Qureos

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Product Data Scientist II

JOB_REQUIREMENTS

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Salary

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What s On Your Plate?

  • Leveraging ambiguous business problems as opportunities to drive objective criteria using data.
  • Developing a deep understanding of the product experiences and business processes that make up your area of focus.
  • Developing a deep familiarity with the source data and its generating systems through documentation, interacting with the engineering teams, and systematic data profiling.
  • Contributing heavily to the design and maintenance of the data models that allow us to measure performance and comprehend performance drivers for your area of focus.
  • Working closely with product and business teams to identify important questions that can be answered effectively with data.
  • Delivering well-formed, relevant, reliable, and actionable insights and recommendations to support data-driven decision making through deep analysis and automated reports.
  • Designing, planning and analyzing experiments (A/B and multivariate tests).
  • Supporting product and business managers with KPI design and goal setting.
  • Mentoring other data scientists in their growth journeys.
  • Contributing to improving our ways of work, our tooling, and our internal training programs.

What Did We Order?
Technical Experience

  • Excellent SQL.
  • Competence with reproducible data analysis using Python or R.
  • Familiarity with data modeling and dimensional design.
  • Strong command over the entire data analysis lifecycle including; problem formulation, data auditing, rigorous analysis, interpretation, recommendations, and presentation.
  • Familiarity with different types of analysis including; descriptive, exploratory, inferential, causal, and predictive analysis.
  • Deep understanding of the various experiment design and analysis workflows and the corresponding statistical techniques.
  • Familiarity with product data (impressions, events, ..) and product health measurement (conversion, engagement, retention, ..).
  • Familiarity with BigQuery and the Google Cloud Platform is a plus.
  • Data engineering and data pipeline development experience (e.g. via Airflow) is a plus.
  • Experience with classical ML frameworks (e.g. Scikit-learn, XGBoost, LightGBM, ...) is a plus.

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