Suppose there is an array

```
(1) x=np.array([[1,2],[1,2],[1,2]])
```

and a second array

```
(2) y=np.array([[1],[1,2],[1,2,3]])
```

The command `size(x)`

returns the total count of all elements along every axis. In this case `6`

. However, `size(y)`

returns `3`

. This must be because numpy interprets (2) in this case as three elements (the three subarrays) along one axis, although `shape(y)`

returns `(3, )`

. My question is now: how can I get numpy to interpret (2) as an array with three axes, so that `size(y)`

returns the total count of all atomic elemets, which is `6`

?

`x`

is a 2 by 3`ndarray`

of type 'int64', while`y`

is a 3-element`ndarray`

of type 'object', such that`x`

and`y`

are completely different. Numpy only supports matrices, not lists of lists (of arbitrary length). – Tim Sep 4 '12 at 10:53`y`

, or add padding. Arrays have to be square (matrix/tensor-like). – larsmans Sep 4 '12 at 10:56