Senior Applied Scientist, Navigation

Amazon Amazon · Big Tech · San Francisco, CA · Applied Science

Senior Applied Scientist focused on designing, developing, and deploying intelligent navigation systems for advanced robotic systems. This role involves leading research in learning-based planning and control, foundation models for embodied agents, and control-theoretic approaches like MPC, with a strong emphasis on translating research into deployed, scalable systems.

What you'd actually do

  1. Design, develop, and deploy perception algorithms for robotics systems, including object detection, segmentation, tracking, depth estimation, and scene understanding
  2. Lead research initiatives in computer vision, sensor fusion and 3D perception
  3. Collaborate with cross-functional teams including robotics engineers, software engineers, and product managers to define and deliver perception capabilities
  4. Drive end-to-end ownership of ML models — from data collection and labeling strategy to training, evaluation, and deployment
  5. Mentor junior scientists and engineers; contribute to a culture of technical excellence

Skills

Required

  • Java, C++, Python or related language
  • Publications at top-tier peer-reviewed conferences or journals
  • PhD in Robotics, Computer Science, Electrical Engineering, Controls, or a related field
  • 5+ years of experience in robot navigation, motion planning, or autonomous systems
  • Deep expertise in learning-based approaches to navigation (e.g., imitation learning, reinforcement learning, neural motion planning, diffusion-based policies)
  • Strong experience with Model Predictive Control (MPC) and optimization-based planning (PyTorch, JAX, or equivalent)
  • Proven track record of translating research into deployed systems

Nice to have

  • Experience applying foundation models or large pre-trained models to robotics tasks (navigation, manipulation, or embodied AI)
  • Familiarity with world models, visual navigation, or vision-languageaction models
  • Experience with sim-to-real transfer and high-fidelity simulation environments (Isaac Sim, MuJoCo, Gazebo)
  • Knowledge of SLAM, localization, and mapping systems
  • Experience with ROS/ROS2 and real-time robotics middleware
  • Hands-on experience deploying navigation systems on physical robots in dynamic, real-world environments
  • Experience with safety-critical systems and formal verification of learned controllers
  • Familiarity with multi-agent coordination and fleet-level navigation

What the JD emphasized

  • publications at top-tier peer-reviewed conferences or journals
  • Deep expertise in learning-based approaches to navigation
  • Strong experience with Model Predictive Control (MPC)
  • Proven track record of translating research into deployed systems

Other signals

  • building the next generation of advanced robotic systems
  • seamlessly blend cutting-edge AI, sophisticated control systems, and novel mechanical design
  • develop navigation solutions that seamlessly blend data-driven intelligence with principled control-theoretic guarantees
  • lead research that bridges the gap between cutting-edge academic advances and production grade deployment