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Sliding Window

R
/**
 * Sliding Window:
 * This pattern involve creating a window which can either be
 * an array or numbers from one position to another.
 *
 * Depending on a certain condition, the window either increases
 * or closes (and a new window is created).
 *
 * Very useful for keeping track of a subset of data in an
 * array/string etc.
 *
 * Time Complexity: Best - O(n);
 *
 * Examples:
 * maxSubarraySum([1,2,5,2,8,1,5],2) // returns 10
 * maxSubarraySum([1,2,5,2,8,1,5],15) // returns null
 * maxSubarraySum([5,2,6,9],3) // returns 17
 * @param {[Int]} arr - An array of integers on which we will perform the test.
 * @param {Int} num - An integer that displays the size of the window you want to check.
 * @returns {Int / Null} - Returns a total of N consecutive numbers or null
 */

function slidingWindow(arr, num) {
  // Edge Case:
  // If the length of the array shorter than the window size (num) return null.
  if (arr.length < num) return null
  // The highest amount of consecutive numbers
  let maxSum = 0
  // Temp amount of consecutive numbers - For comparative purposes
  let tempSum = 0
  // loop over the array {num} times and save their total amount in {maxSum}
  for (let i = 0; i < num; i++) {
    maxSum += arr[i]
  }
  // initialize {tempSum} to {maxSum}.
  tempSum = maxSum
  // loop over the array n times
  for (let i = num; i < arr.length; i++) {
    // Add the next num in the array and remove the first one
    tempSum = tempSum - arr[i - num] + arr[i]
    // save the largest number between {maxNum} and {tempNum} in maxSum.
    maxSum = Math.max(maxSum, tempSum)
  }
  return maxSum
}

export { slidingWindow }