versions_by_hashes() to CivitaiClient (POST by-hash batch)
- Propagate through all provider classes including RateLimitRetryingProvider
- Add _enrich_version_entries() pipeline: extract SHA256 from files[].hashes,
  batch-call by-hash endpoint, inject usageControl+earlyAccessEndsAt in-place
- Wire enrichment into both bulk (_fetch_model_versions_bulk) and individual
  (_refresh_single_model) refresh paths
- Fix _build_record_from_remote dropping usage_control field
- Fix POST by-hash request format (plain JSON array, not {hashes:[...]} object)

Frontend changes:
- Fix disabled download button tooltip: wrap in <span> since HTML title
  attribute does not fire on disabled elements
2026-05-07 08:56:19 +08:00
Will Miao
908464bc0a docs: remove inline release notes from README (now maintained via GitHub Releases) 2026-05-06 22:40:06 +08:00
118 changed files with 5780 additions and 1116 deletions

2
.gitignore vendored
View File

@@ -15,7 +15,9 @@ model_cache/
# agent # agent
.opencode/ .opencode/
.claude/ .claude/
.sisyphus/
.codex .codex
.omo
# Vue widgets development cache (but keep build output) # Vue widgets development cache (but keep build output)
vue-widgets/node_modules/ vue-widgets/node_modules/

134
README.md

File diff suppressed because one or more lines are too long

File diff suppressed because it is too large Load Diff

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@@ -232,7 +232,10 @@
"license": "Lizenz", "license": "Lizenz",
"noCreditRequired": "Kein Credit erforderlich", "noCreditRequired": "Kein Credit erforderlich",
"allowSellingGeneratedContent": "Verkauf erlaubt", "allowSellingGeneratedContent": "Verkauf erlaubt",
"allowSellingGeneratedContentTooltip": "Verkauf generierter Bilder erlauben",
"noCreditRequiredTooltip": "Modell ohne Nennung des Erstellers verwenden",
"noTags": "Keine Tags", "noTags": "Keine Tags",
"autoTags": "Auto-Tags",
"noBaseModelMatches": "Keine Basismodelle entsprechen der aktuellen Suche.", "noBaseModelMatches": "Keine Basismodelle entsprechen der aktuellen Suche.",
"clearAll": "Alle Filter löschen", "clearAll": "Alle Filter löschen",
"any": "Beliebig", "any": "Beliebig",
@@ -266,10 +269,10 @@
}, },
"downloadBackend": { "downloadBackend": {
"label": "Download-Backend", "label": "Download-Backend",
"help": "Wähle aus, wie Modelldateien heruntergeladen werden. Python verwendet den eingebauten Downloader. aria2 verwendet den experimentellen externen Downloader-Prozess.", "help": "Wähle aus, wie Modelldateien heruntergeladen werden. Python verwendet den eingebauten Downloader. aria2 verwendet den empfohlenen externen Downloader-Prozess.",
"options": { "options": {
"python": "Python (integriert)", "python": "Python (integriert)",
"aria2": "aria2 (experimentell)" "aria2": "aria2 (empfohlen)"
} }
}, },
"aria2cPath": { "aria2cPath": {
@@ -576,7 +579,13 @@
}, },
"misc": { "misc": {
"includeTriggerWords": "Trigger Words in LoRA-Syntax einschließen", "includeTriggerWords": "Trigger Words in LoRA-Syntax einschließen",
"includeTriggerWordsHelp": "Trainierte Trigger Words beim Kopieren der LoRA-Syntax in die Zwischenablage einschließen" "includeTriggerWordsHelp": "Trainierte Trigger Words beim Kopieren der LoRA-Syntax in die Zwischenablage einschließen",
"loraSyntaxFormat": "LoRA-Syntaxformat",
"loraSyntaxFormatHelp": "LoRA-Syntaxformat. Der vollständige Pfad enthält den Unterordnerpfad (<lora:style/anime/x:1.0>) für verlustfreie Modellauflösung. Legacy verwendet nur den Dateinamen (<lora:x:1.0>) — A1111-Konvention, kann bei doppelten Dateinamen in verschiedenen Ordnern zu Mehrdeutigkeiten führen.",
"loraSyntaxFormatOptions": {
"full": "Vollständiger Pfad (Unterordner/Name)",
"legacy": "Legacy A1111 (nur Name)"
}
}, },
"metadataArchive": { "metadataArchive": {
"enableArchiveDb": "Metadaten-Archiv-Datenbank aktivieren", "enableArchiveDb": "Metadaten-Archiv-Datenbank aktivieren",
@@ -640,8 +649,6 @@
}, },
"refresh": { "refresh": {
"title": "Modelliste aktualisieren", "title": "Modelliste aktualisieren",
"quick": "Änderungen synchronisieren",
"quickTooltip": "Nach neuen oder fehlenden Modelldateien suchen, damit die Liste aktuell bleibt.",
"full": "Cache neu aufbauen", "full": "Cache neu aufbauen",
"fullTooltip": "Alle Modelldetails aus Metadatendateien neu laden nutzen, wenn die Bibliothek veraltet wirkt oder nach manuellen Änderungen." "fullTooltip": "Alle Modelldetails aus Metadatendateien neu laden nutzen, wenn die Bibliothek veraltet wirkt oder nach manuellen Änderungen."
}, },
@@ -682,16 +689,29 @@
"setContentRating": "Inhaltsbewertung für alle festlegen", "setContentRating": "Inhaltsbewertung für alle festlegen",
"copyAll": "Alle Syntax kopieren", "copyAll": "Alle Syntax kopieren",
"refreshAll": "Alle Metadaten aktualisieren", "refreshAll": "Alle Metadaten aktualisieren",
"repairMetadata": "Metadaten der Auswahl reparieren",
"checkUpdates": "Auswahl auf Updates prüfen", "checkUpdates": "Auswahl auf Updates prüfen",
"moveAll": "Alle in Ordner verschieben", "moveAll": "Alle in Ordner verschieben",
"autoOrganize": "Automatisch organisieren", "autoOrganize": "Automatisch organisieren",
"skipMetadataRefresh": "Metadaten-Aktualisierung für ausgewählte Modelle überspringen", "skipMetadataRefresh": "Metadaten-Aktualisierung für ausgewählte Modelle überspringen",
"resumeMetadataRefresh": "Metadaten-Aktualisierung für ausgewählte Modelle fortsetzen", "resumeMetadataRefresh": "Metadaten-Aktualisierung für ausgewählte Modelle fortsetzen",
"setFavorite": "Als Favorit setzen",
"setFavoriteCount": "Als Favorit setzen ({favorited}/{total})",
"unfavorite": "Aus Favoriten entfernen",
"deleteAll": "Ausgewählte löschen", "deleteAll": "Ausgewählte löschen",
"downloadMissingLoras": "Fehlende LoRAs herunterladen", "downloadMissingLoras": "Fehlende LoRAs herunterladen",
"downloadExamples": "Beispielbilder herunterladen",
"clear": "Auswahl löschen", "clear": "Auswahl löschen",
"skipMetadataRefreshCount": "Überspringen{count} Modelle", "skipMetadataRefreshCount": "Überspringen{count} Modelle",
"resumeMetadataRefreshCount": "Fortsetzen{count} Modelle", "resumeMetadataRefreshCount": "Fortsetzen{count} Modelle",
"sendToWorkflow": "An Workflow senden",
"sections": {
"workflow": "Workflow",
"metadata": "Metadaten",
"attributes": "Attribute",
"organize": "Organisieren",
"download": "Download"
},
"autoOrganizeProgress": { "autoOrganizeProgress": {
"initializing": "Automatische Organisation wird initialisiert...", "initializing": "Automatische Organisation wird initialisiert...",
"starting": "Automatische Organisation für {type} wird gestartet...", "starting": "Automatische Organisation für {type} wird gestartet...",
@@ -804,8 +824,6 @@
}, },
"refresh": { "refresh": {
"title": "Rezeptliste aktualisieren", "title": "Rezeptliste aktualisieren",
"quick": "Änderungen synchronisieren",
"quickTooltip": "Änderungen synchronisieren - schnelle Aktualisierung ohne Cache-Neubau",
"full": "Cache neu aufbauen", "full": "Cache neu aufbauen",
"fullTooltip": "Cache neu aufbauen - vollständiger Rescan aller Rezeptdateien" "fullTooltip": "Cache neu aufbauen - vollständiger Rescan aller Rezeptdateien"
}, },
@@ -1077,6 +1095,12 @@
"countMessage": "Modelle werden dauerhaft gelöscht.", "countMessage": "Modelle werden dauerhaft gelöscht.",
"action": "Alle löschen" "action": "Alle löschen"
}, },
"bulkDeleteRecipes": {
"title": "Mehrere Rezepte löschen",
"message": "Sind Sie sicher, dass Sie alle ausgewählten Rezepte und ihre zugehörigen Dateien löschen möchten?",
"countMessage": "Rezepte werden dauerhaft gelöscht.",
"action": "Alle löschen"
},
"checkUpdates": { "checkUpdates": {
"title": "Alle {typePlural} auf Updates prüfen?", "title": "Alle {typePlural} auf Updates prüfen?",
"message": "Damit werden alle {typePlural} in deiner Bibliothek auf Updates geprüft. Bei großen Sammlungen kann das etwas länger dauern.", "message": "Damit werden alle {typePlural} in deiner Bibliothek auf Updates geprüft. Bei großen Sammlungen kann das etwas länger dauern.",
@@ -1157,6 +1181,7 @@
"editModelName": "Modellname bearbeiten", "editModelName": "Modellname bearbeiten",
"editFileName": "Dateiname bearbeiten", "editFileName": "Dateiname bearbeiten",
"editBaseModel": "Basis-Modell bearbeiten", "editBaseModel": "Basis-Modell bearbeiten",
"editVersionName": "Versionsname bearbeiten",
"viewOnCivitai": "Auf Civitai anzeigen", "viewOnCivitai": "Auf Civitai anzeigen",
"viewOnCivitaiText": "Auf Civitai anzeigen", "viewOnCivitaiText": "Auf Civitai anzeigen",
"viewCreatorProfile": "Ersteller-Profil anzeigen", "viewCreatorProfile": "Ersteller-Profil anzeigen",
@@ -1669,6 +1694,9 @@
"batchImportBrowseFailed": "Failed to browse directory: {message}", "batchImportBrowseFailed": "Failed to browse directory: {message}",
"batchImportDirectorySelected": "Directory selected: {path}", "batchImportDirectorySelected": "Directory selected: {path}",
"noRecipesSelected": "Keine Rezepte ausgewählt", "noRecipesSelected": "Keine Rezepte ausgewählt",
"repairBulkComplete": "Reparatur abgeschlossen: {repaired} repariert, {skipped} übersprungen (von {total})",
"repairBulkSkipped": "Keine Reparatur für die {total} ausgewählten Rezepte erforderlich",
"repairBulkFailed": "Reparatur der ausgewählten Rezepte fehlgeschlagen: {message}",
"noMissingLorasInSelection": "Keine fehlenden LoRAs in ausgewählten Rezepten gefunden", "noMissingLorasInSelection": "Keine fehlenden LoRAs in ausgewählten Rezepten gefunden",
"noLoraRootConfigured": "Kein LoRA-Stammverzeichnis konfiguriert. Bitte legen Sie ein Standard-LoRA-Stammverzeichnis in den Einstellungen fest." "noLoraRootConfigured": "Kein LoRA-Stammverzeichnis konfiguriert. Bitte legen Sie ein Standard-LoRA-Stammverzeichnis in den Einstellungen fest."
}, },
@@ -1699,6 +1727,11 @@
"bulkContentRatingSet": "Inhaltsbewertung auf {level} für {count} Modell(e) gesetzt", "bulkContentRatingSet": "Inhaltsbewertung auf {level} für {count} Modell(e) gesetzt",
"bulkContentRatingPartial": "Inhaltsbewertung auf {level} für {success} Modell(e) gesetzt, {failed} fehlgeschlagen", "bulkContentRatingPartial": "Inhaltsbewertung auf {level} für {success} Modell(e) gesetzt, {failed} fehlgeschlagen",
"bulkContentRatingFailed": "Inhaltsbewertung für ausgewählte Modelle konnte nicht aktualisiert werden", "bulkContentRatingFailed": "Inhaltsbewertung für ausgewählte Modelle konnte nicht aktualisiert werden",
"bulkFavoriteUpdating": "Füge {count} Modell(e) zu Favoriten hinzu...",
"bulkUnfavoriteUpdating": "Entferne {count} Modell(e) aus Favoriten...",
"bulkFavoritePartialAdded": "{success} Modell(e) zu Favoriten hinzugefügt, {failed} fehlgeschlagen",
"bulkFavoritePartialRemoved": "{success} Modell(e) aus Favoriten entfernt, {failed} fehlgeschlagen",
"bulkFavoriteFailed": "Fehler beim Aktualisieren des Favoritenstatus",
"bulkUpdatesChecking": "Ausgewählte {type}-Modelle werden auf Updates geprüft...", "bulkUpdatesChecking": "Ausgewählte {type}-Modelle werden auf Updates geprüft...",
"bulkUpdatesSuccess": "Updates für {count} ausgewählte {type}-Modelle verfügbar", "bulkUpdatesSuccess": "Updates für {count} ausgewählte {type}-Modelle verfügbar",
"bulkUpdatesNone": "Keine Updates für ausgewählte {type}-Modelle gefunden", "bulkUpdatesNone": "Keine Updates für ausgewählte {type}-Modelle gefunden",
@@ -1901,9 +1934,32 @@
"warning": "Handlungsbedarf", "warning": "Handlungsbedarf",
"error": "Aktion erforderlich" "error": "Aktion erforderlich"
}, },
"issues": {
"civitai_api_key": {
"title": "Civitai API Key"
},
"cache_health": {
"title": "Model Cache Health"
},
"filename_conflicts": {
"title": "Duplicate Filename Conflicts"
},
"ui_version": {
"title": "UI Version"
}
},
"actions": { "actions": {
"runAgain": "Erneut ausführen", "runAgain": "Erneut ausführen",
"exportBundle": "Paket exportieren" "exportBundle": "Paket exportieren",
"open-settings": "Open Settings",
"open-settings-syntax-format": "Switch to Full Path Syntax",
"repair-cache": "Rebuild Cache",
"resolve-filename-conflicts": "Resolve Conflicts",
"reload-page": "Reload UI"
},
"labels": {
"conflicts": "Conflicts",
"version": "Version"
}, },
"toast": { "toast": {
"loadFailed": "Diagnose konnte nicht geladen werden: {message}", "loadFailed": "Diagnose konnte nicht geladen werden: {message}",
@@ -1915,6 +1971,15 @@
"conflictsResolveFailed": "Auflösung der Dateinamenskonflikte fehlgeschlagen: {message}" "conflictsResolveFailed": "Auflösung der Dateinamenskonflikte fehlgeschlagen: {message}"
} }
}, },
"conflictConfirm": {
"title": "Dateinamenskonflikte auflösen",
"message": "Umbenennen durch Anhängen eines 4-stelligen Hashs an jeden doppelten Dateinamen.",
"note": "Dieser Vorgang benennt Dateien auf der Festplatte um. Modellreferenzen in vorhandenen Workflows müssen möglicherweise aktualisiert werden, wenn Sie das A1111-Syntaxformat verwenden.",
"detail": "Beispiel: <code>filename_v1.2</code> → <code>filename_v1.2-ab3c</code>",
"impact": "Benennt <strong>{count}</strong> Datei(en) in <strong>{groups}</strong> Duplikatgruppe(n) um",
"confirm": "Dateien umbenennen",
"cancel": "Abbrechen"
},
"banners": { "banners": {
"versionMismatch": { "versionMismatch": {
"title": "Anwendungs-Update erkannt", "title": "Anwendungs-Update erkannt",

View File

@@ -232,7 +232,10 @@
"license": "License", "license": "License",
"noCreditRequired": "No Credit Required", "noCreditRequired": "No Credit Required",
"allowSellingGeneratedContent": "Allow Selling", "allowSellingGeneratedContent": "Allow Selling",
"allowSellingGeneratedContentTooltip": "Allow selling generated images",
"noCreditRequiredTooltip": "Use the model without crediting the creator",
"noTags": "No tags", "noTags": "No tags",
"autoTags": "Auto Tags",
"noBaseModelMatches": "No base models match the current search.", "noBaseModelMatches": "No base models match the current search.",
"clearAll": "Clear All Filters", "clearAll": "Clear All Filters",
"any": "Any", "any": "Any",
@@ -266,10 +269,10 @@
}, },
"downloadBackend": { "downloadBackend": {
"label": "Download backend", "label": "Download backend",
"help": "Choose how model files are downloaded. Python uses the built-in downloader. aria2 uses the experimental external downloader process.", "help": "Choose how model files are downloaded. Python uses the built-in downloader. aria2 uses the recommended external downloader process.",
"options": { "options": {
"python": "Python (built-in)", "python": "Python (built-in)",
"aria2": "aria2 (experimental)" "aria2": "aria2 (recommended)"
} }
}, },
"aria2cPath": { "aria2cPath": {
@@ -576,7 +579,13 @@
}, },
"misc": { "misc": {
"includeTriggerWords": "Include Trigger Words in LoRA Syntax", "includeTriggerWords": "Include Trigger Words in LoRA Syntax",
"includeTriggerWordsHelp": "Include trained trigger words when copying LoRA syntax to clipboard" "includeTriggerWordsHelp": "Include trained trigger words when copying LoRA syntax to clipboard",
"loraSyntaxFormat": "LoRA Syntax Format",
"loraSyntaxFormatHelp": "LoRA syntax format. Full includes subfolder path (<lora:style/anime/x:1.0>) for lossless model resolution. Legacy uses filename only (<lora:x:1.0>) — A1111 convention, may be ambiguous with duplicate filenames across folders.",
"loraSyntaxFormatOptions": {
"full": "Full path (subfolder/name)",
"legacy": "Legacy A1111 (name only)"
}
}, },
"metadataArchive": { "metadataArchive": {
"enableArchiveDb": "Enable Metadata Archive Database", "enableArchiveDb": "Enable Metadata Archive Database",
@@ -640,8 +649,6 @@
}, },
"refresh": { "refresh": {
"title": "Refresh model list", "title": "Refresh model list",
"quick": "Sync Changes",
"quickTooltip": "Scan for new or missing model files so the list stays current.",
"full": "Rebuild Cache", "full": "Rebuild Cache",
"fullTooltip": "Reload all model details from metadata files—use if the library looks out of date or after manual edits." "fullTooltip": "Reload all model details from metadata files—use if the library looks out of date or after manual edits."
}, },
@@ -682,16 +689,29 @@
"setContentRating": "Set Content Rating for Selected", "setContentRating": "Set Content Rating for Selected",
"copyAll": "Copy Selected Syntax", "copyAll": "Copy Selected Syntax",
"refreshAll": "Refresh Selected Metadata", "refreshAll": "Refresh Selected Metadata",
"repairMetadata": "Repair Metadata for Selected",
"checkUpdates": "Check Updates for Selected", "checkUpdates": "Check Updates for Selected",
"moveAll": "Move Selected to Folder", "moveAll": "Move Selected to Folder",
"autoOrganize": "Auto-Organize Selected", "autoOrganize": "Auto-Organize Selected",
"skipMetadataRefresh": "Skip Metadata Refresh for Selected", "skipMetadataRefresh": "Skip Metadata Refresh for Selected",
"resumeMetadataRefresh": "Resume Metadata Refresh for Selected", "resumeMetadataRefresh": "Resume Metadata Refresh for Selected",
"setFavorite": "Set as Favorite",
"setFavoriteCount": "Set as Favorite ({favorited}/{total})",
"unfavorite": "Remove from Favorites",
"deleteAll": "Delete Selected", "deleteAll": "Delete Selected",
"downloadMissingLoras": "Download Missing LoRAs", "downloadMissingLoras": "Download Missing LoRAs",
"downloadExamples": "Download Example Images",
"clear": "Clear Selection", "clear": "Clear Selection",
"skipMetadataRefreshCount": "Skip ({count} models)", "skipMetadataRefreshCount": "Skip ({count} models)",
"resumeMetadataRefreshCount": "Resume ({count} models)", "resumeMetadataRefreshCount": "Resume ({count} models)",
"sendToWorkflow": "Send to Workflow",
"sections": {
"workflow": "Workflow",
"metadata": "Metadata",
"attributes": "Attributes",
"organize": "Organize",
"download": "Download"
},
"autoOrganizeProgress": { "autoOrganizeProgress": {
"initializing": "Initializing auto-organize...", "initializing": "Initializing auto-organize...",
"starting": "Starting auto-organize for {type}...", "starting": "Starting auto-organize for {type}...",
@@ -804,8 +824,6 @@
}, },
"refresh": { "refresh": {
"title": "Refresh recipe list", "title": "Refresh recipe list",
"quick": "Sync Changes",
"quickTooltip": "Sync changes - quick refresh without rebuilding cache",
"full": "Rebuild Cache", "full": "Rebuild Cache",
"fullTooltip": "Rebuild cache - full rescan of all recipe files" "fullTooltip": "Rebuild cache - full rescan of all recipe files"
}, },
@@ -1077,6 +1095,12 @@
"countMessage": "models will be permanently deleted.", "countMessage": "models will be permanently deleted.",
"action": "Delete All" "action": "Delete All"
}, },
"bulkDeleteRecipes": {
"title": "Delete Multiple Recipes",
"message": "Are you sure you want to delete all selected recipes and their associated files?",
"countMessage": "recipes will be permanently deleted.",
"action": "Delete All"
},
"checkUpdates": { "checkUpdates": {
"title": "Check updates for all {typePlural}?", "title": "Check updates for all {typePlural}?",
"message": "This checks every {typePlural} in your library for updates. Large collections may take a little longer.", "message": "This checks every {typePlural} in your library for updates. Large collections may take a little longer.",
@@ -1157,6 +1181,7 @@
"editModelName": "Edit model name", "editModelName": "Edit model name",
"editFileName": "Edit file name", "editFileName": "Edit file name",
"editBaseModel": "Edit base model", "editBaseModel": "Edit base model",
"editVersionName": "Edit version name",
"viewOnCivitai": "View on Civitai", "viewOnCivitai": "View on Civitai",
"viewOnCivitaiText": "View on Civitai", "viewOnCivitaiText": "View on Civitai",
"viewCreatorProfile": "View Creator Profile", "viewCreatorProfile": "View Creator Profile",
@@ -1669,6 +1694,9 @@
"batchImportBrowseFailed": "Failed to browse directory: {message}", "batchImportBrowseFailed": "Failed to browse directory: {message}",
"batchImportDirectorySelected": "Directory selected: {path}", "batchImportDirectorySelected": "Directory selected: {path}",
"noRecipesSelected": "No recipes selected", "noRecipesSelected": "No recipes selected",
"repairBulkComplete": "Repair complete: {repaired} repaired, {skipped} skipped (of {total})",
"repairBulkSkipped": "No repair needed for any of the {total} selected recipes",
"repairBulkFailed": "Failed to repair selected recipes: {message}",
"noMissingLorasInSelection": "No missing LoRAs found in selected recipes", "noMissingLorasInSelection": "No missing LoRAs found in selected recipes",
"noLoraRootConfigured": "No LoRA root directory configured. Please set a default LoRA root in settings." "noLoraRootConfigured": "No LoRA root directory configured. Please set a default LoRA root in settings."
}, },
@@ -1699,6 +1727,11 @@
"bulkContentRatingSet": "Set content rating to {level} for {count} model(s)", "bulkContentRatingSet": "Set content rating to {level} for {count} model(s)",
"bulkContentRatingPartial": "Set content rating to {level} for {success} model(s), {failed} failed", "bulkContentRatingPartial": "Set content rating to {level} for {success} model(s), {failed} failed",
"bulkContentRatingFailed": "Failed to update content rating for selected models", "bulkContentRatingFailed": "Failed to update content rating for selected models",
"bulkFavoriteUpdating": "Adding {count} model(s) to favorites...",
"bulkUnfavoriteUpdating": "Removing {count} model(s) from favorites...",
"bulkFavoritePartialAdded": "Added {success} model(s) to favorites, {failed} failed",
"bulkFavoritePartialRemoved": "Removed {success} model(s) from favorites, {failed} failed",
"bulkFavoriteFailed": "Failed to update favorite status for selected models",
"bulkUpdatesChecking": "Checking selected {type}(s) for updates...", "bulkUpdatesChecking": "Checking selected {type}(s) for updates...",
"bulkUpdatesSuccess": "Updates available for {count} selected {type}(s)", "bulkUpdatesSuccess": "Updates available for {count} selected {type}(s)",
"bulkUpdatesNone": "No updates found for selected {type}(s)", "bulkUpdatesNone": "No updates found for selected {type}(s)",
@@ -1901,9 +1934,32 @@
"warning": "Needs Attention", "warning": "Needs Attention",
"error": "Action Required" "error": "Action Required"
}, },
"issues": {
"civitai_api_key": {
"title": "Civitai API Key"
},
"cache_health": {
"title": "Model Cache Health"
},
"filename_conflicts": {
"title": "Duplicate Filename Conflicts"
},
"ui_version": {
"title": "UI Version"
}
},
"actions": { "actions": {
"runAgain": "Run Again", "runAgain": "Run Again",
"exportBundle": "Export Bundle" "exportBundle": "Export Bundle",
"open-settings": "Open Settings",
"open-settings-syntax-format": "Switch to Full Path Syntax",
"repair-cache": "Rebuild Cache",
"resolve-filename-conflicts": "Resolve Conflicts",
"reload-page": "Reload UI"
},
"labels": {
"conflicts": "Conflicts",
"version": "Version"
}, },
"toast": { "toast": {
"loadFailed": "Failed to load diagnostics: {message}", "loadFailed": "Failed to load diagnostics: {message}",
@@ -1915,6 +1971,15 @@
"conflictsResolveFailed": "Failed to resolve filename conflicts: {message}" "conflictsResolveFailed": "Failed to resolve filename conflicts: {message}"
} }
}, },
"conflictConfirm": {
"title": "Resolve Filename Conflicts",
"message": "Renaming by appending a 4-character hash to each duplicate filename.",
"note": "This operation renames files on disk. Model references in existing workflows may need updating if you use the A1111 syntax format.",
"detail": "Example: <code>filename_v1.2</code> → <code>filename_v1.2-ab3c</code>",
"impact": "Will rename <strong>{count}</strong> file(s) across <strong>{groups}</strong> duplicate group(s).",
"confirm": "Rename Files",
"cancel": "Cancel"
},
"banners": { "banners": {
"versionMismatch": { "versionMismatch": {
"title": "Application Update Detected", "title": "Application Update Detected",

View File

@@ -232,7 +232,10 @@
"license": "Licencia", "license": "Licencia",
"noCreditRequired": "Sin crédito requerido", "noCreditRequired": "Sin crédito requerido",
"allowSellingGeneratedContent": "Venta permitida", "allowSellingGeneratedContent": "Venta permitida",
"allowSellingGeneratedContentTooltip": "Permitir la venta de imágenes generadas",
"noCreditRequiredTooltip": "Usar el modelo sin atribuir al creador",
"noTags": "Sin etiquetas", "noTags": "Sin etiquetas",
"autoTags": "Etiquetas automáticas",
"noBaseModelMatches": "Ningún modelo base coincide con la búsqueda actual.", "noBaseModelMatches": "Ningún modelo base coincide con la búsqueda actual.",
"clearAll": "Limpiar todos los filtros", "clearAll": "Limpiar todos los filtros",
"any": "Cualquiera", "any": "Cualquiera",
@@ -266,10 +269,10 @@
}, },
"downloadBackend": { "downloadBackend": {
"label": "Backend de descarga", "label": "Backend de descarga",
"help": "Elige cómo se descargan los archivos del modelo. Python usa el descargador integrado. aria2 usa el proceso externo experimental de descarga.", "help": "Elige cómo se descargan los archivos del modelo. Python usa el descargador integrado. aria2 usa el proceso externo recomendado de descarga.",
"options": { "options": {
"python": "Python (integrado)", "python": "Python (integrado)",
"aria2": "aria2 (experimental)" "aria2": "aria2 (recomendado)"
} }
}, },
"aria2cPath": { "aria2cPath": {
@@ -576,7 +579,13 @@
}, },
"misc": { "misc": {
"includeTriggerWords": "Incluir palabras clave en la sintaxis de LoRA", "includeTriggerWords": "Incluir palabras clave en la sintaxis de LoRA",
"includeTriggerWordsHelp": "Incluir palabras clave entrenadas al copiar la sintaxis de LoRA al portapapeles" "includeTriggerWordsHelp": "Incluir palabras clave entrenadas al copiar la sintaxis de LoRA al portapapeles",
"loraSyntaxFormat": "Formato de sintaxis LoRA",
"loraSyntaxFormatHelp": "Formato de sintaxis LoRA. El formato completo incluye la ruta de la subcarpeta (<lora:style/anime/x:1.0>) para una resolución de modelo sin pérdidas. El formato heredado usa solo el nombre del archivo (<lora:x:1.0>) — convención A1111, puede ser ambiguo con nombres de archivo duplicados entre carpetas.",
"loraSyntaxFormatOptions": {
"full": "Ruta completa (subcarpeta/nombre)",
"legacy": "A1111 heredado (solo nombre)"
}
}, },
"metadataArchive": { "metadataArchive": {
"enableArchiveDb": "Habilitar base de datos de archivo de metadatos", "enableArchiveDb": "Habilitar base de datos de archivo de metadatos",
@@ -640,8 +649,6 @@
}, },
"refresh": { "refresh": {
"title": "Actualizar lista de modelos", "title": "Actualizar lista de modelos",
"quick": "Sincronizar cambios",
"quickTooltip": "Busca archivos de modelo nuevos o faltantes para mantener la lista al día.",
"full": "Reconstruir caché", "full": "Reconstruir caché",
"fullTooltip": "Vuelve a cargar todos los detalles desde los archivos de metadatos; úsalo si la biblioteca parece desactualizada o tras ediciones manuales." "fullTooltip": "Vuelve a cargar todos los detalles desde los archivos de metadatos; úsalo si la biblioteca parece desactualizada o tras ediciones manuales."
}, },
@@ -682,16 +689,29 @@
"setContentRating": "Establecer clasificación de contenido para todos", "setContentRating": "Establecer clasificación de contenido para todos",
"copyAll": "Copiar toda la sintaxis", "copyAll": "Copiar toda la sintaxis",
"refreshAll": "Actualizar todos los metadatos", "refreshAll": "Actualizar todos los metadatos",
"repairMetadata": "Reparar metadatos de la selección",
"checkUpdates": "Comprobar actualizaciones para la selección", "checkUpdates": "Comprobar actualizaciones para la selección",
"moveAll": "Mover todos a carpeta", "moveAll": "Mover todos a carpeta",
"autoOrganize": "Auto-organizar seleccionados", "autoOrganize": "Auto-organizar seleccionados",
"skipMetadataRefresh": "Omitir actualización de metadatos para seleccionados", "skipMetadataRefresh": "Omitir actualización de metadatos para seleccionados",
"resumeMetadataRefresh": "Reanudar actualización de metadatos para seleccionados", "resumeMetadataRefresh": "Reanudar actualización de metadatos para seleccionados",
"setFavorite": "Marcar como favorito",
"setFavoriteCount": "Marcar como favorito ({favorited}/{total})",
"unfavorite": "Quitar de favoritos",
"deleteAll": "Eliminar seleccionados", "deleteAll": "Eliminar seleccionados",
"downloadMissingLoras": "Descargar LoRAs faltantes", "downloadMissingLoras": "Descargar LoRAs faltantes",
"downloadExamples": "Descargar imágenes de ejemplo",
"clear": "Limpiar selección", "clear": "Limpiar selección",
"skipMetadataRefreshCount": "Omitir{count} modelos", "skipMetadataRefreshCount": "Omitir{count} modelos",
"resumeMetadataRefreshCount": "Reanudar{count} modelos", "resumeMetadataRefreshCount": "Reanudar{count} modelos",
"sendToWorkflow": "Enviar al workflow",
"sections": {
"workflow": "Workflow",
"metadata": "Metadatos",
"attributes": "Atributos",
"organize": "Organizar",
"download": "Descargar"
},
"autoOrganizeProgress": { "autoOrganizeProgress": {
"initializing": "Inicializando auto-organización...", "initializing": "Inicializando auto-organización...",
"starting": "Iniciando auto-organización para {type}...", "starting": "Iniciando auto-organización para {type}...",
@@ -804,8 +824,6 @@
}, },
"refresh": { "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", "full": "Reconstruir caché",
"fullTooltip": "Reconstruir caché - reescaneo completo de todos los archivos de recetas" "fullTooltip": "Reconstruir caché - reescaneo completo de todos los archivos de recetas"
}, },
@@ -1077,6 +1095,12 @@
"countMessage": "modelos serán eliminados permanentemente.", "countMessage": "modelos serán eliminados permanentemente.",
"action": "Eliminar todo" "action": "Eliminar todo"
}, },
"bulkDeleteRecipes": {
"title": "Eliminar múltiples recetas",
"message": "¿Estás seguro de que quieres eliminar todas las recetas seleccionadas y sus archivos asociados?",
"countMessage": "recetas serán eliminadas permanentemente.",
"action": "Eliminar todo"
},
"checkUpdates": { "checkUpdates": {
"title": "¿Comprobar actualizaciones para todos los {typePlural}?", "title": "¿Comprobar actualizaciones para todos los {typePlural}?",
"message": "Esto comprobará las actualizaciones de todos los {typePlural} de tu biblioteca. En colecciones grandes puede tardar un poco más.", "message": "Esto comprobará las actualizaciones de todos los {typePlural} de tu biblioteca. En colecciones grandes puede tardar un poco más.",
@@ -1157,6 +1181,7 @@
"editModelName": "Editar nombre del modelo", "editModelName": "Editar nombre del modelo",
"editFileName": "Editar nombre de archivo", "editFileName": "Editar nombre de archivo",
"editBaseModel": "Editar modelo base", "editBaseModel": "Editar modelo base",
"editVersionName": "Editar nombre de versión",
"viewOnCivitai": "Ver en Civitai", "viewOnCivitai": "Ver en Civitai",
"viewOnCivitaiText": "Ver en Civitai", "viewOnCivitaiText": "Ver en Civitai",
"viewCreatorProfile": "Ver perfil del creador", "viewCreatorProfile": "Ver perfil del creador",
@@ -1669,6 +1694,9 @@
"batchImportBrowseFailed": "Failed to browse directory: {message}", "batchImportBrowseFailed": "Failed to browse directory: {message}",
"batchImportDirectorySelected": "Directory selected: {path}", "batchImportDirectorySelected": "Directory selected: {path}",
"noRecipesSelected": "No se han seleccionado recetas", "noRecipesSelected": "No se han seleccionado recetas",
"repairBulkComplete": "Reparación completa: {repaired} reparadas, {skipped} omitidas (de {total})",
"repairBulkSkipped": "No se necesita reparación para ninguna de las {total} recetas seleccionadas",
"repairBulkFailed": "Error al reparar las recetas seleccionadas: {message}",
"noMissingLorasInSelection": "No se encontraron LoRAs faltantes en las recetas seleccionadas", "noMissingLorasInSelection": "No se encontraron LoRAs faltantes en las recetas seleccionadas",
"noLoraRootConfigured": "No se ha configurado el directorio raíz de LoRA. Por favor, establezca un directorio raíz de LoRA predeterminado en la configuración." "noLoraRootConfigured": "No se ha configurado el directorio raíz de LoRA. Por favor, establezca un directorio raíz de LoRA predeterminado en la configuración."
}, },
@@ -1699,6 +1727,11 @@
"bulkContentRatingSet": "Clasificación de contenido establecida en {level} para {count} modelo(s)", "bulkContentRatingSet": "Clasificación de contenido establecida en {level} para {count} modelo(s)",
"bulkContentRatingPartial": "Clasificación de contenido establecida en {level} para {success} modelo(s), {failed} fallaron", "bulkContentRatingPartial": "Clasificación de contenido establecida en {level} para {success} modelo(s), {failed} fallaron",
"bulkContentRatingFailed": "No se pudo actualizar la clasificación de contenido para los modelos seleccionados", "bulkContentRatingFailed": "No se pudo actualizar la clasificación de contenido para los modelos seleccionados",
"bulkFavoriteUpdating": "Añadiendo {count} modelo(s) a favoritos...",
"bulkUnfavoriteUpdating": "Eliminando {count} modelo(s) de favoritos...",
"bulkFavoritePartialAdded": "{success} modelo(s) añadido(s) a favoritos, {failed} fallido(s)",
"bulkFavoritePartialRemoved": "{success} modelo(s) eliminado(s) de favoritos, {failed} fallido(s)",
"bulkFavoriteFailed": "Error al actualizar el estado de favorito",
"bulkUpdatesChecking": "Comprobando actualizaciones para {type} seleccionados...", "bulkUpdatesChecking": "Comprobando actualizaciones para {type} seleccionados...",
"bulkUpdatesSuccess": "Actualizaciones disponibles para {count} {type} seleccionados", "bulkUpdatesSuccess": "Actualizaciones disponibles para {count} {type} seleccionados",
"bulkUpdatesNone": "No se encontraron actualizaciones para los {type} seleccionados", "bulkUpdatesNone": "No se encontraron actualizaciones para los {type} seleccionados",
@@ -1901,9 +1934,32 @@
"warning": "Requiere atención", "warning": "Requiere atención",
"error": "Se requiere acción" "error": "Se requiere acción"
}, },
"issues": {
"civitai_api_key": {
"title": "Civitai API Key"
},
"cache_health": {
"title": "Model Cache Health"
},
"filename_conflicts": {
"title": "Duplicate Filename Conflicts"
},
"ui_version": {
"title": "UI Version"
}
},
"actions": { "actions": {
"runAgain": "Ejecutar de nuevo", "runAgain": "Ejecutar de nuevo",
"exportBundle": "Exportar paquete" "exportBundle": "Exportar paquete",
"open-settings": "Open Settings",
"open-settings-syntax-format": "Switch to Full Path Syntax",
"repair-cache": "Rebuild Cache",
"resolve-filename-conflicts": "Resolve Conflicts",
"reload-page": "Reload UI"
},
"labels": {
"conflicts": "Conflicts",
"version": "Version"
}, },
"toast": { "toast": {
"loadFailed": "Error al cargar los diagnósticos: {message}", "loadFailed": "Error al cargar los diagnósticos: {message}",
@@ -1915,6 +1971,15 @@
"conflictsResolveFailed": "Error al resolver conflictos de nombre de archivo: {message}" "conflictsResolveFailed": "Error al resolver conflictos de nombre de archivo: {message}"
} }
}, },
"conflictConfirm": {
"title": "Resolver conflictos de nombres de archivo",
"message": "Renombrar añadiendo un hash de 4 caracteres a cada nombre de archivo duplicado.",
"note": "Esta operación renombra archivos en el disco. Es posible que las referencias a modelos en flujos de trabajo existentes deban actualizarse si usas el formato de sintaxis A1111.",
"detail": "Ejemplo: <code>filename_v1.2</code> → <code>filename_v1.2-ab3c</code>",
"impact": "Renombrará <strong>{count}</strong> archivo(s) en <strong>{groups}</strong> grupo(s) de duplicados",
"confirm": "Renombrar archivos",
"cancel": "Cancelar"
},
"banners": { "banners": {
"versionMismatch": { "versionMismatch": {
"title": "Actualización de la aplicación detectada", "title": "Actualización de la aplicación detectada",

View File

@@ -232,7 +232,10 @@
"license": "Licence", "license": "Licence",
"noCreditRequired": "Crédit non requis", "noCreditRequired": "Crédit non requis",
"allowSellingGeneratedContent": "Vente autorisée", "allowSellingGeneratedContent": "Vente autorisée",
"allowSellingGeneratedContentTooltip": "Autoriser la vente d\"images générées",
"noCreditRequiredTooltip": "Utiliser le modèle sans créditer le créateur",
"noTags": "Aucun tag", "noTags": "Aucun tag",
"autoTags": "Auto-Tags",
"noBaseModelMatches": "Aucun modèle de base ne correspond à la recherche actuelle.", "noBaseModelMatches": "Aucun modèle de base ne correspond à la recherche actuelle.",
"clearAll": "Effacer tous les filtres", "clearAll": "Effacer tous les filtres",
"any": "N'importe quel", "any": "N'importe quel",
@@ -266,10 +269,10 @@
}, },
"downloadBackend": { "downloadBackend": {
"label": "Moteur de téléchargement", "label": "Moteur de téléchargement",
"help": "Choisissez comment les fichiers de modèles sont téléchargés. Python utilise le téléchargeur intégré. aria2 utilise le processus externe expérimental de téléchargement.", "help": "Choisissez comment les fichiers de modèles sont téléchargés. Python utilise le téléchargeur intégré. aria2 utilise le processus externe recommandé de téléchargement.",
"options": { "options": {
"python": "Python (intégré)", "python": "Python (intégré)",
"aria2": "aria2 (expérimental)" "aria2": "aria2 (recommandé)"
} }
}, },
"aria2cPath": { "aria2cPath": {
@@ -576,7 +579,13 @@
}, },
"misc": { "misc": {
"includeTriggerWords": "Inclure les mots-clés dans la syntaxe LoRA", "includeTriggerWords": "Inclure les mots-clés dans la syntaxe LoRA",
"includeTriggerWordsHelp": "Inclure les mots-clés d'entraînement lors de la copie de la syntaxe LoRA dans le presse-papiers" "includeTriggerWordsHelp": "Inclure les mots-clés d'entraînement lors de la copie de la syntaxe LoRA dans le presse-papiers",
"loraSyntaxFormat": "Format de syntaxe LoRA",
"loraSyntaxFormatHelp": "Format de syntaxe LoRA. Le format complet inclut le chemin du sous-dossier (<lora:style/anime/x:1.0>) pour une résolution de modèle sans perte. Le format hérité utilise uniquement le nom du fichier (<lora:x:1.0>) — convention A1111, peut être ambiguë en cas de noms de fichiers en double dans différents dossiers.",
"loraSyntaxFormatOptions": {
"full": "Chemin complet (sous-dossier/nom)",
"legacy": "A1111 hérité (nom uniquement)"
}
}, },
"metadataArchive": { "metadataArchive": {
"enableArchiveDb": "Activer la base de données d'archive des métadonnées", "enableArchiveDb": "Activer la base de données d'archive des métadonnées",
@@ -640,8 +649,6 @@
}, },
"refresh": { "refresh": {
"title": "Actualiser la liste des modèles", "title": "Actualiser la liste des modèles",
"quick": "Synchroniser les changements",
"quickTooltip": "Analyse les nouveaux fichiers de modèle ou les fichiers manquants pour garder la liste à jour.",
"full": "Reconstruire le cache", "full": "Reconstruire le cache",
"fullTooltip": "Recharge tous les détails des modèles depuis les fichiers metadata — à utiliser si la bibliothèque paraît obsolète ou après des modifications manuelles." "fullTooltip": "Recharge tous les détails des modèles depuis les fichiers metadata — à utiliser si la bibliothèque paraît obsolète ou après des modifications manuelles."
}, },
@@ -682,16 +689,29 @@
"setContentRating": "Définir la classification du contenu pour tous", "setContentRating": "Définir la classification du contenu pour tous",
"copyAll": "Copier toute la syntaxe", "copyAll": "Copier toute la syntaxe",
"refreshAll": "Actualiser toutes les métadonnées", "refreshAll": "Actualiser toutes les métadonnées",
"repairMetadata": "Réparer les métadonnées de la sélection",
"checkUpdates": "Vérifier les mises à jour pour la sélection", "checkUpdates": "Vérifier les mises à jour pour la sélection",
"moveAll": "Déplacer tout vers un dossier", "moveAll": "Déplacer tout vers un dossier",
"autoOrganize": "Auto-organiser la sélection", "autoOrganize": "Auto-organiser la sélection",
"skipMetadataRefresh": "Ignorer l'actualisation des métadonnées pour la sélection", "skipMetadataRefresh": "Ignorer l'actualisation des métadonnées pour la sélection",
"resumeMetadataRefresh": "Reprendre l'actualisation des métadonnées pour la sélection", "resumeMetadataRefresh": "Reprendre l'actualisation des métadonnées pour la sélection",
"setFavorite": "Définir comme favori",
"setFavoriteCount": "Définir comme favori ({favorited}/{total})",
"unfavorite": "Retirer des favoris",
"deleteAll": "Supprimer la sélection", "deleteAll": "Supprimer la sélection",
"downloadMissingLoras": "Télécharger les LoRAs manquants", "downloadMissingLoras": "Télécharger les LoRAs manquants",
"downloadExamples": "Télécharger les images d'exemple",
"clear": "Effacer la sélection", "clear": "Effacer la sélection",
"skipMetadataRefreshCount": "Ignorer{count} modèles", "skipMetadataRefreshCount": "Ignorer{count} modèles",
"resumeMetadataRefreshCount": "Reprendre{count} modèles", "resumeMetadataRefreshCount": "Reprendre{count} modèles",
"sendToWorkflow": "Envoyer au workflow",
"sections": {
"workflow": "Workflow",
"metadata": "Métadonnées",
"attributes": "Attributs",
"organize": "Organiser",
"download": "Télécharger"
},
"autoOrganizeProgress": { "autoOrganizeProgress": {
"initializing": "Initialisation de l'auto-organisation...", "initializing": "Initialisation de l'auto-organisation...",
"starting": "Démarrage de l'auto-organisation pour {type}...", "starting": "Démarrage de l'auto-organisation pour {type}...",
@@ -804,8 +824,6 @@
}, },
"refresh": { "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", "full": "Reconstruire le cache",
"fullTooltip": "Reconstruire le cache - rescan complet de tous les fichiers de recipes" "fullTooltip": "Reconstruire le cache - rescan complet de tous les fichiers de recipes"
}, },
@@ -1077,6 +1095,12 @@
"countMessage": "modèles seront définitivement supprimés.", "countMessage": "modèles seront définitivement supprimés.",
"action": "Tout supprimer" "action": "Tout supprimer"
}, },
"bulkDeleteRecipes": {
"title": "Supprimer plusieurs recipes",
"message": "Êtes-vous sûr de vouloir supprimer toutes les recipes sélectionnées et leurs fichiers associés ?",
"countMessage": "recipes seront définitivement supprimées.",
"action": "Tout supprimer"
},
"checkUpdates": { "checkUpdates": {
"title": "Vérifier les mises à jour pour tous les {typePlural} ?", "title": "Vérifier les mises à jour pour tous les {typePlural} ?",
"message": "Cette action vérifie les mises à jour pour tous les {typePlural} de votre bibliothèque. Les grandes collections peuvent prendre un peu plus de temps.", "message": "Cette action vérifie les mises à jour pour tous les {typePlural} de votre bibliothèque. Les grandes collections peuvent prendre un peu plus de temps.",
@@ -1157,6 +1181,7 @@
"editModelName": "Modifier le nom du modèle", "editModelName": "Modifier le nom du modèle",
"editFileName": "Modifier le nom de fichier", "editFileName": "Modifier le nom de fichier",
"editBaseModel": "Modifier le modèle de base", "editBaseModel": "Modifier le modèle de base",
"editVersionName": "Modifier le nom de la version",
"viewOnCivitai": "Voir sur Civitai", "viewOnCivitai": "Voir sur Civitai",
"viewOnCivitaiText": "Voir sur Civitai", "viewOnCivitaiText": "Voir sur Civitai",
"viewCreatorProfile": "Voir le profil du créateur", "viewCreatorProfile": "Voir le profil du créateur",
@@ -1669,6 +1694,9 @@
"batchImportBrowseFailed": "Failed to browse directory: {message}", "batchImportBrowseFailed": "Failed to browse directory: {message}",
"batchImportDirectorySelected": "Directory selected: {path}", "batchImportDirectorySelected": "Directory selected: {path}",
"noRecipesSelected": "Aucune recette sélectionnée", "noRecipesSelected": "Aucune recette sélectionnée",
"repairBulkComplete": "Réparation terminée : {repaired} réparée(s), {skipped} ignorée(s) (sur {total})",
"repairBulkSkipped": "Aucune réparation nécessaire parmi les {total} recettes sélectionnées",
"repairBulkFailed": "Échec de la réparation des recettes sélectionnées : {message}",
"noMissingLorasInSelection": "Aucun LoRA manquant trouvé dans les recettes sélectionnées", "noMissingLorasInSelection": "Aucun LoRA manquant trouvé dans les recettes sélectionnées",
"noLoraRootConfigured": "Aucun répertoire racine LoRA configuré. Veuillez définir un répertoire racine LoRA par défaut dans les paramètres." "noLoraRootConfigured": "Aucun répertoire racine LoRA configuré. Veuillez définir un répertoire racine LoRA par défaut dans les paramètres."
}, },
@@ -1699,6 +1727,11 @@
"bulkContentRatingSet": "Classification du contenu définie sur {level} pour {count} modèle(s)", "bulkContentRatingSet": "Classification du contenu définie sur {level} pour {count} modèle(s)",
"bulkContentRatingPartial": "Classification du contenu définie sur {level} pour {success} modèle(s), {failed} échec(s)", "bulkContentRatingPartial": "Classification du contenu définie sur {level} pour {success} modèle(s), {failed} échec(s)",
"bulkContentRatingFailed": "Impossible de mettre à jour la classification du contenu pour les modèles sélectionnés", "bulkContentRatingFailed": "Impossible de mettre à jour la classification du contenu pour les modèles sélectionnés",
"bulkFavoriteUpdating": "Ajout de {count} modèle(s) aux favoris...",
"bulkUnfavoriteUpdating": "Suppression de {count} modèle(s) des favoris...",
"bulkFavoritePartialAdded": "{success} modèle(s) ajouté(s) aux favoris, {failed} échec(s)",
"bulkFavoritePartialRemoved": "{success} modèle(s) retiré(s) des favoris, {failed} échec(s)",
"bulkFavoriteFailed": "Échec de la mise à jour du statut de favori",
"bulkUpdatesChecking": "Vérification des mises à jour pour les {type} sélectionnés...", "bulkUpdatesChecking": "Vérification des mises à jour pour les {type} sélectionnés...",
"bulkUpdatesSuccess": "Mises à jour disponibles pour {count} {type} sélectionnés", "bulkUpdatesSuccess": "Mises à jour disponibles pour {count} {type} sélectionnés",
"bulkUpdatesNone": "Aucune mise à jour trouvée pour les {type} sélectionnés", "bulkUpdatesNone": "Aucune mise à jour trouvée pour les {type} sélectionnés",
@@ -1901,9 +1934,32 @@
"warning": "Nécessite une attention", "warning": "Nécessite une attention",
"error": "Action requise" "error": "Action requise"
}, },
"issues": {
"civitai_api_key": {
"title": "Civitai API Key"
},
"cache_health": {
"title": "Model Cache Health"
},
"filename_conflicts": {
"title": "Duplicate Filename Conflicts"
},
"ui_version": {
"title": "UI Version"
}
},
"actions": { "actions": {
"runAgain": "Relancer", "runAgain": "Relancer",
"exportBundle": "Exporter le lot" "exportBundle": "Exporter le lot",
"open-settings": "Open Settings",
"open-settings-syntax-format": "Switch to Full Path Syntax",
"repair-cache": "Rebuild Cache",
"resolve-filename-conflicts": "Resolve Conflicts",
"reload-page": "Reload UI"
},
"labels": {
"conflicts": "Conflicts",
"version": "Version"
}, },
"toast": { "toast": {
"loadFailed": "Échec du chargement des diagnostics : {message}", "loadFailed": "Échec du chargement des diagnostics : {message}",
@@ -1915,6 +1971,15 @@
"conflictsResolveFailed": "Échec de la résolution des conflits de nom de fichier : {message}" "conflictsResolveFailed": "Échec de la résolution des conflits de nom de fichier : {message}"
} }
}, },
"conflictConfirm": {
"title": "Résoudre les conflits de noms de fichiers",
"message": "Renommer en ajoutant un hachage de 4 caractères à chaque nom de fichier en double.",
"note": "Cette opération renomme les fichiers sur le disque. Les références de modèle dans les workflows existants peuvent nécessiter une mise à jour si vous utilisez le format de syntaxe A1111.",
"detail": "Exemple : <code>filename_v1.2</code> → <code>filename_v1.2-ab3c</code>",
"impact": "Renommera <strong>{count}</strong> fichier(s) dans <strong>{groups}</strong> groupe(s) de doublons",
"confirm": "Renommer les fichiers",
"cancel": "Annuler"
},
"banners": { "banners": {
"versionMismatch": { "versionMismatch": {
"title": "Mise à jour de l'application détectée", "title": "Mise à jour de l'application détectée",

