# numpy slicing that would always return an array

Given a `numpy` array and a `__getitem__`-type index, is there an idiomatic way to get the corresponding slice of the array, that would always return an array and never a scalar?

Examples of valid indices include: an `int`, a `slice`, an ellipsis or a tuple of the above.

Say I have an array like this:

``````a = np.array([[1,2],[3,4]])
``````

I am looking for an operation that would be equivalent to `a[whatever]` in all cases except when `a[whatever]` returns a scalar (for example, `a[1,1]`). In those cases I'd like this alternative operation to return a single-element array instead.

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It might be worth clarifying that you want a 1D vector returned in place of a scalar, which I think is implied. (since a single-element array can have any number of dimensions). I have, in the past required that any slice of a 2D table always return a 2D table, in which case I used `numpy.atleast_2d` inside a `table` class that I wrote myself that mirrored many of `array` methods. It would probably break all kinds of stuff if you were able to get `atleast_*D` behavior out of a numpy array. –  Paul May 5 '11 at 18:53
One possible use I can think of is when you always want the result to be a view, so that modifying it changes the original. If that is what is desired, `atleast_Nd` isn't good enough - probably need to convert the `int` indices to `slice`s. –  kwatford May 5 '11 at 19:03

If you just want to return a single-element array in cases where a scalar would otherwise be returned, why not just use `numpy.atleast_1d` on the result of the slice?

E.g.:

``````import numpy as np
x = np.arange(100).reshape(10,10)
print x[0,0]
print np.atleast_1d(x[0,0])
print np.atleast_1d(x[:,:3])
``````
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Thanks for this. Is there a neat way to preserve the type of the array (I am using a subclass of `ndarray` and would like the result to be of the same type as `x`). –  NPE May 6 '11 at 12:52
I should also note that I don't always know the type of `x` a priori. –  NPE May 6 '11 at 13:12
@aix - Unfortunately, there's no `np.asanyarray` equivalent for `np.atleast_1d`, as far as I know. @Sven's answer below is probably your best bet if you need to always preserve the type of the array. As it will always return a slice, the type should be preserved. –  Joe Kington May 6 '11 at 16:44

Here is a slightly more complex version that always returns a view into the original array (of course provided that you don't do any advanced indexing; this should be guaranteed by your specification of valid indices):

``````def get(a, item):
if not isinstance(item, tuple):
item = (item,)
if len(item) == a.ndim and all(isinstance(x, int) for x in item):
return a[item + (None,)]
else:
return a[item]
``````
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Apart from `np.array(a[whatever])`? Don't think there is a simpler/more idiomatic way than this.

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Actually that doesn't do what the OP wants (e.g. have a look at the shape of the resulting array when the result of the slice is a scalar.) –  Joe Kington May 5 '11 at 18:31