# apply a boolean operator among all elements of an array

Is there a practical way to apply the same boolean operator (say `or`) to all elements of an array without using a `for` loop ?

I will clarify what I need with an example:

``````import numpy as np
a=np.array([[1,0,0],[1,0,0],[0,0,1]])
b=a[0] | a[1] | a[2]
print b
``````

What is the synthetic way to apply the `or` boolean operator to all arrays of a matrix as I have done above?

• what do mean by `synthetic`? Jul 17 '20 at 23:24
• I basically mean without a `for` loop. I wonder whether there is a numpy function or something similar to just apply the `or` operator to all elements like I have just done manually. Jul 17 '20 at 23:27
• `|` is only logical OR for boolean arrays. Your `b=a[0] | a[1] | a[2]` is doing bitwise ORs. Jul 17 '20 at 23:35

The usual way to do this would be to apply `numpy.any` along an axis:

``````numpy.any(a, axis=0)
``````

That said, there is also a way to do this through the operator more directly. NumPy ufuncs have a `reduce` method that can be used to apply them along an axis of an array, or across all elements of an array. Using `numpy.logical_or.reduce`, we can express this as

``````numpy.logical_or.reduce(a, axis=0)
``````

This doesn't come up much, because most ufuncs you'd want to call `reduce` on already have equivalent helper functions defined. `add` has `sum`, `multiply` has `prod`, `logical_and` has `all`, `logical_or` has `any`, `maximum` has `amax`, and `minimum` has `amin`.

try either:

``````np.any(arr, axis=0)
``````

or

``````np.apply_along_axis(any, 0, arr)
``````

or if you want to use pandas for some reason,

``````df.any(axis=0)
``````

You can use `reduce` function for that:

``````from functools import reduce

a = np.array([[1,0,0],[1,0,0],[0,0,1]])
reduce(np.bitwise_or, a)
``````
• It is more efficient to use `ufunc.reduce`, i.e. `np.logical_or.reduce(a)` or `np.any(a,axis=0)` Jul 17 '20 at 23:40

NOTE: I'm not a numby expert, so I am making an assumption below;

In your example, b is comparing the arrays with each other, so it is asking:

"Are there any items in a[0] OR any items in a1 OR any items in a2" is that your goal? in which case, you could use builtin any()

for example (changed numby to a simple list of lists):

``````a=[[1,0,0],[1,0,0],[0,0,1]]
b=any(a)
print b
``````

b will be True

if however, you want to know if any element in it is true, so, for example, you want to know if a[0][0] OR a0 | a0 | a[1][0] | ...

you could use the builtin map command, so something like:

``````a=[[1,0,0],[1,0,0],[0,0,1]]
b=any(map(any, a)
print b
``````

b will still be True

Note: below is based on looking at the NumPy docs, not actual experience.

For NumPy, you could also use the NumPy any() option something like

``````a=np.array([[1,0,0],[1,0,0],[0,0,1]])
b=a.any()
print b
``````

or, if your doing all numbers anyway, you could sum the array and see if it != 0