View File

@@ -232,7 +232,10 @@
"license": "רישיון", "license": "רישיון",
"noCreditRequired": "ללא קרדיט נדרש", "noCreditRequired": "ללא קרדיט נדרש",
"allowSellingGeneratedContent": "אפשר מכירה", "allowSellingGeneratedContent": "אפשר מכירה",
"allowSellingGeneratedContentTooltip": "אפשר מכירת תמונות שנוצרו",
"noCreditRequiredTooltip": "שימוש במודל ללא מתן קרדיט ליוצר",
"noTags": "ללא תגיות", "noTags": "ללא תגיות",
"autoTags": "תגיות אוטומטיות",
"noBaseModelMatches": "אין מודלי בסיס התואמים לחיפוש הנוכחי.", "noBaseModelMatches": "אין מודלי בסיס התואמים לחיפוש הנוכחי.",
"clearAll": "נקה את כל המסננים", "clearAll": "נקה את כל המסננים",
"any": "כלשהו", "any": "כלשהו",
@@ -266,10 +269,10 @@
}, },
"downloadBackend": { "downloadBackend": {
"label": "מנגנון הורדה", "label": "מנגנון הורדה",
"help": "בחר כיצד יורדים קבצי המודל. Python משתמש במוריד המובנה. aria2 משתמש בתהליך הורדה חיצוני ניסיוני.", "help": "בחר כיצד יורדים קבצי המודל. Python משתמש במוריד המובנה. aria2 משתמש בתהליך הורדה חיצוני מומלץ.",
"options": { "options": {
"python": "Python (מובנה)", "python": "Python (מובנה)",
"aria2": "aria2 (ניסיוני)" "aria2": "aria2 (מומלץ)"
} }
}, },
"aria2cPath": { "aria2cPath": {
@@ -576,7 +579,13 @@
}, },
"misc": { "misc": {
"includeTriggerWords": "כלול מילות טריגר בתחביר LoRA", "includeTriggerWords": "כלול מילות טריגר בתחביר LoRA",
"includeTriggerWordsHelp": "כלול מילות טריגר מאומנות בעת העתקת תחביר LoRA ללוח" "includeTriggerWordsHelp": "כלול מילות טריגר מאומנות בעת העתקת תחביר LoRA ללוח",
"loraSyntaxFormat": "פורמט תחביר LoRA",
"loraSyntaxFormatHelp": "פורמט תחביר LoRA. נתיב מלא כולל תת-תיקייה (<lora:style/anime/x:1.0>) לפתרון מודל ללא אובדן. גרסה ישנה משתמשת בשם קובץ בלבד (<lora:x:1.0>) — מוסכמת A1111, עלולה להיות לא חד משמעית עם שמות קבצים כפולים בתיקיות שונות.",
"loraSyntaxFormatOptions": {
"full": "נתיב מלא (תת-תיקייה/שם)",
"legacy": "A1111 ישן (שם בלבד)"
}
}, },
"metadataArchive": { "metadataArchive": {
"enableArchiveDb": "הפעל מסד נתונים של ארכיון מטא-דאטה", "enableArchiveDb": "הפעל מסד נתונים של ארכיון מטא-דאטה",
@@ -640,8 +649,6 @@
}, },
"refresh": { "refresh": {
"title": "רענן רשימת מודלים", "title": "רענן רשימת מודלים",
"quick": "סנכרון שינויים",
"quickTooltip": "סריקה לאיתור קבצי מודל חדשים או חסרים כדי לשמור את הרשימה מעודכנת.",
"full": "בניית מטמון מחדש", "full": "בניית מטמון מחדש",
"fullTooltip": "טוען מחדש את כל פרטי המודלים מקבצי המטא-דאטה לשימוש אם הספרייה נראית לא מעודכנת או לאחר עריכות ידניות." "fullTooltip": "טוען מחדש את כל פרטי המודלים מקבצי המטא-דאטה לשימוש אם הספרייה נראית לא מעודכנת או לאחר עריכות ידניות."
}, },
@@ -682,16 +689,29 @@
"setContentRating": "הגדר דירוג תוכן לכל המודלים", "setContentRating": "הגדר דירוג תוכן לכל המודלים",
"copyAll": "העתק את כל התחבירים", "copyAll": "העתק את כל התחבירים",
"refreshAll": "רענן את כל המטא-דאטה", "refreshAll": "רענן את כל המטא-דאטה",
"repairMetadata": "תקן מטא-דאטה עבור הנבחרים",
"checkUpdates": "בדוק עדכונים לבחירה", "checkUpdates": "בדוק עדכונים לבחירה",
"moveAll": "העבר הכל לתיקייה", "moveAll": "העבר הכל לתיקייה",
"autoOrganize": "ארגן אוטומטית נבחרים", "autoOrganize": "ארגן אוטומטית נבחרים",
"skipMetadataRefresh": "דילוג על רענון מטא-נתונים לנבחרים", "skipMetadataRefresh": "דילוג על רענון מטא-נתונים לנבחרים",
"resumeMetadataRefresh": "המשך רענון מטא-נתונים לנבחרים", "resumeMetadataRefresh": "המשך רענון מטא-נתונים לנבחרים",
"setFavorite": "הגדר כמועדף",
"setFavoriteCount": "הגדר כמועדף ({favorited}/{total})",
"unfavorite": "הסר ממועדפים",
"deleteAll": "מחק נבחרים", "deleteAll": "מחק נבחרים",
"downloadMissingLoras": "הורדת LoRAs חסרים", "downloadMissingLoras": "הורדת LoRAs חסרים",
"downloadExamples": "הורד תמונות דוגמה",
"clear": "נקה בחירה", "clear": "נקה בחירה",
"skipMetadataRefreshCount": "דילוג({count} מודלים)", "skipMetadataRefreshCount": "דילוג({count} מודלים)",
"resumeMetadataRefreshCount": "המשך({count} מודלים)", "resumeMetadataRefreshCount": "המשך({count} מודלים)",
"sendToWorkflow": "שלח ל-Workflow",
"sections": {
"workflow": "Workflow",
"metadata": "מטא-נתונים",
"attributes": "מאפיינים",
"organize": "ארגן",
"download": "הורדה"
},
"autoOrganizeProgress": { "autoOrganizeProgress": {
"initializing": "מאתחל ארגון אוטומטי...", "initializing": "מאתחל ארגון אוטומטי...",
"starting": "מתחיל ארגון אוטומטי עבור {type}...", "starting": "מתחיל ארגון אוטומטי עבור {type}...",
@@ -804,8 +824,6 @@
}, },
"refresh": { "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", "full": "בנה מטמון מחדש",
"fullTooltip": "בנה מטמון מחדש - סריקה מחדש מלאה של כל קבצי המתכונים" "fullTooltip": "בנה מטמון מחדש - סריקה מחדש מלאה של כל קבצי המתכונים"
}, },
@@ -1077,6 +1095,12 @@
"countMessage": "מודלים יימחקו לצמיתות.", "countMessage": "מודלים יימחקו לצמיתות.",
"action": "מחק הכל" "action": "מחק הכל"
}, },
"bulkDeleteRecipes": {
"title": "מחק מספר מתכונים",
"message": "האם אתה בטוח שברצונך למחוק את כל המתכונים שנבחרו ואת הקבצים הנלווים אליהם?",
"countMessage": "מתכונים יימחקו לצמיתות.",
"action": "מחק הכל"
},
"checkUpdates": { "checkUpdates": {
"title": "לבדוק עדכונים לכל ה-{typePlural}?", "title": "לבדוק עדכונים לכל ה-{typePlural}?",
"message": "הפעולה תבדוק עדכונים עבור כל ה-{typePlural} בספרייה שלך. באוספים גדולים זה עלול לקחת מעט יותר זמן.", "message": "הפעולה תבדוק עדכונים עבור כל ה-{typePlural} בספרייה שלך. באוספים גדולים זה עלול לקחת מעט יותר זמן.",
@@ -1157,6 +1181,7 @@
"editModelName": "ערוך שם מודל", "editModelName": "ערוך שם מודל",
"editFileName": "ערוך שם קובץ", "editFileName": "ערוך שם קובץ",
"editBaseModel": "ערוך מודל בסיס", "editBaseModel": "ערוך מודל בסיס",
"editVersionName": "ערוך שם גרסה",
"viewOnCivitai": "הצג ב-Civitai", "viewOnCivitai": "הצג ב-Civitai",
"viewOnCivitaiText": "הצג ב-Civitai", "viewOnCivitaiText": "הצג ב-Civitai",
"viewCreatorProfile": "הצג פרופיל יוצר", "viewCreatorProfile": "הצג פרופיל יוצר",
@@ -1669,6 +1694,9 @@
"batchImportBrowseFailed": "Failed to browse directory: {message}", "batchImportBrowseFailed": "Failed to browse directory: {message}",
"batchImportDirectorySelected": "Directory selected: {path}", "batchImportDirectorySelected": "Directory selected: {path}",
"noRecipesSelected": "לא נבחרו מתכונים", "noRecipesSelected": "לא נבחרו מתכונים",
"repairBulkComplete": "התיקון הושלם: {repaired} תוקנו, {skipped} דולגו (מתוך {total})",
"repairBulkSkipped": "אין צורך בתיקון עבור {total} המתכונים הנבחרים",
"repairBulkFailed": "תיקון המתכונים הנבחרים נכשל: {message}",
"noMissingLorasInSelection": "לא נמצאו LoRAs חסרים במתכונים שנבחרו", "noMissingLorasInSelection": "לא נמצאו LoRAs חסרים במתכונים שנבחרו",
"noLoraRootConfigured": "תיקיית השורש של LoRA לא מוגדרת. אנא הגדר תיקיית שורש LoRA ברירת מחדל בהגדרות." "noLoraRootConfigured": "תיקיית השורש של LoRA לא מוגדרת. אנא הגדר תיקיית שורש LoRA ברירת מחדל בהגדרות."
}, },
@@ -1699,6 +1727,11 @@
"bulkContentRatingSet": "דירוג התוכן הוגדר ל-{level} עבור {count} מודלים", "bulkContentRatingSet": "דירוג התוכן הוגדר ל-{level} עבור {count} מודלים",
"bulkContentRatingPartial": "דירוג התוכן הוגדר ל-{level} עבור {success} מודלים, {failed} נכשלו", "bulkContentRatingPartial": "דירוג התוכן הוגדר ל-{level} עבור {success} מודלים, {failed} נכשלו",
"bulkContentRatingFailed": "עדכון דירוג התוכן עבור המודלים שנבחרו נכשל", "bulkContentRatingFailed": "עדכון דירוג התוכן עבור המודלים שנבחרו נכשל",
"bulkFavoriteUpdating": "מוסיף {count} דגמים למועדפים...",
"bulkUnfavoriteUpdating": "מסיר {count} דגמים ממועדפים...",
"bulkFavoritePartialAdded": "{success} דגמים נוספו למועדפים, {failed} נכשלו",
"bulkFavoritePartialRemoved": "{success} דגמים הוסרו ממועדפים, {failed} נכשלו",
"bulkFavoriteFailed": "עדכון סטטוס מועדפים נכשל",
"bulkUpdatesChecking": "בודק עדכונים עבור {type} שנבחרו...", "bulkUpdatesChecking": "בודק עדכונים עבור {type} שנבחרו...",
"bulkUpdatesSuccess": "יש עדכונים עבור {count} {type} שנבחרו", "bulkUpdatesSuccess": "יש עדכונים עבור {count} {type} שנבחרו",
"bulkUpdatesNone": "לא נמצאו עדכונים עבור {type} שנבחרו", "bulkUpdatesNone": "לא נמצאו עדכונים עבור {type} שנבחרו",
@@ -1901,9 +1934,32 @@
"warning": "דורש תשומת לב", "warning": "דורש תשומת לב",
"error": "נדרשת פעולה" "error": "נדרשת פעולה"
}, },
"issues": {
"civitai_api_key": {
"title": "Civitai API Key"
},
"cache_health": {
"title": "Model Cache Health"
},
"filename_conflicts": {
"title": "Duplicate Filename Conflicts"
},
"ui_version": {
"title": "UI Version"
}
},
"actions": { "actions": {
"runAgain": "הפעל שוב", "runAgain": "הפעל שוב",
"exportBundle": "ייצוא חבילה" "exportBundle": "ייצוא חבילה",
"open-settings": "Open Settings",
"open-settings-syntax-format": "Switch to Full Path Syntax",
"repair-cache": "Rebuild Cache",
"resolve-filename-conflicts": "Resolve Conflicts",
"reload-page": "Reload UI"
},
"labels": {
"conflicts": "Conflicts",
"version": "Version"
}, },
"toast": { "toast": {
"loadFailed": "טעינת האבחון נכשלה: {message}", "loadFailed": "טעינת האבחון נכשלה: {message}",
@@ -1915,6 +1971,15 @@
"conflictsResolveFailed": "פתרון התנגשויות שמות קבצים נכשל: {message}" "conflictsResolveFailed": "פתרון התנגשויות שמות קבצים נכשל: {message}"
} }
}, },
"conflictConfirm": {
"title": "פתור התנגשויות בשמות קבצים",
"message": "שינוי שם על ידי הוספת האש באורך 4 תווים לכל שם קובץ כפול.",
"note": "פעולה זו משנה שמות של קבצים בדיסק. ייתכן שיהיה צורך לעדכן הפניות למודלים בזרימות עבודה קיימות אם אתה משתמש בפורמט התחביר A1111.",
"detail": "דוגמה: <code>filename_v1.2</code> → <code>filename_v1.2-ab3c</code>",
"impact": "ישנה שם של <strong>{count}</strong> קבצים ב-<strong>{groups}</strong> קבוצות כפולות",
"confirm": "שנה שמות קבצים",
"cancel": "ביטול"
},
"banners": { "banners": {
"versionMismatch": { "versionMismatch": {
"title": "זוהה עדכון יישום", "title": "זוהה עדכון יישום",

View File

@@ -232,7 +232,10 @@
"license": "ライセンス", "license": "ライセンス",
"noCreditRequired": "クレジット不要", "noCreditRequired": "クレジット不要",
"allowSellingGeneratedContent": "販売許可", "allowSellingGeneratedContent": "販売許可",
"allowSellingGeneratedContentTooltip": "生成した画像の販売を許可",
"noCreditRequiredTooltip": "クレジット表記なしでモデルを使用可能",
"noTags": "タグなし", "noTags": "タグなし",
"autoTags": "自動タグ",
"noBaseModelMatches": "現在の検索に一致するベースモデルはありません。", "noBaseModelMatches": "現在の検索に一致するベースモデルはありません。",
"clearAll": "すべてのフィルタをクリア", "clearAll": "すべてのフィルタをクリア",
"any": "いずれか", "any": "いずれか",
@@ -266,10 +269,10 @@
}, },
"downloadBackend": { "downloadBackend": {
"label": "ダウンロードバックエンド", "label": "ダウンロードバックエンド",
"help": "モデルファイルのダウンロード方法を選択します。Python は内蔵ダウンローダーを使用し、aria2 は実験的な外部ダウンローダープロセスを使用します。", "help": "モデルファイルのダウンロード方法を選択します。Python は内蔵ダウンローダーを使用し、aria2 は推奨の外部ダウンローダープロセスを使用します。",
"options": { "options": {
"python": "Python内蔵", "python": "Python内蔵",
"aria2": "aria2実験的" "aria2": "aria2推奨"
} }
}, },
"aria2cPath": { "aria2cPath": {
@@ -576,7 +579,13 @@
}, },
"misc": { "misc": {
"includeTriggerWords": "LoRA構文にトリガーワードを含める", "includeTriggerWords": "LoRA構文にトリガーワードを含める",
"includeTriggerWordsHelp": "LoRA構文をクリップボードにコピーする際、学習済みトリガーワードを含めます" "includeTriggerWordsHelp": "LoRA構文をクリップボードにコピーする際、学習済みトリガーワードを含めます",
"loraSyntaxFormat": "LoRA構文形式",
"loraSyntaxFormatHelp": "LoRA構文形式。フルパスはサブフォルダパスを含み<lora:style/anime/x:1.0>)、モデルをロスレスで解決します。レガシーはファイル名のみ(<lora:x:1.0>)— A1111規約ですが、フォルダ間でファイル名が重複する場合に曖昧になる可能性があります。",
"loraSyntaxFormatOptions": {
"full": "フルパス(サブフォルダ/名前)",
"legacy": "レガシーA1111名前のみ"
}
}, },
"metadataArchive": { "metadataArchive": {
"enableArchiveDb": "メタデータアーカイブデータベースを有効化", "enableArchiveDb": "メタデータアーカイブデータベースを有効化",
@@ -640,8 +649,6 @@
}, },
"refresh": { "refresh": {
"title": "モデルリストを更新", "title": "モデルリストを更新",
"quick": "変更を同期",
"quickTooltip": "新しいモデルファイルや欠けているファイルをスキャンして一覧を最新に保ちます。",
"full": "キャッシュを再構築", "full": "キャッシュを再構築",
"fullTooltip": "メタデータファイルから全モデル情報を再読み込みします。リストが古いと感じるときや手動編集後に使用してください。" "fullTooltip": "メタデータファイルから全モデル情報を再読み込みします。リストが古いと感じるときや手動編集後に使用してください。"
}, },
@@ -682,16 +689,29 @@
"setContentRating": "すべてのモデルのコンテンツレーティングを設定", "setContentRating": "すべてのモデルのコンテンツレーティングを設定",
"copyAll": "すべての構文をコピー", "copyAll": "すべての構文をコピー",
"refreshAll": "すべてのメタデータを更新", "refreshAll": "すべてのメタデータを更新",
"repairMetadata": "選択したレシピのメタデータを修復",
"checkUpdates": "選択項目の更新を確認", "checkUpdates": "選択項目の更新を確認",
"moveAll": "すべてをフォルダに移動", "moveAll": "すべてをフォルダに移動",
"autoOrganize": "自動整理を実行", "autoOrganize": "自動整理を実行",
"skipMetadataRefresh": "選択したモデルのメタデータ更新をスキップ", "skipMetadataRefresh": "選択したモデルのメタデータ更新をスキップ",
"resumeMetadataRefresh": "選択したモデルのメタデータ更新を再開", "resumeMetadataRefresh": "選択したモデルのメタデータ更新を再開",
"setFavorite": "お気に入りに設定",
"setFavoriteCount": "お気に入りに設定 ({favorited}/{total})",
"unfavorite": "お気に入りから削除",
"deleteAll": "選択したものを削除", "deleteAll": "選択したものを削除",
"downloadMissingLoras": "不足している LoRA をダウンロード", "downloadMissingLoras": "不足している LoRA をダウンロード",
"downloadExamples": "例画像をダウンロード",
"clear": "選択をクリア", "clear": "選択をクリア",
"skipMetadataRefreshCount": "スキップ({count}モデル)", "skipMetadataRefreshCount": "スキップ({count}モデル)",
"resumeMetadataRefreshCount": "再開({count}モデル)", "resumeMetadataRefreshCount": "再開({count}モデル)",
"sendToWorkflow": "ワークフローに送信",
"sections": {
"workflow": "ワークフロー",
"metadata": "メタデータ",
"attributes": "属性",
"organize": "整理",
"download": "ダウンロード"
},
"autoOrganizeProgress": { "autoOrganizeProgress": {
"initializing": "自動整理を初期化中...", "initializing": "自動整理を初期化中...",
"starting": "{type}の自動整理を開始中...", "starting": "{type}の自動整理を開始中...",
@@ -804,8 +824,6 @@
}, },
"refresh": { "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", "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" "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"
}, },
@@ -1077,6 +1095,12 @@
"countMessage": "モデルが完全に削除されます。", "countMessage": "モデルが完全に削除されます。",
"action": "すべて削除" "action": "すべて削除"
}, },
"bulkDeleteRecipes": {
"title": "複数のレシピを削除",
"message": "選択したすべてのレシピと関連ファイルを削除してもよろしいですか?",
"countMessage": "レシピが完全に削除されます。",
"action": "すべて削除"
},
"checkUpdates": { "checkUpdates": {
"title": "すべての{type}の更新を確認しますか?", "title": "すべての{type}の更新を確認しますか?",
"message": "ライブラリ内のすべての{type}で更新を確認します。コレクションが大きい場合は時間がかかることがあります。", "message": "ライブラリ内のすべての{type}で更新を確認します。コレクションが大きい場合は時間がかかることがあります。",
@@ -1157,6 +1181,7 @@
"editModelName": "モデル名を編集", "editModelName": "モデル名を編集",
"editFileName": "ファイル名を編集", "editFileName": "ファイル名を編集",
"editBaseModel": "ベースモデルを編集", "editBaseModel": "ベースモデルを編集",
"editVersionName": "バージョン名を編集",
"viewOnCivitai": "Civitaiで表示", "viewOnCivitai": "Civitaiで表示",
"viewOnCivitaiText": "Civitaiで表示", "viewOnCivitaiText": "Civitaiで表示",
"viewCreatorProfile": "作成者プロフィールを表示", "viewCreatorProfile": "作成者プロフィールを表示",
@@ -1669,6 +1694,9 @@
"batchImportBrowseFailed": "Failed to browse directory: {message}", "batchImportBrowseFailed": "Failed to browse directory: {message}",
"batchImportDirectorySelected": "Directory selected: {path}", "batchImportDirectorySelected": "Directory selected: {path}",
"noRecipesSelected": "レシピが選択されていません", "noRecipesSelected": "レシピが選択されていません",
"repairBulkComplete": "修復完了:{repaired} 件修復、{skipped} 件スキップ(合計 {total} 件)",
"repairBulkSkipped": "選択した {total} 件のレシピは修復不要です",
"repairBulkFailed": "選択したレシピの修復に失敗しました:{message}",
"noMissingLorasInSelection": "選択したレシピに不足している LoRA が見つかりませんでした", "noMissingLorasInSelection": "選択したレシピに不足している LoRA が見つかりませんでした",
"noLoraRootConfigured": "LoRA ルートディレクトリが設定されていません。設定でデフォルトの LoRA ルートを設定してください。" "noLoraRootConfigured": "LoRA ルートディレクトリが設定されていません。設定でデフォルトの LoRA ルートを設定してください。"
}, },
@@ -1699,6 +1727,11 @@
"bulkContentRatingSet": "{count} 件のモデルのコンテンツレーティングを {level} に設定しました", "bulkContentRatingSet": "{count} 件のモデルのコンテンツレーティングを {level} に設定しました",
"bulkContentRatingPartial": "{success} 件のモデルのコンテンツレーティングを {level} に設定、{failed} 件は失敗しました", "bulkContentRatingPartial": "{success} 件のモデルのコンテンツレーティングを {level} に設定、{failed} 件は失敗しました",
"bulkContentRatingFailed": "選択したモデルのコンテンツレーティングを更新できませんでした", "bulkContentRatingFailed": "選択したモデルのコンテンツレーティングを更新できませんでした",
"bulkFavoriteUpdating": "{count} 個のモデルをお気に入りに追加中...",
"bulkUnfavoriteUpdating": "{count} 個のモデルをお気に入りから削除中...",
"bulkFavoritePartialAdded": "{success} 個のモデルをお気に入りに追加、{failed} 個失敗",
"bulkFavoritePartialRemoved": "{success} 個のモデルをお気に入りから削除、{failed} 個失敗",
"bulkFavoriteFailed": "お気に入り状態の更新に失敗しました",
"bulkUpdatesChecking": "選択された{type}の更新を確認しています...", "bulkUpdatesChecking": "選択された{type}の更新を確認しています...",
"bulkUpdatesSuccess": "{count} 件の選択された{type}に利用可能な更新があります", "bulkUpdatesSuccess": "{count} 件の選択された{type}に利用可能な更新があります",
"bulkUpdatesNone": "選択された{type}には更新が見つかりませんでした", "bulkUpdatesNone": "選択された{type}には更新が見つかりませんでした",
@@ -1901,9 +1934,32 @@
"warning": "要注意", "warning": "要注意",
"error": "対応が必要" "error": "対応が必要"
}, },
"issues": {
"civitai_api_key": {
"title": "Civitai API キー"
},
"cache_health": {
"title": "モデルキャッシュの健全性"
},
"filename_conflicts": {
"title": "ファイル名重複競合"
},
"ui_version": {
"title": "UI バージョン"
}
},
"actions": { "actions": {
"runAgain": "再実行", "runAgain": "再実行",
"exportBundle": "パッケージをエクスポート" "exportBundle": "パッケージをエクスポート",
"open-settings": "設定を開く",
"open-settings-syntax-format": "フルパス構文に切り替え",
"repair-cache": "キャッシュを再構築",
"resolve-filename-conflicts": "競合を解決",
"reload-page": "UI をリロード"
},
"labels": {
"conflicts": "競合",
"version": "バージョン"
}, },
"toast": { "toast": {
"loadFailed": "診断の読み込みに失敗しました: {message}", "loadFailed": "診断の読み込みに失敗しました: {message}",
@@ -1915,6 +1971,15 @@
"conflictsResolveFailed": "ファイル名競合の解決に失敗しました: {message}" "conflictsResolveFailed": "ファイル名競合の解決に失敗しました: {message}"
} }
}, },
"conflictConfirm": {
"title": "ファイル名の競合を解決",
"message": "重複したファイル名に4文字のハッシュを追加してリネームします。",
"note": "この操作はディスク上のファイルをリネームします。A1111 構文形式を使用している場合、既存のワークフロー内のモデル参照を更新する必要があるかもしれません。",
"detail": "例:<code>filename_v1.2</code> → <code>filename_v1.2-ab3c</code>",
"impact": "<strong>{groups}</strong> 組の重複にわたって <strong>{count}</strong> 個のファイルをリネームします",
"confirm": "ファイルをリネーム",
"cancel": "キャンセル"
},
"banners": { "banners": {
"versionMismatch": { "versionMismatch": {
"title": "アプリケーション更新が検出されました", "title": "アプリケーション更新が検出されました",

View File

@@ -232,7 +232,10 @@
"license": "라이선스", "license": "라이선스",
"noCreditRequired": "크레딧 표기 없음", "noCreditRequired": "크레딧 표기 없음",
"allowSellingGeneratedContent": "판매 허용", "allowSellingGeneratedContent": "판매 허용",
"allowSellingGeneratedContentTooltip": "생성된 이미지 판매 허용",
"noCreditRequiredTooltip": "크리에이터 저작자 표시 없이 모델 사용 가능",
"noTags": "태그 없음", "noTags": "태그 없음",
"autoTags": "자동 태그",
"noBaseModelMatches": "현재 검색과 일치하는 베이스 모델이 없습니다.", "noBaseModelMatches": "현재 검색과 일치하는 베이스 모델이 없습니다.",
"clearAll": "모든 필터 지우기", "clearAll": "모든 필터 지우기",
"any": "아무", "any": "아무",
@@ -266,10 +269,10 @@
}, },
"downloadBackend": { "downloadBackend": {
"label": "다운로드 백엔드", "label": "다운로드 백엔드",
"help": "모델 파일을 다운로드하는 방식을 선택합니다. Python은 내장 다운로더를 사용하고, aria2는 실험적인 외부 다운로더 프로세스를 사용합니다.", "help": "모델 파일을 다운로드하는 방식을 선택합니다. Python은 내장 다운로더를 사용하고, aria2는 권장되는 외부 다운로더 프로세스를 사용합니다.",
"options": { "options": {
"python": "Python(내장)", "python": "Python(내장)",
"aria2": "aria2(실험적)" "aria2": "aria2(권장)"
} }
}, },
"aria2cPath": { "aria2cPath": {
@@ -576,7 +579,13 @@
}, },
"misc": { "misc": {
"includeTriggerWords": "LoRA 문법에 트리거 단어 포함", "includeTriggerWords": "LoRA 문법에 트리거 단어 포함",
"includeTriggerWordsHelp": "LoRA 문법을 클립보드에 복사할 때 학습된 트리거 단어를 포함합니다" "includeTriggerWordsHelp": "LoRA 문법을 클립보드에 복사할 때 학습된 트리거 단어를 포함합니다",
"loraSyntaxFormat": "LoRA 구문 형식",
"loraSyntaxFormatHelp": "LoRA 구문 형식. 전체 경로는 하위 폴더 경로(<lora:style/anime/x:1.0>)를 포함하여 손실 없는 모델 해상도를 제공합니다. 레거시는 파일 이름만(<lora:x:1.0>) 사용 — A1111 규칙이지만, 폴더 간 파일명 중복 시 모호할 수 있습니다.",
"loraSyntaxFormatOptions": {
"full": "전체 경로(하위 폴더/이름)",
"legacy": "레거시 A1111(이름만)"
}
}, },
"metadataArchive": { "metadataArchive": {
"enableArchiveDb": "메타데이터 아카이브 데이터베이스 활성화", "enableArchiveDb": "메타데이터 아카이브 데이터베이스 활성화",
@@ -640,8 +649,6 @@
}, },
"refresh": { "refresh": {
"title": "모델 목록 새로고침", "title": "모델 목록 새로고침",
"quick": "변경 사항 동기화",
"quickTooltip": "새로운 모델 파일이나 누락된 파일을 찾아 목록을 최신 상태로 유지합니다.",
"full": "캐시 재구성", "full": "캐시 재구성",
"fullTooltip": "메타데이터 파일에서 모든 모델 정보를 다시 불러옵니다. 라이브러리가 오래되어 보이거나 수동 수정 후에 사용하세요." "fullTooltip": "메타데이터 파일에서 모든 모델 정보를 다시 불러옵니다. 라이브러리가 오래되어 보이거나 수동 수정 후에 사용하세요."
}, },
@@ -682,16 +689,29 @@
"setContentRating": "모든 모델에 콘텐츠 등급 설정", "setContentRating": "모든 모델에 콘텐츠 등급 설정",
"copyAll": "모든 문법 복사", "copyAll": "모든 문법 복사",
"refreshAll": "모든 메타데이터 새로고침", "refreshAll": "모든 메타데이터 새로고침",
"repairMetadata": "선택한 레시피 메타데이터 복구",
"checkUpdates": "선택 항목 업데이트 확인", "checkUpdates": "선택 항목 업데이트 확인",
"moveAll": "모두 폴더로 이동", "moveAll": "모두 폴더로 이동",
"autoOrganize": "자동 정리 선택", "autoOrganize": "자동 정리 선택",
"skipMetadataRefresh": "선택한 모델의 메타데이터 새로고침 건너뛰기", "skipMetadataRefresh": "선택한 모델의 메타데이터 새로고침 건너뛰기",
"resumeMetadataRefresh": "선택한 모델의 메타데이터 새로고침 재개", "resumeMetadataRefresh": "선택한 모델의 메타데이터 새로고침 재개",
"setFavorite": "즐겨찾기로 설정",
"setFavoriteCount": "즐겨찾기로 설정 ({favorited}/{total})",
"unfavorite": "즐겨찾기 해제",
"deleteAll": "선택된 항목 삭제", "deleteAll": "선택된 항목 삭제",
"downloadMissingLoras": "누락된 LoRA 다운로드", "downloadMissingLoras": "누락된 LoRA 다운로드",
"downloadExamples": "예시 이미지 다운로드",
"clear": "선택 지우기", "clear": "선택 지우기",
"skipMetadataRefreshCount": "건너뛰기({count}개 모델)", "skipMetadataRefreshCount": "건너뛰기({count}개 모델)",
"resumeMetadataRefreshCount": "재개({count}개 모델)", "resumeMetadataRefreshCount": "재개({count}개 모델)",
"sendToWorkflow": "워크플로우로 보내기",
"sections": {
"workflow": "워크플로우",
"metadata": "메타데이터",
"attributes": "속성",
"organize": "정리",
"download": "다운로드"
},
"autoOrganizeProgress": { "autoOrganizeProgress": {
"initializing": "자동 정리 초기화 중...", "initializing": "자동 정리 초기화 중...",
"starting": "{type}에 대한 자동 정리 시작...", "starting": "{type}에 대한 자동 정리 시작...",
@@ -804,8 +824,6 @@
}, },
"refresh": { "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", "full": "캐시 재구성",
"fullTooltip": "캐시 재구성 - 모든 레시피 파일을 완전히 다시 스캔" "fullTooltip": "캐시 재구성 - 모든 레시피 파일을 완전히 다시 스캔"
}, },
@@ -1077,6 +1095,12 @@
"countMessage": "개의 모델이 영구적으로 삭제됩니다.", "countMessage": "개의 모델이 영구적으로 삭제됩니다.",
"action": "모두 삭제" "action": "모두 삭제"
}, },
"bulkDeleteRecipes": {
"title": "여러 레시피 삭제",
"message": "선택된 모든 레시피와 관련 파일을 삭제하시겠습니까?",
"countMessage": "개의 레시피가 영구적으로 삭제됩니다.",
"action": "모두 삭제"
},
"checkUpdates": { "checkUpdates": {
"title": "{type} 전체 업데이트를 확인할까요?", "title": "{type} 전체 업데이트를 확인할까요?",
"message": "라이브러리에 있는 모든 {type}의 업데이트를 확인합니다. 컬렉션이 클수록 시간이 조금 더 걸릴 수 있습니다.", "message": "라이브러리에 있는 모든 {type}의 업데이트를 확인합니다. 컬렉션이 클수록 시간이 조금 더 걸릴 수 있습니다.",
@@ -1157,6 +1181,7 @@
"editModelName": "모델명 편집", "editModelName": "모델명 편집",
"editFileName": "파일명 편집", "editFileName": "파일명 편집",
"editBaseModel": "베이스 모델 편집", "editBaseModel": "베이스 모델 편집",
"editVersionName": "버전명 편집",
"viewOnCivitai": "Civitai에서 보기", "viewOnCivitai": "Civitai에서 보기",
"viewOnCivitaiText": "Civitai에서 보기", "viewOnCivitaiText": "Civitai에서 보기",
"viewCreatorProfile": "제작자 프로필 보기", "viewCreatorProfile": "제작자 프로필 보기",
@@ -1669,6 +1694,9 @@
"batchImportBrowseFailed": "Failed to browse directory: {message}", "batchImportBrowseFailed": "Failed to browse directory: {message}",
"batchImportDirectorySelected": "Directory selected: {path}", "batchImportDirectorySelected": "Directory selected: {path}",
"noRecipesSelected": "선택한 레시피가 없습니다", "noRecipesSelected": "선택한 레시피가 없습니다",
"repairBulkComplete": "복구 완료: {repaired}개 복구, {skipped}개 건너뜀 (총 {total}개)",
"repairBulkSkipped": "선택한 {total}개 레시피는 복구가 필요하지 않습니다",
"repairBulkFailed": "선택한 레시피 복구 실패: {message}",
"noMissingLorasInSelection": "선택한 레시피에서 누락된 LoRA를 찾을 수 없습니다", "noMissingLorasInSelection": "선택한 레시피에서 누락된 LoRA를 찾을 수 없습니다",
"noLoraRootConfigured": "LoRA 루트 디렉토리가 구성되지 않았습니다. 설정에서 기본 LoRA 루트를 설정하세요." "noLoraRootConfigured": "LoRA 루트 디렉토리가 구성되지 않았습니다. 설정에서 기본 LoRA 루트를 설정하세요."
}, },
@@ -1699,6 +1727,11 @@
"bulkContentRatingSet": "{count}개 모델의 콘텐츠 등급을 {level}(으)로 설정했습니다", "bulkContentRatingSet": "{count}개 모델의 콘텐츠 등급을 {level}(으)로 설정했습니다",
"bulkContentRatingPartial": "{success}개 모델의 콘텐츠 등급을 {level}(으)로 설정했고, {failed}개는 실패했습니다", "bulkContentRatingPartial": "{success}개 모델의 콘텐츠 등급을 {level}(으)로 설정했고, {failed}개는 실패했습니다",
"bulkContentRatingFailed": "선택한 모델의 콘텐츠 등급을 업데이트하지 못했습니다", "bulkContentRatingFailed": "선택한 모델의 콘텐츠 등급을 업데이트하지 못했습니다",
"bulkFavoriteUpdating": "{count}개 모델을 즐겨찾기에 추가 중...",
"bulkUnfavoriteUpdating": "{count}개 모델을 즐겨찾기에서 제거 중...",
"bulkFavoritePartialAdded": "{success}개 모델을 즐겨찾기에 추가, {failed}개 실패",
"bulkFavoritePartialRemoved": "{success}개 모델을 즐겨찾기에서 제거, {failed}개 실패",
"bulkFavoriteFailed": "즐겨찾기 상태 업데이트 실패",
"bulkUpdatesChecking": "선택한 {type}의 업데이트를 확인하는 중...", "bulkUpdatesChecking": "선택한 {type}의 업데이트를 확인하는 중...",
"bulkUpdatesSuccess": "선택한 {count}개의 {type}에 사용할 수 있는 업데이트가 있습니다", "bulkUpdatesSuccess": "선택한 {count}개의 {type}에 사용할 수 있는 업데이트가 있습니다",
"bulkUpdatesNone": "선택한 {type}에 대한 업데이트가 없습니다", "bulkUpdatesNone": "선택한 {type}에 대한 업데이트가 없습니다",
@@ -1901,9 +1934,32 @@
"warning": "주의 필요", "warning": "주의 필요",
"error": "조치 필요" "error": "조치 필요"
}, },
"issues": {
"civitai_api_key": {
"title": "Civitai API 키"
},
"cache_health": {
"title": "모델 캐시 상태"
},
"filename_conflicts": {
"title": "파일명 중복 충돌"
},
"ui_version": {
"title": "UI 버전"
}
},
"actions": { "actions": {
"runAgain": "다시 실행", "runAgain": "다시 실행",
"exportBundle": "번들 내보내기" "exportBundle": "번들 내보내기",
"open-settings": "설정 열기",
"open-settings-syntax-format": "전체 경로 구문으로 전환",
"repair-cache": "캐시 재구축",
"resolve-filename-conflicts": "충돌 해결",
"reload-page": "UI 새로고침"
},
"labels": {
"conflicts": "충돌",
"version": "버전"
}, },
"toast": { "toast": {
"loadFailed": "진단 로드 실패: {message}", "loadFailed": "진단 로드 실패: {message}",
@@ -1915,6 +1971,15 @@
"conflictsResolveFailed": "파일명 충돌 해결 실패: {message}" "conflictsResolveFailed": "파일명 충돌 해결 실패: {message}"
} }
}, },
"conflictConfirm": {
"title": "파일명 충돌 해결",
"message": "중복 파일명에 4자리 해시를 추가하여 이름을 변경합니다.",
"note": "이 작업은 디스크에 있는 파일의 이름을 변경합니다. A1111 구문 형식을 사용하는 경우 기존 워크플로우의 모델 참조를 업데이트해야 할 수 있습니다.",
"detail": "예시: <code>filename_v1.2</code> → <code>filename_v1.2-ab3c</code>",
"impact": "<strong>{groups}</strong>개 중복 그룹에서 <strong>{count}</strong>개 파일 이름을 변경합니다",
"confirm": "파일 이름 변경",
"cancel": "취소"
},
"banners": { "banners": {
"versionMismatch": { "versionMismatch": {
"title": "애플리케이션 업데이트 감지", "title": "애플리케이션 업데이트 감지",

