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I am running into errors when concatenating arrays in Python:

x = np.array([])
while condition:
    % some processing 
    x = np.concatenate([x + new_x])

The error I get is:

----> 1 x = np.concatenate([x + new_x])

ValueError: operands could not be broadcast together with shapes (0) (6) 

On a side note, is this an efficient way to grow a numpy array in Python?

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Given that you're copying x on every iteration, I am not sure I would necessarily call this "efficient". – NPE Dec 5 '12 at 17:55
up vote 2 down vote accepted

Looks like you want to call

x = np.concatenate((x, new_x))

according to the docs.

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Also, for greater control, there are the functions hstack, vstack and dstack, that are worth taking a look! – heltonbiker Dec 5 '12 at 17:53
@heltonbiker How do those have greater control than concatenate? I thought concatenate can do an arbitrary axis, whereas hstack, vstack, and dstack concatenate along a particular axis. – gerrit Feb 21 '13 at 16:02
By "greater control" I meant that, say, with hstack you always will concatenate along 1-axis. So, using hstack you won't "accidentally" concatenate along the wrong axis, so you would in this sense be more "in control" of the situation. But in the end it's a matter of perspective, of course. – heltonbiker Feb 21 '13 at 16:09


x = np.append(x,new_x)

Regarding your side note, take a look here: How to extend an array in-place in Numpy?

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