# why does slicing an ndarray reshape it?

I have a nx1 array, a:

``````array([[0],
[0],
[0]])
``````

when I slice it with

``````a[:-1,0]
``````

it becomes:

``````a([0,0])
``````

and I'm not able to use it in plot (now the dimensions are wrong, even though the length is correct). I've tried

``````a[:-1,0].T
``````

and

``````transpose(a[:-1,0])
``````

to no avail.

How do I slice without changing the shape? (I want to keep it in column form)

-

## 1 Answer

Say `a = numpy.zeros((3,1))` , then

``````    b = a[:-1,:]
``````

will give you a column vector.

``````    array([[ 0.],
[ 0.]])
``````

When slicing a numpy array, you have to distinguish between adressing the content of a column, e.g. `a[:,0]`, and adressing the column itself, e.g. `a[:,0:1]` or - in this case - `a[:,:]`.

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`a[:-1,:1] == a[:-1,0:1]` would work to pull out the 0th column in an array with more than one, as well. [Here, I think even `a[:-1]` would suffice.] – DSM Jan 27 '13 at 16:25
thanks for the additional comment, DSM – Keegan Keplinger Jan 27 '13 at 16:40
For 2D arrays there is also the option of using `matrix`, which retains its 2D shape even when accessing a single column or row. It does return a single scalar, not an array of shape `(1, 1)`, if you access a single element. – Jaime Jan 27 '13 at 18:04