DataEngPrep.tech
QuestionsPracticeAI CoachDashboardPacksBlog
ProLogin

Interview Questions

Real questions from top companies in Spark/Big Data

700+ Easy450+ Medium650+ Hard
All CategoriesBehavioralSpark/Big DataSQLPython/CodingSystem Design/ArchitectureCloud/ToolsGeneral/Othereasymediumhard
21

Prioritize Spark optimizations by impact and effort. Discuss partitioning strategy, caching policy, join selection, shuffle reduction, and when each becomes a scalability or cost bottleneck.

Spark/Big Datahardjoinoptimizationpartition0.6 min read
FreechargeSnowflake
→
22

Explain how Adaptive Query Execution changes the economics of Spark tuning. What problems does it solve at runtime, and when might you still need manual intervention (e.g., salting, broadcast hints)?

Spark/Big Datamediumjoinpartitionspark0.6 min read
FedEx DataworksPWC
→
23

Walk through the three AQE features in Spark 3.x (coalesce, join switch, skew join)—how they operate at shuffle boundaries, which configs enable them, and what happens when AQE cannot help.

Spark/Big Datahardjoinoptimizationpartition0.6 min read
HashedInSnowflake
→
24

Explain wide vs. narrow transformations and how they drive shuffle cost, failure domains, and pipeline design. When would you intentionally add a wide transformation, and how do you minimize its impact?

Spark/Big Datahardjoinoptimizationpartition2.7 min read
FedEx DataworksZen Data Shastra
→
25

Design a Delta table layout for mixed workload: point lookups by user_id, range scans by date, and full partition scans. Compare partitioning vs. Z-ordering—when to use each, and the rewrite cost trade-off.

Spark/Big Datahardjoinoptimizationpartition2.6 min read
BCGIncedo
→
26

Architecturally, how do Job–Stage–Task boundaries in Spark's execution model impact cluster sizing, shuffle cost, and when would you deliberately collapse or split stages?

Spark/Big Datahardoptimizationpartitionspark0.9 min read
FedEx DataworksFreight Tiger
→
27

Design a fault-tolerant Spark Streaming checkpoint strategy: what to persist, recovery semantics, and cost/scalability trade-offs with checkpoint frequency.

Spark/Big Datahardjoinoptimizationpartition2.5 min read
MeeshoTCS
→
28

Architect incremental load in ADF + Databricks with idempotency, late-arrival handling, and cost/scalability implications of watermark vs. change data capture.

Spark/Big Datamediumpartition1 min read
DeloitteIncedo
→
29

Explain strategies for managing schema changes in PySpark over time.

Spark/Big Datamediumpartitionspark0.8 min read
AccentureYash Technologies
→
30

Explain the Medallion Architecture (Bronze, Silver, Gold layers).

Spark/Big Datahardjoinoptimizationpartition2.6 min read
ChubbKaseya
→
31

Explain the benefits of using DataFrames over RDDs.

Spark/Big Datahardjoinoptimizationpartition0.6 min read
Fragma Data SystemsYash Technologies
→
32

Explain the concept of checkpointing in Spark and why it is important.

Spark/Big Datahardspark0.7 min read
CitiGlobant
→
33

Explain the difference between batch and streaming data processing in Data Fusion.

Spark/Big Datahardbigquerypartitionwindow0.7 min read
AareteFreecharge
→
34

Given a streaming dataset from Kafka, how would you ingest the data in real-time using Spark?

Spark/Big Datahardpartitionspark0.6 min read
Goldman SachsMeesho
→
35

How do you drop columns with null values in PySpark?

Spark/Big Datamediumpartitionspark0.6 min read
DatameticaGlobant
→
36

How do you handle data skewness in Spark?

Spark/Big Datamediumjoinpartitionspark0.7 min read
AccentureBitwise
→
37

How do you optimize Spark jobs for performance?

Spark/Big Datahardjoinoptimizationpartition0.6 min read
Fragma Data SystemsPresidio
→
38

How would you implement a sliding window aggregation in Spark Structured Streaming?

Spark/Big Datahardsparkwindow0.6 min read
Fragma Data SystemsSwiggy
→
39

How would you read data from a web API using PySpark?

Spark/Big Datamediumairflowpartitionspark0.7 min read
AltimetrikInfosys
→
40

Implement a Spark job to find the top 10 most frequent words in a large text file.

Spark/Big Datahardpartitionsparksql0.6 min read
CapcoPubmatic
→

Reading isn't practice. Get AI feedback on your answers.

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.

Try AI Answer Coach — FreeStart a Mock Interview
Previous1234...23Next
Categories
All QuestionsSQLSpark / Big DataPython / CodingSystem DesignCloud / ToolsBehavioral
By Company
AmazonGoogleDatabricksSnowflakeMicrosoftNetflixUberTCS
Interview Guides
All GuidesTop SQL QuestionsTop Spark QuestionsTop Python QuestionsTop System DesignSQL Window FunctionsETL QuestionsData Modeling
Products
AI Interview CoachAnswer AnalyzerSQL PlaygroundResume AnalyzerInterview PacksPricing
Company
About UsContact UsAI DisclosureDisclaimerTerms of ServicePrivacy Policy
© 2026 DataEngPrep.tech. All rights reserved.
AboutBlogContactDisclaimer