# Python 2d array boolean reduction

I've got a 2D array comprised of boolean values (True,False). I'd like to consolidate the array to a 1D based on a logical function of the contents.

e.g. Input:

``````[[True, True, False],
[False, False, False],
[True, True, True]]
``````

Output (logical AND):

``````[False,
False,
True]
``````

How would this be done without a loop ?

• Why without a loop? Loops are made to iterate over variable-length iterables, so if you do it without a loop you would lose the "variable-length" benefit (and have to hardcode the indices). Or are you just after an approach that hides the loop from you? – MSeifert Oct 16 at 5:32

I'm assuming you want to apply logical ANDs to the rows. You can apply `numpy.all`.

``````>>> import numpy as np
>>> a = np.array([[True, True, False], [False, False, False], [True, True, True]])
>>> a
array([[ True,  True, False],
[False, False, False],
[ True,  True,  True]])
>>>
>>> np.all(a, axis=1)
array([False, False,  True])
``````

For a solution without `numpy`, you can use `operator.and_` and `functools.reduce`.

``````>>> from operator import and_
>>> from functools import reduce
>>>
>>> lst = [[True, True, False], [False, False, False], [True, True, True]]
>>> [reduce(and_, sub) for sub in lst]
[False, False, True]
``````

edit: actually, `reduce` is a bit redundant in this particular case.

``````>>> [all(sub) for sub in lst]
[False, False, True]
``````

does the job just as well.

You can use Python's built-in `all` method with a list-comprehension:

``````[all(x) for x in my_list]
``````

If that's still too loopy for you, combine it with `map`:

``````map(all, my_list)
``````

Note that `map` doesn't return a list in Python 3. If you want a list as your result, you can call `list(map(all, my_list))` instead.

• careful with `map` in python 3 though, as it doesn't create a list (but is even better when used within a loop) – Jean-François Fabre Oct 15 at 19:57

You can do this without NumPy too. Here is one solution using list comprehension. Explanation: It will loop over sub-lists and even if one of the items in each sub-list is `False`, it outputs `False` else `True`.

``````inp = [[True, True, False],[False, False, False],[True, True, True]]
out = [False if False in i else True for i in inp]
print (out)

# [False, False, True]
``````

Alternative (less verbose) as suggested by Jean below:

``````out = [False not in i for i in inp]
``````
• This is clever but not exactly equivalent to `x1 and x2 and ... xn` for each sublist when you can have other falsy values in the sublists (such as `0`). Of course, OP explicitly said boolean values, so this is just a sidenote. – timgeb Oct 15 at 20:08
• Well the OP said it’s only True or False so my sokution addressed that – Bazingaa Oct 15 at 20:40

You can do this with with the `numpy.all` function:

``````>>> import numpy as np
>>> arr = np.array([[True, True, False],
... [False, False, False],
... [True, True, True]]
... )
>>> np.all(arr, axis=1)
array([False, False,  True])
``````

Here thus the i-th element is `True` if all elements of the i-th row are `True`, and `False` otherwise. Note that the list should be rectangular (all sublists should contain the same number of booleans).

In "pure" Python, you can use the `all` function as well, like:

``````>>> data = [[True, True, False], [False, False, False], [True, True, True]]
>>> list(map(all, data))
[False, False, True]
``````

This approach will work as well if the "matrix" is not rectangular. Note that for an empty sublist, this will return `True`, since all elements in an empty sublist are `True`.

You can also do this with `map` and `reduce`:

``````from functools import reduce

l = [[True, True, False],
[False, False, False],
[True, True, True]]

final = list(map(lambda x: reduce(lambda a, b: a and b, x), l))
print(final)
# [False, False, True]
``````

The benefit here is that you can change the `reduce` function to something else (say, an OR or something more adventurous).