The following is a description of the instance of this famous puzzle involving N = 2 eggs and a building with K = 36 floors.
Suppose that we wish to know which stories in a 36-story building are safe to drop eggs from, and which will cause the eggs to break on landing. We make a few assumptions:
- An egg that survives a fall can be used again.
- A broken egg must be discarded.
- The effect of a fall is the same for all eggs.
- If an egg breaks when dropped, then it would break if dropped from a higher floor.
- If an egg survives a fall then it would survive a shorter fall.
- It is not ruled out that the first-floor windows break eggs, nor is it ruled out that the 36th-floor does not cause an egg to break.
If only one egg is available and we wish to be sure of obtaining the right result, the experiment can be carried out in only one way. Drop the egg from the first-floor window; if it survives, drop it from the second-floor window. Continue upward until it breaks. In the worst case, this method may require 36 droppings. Suppose 2 eggs are available. What is the least number of egg droppings that are guaranteed to work in all cases?
The problem is not actually to find the critical floor, but merely to decide floors from which eggs should be dropped so that the total number of trials is minimized.
Note: In this post, we will discuss a solution to a general problem with ‘N’ eggs and ‘K’ floors
Egg Dropping Puzzle using Recursion:
To solve the problem follow the below idea:
The solution is to try dropping an egg from every floor(from 1 to K) and recursively calculate the minimum number of droppings needed in the worst case. The floor which gives the minimum value in the worst case is going to be part of the solution.
In the following solutions, we return the minimum number of trials in the worst case; these solutions can be easily modified to print the floor numbers of every trial also.What is worst case scenario?
Worst case scenario gives the user the surety of the threshold floor. For example- If we have ‘1’ egg and ‘K’ floors, we will start dropping the egg from the first floor till the egg breaks suppose on the ‘Kth’ floor so the number of tries to give us surety is ‘K’.
1. Optimal Substructure:
When we drop an egg from floor x, there can be two cases (1) The egg breaks (2) The egg doesn’t break.
- If the egg breaks after dropping from ‘xth’ floor, then we only need to check for floors lower than ‘x’ with remaining eggs as some floors should exist lower than ‘x’ in which the egg would not break, so the problem reduces to x-1 floors and n-1 eggs.
- If the egg doesn’t break after dropping from the ‘xth’ floor, then we only need to check for floors higher than ‘x’; so the problem reduces to ‘k-x’ floors and n eggs.
Since we need to minimize the number of trials in the worst case, we take a maximum of two cases. We consider the max of the above two cases for every floor and choose the floor which yields the minimum number of trials.
Below is the illustration of the above approach:
K ==> Number of floors
N ==> Number of EggseggDrop(N, K) ==> Minimum number of trials needed to find the critical
floor in worst case.
eggDrop(N, K) = 1 + min{max(eggDrop(N – 1, x – 1), eggDrop(N, K – x)), where x is in {1, 2, …, K}}Concept of worst case:
Let there be ‘2’ eggs and ‘2’ floors then-:
If we try throwing from ‘1st’ floor:
Number of tries in worst case= 1+max(0, 1)0=>If the egg breaks from first floor then it is threshold floor (best case possibility).
1=>If the egg does not break from first floor we will now have ‘2’ eggs and 1 floor to test which will give answer as
‘1’.(worst case possibility)We take the worst case possibility in account, so 1+max(0, 1)=2
If we try throwing from ‘2nd’ floor:
Number of tries in worst case= 1+max(1, 0)
1=>If the egg breaks from second floor then we will have 1 egg and 1 floor to find threshold floor.(Worst Case)
0=>If egg does not break from second floor then it is threshold floor.(Best Case)
We take worst case possibility for surety, so 1+max(1, 0)=2.
The final answer is min(1st, 2nd, 3rd….., kth floor)
So answer here is ‘2’.
