Data engineering interview questions
Count the number of nulls in each column of a table.
Create Spark Session, read CSV, join, and write as table. Provide example code.
Create a SQL query to identify customers with purchases above a dynamic threshold.
Create data models for storing users, artists, and related data for music platform
Create partitioned table
Data Modeling and Airflow Scheduling - star schema, cron, backfill
Data Warehouse Design from scratch
Database vs Data Warehouse vs Data Mart vs Data Lake
Define cursors and stored procedures and their use cases.
Delete vs. Truncate in Snowflake?
Demonstrate how to use a LEFT JOIN to combine data from two tables and handle null values.
Describe a challenging project where you optimized a complex ETL process.
Describe a recent project where you used AWS services extensively. What was your role, and what challenges did you face?
Describe a scenario where you disagreed with a product or business team. What did you do?
Describe a scenario where you had to collaborate with a cross-functional team to deliver a solution.
Describe a scenario where you had to make trade-offs between data processing speed and accuracy. How did you approach this situation and what was the outcome?
Describe a scenario where you used Databricks for real-time data processing.
Describe a scenario where you would use a CROSS JOIN vs. an INNER JOIN.
Describe a situation where you had to redesign a data model to meet changing business needs
Describe a situation where you made a mistake in a data pipeline. How did you identify and fix it?
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.