hearsay
Health Uyari
- License — License: MIT
- Description — Repository has a description
- Active repo — Last push 0 days ago
- Low visibility — Only 7 GitHub stars
Code Basarisiz
- rm -rf — Recursive force deletion command in demo/record.sh
- network request — Outbound network request in scripts/record_fixtures.py
- network request — Outbound network request in src/hearsay/captions.py
Permissions Gecti
- Permissions — No dangerous permissions requested
Bu listing icin henuz AI raporu yok.
crawl4ai for video & audio — one command turns any YouTube video, podcast, or local recording into clean, timestamped, LLM-ready markdown
hearsay
crawl4ai for video & audio. One command turns any YouTube video, podcast
episode, or local recording into clean, timestamped, chunked, LLM-ready
markdown — for RAG pipelines and AI agents.

Why
Getting a transcript into your RAG pipeline usually means gluing togetheryt-dlp, Whisper, and a pile of timestamp-wrangling scripts — and you still end
up with one line per caption fragment or an undifferentiated wall of text.
hearsay does the whole thing in one command and gives you back markdown a human
and a model can read: readable paragraphs, real timestamps, chapter headings,
and an optional JSON sidecar with a stable schema.
Install
uv tool install hearsay # recommended
# or
pipx install hearsay
# MCP server support:
uv tool install "hearsay[mcp]"
# Apple Silicon: add the fast Parakeet engine (~3x faster than CPU Whisper):
uv tool install "hearsay[parakeet]"
System requirement: ffmpeg on your PATH.
Transcription engines
hearsay transcribes with the fastest engine your machine has. The default--model auto picks:
- Parakeet (NVIDIA Parakeet-TDT on Apple's MLX) on Apple Silicon when the
parakeetextra is installed — about 3× faster thanwhisper-smallon
CPU (~24× vs ~7× realtime on an M1 Pro), with comparable accuracy.parakeet
is multilingual (25 European languages);parakeet-enis English-only. - Whisper (faster-whisper, CPU int8) everywhere else, or when you pass an
explicit size (tiny…large-v3).
If the Parakeet extra isn't installed, auto falls back to whisper-small
automatically, so hearsay works the same everywhere — it's just faster on a Mac.
git clone https://github.com/mudassar531/hearsay
cd hearsay
uv sync && uv run hearsay --help # or: uv tool install .
30-second quickstart
# YouTube → markdown via captions (fast — no download)
hearsay "https://www.youtube.com/watch?v=VIDEO_ID"
# Local audio/video → markdown (fast Parakeet on Apple Silicon, else CPU Whisper)
hearsay talk.mp3
# Force local transcription on a YouTube URL, pick an engine, also emit JSON
hearsay "https://youtu.be/VIDEO_ID" --transcribe --model parakeet --json
# Music/song? Add --no-vad so the lyrics aren't filtered out as "non-speech"
hearsay "https://youtu.be/SONG_ID" --no-vad
# A podcast feed or YouTube playlist: list, then ingest a selection
hearsay "https://example.com/feed.xml"
hearsay "https://example.com/feed.xml" --all --limit 3 --output-dir ./out
No captions on a video? hearsay falls back to local transcription automatically.
What you get
---
title: "You Would Be a Terrible Leader"
source: "https://www.youtube.com/watch?v=rStL7niR7gs"
channel: "CGP Grey"
duration: "00:18:13"
ingested: "2026-06-13T10:00:00Z"
method: "captions"
language: "en"
---
# You Would Be a Terrible Leader
## [00:00:00 – 00:05:21]
**[00:00:00]** Do you want to rule? Do you see the problems in your country and
know how to fix them? If only you had the power to do so. Well. You've come to
the right place. But, before we begin this lesson in political power, ask
yourself, why don't rulers see as clearly as you...
Pass --json for a sidecar matching the Transcript schema:
metadata plus chunks[], each with start_s, end_s, section, and text —
ready to embed.
How it compares
| hearsay | DIY yt-dlp + Whisper |
markitdown / docling | |
|---|---|---|---|
| Input | video & audio | video & audio (you wire it) | documents (pdf/docx/pptx) |
| One command | ✅ | ❌ multi-step plumbing | ✅ (for docs) |
| Captions-first (no download) | ✅ | ✗ usually re-transcribes | n/a |
| Timestamps + paragraph grouping | ✅ readable | ✗ raw segments | n/a |
| Chapters → sections | ✅ | ✗ manual | n/a |
| Podcasts · playlists · batch | ✅ | ✗ manual | ✗ |
| JSON sidecar for RAG | ✅ stable schema | ✗ manual | varies |
| MCP server for agents | ✅ | ✗ | varies |
hearsay does media; document tools like
markitdown and
docling do documents. Use both.
