Data Scientist, Demand Forecasting

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

This role focuses on researching and developing large-scale foundation models for demand forecasting at Amazon. The work involves designing and running experiments, developing deep learning and statistical models, and deploying them into production to impact inventory decisions and financial outlook. The team operates at a massive scale, pushing the boundaries of time series research and contributing to the scientific community through publications.

What you'd actually do

  1. Design and run rigorous experiments at scale to evaluate and improve foundation model performance across hundreds of millions of products, geographies, and business verticals
  2. Lead the end-to-end lifecycle of forecasting models — from research and experimentation through production launch — including defining success metrics, obtaining stakeholder sign-off, and managing rollout
  3. Conduct online and offline labs to measure the real-world impact of forecast improvements beyond accuracy, including downstream supply chain, inventory, and financial outcomes
  4. Develop and deploy production-grade deep learning and statistical models using Python, Scala, SQL, and related tools
  5. Perform large-scale exploratory data analysis to uncover patterns, identify opportunities, and inform model development

Skills

Required

  • data querying languages (e.g. SQL)
  • scripting languages (e.g. Python)
  • statistical/mathematical software (e.g. R, SAS, Matlab, etc.)
  • data/research scientist, statistician or quantitative analyst in an internet-based company with complex and big data sources experience
  • machine learning concepts and their application to reasoning and problem-solving
  • quantitative analysis to solve business problems and making data-driven business decisions

What the JD emphasized

  • foundation models
  • time series research
  • large-scale experimentation
  • production launch
  • real-world impact
  • publication

Other signals

  • foundation models
  • time series research
  • large-scale experimentation
  • production deployment
  • forecasting