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I want to calculate absolute difference between all elements in a set of integers. I am trying to do abs(x-y) where x and y are two elements in the set. I want to do that for all combinations and save the resulting list in a new set.

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  • 4
    As python sets are unordered, there is no "last element". You could convert it to a list before you do your stuff. list(yourset)
    – MaxNoe
    Jun 12 '16 at 14:51
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    in general you can just turn any set into a list as in list(myset) and then use your list algorithm. but maybe if you provide an example of what you're actually wanting to achieve there might be better approaches.
    – miraculixx
    Jun 12 '16 at 14:55
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    python set is "Unordered collections of unique elements". So there is no meaning of "last element in a python set"
    – Eular
    Jun 12 '16 at 14:56
  • @miraculixx I want to calculate the absolute difference between all elements in a set of integers. Jun 12 '16 at 15:00
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    @LokeshMeher Maybe you provide some sample input and expected output... Jun 12 '16 at 15:02
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I want to calculate absolute difference between all elements in a set of integers (...) and save the resulting list in a new set.

You can use itertools.combinations:

s = { 1, 4, 7, 9 }
{ abs(i - j) for i,j in combinations(s, 2) }
=>
set([8, 2, 3, 5, 6])

combinations returns the r-length tuples of all combinations in s without replacement, i.e.:

list(combinations(s, 2))
=>
[(9, 4), (9, 1), (9, 7), (4, 1), (4, 7), (1, 7)]
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  • Is there a faster way? It's taking too much time (> 10 secs) for bigger sets. Jun 13 '16 at 7:23
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As sets do not maintain order, you may use something like an ordered-set and iterate till last but one.

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For completeness, here's a solution based on Numpy ndarray's and pdist():

In [69]: import numpy as np

In [70]: from scipy.spatial.distance import pdist

In [71]: s = {1, 4, 7, 9}

In [72]: set(pdist(np.array(list(s))[:, None], 'cityblock'))
Out[72]: {2.0, 3.0, 5.0, 6.0, 8.0}
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Here is another solution based on numpy:

data = np.array([33,22,21,1,44,54])

minn = np.inf
index = np.array(range(data.shape[0]))
for i in range(data.shape[0]):
    to_sub = (index[:i], index[i+1:])
    temp = np.abs(data[i] - data[np.hstack(to_sub)])
    min_temp = np.min(temp)
    if min_temp < minn : minn = min_temp
print('Min difference is',minn)

Output: "Min difference is 1"

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Here is another way using combinations:

from itertools import combinations

def find_differences(lst):
  " Find all differences, min & max difference "
  d = [abs(i - j) for i, j in combinations(set(lst), 2)]

  return min(d), max(d), d

Test:

list_of_nums = [1, 9, 7, 13, 56, 5]
min_, max_, diff_ = find_differences(list_of_nums)
print(f'All differences: {diff_}\nMaximum difference: {max_}\nMinimum difference: {min_}')

Result:

All differences: [4, 6, 8, 12, 55, 2, 4, 8, 51, 2, 6, 49, 4, 47, 43]
Maximum difference: 55
Minimum difference: 2

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