2

I have a dictionary like the following:

{
'k0': [10, 35, 20],
'k1': [2, 0, 40],
'k2': [21, 400, 5],
}

I want to obtain a list with the maximum values in each i-th position of the list. For instance, in this case:

max_val_list = [21, 400, 40]

Current way of doing it (which seems too messy to me): 1. Extract the lists:

    k0_list = dicc_name[k0]
    k1_list = dicc_name[k1]
    k2_list = dicc_name[k2]
  1. Find the max:
    for i, item in enumerate(k0_list):
         max_val_list.append(max([item, k1_list[i], k2_list[i]]))

I am sure there must be a way to do it in an elegant way directly from the dictionary and I would like to learn.

5
  • Your example is rather confusing as the results are both "the max in each i-th position" (column-wise) AND the max of each of the lists (row-wise). – bruno desthuilliers Dec 3 '19 at 8:53
  • @brunodesthuilliers I will change that - it is just dummy values, but you are right it might be misleading – jotNewie Dec 3 '19 at 8:53
  • 1
    I guess it depends on your set-up, but why not use a list of lists instead of a dict? It seems like it suits your data structure more as the keys are positional – Tomerikoo Dec 3 '19 at 8:56
  • @Tomerikoo I did not consider this option - I might test it, and then could use the answer from stackoverflow.com/questions/21811204/… – jotNewie Dec 3 '19 at 9:10
  • @jotNewie exactly. Do note that it is the same as Thierry proposed in his answer, just a different way of getting the list (instead of doing *data.values() you could simply do *data) – Tomerikoo Dec 3 '19 at 9:16
9

You can zip the values of the dict, and get the max of each column:

data = {
'k0': [100, 35, 20],
'k1': [2, 0, 40],
'k2': [21, 400, 5],
}

[max(col) for col in zip(*data.values())]
# [100, 400, 40]
1

If you use numpy

>>> import numpy as np
>>> np.max([*data.values()],axis = 0).tolist()
[100, 400, 40]

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