A teacher agent generates training tasks by monitoring the robot's live performance, while grounding the curriculum in real-world task distributions.
A teacher re-weights auxiliary rewards as the robot's proficiency grows โ training wheels that fade away on their own.
Plan with full robot dynamics near the robot, and progressively simpler dynamics along the horizon โ full fidelity exactly where it matters.
Surface normal consistency resolves the double-sided mapping problem for thin structures like walls and doors.
Ph.D. student in Computer Science at George Mason University's RobotiXX Lab, advised by Dr. Xuesu Xiao. I study how robots can learn complex behaviors efficiently โ by training on the right task, at the right difficulty, at the right time. Before this: M.S. at Carnegie Mellon, B.S. at Cincinnati, and a summer building statistical testing infrastructure at AWS.