Below is the implementation of the above approach:
C++
// C++ program for the above approach #include <bits/stdc++.h> using namespace std; // A utility function to get // maximum of two integers int max( int a, int b) { return (a > b) ? a : b; } // Function to get minimum // number of trials needed in worst // case with n eggs and k floors int eggDrop( int n, int k) { // If there are no floors, // then no trials needed. // OR if there is one floor, // one trial needed. if (k == 1 || k == 0) return k; // We need k trials for one // egg and k floors if (n == 1) return k; int min = INT_MAX, x, res; // Consider all droppings from // 1st floor to kth floor and // return the minimum of these // values plus 1. for (x = 1; x <= k; x++) { res = max(eggDrop(n - 1, x - 1), eggDrop(n, k - x)); if (res < min) min = res; } return min + 1; } // Driver code int main() { int n = 2, k = 10; cout << "Minimum number of trials " "in worst case with " << n << " eggs and " << k << " floors is " << eggDrop(n, k) << endl; return 0; } // This code is contributed // by Akanksha Rai |
C
// C program for the above approach #include <limits.h> #include <stdio.h> // A utility function to get // maximum of two integers int max( int a, int b) { return (a > b) ? a : b; } /* Function to get minimum number of trials needed in worst case with n eggs and k floors */ int eggDrop( int n, int k) { // If there are no floors, then no // trials needed. OR if there is // one floor, one trial needed. if (k == 1 || k == 0) return k; // We need k trials for one egg and // k floors if (n == 1) return k; int min = INT_MAX, x, res; // Consider all droppings from 1st // floor to kth floor and // return the minimum of these values // plus 1. for (x = 1; x <= k; x++) { res = max(eggDrop(n - 1, x - 1), eggDrop(n, k - x)); if (res < min) min = res; } return min + 1; } /* Driver program to test to printDups*/ int main() { int n = 2, k = 10; printf ( "Minimum number of trials in " "worst case with %d eggs and " "%d floors is %d \n" , n, k, eggDrop(n, k)); return 0; } |
Java
// Java program for the above approach public class GFG { /* Function to get minimum number of trials needed in worst case with n eggs and k floors */ static int eggDrop( int n, int k) { // If there are no floors, then // no trials needed. OR if there // is one floor, one trial needed. if (k == 1 || k == 0 ) return k; // We need k trials for one egg // and k floors if (n == 1 ) return k; int min = Integer.MAX_VALUE; int x, res; // Consider all droppings from // 1st floor to kth floor and // return the minimum of these // values plus 1. for (x = 1 ; x <= k; x++) { res = Math.max(eggDrop(n - 1 , x - 1 ), eggDrop(n, k - x)); if (res < min) min = res; } return min + 1 ; } // Driver code public static void main(String args[]) { int n = 2 , k = 10 ; System.out.print( "Minimum number of " + "trials in worst case with " + n + " eggs and " + k + " floors is " + eggDrop(n, k)); } // This code is contributed by Ryuga. } |
Python 3
import sys # Function to get minimum number of trials # needed in worst case with n eggs and k floors def eggDrop(n, k): # If there are no floors, then no trials # needed. OR if there is one floor, one # trial needed. if (k = = 1 or k = = 0 ): return k # We need k trials for one egg # and k floors if (n = = 1 ): return k min = sys.maxsize # Consider all droppings from 1st # floor to kth floor and return # the minimum of these values plus 1. for x in range ( 1 , k + 1 ): res = max (eggDrop(n - 1 , x - 1 ), eggDrop(n, k - x)) if (res < min ): min = res return min + 1 # Driver Code if __name__ = = "__main__" : n = 2 k = 10 print ( "Minimum number of trials in worst case with" , n, "eggs and" , k, "floors is" , eggDrop(n, k)) # This code is contributed by ita_c |
C#
using System; class GFG { /* Function to get minimum number of trials needed in worst case with n eggs and k floors */ static int eggDrop( int n, int k) { // If there are no floors, then // no trials needed. OR if there // is one floor, one trial needed. if (k == 1 || k == 0) return k; // We need k trials for one egg // and k floors if (n == 1) return k; int min = int .MaxValue; int x, res; // Consider all droppings from // 1st floor to kth floor and // return the minimum of these // values plus 1. for (x = 1; x <= k; x++) { res = Math.Max(eggDrop(n - 1, x - 1), eggDrop(n, k - x)); if (res < min) min = res; } return min + 1; } // Driver code static void Main() { int n = 2, k = 10; Console.Write( "Minimum number of " + "trials in worst case with " + n + " eggs and " + k + " floors is " + eggDrop(n, k)); } } // This code is contributed by Sam007. |
Javascript
<script> /* Function to get minimum number of trials needed in worst case with n eggs and k floors */ function eggDrop(n,k) { // If there are no floors, then // no trials needed. OR if there // is one floor, one trial needed. if (k == 1 || k == 0) return k; // We need k trials for one egg // and k floors if (n == 1) return k; let min = Number.MAX_VALUE; let x, res; // Consider all droppings from // 1st floor to kth floor and // return the minimum of these // values plus 1. for (x = 1; x <= k; x++) { res = Math.max(eggDrop(n - 1, x - 1), eggDrop(n, k - x)); if (res < min) min = res; } return min + 1; } // Driver code let n = 2, k = 10; document.write( "Minimum number of " + "trials in worst case with " + n + " eggs and " + k + " floors is " + eggDrop(n, k)); // This code is contributed by avanitrachhadiya2155 </script> |
Minimum number of trials in worst case with 2 eggs and 10 floors is 4
Note: The above function computes the same subproblems again and again. See the following partial recursion tree, E(2, 2) is being evaluated twice. There will be many repeated subproblems when you draw the complete recursion tree even for small values of N and K.
