# What is the fastest method to check if two conditions are True?

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...

-
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

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.

-
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.

-
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