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The following example:

import numpy as np

class SimpleArray(np.ndarray):

    __array_priority__ = 10000

    def __new__(cls, input_array, info=None):
        return np.asarray(input_array).view(cls)

    def __eq__(self, other):
        return False

a = SimpleArray(10)
print (np.int64(10) == a)
print (a == np.int64(10))

gives the following output

$ python2.7 eq.py
True
False

so that in the first case, SimpleArray.__eq__ is not called (since it should always return False). Is this a bug, and if so, can anyone think of a workaround? If this is expected behavior, how do I ensure SimpleArray.__eq__ gets called in both cases?

EDIT: just to clarify, this only happens with Numpy scalar arrays - with normal arrays, __eq__ always get called because the __array_priority__ tells Numpy that it should always execute this __eq__ even if the object is on the RHS of an equality operation:

b = SimpleArray([1,2,3])

print(np.array([1,2,3]) == b)
print(b == np.array([1,2,3]))

gives:

False
False

So it seems that with scalar Numpy 'arrays', __array_priority__ does not get respected.

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1  
AFAIK that's exactly why arithmetic operations have a __r*__ version, so that subclasses can override it and ensure the correct operation is performed. Unfortunately there is no __req__ special-method, hence the behaviour you are seeing is expected. –  Bakuriu Jul 4 '13 at 13:18
    
See edit above - Numpy normally honors the __array_priority__ for arrays, but doesn't seem to do it for 'scalar' arrays. –  astrofrog Jul 4 '13 at 13:23
    
This isn't an __array_priority__ issue, it has to do with the order in which python makes calls to __op__ vs __rop__. –  Bi Rico Jul 4 '13 at 13:38
    
I do understand, but Numpy does allow the RHS __eq__ to take precedence over the LHS, as I've demonstrated above with arrays - the issue is that Numpy is just reverting to the default Python behavior for Numpy scalars. –  astrofrog Jul 4 '13 at 13:40
    
Take a look at my answer bellow, it's not numpy but python that gives RHS eq president in a == b when b is a subclass of a. Notice that your result above will not change if you set the array priority to 0. or -1000. –  Bi Rico Jul 4 '13 at 13:53

3 Answers 3

up vote 1 down vote accepted

This is somewhere between a bug and a wart. When you call a op b and b is a subclass of a python checks to see if b has a reflected version of op and calls that (__eq__ is the reflected version of itself), So for example this np.array(10) == a gives the expected result because SimpleArray is a subclass of ndarray. However because SimpleArray is not an instance of np.int64 it doesn't work in the example you've provided. This might actually be kind of easy to fix on the numpy end of things so you might consider bringing it up on the mailing list.

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If other is of a different type, operator methods such as __eq__ need a second reflected function that knows how to handle a comparison in the opposite direction. Since __eq__ doesn't have a reverse, rather use __cmp__ and its reverse, __rcmp__.

See also http://docs.python.org/2/reference/datamodel.html#basic-customization

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__eq__ is it's own reflected function. –  Bi Rico Jul 4 '13 at 13:27
    
AFAIK it uses the __eq__ of whatever class is on the left. Hence true in the sense that you don't ever use a reverse, but false in the sense that some other __eq__ will be used instead. –  Leeward Jul 4 '13 at 13:29
    
__rcmp__ has been deprecated, so I can't use that. As I indicated in my edited question, Numpy supports an __array_priority__ attribute which sets whether the LHS or RHS gets called, and it does work for arrays, just not Numpy scalars. –  astrofrog Jul 4 '13 at 13:37
    
@astrofrog In that case you might want to file a bug report as well as find a workaround. For now just make sure you put the one whose __eq__ you want Python to use on the LHS. It's bad and you shouldn't have to, but bugs do exist. –  Leeward Jul 4 '13 at 13:42
    
It's not true that "you don't ever use a reverse", for example python calls b.__eq__(a) on a == b when a.__eq__(b) returns NotImplemented or b is a subclass of a. –  Bi Rico Jul 4 '13 at 13:45

By default, an equality expression a == b calls A.__eq__() where A is the class of variable a. This means the type of the left operand dictates which equality function is called. The only way to ensure the equality function you wrote is called, is to ensure your variable is always the left operand. However, in case the left operand has no function for equality, python tries calling B.__eq__()

share|improve this answer
    
As I indicated in my edited question, Numpy supports an __array_priority__ attribute which sets whether the LHS or RHS gets called, and it does work for arrays, just not Numpy scalars. –  astrofrog Jul 4 '13 at 13:36
    
Well, it's called array priority for a reason. :P –  John Doe Jul 4 '13 at 13:45

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