E(2, 4) | ------------------------------------- | | | | | | | | x=1/ x=2/ x=3/ x=4/ / / .... .... / / E(1, 0) E(2, 3) E(1, 1) E(2, 2) / /... / x=1/ ..... / E(1, 0) E(2, 2) / ...... Partial recursion tree for 2 eggs and 4 floors.
Time Complexity: As there is a case of overlapping sub-problems the time complexity is exponential.
Auxiliary Space: O(1). As there was no use of any data structure for storing values.
Egg Dropping Puzzle using Dynamic Programming:
To solve the problem follow the below idea:
Since the same subproblems are called again, this problem has the Overlapping Subproblems property. So Egg Dropping Puzzle has both properties (see this and this) of a dynamic programming problem. Like other typical Dynamic Programming(DP) problems, recomputations of the same subproblems can be avoided by constructing a temporary array eggFloor[][] in a bottom-up manner.
In this approach, we work on the same idea as described above neglecting the case of calculating the answers to sub-problems again and again. The approach will be to make a table that will store the results of sub-problems so that to solve a sub-problem, would only require a look-up from the table which will take constant time, which earlier took exponential time.
Formally for filling DP[i][j] state where ‘i’ is the number of eggs and ‘j’ is the number of floors:
We have to traverse for each floor ‘x’ from ‘1’ to ‘j’ and find a minimum of:
(1 + max( DP[i-1][j-1], DP[i][j-x] )).
Below is the illustration of the above approach:
i => Number of eggs
j => Number of floorsLook up find maximum
Lets fill the table for the following case:
Floors = ‘4’
Eggs = ‘2’1 2 3 4
1 2 3 4 => 1
1 2 2 3 => 2For ‘egg-1’ each case is the base case so the
number of attempts is equal to floor number.
For ‘egg-2’ it will take ‘1’ attempt for 1st
floor which is base case.For floor-2 =>
Taking 1st floor 1 + max(0, DP[1][1])
Taking 2nd floor 1 + max(DP[1][1], 0)
DP[2][2] = min(1 + max(0, DP[1][1]), 1 + max(DP[1][1], 0))For floor-3 =>
Taking 1st floor 1 + max(0, DP[2][2])
Taking 2nd floor 1 + max(DP[1][1], DP[2][1])
Taking 3rd floor 1 + max(0, DP[2][2])
DP[2][3]= min(‘all three floors’) = 2For floor-4 =>
Taking 1st floor 1 + max(0, DP[2][3])
Taking 2nd floor 1 + max(DP[1][1], DP[2][2])
Taking 3rd floor 1 + max(DP[1][2], DP[2][1])
Taking 4th floor 1 + max(0, DP[2][3])
DP[2][4]= min(‘all four floors’) = 3
Below is the implementation of the above approach:
C++
// C++ program for the above approach #include <bits/stdc++.h> using namespace std; // A utility function to get // maximum of two integers int max( int a, int b) { return (a > b) ? a : b; } /* Function to get minimum number of trials needed in worst case with n eggs and k floors */ int eggDrop( int n, int k) { /* A 2D table where entry eggFloor[i][j] will represent minimum number of trials needed for i eggs and j floors. */ int eggFloor[n + 1][k + 1]; int res; int i, j, x; // We need one trial for one floor and 0 // trials for 0 floors for (i = 1; i <= n; i++) { eggFloor[i][1] = 1; eggFloor[i][0] = 0; } // We always need j trials for one egg // and j floors. for (j = 1; j <= k; j++) eggFloor[1][j] = j; // Fill rest of the entries in table using // optimal substructure property for (i = 2; i <= n; i++) { for (j = 2; j <= k; j++) { eggFloor[i][j] = INT_MAX; for (x = 1; x <= j; x++) { res = 1 + max(eggFloor[i - 1][x - 1], eggFloor[i][j - x]); if (res < eggFloor[i][j]) eggFloor[i][j] = res; } } } // eggFloor[n][k] holds the result return eggFloor[n][k]; } // Driver code int main() { int n = 2, k = 36; cout << "\nMinimum number of trials " "in worst case with " << n << " eggs and " << k << " floors is " << eggDrop(n, k); return 0; } // this code is contributed by shivanisinghss2110 |
C
