# Is there a way to use numpy slices to do cyclic permutation?

so I was wondering if there is some trickery with slices that would allow me to do cyclic permutations of an array. Basically what I want to do know if there are integers `i,j,k` such that:

``````> x = np.arange(10)
> print x[i:j:k]
[9,0,1,2,3,4,5,6,7,8]
``````

and

``````> x = np.arange(10)
> print x[i:j:k]
[1,2,3,4,5,6,7,8,9,0]
``````

I thought the natural syntax would be:

``````import numpy as np

x = np.arange(10)
print x[-1:0]
``````

but that returns an empty array (and it kinda makes sense...). Also tried other combinations of slices and nothing worked. I could do it in other ways, but this would be so neat and short... :P

Thanks.

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I don't understand. `x[i:j:k] == x[i:j:k]`. –  Steve Tjoa Dec 16 '11 at 0:31
He is looking for a slicing method to accomplish what numpy.roll does, in both directions. –  Benjamin Dec 16 '11 at 1:11
Sorry @SteveTjoa I've meant two different sets of i, j and k which would perform the two different permutations. I used the same letters just for economy. –  Rafael S. Calsaverini Dec 18 '11 at 0:57

You could use `numpy.roll()` or some stride tricks, but other than that I'm pretty sure the answer is no, there is no 3-integer slice that will return what you want.
`numpy.roll` creates a new array. I think the OP wants a O(1) time complexity solution. –  cyborg Dec 17 '11 at 8:37
I believe it is not possible because to do what you are asking for, numpy needs to make a copy of the array and slicing creates a view not a copy. As Benjamin has already mentioned, check out `numpy.roll`.