2540. Minimum Common Value
Problem Description
The problem involves finding the smallest integer that is common to two sorted arrays of integers nums1
and nums2
. Both arrays are sorted in non-decreasing order. To solve this problem, we are tasked with comparing the integers from both arrays to identify a common integer. If such an integer is found, it should be returned as the result. If there is no integer common to both arrays, the function should return -1
.
Intuition
The solution strategy is based on the fact that both arrays are already sorted in non-decreasing order. This allows us to use a two-pointer approach to efficiently compare elements of the two arrays without the need to look at every possible pair of elements.
Here's how the two-pointer approach works:
-
Start with two pointers,
i
andj
, both initialized to 0, which will traverse throughnums1
andnums2
respectively. -
While both pointers have not reached the end of their respective arrays, compare the elements pointed to by
i
andj
. -
If the elements are equal, that means we've found a common integer, and we return that integer immediately since we are looking for the minimum and the array is sorted.
-
If they are not equal, we need to move the pointer that points to the smaller element to the right to find a potential match, as the larger element will never match with any previous elements in the other array due to sorting.
-
If we reach the end of either array without finding a match, we conclude there is no common integer, and thus return
-1
.
Using this method, we efficiently move through both arrays, comparing only the necessary elements, and we are guaranteed to find the smallest common integer if one exists.
Learn more about Two Pointers and Binary Search patterns.
Solution Approach
The implementation of the solution is a direct application of the two-pointer approach described in the intuition section. The approach utilizes the given sorting of nums1
and nums2
to compare elements and find the least common integer.
Here is how the algorithm is applied through the given Python code:
-
Initialize two pointers
i
andj
to0
. These pointers are indices for iterating throughnums1
andnums2
respectively. -
Determine the lengths of the two arrays
nums1
andnums2
and store them in variablesm
andn
. This is done to avoid repeated calculation of lengths within the loop. -
Use a while loop that continues as long as
i < m
andj < n
. This condition ensures that we do not go out of bounds in either array. -
Inside the loop, compare the elements at the current indices of the two arrays,
nums1[i]
andnums2[j]
. If they are equal,nums1[i]
(ornums2[j]
, since they are the same) is immediately returned as the solution since it's the first common integer found when traversing the arrays from left to right. -
If the elements are not equal, increment the pointer
i
ifnums1[i]
is less thannums2[j]
, because we are looking for the possibility ofnums1[i]
being in the subsequent elements ofnums2
. -
Otherwise, increment the pointer
j
sincenums2[j]
is less, and we want to find ifnums2[j]
matches any subsequent elements innums1
. -
If the while loop ends without returning, this implies that there was no common element between the two arrays. Therefore, we return
-1
at the end of the function to indicate that no common integer was found.
In summary, the algorithm leverages the sorted nature of the inputs to use a methodical, step-by-step comparison that conserves unnecessary checks. This is a common technique in problems involving sorted arrays, known for its efficiency and simplicity.
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Start EvaluatorExample Walkthrough
Let's consider two sorted arrays nums1
and nums2
for the walkthrough:
nums1 = [1, 3, 5, 7]
nums2 = [2, 3, 6, 8]
We need to find the smallest integer common to both nums1
and nums2
. According to the solution approach, we will use the two-pointer technique.
-
Initialize two pointers,
i
andj
, at0
. Soi
points tonums1[i]
which is1
, andj
points tonums2[j]
which is2
. -
Compare the elements at
nums1[i]
andnums2[j]
. Since1 < 2
, it doesn't match, and we incrementi
sincenums1[i]
is smaller. -
Now
i = 1
andj = 0
. The new values at the pointers arenums1[1]
which is3
, andnums2[0]
which is2
. -
Again, compare
nums1[i]
withnums2[j]
. Since3 > 2
, we incrementj
this time asnums2[j]
is smaller. -
i
is still at1
andj
is incremented to1
. We now havenums1[1]
as3
, andnums2[1]
also as3
. -
Since
nums1[i]
is equal tonums2[j]
, we have found the smallest common integer, which is3
. -
Return
3
as the result.
According to the example, 3
is the smallest integer that is found in both arrays nums1
and nums2
. Thus demonstrating the efficiency of the two-pointer approach in solving such problems. If there were no common elements, the pointers would reach the end of their respective arrays, and the function would return -1
.
