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For large arrays, what is the fastest way of checking whether multiple conditions are both True or both False? Does the choice of operator make a difference? Why or why not? Here is a dummy example:

import numpy
a = numpy.ones((1000000,))
b = numpy.zeros((1000000,))

#c = (a == 1) * (b == 0)
#c = (a == 1) & (b == 0)
# other faster method of getting c?

notice edit...

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Notice edit, just to be clear that the condition is not always the same for both arrays... –  Benjamin Sep 12 '11 at 2:47
Does this optimization matter? Have you profiled your code and found this section to be too slow? –  Daenyth Sep 12 '11 at 3:08
@Daenyth: Just curiosity. –  Benjamin Sep 12 '11 at 10:48

2 Answers 2

up vote 0 down vote accepted

I'm not so sure this will matter for speed, but you can save memory by using in-place operations in this case.

Try something like:

c = a == 1
c &= b == 0 # (Or *=)

This should require one fewer temporary copies of the array and use less memory.

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Good point. Is &= faster than *= or equivalent? –  Benjamin Sep 12 '11 at 2:43
As far as I know, there shouldn't be a significant difference in any normal circumstance. My quick-and-dirty profiling seems to agree. –  Joe Kington Sep 12 '11 at 3:09

You might take advantage of Short-circuiting of operators. And this Short-circuiting is different for different situations of different operators.

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In the case of numpy arrays, this doesn't help. The result is another array of the same length. There's nothing to short-circuit. –  Joe Kington Sep 12 '11 at 14:26

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