#information retrieval

Logo of raptor
raptor
RAPTOR offers an advanced approach to language models with its recursive tree structure, improving the efficiency of information retrieval in large texts. It supports integration with custom models for summarization and question-answering, making it highly adaptable to different research requirements. The open-source nature encourages continuous enhancement through community contributions.
Logo of RAGatouille
RAGatouille
RAGatouille connects the latest research with practical RAG pipeline practices, boosting the ease of use and modularity of retrieval methods. The platform leverages models like ColBERT to enable enhanced generalization capabilities, data efficiency, and the ability to train in non-English languages. It simplifies the integration of sophisticated retrieval techniques without deep diving into complex literature, making it clear and accessible. Users can use, train, and fine-tune retrieval models seamlessly within diverse RAG scenarios, thanks to the robust defaults and customizable elements of RAGatouille. This focus on user experience is supported by comprehensive integration options with top frameworks such as Vespa, LangChain, and Intel's FastRAG, offering flexibility for smooth deployment and scaling.