# How to split a matrix into 4 blocks using numpy?

I'm implementing Strassen's Matrix Multiplication using python. In divide step, we divide a larger matrix into smaller sub-matrices. Is there a built-in numpy function to split a matrix?

## 3 Answers

Not exactly, but using array slicing notation you should be able to do it yourself pretty easily.

``````>>> A = np.linspace(0,24,25).reshape([5,5,])
>>> A
array([[  0.,   1.,   2.,   3.,   4.],
[  5.,   6.,   7.,   8.,   9.],
[ 10.,  11.,  12.,  13.,  14.],
[ 15.,  16.,  17.,  18.,  19.],
[ 20.,  21.,  22.,  23.,  24.]])
``````

Make B the top-left 2x2 in A:

``````>>> B = A[0:2,0:2]
``````

Note that B is a view, it shares data with A

``````>>> B[1,1] = 60
>>> print A
[[  0.   1.   2.   3.   4.]
[  5.  60.   7.   8.   9.]
[ 10.  11.  12.  13.  14.]
[ 15.  16.  17.  18.  19.]
[ 20.  21.  22.  23.  24.]]
``````

If you need to copy the data from A, use the copy method:

``````>>> B = A[0:2,0:2].copy()
>>> B
array([[  0.,   1.],
[  5.,  60.]])
>>> B[1,1] = 600
>>> B
array([[   0.,    1.],
[   5.,  600.]])
>>> A
array([[  0.,   1.,   2.,   3.,   4.],
[  5.,  60.,   7.,   8.,   9.],
[ 10.,  11.,  12.,  13.,  14.],
[ 15.,  16.,  17.,  18.,  19.],
[ 20.,  21.,  22.,  23.,  24.]])
``````

I ran into the same problem and found some built-in numpy functions to split my matrix into 4 submatrices (my matrices are of size 2^N*2^N)

Here is the code i wrote:

``````upper_half = np.hsplit(np.vsplit(my_matrix, 2)[0], 2)
lower_half = np.hsplit(np.vsplit(my_matrix, 2)[1], 2)

upper_left = upper_half[0]
upper_right = upper_half[1]
lower_left = lower_half[0]
lower_right = lower_half[1]
``````

Bonus to recombine them using numpy:

``````C=np.vstack([np.hstack([c11, c12]), np.hstack([c21, c22])])
``````

vsplit hsplit hstack and vstack seem to be made for that purpose

According to this answer, you might use the `swapaxes`:

You can create a helper method as:

``````def split(array, nrows, ncols):
"""Split a matrix into sub-matrices."""

r, h = array.shape
return (array.reshape(h//nrows, nrows, -1, ncols)
.swapaxes(1, 2)
.reshape(-1, nrows, ncols))
``````

Here is an example of using it

``````import numpy as np

array = np.array([
[1, 1, 2, 2],
[3, 3, 4, 4],
[5, 5, 6, 6],
[7, 7, 8, 8]])

A, B, C, D =  split(array, 2, 2)
# A =
# [[1 1]
#  [3 3]]

# B =
# [[2 2]
#  [4 4]]

# C =
# [[5 5]
#  [7 7]]

# D =
# [[6 6]
#  [8 8]]
print('A = \n{}\n\n'
'B = \n{}\n\n'
'C = \n{}\n\n'
'D =\n{}'.format(A, B, C, D))
``````