Solution Implementation
1class Solution:
2 def getCommon(self, nums1: List[int], nums2: List[int]) -> int:
3 # Initialize pointers for both lists
4 index1 = index2 = 0
5
6 # Get the lengths of both lists
7 length1, length2 = len(nums1), len(nums2)
8
9 # Iterate over both lists as long as there are elements in each
10 while index1 < length1 and index2 < length2:
11 # If the current elements are the same, return the common element
12 if nums1[index1] == nums2[index2]:
13 return nums1[index1]
14
15 # If the current element in nums1 is smaller, move to the next element in nums1
16 if nums1[index1] < nums2[index2]:
17 index1 += 1
18 else:
19 # If the current element in nums2 is smaller, move to the next element in nums2
20 index2 += 1
21
22 # If no common elements are found, return -1
23 return -1
24
1class Solution {
2
3 /**
4 * Finds the first common element in two sorted arrays.
5 *
6 * If a common element is found, this method returns that element.
7 * If there are no common elements, the method returns -1.
8 *
9 * @param nums1 The first sorted array.
10 * @param nums2 The second sorted array.
11 * @return The first common element or -1 if none found.
12 */
13 public int getCommon(int[] nums1, int[] nums2) {
14 int nums1Length = nums1.length;
15 int nums2Length = nums2.length;
16
17 // Initialize indices for iterating through the arrays
18 int index1 = 0;
19 int index2 = 0;
20
21 // Loop through both arrays until one array is fully traversed
22 while (index1 < nums1Length && index2 < nums2Length) {
23 // Check the current elements in each array for a match
24 if (nums1[index1] == nums2[index2]) {
25 // If a match is found, return the common element
26 return nums1[index1];
27 }
28
29 // Increment the index of the smaller element
30 if (nums1[index1] < nums2[index2]) {
31 ++index1;
32 } else {
33 ++index2;
34 }
35 }
36
37 // Return -1 if no common element is found
38 return -1;
39 }
40}
41
1class Solution {
2public:
3 // Function to find the first common element in two sorted arrays
4 int getCommon(vector<int>& nums1, vector<int>& nums2) {
5 int sizeNums1 = nums1.size(); // Size of the first array
6 int sizeNums2 = nums2.size(); // Size of the second array
7
8 // Initialize pointers for both arrays
9 int indexNums1 = 0;
10 int indexNums2 = 0;
11
12 // Loop through both arrays until one array is fully traversed
13 while (indexNums1 < sizeNums1 && indexNums2 < sizeNums2) {
14 // If a common element is found, return it
15 if (nums1[indexNums1] == nums2[indexNums2]) {
16 return nums1[indexNums1];
17 }
18
19 // Move the pointer in the smaller-value array to find a match
20 if (nums1[indexNums1] < nums2[indexNums2]) {
21 ++indexNums1;
22 } else {
23 ++indexNums2;
24 }
25 }
26
27 // If no common element is found, return -1
28 return -1;
29 }
30};
31
1// Function to find the first common element between two sorted arrays.
2// If no common element is found, returns -1.
3function getCommon(nums1: number[], nums2: number[]): number {
4 // Length of the first array.
5 const length1 = nums1.length;
6 // Length of the second array.
7 const length2 = nums2.length;
8 // Initialize pointers for both arrays.
9 let index1 = 0;
10 let index2 = 0;
11
12 // Continue looping until the end of one array is reached.
13 while (index1 < length1 && index2 < length2) {
14 // Check if the current elements are the same.
15 if (nums1[index1] === nums2[index2]) {
16 // If they are the same, return the common element.
17 return nums1[index1];
18 }
19 // If the current element of nums1 is smaller, move to the next element in nums1.
20 if (nums1[index1] < nums2[index2]) {
21 index1++;
22 } else {
23 // Otherwise, move to the next element in nums2.
24 index2++;
25 }
26 }
27 // If no common element is found, return -1.
28 return -1;
29}
30
Time and Space Complexity
The time complexity of this code is O(m + n)
, where m
is the length of nums1
and n
is the length of nums2
. This is because each while loop iteration increments either i
or j
, but never both at the same time, thus at most m + n
iterations occur before the loop terminates.
The space complexity of the code is O(1)
because there are no additional data structures that grow with the input size. Only a fixed number of integer variables i
, j
, m
, and n
are used regardless of the input size.
Learn more about how to find time and space complexity quickly using problem constraints.
How many ways can you arrange the three letters A, B and C?
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