array-api
array-api copied to clipboard
Common APIs across array libraries (1 year later)
Overview
Similar to gh-6, this issue looks to identify commonalities across array libraries, but only addresses those APIs which are not already included in the array API specification.
Since gh-6 and its analysis,
- Every array library added more APIs.
- Continued convergence toward NumPy APIs (CuPy, PyTorch, TensorFlow.experimental, MXNet).
- Greater agreement among accelerator libraries (e.g., CuPy, MXNet, Torch, TF) wrt special functions not available in NumPy, but available in SciPy.
Method
Similar to gh-6, the list was compiled by doing the following:
- Generating a list of APIs based on publicly documented array APIs (e.g., by scraping website documentation).
- Computing the intersection across the individual datasets.
The following libraries were analyzed:
- numpy
- cupy
- dask.array
- jax
- mxnet
- pytorch
- tensorflow
APIs
The following APIs were found to be common across the above libraries, but not already included in the array API specification:
cbrt
clip
copysign
count_nonzero
deg2rad
diff
erf (scipy)
erfc (scipy)
erfinv (scipy)
erfcinv (scipy)
exp2
gamma (scipy)
gammaln (scipy)
histogram
hypot
i0 (bessel)
logsumexp (accelerators)
nextafter
pad
rad2deg
reciprocal
repeat
rot90
rsqrt (accelerators)
rcbrt (accelerators)
sigmoid (accelerators)
take
tile
top_k (accelerators+dask)
xlogy (scipy)
We can split the APIs into the following categories...
Array Manipulation
pad
repeat
rot90
tile
Special Functions
cbrt
clip
copysign
deg2rad
erf
erfc
erfcinv
erfinv
exp2
gamma
gammaln
hypot
i0
nextafter
rad2deg
reciprocal
rsqrt
rcbrt
sigmoid
xlogy
Reductions
count_nonzero
histogram
logsumexp
top_k
Indexing
take
Other
diff
Next Steps
- Identify which APIs could be suitable candidates for standardization in the next version of the specification.
Someone just proposed to add topk
(or top_k
) to NumPy, and I'm trying to find the best way to use the data that generated the above list. It looks like none of the make ...
commands in https://github.com/data-apis/array-api-comparison show this?
This issue is still useful; I'll remove the v2022 milestone given that we're done adding new APIs to that.
The list of common APIs here is probably longer than the list of things that make sense to add. The content here can be used as reference - one data point in future API extension conversations.
FYI of this list xarray currently uses:
np.clip
np.diff
np.pad
np.repeat
np.take
np.tile
Thanks @TomNicholas. take is implemented, and for clip
there's gh-482, overall my reading is that we'll add clip
for the next version.
The others need looking into, but seem to me to me among the most-often used numpy functions that we haven't included yet. repeat
and tile
are straightforward to implement, diff
isn't too bad either, pad
is a bit painful with its many options.
SciPy has a usecase for the nextafter
function which is present in this list. Since it is a very basic function and implemented by all the array libraries, I think it should be added to the Array API.
SciPy has a usecase for the
nextafter
function which is present in this list. Since it is a very basic function and implemented by all the array libraries, I think it should be added to the Array API.
Thanks for the proposal @tirthasheshpatel! That seems reasonable, and now that there's an identified need we can prioritize it. @steff456 volunteered to dig into this one.