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Is there a way to tell if a ndarray subclass's __array_wrap__ is called with a unary function or a binary function? (another reference)

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+1 for a question that isn't related to keeping track of a card game or some other such nonsense –  bernie Mar 8 '13 at 15:33
@bernie -- ha ha. I'm having a real fun time trying to unravel the numpy data model to the point where I understand it well enough to use it :) –  mgilson Mar 8 '13 at 15:34

1 Answer 1

This is only a partial answer:

The arguments to the ufunc are passed in as a tuple to context. The form is:

(ufunc, ufunc_args, ufunc_domain)

You can check the length of ufunc_args to see if you got 1 argument or 2. As a side note, I have no idea what ufunc_domain is (in my tests, it always seems to be 0)...

import numpy as np
class Tester(np.ndarray):
    def __array_wrap__(self,output,context=None):
        print context[0].__name__,'is binary' if len(context[1]) > 1 else 'is unary'
        return np.ndarray.__array_wrap__(self,output,context)

a = np.zeros(10)
b = a.view(Tester)
print (type(b))


I suppose this is how you can tell __array_wrap__ whether it is a binary or unary ufunc. Unfortunately, when I asked the question in the beginning, I was hoping to know if this ufunc call was the result of a unary operator. I didn't think of things like np.abs and np.sqrt as unary functions.

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Can't you simply check if context[0] is one of the unary ufuncs you want to do something special with? –  Jaime Mar 8 '13 at 19:49
@Jaime -- Yeah. Ultimately, although maintaining a set of functions seems fragile for a general case. Actually, I decided that currently, I only want negative and positive to be special so I decided to deal with then in __neg__ and __pos__, but I'm still interested in the question in general. Still looking to see if someone else has a better idea (or knows what ufunc_domain actually is useful for). –  mgilson Mar 8 '13 at 19:54
ufunc domain is the argument that you are (or I guess the one that is wrapping, not sure if you get output/input argument depending on which function is called wrap or prepare). Maybe more interesting for __array_prepare__. –  seberg Mar 9 '13 at 0:15
@seberg -- i'm sorry. . . I don't follow your comment. Could you elaborate? –  mgilson Mar 9 '13 at 1:38
try np.modf it has multiple out arguments. –  seberg Mar 9 '13 at 9:12

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