View File

@@ -232,7 +232,10 @@
"license": "Лицензия", "license": "Лицензия",
"noCreditRequired": "Без указания авторства", "noCreditRequired": "Без указания авторства",
"allowSellingGeneratedContent": "Продажа разрешена", "allowSellingGeneratedContent": "Продажа разрешена",
"allowSellingGeneratedContentTooltip": "Разрешить продажу сгенерированных изображений",
"noCreditRequiredTooltip": "Использование модели без указания автора",
"noTags": "Без тегов", "noTags": "Без тегов",
"autoTags": "Авто-теги",
"noBaseModelMatches": "Нет базовых моделей, соответствующих текущему поиску.", "noBaseModelMatches": "Нет базовых моделей, соответствующих текущему поиску.",
"clearAll": "Очистить все фильтры", "clearAll": "Очистить все фильтры",
"any": "Любой", "any": "Любой",
@@ -266,10 +269,10 @@
}, },
"downloadBackend": { "downloadBackend": {
"label": "Бэкенд загрузки", "label": "Бэкенд загрузки",
"help": "Выберите способ загрузки файлов моделей. Python использует встроенный загрузчик. aria2 использует экспериментальный внешний процесс загрузки.", "help": "Выберите способ загрузки файлов моделей. Python использует встроенный загрузчик. aria2 использует рекомендуемый внешний процесс загрузки.",
"options": { "options": {
"python": "Python (встроенный)", "python": "Python (встроенный)",
"aria2": "aria2 (экспериментальный)" "aria2": "aria2 (рекомендуемый)"
} }
}, },
"aria2cPath": { "aria2cPath": {
@@ -576,7 +579,13 @@
}, },
"misc": { "misc": {
"includeTriggerWords": "Включать триггерные слова в синтаксис LoRA", "includeTriggerWords": "Включать триггерные слова в синтаксис LoRA",
"includeTriggerWordsHelp": "Включать обученные триггерные слова при копировании синтаксиса LoRA в буфер обмена" "includeTriggerWordsHelp": "Включать обученные триггерные слова при копировании синтаксиса LoRA в буфер обмена",
"loraSyntaxFormat": "Формат синтаксиса LoRA",
"loraSyntaxFormatHelp": "Формат синтаксиса LoRA. Полный путь включает подпапку (<lora:style/anime/x:1.0>) для безпотерьного разрешения модели. Устаревший использует только имя файла (<lora:x:1.0>) — соглашение A1111, может быть неоднозначным при дублировании имён файлов в разных папках.",
"loraSyntaxFormatOptions": {
"full": "Полный путь (подпапка/имя)",
"legacy": "Устаревший A1111 (только имя)"
}
}, },
"metadataArchive": { "metadataArchive": {
"enableArchiveDb": "Включить архив метаданных", "enableArchiveDb": "Включить архив метаданных",
@@ -640,8 +649,6 @@
}, },
"refresh": { "refresh": {
"title": "Обновить список моделей", "title": "Обновить список моделей",
"quick": "Синхронизировать изменения",
"quickTooltip": "Находит новые или отсутствующие файлы моделей, чтобы список оставался актуальным.",
"full": "Перестроить кэш", "full": "Перестроить кэш",
"fullTooltip": "Перечитывает все данные моделей из файлов метаданных — используйте, если библиотека выглядит устаревшей или после ручных правок." "fullTooltip": "Перечитывает все данные моделей из файлов метаданных — используйте, если библиотека выглядит устаревшей или после ручных правок."
}, },
@@ -682,16 +689,29 @@
"setContentRating": "Установить рейтинг контента для всех", "setContentRating": "Установить рейтинг контента для всех",
"copyAll": "Копировать весь синтаксис", "copyAll": "Копировать весь синтаксис",
"refreshAll": "Обновить все метаданные", "refreshAll": "Обновить все метаданные",
"repairMetadata": "Восстановить метаданные для выбранных",
"checkUpdates": "Проверить обновления для выбранных", "checkUpdates": "Проверить обновления для выбранных",
"moveAll": "Переместить все в папку", "moveAll": "Переместить все в папку",
"autoOrganize": "Автоматически организовать выбранные", "autoOrganize": "Автоматически организовать выбранные",
"skipMetadataRefresh": "Пропустить обновление метаданных для выбранных", "skipMetadataRefresh": "Пропустить обновление метаданных для выбранных",
"resumeMetadataRefresh": "Возобновить обновление метаданных для выбранных", "resumeMetadataRefresh": "Возобновить обновление метаданных для выбранных",
"setFavorite": "Добавить в избранное",
"setFavoriteCount": "Добавить в избранное ({favorited}/{total})",
"unfavorite": "Удалить из избранного",
"deleteAll": "Удалить выбранные", "deleteAll": "Удалить выбранные",
"downloadMissingLoras": "Скачать отсутствующие LoRAs", "downloadMissingLoras": "Скачать отсутствующие LoRAs",
"downloadExamples": "Загрузить примеры изображений",
"clear": "Очистить выбор", "clear": "Очистить выбор",
"skipMetadataRefreshCount": "Пропустить({count} моделей)", "skipMetadataRefreshCount": "Пропустить({count} моделей)",
"resumeMetadataRefreshCount": "Возобновить({count} моделей)", "resumeMetadataRefreshCount": "Возобновить({count} моделей)",
"sendToWorkflow": "Отправить в Workflow",
"sections": {
"workflow": "Workflow",
"metadata": "Метаданные",
"attributes": "Атрибуты",
"organize": "Организовать",
"download": "Скачать"
},
"autoOrganizeProgress": { "autoOrganizeProgress": {
"initializing": "Инициализация автоматической организации...", "initializing": "Инициализация автоматической организации...",
"starting": "Запуск автоматической организации для {type}...", "starting": "Запуск автоматической организации для {type}...",
@@ -804,8 +824,6 @@
}, },
"refresh": { "refresh": {
"title": "Обновить список рецептов", "title": "Обновить список рецептов",
"quick": "Синхронизировать изменения",
"quickTooltip": "Синхронизировать изменения - быстрое обновление без перестроения кэша",
"full": "Перестроить кэш", "full": "Перестроить кэш",
"fullTooltip": "Перестроить кэш - полное повторное сканирование всех файлов рецептов" "fullTooltip": "Перестроить кэш - полное повторное сканирование всех файлов рецептов"
}, },
@@ -1077,6 +1095,12 @@
"countMessage": "моделей будут удалены навсегда.", "countMessage": "моделей будут удалены навсегда.",
"action": "Удалить все" "action": "Удалить все"
}, },
"bulkDeleteRecipes": {
"title": "Удалить несколько рецептов",
"message": "Вы уверены, что хотите удалить все выбранные рецепты и связанные с ними файлы?",
"countMessage": "рецептов будут удалены навсегда.",
"action": "Удалить все"
},
"checkUpdates": { "checkUpdates": {
"title": "Проверить обновления для всех {typePlural}?", "title": "Проверить обновления для всех {typePlural}?",
"message": "Будут проверены обновления для всех {typePlural} в вашей библиотеке. Для больших коллекций это может занять немного больше времени.", "message": "Будут проверены обновления для всех {typePlural} в вашей библиотеке. Для больших коллекций это может занять немного больше времени.",
@@ -1157,6 +1181,7 @@
"editModelName": "Редактировать название модели", "editModelName": "Редактировать название модели",
"editFileName": "Редактировать имя файла", "editFileName": "Редактировать имя файла",
"editBaseModel": "Редактировать базовую модель", "editBaseModel": "Редактировать базовую модель",
"editVersionName": "Редактировать название версии",
"viewOnCivitai": "Посмотреть на Civitai", "viewOnCivitai": "Посмотреть на Civitai",
"viewOnCivitaiText": "Посмотреть на Civitai", "viewOnCivitaiText": "Посмотреть на Civitai",
"viewCreatorProfile": "Посмотреть профиль создателя", "viewCreatorProfile": "Посмотреть профиль создателя",
@@ -1669,6 +1694,9 @@
"batchImportBrowseFailed": "Failed to browse directory: {message}", "batchImportBrowseFailed": "Failed to browse directory: {message}",
"batchImportDirectorySelected": "Directory selected: {path}", "batchImportDirectorySelected": "Directory selected: {path}",
"noRecipesSelected": "Рецепты не выбраны", "noRecipesSelected": "Рецепты не выбраны",
"repairBulkComplete": "Восстановление завершено: {repaired} восстановлено, {skipped} пропущено (из {total})",
"repairBulkSkipped": "Ни один из {total} выбранных рецептов не требует восстановления",
"repairBulkFailed": "Не удалось восстановить выбранные рецепты: {message}",
"noMissingLorasInSelection": "В выбранных рецептах не найдены отсутствующие LoRAs", "noMissingLorasInSelection": "В выбранных рецептах не найдены отсутствующие LoRAs",
"noLoraRootConfigured": "Корневой каталог LoRA не настроен. Пожалуйста, установите корневой каталог LoRA по умолчанию в настройках." "noLoraRootConfigured": "Корневой каталог LoRA не настроен. Пожалуйста, установите корневой каталог LoRA по умолчанию в настройках."
}, },
@@ -1699,6 +1727,11 @@
"bulkContentRatingSet": "Рейтинг контента установлен на {level} для {count} модель(ей)", "bulkContentRatingSet": "Рейтинг контента установлен на {level} для {count} модель(ей)",
"bulkContentRatingPartial": "Рейтинг контента {level} установлен для {success} модель(ей), {failed} не удалось", "bulkContentRatingPartial": "Рейтинг контента {level} установлен для {success} модель(ей), {failed} не удалось",
"bulkContentRatingFailed": "Не удалось обновить рейтинг контента для выбранных моделей", "bulkContentRatingFailed": "Не удалось обновить рейтинг контента для выбранных моделей",
"bulkFavoriteUpdating": "Добавление {count} моделей в избранное...",
"bulkUnfavoriteUpdating": "Удаление {count} моделей из избранного...",
"bulkFavoritePartialAdded": "{success} моделей добавлено в избранное, {failed} не удалось",
"bulkFavoritePartialRemoved": "{success} моделей удалено из избранного, {failed} не удалось",
"bulkFavoriteFailed": "Не удалось обновить статус избранного",
"bulkUpdatesChecking": "Проверка обновлений для выбранных {type}...", "bulkUpdatesChecking": "Проверка обновлений для выбранных {type}...",
"bulkUpdatesSuccess": "Доступны обновления для {count} выбранных {type}", "bulkUpdatesSuccess": "Доступны обновления для {count} выбранных {type}",
"bulkUpdatesNone": "Обновления для выбранных {type} не найдены", "bulkUpdatesNone": "Обновления для выбранных {type} не найдены",
@@ -1901,9 +1934,32 @@
"warning": "Требует внимания", "warning": "Требует внимания",
"error": "Требуется действие" "error": "Требуется действие"
}, },
"issues": {
"civitai_api_key": {
"title": "Civitai API Key"
},
"cache_health": {
"title": "Model Cache Health"
},
"filename_conflicts": {
"title": "Duplicate Filename Conflicts"
},
"ui_version": {
"title": "UI Version"
}
},
"actions": { "actions": {
"runAgain": "Запустить снова", "runAgain": "Запустить снова",
"exportBundle": "Экспортировать пакет" "exportBundle": "Экспортировать пакет",
"open-settings": "Open Settings",
"open-settings-syntax-format": "Switch to Full Path Syntax",
"repair-cache": "Rebuild Cache",
"resolve-filename-conflicts": "Resolve Conflicts",
"reload-page": "Reload UI"
},
"labels": {
"conflicts": "Conflicts",
"version": "Version"
}, },
"toast": { "toast": {
"loadFailed": "Не удалось загрузить диагностику: {message}", "loadFailed": "Не удалось загрузить диагностику: {message}",
@@ -1915,6 +1971,15 @@
"conflictsResolveFailed": "Не удалось разрешить конфликты имён файлов: {message}" "conflictsResolveFailed": "Не удалось разрешить конфликты имён файлов: {message}"
} }
}, },
"conflictConfirm": {
"title": "Разрешить конфликты имён файлов",
"message": "Переименование с добавлением 4-символьного хеша к каждому дублирующемуся имени файла.",
"note": "Эта операция переименовывает файлы на диске. Если вы используете синтаксис A1111, ссылки на модели в существующих рабочих процессах могут потребовать обновления.",
"detail": "Пример: <code>filename_v1.2</code> → <code>filename_v1.2-ab3c</code>",
"impact": "Будет переименовано <strong>{count}</strong> файл(ов) в <strong>{groups}</strong> группе(ах) дубликатов",
"confirm": "Переименовать файлы",
"cancel": "Отмена"
},
"banners": { "banners": {
"versionMismatch": { "versionMismatch": {
"title": "Обнаружено обновление приложения", "title": "Обнаружено обновление приложения",

View File

@@ -232,7 +232,10 @@
"license": "许可证", "license": "许可证",
"noCreditRequired": "无需署名", "noCreditRequired": "无需署名",
"allowSellingGeneratedContent": "允许销售", "allowSellingGeneratedContent": "允许销售",
"allowSellingGeneratedContentTooltip": "允许出售生成的图片",
"noCreditRequiredTooltip": "使用模型时无需注明原作者",
"noTags": "无标签", "noTags": "无标签",
"autoTags": "自动标签",
"noBaseModelMatches": "没有基础模型符合当前搜索。", "noBaseModelMatches": "没有基础模型符合当前搜索。",
"clearAll": "清除所有筛选", "clearAll": "清除所有筛选",
"any": "任一", "any": "任一",
@@ -266,10 +269,10 @@
}, },
"downloadBackend": { "downloadBackend": {
"label": "下载后端", "label": "下载后端",
"help": "选择模型文件的下载方式。Python 使用内置下载器。aria2 使用实验性的外部下载进程。", "help": "选择模型文件的下载方式。Python 使用内置下载器。aria2 使用推荐的外部下载进程。",
"options": { "options": {
"python": "Python内置", "python": "Python内置",
"aria2": "aria2实验性" "aria2": "aria2推荐"
} }
}, },
"aria2cPath": { "aria2cPath": {
@@ -576,7 +579,13 @@
}, },
"misc": { "misc": {
"includeTriggerWords": "复制 LoRA 语法时包含触发词", "includeTriggerWords": "复制 LoRA 语法时包含触发词",
"includeTriggerWordsHelp": "复制 LoRA 语法到剪贴板时包含训练触发词" "includeTriggerWordsHelp": "复制 LoRA 语法到剪贴板时包含训练触发词",
"loraSyntaxFormat": "LoRA 语法格式",
"loraSyntaxFormatHelp": "LoRA 语法格式。完整路径Full包含子文件夹路径 (<lora:style/anime/x:1.0>)解析精确无歧义。旧版Legacy仅使用文件名 (<lora:x:1.0>)——A1111 原始约定,同名文件跨文件夹时可能产生歧义。",
"loraSyntaxFormatOptions": {
"full": "完整路径(子文件夹/名称)",
"legacy": "旧版 A1111仅名称"
}
}, },
"metadataArchive": { "metadataArchive": {
"enableArchiveDb": "启用元数据归档数据库", "enableArchiveDb": "启用元数据归档数据库",
@@ -640,8 +649,6 @@
}, },
"refresh": { "refresh": {
"title": "刷新模型列表", "title": "刷新模型列表",
"quick": "同步变更",
"quickTooltip": "扫描新的或缺失的模型文件,保持列表最新。",
"full": "重建缓存", "full": "重建缓存",
"fullTooltip": "从元数据文件重新加载所有模型信息;用于列表过时或手动编辑后。" "fullTooltip": "从元数据文件重新加载所有模型信息;用于列表过时或手动编辑后。"
}, },
@@ -682,16 +689,29 @@
"setContentRating": "为所选中设置内容评级", "setContentRating": "为所选中设置内容评级",
"copyAll": "复制所选中语法", "copyAll": "复制所选中语法",
"refreshAll": "刷新所选中元数据", "refreshAll": "刷新所选中元数据",
"repairMetadata": "修复所选中元数据",
"checkUpdates": "检查所选更新", "checkUpdates": "检查所选更新",
"moveAll": "移动所选中到文件夹", "moveAll": "移动所选中到文件夹",
"autoOrganize": "自动整理所选模型", "autoOrganize": "自动整理所选模型",
"skipMetadataRefresh": "跳过所选模型的元数据刷新", "skipMetadataRefresh": "跳过所选模型的元数据刷新",
"resumeMetadataRefresh": "恢复所选模型的元数据刷新", "resumeMetadataRefresh": "恢复所选模型的元数据刷新",
"setFavorite": "设为收藏",
"setFavoriteCount": "设为收藏 ({favorited}/{total})",
"unfavorite": "取消收藏",
"deleteAll": "删除已选", "deleteAll": "删除已选",
"downloadMissingLoras": "下载缺失的 LoRAs", "downloadMissingLoras": "下载缺失的 LoRAs",
"downloadExamples": "下载示例图片",
"clear": "清除选择", "clear": "清除选择",
"skipMetadataRefreshCount": "跳过({count} 个模型)", "skipMetadataRefreshCount": "跳过({count} 个模型)",
"resumeMetadataRefreshCount": "恢复({count} 个模型)", "resumeMetadataRefreshCount": "恢复({count} 个模型)",
"sendToWorkflow": "发送到工作流",
"sections": {
"workflow": "工作流",
"metadata": "元数据",
"attributes": "属性",
"organize": "整理",
"download": "下载"
},
"autoOrganizeProgress": { "autoOrganizeProgress": {
"initializing": "正在初始化自动整理...", "initializing": "正在初始化自动整理...",
"starting": "正在为 {type} 启动自动整理...", "starting": "正在为 {type} 启动自动整理...",
@@ -804,8 +824,6 @@
}, },
"refresh": { "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", "full": "重建缓存",
"fullTooltip": "重建缓存 - 重新扫描所有配方文件" "fullTooltip": "重建缓存 - 重新扫描所有配方文件"
}, },
@@ -1077,6 +1095,12 @@
"countMessage": "模型将被永久删除。", "countMessage": "模型将被永久删除。",
"action": "全部删除" "action": "全部删除"
}, },
"bulkDeleteRecipes": {
"title": "删除多个配方",
"message": "你确定要删除所有选中的配方及其相关文件吗?",
"countMessage": "配方将被永久删除。",
"action": "全部删除"
},
"checkUpdates": { "checkUpdates": {
"title": "检查所有 {type} 的更新?", "title": "检查所有 {type} 的更新?",
"message": "这会为库中的每个 {type} 检查更新,大型集合可能需要一些时间。", "message": "这会为库中的每个 {type} 检查更新,大型集合可能需要一些时间。",
@@ -1157,6 +1181,7 @@
"editModelName": "编辑模型名称", "editModelName": "编辑模型名称",
"editFileName": "编辑文件名", "editFileName": "编辑文件名",
"editBaseModel": "编辑基础模型", "editBaseModel": "编辑基础模型",
"editVersionName": "编辑版本名称",
"viewOnCivitai": "在 Civitai 查看", "viewOnCivitai": "在 Civitai 查看",
"viewOnCivitaiText": "在 Civitai 查看", "viewOnCivitaiText": "在 Civitai 查看",
"viewCreatorProfile": "查看创作者主页", "viewCreatorProfile": "查看创作者主页",
@@ -1669,6 +1694,9 @@
"batchImportBrowseFailed": "浏览目录失败:{message}", "batchImportBrowseFailed": "浏览目录失败:{message}",
"batchImportDirectorySelected": "已选择目录:{path}", "batchImportDirectorySelected": "已选择目录:{path}",
"noRecipesSelected": "未选择任何配方", "noRecipesSelected": "未选择任何配方",
"repairBulkComplete": "修复完成:{repaired} 个已修复,{skipped} 个已跳过(共 {total} 个)",
"repairBulkSkipped": "所选 {total} 个配方无需修复",
"repairBulkFailed": "修复所选配方失败:{message}",
"noMissingLorasInSelection": "在选定的配方中未找到缺失的 LoRAs", "noMissingLorasInSelection": "在选定的配方中未找到缺失的 LoRAs",
"noLoraRootConfigured": "未配置 LoRA 根目录。请在设置中设置默认的 LoRA 根目录。" "noLoraRootConfigured": "未配置 LoRA 根目录。请在设置中设置默认的 LoRA 根目录。"
}, },
@@ -1699,6 +1727,11 @@
"bulkContentRatingSet": "已将 {count} 个模型的内容评级设置为 {level}", "bulkContentRatingSet": "已将 {count} 个模型的内容评级设置为 {level}",
"bulkContentRatingPartial": "已将 {success} 个模型的内容评级设置为 {level}{failed} 个失败", "bulkContentRatingPartial": "已将 {success} 个模型的内容评级设置为 {level}{failed} 个失败",
"bulkContentRatingFailed": "未能更新所选模型的内容评级", "bulkContentRatingFailed": "未能更新所选模型的内容评级",
"bulkFavoriteUpdating": "正在将 {count} 个模型添加到收藏...",
"bulkUnfavoriteUpdating": "正在将 {count} 个模型从收藏移除...",
"bulkFavoritePartialAdded": "已将 {success} 个模型添加到收藏,{failed} 个失败",
"bulkFavoritePartialRemoved": "已将 {success} 个模型从收藏移除,{failed} 个失败",
"bulkFavoriteFailed": "更新收藏状态失败",
"bulkUpdatesChecking": "正在检查所选 {type} 的更新...", "bulkUpdatesChecking": "正在检查所选 {type} 的更新...",
"bulkUpdatesSuccess": "{count} 个所选 {type} 有可用更新", "bulkUpdatesSuccess": "{count} 个所选 {type} 有可用更新",
"bulkUpdatesNone": "所选 {type} 未发现更新", "bulkUpdatesNone": "所选 {type} 未发现更新",
@@ -1901,9 +1934,32 @@
"warning": "需要关注", "warning": "需要关注",
"error": "需要处理" "error": "需要处理"
}, },
"issues": {
"civitai_api_key": {
"title": "Civitai API 密钥"
},
"cache_health": {
"title": "模型缓存健康状态"
},
"filename_conflicts": {
"title": "文件名重复冲突"
},
"ui_version": {
"title": "UI 版本"
}
},
"actions": { "actions": {
"runAgain": "重新检查", "runAgain": "重新检查",
"exportBundle": "导出诊断包" "exportBundle": "导出诊断包",
"open-settings": "打开设置",
"open-settings-syntax-format": "切换为完整路径语法",
"repair-cache": "重建缓存",
"resolve-filename-conflicts": "解决冲突",
"reload-page": "刷新 UI"
},
"labels": {
"conflicts": "冲突详情",
"version": "版本信息"
}, },
"toast": { "toast": {
"loadFailed": "加载诊断结果失败:{message}", "loadFailed": "加载诊断结果失败:{message}",
@@ -1915,6 +1971,15 @@
"conflictsResolveFailed": "解决文件名冲突失败:{message}" "conflictsResolveFailed": "解决文件名冲突失败:{message}"
} }
}, },
"conflictConfirm": {
"title": "解决文件名冲突",
"message": "通过在每个重复文件名后附加 4 位哈希值来重命名文件。",
"note": "此操作会重命名磁盘上的文件。如果使用 A1111 语法格式,现有工作流中的模型引用可能需要更新。",
"detail": "示例:<code>filename_v1.2</code> → <code>filename_v1.2-ab3c</code>",
"impact": "将重命名 <strong>{count}</strong> 个文件(共 <strong>{groups}</strong> 组重复)",
"confirm": "重命名文件",
"cancel": "取消"
},
"banners": { "banners": {
"versionMismatch": { "versionMismatch": {
"title": "检测到应用更新", "title": "检测到应用更新",

View File

@@ -232,7 +232,10 @@
"license": "授權", "license": "授權",
"noCreditRequired": "無需署名", "noCreditRequired": "無需署名",
"allowSellingGeneratedContent": "允許銷售", "allowSellingGeneratedContent": "允許銷售",
"allowSellingGeneratedContentTooltip": "允許出售生成的圖片",
"noCreditRequiredTooltip": "使用模型時無需註明原作者",
"noTags": "無標籤", "noTags": "無標籤",
"autoTags": "自動標籤",
"noBaseModelMatches": "沒有基礎模型符合目前的搜尋。", "noBaseModelMatches": "沒有基礎模型符合目前的搜尋。",
"clearAll": "清除所有篩選", "clearAll": "清除所有篩選",
"any": "任一", "any": "任一",
@@ -266,10 +269,10 @@
}, },
"downloadBackend": { "downloadBackend": {
"label": "下載後端", "label": "下載後端",
"help": "選擇模型檔案的下載方式。Python 使用內建下載器。aria2 使用實驗性的外部下載程序。", "help": "選擇模型檔案的下載方式。Python 使用內建下載器。aria2 使用推薦的外部下載程序。",
"options": { "options": {
"python": "Python內建", "python": "Python內建",
"aria2": "aria2實驗性" "aria2": "aria2推薦"
} }
}, },
"aria2cPath": { "aria2cPath": {
@@ -576,7 +579,13 @@
}, },
"misc": { "misc": {
"includeTriggerWords": "在 LoRA 語法中包含觸發詞", "includeTriggerWords": "在 LoRA 語法中包含觸發詞",
"includeTriggerWordsHelp": "複製 LoRA 語法到剪貼簿時包含訓練觸發詞" "includeTriggerWordsHelp": "複製 LoRA 語法到剪貼簿時包含訓練觸發詞",
"loraSyntaxFormat": "LoRA 語法格式",
"loraSyntaxFormatHelp": "LoRA 語法格式。完整路徑Full包含子資料夾路徑 (<lora:style/anime/x:1.0>)解析精確無歧義。舊版Legacy僅使用檔名 (<lora:x:1.0>)——A1111 原始約定,同名檔案跨資料夾時可能產生歧義。",
"loraSyntaxFormatOptions": {
"full": "完整路徑(子資料夾/名稱)",
"legacy": "舊版 A1111僅名稱"
}
}, },
"metadataArchive": { "metadataArchive": {
"enableArchiveDb": "啟用中繼資料封存資料庫", "enableArchiveDb": "啟用中繼資料封存資料庫",
@@ -640,8 +649,6 @@
}, },
"refresh": { "refresh": {
"title": "重新整理模型列表", "title": "重新整理模型列表",
"quick": "同步變更",
"quickTooltip": "掃描新的或缺少的模型檔案,讓清單保持最新。",
"full": "重建快取", "full": "重建快取",
"fullTooltip": "從中繼資料檔重新載入所有模型資訊;適用於清單過時或手動編輯後。" "fullTooltip": "從中繼資料檔重新載入所有模型資訊;適用於清單過時或手動編輯後。"
}, },
@@ -682,16 +689,29 @@
"setContentRating": "為全部設定內容分級", "setContentRating": "為全部設定內容分級",
"copyAll": "複製全部語法", "copyAll": "複製全部語法",
"refreshAll": "刷新全部 metadata", "refreshAll": "刷新全部 metadata",
"repairMetadata": "修復所選中元數據",
"checkUpdates": "檢查所選更新", "checkUpdates": "檢查所選更新",
"moveAll": "全部移動到資料夾", "moveAll": "全部移動到資料夾",
"autoOrganize": "自動整理所選模型", "autoOrganize": "自動整理所選模型",
"skipMetadataRefresh": "跳過所選模型的元數據更新", "skipMetadataRefresh": "跳過所選模型的元數據更新",
"resumeMetadataRefresh": "恢復所選模型的元數據更新", "resumeMetadataRefresh": "恢復所選模型的元數據更新",
"setFavorite": "設為收藏",
"setFavoriteCount": "設為收藏 ({favorited}/{total})",
"unfavorite": "取消收藏",
"deleteAll": "刪除所選", "deleteAll": "刪除所選",
"downloadMissingLoras": "下載缺失的 LoRAs", "downloadMissingLoras": "下載缺失的 LoRAs",
"downloadExamples": "下載範例圖片",
"clear": "清除選取", "clear": "清除選取",
"skipMetadataRefreshCount": "跳過({count} 個模型)", "skipMetadataRefreshCount": "跳過({count} 個模型)",
"resumeMetadataRefreshCount": "恢復({count} 個模型)", "resumeMetadataRefreshCount": "恢復({count} 個模型)",
"sendToWorkflow": "發送到工作流",
"sections": {
"workflow": "工作流",
"metadata": "元數據",
"attributes": "屬性",
"organize": "整理",
"download": "下載"
},
"autoOrganizeProgress": { "autoOrganizeProgress": {
"initializing": "正在初始化自動整理...", "initializing": "正在初始化自動整理...",
"starting": "正在開始自動整理 {type}...", "starting": "正在開始自動整理 {type}...",
@@ -804,8 +824,6 @@
}, },
"refresh": { "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", "full": "重建快取",
"fullTooltip": "重建快取 - 重新掃描所有配方檔案" "fullTooltip": "重建快取 - 重新掃描所有配方檔案"
}, },
@@ -1077,6 +1095,12 @@
"countMessage": "模型將被永久刪除。", "countMessage": "模型將被永久刪除。",
"action": "全部刪除" "action": "全部刪除"
}, },
"bulkDeleteRecipes": {
"title": "刪除多個配方",
"message": "您確定要刪除所有選取的配方及其相關檔案嗎?",
"countMessage": "配方將被永久刪除。",
"action": "全部刪除"
},
"checkUpdates": { "checkUpdates": {
"title": "要檢查所有 {type} 的更新嗎?", "title": "要檢查所有 {type} 的更新嗎?",
"message": "這會為資料庫中的每個 {type} 檢查更新,大型收藏可能會花上一些時間。", "message": "這會為資料庫中的每個 {type} 檢查更新,大型收藏可能會花上一些時間。",
@@ -1157,6 +1181,7 @@
"editModelName": "編輯模型名稱", "editModelName": "編輯模型名稱",
"editFileName": "編輯檔案名稱", "editFileName": "編輯檔案名稱",
"editBaseModel": "編輯基礎模型", "editBaseModel": "編輯基礎模型",
"editVersionName": "編輯版本名稱",
"viewOnCivitai": "在 Civitai 查看", "viewOnCivitai": "在 Civitai 查看",
"viewOnCivitaiText": "在 Civitai 查看", "viewOnCivitaiText": "在 Civitai 查看",
"viewCreatorProfile": "查看創作者個人檔案", "viewCreatorProfile": "查看創作者個人檔案",
@@ -1669,6 +1694,9 @@
"batchImportBrowseFailed": "瀏覽目錄失敗:{message}", "batchImportBrowseFailed": "瀏覽目錄失敗:{message}",
"batchImportDirectorySelected": "已選擇目錄:{path}", "batchImportDirectorySelected": "已選擇目錄:{path}",
"noRecipesSelected": "未選取任何食譜", "noRecipesSelected": "未選取任何食譜",
"repairBulkComplete": "修復完成:{repaired} 個已修復,{skipped} 個已跳過(共 {total} 個)",
"repairBulkSkipped": "所選 {total} 個配方無需修復",
"repairBulkFailed": "修復所選配方失敗:{message}",
"noMissingLorasInSelection": "在選取的食譜中未找到缺失的 LoRAs", "noMissingLorasInSelection": "在選取的食譜中未找到缺失的 LoRAs",
"noLoraRootConfigured": "未配置 LoRA 根目錄。請在設定中設定預設的 LoRA 根目錄。" "noLoraRootConfigured": "未配置 LoRA 根目錄。請在設定中設定預設的 LoRA 根目錄。"
}, },
@@ -1699,6 +1727,11 @@
"bulkContentRatingSet": "已將 {count} 個模型的內容分級設定為 {level}", "bulkContentRatingSet": "已將 {count} 個模型的內容分級設定為 {level}",
"bulkContentRatingPartial": "已將 {success} 個模型的內容分級設定為 {level}{failed} 個失敗", "bulkContentRatingPartial": "已將 {success} 個模型的內容分級設定為 {level}{failed} 個失敗",
"bulkContentRatingFailed": "無法更新所選模型的內容分級", "bulkContentRatingFailed": "無法更新所選模型的內容分級",
"bulkFavoriteUpdating": "正在將 {count} 個模型加入收藏...",
"bulkUnfavoriteUpdating": "正在將 {count} 個模型從收藏移除...",
"bulkFavoritePartialAdded": "已將 {success} 個模型加入收藏,{failed} 個失敗",
"bulkFavoritePartialRemoved": "已將 {success} 個模型從收藏移除,{failed} 個失敗",
"bulkFavoriteFailed": "更新收藏狀態失敗",
"bulkUpdatesChecking": "正在檢查所選 {type} 的更新...", "bulkUpdatesChecking": "正在檢查所選 {type} 的更新...",
"bulkUpdatesSuccess": "{count} 個所選 {type} 有可用更新", "bulkUpdatesSuccess": "{count} 個所選 {type} 有可用更新",
"bulkUpdatesNone": "所選 {type} 未找到更新", "bulkUpdatesNone": "所選 {type} 未找到更新",
@@ -1901,9 +1934,32 @@
"warning": "需要注意", "warning": "需要注意",
"error": "需要處理" "error": "需要處理"
}, },
"issues": {
"civitai_api_key": {
"title": "Civitai API 金鑰"
},
"cache_health": {
"title": "模型快取健康狀態"
},
"filename_conflicts": {
"title": "檔案名稱重複衝突"
},
"ui_version": {
"title": "UI 版本"
}
},
"actions": { "actions": {
"runAgain": "重新執行", "runAgain": "重新執行",
"exportBundle": "匯出套件" "exportBundle": "匯出套件",
"open-settings": "開啟設定",
"open-settings-syntax-format": "切換為完整路徑語法",
"repair-cache": "重建快取",
"resolve-filename-conflicts": "解決衝突",
"reload-page": "重新載入 UI"
},
"labels": {
"conflicts": "衝突詳情",
"version": "版本"
}, },
"toast": { "toast": {
"loadFailed": "載入診斷失敗:{message}", "loadFailed": "載入診斷失敗:{message}",
@@ -1915,6 +1971,15 @@
"conflictsResolveFailed": "解決檔案名稱衝突失敗:{message}" "conflictsResolveFailed": "解決檔案名稱衝突失敗:{message}"
} }
}, },
"conflictConfirm": {
"title": "解決檔案名稱衝突",
"message": "通過在每個重複檔案名稱後附加 4 位元哈希值來重新命名檔案。",
"note": "此操作會重新命名磁碟上的檔案。如果使用 A1111 語法格式,現有工作流程中的模型參考可能需要更新。",
"detail": "示例:<code>filename_v1.2</code> → <code>filename_v1.2-ab3c</code>",
"impact": "將重新命名 <strong>{count}</strong> 個檔案(共 <strong>{groups}</strong> 組重複)",
"confirm": "重新命名檔案",
"cancel": "取消"
},
"banners": { "banners": {
"versionMismatch": { "versionMismatch": {
"title": "偵測到應用程式更新", "title": "偵測到應用程式更新",

View File

@@ -172,6 +172,12 @@ class Config:
self.extra_unet_roots: List[str] = [] self.extra_unet_roots: List[str] = []
self.extra_embeddings_roots: List[str] = [] self.extra_embeddings_roots: List[str] = []
self.recipes_path: str = "" self.recipes_path: str = ""
# Load extra folder paths from active library settings before symlink scan
# so both primary and extra paths are discovered in a single pass.
if not standalone_mode:
self._load_extra_paths_from_settings()
# Scan symbolic links during initialization # Scan symbolic links during initialization
self._initialize_symlink_mappings() self._initialize_symlink_mappings()
@@ -179,6 +185,96 @@ class Config:
# Save the paths to settings.json when running in ComfyUI mode # Save the paths to settings.json when running in ComfyUI mode
self.save_folder_paths_to_settings() self.save_folder_paths_to_settings()
def _load_extra_paths_from_settings(self) -> None:
"""Read extra folder paths from the active library and apply them.
Called during ``Config.__init__`` before the symlink scan so both primary and
extra paths are discovered in a single pass. Mirrors the extra-path
portion of ``_apply_library_paths`` without replacing the primary roots
that were already resolved from ComfyUI's ``folder_paths``.
"""
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 not library_name or library_name not in libraries:
return
library_config = libraries[library_name]
if not isinstance(library_config, dict):
return
extra_folder_paths = library_config.get("extra_folder_paths")
if not isinstance(extra_folder_paths, dict):
return
extra_lora = extra_folder_paths.get("loras", []) or []
extra_checkpoint = extra_folder_paths.get("checkpoints", []) or []
extra_unet = extra_folder_paths.get("unet", []) or []
extra_embedding = extra_folder_paths.get("embeddings", []) or []
if not any([extra_lora, extra_checkpoint, extra_unet, extra_embedding]):
return
filtered_extra_lora = self._filter_overlapping_extra_lora_paths(
self.loras_roots, extra_lora
)
self.extra_loras_roots = self._prepare_lora_paths(filtered_extra_lora)
(
_,
self.extra_checkpoints_roots,
self.extra_unet_roots,
) = self._prepare_checkpoint_paths(extra_checkpoint, extra_unet)
self.extra_embeddings_roots = self._prepare_embedding_paths(
extra_embedding
)
recipes_path = library_config.get("recipes_path", "")
if isinstance(recipes_path, str) and recipes_path:
self.recipes_path = recipes_path
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)
)
logger.info(
"Applied library settings for '%s' with extra paths: loras=%s, "
"checkpoints=%s, embeddings=%s",
library_name,
extra_lora,
extra_checkpoint,
extra_embedding,
)
except Exception as exc:
logger.debug(
"Could not load extra paths from library settings: %s", exc
)
def save_folder_paths_to_settings(self): def save_folder_paths_to_settings(self):
"""Persist ComfyUI-derived folder paths to the multi-library settings.""" """Persist ComfyUI-derived folder paths to the multi-library settings."""
try: try:

View File

@@ -184,39 +184,6 @@ class LoraManager:
async def _initialize_services(cls): async def _initialize_services(cls):
"""Initialize all services using the ServiceRegistry""" """Initialize all services using the ServiceRegistry"""
try: 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 # Initialize CivitaiClient first to ensure it's ready for other services
await ServiceRegistry.get_civitai_client() await ServiceRegistry.get_civitai_client()

View File

@@ -9,6 +9,7 @@ from ..utils.utils import get_lora_info_absolute
from .utils import ( from .utils import (
FlexibleOptionalInputType, FlexibleOptionalInputType,
any_type, any_type,
apply_lora_syntax_format,
detect_nunchaku_model_kind, detect_nunchaku_model_kind,
extract_lora_name, extract_lora_name,
get_loras_list, get_loras_list,
@@ -52,7 +53,7 @@ def _collect_widget_entries(kwargs):
for lora in get_loras_list(kwargs): for lora in get_loras_list(kwargs):
if not lora.get("active", False): if not lora.get("active", False):
continue continue
lora_name = lora["name"] lora_name = apply_lora_syntax_format(lora["name"])
model_strength = float(lora["strength"]) model_strength = float(lora["strength"])
clip_strength = float(lora.get("clipStrength", model_strength)) clip_strength = float(lora.get("clipStrength", model_strength))
lora_path, trigger_words = get_lora_info_absolute(lora_name) lora_path, trigger_words = get_lora_info_absolute(lora_name)

View File

@@ -1,6 +1,6 @@
import os import os
from ..utils.utils import get_lora_info from ..utils.utils import get_lora_info
from .utils import FlexibleOptionalInputType, any_type, extract_lora_name, get_loras_list from .utils import FlexibleOptionalInputType, any_type, apply_lora_syntax_format, extract_lora_name, get_loras_list
import logging import logging
@@ -48,7 +48,7 @@ class LoraStackerLM:
if not lora.get('active', False): if not lora.get('active', False):
continue continue
lora_name = lora['name'] lora_name = apply_lora_syntax_format(lora['name'])
model_strength = float(lora['strength']) model_strength = float(lora['strength'])
# Get clip strength - use model strength as default if not specified # Get clip strength - use model strength as default if not specified
clip_strength = float(lora.get('clipStrength', model_strength)) clip_strength = float(lora.get('clipStrength', model_strength))

View File

@@ -44,11 +44,29 @@ import folder_paths # type: ignore
logger = logging.getLogger(__name__) logger = logging.getLogger(__name__)
def get_lora_syntax_format():
try:
from ..services.settings_manager import get_settings_manager
return get_settings_manager().get("lora_syntax_format", "legacy")
except Exception:
return "legacy"
def apply_lora_syntax_format(name):
fmt = get_lora_syntax_format()
if fmt == "legacy":
return name.replace("\\", "/").rstrip("/").split("/")[-1]
return name
def extract_lora_name(lora_path): def extract_lora_name(lora_path):
"""Extract the lora name from a lora path (e.g., 'IL\\aorunIllstrious.safetensors' -> 'aorunIllstrious')""" normalized = lora_path.replace("\\", "/")
# Get the basename without extension basename = os.path.basename(normalized)
basename = os.path.basename(lora_path) name_no_ext = os.path.splitext(basename)[0]
return os.path.splitext(basename)[0] dirname = os.path.dirname(normalized)
if dirname and dirname not in (".", "/") and not normalized.startswith("/"):
return apply_lora_syntax_format(f"{dirname}/{name_no_ext}")
return apply_lora_syntax_format(name_no_ext)
def get_loras_list(kwargs): def get_loras_list(kwargs):

View File

@@ -7,7 +7,7 @@ import re
from typing import Dict, List, Any, Optional, Tuple from typing import Dict, List, Any, Optional, Tuple
from abc import ABC, abstractmethod from abc import ABC, abstractmethod
from ..config import config from ..config import config
from ..utils.constants import VALID_LORA_TYPES from ..utils.constants import VALID_LORA_TYPES, VALID_CHECKPOINT_SUB_TYPES
from ..utils.civitai_utils import rewrite_preview_url from ..utils.civitai_utils import rewrite_preview_url
logger = logging.getLogger(__name__) logger = logging.getLogger(__name__)
@@ -173,6 +173,20 @@ class RecipeMetadataParser(ABC):
checkpoint['isDeleted'] = True checkpoint['isDeleted'] = True
return checkpoint return checkpoint
# Validate that the model type is actually a checkpoint.
# Unlike populate_lora_from_civitai which has this check,
# this function was missing type validation — allowing LoRA
# version data to be saved as the recipe's checkpoint when the
# wrong version ID was passed downstream (fixed in v2.7+).
model_type = civitai_data.get('model', {}).get('type', '').lower()
if model_type not in VALID_CHECKPOINT_SUB_TYPES:
logger.warning(
f"Cannot populate checkpoint: model version {civitai_data.get('id')} "
f"has type '{model_type}', expected one of {VALID_CHECKPOINT_SUB_TYPES}. "
f"Skipping checkpoint enrichment."
)
return checkpoint
if 'model' in civitai_data and 'name' in civitai_data['model']: if 'model' in civitai_data and 'name' in civitai_data['model']:
checkpoint['name'] = civitai_data['model']['name'] checkpoint['name'] = civitai_data['model']['name']

View File

@@ -16,7 +16,9 @@ class RecipeEnricher:
async def enrich_recipe( async def enrich_recipe(
recipe: Dict[str, Any], recipe: Dict[str, Any],
civitai_client: Any, civitai_client: Any,
request_params: Optional[Dict[str, Any]] = None request_params: Optional[Dict[str, Any]] = None,
prefetched_civitai_meta_raw: Optional[Dict[str, Any]] = None,
prefetched_model_version_id: Optional[int] = None,
) -> bool: ) -> bool:
""" """
Enrich a recipe dictionary in-place with metadata from Civitai and embedded params. Enrich a recipe dictionary in-place with metadata from Civitai and embedded params.
@@ -25,6 +27,9 @@ class RecipeEnricher:
recipe: The recipe dictionary to enrich. Must have 'gen_params' initialized. recipe: The recipe dictionary to enrich. Must have 'gen_params' initialized.
civitai_client: Authenticated Civitai client instance. civitai_client: Authenticated Civitai client instance.
request_params: (Optional) Parameters from a user request (e.g. import). request_params: (Optional) Parameters from a user request (e.g. import).
prefetched_civitai_meta_raw: (Optional) Pre-fetched raw meta from Civitai
get_image_info, avoiding a duplicate API call.
prefetched_model_version_id: (Optional) Pre-fetched model version ID.
Returns: Returns:
bool: True if the recipe was modified, False otherwise. bool: True if the recipe was modified, False otherwise.
@@ -32,21 +37,27 @@ class RecipeEnricher:
updated = False updated = False
gen_params = recipe.get("gen_params", {}) gen_params = recipe.get("gen_params", {})
# 1. Fetch Civitai Info if available # 1. Obtain Civitai metadata
civitai_meta = None civitai_meta = None
model_version_id = None model_version_id = prefetched_model_version_id
source_url = recipe.get("source_url") or recipe.get("source_path", "") source_path = recipe.get("source_path", "")
# Check if it's a Civitai image URL if prefetched_civitai_meta_raw is not None:
image_id = extract_civitai_image_id(str(source_url)) raw_meta = prefetched_civitai_meta_raw
if isinstance(raw_meta, dict):
if "meta" in raw_meta and isinstance(raw_meta["meta"], dict):
civitai_meta = raw_meta["meta"]
else:
civitai_meta = raw_meta
else:
image_id = extract_civitai_image_id(str(source_path))
if image_id: if image_id:
try: try:
image_info = await civitai_client.get_image_info( image_info = await civitai_client.get_image_info(
image_id, source_url=str(source_url) image_id, source_url=str(source_path)
) )
if image_info: if image_info:
# Handle nested meta often found in Civitai API responses
raw_meta = image_info.get("meta") raw_meta = image_info.get("meta")
if isinstance(raw_meta, dict): if isinstance(raw_meta, dict):
if "meta" in raw_meta and isinstance(raw_meta["meta"], dict): if "meta" in raw_meta and isinstance(raw_meta["meta"], dict):
@@ -55,16 +66,15 @@ class RecipeEnricher:
civitai_meta = raw_meta civitai_meta = raw_meta
model_version_id = image_info.get("modelVersionId") model_version_id = image_info.get("modelVersionId")
except Exception as e:
logger.warning(f"Failed to fetch Civitai image info: {e}")
# If not at top level, check resources in meta
if not model_version_id and civitai_meta: if not model_version_id and civitai_meta:
resources = civitai_meta.get("civitaiResources", []) resources = civitai_meta.get("civitaiResources", [])
for res in resources: for res in resources:
if res.get("type") == "checkpoint": if res.get("type") == "checkpoint":
model_version_id = res.get("modelVersionId") model_version_id = res.get("modelVersionId")
break break
except Exception as e:
logger.warning(f"Failed to fetch Civitai image info: {e}")
# 2. Merge Parameters # 2. Merge Parameters
# Priority: request_params > civitai_meta > embedded (existing gen_params) # Priority: request_params > civitai_meta > embedded (existing gen_params)

View File

@@ -185,8 +185,67 @@ class CivitaiApiMetadataParser(RecipeMetadataParser):
# Process standard resources array # Process standard resources array
if "resources" in metadata and isinstance(metadata["resources"], list): if "resources" in metadata and isinstance(metadata["resources"], list):
for resource in metadata["resources"]: for resource in metadata["resources"]:
resource_type = resource.get("type", "lora")
# Track resources with type "model" — these are checkpoint models.
# The resources array is the most reliable source for checkpoint
# identification because it has an explicit type field and hash,
# unlike modelVersionIds which is a flat list with no type info.
if resource_type == "model":
checkpoint_entry = {
"id": 0,
"modelId": 0,
"name": resource.get("name", "Unknown Model"),
"version": "",
"type": resource.get("type", "model"),
"existsLocally": False,
"localPath": None,
"file_name": resource.get("name", ""),
"hash": resource.get("hash", "") or "",
"thumbnailUrl": "/loras_static/images/no-preview.png",
"baseModel": "",
"size": 0,
"downloadUrl": "",
"isDeleted": False,
}
# Try to look up base model from the checkpoint hash
if checkpoint_entry["hash"] and metadata_provider:
try:
civitai_info = (
await metadata_provider.get_model_by_hash(
checkpoint_entry["hash"]
)
)
civitai_data, error_msg = (
(civitai_info, None)
if not isinstance(civitai_info, tuple)
else civitai_info
)
if civitai_data and error_msg != "Model not found":
if 'model' in civitai_data and 'name' in civitai_data['model']:
checkpoint_entry['name'] = civitai_data['model']['name']
checkpoint_entry['id'] = civitai_data.get('id', 0)
checkpoint_entry['modelId'] = civitai_data.get('modelId', 0)
if 'name' in civitai_data:
checkpoint_entry['version'] = civitai_data['name']
base_model = civitai_data.get('baseModel', '')
if base_model:
checkpoint_entry['baseModel'] = base_model
if not result['base_model']:
result['base_model'] = base_model
except Exception as e:
logger.error(
f"Error fetching checkpoint info for hash "
f"{checkpoint_entry['hash']}: {e}"
)
if result["model"] is None:
result["model"] = checkpoint_entry
continue
# Modified to process resources without a type field as potential LoRAs # Modified to process resources without a type field as potential LoRAs
if resource.get("type", "lora") == "lora": if resource_type == "lora":
lora_hash = resource.get("hash", "") lora_hash = resource.get("hash", "")
# Try to get hash from the hashes field if not present in resource # Try to get hash from the hashes field if not present in resource

