Mcpez (Proxy Aggregator)
MCPez is a microservice command proxy management platform that unifies the management and standardizes the interfaces of backend services through a web interface, simplifying the integration of AI agents and tools.
rating : 2.5 points
downloads : 6.7K
What is MCPez?
MCPez is a microservice command proxy management platform designed to help users easily manage and integrate various backend services, including AI models, local scripts, and remote APIs. It provides a unified web interface to configure and monitor these services and exposes them through standardized proxy interfaces (SSE or STDIO), enabling other applications (especially AI agents) to conveniently call and use them.How to use MCPez?
Using MCPez is very simple: 1) Quickly deploy the platform via Docker; 2) Create and configure applications in the web interface; 3) Add and manage backend services; 4) Call services through standardized interfaces.Applicable Scenarios
MCPez is particularly suitable for the following scenarios: AI application development that requires integrating multiple backend services; unified management of scattered scripts and APIs; building multi-agent systems that need to call various tools; rapid testing and deployment of microservice combinations.Main Features
Web User Interface
Provides an intuitive graphical interface to manage applications and services, allowing configuration without writing code.
Support for Multiple Service Types
Supports two service types: SSE (proxying remote HTTP SSE services) and STDIO (proxying local command-line processes).
Configuration Management
Supports importing/exporting JSON configurations and saving common service configurations as templates for easy reuse and sharing.
AI Playground
Comes with a built-in chat interface, allowing you to configure AI models and use MCPez services as the backend for Tool/Function Calling for easy testing.
Docker Support
Provides a Dockerfile for one-click containerized deployment to ensure environment consistency.
Advantages
Unified management and standardized interfaces: Simplify service integration and management
Break MCP silos: Easily combine multiple services to create greater value
Local-first and security: Keep sensitive data in the local environment
Dockerized deployment: One-click deployment with consistent environments
Improve service quality: Encourage the integration and sharing of high-quality services
Limitations
Requires a certain technical foundation for configuration and deployment
The current version's features are still being continuously improved
The learning curve may be steep for non-technical users
How to Use
Deploy the Platform
Quickly deploy the MCPez platform using Docker.
Access the Web Interface
Open http://localhost:8088 in your browser to access the management interface.
Create an Application
Create a new application on the editing page and set its name and description.
Add a Service
Add an SSE or STDIO type service to the application and fill in the corresponding configuration.
Save and Start
Save the configuration. For STDIO services, click the start button to run.
Usage Examples
Integrate Multiple AI Services
Configure different AI model APIs (such as OpenAI and Gemini) as SSE services and test the calls in the AI Playground.
Automate Local Scripts
Configure local data processing scripts as STDIO services and call them through standard interfaces.
Frequently Asked Questions
What types of services does MCPez support?
How to ensure the security of service calls?
Can I share the services I configured?
What is the function of the AI Playground?
Related Resources
MIT License
The open-source license used by the project
Docker Documentation
Docker usage guide
SSE Technical Documentation
Server-Sent Events technical reference

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