{"data":{"full_name":"ErenYanic/SEC-SemanticSearch","name":"SEC-SemanticSearch","description":"Natural language search for SEC filings. Fetch 10-K/10-Q from EDGAR, parse into segments, chunk text, generate GPU-accelerated embeddings (google/embeddinggemma-300m, 768-dim), store in ChromaDB+SQLite dual-store. Rich CLI with progress bars, color-coded output, flexible filtering. Returns relevant passages not generated answers. MIT licensed.","stars":0.0,"forks":0.0,"language":"Python","license":"MIT","archived":0.0,"subcategory":"financial-document-rag","last_pushed_at":"2026-03-11T16:28:16+00:00","pypi_package":null,"npm_package":null,"downloads_monthly":0.0,"dependency_count":0.0,"commits_30d":null,"reverse_dep_count":0.0,"maintenance_score":13.0,"adoption_score":0.0,"maturity_score":9.0,"community_score":0.0,"quality_score":22.0,"quality_tier":"experimental","risk_flags":"['no_package', 'no_dependents']"},"meta":{"timestamp":"2026-04-07T08:27:44.932842+00:00"}}