# How to perform element wise boolean operations on numpy arrays

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?

-

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)
Not as nice as with `|`, but nicer than the code in your question.
It's a good idea to use `np.any` and `np.all` specifically. – htredleaf Oct 26 at 7:17