Comprehensive guide to learn RAG from basics to advanced.
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Updated
Mar 29, 2025 - Jupyter Notebook
Comprehensive guide to learn RAG from basics to advanced.
Source code graph RAG (GraphRAG) for C/C++ development based on clang/clangd
一个《原神》AI驱动视频项目,利用LLM API生成角色互动文案,VITS技术进行语音合成,并结合先进的文生图和视频合成技术,创造出游戏角色之间有趣的场景。最终产出为短视频。
Self-hosted AI powered knowledge base for SMBs: WikiJS + Qdrant Vector search, Chrome extension queries, single Ansible deploy. Unlimited users, no subs - reduce SaaS costs, own your data.
Retrieval-Augmented Generation (RAG) Explained, covering its working principles, components, benefits, applications, challenges, and future prospects.
Chat With Documents is a Streamlit application designed to facilitate interactive, context-aware conversations with large language models (LLMs) by leveraging Retrieval-Augmented Generation (RAG). Users can upload documents or provide URLs, and the app indexes the content using a vector store called Chroma to supply relevant context during chats.
FileChat-RAG is a simple Retrieval-Augmented Generation (RAG) system that allows users to ask questions about the contents of various file formats. It extracts text from PDFs, JSON, text files(.txt, .docx, .odt, .md), and code files, then enables interactive conversations using an LLM powered by Ollama.
🚀 Transform Any PDF into an AI-Powered Q&A Chatbot!
🤖 Full-stack conversational AI using a Letta (MemGPT) + RAG hybrid architecture for long-term memory, context persistence, and grounded responses. Built with FastAPI, React, FAISS, and MongoDB, featuring Isabella — a personality-driven assistant with document ingestion, structured memory, logging, and a terminal-style streaming chat UI.
Machine-readable dataset for public Department of War / PURSUE UFO-UAP Release 01 records.
Semantic code search plugin for Pi
问道 wendao - high-performance knowledge and link-graph engine, AI RAG.
Decision support platform for solar power plant planning using satellite data and openEO APIs
Live tracker of new RAG implementations, tools, and patterns — updated every 15 minutes
Demo of LLM with RAG for radiology request classification according to ACR appropriateness criteria
Archive the first official U.S. Department of War UAP declassification, containing 162 verified technical files, photographs, and videos.
Chat With Documents is a Streamlit application designed to facilitate interactive, context-aware conversations with large language models (LLMs) by leveraging Retrieval-Augmented Generation (RAG). Users can upload documents or provide URLs, and the app indexes the content using a vector store called Chroma to supply relevant context during chats.
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