I have a Python array, like so:


I can add the row by doing sum(array[i]), how can I sum a column, using a double for loop?

I.E. for the first column, I could get 2, then 4, then 6.

  • 1
    consider moving to numpy ndarrays for nicer slicing (it would be a[:,i].sum() in your case)
    – wim
    Mar 12, 2013 at 3:02

8 Answers 8


Using a for loop (in a generator expression):

data = [[1,2,3],

column = 1
print(sum(row[column] for row in data))  # -> 4

Try this:

a = [[1,2,3],

print [sum(x) for x in zip(*a)]

zip function description


You don't need a loop, use zip() to transpose the list, then take the desired column:


(Note in 2.x, zip() returns a list, so you don't need the list() call).

Edit: The simplest solution to this problem, without using zip(), would probably be:

column_sum = 0
for row in data:
    column_sum += row[i]

We just loop through the rows, taking the element and adding it to our total.

This is, however, less efficient and rather pointless given we have built-in functions to do this for us. In general, use zip().

  • I saw that on another answer, but I want to know how to do it this way, before learning how to do it more efficiently.
    – MarJamRob
    Mar 12, 2013 at 2:54
  • Temporarily transposing the entire matrix in order to sum one of the resulting rows doesn't seem very efficient to me...nor does not using the built-in sum() function to do it (in the code in the edit).
    – martineau
    Dec 5, 2015 at 0:04
[sum(row[i] for row in array) for i in range(len(array[0]))]

That should do it. len(array[0]) is the number of columns, so i iterates through those. The generator expression row[i] for row in array goes through all of the rows and selects a single column, for each column number.


I think the easiest way is this:


print (sumcolumn)
  • It looks like this answer assumes numpy, but does improve on the other numpy answer. It may help others if you fill out this code example
    – abathur
    May 6, 2017 at 16:51
  • Welcome to SO. Please read this how-to-answer and follow the guidelines there to provide quality answer. May 6, 2017 at 16:58

you can use zip():

In [16]: lis=[[1,2,3],
   ....:  [1,2,3]]

In [17]: map(sum,zip(*lis))
Out[17]: [2, 4, 6]

or with a simple for loops:

In [25]: for i in xrange(len(lis[0])):
    for x in lis:
    print summ

You may be interested in numpy, which has more advanced array features. One of which is to easily sum a column:

from numpy import array

a = array([[1,2,3],

column_idx = 1
a[:, column_idx].sum() # ":" here refers to the whole array, no filtering.
  • I think your answer is wrong. You probably meant a.sum(column_idx), but even that would be wrong too because in order to get the sum by column as the OP asked you'd need column_idx = 0 Aug 5, 2016 at 20:14

You can use numpy:

import numpy as np
a = np.array([[1,2,3],[1,2,3]])

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.