发现为 Qdrant 构建的 18 个 MCP。
Provides a high-performance, massive-scale vector database and search engine for AI applications.
Connects language models to a Qdrant vector database for storing and retrieving information.
Implements a knowledge graph with semantic search capabilities, leveraging the Qdrant vector database for persistence.
Implements a Retrieval-Augmented Generation (RAG) system leveraging Google's Agent Development Kit (ADK) and Qdrant vector database for enhanced LLM responses.
Builds searchable knowledge bases from multiple data sources by loading data into a Qdrant vector database with MCP server support.
Provides AI agents with persistent, searchable, and versioned long-term memory that endures across conversations and tools.
Provides agentic search capabilities with support for vector search using Qdrant, full-text search using TiDB, or both combined within a Model Context Protocol (MCP) server.
Enables semantic search in Qdrant vector databases using OpenAI embeddings.
Forges wisdom from experiences and insights using a vector database for efficient knowledge management.
Provides intelligent project-scoped vector database operations for AI assistants, featuring hybrid search and configurable collection management with scratchbook functionality.
Enables fast natural language search of vectorized Markdown documents within an MCP-compatible environment.
Manages vectors, performs similarity searches, and provides automatic text-to-vector embedding for the Qdrant vector database.
Manages Qdrant vector database collections and performs semantic searches using various embedding services.
Provides an enhanced Model Context Protocol server for Qdrant, enabling robust vector memory management with advanced performance and deployment features.
Combines vector search, knowledge graphs, and web intelligence to enhance AI coordination and optimize performance.
Stores and retrieves information from a Qdrant vector database using the Machine Control Protocol.
Implements a Model Context Protocol (MCP) server for Retrieval-Augmented Generation (RAG) applications, supporting Qdrant and Chroma vector databases.
Performs semantic searches across multiple Qdrant vector store collections using user-provided queries.
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