Interview questions
Preparing for a data engineering interview at NAB? This page contains 12 real interview questions sourced from verified NAB interview experiences. Questions are sorted by frequency — the ones asked most often appear first.
NAB data engineering interviews typically focus on SQL, Python/Coding, and Cloud/Tools. The interview bar skews toward harder problems (4 hard vs. 3 easy), suggesting emphasis on depth and system-level thinking.
Use the difficulty filters above to focus your preparation. For each question, attempt your own answer first, then compare with our expert solution. You can also practice these questions in our AI Mock Interview Coach for real-time feedback.
Explain the differences between a Data Lake and a Data Warehouse.
Docker - purpose and handling dependencies
Libraries for Data Wrangling
Garbage Collector in Python - explain
GeoPandas - definition and features
Multiprocessing in Python - explain with example
Stuff Function for XML Usages
Indexing: When to Use and Avoid
Materialized View - explain and use cases
Normalization vs Denormalization
Stored Procedure Optimization
Databricks - platform, use cases
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.