Code Sandbox MCP
A secure sandbox for executing code in Docker containers, providing a safe environment for AI applications.
Code Sandbox MCP 🐳
A secure sandbox environment for executing code within Docker containers. This MCP server provides AI applications with a safe and isolated environment for running code while maintaining security through containerization.
🌟 Features
- Flexible Container Management: Create and manage isolated Docker containers for code execution
- Custom Environment Support: Use any Docker image as your execution environment
- File Operations: Easy file and directory transfer between host and containers
- Command Execution: Run any shell commands within the containerized environment
- Real-time Logging: Stream container logs and command output in real-time
- Auto-Updates: Built-in update checking and automatic binary updates
- Multi-Platform: Supports Linux, macOS, and Windows
🚀 Installation
Prerequisites
- Docker installed and running
Quick Install
Linux, MacOS
curl -fsSL https://raw.githubusercontent.com/Automata-Labs-team/code-sandbox-mcp/main/install.sh | bash
Windows
# Run in PowerShell
irm https://raw.githubusercontent.com/Automata-Labs-team/code-sandbox-mcp/main/install.ps1 | iex
The installer will:
- Check for Docker installation
- Download the appropriate binary for your system
- Create necessary configuration files
Manual Installation
- Download the latest release for your platform from the releases page
- Place the binary in a directory in your PATH
- Make it executable (Unix-like systems only):
chmod +x code-sandbox-mcp
🛠️ Available Tools
sandbox_initialize
Initialize a new compute environment for code execution. Creates a container based on the specified Docker image.
Parameters:
image(string, optional): Docker image to use as the base environment- Default: 'python:3.12-slim-bookworm'
Returns:
container_idthat can be used with other tools to interact with this environment
copy_project
Copy a directory to the sandboxed filesystem.
Parameters:
container_id(string, required): ID of the container returned from the initialize calllocal_src_dir(string, required): Path to a directory in the local file systemdest_dir(string, optional): Path to save the src directory in the sandbox environment
write_file
Write a file to the sandboxed filesystem.
Parameters:
container_id(string, required): ID of the container returned from the initialize callfile_name(string, required): Name of the file to createfile_contents(string, required): Contents to write to the filedest_dir(string, optional): Directory to create the file in (Default: ${WORKDIR})
sandbox_exec
Execute commands in the sandboxed environment.
Parameters:
container_id(string, required): ID of the container returned from the initialize callcommands(array, required): List of command(s) to run in the sandboxed environment- Example: ["apt-get update", "pip install numpy", "python script.py"]
copy_file
Copy a single file to the sandboxed filesystem.
Parameters:
container_id(string, required): ID of the container returned from the initialize calllocal_src_file(string, required): Path to a file in the local file systemdest_path(string, optional): Path to save the file in the sandbox environment
sandbox_stop
Stop and remove a running container sandbox.
Parameters:
container_id(string, required): ID of the container to stop and remove
Description: Gracefully stops the specified container with a 10-second timeout and removes it along with its volumes.
Container Logs Resource
A dynamic resource that provides access to container logs.
Resource Path: containers://{id}/logs
MIME Type: text/plain
Description: Returns all container logs from the specified container as a single text resource.
🔐 Security Features
- Isolated execution environment using Docker containers
- Resource limitations through Docker container constraints
- Separate stdout and stderr streams
🔧 Configuration
Claude Desktop
The installer automatically creates the configuration file. If you need to manually configure it:
Linux
// ~/.config/Claude/claude_desktop_config.json
{
"mcpServers": {
"code-sandbox-mcp": {
"command": "/path/to/code-sandbox-mcp",
"args": [],
"env": {}
}
}
}
macOS
// ~/Library/Application Support/Claude/claude_desktop_config.json
{
"mcpServers": {
"code-sandbox-mcp": {
"command": "/path/to/code-sandbox-mcp",
"args": [],
"env": {}
}
}
}
Windows
// %APPDATA%\Claude\claude_desktop_config.json
{
"mcpServers": {
"code-sandbox-mcp": {
"command": "C:\\path\\to\\code-sandbox-mcp.exe",
"args": [],
"env": {}
}
}
}
Other AI Applications
For other AI applications that support MCP servers, configure them to use the code-sandbox-mcp binary as their code execution backend.
🛠️ Development
If you want to build the project locally or contribute to its development, see DEVELOPMENT.md.
📝 License
This project is licensed under the MIT License - see the LICENSE file for details.
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