# Efficiently check if numpy ndarray values are strictly increasing

I'm having a numpy ndarray where I would like to check if each row vector is monotonically increasing.

Example:

``````a = np.asarray([[1,2,3],[1,5,7],[4,3,6]])
monotonically_increasing(a)
``````

Expected return:

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

I'm not entirely sure how to efficiently do this, since the matrices are expected to be quite large (~1000x1000), and was hoping for some help.

``````>>> import numpy as np
>>> a = np.asarray([[1,2,3],[1,5,7],[4,3,6]])
``````

Find the difference between each element. `np.diff` has an argument that lets you specify the axis to perform the diff

``````>>> np.diff(a)
array([[ 1,  1],
[ 4,  2],
[-1,  3]])
``````

Check to see if each difference is greater than 0.

``````>>> np.diff(a) > 0
array([[ True,  True],
[ True,  True],
[False,  True]], dtype=bool)
``````

Check to see if all the differences are > 0

``````>>> np.all(np.diff(a) > 0)
False
>>>
``````

As suggested by @Jaime - check that each element is greater than the element to its left:

``````np.all(a[:, 1:] >= a[:, :-1], axis=1)
``````

Which appears to be about twice as fast/efficient as my diff solution.

• It's probably faster to compare each item to the adjacent one directly, rather than comparing if their difference is greater than zero: `np.all(a[:, 1:] >= a[:, :-1], axis=1)` Jun 9, 2015 at 15:51
• Concur. Worst case yours makes one pass and mine makes one pass for the diff and a shorter pass for `np.all`.
– wwii
Jun 9, 2015 at 17:38
• @Jaime this is indeed the case, for 10**6 elements, `np.all(x[:-1] > x[1:])` takes 600us, while `np.all(np.diff(x) < 0)` takes 2.03ms, about 3 times longer. Oct 7, 2019 at 7:53
• What if for strictly decreasing ? Jan 21, 2021 at 13:52
• @igorkf - Python - How to check list monotonicity - too bad I didn't search and find that when I answered. Others searching with variations of `python numpy strictly decreasing site:stackoverflow.com` - this one too Make a numpy array monotonic without a Python loop
– wwii
Jan 21, 2021 at 14:47

You can make a function like this:

``````def monotonically_increasing(l):
return all(x < y for x, y in zip(l, l[1:]))
``````

and then check for it, sublist for sublist, so

``````[monotonically_increasing(sublist) for sublist in a]
``````
• the question is about numpy arrays, which may be GBs in size; looping over them is extremely slow; this answer could be improved by benchmarking various approaches with various array sizes Feb 28, 2019 at 21:07