I wanted to create a 3D NumPy array with sequential numbers like so:

```
[[[11 27 43]
[12 28 44]
[13 29 45]
[14 30 46]]
[[15 31 47]
[16 32 48]
[17 33 49]
[18 34 50]]
[[19 35 51]
[20 36 52]
[21 37 53]
[22 38 54]]
[[23 39 55]
[24 40 56]
[25 41 57]
[26 42 58]]]
```

I did this: `A = np.arange(11, 59).reshape((4, 4, 3))`

but I got this instead:

```
[[[11 12 13]
[14 15 16]
[17 18 19]
[20 21 22]]
[[23 24 25]
[26 27 28]
[29 30 31]
[32 33 34]]
[[35 36 37]
[38 39 40]
[41 42 43]
[44 45 46]]
[[47 48 49]
[50 51 52]
[53 54 55]
[56 57 58]]]
```

So it's not the sequence that I wanted. I had done some additional steps to get the correct 3D array. First, I shaped the numbers into a 2D array: `A = np.arange(11, 59).reshape((-1, 4))`

to get this:

```
[[11 12 13 14]
[15 16 17 18]
[19 20 21 22]
[23 24 25 26]
[27 28 29 30]
[31 32 33 34]
[35 36 37 38]
[39 40 41 42]
[43 44 45 46]
[47 48 49 50]
[51 52 53 54]
[55 56 57 58]]
```

Then, I splitted and stacked the 2D array and got the 3D array that I wanted: `A = np.dstack(np.vsplit(A, 3))`

```
[[[11 27 43]
[12 28 44]
[13 29 45]
[14 30 46]]
[[15 31 47]
[16 32 48]
[17 33 49]
[18 34 50]]
[[19 35 51]
[20 36 52]
[21 37 53]
[22 38 54]]
[[23 39 55]
[24 40 56]
[25 41 57]
[26 42 58]]]
```

Now I'm wondering if there is a more elegant and straightforward way to achieve the same result. Thanks you.