Vedit-MCP
Perform basic video editing operations using natural language commands. Requires ffmpeg to be installed.
Vedit-MCP
This is an MCP service for video editing, which can achieve basic editing operations with just one sentence.
English | 中文
Quick Start
1. Install Dependencies
1.1 Clone this project or directly download the zip package
1.2 Configure the Python environment
- It is recommended to use uv for installation
cd vedit-mcp
uv pip install -r requirements.txt
- Or install directly using pip
pip install -r requirements.txt
1.3 Configure ffmpeg
vedit-mcp.py relies on ffmpeg for implementation. Therefore, please configure ffmpeg.
# For Mac
brew install ffmpeg
# For Ubuntu
sudo apt update
sudo apt install ffmpeg
2. Start the Service
2.1. It is recommended to use google-adk to build your own project
- Please refer to adk-sample
Before executing this sample script
- Please ensure that the path format is at least as follows
- sample
- kb
- raw/test.mp4 // This is the original video you need to process
- adk_sample.py
- vedit_mcp.py
- Please install the following two dependencies
# # adk-sample pip install requirements
# google-adk==0.3.0
# litellm==1.67.2
- Please set the api-key and api-base
Currently, this script uses the API of the Volcano Ark Platform, and you can go there to configure it by yourself.
After obtaining the API_KEY, please configure the API_KEY as an environment variable.
export OPENAI_API_KEY="your-api-key"
- Execute the script
cd sample
python adk_sample.py
- End of execution
After this script is executed correctly and ends, a video result file will be generated in kb/result, and a log file will be generated and the result will be output.
If you need secondary development, you can choose to add vedit_mcp.py to your project for use.
2.2 Or build using cline
Firstly, please ensure that your Python environment and ffmpeg configuration are correct Configure cline_mcp_settings. json as follows
{
"mcpServers": {
"vedit-mcp": {
"command": "python",
"args": [
"vedit_mcp.py",
"--kb_dir",
"your-kb-dir-here"
]
}
}
}
2.3. Execute using the stramlit web interface
To be supplemented
3. precautions
- It is recommended to use the
thinking modelto handle this type of task. Currently, it seems that thethinking modelperforms better in handling this type of task? But no further testing has been conducted, it's just an intuitive feeling.
İlgili Sunucular
Kone.vc
sponsorMonetize your AI agent with contextual product recommendations
Things 3
Manage your tasks and projects in Things 3 on macOS.
MCPCalc
Hosted MCP server providing a library of calculators spanning finance, math, health, construction, engineering, food, automotive, a full Computer Algebra System (CAS) and Spreadsheet.
Omi Memories
Provides access to a specific user's memories from the Omi app.
ChromeDP
Generate PDFs from HTML content or URLs using a headless Chrome/Chromium browser.
Spreadsheet MCP Server
An MCP server for Google Spreadsheet integration, connecting via a Google Apps Script Web App.
Clawdentials
Trust layer for AI agent commerce: escrow payments, verifiable reputation, and bounty marketplace with USDC/USDT/BTC Lightning support.
ATLAS: Task Management System
A task management system for LLM agents to manage projects, tasks, and knowledge using a Neo4j database for complex workflow automation.
GSuite
Interact with Google products, including Gmail and Calendar.
MCP Prompt Manager
A server for managing local prompt files, allowing AI models to create, retrieve, update, and delete them.
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.