41

I want to be able to iterate over the matrix to apply a function to each row. How can I do it for a Numpy matrix ?

  • 2
    It is likely that you will get more helpful answers if you explain what you are trying to achieve / what kind of function to apply. Also, you may want to have a look at: stackoverflow.com/questions/8079061/… – root May 9 '13 at 18:42
  • please post your code. If you haven't tried to do it yet, go try some stuff and post what problems you have – Ryan Saxe May 9 '13 at 18:49
55

Use numpy.apply_along_axis(). Assuming your matrix is 2D, you can use like:

import numpy as np
mymatrix = np.matrix([[11,12,13],
                      [21,22,23],
                      [31,32,33]])
def myfunction( x ):
    return sum(x)

print np.apply_along_axis( myfunction, axis=1, arr=mymatrix )
#[36 66 96]
  • 8
    if you are using numpy functions you can (usually) just specify the axis, like: mymatrix.sum(axis=1). – root May 9 '13 at 19:03
  • 1
    that's right, the sum() in myfunction was just an example, but for some cases, like here, np.apply_along_axis() can be very useful – Saullo G. P. Castro May 9 '13 at 19:06
  • 1
    It can be, yes - not knowing the function makes the question ambiguous. – root May 9 '13 at 19:11
  • 21
    The problem is that apply_along_axis is a Python for loop in disguise. It can give the illusion of numpy performance, but it will not deliver it. In the question you link, using apply_along_axis has no benefit over using a for loop. Trying to vectorize whatever function you want to apply to every row is the numpythonic way of doing things. – Jaime May 9 '13 at 19:34
  • 1
    @Jaime, thank you for clarifying the apply_along_axis usage – Saullo G. P. Castro May 9 '13 at 19:42
54

While you should certainly provide more information, if you are trying to go through each row, you can just iterate with a for loop:

import numpy
m = numpy.ones((3,5),dtype='int')
for row in m:
  print str(row)
  • 4
    Isn't this an inefficient implementation? – Lokesh Mar 28 '17 at 17:59
  • 3
    @Lokesh, why is that? – Brendan Jul 21 '18 at 4:44
4

Here's my take if you want to try using multiprocesses to process each row of numpy array,

from multiprocessing import Pool
import numpy as np

def my_function(x):
    pass     # do something and return something

if __name__ == '__main__':    
    X = np.arange(6).reshape((3,2))
    pool = Pool(processes = 4)
    results = pool.map(my_function, map(lambda x: x, X))
    pool.close()
    pool.join()

pool.map take in a function and an iterable.
I used 'map' function to create an iterator over each rows of the array.
Maybe there's a better to create the iterable though.

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