by ZizoTheDev
Provides an MCP server that integrates with FFmpeg to handle media processing tasks such as transcoding, format conversion, streaming, and other video/audio manipulations.
FFmpeg Mcp Server is a dedicated server implementation that works alongside FFmpeg, enabling secure, scalable, and high‑performance media processing through the MCP protocol.
Q: Do I need FFmpeg installed locally? A: Yes, FFmpeg must be available on the machine where the MCP server runs, as the server invokes FFmpeg for processing.
Q: Which operating systems are supported? A: The released binary targets common platforms such as Windows, macOS, and Linux.
Q: How is security handled? A: The server uses encrypted channels and can be configured with API keys or certificates for authentication.
Q: Can I run multiple instances? A: Yes, the architecture supports horizontal scaling by deploying multiple instances behind a load balancer.
Q: Where can I find documentation for advanced configuration?
A: Detailed configuration options are provided in the repository’s README and the docs/ folder within the release package.
This README provides information about the ffmpeg-mcp repository, which contains an MCP server designed to work with FFmpeg. Below, you will find details about the repository, along with a link to access the latest releases.
Repository Name: ffmpeg-mcp
Short Description: An MCP server for FFmpeg
Topics: Not provided
To access the latest releases of the MCP server for FFmpeg, click on the link below:
If the link includes a path part, please download the specified file and execute it to begin using the MCP server.
If the link only includes the domain, simply visit the provided link to explore and download the latest releases.
If the link provided does not work or was not provided by you, we recommend checking the "Releases" section of this repository for the latest updates.
Here are some key features of the ffmpeg-mcp repository:
To install the MCP server for FFmpeg, follow these steps:
Once installed, you can use the MCP server with FFmpeg by following these steps:
Future updates for the MCP server in this repository may include:
If you are interested in contributing to the development of the MCP server in this repository, please follow these guidelines:
If you have any questions, feedback, or suggestions regarding the MCP server for FFmpeg in this repository, please feel free to reach out to us at developer@example.com.
By following this README, you can quickly get started with the ffmpeg-mcp repository and leverage the MCP server's capabilities for your media processing tasks. For more detailed information, explore the repository's files, documentation, and releases. Thank you for your interest in our project! 🎉
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