// C program for the above approach #include <limits.h> #include <stdio.h> // A utility function to get // maximum of two integers int max( int a, int b) { return (a > b) ? a : b; } /* Function to get minimum number of trials needed in worst case with n eggs and k floors */ int eggDrop( int n, int k) { /* A 2D table where entry eggFloor[i][j] will represent minimum number of trials needed for i eggs and j floors. */ int eggFloor[n + 1][k + 1]; int res; int i, j, x; // We need one trial for one floor and 0 // trials for 0 floors for (i = 1; i <= n; i++) { eggFloor[i][1] = 1; eggFloor[i][0] = 0; } // We always need j trials for one egg // and j floors. for (j = 1; j <= k; j++) eggFloor[1][j] = j; // Fill rest of the entries in table using // optimal substructure property for (i = 2; i <= n; i++) { for (j = 2; j <= k; j++) { eggFloor[i][j] = INT_MAX; for (x = 1; x <= j; x++) { res = 1 + max(eggFloor[i - 1][x - 1], eggFloor[i][j - x]); if (res < eggFloor[i][j]) eggFloor[i][j] = res; } } } // eggFloor[n][k] holds the result return eggFloor[n][k]; } // Driver code int main() { int n = 2, k = 36; printf ( "\nMinimum number of trials " "in worst case with %d eggs and " "%d floors is %d \n" , n, k, eggDrop(n, k)); return 0; } |
Java
// Java program for the above approach import java.io.*; class EggDrop { // A utility function to get // maximum of two integers static int max( int a, int b) { return (a > b) ? a : b; } /* Function to get minimum number of trials needed in worst case with n eggs and k floors */ static int eggDrop( int n, int k) { /* A 2D table where entry eggFloor[i][j] will represent minimum number of trials needed for i eggs and j floors. */ int eggFloor[][] = new int [n + 1 ][k + 1 ]; int res; int i, j, x; // We need one trial for one floor and // 0 trials for 0 floors for (i = 1 ; i <= n; i++) { eggFloor[i][ 1 ] = 1 ; eggFloor[i][ 0 ] = 0 ; } // We always need j trials for one egg // and j floors. for (j = 1 ; j <= k; j++) eggFloor[ 1 ][j] = j; // Fill rest of the entries in table using // optimal substructure property for (i = 2 ; i <= n; i++) { for (j = 2 ; j <= k; j++) { eggFloor[i][j] = Integer.MAX_VALUE; for (x = 1 ; x <= j; x++) { res = 1 + max(eggFloor[i - 1 ][x - 1 ], eggFloor[i][j - x]); if (res < eggFloor[i][j]) eggFloor[i][j] = res; } } } // eggFloor[n][k] holds the result return eggFloor[n][k]; } /* Driver code */ public static void main(String args[]) { int n = 2 , k = 36 ; System.out.println( "Minimum number of trials in worst" + " case with " + n + " eggs and " + k + " floors is " + eggDrop(n, k)); } } /*This code is contributed by Rajat Mishra*/ |
Python3
# Python3 program for the above approach INT_MAX = 32767 # Function to get minimum number of trials needed in worst # case with n eggs and k floors def eggDrop(n, k): # A 2D table where entry eggFloor[i][j] will represent minimum # number of trials needed for i eggs and j floors. eggFloor = [[ 0 for x in range (k + 1 )] for x in range (n + 1 )] # We need one trial for one floor and0 trials for 0 floors for i in range ( 1 , n + 1 ): eggFloor[i][ 1 ] = 1 eggFloor[i][ 0 ] = 0 # We always need j trials for one egg and j floors. for j in range ( 1 , k + 1 ): eggFloor[ 1 ][j] = j # Fill rest of the entries in table using optimal substructure # property for i in range ( 2 , n + 1 ): for j in range ( 2 , k + 1 ): eggFloor[i][j] = INT_MAX for x in range ( 1 , j + 1 ): res = 1 + max (eggFloor[i - 1 ][x - 1 ], eggFloor[i][j - x]) if res < eggFloor[i][j]: eggFloor[i][j] = res # eggFloor[n][k] holds the result return eggFloor[n][k] # Driver code if __name__ = = "__main__" : n = 2 k = 36 print ( "Minimum number of trials in worst case with " + str (n) + " eggs and " + str (k) + " floors is " + str (eggDrop(n, k))) # This code is contributed by Bhavya Jain |
C#
