π¬ Klaket
Turn any video into LLM-ready data.
Klaket demo
A klaket is a clapperboard β the tool that syncs sound and image on a film set. Klaket syncs video with LLMs.
LLMs read text. The web became readable with scrapers β but video, the largest store of human knowledge, is still locked away. Klaket unlocks it: give it a video URL or file, get back structured, timestamped, LLM-ready data.
pip install klaket
klaket ingest "https://youtube.com/watch?v=..." --wait
{
"transcript": [
{ "start": 14.32, "end": 19.80, "speaker": "S1", "text": "So let's deploy this with docker compose..." }
],
"scenes": [
{ "start": 190.0, "end": 342.5, "keyframes": ["scene_004_01.jpg"] }
],
"chapters": [...],
"summary": "..."
}
Features
- π Transcript β timestamped speech-to-text in ~100 languages (auto-detected) with word-level timestamps; pick the model per job (
"model": "medium") - ποΈ Podcasts too β pass an audio file/URL (mp3, m4aβ¦) and Klaket skips the visual stages, deriving chapters from speech pauses
- π£οΈ Speaker diarization β who said what (S1/S2/β¦), local & keyless (sherpa-onnx)
- π¬ Subtitles β ready-to-use
.srt/.vttfiles with speaker labels - ποΈ Scene detection β content-aware scene boundaries + keyframes per scene
- π On-screen text (OCR) β reads slides, terminals and captions per scene, local & keyless
- π§© One JSON timeline β transcript, scenes, frames and on-screen text aligned on a single timeline
- π Works offline, no API key required β the core pipeline uses zero LLM calls
- π§ Pluggable model layer β optional scene descriptions via local VLMs (Ollama) or any OpenAI-compatible endpoint (
KLAKET_VLM=offby default) - π€ MCP server β let coding agents "watch" any video and find moments inside it
- π In-video search β
GET /v1/jobs/{id}/search?q=β¦finds the exact moment - βΆοΈ Playground β the dashboard plays the video with a click-to-seek, live-highlighted transcript
SDKs
# pip install klaket
from klaket import Klaket
result = Klaket().process("https://youtube.com/watch?v=...", num_speakers=2)
// npm i klaket-sdk
import { Klaket } from "klaket-sdk";
const result = await new Klaket().process("https://youtube.com/watch?v=...");
Give your agent eyes
# Claude Code
claude mcp add klaket -- npx klaket-mcp # KLAKET_API_URL defaults to localhost:8484
Then: "Watch https://youtube.com/watch?v=β¦ and summarize the commands the presenter runs."
The agent gets klaket_ingest, klaket_job_status and klaket_get_result tools.
Quick start
git clone https://github.com/huseyinstif/klaket.git && cd klaket
docker compose up --build
# API on :8484, dashboard on :5180
curl -X POST localhost:8484/v1/ingest \
-H "Content-Type: application/json" \
-d '{"url": "https://youtube.com/watch?v=..."}'
That's it β no API keys, no GPUs required. make help lists developer shortcuts (make up, make test, make e2e).
Architecture
client βββΊ Go API βββΊ Redis queue βββΊ Python worker (ffmpeg Β· faster-whisper Β· scenedetect)
β β
dashboard ββββββββββββββββββββββ /data/jobs/<id>/result.json
apps/apiβ Go, job orchestrationapps/workerβ Python, media pipelineapps/dashboardβ React dashboard
Self-host vs Cloud
Klaket is open source (AGPL-3.0) and fully self-hostable. A hosted, pay-per-minute cloud API with managed GPUs is planned β join the waitlist (coming soon).
Status
π§ v0.7 β pre-1.0, moving fast. Star the repo to follow along.
License
AGPL-3.0. SDKs and clients will be MIT.
Contact
Built by HΓΌseyin TΔ±ntaΕ β X (@1337stif) Β· LinkedIn