An unofficial PyTorch implementation of VALL-E, based on the EnCodec tokenizer.
Since the trainer is based on DeepSpeed, you will need to have a GPU that DeepSpeed has developed and tested against, as well as a CUDA or ROCm compiler pre-installed to install this package.
pip install git+https://github.com/enhuiz/vall-e
Or you may clone by:
git clone --recurse-submodules https://github.com/enhuiz/vall-e.git
Note that the code is only tested under Python 3.10.7
.
-
Put your data into a folder, e.g.
data/your_data
. Audio files should be named with the suffix.wav
and text files with.normalized.txt
. -
Quantize the data:
python -m vall_e.emb.qnt data/your_data
- Generate phonemes based on the text:
python -m vall_e.emb.g2p data/your_data
-
Customize your configuration by creating
config/your_data/ar.yml
andconfig/your_data/nar.yml
. Refer to the example configs inconfig/test
andvall_e/config.py
for details. You may choose different model presets, checkvall_e/vall_e/__init__.py
. -
Train the AR or NAR model using the following scripts:
python -m vall_e.train yaml=config/your_data/ar_or_nar.yml
You may quit your training any time by just typing quit
in your CLI. The latest checkpoint will be automatically saved.
Both trained models need to be exported to a certain path. To export either of them, run:
python -m vall_e.export zoo/ar_or_nar.pt yaml=config/your_data/ar_or_nar.yml
This will export the latest checkpoint.
python -m vall_e <text> <ref_path> <out_path> --ar-ckpt zoo/ar.pt --nar-ckpt zoo/nar.pt
- AR model for the first quantizer
- Audio decoding from tokens
- NAR model for the rest quantizers
- Trainers for both models
- Implement AdaLN for NAR model.
- Sample-wise quantization level sampling for NAR training.
- Pre-trained checkpoint and demos on LibriTTS
- Synthesis CLI
- EnCodec is licensed under CC-BY-NC 4.0. If you use the code to generate audio quantization or perform decoding, it is important to adhere to the terms of their license.
@article{wang2023neural,
title={Neural Codec Language Models are Zero-Shot Text to Speech Synthesizers},
author={Wang, Chengyi and Chen, Sanyuan and Wu, Yu and Zhang, Ziqiang and Zhou, Long and Liu, Shujie and Chen, Zhuo and Liu, Yanqing and Wang, Huaming and Li, Jinyu and others},
journal={arXiv preprint arXiv:2301.02111},
year={2023}
}
@article{defossez2022highfi,
title={High Fidelity Neural Audio Compression},
author={Défossez, Alexandre and Copet, Jade and Synnaeve, Gabriel and Adi, Yossi},
journal={arXiv preprint arXiv:2210.13438},
year={2022}
}