# How do I select elements of an array given condition?

Suppose I have a numpy array `x = [5, 2, 3, 1, 4, 5]`, `y = ['f', 'o', 'o', 'b', 'a', 'r']`. I want to select the elements in `y` corresponding to elements in `x` that are greater than 1 and less than 5.

I tried

``````x = array([5, 2, 3, 1, 4, 5])
y = array(['f','o','o','b','a','r'])
output = y[x > 1 & x < 5] # desired output is ['o','o','a']
``````

but this doesn't work. How would I do this?

``````>>> y[(1 < x) & (x < 5)]
array(['o', 'o', 'a'],
dtype='|S1')
``````
• That is nice.. vecMask=1<x generates a vector mask like vecMask=(False, True, ...), which can be just combined with other vector masks. Each element is the condition for taking the elements of a source vector (True) or not (False). This can be used also with the full version numpy.extract(vecMask, vecSrc), or numpy.where(vecMask, vecSrc, vecSrc2). Commented Nov 3, 2016 at 17:08
• @JennyYueJin: It happens because of precedence. (Bitwise) `&` has higher precedence than `<` and `>`, which in turn have higher precedence than (logical) `and`. `x > 1 and x < 5` evaulates the inequalities first and then the logical conjunction; `x > 1 & x < 5` evaluates the bitwise conjunction of `1` and (the values in) `x`, then the inequalities. `(x > 1) & (x < 5)` forces the inequalities to evaluate first, so all of the operations occur in the intended order and the results are all well-defined. See docs here. Commented Nov 16, 2017 at 17:58
• @ru111 It works on Python 3.6 too (there is no reason for it to stop working).
– jfs
Commented Dec 7, 2017 at 20:13
• I get "ValueError: The truth value of an array with more than one element is ambiguous. Use a.any() or a.all()" Commented Dec 7, 2017 at 20:15
• @ru111 you should write `(0 < x) & (x < 10)` (as shown in the answer) instead of `0 < x < 10` which doesn't work for numpy arrays on any Python version.
– jfs
Commented Dec 8, 2017 at 14:17

IMO OP does not actually want `np.bitwise_and()` (aka `&`) but actually wants `np.logical_and()` because they are comparing logical values such as `True` and `False` - see this SO post on logical vs. bitwise to see the difference.

``````>>> x = array([5, 2, 3, 1, 4, 5])
>>> y = array(['f','o','o','b','a','r'])
>>> output = y[np.logical_and(x > 1, x < 5)] # desired output is ['o','o','a']
>>> output
array(['o', 'o', 'a'],
dtype='|S1')
``````

And equivalent way to do this is with `np.all()` by setting the `axis` argument appropriately.

``````>>> output = y[np.all([x > 1, x < 5], axis=0)] # desired output is ['o','o','a']
>>> output
array(['o', 'o', 'a'],
dtype='|S1')
``````

by the numbers:

``````>>> %timeit (a < b) & (b < c)
The slowest run took 32.97 times longer than the fastest. This could mean that an intermediate result is being cached.
100000 loops, best of 3: 1.15 µs per loop

>>> %timeit np.logical_and(a < b, b < c)
The slowest run took 32.59 times longer than the fastest. This could mean that an intermediate result is being cached.
1000000 loops, best of 3: 1.17 µs per loop

>>> %timeit np.all([a < b, b < c], 0)
The slowest run took 67.47 times longer than the fastest. This could mean that an intermediate result is being cached.
100000 loops, best of 3: 5.06 µs per loop
``````

so using `np.all()` is slower, but `&` and `logical_and` are about the same.

• You need to be a little careful about how you speak about what's evaluated. For example, in `output = y[np.logical_and(x > 1, x < 5)]`, `x < 5` is evaluated (possibly creating an enormous array), even though it's the second argument, because that evaluation happens outside of the function. IOW, `logical_and` gets passed two already-evaluated arguments. This is different from the usual case of `a and b`, in which `b` isn't evaluated if `a` is truelike.
– DSM
Commented Sep 5, 2013 at 19:29
• there is no difference between bitwise_and() and logical_and() for boolean arrays
– jfs
Commented Apr 13, 2014 at 20:07
• I've been searching ages for the 'or' alternative and this reply gave me some much needed relief! Thank you so much. (np.logical_or), OBVIOUSLY... Commented Nov 26, 2020 at 18:12
• @J.Massey a pipe `|` (aka `np.bitwise_or`) might also work, eg: `(a < b) | (a > c)` Commented Dec 16, 2021 at 17:16

If one wants to get the corresponding indices (rather than the actual values of array), the following code will do:

For satisfying multiple (all) conditions:

``````select_indices = np.where( np.logical_and( x > 1, x < 5) )[0] #   1 < x <5
``````

For satisfying multiple (or) conditions:

``````select_indices = np.where( np.logical_or( x < 1, x > 5 ) )[0] # x <1 or x >5
``````
• Note that numpy.where will not just return an array of the indices, but will instead return a tuple (the output of condition.nonzero()) containing arrays - in this case, `(the array of indices you want,)`, so you'll need `select_indices = np.where(...)[0]` to get the result you want and expect. Commented Nov 16, 2017 at 18:11

I like to use `np.vectorize` for such tasks. Consider the following:

``````>>> # Arrays
>>> x = np.array([5, 2, 3, 1, 4, 5])
>>> y = np.array(['f','o','o','b','a','r'])

>>> # Function containing the constraints
>>> func = np.vectorize(lambda t: t>1 and t<5)

>>> # Call function on x
>>> y[func(x)]
>>> array(['o', 'o', 'a'], dtype='<U1')
``````

The advantage is you can add many more types of constraints in the vectorized function.

Hope it helps.

• This is not a good way to do indexing in NumPy (it will be very slow). Commented Sep 21, 2019 at 14:18

Actually I would do it this way:

L1 is the index list of elements satisfying condition 1;(maybe you can use `somelist.index(condition1)` or `np.where(condition1)` to get L1.)

Similarly, you get L2, a list of elements satisfying condition 2;

Then you find intersection using `intersect(L1,L2)`.

You can also find intersection of multiple lists if you get multiple conditions to satisfy.

Then you can apply index in any other array, for example, x.

For 2D arrays, you can do this. Create a 2D mask using the condition. Typecast the condition mask to int or float, depending on the array, and multiply it with the original array.

``````In [8]: arr
Out[8]:
array([[ 1.,  2.,  3.,  4.,  5.],
[ 6.,  7.,  8.,  9., 10.]])

In [9]: arr*(arr % 2 == 0).astype(np.int)
Out[9]:
array([[ 0.,  2.,  0.,  4.,  0.],
[ 6.,  0.,  8.,  0., 10.]])
``````