2461. Maximum Sum of Distinct Subarrays With Length K
Difficulty: Medium
Topics: Array
, Hash Table
, Sliding Window
You are given an integer array nums
and an integer k
. Find the maximum subarray sum of all the subarrays of nums
that meet the following conditions:
- The length of the subarray is
k
, and - All the elements of the subarray are distinct.
Return the maximum subarray sum of all the subarrays that meet the conditions. If no subarray meets the conditions, return 0
.
A subarray is a contiguous non-empty sequence of elements within an array.
Example 1:
- Input: nums = [1,5,4,2,9,9,9], k = 3
- Output: 15
-
Explanation: The subarrays of nums with length
3
are:- [1,5,4] which meets the requirements and has a sum of
10
. - [5,4,2] which meets the requirements and has a sum of
11
. - [4,2,9] which meets the requirements and has a sum of
15
. - [2,9,9] which does not meet the requirements because the element
9
is repeated. - [9,9,9] which does not meet the requirements because the element
9
is repeated. - We return
15
because it is the maximum subarray sum of all the subarrays that meet the conditions
- [1,5,4] which meets the requirements and has a sum of
Example 2:
- Input: nums = [4,4,4], k = 3
- Output: 0
-
Explanation: The subarrays of nums with length
3
are:-
[4,4,4]
which does not meet the requirements because the element4
is repeated. - We return
0
because no subarrays meet the conditions.
-
Constraints:
1 <= k <= nums.length <= 105
1 <= nums[i] <= 105
Hint:
- Which elements change when moving from the subarray of size
k
that ends at indexi
to the subarray of sizek
that ends at indexi + 1
? - Only two elements change, the element at
i + 1
is added into the subarray, and the element ati - k + 1
gets removed from the subarray. - Iterate through each subarray of size k and keep track of the sum of the subarray and the frequency of each element.
Solution:
We can follow these steps:
Approach:
-
Sliding Window: The window size is
k
, and we slide the window through the array while maintaining the sum of the current window and checking if all elements in the window are distinct. - Hash Table (or associative array): Use an associative array (hash table) to track the frequency of elements in the current window. If any element appears more than once, the window is invalid.
- Updating the Window: As we slide the window, add the new element (i.e., the element coming into the window), and remove the old element (i.e., the element leaving the window). Update the sum accordingly and check if the window is valid (i.e., all elements are distinct).
- Return the Maximum Sum: We need to keep track of the maximum sum encountered among valid subarrays.
Algorithm:
- Initialize a hash table
freq
to store the frequency of elements in the current window. - Start by calculating the sum for the first window of size
k
and store the result if the window contains distinct elements. - Slide the window from left to right by:
- Removing the element that leaves the window from the left.
- Adding the element that enters the window from the right.
- Update the sum and the hash table, and check if the window still contains only distinct elements.
- If the window has valid distinct elements, update the maximum sum.
- If no valid subarray is found, return
0
.
Let's implement this solution in PHP: 2461. Maximum Sum of Distinct Subarrays With Length K
<?php
/**
* @param Integer[] $nums
* @param Integer $k
* @return Integer
*/
function maximumSubarraySum($nums, $k) {
...
...
...
/**
* go to ./solution.php
*/
}
// Example usage:
$nums1 = [1,5,4,2,9,9,9];
$k1 = 3;
echo maximumSubarraySum($nums1, $k1); // Output: 15
$nums2 = [4,4,4];
$k2 = 3;
echo maximumSubarraySum($nums2, $k2); // Output: 0
?>
Explanation:
-
Variables:
-
$maxSum
: Tracks the maximum sum of a valid subarray found so far. -
$currentSum
: Holds the sum of the current sliding window of sizek
. -
$freq
: A hash table (or associative array) that stores the frequency of elements in the current window.
-
-
Sliding Window:
- We iterate through the array with a loop. As we move the window, we:
- Add the element at index
$i
to the sum and update its frequency. - If the window size exceeds
k
, we remove the element at index$i - k
from the sum and reduce its frequency.
- Add the element at index
- We iterate through the array with a loop. As we move the window, we:
-
Valid Window Check:
- Once the window size reaches
k
(i.e., when$i >= k - 1
), we check if all elements in the window are distinct by ensuring that the number of distinct keys in the frequency map is equal tok
. If it is, we update the maximum sum.
- Once the window size reaches
-
Return the Result:
- After iterating through the array, we return the maximum sum found. If no valid subarray was found,
maxSum
will remain0
.
- After iterating through the array, we return the maximum sum found. If no valid subarray was found,
Time Complexity:
-
O(n), where
n
is the length of thenums
array. Each element is added and removed from the sliding window once, and the hash table operations (insert, remove, check count) are O(1) on average.
Space Complexity:
- O(k) for the hash table that stores the frequency of elements in the current window.
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