Joe-Naz01/RAG
This project implements a Retrieval-Augmented Generation (RAG) pipeline using LangChain and Google Gemini. It demonstrates how to transform a static PDF document into an interactive knowledge base, allowing users to query specific technical content, such as research papers on LLMs;using natural language.
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Apr 02, 2026
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