So I'm a little lost here. I have a numpy array that contains multiple array within it. My goal is to sum all of the arrays INSIDE of the big array, resulting in a singular array containing those summed values.

I've already tried using np.sum() but this goes one step too far and sums everything returning a single integer value.

an example of what I am trying to accomplish: a = (array([1, 2, 3]), array([3, 4, 5])) **perform some steps and the desired result is: a = (array([4, 6, 8]))

  • "I have a numpy array that contains multiple array within it." What? So your array's dtype is object? Please provide a minimal reproducible example Note, a = (array([1, 2, 3]), array([3, 4, 5])) is not an array that contains a number of arrays. It is a tuple with array objects inside of it. – juanpa.arrivillaga Jan 25 at 21:52
  • let's be clear - is this a multidimensional array of numbers, or an object dtype array containing arrays? The difference is important, but your description is vague. Did you read about the axis parameter for sum? – hpaulj Jan 25 at 23:14
  • Are all the arrays inside of the same length? – user8408080 Jan 26 at 1:31

You can directly use the summation operation for this purpose. You don't need any specific built-in function to do this task.

import numpy as np

a = (np.array([1,2,3]), np.array([3,4,5])))
sum = a[0] + a[1]
print('The summation of two sub-arrays: ',sum)

After the above code is interpreted, you will get a result like this;

The summation of two sub-arrays: [4 6 8]


UPDATE: Better solution w/ vectorized addition

#!/usr/bin/env python3

import numpy as np

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

Original, clumsy, non numpyic solution

#!/usr/bin/env python3
import numpy as np
a = (np.array([1,2,3]), np.array([3,4,5]))  
b = zip(*a) 
c = [sum(arr) for arr in b]
>>> [4, 6, 8]
d = np.array(c)
>>> [4 6 8]
  • 1
    Why wouldn't you just add up the arrays? Why the transpose using zip then a list-comprehension wiht sum? Just a[0] + a[1] or even sum(a) would work – juanpa.arrivillaga Jan 25 at 21:55
  • Does that work for any number of np.arrays? Makes sense! +1 vectorized operations :-) – Scott Skiles Jan 25 at 22:02
  • Thanks @juanpa.arrivillaga! Yeah I ended up using the sum function because I had many sub-arrays worked great. Thank you all for the feedback! :) – Noam Barazani Jan 25 at 23:17

You definitely need to iterate through np lists elements so check this for iterating pairwise and secondly check this sum list's elements

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