Data engineering interview questions
SQL Query for 2nd Highest Salary without Using MAX()
SQL Query for Best of 3 Marks and Average in a Student Table
SQL Query to Find Average Sessions per User within 30-day period
SQL Query: Group Employees by Technology and Order by ID
SQL Question - Cricket Scoreboard Table - aggregations, joins, grouping
SQL Question - Inner Join with Null Handling, compute total row count
SQL query with LAG function.
SQL questions: Group By, Joins, Correlated Queries
Scenario: Query optimization for a large dataset.
Schema Changes in Source (New Column Addition) - Impact
Schema Design: Star vs. Snowflake schema differences
Self-introduction including current role, projects, and key responsibilities. Focus on SQL expertise, Python skills, and experience in data warehousing and modeling.
Self-joins to compare employee salaries?
Serverless vs. Dedicated SQL pools
Share a situation where you took ownership of a failing project.
Share an example where you had to communicate technical concepts to a non-technical audience.
Share strategies for query and ETL optimization.
Simulate a producer-consumer model using multithreading.
Slowly Changing Dimension (SCD) Type 4 - describe hybrid approach
Snowflake Tech Stack: Deployment on Azure, cluster sizing considerations, and overall data warehouse design?
Type or paste your answer to any of these questions and our AI Coach scores it, highlights gaps, and rewrites it at FAANG quality. Free to try.
SQL is the most tested topic in data engineering interviews. Most companies dedicate an entire round to SQL, typically asking 3-5 questions covering window functions, CTEs, joins, optimization, and platform-specific features.
Focus on: window functions (RANK, ROW_NUMBER, LAG/LEAD), CTEs and recursive queries, query optimization and execution plans, indexing strategies, and platform-specific features for BigQuery, Redshift, or Snowflake depending on the company.
Yes. Data engineering SQL rounds emphasize analytical queries (window functions, aggregations), large-scale optimization (partitioning, indexing), and data warehouse concepts (star schema, slowly changing dimensions). Software engineering SQL tends to focus on CRUD operations and basic joins.
For a mid-level data engineering role, plan 2-4 weeks of focused SQL practice. Cover window functions, CTEs, optimization, and practice writing queries under time pressure. Use real interview questions from companies you're targeting.