Image rights / copyright detection system: SQLite store, HTTP app, search integrations (Naver, Google Custom Search, Google Cloud Vision web detection), image analysis (fingerprints, face/person detection, evidence enrichment, risk scoring), an admin/review layer, governance and retention policies, batch jobs, and a browser-based operator GUI. This baseline incorporates a full code-review remediation pass (46 fixes; 358 tests passing). Highlights: CRITICAL - Prevent evidence cascade-delete during the schema-constraint migration by disabling FK enforcement around the table rebuild. Security - Sandbox served media (neutralize stored XSS from uploaded/collected SVGs) via CSP + nosniff on the untrusted media routes. - Strip embedded EXIF/GPS from external image derivatives before they are sent to third-party APIs. - Return a clean 404 (not an uncaught StopIteration) for PATCH on an unknown provider. Correctness - LLM-summary failures no longer add +30 to the risk score. - Decode only explicit JS escapes so Korean image URLs are not mangled. - Consume search quota only after a successful request. - Naver/Google adapters map responses inside the failure boundary, so a malformed response degrades to evidence instead of crashing enrichment. - Domain-aware provider attribution; face-box IoU de-duplication; count searches (not result items); per-box crop isolation; clamp evidence confidence and Google CSE num; real submittedEpoch; and more. Robustness - Offline LLM connect fast-fails (short connect timeout) so seed/reload requests are not stalled; full read timeout preserved for generation. - Malformed numeric env vars fall back to defaults instead of crashing startup. Performance - Per-submission evidence reads (no full-table scan per rescore), audit-log LIMIT, lazy active-store lookup, hoisted timestamps. Tests - ~24 regression tests added pinning the above fixes. Runtime data (data/, outputs/, *.sqlite3, *.log), secrets (.env), and node_modules are gitignored.
4.9 KiB
Multi Candidate Knowledge Promotion Implementation Plan
For agentic workers: REQUIRED SUB-SKILL: Use superpowers:subagent-driven-development (recommended) or superpowers:executing-plans to implement this plan task-by-task. Steps use checkbox (
- [ ]) syntax for tracking.
Goal: Allow an operator to select several collected image-search candidates and promote them into one knowledge-base entry with multiple visual samples.
Architecture: Keep the current Naver candidate collection flow and add a batch-promotion path beside the existing single-candidate path. The SQLite store owns the merge behavior, the HTTP layer exposes one batch endpoint, and the GUI adds selection controls plus one shared promotion form.
Tech Stack: Python standard-library HTTP server, SQLite JSON payload store, pytest, static HTML/CSS/JavaScript operator GUI.
Task 1: Store Contract
Files:
-
Modify:
tests/rights_filter/server/test_sqlite_store.py -
Modify:
src/rights_filter/server/sqlite_store.py -
Step 1: Write the failing test
Add a test that collects two candidates and calls promote_collection_candidates({"candidate_ids": [...]}). Assert that one knowledge entry is created, both candidate fingerprints are preserved, and both candidates point to the same promotedKnowledgeId.
- Step 2: Run the test to verify RED
Run: python -m pytest tests/rights_filter/server/test_sqlite_store.py::test_sqlite_store_promotes_multiple_candidates_into_one_knowledge_entry -q
Expected: fail because CopyrighterStore.promote_collection_candidates does not exist.
- Step 3: Implement the store merge
Add promote_collection_candidates and let the existing promote_collection_candidate delegate to it with a single ID. The merged knowledge payload must include sourceCandidates, sampleFingerprints, imageAsset, imageAssets, imageFacts, and operator metadata.
- Step 4: Run the store tests
Run: python -m pytest tests/rights_filter/server/test_sqlite_store.py::test_sqlite_store_collects_keyword_candidates_and_promotes_one_to_knowledge tests/rights_filter/server/test_sqlite_store.py::test_sqlite_store_promotes_multiple_candidates_into_one_knowledge_entry -q
Expected: pass.
Task 2: HTTP Endpoint
Files:
-
Modify:
tests/rights_filter/server/test_http_app.py -
Modify:
src/rights_filter/server/http_app.py -
Step 1: Write the failing test
Add a test that posts to POST /api/collections/candidates/promote-batch with two candidate IDs and asserts that the response contains one merged knowledge entry.
- Step 2: Run the test to verify RED
Run: python -m pytest tests/rights_filter/server/test_http_app.py::test_http_server_promotes_multiple_collection_candidates_into_one_knowledge_entry -q
Expected: fail with HTTP 404 or missing route.
- Step 3: Implement the route
Route /api/collections/candidates/promote-batch to store.promote_collection_candidates(body) and keep /api/collections/candidates/{id}/promote intact.
- Step 4: Run the HTTP tests
Run: python -m pytest tests/rights_filter/server/test_http_app.py::test_http_server_collects_keyword_candidates_and_promotes_candidate tests/rights_filter/server/test_http_app.py::test_http_server_promotes_multiple_collection_candidates_into_one_knowledge_entry -q
Expected: pass.
Task 3: Operator GUI
Files:
-
Modify:
tests/operator_gui/test_static_workbench.py -
Modify:
web/operator-gui/index.html -
Modify:
web/operator-gui/app.js -
Modify:
web/operator-gui/styles.css -
Step 1: Write the static GUI test
Assert that the GUI exposes candidate checkboxes, a shared collection promotion form, and a call to /api/collections/candidates/promote-batch.
- Step 2: Run the static GUI test to verify RED
Run: python -m pytest tests/operator_gui/test_static_workbench.py::test_operator_gui_exposes_keyword_candidate_collection_workflow -q
Expected: fail because the batch form and handler are not present.
- Step 3: Implement the UI
Add checkboxes to candidate cards, a compact batch promotion form under the candidate list, and a promoteSelectedCollectionCandidates handler that posts selected IDs plus name/type/aliases/keywords/memo.
- Step 4: Run GUI checks
Run: python -m pytest tests/operator_gui/test_static_workbench.py -q
Run: node --check web/operator-gui/app.js
Expected: pass.
Task 4: End-To-End Verification
Files:
-
No additional source files.
-
Step 1: Run full automated verification
Run: python -m pytest
Expected: all tests pass.
- Step 2: Restart local server on port 9500
Run: python run_copyrighter_server.py --host 127.0.0.1 --port 9500
Expected: /health returns {"status":"ok","port":9500}.
- Step 3: Visual smoke check
Open http://127.0.0.1:9500, switch to the Knowledge Base view, and confirm candidate cards show stable checkboxes and a single batch-promotion control.