# numpy: modifyng a transposed array don't work as expected

I have, from a more complex program, this code:

``````import numpy as np

ph=np.arange(6).reshape([2,3])
T=np.transpose(ph)
print 'T:\n',T
print 'ph:\n',ph              # printing arrays before for cycle
for i in range(0,len(T)):
T[i]=2*T[i]
print 'ph:\n', ph             # printing arrays after for cycle
print 'T:\n',T
``````

i expect to have in output T and

``````ph:
[[0 1 2]
[3 4 5]]
``````

``````ph:
[[ 0  2  4]
[ 6  8 10]]
T:
[[ 0  6]
[ 2  8]
[ 4 10]]
``````

So when i multiply *2 every line of T inside the for cicle, I am doing the same to ph. Why?

-

You can find the reason in the docstring of `np.transpose`:

`````` Returns
------- p : ndarray
`a` with its axes permuted.  A view is returned whenever
possible.
``````

Solution is to use `T = ph.T.copy()` if you don't want the view, but a copy.

-
This section of the numpy tutorial goes over the difference between views and copies. – Bi Rico Oct 23 '13 at 19:41

`transpose` returns a view to the original array. To solve your problem, make a copy, like:

``````T=np.transpose(ph).copy()
``````
-