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I have seen 2D arrays indexed in two different ways in Numpy. Assuming I have an array A, I can type A[0:3, 2:5] or A[0:3][:,2:5]. Either way, I get the same slice of A.

I am curious why one would choose one over the other. Are there speed differences? Or is one simply more Pythonic than the other?

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up vote 2 down vote accepted

The first form is more pythonic and desireable, since it performs one slice operation. The second form actually slices twice.

In the first form, A[0:3] returns a slice that is smaller than A, then the second slice operation slices the result from the first slice one.

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Interesting. I had a similar hunch, but was thrown because Numpy's website suggests the second method. NumPy for Matlab Users – nicktruesdale Oct 28 '12 at 3:52
  • When you do A[0:3,2:5], you're in fact doing


    In other terms, you're calling the __getitem__ method only once

  • When you do A[0:3][:,2:5], you're in fact doing

    A.__getitem__(slice(0,3)).__getitem__((slice(0,None), slice(2,5)))

    In other terms, you're (i) creating a temporary array A[0:3] and (ii) taking a slice on this temporary array. This is usually less efficient than the first method (direct slicing) and therefore is not recommended. [The link you refer to hasn't been updated in a while, it's likely a bug...]

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I think a good reason to use the A[i,j] style over the A[i][j] style is that it allows easy addressing of an entire row or column when slicing.

For example, A[:,0] will return all values in column 0, whereas A[:][0] will give you an index out of range error.

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