ankitghosal/RAG-Based-Knowledge-Augmentation-System

In this notebook, we build a Retrieval Augmented Generation (RAG) system using Llama 3, LangChain, and ChromaDB. The goal is to enable question-answering over external documents (not part of the model’s training data) without fine-tuning the Large Language Model (LLM).

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Experimental
No Package No Dependents
Maintenance 13 / 25
Adoption 0 / 25
Maturity 9 / 25
Community 0 / 25

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MIT

Last pushed

Apr 10, 2026

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