Learn about Retrieval-Augmented Generation (RAG), a practical approach to enhance AI applications with external knowledge bases. Explore how RAG helps create more accurate AI systems by combining language models with real-world data. Find practical guides, implementation examples, and best practices for building RAG systems. Ideal for developers and teams working on AI applications who want to improve their models' accuracy and reliability
Discover RAGFlow, an open-source RAG engine that provides truthful question-answering capabilities with well-founded citations from complex formatted data through deep document understanding.