# Initialise numpy array of unknown length

I want to be able to 'build' a numpy array on the fly, I do not know the size of this array in advance.

For example I want to do something like this:

a= np.array()
for x in y:
a.append(x)


Which would result in a containing all the elements of x, obviously this is a trivial answer. I am just curious whether this is possible?

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What may be a more efficient approach is to allocate some large array, and double the size of it every time you reach capacity. – wim Apr 24 '13 at 1:09

Build a Python list and convert that to a Numpy array. That takes amortized O(1) time per append + O(n) for the conversion to array, for a total of O(n).

    a = []
for x in y:
a.append(x)
a = np.array(a)

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You can do this:

a = np.array([])
for x in y:
a = np.append(a, x)

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That takes linear time per append. – Fred Foo Apr 12 '12 at 11:02
This approach copies the array every append, which is O(sum(range(n))). On my laptop, this method was 42 times slower than @larsman's method: Building a list following larsmans method exactly takes me 1000 loops, best of 3: 1.53 ms per loop . Following this method exactly takes me 10 loops, best of 3: 64.8 ms per loop. – Alex Gaudio Feb 14 '13 at 21:59

For posterity, I think this is quicker:

a = np.array([np.array(list()) for _ in y])


You might even be able to pass in a generator (i.e. [] -> ()), in which case the inner list is never fully stored in memory.

Responding to comment below:

>>> import numpy as np
>>> y = range(10)
>>> a = np.array([np.array(list) for _ in y])
>>> a
array([array(<type 'list'>, dtype=object),
array(<type 'list'>, dtype=object),
array(<type 'list'>, dtype=object),
array(<type 'list'>, dtype=object),
array(<type 'list'>, dtype=object),
array(<type 'list'>, dtype=object),
array(<type 'list'>, dtype=object),
array(<type 'list'>, dtype=object),
array(<type 'list'>, dtype=object),
array(<type 'list'>, dtype=object)], dtype=object)

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I made a change here: list(_) and that worked great – javadba Dec 4 '13 at 3:37
To be clear @javadba, you don't need to do that--I'm sure there's some Pythonistas who would take offense :) – BenDundee Dec 4 '13 at 13:48
This is not a matter of style. without the list(_) it does not even work at last for the case i have that y is an array itself – javadba Dec 4 '13 at 16:54