Farhaj499/RAG_with_Weaviate_DB
This project implements a Retrieval Augmented Generation (RAG) system that answers questions based on the PDF document. It utilizes Weaviate as a vector database for efficient retrieval of relevant information and Gemini to generate natural language responses.
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Jupyter Notebook
License
MIT
Last pushed
Jan 12, 2025
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