Modal MCP Server
Interact with Modal volumes and deploy Modal applications from within Cursor.
Modal MCP Server
An MCP server implementation for interacting with Modal volumes and deploying Modal applications from within Cursor.
Installation
- Clone this repository:
git clone https://github.com/smehmood/modal-mcp-server.git
cd modal-mcp-server
- Install dependencies using
uv:
uv sync
Configuration
To use this MCP server in Cursor, add the following configuration to your ~/.cursor/mcp.json:
{
"mcpServers": {
"modal-mcp-server": {
"command": "uv",
"args": [
"--project", "/path/to/modal-mcp-server",
"run", "/path/to/modal-mcp-server/src/modal_mcp/server.py"
]
}
}
}
Replace /path/to/modal-mcp-server with the absolute path to your cloned repository.
Requirements
- Python 3.11 or higher
uvpackage manager- Modal CLI configured with valid credentials
- For Modal deploy support:
- Project being deployed must use
uvfor dependency management - Modal must be installed in the project's virtual environment
- Project being deployed must use
Supported Tools
Modal Volume Operations
-
List Modal Volumes (
list_modal_volumes)- Lists all Modal volumes in your environment
- Returns JSON-formatted volume information
- Parameters: None
-
List Volume Contents (
list_modal_volume_contents)- Lists files and directories in a Modal volume
- Parameters:
volume_name: Name of the Modal volumepath: Path within volume (default: "/")
-
Copy Files (
copy_modal_volume_files)- Copies files within a Modal volume
- Parameters:
volume_name: Name of the Modal volumepaths: List of paths where last path is destination
- Example:
["source.txt", "dest.txt"]or["file1.txt", "file2.txt", "dest_dir/"]
-
Remove Files (
remove_modal_volume_file)- Deletes a file or directory from a Modal volume
- Parameters:
volume_name: Name of the Modal volumeremote_path: Path to file/directory to deleterecursive: Boolean flag for recursive deletion (default: false)
-
Upload Files (
put_modal_volume_file)- Uploads a file or directory to a Modal volume
- Parameters:
volume_name: Name of the Modal volumelocal_path: Path to local file/directory to uploadremote_path: Path in volume to upload to (default: "/")force: Boolean flag to overwrite existing files (default: false)
-
Download Files (
get_modal_volume_file)- Downloads files from a Modal volume
- Parameters:
volume_name: Name of the Modal volumeremote_path: Path to file/directory in volume to downloadlocal_destination: Local path to save downloaded files (default: current directory)force: Boolean flag to overwrite existing files (default: false)
- Note: Use "-" as
local_destinationto write file contents to stdout
Modal Deployment
- Deploy Modal App (
deploy_modal_app)- Deploys a Modal application
- Parameters:
absolute_path_to_app: Absolute path to the Modal application file
- Note: The project containing the Modal app must:
- Use
uvfor dependency management - Have the
modalCLI installed in its virtual environment
- Use
Response Format
All tools return responses in a standardized format, with slight variations depending on the operation type:
# JSON operations (list volumes, list contents):
{
"success": True,
"data": {...} # JSON data from Modal CLI
}
# File operations (put, get, copy, remove):
{
"success": True,
"message": "Operation successful message",
"command": "executed command string",
"stdout": "command output", # if any
"stderr": "error output" # if any
}
# Error case (all operations):
{
"success": False,
"error": "Error message describing what went wrong",
"command": "executed command string", # for file operations
"stdout": "command output", # if available
"stderr": "error output" # if available
}
Contributing
Contributions are welcome! Please feel free to submit a Pull Request.
License
This project is licensed under the MIT License - see the LICENSE file for details.
संबंधित सर्वर
YouTube MCP Server
An MCP server for interacting with YouTube content, enabling AI models to access and manage YouTube data via its API.
MCP Weather Server Demo
Fetches weather data for any city using the Open-Meteo API.
Bigeye MCP Server
Interact with Bigeye's data quality monitoring platform via its Datawatch API. Supports dynamic API key authentication.
Mindbody MCP Server
Interact with the Mindbody API for managing fitness and wellness studios.
Lodgify MCP Server
An MCP server for the Lodgify vacation rental API.
Jumpseller
Manage your Jumpseller e-commerce store with AI. Create products with variants, process orders, search customers, and organize your catalog.
RunPod MCP Server
Interact with the RunPod REST API to manage cloud GPU resources.
Aiven
Manage Aiven cloud services like Kafka, PostgreSQL, and Redis via its API.
kubeview-mcp
Read-only MCP server for AI-powered Kubernetes debugging with support of code execution
Agent-Memo.AI
Cloud memory for Claude Code, Cursor, and any MCP-compatible agent. Context persists across sessions, projects, and teams.