Sowmya-5G4/RAG-FAISS-Enterprise-Search
Production-style Retrieval-Augmented Generation (RAG) system built from scratch using FAISS and hybrid retrieval. Supports semantic document search, structured CSV querying, reranking, confidence scoring, and optional local LLM generation via Ollama. Designed to mirror real-world enterprise knowledge search and analytics systems.
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Python
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Last pushed
Jan 12, 2026
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