# NumPy/Python array

I created a NumPy array,

``````a = numpy.array([[1,2,3][4,5,6]])
``````

I want to make the array look like this `[[1,4],[2,5],[3,6]]` and also after I make change I want to return to the original structure.

Is there a NumPy command to run a function on all values, like `a[0] * 2`?

The result should be

``````[[2,8][2,5][3,6]
``````
-

You want to transpose the array (think matrices). Numpy arrays have a method for that:

``````a = np.array([[1,2,3],[4,5,6]])
b = a.T  # or a.transpose()
``````

But note that b is now a view of a; if you change b, a changes as well (this saves memory and time otherwise spent copying).

You can change the first column of b with

``````b[0] *= 2
``````

Which gives you the result you want, but a has also changed! If you don't want that, use

``````b = a.T.copy()
``````

If you do want to change a, note that you can also immediately change the values you want in a itself:

``````a[:, 0] *= 2
``````
-

You can use `zip` on the ndarray and pass it to `numpy.array`:

``````In [36]: a = np.array([[1,2,3], [4,5,6]])

In [37]: b = np.array(zip(*a))

In [38]: b
Out[38]:
array([[1, 4],
[2, 5],
[3, 6]])

In [39]: b*2
Out[39]:
array([[ 2,  8],
[ 4, 10],
[ 6, 12]])
``````

Use `numpy.column_stack` for a pure NumPy solution:

``````In [44]: b = np.column_stack(a)

In [45]: b
Out[45]:
array([[1, 4],
[2, 5],
[3, 6]])

In [46]: b*2
Out[46]:
array([[ 2,  8],
[ 4, 10],
[ 6, 12]])
``````
-