RealtimeSTT is a Python speech-to-text library for applications that need voice activity detection, fast transcription, optional realtime text updates, wake words, and direct access to audio streams. It is designed for assistants, dictation tools, browser streaming servers, and prototypes that need to turn speech into text with only a few lines of code.
The recommended default path uses faster_whisper. Other engines are available
through install extras when their optional dependencies and models are present.
RealtimeSTT.Demo.video.mp4
CLI demo code (reproduces the video above)
RealtimeSTT 1.0.1 adds native support for kroko_onnx, the local streaming ASR
engine from the Kroko/Banafo team.
This integration has been on my wishlist for a long time. Kroko is a strong fit for RealtimeSTT's goals: fast, accurate local speech recognition.
Start with the public Community models for local testing, or see Kroko/Banafo's commercial model options if you need production licensing and higher-end models.
pip install "RealtimeSTT[kroko-builder,silero-onnx-cpu]"
stt-install-kroko --buildThe silero-onnx-cpu extra gives AudioToTextRecorder a local VAD backend for
recorder-based smoke tests and live microphone use.
See the Kroko-ONNX engine guide, Kroko ASR docs, and kroko-onnx on GitHub.
Use Python 3.11 or newer for the current pinned dependency set.
pip install "RealtimeSTT[faster-whisper]"On Linux, install PortAudio headers before installing the package:
sudo apt-get update
sudo apt-get install python3-dev portaudio19-devOn macOS:
brew install portaudioFor CUDA, platform notes, and optional engine stacks, see docs/installation.md.
This waits for speech, stops after the detected utterance, and prints the final transcript:
from RealtimeSTT import AudioToTextRecorder
if __name__ == "__main__":
with AudioToTextRecorder() as recorder:
print("Speak now")
print(recorder.text())Use the if __name__ == "__main__": guard when running scripts, especially on
Windows, because RealtimeSTT uses multiprocessing for model work.
For continuous dictation, pass a callback to text() so transcription work can
complete asynchronously while your loop keeps listening:
from RealtimeSTT import AudioToTextRecorder
def process_text(text):
print(text)
if __name__ == "__main__":
recorder = AudioToTextRecorder()
while True:
recorder.text(process_text)Set use_microphone=False when audio comes from a file, stream, websocket, or
another process. Feed 16-bit mono PCM chunks at 16 kHz, or pass the original
sample rate so RealtimeSTT can resample:
from RealtimeSTT import AudioToTextRecorder
if __name__ == "__main__":
recorder = AudioToTextRecorder(use_microphone=False)
with open("audio_chunk.pcm", "rb") as audio_file:
recorder.feed_audio(audio_file.read(), original_sample_rate=16000)
print(recorder.text())
recorder.shutdown()More examples are in docs/quick-start.md and docs/external-audio.md.
Every AudioToTextRecorder constructor parameter is documented in
docs/configuration.md, including model/engine
selection, realtime transcription, VAD timing, wake words, callbacks, external
audio, logging, and executor injection.
- Voice activity detection with WebRTC VAD and Silero VAD.
- Final and realtime transcription with selectable engines.
- Optional wake word activation through Porcupine or OpenWakeWord.
- Direct microphone input or application-fed audio chunks.
- Event callbacks for recording, VAD, realtime text, transcription, and wake word state.
- A FastAPI browser streaming server example with multi-user session isolation, shared inference resources, metrics, and health endpoints.
- Quick start: shortest demos and common recording patterns.
- Installation: platform setup, CUDA notes, and optional dependencies.
- Configuration: complete
AudioToTextRecorderparameter reference. - Transcription engines: engine selection and setup links.
- Wake words: Porcupine and OpenWakeWord setup.
- External audio: feeding audio without a microphone.
- Testing: maintained unit and opt-in golden test workflow.
- Test scripts: demos, manual tests, regressions, and
legacy experiments under
tests/. - FastAPI server: browser server configuration, protocol, metrics, and deployment notes.
- Troubleshooting: common install, audio, CUDA, model, dependency, and runtime errors.
- Engine licenses: license notes for optional engine runtimes and model families.
Engine-specific references:
- faster-whisper
- whisper.cpp
- OpenAI Whisper
- Moonshine
- sherpa-onnx
- Kroko-ONNX
- Parakeet NeMo
- Meta Omnilingual ASR
- Granite/Qwen Transformers engines
- Cohere Transcribe
The browser FastAPI reference server lives in example_fastapi_server and is
intended for source checkouts. It is not installed by the PyPI wheel; keeping it
source-only keeps the wheel lean and avoids adding web-server dependencies for
users who only need the recorder/API library.
python -m pip install -r example_fastapi_server/requirements.txt
python example_fastapi_server/server.py --host 0.0.0.0 --port 8010For pip-only installs, use the Python recorder/API examples instead. If you want the FastAPI reference server, clone the repository or install from Git.
Open http://localhost:8010. See docs/fastapi-server.md
for engine recipes, websocket protocol details, health checks, and metrics.
Focused tests and small changes are easiest to review. The project keeps fast unit tests separate from opt-in real-model tests; see docs/testing.md.
MIT
Kolja Beigel