Role overview

Data Scientist- Inference, Community Support

Requirements and responsibilities

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Details

  • Design rigorous experiments & quasi-experiments to measure the causal impact of CS product launches and drive data-informed launch decisions.
  • Build causal ML models to optimize Make Goods budget allocation and maximize business impact.
  • Conduct causal inference analyses to quantify the long-term effects of product changes and uncover heterogeneous treatment effects.
  • Deliver strategic insights on quality-cost tradeoffs, empowering leadership to deliver the best possible support experience to our community.
  • Inference & Measurement: Design and implement causal inference frameworks and statistical models to measure the impact of interventions, evaluate system performance and uncover opportunities for improvement.
  • Modeling: Build, evaluate and iterate on causal ML models that power high-stakes decisions, applying best practices across the full model lifecycle from feature engineering to production deployment
  • Optimization: Develop frameworks to analyze tradeoffs between competing objectives (accuracy, coverage, user experience and operational cost), and propose strategies to improve overall effectiveness.
  • Collaborate Cross-Functionally: Build strong relationships with cross-functional partners across Product, Design, Engineering, Operations, and Analytics to drive collaboration and innovation.
  • Influence Decisions: Communicate learnings to leaders and stakeholders in a clear, compelling manner that drives informed, data-driven decision-making.
  • Empowerment: Think strategically about how to scale and evolve data science capabilities within your domain, contributing to the long-term vision for how science drives platform outcomes.
  • 2+ years of industry experience in a quantitative analysis role with a Master's degree in a quantitative field (statistics, economics, computer science, etc.), or PhD in relevant fields.
  • Strong knowledge of causal inference and experimental design.
  • Strong knowledge of Bayesian modeling and statistical inference.
  • Hands-on experience building and deploying statistical or ML models in production environments.
  • Skilled in statistical programming (Python/R) and database usage (SQL).
  • Proven ability to communicate clearly and effectively to audiences of varying technical levels.
  • Ability to translate complex findings into compelling narratives that drive impact.
  • Excellent project management, communication and collaboration skills.
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Browse stack
FocusData ScienceRole area
Seniority signalOpen levelCandidate level
StackPython, SQLPrimary skills
Location1 accepted countryEligibility

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