Lead Data Scientist, Experimentation
Posted 2025-10-26
Remote, USA
Full Time
Immediate Start
Description: • Join Disney's Direct to Consumer Experimentation and Causal Inference Data Science team as a Lead Data Scientist, where you'll transform complex data into strategic business decisions that shape the future of streaming entertainment. • Collaborate closely with cross-functional partners across the Business, architect and execute sophisticated experiments that optimize every aspect of the subscriber journey—from initial acquisition through long-term retention and revenue growth. • Tackle complex business challenges that directly impact millions of subscribers across Disney+, Hulu, and ESPN. • Shape Product roadmaps, pricing strategies, and user experience optimizations that drive measurable business growth. • Design and Execute Experiments: Lead end-to-end A/B testing initiatives and Geo Experiments, from hypothesis formation and experimental design to statistical analysis and business recommendations. • Apply Causal Inference Methods: Leverage advanced techniques including difference-in-differences, instrumental variables, propensity score analysis, and other quasi-experimental designs to extract actionable insights from observational data. • Build Scalable Solutions: Develop experimentation and causal inference tools and frameworks that can scale across Disney's businesses. • Deliver Strategic Insights: Partner with stakeholders to identify optimization opportunities and translate complex analytical findings into clear business recommendations. • Drive Innovation: Be a thought leader on robust and rigorous analysis throughout the Data Intelligence and Analytics team. • Influence Executive Decisions: Present findings and recommendations to senior leadership, effectively communicating statistical concepts to non-technical stakeholders. Requirements: • Bachelor’s degree in advanced Mathematics , Statistics, Data Science or comparable field of study • 7+ years of experience conducting strategic analyses and communicating insights to drive decision-making. • Expertise in Python, R, or similar languages, including experience building software packages for statistical analysis. • Expertise in SQL. • Proficient in analyzing data and developing ML models using Python (with ML frameworks like LGBM, scikit-learn, etc.). • Strong background in statistical modeling: regression, classification , time series forecasting, causal inference, and other techniques. • Highly collaborative with excellent written and verbal communication skills and demonstrated experience presenting directly to Executive stakeholders • Demonstrated ability to translate complex data into clear and actionable narratives, and the ability to communicate opportunities and challenges to multiple stakeholders. • Robust knowledge of causal inference approaches such as propensity scores, synthetic controls, difference-in-differences, doubly robust methods, meta learners, and uplift modeling. • Deep understanding of assumptions required for causal inferences, including the foundational statistical concepts that underpin the approaches. • Proven ability to manage end-to-end experimentation and causal inference analyses, from initial requirements to impactful outcomes. • Exceptional curiosity and a drive for insights that impact business outcomes. • Preferred: Masters or PhD in quantitative field with an emphasis on experimentation or causal inference. • Preferred: Experience applying strategic thinking to analyze market trends and consumer insights, with preference for candidates who have worked with subscription-based business models. • Preferred: Familiarity with data platforms and applications such as Databricks, Jupyter , Snowflake, and Github . Benefits: A bonus and/or long-term incentive units may be provided as part of the compensation package, in addition to the full range of medical, financial, and/or other benefits, dependent on the level and position offered. Apply tot his job Apply To this Job