An Introduction to Zero-Order Optimization Techniques for Robotics
Robotics
2025-10-13 v2
Abstract
Zero-order optimization techniques are becoming increasingly popular in robotics due to their ability to handle non-differentiable functions and escape local minima. These advantages make them particularly useful for trajectory optimization and policy optimization. In this work, we propose a mathematical tutorial on random search. It offers a simple and unifying perspective for understanding a wide range of algorithms commonly used in robotics. Leveraging this viewpoint, we classify many trajectory optimization methods under a common framework and derive novel competitive RL algorithms.
Cite
@article{arxiv.2506.22087,
title = {An Introduction to Zero-Order Optimization Techniques for Robotics},
author = {Armand Jordana and Jianghan Zhang and Joseph Amigo and Ludovic Righetti},
journal= {arXiv preprint arXiv:2506.22087},
year = {2025}
}