View File

@@ -686,6 +686,9 @@ class DoctorHandler:
) )
async def resolve_filename_conflicts(self, request: web.Request) -> web.Response: async def resolve_filename_conflicts(self, request: web.Request) -> web.Response:
if self._settings.get("lora_syntax_format", "legacy") == "full":
return web.json_response({"success": True, "renamed": [], "count": 0})
renamed: list[dict[str, Any]] = [] renamed: list[dict[str, Any]] = []
try: try:
@@ -990,11 +993,29 @@ class DoctorHandler:
} }
async def _check_filename_conflicts(self) -> dict[str, Any]: async def _check_filename_conflicts(self) -> dict[str, Any]:
# When full path syntax is active, duplicate filenames across subfolders
# are not ambiguous (<lora:subfolder/name:strength>), so skip the check.
if self._settings.get("lora_syntax_format", "legacy") == "full":
return {
"id": "filename_conflicts",
"title": "Duplicate Filename Conflicts",
"status": "ok",
"summary": "Full path syntax is active — duplicate filenames across folders are not ambiguous.",
"details": [],
"actions": [],
}
all_conflicts: list[dict[str, Any]] = [] all_conflicts: list[dict[str, Any]] = []
total_conflict_groups = 0 total_conflict_groups = 0
total_conflict_files = 0 total_conflict_files = 0
for model_type, label, factory in self._scanner_factories: for model_type, label, factory in self._scanner_factories:
# Duplicate filename detection targets LoRAs which use basename-only
# syntax (<lora:name:strength>). Checkpoints/embeddings reference
# models via relative paths with extensions, so conflicts there would
# be false positives.
if model_type != "lora":
continue
try: try:
scanner = await factory() scanner = await factory()
hash_index = getattr(scanner, "_hash_index", None) hash_index = getattr(scanner, "_hash_index", None)
@@ -1042,12 +1063,22 @@ class DoctorHandler:
"total_conflict_files": total_conflict_files, "total_conflict_files": total_conflict_files,
} }
] ]
for conflict in all_conflicts:
# Show at most 5 conflict groups inline; note any remainder.
MAX_VISIBLE_CONFLICTS = 5
visible_conflicts = all_conflicts[:MAX_VISIBLE_CONFLICTS]
for conflict in visible_conflicts:
details.append( details.append(
f"[{conflict['label']}] '{conflict['filename']}' " f"'{conflict['filename']}' "
f"found in {len(conflict['paths'])} locations" f"found in {len(conflict['paths'])} locations"
) )
hidden_count = len(all_conflicts) - MAX_VISIBLE_CONFLICTS
if hidden_count > 0:
details.append(
f"...and {hidden_count} more duplicate filename group(s)"
)
return { return {
"id": "filename_conflicts", "id": "filename_conflicts",
"title": "Duplicate Filename Conflicts", "title": "Duplicate Filename Conflicts",
@@ -1058,7 +1089,11 @@ class DoctorHandler:
{ {
"id": "resolve-filename-conflicts", "id": "resolve-filename-conflicts",
"label": "Resolve Conflicts", "label": "Resolve Conflicts",
} },
{
"id": "open-settings-syntax-format",
"label": "Switch to Full Path Syntax",
},
], ],
} }
@@ -2065,7 +2100,7 @@ class ModelLibraryHandler:
file_path=file_path if isinstance(file_path, str) else None, file_path=file_path if isinstance(file_path, str) else None,
) )
else: else:
await history_service.mark_not_downloaded(model_type, model_version_id) await history_service.mark_as_deleted(model_type, model_version_id)
return web.json_response( return web.json_response(
{ {
@@ -2139,8 +2174,19 @@ class ModelLibraryHandler:
] ]
await found_cache.resort() await found_cache.resort()
scanner_map = {
"lora": lora_scanner,
"checkpoint": checkpoint_scanner,
"embedding": embedding_scanner,
}
scanner = scanner_map.get(found_type)
if scanner:
persist = getattr(scanner, "_persist_current_cache", None)
if callable(persist):
await persist()
history_service = await self._get_download_history_service() history_service = await self._get_download_history_service()
await history_service.mark_not_downloaded(found_type, model_version_id) await history_service.mark_as_deleted(found_type, model_version_id)
return web.json_response( return web.json_response(
{ {

View File

@@ -301,6 +301,15 @@ class ModelListingHandler:
for tag in exclude_tags: for tag in exclude_tags:
if tag: if tag:
tag_filters[tag] = "exclude" tag_filters[tag] = "exclude"
auto_tag_filters: Dict[str, str] = {}
for tag in request.query.getall("auto_tag_include", []):
if tag:
auto_tag_filters[tag] = "include"
for tag in request.query.getall("auto_tag_exclude", []):
if tag:
auto_tag_filters[tag] = "exclude"
favorites_only = request.query.get("favorites_only", "false").lower() == "true" favorites_only = request.query.get("favorites_only", "false").lower() == "true"
search_options = { search_options = {
@@ -367,6 +376,7 @@ class ModelListingHandler:
"fuzzy_search": fuzzy_search, "fuzzy_search": fuzzy_search,
"base_models": base_models, "base_models": base_models,
"tags": tag_filters, "tags": tag_filters,
"auto_tags": auto_tag_filters,
"tag_logic": tag_logic, "tag_logic": tag_logic,
"search_options": search_options, "search_options": search_options,
"hash_filters": hash_filters, "hash_filters": hash_filters,
@@ -778,7 +788,7 @@ class ModelManagementHandler:
metadata_updates = {k: v for k, v in data.items() if k != "file_path"} metadata_updates = {k: v for k, v in data.items() if k != "file_path"}
await self._metadata_sync.save_metadata_updates( updated_metadata = await self._metadata_sync.save_metadata_updates(
file_path=file_path, file_path=file_path,
updates=metadata_updates, updates=metadata_updates,
metadata_loader=self._metadata_sync.load_local_metadata, metadata_loader=self._metadata_sync.load_local_metadata,
@@ -789,7 +799,12 @@ class ModelManagementHandler:
cache = await self._service.scanner.get_cached_data() cache = await self._service.scanner.get_cached_data()
await cache.resort() await cache.resort()
return web.json_response({"success": True}) from ...services.auto_tag_service import extract_auto_tags
auto_tags = extract_auto_tags(updated_metadata)
return web.json_response(
{"success": True, "auto_tags": auto_tags}
)
except Exception as exc: except Exception as exc:
self._logger.error("Error saving metadata: %s", exc, exc_info=True) self._logger.error("Error saving metadata: %s", exc, exc_info=True)
return web.Response(text=str(exc), status=500) return web.Response(text=str(exc), status=500)
@@ -806,14 +821,16 @@ class ModelManagementHandler:
if not isinstance(new_tags, list): if not isinstance(new_tags, list):
return web.Response(text="Tags must be a list", status=400) return web.Response(text="Tags must be a list", status=400)
tags = await self._tag_update_service.add_tags( tags, auto_tags = await self._tag_update_service.add_tags(
file_path=file_path, file_path=file_path,
new_tags=new_tags, new_tags=new_tags,
metadata_loader=self._metadata_sync.load_local_metadata, metadata_loader=self._metadata_sync.load_local_metadata,
update_cache=self._service.scanner.update_single_model_cache, update_cache=self._service.scanner.update_single_model_cache,
) )
return web.json_response({"success": True, "tags": tags}) return web.json_response(
{"success": True, "tags": tags, "auto_tags": auto_tags}
)
except Exception as exc: except Exception as exc:
self._logger.error("Error adding tags: %s", exc, exc_info=True) self._logger.error("Error adding tags: %s", exc, exc_info=True)
return web.Response(text=str(exc), status=500) return web.Response(text=str(exc), status=500)
@@ -1160,6 +1177,12 @@ class ModelQueryHandler:
async def find_filename_conflicts(self, request: web.Request) -> web.Response: async def find_filename_conflicts(self, request: web.Request) -> web.Response:
try: try:
settings = get_settings_manager()
if settings.get("lora_syntax_format", "legacy") == "full":
return web.json_response(
{"success": True, "conflicts": [], "count": 0}
)
duplicates = self._service.find_duplicate_filenames() duplicates = self._service.find_duplicate_filenames()
result = [] result = []
cache = await self._service.scanner.get_cached_data() cache = await self._service.scanner.get_cached_data()

View File

@@ -3,6 +3,7 @@
from __future__ import annotations from __future__ import annotations
import logging import logging
import mimetypes
import urllib.parse import urllib.parse
from pathlib import Path from pathlib import Path
@@ -12,6 +13,12 @@ from ...config import config as global_config
logger = logging.getLogger(__name__) logger = logging.getLogger(__name__)
_CHUNK_SIZE = 256 * 1024 # 256 KB
# Video file extensions that bypass native sendfile on Windows
# to avoid IOCP/ProactorEventLoop crashes during client disconnect.
_VIDEO_EXTENSIONS = frozenset({".mp4", ".webm", ".mov", ".avi", ".mkv"})
class PreviewHandler: class PreviewHandler:
"""Serve preview assets for the active library at request time.""" """Serve preview assets for the active library at request time."""
@@ -48,8 +55,51 @@ class PreviewHandler:
logger.debug("Preview file not found at %s", str(resolved)) logger.debug("Preview file not found at %s", str(resolved))
raise web.HTTPNotFound(text="Preview file not found") raise web.HTTPNotFound(text="Preview file not found")
# Video files: stream manually to avoid Windows native sendfile crash.
# aiohttp's FileResponse uses _sendfile_native on Windows (IOCP-based),
# which breaks when the client disconnects mid-transfer — this happens
# constantly when users scroll through a gallery of animated previews.
suffix = resolved.suffix.lower()
if suffix in _VIDEO_EXTENSIONS:
return await self._stream_file(request, resolved)
# aiohttp's FileResponse handles range requests and content headers for us. # aiohttp's FileResponse handles range requests and content headers for us.
return web.FileResponse(path=resolved, chunk_size=256 * 1024) return web.FileResponse(path=resolved, chunk_size=_CHUNK_SIZE)
async def _stream_file(
self, request: web.Request, path: Path
) -> web.StreamResponse:
"""Stream a file chunk-by-chunk, bypassing native sendfile.
This avoids the Windows IOCP ``_sendfile_native`` crash that occurs
when the client disconnects during a large file transfer.
"""
content_type, _ = mimetypes.guess_type(str(path))
if content_type is None:
content_type = "application/octet-stream"
file_size = path.stat().st_size
resp = web.StreamResponse()
resp.content_type = content_type
resp.content_length = file_size
await resp.prepare(request)
try:
with open(path, "rb") as f:
while True:
chunk = f.read(_CHUNK_SIZE)
if not chunk:
break
await resp.write(chunk)
except (ConnectionResetError, ConnectionAbortedError):
# Client disconnected during streaming — expected when scrolling
# rapidly through a library with animated previews.
pass
except OSError as exc:
logger.debug("I/O error streaming preview %s: %s", path, exc)
return resp
__all__ = ["PreviewHandler"] __all__ = ["PreviewHandler"]

View File

@@ -87,12 +87,15 @@ class RecipeHandlerSet:
"repair_recipes": self.management.repair_recipes, "repair_recipes": self.management.repair_recipes,
"cancel_repair": self.management.cancel_repair, "cancel_repair": self.management.cancel_repair,
"repair_recipe": self.management.repair_recipe, "repair_recipe": self.management.repair_recipe,
"repair_recipes_bulk": self.management.repair_recipes_bulk,
"get_repair_progress": self.management.get_repair_progress, "get_repair_progress": self.management.get_repair_progress,
"start_batch_import": self.batch_import.start_batch_import, "start_batch_import": self.batch_import.start_batch_import,
"get_batch_import_progress": self.batch_import.get_batch_import_progress, "get_batch_import_progress": self.batch_import.get_batch_import_progress,
"cancel_batch_import": self.batch_import.cancel_batch_import, "cancel_batch_import": self.batch_import.cancel_batch_import,
"start_directory_import": self.batch_import.start_directory_import, "start_directory_import": self.batch_import.start_directory_import,
"browse_directory": self.batch_import.browse_directory, "browse_directory": self.batch_import.browse_directory,
"check_image_exists": self.management.check_image_exists,
"import_from_url": self.management.import_from_url,
} }
@@ -541,7 +544,7 @@ class RecipeQueryHandler:
) )
response_data.append( response_data.append(
{ {
"type": "source_url", "type": "source_path",
"fingerprint": url, "fingerprint": url,
"count": len(recipes), "count": len(recipes),
"recipes": recipes, "recipes": recipes,
@@ -607,6 +610,7 @@ class RecipeManagementHandler:
self._downloader_factory = downloader_factory self._downloader_factory = downloader_factory
self._civitai_client_getter = civitai_client_getter self._civitai_client_getter = civitai_client_getter
self._ws_manager = ws_manager self._ws_manager = ws_manager
self._import_semaphore = asyncio.Semaphore(2)
async def save_recipe(self, request: web.Request) -> web.Response: async def save_recipe(self, request: web.Request) -> web.Response:
try: try:
@@ -703,6 +707,69 @@ class RecipeManagementHandler:
self._logger.error("Error cancelling recipe repair: %s", exc, exc_info=True) self._logger.error("Error cancelling recipe repair: %s", exc, exc_info=True)
return web.json_response({"success": False, "error": str(exc)}, status=500) return web.json_response({"success": False, "error": str(exc)}, status=500)
async def repair_recipes_bulk(self, request: web.Request) -> web.Response:
"""Bulk repair metadata for multiple recipes by their IDs.
Accepts a JSON body with a "recipe_ids" array and iterates
repair_recipe_by_id over each entry, collecting statistics.
"""
try:
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,
)
data = await request.json()
recipe_ids = data.get("recipe_ids", [])
if not recipe_ids:
return web.json_response(
{"success": False, "error": "recipe_ids are required"},
status=400,
)
total = len(recipe_ids)
repaired = 0
skipped = 0
errors = 0
recipes = []
for recipe_id in recipe_ids:
try:
result = await recipe_scanner.repair_recipe_by_id(recipe_id)
if result.get("success"):
repaired += result.get("repaired", 0)
skipped += result.get("skipped", 0)
if result.get("recipe"):
recipes.append(result["recipe"])
else:
errors += 1
except RecipeNotFoundError:
skipped += 1
except Exception as exc:
self._logger.error(
"Error repairing recipe %s: %s", recipe_id, exc
)
errors += 1
return web.json_response({
"success": True,
"total": total,
"repaired": repaired,
"skipped": skipped,
"errors": errors,
"recipes": recipes,
})
except Exception as exc:
self._logger.error(
"Error performing bulk repair: %s", exc, exc_info=True
)
return web.json_response(
{"success": False, "error": str(exc)}, status=500
)
async def repair_recipe(self, request: web.Request) -> web.Response: async def repair_recipe(self, request: web.Request) -> web.Response:
try: try:
await self._ensure_dependencies_ready() await self._ensure_dependencies_ready()
@@ -760,32 +827,63 @@ class RecipeManagementHandler:
gen_params_request = self._parse_gen_params(params.get("gen_params")) gen_params_request = self._parse_gen_params(params.get("gen_params"))
self._logger.info( self._logger.info(
"Remote recipe import received: url=%s, request_gen_params_keys=%s, lora_count=%d, checkpoint_keys=%s", "Remote recipe import received: url=%s, lora_count=%d",
image_url, image_url,
sorted(gen_params_request.keys()) if gen_params_request else [],
len(lora_entries), len(lora_entries),
)
self._logger.debug(
" gen_params_keys=%s, checkpoint_keys=%s",
sorted(gen_params_request.keys()) if gen_params_request else [],
sorted(checkpoint_entry.keys()) if isinstance(checkpoint_entry, dict) else [], sorted(checkpoint_entry.keys()) if isinstance(checkpoint_entry, dict) else [],
) )
# 2. Initial Metadata Construction # Throttle concurrent imports to avoid starving ComfyUI's event loop
async with self._import_semaphore:
return await self._do_import_remote_recipe(
image_url=image_url,
name=name,
lora_entries=lora_entries,
checkpoint_entry=checkpoint_entry,
gen_params_request=gen_params_request,
tags=self._parse_tags(params.get("tags")),
base_model=params.get("base_model", "") or "",
source_path=params.get("source_path") or image_url,
)
except RecipeValidationError as exc:
return web.json_response({"error": str(exc)}, status=400)
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
)
return web.json_response({"error": str(exc)}, status=500)
async def _do_import_remote_recipe(
self,
*,
image_url: str,
name: str,
lora_entries: list,
checkpoint_entry: dict,
gen_params_request: dict,
tags: list,
base_model: str,
source_path: str,
) -> web.Response:
recipe_scanner = self._recipe_scanner_getter()
if recipe_scanner is None:
raise RuntimeError("Recipe scanner unavailable")
metadata: Dict[str, Any] = { metadata: Dict[str, Any] = {
"base_model": params.get("base_model", "") or "", "base_model": base_model,
"loras": lora_entries, "loras": lora_entries,
"gen_params": gen_params_request or {}, "gen_params": gen_params_request or {},
"source_url": image_url, "source_path": source_path,
} }
source_path = params.get("source_path")
if source_path:
metadata["source_path"] = source_path
# Checkpoint handling
if checkpoint_entry: if checkpoint_entry:
metadata["checkpoint"] = checkpoint_entry metadata["checkpoint"] = checkpoint_entry
# Ensure checkpoint is also in gen_params for consistency if needed by enricher?
# Actually enricher looks at metadata['checkpoint'], so this is fine.
# Try to resolve base model from checkpoint if not explicitly provided
if not metadata["base_model"]: if not metadata["base_model"]:
base_model_from_metadata = ( base_model_from_metadata = (
await self._resolve_base_model_from_checkpoint(checkpoint_entry) await self._resolve_base_model_from_checkpoint(checkpoint_entry)
@@ -793,30 +891,17 @@ class RecipeManagementHandler:
if base_model_from_metadata: if base_model_from_metadata:
metadata["base_model"] = base_model_from_metadata metadata["base_model"] = base_model_from_metadata
tags = self._parse_tags(params.get("tags")) # Download image
# 3. Download Image
( (
image_bytes, image_bytes,
extension, extension,
civitai_meta_from_download, civitai_meta_raw,
model_version_id,
) = await self._download_remote_media(image_url) ) = await self._download_remote_media(image_url)
# 4. Extract Embedded Metadata # Extract embedded EXIF metadata (offloaded to thread pool in this call)
# Note: We still extract this here because Enricher currently expects 'gen_params' to already be populated
# with embedded data if we want it to merge it.
# However, logic in Enricher merges: request > civitai > embedded.
# So we should gather embedded params and put them into the recipe's gen_params (as initial state)
# OR pass them to enricher to handle?
# The interface of Enricher.enrich_recipe takes `recipe` (with gen_params) and `request_params`.
# So let's extract embedded and put it into recipe['gen_params'] but careful not to overwrite request params.
# Actually, `GenParamsMerger` which `Enricher` uses handles 3 layers.
# But `Enricher` interface is: recipe['gen_params'] (as embedded) + request_params + civitai (fetched internally).
# Wait, `Enricher` fetches Civitai info internally based on URL.
# `civitai_meta_from_download` is returned by `_download_remote_media` which might be useful if URL didn't have ID.
# Let's extract embedded metadata first
embedded_gen_params = {} embedded_gen_params = {}
parsed_embedded = None
try: try:
with tempfile.NamedTemporaryFile( with tempfile.NamedTemporaryFile(
suffix=extension, delete=False suffix=extension, delete=False
@@ -825,7 +910,9 @@ class RecipeManagementHandler:
temp_img_path = temp_img.name temp_img_path = temp_img.name
try: try:
raw_embedded = ExifUtils.extract_image_metadata(temp_img_path) raw_embedded = await asyncio.to_thread(
ExifUtils.extract_image_metadata, temp_img_path
)
if raw_embedded: if raw_embedded:
parser = ( parser = (
self._analysis_service._recipe_parser_factory.create_parser( self._analysis_service._recipe_parser_factory.create_parser(
@@ -848,27 +935,63 @@ class RecipeManagementHandler:
"Failed to extract embedded metadata during import: %s", exc "Failed to extract embedded metadata during import: %s", exc
) )
# Pre-populate gen_params with embedded data so Enricher treats it as the "base" layer # Parse CivitAI API meta to discover all resources from modelVersionIds
# (modelVersionIds is injected at root level by _download_remote_media).
# Run unconditionally — EXIF parsing may succeed for gen_params but miss
# LoRAs since modelVersionIds is NOT embedded in the image EXIF.
civitai_parsed = None
if civitai_meta_raw:
civitai_inner_meta = civitai_meta_raw
if isinstance(civitai_meta_raw, dict) and "meta" in civitai_meta_raw:
civitai_inner_meta = civitai_meta_raw["meta"]
# modelVersionIds lives at outer meta level; propagate after unwrap
_mvids = civitai_meta_raw.get("modelVersionIds")
if _mvids and isinstance(civitai_inner_meta, dict):
civitai_inner_meta["modelVersionIds"] = _mvids
if isinstance(civitai_inner_meta, dict):
parser = self._analysis_service._recipe_parser_factory.create_parser(
civitai_inner_meta
)
if parser:
civitai_parsed = await parser.parse_metadata(
civitai_inner_meta, recipe_scanner=recipe_scanner
)
if civitai_parsed and "gen_params" in civitai_parsed:
# Merge: API gen_params override EXIF at field level,
# EXIF fills in fields the API doesn't have.
embedded_gen_params = {
**(embedded_gen_params or {}),
**civitai_parsed["gen_params"],
}
if embedded_gen_params: if embedded_gen_params:
# Merge embedded into existing gen_params (which currently only has request params if any)
# But wait, we want request params to override everything.
# So we should set recipe['gen_params'] = embedded, and pass request params to enricher.
metadata["gen_params"] = embedded_gen_params metadata["gen_params"] = embedded_gen_params
# 5. Enrich with unified logic # Merge LoRAs: prefer frontend resources, supplement with CivitAI modelVersionIds
# This will fetch Civitai info (if URL matches) and merge: request > civitai > embedded if civitai_parsed:
civitai_loras = civitai_parsed.get("loras", [])
if civitai_loras and not metadata.get("loras"):
metadata["loras"] = civitai_loras
civitai_model = civitai_parsed.get("model")
if civitai_model and not metadata.get("checkpoint"):
metadata["checkpoint"] = civitai_model
elif parsed_embedded:
parsed_loras = parsed_embedded.get("loras")
if parsed_loras and not metadata.get("loras"):
metadata["loras"] = parsed_loras
parsed_model = parsed_embedded.get("model")
if parsed_model and not metadata.get("checkpoint"):
metadata["checkpoint"] = parsed_model
civitai_client = self._civitai_client_getter() civitai_client = self._civitai_client_getter()
await RecipeEnricher.enrich_recipe( await RecipeEnricher.enrich_recipe(
recipe=metadata, recipe=metadata,
civitai_client=civitai_client, civitai_client=civitai_client,
request_params=gen_params_request, # Pass explicit request params here to override request_params=gen_params_request,
prefetched_civitai_meta_raw=civitai_meta_raw,
prefetched_model_version_id=model_version_id,
) )
# If we got civitai_meta from download but Enricher didn't fetch it (e.g. not a civitai URL or failed),
# we might want to manually merge it?
# But usually `import_remote_recipe` is used with Civitai URLs.
# For now, relying on Enricher's internal fetch is consistent with repair.
result = await self._persistence_service.save_recipe( result = await self._persistence_service.save_recipe(
recipe_scanner=recipe_scanner, recipe_scanner=recipe_scanner,
image_bytes=image_bytes, image_bytes=image_bytes,
@@ -879,15 +1002,6 @@ class RecipeManagementHandler:
extension=extension, extension=extension,
) )
return web.json_response(result.payload, status=result.status) return web.json_response(result.payload, status=result.status)
except RecipeValidationError as exc:
return web.json_response({"error": str(exc)}, status=400)
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
)
return web.json_response({"error": str(exc)}, status=500)
async def delete_recipe(self, request: web.Request) -> web.Response: async def delete_recipe(self, request: web.Request) -> web.Response:
try: try:
@@ -1190,7 +1304,7 @@ class RecipeManagementHandler:
"exclude": False, "exclude": False,
} }
async def _download_remote_media(self, image_url: str) -> tuple[bytes, str, Any]: async def _download_remote_media(self, image_url: str) -> tuple[bytes, str, Any, Any]:
civitai_client = self._civitai_client_getter() civitai_client = self._civitai_client_getter()
downloader = await self._downloader_factory() downloader = await self._downloader_factory()
temp_path = None temp_path = None
@@ -1238,10 +1352,38 @@ class RecipeManagementHandler:
extension = ".webp" # Default to webp if unknown extension = ".webp" # Default to webp if unknown
with open(temp_path, "rb") as file_obj: with open(temp_path, "rb") as file_obj:
model_ver_id = None
civitai_meta_raw = (
image_info.get("meta") if civitai_image_id and image_info else None
)
if civitai_image_id and image_info:
# modelVersionId (singular) — the primary version for this
# image on CivitAI. May be absent, or may *not* be the
# checkpoint (e.g. when the image was generated with a LoRA
# as the primary subject). When absent, DO NOT fall back to
# modelVersionIds[0] — that array mixes checkpoints, LoRAs,
# and other model version IDs without ordering guarantees.
# The downstream enrichment flow will find the real
# checkpoint via meta.resources (type:"model" hash) or
# meta.civitaiResources (type:"checkpoint" version ID), so
# leaving model_ver_id as None is safe and avoids the bug
# where a LoRA version ID was treated as the checkpoint.
model_ver_id = image_info.get("modelVersionId")
# Inject root-level modelVersionIds into meta so downstream
# parsers (CivitaiApiMetadataParser) can discover ALL resources
# (checkpoint + LoRAs), not just the first model version ID.
# CivitAI API returns modelVersionIds at the root level of
# the image response, NOT inside the meta object.
mvids = image_info.get("modelVersionIds")
if mvids and isinstance(civitai_meta_raw, dict):
civitai_meta_raw["modelVersionIds"] = mvids
return ( return (
file_obj.read(), file_obj.read(),
extension, extension,
image_info.get("meta") if civitai_image_id and image_info else None, civitai_meta_raw,
model_ver_id,
) )
except RecipeDownloadError: except RecipeDownloadError:
raise raise
@@ -1289,6 +1431,226 @@ class RecipeManagementHandler:
return "" return ""
async def check_image_exists(self, request: web.Request) -> web.Response:
try:
await self._ensure_dependencies_ready()
recipe_scanner = self._recipe_scanner_getter()
if recipe_scanner is None:
raise RuntimeError("Recipe scanner unavailable")
image_ids_raw = request.query.get("image_ids", "")
if not image_ids_raw:
return web.json_response({"success": True, "results": {}})
requested_ids = set()
for raw in image_ids_raw.split(","):
stripped = raw.strip()
if stripped and stripped.isdigit():
requested_ids.add(stripped)
if not requested_ids:
return web.json_response({"success": True, "results": {}})
cache = await recipe_scanner.get_cached_data()
# Build lookup: image_id -> recipe_id from stored source_path
image_to_recipe = {}
for recipe in getattr(cache, "raw_data", []):
source = recipe.get("source_path")
if not source:
continue
image_id = extract_civitai_image_id(source)
if image_id and image_id not in image_to_recipe:
image_to_recipe[image_id] = recipe.get("id")
results = {}
for img_id in requested_ids:
recipe_id = image_to_recipe.get(img_id)
results[img_id] = {
"in_library": recipe_id is not None,
"recipe_id": recipe_id,
}
return web.json_response({"success": True, "results": results})
except Exception as exc:
self._logger.error(
"Error checking image existence: %s", exc, exc_info=True
)
return web.json_response({"error": str(exc)}, status=500)
async def import_from_url(self, request: web.Request) -> web.Response:
try:
await self._ensure_dependencies_ready()
recipe_scanner = self._recipe_scanner_getter()
if recipe_scanner is None:
raise RuntimeError("Recipe scanner unavailable")
image_url = request.query.get("image_url")
if not image_url:
raise RecipeValidationError("Missing required field: image_url")
image_id = extract_civitai_image_id(image_url)
if not image_id:
raise RecipeValidationError(
"Could not extract Civitai image ID from URL"
)
# Check for duplicate (fast, before acquiring semaphore)
cache = await recipe_scanner.get_cached_data()
for recipe in getattr(cache, "raw_data", []):
source = recipe.get("source_path")
if source:
existing_id = extract_civitai_image_id(source)
if existing_id == image_id:
return web.json_response({
"success": True,
"recipe_id": recipe.get("id"),
"name": recipe.get("title", ""),
"already_exists": True,
})
async with self._import_semaphore:
return await self._do_import_from_url(image_url, recipe_scanner)
except RecipeValidationError as exc:
return web.json_response({"error": str(exc)}, status=400)
except RecipeDownloadError as exc:
return web.json_response({"error": str(exc)}, status=400)
except Exception as exc:
self._logger.error(
"Error importing recipe from URL: %s", exc, exc_info=True
)
return web.json_response({"error": str(exc)}, status=500)
async def _do_import_from_url(
self,
image_url: str,
recipe_scanner: Any,
) -> web.Response:
image_id = extract_civitai_image_id(image_url)
if not image_id:
raise RecipeValidationError(
"Could not extract Civitai image ID from URL"
)
image_bytes, extension, civitai_meta_raw, model_version_id = (
await self._download_remote_media(image_url)
)
# Extract embedded EXIF metadata
embedded_gen_params = {}
parsed_embedded = None
try:
with tempfile.NamedTemporaryFile(
suffix=extension, delete=False
) as temp_img:
temp_img.write(image_bytes)
temp_img_path = temp_img.name
try:
raw_embedded = await asyncio.to_thread(
ExifUtils.extract_image_metadata, temp_img_path
)
if 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
)
if parsed_embedded and "gen_params" in parsed_embedded:
embedded_gen_params = parsed_embedded["gen_params"]
finally:
if os.path.exists(temp_img_path):
os.unlink(temp_img_path)
except Exception as exc:
self._logger.warning(
"Failed to extract embedded metadata: %s", exc
)
# Parse CivitAI API meta to discover all resources from modelVersionIds.
# Run unconditionally — EXIF parsing succeeds for gen_params but misses
# LoRAs (modelVersionIds is NOT in the image EXIF).
civitai_parsed = None
if civitai_meta_raw:
civitai_inner_meta = civitai_meta_raw
if isinstance(civitai_meta_raw, dict) and "meta" in civitai_meta_raw:
civitai_inner_meta = civitai_meta_raw["meta"]
# Propagate modelVersionIds into unwrapped meta — it lives
# at the outer meta level in the CivitAI API response.
_mvids = civitai_meta_raw.get("modelVersionIds")
if _mvids and isinstance(civitai_inner_meta, dict):
civitai_inner_meta["modelVersionIds"] = _mvids
if isinstance(civitai_inner_meta, dict):
parser = self._analysis_service._recipe_parser_factory.create_parser(
civitai_inner_meta
)
if parser:
civitai_parsed = await parser.parse_metadata(
civitai_inner_meta, recipe_scanner=recipe_scanner
)
if civitai_parsed and "gen_params" in civitai_parsed:
# Merge: API gen_params override EXIF at field level,
# EXIF fills in fields the API doesn't have.
embedded_gen_params = {
**(embedded_gen_params or {}),
**civitai_parsed["gen_params"],
}
metadata: Dict[str, Any] = {
"base_model": "",
"loras": [],
"gen_params": embedded_gen_params or {},
"source_path": image_url,
}
if civitai_parsed:
civitai_loras = civitai_parsed.get("loras", [])
if civitai_loras and not metadata.get("loras"):
metadata["loras"] = civitai_loras
civitai_model = civitai_parsed.get("model")
if civitai_model and not metadata.get("checkpoint"):
metadata["checkpoint"] = civitai_model
elif parsed_embedded:
parsed_loras = parsed_embedded.get("loras")
if parsed_loras and not metadata.get("loras"):
metadata["loras"] = parsed_loras
parsed_model = parsed_embedded.get("model")
if parsed_model and not metadata.get("checkpoint"):
metadata["checkpoint"] = parsed_model
civitai_client = self._civitai_client_getter()
await RecipeEnricher.enrich_recipe(
recipe=metadata,
civitai_client=civitai_client,
request_params={},
prefetched_civitai_meta_raw=civitai_meta_raw,
prefetched_model_version_id=model_version_id,
)
prompt = (
metadata.get("gen_params", {}).get("prompt")
or metadata.get("gen_params", {}).get("positivePrompt")
or ""
)
if prompt:
name = " ".join(str(prompt).split()[:10])
else:
name = f"Civitai Image {image_id}"
result = await self._persistence_service.save_recipe(
recipe_scanner=recipe_scanner,
image_bytes=image_bytes,
image_base64=None,
name=name,
tags=[],
metadata=metadata,
extension=extension,
)
return web.json_response(result.payload, status=result.status)
class RecipeAnalysisHandler: class RecipeAnalysisHandler:
"""Analyze images to extract recipe metadata.""" """Analyze images to extract recipe metadata."""

View File

@@ -58,6 +58,7 @@ ROUTE_DEFINITIONS: tuple[RouteDefinition, ...] = (
RouteDefinition("POST", "/api/lm/recipes/repair", "repair_recipes"), RouteDefinition("POST", "/api/lm/recipes/repair", "repair_recipes"),
RouteDefinition("POST", "/api/lm/recipes/cancel-repair", "cancel_repair"), RouteDefinition("POST", "/api/lm/recipes/cancel-repair", "cancel_repair"),
RouteDefinition("POST", "/api/lm/recipe/{recipe_id}/repair", "repair_recipe"), RouteDefinition("POST", "/api/lm/recipe/{recipe_id}/repair", "repair_recipe"),
RouteDefinition("POST", "/api/lm/recipes/repair-bulk", "repair_recipes_bulk"),
RouteDefinition("GET", "/api/lm/recipes/repair-progress", "get_repair_progress"), RouteDefinition("GET", "/api/lm/recipes/repair-progress", "get_repair_progress"),
RouteDefinition("POST", "/api/lm/recipes/batch-import/start", "start_batch_import"), RouteDefinition("POST", "/api/lm/recipes/batch-import/start", "start_batch_import"),
RouteDefinition( RouteDefinition(
@@ -70,6 +71,10 @@ ROUTE_DEFINITIONS: tuple[RouteDefinition, ...] = (
"POST", "/api/lm/recipes/batch-import/directory", "start_directory_import" "POST", "/api/lm/recipes/batch-import/directory", "start_directory_import"
), ),
RouteDefinition("POST", "/api/lm/recipes/browse-directory", "browse_directory"), RouteDefinition("POST", "/api/lm/recipes/browse-directory", "browse_directory"),
RouteDefinition(
"GET", "/api/lm/recipes/check-image-exists", "check_image_exists"
),
RouteDefinition("GET", "/api/lm/recipes/import-from-url", "import_from_url"),
) )

View File

@@ -14,12 +14,30 @@ from typing import Any, Dict, Optional, Tuple
import aiohttp import aiohttp
from .downloader import DownloadProgress, get_downloader from .downloader import DownloadProgress, get_downloader, is_ssl_cert_verify_error
from .aria2_transfer_state import Aria2TransferStateStore from .aria2_transfer_state import Aria2TransferStateStore
from .settings_manager import get_settings_manager from .settings_manager import get_settings_manager
logger = logging.getLogger(__name__) logger = logging.getLogger(__name__)
def _try_certifi_ca_path() -> str | None:
"""Return the certifi CA bundle path if available, else None."""
try:
import certifi # type: ignore[import-untyped]
path = certifi.where()
if os.path.isfile(path):
logger.debug(
"aria2 --ca-certificate: using certifi CA bundle at %s", path
)
return path
except ImportError:
pass
logger.debug("aria2 --ca-certificate: certifi not available")
return None
CIVITAI_DOWNLOAD_URL_PREFIXES = ( CIVITAI_DOWNLOAD_URL_PREFIXES = (
"https://civitai.com/api/download/", "https://civitai.com/api/download/",
"https://civitai.red/api/download/", "https://civitai.red/api/download/",
@@ -39,7 +57,7 @@ class Aria2Transfer:
class Aria2Downloader: class Aria2Downloader:
"""Manage an aria2 RPC daemon for experimental model downloads.""" """Manage an aria2 RPC daemon for recommended model downloads."""
_instance = None _instance = None
_lock = asyncio.Lock() _lock = asyncio.Lock()
@@ -391,6 +409,15 @@ class Aria2Downloader:
f"Failed to resolve authenticated Civitai redirect: status={response.status} body={body[:300]}" f"Failed to resolve authenticated Civitai redirect: status={response.status} body={body[:300]}"
) )
except aiohttp.ClientError as exc: except aiohttp.ClientError as exc:
if is_ssl_cert_verify_error(exc):
logger.error(
"SSL certificate verification failed during Civitai redirect "
"resolution for %s. This is usually caused by an outdated CA "
"certificate bundle. Recommended fixes:\n"
" 1. pip install --upgrade certifi\n"
" 2. pip install pip-system-certs",
url,
)
raise Aria2Error( raise Aria2Error(
f"Failed to resolve authenticated Civitai redirect: {exc}" f"Failed to resolve authenticated Civitai redirect: {exc}"
) from exc ) from exc
@@ -414,6 +441,11 @@ class Aria2Downloader:
f"--rpc-listen-port={self._rpc_port}", f"--rpc-listen-port={self._rpc_port}",
f"--rpc-secret={self._rpc_secret}", f"--rpc-secret={self._rpc_secret}",
"--check-certificate=true", "--check-certificate=true",
# Point aria2 at certifi's CA bundle when available so it uses
# the same certificate store as Python downloads.
*((
f"--ca-certificate={ca_cert}",
) if (ca_cert := _try_certifi_ca_path()) else ()),
"--allow-overwrite=true", "--allow-overwrite=true",
"--auto-file-renaming=false", "--auto-file-renaming=false",
"--file-allocation=none", "--file-allocation=none",

View File

@@ -0,0 +1,139 @@
"""
Auto-tag extraction service for model cards.
Extracts implicit model attributes (HIGH/LOW, I2V/T2V/TI2V, Lightning, Turbo)
from filename, base_model, and CivitAI version name — no manual tagging required.
"""
from __future__ import annotations
import re
from typing import Dict, List, Set
# ── Tag category definitions ──────────────────────────────────────────
# Each category maps a display label to a regex pattern.
# Patterns are case-insensitive and matched against filename, base_model,
# and civitai version name.
# Use (?<![a-zA-Z0-9]) and (?![a-zA-Z0-9]) instead of \b because
# Python's \b treats underscore as a word character, so \bHIGH\b
# won't match '_HIGH_' in filenames.
_B = r"(?<![a-zA-Z0-9])" # left boundary
_E = r"(?![a-zA-Z0-9])" # right boundary
AUTO_TAG_CATEGORIES: Dict[str, str] = {
"HIGH": _B + r"HIGH" + _E,
"LOW": _B + r"(?<!F)LOW" + _E,
"I2V": _B + r"I2V" + _E,
"T2V": _B + r"T2V" + _E,
"TI2V": _B + r"TI2V" + _E,
"Lightning": _B + r"Lightning" + _E,
"Turbo": _B + r"Turbo" + _E,
}
# Tags that belong to the "mode" group (HIGH/LOW)
MODE_TAGS = {"HIGH", "LOW"}
# Tags that belong to the "video mode" group (I2V/T2V/TI2V)
VIDEO_MODE_TAGS = {"I2V", "T2V", "TI2V"}
# Tags that belong to the "speed/optimization" group
SPEED_TAGS = {"Lightning", "Turbo"}
# ── Display category groups (for settings UI) ─────────────────────────
AUTO_TAG_GROUPS = {
"mode": {"HIGH", "LOW"},
"video": {"I2V", "T2V", "TI2V"},
"speed": {"Lightning", "Turbo"},
}
# Default enabled categories
DEFAULT_ENABLED_GROUPS = {"mode", "video"}
def _collect_sources(model_data: Dict) -> List[str]:
"""Collect all text sources from model data for tag matching."""
sources: List[str] = []
file_name = model_data.get("file_name", "")
if file_name:
sources.append(file_name)
base_model = model_data.get("base_model", "")
if base_model:
sources.append(base_model)
civitai = model_data.get("civitai", {})
if isinstance(civitai, dict):
version_name = civitai.get("name", "")
if version_name:
sources.append(version_name)
return sources
def extract_auto_tags(model_data: Dict) -> List[str]:
"""Extract auto-detected tags from model metadata.
Uses a two-layer approach:
Layer 1 — Regex-based detection against filename, base_model, and
CivitAI version name.
Layer 2 — Merge in any user-defined tags that overlap with known
auto-tag categories. This provides a manual fallback when
auto-detection fails (e.g. "I2V HN" or unlabeled models).
HIGH/LOW tags are only returned when the base_model indicates a Wan
family model — no other model architecture uses this distinction.
Args:
model_data: Model metadata dict with keys:
file_name, base_model, civitai (with optional 'name' field),
tags (user-defined tag list, used as fallback).
Returns:
Sorted list of unique auto-tag strings (e.g. ["I2V"]).
"""
sources = _collect_sources(model_data)
base_model = model_data.get("base_model", "")
is_wan = "wan" in base_model.lower()
found: Set[str] = set()
# ── Layer 1: regex-based detection ────────────────────────────
if sources:
for label, pattern in AUTO_TAG_CATEGORIES.items():
# HIGH/LOW are Wan-specific — skip for non-Wan to avoid noise
if label in ("HIGH", "LOW"):
if not is_wan:
continue
# Use case-insensitive character class + case-sensitive boundary,
# so "HighNoise" (camelCase) matches but "highlight" doesn't.
# Boundary: not followed by lowercase letter (= word has ended).
ci = "".join(f"[{c.lower()}{c.upper()}]" for c in label)
if label == "LOW":
regex = re.compile(r"(?<![Ff])" + ci + r"(?![a-z])")
else:
regex = re.compile(ci + r"(?![a-z])")
else:
regex = re.compile(pattern, re.IGNORECASE)
for source in sources:
if regex.search(source):
found.add(label)
break
# ── Layer 2: user-defined tags as manual fallback ─────────────
# When auto-detection fails (abbreviated names like "Hi"/"Lo",
# "I2V HN", or unlabeled models), users can add canonical tags
# (HIGH, LOW, I2V, etc.) to the model's regular tags for correct
# badge display and filtering. Matching is case-insensitive so
# "high"/"High"/"HIGH" all resolve to the canonical label.
user_tags = model_data.get("tags")
if user_tags:
label_map = {label.lower(): label for label in AUTO_TAG_CATEGORIES}
for t in user_tags:
canonical = label_map.get(t.lower())
if canonical:
found.add(canonical)
return sorted(found)

