Skip to content

Audiocraft is a library for audio processing and generation with deep learning. It features the state-of-the-art EnCodec audio compressor / tokenizer, along with MusicGen, a simple and controllable music generation LM with textual and melodic conditioning.

License

Notifications You must be signed in to change notification settings

nateraw/audiocraft

 
 

Repository files navigation

AudioCraft

docs badge linter badge tests badge

AudioCraft is a PyTorch library for deep learning research on audio generation. AudioCraft contains inference and training code for two state-of-the-art AI generative models producing high-quality audio: AudioGen and MusicGen.

Installation

AudioCraft requires Python 3.9, PyTorch 2.1.0. To install AudioCraft, you can run the following:

# Best to make sure you have torch installed first, in particular before installing xformers.
# Don't run this if you already have PyTorch installed.
python -m pip install 'torch==2.1.0'
# You might need the following before trying to install the packages
python -m pip install setuptools wheel
# Then proceed to one of the following
python -m pip install -U audiocraft  # stable release
python -m pip install -U git+https://git@github.com/facebookresearch/audiocraft#egg=audiocraft  # bleeding edge
python -m pip install -e .  # or if you cloned the repo locally (mandatory if you want to train).

We also recommend having ffmpeg installed, either through your system or Anaconda:

sudo apt-get install ffmpeg
# Or if you are using Anaconda or Miniconda
conda install "ffmpeg<5" -c conda-forge

Models

At the moment, AudioCraft contains the training code and inference code for:

  • MusicGen: A state-of-the-art controllable text-to-music model.
  • AudioGen: A state-of-the-art text-to-sound model.
  • EnCodec: A state-of-the-art high fidelity neural audio codec.
  • Multi Band Diffusion: An EnCodec compatible decoder using diffusion.
  • MAGNeT: A state-of-the-art non-autoregressive model for text-to-music and text-to-sound.

Training code

AudioCraft contains PyTorch components for deep learning research in audio and training pipelines for the developed models. For a general introduction of AudioCraft design principles and instructions to develop your own training pipeline, refer to the AudioCraft training documentation.

For reproducing existing work and using the developed training pipelines, refer to the instructions for each specific model that provides pointers to configuration, example grids and model/task-specific information and FAQ.

API documentation

We provide some API documentation for AudioCraft.

FAQ

Is the training code available?

Yes! We provide the training code for EnCodec, MusicGen and Multi Band Diffusion.

Where are the models stored?

Hugging Face stored the model in a specific location, which can be overridden by setting the AUDIOCRAFT_CACHE_DIR environment variable for the AudioCraft models. In order to change the cache location of the other Hugging Face models, please check out the Hugging Face Transformers documentation for the cache setup. Finally, if you use a model that relies on Demucs (e.g. musicgen-melody) and want to change the download location for Demucs, refer to the Torch Hub documentation.

License

  • The code in this repository is released under the MIT license as found in the LICENSE file.
  • The models weights in this repository are released under the CC-BY-NC 4.0 license as found in the LICENSE_weights file.

Citation

For the general framework of AudioCraft, please cite the following.

@inproceedings{copet2023simple,
    title={Simple and Controllable Music Generation},
    author={Jade Copet and Felix Kreuk and Itai Gat and Tal Remez and David Kant and Gabriel Synnaeve and Yossi Adi and Alexandre Défossez},
    booktitle={Thirty-seventh Conference on Neural Information Processing Systems},
    year={2023},
}

When referring to a specific model, please cite as mentioned in the model specific README, e.g ./docs/MUSICGEN.md, ./docs/AUDIOGEN.md, etc.

About

Audiocraft is a library for audio processing and generation with deep learning. It features the state-of-the-art EnCodec audio compressor / tokenizer, along with MusicGen, a simple and controllable music generation LM with textual and melodic conditioning.

Resources

License

Code of conduct

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Python 98.7%
  • Other 1.3%