In order to speed up the functions like np.std, np.sum etc along an axis of an n dimensional huge numpy array, it is recommended to apply along the last axis.
When I do, np.transpose to rotate the axis I want to operate, to the last axis. Is it really reshuffling the data in memory, or just changing the way the axis are addressed?
When i tried to measure the time using %timeit. it was doing this transpose in micro seconds, (much smaller than the time required to copy the (112x1024x1024) array i was having.
If it is not actually reordering the data in memory and only changing the addressing, will it still speed up the np.sum or np.std when applied to newly rotated last axis?
When i tried to measure it, i does seem to speed up. But i don't understand how.
It doesn't really seem to speed up with transpose. The fastest axis is last one when it is C-ordered, and first one when it is Fortran-ordered. So there is no point in transposing before applying np.sum or np.std. For my specific code, i solved the issue by giving order='FORTRAN' during the array creation. Which made the first axis fastest.
Thanks for all the answers.