Discover The Best MCP Servers 2025

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Notion MCP Server

A Model Context Protocol (MCP) server that exposes the official Notion SDK, allowing AI models to interact with Notion workspaces.

pluggedin-mcp-proxy

Plugged.in MCP Server acts as a proxy server that combines multiple MCP servers into a single interface. It retrieves tool, prompt, and resource configurations from Plugged.in and directs requests for tools, prompts, and resources to the appropriate underlying server.

Fetcher MCP

A server that allows fetching web page content using Playwright headless browser with AI-powered capabilities for efficient information extraction.

Database Updater MCP Server

A Claude integration that enables updating various database types (PostgreSQL, MySQL, MongoDB, SQLite) from CSV and Excel files through natural language commands.

MCP Server Template for Cursor IDE

A template for creating custom tools for Cursor IDE using Model Context Protocol that allows users to deploy their own MCP server to Heroku and connect it to Cursor IDE.

ABAP-ADT-API MCP-Server

A Model Context Protocol server that facilitates communication between ABAP systems and MCP clients, providing tools for managing ABAP objects, handling transport requests, and performing code analysis to enhance ABAP development workflows.

MCP-timeserver

Access the time in any timezone and get the current local time

mcp-llm

An MCP server that provides LLMs access to other LLMs

contentful-mcp

Update, create, delete content, content-models and assets in your Contentful Space

MCP-DBLP

A Model Context Protocol server that provides access to the DBLP computer science bibliography database, allowing AI models to search publications, process citations, and generate accurate BibTeX entries.

Research MCP Server

The server functions as an MCP server to interact with Notion for retrieving and creating survey data, integrating with the Claude Desktop Client for conducting and reviewing surveys.

Perplexity MCP Server

Enables intelligent code analysis and debugging through the Perplexity AI's API, offering detailed error analysis, pattern detection, and comprehensive solutions, with integration support for the Claude desktop client.

Frequently Asked Questions

What is MCP (Model Context Protocol)?

MCP is an open-source protocol developed by Anthropic that enables AI systems like Claude to securely connect to various data sources. By establishing a client-server architecture, it provides a universal standard for AI assistants to access external data, tools, and prompts, thereby enhancing the functionality and utility of AI systems.

What are MCP servers and how do they work?

MCP servers are systems that provide context, tools, and prompts to AI clients. They operate through a standardized protocol that exposes data and functionality for AI assistants to securely access external resources.

These servers maintain secure connections with clients inside applications like Claude Desktop, offering access to files, documents, databases, and API integrations.

Through MCP servers, AI assistants can safely access real-time information and perform complex operations, greatly expanding the capability range and practical utility of AI systems.

What types of resources and functions can MCP servers provide?

1) Shared resources: including files, documents, and various types of data that allow AI systems to access diverse information sources.

2) Tools: such as API integrations and operational functions that enable AI to perform various complex tasks and operations.

3) Prompts: templated interaction guides. Servers manage their own resources and maintain system boundaries, ensuring data access is secure and controlled.

How is security ensured in MCP servers?

Security is built into the MCP protocol by design. Servers control their own resources, eliminating the need to share API keys with AI providers, and systems maintain clear boundaries. Each server is responsible for managing its own authentication and access control mechanisms, ensuring data is only accessed by authorized clients. Additionally, the protocol design prevents potential security vulnerabilities, protecting user data and system integrity.

What are the features of our MCP server directory?

Our MCP server directory is a community-driven platform focused on collecting and organizing high-quality third-party MCP server resources. We provide comprehensive server information, including feature descriptions, performance metrics, and user reviews, helping users find the MCP servers that best suit their needs. Our directory is regularly updated to ensure the timeliness and accuracy of information.

How can I submit my developed MCP server to the directory?

You can submit your MCP server by clicking the "Submit" button in the navigation bar. Please provide detailed information about your server, including name, feature description, technical characteristics, and connection methods. Our review team will evaluate your server and add it to the directory. We welcome developers to share innovative MCP servers, collectively promoting the development of the AI ecosystem.

How do MCP servers differ from traditional APIs?

The main differences between MCP servers and traditional APIs are: 1) MCP is designed specifically for AI systems, providing structured contextual information; 2) The MCP protocol provides unified standards, simplifying integration between AI and various data sources; 3) MCP includes security mechanisms specifically addressing AI-specific security challenges; 4) MCP servers can provide complex tool combinations, not just data access. These characteristics make MCP servers an ideal choice for enhancing AI capabilities.

What are the future development trends for MCP servers?

Future development trends for MCP servers include: 1) Emergence of more industry-specific servers; 2) Enhanced real-time data processing capabilities; 3) More complex toolchain integrations; 4) Improved security and privacy protection mechanisms; 5) Growth of community-driven open-source server ecosystems; 6) Standardization of enterprise-level remote servers; 7) Compatibility with more AI models. These trends will further expand the application scope and value of MCP servers.