My starting point is a pandas data frame which I convert into a numpy array:

```
> df = pd.DataFrame({"a":[1,2,3,4],"b":[4,5,6,7],"c":[7,8,9,10]})
> arr = df.as_matrix()
```

The array is now 2-dimensional of shape (4,3):

```
> arr
array([[ 1, 4, 7],
[ 2, 5, 8],
[ 3, 6, 9],
[ 4, 7, 10]])
```

What I would like to do is to convert `arr`

into its 4-dimensional and (4,3,1,1) shaped equivalent by effectively mapping every singular element like f.x. `5`

onto `[[5]]`

.

The new `arr`

would be:

```
array([[ [[1]], [[4]], [[7]] ],
[ [[2]], [[5]], [[8]] ],
[ [[3]], [[6]], [[9]] ],
[ [[4]], [[7]], [[10]] ]])
```

How would I do that elegantly and fast?