cmaes : A Simple yet Practical Python Library for CMA-ES

Masahiro Nomura, Masashi Shibata
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Abstract

The covariance matrix adaptation evolution strategy (CMA-ES) has been highly effective in black-box continuous optimization, as demonstrated by its success in both benchmark problems and various real-world applications. To address the need for an accessible yet potent tool in this domain, we developed cmaes, a simple and practical Python library for CMA-ES. cmaes is characterized by its simplicity, offering intuitive use and high code readability. This makes it suitable for quickly using CMA-ES, as well as for educational purposes and seamless integration into other libraries. Despite its simplistic design, cmaes maintains enhanced functionality. It incorporates recent advancements in CMA-ES, such as learning rate adaptation for challenging scenarios, transfer learning, and mixed-integer optimization capabilities. These advanced features are accessible through a user-friendly API, ensuring that cmaes can be easily adopted in practical applications. We regard cmaes as the first choice for a Python CMA-ES library among practitioners. The software is available under the MIT license at https://github.com/CyberAgentAILab/cmaes.
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cmaes :用于 CMA-ES 的简单实用的 Python 库
协方差矩阵适应演化策略(CMA-ES)在黑盒连续优化中非常有效,它在基准问题和各种实际应用中的成功都证明了这一点。为了满足这一领域对易用而强大的工具的需求,我们开发了用于 CMA-ES 的简单实用的 Python 库 cmaes。这使它既适合快速使用 CMA-ES,也适合教育目的和与其他库的无缝集成。尽管设计简单,但 cmaes 仍保持了增强的功能。它集成了 CMA-ES 的最新进展,如针对挑战性场景的学习率适应、迁移学习和混合整数优化功能。这些高级功能可通过用户友好的应用程序接口访问,确保 cmaes 可以轻松应用于实际应用中。我们认为 cmaes 是从业人员首选的 Python CMA-ES 库。该软件采用麻省理工学院(MIT)许可证,网址为 https://github.com/CyberAgentAILab/cmaes。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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