Google Vizier:一项黑盒优化服务

D. Golovin, Benjamin Solnik, Subhodeep Moitra, G. Kochanski, J. Karro, D. Sculley
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引用次数: 663

摘要

任何足够复杂的系统,当它变得更容易实验而不是理解时,就会成为一个黑盒。因此,随着系统变得越来越复杂,黑盒优化变得越来越重要。在本文中,我们描述了Google Vizier,一个用于执行黑盒优化的Google内部服务,它已成为Google事实上的参数调整引擎。Google Vizier用于优化我们的许多机器学习模型和其他系统,并为Google的云机器学习HyperTune子系统提供核心功能。我们讨论了我们的需求、基础架构设计、底层算法以及服务提供的迁移学习和自动提前停止等高级功能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Google Vizier: A Service for Black-Box Optimization
Any sufficiently complex system acts as a black box when it becomes easier to experiment with than to understand. Hence, black-box optimization has become increasingly important as systems have become more complex. In this paper we describe Google Vizier, a Google-internal service for performing black-box optimization that has become the de facto parameter tuning engine at Google. Google Vizier is used to optimize many of our machine learning models and other systems, and also provides core capabilities to Google's Cloud Machine Learning HyperTune subsystem. We discuss our requirements, infrastructure design, underlying algorithms, and advanced features such as transfer learning and automated early stopping that the service provides.
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