A2amcp
A2AMCP is a real-time collaboration protocol between AI agents based on Redis, which solves the code conflict problem during parallel development of multiple AI agents, provides functions such as file locking, interface sharing, and task coordination, and supports Docker deployment and integration with mainstream AI frameworks.
2.5 points
7.9K

What is the A2AMCP server?

The A2AMCP server is a dedicated server built on the Model Context Protocol (MCP), designed to provide real-time communication, file collaboration, and task coordination functions for AI agents. It solves the conflict problems that may arise when multiple AI agents work on the same codebase.

How to use the A2AMCP server?

Through Docker deployment or Python SDK integration, users can quickly start the server and interact with AI agents. It supports various development scenarios, including microservice development and full-stack application collaboration.

Applicable scenarios

Suitable for situations where multiple AI agents collaborate on software project development, such as microservice architecture, full-stack application development, document writing, and test case development.

Main Features

Real-time agent communication
Supports direct queries, broadcast messages, and asynchronous message queues between AI agents to ensure real-time information synchronization.
File conflict prevention
Automatic file locking and conflict detection mechanisms prevent multiple AI agents from modifying the same file simultaneously.
Shared context management
Allows agents to share interfaces, API contracts, and dependencies, improving collaboration efficiency.
Task transparency
Provides task list management, progress visualization, and completion tracking functions to enhance team collaboration.
Multi-project support
Supports isolated project namespaces and Redis persistent storage, facilitating the management of multiple development projects.
Advantages
Improve the collaboration efficiency of AI agents and reduce code conflicts
Support various development scenarios, such as microservices and full-stack applications
Easy to deploy and integrate, supporting Docker and Python SDK
Limitations
Requires a certain technical background for configuration and maintenance
Currently mainly targeted at code development scenarios, with limited generality
Some advanced features (such as encrypted communication) have not been implemented

How to Use

Clone the repository
Get the A2AMCP source code from GitHub.
Start the server
Start the A2AMCP server using Docker Compose.
Verify the connection
Run the verification script to ensure the server is running properly.
Configure the agent
Add the MCP server configuration according to the AI agent tool you are using (such as Claude Code).

Usage Examples

Multi-person collaborative development of microservices
Multiple AI agents are respectively responsible for different microservice modules, sharing interfaces and API contracts through the A2AMCP server to ensure code consistency.
Full-stack application development
Front-end and back-end agents work together through the A2AMCP server to ensure interface compatibility and data consistency.
Document writing and test case development
Multiple agents write documents and test cases respectively, coordinating the content through the A2AMCP server to avoid duplicate work.

Frequently Asked Questions

What environment does the A2AMCP server require?
How to verify that the A2AMCP server is running properly?
How to configure Claude Code to use the A2AMCP server?
Which AI agents does the A2AMCP server support?
How to solve the problem that the agent cannot see the tool?

Related Resources

A2AMCP GitHub Repository
A GitHub repository containing the A2AMCP source code and complete documentation.
A2AMCP Installation Guide
Details on how to install and configure the A2AMCP server.
A2AMCP API Reference
Provides detailed documentation for the A2AMCP API.
A2AMCP Python SDK Documentation
Instructions and examples for using the Python SDK.
A2AMCP Architecture Overview
The architecture design and component description of the A2AMCP system.

Installation

Copy the following command to your Client for configuration
{
  "mcpServers": {
    "splitmind-a2amcp": {
      "command": "docker",
      "args": ["exec", "-i", "splitmind-mcp-server", "python", "/app/mcp-server-redis.py"],
      "env": {
        "REDIS_URL": "redis://redis:6379"
      }
    }
  }
}
Note: Your key is sensitive information, do not share it with anyone.

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