MCP SSH Docker Server

Created By
awehera year ago
MCP server to play with IA and containerlab instances
Overview

What is MCP SSH Docker Server?

MCP SSH Docker Server is a Message Control Protocol (MCP) server that allows users to execute SSH and Docker commands on remote systems and containers through a standardized interface.

How to use MCP SSH Docker Server?

To use the MCP SSH Docker Server, clone the repository, set up your SSH configuration, and start the server. You can then execute commands on remote systems or Docker containers using the provided tools.

Key features of MCP SSH Docker Server?

  • SSH command execution on remote systems
  • Docker container command execution
  • Real-time command output streaming
  • Progress reporting for long-running commands
  • Structured JSON output support
  • Command cancellation support
  • Comprehensive error handling

Use cases of MCP SSH Docker Server?

  1. Executing administrative commands on remote servers.
  2. Managing Docker containers remotely.
  3. Automating deployment and management tasks in a containerized environment.

FAQ from MCP SSH Docker Server?

  • What are the prerequisites for using MCP SSH Docker Server?

You need Python 3.7+, SSH access to the target system, and Docker installed on the target system for Docker commands.

  • Is there a license for MCP SSH Docker Server?

Yes, it is licensed under GPLv3.

  • How can I contribute to the project?

You can fork the repository, create a feature branch, commit your changes, and submit a Pull Request.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
aweher
Star
0
Language
Python
License
GPL-3.0 license

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