Discover our curated collection of MCP servers for learning & documentation. Browse 2141 servers and find the perfect MCPs for your needs.
Accesses and interacts with your Readwise library via the Model Context Protocol (MCP).
Performs comprehensive, multi-step research on any topic by leveraging web searches, analysis, and report generation.
Provides code context from local git repositories via semantic search.
Connects to the Inkeep RAG service to retrieve product content and documentation.
Enables AI assistants to read from and write to your Obsidian vault through the Model Context Protocol.
Integrates documentation from Awesome-llms-txt directly into conversations via MCP resources.
Integrates Semgrep static analysis with AI assistants for code analysis, security vulnerability detection, and code quality improvements.
Enables MCP clients to interact with a local Zotero repository.
Provides detailed type information from .NET projects to enhance AI coding agent capabilities.
Enables Claude and other LLMs to interact with the EduBase e-learning platform via the Model Context Protocol (MCP).
Enables AI models to access and interact with The Metropolitan Museum of Art's collection using natural language.
Demonstrates how to build Model Context Protocol (MCP) servers with Google's Gemini 2.0 model.
Facilitates user integration and queries by providing official PortOne documentation to Large Language Models.
Enables AI assistants to interact with Red Hat's automation and infrastructure ecosystem, encompassing Ansible Automation Platform, Event-Driven Ansible, ansible-lint, and official Red Hat documentation.
Provides comprehensive access to Salesforce B2C Commerce Cloud development features, enabling AI agents to assist with SFCC development tasks.
Integrates thousands of AI prompts directly into your AI coding assistant.
Provides AI assistants with programmatic access to the Midnight blockchain, enabling contract search, code analysis, and documentation exploration.
Enables Claude Code to search and retrieve context from personal documents using a local, hybrid RAG system.
Transforms AI agents into structured, science-backed learning companions for lifelong human skill development.
Provides robust capabilities for reading, rendering, and searching PDF documents.
Scroll for more results...