Built by a hiring manager who's conducted 1,000+ interviews at Google, Amazon, Nvidia, and Adobe.
Interview formats and timelines vary by team, level, and location. Use this guide as preparation, not a guaranteed sequence.
A practical preparation outline based on commonly reported stages. Your actual process may differ.
Key frameworks and strategies for Data Scientist interviews.
These are the skill areas Databricks evaluates in Data Scientist interviews.
Practice these 10 questions to prepare for your Data Scientist interview at Databricks.
Understanding Databricks's core values will help you align your answers with what they're looking for.
Follow these tips to maximize your chances of success.
Interview Rounds
4 rounds
Technical interview with an engineer or domain expert. Engineering roles include coding and system design. Sales engineering includes a technical case study. Product roles include a product design exercise.
Phone Screen (45-60 min): ML fundamentals, statistics, SQL/Python coding basics Technical Round 1 (60 min): ML algorithms deep-dive, model selection and evaluation Technical Round 2 (60 min): Take-home case study or live coding with data analysis Technical Round 3 (60 min): System design for ML, A/B testing, experimentation Behavioral Round (45 min): Cross-functional collaboration, stakeholder communication
Databricks is customer-obsessed. Prepare examples of understanding complex customer problems, translating them into technical solutions, and delivering measurable value. Show you can bridge technical depth with business impact.