Comprehensive データインデックス Tools for Every Need

Get access to データインデックス solutions that address multiple requirements. One-stop resources for streamlined workflows.

データインデックス

  • An open-source retrieval-augmented fine-tuning framework that boosts text, image, and video model performance with scalable retrieval.
    0
    0
    What is Trinity-RFT?
    Trinity-RFT (Retrieval Fine-Tuning) is a unified open-source framework designed to enhance model accuracy and efficiency by combining retrieval and fine-tuning workflows. Users can prepare a corpus, build a retrieval index, and plug the retrieved context directly into training loops. It supports multi-modal retrieval for text, images, and video, integrates with popular vector stores, and offers evaluation metrics and deployment scripts for rapid prototyping and production deployment.
  • AI_RAG is an open-source framework enabling AI agents to perform retrieval-augmented generation using external knowledge sources.
    0
    0
    What is AI_RAG?
    AI_RAG delivers a modular retrieval-augmented generation solution that combines document indexing, vector search, embedding generation, and LLM-driven response composition. Users prepare corpora of text documents, connect a vector store like FAISS or Pinecone, configure embedding and LLM endpoints, and run the indexing process. When a query arrives, AI_RAG retrieves the most relevant passages, feeds them alongside the prompt into the chosen language model, and returns a contextually grounded answer. Its extensible design allows custom connectors, multi-model support, and fine-grained control over retrieval and generation parameters, ideal for knowledge bases and advanced conversational agents.
Featured