How do I sum the columns in 2D list?

Say I've a Python 2D list as below:

``````my_list =  [ [1,2,3,4],
[2,4,5,6] ]
``````

I can get the row totals with a list comprehension:

``````row_totals = [ sum(x) for x in my_list ]
``````

Can I get the column totals without a double `for` loop? Ie, to get this list:

``````[3,6,8,10]
``````

Use zip

``````col_totals = [ sum(x) for x in zip(*my_list) ]
``````
• I like this as it doesn't assume 2 rows. Jul 11, 2010 at 12:43
``````>>> map(sum,zip(*my_list))
[3, 6, 8, 10]
``````

Or the itertools equivalent

``````>>> from itertools import imap, izip
>>> imap(sum,izip(*my_list))
<itertools.imap object at 0x00D20370>
>>> list(_)
[3, 6, 8, 10]
``````
• A wizard among us Oct 24, 2017 at 12:23

Solution `map(sum,zip(*my_list))` is the fastest. However, if you need to keep the list, `[x + y for x, y in zip(*my_list)]` is the fastest.

The test was conducted in Python 3.1.2 64 bit.

``````>>> import timeit
>>> my_list = [[1, 2, 3, 4], [2, 4, 5, 6]]
>>> t1 = lambda: [sum(x) for x in zip(*my_list)]
>>> timeit.timeit(t1)
2.5090877081503606
>>> t2 = lambda: map(sum,zip(*my_list))
>>> timeit.timeit(t2)
0.9024796603792709
>>> t3 = lambda: list(map(sum,zip(*my_list)))
>>> timeit.timeit(t3)
3.4918002495520284
>>> t4 = lambda: [x + y for x, y in zip(*my_list)]
>>> timeit.timeit(t4)
1.7795929868792655
``````
• Nice to know. Thanks for doing the speed test. Jul 12, 2010 at 16:01
``````[x + y for x, y in zip(*my_list)]
``````

Use NumPy and transpose

``````import numpy as np
my_list = np.array([[1,2,3,4],[2,4,5,6]])
[ sum(x) for x in my_list.transpose() ]
``````

Out[*]: [3, 6, 8, 10]

Or, simpler:

``````my_list.sum(axis = 0)
``````