#go #mcp #mcp_servers
The Model Context Protocol (MCP) Registry is a community-driven service that helps manage and discover MCP servers. It provides a centralized place where developers can find and manage different MCP implementations. This registry uses a RESTful API, allowing users to list, get, create, update, and delete server entries. It also supports health checks and various environment configurations. The registry makes it easier for developers to connect AI tools with external data sources, improving interoperability and efficiency. This benefits users by simplifying the integration of AI systems with other tools and services.
https://github.com/modelcontextprotocol/registry
The Model Context Protocol (MCP) Registry is a community-driven service that helps manage and discover MCP servers. It provides a centralized place where developers can find and manage different MCP implementations. This registry uses a RESTful API, allowing users to list, get, create, update, and delete server entries. It also supports health checks and various environment configurations. The registry makes it easier for developers to connect AI tools with external data sources, improving interoperability and efficiency. This benefits users by simplifying the integration of AI systems with other tools and services.
https://github.com/modelcontextprotocol/registry
GitHub
GitHub - modelcontextprotocol/registry: A community driven registry service for Model Context Protocol (MCP) servers.
A community driven registry service for Model Context Protocol (MCP) servers. - modelcontextprotocol/registry
#python #ai #authentication #authorization #claude #cursor #fastapi #llm #mcp #mcp_server #mcp_servers #modelcontextprotocol #openapi #windsurf
FastAPI-MCP is a tool that lets you easily turn your FastAPI web API endpoints into Model Context Protocol (MCP) tools, which AI agents can use directly. It requires almost no setup—just connect it to your FastAPI app, and it automatically preserves your request/response data models and documentation. It also includes built-in authentication using your existing FastAPI security methods. You can run the MCP server inside your app or separately, and it communicates efficiently using FastAPI’s ASGI interface. This makes it simple to integrate AI capabilities with your existing FastAPI services without rewriting code, saving you time and effort while keeping your API secure and well-documented[1][5].
https://github.com/tadata-org/fastapi_mcp
FastAPI-MCP is a tool that lets you easily turn your FastAPI web API endpoints into Model Context Protocol (MCP) tools, which AI agents can use directly. It requires almost no setup—just connect it to your FastAPI app, and it automatically preserves your request/response data models and documentation. It also includes built-in authentication using your existing FastAPI security methods. You can run the MCP server inside your app or separately, and it communicates efficiently using FastAPI’s ASGI interface. This makes it simple to integrate AI capabilities with your existing FastAPI services without rewriting code, saving you time and effort while keeping your API secure and well-documented[1][5].
https://github.com/tadata-org/fastapi_mcp
GitHub
GitHub - tadata-org/fastapi_mcp: Expose your FastAPI endpoints as Model Context Protocol (MCP) tools, with Auth!
Expose your FastAPI endpoints as Model Context Protocol (MCP) tools, with Auth! - tadata-org/fastapi_mcp
#python #aws #mcp #mcp_client #mcp_clients #mcp_host #mcp_server #mcp_servers #mcp_tools #modelcontextprotocol
AWS MCP Servers use the Model Context Protocol (MCP), an open standard that connects AI tools with AWS data and services in a simple, secure way. These servers improve AI responses by providing up-to-date AWS documentation, best practices, and workflow automation for cloud development, infrastructure, and operations. You can run MCP servers locally for development or use AWS-managed remote servers for easy access and scalability. MCP servers support many AWS services like Lambda, DynamoDB, EKS, and more, helping you build, manage, and optimize AWS resources efficiently with AI assistance. Installation is easy with one-click options for popular tools like VS Code and Cursor. This makes cloud development faster, more accurate, and cost-effective.
https://github.com/awslabs/mcp
AWS MCP Servers use the Model Context Protocol (MCP), an open standard that connects AI tools with AWS data and services in a simple, secure way. These servers improve AI responses by providing up-to-date AWS documentation, best practices, and workflow automation for cloud development, infrastructure, and operations. You can run MCP servers locally for development or use AWS-managed remote servers for easy access and scalability. MCP servers support many AWS services like Lambda, DynamoDB, EKS, and more, helping you build, manage, and optimize AWS resources efficiently with AI assistance. Installation is easy with one-click options for popular tools like VS Code and Cursor. This makes cloud development faster, more accurate, and cost-effective.
https://github.com/awslabs/mcp
GitHub
GitHub - awslabs/mcp: AWS MCP Servers — helping you get the most out of AWS, wherever you use MCP.
AWS MCP Servers — helping you get the most out of AWS, wherever you use MCP. - awslabs/mcp
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