A newer version of this model is available: Pomni/distil-large-v3.5-ggml-allquants

Distil-Large-v2 quants

This is a repository of GGML quants for distil-large-v2 (a Whisper-based transcription model), for use with whisper.cpp.

If you are looking for a program to run this model with, then I would recommend EasyWhisper UI, as it is user-friendly, has a GUI, and automates a lot of the hard stuff for you.

List of Quants

Clicking on a link will download the corresponding quant instantly.

Link Quant Size Notes
GGML F32 3.03 GB Likely overkill.
GGML F16 1.52 GB Performs better than Q8_0 for noisy audio and music.
GGML Q8_0 818 MB Sweet spot; superficial quality loss at nearly double the speed.
GGML Q6_K 637 MB
GGML Q5_K 537 MB
GGML Q5_1 584 MB
GGML Q5_0 537 MB Last "good" quant; anything below loses quality rapidly.
GGML Q4_K 444 MB Might not have lost too much quality, but I'm not sure.
GGML Q4_1 491 MB
GGML Q4_0 444 MB
GGML Q3_K 345 MB
GGML Q2_K 269 MB Completely non-sensical output.

The F32 quant was taken from distil-whisper/distil-large-v2/ggml-large-32-2.fp32.en.bin, and the F16 quant was taken from distil-whisper/distil-large-v2/ggml-large-32-2.en.bin.

Questions you may have

Why do the "K-quants" not work for me?

My guess is that your GPU might be too old to recognize them, considering that I have gotten the same error on my GTX 1080. If you would like to run them regardless, you can try switching to CPU inference.

Are the K-quants "S", "M", or "L"?

The quantizer I was using was not specific about this, so I do not know about this either.

What program did you use to make these quants?

I used whisper.cpp v1.7.6 on Windows x64, leveraging CUDA 12.4.0.

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