What You'll Do
-
Design, implement, and evaluate humanoid manipulation and loco-manipulation behaviors on real hardware
-
Integrate perception, planning, control, grasping, whole-body coordination, and task execution into deployable robot workflows
-
Run hardware experiments, analyze failures, and improve manipulation reliability across diverse objects, environments, and tasks
-
Partner with system integration, hardware, field application, and testing teams to move capabilities from prototype to deployment
-
Support teleoperation, data collection, and human-in-the-loop workflows for improving manipulation performance
-
Build tools, metrics, and evaluation protocols for manipulation success, repeatability, failure recovery, and operator usability
-
Debug cross-domain issues spanning software, sensors, actuators, end-effectors, calibration, timing, and field conditions
What You Bring
-
MS or PhD in Robotics, Mechanical Engineering, Computer Science, or a related field preferred; BS considered with a demonstrated track record of hands-on robotics work across multiple physical systems — research projects, competition robotics, or internships with daily hardware exposure
-
Hands-on experience with robotic manipulation, humanoids, mobile manipulation, dexterous hands, or contact-rich robotics — must include physical hardware; simulation-only backgrounds will not be considered
-
Strong foundation in kinematics, dynamics, motion planning, control, and real robot experimentation
-
Experience with C++, Python, ROS/ROS2, and Linux in a real robotics codebase
-
Demonstrated ability to iterate quickly from experiment to working behavior on physical hardware; comfortable running daily hardware experiments, analyzing failures, and adapting approach in real-time
-
Background appropriate for a junior-to-mid engineer; fresh MS and PhD graduates welcome
What Sets You Apart
-
Experience with humanoid platforms or contact-rich, dexterous manipulation systems — you've worked with robots that have hands, not just grippers
-
Background in robot learning applied to physical hardware: imitation learning, reinforcement learning, or task and motion planning that you've validated on a real robot, not just in simulation
-
You've taken a manipulation capability from prototype to reliable, repeatable field behavior — you know what it takes to close that gap and you've done it
-
Track record of building evaluation frameworks for manipulation: test suites, metrics for success and failure, and the discipline to document and learn from what breaks