View File

@@ -77,6 +77,7 @@ class BaseModelService(ABC):
base_models: list = None, base_models: list = None,
model_types: list = None, model_types: list = None,
tags: Optional[Dict[str, str]] = None, tags: Optional[Dict[str, str]] = None,
auto_tags: Optional[Dict[str, str]] = None,
search_options: dict = None, search_options: dict = None,
hash_filters: dict = None, hash_filters: dict = None,
favorites_only: bool = False, favorites_only: bool = False,
@@ -95,6 +96,11 @@ class BaseModelService(ABC):
sorted_data = await self._fetch_with_usage_sort(sort_params) sorted_data = await self._fetch_with_usage_sort(sort_params)
else: else:
sorted_data = await self.cache_repository.fetch_sorted(sort_params) sorted_data = await self.cache_repository.fetch_sorted(sort_params)
# Pre-compute auto_tags for every item — needed for both filtering
# and display. Computation is cheap (string regex on 2-3 fields).
from .auto_tag_service import extract_auto_tags
for item in sorted_data:
item["auto_tags"] = extract_auto_tags(item)
fetch_duration = time.perf_counter() - t0 fetch_duration = time.perf_counter() - t0
initial_count = len(sorted_data) initial_count = len(sorted_data)
@@ -110,6 +116,7 @@ class BaseModelService(ABC):
base_models=base_models, base_models=base_models,
model_types=model_types, model_types=model_types,
tags=tags, tags=tags,
auto_tags=auto_tags,
favorites_only=favorites_only, favorites_only=favorites_only,
search_options=search_options, search_options=search_options,
tag_logic=tag_logic, tag_logic=tag_logic,
@@ -354,6 +361,7 @@ class BaseModelService(ABC):
base_models: list = None, base_models: list = None,
model_types: list = None, model_types: list = None,
tags: Optional[Dict[str, str]] = None, tags: Optional[Dict[str, str]] = None,
auto_tags: Optional[Dict[str, str]] = None,
favorites_only: bool = False, favorites_only: bool = False,
search_options: dict = None, search_options: dict = None,
tag_logic: str = "any", tag_logic: str = "any",
@@ -367,6 +375,7 @@ class BaseModelService(ABC):
base_models=base_models, base_models=base_models,
model_types=model_types, model_types=model_types,
tags=tags, tags=tags,
auto_tags=auto_tags,
favorites_only=favorites_only, favorites_only=favorites_only,
search_options=normalized_options, search_options=normalized_options,
tag_logic=tag_logic, tag_logic=tag_logic,
@@ -861,22 +870,75 @@ class BaseModelService(ABC):
"""Get the static preview URL for a model file""" """Get the static preview URL for a model file"""
cache = await self.scanner.get_cached_data() cache = await self.scanner.get_cached_data()
name_normalized = model_name.replace("\\", "/")
name_no_ext = name_normalized
for ext in (".safetensors", ".ckpt", ".pt", ".bin"):
if name_no_ext.lower().endswith(ext):
name_no_ext = name_no_ext[: -len(ext)]
break
has_path = "/" in name_no_ext
basename = os.path.basename(name_no_ext) if has_path else name_no_ext
best_fallback = None
for model in cache.raw_data: for model in cache.raw_data:
if model["file_name"] == model_name: file_name = model.get("file_name", "")
folder = model.get("folder", "")
file_name_no_ext = file_name
for ext in (".safetensors", ".ckpt", ".pt", ".bin"):
if file_name_no_ext.lower().endswith(ext):
file_name_no_ext = file_name_no_ext[: -len(ext)]
break
path_name = f"{folder}/{file_name_no_ext}".replace("\\", "/") if folder else file_name_no_ext
if name_no_ext == file_name_no_ext or name_no_ext == path_name:
preview_url = model.get("preview_url") preview_url = model.get("preview_url")
if preview_url: if preview_url:
from ..config import config from ..config import config
return config.get_preview_static_url(preview_url) return config.get_preview_static_url(preview_url)
if has_path and file_name_no_ext == basename:
if folder and name_no_ext.startswith(folder.replace("\\", "/") + "/"):
best_fallback = model
elif best_fallback is None:
best_fallback = model
if best_fallback:
preview_url = best_fallback.get("preview_url")
if preview_url:
from ..config import config
return config.get_preview_static_url(preview_url)
return "/loras_static/images/no-preview.png" return "/loras_static/images/no-preview.png"
async def get_model_civitai_url(self, model_name: str) -> Dict[str, Optional[str]]: async def get_model_civitai_url(self, model_name: str) -> Dict[str, Optional[str]]:
"""Get the Civitai URL for a model file""" """Get the Civitai URL for a model file"""
cache = await self.scanner.get_cached_data() cache = await self.scanner.get_cached_data()
name_normalized = model_name.replace("\\", "/")
name_no_ext = name_normalized
for ext in (".safetensors", ".ckpt", ".pt", ".bin"):
if name_no_ext.lower().endswith(ext):
name_no_ext = name_no_ext[: -len(ext)]
break
has_path = "/" in name_no_ext
basename = os.path.basename(name_no_ext) if has_path else name_no_ext
best_fallback = None
for model in cache.raw_data: for model in cache.raw_data:
if model["file_name"] == model_name: file_name = model.get("file_name", "")
folder = model.get("folder", "")
file_name_no_ext = file_name
for ext in (".safetensors", ".ckpt", ".pt", ".bin"):
if file_name_no_ext.lower().endswith(ext):
file_name_no_ext = file_name_no_ext[: -len(ext)]
break
path_name = f"{folder}/{file_name_no_ext}".replace("\\", "/") if folder else file_name_no_ext
if name_no_ext == file_name_no_ext or name_no_ext == path_name:
civitai_data = model.get("civitai", {}) civitai_data = model.get("civitai", {})
model_id = civitai_data.get("modelId") model_id = civitai_data.get("modelId")
version_id = civitai_data.get("id") version_id = civitai_data.get("id")
@@ -895,6 +957,27 @@ class BaseModelService(ABC):
"version_id": str(version_id) if version_id else None, "version_id": str(version_id) if version_id else None,
} }
if has_path and file_name_no_ext == basename:
if folder and name_no_ext.startswith(folder.replace("\\", "/") + "/"):
best_fallback = model
elif best_fallback is None:
best_fallback = model
if best_fallback:
civitai_data = best_fallback.get("civitai", {})
model_id = civitai_data.get("modelId")
if model_id:
version_id = civitai_data.get("id")
civitai_host = self.settings.get("civitai_host", "civitai.com")
civitai_url = build_civitai_model_page_url(
model_id, version_id, host=civitai_host
)
return {
"civitai_url": civitai_url,
"model_id": str(model_id),
"version_id": str(version_id) if version_id else None,
}
return {"civitai_url": None, "model_id": None, "version_id": None} return {"civitai_url": None, "model_id": None, "version_id": None}
async def get_model_metadata(self, file_path: str) -> Optional[Dict]: async def get_model_metadata(self, file_path: str) -> Optional[Dict]:
@@ -908,6 +991,17 @@ class BaseModelService(ABC):
) )
if should_skip or metadata is None: if should_skip or metadata is None:
return None return None
# Prune stale example-image metadata entries whose files no longer
# exist on disk (e.g. a user deleted the files manually).
from ..utils.example_images_metadata import MetadataUpdater
was_modified = await MetadataUpdater.prune_stale_example_images(metadata)
if was_modified:
asyncio.create_task(
MetadataManager.save_metadata(file_path, metadata)
)
return self.filter_civitai_data(metadata.to_dict().get("civitai", {})) return self.filter_civitai_data(metadata.to_dict().get("civitai", {}))
async def get_model_description(self, file_path: str) -> Optional[str]: async def get_model_description(self, file_path: str) -> Optional[str]:

View File

@@ -224,7 +224,7 @@ class BatchImportService:
return False return False
for recipe in getattr(cache, "raw_data", []): for recipe in getattr(cache, "raw_data", []):
source_path = recipe.get("source_path") or recipe.get("source_url") source_path = recipe.get("source_path")
if source_path and source_path == source: if source_path and source_path == source:
return True return True
return False return False

View File

@@ -3,6 +3,7 @@ import logging
from typing import Dict from typing import Dict
from .base_model_service import BaseModelService from .base_model_service import BaseModelService
from .auto_tag_service import extract_auto_tags
from ..utils.models import CheckpointMetadata from ..utils.models import CheckpointMetadata
from ..config import config from ..config import config
@@ -45,7 +46,8 @@ class CheckpointService(BaseModelService):
"exclude": bool(checkpoint_data.get("exclude", False)), "exclude": bool(checkpoint_data.get("exclude", False)),
"update_available": bool(checkpoint_data.get("update_available", False)), "update_available": bool(checkpoint_data.get("update_available", False)),
"skip_metadata_refresh": bool(checkpoint_data.get("skip_metadata_refresh", False)), "skip_metadata_refresh": bool(checkpoint_data.get("skip_metadata_refresh", False)),
"civitai": self.filter_civitai_data(checkpoint_data.get("civitai", {}), minimal=True) "civitai": self.filter_civitai_data(checkpoint_data.get("civitai", {}), minimal=True),
"auto_tags": checkpoint_data.get("auto_tags") or extract_auto_tags(checkpoint_data),
} }
def find_duplicate_hashes(self) -> Dict: def find_duplicate_hashes(self) -> Dict:

View File

@@ -193,6 +193,9 @@ class CivitaiBaseModelService:
"zimageturbo": "ZIT", "zimageturbo": "ZIT",
"zimagebase": "ZIB", "zimagebase": "ZIB",
"anima": "ANI", "anima": "ANI",
"ernie": "ERNI",
"ernie turbo": "ETRB",
"nucleus": "NUCL",
"svd": "SVD", "svd": "SVD",
"ltxv": "LTXV", "ltxv": "LTXV",
"ltxv2": "LTV2", "ltxv2": "LTV2",
@@ -418,6 +421,9 @@ class CivitaiBaseModelService:
"Kolors", "Kolors",
"NoobAI", "NoobAI",
"Anima", "Anima",
"Ernie",
"Ernie Turbo",
"Nucleus",
], ],
} }

View File

@@ -2,6 +2,7 @@ import asyncio
import copy import copy
import logging import logging
import os import os
from collections import OrderedDict
from typing import Any, Optional, Dict, Tuple, List, Sequence from typing import Any, Optional, Dict, Tuple, List, Sequence
from .connectivity_guard import ( from .connectivity_guard import (
OFFLINE_FRIENDLY_MESSAGE, OFFLINE_FRIENDLY_MESSAGE,
@@ -45,6 +46,14 @@ class CivitaiClient:
self._initialized = True self._initialized = True
self.base_url = "https://civitai.red/api/v1" self.base_url = "https://civitai.red/api/v1"
# In-memory cache to avoid redundant get_model_version_info calls
# within the same import/scan flow. Only successful results are cached.
# Uses OrderedDict with LRU eviction at MAX_CACHE_ENTRIES to prevent
# unbounded growth in long-running server processes.
self._version_info_cache: OrderedDict[
str, Tuple[Optional[Dict], Optional[str]]
] = OrderedDict()
self._MAX_CACHE_ENTRIES = 500
def _build_image_info_url(self, image_id: str) -> str: def _build_image_info_url(self, image_id: str) -> str:
return f"{self.base_url}/images?imageId={image_id}&nsfw=X" return f"{self.base_url}/images?imageId={image_id}&nsfw=X"
@@ -57,8 +66,11 @@ class CivitaiClient:
use_auth: bool = False, use_auth: bool = False,
**kwargs, **kwargs,
) -> Tuple[bool, Dict | str]: ) -> Tuple[bool, Dict | str]:
"""Wrapper around downloader.make_request that surfaces rate limits.""" """Wrapper around downloader.make_request that surfaces rate limits,
with retry for transient server errors (5xx, Cloudflare 524, network flakiness)."""
max_retries = 3
for attempt in range(max_retries):
downloader = await get_downloader() downloader = await get_downloader()
success, result = await downloader.make_request( success, result = await downloader.make_request(
method, method,
@@ -66,13 +78,45 @@ class CivitaiClient:
use_auth=use_auth, use_auth=use_auth,
**kwargs, **kwargs,
) )
if not success and isinstance(result, RateLimitError): if success:
return True, result
if isinstance(result, RateLimitError):
if result.provider is None: if result.provider is None:
result.provider = "civitai_api" result.provider = "civitai_api"
raise result raise result
if not success and is_offline_cooldown_error(result):
if is_offline_cooldown_error(result):
return False, OFFLINE_FRIENDLY_MESSAGE return False, OFFLINE_FRIENDLY_MESSAGE
return success, result
# Transient server error — retry with exponential backoff
if self._is_transient_server_error(str(result)):
if attempt < max_retries - 1:
wait = 2**attempt # 1s, 2s, 4s
logger.info(
"Transient error on %s %s, retrying in %ds "
"(attempt %d/%d): %s",
method,
url,
wait,
attempt + 1,
max_retries,
result,
)
await asyncio.sleep(wait)
continue
logger.warning(
"All %d retries exhausted for %s %s: %s",
max_retries,
method,
url,
result,
)
return False, result
return False, result
return False, "Unexpected error in _make_request"
@staticmethod @staticmethod
def _remove_comfy_metadata(model_version: Optional[Dict]) -> None: def _remove_comfy_metadata(model_version: Optional[Dict]) -> None:
@@ -201,6 +245,29 @@ class CivitaiClient:
return _from_value(payload) return _from_value(payload)
@staticmethod
def _is_transient_server_error(message: str) -> bool:
"""Return True when the message indicates a transient upstream failure.
Recognises Cloudflare 524, generic 5xx, and connectivity-level flakiness
that should not be treated as a permanent failure.
"""
normalized = message.lower()
if "status 5" in normalized or "status 524" in normalized:
return True
if any(
keyword in normalized
for keyword in (
"connection refused",
"connection reset",
"temporary failure",
"name resolution",
"connection closed",
)
):
return True
return False
async def get_model_versions(self, model_id: str) -> Optional[Dict]: async def get_model_versions(self, model_id: str) -> Optional[Dict]:
"""Get all versions of a model with local availability info""" """Get all versions of a model with local availability info"""
try: try:
@@ -223,6 +290,13 @@ class CivitaiClient:
logger.info("Civitai request skipped: %s", OFFLINE_FRIENDLY_MESSAGE) logger.info("Civitai request skipped: %s", OFFLINE_FRIENDLY_MESSAGE)
return None return None
if message: if message:
if self._is_transient_server_error(message):
logger.info(
"Transient server error for model %s: %s",
model_id,
message,
)
return None
raise RuntimeError(message) raise RuntimeError(message)
return None return None
except RateLimitError: except RateLimitError:
@@ -257,7 +331,7 @@ class CivitaiClient:
"GET", "GET",
f"{self.base_url}/models", f"{self.base_url}/models",
use_auth=True, use_auth=True,
params={"ids": query}, params={"ids": query, "nsfw": "true"},
) )
if not success: if not success:
return None return None
@@ -336,6 +410,25 @@ class CivitaiClient:
return None return None
target_version = self._select_target_version(model_data, model_id, version_id) target_version = self._select_target_version(model_data, model_id, version_id)
# If modelVersions is empty (e.g. CivitAI cache lag for newly published
# models) but a specific version_id is known, fall back to fetching the
# version directly via the individual model-versions endpoint, then
# enrich it with the model-level data we already have.
if target_version is None and version_id is not None:
logger.info(
"modelVersions empty for model %s; falling back to direct "
"version lookup for %s",
model_id,
version_id,
)
version = await self._fetch_version_by_id(version_id)
if version:
self._enrich_version_with_model_data(version, model_data)
self._remove_comfy_metadata(version)
return version
return None
if target_version is None: if target_version is None:
return None return None
@@ -482,6 +575,14 @@ class CivitaiClient:
- The model version data or None if not found - The model version data or None if not found
- An error message if there was an error, or None on success - An error message if there was an error, or None on success
""" """
# In-memory cache avoids redundant API calls within the same
# import/scan flow (e.g. _resolve_base_model_from_checkpoint
# followed by _resolve_and_populate_checkpoint with the same id).
if version_id in self._version_info_cache:
logger.debug("Cache hit for model version info: %s", version_id)
self._version_info_cache.move_to_end(version_id) # LRU bump
return self._version_info_cache[version_id]
try: try:
url = f"{self.base_url}/model-versions/{version_id}" url = f"{self.base_url}/model-versions/{version_id}"
@@ -491,6 +592,11 @@ class CivitaiClient:
if success: if success:
logger.debug("Successfully fetched model version info for: %s", version_id) logger.debug("Successfully fetched model version info for: %s", version_id)
self._remove_comfy_metadata(result) self._remove_comfy_metadata(result)
self._version_info_cache[version_id] = (result, None)
self._version_info_cache.move_to_end(version_id)
# Evict oldest entry when over capacity
if len(self._version_info_cache) > self._MAX_CACHE_ENTRIES:
self._version_info_cache.popitem(last=False)
return result, None return result, None
# Handle specific error cases # Handle specific error cases
@@ -532,6 +638,13 @@ class CivitaiClient:
if not success: if not success:
if is_expected_offline_error(result): if is_expected_offline_error(result):
return None return None
if self._is_transient_server_error(str(result)):
logger.info(
"Transient server error fetching image info for ID %s: %s",
image_id,
result,
)
return None
logger.error( logger.error(
"Failed to fetch image info for ID %s from civitai.red: %s", "Failed to fetch image info for ID %s from civitai.red: %s",
image_id, image_id,
@@ -577,6 +690,59 @@ class CivitaiClient:
logger.error(error_msg) logger.error(error_msg)
return None return None
async def get_model_versions_by_hashes(
self, hashes: List[str]
) -> Optional[List[Dict]]:
"""Fetch full version details for up to 100 SHA256 hashes via the batch endpoint.
Uses POST /api/v1/model-versions/by-hash which returns full version
details including ``usageControl`` and ``earlyAccessEndsAt`` that are
not available from the model-level API.
Args:
hashes: List of SHA256 hashes (max 100 per batch; auto-split).
Returns:
List of version dicts or None on failure.
"""
if not hashes:
return []
BATCH_SIZE = 100
all_versions: List[Dict] = []
for start in range(0, len(hashes), BATCH_SIZE):
batch = hashes[start : start + BATCH_SIZE]
try:
success, result = await self._make_request(
"POST",
f"{self.base_url}/model-versions/by-hash",
use_auth=True,
json=batch,
)
if not success:
logger.warning(
"Batch by-hash request failed for %d hashes: %s",
len(batch),
result,
)
continue
if isinstance(result, list):
all_versions.extend(result)
else:
logger.debug(
"Unexpected by-hash response type: %s", type(result)
)
except RateLimitError:
raise
except Exception as exc: # pragma: no cover - defensive logging
logger.error(
"Error fetching model versions by hashes: %s", exc
)
return all_versions if all_versions else None
async def get_user_models(self, username: str) -> Optional[List[Dict]]: async def get_user_models(self, username: str) -> Optional[List[Dict]]:
"""Fetch all models for a specific Civitai user.""" """Fetch all models for a specific Civitai user."""
if not username: if not username:
@@ -587,7 +753,7 @@ class CivitaiClient:
"GET", "GET",
f"{self.base_url}/models", f"{self.base_url}/models",
use_auth=True, use_auth=True,
params={"username": username}, params={"username": username, "nsfw": "true"},
) )
if not success: if not success:

View File

@@ -18,6 +18,7 @@ from ..utils.constants import (
VALID_LORA_TYPES, VALID_LORA_TYPES,
) )
from ..utils.civitai_utils import normalize_civitai_download_url, rewrite_preview_url from ..utils.civitai_utils import normalize_civitai_download_url, rewrite_preview_url
from ..utils.file_utils import calculate_sha256
from ..utils.preview_selection import resolve_mature_threshold, select_preview_media from ..utils.preview_selection import resolve_mature_threshold, select_preview_media
from ..utils.utils import sanitize_folder_name from ..utils.utils import sanitize_folder_name
from ..utils.exif_utils import ExifUtils from ..utils.exif_utils import ExifUtils
@@ -2239,8 +2240,11 @@ class DownloadManager:
entry.file_name = os.path.splitext(os.path.basename(file_path))[0] entry.file_name = os.path.splitext(os.path.basename(file_path))[0]
# Update size to actual downloaded file size # Update size to actual downloaded file size
entry.size = os.path.getsize(file_path) entry.size = os.path.getsize(file_path)
# Use SHA256 from API metadata (already set in from_civitai_info) # Compute SHA256 locally when the API response didn't include it
# Do not recalculate to avoid blocking during ComfyUI execution if not entry.sha256:
sha256 = await calculate_sha256(file_path)
if sha256:
entry.sha256 = sha256.lower()
entries.append(entry) entries.append(entry)
return entries return entries

View File

@@ -206,7 +206,7 @@ class DownloadedVersionHistoryService:
) )
conn.commit() conn.commit()
async def mark_not_downloaded(self, model_type: str, version_id: int) -> None: async def mark_as_deleted(self, model_type: str, version_id: int) -> None:
normalized_type = _normalize_model_type(model_type) normalized_type = _normalize_model_type(model_type)
normalized_version_id = _normalize_int(version_id) normalized_version_id = _normalize_int(version_id)
if normalized_type is None or normalized_version_id is None: if normalized_type is None or normalized_version_id is None:

View File

@@ -13,6 +13,7 @@ This module provides a centralized download service with:
import os import os
import logging import logging
import asyncio import asyncio
import ssl
import aiohttp import aiohttp
from collections import deque from collections import deque
from dataclasses import dataclass from dataclasses import dataclass
@@ -31,6 +32,20 @@ from .errors import RateLimitError
logger = logging.getLogger(__name__) logger = logging.getLogger(__name__)
def is_ssl_cert_verify_error(exc: BaseException) -> bool:
"""Check if an exception represents an SSL certificate verification failure.
Matches ``ssl.SSLCertVerificationError``, ``aiohttp.ClientConnectorCertificateError``
(which wraps the former), and falls back to the standard OpenSSL error text.
"""
if isinstance(exc, ssl.SSLCertVerificationError):
return True
cert_error = getattr(exc, "certificate_error", None)
if isinstance(cert_error, ssl.SSLCertVerificationError):
return True
return "CERTIFICATE_VERIFY_FAILED" in str(exc)
@dataclass(frozen=True) @dataclass(frozen=True)
class DownloadProgress: class DownloadProgress:
"""Snapshot of a download transfer at a moment in time.""" """Snapshot of a download transfer at a moment in time."""
@@ -265,9 +280,22 @@ class Downloader:
logger.debug( logger.debug(
"Proxy mode: system-level proxy (trust_env) will be used if configured in environment." "Proxy mode: system-level proxy (trust_env) will be used if configured in environment."
) )
# Build SSL context: prefer certifi's CA bundle for broader
# CA coverage across different Python environments (especially
# embedded/compatibility Python builds).
try:
import certifi # type: ignore[import-untyped]
ca_path = certifi.where()
ssl_context = ssl.create_default_context(cafile=ca_path)
logger.debug("SSL: using certifi CA bundle at %s", ca_path)
except (ImportError, FileNotFoundError, ValueError, OSError):
ssl_context = ssl.create_default_context()
logger.debug("SSL: certifi unavailable; using system default CA bundle")
# Optimize TCP connection parameters # Optimize TCP connection parameters
connector = aiohttp.TCPConnector( connector = aiohttp.TCPConnector(
ssl=True, ssl=ssl_context,
limit=8, # Concurrent connections limit=8, # Concurrent connections
ttl_dns_cache=300, # DNS cache timeout ttl_dns_cache=300, # DNS cache timeout
force_close=False, # Keep connections for reuse force_close=False, # Keep connections for reuse
@@ -736,6 +764,17 @@ class Downloader:
DownloadRestartRequested, DownloadRestartRequested,
) as e: ) as e:
retry_count += 1 retry_count += 1
if is_ssl_cert_verify_error(e):
logger.error(
"SSL certificate verification failed when connecting to %s. "
"This is usually caused by an outdated CA certificate bundle "
"in the Python environment. Recommended fixes:\n"
" 1. pip install --upgrade certifi\n"
" 2. pip install pip-system-certs",
url,
)
logger.warning( logger.warning(
f"Network error during download (attempt {retry_count}/{self.max_retries + 1}): {e}" f"Network error during download (attempt {retry_count}/{self.max_retries + 1}): {e}"
) )

View File

@@ -3,6 +3,7 @@ import logging
from typing import Dict from typing import Dict
from .base_model_service import BaseModelService from .base_model_service import BaseModelService
from .auto_tag_service import extract_auto_tags
from ..utils.models import EmbeddingMetadata from ..utils.models import EmbeddingMetadata
from ..config import config from ..config import config
@@ -45,7 +46,8 @@ class EmbeddingService(BaseModelService):
"exclude": bool(embedding_data.get("exclude", False)), "exclude": bool(embedding_data.get("exclude", False)),
"update_available": bool(embedding_data.get("update_available", False)), "update_available": bool(embedding_data.get("update_available", False)),
"skip_metadata_refresh": bool(embedding_data.get("skip_metadata_refresh", False)), "skip_metadata_refresh": bool(embedding_data.get("skip_metadata_refresh", False)),
"civitai": self.filter_civitai_data(embedding_data.get("civitai", {}), minimal=True) "civitai": self.filter_civitai_data(embedding_data.get("civitai", {}), minimal=True),
"auto_tags": embedding_data.get("auto_tags") or extract_auto_tags(embedding_data),
} }
def find_duplicate_hashes(self) -> Dict: def find_duplicate_hashes(self) -> Dict:

View File

@@ -5,6 +5,7 @@ from typing import Dict, List, Optional
from .base_model_service import BaseModelService from .base_model_service import BaseModelService
from .model_query import resolve_sub_type from .model_query import resolve_sub_type
from .auto_tag_service import extract_auto_tags
from ..utils.models import LoraMetadata from ..utils.models import LoraMetadata
from ..config import config from ..config import config
@@ -57,6 +58,7 @@ class LoraService(BaseModelService):
"civitai": self.filter_civitai_data( "civitai": self.filter_civitai_data(
lora_data.get("civitai", {}), minimal=True lora_data.get("civitai", {}), minimal=True
), ),
"auto_tags": lora_data.get("auto_tags") or extract_auto_tags(lora_data),
} }
async def _apply_specific_filters(self, data: List[Dict], **kwargs) -> List[Dict]: async def _apply_specific_filters(self, data: List[Dict], **kwargs) -> List[Dict]:
@@ -310,8 +312,23 @@ class LoraService(BaseModelService):
"""Return cached raw metadata for a LoRA matching the given filename.""" """Return cached raw metadata for a LoRA matching the given filename."""
cache = await self.scanner.get_cached_data(force_refresh=False) cache = await self.scanner.get_cached_data(force_refresh=False)
fn_normalized = filename.replace("\\", "/")
fn_no_ext = fn_normalized
for ext in (".safetensors", ".ckpt", ".pt", ".bin"):
if fn_no_ext.lower().endswith(ext):
fn_no_ext = fn_no_ext[: -len(ext)]
break
for lora in cache.raw_data if cache else []: for lora in cache.raw_data if cache else []:
if lora.get("file_name") == filename: file_name = lora.get("file_name", "")
folder = lora.get("folder", "")
file_name_no_ext = file_name
for ext in (".safetensors", ".ckpt", ".pt", ".bin"):
if file_name_no_ext.lower().endswith(ext):
file_name_no_ext = file_name_no_ext[: -len(ext)]
break
path_name = f"{folder}/{file_name_no_ext}".replace("\\", "/") if folder else file_name_no_ext
if fn_no_ext in (file_name_no_ext, path_name):
return lora return lora
return None return None
@@ -399,7 +416,10 @@ class LoraService(BaseModelService):
locked_loras = locked_loras[:target_count] locked_loras = locked_loras[:target_count]
# Filter out locked LoRAs from available pool # Filter out locked LoRAs from available pool
locked_names = {lora["name"] for lora in locked_loras} locked_names = {
os.path.basename(lora["name"]) if "/" in str(lora.get("name", "")) else lora["name"]
for lora in locked_loras
}
available_pool = [ available_pool = [
l for l in available_loras if l["file_name"] not in locked_names l for l in available_loras if l["file_name"] not in locked_names
] ]
@@ -454,7 +474,7 @@ class LoraService(BaseModelService):
result_loras.append( result_loras.append(
{ {
"name": lora["file_name"], "name": f"{lora['folder']}/{lora['file_name']}" if lora.get("folder") else lora["file_name"],
"strength": model_str, "strength": model_str,
"clipStrength": clip_str, "clipStrength": clip_str,
"active": True, "active": True,
@@ -670,8 +690,9 @@ class LoraService(BaseModelService):
# Return minimal data needed for cycling # Return minimal data needed for cycling
return [ return [
{ {
"file_name": lora["file_name"], "file_name": f"{lora['folder']}/{lora['file_name']}" if lora.get("folder") else lora["file_name"],
"model_name": lora.get("model_name", lora["file_name"]), "model_name": lora.get("model_name", lora["file_name"]),
"folder": lora.get("folder", ""),
} }
for lora in available_loras for lora in available_loras
] ]

View File

@@ -7,6 +7,7 @@ class ModelHashIndex:
def __init__(self): def __init__(self):
self._hash_to_path: Dict[str, str] = {} self._hash_to_path: Dict[str, str] = {}
self._filename_to_hash: Dict[str, str] = {} self._filename_to_hash: Dict[str, str] = {}
self._autov2_to_path: Dict[str, str] = {}
# New data structures for tracking duplicates # New data structures for tracking duplicates
self._duplicate_hashes: Dict[str, List[str]] = {} # sha256 -> list of paths self._duplicate_hashes: Dict[str, List[str]] = {} # sha256 -> list of paths
self._duplicate_filenames: Dict[str, List[str]] = {} # filename -> list of paths self._duplicate_filenames: Dict[str, List[str]] = {} # filename -> list of paths
@@ -63,6 +64,9 @@ class ModelHashIndex:
# Add new mappings # Add new mappings
self._hash_to_path[sha256] = file_path self._hash_to_path[sha256] = file_path
self._filename_to_hash[filename] = sha256 self._filename_to_hash[filename] = sha256
# AutoV2 = first 10 chars of SHA256
if len(sha256) >= 10:
self._autov2_to_path[sha256[:10]] = file_path
def _get_filename_from_path(self, file_path: str) -> str: def _get_filename_from_path(self, file_path: str) -> str:
"""Extract filename without extension from path""" """Extract filename without extension from path"""
@@ -158,6 +162,11 @@ class ModelHashIndex:
if filename in self._filename_to_hash: if filename in self._filename_to_hash:
del self._filename_to_hash[filename] del self._filename_to_hash[filename]
# Remove from AutoV2 index
autov2_keys_to_remove = [k for k, v in self._autov2_to_path.items() if v == file_path]
for k in autov2_keys_to_remove:
del self._autov2_to_path[k]
def remove_by_hash(self, sha256: str) -> None: def remove_by_hash(self, sha256: str) -> None:
"""Remove entry by hash""" """Remove entry by hash"""
sha256 = sha256.lower() sha256 = sha256.lower()
@@ -177,6 +186,10 @@ class ModelHashIndex:
# Remove hash-to-path mapping # Remove hash-to-path mapping
del self._hash_to_path[sha256] del self._hash_to_path[sha256]
autov2_key = sha256[:10]
if autov2_key in self._autov2_to_path:
del self._autov2_to_path[autov2_key]
# Update filename-to-hash and duplicate filenames for all paths # Update filename-to-hash and duplicate filenames for all paths
for path_to_remove in paths_to_remove: for path_to_remove in paths_to_remove:
fname = self._get_filename_from_path(path_to_remove) fname = self._get_filename_from_path(path_to_remove)
@@ -195,13 +208,24 @@ class ModelHashIndex:
# If only one entry remains, it's no longer a duplicate # If only one entry remains, it's no longer a duplicate
del self._duplicate_filenames[fname] del self._duplicate_filenames[fname]
def has_hash(self, sha256: str) -> bool: def has_hash(self, hash_value: str) -> bool:
"""Check if hash exists in index""" """Check if hash exists in index (SHA256 or AutoV2)"""
return sha256.lower() in self._hash_to_path normalized = hash_value.lower()
if normalized in self._hash_to_path:
return True
if len(normalized) == 10:
return normalized in self._autov2_to_path
return False
def get_path(self, sha256: str) -> Optional[str]: def get_path(self, hash_value: str) -> Optional[str]:
"""Get file path for a hash""" """Get file path for a hash (SHA256 or AutoV2)"""
return self._hash_to_path.get(sha256.lower()) normalized = hash_value.lower()
path = self._hash_to_path.get(normalized)
if path is not None:
return path
if len(normalized) == 10:
return self._autov2_to_path.get(normalized)
return None
def get_hash(self, file_path: str) -> Optional[str]: def get_hash(self, file_path: str) -> Optional[str]:
"""Get hash for a file path""" """Get hash for a file path"""
@@ -209,13 +233,16 @@ class ModelHashIndex:
return self._filename_to_hash.get(filename) return self._filename_to_hash.get(filename)
def get_hash_by_filename(self, filename: str) -> Optional[str]: def get_hash_by_filename(self, filename: str) -> Optional[str]:
"""Get hash for a filename without extension""" """Get hash for a filename (bare basename or path-prefixed name)"""
if "/" in filename or "\\" in filename:
filename = os.path.splitext(os.path.basename(filename.replace("\\", "/")))[0]
return self._filename_to_hash.get(filename) return self._filename_to_hash.get(filename)
def clear(self) -> None: def clear(self) -> None:
"""Clear all entries""" """Clear all entries"""
self._hash_to_path.clear() self._hash_to_path.clear()
self._filename_to_hash.clear() self._filename_to_hash.clear()
self._autov2_to_path.clear()
self._duplicate_hashes.clear() self._duplicate_hashes.clear()
self._duplicate_filenames.clear() self._duplicate_filenames.clear()

View File

@@ -111,6 +111,11 @@ class ModelLifecycleService:
self._scanner._hash_index.remove_by_path(file_path) self._scanner._hash_index.remove_by_path(file_path)
await self._sync_update_for_model(model_id) await self._sync_update_for_model(model_id)
persist_current_cache = getattr(self._scanner, "_persist_current_cache", None)
if callable(persist_current_cache):
await persist_current_cache()
return {"success": True, "deleted_files": deleted_files} return {"success": True, "deleted_files": deleted_files}
@staticmethod @staticmethod

View File

@@ -5,7 +5,7 @@ import logging
import random import random
from typing import Optional, Dict, Tuple, Any, List, Sequence from typing import Optional, Dict, Tuple, Any, List, Sequence
from .downloader import get_downloader from .downloader import get_downloader
from .errors import RateLimitError from .errors import RateLimitError, ResourceNotFoundError
try: try:
from bs4 import BeautifulSoup from bs4 import BeautifulSoup
@@ -109,6 +109,18 @@ class ModelMetadataProvider(ABC):
"""Fetch model versions for multiple model ids when supported.""" """Fetch model versions for multiple model ids when supported."""
raise NotImplementedError raise NotImplementedError
async def get_model_versions_by_hashes(
self, hashes: List[str]
) -> Optional[List[Dict]]:
"""Fetch full version details for multiple SHA256 hashes.
Used specifically to retrieve ``usageControl`` which is only
available from the per-version / by-hash API, not from model-level
responses. Providers that cannot resolve hashes should let the
default ``NotImplementedError`` propagate.
"""
raise NotImplementedError
@abstractmethod @abstractmethod
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""" """Get specific model version with additional metadata"""
@@ -141,6 +153,11 @@ class CivitaiModelMetadataProvider(ModelMetadataProvider):
) -> Optional[Dict[int, Dict]]: ) -> Optional[Dict[int, Dict]]:
return await self.client.get_model_versions_bulk(model_ids) return await self.client.get_model_versions_bulk(model_ids)
async def get_model_versions_by_hashes(
self, hashes: List[str]
) -> Optional[List[Dict]]:
return await self.client.get_model_versions_by_hashes(hashes)
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]:
return await self.client.get_model_version(model_id, version_id) return await self.client.get_model_version(model_id, version_id)
@@ -465,6 +482,7 @@ class FallbackMetadataProvider(ModelMetadataProvider):
return None, "Model not found" return None, "Model not found"
async def get_model_versions(self, model_id: str) -> Optional[Dict]: async def get_model_versions(self, model_id: str) -> Optional[Dict]:
not_found_confirmed = False
for provider, label in self._iter_providers(): for provider, label in self._iter_providers():
try: try:
result = await self._call_with_rate_limit( result = await self._call_with_rate_limit(
@@ -475,8 +493,24 @@ class FallbackMetadataProvider(ModelMetadataProvider):
if result: if result:
return result return result
except RateLimitError as exc: except RateLimitError as exc:
if not_found_confirmed:
logger.debug(
"Suppressing rate limit from %s for model %s: "
"already confirmed as not found by another provider",
label,
model_id,
)
return None
exc.provider = exc.provider or label exc.provider = exc.provider or label
raise exc raise exc
except ResourceNotFoundError:
not_found_confirmed = True
logger.debug(
"Provider %s reports model %s as not found",
label,
model_id,
)
continue
except Exception as e: except Exception as e:
logger.debug("Provider %s failed for get_model_versions: %s", label, e) logger.debug("Provider %s failed for get_model_versions: %s", label, e)
continue continue
@@ -519,6 +553,32 @@ class FallbackMetadataProvider(ModelMetadataProvider):
continue continue
return None, "No provider could retrieve the data" return None, "No provider could retrieve the data"
async def get_model_versions_by_hashes(
self, hashes: List[str]
) -> Optional[List[Dict]]:
for provider, label in self._iter_providers():
try:
result = await self._call_with_rate_limit(
label,
provider.get_model_versions_by_hashes,
hashes,
)
if result is not None:
return result
except NotImplementedError:
continue
except RateLimitError as exc:
exc.provider = exc.provider or label
raise exc
except Exception as e:
logger.debug(
"Provider %s failed for get_model_versions_by_hashes: %s",
label,
e,
)
continue
return None
async def get_user_models(self, username: str) -> Optional[List[Dict]]: async def get_user_models(self, username: str) -> Optional[List[Dict]]:
for provider, label in self._iter_providers(): for provider, label in self._iter_providers():
try: try:
@@ -593,6 +653,15 @@ class RateLimitRetryingProvider(ModelMetadataProvider):
model_ids, model_ids,
) )
async def get_model_versions_by_hashes(
self, hashes: List[str]
) -> Optional[List[Dict]]:
return await self._rate_limit_helper.run(
self._label,
self._provider.get_model_versions_by_hashes,
hashes,
)
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]:
return await self._rate_limit_helper.run( return await self._rate_limit_helper.run(
self._label, self._label,
@@ -669,6 +738,17 @@ class ModelMetadataProviderManager:
provider = self._get_provider(provider_name) provider = self._get_provider(provider_name)
return await provider.get_model_version_info(version_id) return await provider.get_model_version_info(version_id)
async def get_model_versions_by_hashes(
self,
hashes: List[str],
provider_name: str = None,
) -> Optional[List[Dict]]:
provider = self._get_provider(provider_name)
try:
return await provider.get_model_versions_by_hashes(hashes)
except NotImplementedError:
return None
async def get_user_models(self, username: str, provider_name: str = None) -> Optional[List[Dict]]: async def get_user_models(self, username: str, provider_name: str = None) -> Optional[List[Dict]]:
"""Fetch models owned by the specified user""" """Fetch models owned by the specified user"""
provider = self._get_provider(provider_name) provider = self._get_provider(provider_name)

View File

@@ -96,6 +96,7 @@ class FilterCriteria:
folder_exclude: Optional[Sequence[str]] = None folder_exclude: Optional[Sequence[str]] = None
base_models: Optional[Sequence[str]] = None base_models: Optional[Sequence[str]] = None
tags: Optional[Dict[str, str]] = None tags: Optional[Dict[str, str]] = None
auto_tags: Optional[Dict[str, str]] = None
favorites_only: bool = False favorites_only: bool = False
search_options: Optional[Dict[str, Any]] = None search_options: Optional[Dict[str, Any]] = None
model_types: Optional[Sequence[str]] = None model_types: Optional[Sequence[str]] = None
@@ -359,10 +360,37 @@ class ModelFilterSet:
] ]
model_types_duration = time.perf_counter() - t0 model_types_duration = time.perf_counter() - t0
auto_tags_duration = 0
auto_tag_filters = criteria.auto_tags or {}
if auto_tag_filters:
t0 = time.perf_counter()
include_at = set()
exclude_at = set()
for tag, state in auto_tag_filters.items():
if not tag:
continue
if state == "exclude":
exclude_at.add(tag)
else:
include_at.add(tag)
if include_at:
items = [
item for item in items
if any(tag in include_at for tag in (item.get("auto_tags") or []))
]
if exclude_at:
items = [
item for item in items
if not any(tag in exclude_at for tag in (item.get("auto_tags") or []))
]
auto_tags_duration = time.perf_counter() - t0
duration = time.perf_counter() - overall_start duration = time.perf_counter() - overall_start
if duration > 0.1: # Only log if it's potentially slow if duration > 0.1: # Only log if it's potentially slow
logger.debug( logger.debug(
"ModelFilterSet.apply took %.3fs (sfw: %.3fs, fav: %.3fs, folder: %.3fs, base: %.3fs, tags: %.3fs, types: %.3fs). " "ModelFilterSet.apply took %.3fs (sfw: %.3fs, fav: %.3fs, folder: %.3fs, base: %.3fs, tags: %.3fs, types: %.3fs, auto_tags: %.3fs). "
"Count: %d -> %d", "Count: %d -> %d",
duration, duration,
sfw_duration, sfw_duration,
@@ -371,6 +399,7 @@ class ModelFilterSet:
base_models_duration, base_models_duration,
tags_duration, tags_duration,
model_types_duration, model_types_duration,
auto_tags_duration,
initial_count, initial_count,
len(items), len(items),
) )

View File

@@ -9,7 +9,7 @@ from typing import Any, Awaitable, Callable, Dict, List, Mapping, Optional, Set,
from ..utils.models import BaseModelMetadata from ..utils.models import BaseModelMetadata
from ..config import config from ..config import config
from ..utils.file_utils import find_preview_file, get_preview_extension from ..utils.file_utils import find_preview_file, get_preview_extension, calculate_sha256
from ..utils.metadata_manager import MetadataManager from ..utils.metadata_manager import MetadataManager
from ..utils.civitai_utils import resolve_license_info from ..utils.civitai_utils import resolve_license_info
from .model_cache import ModelCache from .model_cache import ModelCache
@@ -1067,6 +1067,19 @@ class ModelScanner:
model_data = self._build_cache_entry(metadata, folder=normalized_folder) model_data = self._build_cache_entry(metadata, folder=normalized_folder)
# Compute SHA256 hash when metadata provided none (e.g., CivitAI API response has empty hashes)
if not model_data.get('sha256') and file_path:
try:
logger.info(f"Computing SHA256 hash for {file_path} (was empty from metadata)")
sha256 = await calculate_sha256(file_path)
if sha256:
model_data['sha256'] = sha256.lower()
if isinstance(metadata, BaseModelMetadata):
metadata.sha256 = sha256.lower()
await MetadataManager.save_metadata(file_path, metadata)
except Exception as e:
logger.error(f"Failed to compute SHA256 for {file_path}: {e}")
# Skip excluded models # Skip excluded models
if model_data.get('exclude', False): if model_data.get('exclude', False):
excluded_models.append(model_data['file_path']) excluded_models.append(model_data['file_path'])
@@ -1101,7 +1114,15 @@ class ModelScanner:
def _log_duplicate_filename_summary(self) -> None: def _log_duplicate_filename_summary(self) -> None:
"""Log a batched summary of duplicate filename conflicts once per scan.""" """Log a batched summary of duplicate filename conflicts once per scan."""
if self._hash_index is None: # Duplicate filename detection is only relevant for LoRAs, which use
# basename-only syntax (<lora:name:strength>). Checkpoints and embeddings
# use full relative paths for resolution, so conflicts are not ambiguous.
if self._hash_index is None or self.model_type != "lora":
return
# When full path syntax is active, duplicate filenames across subfolders
# are fully qualified, so there is no ambiguity — skip the warning.
if get_settings_manager().get("lora_syntax_format", "legacy") == "full":
return return
duplicates = self._hash_index.get_duplicate_filenames() duplicates = self._hash_index.get_duplicate_filenames()
@@ -1473,6 +1494,15 @@ class ModelScanner:
file_path_override=normalized_new_path, file_path_override=normalized_new_path,
) )
# Ensure sha256 is populated even when metadata doesn't have it
if not cache_entry.get('sha256') and normalized_new_path and os.path.exists(normalized_new_path):
try:
sha256 = await calculate_sha256(normalized_new_path)
if sha256:
cache_entry['sha256'] = sha256.lower()
except Exception as e:
logger.error(f"Failed to compute SHA256 for {normalized_new_path}: {e}")
if recalculate_type: if recalculate_type:
cache_entry = self.adjust_cached_entry(cache_entry) cache_entry = self.adjust_cached_entry(cache_entry)
@@ -1573,11 +1603,38 @@ class ModelScanner:
try: try:
cache = await self.get_cached_data() cache = await self.get_cached_data()
name_normalized = name.replace("\\", "/")
name_no_ext = name_normalized
for ext in (".safetensors", ".ckpt", ".pt", ".bin"):
if name_no_ext.lower().endswith(ext):
name_no_ext = name_no_ext[: -len(ext)]
break
has_path = "/" in name_no_ext
basename = os.path.basename(name_no_ext) if has_path else name_no_ext
best_fallback = None
for model in cache.raw_data: for model in cache.raw_data:
if model.get("file_name") == name: file_name = model.get("file_name", "")
folder = model.get("folder", "")
file_name_no_ext = file_name
for ext in (".safetensors", ".ckpt", ".pt", ".bin"):
if file_name_no_ext.lower().endswith(ext):
file_name_no_ext = file_name_no_ext[: -len(ext)]
break
path_name = f"{folder}/{file_name_no_ext}".replace("\\", "/") if folder else file_name_no_ext
if name_no_ext == file_name_no_ext or name_no_ext == path_name:
return model return model
return None if has_path and file_name_no_ext == basename:
if folder and name_no_ext.startswith(folder.replace("\\", "/") + "/"):
best_fallback = model
elif best_fallback is None:
best_fallback = model
return best_fallback
except Exception as e: except Exception as e:
logger.error(f"Error getting model info by name: {e}", exc_info=True) logger.error(f"Error getting model info by name: {e}", exc_info=True)
return None return None

View File

@@ -989,18 +989,22 @@ class ModelUpdateService:
fallback_attempted = True fallback_attempted = True
try: try:
response = await metadata_provider.get_model_versions(model_id) response = await metadata_provider.get_model_versions(model_id)
if response is not None:
await self._enrich_version_entries(
metadata_provider,
{model_id: response},
)
except RateLimitError: except RateLimitError:
raise raise
except ResourceNotFoundError as exc: except ResourceNotFoundError as exc:
fallback_error_message = str(exc) or "resource not found" fallback_error_message = str(exc) or "resource not found"
mark_model_as_ignored = True mark_model_as_ignored = True
except Exception as exc: # pragma: no cover - defensive log except Exception as exc: # pragma: no cover - defensive log
logger.error( logger.warning(
"Failed to fetch versions for model %s (%s): %s", "Failed to fetch versions for model %s (%s): %s",
model_id, model_id,
model_type, model_type,
exc, exc,
exc_info=True,
) )
fallback_error_message = str(exc) fallback_error_message = str(exc)
if response is not None: if response is not None:
@@ -1083,6 +1087,136 @@ class ModelUpdateService:
self._upsert_record(record) self._upsert_record(record)
return record return record
async def _enrich_version_entries(
self,
metadata_provider,
responses_by_model_id: Dict[int, Mapping],
) -> None:
"""Enrich version entries with ``usageControl`` via batch hash endpoint.
The model-level API does not include ``usageControl`` on version
entries. This method collects SHA256 hashes from every version's
primary model file, calls ``POST /api/v1/model-versions/by-hash``
(up to 100 hashes per request), and injects ``usageControl`` +
``earlyAccessEndsAt`` into each version entry dict in-place.
"""
if not metadata_provider or not responses_by_model_id:
return
hashes_by_version: Dict[int, str] = {}
for response in responses_by_model_id.values():
hashes_by_version.update(
self._collect_hashes_from_response(response)
)
if not hashes_by_version:
return
version_ids_by_hash: Dict[str, List[int]] = {}
for version_id, sha256 in hashes_by_version.items():
version_ids_by_hash.setdefault(sha256, []).append(version_id)
all_hashes = list(version_ids_by_hash.keys())
BATCH_SIZE = 100
enrichment: Dict[int, Dict] = {}
try:
for start in range(0, len(all_hashes), BATCH_SIZE):
batch = all_hashes[start : start + BATCH_SIZE]
try:
enriched = await metadata_provider.get_model_versions_by_hashes(
batch
)
except NotImplementedError:
return
except RateLimitError:
raise
except Exception:
continue
if not enriched:
continue
for entry in enriched:
if not isinstance(entry, dict):
continue
version_id = entry.get("id")
if version_id is None:
continue
enrichment[version_id] = {
"usageControl": _normalize_string(
entry.get("usageControl")
),
"earlyAccessEndsAt": _normalize_string(
entry.get("earlyAccessEndsAt")
),
}
except RateLimitError:
raise
if not enrichment:
return
for response in responses_by_model_id.values():
versions = response.get("modelVersions")
if not isinstance(versions, list):
continue
for version in versions:
if not isinstance(version, dict):
continue
version_id = version.get("id")
if version_id not in enrichment:
continue
extra = enrichment[version_id]
if extra.get("usageControl") and not version.get("usageControl"):
version["usageControl"] = extra["usageControl"]
if extra.get("earlyAccessEndsAt") and not version.get(
"earlyAccessEndsAt"
):
version["earlyAccessEndsAt"] = extra["earlyAccessEndsAt"]
@staticmethod
def _collect_hashes_from_response(response: Mapping) -> Dict[int, str]:
"""Extract ``{version_id: sha256}`` from a model-level API response.
Returns an empty dict if the response structure is unexpected.
"""
result: Dict[int, str] = {}
versions = response.get("modelVersions")
if not isinstance(versions, list):
return result
for entry in versions:
if not isinstance(entry, dict):
continue
version_id = _normalize_int(entry.get("id"))
if version_id is None:
continue
sha256 = ModelUpdateService._extract_sha256_from_version_entry(entry)
if sha256:
result[version_id] = sha256
return result
@staticmethod
def _extract_sha256_from_version_entry(entry: Mapping) -> Optional[str]:
"""Return the SHA256 hash from the primary model file of a version entry."""
files = entry.get("files")
if not isinstance(files, list):
return None
for file_info in files:
if not isinstance(file_info, dict):
continue
if file_info.get("type") != "Model":
continue
primary = file_info.get("primary")
if primary is not True and str(primary).strip().lower() != "true":
continue
hashes = file_info.get("hashes")
if isinstance(hashes, dict):
sha256 = hashes.get("SHA256")
if sha256:
return sha256
return None
async def _fetch_model_versions_bulk( async def _fetch_model_versions_bulk(
self, self,
metadata_provider, metadata_provider,
@@ -1134,6 +1268,7 @@ class ModelUpdateService:
len(aggregated), len(aggregated),
provider_name, provider_name,
) )
await self._enrich_version_entries(metadata_provider, aggregated)
return aggregated return aggregated
async def _collect_local_versions( async def _collect_local_versions(
@@ -1261,6 +1396,7 @@ class ModelUpdateService:
sort_index=sort_map.get(version_id, index), sort_index=sort_map.get(version_id, index),
early_access_ends_at=remote_version.early_access_ends_at, early_access_ends_at=remote_version.early_access_ends_at,
is_early_access=remote_version.is_early_access, is_early_access=remote_version.is_early_access,
usage_control=remote_version.usage_control,
) )
) )

