MCP Servers

A collection of Model Context Protocol servers, templates, tools and more.

An MCP Server for pyATS (experimental)

Created 4/4/2025
Updated 23 days ago
Repository documentation and setup instructions

pyATS MCP Server

This project implements a Model Context Protocol (MCP) Server that wraps Cisco pyATS and Genie functionality. It enables structured, model-driven interaction with network devices over STDIO using the JSON-RPC 2.0 protocol.

🚨 This server does not use HTTP or SSE. All communication is done via STDIN/STDOUT (standard input/output), making it ideal for secure, embedded, containerized, or LangGraph-based tool integrations.

πŸ”§ What It Does

Connects to Cisco IOS/NX-OS devices defined in a pyATS testbed

Supports safe execution of validated CLI commands (show, ping)

Allows controlled configuration changes

Returns structured (parsed) or raw output

Exposes a set of well-defined tools via tools/discover and tools/call

Operates entirely via STDIO for minimal surface area and maximum portability

πŸš€ Usage

  1. Set your testbed path

export PYATS_TESTBED_PATH=/absolute/path/to/testbed.yaml

  1. Run the server

Continuous STDIO Mode (default)


python3 pyats_mcp_server.py

Launches a long-running process that reads JSON-RPC requests from stdin and writes responses to stdout.

One-Shot Mode


echo '{"jsonrpc": "2.0", "id": 1, "method": "tools/discover"}' | python3 pyats_mcp_server.py --oneshot

Processes a single JSON-RPC request and exits.

πŸ“¦ Docker Support

Build the container


docker build -t pyats-mcp-server .

Run the container (STDIO Mode)

docker run -i --rm \
  -e PYATS_TESTBED_PATH=/app/testbed.yaml \
  -v /your/testbed/folder:/app \
  pyats-mcp-server

🧠 Available MCP Tools

Tool Description

run_show_command Executes show commands safely with optional parsing

run_ping_command Executes ping tests and returns parsed or raw results

apply_configuration Applies safe configuration commands (multi-line supported)

learn_config Fetches running config (show run brief)

learn_logging Fetches system logs (show logging last 250)

All inputs are validated using Pydantic schemas for safety and consistency.

πŸ€– LangGraph Integration

Add the MCP server as a tool node in your LangGraph pipeline like so:


("pyats-mcp", ["python3", "pyats_mcp_server.py", "--oneshot"], "tools/discover", "tools/call")

Name: pyats-mcp

Command: python3 pyats_mcp_server.py --oneshot

Discover Method: tools/discover

Call Method: tools/call

STDIO-based communication ensures tight integration with LangGraph’s tool invocation model without opening HTTP ports or exposing REST endpoints.

πŸ“œ Example Requests

Discover Tools


{
  "jsonrpc": "2.0",
  "id": 1,
  "method": "tools/discover"
}

Run Show Command


{
  "jsonrpc": "2.0",
  "id": 2,
  "method": "tools/call",
  "params": {
    "name": "run_show_command",
    "arguments": {
      "device_name": "router1",
      "command": "show ip interface brief"
    }
  }
}

πŸ”’ Security Features

Input validation using Pydantic

Blocks unsafe commands like erase, reload, write

Prevents pipe/redirect abuse (e.g., | include, >, copy, etc.)

Gracefully handles parsing fallbacks and errors

πŸ“ Project Structure


.
β”œβ”€β”€ pyats_mcp_server.py     # MCP server with JSON-RPC and pyATS integration
β”œβ”€β”€ Dockerfile              # Docker container definition
β”œβ”€β”€ testbed.yaml            # pyATS testbed (user-provided)
└── README.md               # This file

πŸ“₯ MCP Server Config Example (pyATS MCP via Docker)

To run the pyATS MCP Server as a container with STDIO integration, configure your mcpServers like this:

{
  "mcpServers": {
    "pyats": {
      "command": "docker",
      "args": [
        "run",
        "-i",
        "--rm",
        "-e",
        "PYATS_TESTBED_PATH",
        "-v",
        "/absolute/path/to/testbed/folder:/app",
        "pyats-mcp-server"
      ],
      "env": {
        "PYATS_TESTBED_PATH": "/app/testbed.yaml"
      }
    }
  }
}

🧾 Explanation: command: Uses Docker to launch the containerized pyATS MCP server

args:

-i: Keeps STDIN open for communication

--rm: Automatically removes the container after execution

-e: Injects the environment variable PYATS_TESTBED_PATH

-v: Mounts your local testbed directory into the container

pyats-mcp-server: Name of the Docker image

env:

Sets the path to the testbed file inside the container (/app/testbed.yaml)

✍️ Author

John Capobianco

Product Marketing Evangelist, Selector AI

Author, Automate Your Network

Let me know if you’d like to add:

A sample LangGraph graph config

Companion client script

CI/CD integration (e.g., GitHub Actions)

Happy to help!

The testbed.yaml file works with the Cisco DevNet Cisco Modeling Labs (CML) Sandbox!

Quick Setup
Installation guide for this server

Install Package (if required)

uvx pyATS_MCP

Cursor configuration (mcp.json)

{ "mcpServers": { "automateyournetwork-pyats-mcp": { "command": "uvx", "args": [ "pyATS_MCP" ] } } }