I have several arrays of data, collected into a single array. I want to loop over it, and do operations on each of the inner arrays. What would be the correct way to do this in Numpy

```
import numpy as np
a = np.arange(9)
a = a.reshape(3,3)
for val in np.nditer(a):
print(val)
```

and this gives:

```
0
1
2
3
4
5
6
7
8
```

But what I want is (something like):

```
array([0 1 2])
array([3 4 5])
array([6 7 8])
```

I have been looking at this page: https://docs.scipy.org/doc/numpy-1.15.0/reference/arrays.nditer.html but so far have not found the answer. I also know I can do it with a plain for loop but I am assuming there is a more correct way. Any help would be appreciated, thank you.

`nditer`

. It isn't the 'correct way' to iterate on arrays, at least not in Python code. You are encouraged to use it when writing C code, but not when writing Python code. As you discovered its default behavior is to iterate on all elements, not on a specific dimension. – hpaulj Mar 15 at 16:10