Overlapping experiment infrastructure: more, better, faster experimentation

Diane Tang, Ashish Agarwal, Deirdre O'Brien, Mike Meyer
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引用次数: 288

Abstract

At Google, experimentation is practically a mantra; we evaluate almost every change that potentially affects what our users experience. Such changes include not only obvious user-visible changes such as modifications to a user interface, but also more subtle changes such as different machine learning algorithms that might affect ranking or content selection. Our insatiable appetite for experimentation has led us to tackle the problems of how to run more experiments, how to run experiments that produce better decisions, and how to run them faster. In this paper, we describe Google's overlapping experiment infrastructure that is a key component to solving these problems. In addition, because an experiment infrastructure alone is insufficient, we also discuss the associated tools and educational processes required to use it effectively. We conclude by describing trends that show the success of this overall experimental environment. While the paper specifically describes the experiment system and experimental processes we have in place at Google, we believe they can be generalized and applied by any entity interested in using experimentation to improve search engines and other web applications.
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重叠实验基础设施:更多、更好、更快的实验
在谷歌,实验实际上是一个咒语;我们评估几乎每一个可能影响用户体验的变化。这些变化不仅包括明显的用户可见的变化,如修改用户界面,还包括更微妙的变化,如不同的机器学习算法,可能会影响排名或内容选择。我们对实验的贪得无厌的欲望使我们解决了如何进行更多的实验,如何进行实验以产生更好的决策,以及如何更快地进行实验的问题。在本文中,我们描述了谷歌的重叠实验基础设施,这是解决这些问题的关键组成部分。此外,由于实验基础设施本身是不够的,我们还讨论了有效使用它所需的相关工具和教育过程。最后,我们描述了显示这个整体实验环境成功的趋势。虽然这篇论文专门描述了我们在谷歌的实验系统和实验过程,但我们相信它们可以被任何有兴趣使用实验来改进搜索引擎和其他网络应用程序的实体推广和应用。
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