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.
Build confidence with an intuition-first walkthrough focused on core interview patterns fundamentals.
DataFrame report
+-------------+--------+
| Column Name | Type |
+-------------+--------+
| product | object |
| quarter_1 | int |
| quarter_2 | int |
| quarter_3 | int |
| quarter_4 | int |
+-------------+--------+
Write a solution to reshape the data so that each row represents sales data for a product in a specific quarter.
The result format is in the following example.
Example 1:
Input: +-------------+-----------+-----------+-----------+-----------+ | product | quarter_1 | quarter_2 | quarter_3 | quarter_4 | +-------------+-----------+-----------+-----------+-----------+ | Umbrella | 417 | 224 | 379 | 611 | | SleepingBag | 800 | 936 | 93 | 875 | +-------------+-----------+-----------+-----------+-----------+ Output: +-------------+-----------+-------+ | product | quarter | sales | +-------------+-----------+-------+ | Umbrella | quarter_1 | 417 | | SleepingBag | quarter_1 | 800 | | Umbrella | quarter_2 | 224 | | SleepingBag | quarter_2 | 936 | | Umbrella | quarter_3 | 379 | | SleepingBag | quarter_3 | 93 | | Umbrella | quarter_4 | 611 | | SleepingBag | quarter_4 | 875 | +-------------+-----------+-------+ Explanation: The DataFrame is reshaped from wide to long format. Each row represents the sales of a product in a quarter.
Problem summary: DataFrame report +-------------+--------+ | Column Name | Type | +-------------+--------+ | product | object | | quarter_1 | int | | quarter_2 | int | | quarter_3 | int | | quarter_4 | int | +-------------+--------+ Write a solution to reshape the data so that each row represents sales data for a product in a specific quarter. The result format is in the following example.
Start with the most direct exhaustive search. That gives a correctness anchor before optimizing.
Pattern signal: General problem-solving
{"headers":{"report":["product","quarter_1","quarter_2","quarter_3","quarter_4"]},"rows":{"report":[["Umbrella",417,224,379,611],["SleepingBag",800,936,93,875]]}}Source-backed implementations are provided below for direct study and interview prep.
// Accepted solution for LeetCode #2890: Reshape Data: Melt
// Auto-generated Java example from py.
class Solution {
public void exampleSolution() {
}
}
// Reference (py):
// # Accepted solution for LeetCode #2890: Reshape Data: Melt
// import pandas as pd
//
//
// def meltTable(report: pd.DataFrame) -> pd.DataFrame:
// return pd.melt(report, id_vars=['product'], var_name='quarter', value_name='sales')
// Accepted solution for LeetCode #2890: Reshape Data: Melt
// Auto-generated Go example from py.
func exampleSolution() {
}
// Reference (py):
// # Accepted solution for LeetCode #2890: Reshape Data: Melt
// import pandas as pd
//
//
// def meltTable(report: pd.DataFrame) -> pd.DataFrame:
// return pd.melt(report, id_vars=['product'], var_name='quarter', value_name='sales')
# Accepted solution for LeetCode #2890: Reshape Data: Melt
import pandas as pd
def meltTable(report: pd.DataFrame) -> pd.DataFrame:
return pd.melt(report, id_vars=['product'], var_name='quarter', value_name='sales')
// Accepted solution for LeetCode #2890: Reshape Data: Melt
// Rust example auto-generated from py reference.
// Replace the signature and local types with the exact LeetCode harness for this problem.
impl Solution {
pub fn rust_example() {
// Port the logic from the reference block below.
}
}
// Reference (py):
// # Accepted solution for LeetCode #2890: Reshape Data: Melt
// import pandas as pd
//
//
// def meltTable(report: pd.DataFrame) -> pd.DataFrame:
// return pd.melt(report, id_vars=['product'], var_name='quarter', value_name='sales')
// Accepted solution for LeetCode #2890: Reshape Data: Melt
// Auto-generated TypeScript example from py.
function exampleSolution(): void {
}
// Reference (py):
// # Accepted solution for LeetCode #2890: Reshape Data: Melt
// import pandas as pd
//
//
// def meltTable(report: pd.DataFrame) -> pd.DataFrame:
// return pd.melt(report, id_vars=['product'], var_name='quarter', value_name='sales')
Use this to step through a reusable interview workflow for this problem.
Two nested loops check every pair or subarray. The outer loop fixes a starting point, the inner loop extends or searches. For n elements this gives up to n²/2 operations. No extra space, but the quadratic time is prohibitive for large inputs.
Most array problems have an O(n²) brute force (nested loops) and an O(n) optimal (single pass with clever state tracking). The key is identifying what information to maintain as you scan: a running max, a prefix sum, a hash map of seen values, or two pointers.
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.