AgentTalk MCP Server
Click on "Install Server".
Wait a few minutes for the server to deploy. Once ready, it will show a "Started" state.
In the chat, type
@followed by the MCP server name and your instructions, e.g., "@AgentTalk MCP Servertell worker-agent to review the latest test results"
That's it! The server will respond to your query, and you can continue using it as needed.
Here is a step-by-step guide with screenshots.
Esco (AgentTalk MCP Server & LAN P2P Bridge)
Esco is a robust, lightweight, and high-performance Model Context Protocol (MCP) integration for the AgentTalk communication bus. It enables multiple AI coding agents (such as Claude, Codex, Clew, OpenCode, OpenClaw, and Hermes-Agent) to communicate and coordinate asynchronously.
By extending AgentTalk's file-based message bus, Esco introduces Peer-to-Peer (P2P) LAN discovery and messaging, allowing agents running on separate machines in the same local network to automatically find and talk to each other without central servers.
🚀 Key Features
P2P LAN Discovery: Automatic peer discovery on local networks using UDP Broadcast on port
9999.Direct HTTP Messaging: Messages are routed directly to target peers using dedicated HTTP POST servers bound on ports
18000-18100.Identity Registration System: Agents can claim their roster name and role via
register_identity()once, mapping process isolation to logical names.Blocking Wait Loop: The
wait_for_message()tool allows agents to enter a low-overhead, perpetual listening state to wait for incoming commands.Decentralized & Serverless: Works fully offline and locally without cloud subscriptions.
Related MCP server: backchannel
📁 Repository Structure
Esco/
├── src/agenttalk/ # Core AgentTalk library (message store, CLI, wrapper)
│ └── store.py # File-backed message bus implementation
├── agenttalk_mcp/ # Our MCP server implementation
│ ├── server.py # FastMCP server entry point (stdio or sse transport)
│ ├── lan_p2p.py # UDP broadcast discovery & HTTP P2P messaging engine
│ ├── example_workflow.py # Working 2-agent task handoff example
│ └── client_simulator.py # Console-based inter-agent simulation runner
├── AGENT_MCP_GUIDE.md # Setup manual for Claude, Codex, Clew, etc.
├── .gitignore # Excludes __pycache__, runtime .agenttalk/ store, graphify-out/
└── README.md # This file🛠️ Getting Started
1. Requirements
Ensure you have Python 3.10+ and the official mcp library installed:
pip install mcp2. Local Simulation
You can test the MCP server functionality and P2P communication loops locally:
python agenttalk_mcp/client_simulator.pyOr run a real end-to-end multi-agent task handoff (a lead agent assigns work, a worker performs it and reports back, the lead verifies the result):
python agenttalk_mcp/example_workflow.pyThe server supports two transports (see AGENT_MCP_GUIDE.md for full details):
stdio (default) — each agent spawns its own server subprocess.
sse — one shared server (
AGENTTALK_TRANSPORT=sse) that multiple agents/machines connect to over HTTP.
3. Registering the MCP Server in Agent Clients
To register the server for use, configure the command python D:/Projects/Github/Esco/agenttalk_mcp/server.py in your agent configuration.
For Claude Desktop (%APPDATA%\Claude\claude_desktop_config.json):
{
"mcpServers": {
"agenttalk-mcp": {
"command": "python",
"args": [
"D:/Projects/Github/Esco/agenttalk_mcp/server.py"
]
}
}
}For Codex (~/.codex/config.toml):
[mcp_servers.agenttalk]
command = "python"
args = ["D:/Projects/Github/Esco/agenttalk_mcp/server.py"]See AGENT_MCP_GUIDE.md for full configuration details.
🤝 How Agents Communicate Freely
When configured with this MCP server, agents should adhere to the following workflow:
Register Identity: At startup, call
register_identity(name="agent_name").Send Message: To communicate, invoke
send_message(recipient="target_agent", body="message content").Enter Listen Loop: To wait for incoming responses, block on
wait_for_message(). The tool's system instruction enforces that the agent must call this tool at the end of its turn to remain online.
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