Skip to content

seberg/unitdtype

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

23 Commits
 
 
 
 
 
 

Repository files navigation

Experimental Unit DType for NumPy

(Please expect that this readme may get outdated, open an issue if it does.)

This currently requires my branch on NumPy (As of 2022-01-26):

https://github.com/seberg/numpy/tree/reduce-identity-array-meth

It supports more than my previous prototype and is now in C.

Note that scalars are not really supported, but they will be created. They are currently necessary for printing, and you can create a new array using them. They will also work together with arrays, since they will be coerced to 0-D array (and that works).

Currently, casts within Units and to and from double (if dimensionless!) as well as to boolean (unit is ignored, so offset is also) is supported. The following ufuncs are supported:

  • negative, positive
  • add, subtract
  • multiple, divide
  • matmul
  • fmod
  • hypot (not sure if this is quite right)
  • maximum, minimum, fmax, fmin
  • comparisons (note that we never compare to 0 scalars, unlike some implementations).
  • Logical ufuncs (via casting to boolean)

And the following related functions:

  • sum, mean, ...

More are likely to be added and I may not updated the README.

Many functions in NumPy should just work, however, e.g. sorting is not implemented. One caveat is that np.prod is not implemented as this requires some new API to be designed to make work (similar for theoretical generalized ufuncs if they need the number of elements to be worked on to figure out the result dtype).

Example?

import numpy as np; import unitdtype as udt

arr = np.arange(1000.).view(udt.Float64Unit("m"))

new = arr * arr
new_in_cm = new.astype(udt.Float64Unit("cm**2"))

new == new_in_cm  # luckily no rounding :).

About

Experimental Unit DType for NumPy

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published