Skip to content

e-c-k-e-r/vall-e

Folders and files

NameName
Last commit message
Last commit date

Latest commit

df5b870 · Mar 22, 2025
Mar 13, 2025
Mar 22, 2025
Feb 15, 2025
No commit message
Dec 27, 2024
Mar 22, 2025
No commit message
Dec 27, 2024
Aug 2, 2023
Dec 25, 2024
Feb 28, 2025
Feb 22, 2025
Aug 2, 2023

Repository files navigation

VALL'E

An unofficial PyTorch implementation of VALL-E (last updated: 2024.12.11), utilizing the EnCodec encoder/decoder.

A demo is available on HuggingFace here.

Requirements

Besides a working PyTorch environment, the only hard requirement is espeak-ng for phonemizing text:

  • Linux users can consult their package managers on installing espeak/espeak-ng.
  • Windows users are required to install espeak-ng.
    • additionally, you may be required to set the PHONEMIZER_ESPEAK_LIBRARY environment variable to specify the path to libespeak-ng.dll.
  • In the future, an internal homebrew to replace this would be fantastic.

Install

Simply run pip install git+https://git.ecker.tech/mrq/vall-e or pip install git+https://github.com/e-c-k-e-r/vall-e.

This repo is tested under Python versions 3.10.9, 3.11.3, and 3.12.3.

Additional Implementations

An "HF"-ified version of the model is available as ecker/vall-e@hf, but it does require some additional efforts (see the __main__ of ./vall_e/models/base.py for details).

Additionally, vall_e.cpp is available. Consult its README for more details.

Pre-Trained Model

Pre-trained weights can be acquired from

  • here or automatically when either inferencing or running the web UI.
  • ./scripts/setup.sh, a script to setup a proper environment and download the weights. This will also automatically create a venv.
  • when inferencing, either through the web UI or CLI, if no model is passed, the default model will download automatically instead, and should automatically update.

Documentation

The provided documentation under ./docs/ should provide thorough coverage over most, if not all, of this project.

Markdown files should correspond directly to their respective file or folder under ./vall_e/.

About

An unofficial PyTorch implementation of VALL-E

Topics

Resources

License

Stars

Watchers

Forks