Python3 Program to Find a triplet that sum to a given value

Given an array and a value, find if there is a triplet in array whose sum is equal to the given value. If there is such a triplet present in array, then print the triplet and return true. Else return false.
Examples:
Input: array = {12, 3, 4, 1, 6, 9}, sum = 24;
Output: 12, 3, 9
Explanation: There is a triplet (12, 3 and 9) present
in the array whose sum is 24.
Input: array = {1, 2, 3, 4, 5}, sum = 9
Output: 5, 3, 1
Explanation: There is a triplet (5, 3 and 1) present
in the array whose sum is 9.
Method 1: This is the naive approach towards solving the above problem.
- Approach: A simple method is to generate all possible triplets and compare the sum of every triplet with the given value. The following code implements this simple method using three nested loops.
- Algorithm:
- Given an array of length n and a sum s
- Create three nested loop first loop runs from start to end (loop counter i), second loop runs from i+1 to end (loop counter j) and third loop runs from j+1 to end (loop counter k)
- The counter of these loops represents the index of 3 elements of the triplets.
- Find the sum of ith, jth and kth element. If the sum is equal to given sum. Print the triplet and break.
- If there is no triplet, then print that no triplet exist.
- Implementation:
Python3
# Python3 program to find a triplet # that sum to a given value # returns true if there is triplet with # sum equal to 'sum' present in A[]. # Also, prints the triplet def find3Numbers(A, arr_size, sum): # Fix the first element as A[i] for i in range( 0, arr_size-2): # Fix the second element as A[j] for j in range(i + 1, arr_size-1): # Now look for the third number for k in range(j + 1, arr_size): if A[i] + A[j] + A[k] == sum: print("Triplet is", A[i], ", ", A[j], ", ", A[k]) return True # If we reach here, then no # triplet was found return False # Driver program to test above function A = [1, 4, 45, 6, 10, 8] sum = 22arr_size = len(A) find3Numbers(A, arr_size, sum) # This code is contributed by Smitha Dinesh Semwal |
Triplet is 4, 10, 8
- Complexity Analysis:
- Time Complexity: O(n3).
There are three nested loops traversing the array, so the time complexity is O(n^3) - Space Complexity: O(1).
As no extra space is required.
- Time Complexity: O(n3).
Method 2: This method uses sorting to increase the efficiency of the code.
- Approach: By Sorting the array the efficiency of the algorithm can be improved. This efficient approach uses the two-pointer technique. Traverse the array and fix the first element of the triplet. Now use the Two Pointers algorithm to find if there is a pair whose sum is equal to x – array[i]. Two pointers algorithm take linear time so it is better than a nested loop.
- Algorithm :
- Sort the given array.
- Loop over the array and fix the first element of the possible triplet, arr[i].
- Then fix two pointers, one at i + 1 and the other at n – 1. And look at the sum,
- If the sum is smaller than the required sum, increment the first pointer.
- Else, If the sum is bigger, Decrease the end pointer to reduce the sum.
- Else, if the sum of elements at two-pointer is equal to given sum then print the triplet and break.
- Implementation:
Python3
# Python3 program to find a triplet # returns true if there is triplet # with sum equal to 'sum' present # in A[]. Also, prints the triplet def find3Numbers(A, arr_size, sum): # Sort the elements A.sort() # Now fix the first element # one by one and find the # other two elements for i in range(0, arr_size-2): # To find the other two elements, # start two index variables from # two corners of the array and # move them toward each other # index of the first element # in the remaining elements l = i + 1 # index of the last element r = arr_size-1 while (l < r): if( A[i] + A[l] + A[r] == sum): print("Triplet is", A[i], ', ', A[l], ', ', A[r]); return True elif (A[i] + A[l] + A[r] < sum): l += 1 else: # A[i] + A[l] + A[r] > sum r -= 1 # If we reach here, then # no triplet was found return False # Driver program to test above function A = [1, 4, 45, 6, 10, 8] sum = 22arr_size = len(A) find3Numbers(A, arr_size, sum) # This is contributed by Smitha Dinesh Semwal |
Triplet is 4, 8, 10
- Complexity Analysis:
- Time complexity: O(N^2).
There are only two nested loops traversing the array, so time complexity is O(n^2). Two pointers algorithm takes O(n) time and the first element can be fixed using another nested traversal. - Space Complexity: O(1).
As no extra space is required.
- Time complexity: O(N^2).
Method 3: This is a Hashing-based solution.
- Approach: This approach uses extra space but is simpler than the two-pointers approach. Run two loops outer loop from start to end and inner loop from i+1 to end. Create a hashmap or set to store the elements in between i+1 to j-1. So if the given sum is x, check if there is a number in the set which is equal to x – arr[i] – arr[j]. If yes print the triplet.
- Algorithm:
- Traverse the array from start to end. (loop counter i)
- Create a HashMap or set to store unique pairs.
- Run another loop from i+1 to end of the array. (loop counter j)
- If there is an element in the set which is equal to x- arr[i] – arr[j], then print the triplet (arr[i], arr[j], x-arr[i]-arr[j]) and break
- Insert the jth element in the set.
- Implementation:
Python3
# Python3 program to find a triplet using Hashing # returns true if there is triplet with sum equal # to 'sum' present in A[]. Also, prints the triplet def find3Numbers(A, arr_size, sum): for i in range(0, arr_size-1): # Find pair in subarray A[i + 1..n-1] # with sum equal to sum - A[i] s = set() curr_sum = sum - A[i] for j in range(i + 1, arr_size): if (curr_sum - A[j]) in s: print("Triplet is", A[i], ", ", A[j], ", ", curr_sum-A[j]) return True s.add(A[j]) return False # Driver program to test above function A = [1, 4, 45, 6, 10, 8] sum = 22arr_size = len(A) find3Numbers(A, arr_size, sum) # This is contributed by Yatin gupta |
Output:
Triplet is 4, 8, 10
Time complexity: O(N^2)
Auxiliary Space: O(N)
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