Window function: lead/lag over date

Last updated: April 22, 2026

Quick Overview

Use window functions to compute running total partitioned by user_id.

Bloomberg
Data Manipulation (SQL/Python)
Data Scientist
Bloomberg
April 22, 2026
Data Scientist
Phone Screen
Data Manipulation (SQL/Python)
Medium

13

0

4,098 solved


Use window functions to compute running total partitioned by user_id.

This question from Bloomberg's Phone Screen tests practical data skills. The interviewer wants to see clean, efficient queries that handle edge cases like NULLs, duplicates, and large datasets.

What the Interviewer Expects
  • Use advanced SQL features: window functions, CTEs, subqueries
  • Write efficient queries that avoid common performance pitfalls
  • Handle complex data transformations with multiple joins and aggregations
  • Discuss indexing strategy and query optimization
  • Address data quality issues: duplicates, missing values, outliers
Key Topics to Cover
Data cleaning and transformation
JOIN types and when to use each
Aggregate functions and GROUP BY
NULL handling and COALESCE
Common Table Expressions (CTEs)
Date/time manipulation
How to Approach This
  1. Clarify the schema and expected output format before writing queries.
  2. Use CTEs (WITH clauses) to break complex queries into readable steps.
  3. Consider window functions (ROW_NUMBER, RANK, LAG, LEAD) for ranking and sequential analysis.
  4. Watch for NULLs, duplicates, and edge cases in JOINs and GROUP BY.
  5. For pandas, prefer vectorized operations over row-by-row iteration.
Possible Follow-up Questions
  • How would you handle this if the data was spread across multiple databases?
  • What would you do if this query needs to run every 5 minutes?
  • What indexes would you create to support this query?
  • Can you rewrite this without using subqueries?
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