Comprehensive технология векторного поиска Tools for Every Need

Get access to технология векторного поиска solutions that address multiple requirements. One-stop resources for streamlined workflows.

технология векторного поиска

  • Local RAG Researcher Deepseek uses Deepseek indexing and local LLMs to perform retrieval-augmented question answering on user documents.
    0
    0
    What is Local RAG Researcher Deepseek?
    Local RAG Researcher Deepseek combines Deepseek’s powerful file crawling and indexing capabilities with vector-based semantic search and local LLM inference to create a standalone retrieval-augmented generation (RAG) agent. Users configure a directory to index various document formats—including PDF, Markdown, text, and more—while custom embedding models integrate via FAISS or other vector stores. Queries are processed through local open-source models (e.g., GPT4All, Llama) or remote APIs, returning concise answers or summaries based on the indexed content. With an intuitive CLI interface, customizable prompt templates, and support for incremental updates, the tool ensures data privacy and offline accessibility for researchers, developers, and knowledge workers.
  • A GitHub repository showcasing code samples for building autonomous AI agents on Azure with memory, planning, and tool integration.
    0
    0
    What is Azure AI Foundry Agents Samples?
    Azure AI Foundry Agents Samples provides developers with a rich set of example scenarios that illustrate how to leverage Azure AI Foundry SDKs and services. It includes conversational agents with long-term memory, planner agents that break down complex tasks, tool-enabled agents that call external APIs, and multimodal agents combining text, vision, and speech. Each sample is preconfigured with environment setups, LLM orchestration, vector search, and telemetry to accelerate prototyping and deployment of robust AI solutions on Azure.
Featured