// C# program for the above approach using System; class GFG { // A utility function to get maximum of // two integers static int max( int a, int b) { return (a > b) ? a : b; } /* Function to get minimum number of trials needed in worst case with n eggs and k floors */ static int eggDrop( int n, int k) { /* A 2D table where entry eggFloor[i][j] will represent minimum number of trials needed for i eggs and j floors. */ int [, ] eggFloor = new int [n + 1, k + 1]; int res; int i, j, x; // We need one trial for one floor and0 // trials for 0 floors for (i = 1; i <= n; i++) { eggFloor[i, 1] = 1; eggFloor[i, 0] = 0; } // We always need j trials for one egg // and j floors. for (j = 1; j <= k; j++) eggFloor[1, j] = j; // Fill rest of the entries in table // using optimal substructure property for (i = 2; i <= n; i++) { for (j = 2; j <= k; j++) { eggFloor[i, j] = int .MaxValue; for (x = 1; x <= j; x++) { res = 1 + max(eggFloor[i - 1, x - 1], eggFloor[i, j - x]); if (res < eggFloor[i, j]) eggFloor[i, j] = res; } } } // eggFloor[n][k] holds the result return eggFloor[n, k]; } // Driver code public static void Main() { int n = 2, k = 36; Console.WriteLine( "Minimum number of trials " + "in worst case with " + n + " eggs and " + k + "floors is " + eggDrop(n, k)); } } // This code is contributed by Sam007. |
PHP
<?php // A Dynamic Programming based PHP // Program for the Egg Dropping Puzzle /* Function to get minimum number of trials needed in worst case with n eggs and k floors */ function eggDrop( $n , $k ) { /* A 2D table where entry eggFloor[i][j] will represent minimum number of trials needed for i eggs and j floors. */ $eggFloor = array ( array ());; // We need one trial for one // floor and0 trials for 0 floors for ( $i = 1; $i <= $n ; $i ++) { $eggFloor [ $i ][1] = 1; $eggFloor [ $i ][0] = 0; } // We always need j trials // for one egg and j floors. for ( $j = 1; $j <= $k ; $j ++) $eggFloor [1][ $j ] = $j ; // Fill rest of the entries in // table using optimal substructure // property for ( $i = 2; $i <= $n ; $i ++) { for ( $j = 2; $j <= $k ; $j ++) { $eggFloor [ $i ][ $j ] = 999999; for ( $x = 1; $x <= $j ; $x ++) { $res = 1 + max( $eggFloor [ $i - 1][ $x - 1], $eggFloor [ $i ][ $j - $x ]); if ( $res < $eggFloor [ $i ][ $j ]) $eggFloor [ $i ][ $j ] = $res ; } } } // eggFloor[n][k] holds the result return $eggFloor [ $n ][ $k ]; } // Driver Code $n = 2; $k = 36; echo "Minimum number of trials in worst case with " . $n . " eggs and " . $k . " floors is " .eggDrop( $n , $k ) ; // This code is contributed by Sam007 ?> |
Javascript
<script> // A Dynamic Programming based Javascript // Program for the Egg Dropping Puzzle // A utility function to get // maximum of two integers function max(a,b) { return (a > b) ? a : b; } /* Function to get minimum number of trials needed in worst case with n eggs and k floors */ function eggDrop(n,k) { /* A 2D table where entry eggFloor[i][j] will represent minimum number of trials needed for i eggs and j floors. */ let eggFloor = new Array(n + 1); for (let i=0;i<(n+1);i++) { eggFloor[i]= new Array(k+1); } let res; let i, j, x; // We need one trial for one floor and // 0 trials for 0 floors for (i = 1; i <= n; i++) { eggFloor[i][1] = 1; eggFloor[i][0] = 0; } // We always need j trials for one egg // and j floors. for (j = 1; j <= k; j++) eggFloor[1][j] = j; // Fill rest of the entries in table using // optimal substructure property for (i = 2; i <= n; i++) { for (j = 2; j <= k; j++) { eggFloor[i][j] = Number.MAX_VALUE; for (x = 1; x <= j; x++) { res = 1 + max( eggFloor[i - 1][x - 1], eggFloor[i][j - x]); if (res < eggFloor[i][j]) eggFloor[i][j] = res; } } } // eggFloor[n][k] holds the result return eggFloor[n][k]; } /* Driver program to test to printDups*/ let n = 2, k = 36; document.write( "Minimum number of trials in worst" + " case with " + n + " eggs and " + k + " floors is " + eggDrop(n, k)); // This code is contributed by ab2127 </script> |
Minimum number of trials in worst case with 2 eggs and 36 floors is 8
Time Complexity: O(N * K2). As we use a nested for loop ‘k^2’ times for each egg
Auxiliary Space: O(N * K). A 2-D array of size ‘n*k’ is used for storing elements.
