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Maximize the profit by selling at-most M products

Given two lists that contain cost prices CP[] and selling prices SP[] of products respectively. The task is to maximize the profit by selling at-most ‘M’ products. 

Examples: 

Input: N = 5, M = 3 
CP[]= {5, 10, 35, 7, 23} 
SP[] = {11, 10, 0, 9, 19} 
Output:
Profit on 0th product i.e. 11-5 = 6 
Profit on 3rd product i.e. 9-7 = 2 
Selling any other product will not give profit. 
So, total profit = 6+2 = 8.

Input: N = 4, M = 2 
CP[] = {17, 9, 8, 20} 
SP[] = {10, 9, 8, 27} 
Output:

Approach:  

  1. Store the profit/loss on buying and selling of each product i.e. SP[i]-CP[i] in an array.
  2. Sort that array in descending order.
  3. Add the positive values up to M values as positive values denote profit.
  4. Return Sum.

Below is the implementation of above approach:  

C++




// C++ implementation of above approach:
#include <bits/stdc++.h>
using namespace std;
 
// Function to find profit
int solve(int N, int M, int cp[], int sp[])
{
    int profit[N];
 
    // Calculating profit for each gadget
    for (int i = 0; i < N; i++)
        profit[i] = sp[i] - cp[i];
 
    // sort the profit array in descending order
    sort(profit, profit + N, greater<int>());
 
    // variable to calculate total profit
    int sum = 0;
 
    // check for best M profits
    for (int i = 0; i < M; i++) {
        if (profit[i] > 0)
            sum += profit[i];
        else
            break;
    }
 
    return sum;
}
 
// Driver Code
int main()
{
 
    int N = 5, M = 3;
    int CP[] = { 5, 10, 35, 7, 23 };
    int SP[] = { 11, 10, 0, 9, 19 };
 
    cout << solve(N, M, CP, SP);
 
    return 0;
}


Java




// Java implementation of above approach:
import java.util.*;
import java.lang.*;
import java.io.*;
 
class GFG
{
 
// Function to find profit
static int solve(int N, int M,
                 int cp[], int sp[])
{
    Integer []profit = new Integer[N];
 
    // Calculating profit for each gadget
    for (int i = 0; i < N; i++)
        profit[i] = sp[i] - cp[i];
 
    // sort the profit array
    // in descending order
    Arrays.sort(profit, Collections.reverseOrder());
 
    // variable to calculate total profit
    int sum = 0;
 
    // check for best M profits
    for (int i = 0; i < M; i++)
    {
        if (profit[i] > 0)
            sum += profit[i];
        else
            break;
    }
 
    return sum;
}
 
// Driver Code
public static void main(String args[])
{
    int N = 5, M = 3;
    int CP[] = { 5, 10, 35, 7, 23 };
    int SP[] = { 11, 10, 0, 9, 19 };
 
    System.out.println(solve(N, M, CP, SP));
}
}
 
// This code is contributed
// by Subhadeep Gupta


Python3




# Python3 implementation
# of above approach
 
# Function to find profit
def solve(N, M, cp, sp) :
     
    # take empty list
    profit = []
     
    # Calculating profit
    # for each gadget
    for i in range(N) :
        profit.append(sp[i] - cp[i])
 
    # sort the profit array
    # in descending order
    profit.sort(reverse = True)
 
    sum = 0
     
    # check for best M profits
    for i in range(M) :
        if profit[i] > 0 :
            sum += profit[i]
        else :
            break
 
    return sum
 
# Driver Code
if __name__ == "__main__" :
 
    N, M = 5, 3
    CP = [5, 10, 35, 7, 23]
    SP = [11, 10, 0, 9, 19]
     
    # function calling
    print(solve(N, M, CP, SP))
     
# This code is contributed
# by ANKITRAI1


C#




// C# implementation of above approach:
using System;
 
class GFG
{
 
// Function to find profit
static int solve(int N, int M,
                 int[] cp, int[] sp)
{
    int[] profit = new int[N];
 
    // Calculating profit for each gadget
    for (int i = 0; i < N; i++)
        profit[i] = sp[i] - cp[i];
 
    // sort the profit array
    // in descending order
    Array.Sort(profit);
    Array.Reverse(profit);
 
    // variable to calculate total profit
    int sum = 0;
 
    // check for best M profits
    for (int i = 0; i < M; i++)
    {
        if (profit[i] > 0)
            sum += profit[i];
        else
            break;
    }
 
    return sum;
}
 
// Driver Code
public static void Main()
{
    int N = 5, M = 3;
    int[] CP = { 5, 10, 35, 7, 23 };
    int[] SP = { 11, 10, 0, 9, 19 };
 
    Console.Write(solve(N, M, CP, SP));
}
}
 
// This code is contributed
// by ChitraNayal


PHP




<?php
// PHP implementation of above approach:
 
// Function to find profit
function solve($N, $M, &$cp, &$sp)
{
    $profit = array_fill(0, $N, NULL);
 
    // Calculating profit for each gadget
    for ($i = 0; $i < $N; $i++)
        $profit[$i] = $sp[$i] - $cp[$i];
 
    // sort the profit array
    // in descending order
    rsort($profit);
 
    // variable to calculate
    // total profit
    $sum = 0;
 
    // check for best M profits
    for ($i = 0; $i < $M; $i++)
    {
        if ($profit[$i] > 0)
            $sum += $profit[$i];
        else
            break;
    }
 
    return $sum;
}
 
// Driver Code
$N = 5;
$M = 3;
$CP = array( 5, 10, 35, 7, 23 );
$SP = array( 11, 10, 0, 9, 19 );
 
echo solve($N, $M, $CP, $SP);
 
// This code is contributed
// by ChitraNayal
?>


Javascript




<script>
 
// Javascript implementation of above approach:
     
// Function to find profit
function solve(N, M, cp, sp)
{
    let profit = new Array(N);
     
    // Calculating profit for each gadget
    for(let i = 0; i < N; i++)
        profit[i] = sp[i] - cp[i];
     
    // Sort the profit array
    // in descending order
    profit.sort(function(a, b){return b - a;});
     
    // Variable to calculate total profit
    let sum = 0;
     
    // Check for best M profits
    for(let i = 0; i < M; i++)
    {
        if (profit[i] > 0)
            sum += profit[i];
        else
            break;
    }
    return sum;
}
 
// Driver Code
let N = 5, M = 3;
let CP = [ 5, 10, 35, 7, 23 ];
let SP = [ 11, 10, 0, 9, 19 ];
 
document.write(solve(N, M, CP, SP));
 
// This code is contributed by rag2127
 
</script>


Output

8

Complexity Analysis:

  • Time Complexity: O(n*log(n)+m)
  • Auxiliary Space: O(n)
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