# options for applying conditions to numpy arrays

I want to apply conditions to a numpy array and I feel like there is a better way out there. As a toy example say I want to know where the elements are equal to 2 or 3.

``````import numpy as np
a = np.arange(5)
``````

one way would be to construct my condition piece by piece with numpy functions like so

``````result = np.logical_or(a == 2, a == 3)
``````

One can see how this could get unwieldy with more complicated conditions though. Another option would be to use list comprehensions

``````result = np.array([x for x in a if x == 2 or x==3])
``````

which is nice because now all my conditional logic can live together in one place but feels a little clunky because of the conversion to and from a list. It also doesn't work too well for multidimensional arrays.

Is there a better alternative that I am missing?

-

It's useful to point out that in the first example, you have a logical array, not the array `[2, 3]` (like you get in the second example). To recover the result from the second answer, you'd need

``````result = a[result]
``````

However, in this case, since you're using boolean masks (`True`/`False` approximately equivalent to `1`/`0`), you can actually use bitwise or to do the same thing as `logical_or`:

``````result = a[(a==2) | (a==3)]
``````

A word of caution here -- Make sure you use parenthesis. Otherwise, operator precedence can be a bit nasty in these expressions (`|` binds tighter than `==`).

-
(a==2)|(a==3) is exactly what I was looking for. Thanks – Hammer May 1 '13 at 17:51
@Hammer -- Yeah. Normally, we expect mathematical operations to bind tighter than equality: `if foo + 2 == 3: ...`. The fact that `numpy` overrides equality to return arrays (in really useful ways) make it actually desirable to have `==` bind tighter in some circumstances can really bend your mind a bit. – mgilson May 1 '13 at 17:54

You can & together views to get arbitrarily complex results:

``````>>> A = np.random.randint(0, 100, 25).reshape(5,5)
>>> A
array([[98,  4, 46, 40, 24],
[93, 75, 36, 19, 63],
[23, 10, 62, 14, 59],
[99, 24, 57, 78, 74],
[ 1, 83, 52, 54, 27]])
>>> A>10
array([[ True, False,  True,  True,  True],
[ True,  True,  True,  True,  True],
[ True, False,  True,  True,  True],
[ True,  True,  True,  True,  True],
[False,  True,  True,  True,  True]], dtype=bool)
>>> (A>10) & (A<20)
array([[False, False, False, False, False],
[False, False, False,  True, False],
[False, False, False,  True, False],
[False, False, False, False, False],
[False, False, False, False, False]], dtype=bool)
>>> (A==19) | (A==14)  # same output
``````

You can also write a function and use map to call the function on each element. Inside the function have as many tests as you wish:

``````>>> def test(ele):
...    return ele==2 or ele==3
...
>>> map(test,np.arange(5))
[False, False, True, True, False]
``````

You can use numpy.vectorize:

``````>>> def test(x):
...    return x>10 and x<20
...
>>> v=np.vectorize(test)
>>> v(A)
array([[False, False, False, False, False],
[False, False, False,  True, False],
[False, False, False,  True, False],
[False, False, False, False, False],
[False, False, False, False, False]], dtype=bool)
``````
-

you can remove elements form `numpy array` with `delete`

``````np.delete(a,[0,1,4])
``````

or if you want to keep with the complement,

``````np.delete(a,np.delete(a,[2,3]))
``````
-