hard questions
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backend/data/questions/median-of-two-sorted-arrays.yaml
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backend/data/questions/median-of-two-sorted-arrays.yaml
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title: Median of Two Sorted Arrays
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slug: median-of-two-sorted-arrays
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difficulty: hard
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leetcode_id: 4
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leetcode_url: https://leetcode.com/problems/median-of-two-sorted-arrays/
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categories:
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- arrays
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- binary-search
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patterns:
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- binary-search
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description: |
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Given two sorted arrays `nums1` and `nums2` of size m and n respectively, return the median
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of the two sorted arrays.
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The overall run time complexity should be O(log(m+n)).
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constraints: |
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- nums1.length == m
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- nums2.length == n
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- 0 <= m <= 1000
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- 0 <= n <= 1000
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- 1 <= m + n <= 2000
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- -10^6 <= nums1[i], nums2[i] <= 10^6
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examples:
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- input: "nums1 = [1,3], nums2 = [2]"
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output: "2.0"
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explanation: "Merged array is [1,2,3]. Median is 2."
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- input: "nums1 = [1,2], nums2 = [3,4]"
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output: "2.5"
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explanation: "Merged array is [1,2,3,4]. Median is (2+3)/2 = 2.5."
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explanation:
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approach: |
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1. Binary search on the smaller array for partition point
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2. Partition both arrays such that left half has (m+n+1)//2 elements
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3. Check if partition is valid: max(left) <= min(right)
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4. If valid, compute median from boundary elements
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5. Adjust binary search bounds based on comparison
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intuition: |
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The median divides the combined array into two halves of equal size. We don't need to
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actually merge; we just need to find the correct partition.
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If we choose i elements from nums1 for the left half, we need (m+n+1)//2 - i from nums2.
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Binary search on i (0 to m) to find where nums1[i-1] <= nums2[j] and nums2[j-1] <= nums1[i].
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This is O(log min(m,n)) since we binary search on the smaller array.
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common_pitfalls:
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- title: Not handling edge cases at partition
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description: |
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When partition is at array boundary (i=0 or i=m), use -inf or inf for boundary values.
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wrong_approach: "Accessing nums1[i-1] when i=0"
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correct_approach: "Use float('-inf') if i == 0"
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- title: Binary searching on the longer array
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description: |
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Always binary search on the shorter array to ensure valid partition exists
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and for better efficiency.
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- title: Odd vs even total length
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description: |
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For odd total, median is max of left half.
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For even, it's average of max(left) and min(right).
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key_takeaways:
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- Binary search on partition, not on values
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- Partition both arrays to have equal halves
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- Handle boundary conditions with infinity
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- O(log min(m,n)) is achievable
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time_complexity: "O(log min(m,n))"
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space_complexity: "O(1)"
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complexity_explanation: |
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Time: Binary search on the smaller array.
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Space: Only constant extra variables.
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solutions:
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- approach_name: Binary Search on Partition (Optimal)
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is_optimal: true
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code: |
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def find_median_sorted_arrays(nums1: list[int], nums2: list[int]) -> float:
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# Ensure nums1 is the smaller array
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if len(nums1) > len(nums2):
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nums1, nums2 = nums2, nums1
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m, n = len(nums1), len(nums2)
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left, right = 0, m
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half_len = (m + n + 1) // 2
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while left <= right:
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i = (left + right) // 2 # Partition in nums1
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j = half_len - i # Partition in nums2
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# Handle edge cases with infinity
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nums1_left = float('-inf') if i == 0 else nums1[i - 1]
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nums1_right = float('inf') if i == m else nums1[i]
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nums2_left = float('-inf') if j == 0 else nums2[j - 1]
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nums2_right = float('inf') if j == n else nums2[j]
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if nums1_left <= nums2_right and nums2_left <= nums1_right:
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# Found valid partition
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if (m + n) % 2 == 1:
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return max(nums1_left, nums2_left)
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else:
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return (max(nums1_left, nums2_left) +
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min(nums1_right, nums2_right)) / 2
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elif nums1_left > nums2_right:
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# Too many elements from nums1 in left half
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right = i - 1
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else:
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# Too few elements from nums1 in left half
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left = i + 1
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return 0.0 # Should never reach here
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explanation: |
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Binary search to find correct partition point in the smaller array.
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Partition is valid when all left elements <= all right elements.
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Compute median from the four boundary elements.
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