ZOOpt: Toolbox for Derivative-Free Optimization
Abstract
Recent advances in derivative-free optimization allow efficient approximation of the global-optimal solutions of sophisticated functions, such as functions with many local optima, non-differentiable and non-continuous functions. This article describes the ZOOpt (Zeroth Order Optimization) toolbox that provides efficient derivative-free solvers and is designed easy to use. ZOOpt provides single-machine parallel optimization on the basis of python core and multi-machine distributed optimization for time-consuming tasks by incorporating with the Ray framework -- a famous platform for building distributed applications. ZOOpt particularly focuses on optimization problems in machine learning, addressing high-dimensional and noisy problems such as hyper-parameter tuning and direct policy search. The toolbox is maintained toward a ready-to-use tool in real-world machine learning tasks.
Cite
@article{arxiv.1801.00329,
title = {ZOOpt: Toolbox for Derivative-Free Optimization},
author = {Yu-Ren Liu and Yi-Qi Hu and Hong Qian and Chao Qian and Yang Yu},
journal= {arXiv preprint arXiv:1801.00329},
year = {2022}
}
Comments
SCIENCE CHINA Information Sciences, 2022. Codes: https://github.com/polixir/ZOOpt