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For example I would like to create a mask that masks elements with value between 40 and 60:

foo = np.asanyarray(range(100))
mask = (foo < 40).__or__(foo > 60)

Which just looks ugly, I can't write:

(foo < 40) or (foo > 60)

because I end up with:

  ValueError Traceback (most recent call last)
  ----> 1 (foo < 40) or (foo > 60)
  ValueError: The truth value of an array with more than one element is ambiguous. Use a.any() or a.all()

Is there a canonical way of doing element wise boolean operations on numpy arrays that with good looking code?

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2 Answers 2

up vote 28 down vote accepted

Have you tried this?

mask = (foo < 40) | (foo > 60)

Note: the __or__ method in an object overloads the bitwise or operator (|), not the boolean or operator.

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Oh well that really was stupid of me. Of course it works :) – jb. Dec 25 '11 at 23:11
it doesn't work: TypeError: ufunc 'bitwise_or' not supported for the input types, and the inputs could not be safely coerced to any supported types according to the casting rule ''safe'' – Mehdi Jul 24 at 12:41

If you have comparisons within only booleans, as in your example, you can use the bitwise OR operator | as suggested by Jcollado. But beware, this can give you strange results if you ever use non-booleans, such as mask = (foo < 40) | override. Only as long as override guaranteed to be either False, True, 1, or 0, are you fine.

More general is the use of numpy's comparison set operators, np.any and np.all. This snippet returns all values between 35 and 45 which are less than 40 or not a multiple of 3:

import numpy as np
foo = np.arange(35, 46)
mask = np.any([(foo < 40), (foo % 3)], axis=0)
print foo[mask]
OUTPUT: array([35, 36, 37, 38, 39, 40, 41, 43, 44])

Not as nice as with |, but nicer than the code in your question.

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It is a vaid point! – jb. Jun 28 '12 at 15:36
It's a good idea to use np.any and np.all specifically. – htredleaf Oct 26 at 7:17

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