View File

@@ -38,6 +38,7 @@ class PersistentRecipeCache:
"json_path", "json_path",
"title", "title",
"folder", "folder",
"source_path",
"base_model", "base_model",
"fingerprint", "fingerprint",
"created_date", "created_date",
@@ -334,6 +335,7 @@ class PersistentRecipeCache:
json_path TEXT, json_path TEXT,
title TEXT, title TEXT,
folder TEXT, folder TEXT,
source_path TEXT,
base_model TEXT, base_model TEXT,
fingerprint TEXT, fingerprint TEXT,
created_date REAL, created_date REAL,
@@ -358,6 +360,13 @@ class PersistentRecipeCache:
); );
""" """
) )
# Migration: add source_path column to existing databases
try:
conn.execute(
"ALTER TABLE recipes ADD COLUMN source_path TEXT"
)
except Exception:
pass # column already exists
conn.commit() conn.commit()
self._schema_initialized = True self._schema_initialized = True
except Exception as exc: except Exception as exc:
@@ -406,6 +415,7 @@ class PersistentRecipeCache:
json_path, json_path,
recipe.get("title"), recipe.get("title"),
recipe.get("folder"), recipe.get("folder"),
recipe.get("source_path"),
recipe.get("base_model"), recipe.get("base_model"),
recipe.get("fingerprint"), recipe.get("fingerprint"),
float(recipe.get("created_date") or 0.0), float(recipe.get("created_date") or 0.0),
@@ -456,6 +466,7 @@ class PersistentRecipeCache:
"file_path": row["file_path"] or "", "file_path": row["file_path"] or "",
"title": row["title"] or "", "title": row["title"] or "",
"folder": row["folder"] or "", "folder": row["folder"] or "",
"source_path": row["source_path"] or "",
"base_model": row["base_model"] or "", "base_model": row["base_model"] or "",
"fingerprint": row["fingerprint"] or "", "fingerprint": row["fingerprint"] or "",
"created_date": row["created_date"] or 0.0, "created_date": row["created_date"] or 0.0,

View File

@@ -65,7 +65,7 @@ class RecipeScanner:
cls._instance._civitai_client = None # Will be lazily initialized cls._instance._civitai_client = None # Will be lazily initialized
return cls._instance return cls._instance
REPAIR_VERSION = 3 REPAIR_VERSION = 4
def __init__( def __init__(
self, self,
@@ -292,6 +292,32 @@ class RecipeScanner:
if recipe.get("repair_version", 0) >= self.REPAIR_VERSION: if recipe.get("repair_version", 0) >= self.REPAIR_VERSION:
return False return False
# 1.5 Detect and clear corrupted checkpoint (LoRA data saved as checkpoint).
# A checkpoint whose modelVersionId also appears in a LoRA entry is
# definitely wrong — the CivitAI import code used to pick
# modelVersionIds[0] as the checkpoint, which was often a LoRA.
# Clearing it lets the enrichment flow re-resolve the correct
# checkpoint from CivitAI image metadata.
cp = recipe.get("checkpoint")
lora_mvids = {
l.get("modelVersionId")
for l in recipe.get("loras", [])
if l.get("modelVersionId")
}
if cp and cp.get("modelVersionId") and cp["modelVersionId"] in lora_mvids:
cp_mvid = cp["modelVersionId"]
logger.info(
"Recipe %s: checkpoint modelVersionId %s matches a LoRA — "
"clearing corrupted checkpoint and removing matching LoRA entry",
recipe.get("id"),
cp_mvid,
)
recipe["checkpoint"] = None
recipe["loras"] = [
l for l in recipe.get("loras", [])
if l.get("modelVersionId") != cp_mvid
]
# 2. Identification: Is repair needed? # 2. Identification: Is repair needed?
has_checkpoint = ( has_checkpoint = (
"checkpoint" in recipe "checkpoint" in recipe
@@ -504,6 +530,9 @@ class RecipeScanner:
self._cache.raw_data = recipes self._cache.raw_data = recipes
self._update_folder_metadata(self._cache) self._update_folder_metadata(self._cache)
self._sort_cache_sync() self._sort_cache_sync()
# Backfill source_path from JSON files if missing (schema migration)
if self._backfill_source_path_if_needed(recipes, json_paths):
self._persistent_cache.save_cache(recipes, json_paths)
return self._cache return self._cache
else: else:
# Partial update: some files changed # Partial update: some files changed
@@ -514,6 +543,8 @@ class RecipeScanner:
self._cache.raw_data = recipes self._cache.raw_data = recipes
self._update_folder_metadata(self._cache) self._update_folder_metadata(self._cache)
self._sort_cache_sync() self._sort_cache_sync()
# Backfill source_path from JSON files if missing (schema migration)
self._backfill_source_path_if_needed(recipes, json_paths)
# Persist updated cache # Persist updated cache
self._persistent_cache.save_cache(recipes, json_paths) self._persistent_cache.save_cache(recipes, json_paths)
return self._cache return self._cache
@@ -642,6 +673,34 @@ class RecipeScanner:
return recipes, changed, json_paths return recipes, changed, json_paths
def _backfill_source_path_if_needed(
self,
recipes: List[Dict],
json_paths: Dict[str, str],
) -> bool:
"""Backfill source_path from recipe JSON files if missing from cache.
Returns True if any recipes were updated (caller should persist cache).
"""
updated = False
for recipe in recipes:
if recipe.get("source_path"):
continue
recipe_id = str(recipe.get("id", ""))
json_path = json_paths.get(recipe_id)
if not json_path or not os.path.exists(json_path):
continue
try:
with open(json_path, "r", encoding="utf-8") as f:
json_data = json.load(f)
file_source_path = json_data.get("source_path")
if file_source_path:
recipe["source_path"] = file_source_path
updated = True
except Exception:
pass
return updated
def _full_directory_scan_sync( def _full_directory_scan_sync(
self, recipes_dir: str self, recipes_dir: str
) -> Tuple[List[Dict], Dict[str, str]]: ) -> Tuple[List[Dict], Dict[str, str]]:
@@ -2484,6 +2543,7 @@ class RecipeScanner:
continue continue
file_name = None file_name = None
folder = ""
hash_value = (lora.get("hash") or "").lower() hash_value = (lora.get("hash") or "").lower()
if ( if (
hash_value hash_value
@@ -2493,6 +2553,11 @@ class RecipeScanner:
file_path = self._lora_scanner._hash_index.get_path(hash_value) file_path = self._lora_scanner._hash_index.get_path(hash_value)
if file_path: if file_path:
file_name = os.path.splitext(os.path.basename(file_path))[0] file_name = os.path.splitext(os.path.basename(file_path))[0]
if lora_cache is not None:
for cached_lora in getattr(lora_cache, "raw_data", []):
if cached_lora.get("file_path") == file_path:
folder = cached_lora.get("folder", "")
break
if not file_name and lora.get("modelVersionId") and lora_cache is not None: if not file_name and lora.get("modelVersionId") and lora_cache is not None:
for cached_lora in getattr(lora_cache, "raw_data", []): for cached_lora in getattr(lora_cache, "raw_data", []):
@@ -2507,13 +2572,16 @@ class RecipeScanner:
file_name = os.path.splitext(os.path.basename(cached_path))[ file_name = os.path.splitext(os.path.basename(cached_path))[
0 0
] ]
folder = cached_lora.get("folder", "")
break break
if not file_name: if not file_name:
file_name = lora.get("file_name", "unknown-lora") file_name = lora.get("file_name", "unknown-lora")
folder = lora.get("folder", "")
lora_name = f"{folder}/{file_name}" if folder else file_name
strength = lora.get("strength", 1.0) strength = lora.get("strength", 1.0)
syntax_parts.append(f"<lora:{file_name}:{strength}>") syntax_parts.append(f"<lora:{lora_name}:{strength}>")
return syntax_parts return syntax_parts

View File

@@ -2,6 +2,7 @@
from __future__ import annotations from __future__ import annotations
import asyncio
import base64 import base64
import io import io
import os import os
@@ -14,6 +15,7 @@ from PIL import Image
from ...utils.utils import calculate_recipe_fingerprint from ...utils.utils import calculate_recipe_fingerprint
from ...utils.civitai_utils import extract_civitai_image_id, rewrite_preview_url from ...utils.civitai_utils import extract_civitai_image_id, rewrite_preview_url
from ...recipes.enrichment import RecipeEnricher
from .errors import ( from .errors import (
RecipeDownloadError, RecipeDownloadError,
RecipeNotFoundError, RecipeNotFoundError,
@@ -170,9 +172,11 @@ class RecipeAnalysisService:
await self._download_image(url, temp_path) await self._download_image(url, temp_path)
if metadata is None and not is_video: if metadata is None and not is_video:
metadata = self._exif_utils.extract_image_metadata(temp_path) metadata = await asyncio.to_thread(
self._exif_utils.extract_image_metadata, temp_path
)
return await self._parse_metadata( result = await self._parse_metadata(
metadata or {}, metadata or {},
recipe_scanner=recipe_scanner, recipe_scanner=recipe_scanner,
image_path=temp_path, image_path=temp_path,
@@ -180,6 +184,37 @@ class RecipeAnalysisService:
is_video=is_video, is_video=is_video,
extension=extension, extension=extension,
) )
if civitai_image_id and image_info and not result.payload.get("error"):
mvid = image_info.get("modelVersionId")
if not mvid:
mvids = image_info.get("modelVersionIds")
if isinstance(mvids, list) and mvids:
mvid = mvids[0]
recipe_for_enrich = {
"gen_params": result.payload.get("gen_params", {}),
"loras": result.payload.get("loras", []),
"base_model": result.payload.get("base_model", "") or "",
"checkpoint": result.payload.get("checkpoint") or result.payload.get("model"),
"source_path": url,
}
await RecipeEnricher.enrich_recipe(
recipe=recipe_for_enrich,
civitai_client=civitai_client,
request_params=None,
prefetched_civitai_meta_raw=image_info.get("meta"),
prefetched_model_version_id=mvid,
)
result.payload["gen_params"] = recipe_for_enrich["gen_params"]
if recipe_for_enrich.get("checkpoint"):
result.payload["checkpoint"] = recipe_for_enrich["checkpoint"]
if recipe_for_enrich.get("base_model"):
result.payload["base_model"] = recipe_for_enrich["base_model"]
return result
finally: finally:
if temp_path: if temp_path:
self._safe_cleanup(temp_path) self._safe_cleanup(temp_path)
@@ -199,7 +234,9 @@ class RecipeAnalysisService:
if not os.path.isfile(normalized_path): if not os.path.isfile(normalized_path):
raise RecipeNotFoundError("File not found") raise RecipeNotFoundError("File not found")
metadata = self._exif_utils.extract_image_metadata(normalized_path) metadata = await asyncio.to_thread(
self._exif_utils.extract_image_metadata, normalized_path
)
if not metadata: if not metadata:
return self._metadata_not_found_response(normalized_path) return self._metadata_not_found_response(normalized_path)

View File

@@ -96,6 +96,7 @@ DEFAULT_SETTINGS: Dict[str, Any] = {
"compact_mode": False, "compact_mode": False,
"priority_tags": DEFAULT_PRIORITY_TAG_CONFIG.copy(), "priority_tags": DEFAULT_PRIORITY_TAG_CONFIG.copy(),
"model_name_display": "model_name", "model_name_display": "model_name",
"lora_syntax_format": "legacy",
"model_card_footer_action": "replace_preview", "model_card_footer_action": "replace_preview",
"show_version_on_card": True, "show_version_on_card": True,
"update_flag_strategy": "same_base", "update_flag_strategy": "same_base",

View File

@@ -4,7 +4,9 @@ from __future__ import annotations
import os import os
from typing import Awaitable, Callable, Dict, List, Sequence from typing import Awaitable, Callable, Dict, List, Sequence, Tuple
from .auto_tag_service import extract_auto_tags
class TagUpdateService: class TagUpdateService:
@@ -20,9 +22,8 @@ class TagUpdateService:
new_tags: Sequence[str], new_tags: Sequence[str],
metadata_loader: Callable[[str], Awaitable[Dict[str, object]]], metadata_loader: Callable[[str], Awaitable[Dict[str, object]]],
update_cache: Callable[[str, str, Dict[str, object]], Awaitable[bool]], update_cache: Callable[[str, str, Dict[str, object]], Awaitable[bool]],
) -> List[str]: ) -> Tuple[List[str], List[str]]:
"""Add tags to a metadata entry while keeping case-insensitive uniqueness.""" """Add tags to a metadata entry and return updated tags and auto_tags."""
base, _ = os.path.splitext(file_path) base, _ = os.path.splitext(file_path)
metadata_path = f"{base}.metadata.json" metadata_path = f"{base}.metadata.json"
metadata = await metadata_loader(metadata_path) metadata = await metadata_loader(metadata_path)
@@ -44,5 +45,6 @@ class TagUpdateService:
await self._metadata_manager.save_metadata(file_path, metadata) await self._metadata_manager.save_metadata(file_path, metadata)
await update_cache(file_path, file_path, metadata) await update_cache(file_path, file_path, metadata)
return existing_tags auto_tags = extract_auto_tags(metadata)
return existing_tags, auto_tags

View File

@@ -7,7 +7,7 @@ from typing import Any, Dict, Iterable, Mapping, Sequence
from urllib.parse import parse_qs, urlparse, urlunparse from urllib.parse import parse_qs, urlparse, urlunparse
_SUPPORTED_CIVITAI_PAGE_HOSTS = frozenset({"civitai.com", "civitai.red"}) _SUPPORTED_CIVITAI_PAGE_HOSTS = frozenset({"civitai.com", "civitai.red", "civitai.green"})
DEFAULT_CIVITAI_PAGE_HOST = "civitai.com" DEFAULT_CIVITAI_PAGE_HOST = "civitai.com"
_DEFAULT_ALLOW_COMMERCIAL_USE: Sequence[str] = ("Sell",) _DEFAULT_ALLOW_COMMERCIAL_USE: Sequence[str] = ("Sell",)
_LICENSE_DEFAULTS: Dict[str, Any] = { _LICENSE_DEFAULTS: Dict[str, Any] = {
@@ -239,9 +239,9 @@ def _resolve_commercial_bits(values: Sequence[str]) -> int:
normalized_values.add(normalized) normalized_values.add(normalized)
has_sell = "sell" in normalized_values has_sell = "sell" in normalized_values
has_rent = has_sell or "rent" in normalized_values has_rent = "rent" in normalized_values
has_rentcivit = has_rent or "rentcivit" in normalized_values has_rentcivit = "rentcivit" in normalized_values
has_image = has_sell or "image" in normalized_values has_image = "image" in normalized_values
commercial_bits = ( commercial_bits = (
(1 if has_sell else 0) << 3 (1 if has_sell else 0) << 3

View File

@@ -178,5 +178,8 @@ SUPPORTED_DOWNLOAD_SKIP_BASE_MODELS = frozenset(
"Wan Video 2.5 I2V", "Wan Video 2.5 I2V",
"Hunyuan Video", "Hunyuan Video",
"Anima", "Anima",
"Ernie",
"Ernie Turbo",
"Nucleus",
] ]
) )

View File

@@ -397,13 +397,12 @@ class DownloadManager:
models_with_hash = len(all_models_with_hash) models_with_hash = len(all_models_with_hash)
# Calculate pending count: check which models actually need processing # Calculate pending count: check which models actually need processing.
# A model is pending if it has a hash, is not in processed_models, # A model is pending if it has a hash, is not already processed or known-failed,
# and its folder doesn't exist or is empty # and its folder doesn't exist or is empty.
pending_hashes = set() pending_hashes = set()
for model_hash, model_name in all_models_with_hash: for model_hash, model_name in all_models_with_hash:
if model_hash not in processed_models: if model_hash not in processed_models and model_hash not in failed_models:
# Check if model folder exists with files
model_dir = ExampleImagePathResolver.get_model_folder( model_dir = ExampleImagePathResolver.get_model_folder(
model_hash, active_library model_hash, active_library
) )

View File

@@ -452,3 +452,111 @@ class MetadataUpdater:
except Exception as e: except Exception as e:
logger.error(f"Error parsing image metadata: {e}", exc_info=True) logger.error(f"Error parsing image metadata: {e}", exc_info=True)
return None return None
@staticmethod
async def prune_stale_example_images(metadata) -> bool:
"""Remove example-image metadata entries whose files no longer exist on disk.
Checks ``civitai.customImages`` (by ``id``) and ``civitai.images`` entries
that have an empty ``url`` (no remote fallback) against actual files in
the model's example-image folder. Stale entries are removed in-place so
the caller can persist the cleaned metadata afterwards.
Args:
metadata: A ``BaseModelMetadata`` instance (modified in place).
Returns:
True if at least one entry was removed.
"""
from ..utils.example_images_paths import get_model_folder
model_hash = getattr(metadata, "sha256", None)
if not model_hash:
return False
model_folder = get_model_folder(model_hash)
if not model_folder:
return False
civitai = getattr(metadata, "civitai", None)
if not isinstance(civitai, dict):
return False
has_changes = False
custom_images = civitai.get("customImages")
if isinstance(custom_images, list) and custom_images:
stale: list[int] = []
for idx, img in enumerate(custom_images):
img_id = img.get("id", "")
if not img_id:
continue
if not os.path.isdir(model_folder):
stale.append(idx)
else:
found = False
try:
prefix = f"custom_{img_id}"
for fname in os.listdir(model_folder):
if fname.startswith(prefix) and os.path.isfile(
os.path.join(model_folder, fname)
):
found = True
break
except OSError:
stale.append(idx)
continue
if not found:
stale.append(idx)
if stale:
for idx in reversed(stale):
custom_images.pop(idx)
has_changes = True
logger.info(
"Pruned %d stale custom image(s) for %s",
len(stale),
getattr(metadata, "model_name", model_hash),
)
images = civitai.get("images")
if isinstance(images, list) and images:
stale: list[int] = []
for idx, img in enumerate(images):
if img.get("url", ""):
# Has a remote fallback keep it even if the local copy
# is gone.
continue
if not os.path.isdir(model_folder):
stale.append(idx)
else:
found = False
try:
prefix = f"image_{idx}."
for fname in os.listdir(model_folder):
if fname.startswith(prefix):
found = True
break
except OSError:
stale.append(idx)
continue
if not found:
stale.append(idx)
if stale:
for idx in reversed(stale):
images.pop(idx)
has_changes = True
logger.info(
"Pruned %d stale image entry(ies) for %s",
len(stale),
getattr(metadata, "model_name", model_hash),
)
return has_changes

View File

@@ -15,11 +15,39 @@ def get_lora_info(lora_name):
scanner = await ServiceRegistry.get_lora_scanner() scanner = await ServiceRegistry.get_lora_scanner()
cache = await scanner.get_cached_data() cache = await scanner.get_cached_data()
lora_name_normalized = lora_name.replace("\\", "/")
lora_name_no_ext = lora_name_normalized
for ext in (".safetensors", ".ckpt", ".pt", ".bin"):
if lora_name_no_ext.lower().endswith(ext):
lora_name_no_ext = lora_name_no_ext[: -len(ext)]
break
has_path = "/" in lora_name_no_ext
basename = os.path.basename(lora_name_no_ext) if has_path else lora_name_no_ext
best_fallback = None
for item in cache.raw_data: for item in cache.raw_data:
if item.get("file_name") == lora_name: file_name = item.get("file_name", "")
folder = item.get("folder", "")
file_name_no_ext = file_name
for ext in (".safetensors", ".ckpt", ".pt", ".bin"):
if file_name_no_ext.lower().endswith(ext):
file_name_no_ext = file_name_no_ext[: -len(ext)]
break
path_name = f"{folder}/{file_name_no_ext}".replace("\\", "/") if folder else file_name_no_ext
if lora_name_no_ext not in (file_name_no_ext, path_name):
if has_path and file_name_no_ext == basename:
if folder and lora_name_no_ext.startswith(folder.replace("\\", "/") + "/"):
best_fallback = item
elif best_fallback is None:
best_fallback = item
continue
file_path = item.get("file_path") file_path = item.get("file_path")
if file_path: if not file_path:
# Check all lora roots including extra paths continue
all_roots = list(config.loras_roots or []) + list( all_roots = list(config.loras_roots or []) + list(
config.extra_loras_roots or [] config.extra_loras_roots or []
) )
@@ -29,16 +57,22 @@ def get_lora_info(lora_name):
relative_path = os.path.relpath(file_path, root).replace( relative_path = os.path.relpath(file_path, root).replace(
os.sep, "/" os.sep, "/"
) )
# Get trigger words from civitai metadata
civitai = item.get("civitai", {}) civitai = item.get("civitai", {})
trigger_words = ( trigger_words = (
civitai.get("trainedWords", []) if civitai else [] civitai.get("trainedWords", []) if civitai else []
) )
return relative_path, trigger_words return relative_path, trigger_words
# If not found in any root, return path with trigger words from cache
civitai = item.get("civitai", {}) civitai = item.get("civitai", {})
trigger_words = civitai.get("trainedWords", []) if civitai else [] trigger_words = civitai.get("trainedWords", []) if civitai else []
return file_path, trigger_words return file_path, trigger_words
if best_fallback:
file_path = best_fallback.get("file_path")
if file_path:
civitai = best_fallback.get("civitai", {})
trigger_words = civitai.get("trainedWords", []) if civitai else []
return file_path, trigger_words
return lora_name, [] return lora_name, []
try: try:
@@ -77,15 +111,54 @@ def get_lora_info_absolute(lora_name):
scanner = await ServiceRegistry.get_lora_scanner() scanner = await ServiceRegistry.get_lora_scanner()
cache = await scanner.get_cached_data() cache = await scanner.get_cached_data()
lora_name_normalized = lora_name.replace("\\", "/")
lora_name_no_ext = lora_name_normalized
for ext in (".safetensors", ".ckpt", ".pt", ".bin"):
if lora_name_no_ext.lower().endswith(ext):
lora_name_no_ext = lora_name_no_ext[: -len(ext)]
break
has_path = "/" in lora_name_no_ext
basename = os.path.basename(lora_name_no_ext) if has_path else lora_name_no_ext
best_fallback = None
for item in cache.raw_data: for item in cache.raw_data:
if item.get("file_name") == lora_name: file_name = item.get("file_name", "")
folder = item.get("folder", "")
file_name_no_ext = file_name
for ext in (".safetensors", ".ckpt", ".pt", ".bin"):
if file_name_no_ext.lower().endswith(ext):
file_name_no_ext = file_name_no_ext[: -len(ext)]
break
path_name = f"{folder}/{file_name_no_ext}".replace("\\", "/") if folder else file_name_no_ext
if lora_name_no_ext == file_name_no_ext:
file_path = item.get("file_path") file_path = item.get("file_path")
if file_path: if file_path:
# Return absolute path directly
# Get trigger words from civitai metadata
civitai = item.get("civitai", {}) civitai = item.get("civitai", {})
trigger_words = civitai.get("trainedWords", []) if civitai else [] trigger_words = civitai.get("trainedWords", []) if civitai else []
return file_path, trigger_words return file_path, trigger_words
if lora_name_no_ext == path_name:
file_path = item.get("file_path")
if file_path:
civitai = item.get("civitai", {})
trigger_words = civitai.get("trainedWords", []) if civitai else []
return file_path, trigger_words
if has_path and file_name_no_ext == basename:
if folder and lora_name_no_ext.startswith(folder.replace("\\", "/") + "/"):
best_fallback = item
elif best_fallback is None:
best_fallback = item
if best_fallback:
file_path = best_fallback.get("file_path")
if file_path:
civitai = best_fallback.get("civitai", {})
trigger_words = civitai.get("trainedWords", []) if civitai else []
return file_path, trigger_words
return lora_name, [] return lora_name, []
try: try:

View File

@@ -1,7 +1,7 @@
[project] [project]
name = "comfyui-lora-manager" name = "comfyui-lora-manager"
description = "Revolutionize your workflow with the ultimate LoRA companion for ComfyUI!" description = "Revolutionize your workflow with the ultimate LoRA companion for ComfyUI!"
version = "1.0.5" version = "1.0.10"
license = {file = "LICENSE"} license = {file = "LICENSE"}
dependencies = [ dependencies = [
"aiohttp", "aiohttp",

View File

@@ -10,13 +10,14 @@
"C:/path/to/your/checkpoints_folder", "C:/path/to/your/checkpoints_folder",
"C:/path/to/another/checkpoints_folder" "C:/path/to/another/checkpoints_folder"
], ],
"unet": [
"C:/path/to/your/diffusion_models_folder",
"C:/path/to/another/diffusion_models_folder"
],
"embeddings": [ "embeddings": [
"C:/path/to/your/embeddings_folder", "C:/path/to/your/embeddings_folder",
"C:/path/to/another/embeddings_folder" "C:/path/to/another/embeddings_folder"
] ]
}, },
"example_images_open_mode": "system",
"example_images_local_root": "",
"example_images_open_uri_template": "",
"auto_organize_exclusions": [] "auto_organize_exclusions": []
} }

View File

@@ -507,21 +507,96 @@
background: rgba(0,0,0,0.18); /* Optional: subtle background for contrast */ background: rgba(0,0,0,0.18); /* Optional: subtle background for contrast */
} }
/* Version row — flex container for badges + version names */
.version-row {
display: flex;
flex-wrap: wrap;
align-items: center;
gap: 3px;
margin-top: 2px;
}
/* Badge + version-name binding: they wrap as a single unit */
.badge-version-unit {
display: inline-flex;
align-items: center;
gap: 3px;
min-width: 0;
flex-shrink: 0;
}
/* Medium density adjustments for version name */ /* Medium density adjustments for version name */
.medium-density .version-name { .medium-density .version-name {
font-size: 0.8em; font-size: 0.8em;
} }
.medium-density .badge-version-unit .version-name {
max-width: 90px;
white-space: nowrap;
overflow: hidden;
text-overflow: ellipsis;
}
/* Compact density adjustments for version name */ /* Compact density adjustments for version name */
.compact-density .version-name { .compact-density .version-name {
font-size: 0.75em; font-size: 0.75em;
} }
/* Hide civitai version name when setting is disabled */ .compact-density .badge-version-unit .version-name {
body.hide-card-version .civitai-version { max-width: 70px;
white-space: nowrap;
overflow: hidden;
text-overflow: ellipsis;
}
.medium-density .version-row {
gap: 2px;
}
/* HIGH / LOW badges — shown inline before version name in card footer */
.hl-badge {
display: inline-block;
font-size: 0.7em;
font-weight: 600;
line-height: 1.1;
padding: 1px 5px;
border-radius: var(--border-radius-xs);
border: 1px solid rgba(255, 255, 255, 0.2);
white-space: nowrap;
}
.hl-badge--high {
color: oklch(75% 0.12 230);
background: oklch(55% 0.15 240 / 0.25);
border-color: oklch(60% 0.18 250 / 0.3);
}
.hl-badge--low {
color: oklch(78% 0.10 185);
background: oklch(50% 0.10 190 / 0.25);
border-color: oklch(55% 0.12 195 / 0.3);
}
.medium-density .hl-badge {
font-size: 0.65em;
}
.compact-density .hl-badge {
font-size: 0.62em;
padding: 0px 4px;
}
/* Hide version-related elements when setting is disabled */
body.hide-card-version .civitai-version,
body.hide-card-version .hl-badge {
display: none; display: none;
} }
/* Compact density adjustments for version name */
.compact-density .version-name {
font-size: 0.75em;
}
/* Prevent text selection on cards and interactive elements */ /* Prevent text selection on cards and interactive elements */
.model-card, .model-card,
.model-card *, .model-card *,

View File

@@ -255,25 +255,28 @@
transform: translateY(-2px); transform: translateY(-2px);
} }
/* File name copy styles */ /* Editable inline field styles (file name, version name, etc.) */
.file-name-wrapper { .file-name-wrapper,
.version-name-wrapper {
display: flex; display: flex;
align-items: center; align-items: center;
gap: 8px; gap: 8px;
padding: 4px; padding: 4px 0;
border-radius: var(--border-radius-xs); border-radius: var(--border-radius-xs);
transition: background-color 0.2s; transition: background-color 0.2s;
position: relative; position: relative;
} }
.file-name-content { .file-name-content,
padding: 2px 4px; .version-name-content {
padding: 2px 4px 2px 0;
border-radius: var(--border-radius-xs); border-radius: var(--border-radius-xs);
border: 1px solid transparent; border: 1px solid transparent;
flex: 1; flex: 1;
} }
.file-name-wrapper.editing .file-name-content { .file-name-wrapper.editing .file-name-content,
.version-name-wrapper.editing .version-name-content {
border: 1px solid var(--lora-accent); border: 1px solid var(--lora-accent);
background: var(--bg-color); background: var(--bg-color);
outline: none; outline: none;
@@ -283,7 +286,8 @@
.edit-model-name-btn, .edit-model-name-btn,
.edit-file-name-btn, .edit-file-name-btn,
.edit-base-model-btn, .edit-base-model-btn,
.edit-model-description-btn { .edit-model-description-btn,
.edit-version-name-btn {
background: transparent; background: transparent;
border: none; border: none;
color: var(--text-color); color: var(--text-color);
@@ -299,9 +303,11 @@
.edit-file-name-btn.visible, .edit-file-name-btn.visible,
.edit-base-model-btn.visible, .edit-base-model-btn.visible,
.edit-model-description-btn.visible, .edit-model-description-btn.visible,
.edit-version-name-btn.visible,
.model-name-header:hover .edit-model-name-btn, .model-name-header:hover .edit-model-name-btn,
.file-name-wrapper:hover .edit-file-name-btn, .file-name-wrapper:hover .edit-file-name-btn,
.base-model-display:hover .edit-base-model-btn, .base-model-display:hover .edit-base-model-btn,
.version-name-wrapper:hover .edit-version-name-btn,
.model-name-header:hover .edit-model-description-btn { .model-name-header:hover .edit-model-description-btn {
opacity: 0.5; opacity: 0.5;
} }
@@ -309,14 +315,16 @@
.edit-model-name-btn:hover, .edit-model-name-btn:hover,
.edit-file-name-btn:hover, .edit-file-name-btn:hover,
.edit-base-model-btn:hover, .edit-base-model-btn:hover,
.edit-model-description-btn:hover { .edit-model-description-btn:hover,
.edit-version-name-btn:hover {
opacity: 0.8 !important; opacity: 0.8 !important;
background: rgba(0, 0, 0, 0.05); background: rgba(0, 0, 0, 0.05);
} }
[data-theme="dark"] .edit-model-name-btn:hover, [data-theme="dark"] .edit-model-name-btn:hover,
[data-theme="dark"] .edit-file-name-btn:hover, [data-theme="dark"] .edit-file-name-btn:hover,
[data-theme="dark"] .edit-base-model-btn:hover { [data-theme="dark"] .edit-base-model-btn:hover,
[data-theme="dark"] .edit-version-name-btn:hover {
background: rgba(255, 255, 255, 0.05); background: rgba(255, 255, 255, 0.05);
} }
@@ -338,7 +346,7 @@
} }
.base-model-content { .base-model-content {
padding: 2px 4px; padding: 2px 4px 2px 0;
border-radius: var(--border-radius-xs); border-radius: var(--border-radius-xs);
border: 1px solid transparent; border: 1px solid transparent;
color: var(--text-color); color: var(--text-color);

View File

@@ -387,6 +387,10 @@
cursor: not-allowed; cursor: not-allowed;
} }
.version-action-disabled-wrapper {
display: inline-flex;
}
.versions-loading-state, .versions-loading-state,
.versions-empty, .versions-empty,
.versions-error { .versions-error {

View File

@@ -0,0 +1,124 @@
.media-viewer-overlay {
position: fixed;
top: 0;
left: 0;
right: 0;
bottom: 0;
background: rgba(0, 0, 0, 0);
z-index: 10000;
display: flex;
align-items: center;
justify-content: center;
cursor: pointer;
transition: background 0.3s ease;
}
.media-viewer-overlay.active {
background: rgba(0, 0, 0, 0.92);
}
.media-viewer-close {
position: fixed;
top: 16px;
right: 16px;
width: 40px;
height: 40px;
border-radius: 50%;
background: rgba(255, 255, 255, 0.1);
border: none;
color: #fff;
font-size: 18px;
display: flex;
align-items: center;
justify-content: center;
cursor: pointer;
z-index: 10001;
transition: background 0.2s ease;
opacity: 0;
}
.media-viewer-overlay.active .media-viewer-close {
opacity: 1;
}
.media-viewer-close:hover {
background: rgba(255, 255, 255, 0.25);
}
.media-viewer-content-container {
display: flex;
flex-direction: column;
align-items: center;
justify-content: center;
max-width: 90vw;
max-height: 95vh;
cursor: default;
}
.media-viewer-media {
display: block;
max-width: 90vw;
max-height: 85vh;
object-fit: contain;
border-radius: 4px;
box-shadow: 0 4px 24px rgba(0, 0, 0, 0.4);
}
.media-viewer-video {
max-height: 80vh;
}
.media-viewer-counter {
margin-top: 8px;
color: rgba(255, 255, 255, 0.5);
font-size: 0.85em;
text-align: center;
min-height: 1.2em;
}
.media-viewer-title {
margin-top: 4px;
color: rgba(255, 255, 255, 0.7);
font-size: 0.9em;
text-align: center;
max-width: 90vw;
overflow: hidden;
text-overflow: ellipsis;
white-space: nowrap;
}
.media-viewer-nav {
position: fixed;
top: 50%;
transform: translateY(-50%);
width: 48px;
height: 80px;
border-radius: 4px;
background: rgba(255, 255, 255, 0.06);
border: none;
color: #fff;
font-size: 24px;
display: flex;
align-items: center;
justify-content: center;
cursor: pointer;
z-index: 10001;
opacity: 0;
transition: opacity 0.2s ease, background 0.2s ease;
}
.media-viewer-overlay.active .media-viewer-nav {
opacity: 1;
}
.media-viewer-nav:hover {
background: rgba(255, 255, 255, 0.18);
}
.media-viewer-prev {
left: 16px;
}
.media-viewer-next {
right: 16px;
}

View File

@@ -41,6 +41,63 @@
text-align: center; text-align: center;
} }
/* Section Headers */
.context-menu-section-header {
padding: 6px 12px 2px;
font-size: 11px;
font-weight: 600;
text-transform: uppercase;
letter-spacing: 0.5px;
color: var(--text-muted);
cursor: default;
user-select: none;
}
/* Submenu */
.context-menu-item.has-submenu {
position: relative;
justify-content: space-between;
}
.submenu-arrow {
margin-left: auto;
font-size: 10px;
width: auto !important;
}
.context-submenu {
position: absolute;
left: calc(100% - 4px);
top: -1px;
display: none;
background: var(--lora-surface);
border: 1px solid var(--border-color);
border-radius: var(--border-radius-xs);
padding: 0;
min-width: 200px;
box-shadow: 0 2px 10px rgba(0, 0, 0, 0.2);
z-index: 1001;
backdrop-filter: blur(10px);
}
.context-submenu .context-menu-item {
white-space: nowrap;
margin: 0;
}
.context-submenu .context-menu-item:first-child {
padding-top: 9px;
}
.context-submenu .context-menu-item:last-child {
padding-bottom: 9px;
}
.context-submenu.flip-left {
left: auto;
right: 100%;
}
/* NSFW Level Selector */ /* NSFW Level Selector */
.nsfw-level-selector { .nsfw-level-selector {
position: fixed; position: fixed;

View File

@@ -33,6 +33,39 @@
animation: modalFadeIn 0.2s ease-out; animation: modalFadeIn 0.2s ease-out;
} }
#resolveFilenameConflictsModal .confirmation-message {
color: var(--text-color);
margin: var(--space-2) 0;
font-size: 1em;
line-height: 1.5;
}
#resolveFilenameConflictsModal .resolve-conflicts-detail {
color: var(--text-color);
margin: var(--space-2) 0;
font-size: 0.95em;
line-height: 1.5;
}
#resolveFilenameConflictsModal .resolve-conflicts-detail code {
background: var(--lora-surface);
padding: 2px 6px;
border-radius: 3px;
font-family: monospace;
border: 1px solid var(--lora-border);
}
#resolveFilenameConflictsModal .resolve-conflicts-impact {
background: var(--lora-surface);
border: 1px solid var(--lora-border);
border-radius: var(--border-radius-sm);
padding: var(--space-2);
margin: var(--space-2) 0;
color: var(--text-color);
text-align: left;
line-height: 1.5;
}
.delete-model-info, .delete-model-info,
.exclude-model-info { .exclude-model-info {
/* Update info display styling */ /* Update info display styling */

View File

@@ -1369,3 +1369,14 @@ input:checked + .toggle-slider:before {
background: var(--lora-error); background: var(--lora-error);
color: white; color: white;
} }
/* Highlight animation for setting items targeted from Doctor actions */
@keyframes settings-highlight-pulse {
0%, 100% { box-shadow: 0 0 0 0 rgba(from var(--lora-accent) r g b / 0.4); }
50% { box-shadow: 0 0 0 4px rgba(from var(--lora-accent) r g b / 0.2); }
}
.settings-setting-highlight {
animation: settings-highlight-pulse 1.5s ease-in-out 3;
border-radius: var(--border-radius-xs);
}

View File

@@ -4,15 +4,20 @@
justify-content: flex-start; justify-content: flex-start;
align-items: flex-start; align-items: flex-start;
border-bottom: 1px solid var(--lora-border); border-bottom: 1px solid var(--lora-border);
padding-bottom: 10px; padding-bottom: var(--space-2);
margin-bottom: 10px; margin-bottom: var(--space-3);
position: relative;
} }
.recipe-modal-header h2 { .recipe-modal-header h2 {
font-size: 1.4em; /* Reduced from default h2 size */ margin: 0 0 var(--space-1);
line-height: 1.3; padding: var(--space-1);
margin: 0; border-radius: var(--border-radius-xs);
max-height: 2.6em; /* Limit to 2 lines */ font-size: 1.5em;
font-weight: 600;
line-height: 1.2;
color: var(--text-color);
max-height: 2.8em;
overflow: hidden; overflow: hidden;
text-overflow: ellipsis; text-overflow: ellipsis;
display: -webkit-box; display: -webkit-box;
@@ -127,7 +132,7 @@
/* Recipe Tags styles */ /* Recipe Tags styles */
.recipe-tags-container { .recipe-tags-container {
position: relative; position: relative;
margin-top: 6px; margin-top: 0;
margin-bottom: 10px; margin-bottom: 10px;
} }
@@ -225,6 +230,62 @@
overflow: hidden; overflow: hidden;
} }
/* Recipe Header Actions */
.recipe-header-actions {
display: flex;
align-items: center;
gap: var(--space-2);
flex-wrap: wrap;
width: 100%;
margin-bottom: var(--space-1);
flex-shrink: 0;
min-height: 0;
}
.recipe-header-actions:empty {
display: none;
}
.recipe-source-url-btn {
display: inline-flex;
align-items: center;
gap: 6px;
padding: 6px 12px;
background: rgba(0, 0, 0, 0.03);
border: 1px solid rgba(0, 0, 0, 0.1);
border-radius: var(--border-radius-sm);
color: var(--text-color);
cursor: pointer;
font-weight: 500;
font-size: 0.9em;
transition: all 0.2s;
white-space: nowrap;
}
[data-theme="dark"] .recipe-source-url-btn {
background: rgba(255, 255, 255, 0.03);
border: 1px solid var(--lora-border);
}
.recipe-source-url-btn:hover {
background: oklch(var(--lora-accent-l) var(--lora-accent-c) var(--lora-accent-h) / 0.1);
border-color: var(--lora-accent);
transform: translateY(-1px);
}
.recipe-source-url-btn i {
font-size: 14px;
display: flex;
align-items: center;
justify-content: center;
}
@media (max-height: 860px) {
.recipe-header-actions {
padding-bottom: 4px;
}
}
/* Top Section: Preview and Gen Params */ /* Top Section: Preview and Gen Params */
.recipe-top-section { .recipe-top-section {
display: grid; display: grid;
@@ -396,14 +457,54 @@
flex-direction: column; flex-direction: column;
} }
.recipe-gen-params h3 { .gen-params-header-row {
margin-top: 0; display: flex;
align-items: center;
justify-content: space-between;
margin-bottom: var(--space-2); margin-bottom: var(--space-2);
font-size: 1.2em;
color: var(--text-color);
padding-bottom: var(--space-1); padding-bottom: var(--space-1);
border-bottom: 1px solid var(--border-color); border-bottom: 1px solid var(--border-color);
flex-shrink: 0; flex-shrink: 0;
gap: 8px;
}
.gen-params-header-row h3 {
margin: 0;
font-size: 1.2em;
color: var(--text-color);
}
/* Inline toggle for lora strip setting */
.lora-strip-toggle {
flex-shrink: 0;
gap: 6px;
}
.lora-strip-toggle .inline-toggle-label {
font-size: 0.78em;
white-space: nowrap;
opacity: 0.7;
transition: opacity 0.2s;
}
.lora-strip-toggle:hover .inline-toggle-label {
opacity: 1;
}
.lora-strip-toggle .toggle-switch {
width: 32px;
height: 16px;
}
.lora-strip-toggle .toggle-slider:before {
height: 10px;
width: 10px;
left: 3px;
bottom: 3px;
}
.lora-strip-toggle .toggle-switch input:checked + .toggle-slider:before {
transform: translateX(16px);
} }
.gen-params-container { .gen-params-container {
@@ -1043,13 +1144,13 @@
} }
.recipe-modal-header { .recipe-modal-header {
padding-bottom: 6px; padding-bottom: var(--space-1);
margin-bottom: 8px; margin-bottom: var(--space-2);
} }
.recipe-modal-header h2 { .recipe-modal-header h2 {
font-size: 1.25em; font-size: 1.3em;
max-height: 2.5em; max-height: 2.4em;
} }
.recipe-tags-container { .recipe-tags-container {

View File

@@ -39,6 +39,7 @@
@import 'components/keyboard-nav.css'; /* Add keyboard navigation component */ @import 'components/keyboard-nav.css'; /* Add keyboard navigation component */
@import 'components/statistics.css'; /* Add statistics component */ @import 'components/statistics.css'; /* Add statistics component */
@import 'components/sidebar.css'; /* Add sidebar component */ @import 'components/sidebar.css'; /* Add sidebar component */
@import 'components/media-viewer.css';
.initialization-notice { .initialization-notice {
display: flex; display: flex;

View File

@@ -422,8 +422,12 @@ export class BaseModelApiClient {
throw new Error('Failed to save metadata'); throw new Error('Failed to save metadata');
} }
state.virtualScroller.updateSingleItem(filePath, data); const result = await response.json();
return response.json(); state.virtualScroller.updateSingleItem(filePath, {
...data,
auto_tags: result.auto_tags,
});
return result;
} finally { } finally {
state.loadingManager.hide(); state.loadingManager.hide();
} }
@@ -448,7 +452,10 @@ export class BaseModelApiClient {
const result = await response.json(); const result = await response.json();
if (result.success && result.tags) { if (result.success && result.tags) {
state.virtualScroller.updateSingleItem(filePath, { tags: result.tags }); state.virtualScroller.updateSingleItem(filePath, {
tags: result.tags,
auto_tags: result.auto_tags,
});
} }
return result; return result;
@@ -978,6 +985,16 @@ export class BaseModelApiClient {
}); });
} }
if (pageState.filters.autoTags && Object.keys(pageState.filters.autoTags).length > 0) {
Object.entries(pageState.filters.autoTags).forEach(([tag, state]) => {
if (state === 'include') {
params.append('auto_tag_include', tag);
} else if (state === 'exclude') {
params.append('auto_tag_exclude', tag);
}
});
}
if (pageState.filters.baseModel && pageState.filters.baseModel.length > 0) { if (pageState.filters.baseModel && pageState.filters.baseModel.length > 0) {
// Check for empty wildcard marker - if present, no models should match // Check for empty wildcard marker - if present, no models should match
const EMPTY_WILDCARD_MARKER = '__EMPTY_WILDCARD_RESULT__'; const EMPTY_WILDCARD_MARKER = '__EMPTY_WILDCARD_RESULT__';

