[Numpy-discussion] Put type annotations in NumPy proper?

Eric Wieser wieser.eric+numpy at gmail.com
Tue Mar 24 14:14:26 EDT 2020


>  Putting
> aside ndarray, as more challenging, even annotations for numpy functions
> and method parameters with built-in types would help, as a start.

This is a good idea in principle, but one thing concerns me.

If we add type annotations to numpy, does it become an error to have
numpy-stubs installed?
That is, is this an all-or-nothing thing where as soon as we start,
numpy-stubs becomes unusable?

Eric

On Tue, 24 Mar 2020 at 17:28, Roman Yurchak <rth.yurchak at gmail.com> wrote:

> Thanks for re-starting this discussion, Stephan! I think there is
> definitely significant interest in this topic:
> https://github.com/numpy/numpy/issues/7370 is the issue with the largest
> number of user likes in the issue tracker (FWIW).
>
> Having them in numpy, as opposed to a separate numpy-stubs repository
> would indeed be ideal from a user perspective. When looking into it in
> the past, I was never sure how well in sync numpy-stubs was. Putting
> aside ndarray, as more challenging, even annotations for numpy functions
> and method parameters with built-in types would help, as a start.
>
> To add to the previously listed projects that would benefit from this,
> we are currently considering to start using some (minimal) type
> annotations in scikit-learn.
>
> --
> Roman Yurchak
>
> On 24/03/2020 18:00, Stephan Hoyer wrote:
> > When we started numpy-stubs [1] a few years ago, putting type
> > annotations in NumPy itself seemed premature. We still supported Python
> > 2, which meant that we would need to use awkward comments for type
> > annotations.
> >
> > Over the past few years, using type annotations has become increasingly
> > popular, even in the scientific Python stack. For example, off-hand I
> > know that at least SciPy, pandas and xarray have at least part of their
> > APIs type annotated. Even without annotations for shapes or dtypes, it
> > would be valuable to have near complete annotations for NumPy, the
> > project at the bottom of the scientific stack.
> >
> > Unfortunately, numpy-stubs never really took off. I can think of a few
> > reasons for that:
> > 1. Missing high level guidance on how to write type annotations,
> > particularly for how (or if) to annotate particularly dynamic parts of
> > NumPy (e.g., consider __array_function__), and whether we should
> > prioritize strictness or faithfulness [2].
> > 2. We didn't have a good experience for new contributors. Due to the
> > relatively low level of interest in the project, when a contributor
> > would occasionally drop in, I often didn't even notice their PR for a
> > few weeks.
> > 3. Developing type annotations separately from the main codebase makes
> > them a little harder to keep in sync. This means that type annotations
> > couldn't serve their typical purpose of self-documenting code. Part of
> > this may be necessary for NumPy (due to our use of C extensions), but
> > large parts of NumPy's user facing APIs are written in Python. We no
> > longer support Python 2, so at least we no longer need to worry about
> > putting annotations in comments.
> >
> > We eventually could probably use a formal NEP (or several) on how we
> > want to use type annotations in NumPy, but I think a good first step
> > would be to think about how to start moving the annotations from
> > numpy-stubs into numpy proper.
> >
> > Any thoughts? Anyone interested in taking the lead on this?
> >
> > Cheers,
> > Stephan
> >
> > [1] https://github.com/numpy/numpy-stubs
> > [2] https://github.com/numpy/numpy-stubs/issues/12
> >
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