crispasr-agent-transcriber

crispasr-agent-transcriber

Local-only transcription server for MCP agents, powered by CrispASR. Transcribes audio/video files without cloud uploads, supporting English and Chinese.

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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:

  1. Probes the spoken language (English or Chinese) using CrispASR's FireRed LID.
  2. Starts a local CrispASR server with the right backend -- Cohere Transcribe for English, Qwen3-ASR for Chinese.
  3. Extracts audio from video with ffmpeg when needed.
  4. Calls CrispASR's /v1/audio/transcriptions endpoint.
  5. 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:

  1. CUDA -- nvidia-smi available, or CUDA_PATH / CUDA_HOME set, or CUDA in PATH -> downloads crispasr-*-cuda variant.
  2. Vulkan -- vulkaninfo or VULKAN_SDK set (only when CUDA is absent) -> downloads crispasr-*-vulkan variant.
  3. 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-url only accepts localhost unless --allow-remote-server is 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/CrispASR GitHub 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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