Senior Applied Scientist, Industrial Robotics Group

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

Senior Applied Scientist role focused on developing AI and ML systems for industrial robotics and manufacturing, involving real-time decision making, optimization, and inventing new algorithms. The role requires delivering complex solutions into production and has a strong emphasis on scientific code development and evaluation.

What you'd actually do

  1. 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
  2. Lead the design, implementation, and successful delivery of scientifically complex solutions for real-time manufacturing flow optimization in production
  3. Design and build ML models and optimization algorithms including constraint prediction, starvation risk forecasting, and dispatch optimization
  4. Write a significant portion of critical-path scientific code with solutions that are inventive, maintainable, scalable, and extensible
  5. Execute rapid, rigorous experimentation with reproducible results, closing the gap between simulation and real manufacturing environments

Skills

Required

  • Knowledge of programming languages such as C/C++, Python, Java or Perl
  • PhD in computer science, operations research, machine learning, industrial engineering, or a related quantitative field, or Master's degree plus 4+ years building ML models and algorithms in applied settings
  • 5+ years of experience applying machine learning, optimization, or decision systems to complex real-world problems
  • Proven track record of delivering scientifically complex solutions into production
  • Deep expertise in one or more of: combinatorial optimization, reinforcement learning, constraint programming, or stochastic modeling
  • Ability to design rigorous experiments, analyze results, and iterate quickly with reproducible baselines
  • Demonstrated technical contributions through publications, patents, or impactful production systems

Nice to have

  • Experience with manufacturing systems, production scheduling, supply chain optimization, or industrial process control
  • Experience with Theory of Constraints or flow-based production optimization
  • Experience with real-time decision systems that operate under uncertainty
  • Experience with sim-to-real transfer or physics-informed machine learning
  • Experience with AWS services including SageMaker, and familiarity with MLOps practices
  • Experience with AI-native development practices and AI coding assistants
  • Knowledge of manufacturing execution systems (MES), SCADA, ERP, or related industrial software

What the JD emphasized

  • deliver scientifically complex solutions into production
  • invent new algorithms
  • write significant portions of critical-path scientific code
  • inventive, maintainable, scalable, and extensible
  • rigorous experimentation with reproducible results
  • Build evaluation benchmarks that measure model performance against manufacturing outcomes

Other signals

  • develop and improve machine learning systems
  • real-time manufacturing flow decisions
  • invent new algorithms
  • deliver scientifically complex solutions into production