Sr. Data Scientist, Field Engineering

Amazon Amazon · Big Tech · Seattle, WA · Data Science

This role focuses on developing and deploying machine learning models and analytical frameworks to optimize AWS data center infrastructure performance, including availability, efficiency, and reliability. The Senior Data Scientist will work with large-scale operational datasets, collaborate with various engineering teams, and translate complex findings into actionable recommendations for leadership. The role involves the full data science workflow, from data acquisition to production deployment, with an emphasis on scalable solutions and measurable impact.

What you'd actually do

  1. Develop and maintain scalable models and analytical frameworks to measure and predict data center fleet performance, including availability, efficiency, and reliability KPIs across the global AWS infrastructure portfolio.
  2. Apply advanced statistical and machine learning techniques to extract actionable insights from complex, large-scale operational datasets generated by data center systems (power, cooling, controls, etc.).
  3. Partner with Field Engineers, Operations, and Portfolio Managers to identify high-impact opportunities for capacity and availability improvement, translating engineering domain knowledge into quantitative problem formulations.
  4. Design and implement end-to-end data science workflows — from data acquisition and cleaning through model development, validation, and production deployment — enabling repeatable, scalable analysis.
  5. Formalize assumptions about how data center systems are expected to perform and develop methods to systematically identify deviations, root causes, and high-ROI improvement opportunities.

Skills

Required

  • Advanced statistical and machine learning techniques
  • Experience with large-scale operational datasets
  • Data acquisition, cleaning, model development, validation, and production deployment
  • Strong problem-solving skills
  • Stakeholder communication skills
  • Ability to balance technical rigor with delivery speed and customer impact
  • Experience developing scalable analytical approaches
  • Experience designing and running experiments
  • Experience building cross-functional support
  • Excellent written and verbal communication skills

Nice to have

  • Experience with data center mechanical and electrical infrastructure
  • Experience with AWS infrastructure services
  • Experience with supply chain optimization

What the JD emphasized

  • advanced analytical and machine learning capabilities
  • scalable models and data-driven frameworks
  • advanced statistical and machine learning techniques
  • complex, large-scale operational datasets
  • data science solutions are grounded in operational reality and drive measurable impact
  • operating in ambiguous, fast-moving environments where speed of insight can matter as much as analytical precision
  • balance technical rigor with delivery speed and customer impact
  • scalable analytical approaches
  • iterative scientific solutions that balance short-term delivery with long-term science roadmaps
  • end-to-end data science workflows
  • repeatable, scalable analysis

Other signals

  • Develop and maintain scalable models and analytical frameworks to measure and predict data center fleet performance
  • Apply advanced statistical and machine learning techniques to extract actionable insights from complex, large-scale operational datasets
  • Design and implement end-to-end data science workflows — from data acquisition and cleaning through model development, validation, and production deployment