View File

@@ -15,6 +15,7 @@ const RECIPE_ENDPOINTS = {
move: '/api/lm/recipe/move', move: '/api/lm/recipe/move',
moveBulk: '/api/lm/recipes/move-bulk', moveBulk: '/api/lm/recipes/move-bulk',
bulkDelete: '/api/lm/recipes/bulk-delete', bulkDelete: '/api/lm/recipes/bulk-delete',
repairBulk: '/api/lm/recipes/repair-bulk',
}; };
const RECIPE_SIDEBAR_CONFIG = { const RECIPE_SIDEBAR_CONFIG = {
@@ -557,6 +558,38 @@ export class RecipeSidebarApiClient {
}; };
} }
async repairBulkModels(filePaths) {
if (!filePaths || filePaths.length === 0) {
throw new Error('No file paths provided');
}
const recipeIds = filePaths
.map((path) => extractRecipeId(path))
.filter((id) => !!id);
if (recipeIds.length === 0) {
throw new Error('No recipe IDs could be derived from file paths');
}
const response = await fetch(this.apiConfig.endpoints.repairBulk, {
method: 'POST',
headers: {
'Content-Type': 'application/json',
},
body: JSON.stringify({
recipe_ids: recipeIds,
}),
});
const result = await response.json();
if (!response.ok || !result.success) {
throw new Error(result.error || 'Failed to repair recipes');
}
return result;
}
async bulkDeleteModels(filePaths) { async bulkDeleteModels(filePaths) {
if (!filePaths || filePaths.length === 0) { if (!filePaths || filePaths.length === 0) {
throw new Error('No file paths provided'); throw new Error('No file paths provided');

View File

@@ -3,6 +3,8 @@ export class BaseContextMenu {
this.menu = document.getElementById(menuId); this.menu = document.getElementById(menuId);
this.cardSelector = cardSelector; this.cardSelector = cardSelector;
this.currentCard = null; this.currentCard = null;
this.submenuTimeout = null;
this.openSubmenu = null;
if (!this.menu) { if (!this.menu) {
console.error(`Context menu element with ID ${menuId} not found`); console.error(`Context menu element with ID ${menuId} not found`);
@@ -13,20 +15,99 @@ export class BaseContextMenu {
} }
init() { init() {
// Hide menu on regular clicks // Hide menu when clicking outside
document.addEventListener('click', () => this.hideMenu()); document.addEventListener('click', (e) => {
if (!this.menu.contains(e.target)) {
this.hideMenu();
}
});
// Handle menu item clicks // Handle menu item clicks (including submenu items)
this.menu.addEventListener('click', (e) => { this.menu.addEventListener('click', (e) => {
const menuItem = e.target.closest('.context-menu-item'); const menuItem = e.target.closest('.context-menu-item');
if (!menuItem || !this.currentCard) return; if (!menuItem || !this.currentCard) return;
// Ignore clicks on submenu trigger (has-submenu parent)
if (menuItem.classList.contains('has-submenu')) return;
const action = menuItem.dataset.action; const action = menuItem.dataset.action;
if (!action) return; if (!action) return;
this.handleMenuAction(action, menuItem); this.handleMenuAction(action, menuItem);
this.hideMenu(); this.hideMenu();
}); });
// Submenu hover handling
// Use mouseover/mouseout (which bubble) with relatedTarget checks
// to reliably detect crossing the .has-submenu boundary
this.menu.addEventListener('mouseover', (e) => {
const trigger = e.target.closest('.has-submenu');
if (!trigger) return;
// Only act when entering from outside this trigger's tree
if (e.relatedTarget && trigger.contains(e.relatedTarget)) return;
this._openSubmenu(trigger);
});
this.menu.addEventListener('mouseout', (e) => {
const trigger = e.target.closest('.has-submenu');
if (!trigger) return;
// Only close when leaving the trigger's tree entirely
if (e.relatedTarget && trigger.contains(e.relatedTarget)) return;
this._scheduleSubmenuClose(trigger);
});
}
_openSubmenu(trigger) {
// Clear any pending close
if (this.submenuTimeout) {
clearTimeout(this.submenuTimeout);
this.submenuTimeout = null;
}
// Hide any previously open submenu
if (this.openSubmenu && this.openSubmenu !== trigger) {
this._hideSubmenu(this.openSubmenu);
}
const submenu = trigger.querySelector('.context-submenu');
if (!submenu) return;
submenu.style.display = 'block';
this.openSubmenu = trigger;
this._positionSubmenu(submenu);
}
_scheduleSubmenuClose(trigger) {
this.submenuTimeout = setTimeout(() => {
this._hideSubmenu(trigger);
this.submenuTimeout = null;
}, 250);
}
_hideSubmenu(trigger) {
const submenu = trigger.querySelector('.context-submenu');
if (submenu) {
submenu.style.display = 'none';
submenu.classList.remove('flip-left');
}
if (this.openSubmenu === trigger) {
this.openSubmenu = null;
}
}
_positionSubmenu(submenu) {
const submenuRect = submenu.getBoundingClientRect();
const viewportWidth = document.documentElement.clientWidth;
if (submenuRect.right > viewportWidth) {
submenu.classList.add('flip-left');
} else {
submenu.classList.remove('flip-left');
}
} }
handleMenuAction(action, menuItem) { handleMenuAction(action, menuItem) {
@@ -65,6 +146,13 @@ export class BaseContextMenu {
} }
hideMenu() { hideMenu() {
if (this.submenuTimeout) {
clearTimeout(this.submenuTimeout);
this.submenuTimeout = null;
}
if (this.openSubmenu) {
this._hideSubmenu(this.openSubmenu);
}
if (this.menu) { if (this.menu) {
this.menu.style.display = 'none'; this.menu.style.display = 'none';
} }

View File

@@ -4,6 +4,7 @@ import { bulkManager } from '../../managers/BulkManager.js';
import { updateElementText, translate } from '../../utils/i18nHelpers.js'; import { updateElementText, translate } from '../../utils/i18nHelpers.js';
import { bulkMissingLoraDownloadManager } from '../../managers/BulkMissingLoraDownloadManager.js'; import { bulkMissingLoraDownloadManager } from '../../managers/BulkMissingLoraDownloadManager.js';
import { showToast } from '../../utils/uiHelpers.js'; import { showToast } from '../../utils/uiHelpers.js';
import { getModelApiClient } from '../../api/modelApiFactory.js';
export class BulkContextMenu extends BaseContextMenu { export class BulkContextMenu extends BaseContextMenu {
constructor() { constructor() {
@@ -40,6 +41,11 @@ export class BulkContextMenu extends BaseContextMenu {
const autoOrganizeItem = this.menu.querySelector('[data-action="auto-organize"]'); const autoOrganizeItem = this.menu.querySelector('[data-action="auto-organize"]');
const deleteAllItem = this.menu.querySelector('[data-action="delete-all"]'); const deleteAllItem = this.menu.querySelector('[data-action="delete-all"]');
const downloadMissingLorasItem = this.menu.querySelector('[data-action="download-missing-loras"]'); const downloadMissingLorasItem = this.menu.querySelector('[data-action="download-missing-loras"]');
const repairMetadataItem = this.menu.querySelector('[data-action="repair-metadata"]');
if (repairMetadataItem) {
repairMetadataItem.style.display = config.repairMetadata ? 'flex' : 'none';
}
if (sendToWorkflowAppendItem) { if (sendToWorkflowAppendItem) {
sendToWorkflowAppendItem.style.display = config.sendToWorkflow ? 'flex' : 'none'; sendToWorkflowAppendItem.style.display = config.sendToWorkflow ? 'flex' : 'none';
@@ -50,6 +56,14 @@ export class BulkContextMenu extends BaseContextMenu {
if (copyAllItem) { if (copyAllItem) {
copyAllItem.style.display = config.copyAll ? 'flex' : 'none'; copyAllItem.style.display = config.copyAll ? 'flex' : 'none';
} }
// Submenu parent visibility
const sendToWorkflowSubmenu = this.menu.querySelector('[data-has-submenu="send-to-workflow"]');
if (sendToWorkflowSubmenu) {
const hasWorkflowActions = config.sendToWorkflow || config.copyAll;
sendToWorkflowSubmenu.style.display = hasWorkflowActions ? 'flex' : 'none';
}
if (refreshAllItem) { if (refreshAllItem) {
refreshAllItem.style.display = config.refreshAll ? 'flex' : 'none'; refreshAllItem.style.display = config.refreshAll ? 'flex' : 'none';
} }
@@ -74,15 +88,54 @@ export class BulkContextMenu extends BaseContextMenu {
if (setContentRatingItem) { if (setContentRatingItem) {
setContentRatingItem.style.display = config.setContentRating ? 'flex' : 'none'; setContentRatingItem.style.display = config.setContentRating ? 'flex' : 'none';
} }
const setFavoriteItem = this.menu.querySelector('[data-action="set-favorite"]');
if (setFavoriteItem && config.setFavorite) {
setFavoriteItem.style.display = 'flex';
const total = state.selectedModels.size;
const favoritedCount = this.countFavoritedInSelection();
const allFavorited = total > 0 && favoritedCount === total;
const icon = setFavoriteItem.querySelector('i');
const label = setFavoriteItem.querySelector('span');
if (allFavorited) {
if (icon) { icon.className = 'far fa-star'; }
if (label) { label.textContent = translate('loras.bulkOperations.unfavorite'); }
} else {
if (icon) { icon.className = 'fas fa-star'; }
if (label) {
label.textContent = favoritedCount > 0
? translate('loras.bulkOperations.setFavoriteCount', { favorited: favoritedCount, total })
: translate('loras.bulkOperations.setFavorite');
}
}
} else if (setFavoriteItem) {
setFavoriteItem.style.display = 'none';
}
if (downloadMissingLorasItem) { if (downloadMissingLorasItem) {
// Only show for recipes page // Only show for recipes page
downloadMissingLorasItem.style.display = currentModelType === 'recipes' ? 'flex' : 'none'; downloadMissingLorasItem.style.display = currentModelType === 'recipes' ? 'flex' : 'none';
} }
const downloadExampleImagesItem = this.menu.querySelector('[data-action="download-example-images"]');
if (downloadExampleImagesItem) {
// Show on model pages (loras, checkpoints, embeddings), hide on recipes
const modelPages = ['loras', 'checkpoints', 'embeddings'];
downloadExampleImagesItem.style.display = modelPages.includes(currentModelType) ? 'flex' : 'none';
}
const skipMetadataRefreshItem = this.menu.querySelector('[data-action="skip-metadata-refresh"]'); const skipMetadataRefreshItem = this.menu.querySelector('[data-action="skip-metadata-refresh"]');
const resumeMetadataRefreshItem = this.menu.querySelector('[data-action="resume-metadata-refresh"]'); const resumeMetadataRefreshItem = this.menu.querySelector('[data-action="resume-metadata-refresh"]');
if (skipMetadataRefreshItem && resumeMetadataRefreshItem) { if (skipMetadataRefreshItem && resumeMetadataRefreshItem) {
if (!config.skipMetadataRefresh) {
skipMetadataRefreshItem.style.display = 'none';
resumeMetadataRefreshItem.style.display = 'none';
} else {
const skipCount = this.countSkipStatus(true); const skipCount = this.countSkipStatus(true);
const resumeCount = this.countSkipStatus(false); const resumeCount = this.countSkipStatus(false);
const totalCount = skipCount + resumeCount; const totalCount = skipCount + resumeCount;
@@ -114,6 +167,15 @@ export class BulkContextMenu extends BaseContextMenu {
} }
} }
// Hide empty sections
this.menu.querySelectorAll('.context-menu-section').forEach(section => {
const items = Array.from(section.querySelectorAll('.context-menu-item'))
.filter(item => !item.closest('.context-submenu'));
const allHidden = items.length > 0 && items.every(item => item.style.display === 'none');
section.style.display = allHidden ? 'none' : '';
});
}
updateSelectedCountHeader() { updateSelectedCountHeader() {
const headerElement = this.menu.querySelector('.bulk-context-header'); const headerElement = this.menu.querySelector('.bulk-context-header');
if (headerElement) { if (headerElement) {
@@ -138,6 +200,20 @@ export class BulkContextMenu extends BaseContextMenu {
return count; return count;
} }
countFavoritedInSelection() {
let count = 0;
for (const filePath of state.selectedModels) {
const escapedPath = window.CSS && typeof window.CSS.escape === 'function'
? window.CSS.escape(filePath)
: filePath.replace(/["\\]/g, '\\$&');
const card = document.querySelector(`.model-card[data-filepath="${escapedPath}"]`);
if (card && card.dataset.favorite === 'true') {
count++;
}
}
return count;
}
showMenu(x, y, card) { showMenu(x, y, card) {
this.updateMenuItemsForModelType(); this.updateMenuItemsForModelType();
this.updateSelectedCountHeader(); this.updateSelectedCountHeader();
@@ -185,9 +261,20 @@ export class BulkContextMenu extends BaseContextMenu {
case 'delete-all': case 'delete-all':
bulkManager.showBulkDeleteModal(); bulkManager.showBulkDeleteModal();
break; break;
case 'repair-metadata':
bulkManager.repairSelectedRecipes();
break;
case 'set-favorite': {
const allFavorited = this.countFavoritedInSelection() === state.selectedModels.size;
bulkManager.setBulkFavorites(!allFavorited);
break;
}
case 'download-missing-loras': case 'download-missing-loras':
this.handleDownloadMissingLoras(); this.handleDownloadMissingLoras();
break; break;
case 'download-example-images':
this.handleDownloadExampleImages();
break;
case 'clear': case 'clear':
bulkManager.clearSelection(); bulkManager.clearSelection();
break; break;
@@ -230,4 +317,31 @@ export class BulkContextMenu extends BaseContextMenu {
await bulkMissingLoraDownloadManager.downloadMissingLoras(selectedRecipes); await bulkMissingLoraDownloadManager.downloadMissingLoras(selectedRecipes);
} }
async handleDownloadExampleImages() {
if (state.selectedModels.size === 0) {
return;
}
const hashes = new Set();
for (const filePath of state.selectedModels) {
const escapedPath = CSS.escape(filePath);
const card = document.querySelector(`.model-card[data-filepath="${escapedPath}"]`);
if (card?.dataset?.sha256) {
hashes.add(card.dataset.sha256);
}
}
if (hashes.size === 0) {
showToast('No valid model hashes found in selection', {}, 'warning');
return;
}
try {
const apiClient = getModelApiClient();
await apiClient.downloadExampleImages([...hashes]);
} catch (error) {
console.error('Bulk download example images failed:', error);
}
}
} }

View File

@@ -2,10 +2,11 @@
import { showToast, copyToClipboard, sendLoraToWorkflow, sendModelPathToWorkflow, openCivitaiByMetadata } from '../utils/uiHelpers.js'; import { showToast, copyToClipboard, sendLoraToWorkflow, sendModelPathToWorkflow, openCivitaiByMetadata } from '../utils/uiHelpers.js';
import { translate } from '../utils/i18nHelpers.js'; import { translate } from '../utils/i18nHelpers.js';
import { state } from '../state/index.js'; import { state } from '../state/index.js';
import { setSessionItem, removeSessionItem } from '../utils/storageHelpers.js'; import { setSessionItem, removeSessionItem, getStorageItem, setStorageItem } from '../utils/storageHelpers.js';
import { fetchRecipeDetails, updateRecipeMetadata } from '../api/recipeApi.js'; import { fetchRecipeDetails, updateRecipeMetadata } from '../api/recipeApi.js';
import { downloadManager } from '../managers/DownloadManager.js'; import { downloadManager } from '../managers/DownloadManager.js';
import { MODEL_TYPES } from '../api/apiConfig.js'; import { MODEL_TYPES } from '../api/apiConfig.js';
import { openMediaViewer } from './shared/MediaViewer.js';
const ALLOWED_GEN_PARAM_KEYS = new Set([ const ALLOWED_GEN_PARAM_KEYS = new Set([
'prompt', 'prompt',
@@ -104,6 +105,7 @@ class RecipeModal {
init() { init() {
this.setupCopyButtons(); this.setupCopyButtons();
this.setupStripLoraToggle();
this.setupPromptEditors(); this.setupPromptEditors();
// Set up tooltip positioning handlers after DOM is ready // Set up tooltip positioning handlers after DOM is ready
document.addEventListener('DOMContentLoaded', () => { document.addEventListener('DOMContentLoaded', () => {
@@ -112,6 +114,23 @@ class RecipeModal {
// Set up document click handler to close edit fields // Set up document click handler to close edit fields
document.addEventListener('click', (event) => { document.addEventListener('click', (event) => {
const recipeModal = document.getElementById('recipeModal');
if (recipeModal && recipeModal.style.display !== 'none') {
const mediaEl = event.target.closest('.recipe-preview-media');
if (mediaEl && mediaEl.tagName) {
event.stopPropagation();
const isVideo = mediaEl.tagName === 'VIDEO';
const url = mediaEl.src || mediaEl.currentSrc;
if (url) {
openMediaViewer(url, {
type: isVideo ? 'video' : 'image',
title: document.getElementById('recipeModalTitle')?.textContent || ''
});
}
return;
}
}
// Handle title edit // Handle title edit
const titleEditor = document.getElementById('recipeTitleEditor'); const titleEditor = document.getElementById('recipeTitleEditor');
if (titleEditor && titleEditor.classList.contains('active') && if (titleEditor && titleEditor.classList.contains('active') &&
@@ -364,6 +383,7 @@ class RecipeModal {
this.syncGenerationParams(hydratedRecipe.gen_params); this.syncGenerationParams(hydratedRecipe.gen_params);
this.syncResourcesSection(hydratedRecipe); this.syncResourcesSection(hydratedRecipe);
this.syncSourceUrlAction();
// Show the modal // Show the modal
modalManager.showModal('recipeModal'); modalManager.showModal('recipeModal');
@@ -496,6 +516,7 @@ class RecipeModal {
} else { } else {
this.updateSourceUrlDisplay(this.currentRecipe.source_path || ''); this.updateSourceUrlDisplay(this.currentRecipe.source_path || '');
} }
this.syncSourceUrlAction();
} }
getPreviewMediaUrl(recipe = {}) { getPreviewMediaUrl(recipe = {}) {
@@ -563,6 +584,30 @@ class RecipeModal {
} }
} }
syncSourceUrlAction() {
const actionsContainer = document.getElementById('recipeHeaderActions');
if (!actionsContainer) {
return;
}
actionsContainer.innerHTML = '';
const sourcePath = this.currentRecipe?.source_path || '';
const isValidUrl = sourcePath.startsWith('http://') || sourcePath.startsWith('https://');
if (!isValidUrl) {
return;
}
const btn = document.createElement('button');
btn.className = 'recipe-source-url-btn';
btn.title = sourcePath;
btn.innerHTML = '<i class="fas fa-globe"></i> Open Source URL';
btn.addEventListener('click', () => {
window.open(sourcePath, '_blank');
});
actionsContainer.appendChild(btn);
}
syncTagsDisplay(tags) { syncTagsDisplay(tags) {
const tagsContainer = document.getElementById('recipeTagsCompact'); const tagsContainer = document.getElementById('recipeTagsCompact');
if (!tagsContainer) { if (!tagsContainer) {
@@ -1297,6 +1342,7 @@ class RecipeModal {
// Update source URL in the UI // Update source URL in the UI
this.commitField('source_path'); this.commitField('source_path');
this.updateSourceUrlDisplay(newSourceUrl, { forceInputSync: true }); this.updateSourceUrlDisplay(newSourceUrl, { forceInputSync: true });
this.syncSourceUrlAction();
// Update the current recipe object // Update the current recipe object
this.currentRecipe.source_path = newSourceUrl; this.currentRecipe.source_path = newSourceUrl;
@@ -1332,14 +1378,20 @@ class RecipeModal {
if (copyPromptBtn) { if (copyPromptBtn) {
copyPromptBtn.addEventListener('click', () => { copyPromptBtn.addEventListener('click', () => {
const promptText = this.currentRecipe?.gen_params?.prompt || ''; let promptText = this.currentRecipe?.gen_params?.prompt || '';
if (this.shouldStripLoraOnCopy()) {
promptText = RecipeModal.stripLoraTags(promptText);
}
this.copyToClipboard(promptText, 'Prompt copied to clipboard'); this.copyToClipboard(promptText, 'Prompt copied to clipboard');
}); });
} }
if (copyNegativePromptBtn) { if (copyNegativePromptBtn) {
copyNegativePromptBtn.addEventListener('click', () => { copyNegativePromptBtn.addEventListener('click', () => {
const negativePromptText = this.currentRecipe?.gen_params?.negative_prompt || ''; let negativePromptText = this.currentRecipe?.gen_params?.negative_prompt || '';
if (this.shouldStripLoraOnCopy()) {
negativePromptText = RecipeModal.stripLoraTags(negativePromptText);
}
this.copyToClipboard(negativePromptText, 'Negative prompt copied to clipboard'); this.copyToClipboard(negativePromptText, 'Negative prompt copied to clipboard');
}); });
} }
@@ -1359,6 +1411,43 @@ class RecipeModal {
} }
} }
/**
* Strip <lora:...> tags from prompt text and clean up residual punctuation/whitespace.
* Handles both unescaped (<lora:...>) and HTML-escaped (&lt;lora:...&gt;) variants.
* Cleans up artifacts like leading ", ", double commas, and extra whitespace.
*/
static stripLoraTags(text) {
return text
.replace(/<lora:[^>]*>/gi, '')
.replace(/&lt;lora:[^&]*&gt;/gi, '')
.replace(/,(\s*,)+/g, ',')
.replace(/^,\s*/, '')
.replace(/,\s*$/, '')
.replace(/\s{2,}/g, ' ')
.trim();
}
shouldStripLoraOnCopy() {
const toggle = document.getElementById('stripLoraOnCopyToggle');
return toggle ? toggle.checked : false;
}
setupStripLoraToggle() {
const toggle = document.getElementById('stripLoraOnCopyToggle');
if (!toggle) return;
const stored = getStorageItem('strip_lora_on_copy');
if (stored !== null) {
toggle.checked = stored === true;
}
toggle.addEventListener('change', () => {
const checked = toggle.checked;
setStorageItem('strip_lora_on_copy', checked);
state.global.settings.strip_lora_on_copy = checked;
});
}
// Fetch recipe syntax from backend and copy to clipboard // Fetch recipe syntax from backend and copy to clipboard
async fetchAndCopyRecipeSyntax() { async fetchAndCopyRecipeSyntax() {
if (!this.recipeId) { if (!this.recipeId) {

View File

@@ -166,17 +166,6 @@ export class PageControls {
}); });
}); });
// Handle quick refresh option
const quickRefreshOption = document.querySelector('[data-action="quick-refresh"]');
if (quickRefreshOption) {
quickRefreshOption.addEventListener('click', (e) => {
e.stopPropagation();
this.refreshModels(false);
// Close the dropdown
document.querySelector('.dropdown-group.active')?.classList.remove('active');
});
}
// Handle full rebuild option // Handle full rebuild option
const fullRebuildOption = document.querySelector('[data-action="full-rebuild"]'); const fullRebuildOption = document.querySelector('[data-action="full-rebuild"]');
if (fullRebuildOption) { if (fullRebuildOption) {

View File

@@ -0,0 +1,204 @@
let activeViewer = null;
function createMediaElement(item) {
const { url, type = 'image' } = item;
if (type === 'video') {
const el = document.createElement('video');
el.controls = true;
el.autoplay = true;
el.loop = true;
el.muted = true;
el.className = 'media-viewer-media media-viewer-video';
el.src = url;
return el;
}
const el = document.createElement('img');
el.className = 'media-viewer-media media-viewer-image';
el.src = url;
el.alt = 'Full size preview';
el.draggable = false;
return el;
}
function preloadAdjacent(items, index) {
[index - 1, index + 1].forEach(i => {
if (i >= 0 && i < items.length && items[i].type !== 'video') {
const preload = new Image();
preload.src = items[i].url;
}
});
}
export function openMediaViewer(arg1, arg2, arg3) {
closeMediaViewer();
let items, currentIndex, title = '';
if (Array.isArray(arg1)) {
items = arg1;
currentIndex = typeof arg2 === 'number' ? arg2 : 0;
title = (arg3 && arg3.title) || '';
} else {
items = [{ url: arg1, type: (arg2 && arg2.type) || 'image' }];
currentIndex = 0;
title = (arg2 && arg2.title) || '';
}
if (currentIndex < 0 || currentIndex >= items.length) currentIndex = 0;
const overlay = document.createElement('div');
overlay.className = 'media-viewer-overlay';
overlay.setAttribute('role', 'dialog');
overlay.setAttribute('aria-label', title || 'Media viewer');
const closeBtn = document.createElement('button');
closeBtn.className = 'media-viewer-close';
closeBtn.innerHTML = '<i class="fas fa-times"></i>';
closeBtn.title = 'Close (Esc)';
closeBtn.addEventListener('click', (e) => {
e.stopPropagation();
closeMediaViewer();
});
const contentContainer = document.createElement('div');
contentContainer.className = 'media-viewer-content-container';
let mediaElement = createMediaElement(items[currentIndex]);
contentContainer.appendChild(mediaElement);
const hasNavigation = items.length > 1;
const counter = document.createElement('div');
counter.className = 'media-viewer-counter';
counter.textContent = hasNavigation ? `${currentIndex + 1} / ${items.length}` : '';
contentContainer.appendChild(counter);
if (title) {
const titleBar = document.createElement('div');
titleBar.className = 'media-viewer-title';
titleBar.textContent = title;
contentContainer.appendChild(titleBar);
}
let prevBtn, nextBtn;
if (hasNavigation) {
prevBtn = document.createElement('button');
prevBtn.className = 'media-viewer-nav media-viewer-prev';
prevBtn.innerHTML = '<i class="fas fa-chevron-left"></i>';
prevBtn.title = 'Previous (←)';
nextBtn = document.createElement('button');
nextBtn.className = 'media-viewer-nav media-viewer-next';
nextBtn.innerHTML = '<i class="fas fa-chevron-right"></i>';
nextBtn.title = 'Next (→)';
const navigate = (delta) => {
const newIndex = (currentIndex + delta + items.length) % items.length;
currentIndex = newIndex;
const oldMedia = contentContainer.querySelector('.media-viewer-media');
const newMedia = createMediaElement(items[currentIndex]);
if (oldMedia) {
if (oldMedia.tagName === 'VIDEO') {
oldMedia.pause();
oldMedia.src = '';
}
oldMedia.replaceWith(newMedia);
}
mediaElement = newMedia;
counter.textContent = `${currentIndex + 1} / ${items.length}`;
preloadAdjacent(items, currentIndex);
};
prevBtn.addEventListener('click', (e) => { e.stopPropagation(); navigate(-1); });
nextBtn.addEventListener('click', (e) => { e.stopPropagation(); navigate(1); });
overlay.appendChild(prevBtn);
overlay.appendChild(nextBtn);
}
overlay.appendChild(closeBtn);
overlay.appendChild(contentContainer);
document.body.appendChild(overlay);
requestAnimationFrame(() => {
overlay.classList.add('active');
});
overlay.addEventListener('click', (e) => {
if (e.target === overlay) {
closeMediaViewer();
}
});
const keyHandler = (e) => {
if (e.key === 'Escape') {
closeMediaViewer();
return;
}
if (hasNavigation) {
if (e.key === 'ArrowLeft') {
e.stopPropagation();
e.preventDefault();
prevBtn.click();
return;
}
if (e.key === 'ArrowRight') {
e.stopPropagation();
e.preventDefault();
nextBtn.click();
return;
}
}
};
document.addEventListener('keydown', keyHandler, true);
activeViewer = { overlay, keyHandler };
preloadAdjacent(items, currentIndex);
if (items[currentIndex].type === 'video') {
const recipeVideo = document.getElementById('recipeModalVideo');
if (recipeVideo && !recipeVideo.paused) {
recipeVideo.pause();
}
}
}
export function closeMediaViewer() {
if (!activeViewer) return;
const { overlay, keyHandler } = activeViewer;
const video = overlay.querySelector('video');
if (video) {
video.pause();
video.src = '';
}
const img = overlay.querySelector('img');
if (img) {
img.src = '';
}
document.removeEventListener('keydown', keyHandler, true);
overlay.classList.remove('active');
overlay.addEventListener('transitionend', () => {
if (overlay.parentNode) {
overlay.parentNode.removeChild(overlay);
}
}, { once: true });
setTimeout(() => {
if (overlay.parentNode) {
overlay.parentNode.removeChild(overlay);
}
}, 500);
activeViewer = null;
}
export function isMediaViewerOpen() {
return activeViewer !== null;
}

View File

@@ -166,7 +166,9 @@ async function toggleFavorite(card) {
function handleSendToWorkflow(card, replaceMode, modelType) { function handleSendToWorkflow(card, replaceMode, modelType) {
if (modelType === MODEL_TYPES.LORA) { if (modelType === MODEL_TYPES.LORA) {
const usageTips = JSON.parse(card.dataset.usage_tips || '{}'); const usageTips = JSON.parse(card.dataset.usage_tips || '{}');
const loraSyntax = buildLoraSyntax(card.dataset.file_name, usageTips); const folder = card.dataset.folder || '';
const loraName = folder ? `${folder}/${card.dataset.file_name}` : card.dataset.file_name;
const loraSyntax = buildLoraSyntax(loraName, usageTips);
sendLoraToWorkflow(loraSyntax, replaceMode, 'lora'); sendLoraToWorkflow(loraSyntax, replaceMode, 'lora');
} else if (modelType === MODEL_TYPES.CHECKPOINT) { } else if (modelType === MODEL_TYPES.CHECKPOINT) {
const modelPath = card.dataset.filepath; const modelPath = card.dataset.filepath;
@@ -644,8 +646,23 @@ export function createModelCard(model, modelType) {
<div class="card-footer"> <div class="card-footer">
<div class="model-info"> <div class="model-info">
<span class="model-name" title="${getDisplayName(model).replace(/"/g, '&quot;')}">${getDisplayName(model)}</span> <span class="model-name" title="${getDisplayName(model).replace(/"/g, '&quot;')}">${getDisplayName(model)}</span>
<div> <div class="version-row">
${model.civitai?.name ? `<span class="version-name civitai-version">${model.civitai.name}</span>` : ''} ${(() => {
const autoTags = model.auto_tags || [];
const hlTags = autoTags.filter(t => t === 'HIGH' || t === 'LOW');
const hasVersionName = model.civitai?.name;
if (!hlTags.length && !hasVersionName) return '';
const density = state.global.settings.display_density || 'default';
const shortLabels = density === 'medium' || density === 'compact';
const badges = hlTags.map(t => {
const cls = t === 'HIGH' ? 'hl-badge hl-badge--high' : 'hl-badge hl-badge--low';
const label = shortLabels ? (t === 'HIGH' ? 'H' : 'L') : t;
const titleAttr = shortLabels ? ` title="${t}"` : '';
return `<span class="${cls}"${titleAttr}>${label}</span>`;
}).join('');
const versionHtml = hasVersionName ? `<span class="version-name civitai-version">${model.civitai.name}</span>` : '';
return `<span class="badge-version-unit">${badges}${versionHtml}</span>`;
})()}
${hasUsageCount ? `<span class="version-name" title="${translate('modelCard.usage.timesUsed', {}, 'Times used')}">${model.usage_count}×</span>` : ''} ${hasUsageCount ? `<span class="version-name" title="${translate('modelCard.usage.timesUsed', {}, 'Times used')}">${model.usage_count}×</span>` : ''}
</div> </div>
</div> </div>

View File

@@ -66,6 +66,12 @@ function updateModalFilePathReferences(newFilePath) {
fileNameContent.setAttribute('data-file-path', newFilePath); fileNameContent.setAttribute('data-file-path', newFilePath);
} }
const versionNameContent = scopedQuery('.version-name-content');
if (versionNameContent && versionNameContent.dataset) {
versionNameContent.dataset.filePath = newFilePath;
versionNameContent.setAttribute('data-file-path', newFilePath);
}
const editTagsBtn = scopedQuery('.edit-tags-btn'); const editTagsBtn = scopedQuery('.edit-tags-btn');
if (editTagsBtn) { if (editTagsBtn) {
editTagsBtn.dataset.filePath = newFilePath; editTagsBtn.dataset.filePath = newFilePath;
@@ -516,3 +522,127 @@ export function setupFileNameEditing(filePath) {
editBtn.classList.remove('visible'); editBtn.classList.remove('visible');
} }
} }
/**
* Set up version name editing functionality
* @param {string} filePath - File path
*/
export function setupVersionNameEditing(filePath) {
const versionNameContent = document.querySelector('.version-name-content');
const editBtn = document.querySelector('.edit-version-name-btn');
if (!versionNameContent || !editBtn) return;
// Store the file path in a data attribute for later use
versionNameContent.dataset.filePath = filePath;
// Show edit button on hover
const versionNameWrapper = document.querySelector('.version-name-wrapper');
versionNameWrapper.addEventListener('mouseenter', () => {
editBtn.classList.add('visible');
});
versionNameWrapper.addEventListener('mouseleave', () => {
if (!versionNameWrapper.classList.contains('editing')) {
editBtn.classList.remove('visible');
}
});
// Handle edit button click
editBtn.addEventListener('click', () => {
versionNameWrapper.classList.add('editing');
versionNameContent.setAttribute('contenteditable', 'true');
// Store original value for comparison later
versionNameContent.dataset.originalValue = versionNameContent.textContent.trim();
versionNameContent.focus();
// Place cursor at the end
const range = document.createRange();
const sel = window.getSelection();
if (versionNameContent.childNodes.length > 0) {
range.setStart(versionNameContent.childNodes[0], versionNameContent.textContent.length);
range.collapse(true);
sel.removeAllRanges();
sel.addRange(range);
}
editBtn.classList.add('visible');
});
// Handle keyboard events in edit mode
versionNameContent.addEventListener('keydown', function(e) {
if (!this.getAttribute('contenteditable')) return;
if (e.key === 'Enter') {
e.preventDefault();
this.blur(); // Trigger save on Enter
} else if (e.key === 'Escape') {
e.preventDefault();
// Restore original value
this.textContent = this.dataset.originalValue;
exitEditMode();
}
});
// Limit version name length
versionNameContent.addEventListener('input', function() {
if (!this.getAttribute('contenteditable')) return;
if (this.textContent.length > 100) {
this.textContent = this.textContent.substring(0, 100);
// Place cursor at the end
const range = document.createRange();
const sel = window.getSelection();
range.setStart(this.childNodes[0], 100);
range.collapse(true);
sel.removeAllRanges();
sel.addRange(range);
showToast('toast.models.nameTooLong', {}, 'warning');
}
});
// Handle focus out - save changes
versionNameContent.addEventListener('blur', async function() {
if (!this.getAttribute('contenteditable')) return;
const newVersionName = this.textContent.trim();
const originalValue = this.dataset.originalValue;
// Basic validation
if (!newVersionName) {
// Restore original value if empty
this.textContent = originalValue;
showToast('toast.models.nameCannotBeEmpty', {}, 'error');
exitEditMode();
return;
}
if (newVersionName === originalValue) {
// No changes, just exit edit mode
exitEditMode();
return;
}
try {
// Resolve current file path from modal state
const filePath = getActiveModalFilePath(this.dataset.filePath);
await getModelApiClient().saveModelMetadata(filePath, { civitai: { name: newVersionName } });
showToast('toast.models.nameUpdatedSuccessfully', {}, 'success');
} catch (error) {
console.error('Error updating version name:', error);
this.textContent = originalValue; // Restore original version name
showToast('toast.models.nameUpdateFailed', {}, 'error');
} finally {
exitEditMode();
}
});
function exitEditMode() {
versionNameContent.removeAttribute('contenteditable');
versionNameWrapper.classList.remove('editing');
editBtn.classList.remove('visible');
}
}

View File

@@ -11,7 +11,8 @@ import { setupTabSwitching } from './ModelDescription.js';
import { import {
setupModelNameEditing, setupModelNameEditing,
setupBaseModelEditing, setupBaseModelEditing,
setupFileNameEditing setupFileNameEditing,
setupVersionNameEditing
} from './ModelMetadata.js'; } from './ModelMetadata.js';
import { setupTagEditMode } from './ModelTags.js'; import { setupTagEditMode } from './ModelTags.js';
import { getModelApiClient } from '../../api/modelApiFactory.js'; import { getModelApiClient } from '../../api/modelApiFactory.js';
@@ -466,7 +467,12 @@ export async function showModelModal(model, modelType) {
<div class="info-grid"> <div class="info-grid">
<div class="info-item"> <div class="info-item">
<label>${translate('modals.model.metadata.version', {}, 'Version')}</label> <label>${translate('modals.model.metadata.version', {}, 'Version')}</label>
<span>${modelWithFullData.civitai?.name || 'N/A'}</span> <div class="version-name-wrapper">
<span class="version-name-content">${modelWithFullData.civitai?.name || 'N/A'}</span>
<button class="edit-version-name-btn" title="${translate('modals.model.actions.editVersionName', {}, 'Edit version name')}">
<i class="fas fa-pencil-alt"></i>
</button>
</div>
</div> </div>
<div class="info-item"> <div class="info-item">
<label>${translate('modals.model.metadata.fileName', {}, 'File Name')}</label> <label>${translate('modals.model.metadata.fileName', {}, 'File Name')}</label>
@@ -660,6 +666,7 @@ export async function showModelModal(model, modelType) {
setupTagTooltip(); setupTagTooltip();
setupTagEditMode(modelType); setupTagEditMode(modelType);
setupModelNameEditing(modelWithFullData.file_path); setupModelNameEditing(modelWithFullData.file_path);
setupVersionNameEditing(modelWithFullData.file_path);
setupBaseModelEditing(modelWithFullData.file_path); setupBaseModelEditing(modelWithFullData.file_path);
setupFileNameEditing(modelWithFullData.file_path); setupFileNameEditing(modelWithFullData.file_path);
setupEventHandlers(modelWithFullData.file_path, modelType); setupEventHandlers(modelWithFullData.file_path, modelType);

View File

@@ -274,7 +274,17 @@ async function saveTags() {
const filePath = editBtn.dataset.filePath; const filePath = editBtn.dataset.filePath;
const tagElements = document.querySelectorAll('.metadata-item'); const tagElements = document.querySelectorAll('.metadata-item');
const tags = Array.from(tagElements).map(tag => tag.dataset.tag); let tags = Array.from(tagElements).map(tag => tag.dataset.tag);
// Flush uncommitted input as a tag so it's not silently lost on save
const tagInput = document.querySelector('.metadata-input');
if (tagInput) {
const pendingTag = tagInput.value.trim().toLowerCase();
if (pendingTag && !tags.includes(pendingTag)) {
tags.push(pendingTag);
}
tagInput.value = '';
}
// Get original tags to compare // Get original tags to compare
const originalTagElements = document.querySelectorAll('.tooltip-tag'); const originalTagElements = document.querySelectorAll('.tooltip-tag');
@@ -465,6 +475,7 @@ function setupTagInput() {
const tagInput = document.querySelector('.metadata-input'); const tagInput = document.querySelector('.metadata-input');
if (tagInput) { if (tagInput) {
tagInput.focus();
tagInput.addEventListener('keydown', function(e) { tagInput.addEventListener('keydown', function(e) {
if (e.key === 'Enter') { if (e.key === 'Enter') {
e.preventDefault(); e.preventDefault();

View File

@@ -241,7 +241,7 @@ function buildActionButton(label, variant, action, options = {}) {
if (action) { if (action) {
attributes.push(`data-version-action="${escapeHtml(action)}"`); attributes.push(`data-version-action="${escapeHtml(action)}"`);
} }
if (options.title) { if (!options.disabled && options.title) {
attributes.push(`title="${escapeHtml(options.title)}"`); attributes.push(`title="${escapeHtml(options.title)}"`);
attributes.push(`aria-label="${escapeHtml(options.title)}"`); attributes.push(`aria-label="${escapeHtml(options.title)}"`);
} }
@@ -251,7 +251,11 @@ function buildActionButton(label, variant, action, options = {}) {
if (options.extraAttributes) { if (options.extraAttributes) {
attributes.push(options.extraAttributes); attributes.push(options.extraAttributes);
} }
return `<button ${attributes.join(' ')}>${options.iconMarkup || ''}${escapeHtml(label)}</button>`; const buttonHtml = `<button ${attributes.join(' ')}>${options.iconMarkup || ''}${escapeHtml(label)}</button>`;
if (options.disabled && options.title) {
return `<span class="version-action-disabled-wrapper" title="${escapeHtml(options.title)}" aria-label="${escapeHtml(options.title)}">${buttonHtml}</span>`;
}
return buttonHtml;
} }
const DISPLAY_FILTER_MODES = Object.freeze({ const DISPLAY_FILTER_MODES = Object.freeze({

View File

@@ -17,6 +17,7 @@ import {
import { generateMetadataPanel } from './MetadataPanel.js'; import { generateMetadataPanel } from './MetadataPanel.js';
import { generateImageWrapper, generateVideoWrapper } from './MediaRenderers.js'; import { generateImageWrapper, generateVideoWrapper } from './MediaRenderers.js';
import { getShowcaseUrl } from '../../../utils/civitaiUtils.js'; import { getShowcaseUrl } from '../../../utils/civitaiUtils.js';
import { openMediaViewer } from '../MediaViewer.js';
export const showcaseListenerMetrics = { export const showcaseListenerMetrics = {
wheelListeners: 0, wheelListeners: 0,
@@ -640,6 +641,27 @@ export function initShowcaseContent(carousel) {
initMediaControlHandlers(carousel); initMediaControlHandlers(carousel);
positionAllMediaControls(carousel); positionAllMediaControls(carousel);
// Click-to-view: open full-size media viewer when clicking showcase images/videos
const viewerElements = carousel.querySelectorAll('.media-wrapper img, .media-wrapper video');
const allItems = [];
const elementIndexMap = new Map();
viewerElements.forEach((el) => {
const isVideo = el.tagName === 'VIDEO';
const url = el.src || el.dataset.localSrc || el.dataset.remoteSrc;
if (url) {
elementIndexMap.set(el, allItems.length);
allItems.push({ url, type: isVideo ? 'video' : 'image' });
}
});
viewerElements.forEach((mediaEl) => {
const idx = elementIndexMap.get(mediaEl);
if (idx === undefined) return;
mediaEl.addEventListener('click', (e) => {
e.stopPropagation();
openMediaViewer(allItems, idx);
});
});
// Bind scroll-indicator click events // Bind scroll-indicator click events
bindScrollIndicatorEvents(carousel); bindScrollIndicatorEvents(carousel);

