Data Scientist, Alexa Smart Home

Amazon Amazon · Big Tech · IN, KA, Bengaluru · Machine Learning Science

Data Scientist II on the Alexa Smart Home team to develop machine learning models, analytical frameworks, and Gen-AI powered solutions that improve product quality, inform strategic decisions, and enable proactive detection of customer experience issues. This role involves working with large-scale behavioral and interaction datasets, designing experimentation frameworks, and partnering with engineering, product, and science teams to deliver data-driven solutions.

What you'd actually do

  1. Design and implement AI/ML models, anomaly detection systems, and statistical frameworks to analyze customer interactions, identify emerging issues, and drive measurable improvements across the smart home ecosystem.
  2. Own the full lifecycle of model development — from exploratory analysis and feature engineering through deployment, monitoring, and continuous improvement.
  3. Partner with product, engineering, and science teams to translate complex business and technical problems into scalable, production-ready data science solutions.
  4. Design and run rigorous experiments (A/B testing, causal analysis) to measure the impact of product and quality improvements and guide strategic decisions.
  5. Develop scalable analytical solutions for impact measurement, KPI development, metric integrity validation, and long-term business monitoring.

Skills

Required

  • 3+ years of data scientist experience
  • 3+ years of data querying languages (e.g. SQL), scripting languages (e.g. Python) or statistical/mathematical software (e.g. R, SAS, Matlab, etc.) experience
  • 3+ years of machine learning/statistical modeling data analysis tools and techniques, and parameters that affect their performance experience
  • 1+ years of working with or evaluating AI systems experience

Nice to have

  • Ph.D. in Science, Technology, Engineering, or Mathematics (STEM)
  • Knowledge of machine learning concepts and their application to reasoning and problem-solving
  • Experience in defining and creating benchmarks for assessing GenAI model performance
  • Experience working on multi-team, cross-disciplinary projects
  • Experience applying quantitative analysis to solve business problems and making data-driven business decisions
  • Experience developing experimental and analytic plans for data modeling processes, use of strong baselines, ability to accurately determine cause and effect relations

What the JD emphasized

  • massive scale
  • production-ready
  • customer experience improvements
  • AI/ML models
  • Gen-AI powered solutions
  • AI systems

Other signals

  • Develop machine learning models
  • Gen-AI powered solutions
  • massive scale
  • predict and prevent customer-facing issues
  • design analytics systems
  • surface actionable insights
  • customer experience improvements
  • uncover insights