Data engineering interview questions
Discuss a situation where you had to balance technical priorities and business goals.
Discuss how you handled null values or unstructured data in your previous projects.
Discuss strategies for handling schema evolution in data warehouses.
Does BigQuery support indexes? If not, why?
Does a Common Table Expression store data? If not, how does it function in SQL?
Duplicate characters in a string (e.g., '123a!' to '112233aa!!').
ER Modeling vs. Dimensional Modeling?
Error Handling in T-SQL - TRY...CATCH, THROW, RAISEERROR
Explain BigQuery Architecture.
Explain CTE vs Temp Table. What are the differences and use cases?
Explain Coalesce vs ISNULL. What are the differences in SQL?
Explain Data Modeling SCD Types (Type 1, 2, 3).
Explain Dynamic Partition Pruning error and how to fix it.
Explain ETL process flags and segregation of steps.
Explain Fact Table and Star Schema.
Explain Kafka messaging guarantees and Snowflake schema evolution.
Explain Native vs. External Tables.
Explain Redshift Data Distribution (EVEN, KEY, ALL).
Explain Slowly Changing Dimensions (SCD) and its types
Explain Streams and Tasks in Snowflake.
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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.