6 or more years of experience in computer science or a related engineering field, with meaningful time delivering AI systems on physical robotic hardware
Hands-on experience leading or co-leading the design of multimodal manipulation systems combining vision, language, tactile, and proprioceptive inputs
Proven track record building simulation infrastructure (Isaac Lab and Isaac Sim, or MuJoCo) for reinforcement learning and sim-to-real transfer
Deep practical knowledge of imitation learning (including diffusion policies), deep RL, and hybrid learning approaches on real robot hardware
Experience with data pipelines for heterogeneous, high-frequency sensor data: teleoperation, tactile, vision, depth, and robot state
Strong Python and C++, with experience in ROS2 and embedded or real-time systems
Ability to translate ambiguous research problems into concrete engineering milestones and to grow junior engineers