Off-by-one on range boundaries
Wrong move: Loop endpoints miss first/last candidate.
Usually fails on: Fails on minimal arrays and exact-boundary answers.
Fix: Re-derive loops from inclusive/exclusive ranges before coding.
Move from brute-force thinking to an efficient approach using array strategy.
Given an integer array nums, find a subarray that has the largest product, and return the product.
The test cases are generated so that the answer will fit in a 32-bit integer.
Note that the product of an array with a single element is the value of that element.
Example 1:
Input: nums = [2,3,-2,4] Output: 6 Explanation: [2,3] has the largest product 6.
Example 2:
Input: nums = [-2,0,-1] Output: 0 Explanation: The result cannot be 2, because [-2,-1] is not a subarray.
Constraints:
1 <= nums.length <= 2 * 104-10 <= nums[i] <= 10nums is guaranteed to fit in a 32-bit integer.Problem summary: Given an integer array nums, find a subarray that has the largest product, and return the product. The test cases are generated so that the answer will fit in a 32-bit integer. Note that the product of an array with a single element is the value of that element.
Start with the most direct exhaustive search. That gives a correctness anchor before optimizing.
Pattern signal: Array · Dynamic Programming
[2,3,-2,4]
[-2,0,-1]
maximum-subarray)house-robber)product-of-array-except-self)maximum-product-of-three-numbers)subarray-product-less-than-k)Source-backed implementations are provided below for direct study and interview prep.
// Accepted solution for LeetCode #152: Maximum Product Subarray
class Solution {
public int maxProduct(int[] nums) {
int f = nums[0], g = nums[0], ans = nums[0];
for (int i = 1; i < nums.length; ++i) {
int ff = f, gg = g;
f = Math.max(nums[i], Math.max(ff * nums[i], gg * nums[i]));
g = Math.min(nums[i], Math.min(ff * nums[i], gg * nums[i]));
ans = Math.max(ans, f);
}
return ans;
}
}
// Accepted solution for LeetCode #152: Maximum Product Subarray
func maxProduct(nums []int) int {
f, g, ans := nums[0], nums[0], nums[0]
for _, x := range nums[1:] {
ff, gg := f, g
f = max(x, max(ff*x, gg*x))
g = min(x, min(ff*x, gg*x))
ans = max(ans, f)
}
return ans
}
# Accepted solution for LeetCode #152: Maximum Product Subarray
class Solution:
def maxProduct(self, nums: List[int]) -> int:
ans = f = g = nums[0]
for x in nums[1:]:
ff, gg = f, g
f = max(x, ff * x, gg * x)
g = min(x, ff * x, gg * x)
ans = max(ans, f)
return ans
// Accepted solution for LeetCode #152: Maximum Product Subarray
impl Solution {
pub fn max_product(nums: Vec<i32>) -> i32 {
let mut f = nums[0];
let mut g = nums[0];
let mut ans = nums[0];
for &x in nums.iter().skip(1) {
let (ff, gg) = (f, g);
f = x.max(x * ff).max(x * gg);
g = x.min(x * ff).min(x * gg);
ans = ans.max(f);
}
ans
}
}
// Accepted solution for LeetCode #152: Maximum Product Subarray
function maxProduct(nums: number[]): number {
let [f, g, ans] = [nums[0], nums[0], nums[0]];
for (let i = 1; i < nums.length; ++i) {
const [ff, gg] = [f, g];
f = Math.max(nums[i], ff * nums[i], gg * nums[i]);
g = Math.min(nums[i], ff * nums[i], gg * nums[i]);
ans = Math.max(ans, f);
}
return ans;
}
Use this to step through a reusable interview workflow for this problem.
Pure recursion explores every possible choice at each step. With two choices per state (take or skip), the decision tree has 2ⁿ leaves. The recursion stack uses O(n) space. Many subproblems are recomputed exponentially many times.
Each cell in the DP table is computed exactly once from previously solved subproblems. The table dimensions determine both time and space. Look for the state variables — each unique combination of state values is one cell. Often a rolling array can reduce space by one dimension.
Review these before coding to avoid predictable interview regressions.
Wrong move: Loop endpoints miss first/last candidate.
Usually fails on: Fails on minimal arrays and exact-boundary answers.
Fix: Re-derive loops from inclusive/exclusive ranges before coding.
Wrong move: An incomplete state merges distinct subproblems and caches incorrect answers.
Usually fails on: Correctness breaks on cases that differ only in hidden state.
Fix: Define state so each unique subproblem maps to one DP cell.