**Situation**: Led migration of 200+ pipelines from legacy Hadoop to Spark on Azure. **Task**: Reduce latency, improve reliability, cut cost. **Action**: (1) Assessed pipelines—batch vs streaming, data volume. (2) Architected medallion on Delta Lake; Spark for ETL; Synapse for warehouse. (3) Migrated in phases; CDC for incremental. (4) Established monitoring, SLAs. **Result**: 60% latency improvement; 30% cost reduction; 99.5% SLA....
The complete answer continues with detailed implementation patterns, architectural trade-offs, and production-grade considerations. It covers performance optimization strategies, common pitfalls to avoid, and real-world examples from companies like LTIMindtree. The answer also includes follow-up discussion points that interviewers commonly explore.
Continue Reading the Full Answer
Unlock the complete expert answer with code examples, trade-offs, and pro tips - plus 1,863+ more.
Or upgrade to Platform Pro - $39
Engineers who used these answers got offers at
AmazonDatabricksSnowflakeGoogleMeta
According to DataEngPrep.tech, this is one of the most frequently asked Spark/Big Data interview questions, reported at 1 company. DataEngPrep.tech maintains a curated database of 1,863+ real data engineering interview questions across 7 categories, verified by industry professionals.