Egg Dropping Puzzle using Memoization:
To solve the problem follow the below idea:
We can use a 2D dp table in the first recursive approach to store the results of overlapping subproblems which will help to reduce the time complexity from exponential to quadratic
dp table state –> dp[i][j], where where ‘i’ is the number of eggs and ‘j’ is the number of floors:
Follow the below steps to solve the problem:
- Declare a 2-D array memo of size N+1 * K+1 and call the function solveEggDrop(N, K)
- If memo[N][K] is already computed then return memo[n][k]
- If K == 1 or K == 0 then return K (Base Case)
- If N == 1 return K (Base case)
- Create an integer min equal to the integer Maximum and an integer res
- Run a for loop from x equal to 1 till x is less than or equal to K
- Set res equal to maximum of solveEggDrop(N-1, x-1) or solveEggDrop(N, k-x)
- If res is less than integer min then set min equal to res
- Set memo[N][K] equal to min + 1
- Return min + 1
Below is the implementation of the above approach:
C++
// C++ program for the above approach #include <bits/stdc++.h> using namespace std; #define MAX 1000 vector<vector< int > > memo(MAX, vector< int >(MAX, -1)); int solveEggDrop( int n, int k) { if (memo[n][k] != -1) { return memo[n][k]; } if (k == 1 || k == 0) return k; if (n == 1) return k; int min = INT_MAX, x, res; for (x = 1; x <= k; x++) { res = max(solveEggDrop(n - 1, x - 1), solveEggDrop(n, k - x)); if (res < min) min = res; } memo[n][k] = min + 1; return min + 1; } // Driver code int main() { int n = 2, k = 36; cout << "Minimum number of trials " "in worst case with " << n << " eggs and " << k << " floors is " ; cout << solveEggDrop(n, k); return 0; } // contributed by Shivam Agrawal(shivamagrawal3) |
C
// C program for the above approach #include <limits.h> #include <stdio.h> #include <string.h> #define MAX 1000 int memo[MAX][MAX]; int solveEggDrop( int n, int k) { if (memo[n][k] != -1) { return memo[n][k]; } if (k == 1 || k == 0) return k; if (n == 1) return k; int min = INT_MAX, x, res; for (x = 1; x <= k; x++) { int a = solveEggDrop(n - 1, x - 1); int b = solveEggDrop(n, k - x); res = a > b ? a : b; if (res < min) min = res; } memo[n][k] = min + 1; return min + 1; } // Driver code int main() { memset (memo, -1, MAX * MAX * sizeof ( int )); int n = 2, k = 36; printf ( "Minimum number of trials in worst case with %d eggs and %d floors is " ,n,k); printf ( "%d" , solveEggDrop(n, k)); return 0; } // This code is contributed by repakaeswaripriya. |
Java
// Java program for the above approach import java.util.Arrays; class GFG { static final int MAX = 1000 ; static int [][] memo = new int [MAX][MAX]; static int solveEggDrop( int n, int k) { if (memo[n][k] != - 1 ) { return memo[n][k]; } if (k == 1 || k == 0 ) return k; if (n == 1 ) return k; int min = Integer.MAX_VALUE, x, res; for (x = 1 ; x <= k; x++) { res = Math.max(solveEggDrop(n - 1 , x - 1 ), solveEggDrop(n, k - x)); if (res < min) min = res; } memo[n][k] = min + 1 ; return min + 1 ; } // Driver code public static void main(String[] args) { for ( int i = 0 ; i < memo.length; i++) Arrays.fill(memo[i], - 1 ); int n = 2 , k = 36 ; System.out.print( "Minimum number of trials in worst case with " + n + " eggs and " + k + " floors is " ); System.out.print(solveEggDrop(n, k)); } } // This code IS contributed by umadevi9616 |
Python3
# Python3 program for the above approach import sys MAX = 1000 memo = [[ - 1 for i in range ( MAX )] for j in range ( MAX )] def solveEggDrop(n, k): if (memo[n][k] ! = - 1 ): return memo[n][k] if (k = = 1 or k = = 0 ): return k if (n = = 1 ): return k min = sys.maxsize res = 0 for x in range ( 1 , k + 1 ): res = max (solveEggDrop(n - 1 , x - 1 ), solveEggDrop(n, k - x)) if (res < min ): min = res memo[n][k] = min + 1 return min + 1 # Driver code if __name__ = = '__main__' : n = 2 k = 36 print ( "Minimum number of trials in worst case with " , n, " eggs and " , k, " floors is " , solveEggDrop(n, k)) # This code is contributed by gauravrajput1 |
C#
// C# program for the above approach using System; public class GFG { static readonly int MAX = 1000; static int [, ] memo = new int [MAX, MAX]; static int solveEggDrop( int n, int k) { if (memo[n, k] != -1) { return memo[n, k]; } if (k == 1 || k == 0) return k; if (n == 1) return k; int min = int .MaxValue, x, res; for (x = 1; x <= k; x++) { res = Math.Max(solveEggDrop(n - 1, x - 1), solveEggDrop(n, k - x)); if (res < min) min = res; } memo[n, k] = min + 1; return min + 1; } // Driver code public static void Main(String[] args) { for ( int i = 0; i < memo.GetLength(0); i++) for ( int j = 0; j < memo.GetLength(1); j++) memo[i, j] = -1; int n = 2, k = 36; Console.Write( "Minimum number of trials in worst case with " + n + " eggs and " + k + " floors is " ); Console.Write(solveEggDrop(n, k)); } } // This code is contributed by gauravrajput1 |
Javascript
<script> var MAX = 1000; var memo = Array(MAX).fill().map(()=>Array(MAX).fill(-1)); function solveEggDrop(n , k) { if (memo[n][k] != -1) { return memo[n][k]; } if (k == 1 || k == 0) return k; if (n == 1) return k; var min = Number.MAX_VALUE, x, res; for (x = 1; x <= k; x++) { res = Math.max(solveEggDrop(n - 1, x - 1), solveEggDrop(n, k - x)); if (res < min) min = res; } memo[n][k] = min + 1; return min + 1; } var n = 2, k = 36; document.write(solveEggDrop(n, k)); // This code is contributed by gauravrajput1 </script> |
Minimum number of trials in worst case with 2 eggs and 36 floors is 8
Time Complexity: O(n*k*k) where n is number of eggs and k is number of floors.
