Applied Scientist, Experience Analytics

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

Applied Scientist role focused on building production ML infrastructure for customer analytics, including offline training pipelines, online scoring systems, and monitoring. The role involves signal analysis, pattern discovery, and predictive modeling, with a focus on behavioral signals from AI agents and agentic workflows, aiming to ship AI-augmented customer experiences.

What you'd actually do

  1. Contribute to and extend the team's work in signal analysis, pattern discovery, and predictive modelling — adding scientific depth and production engineering capability.
  2. Build production ML infrastructure — offline training pipelines, online scoring systems, and monitoring.
  3. Frame and tackle new modelling problems as they emerge — particularly around behavioral signals from AI agents and agentic workflows.
  4. Extend and invent scientific techniques where needed, while also knowing when existing approaches are sufficient, and speed matters more than novelty.
  5. Collaborate with engineers building the CLARA platform, the Experience Metrics Framework, and the Customer Segmentation Framework to ensure ML systems integrate cleanly and serve the broader product vision.

Skills

Required

  • PhD in computer science, machine learning, statistics, operations research, or a related quantitative field
  • 3+ years of experience building and deploying ML models into production systems
  • Experience programming in Python or equivalent, with production-quality code
  • Experience with ML frameworks (e.g., PyTorch, TensorFlow, scikit-learn) and ML infrastructure (training pipelines, model serving, monitoring)

Nice to have

  • Experience with customer analytics, behavioral segmentation, or user modelling at scale
  • Experience with real-time ML systems (online scoring, streaming data, anomaly detection)
  • Experience working with large-scale customer data platforms or data lake architectures

What the JD emphasized

  • building and deploying ML models into production systems
  • production-quality code
  • ML infrastructure (training pipelines, model serving, monitoring)

Other signals

  • building a unified customer lifecycle data platform
  • customer experience measurement frameworks
  • segmentation systems
  • signal analysis
  • pattern discovery
  • predictive modelling
  • production engineering skills to take models from notebook to production
  • AWS customers are shifting from console-based building toward AI-augmented, agent-primary, and autonomous workflows
  • behavioral signals from AI agents and agentic workflows