Documentation: Stable, Nightly | Install: Linux, macOS, Windows, From Source
fairseq2 is a sequence modeling toolkit that allows researchers and developers to train custom models for translation, summarization, language modeling, and other content generation tasks. It is also the successor of fairseq.
You can find our full documentation including tutorials and API reference here.
For recent changes, you can check out our changelog.
As of today, the following pre-trained models are available in fairseq2 (in alphabetical order):
fairseq2 is also used by various external projects such as:
fairseq2 has a dependency on libsndfile that can be installed via the system package manager on most Linux distributions. For Ubuntu-based systems, run:
sudo apt install libsndfile1
Similarly, on Fedora, run:
sudo dnf install libsndfile
For other Linux distributions, please consult its documentation on how to install packages.
To install fairseq2 on Linux x86-64, run:
pip install fairseq2
This command will install a version of fairseq2 that is compatible with PyTorch hosted on PyPI.
At this time, we do not offer a pre-built package for ARM-based systems such as Raspberry PI or NVIDIA Jetson. Please refer to Install From Source to learn how to build and install fairseq2 on those systems.
Besides PyPI, fairseq2 also has pre-built packages available for different PyTorch and CUDA versions hosted on FAIR's package repository. The following matrix shows the supported combinations.
PyTorch | Python | Variant* | Arch |
---|---|---|---|
2.1.0 , 2.1.1 |
>=3.8 , <=3.11 |
cpu , cu118 cu121 |
x86_64 |
2.0.0 , 2.0.1 |
>=3.8 , <=3.11 |
cpu , cu117 cu118 |
x86_64 |
1.13.1 |
>=3.8 , <=3.10 |
cpu , cu116 |
x86_64 |
* cuXYZ refers to CUDA XY.Z (e.g. cu118 means CUDA 11.8)
To install a specific combination, first follow the installation instructions on
pytorch.org for the desired PyTorch version, and then use
the following command (shown for PyTorch 2.1.1
and variant cu118
):
pip install fairseq2\
--extra-index-url https://fair.pkg.atmeta.com/fairseq2/whl/pt2.1.1/cu118
Warning
fairseq2 relies on the C++ API of PyTorch which has no API/ABI compatibility between releases. This means you have to install the fairseq2 variant that exactly matches your PyTorch version. Otherwise, you might experience issues like immediate process crashes or spurious segfaults. For the same reason, if you upgrade your PyTorch version, you must also upgrade your fairseq2 installation.
For Linux, we also host nightly builds on FAIR's package repository. The
supported variants are identical to the ones listed in Variants above. Once
you have installed the desired PyTorch version, you can use the following
command to install the corresponding nightly package (shown for PyTorch 2.1.1
and variant cu118
):
pip install fairseq2\
--pre --extra-index-url https://fair.pkg.atmeta.com/fairseq2/whl/nightly/pt2.1.1/cu118
fairseq2 has a dependency on libsndfile that can be installed via Homebrew:
brew install libsndfile
To install fairseq2 on ARM64-based (i.e. Apple silicon) Mac computers, run:
pip install fairseq2
This command will install a version of fairseq2 that is compatible with PyTorch hosted on PyPI.
At this time, we do not offer a pre-built package for Intel-based Mac computers. Please refer to Install From Source to learn how to build and install fairseq2 on Intel machines.
fairseq2 does not have native support for Windows and there are no plans to support it in the foreseeable future. However, you can use fairseq2 via the Windows Subsystem for Linux (a.k.a. WSL) along with full CUDA support introduced in WSL 2. Please follow the instructions in the Installing on Linux section for a WSL-based installation.
See here.
We always welcome contributions to fairseq2! Please refer to Contribution Guidelines to learn how to format, test, and submit your work.
If you use fairseq2 in your research and wish to refer to it, please use the following BibTeX entry.
@software{balioglu2023fairseq2,
author = {Can Balioglu},
title = {fairseq2},
url = {http://github.com/facebookresearch/fairseq2},
year = {2023},
}
This project is MIT licensed, as found in the LICENSE file.