* add llms subdir + update README * nits * use same pre-commit as mlx * update readmes a bit * format |
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Whisper
Speech recognition with Whisper in MLX. Whisper is a set of open source speech recognition models from OpenAI, ranging from 39 million to 1.5 billion parameters1.
Setup
First, install the dependencies.
pip install -r requirements.txt
Install ffmpeg:
# on macOS using Homebrew (https://brew.sh/)
brew install ffmpeg
Run
Transcribe audio with:
import whisper
text = whisper.transcribe(speech_file)["text"]
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Refer to the arXiv paper, blog post, and code for more details. ↩︎