ffmpeg-mcp
A Python package for media processing using FFmpeg and FastMCP.

ffmpeg-mcp 🎬⚡
A Python package for media processing using FFmpeg and FastMCP. It enables building microservices that handle video/audio tasks with clean, reusable interfaces.
📖 Overview
This project provides a framework for handling media processing tasks using:
- FFmpeg — A powerful multimedia framework for processing audio and video files
- FastMCP — A high-performance framework for building microservices
🛠️ Available Tools
1. Metadata & Frames
-
get_video_metadata-
param(s):
input_video_path: str
-
-
extract_frames-
params:
input_video_path: str | Pathnumber_of_frames: intframe_timestamps: int (eg: 5s, 10s, 15s, ...)
-
2. Audio
-
extract_audio-
param(s):
input_video_path: str
-
3. Video Scaling & Resizing
-
scale_video-
params:
input_video_path: strresolution: Optional[str]
-
4. Overlay Operations
-
overlay_image-
params:
input_video_path: stroverlay_image_path: strpositioning: Literal[top_left, bottom_left, top_right, bottom_right, center, top_center, bottom_center] = 'top_right'scale: tuple[int, int] | None = (100, 100)keep_audio: bool = Trueopacity: float | None = None (range 0.0–1.0)start_time: float = 0.0 (in seconds)duration: float | None = None (in seconds; None = until end of video)
-
-
overlays_video-
params:
input_video_path: stroverlay_video_path: strpositioning: Literal[top_left, bottom_left, top_right, bottom_right] = 'top_left'
-
5. Video Editing
-
clip_video-
params:
input_video_path: strstart_timestampduration: int
-
-
crop_video-
params:
input_video_pathsafe_crop: boolheight: intwidth: intx_offset: inty_offset: int
-
-
trim_and_concatenate-
params:
input_video_pathnumber_of_trims: inttrim_timestamp: List[(start, end), (start, end), ...]
-
-
make_gif-
params:
input_video_pathstart_timestampduration
-
6. Concatenation & Transitions
-
concatenate_videos-
param(s):
file_list: list[Path]
-
-
normalize_video_clips-
params:
input_video_clips: List[str]resolution: tuple default(1280, 720)frame_rate: int default30crf: int default23audio_bitrate: str default128kpreset: str defaultfast
-
-
concat_clips_with_transition-
params:
input_video_clips: List[str]transition_types: str defaultfade(e.g., fade, wipeleft, rectcrop, coverup, etc.)transition_duration: float default2
-
🧰 Utilities
The utils folder contains helper functions and decorators to enhance the functionality and robustness of the media processing tools.
a. Decorators
validate_input_video_pathA decorator that checks if the video path exists, is non-empty, and is a valid video file. This ensures that all video processing functions receive a valid input file.
📦 Requirements
- Python 3.12 or higher
- uv (package manager)
- FFmpeg installed on the system
🚀 Usage
The package can be used to build media processing microservices that leverage the power of FFmpeg through a Python interface.
1. Clone this repo
git clone [email protected]:yubraaj11/ffmpeg-mcp.git
2. Sync the project
uv sync --frozen
3. Use via MCP - Cline config
{
"mcpServers": {
"ffmpeg-mcp": {
"autoApprove": [],
"disabled": false,
"timeout": 60,
"command": "uv",
"args": [
"--directory",
"/path/to/ffmpeg-mcp/ffmpeg_mcp",
"run",
"main.py"
],
"env": {
"PYTHONPATH": "/path/to/ffmpeg-mcp"
},
"transportType": "stdio"
}
}
}
📚 Dependencies
ffmpeg-python— Python bindings for FFmpegfastmcp— Framework for building microservicescolorlog— Colored logging outputfastapi— Web framework for building APIspydantic— Data validation and settings management
İlgili Sunucular
maxia-marketplace
AI-to-AI marketplace on 14 blockchains. 46 MCP tools for crypto swap (71 tokens), tokenized stocks (25), GPU rental, DeFi yields, LLM fine-tuning, wallet analysis. Pay in USDC.
QuantToGo MCP
Macro-factor quantitative signal source — 8 live-tracked strategies (US + China), free 30-day trial, AI agent self-registration via MCP tools.
AltBots — Fund Manager Intelligence
Institutional research and manager diligence reports on hedge funds, venture capital and private equity managers. Summary of filings, personnel changes, media screening and social signals delivered to you in minutes.
Funding Rate MCP
Hyperliquid perpetual funding rate scanner. Scans 229 markets for extreme hourly rates — a known, published-in-advance edge for collecting funding payments.
isleep
An MCP server that lets AI agents sleep for a specified duration.
Mnemo Cortex
Persistent cross-agent semantic memory for AI agents. Recall past sessions, share knowledge across agents. Multi-agent (isolated writes, shared reads), local-first (SQLite + FTS5), works with any LLM — local Ollama at $0 or cloud APIs like Gemini and OpenAI. Integrations for Claude Code, Claude Desktop, and OpenClaw.
BlazeMeter MCP Server
MCP Server for AI-driven BlazeMeter performance testing
TI Mindmap HUB — MCP Server
TI Mindmap HUB MCP Server provides AI assistants with direct access to curated threat intelligence — reports, CVEs, IOCs, STIX bundles, and weekly briefings — through the Model Context Protocol.
Topaz Labs Enhance
AI image enhancement (upscaling, denoising, sharpening) via the Topaz Labs cloud API.
root-mcp
MCP server for ROOT CERN files