There is this How do you split a list into evenly sized chunks? for splitting an array into chunks. Is there anyway to do this more efficiently for giant arrays using Numpy?

sorry i'm still looking for an efficient answer ;). right now i'm thinking ctypes is the only efficient way. – Eiyrioü von Kauyf Dec 30 '13 at 22:10

1Define efficient. Give some sample data, your current method, how fast it is, and how fast you need it to be. – Prashant Kumar Dec 31 '13 at 18:19
Try numpy.array_split
.
From the documentation:
>>> x = np.arange(8.0)
>>> np.array_split(x, 3)
[array([ 0., 1., 2.]), array([ 3., 4., 5.]), array([ 6., 7.])]
Identical to numpy.split
, but won't raise an exception if the groups aren't equal length.
If number of chunks > len(array) you get blank arrays nested inside, to address that  if your split array is saved in a
, then you can remove empty arrays by:
[x for x in a if x.size > 0]
Just save that back in a
if you wish.




I simply wouldn't use # chunks > len(array), but I have included a second step which should remove empty arrays. Let me know if this works. – Prashant Kumar Jan 29 '13 at 15:08

1yes that was what I was using ... but anyway to do that w/ numpy? List comprehensions in python are slow. – Eiyrioü von Kauyf Jan 29 '13 at 18:45
Just some examples on usage of array_split
, split
, hsplit
and vsplit
:
n [9]: a = np.random.randint(0,10,[4,4])
In [10]: a
Out[10]:
array([[2, 2, 7, 1],
[5, 0, 3, 1],
[2, 9, 8, 8],
[5, 7, 7, 6]])
Some examples on using array_split
:
If you give an array or list as second argument you basically give the indices (before) which to 'cut'
# split rows into 01 23
In [4]: np.array_split(a, [1,3])
Out[4]:
[array([[2, 2, 7, 1]]),
array([[5, 0, 3, 1],
[2, 9, 8, 8]]),
array([[5, 7, 7, 6]])]
# split columns into 0 1 2 3
In [5]: np.array_split(a, [1], axis=1)
Out[5]:
[array([[2],
[5],
[2],
[5]]),
array([[2, 7, 1],
[0, 3, 1],
[9, 8, 8],
[7, 7, 6]])]
An integer as second arg. specifies the number of equal chunks:
In [6]: np.array_split(a, 2, axis=1)
Out[6]:
[array([[2, 2],
[5, 0],
[2, 9],
[5, 7]]),
array([[7, 1],
[3, 1],
[8, 8],
[7, 6]])]
split
works the same but raises an exception if an equal split is not possible
In addition to array_split
you can use shortcuts vsplit
and hsplit
.
vsplit
and hsplit
are pretty much selfexplanatry:
In [11]: np.vsplit(a, 2)
Out[11]:
[array([[2, 2, 7, 1],
[5, 0, 3, 1]]),
array([[2, 9, 8, 8],
[5, 7, 7, 6]])]
In [12]: np.hsplit(a, 2)
Out[12]:
[array([[2, 2],
[5, 0],
[2, 9],
[5, 7]]),
array([[7, 1],
[3, 1],
[8, 8],
[7, 6]])]

1my problem with this is that if chunks > len(array) then you get blank nested arrays ... how do you get rid of that? – Eiyrioü von Kauyf Jan 29 '13 at 7:48

1Good examples, thank you. In your
np.array_split(a, [1], axis=1)
example, do you know how to prevent the first array from having every single element nested? – timgeb Jan 4 '16 at 8:11
I believe that you're looking for numpy.split
or possibly numpy.array_split
if the number of sections doesn't need to divide the size of the array properly.

same question as I asked Prashant. How can you get rid of the empty numpy arrays? – Eiyrioü von Kauyf Jan 18 '13 at 20:44
Not quite an answer, but a long comment with nice formatting of code to the other (correct) answers. If you try the following, you will see that what you are getting are views of the original array, not copies, and that was not the case for the accepted answer in the question you link. Be aware of the possible side effects!
>>> x = np.arange(9.0)
>>> a,b,c = np.split(x, 3)
>>> a
array([ 0., 1., 2.])
>>> a[1] = 8
>>> a
array([ 0., 8., 2.])
>>> x
array([ 0., 8., 2., 3., 4., 5., 6., 7., 8.])
>>> def chunks(l, n):
... """ Yield successive nsized chunks from l.
... """
... for i in xrange(0, len(l), n):
... yield l[i:i+n]
...
>>> l = range(9)
>>> a,b,c = chunks(l, 3)
>>> a
[0, 1, 2]
>>> a[1] = 8
>>> a
[0, 8, 2]
>>> l
[0, 1, 2, 3, 4, 5, 6, 7, 8]

+1) that's a good point to consider, you could extend your solution further to handle certain multidim. cases – Theodros Zelleke Jan 18 '13 at 20:55

yes at the moment I use that. I was wondering of a nicer way to do that using numpy. esp. with multidim :( – Eiyrioü von Kauyf Jan 29 '13 at 7:49

This is relevant for larger data. I am using
numpy.array_split
which appears to make copies of the data. Passing that to your multiprocessing pool will make yet another copy of the data... – displayname Jan 11 '18 at 18:19