# How to return an array of at least 4D: efficient method to simulate numpy.atleast_4d

numpy provides three handy routines to turn an array into at least a 1D, 2D, or 3D array, e.g. through numpy.atleast_3d

I need the equivalent for one more dimension: `atleast_4d`. I can think of various ways using nested if statements but I was wondering whether there is a more efficient and faster method of returning the array in question. In you answer, I would be interested to see an estimate (O(n)) of the speed of execution if you can.

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Where should the 4th dimension go when it is added? As another trailing dimension, or as another leading dimension? – talonmies Apr 11 '13 at 5:24
@talonmies Trailing is preferred – DrSAR Apr 11 '13 at 5:24
The execution speed is O(1) whatever the method, not O(n). – seberg Apr 11 '13 at 8:50

The `np.array` method has an optional `ndmin` keyword argument that:

Specifies the minimum number of dimensions that the resulting array should have. Ones will be pre-pended to the shape as needed to meet this requirement.

If you also set `copy=False` you should get close to what you are after.

As a do-it-yourself alternative, if you want extra dimensions trailing rather than leading:

``````arr.shape += (1,) * (4 - arr.ndim)
``````
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Your do-it-yourself approach is pretty. It took me a while to decode though. For the record: `(1,) * (4 - arr.ndim)` creates a tuple of ones. The tuple is either empty if `arr.ndim` is larger than 4 or of the appropriate length. Those dimension just get tagged on to the array. Beautiful. – DrSAR Apr 11 '13 at 21:54

Why couldn't it just be something as simple as this:

``````def atleast_4d(x):
if x.ndim < 4:
y = expand_dims(np.atleast_3d(x), axis=3)
else
y = x

return y
``````

ie. if the number of dimensions is less than four, call `atleast_3d` and append an extra dimension on the end, otherwise just return the array unchanged.

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