MCP-GMX-VMD
Integrates GROMACS molecular dynamics simulations with VMD visualization, enabling setup, execution, analysis, and 3D visualization of molecular dynamics workflows through natural language.
README
MCP-GMX-VMD
MCP-GMX-VMD is a service that integrates GROMACS molecular dynamics simulations with VMD (Visual Molecular Dynamics) visualization through a microservice architecture. This tool facilitates molecular dynamics simulation setup, execution, analysis, and visualization.
Features
- Molecular Dynamics Simulations: Setup and run GROMACS simulations with an easy-to-use interface
- Trajectory Analysis: Analyze simulation trajectories (RMSD, RMSF, etc.)
- 3D Visualization: Visualize molecular structures and simulation trajectories using VMD
- Custom Workflow Directories: Create and manage simulation workflows in user-specified directories
- Modular Architecture: Built on MCP (Model Context Protocol ) for flexible integration with other tools
Prerequisites
- Python 3.9+
- GROMACS (installed and accessible in PATH)
- VMD (Visual Molecular Dynamics, installed and accessible in PATH)
- (Optional) Python VMD module for enhanced visualization capabilities
Installation
-
Clone the repository:
git clone https://github.com/yourusername/mcp-gmx-vmd.git cd mcp-gmx-vmd -
Create and activate a virtual environment:
python -m venv venv source venv/bin/activate # On Windows: venv\Scripts\activate -
Install dependencies:
pip install -r requirements.txt -
Install the package (development mode):
pip install -e .
Configuration
The service uses a configuration file (config.json) for VMD path, search paths, and other settings. If this file doesn't exist, create one with the following structure:
{
"vmd": {
"path": "/path/to/vmd/executable",
"search_paths": ["/path/to/search"]
},
"gmx": {
"path": "/path/to/gromacs/executable"
}
}
For macOS users, the VMD path is typically:
/Applications/VMD.app/Contents/MacOS/startup.command
Starting the Server
To start the MCP-GMX-VMD server:
python mcp_server.py
The service will start and listen for requests.
Usage Examples
Creating a simulation workflow:
import requests
# Create a new workflow
response = requests.get(
"http://localhost:8000/gmx-vmd://workflow/create?name=my_simulation"
)
workflow_id = response.json()["workflow_id"]
# Prepare a simulation with custom directory
custom_dir = "/path/to/custom/directory"
response = requests.get(
f"http://localhost:8000/gmx-vmd://simulation/prepare?workflow_id={workflow_id}&pdb_file=protein.pdb&workspace_dir={custom_dir}"
)
Analyzing trajectories:
# Analyze RMSD
analysis_params = {
"analysis_type": "rmsd",
"trajectory_file": "md/md.xtc",
"structure_file": "md/md.gro",
"selection": "protein",
"output_prefix": "rmsd_analysis"
}
response = requests.get(
f"http://localhost:8000/gmx-vmd://analysis/trajectory?workflow_id={workflow_id}¶ms={json.dumps(analysis_params)}"
)
Visualizing structures:
# Load and visualize trajectory
response = requests.get(
f"http://localhost:8000/gmx-vmd://visualization/load-trajectory?workflow_id={workflow_id}&trajectory_file=md/md.xtc&structure_file=md/md.gro"
)
LLM Integration
This service can be integrated with LLM assistants like Claude or used with Cursor IDE for a more interactive experience. The integration allows you to perform molecular simulations and analysis directly through natural language commands.
Connect to the MCP Server
- Copy the below JSON and replace the path placeholders with your actual system paths:
{
"mcpServers": {
"gmx_vmd": {
"command": "{{PATH_TO_UV}}",
"args": [
"--directory",
"{PATH_TO_SRC}/mcp-gmx-vmd",
"run",
"mcp",
"run",
"mcp_server.py"
],
"env": {
"PYTHONPATH": "{PATH_TO_SRC}/mcp-gmx-vmd",
"MCP_DEBUG": "1",
"PYTHONUNBUFFERED": "1"
}
}
}
}
-
Save the configuration file to the appropriate location:
- For Claude Desktop: Save as
claude_desktop_config.jsonin:~/Library/Application Support/Claude/claude_desktop_config.json - For Cursor IDE: Save as
mcp.jsonin:~/.cursor/mcp.json
- For Claude Desktop: Save as
-
Restart your application (Claude Desktop or Cursor)
- For Claude Desktop, you should now see GMX-VMD as an available integration
- For Cursor, the integration will be available after restart
Using MCP-GMX-VMD with LLMs
Once configured, you can interact with the MCP-GMX-VMD service through natural language:
- "Set up a protein simulation in water environment"
- "Analyze the RMSD of my protein trajectory"
- "Visualize this protein structure showing secondary structure"
- "Calculate hydrogen bonds in my MD trajectory"
The LLM will translate your requests into appropriate API calls to the MCP-GMX-VMD service.
Advanced Configuration
Custom Workflow Directories
To create workflows in custom directories, specify the workspace_dir parameter when creating a workflow:
response = requests.get(
f"http://localhost:8000/gmx-vmd://workflow/create?name=custom_workflow&workspace_dir=/path/to/custom/directory"
)
VMD Visualization Templates
The service provides several built-in visualization templates for common tasks. You can apply these templates using:
response = requests.get(
f"http://localhost:8000/gmx-vmd://visualization/apply-template?workflow_id={workflow_id}&template_name=protein_cartoon"
)
Troubleshooting
VMD Display Issues
If VMD GUI closes immediately after launch, try using one of these approaches:
- Launch VMD in a separate terminal window (service default behavior)
- Use
vmd -dispdev textfor command-line operation without GUI - Check VMD installation and permissions
Permission Issues
If you encounter permission issues with custom directories:
# Set appropriate permissions for the directory
chmod -R 755 /path/to/your/custom/directory
License
YouTube Overview
Acknowledgments
- VMD is developed by the Theoretical and Computational Biophysics Group at the University of Illinois at Urbana-Champaign
- GROMACS is a versatile package for molecular dynamics simulation
- MCP (Model Context Protocol ) provides the underlying communication framework
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