crispasr-agent-transcriber
Local-only transcription server for MCP agents, powered by CrispASR. Transcribes audio/video files without cloud uploads, supporting English and Chinese.
README
crispasr-agent-transcriber
Local-only transcription for Codex and MCP-based AI agents, powered by CrispASR. No cloud uploads, no API keys required for transcription.
What it does
Give it a local audio or video file. It:
- Probes the spoken language (English or Chinese) using CrispASR's FireRed LID.
- Starts a local CrispASR server with the right backend -- Cohere Transcribe for English, Qwen3-ASR for Chinese.
- Extracts audio from video with ffmpeg when needed.
- Calls CrispASR's
/v1/audio/transcriptionsendpoint. - Writes the transcript and metadata to disk.
Everything runs on your machine. Media never leaves it.
Quick start
Prerequisites: Python 3.11+, uv, ffmpeg, and three model files (see below).
git clone https://github.com/EmiyaKatuz/crispasr-agent-transcriber.git
cd crispasr-agent-transcriber
# Install Python dependencies
uv sync --extra dev
# Install the CrispASR binary (auto-detects GPU: CUDA > Vulkan > CPU)
uv run python scripts/transcribe.py --install-crispasr
# Transcribe a file
uv run python scripts/transcribe.py sample.mp4 --profile auto `
--manage-server `
--lid-backend firered --lid-model models\firered-lid-q2_k.gguf `
--model models\cohere-transcribe.gguf `
--format verbose_json
Or run .\scripts\setup.ps1 for a guided first-time setup.
Required models
This tool does not download models automatically. Download these three
GGUF files and keep them in a local directory (the repo's models/ folder
works well):
| Purpose | File | ~Size | Source |
|---|---|---|---|
| English ASR | cohere-transcribe.gguf |
3.9 GB | Cohere on HuggingFace |
| Chinese ASR | qwen3-asr-1.7b-q4_k.gguf |
1.3 GB | Qwen3-ASR GGUF |
| Language detection | firered-lid-q2_k.gguf |
350 MB | FireRed LID GGUF |
Pass them on every run:
--model models\cohere-transcribe.gguf
--lid-backend firered --lid-model models\firered-lid-q2_k.gguf
CrispASR binary management
The tool auto-detects, installs, and updates the CrispASR binary from GitHub releases.
| Flag | Effect |
|---|---|
--install-crispasr |
Download latest platform binary to bin/ |
--update-crispasr |
Upgrade to newest release |
--crispasr-status |
Show installed version + update availability |
--crispasr-bin-dir PATH |
Custom directory (default ./bin) |
--crispasr-bin PATH |
Exact path to crispasr.exe |
When --manage-server is set and no binary is found, it auto-installs before
starting the server.
GPU detection
On install and update, the tool checks your hardware:
- CUDA --
nvidia-smiavailable, orCUDA_PATH/CUDA_HOMEset, or CUDA inPATH-> downloadscrispasr-*-cudavariant. - Vulkan --
vulkaninfoorVULKAN_SDKset (only when CUDA is absent) -> downloadscrispasr-*-vulkanvariant. - CPU -- fallback when no GPU toolkit is detected.
macOS always uses the universal binary.
Profiles
| Profile | Backend | ASR model | Language hint |
|---|---|---|---|
english |
cohere |
Cohere Transcribe 03-2026 | en |
chinese |
qwen3-1.7b |
Qwen3-ASR 1.7B | zh |
auto |
determined by LID | determined by LID | detected |
auto mode runs FireRed language detection on the media, then routes English
to Cohere or Chinese to Qwen3-1.7B. Mixed or uncertain content stops with a
clear error asking you to re-run with --profile english or --profile chinese.
Usage
Managed server (tool starts CrispASR for you)
uv run python scripts/transcribe.py sample.wav `
--profile auto `
--manage-server `
--model models\qwen3-asr-1.7b-q4_k.gguf `
--lid-backend firered --lid-model models\firered-lid-q2_k.gguf `
--format srt `
--out-dir outputs
Add --keep-server to leave the server running after transcription.
