Skip to content

MiroPsota/torch_packages_builder

Repository files navigation

Torch Packages Compiler Repository

This repository serves as a comprehensive toolset for building and indexing PyTorch-based packages with custom ops. It includes two primary GitHub workflows:

  1. PyTorch Packages Builder Workflow:

    • Automates the building of PyTorch-based packages with custom ops on common architectures.
    • Publishes the built packages on GitHub releases.
  2. PEP 503 Compliant Package Index Builder Workflow:

    • Creates a PEP 503 compliant package index.
    • Publishes the index using GitHub Pages for seamless integration with pip.

Usage with Pip

Using the Entire Package Index

To utilize the complete package index from this repository, add the following to your pip install command:

pip install --extra-index-url https://miropsota.github.io/torch_packages_builder <your package list>

Using Specific Package Links

If you only need links for specific packages, add the following to your pip install command:

pip install --find-links https://miropsota.github.io/torch_packages_builder/<pep 503 normalized name> <your package list>

For example:

pip install --find-links https://miropsota.github.io/torch_packages_builder/detectron2/ <your package list>

Local Installation

You can also download a package and install it locally:

pip install <abs or rel path>
pip install --find-links <abs or rel dir path> <rel path of the package with respect to the directory>

Make sure to include the full version, including the local version identifier (part after +). The repository follows this version template:

<package_name>-<version>+<OPTIONAL_commit_hash>pt<PyTorch_version><compute_platform>

Where <compute_platform> is, as in PyTorch, one of cpu, cu<CUDA_version>, rocm<ROCM_version>.

Example Package Install Lines

detectron2==0.6+864913fpt1.11.0cpu
pytorch3d==0.7.6+pt2.2.1cu121

Supported combinations

Tested with PyTorch 1.11.0 - 2.3.0 and their respective compute platforms and supported OSes, with an exception for cu102 on Windows (no VS 2017 on the GH windows-2019 runner), and the rocm platform.

Pitfalls

  • No Support for Pip Cache: pip relies on http cache, and GitHub generates on-the-fly redirections for release links, so they are probably not playing nicely together.

Credits

A huge thanks to https://github.com/rusty1s/pytorch_cluster