Slicing works differently with NumPy arrays. The NumPy docs devote a lengthy page on the topic.

To highlight some points:

- NumPy slices can slice through multiple dimensions
- All arrays generated by NumPy basic slicing are always views of the original array, while slices of lists are shallow copies.
- You can assign a scalar into a NumPy slice.
- You can insert and delete items in a
`list`

by assigning a sequence of different length to a slice, while NumPy would raise an error.

Demo:

```
>>> a = np.arange(4, dtype=object).reshape((2,2))
>>> a
array([[0, 1],
[2, 3]], dtype=object)
>>> a[:,0] #multidimensional slicing
array([0, 2], dtype=object)
>>> b = a[:,0]
>>> b[:] = True #can assign scalar
>>> a #contents of a changed because b is a view to a
array([[True, 1],
[True, 3]], dtype=object)
```

objects. It would be interesting to see if someone can come up with a convincing example. (+1) – NPE Apr 11 '13 at 10:08`Fraction`

objects (or the like), without resorting to half a dozen nested`zip`

's and`map`

's. – Jaime Apr 11 '13 at 14:08