Data & Applied Scientist II

Microsoft Microsoft · Big Tech · Redmond, WA +1 · Data Science

This role focuses on using AI tools to enhance experimentation and decision-making within product and business analysis. The scientist will design and analyze A/B experiments, translate results into clear decisions, and continuously evolve how experimentation is done, leveraging AI for acceleration and insight generation while maintaining rigor. The role is hands-on, decision-making oriented, and aims to shape real outcomes through a combination of experimentation, judgment, and AI-enabled workflows.

What you'd actually do

  1. Design, analyze, and interpret A/B experiments end‑to‑end, from hypothesis formulation to final decision
  2. Go beyond “did it move the metric?” to explain why results happened and what decision should be made
  3. Use AI tools to accelerate analysis, exploration, and insight generation (e.g., faster hypothesis testing, code generation, narrative summaries).
  4. Stay current on experimentation methods, causal inference, and applied statistics.

Skills

Required

  • Doctorate in Data Science, Mathematics, Statistics, Econometrics, Economics, Operations Research, Computer Science, or related field OR Master's Degree in Data Science, Mathematics, Statistics, Econometrics, Economics, Operations Research, Computer Science, or related field AND 1+ year(s) data-science experience OR Bachelor's Degree in Data Science, Mathematics, Statistics, Econometrics, Economics, Operations Research, Computer Science, or related field AND 2+ years data-science experience OR equivalent experience.
  • SQL for data extraction and analysis
  • analytical programming language (e.g., Python or R)

Nice to have

  • Demonstrated experience designing, analyzing, and interpreting A/B experiments end‑to‑end.
  • Solid understanding of experimental design concepts, including hypotheses, control/treatment comparisons, metrics, and evaluation windows.
  • Ability to identify and reason about common experimentation challenges such as bias, interference, insufficient power, and metric sensitivity.
  • Experience communicating experimental results clearly, including uncertainty, limitations, and trade‑offs.
  • Solid foundation in applied statistics (e.g., hypothesis testing, confidence intervals, variance, and basic causal reasoning)
  • Ability to work with real‑world data that is noisy, incomplete, or imperfect, and still produce reliable insights
  • Solid judgment in selecting appropriate metrics and analytical approaches for decision‑making
  • Experience using AI‑assisted tools to support data analysis, experimentation, or insight generation.
  • Ability to thoughtfully integrate AI into everyday analytical workflows while maintaining statistical rigor.
  • Curiosity and openness to experimenting with new AI capabilities to improve speed, quality, or clarity of analysis.
  • Experimentation analysis workflows, dashboards, or analytical tooling.
  • Ability to explain complex analytical concepts and experimental results to non‑technical audiences.
  • Solid written and verbal communication skills focused on driving decisions, not just reporting results.
  • Experience working cross‑functionally with product, engineering, or design partners.

What the JD emphasized

  • rigorous experimentation
  • strong statistical thinking
  • practical use of AI
  • AI-enabled workflows
  • without compromising rigor or correctness
  • deep statistical reasoning