paper-qa and Agentic_RAG
About paper-qa
Future-House/paper-qa
High accuracy RAG for answering questions from scientific documents with citations
This tool helps researchers, scientists, and academics quickly find precise answers within a collection of scientific documents, such as PDFs or text files. You feed it your papers, and it provides accurate answers to your questions, complete with in-text citations to the original sources. This is ideal for anyone needing to extract specific information from a large volume of research literature.
About Agentic_RAG
rajveersinghcse/Agentic_RAG
✌️ A dynamic Retrieval-Augmented Generation (RAG) system with support for PDF indexing, website crawling, and semantic Q&A powered by OpenAI, Qdrant, and Streamlit.
This tool helps you quickly get answers from large documents and websites without manually sifting through information. You provide PDF files or website URLs, and it intelligently retrieves answers to your questions, even performing an online search if the information isn't found in your sources. Anyone needing to extract specific information from a collection of documents or web pages, like researchers, analysts, or content strategists, would find this useful.
Related comparisons
Scores updated daily from GitHub, PyPI, and npm data. How scores work