# Merging a list of numpy arrays into one array (fast)

what would be the fastest way to merge a list of numpy arrays into one array if one knows the length of the list and the size of the arrays, which is the same for all?

I tried two approaches:

A you can see `vstack` is faster, but for some reason the first run takes three times longer than the second. I assume this caused by (missing) preallocation. So how would I preallocate an array for `vstack`? Or do you know a faster methode?

Thanks!

[UPDATE]

I want `(25280, 320)` not `(80, 320, 320)` which means, `merged_array = array(list_of_arrays)` wont work for me. Thanks Joris for pointing that out!!!

Output:

``````0.547468900681 s merged_array = array(first_list_of_arrays)
0.547191858292 s merged_array = array(second_list_of_arrays)
0.656183958054 s vstack first
0.236850976944 s vstack second
``````

Code:

``````import numpy
import time
width = 320
height = 320
n_matrices=80

secondmatrices = list()
for i in range(n_matrices):
temp = numpy.random.rand(height, width).astype(numpy.float32)
secondmatrices.append(numpy.round(temp*9))

firstmatrices = list()
for i in range(n_matrices):
temp = numpy.random.rand(height, width).astype(numpy.float32)
firstmatrices.append(numpy.round(temp*9))

t1 = time.time()
first1=numpy.array(firstmatrices)
print time.time() - t1, "s merged_array = array(first_list_of_arrays)"

t1 = time.time()
second1=numpy.array(secondmatrices)
print time.time() - t1, "s merged_array = array(second_list_of_arrays)"

t1 = time.time()
first2 = firstmatrices.pop()
for i in range(len(firstmatrices)):
first2 = numpy.vstack((firstmatrices.pop(),first2))
print time.time() - t1, "s vstack first"

t1 = time.time()
second2 = secondmatrices.pop()
for i in range(len(secondmatrices)):
second2 = numpy.vstack((secondmatrices.pop(),second2))

print time.time() - t1, "s vstack second"
``````
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Use `timeit` to do simple performance testing in Python. It produce more accurate results. – Björn Pollex May 17 '11 at 12:45
What dimensions you want the merged array to have? Because `first1` is `(80, 320, 320)` and `first2` is `(25280, 320)` – joris May 17 '11 at 13:02
@joris, thanks for pointing that out. I want the second one, which was my initial approach. I will change it in the question. – Framester May 17 '11 at 13:06
Then you need `vstack` instead of `dstack` from eumiro's answer. – joris May 17 '11 at 13:10

You have 80 arrays 320x320? So you probably want to use `dstack`:

``````first3 = numpy.dstack(firstmatrices)
``````

This returns one 80x320x320 array just like `numpy.array(firstmatrices)` does:

``````timeit numpy.dstack(firstmatrices)
10 loops, best of 3: 47.1 ms per loop

timeit numpy.array(firstmatrices)
1 loops, best of 3: 750 ms per loop
``````

If you want to use `vstack`, it will return a 25600x320 array:

``````timeit numpy.vstack(firstmatrices)
100 loops, best of 3: 18.2 ms per loop
``````
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Hi eurmiro, sorry my question was unclear. I actually need (25280, 320) and not (80, 320, 320). See update of my question. – Framester May 17 '11 at 13:11
@Framester - ok, then see my update with simple `vstack`. – eumiro May 17 '11 at 13:12