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This model is quantized using the Quanto Python Package and the CTranslate2 Python Package. From my early tests:
- Much less GPU memory required
- It seems that performance is on par with the original
- It seems that this combination is faster than just using the CTranslate2 int8 quantization.
Quantization method TBA. To use this model, use the faster_whisper module as stated in the original faster-whisper model. Or use WhisperX, this is what I used for my small tests (do not forget to set dtype to int8).
Any benchmark results are appreciated. I probably do not have time to do it myself.
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