Senior Data Scientist

Coursera Coursera · Consumer · Canada · Data Science

Senior Data Scientist at Coursera focused on data-driven decision making and data-powered products in the education sector. The role involves product experimentation, causal inference, decision science, and machine learning to shape learner experiences. Key responsibilities include designing and analyzing experiments, building statistical and ML models, and applying psychometric methods to measure learning outcomes. The role leverages GenAI tools to accelerate analysis and aims to personalize learning at scale.

What you'd actually do

  1. Design, execute, and analyze A/B and multivariate experiments to evaluate product changes, learning interventions, and personalization strategies.
  2. Apply causal inference techniques (e.g., difference-in-differences, instrumental variables, regression discontinuity) where randomized experiments are not feasible.
  3. Build statistical and ML models to support product roadmap decisions, learner segmentation, and personalization at scale.
  4. Apply psychometric methods (e.g., item response theory, latent variable models, reliability and validity analysis) to measure learning outcomes and assessment quality.
  5. Design and implement instrumentation strategies for accurate tracking of user interactions and data collection.

Skills

Required

  • product experimentation
  • causal inference
  • decision science
  • machine learning
  • statistical rigor
  • scientist’s mindset
  • measurement and modeling problems
  • learning analytics
  • psychometric methods
  • item response theory
  • latent variable models
  • reliability and validity analysis
  • predictive modeling
  • survival analysis
  • Bayesian inference
  • A/B and multivariate experiments
  • difference-in-differences
  • instrumental variables
  • regression discontinuity
  • handling interference
  • novelty/primacy effects
  • GenAI tools
  • automation agents
  • Bachelor’s or Master’s degree (or PhD) in Economics, Statistics, Computer Science, Cognitive Science, Psychometrics, Educational Measurement, or a related quantitative field.
  • 7+ years of experience applying data science to product or business problems

Nice to have

  • familiarity with learning analytics and/or psychometric methods

What the JD emphasized

  • deep expertise in product experimentation, causal inference, decision science, and machine learning
  • hardest measurement and modeling problems
  • measure what learners actually know, how they progress, and whether our interventions genuinely improve outcomes
  • measure learning itself—not just clicks

Other signals

  • AI-powered personalized guide and features
  • AI-powered innovation
  • GenAI, data science
  • AI era
  • GenAI tools and automation agents