# Check if numpy array has a normal shape

How do I check if a `numpy` array has a regular shape.

In the example below `x` is a `*2 by 3*` matrix. However `y` is not regular in the sense that it can't be represented as a proper matrix.

Given that I have a `numpy` array, is there a method (preferably in-built) that I can use to check that the `numpy` array is an actual matrix

``````In : import numpy as np

In : x = np.array([[1,2,3],[4,5,6]])

In : x.shape
Out: (2, 3)

In : y = np.array([[1,2,3],[4,5]])

In : y.shape
Out: (2,)
``````
• Hi @Divakar can you add your solution as an answer so that I can mark it as the correct one/ – piccolo Aug 30 at 14:21

Both are arrays and those are valid shapes. But, with normal, think you meant that each element has the same shape and length across it. For that, a better way would be to check for the datatype. For the variable length case, it would be `object`. So, we can check for that condition and call out accordingly. Hence, simply do -

``````def is_normal_arr(a): # a is input array to be tested
return a.dtype is not np.dtype('object')
``````

I think the .shape method is capable of checking it. If you input an array which can form a matrix it returns it's actual shape, `(2, 3)` in your case. If you input an incorrect matrix it returns something like `(2,)`, which says something's wrong with the second dimension, so it can't form a matrix.

• replace "correct/incorrect array" with "correct/incorrect matrix". All of them are correct arrays ;) – Grzegorz Skibinski Aug 30 at 11:06
• Yes, true. Thank you – Péter Leéh Aug 30 at 11:07

Here `y` is a one-dimensional array and the size of `y` is 2. `y` contains 2 `list` values. AND `x` is our actual matrix in a proper format.

check the dimensions by `y.ndim` AND `x.ndim`.