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audio.flac
audio
dacvae.npy
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metadata.json
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__key__
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__url__
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[[-0.9898068308830261,0.44115951657295227,0.05617675557732582,0.020296577364206314,0.310519993305206(...TRUNCATED)
{"audio_duration":17.189999999999998,"begin_time":297.85,"chapter_id":"10119","chars_per_second":12.(...TRUNCATED)
10148_10119_000000
hf://datasets/TTS-AGI/mls-dacvae@159bfa273b20ff21c34431317e8a8d8620b35583/DE-train-00000.tar
[[-0.7929202914237976,0.5220072269439697,-0.06468776613473892,0.18999923765659332,0.3026896715164184(...TRUNCATED)
{"audio_duration":17.620000000000005,"begin_time":374.83,"chapter_id":"10119","chars_per_second":12.(...TRUNCATED)
10148_10119_000001
hf://datasets/TTS-AGI/mls-dacvae@159bfa273b20ff21c34431317e8a8d8620b35583/DE-train-00000.tar
[[-0.2218756228685379,-0.04586669057607651,-0.31601062417030334,-0.4708263576030731,0.26632314920425(...TRUNCATED)
{"audio_duration":10.990000000000007,"begin_time":859.41,"chapter_id":"10119","chars_per_second":2.2(...TRUNCATED)
10148_10119_000002
hf://datasets/TTS-AGI/mls-dacvae@159bfa273b20ff21c34431317e8a8d8620b35583/DE-train-00000.tar
[[-0.004938066471368074,0.1569228172302246,-0.38047945499420166,1.2630324363708496,0.566662907600402(...TRUNCATED)
{"audio_duration":18.80000000000001,"begin_time":158.47,"chapter_id":"10119","chars_per_second":13.8(...TRUNCATED)
10148_10119_000003
hf://datasets/TTS-AGI/mls-dacvae@159bfa273b20ff21c34431317e8a8d8620b35583/DE-train-00000.tar
[[-0.5647169351577759,0.5326212644577026,0.5895668268203735,1.1120789051055908,0.4329235851764679,0.(...TRUNCATED)
{"audio_duration":16.15000000000009,"begin_time":579.92,"chapter_id":"10119","chars_per_second":12.7(...TRUNCATED)
10148_10119_000004
hf://datasets/TTS-AGI/mls-dacvae@159bfa273b20ff21c34431317e8a8d8620b35583/DE-train-00000.tar
[[-0.7670915126800537,-0.741715669631958,0.3398134708404541,-0.34692808985710144,-0.0181390922516584(...TRUNCATED)
{"audio_duration":15.870000000000005,"begin_time":368.19,"chapter_id":"10119","chars_per_second":13.(...TRUNCATED)
10148_10119_000005
hf://datasets/TTS-AGI/mls-dacvae@159bfa273b20ff21c34431317e8a8d8620b35583/DE-train-00000.tar
[[-0.9944673776626587,0.5960072875022888,-0.2219688594341278,0.5202472805976868,0.34368079900741577,(...TRUNCATED)
{"audio_duration":18.370000000000005,"begin_time":274.32,"chapter_id":"10119","chars_per_second":12.(...TRUNCATED)
10148_10119_000006
hf://datasets/TTS-AGI/mls-dacvae@159bfa273b20ff21c34431317e8a8d8620b35583/DE-train-00000.tar
[[-0.6782954931259155,0.21293498575687408,0.3480302691459656,0.16627942025661469,-0.649359941482544,(...TRUNCATED)
{"audio_duration":14.539999999999964,"begin_time":524.49,"chapter_id":"10119","chars_per_second":13.(...TRUNCATED)
10148_10119_000007
hf://datasets/TTS-AGI/mls-dacvae@159bfa273b20ff21c34431317e8a8d8620b35583/DE-train-00000.tar
[[-0.835176944732666,-0.14197027683258057,-0.46459653973579407,0.2207576334476471,0.2036652714014053(...TRUNCATED)
{"audio_duration":18.370000000000005,"begin_time":181.35,"chapter_id":"10119","chars_per_second":13.(...TRUNCATED)
10148_10119_000008
hf://datasets/TTS-AGI/mls-dacvae@159bfa273b20ff21c34431317e8a8d8620b35583/DE-train-00000.tar
[[-0.9876917004585266,-0.05011604726314545,-0.41830575466156006,0.40168267488479614,0.66059458255767(...TRUNCATED)
{"audio_duration":18.94999999999999,"begin_time":352.7,"chapter_id":"10119","chars_per_second":11.45(...TRUNCATED)
10148_10119_000009
hf://datasets/TTS-AGI/mls-dacvae@159bfa273b20ff21c34431317e8a8d8620b35583/DE-train-00000.tar
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Multilingual LibriSpeech converted to DAC VAE latents

Source

facebook/multilingual_librispeech

Format

Each tar shard (~2GB) contains samples with three files per sample:

{sample_key}.audio.flac       # Original audio (FLAC, original sample rate)
{sample_key}.dacvae.npy       # DAC VAE latent [T_latent, 128] numpy float32
{sample_key}.metadata.json    # All metadata + duration_seconds + chars_per_second

DAC VAE Latent Format

  • Model: mrfakename/dacvae-watermarked (Facebook DACVAE)
  • Input sample rate: 48,000 Hz (audio resampled before encoding)
  • Latent shape: [T_latent, 128] where T_latent = ceil(audio_samples / 1920)
  • Latent rate: 25 frames/second
  • Storage: numpy float32

Shard Naming

{LANG}-{split}-{index:05d}.tar (e.g., EN-train-00000.tar, DE-train-00001.tar)

Loading

With WebDataset

import webdataset as wds
import numpy as np
import json
import soundfile as sf
import io

url = "https://huggingface.co/datasets/TTS-AGI/mls-dacvae/resolve/main/EN-train-00000.tar"
dataset = wds.WebDataset(url).decode()

for sample in dataset:
    audio_bytes = sample["audio.flac"]
    latent = np.load(io.BytesIO(sample["dacvae.npy"]))  # [T, 128]
    meta = json.loads(sample["metadata.json"])
    print(f"Text: {meta['text']}, Duration: {meta['duration_seconds']}s, CPS: {meta['chars_per_second']}")

Decoding Latents Back to Audio

from dacvae import DACVAE
from huggingface_hub import hf_hub_download
import torch, numpy as np

model = DACVAE.load(hf_hub_download("mrfakename/dacvae-watermarked", "weights.pth")).cuda().eval()
latent = np.load("sample.dacvae.npy")  # [T_latent, 128]
z = torch.from_numpy(latent.T).unsqueeze(0).cuda()  # [1, 128, T_latent]
audio_48k = model.decode(z).squeeze(0).cpu()  # [1, T_audio] at 48kHz

Current Status

Shards uploaded: 14

Progress by Language

Language Samples
DE_train 11,872
ES_train 10,912
FR_train 11,824
IT_train 11,408
NL_train 11,696
PL_train 11,040
PT_train 10,736

Metadata Fields

Each metadata.json contains:

  • dataset: Source dataset name
  • language: Language code
  • split: Data split (train/dev/test)
  • sample_id: Original sample identifier
  • text: Transcript
  • duration_seconds: Audio duration in seconds
  • chars_per_second: Text characters per second of audio
  • original_sample_rate: Original audio sample rate
  • dacvae_sample_rate: 48000 (DAC VAE input rate)
  • latent_frames: Number of latent time frames
  • Plus all original dataset-specific fields

Generated with Claude Code

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