Sometimes, while working with list of tuples, we can have a problem in which we need to perform it’s sorting. Naive sorting is easier, but sometimes, we have to perform custom sorting, i.e by decreasing order of first element and increasing order of 2nd element. And these can also be in cases of different types of tuples. Let’s discuss certain cases and solutions to perform this kind of custom sorting.
Method #1 : Using sorted() + lambda This task can be performed using the combination of above functions. In this, we just perform the normal sort, but in addition we feed a lambda function which handles the case of custom sorting discussed above.
Python3
# Python3 code to demonstrate working of # Custom sorting in list of tuples # Using sorted() + lambda # Initializing list test_list = [( 7 , 8 ), ( 5 , 6 ), ( 7 , 5 ), ( 10 , 4 ), ( 10 , 1 )] # printing original list print ("The original list is : " + str (test_list)) # Custom sorting in list of tuples # Using sorted() + lambda res = sorted (test_list, key = lambda sub: ( - sub[ 0 ], sub[ 1 ])) # printing result print ("The tuple after custom sorting is : " + str (res)) |
The original list is : [(7, 8), (5, 6), (7, 5), (10, 4), (10, 1)] The tuple after custom sorting is : [(10, 1), (10, 4), (7, 5), (7, 8), (5, 6)]
Time Complexity: O(n*nlogn), where n is the length of the list test_list
Auxiliary Space: O(n) additional space of size n is created where n is the number of elements in the res list
Method #2 : Using sorted() + lambda() + sum() ( With sum of tuple condition) In this method, similar solution sustains. But the case here is that we have tuple as the 2nd element of tuple and its sum has to considered for sort order. Other functions than summation can be extended in similar solution.
Python3
# Python3 code to demonstrate working of # Custom sorting in list of tuples # Using sorted() + lambda() + sum() # Initializing list test_list = [( 7 , ( 8 , 4 )), ( 5 , ( 6 , 1 )), ( 7 , ( 5 , 3 )), ( 10 , ( 5 , 4 )), ( 10 , ( 1 , 3 ))] # printing original list print ("The original list is : " + str (test_list)) # Custom sorting in list of tuples # Using sorted() + lambda() + sum() res = sorted (test_list, key = lambda sub: ( - sub[ 0 ], sum (sub[ 1 ]))) # printing result print ("The tuple after custom sorting is : " + str (res)) |
The original list is : [(7, (8, 4)), (5, (6, 1)), (7, (5, 3)), (10, (5, 4)), (10, (1, 3))] The tuple after custom sorting is : [(10, (1, 3)), (10, (5, 4)), (7, (5, 3)), (7, (8, 4)), (5, (6, 1))]
Using Bubble sort:
Approach:
- Initialize the list to be sorted.
- Find the length of the list.
- Loop through each element of the list.
- Within the outer loop, loop through each element of the list from 0 to n-i-1.
- Compare the first elements of the current and next tuples. If the first element of the next tuple is greater than the first element of the current tuple, swap the positions of the current and next tuples.
- If the first elements of the current and next tuples are equal, compare the second elements of the current and next tuples. If the second element of the current tuple is greater than the second element of the next tuple, swap the positions of the current and next tuples.
- After all iterations, the list will be sorted in descending order based on the first element of the tuples, and in ascending order based on the second element of the tuples.
Python3
lst = [( 7 , 8 ), ( 5 , 6 ), ( 7 , 5 ), ( 10 , 4 ), ( 10 , 1 )] n = len (lst) for i in range (n): for j in range (n - i - 1 ): if lst[j][ 0 ] < lst[j + 1 ][ 0 ] or (lst[j][ 0 ] = = lst[j + 1 ][ 0 ] and lst[j][ 1 ] > lst[j + 1 ][ 1 ]): lst[j], lst[j + 1 ] = lst[j + 1 ], lst[j] print (lst) |
[(10, 1), (10, 4), (7, 5), (7, 8), (5, 6)]
Time complexity: O(n^2)
Auxiliary Space: O(1)