Web UI
Prefer a browser? hearsay web starts a tiny local web UI — paste a YouTube URL
or drop in an audio/video file, pick the model, and get a live markdown preview
with copy and download. It's a single self-contained page with no extra
dependencies (built on the standard library).
hearsay web # → http://localhost:8756
hearsay web --port 9000 # custom port
(Single video URLs and file uploads; for playlists and podcast feeds use the CLI.)
Give your agent ears
hearsay ships an MCP server so AI agents can
ingest media themselves. It exposes two tools — ingest_url(url, transcribe?, lang?)
and ingest_file(path) — that each return clean, timestamped markdown.
uv tool install "hearsay[mcp]"
hearsay mcp # stdio MCP server (Ctrl-C to stop)
Claude Code:
claude mcp add hearsay -- hearsay mcp
or add to .mcp.json (project) / ~/.claude.json (user):
{
"mcpServers": {
"hearsay": {
"type": "stdio",
"command": "hearsay",
"args": ["mcp"]
}
}
}
Claude Desktop — add to claude_desktop_config.json (Settings → Developer →
Edit Config; macOS: ~/Library/Application Support/Claude/, Windows:%APPDATA%\Claude\):
{
"mcpServers": {
"hearsay": {
"type": "stdio",
"command": "hearsay",
"args": ["mcp"],
"env": {
"HEARSAY_MODEL": "auto"
}
}
}
}
If hearsay is not on the host's PATH, use the absolute path (which hearsay),
or "command": "python", "args": ["-m", "hearsay", "mcp"].
Server configuration (env vars, since MCP tool signatures are fixed):
| Variable | Default | Effect |
|---|---|---|
HEARSAY_MODEL |
auto |
auto, parakeet, parakeet-en, or a Whisper size (tiny…large-v3) |
HEARSAY_LANG |
(unset) | Default language: English captions, else transcription auto-detect |
HEARSAY_VAD |
1 |
Voice-activity filter (Whisper); set 0 for music/songs |
HEARSAY_PARAKEET_MODEL |
(unset) | Override the Parakeet MLX repo id (advanced) |
Speech vs. music: hearsay is tuned for spoken audio (podcasts, talks,
interviews, meetings), where transcription is accurate. For music, pass--no-vadso the vocals aren't discarded — but expect a rough, approximate
lyric transcript, since Whisper is a speech model, not a lyrics transcriber.
CLI reference
hearsay <SOURCE> [options] SOURCE = YouTube video/playlist URL, podcast RSS, or local file
-o, --output PATH Output file for a single source (default ./<id>.md)
--output-dir PATH Output directory for batch (playlist/feed) ingestion (default ./hearsay-out)
--lang CODE Language: captions default to English; transcription auto-detects
--transcribe Force local transcription even when captions exist
--model MODEL auto (default) | parakeet | parakeet-en | tiny | base | small | medium | large-v3
--no-vad Disable voice-activity filtering (Whisper; use for music/songs)
--json Also write a .json sidecar (Transcript schema)
--latest Batch: ingest only the most recent item
--episode N Batch: ingest only item N (1-indexed)
--all [--limit N] Batch: ingest all items (optionally capped)
--version Show version
hearsay web Run the local web UI (--host, --port)
hearsay mcp Run the MCP stdio server
Requirements
- Python 3.11+
- ffmpeg on your PATH. hearsay decodes most audio/video directly
(faster-whisper bundles its own decoder), but ffmpeg is the safe baseline and
is used for some yt-dlp format merges.
| OS | Install ffmpeg |
|---|---|
| macOS (Homebrew) | brew install ffmpeg |
| Debian / Ubuntu | sudo apt install ffmpeg |
| Fedora | sudo dnf install ffmpeg |
| Arch | sudo pacman -S ffmpeg |
| Windows (winget) | winget install Gyan.FFmpeg |
| Windows (Chocolatey) | choco install ffmpeg |
The first transcription downloads the chosen model once (Whisper: tens of MB to
~1.5 GB; Parakeet: ~600 MB), then caches it for offline use.
Apple Silicon speed: the
parakeetextra (uv tool install "hearsay[parakeet]") runs NVIDIA Parakeet on MLX, transcribing ~3× faster
than CPU Whisper (~24× realtime on an M1 Pro). It requires macOS on arm64; on
other platforms hearsay uses CPU Whisper automatically.
Contributing
See CONTRIBUTING.md and the
good first issues. hearsay does one thing well —
media → great markdown — and aims to keep doing exactly that.
License
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