Data engineering interview questions
Can you chain multiple triggers for a single pipeline?
Can you describe a project where you handled large volumes of data?
Can you modify a partitioned table into a non-partitioned one and vice-versa? How?
Can you provide a use case where Assert Transformations helped maintain data quality?
Can you share an experience where you resolved a conflict within your team?
Case statement in SQL - explain
Check for duplicates in a table.
Cloud Architecture - explain
Coalesce function in SQL - explain
Compare Airflow's @daily vs once trigger scheduling.
Compare OLTP and OLAP systems in the context of financial transactions.
Compare PostgreSQL vs Snowflake. How do they handle duplicate record errors?
Compare Redshift, BigQuery, and Snowflake in terms of cost, performance, and scalability.
Compare the star schema and snowflake schema. Which one would you use for reporting at Swiggy, and why?
Connecting BigQuery with Linux
Consolidate hotel reviews and create a dashboard. Design a data model for the reviews.
Convert row-level records to column records.
Converting SCD0 to SCD3
Count occurrences of each character in a string
Count records for INNER JOIN and LEFT JOIN
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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.