View File

@@ -3,7 +3,7 @@ import { showToast, copyToClipboard, sendLoraToWorkflow, buildLoraSyntax, getNSF
import { updateCardsForBulkMode } from '../components/shared/ModelCard.js'; import { updateCardsForBulkMode } from '../components/shared/ModelCard.js';
import { modalManager } from './ModalManager.js'; import { modalManager } from './ModalManager.js';
import { getModelApiClient, resetAndReload } from '../api/modelApiFactory.js'; import { getModelApiClient, resetAndReload } from '../api/modelApiFactory.js';
import { RecipeSidebarApiClient } from '../api/recipeApi.js'; import { RecipeSidebarApiClient, updateRecipeMetadata, extractRecipeId } from '../api/recipeApi.js';
import { MODEL_TYPES, MODEL_CONFIG } from '../api/apiConfig.js'; import { MODEL_TYPES, MODEL_CONFIG } from '../api/apiConfig.js';
import { BASE_MODEL_CATEGORIES } from '../utils/constants.js'; import { BASE_MODEL_CATEGORIES } from '../utils/constants.js';
import { getPriorityTagSuggestions } from '../utils/priorityTagHelpers.js'; import { getPriorityTagSuggestions } from '../utils/priorityTagHelpers.js';
@@ -41,7 +41,9 @@ export class BulkManager {
autoOrganize: true, autoOrganize: true,
deleteAll: true, deleteAll: true,
setContentRating: true, setContentRating: true,
skipMetadataRefresh: true skipMetadataRefresh: true,
setFavorite: true,
unfavorite: true
}, },
[MODEL_TYPES.EMBEDDING]: { [MODEL_TYPES.EMBEDDING]: {
addTags: true, addTags: true,
@@ -53,7 +55,9 @@ export class BulkManager {
autoOrganize: true, autoOrganize: true,
deleteAll: true, deleteAll: true,
setContentRating: false, setContentRating: false,
skipMetadataRefresh: true skipMetadataRefresh: true,
setFavorite: true,
unfavorite: true
}, },
[MODEL_TYPES.CHECKPOINT]: { [MODEL_TYPES.CHECKPOINT]: {
addTags: true, addTags: true,
@@ -65,10 +69,12 @@ export class BulkManager {
autoOrganize: true, autoOrganize: true,
deleteAll: true, deleteAll: true,
setContentRating: true, setContentRating: true,
skipMetadataRefresh: true skipMetadataRefresh: true,
setFavorite: true,
unfavorite: true
}, },
recipes: { recipes: {
addTags: false, addTags: true,
sendToWorkflow: false, sendToWorkflow: false,
copyAll: false, copyAll: false,
refreshAll: false, refreshAll: false,
@@ -77,7 +83,10 @@ export class BulkManager {
autoOrganize: false, autoOrganize: false,
deleteAll: true, deleteAll: true,
setContentRating: false, setContentRating: false,
skipMetadataRefresh: false skipMetadataRefresh: false,
setFavorite: true,
unfavorite: true,
repairMetadata: true
} }
}; };
@@ -538,9 +547,23 @@ export class BulkManager {
return; return;
} }
const countElement = document.getElementById('bulkDeleteCount'); const count = state.selectedModels.size;
if (countElement) { const isRecipes = state.currentPageType === 'recipes';
countElement.textContent = state.selectedModels.size; const keyPrefix = isRecipes ? 'modals.bulkDeleteRecipes' : 'modals.bulkDelete';
const titleEl = document.querySelector('#bulkDeleteModal h2');
if (titleEl) {
titleEl.textContent = translate(`${keyPrefix}.title`);
}
const messageEl = document.querySelector('#bulkDeleteModal .delete-message');
if (messageEl) {
messageEl.textContent = translate(`${keyPrefix}.message`);
}
const countInfoEl = document.querySelector('#bulkDeleteModal .delete-model-info p');
if (countInfoEl) {
countInfoEl.innerHTML = `<span id="bulkDeleteCount">${count}</span> ${translate(`${keyPrefix}.countMessage`)}`;
} }
modalManager.showModal('bulkDeleteModal'); modalManager.showModal('bulkDeleteModal');
@@ -634,6 +657,76 @@ export class BulkManager {
} }
} }
async repairSelectedRecipes() {
if (state.selectedModels.size === 0) {
showToast('toast.recipes.noRecipesSelected', {}, 'warning');
return;
}
if (state.currentPageType !== 'recipes') {
showToast('This operation is only available for recipes', {}, 'warning');
return;
}
try {
const apiClient = this.getActiveApiClient();
const filePaths = Array.from(state.selectedModels);
if (typeof apiClient.repairBulkModels !== 'function') {
showToast('Bulk repair is not supported for this model type', {}, 'error');
return;
}
state.loadingManager.showSimpleLoading('Repairing recipe metadata...');
const result = await apiClient.repairBulkModels(filePaths);
if (result.success) {
const total = result.total || filePaths.length;
const repaired = result.repaired || 0;
const skipped = result.skipped || 0;
const recipes = result.recipes || [];
for (const recipe of recipes) {
if (recipe.file_path) {
state.virtualScroller.updateSingleItem(
recipe.file_path,
recipe
);
}
}
if (repaired > 0) {
showToast(
'toast.recipes.repairBulkComplete',
{ repaired, skipped, total },
'success'
);
} else {
showToast(
'toast.recipes.repairBulkSkipped',
{ total },
'info'
);
}
this.clearSelection();
} else {
throw new Error(result.error || 'Bulk repair failed');
}
} catch (error) {
console.error('Error during bulk recipe repair:', error);
showToast('toast.recipes.repairBulkFailed', { message: error.message }, 'error');
} finally {
if (state.loadingManager?.hide) {
state.loadingManager.hide();
}
if (typeof state.loadingManager?.restoreProgressBar === 'function') {
state.loadingManager.restoreProgressBar();
}
}
}
async refreshAllMetadata() { async refreshAllMetadata() {
if (state.selectedModels.size === 0) { if (state.selectedModels.size === 0) {
showToast('toast.models.noModelsSelected', {}, 'warning'); showToast('toast.models.noModelsSelected', {}, 'warning');
@@ -763,6 +856,7 @@ export class BulkManager {
// Setup tag input behavior // Setup tag input behavior
const tagInput = document.querySelector('.bulk-metadata-input'); const tagInput = document.querySelector('.bulk-metadata-input');
if (tagInput) { if (tagInput) {
tagInput.focus();
tagInput.addEventListener('keydown', (e) => { tagInput.addEventListener('keydown', (e) => {
if (e.key === 'Enter') { if (e.key === 'Enter') {
e.preventDefault(); e.preventDefault();
@@ -986,7 +1080,17 @@ export class BulkManager {
async saveBulkTags(mode = 'append') { async saveBulkTags(mode = 'append') {
const tagElements = document.querySelectorAll('#bulkTagsItems .metadata-item'); const tagElements = document.querySelectorAll('#bulkTagsItems .metadata-item');
const tags = Array.from(tagElements).map(tag => tag.dataset.tag); let tags = Array.from(tagElements).map(tag => tag.dataset.tag);
// Flush uncommitted input as a tag so it's not silently lost on save
const tagInput = document.querySelector('.bulk-metadata-input');
if (tagInput) {
const pendingTag = tagInput.value.trim().toLowerCase();
if (pendingTag && !tags.includes(pendingTag)) {
tags.push(pendingTag);
}
tagInput.value = '';
}
if (tags.length === 0) { if (tags.length === 0) {
showToast('toast.models.noTagsToAdd', {}, 'warning'); showToast('toast.models.noTagsToAdd', {}, 'warning');
@@ -1010,6 +1114,8 @@ export class BulkManager {
cancelled = true; cancelled = true;
}); });
const isRecipes = state.currentPageType === 'recipes';
// Add or replace tags for each selected model based on mode // Add or replace tags for each selected model based on mode
for (const filePath of filePaths) { for (const filePath of filePaths) {
if (cancelled) { if (cancelled) {
@@ -1017,7 +1123,9 @@ export class BulkManager {
break; break;
} }
try { try {
if (mode === 'replace') { if (isRecipes) {
await this._saveRecipeTags(filePath, tags, mode);
} else if (mode === 'replace') {
await apiClient.saveModelMetadata(filePath, { tags: tags }); await apiClient.saveModelMetadata(filePath, { tags: tags });
} else { } else {
await apiClient.addTags(filePath, { tags: tags }); await apiClient.addTags(filePath, { tags: tags });
@@ -1056,6 +1164,35 @@ export class BulkManager {
} }
} }
async _saveRecipeTags(filePath, newTags, mode) {
const recipeId = extractRecipeId(filePath);
if (!recipeId) throw new Error('Unable to determine recipe ID');
let finalTags = newTags;
if (mode === 'append') {
const recipeItem = state.virtualScroller?.items?.find(
item => item.file_path === filePath
);
const existingTags = recipeItem?.tags || [];
finalTags = [...new Set([...existingTags, ...newTags])];
}
const response = await fetch(
`/api/lm/recipe/${encodeURIComponent(recipeId)}/update`,
{
method: 'PUT',
headers: { 'Content-Type': 'application/json' },
body: JSON.stringify({ tags: finalTags }),
}
);
const data = await response.json();
if (!data.success) {
throw new Error(data.error || 'Failed to update recipe tags');
}
state.virtualScroller.updateSingleItem(filePath, { tags: finalTags });
}
cleanupBulkAddTagsModal() { cleanupBulkAddTagsModal() {
// Clear tags container // Clear tags container
const tagsContainer = document.getElementById('bulkTagsItems'); const tagsContainer = document.getElementById('bulkTagsItems');
@@ -1090,6 +1227,60 @@ export class BulkManager {
} }
} }
async setBulkFavorites(value) {
if (state.selectedModels.size === 0) {
showToast('toast.models.noModelsSelected', {}, 'warning');
return;
}
const totalCount = state.selectedModels.size;
const isRecipesPage = state.currentPageType === 'recipes';
state.loadingManager.showSimpleLoading(
translate(value ? 'toast.models.bulkFavoriteUpdating' : 'toast.models.bulkUnfavoriteUpdating', { count: totalCount })
);
let cancelled = false;
state.loadingManager.showCancelButton(() => {
cancelled = true;
});
let successCount = 0;
let failureCount = 0;
try {
for (const filePath of state.selectedModels) {
if (cancelled) {
showToast('toast.api.operationCancelled', {}, 'info');
break;
}
try {
if (isRecipesPage) {
await updateRecipeMetadata(filePath, { favorite: value });
} else {
const apiClient = getModelApiClient();
await apiClient.saveModelMetadata(filePath, { favorite: value });
}
successCount++;
} catch (error) {
failureCount++;
console.error(`Failed to set favorite=${value} for ${filePath}:`, error);
}
}
} finally {
state.loadingManager?.hide?.();
}
if (successCount === totalCount) {
const toastKey = value ? 'modelCard.favorites.added' : 'modelCard.favorites.removed';
showToast(toastKey, {}, 'success');
} else if (successCount > 0) {
const toastKey = value ? 'toast.models.bulkFavoritePartialAdded' : 'toast.models.bulkFavoritePartialRemoved';
showToast(toastKey, { success: successCount, failed: failureCount }, 'warning');
} else {
showToast('toast.models.bulkFavoriteFailed', {}, 'error');
}
}
/** /**
* Show bulk base model modal * Show bulk base model modal
*/ */

View File

@@ -225,6 +225,13 @@ export class DoctorManager {
renderIssueCard(item) { renderIssueCard(item) {
const status = item.status || 'ok'; const status = item.status || 'ok';
const tagLabel = this.getStatusLabel(status); const tagLabel = this.getStatusLabel(status);
const titleKey = `doctor.issues.${item.id || ''}.title`;
const displayTitle = translate(titleKey, {}, item.title || '');
const summaryKey = `doctor.issues.${item.id || ''}.summary.${status}`;
const displaySummary = translate(summaryKey, {}, item.summary || '');
const details = Array.isArray(item.details) ? item.details : []; const details = Array.isArray(item.details) ? item.details : [];
const listItems = details const listItems = details
.filter((detail) => typeof detail === 'string') .filter((detail) => typeof detail === 'string')
@@ -235,19 +242,22 @@ export class DoctorManager {
.map((detail) => this.renderInlineDetail(detail)) .map((detail) => this.renderInlineDetail(detail))
.join(''); .join('');
const actions = (item.actions || []) const actions = (item.actions || [])
.map((action) => ` .map((action) => {
const actionLabel = translate(`doctor.actions.${action.id}`, {}, action.label);
return `
<button class="${action.id === 'repair-cache' || action.id === 'reload-page' ? 'primary-btn' : 'secondary-btn'}" data-doctor-action="${escapeHtml(action.id)}"> <button class="${action.id === 'repair-cache' || action.id === 'reload-page' ? 'primary-btn' : 'secondary-btn'}" data-doctor-action="${escapeHtml(action.id)}">
${escapeHtml(action.label)} ${escapeHtml(actionLabel)}
</button> </button>
`) `;
})
.join(''); .join('');
return ` return `
<section class="doctor-issue-card" data-status="${escapeHtml(status)}" data-issue-id="${escapeHtml(item.id || '')}"> <section class="doctor-issue-card" data-status="${escapeHtml(status)}" data-issue-id="${escapeHtml(item.id || '')}">
<div class="doctor-issue-header"> <div class="doctor-issue-header">
<div> <div>
<h3>${escapeHtml(item.title || '')}</h3> <h3>${escapeHtml(displayTitle)}</h3>
<p class="doctor-issue-summary">${escapeHtml(item.summary || '')}</p> <p class="doctor-issue-summary">${escapeHtml(displaySummary)}</p>
</div> </div>
<span class="doctor-issue-tag">${escapeHtml(tagLabel)}</span> <span class="doctor-issue-tag">${escapeHtml(tagLabel)}</span>
</div> </div>
@@ -262,7 +272,7 @@ export class DoctorManager {
if (detail.conflict_groups || detail.total_conflict_files) { if (detail.conflict_groups || detail.total_conflict_files) {
return ` return `
<div class="doctor-inline-detail"> <div class="doctor-inline-detail">
<strong>${escapeHtml(translate('doctor.status.warning', {}, 'Conflicts'))}</strong> <strong>${escapeHtml(translate('doctor.labels.conflicts', {}, 'Conflicts'))}</strong>
<div>${escapeHtml(`${detail.conflict_groups || 0} filenames, ${detail.total_conflict_files || 0} files`)}</div> <div>${escapeHtml(`${detail.conflict_groups || 0} filenames, ${detail.total_conflict_files || 0} files`)}</div>
</div> </div>
`; `;
@@ -324,11 +334,42 @@ export class DoctorManager {
} }
}, 100); }, 100);
break; break;
case 'open-settings-syntax-format':
modalManager.showModal('settingsModal');
window.setTimeout(() => {
// Switch to Interface section
document.querySelectorAll('.settings-section').forEach((s) => s.classList.remove('active'));
const interfaceSection = document.getElementById('section-interface');
if (interfaceSection) {
interfaceSection.classList.add('active');
}
document.querySelectorAll('.settings-nav-item').forEach((n) => n.classList.remove('active'));
const interfaceNav = document.querySelector('.settings-nav-item[data-section="interface"]');
if (interfaceNav) {
interfaceNav.classList.add('active');
}
// Focus and scroll to the LoRA Syntax Format dropdown
const select = document.getElementById('loraSyntaxFormat');
if (select) {
select.focus();
select.scrollIntoView({ behavior: 'smooth', block: 'center' });
// Add temporary highlight animation
const settingItem = select.closest('.setting-item');
if (settingItem) {
settingItem.classList.add('settings-setting-highlight');
setTimeout(() => {
settingItem.classList.remove('settings-setting-highlight');
}, 4500);
}
}
}, 100);
break;
case 'repair-cache': case 'repair-cache':
await this.repairCache(); await this.repairCache();
break; break;
case 'resolve-filename-conflicts': case 'resolve-filename-conflicts':
await this.resolveFilenameConflicts(); await this.promptResolveConflicts();
break; break;
case 'reload-page': case 'reload-page':
this.reloadUi(); this.reloadUi();
@@ -358,6 +399,62 @@ export class DoctorManager {
} }
} }
_getConflictStats() {
const conflict = (this.lastDiagnostics?.diagnostics || []).find(
(d) => d.id === 'filename_conflicts'
);
if (!conflict || !Array.isArray(conflict.details)) {
return { groups: 0, files: 0 };
}
const summary = conflict.details.find(
(d) => d && typeof d === 'object' && d.conflict_groups !== undefined
);
return {
groups: summary?.conflict_groups || 0,
files: summary?.total_conflict_files || 0,
};
}
async promptResolveConflicts() {
const stats = this._getConflictStats();
if (stats.groups === 0) {
return;
}
const detailEl = document.getElementById('resolveConflictsDetail');
if (detailEl) {
detailEl.innerHTML = translate(
'conflictConfirm.detail',
{},
'Example: <code>Add_Details_v1.2</code> \u2192 <code>Add_Details_v1.2-a3f7</code>'
);
}
const impactEl = document.getElementById('resolveConflictsImpact');
if (impactEl) {
impactEl.innerHTML = translate(
'conflictConfirm.impact',
{ count: stats.files, groups: stats.groups },
`Will rename <strong>${stats.files}</strong> file(s) across <strong>${stats.groups}</strong> duplicate group(s).`
);
}
this._confirmResolveResolve = null;
modalManager.showModal('resolveFilenameConflictsModal');
return new Promise((resolve) => {
this._confirmResolveResolve = resolve;
});
}
async confirmResolveConflicts() {
modalManager.closeModal('resolveFilenameConflictsModal');
if (this._confirmResolveResolve) {
this._confirmResolveResolve(true);
this._confirmResolveResolve = null;
}
await this.resolveFilenameConflicts();
}
async resolveFilenameConflicts() { async resolveFilenameConflicts() {
try { try {
this.setLoading(true); this.setLoading(true);
@@ -449,3 +546,8 @@ export class DoctorManager {
} }
export const doctorManager = new DoctorManager(); export const doctorManager = new DoctorManager();
// Make available globally for HTML onclick handlers
if (typeof window !== 'undefined') {
window.doctorManager = doctorManager;
}

View File

@@ -70,6 +70,9 @@ export class FilterManager {
// Initialize tag logic toggle // Initialize tag logic toggle
this.initializeTagLogicToggle(); this.initializeTagLogicToggle();
// Create auto-tag filter section (I2V, T2V, TI2V, Lightning, Turbo)
this.createAutoTagFilters();
// Add click handler for filter button // Add click handler for filter button
if (this.filterButton) { if (this.filterButton) {
this.filterButton.addEventListener('click', () => { this.filterButton.addEventListener('click', () => {
@@ -480,6 +483,58 @@ export class FilterManager {
} }
} }
AUTO_TAG_FILTER_TAGS = ['I2V', 'T2V', 'TI2V', 'Lightning', 'Turbo'];
createAutoTagFilters() {
const container = document.getElementById('autoTagFilterTags');
if (container) return;
const modelTypeSection = document.getElementById('modelTypeTags')?.closest('.filter-section');
if (!modelTypeSection) return;
const section = document.createElement('div');
section.className = 'filter-section';
section.innerHTML = `
<h4>${translate('header.filter.autoTags', {}, 'Auto Tags')}</h4>
<div class="filter-tags" id="autoTagFilterTags"></div>
`;
modelTypeSection.parentNode.insertBefore(section, modelTypeSection.nextSibling);
const tagsContainer = document.getElementById('autoTagFilterTags');
this.AUTO_TAG_FILTER_TAGS.forEach(tag => {
const el = document.createElement('div');
el.className = 'filter-tag auto-tag-filter';
el.dataset.autoTag = tag;
el.textContent = tag;
// Restore previous state
const state = (this.filters.autoTags && this.filters.autoTags[tag]) || 'none';
this._applyTriState(el, state);
el.addEventListener('click', async () => {
const current = (this.filters.autoTags && this.filters.autoTags[tag]) || 'none';
const next = current === 'none' ? 'include' : current === 'include' ? 'exclude' : 'none';
if (!this.filters.autoTags) this.filters.autoTags = {};
if (next === 'none') {
delete this.filters.autoTags[tag];
} else {
this.filters.autoTags[tag] = next;
}
this._applyTriState(el, next);
this.updateActiveFiltersCount();
await this.applyFilters(false);
});
tagsContainer.appendChild(el);
});
}
_applyTriState(el, state) {
el.classList.remove('active', 'exclude');
if (state === 'include') el.classList.add('active');
else if (state === 'exclude') el.classList.add('exclude');
}
toggleFilterPanel() { toggleFilterPanel() {
if (this.filterPanel) { if (this.filterPanel) {
const isHidden = this.filterPanel.classList.contains('hidden'); const isHidden = this.filterPanel.classList.contains('hidden');
@@ -540,6 +595,13 @@ export class FilterManager {
this.updateLicenseSelections(); this.updateLicenseSelections();
} }
this.updateModelTypeSelections(); this.updateModelTypeSelections();
const autoTagEls = document.querySelectorAll('.auto-tag-filter');
autoTagEls.forEach(el => {
const tag = el.dataset.autoTag;
const state = (this.filters.autoTags && this.filters.autoTags[tag]) || 'none';
this._applyTriState(el, state);
});
} }
updateModelTypeSelections() { updateModelTypeSelections() {
@@ -556,11 +618,12 @@ export class FilterManager {
updateActiveFiltersCount() { updateActiveFiltersCount() {
const tagFilterCount = this.filters.tags ? Object.keys(this.filters.tags).length : 0; const tagFilterCount = this.filters.tags ? Object.keys(this.filters.tags).length : 0;
const autoTagFilterCount = this.filters.autoTags ? Object.keys(this.filters.autoTags).length : 0;
const licenseFilterCount = this.filters.license ? Object.keys(this.filters.license).length : 0; const licenseFilterCount = this.filters.license ? Object.keys(this.filters.license).length : 0;
const modelTypeFilterCount = this.filters.modelTypes.length; const modelTypeFilterCount = this.filters.modelTypes.length;
// Exclude EMPTY_WILDCARD_MARKER from base model count // Exclude EMPTY_WILDCARD_MARKER from base model count
const baseModelCount = this.filters.baseModel.filter(m => m !== EMPTY_WILDCARD_MARKER).length; const baseModelCount = this.filters.baseModel.filter(m => m !== EMPTY_WILDCARD_MARKER).length;
const totalActiveFilters = baseModelCount + tagFilterCount + licenseFilterCount + modelTypeFilterCount; const totalActiveFilters = baseModelCount + tagFilterCount + autoTagFilterCount + licenseFilterCount + modelTypeFilterCount;
if (this.activeFiltersCount) { if (this.activeFiltersCount) {
if (totalActiveFilters > 0) { if (totalActiveFilters > 0) {
@@ -652,6 +715,7 @@ export class FilterManager {
...this.filters, ...this.filters,
baseModel: [], baseModel: [],
tags: {}, tags: {},
autoTags: {},
license: {}, license: {},
modelTypes: [], modelTypes: [],
tagLogic: 'any' tagLogic: 'any'
@@ -721,6 +785,7 @@ export class FilterManager {
hasActiveFilters() { hasActiveFilters() {
const tagCount = this.filters.tags ? Object.keys(this.filters.tags).length : 0; const tagCount = this.filters.tags ? Object.keys(this.filters.tags).length : 0;
const autoTagCount = this.filters.autoTags ? Object.keys(this.filters.autoTags).length : 0;
const licenseCount = this.filters.license ? Object.keys(this.filters.license).length : 0; const licenseCount = this.filters.license ? Object.keys(this.filters.license).length : 0;
const modelTypeCount = this.filters.modelTypes.length; const modelTypeCount = this.filters.modelTypes.length;
// Exclude EMPTY_WILDCARD_MARKER from base model count // Exclude EMPTY_WILDCARD_MARKER from base model count
@@ -728,6 +793,7 @@ export class FilterManager {
return ( return (
baseModelCount > 0 || baseModelCount > 0 ||
tagCount > 0 || tagCount > 0 ||
autoTagCount > 0 ||
licenseCount > 0 || licenseCount > 0 ||
modelTypeCount > 0 modelTypeCount > 0
); );
@@ -739,6 +805,7 @@ export class FilterManager {
...source, ...source,
baseModel: Array.isArray(source.baseModel) ? [...source.baseModel] : [], baseModel: Array.isArray(source.baseModel) ? [...source.baseModel] : [],
tags: this.normalizeTagFilters(source.tags), tags: this.normalizeTagFilters(source.tags),
autoTags: this.normalizeTagFilters(source.autoTags),
license: this.shouldShowLicenseFilters() ? this.normalizeLicenseFilters(source.license) : {}, license: this.shouldShowLicenseFilters() ? this.normalizeLicenseFilters(source.license) : {},
modelTypes: this.normalizeModelTypeFilters(source.modelTypes), modelTypes: this.normalizeModelTypeFilters(source.modelTypes),
tagLogic: source.tagLogic || 'any' tagLogic: source.tagLogic || 'any'
@@ -822,6 +889,7 @@ export class FilterManager {
...this.filters, ...this.filters,
baseModel: [...(this.filters.baseModel || [])], baseModel: [...(this.filters.baseModel || [])],
tags: { ...(this.filters.tags || {}) }, tags: { ...(this.filters.tags || {}) },
autoTags: { ...(this.filters.autoTags || {}) },
license: { ...(this.filters.license || {}) }, license: { ...(this.filters.license || {}) },
modelTypes: [...(this.filters.modelTypes || [])], modelTypes: [...(this.filters.modelTypes || [])],
tagLogic: this.filters.tagLogic || 'any' tagLogic: this.filters.tagLogic || 'any'

View File

@@ -316,6 +316,19 @@ export class ModalManager {
}); });
} }
// Register resolveFilenameConflictsModal
const resolveFilenameConflictsModal = document.getElementById('resolveFilenameConflictsModal');
if (resolveFilenameConflictsModal) {
this.registerModal('resolveFilenameConflictsModal', {
element: resolveFilenameConflictsModal,
onClose: () => {
this.getModal('resolveFilenameConflictsModal').element.classList.remove('show');
document.body.classList.remove('modal-open');
},
closeOnOutsideClick: true
});
}
document.addEventListener('keydown', this.boundHandleEscape); document.addEventListener('keydown', this.boundHandleEscape);
this.initialized = true; this.initialized = true;
} }
@@ -396,7 +409,8 @@ export class ModalManager {
id === "modelDuplicateDeleteModal" || id === "modelDuplicateDeleteModal" ||
id === "clearCacheModal" || id === "clearCacheModal" ||
id === "bulkDeleteModal" || id === "bulkDeleteModal" ||
id === "checkUpdatesConfirmModal" id === "checkUpdatesConfirmModal" ||
id === "resolveFilenameConflictsModal"
) { ) {
modal.element.classList.add("show"); modal.element.classList.add("show");
} else { } else {

View File

@@ -295,6 +295,13 @@ export class SettingsManager {
// Update state // Update state
state.global.settings[settingKey] = value; state.global.settings[settingKey] = value;
if (settingKey === 'lora_syntax_format') {
try {
localStorage.setItem('lm:lora-syntax-format-changed', Date.now().toString());
} catch (_) {
}
}
if (!this.isBackendSetting(settingKey)) { if (!this.isBackendSetting(settingKey)) {
return; return;
} }
@@ -949,6 +956,12 @@ export class SettingsManager {
includeTriggerWordsCheckbox.checked = state.global.settings.include_trigger_words || false; includeTriggerWordsCheckbox.checked = state.global.settings.include_trigger_words || false;
} }
// Set lora syntax format
const loraSyntaxFormatSelect = document.getElementById('loraSyntaxFormat');
if (loraSyntaxFormatSelect) {
loraSyntaxFormatSelect.value = state.global.settings.lora_syntax_format || 'legacy';
}
// Load metadata archive settings // Load metadata archive settings
await this.loadMetadataArchiveSettings(); await this.loadMetadataArchiveSettings();

View File

@@ -731,9 +731,16 @@ export class UpdateService {
} }
// Simple markdown parser for changelog items // Simple markdown parser for changelog items
// Simple markdown parser for changelog items
// Escape HTML entities first so angle brackets in content (e.g. `<lora:x>`)
// aren't swallowed by innerHTML's HTML parser as invalid tags
parseMarkdown(text) { parseMarkdown(text) {
if (!text) return ''; if (!text) return '';
text = text.replace(/&/g, '&amp;');
text = text.replace(/</g, '&lt;');
text = text.replace(/>/g, '&gt;');
// Handle bold text (**text**) // Handle bold text (**text**)
text = text.replace(/\*\*(.*?)\*\*/g, '<strong>$1</strong>'); text = text.replace(/\*\*(.*?)\*\*/g, '<strong>$1</strong>');

View File

@@ -286,16 +286,6 @@ class RecipeManager {
}); });
}); });
// 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) // Handle full rebuild option (Rebuild Cache)
const fullRebuildOption = document.querySelector('[data-action="full-rebuild"]'); const fullRebuildOption = document.querySelector('[data-action="full-rebuild"]');
if (fullRebuildOption) { if (fullRebuildOption) {

View File

@@ -37,6 +37,7 @@ const DEFAULT_SETTINGS_BASE = Object.freeze({
card_info_display: 'always', card_info_display: 'always',
show_folder_sidebar: true, show_folder_sidebar: true,
model_name_display: 'model_name', model_name_display: 'model_name',
lora_syntax_format: 'legacy',
model_card_footer_action: 'example_images', model_card_footer_action: 'example_images',
show_version_on_card: true, show_version_on_card: true,
include_trigger_words: false, include_trigger_words: false,
@@ -50,6 +51,7 @@ const DEFAULT_SETTINGS_BASE = Object.freeze({
download_skip_base_models: [], download_skip_base_models: [],
backup_auto_enabled: true, backup_auto_enabled: true,
backup_retention_count: 5, backup_retention_count: 5,
strip_lora_on_copy: false,
}); });
export function createDefaultSettings() { export function createDefaultSettings() {

View File

@@ -66,6 +66,9 @@ export const BASE_MODELS = {
HUNYUAN_VIDEO: "Hunyuan Video", HUNYUAN_VIDEO: "Hunyuan Video",
// Other models // Other models
ANIMA: "Anima", ANIMA: "Anima",
ERNIE: "Ernie",
ERNIE_TURBO: "Ernie Turbo",
NUCLEUS: "Nucleus",
PONY_V7: "Pony V7", PONY_V7: "Pony V7",
// Default // Default
UNKNOWN: "Other" UNKNOWN: "Other"
@@ -191,6 +194,9 @@ export const BASE_MODEL_ABBREVIATIONS = {
[BASE_MODELS.ZIMAGE_TURBO]: 'ZIT', [BASE_MODELS.ZIMAGE_TURBO]: 'ZIT',
[BASE_MODELS.ZIMAGE_BASE]: 'ZIB', [BASE_MODELS.ZIMAGE_BASE]: 'ZIB',
[BASE_MODELS.ANIMA]: 'ANI', [BASE_MODELS.ANIMA]: 'ANI',
[BASE_MODELS.ERNIE]: 'ERNI',
[BASE_MODELS.ERNIE_TURBO]: 'ETRB',
[BASE_MODELS.NUCLEUS]: 'NUCL',
// Default // Default
[BASE_MODELS.UNKNOWN]: 'OTH' [BASE_MODELS.UNKNOWN]: 'OTH'
@@ -394,6 +400,7 @@ export const BASE_MODEL_CATEGORIES = {
BASE_MODELS.QWEN, BASE_MODELS.AURAFLOW, BASE_MODELS.CHROMA, BASE_MODELS.ZIMAGE_TURBO, BASE_MODELS.ZIMAGE_BASE, BASE_MODELS.QWEN, BASE_MODELS.AURAFLOW, BASE_MODELS.CHROMA, BASE_MODELS.ZIMAGE_TURBO, BASE_MODELS.ZIMAGE_BASE,
BASE_MODELS.PIXART_A, BASE_MODELS.PIXART_E, BASE_MODELS.HUNYUAN_1, BASE_MODELS.PIXART_A, BASE_MODELS.PIXART_E, BASE_MODELS.HUNYUAN_1,
BASE_MODELS.LUMINA, BASE_MODELS.KOLORS, BASE_MODELS.NOOBAI, BASE_MODELS.ANIMA, BASE_MODELS.LUMINA, BASE_MODELS.KOLORS, BASE_MODELS.NOOBAI, BASE_MODELS.ANIMA,
BASE_MODELS.ERNIE, BASE_MODELS.ERNIE_TURBO, BASE_MODELS.NUCLEUS,
BASE_MODELS.UNKNOWN BASE_MODELS.UNKNOWN
] ]
}; };
@@ -493,6 +500,18 @@ export function clearDynamicBaseModels() {
dynamicBaseModelsTimestamp = null; dynamicBaseModelsTimestamp = null;
} }
export const AUTO_TAG_GROUPS = {
mode: new Set(['HIGH', 'LOW']),
video: new Set(['I2V', 'T2V', 'TI2V']),
speed: new Set(['Lightning', 'Turbo']),
};
export const AUTO_TAG_GROUP_LABELS = {
mode: 'High / Low',
video: 'I2V / T2V / TI2V',
speed: 'Lightning / Turbo',
};
/** /**
* Check if dynamic base models cache is valid * Check if dynamic base models cache is valid
* @returns {boolean} * @returns {boolean}

View File

@@ -420,17 +420,23 @@ export function getLoraStrengthsFromUsageTips(usageTips = {}) {
export function buildLoraSyntax(fileName, usageTips = {}) { export function buildLoraSyntax(fileName, usageTips = {}) {
const { strength, hasStrength, clipStrength, hasClipStrength } = getLoraStrengthsFromUsageTips(usageTips); const { strength, hasStrength, clipStrength, hasClipStrength } = getLoraStrengthsFromUsageTips(usageTips);
const effectiveName = state.global.settings?.lora_syntax_format === 'legacy'
? fileName.split('/').pop()
: fileName;
if (hasClipStrength) { if (hasClipStrength) {
const modelStrength = hasStrength ? strength : 1; const modelStrength = hasStrength ? strength : 1;
return `<lora:${fileName}:${modelStrength}:${clipStrength}>`; return `<lora:${effectiveName}:${modelStrength}:${clipStrength}>`;
} }
return `<lora:${fileName}:${strength}>`; return `<lora:${effectiveName}:${strength}>`;
} }
export function copyLoraSyntax(card) { export function copyLoraSyntax(card) {
const usageTips = JSON.parse(card.dataset.usage_tips || "{}"); const usageTips = JSON.parse(card.dataset.usage_tips || "{}");
const baseSyntax = buildLoraSyntax(card.dataset.file_name, usageTips); const folder = card.dataset.folder || '';
const loraName = folder ? `${folder}/${card.dataset.file_name}` : card.dataset.file_name;
const baseSyntax = buildLoraSyntax(loraName, usageTips);
// Check if trigger words should be included // Check if trigger words should be included
const includeTriggerWords = state.global.settings.include_trigger_words; const includeTriggerWords = state.global.settings.include_trigger_words;

View File

@@ -53,32 +53,35 @@
<span>{{ t('loras.bulkOperations.selected', {'count': 0}) }}</span> <span>{{ t('loras.bulkOperations.selected', {'count': 0}) }}</span>
</div> </div>
<div class="context-menu-separator"></div> <div class="context-menu-separator"></div>
<div class="context-menu-item" data-action="refresh-all"> <div class="context-menu-section" data-section="workflow">
<i class="fas fa-sync-alt"></i> <span>{{ t('loras.bulkOperations.refreshAll') }}</span> <div class="context-menu-section-header">{{ t('loras.bulkOperations.sections.workflow') }}</div>
</div> <div class="context-menu-item has-submenu" data-has-submenu="send-to-workflow">
<div class="context-menu-item" data-action="check-updates"> <i class="fas fa-paper-plane"></i>
<i class="fas fa-bell"></i> <span>{{ t('loras.bulkOperations.checkUpdates') }}</span> <span>{{ t('loras.bulkOperations.sendToWorkflow') }}</span>
</div> <i class="fas fa-chevron-right submenu-arrow"></i>
<div class="context-menu-item" data-action="copy-all"> <div class="context-submenu">
<i class="fas fa-copy"></i> <span>{{ t('loras.bulkOperations.copyAll') }}</span>
</div>
<div class="context-menu-item" data-action="send-to-workflow-append"> <div class="context-menu-item" data-action="send-to-workflow-append">
<i class="fas fa-paper-plane"></i> <span>{{ t('loras.contextMenu.sendToWorkflowAppend') }}</span> <i class="fas fa-paper-plane"></i> <span>{{ t('loras.contextMenu.sendToWorkflowAppend') }}</span>
</div> </div>
<div class="context-menu-item" data-action="send-to-workflow-replace"> <div class="context-menu-item" data-action="send-to-workflow-replace">
<i class="fas fa-exchange-alt"></i> <span>{{ t('loras.contextMenu.sendToWorkflowReplace') }}</span> <i class="fas fa-exchange-alt"></i> <span>{{ t('loras.contextMenu.sendToWorkflowReplace') }}</span>
</div> </div>
<div class="context-menu-item" data-action="auto-organize"> <div class="context-menu-item" data-action="copy-all">
<i class="fas fa-magic"></i> <span>{{ t('loras.bulkOperations.autoOrganize') }}</span> <i class="fas fa-copy"></i> <span>{{ t('loras.bulkOperations.copyAll') }}</span>
</div> </div>
<div class="context-menu-item" data-action="add-tags">
<i class="fas fa-tags"></i> <span>{{ t('loras.bulkOperations.addTags') }}</span>
</div> </div>
<div class="context-menu-item" data-action="set-base-model">
<i class="fas fa-layer-group"></i> <span>{{ t('loras.bulkOperations.setBaseModel') }}</span>
</div> </div>
<div class="context-menu-item" data-action="set-content-rating"> </div>
<i class="fas fa-exclamation-triangle"></i> <span>{{ t('loras.bulkOperations.setContentRating') }}</span> <div class="context-menu-section" data-section="metadata">
<div class="context-menu-section-header">{{ t('loras.bulkOperations.sections.metadata') }}</div>
<div class="context-menu-item" data-action="refresh-all">
<i class="fas fa-sync-alt"></i> <span>{{ t('loras.bulkOperations.refreshAll') }}</span>
</div>
<div class="context-menu-item" data-action="check-updates">
<i class="fas fa-bell"></i> <span>{{ t('loras.bulkOperations.checkUpdates') }}</span>
</div>
<div class="context-menu-item" data-action="repair-metadata">
<i class="fas fa-tools"></i> <span>{{ t('loras.bulkOperations.repairMetadata') }}</span>
</div> </div>
<div class="context-menu-item" data-action="skip-metadata-refresh"> <div class="context-menu-item" data-action="skip-metadata-refresh">
<i class="fas fa-ban"></i> <span>{{ t('loras.bulkOperations.skipMetadataRefresh') }}</span> <i class="fas fa-ban"></i> <span>{{ t('loras.bulkOperations.skipMetadataRefresh') }}</span>
@@ -86,13 +89,41 @@
<div class="context-menu-item" data-action="resume-metadata-refresh"> <div class="context-menu-item" data-action="resume-metadata-refresh">
<i class="fas fa-redo"></i> <span>{{ t('loras.bulkOperations.resumeMetadataRefresh') }}</span> <i class="fas fa-redo"></i> <span>{{ t('loras.bulkOperations.resumeMetadataRefresh') }}</span>
</div> </div>
<div class="context-menu-separator"></div> </div>
<div class="context-menu-item" data-action="download-missing-loras"> <div class="context-menu-section" data-section="attributes">
<i class="fas fa-download"></i> <span>{{ t('loras.bulkOperations.downloadMissingLoras') }}</span> <div class="context-menu-section-header">{{ t('loras.bulkOperations.sections.attributes') }}</div>
<div class="context-menu-item" data-action="add-tags">
<i class="fas fa-tags"></i> <span>{{ t('loras.bulkOperations.addTags') }}</span>
</div>
<div class="context-menu-item" data-action="set-base-model">
<i class="fas fa-layer-group"></i> <span>{{ t('loras.bulkOperations.setBaseModel') }}</span>
</div>
<div class="context-menu-item" data-action="set-favorite">
<i class="fas fa-star"></i> <span>{{ t('loras.bulkOperations.setFavorite') }}</span>
</div>
<div class="context-menu-item" data-action="set-content-rating">
<i class="fas fa-exclamation-triangle"></i> <span>{{ t('loras.bulkOperations.setContentRating') }}</span>
</div>
</div>
<div class="context-menu-section" data-section="organize">
<div class="context-menu-section-header">{{ t('loras.bulkOperations.sections.organize') }}</div>
<div class="context-menu-item" data-action="auto-organize">
<i class="fas fa-magic"></i> <span>{{ t('loras.bulkOperations.autoOrganize') }}</span>
</div> </div>
<div class="context-menu-item" data-action="move-all"> <div class="context-menu-item" data-action="move-all">
<i class="fas fa-folder-open"></i> <span>{{ t('loras.bulkOperations.moveAll') }}</span> <i class="fas fa-folder-open"></i> <span>{{ t('loras.bulkOperations.moveAll') }}</span>
</div> </div>
</div>
<div class="context-menu-section" data-section="download">
<div class="context-menu-section-header">{{ t('loras.bulkOperations.sections.download') }}</div>
<div class="context-menu-item" data-action="download-example-images">
<i class="fas fa-download"></i> <span>{{ t('loras.bulkOperations.downloadExamples') }}</span>
</div>
<div class="context-menu-item" data-action="download-missing-loras">
<i class="fas fa-download"></i> <span>{{ t('loras.bulkOperations.downloadMissingLoras') }}</span>
</div>
</div>
<div class="context-menu-separator"></div>
<div class="context-menu-item delete-item" data-action="delete-all"> <div class="context-menu-item delete-item" data-action="delete-all">
<i class="fas fa-trash"></i> <span>{{ t('loras.bulkOperations.deleteAll') }}</span> <i class="fas fa-trash"></i> <span>{{ t('loras.bulkOperations.deleteAll') }}</span>
</div> </div>

View File

@@ -41,9 +41,6 @@
<i class="fas fa-caret-down"></i> <i class="fas fa-caret-down"></i>
</button> </button>
<div class="dropdown-menu"> <div class="dropdown-menu">
<div class="dropdown-item" data-action="quick-refresh" title="{{ t('loras.controls.refresh.quickTooltip') }}">
<i class="fas fa-bolt"></i> <span>{{ t('loras.controls.refresh.quick') }}</span>
</div>
<div class="dropdown-item" data-action="full-rebuild" title="{{ t('loras.controls.refresh.fullTooltip') }}"> <div class="dropdown-item" data-action="full-rebuild" title="{{ t('loras.controls.refresh.fullTooltip') }}">
<i class="fas fa-tools"></i> <span>{{ t('loras.controls.refresh.full') }}</span> <i class="fas fa-tools"></i> <span>{{ t('loras.controls.refresh.full') }}</span>
</div> </div>

View File

@@ -218,10 +218,10 @@
<div class="filter-section"> <div class="filter-section">
<h4>{{ t('header.filter.license') }}</h4> <h4>{{ t('header.filter.license') }}</h4>
<div class="filter-tags"> <div class="filter-tags">
<div class="filter-tag license-tag" data-license="noCredit"> <div class="filter-tag license-tag" data-license="noCredit" title="{{ t('header.filter.noCreditRequiredTooltip') }}">
{{ t('header.filter.noCreditRequired') }} {{ t('header.filter.noCreditRequired') }}
</div> </div>
<div class="filter-tag license-tag" data-license="allowSelling"> <div class="filter-tag license-tag" data-license="allowSelling" title="{{ t('header.filter.allowSellingGeneratedContentTooltip') }}">
{{ t('header.filter.allowSellingGeneratedContent') }} {{ t('header.filter.allowSellingGeneratedContent') }}
</div> </div>
</div> </div>

View File

@@ -109,3 +109,20 @@
</div> </div>
</div> </div>
</div> </div>
<!-- Resolve Filename Conflicts Confirmation Modal -->
<div id="resolveFilenameConflictsModal" class="modal delete-modal">
<div class="modal-content delete-modal-content">
<h2>{{ t('conflictConfirm.title') }}</h2>
<p class="confirmation-message">{{ t('conflictConfirm.message') }}</p>
<p class="resolve-conflicts-detail" id="resolveConflictsDetail"></p>
<div class="resolve-conflicts-impact" id="resolveConflictsImpact"></div>
<div class="modal-actions">
<button class="cancel-btn" onclick="modalManager.closeModal('resolveFilenameConflictsModal')">{{ t('common.actions.cancel') }}</button>
<button class="primary-btn" id="resolveConflictsConfirmBtn" onclick="doctorManager.confirmResolveConflicts()">
<i class="fas fa-check"></i>
{{ t('conflictConfirm.confirm') }}
</button>
</div>
</div>
</div>

View File

@@ -595,6 +595,22 @@
<div class="settings-subsection-header"> <div class="settings-subsection-header">
<h4>{{ t('settings.sections.misc') }}</h4> <h4>{{ t('settings.sections.misc') }}</h4>
</div> </div>
<div class="setting-item">
<div class="setting-row">
<div class="setting-info">
<label for="loraSyntaxFormat">
{{ t('settings.misc.loraSyntaxFormat') }}
<i class="fas fa-info-circle info-icon" data-tooltip="{{ t('settings.misc.loraSyntaxFormatHelp') }}"></i>
</label>
</div>
<div class="setting-control select-control">
<select id="loraSyntaxFormat" onchange="settingsManager.saveSelectSetting('loraSyntaxFormat', 'lora_syntax_format')">
<option value="full">{{ t('settings.misc.loraSyntaxFormatOptions.full') }}</option>
<option value="legacy">{{ t('settings.misc.loraSyntaxFormatOptions.legacy') }}</option>
</select>
</div>
</div>
</div>
<div class="setting-item"> <div class="setting-item">
<div class="setting-row"> <div class="setting-row">
<div class="setting-info"> <div class="setting-info">

View File

@@ -4,6 +4,8 @@
<header class="recipe-modal-header"> <header class="recipe-modal-header">
<h2 id="recipeModalTitle">Recipe Details</h2> <h2 id="recipeModalTitle">Recipe Details</h2>
<!-- Header Actions: populated dynamically in RecipeModal.js -->
<div class="recipe-header-actions" id="recipeHeaderActions"></div>
<!-- Recipe Tags Container --> <!-- Recipe Tags Container -->
<div class="recipe-tags-container"> <div class="recipe-tags-container">
<div class="recipe-tags-compact" id="recipeTagsCompact"></div> <div class="recipe-tags-compact" id="recipeTagsCompact"></div>
@@ -22,7 +24,16 @@
</div> </div>
<div class="info-section recipe-gen-params"> <div class="info-section recipe-gen-params">
<div class="gen-params-header-row">
<h3>Generation Parameters</h3> <h3>Generation Parameters</h3>
<label class="inline-toggle-container lora-strip-toggle" title="When enabled, &lt;lora:...&gt; tags are removed from prompt text when copying">
<span class="inline-toggle-label">Strip &lt;lora:&gt;</span>
<div class="toggle-switch">
<input type="checkbox" id="stripLoraOnCopyToggle">
<span class="toggle-slider"></span>
</div>
</label>
</div>
<div class="gen-params-container"> <div class="gen-params-container">
<!-- Prompt --> <!-- Prompt -->

View File

@@ -75,9 +75,6 @@
<i class="fas fa-caret-down"></i> <i class="fas fa-caret-down"></i>
</button> </button>
<div class="dropdown-menu"> <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') }}"> <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> <i class="fas fa-tools"></i> <span>{{ t('loras.controls.refresh.full', default='Rebuild Cache') }}</span>
</div> </div>

View File

@@ -114,7 +114,8 @@ describe('LoRA widget drag interactions', () => {
dragEl.dispatchEvent(new PointerEvent('pointerup', { pointerId: 1 })); dragEl.dispatchEvent(new PointerEvent('pointerup', { pointerId: 1 }));
expect(document.body.classList.contains('lm-lora-strength-dragging')).toBe(false); expect(document.body.classList.contains('lm-lora-strength-dragging')).toBe(false);
expect(onDragEnd).toHaveBeenCalledTimes(1); expect(onDragEnd).toHaveBeenCalledTimes(1);
expect(renderSpy).toHaveBeenCalledWith(widget.value, widget); // 454210a4 replaced renderFunction() with widget.value setter + widget.callback()
expect(widget.callback).toHaveBeenCalledWith(widget.value);
}); });
it('deletes the selected LoRA when backspace is pressed outside of strength inputs', async () => { it('deletes the selected LoRA when backspace is pressed outside of strength inputs', async () => {

View File

@@ -135,7 +135,6 @@ function renderControlsDom(pageKey) {
<button data-action="refresh" class="dropdown-main"></button> <button data-action="refresh" class="dropdown-main"></button>
<button class="dropdown-toggle"></button> <button class="dropdown-toggle"></button>
<div class="dropdown-menu"> <div class="dropdown-menu">
<div class="dropdown-item" data-action="quick-refresh"></div>
<div class="dropdown-item" data-action="full-rebuild"></div> <div class="dropdown-item" data-action="full-rebuild"></div>
</div> </div>
</div> </div>

View File

@@ -79,7 +79,7 @@ class FakeDownloadHistoryService:
async def mark_downloaded(self, *_args, **_kwargs): async def mark_downloaded(self, *_args, **_kwargs):
return None return None
async def mark_not_downloaded(self, *_args, **_kwargs): async def mark_as_deleted(self, *_args, **_kwargs):
return None return None

View File

@@ -903,7 +903,7 @@ class FakeDownloadHistoryService:
(model_type, version_id, model_id, source, file_path) (model_type, version_id, model_id, source, file_path)
) )
async def mark_not_downloaded(self, model_type, version_id): async def mark_as_deleted(self, model_type, version_id):
self.marked_not_downloaded.append((model_type, version_id)) self.marked_not_downloaded.append((model_type, version_id))

View File

@@ -467,7 +467,10 @@ async def test_import_remote_recipe(monkeypatch, tmp_path: Path) -> None:
class Provider: class Provider:
async def get_model_version_info(self, model_version_id): async def get_model_version_info(self, model_version_id):
provider_calls.append(model_version_id) provider_calls.append(model_version_id)
return {"baseModel": "Flux Provider"}, None return {
"baseModel": "Flux Provider",
"model": {"type": "Checkpoint", "name": "Flux"},
}, None
async def fake_get_default_metadata_provider(): async def fake_get_default_metadata_provider():
return Provider() return Provider()
@@ -785,10 +788,16 @@ async def test_import_remote_recipe_merges_metadata(
async def parse_metadata(self, raw, recipe_scanner=None): async def parse_metadata(self, raw, recipe_scanner=None):
return json.loads(raw[len("Recipe metadata: ") :]) return json.loads(raw[len("Recipe metadata: ") :])
class MockApiParser:
async def parse_metadata(self, raw, recipe_scanner=None):
return {"gen_params": raw, "loras": []}
class MockFactory: class MockFactory:
def create_parser(self, raw): def create_parser(self, raw):
if raw.startswith("Recipe metadata: "): if isinstance(raw, str) and raw.startswith("Recipe metadata: "):
return MockParser() return MockParser()
if isinstance(raw, dict):
return MockApiParser()
return None return None
# 4. Setup Harness and run test # 4. Setup Harness and run test

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