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Building and uploading scipy wheels

We automate wheel building using this custom github repository that builds on the travis-ci OSX machines and the travis-ci Linux machines.

The travis-ci interface for the builds is https://travis-ci.org/MacPython/scipy-wheels

Appveyor interface at https://ci.appveyor.com/project/scipy/scipy-wheels

The driving github repository is https://github.com/MacPython/scipy-wheels

Using the repository

There are two important branches:

  • master - for building releases;
  • daily - for daily builds.

Travis-CI builds the daily branch - er - daily, via a Travis-CI cron job to check that we can build against current Scipy master. When trying to fix builds against master, or developing new CI build machinery, please use the daily branch.

Builds from the daily branch upload to a Rackspace container for pre-releases at https://7933911d6844c6c53a7d-47bd50c35cd79bd838daf386af554a83.ssl.cf2.rackcdn.com

Meanwhile, we usually leave the master branch in a state where it can build the last release.

Builds from the master branch upload to a Rackspace container for releases at https://3f23b170c54c2533c070-1c8a9b3114517dc5fe17b7c3f8c63a43.ssl.cf2.rackcdn.com

Before releasing, we merge ``daily`` into ``master``.

Therefore, you will usually want to submit pull requests to the daily branch, for testing.

How it works

The wheel-building repository:

  • does a fresh build of any required C / C++ libraries;
  • builds a scipy wheel, linking against these fresh builds;
  • processes the wheel using delocate (OSX) or auditwheel repair (Manylinux1). delocate and auditwheel copy the required dynamic libraries into the wheel and relinks the extension modules against the copied libraries;
  • uploads the built wheels to a Rackspace container - see "Using the repository" above. The containers were kindly donated by Rackspace to scikit-learn).

The resulting wheels are therefore self-contained and do not need any external dynamic libraries apart from those provided as standard by OSX / Linux as defined by the manylinux1 standard.

The .travis.yml file in this repository has a line containing the API key for the Rackspace container encrypted with an RSA key that is unique to the repository - see https://docs.travis-ci.com/user/encryption-keys. This encrypted key gives the travis build permission to upload to the Rackspace containers we use to house the uploads.

Triggering a build

You will likely want to edit the .travis.yml and appveyor.yml files to specify the BUILD_COMMIT before triggering a build - see below.

You will need write permission to the github repository to trigger new builds on the travis-ci interface. Contact us on the mailing list if you need this.

You can trigger a build by:

  • making a commit to the scipy-wheels repository (e.g. with git commit --allow-empty); or
  • clicking on the circular arrow icon towards the top right of the travis-ci page, to rerun the previous build.

In general, it is better to trigger a build with a commit, because this makes a new set of build products and logs, keeping the old ones for reference. Keeping the old build logs helps us keep track of previous problems and successful builds.

Which scipy commit does the repository build?

The scipy-wheels repository will build the commit specified in the BUILD_COMMIT at the top of the .travis.yml file and appveyor.yml files. This can be any naming of a commit, including branch name, tag name or commit hash.

Note: when making a SciPy release, it's best to only push the commit (not the tag) of the release to the scipy repo, then change BUILD_COMMIT to the commit hash, and only after all wheel builds completed successfully push the release tag to the repo. This avoids having to move or delete the tag in case of an unexpected build/test issue.

Uploading the built wheels to pypi

Be careful, these links point to containers on a distributed content delivery network. It can take up to 15 minutes for the new wheel file to get updated into the containers at the links above.

When the wheels are updated, you can download them to your machine manually, and then upload them manually to pypi, or by using twine. You can also use a script for doing this, housed at : https://github.com/MacPython/terryfy/blob/master/wheel-uploader

For the wheel-uploader script, you'll need twine and beautiful soup 4.

You will typically have a directory on your machine where you store wheels, called a wheelhouse. The typical call for wheel-uploader would then be something like:

VERSION=0.18.0
CDN_URL=https://3f23b170c54c2533c070-1c8a9b3114517dc5fe17b7c3f8c63a43.ssl.cf2.rackcdn.com
wheel-uploader -u $CDN_URL -s -v -w ~/wheelhouse -t all scipy $VERSION

where:

  • -u gives the URL from which to fetch the wheels, here the https address, for some extra security;
  • -s causes twine to sign the wheels with your GPG key;
  • -v means give verbose messages;
  • -w ~/wheelhouse means download the wheels from to the local directory ~/wheelhouse.

scipy is the root name of the wheel(s) to download / upload, and 0.18.0 is the version to download / upload.

In order to upload the wheels, you will need something like this in your ~/.pypirc file:

[distutils]
index-servers =
    pypi

[pypi]
username:your_user_name
password:your_password

So, in this case, wheel-uploader will download all wheels starting with scipy-0.18.0- from the URL in $CDN_URL above to ~/wheelhouse, then upload them to PyPI.

Of course, you will need permissions to upload to PyPI, for this to work.

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