laxmimerit/Multi-Agent-Deep-RAG
Multi-Agent Deep RAG
This project is a comprehensive collection of resources for developers aiming to build and deploy advanced AI applications. It helps you take unstructured information or user queries and transform them into intelligent responses, automated tasks, or data insights. Developers, AI engineers, and data scientists would use this to create custom chatbots, AI agents, and intelligent data analysis tools.
Use this if you are an AI developer looking to master techniques for building, integrating, and deploying complex AI agents and chatbots using various LLMs and frameworks.
Not ideal if you are a non-technical end-user looking for a ready-to-use AI application rather than a development toolkit.
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39
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26
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Jupyter Notebook
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Last pushed
Feb 25, 2026
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