Skip to main content
Glama

glideit

Your coding agent can now watch long videos.

Paste a YouTube link (or any video URL, or a local file) and ask a question. glideit downloads the video, builds a transcript and a storyboard of the whole thing, then extracts high-res frames of just the part that matters. Your agent reads them and answers — grounded in what is actually on screen.

glideit demo

▶ Watch the full launch video — with narration and score (38s, made with HyperFrames from demo/demo.html)

  • No API keys. No cloud. Everything runs locally: ffmpeg, yt-dlp, optional tesseract. The agent that invoked glideit does all the "seeing" — no model API is ever called.

  • Built for long videos. A 1-hour lecture becomes 4 storyboard images + a transcript, not 450 frames flooding the agent's context.

  • Reads on-screen code. High-res zoom frames + an OCR sidecar make IDE/terminal content legible.

Install

Claude Code:

/plugin marketplace add Imhari14/glideit
/plugin install glideit@glideit

Cursor, Codex, Copilot, Gemini CLI, and 70+ other agents:

npx skills add Imhari14/glideit -g

Requirements: Python 3.10+, ffmpeg, yt-dlp (pip install yt-dlp). Run python scripts/setup.py to check. Optional: tesseract (OCR), vosk or useful-moonshine-onnx (free offline transcripts for videos without captions).

Related MCP server: VidLens

Use

In your agent, just ask:

/glideit https://youtu.be/VIDEO_ID what happens at 12:30?

Or run the CLI directly:

# 1. MAP — whole-video transcript + storyboard grids
python scripts/glideit.py "https://youtu.be/VIDEO_ID"

# 2. ZOOM — dense high-res frames of one window (+ OCR of on-screen text)
python scripts/glideit.py "https://youtu.be/VIDEO_ID" --start 12:00 --end 13:30 --resolution 1024

The map prints paths to transcript.txt and storyboard_*.jpg; the zoom prints per-frame paths. The agent Reads those files and answers. Everything is cached under .glideit/<hash>/ — re-runs are instant.

Options

Flag

What it does

--start / --end / --timestamps

zoom to a window or exact moments

--fps 2

denser sampling to catch fast motion (default ~1 frame/3s)

--resolution 1024

frame width — raise it to read on-screen code

--detail fast|balanced|deep

map density (deep also OCRs the map)

--cards

emit cards.json + a HyperFrames scaffold to recreate/remix the video

--note "..."

save a note to the video's persistent notes.md

--refresh

ignore cache and rebuild

MCP server

mcp/server.py exposes map_video, zoom_video, and note_video to any MCP host (pip install mcp):

"glideit": { "command": "python", "args": ["mcp/server.py"] }

Recreate or remix a video

--cards turns a reference video into an editable template: a structured cards.json (per-scene text, narration, timing) plus a starter HyperFrames composition. Change the content, brand, or language and render a new MP4 — then run glideit on the render to review it. The demo video above was made this way.

How it compares

claude-video's /watch is great for short clips; glideit is built for the long ones — full lectures, tutorials, conference talks — plus OCR for on-screen code and the recreate/remix bridge.

License

MIT

A
license - permissive license
-
quality - not tested
A
maintenance

Maintenance

Maintainers
Response time
Release cycle
1Releases (12mo)
Commit activity

Resources

Unclaimed servers have limited discoverability.

Looking for Admin?

If you are the server author, to access and configure the admin panel.

Latest Blog Posts

MCP directory API

We provide all the information about MCP servers via our MCP API.

curl -X GET 'https://glama.ai/api/mcp/v1/servers/Imhari14/glideit'

If you have feedback or need assistance with the MCP directory API, please join our Discord server