Video Editor MCP Server
Perform video editing operations using natural language commands via FFmpeg.
Video Editor MCP Server
A powerful video editing MCP server that leverages FFmpeg to perform video editing operations through natural language commands.
Components
Tools
The server implements one main tool:
execute_ffmpeg: Executes FFmpeg commands with progress tracking- Takes a command string as input
- Validates and executes FFmpeg operations
- Reports real-time progress during processing
- Handles errors and provides detailed feedback
- Supports all FFmpeg operations including:
- Trimming/cutting
- Merging videos
- Converting formats
- Adjusting speed
- Adding audio tracks
- Extracting audio
- Adding subtitles
- Basic filters (brightness, contrast, etc.)
Configuration
Prerequisites
- FFmpeg must be installed and accessible in your system PATH
- Python 3.9 or higher
- Required Python packages:
mcp httpx
Installation
-
Install FFmpeg if not already installed:
# On macOS with Homebrew brew install ffmpeg # On Windows with Chocolatey choco install ffmpeg # On Ubuntu/Debian sudo apt install ffmpeg -
Install the video editor package:
uv add video-editor
Claude Desktop Integration
Configure in your Claude Desktop config file:
On MacOS: ~/Library/Application Support/Claude/claude_desktop_config.json
On Windows: %APPDATA%/Claude/claude_desktop_config.json
{
"mcpServers": {
"video-editor": {
"command": "uv",
"args": ["run", "video-editor"]
}
}
}
Development
Building and Publishing
-
Sync dependencies:
uv sync -
Build package:
uv build -
Publish to PyPI:
uv publish
Note: Set PyPI credentials via:
- Token:
--tokenorUV_PUBLISH_TOKEN - Or username/password:
--username/UV_PUBLISH_USERNAMEand--password/UV_PUBLISH_PASSWORD
Debugging
For the best debugging experience, use the MCP Inspector:
npx @modelcontextprotocol/inspector uv --directory /path/to/video_editor run video-editor
Example Usage
Once connected to Claude Desktop, you can make natural language requests like:
- "Trim video.mp4 from 1:30 to 2:45"
- "Convert input.mp4 to WebM format"
- "Speed up video.mp4 by 2x"
- "Merge video1.mp4 and video2.mp4"
- "Extract audio from video.mp4"
- "Add subtitles.srt to video.mp4"
The server will:
- Parse your request
- Generate the appropriate FFmpeg command
- Execute it with progress tracking
- Provide feedback on completion
Error Handling
The server includes robust error handling for:
- Invalid input files
- Malformed FFmpeg commands
- Runtime execution errors
- Progress tracking issues
All errors are reported back to the client with detailed messages for debugging.
Security Considerations
- Only processes files in explicitly allowed directories
- Validates FFmpeg commands before execution
- Sanitizes all input parameters
- Reports detailed error messages for security-related issues
Contributing
Contributions are welcome! Please follow these steps:
- Fork the repository
- Create your feature branch
- Make your changes
- Submit a pull request
İlgili Sunucular
MCP SuperAssistant Chrome Extension
A Chrome extension that integrates MCP tools with AI platforms like ChatGPT and Gemini, allowing users to execute tools and insert results directly into conversations.
Israel statistics mcp
MCP server that provides programmatic access to the Israeli Central Bureau of Statistics (CBS) price indices and economic data
ActiveCampaign
Built for the next generation of intelligent experiences, ActiveCampaign's remote MCP server makes it easy for AI agents to understand, store, and use customer context across tools, channels, and workflows.
TimeCamp
Manage TimeCamp time entries and tasks through its API.
Roam Research
Connects AI assistants to your Roam Research graph for data access and interaction.
Jira MCP Server by CData
A read-only MCP server for Jira, enabling LLMs to query live Jira data using the CData JDBC Driver.
Kibela
Integrates with the Kibela API to manage knowledge-based content.
TinyTasks MCP Server
A hybrid MCP server compatible with Claude Desktop and Web, supporting both local and web deployment modes for task management.
Laravel Boost
Laravel Boost is an MCP server equipped with over 15 specialized tools designed to streamline AI-assisted coding workflows.
Backlog MCP Server
Interact with the Backlog API to manage projects, issues, wikis, git repositories, and more.