mcp-video
AI-native video editing MCP server for FFmpeg workflows.
mcp-video
Video editing MCP server for AI agents.
Structured tools for FFmpeg video editing, cinematic prompt planning, media analysis, subtitles, audio, effects, Hyperframes video creation, and local repurposing packages.
Install • Quick Start • Agent Workflows • Tools • Tool Reference • AI Discovery • llms.txt • MCP Registry
Public Discovery
mcp-video is a free, open-source Model Context Protocol (MCP) server, Python library, and CLI that gives AI agents a real video-editing surface. It wraps FFmpeg, PUSHING CREATION-style planning, media analysis, quality checks, subtitles, audio generation, effects, Hyperframes 0.5 rendering, and local repurposing packages behind structured tool schemas.
Best-fit searches:
- video editing MCP server
- AI agent video editing
- FFmpeg MCP tools
- Claude Code video editing
- Cursor MCP video tools
- Python video editing library
- subtitle automation
- reels and shorts automation
- agentic media pipeline
- local AI video workflow
- Hyperframes video creation
- YouTube Shorts repurposing
Why It Exists
AI agents can write FFmpeg commands, but they should not have to guess flags, parse brittle stderr, or silently publish broken media. mcp-video gives agents typed operations, inspectable tool metadata, structured results, and quality checkpoints so a video workflow can be automated and reviewed without turning into shell-command roulette.
Use it when you want an AI assistant to:
- trim, merge, resize, crop, rotate, transcode, or export video;
- add text, subtitles, watermarks, overlays, filters, fades, effects, and transitions;
- extract audio, normalize audio, synthesize audio, add generated audio, or create waveforms;
- detect scenes, make thumbnails, generate storyboards, compare quality, and create release checkpoints;
- scaffold cinematic projects, read STYLE_/NEG_ blocks, parse storyboard tables, and expand shot prompts;
- create new Hyperframes projects, inspect rendered layouts, capture websites, generate local speech, remove backgrounds, and post-process the result with FFmpeg tools;
- repurpose one source video into vertical, horizontal, and square local delivery packages with manifests and review artifacts;
- drive repeatable media workflows from Claude Code, Cursor, Codex-style clients, scripts, or CI.
Installation
Prerequisite: FFmpeg must be installed and available on PATH.
# macOS
brew install ffmpeg
# Ubuntu/Debian
sudo apt install ffmpeg
Run without a global install:
uvx --from mcp-video mcp-video doctor
Or install with pip:
pip install mcp-video
mcp-video doctor
Hyperframes tools additionally need Node.js 22+ because they call the Hyperframes CLI through npx.
Quick Start
Claude Code
claude mcp add mcp-video -- uvx --from mcp-video mcp-video
Claude Desktop
{
"mcpServers": {
"mcp-video": {
"command": "uvx",
"args": ["--from", "mcp-video", "mcp-video"]
}
}
}
Cursor
{
"mcpServers": {
"mcp-video": {
"command": "uvx",
"args": ["--from", "mcp-video", "mcp-video"]
}
}
}
Then ask your agent:
Trim this interview into a 45-second vertical clip, add burned captions, normalize the audio, make a thumbnail, and create a release checkpoint before export.
Python Client
from mcp_video import Client
editor = Client()
clip = editor.trim("interview.mp4", start="00:02:15", duration="00:00:45")
caption_file = "captions.srt"
editor.ai_transcribe(clip.output_path, output_srt=caption_file)
captioned = editor.subtitles(clip.output_path, subtitle_file=caption_file)
vertical = editor.resize(captioned.output_path, aspect_ratio="9:16")
checkpoint = editor.release_checkpoint(vertical.output_path)
print(checkpoint["thumbnail"])
print(checkpoint["storyboard"])
CLI
mcp-video info interview.mp4
mcp-video trim interview.mp4 -s 00:02:15 -d 45
mcp-video video-ai-transcribe clip.mp4 --output captions.srt
mcp-video subtitles clip.mp4 captions.srt
mcp-video resize clip.mp4 --aspect-ratio 9:16
mcp-video video-quality-check clip.mp4
mcp-video repurpose clip.mp4 --platforms youtube-shorts instagram-reel tiktok
What Agents Can Do
| Workflow | Example prompt |
|---|---|
| Social clips | "Turn this landscape recording into a captioned TikTok and YouTube Short." |
| Podcast production | "Find the strongest segment, trim it, normalize audio, add chapters, and export." |
| Product demos | "Create a short launch video from screenshots, title cards, and voiceover." |
| Cinematic planning | "Create a style pack and storyboard, then render shot prompts for generation." |
| Quality review | "Compare these two exports, make thumbnails, and flag visual or audio problems." |
| Batch automation | "Convert this folder of clips to web-ready MP4 with consistent loudness." |
| Code-created video | "Scaffold a Hyperframes composition, inspect it, render it, then add subtitles and a watermark." |
| Local repurposing | "Turn this master clip into Shorts, Reels, TikTok, and YouTube assets with thumbnails and a manifest." |
MCP Tools
mcp-video registers a broad MCP tool surface, including a search_tools discovery tool so agents can find the right operation without loading every tool description into context.
