7

Say I have a numpy array:

>>> a 
array([0,1,2,3,4])

and I want to "rotate" it to get:

>>> b
array([4,0,1,2,3])

What is the best way?

I have been converting to a deque and back (see below) but is there a better way?

b = deque(a)
b.rotate(1)
b = np.array(b)
5
  • Just to be pedantic, a.shape is (n,) not (n,1)
    – askewchan
    Apr 15, 2013 at 2:48
  • @askewchan, I think that (n,) and (n,1) arrays look the same. Am I wrong?
    – Lee
    Apr 15, 2013 at 10:21
  • 1
    You're right that they look the same, and even behave the same in many circumstances, including the roll function, but be careful in some cases where ndim might matter (for a.shape is (n,), a.ndim is 1; but for shape (n,1), a.ndim is 2). As you can see from the question you linked to, an axis must be added to get from the 1d to 2d case.
    – askewchan
    Apr 15, 2013 at 12:51
  • Fair point. In hindsight, to be consistent with the question title, I should have shown a with an (n,1) shape as array([[0],[1],[2],[3],[4]]). However, each of the answers does work for both (n,) and (n,1) shapes.
    – Lee
    Apr 15, 2013 at 14:50
  • 1
    Yes, roll will be effectively be applied along the non-1 axis if there is only one, which is why my comment was nothing beyond pedantry :). But if your array is (n,m) (or higher) it will roll along all the axes (the flattened array) which might give unexpected results. The solution there is to just do np.roll(a, axis=0)
    – askewchan
    Apr 15, 2013 at 14:54

3 Answers 3

13

Just use the numpy.roll function:

a = np.array([0,1,2,3,4])
b = np.roll(a,1)
print(b)
>>> [4 0 1 2 3]

See also this question.

2
numpy.concatenate([a[-1:], a[:-1]])
>>> array([4, 0, 1, 2, 3])
1

Try this one

b = a[-1:]+a[:-1]
2
  • Thanks. Note that I am using numpy arrays so you have to convert to list first... b=list(a)[-1:]+list(a)[:-1]
    – Lee
    Apr 12, 2013 at 11:12
  • ... and I want a numpy array out so b=np.array(list(a)[-1:]+list(a)[:-1])
    – Lee
    Apr 12, 2013 at 11:14

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