# Dynamically expanding a scipy array

Is there a way to dynamically expand an scipy array

`from scipy import sci`
`time = sci.zeros((n,1), 'double')`

Can we increase the size of `time` array after this?

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sci is not standard, explain it –  David Heffernan Sep 25 '11 at 14:33
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## 2 Answers

It's possible to expand arrays using the `resize` method, but it can be a slow operation for large arrays, so avoid it if possible*.

For example:

``````import scipy as sci
n=3
time = sci.zeros((n,1), 'double')
print(time)
# [[ 0.]
#  [ 0.]
#  [ 0.]]

time.resize((n+1,2))
print(time)
# [[ 0.  0.]
#  [ 0.  0.]
#  [ 0.  0.]
#  [ 0.  0.]]
``````

* Instead, figure out how large an array you need from the beginning, and allocate that shape for `time` only once. In general it is faster to over-allocate than it is to resize.

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So, the problem is that I don't know the size of the array, that I want, in advance. So, I iterate over and increase the size of the array one at a time. Like this `n = 1` `time = sci.zeros((1,1), 'double')` and `for (i in something):` `time.resize((n+1), 'double')` What would scipy lib do, would it just copy the previous elements of the array at a new place, because that would be slow. –  Harman Sep 25 '11 at 14:50
I would append data to a normal Python list, (or list of lists), and then convert it to a numpy array with `time=np.array(time)` after the size is fixed. –  unutbu Sep 25 '11 at 14:56
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The resulting `time` array being just a Numpy Array, you can use standard Numpy methods for manipulating them, such as numpy#insert which returns a modified array with new elements inserted into it. Examples usage, from Numpy docs (here `np` is short for `numpy`) :

``````>>> a = np.array([[1, 1], [2, 2], [3, 3]])
>>> a
array([[1, 1],
[2, 2],
[3, 3]])
>>> np.insert(a, 1, 5)
array([1, 5, 1, 2, 2, 3, 3])
>>> np.insert(a, 1, 5, axis=1)
array([[1, 5, 1],
[2, 5, 2],
[3, 5, 3]])
``````

Also, `numpy#insert` is faster than `numpy#resize` :

``````>>> timeit np.insert(time, 1, 1, 1)
100000 loops, best of 3: 16.7 us per loop

>>> timeit np.resize(time, (20,1))
10000 loops, best of 3: 27.1 us per loop
``````
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