Auxiliary Space: O(n*k) as 2D memoisation table has been used.
Approach: To solve the problem follow the below idea:
The approach with O(N * K2) has been discussed before, where dp[N][K] = 1 + max(dp[N – 1][i – 1], dp[N][K – i]) for i in 1…K. You checked all the possibilities in that approach.
Consider the problem in a different way:
dp[m][x] means that, given x eggs and m moves,
what is the maximum number of floors that can be checkedThe DP equation is: dp[m][x] = 1 + dp[m – 1][x – 1] + dp[m – 1][x],
which means we take 1 move to a floor.
If egg breaks, then we can check dp[m – 1][x – 1] floors.
If egg doesn’t break, then we can check dp[m – 1][x] floors.
Follow the below steps to solve the problem:
- Declare a 2-D array of size K+1 * N+1 and an integer m equal to zero
- While dp[m][n] < k
- increase ‘m’ by 1 and run a for loop from x equal to one till x is less than or equal to n
- Set dp[m][x] equal to 1 + dp[m-1][x-1] + dp[m-1][x]
- Return m
Below is the implementation of the above approach:
C++
// C++ program to find minimum number of trials in worst // case. #include <bits/stdc++.h> using namespace std; int minTrials( int n, int k) { // Initialize 2D of size (k+1) * (n+1). vector<vector< int > > dp(k + 1, vector< int >(n + 1, 0)); int m = 0; // Number of moves while (dp[m][n] < k) { m++; for ( int x = 1; x <= n; x++) { dp[m][x] = 1 + dp[m - 1][x - 1] + dp[m - 1][x]; } } return m; } /* Driver code*/ int main() { int n = 2, k = 36; cout<< "Minimum number of trials " "in worst case with " << n << " eggs and " << k << " floors is " ; cout << minTrials(2, 36); return 0; } // This code is contributed by Arihant Jain (arihantjain01) |
Java
// Java program to find minimum number of trials in worst // case. import java.util.*; public class Main { static int minTrials( int n, int k) { // Initialize 2D of size (k+1) * (n+1). int dp[][] = new int [k + 1 ][n + 1 ]; int m = 0 ; // Number of moves while (dp[m][n] < k) { m++; for ( int x = 1 ; x <= n; x++) { dp[m][x] = 1 + dp[m - 1 ][x - 1 ] + dp[m - 1 ][x]; } } return m; } /* Driver code*/ public static void main(String[] args) { int n = 2 , k = 36 ; System.out.println( "Minimum number of trials " + "in worst case with " + n + " eggs and " + k + " floors is " + minTrials( 2 , 36 )); } } |
Python3
def minTrials(n, k): # Initialize 2D array of size (k+1) * (n+1). dp = [[ 0 for x in range (n + 1 )] for y in range (k + 1 )] m = 0 # Number of moves while dp[m][n] < k: m + = 1 for x in range ( 1 , n + 1 ): dp[m][x] = 1 + dp[m - 1 ][x - 1 ] + dp[m - 1 ][x] return m # Driver code n, k = 2 , 36 print ( "Minimum number of trials in worst case with" , n, "eggs and" , k, "floors is" , minTrials(n, k)) |
Javascript
function minTrials(n, k) { // Initialize 2D array of size (k+1) * (n+1). let dp = Array.from(Array(k + 1), () => Array(n + 1).fill(0)); let m = 0; // Number of moves while (dp[m][n] < k) { m += 1; for (let x = 1; x <= n; x++) { dp[m][x] = 1 + dp[m - 1][x - 1] + dp[m - 1][x]; } } return m; } // Driver code let n = 2, k = 36; console.log( "Minimum number of trials in worst case with" , n, "eggs and" , k, "floors is" , minTrials(n, k)); // This code is contributed by Amit Mangal. |
C#
using System; class Program { static int minTrials( int n, int k) { // Initialize 2D array of size (k+1) * (n+1). int [, ] dp = new int [k + 1, n + 1]; int m = 0; // Number of moves while (dp[m, n] < k) { m += 1; for ( int x = 1; x <= n; x++) { dp[m, x] = 1 + dp[m - 1, x - 1] + dp[m - 1, x]; } } return m; } static void Main( string [] args) { int n = 2, k = 36; Console.WriteLine( "Minimum number of trials in worst case with {0} eggs and {1} floors is {2}" , n, k, minTrials(n, k)); } } // This code is contributed by Amit Mangal. |
Minimum number of trials in worst case with 2 eggs and 36 floors is 8
Time Complexity: O(N * K)
Auxiliary Space: O(N * K)
Egg Dropping Puzzle using space-optimized DP:
The fourth approach can be optimized to 1-D DP as for calculating the current row of the DP table, we require only the previous row results and not beyond that.
