# Python Numpy: referencing columns

Why is array1[:][1] != array1[:,1]

Example

``````array1 = np.array([[1, 2, 3], [4, 5, 6], [7, 8, 9]])
array1[1] ## Output: array([4,5,6]) as expected
array1[:,1] ## Output: array([2, 5, 8]) as expected
array1[:][1] ## Output: array([4,5,6]) which isn't what I expected!
``````

When using double bracket referencing is the array1[:] component executed first returning the full 2d array? Therefore array1[:][1] == array1[1]

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with `array1[:]` you are accessing copy of array1!! that's why both are same.. . –  namit Feb 2 '13 at 5:40

NumPy will interpret `a[:]` as a copy of the array instead of the set of 'rows'. Basic slicing is only analogous to successive slicing until `:` entries appear. From the docs (section 1.4 - Indexes):
Basic slicing with more than one non-: entry in the slicing tuple, acts like repeated application of slicing using a single non-: entry, where the non-: entries are successively taken (with all other non-: entries replaced by :). Thus, `x[ind1,...,ind2,:]` acts like `x[ind1][...,ind2,:]` under basic slicing.
There is an implied complication when `:` entries get handled.