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Join us in building the future of finance. Our mission is to democratize finance for all. An estimated $124 trillion of assets will be inherited by younger generations in the next two decades. The largest transfer of wealth in human history. If you’re ready to be at the epicenter of this historic cultural and financial shift, keep reading. About the team + role Robinhood’s Analytics Engineering team, part of the Data Science organization, is the backbone of our decision-making ecosystem. We design and deliver foundational data products that power everything from product innovation to regulatory compliance and operational excellence. Our mission is simple but ambitious: enable every team at Robinhood to access trustworthy, scalable, and self-serve analytics—so the right decisions happen faster. We operate at the intersection of data engineering, data science, and product strategy, collaborating closely with product managers, engineers, and data scientists to transform raw data into clear, actionable intelligence. As an Analytics Engineer, you will be a key architect of Robinhood’s data foundation. You’ll own the design and development of high-performance ETL pipelines, data models, and analytics tools that fuel critical decisions across the company. Your work will directly influence product strategy, regulatory reporting, and operational efficiency, ensuring Robinhood remains agile and data-driven at scale. This is more than a build role—you’ll help define metrics, shape datasets, and set the standards for analytics excellence across the company. The systems and frameworks you create will have a long-lasting impact on Robinhood’s growth trajectory.
Job Responsibility:
Partner cross-functionally with product, engineering, and data science teams to scope and deliver high-impact analytics initiatives, from metric definitions to fully automated reporting solutions
Design and maintain reliable, scalable ETL pipelines and data models using modern data tools (e.g., Airflow, Spark), ensuring performance and accuracy at scale
Lead end-to-end development of analytics products—from ingestion to visualization—that meet mission-critical business, product, and regulatory needs
Build internal frameworks and tooling to make high-quality data more accessible and actionable across the organization
Collaborate with data scientists to transform raw data into meaningful insights that directly shape business and product outcomes
Champion analytics best practices and drive a culture of data literacy, empowering teams to confidently explore and interpret data on their own
Requirements:
3+ years of experience in Analytics Engineering, Data Engineering, Data Science, or similar field
Strong expertise in advanced SQL, Python scripting, and Apache Spark (PySpark, Spark SQL) for data processing and transformation
Proficiency in building, maintaining, and optimizing ETL pipelines, using modern tools like Airflow or similar
Experience in building polished and performant dashboards using tools like Superset, Looker, Tableau
Strong familiarity with version control (GitHub), CI/CD, and modern development workflows
A strong product approach
Ability to work in a fast-paced, and highly cross-functional environment
Nice to have:
Data Engineering experience
Familiarity with HR systems like Greenhouse, Workday, and One Model
Passion for working and learning in a fast-growing company
Intense sense of curiosity
Satisfaction from mentoring and encouraging others in your field