Manual server (you start CrispASR)
# Terminal 1 -- start the server
crispasr --server --backend cohere `
-m models\cohere-transcribe.gguf `
--port 8080
# Terminal 2 -- transcribe
uv run python scripts/transcribe.py sample.mp4 `
--profile english `
--server-url http://127.0.0.1:8080 `
--format verbose_json
If the running server's backend doesn't match the selected profile, the tool prints the exact command you need to start the correct server.
Output formats
--format |
File extension | Contents |
|---|---|---|
text |
.txt |
Plain transcript |
verbose_json |
.json |
Full response with segments |
srt |
.srt |
SubRip subtitles |
vtt |
.vtt |
WebVTT subtitles |
A .metadata.json sidecar is always written alongside the transcript.
Video files
Video files are detected automatically. ffmpeg extracts the audio track to a temporary mono 16 kHz WAV before sending it to CrispASR. The temporary file is deleted when transcription finishes.
All CLI flags
--profile auto|english|chinese
--format text|verbose_json|srt|vtt
--out-dir PATH
--server-url URL
--allow-remote-server
--manage-server
--keep-server
--model PATH Local GGUF model path
--allow-model-auto-download
--lid-model PATH Local LID model path
--lid-backend firered|silero|ecapa|whisper
--host HOST Managed server host (default 127.0.0.1)
--port PORT Managed server port (default 8080)
--language CODE Language hint for transcription
--prompt TEXT Initial prompt/context
--vad Enable voice activity detection
--diarize Enable speaker diarization
--diarize-method METHOD
--hotwords WORD,WORD Comma-separated hotwords
--no-timestamps
--preprocess auto|always|never
--api-key KEY If CRISPASR_API_KEYS is enabled
--crispasr-bin-dir PATH
--crispasr-bin PATH
--install-crispasr
--update-crispasr
--crispasr-status
MCP server
uv sync --extra mcp
uv run python -m crispasr_mcp.server
Exposed tools:
| Tool | Description |
|---|---|
crispasr_health |
Check CrispASR server health |
crispasr_backends |
List available backends |
crispasr_detect_language |
Run language detection on a file |
transcribe_audio |
Transcribe an audio file |
transcribe_video |
Transcribe a video file |
transcribe_folder |
Batch-transcribe a folder |
Security model
- No cloud uploads. Media files stay on the local filesystem.
- No remote servers by default.
--server-urlonly accepts localhost unless--allow-remote-serveris explicitly passed. - No URL inputs. Only local file paths are accepted. URLs, S3, and other remote schemes are rejected.
- No shell injection. ffmpeg is called with argument lists and
shell=False. No user-controlled strings are interpolated into shell commands. - No model downloads by default. CrispASR model auto-download (
-m auto) requires--allow-model-auto-download. The same guard applies to language detection models. - Temporary files are cleaned up. Converted WAV files and LID probe windows are deleted when transcription finishes.
- Binary downloads are explicit. CrispASR binary installs only from the
official
CrispStrobe/CrispASRGitHub releases.
Verify
uv run pytest # 52 tests
uv run ruff check . # zero lint warnings
License
This project is licensed under the MIT License.
Third-party components and attribution
This tool orchestrates several independently-licensed projects. It does not bundle, fork, or redistribute their code -- it downloads pre-built binaries and calls them as subprocesses or HTTP services at runtime.
| Component | License | Role |
|---|---|---|
| CrispASR | MIT | ASR engine, server, language detection |
| ffmpeg | LGPL 2.1+ / GPL 2+ | Media decoding and audio extraction |
| Cohere Transcribe 03-2026 | Cohere model license | English ASR model (loaded by CrispASR) |
| Qwen3-ASR 1.7B | Apache 2.0 | Chinese ASR model (loaded by CrispASR) |
| FireRed LID | Apache 2.0 | Language detection model (loaded by CrispASR) |
| httpx | BSD | HTTP client for CrispASR API |
| MCP Python SDK | MIT | MCP server framework |
Model files must be downloaded separately by the user from their respective HuggingFace repositories. See Required models above.
Related projects
- CrispASR -- the ASR engine this tool wraps
- CrisperWeaver -- CrispASR's desktop GUI (not used by this tool)
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