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SNAC ๐Ÿฟ

Multi-Scale Neural Audio Codec (SNAC) compressess audio into discrete codes at a low bitrate.

๐Ÿ‘‰ This model was primarily trained on music data, and its recommended use case is music (and SFX) generation. See below for other pretrained models.

๐Ÿ”— GitHub repository: https://github.com/hubertsiuzdak/snac/

Overview

SNAC encodes audio into hierarchical tokens similarly to SoundStream, EnCodec, and DAC. However, SNAC introduces a simple change where coarse tokens are sampled less frequently, covering a broader time span.

This model compresses 32 kHz audio into discrete codes at a 1.9 kbps bitrate. It uses 4 RVQ levels with token rates of 10, 21, 42, and 83 Hz.

Pretrained models

Currently, all models support only single audio channel (mono).

Model Bitrate Sample Rate Params Recommended use case
hubertsiuzdak/snac_24khz 0.98 kbps 24 kHz 19.8 M ๐Ÿ—ฃ๏ธ Speech
hubertsiuzdak/snac_32khz (this model) 1.9 kbps 32 kHz 54.5 M ๐ŸŽธ Music / Sound Effects
hubertsiuzdak/snac_44khz 2.6 kbps 44 kHz 54.5 M ๐ŸŽธ Music / Sound Effects

Usage

Install it using:

pip install snac

To encode (and decode) audio with SNAC in Python, use the following code:

import torch
from snac import SNAC

model = SNAC.from_pretrained("hubertsiuzdak/snac_32khz").eval().cuda()
audio = torch.randn(1, 1, 32000).cuda()  # B, 1, T

with torch.inference_mode():
    codes = model.encode(audio)
    audio_hat = model.decode(codes)

You can also encode and reconstruct in a single call:

with torch.inference_mode():
    audio_hat, codes = model(audio)

โš ๏ธ Note that codes is a list of token sequences of variable lengths, each corresponding to a different temporal resolution.

>>> [code.shape[1] for code in codes]
[12, 24, 48, 96]

Acknowledgements

Module definitions are adapted from the Descript Audio Codec.

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