| Category | Count | Highlights |
|---|---|---|
| Core video editing | 32 | trim, merge, resize, crop, rotate, convert, overlays, subtitles, export, cleanup, templates |
| Cinematic creation | 4 | project scaffold, style-pack parsing, storyboard parsing, shot prompt expansion |
| AI-assisted media | 11 | transcription, scene detection, upscaling, stem separation, silence removal, color grading |
| Hyperframes | 18 | init, preview, render, snapshots, inspect, catalog, website capture, local TTS, transcription, background removal, diagnostics, benchmark, post-process |
| Repurposing | 2 | dry-run manifests, platform-ready variants, thumbnails, storyboards, release checkpoints |
| Procedural audio | 7 | synthesize, compose, presets, effects, sequences, generated audio, spatial audio |
| Visual effects | 8 | vignette, glow, noise, scanlines, chromatic aberration, luma key, mask, shape mask |
| Transitions | 3 | glitch, morph, pixelate |
| Layout and motion | 6 | grid, picture-in-picture, animated text, counters, progress bars, auto-chapters |
| Analysis | 8 | scene detection, thumbnail, preview, storyboard, quality compare, metadata, waveform, release checkpoint |
| Image analysis | 3 | extract colors, generate palettes, analyze product images |
| Discovery | 1 | search_tools |
from mcp_video import Client
editor = Client()
matches = editor.search_tools("subtitle")
print(matches["tools"])
Full reference: docs/TOOLS.md
Agent-Safe Workflow
For autonomous agents, the intended path is inspect, edit, verify, then ask a human to review release artifacts:
from mcp_video import Client
client = Client()
print(client.inspect("trim"))
result = client.pipeline(
[
{"op": "trim", "input": "source.mp4", "start": "00:01:00", "duration": "00:00:45"},
{"op": "add_text", "text": "Launch clip", "position": "top-center"},
{"op": "normalize_audio"},
{"op": "resize", "aspect_ratio": "9:16"},
{"op": "export", "quality": "high"},
{"op": "release_checkpoint"},
],
output_path="final-short.mp4",
)
Safety contract:
- Media-producing calls return structured results with output paths.
- Analysis and discovery calls return structured JSON reports.
- Tool discovery is available through
search_tools()andClient.inspect(). - Unexpected keyword errors are converted into actionable
MCPVideoErrorguidance. - Do not publish agent-generated video without
video_quality_check,video_release_checkpoint, and human visual/audio inspection.
Documentation
Testing
Development verification lives in docs/TESTING.md. Keep public-surface, media workflow, and security checks current when changing tool behavior.
Development
git clone https://github.com/KyaniteLabs/mcp-video.git
cd mcp-video
python3 -m venv .venv
source .venv/bin/activate
pip install -e ".[dev]"
pytest tests/ -v -m "not slow and not hyperframes"
Community
- Contributing
- Code of Conduct
- Governance
- Maintainers
- Security
- Support
- Roadmap
- Changelog
- GitHub Discussions
License
Apache 2.0. See LICENSE.
Built with FFmpeg, Hyperframes, and the Model Context Protocol.
Related Servers
Zomato MCP
An mcp server for your food ordering needs.
Peec AI
Monitor and analyze your brand's visibility across AI search engines. Track your visibility, sentiment, and share of voice & compare to competitors.
Manifold Markets
Interact with Manifold Markets prediction markets, including market creation, trading, and liquidity management.
Medialister
Gateway to editorial ads
Topaz Labs Enhance
AI image enhancement (upscaling, denoising, sharpening) via the Topaz Labs cloud API.
Medigami
Attested healthcare-finance MCP. Scan medical bills, estimate appeal probability, generate state-specific appeal letters, benchmark commercial rates, look up ICD-10/CPT/NPI/DEA. Every response Ed25519-signed so LLMs can cite + verify.
Weather
Provides real-time weather data, forecasts, and alerts using the OpenWeatherMap API.
Uniswap MCP Server
MCP server for Uniswap — swap routing, pool data, and liquidity queries across all supported chains.
Relay Protocol MCP Server
An MCP server for the Relay Protocol REST API, enabling cross-chain bridging and token swapping operations.
xmcp.dev
The TypeScript framework for building & shipping MCP servers