Data engineering interview questions · hard
Query Performance in Redshift - optimization
Review Kafka fundamentals and concepts.
SQL Query Design: employees with highest salaries within each department
SQL Query Optimization techniques
Scenario: Query optimization for a large dataset.
Schema Design: Star vs. Snowflake schema differences
Share strategies for query and ETL optimization.
Snowflake Tech Stack: Deployment on Azure, cluster sizing considerations, and overall data warehouse design?
Snowflake: Types of Caching, Time Travel vs. Fail-safe, Snowpipe, Materialized Views
Spark optimizations: Partitioning, caching, tuning parallelism
Stored Procedure Optimization
Time and cost comparisons for executing the same query in Snowflake and Spark.
What are the benefits of BigQuery Warehouse?
What are the benefits of using a cloud data warehouse (e.g., Redshift, Snowflake) for analytics?
What are the key design principles for a cloud-based data warehouse?
What are the trade-offs between relational databases and NoSQL for financial data?
What considerations are important when designing a dimensional model for a ridesharing app?
What is CTE in SQL?
What is a Data Warehouse, and can you explain its Tier-1 and Tier-2 architecture?
What optimizations would you apply for partitioning strategies?
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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.