7ee90dce31419eeac5a34ff55620e193156e2b01
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Adds a third corpus of legal authority distinct from style_corpus (Daphna's prior decisions for voice) and case_precedents (chair-attached quotes per case). The new corpus holds chair-uploaded court rulings and other appeals committee decisions, with binding rules (הלכות) extracted automatically and queued for chair approval. Pipeline (web/app.py + services/precedent_library.py): file → extract → chunk → Voyage embed → halacha_extractor → store + publish progress over the existing Redis SSE channel. Schema V7 (services/db.py): extends case_law with source_kind + extraction status fields under a CHECK constraint pinning practice_area to the three appeals committee domains (rishuy_uvniya, betterment_levy, compensation_197). New precedent_chunks (vector(1024)) and halachot tables (vector(1024) over rule_statement, IVFFlat indexes, gin on practice_areas/subject_tags). Halachot start as pending_review; only approved/published rows are visible to search_precedent_library. Agents: legal-writer, legal-researcher, legal-analyst, legal-ceo, legal-qa get search_precedent_library. legal-writer prompt explains the three-corpus distinction and CREAC use; legal-qa now verifies that every cited halacha resolves to an approved row in the corpus. UI: /precedents page with four tabs — library / semantic search / pending review (J/K nav, A/R/E shortcuts, badge count) / stats. Reuses the existing upload-sheet progress + SSE pattern. Co-Authored-By: Claude Opus 4.7 (1M context) <noreply@anthropic.com>
Description
AI Legal Decision Drafting System — MCP server, web upload, RAG search
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