# Collapse nested array of arrays

I want to take an array with shape (N,), and dtype=object, of arrays that all have the same shape, shape, and create an array with shape == (N,) + shape. I was wondering if anyone knew the best way to do this. Here's an example.

import numpy as np
array = np.empty(4, dtype=object)
array[:] = [np.ones([3, 2])]
array = np.array(array.tolist())
print array.dtype
# float64
print array.shape
# (4, 3, 2)
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Was going to suggest concatenate, but really your solution seems already best to me. If you know the dtype, you could give that instead of using .tolist(). –  seberg Oct 17 '12 at 7:40

If you already know the shape of your inner arrays (here, (3,2)), you could simplify the whole process as

subshape = (3,2)
a = np.empty(tuple([N,]+list(subshape)), dtype=object)
a[:] = np.ones(subshape)

That will let you avoid unnecessary conversions to/from lists.

Now, assuming you have a (N,) object array a where each element is a subshape float array, you could do:

a = np.vstack(a)
a.shape = [N,] + list(subshape)

or more simply:

a = np.array(a.tolist(), dtype=float)

the .tolist conversion might not be very efficient, though.

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I think you misunderstood the question. I already have an array with shape=(N,) and dtype=object, I want to turn it into an array of shape=(N, 3, 2) and dtype=float. –  Bi Rico Oct 22 '12 at 15:22