Follow the below steps to solve the problem:
- Create an array dp of size N+1 and an integer m
- Run a for loop from m equal to zero till dp[n] < k
- Run a nested for loop from x equal to n till x is greater than zero
- Set dp[x] equal to 1 + dp[x-1]
- Return m
Below is the implementation of the above approach:
C++
// C++ program to find minimum number of trials in worst // case. #include <bits/stdc++.h> using namespace std; int minTrials( int n, int k) { // Initialize array of size (n+1) and m as moves. int dp[n + 1] = { 0 }, m; for (m = 0; dp[n] < k; m++) { for ( int x = n; x > 0; x--) { dp[x] += 1 + dp[x - 1]; } } return m; } /* Driver code*/ int main() { int n = 2, k = 36; cout<< "Minimum number of trials " "in worst case with " << n << " eggs and " << k << " floors is " ; cout << minTrials(2, 36); return 0; } // This code is contributed by Arihant Jain (arihantjain01) |
Java
// Java program to find minimum number of trials in worst // case. import java.io.*; class GFG { static int minTrials( int n, int k) { // Initialize array of size (n+1) and m as moves. int dp[] = new int [n + 1 ], m; for (m = 0 ; dp[n] < k; m++) { for ( int x = n; x > 0 ; x--) { dp[x] += 1 + dp[x - 1 ]; } } return m; } /* Driver code*/ public static void main(String[] args) { int n = 2 , k = 36 ; System.out.println( "Minimum number of trials " + "in worst case with " + n + " eggs and " + k + " floors is " + minTrials( 2 , 36 )); } } // This code contributed by SRJ |
Javascript
// Javascript program to find minimum number of trials in worst case. function minTrials(n, k) { // Initialize array of size (n+1) and m as moves. let dp = new Array(n + 1); dp.fill(0); let m; for (m = 0; dp[n] < k; m++) { for (let x = n; x > 0; x--) { dp[x] += 1 + dp[x - 1]; } } return m; } /* Driver code*/ let n = 2, k = 36; console.log( "Minimum number of trials " + "in worst case with " + n + " eggs and " + k + " floors is " ); console.log(minTrials(2, 36)); // This code is contributed by satwiksuman. |
Python3
# Python implementation for the above approach. def minTrials(n, k): # Initialize array of size (n+1) and m as moves. dp = [ 0 for i in range (n + 1 )] m = 0 while dp[n] < k: m + = 1 for x in range (n, 0 , - 1 ): dp[x] + = 1 + dp[x - 1 ] return m # Driver code n, k = 2 , 36 print ( "Minimum number of trials in worst case with" , n, "eggs and" , k, "floors is" , minTrials(n, k)) # This code is contributed by Amit Mangal. |
C#
// C# implementation for the above approach. using System; class Program { static int minTrials( int n, int k) { // Initialize array of size (n+1) and m as moves. int [] dp = new int [n + 1]; int m; for (m = 0; dp[n] < k; m++) { for ( int x = n; x > 0; x--) { dp[x] += 1 + dp[x - 1]; } } return m; } // Driver Code static void Main( string [] args) { int n = 2, k = 36; Console.WriteLine( "Minimum number of trials in worst case with {0} eggs and {1} floors is {2}" , n, k, minTrials(n, k)); } } // This code is contributed by Amit Mangal. |
Minimum number of trials in worst case with 2 eggs and 36 floors is 8
Time Complexity: O(N * log K)
Auxiliary Space: O(N)
Related Articles:
Eggs dropping puzzle (Binomial Coefficient and Binary Search Solution)
Egg Dropping Puzzle with 2 Eggs and K Floors
2 Eggs and 100 Floor Puzzle
References: http://archive.ite.journal.informs.org/Vol4No1/Sniedovich/index.php
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