发现我们为 database management 精心策划的 MCP 服务器集合。浏览 2155 个服务器,找到满足您需求的完美 MCP。
Enables Large Language Models to directly query and interact with Azure Cosmos DB data.
Enables Large Language Models (LLMs) to understand BigQuery dataset structures and execute SQL queries.
Translates natural language prompts into Kusto Query Language (KQL) queries and executes them against a Kusto database.
Provides access to Baidu Cloud Vector Database functionalities via the Model Context Protocol (MCP).
Generates MySQL test data for local development environments.
Enables querying of live Apache Cassandra data from Claude Desktop using CData JDBC Drivers.
Enables Large Language Models to query live Acumatica data through a Model Context Protocol (MCP) interface.
Provides AI assistants with access to a database of LinkedIn profiles from the Headstarter community for intelligent querying and analysis.
Provides a Model Context Protocol server to convert natural language questions into SQL queries using AI.
Provides Model Context Protocol (MCP) server capabilities to query SPARQL endpoints, with specialized support for Proto-OKN knowledge graphs hosted on the FRINK platform.
Provides a model context protocol server for retrieval-augmented generation queries against a text-based knowledge base.
Facilitates semantic code search, relationship tracking, and real-time monitoring across codebases using AST-aware chunking and incremental indexing.
Provides standardized interfaces for PostGIS geospatial database tools using the fastMCP framework, featuring natural language to SQL conversion.
Establishes a structured, multi-layered memory architecture for AI agents to achieve persistent, cognitive history beyond traditional flat vector storage.
Connects any MCP-compatible AI client to any JDBC-supported database with built-in safety features.
Connects Mimer SQL databases to clients using the Model Context Protocol, enabling schema browsing, query execution, and stored procedure management.
Provides AI agents with governed, zero-copy access to an entire data stack through a high-performance federated SQL engine.
Enables AI agents to interact with TigerGraph databases using the Model Context Protocol (MCP) standard.
Provides AI agents with persistent, graph-powered memory, enabling semantic recall and continuous learning across sessions.
Integrates AI assistants directly with Microsoft SQL Server databases, providing comprehensive tools for schema management, query execution, DDL operations, and performance diagnostics.
Scroll for more results...