Skip to content
#

document-qa

Here are 139 public repositories matching this topic...

Open source RAG tool for AI document search - connect GitHub, Notion, Google Drive and ask questions with cited answers. Self-hosted with Ollama/OpenAI/Claude.

  • Updated Apr 1, 2026
  • TypeScript
Long-Trainer

Production-ready RAG framework for Python — multi-tenant chatbots with streaming, tool calling, agent mode (LangGraph), vector search (FAISS), and persistent MongoDB memory. Built on LangChain.

  • Updated Mar 25, 2026
  • Python

An advanced, fully local, and GPU-accelerated RAG pipeline. Features a sophisticated LLM-based preprocessing engine, state-of-the-art Parent Document Retriever with RAG Fusion, and a modular, Hydra-configurable architecture. Built with LangChain, Ollama, and ChromaDB for 100% private, high-performance document Q&A.

  • Updated Aug 11, 2025
  • Python

AI powered troubleshooting for ground support equipment. Deterministic RAG pipeline that ingests OEM maintenance manuals, answers with cited sources, and refuses when the documentation doesn't support a claim. Runs fully on-premises, no cloud APIs

  • Updated Mar 10, 2026
  • Python

A full-stack RAG application that enables intelligent document Q&A. Upload PDFs, DOCX, or TXT files and ask questions powered by LangChain, ChromaDB, and Claude/GPT. Features smart chunking, semantic search, conversation memory, and source citations. Built with FastAPI & React + TypeScript.

  • Updated Nov 21, 2025
  • Python

Improve this page

Add a description, image, and links to the document-qa topic page so that developers can more easily learn about it.

Curate this topic

Add this topic to your repo

To associate your repository with the document-qa topic, visit your repo's landing page and select "manage topics."

Learn more