Real-Time Robotic Control and Optimization
Motivation
Efficient and reliable robotic control requires rapid response to sensory inputs, a challenge amplified by computational limitations in edge devices. Inconsistencies or delays in robotic commands can severely impact real-time tasks. Addressing these challenges through innovative training and optimization methods is critical for deploying responsive, high-frequency robotic systems effectively in real-world scenarios.
Research Direction
We investigate Training-Time Action Conditioning methods to ensure robotic systems deliver consistent, high-frequency motor commands, even under hardware constraints. By simulating inference delays during training, our approach conditions robotic models to anticipate and compensate for computational latency. Our research aims to guarantee smooth and precise robotic control suitable for real-time deployment on edge computing platforms.


