# Why is shape empty?

This code creates a 10-element array.

1. Why is size 1? Shouldn't it be 0?
2. why is shape empty? Shouldn't it be 1 dimension?
``````    In [14]: s = np.array(10)

In [15]: s
Out[15]: array(10)

In [16]: s.size
Out[16]: 1

In [17]: s.shape
Out[17]: ()
``````
• No this makes a single element array. `arange(10)` and `ones(10)` make 10 element arrays. Feb 2, 2019 at 20:04
• If it was a 10 element array, why would its size be 0? Feb 2, 2019 at 20:08
• @hpaulj Is a single element array's shape empty ()? Feb 2, 2019 at 20:26
• `numpy` arrays can be 0d, 1d, 2d and on up to 32. The `shape` is a tuple, with one value per dimension. `(10,)` is a 1 element tuple, `()` is a 0 element tuple. `np.array(10)` is a 0d array, `np.array([10])` is 1d, `np.array([[10]])` is 2d. Feb 2, 2019 at 21:15

If one calls `np.array()` on arbitrary object that is not iterable, numpy silently creates an empty array with no dimensions. However, its size is 1.
Docs of numpy size tell us that x.size is equivalent to calling `np.prod(x.shape)`. And docs for np.prod state that calling np.prod on empty sequence gives us 1. Probably it is so due to the fact that 1 is a neutral element for multiplication, meaning the following.
Say you have an array `[4, 2, 3]`. Its elements product is `24`. Now you split it in two arrays: `[4]` and `[2, 3]`. You have a nice property: `np.prod([4, 2, 3]) == np.prod([4]) * np.prod([2, 3])`. But if one of the arrays is empty, you want this property still hold: `np.prod([4, 2, 3]) == np.prod([]) * np.prod([4, 2, 3])`.