MCP Sound Tool
A sound tool for MCP-compatible IDEs like Cursor. Plays sounds for events like completion, error, and notification.
MCP Sound Tool
A Model Context Protocol (MCP) implementation that plays sound effects for Cursor AI and other MCP-compatible environments. This Python implementation provides audio feedback for a more interactive coding experience.
Features
- Plays sound effects for various events (completion, error, notification)
- Uses the Model Context Protocol (MCP) for standardized integration with Cursor and other IDEs
- Cross-platform support (Windows, macOS, Linux)
- Configurable sound effects
Installation
Python Version Compatibility
This package is tested with Python 3.8-3.11. If you encounter errors with Python 3.12+ (particularly BrokenResourceError or TaskGroup exceptions), please try using an earlier Python version.
Recommended: Install with pipx
The recommended way to install mcp-sound-tool is with pipx, which installs the package in an isolated environment while making the commands available globally:
# Install pipx if you don't have it
python -m pip install --user pipx
python -m pipx ensurepath
# Install mcp-sound-tool
pipx install mcp-sound-tool
This method ensures that the tool has its own isolated environment, avoiding conflicts with other packages.
Alternative: Install with pip
You can also install directly with pip:
pip install mcp-sound-tool
From Source
-
Clone this repository:
git clone https://github.com/yourusername/mcp-sound-tool cd mcp-sound-tool -
Install with pipx directly from the source directory:
pipx install .Or with pip:
pip install -e .
Usage
Adding Sound Files
Place your sound files in the sounds directory. The following sound files are expected:
completion.mp3- Played after code generationerror.mp3- Played when an error occursnotification.mp3- Used for general notifications
You can find free sound effects on websites like freesound.org.
Running the MCP Server
Run the MCP server:
mcp-sound-tool
The server will start and listen for events from Cursor or other MCP-compatible clients through the stdio transport.
Configuration in Cursor
To use this server with Cursor, add it to your MCP configuration file:
On macOS:
// ~/Library/Application Support/Cursor/mcp.json
{
"mcpServers": {
"sound": {
"command": "mcp-sound-tool",
"args": [],
"type": "stdio",
"pollingInterval": 5000,
"startupTimeout": 10000,
"restartOnFailure": true
}
}
}
On Windows:
// %APPDATA%/Cursor/mcp.json
{
"mcpServers": {
"sound": {
"command": "mcp-sound-tool",
"args": [],
"type": "stdio",
"pollingInterval": 5000,
"startupTimeout": 10000,
"restartOnFailure": true
}
}
}
When installed with pipx, the mcp-sound-tool command will be available in your PATH, so Cursor will be able to find and execute it without specifying the full path.
Sound MCP Usage Guidelines for AI Models
This MCP server provides audio feedback capabilities for AI interactions. It's designed to enhance the user experience by providing clear audio cues that indicate the status of operations without requiring the user to read text.
When to Use Sound Feedback
AI agents should use the sound tools proactively at appropriate moments:
-
Success Sounds (
completion):- After a task or command has successfully completed
- When a significant operation has finished successfully
- When confirming a user's request has been fulfilled
-
Error Sounds (
error):- When a command has failed or encountered an error
- When warning the user about a problem
- When an operation couldn't be completed as requested
-
Notification Sounds (
notification):- When alerting the user to important information
- When prompting for user attention or input
- For status updates on long-running operations
Example Usage
# When a command completes successfully
@mcp.tool()
def execute_command(command):
result = run_command(command)
if result.success:
play_sound("completion") # Indicate success with audio
return "Command executed successfully"
else:
play_sound("error") # Indicate failure with audio
return f"Error: {result.error_message}"
Available Tools
play_sound(sound_type="completion", custom_sound_path=None): Play a sound effectlist_available_sounds(): List all available sound filesinstall_to_user_dir(): Install sound files to user's config directory
For more details, connect to the MCP server and check the tool descriptions.
Development
For development:
# Install development dependencies
pip install -e ".[dev]"
# Run tests
pytest
Acknowledgments
- SIAM-TheLegend for creating the original sound-mcp JavaScript implementation that inspired this Python version
- The MCP protocol developers for creating a powerful standard for AI tool interactions
- Contributors to the testing and documentation
License
This project is licensed under the MIT License - see the LICENSE file for details.
संबंधित सर्वर
Linear
Query and search for issues in Linear, a project management tool.
Todoist MCP
Interact with your Todoist account to manage tasks and projects.
ClickUp MCP Server (Enhanced Fork)
An MCP server for integrating ClickUp tasks with AI applications, featuring task dependency management and bug fixes.
Fibery
Perform queries and entity operations in your Fibery workspace.
Breathe HR
Provides secure, read-write access to Breathe HR data for AI assistants.
AutoWP
Connects Claude to WordPress sites to create posts and manage sites using the WordPress REST API.
CData Zoho Projects Server
A read-only MCP server to query live Zoho Projects data using the CData JDBC driver.
Excalidraw
An MCP server for creating, modifying, and manipulating Excalidraw drawings via an API.
Moneybird MCP Server
Connects AI assistants to Moneybird accounting software via its API.
redmine-mcp-server
Production-ready MCP server for Redmine with security, pagination, and enterprise features
