基于大数据的机器学习

Tyson Condie, Paul Mineiro, N. Polyzotis, Markus Weimer
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引用次数: 191

摘要

统计机器学习经历了从纯粹的学术努力到成为现代商业和科学的主要驱动力之一的阶段转变。更重要的是,最近的研究结果,如在太尺度学习[1]和非常大的神经网络[2]上的研究结果表明,尺度是质量建模的重要组成部分。本教程介绍了当前的应用程序、技术和系统,旨在促进数据库和机器学习社区之间的交叉研究。本教程涵盖了当前机器学习的大规模应用,它们的计算模型以及构建这些模型背后的工作流程。在此基础上,我们在本教程的大部分内容中介绍了当前最先进的系统支持。我们还确定了最先进技术的关键差距。这导致了研讨会的结束,我们介绍了两组开放的研究问题:为已经建立的机器学习用例提供更好的系统支持,以及为机器学习研究的最新进展提供支持。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning on Big Data
Statistical Machine Learning has undergone a phase transition from a pure academic endeavor to being one of the main drivers of modern commerce and science. Even more so, recent results such as those on tera-scale learning [1] and on very large neural networks [2] suggest that scale is an important ingredient in quality modeling. This tutorial introduces current applications, techniques and systems with the aim of cross-fertilizing research between the database and machine learning communities. The tutorial covers current large scale applications of Machine Learning, their computational model and the workflow behind building those. Based on this foundation, we present the current state-of-the-art in systems support in the bulk of the tutorial. We also identify critical gaps in the state-of-the-art. This leads to the closing of the seminar, where we introduce two sets of open research questions: Better systems support for the already established use cases of Machine Learning and support for recent advances in Machine Learning research.
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