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INSTALL_FROM_SOURCE.md

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Install from Source

The instructions in this document are for users who want to use fairseq2 on a system for which no pre-built fairseq2 package is available, or for users who want to work on the C++/CUDA code of fairseq2.

Note

If you plan to edit and only modify Python portions of fairseq2, and if fairseq2 provides a pre-built nightly package for your system, we recommend using an editable pip installation as described in Contribution Guidelines.

1. Clone the Repository

As first step, clone the fairseq2 Git repository to your machine:

git clone --recurse-submodules https://github.com/facebookresearch/fairseq2.git

Note the --recurse-submodules option that asks Git to clone the third-party dependencies along with fairseq2. If you have already cloned fairseq2 without --recurse-submodules before reading these instructions, you can run the following command in your cloned repository to achieve the same effect:

git submodule update --init --recursive

2. Set up a Python Virtual Environment

In simplest case, you can run the following command to create an empty Python virtual environment (shown for Python 3.8):

python3.8 -m venv ~/myvenv

And, activate it:

source ~/myvenv/bin/activate

You can check out the Python documentation to learn more about other environment options.

Important

We strongly recommend creating a new environment from scratch instead of reusing an existing one to avoid dependency conflicts.

Important

Manually building fairseq2 or any other C++ project in a Conda environment can become tricky and fail due to environment-specific conflicts with the host system libraries. Unless necessary, we recommend using a Python virtual environment to build fairseq2.

3. Install Dependencies

3.1 System Dependencies

fairseq2 depends on libsndfile, which can be installed via the system package manager on most Linux distributions, or via Homebrew on macOS.

For Ubuntu-based systems, run:

sudo apt install libsndfile-dev

Similarly, on Fedora, run:

sudo dnf install libsndfile-devel

For other Linux distributions, please consult its documentation on how to install packages.

For macOS, you can use Homebrew:

brew install libsndfile

3.2 PyTorch

Follow the instructions on pytorch.org to install the desired PyTorch version. Make sure that the version you install is supported by fairseq2.

3.3 CUDA

If you plan to build fairseq2 in a CUDA environment, you first have to install a version of the CUDA Toolkit that matches the CUDA version of PyTorch. The instructions for different toolkit versions can be found on NVIDIA’s website.

Note

If you are on a compute cluster with module support (e.g. FAIR Cluster), you can typically activate a specific CUDA Toolkit version by module load cuda/<VERSION>.

3.4 pip

Finally, to install fairseq2’s C++ build dependencies (e.g. cmake, ninja), use:

pip install -r native/python/requirements-build.txt

4. Build fairseq2n

CPU-Only Builds

The final step before installing fairseq2 is to build fairseq2n, fairseq2’s C++ library. Run the following command at the root directory of your repository to configure the build:

cd native

cmake -GNinja -B build

Once the configuration step is complete, build fairseq2n using:

cmake --build build

fairseq2 uses reasonable defaults, so the command above is sufficient for a standard installation; however, if you are familiar with CMake, you can check out the advanced build options in native/CMakeLists.txt.

CUDA Builds

Note

If you are on a compute cluster with module support (e.g. FAIR Cluster), you can typically activate a specific CUDA Toolkit version by module load cuda/<VERSION>.

If you would like to build fairseq2’s CUDA kernels, set the FAIRSEQ2N_USE_CUDA option ON. When turned on, the version of the CUDA Toolkit installed on your machine and the version of CUDA that was used to build PyTorch must match:

cmake -GNinja -DFAIRSEQ2N_USE_CUDA=ON -B build

Similar to CPU-only build, follow this command with:

cmake --build build

CUDA Architectures

By default, fairseq2 builds its CUDA kernels only for the Volta architecture. You can override this setting using the CMAKE_CUDA_ARCHITECTURES option. For instance, the following configuration generates binary and PTX codes for the Ampere architecture (e.g. for A100):

cmake -GNinja -DCMAKE_CUDA_ARCHITECTURES="80-real;80-virtual" -DFAIRSEQ2N_USE_CUDA=ON -B build

5. Install fairseq2

Once you have built fairseq2n, the actual Python package installation is straightforward. First install fairseq2n:

cd native/python

pip install .

cd -

Then, fairseq2:

pip install .

Editable Install

In case you want to modify and test fairseq2, installing it in editable mode will be more convenient:

cd native/python

pip install -e .

cd -

pip install -e .

Optionally, you can also install the development tools (e.g. linters, formatters) if you plan to contribute to fairseq2. See Contribution Guidelines for more information:

pip install -r requirements-devel.txt

6. Optional Sanity Check

To make sure that your installation has no issues, you can run the test suite:

pip install -r requirements-devel.txt

pytest

By default, the tests will be run on CPU; pass the --device (short form -d) option to run them on a specific device (e.g. GPU):

pytest --device cuda:0