About the job
Amazon is seeking exceptional science talent to develop AI and machine learning systems that will enable the next generation of advanced manufacturing capabilities at unprecedented scale. We're building revolutionary software infrastructure that combines cutting-edge AI, large-scale optimization, and advanced manufacturing processes to create adaptive production control systems.
Responsibilities
Identify and devise new scientific approaches for constraint identification, dispatch optimization, WIP release control, and predictive flow intelligence when the problem is ill-defined and new methodologies need to be invented
Lead the design, implementation, and successful delivery of scientifically complex solutions for real-time manufacturing flow optimization in production
Design and build ML models and optimization algorithms including constraint prediction, starvation risk forecasting, and dispatch optimization
Write a significant portion of critical-path scientific code with solutions that are inventive, maintainable, scalable, and extensible
Execute rapid, rigorous experimentation with reproducible results, closing the gap between simulation and real manufacturing environments
Build evaluation benchmarks that measure model performance against manufacturing outcomes including constraint utilization and throughput rather than traditional ML metrics alone
Influence your team's science and business strategy through insightful contributions to roadmaps, goals, and priorities
Partner with manufacturing engineering, robotics simulation, and applied intelligence teams to ensure scientific approaches are grounded in operational reality
Drive your team's scientific agenda and role model publishing of research results at peer-reviewed venues when appropriate and not precluded by business considerations
Actively participate in hiring and mentor other scientists, improving their skills and ability to deliver
Write clear narratives and documentation describing scientific solutions and design choices
Qualifications
Minimum
3+ years of investigating the feasibility of applying scientific principles and concepts to business problems and products experience
PhD, or Master's degree and 5+ years of quantitative field research experience
Experience with big data technologies such as AWS, Hadoop, Spark, Pig, Hive etc.
Experience communicating qualitative research methods and findings to non-qualitative researchers
Preferred
Experience converting research studies into tangible real-world changes
Experience with discrete and continuous optimization methodologies and algorithms