CURE: Simulation-Augmented Auto-Tuning in Robotics
Md Abir Hossen, Sonam Kharade, Jason M. O'Kane, Bradley Schmerl, David, Garlan, Pooyan Jamshidi

TL;DR
CURE introduces a causal modeling approach to identify relevant configuration options, enabling faster and transferable optimization of robot performance across different environments and platforms.
Contribution
The paper presents CURE, a novel method that leverages causal models to reduce the search space for robot configuration tuning, improving efficiency and transferability.
Findings
CURE accelerates optimization convergence compared to baseline methods.
CURE effectively transfers knowledge from simulation to physical robots.
CURE maintains high performance across different environments and robot platforms.
Abstract
Robotic systems are typically composed of various subsystems, such as localization and navigation, each encompassing numerous configurable components (e.g., selecting different planning algorithms). Once an algorithm has been selected for a component, its associated configuration options must be set to the appropriate values. Configuration options across the system stack interact non-trivially. Finding optimal configurations for highly configurable robots to achieve desired performance poses a significant challenge due to the interactions between configuration options across software and hardware that result in an exponentially large and complex configuration space. These challenges are further compounded by the need for transferability between different environments and robotic platforms. Data efficient optimization algorithms (e.g., Bayesian optimization) have been increasingly…
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Taxonomy
TopicsSimulation Techniques and Applications
MethodsSparse Evolutionary Training
