MCP Engine
MCPEngine is a production-grade implementation of the Model Context Protocol (MCP), providing standardized interfaces for large language models (LLMs). It supports functions such as OAuth authentication, resource management, and tool invocation, aiming to become the 'REST of the LLM world' framework.
rating : 3.5 points
downloads : 199
What is MCPEngine?
MCPEngine is a production-grade MCP server for large language models (LLMs). It provides secure and scalable access interfaces to data and tools through standard protocols.How to use MCPEngine?
You can quickly create an MCP server with just a few lines of code and integrate it with LLMs through a proxy.Use Cases
Suitable for enterprise applications that need to integrate with LLMs, such as Slack and Gmail.Main Features
OAuth SupportBuilt-in OAuth 2.1 authentication, supporting multiple identity providers such as Okta and Keycloak.
HTTP-First DesignAdopts modern HTTP/SSE protocols, supporting real-time data streams.
Scope AuthorizationFine-grained access control based on roles and permissions.
Proxy IntegrationSeamlessly bridges LLM hosts through a local proxy.
Backward CompatibilityFully compatible with FastMCP and the official SDK.
Advantages and Limitations
Advantages
Production-grade stability
Easy integration with multiple identity providers
Modern HTTP architecture
Powerful permission management
Cross-platform support
Limitations
Requires a Docker environment
May require more configuration for large-scale deployments
How to Use
Install MCPEngine
Install MCPEngine via pip and initialize the server.
Create an MCP Server
Define tools, resources, and prompt functions.
Start the Proxy
Run the proxy to connect to the local LLM host.
Usage Examples
SQLite Database QueryUse MCPEngine to build a SQLite database query tool.
Simple Message ServiceImplement a simple message storage service.
Frequently Asked Questions
Does MCPEngine support custom identity providers?
How to enable fine-grained authorization?
What dependencies are required to run MCPEngine?
Related Resources
Official Documentation
Learn detailed information about the MCP protocol.
GitHub Code Repository
View the source code and examples.
Slack Community
Join the developer community.
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