Applied Scientist III — Robotics & Physical Ai, Autonomous Lab, Ww Sustainability

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

Robotics scientist to build and operate the first autonomous materials discovery laboratory at Amazon, combining robotics expertise with Physical AI approaches. The role involves designing autonomous experimental workflows, integrating robotic platforms and instruments, and building production-grade agentic runtime systems. While publication is encouraged, the primary success measure is a working autonomous platform that generates scientific results.

What you'd actually do

  1. Develop, train, and benchmark robotic manipulation policies for materials synthesis and characterization using modern policy architectures (VLA architectures, diffusion policies).
  2. Design and execute sim-to-real transfer strategies including domain randomization, physics parameter tuning, and visual domain adaptation for laboratory robotic systems.
  3. Integrate robotic platforms and laboratory instruments into automated workflows via APIs (SiLA 2, or equivalent), building real-time data pipelines for multimodal experimental outputs.
  4. Architect policy training pipelines combining teleoperation data, synthetic demonstrations, reinforcement learning, and imitation learning for dexterous lab manipulation.
  5. Build production-grade agentic runtime systems — failure detection, retry logic, exception handling, and human-handoff protocols — for unattended experimental sessions.

Skills

Required

  • Master's degree, or PhD
  • 3+ years of industry or academic research experience
  • Knowledge of programming languages such as C/C++, Python, Java or Perl
  • Experience with popular deep learning frameworks such as MxNet and Tensor Flow.

Nice to have

  • First-hand sim-to-real transfer experience: policies trained in simulation, successfully deployed on physical hardware.
  • Experience with VLA or robot policy architectures (OpenVLA, π0, RT-2, or equivalent).
  • 2+ years with collaborative robot platforms including motion planning, impedance/force control, and multi-step manipulation.
  • Experience building agentic AI systems for multi-step workflows including failure recovery and foundation model reasoning.
  • Experience with self-driving laboratory (SDL) systems or automated chemical synthesis platforms.
  • Publications in top-tier venues (NeurIPS, ICML, ICLR, ICRA, CoRL, RSS).

What the JD emphasized

  • primary measure of success is a working autonomous platform that generates scientific results
  • strong AI and robotics foundations
  • drive to ship
  • build production-grade agentic runtime systems

Other signals

  • building autonomous systems
  • integrating AI with robotics
  • shipping working platforms