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Mobile big data analytics using deep learning and apache spark

机译:使用深度学习和Apache Spark进行移动大数据分析

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摘要

The proliferation of mobile devices, such as smartphones and Internet of Things gadgets, has resulted in the recent mobile big data era. Collecting mobile big data is unprofitable unless suitable analytics and learning methods are utilized to extract meaningful information and hidden patterns from data. This article presents an overview and brief tutorial on deep learning in mobile big data analytics and discusses a scalable learning framework over Apache Spark. Specifically, distributed deep learning is executed as an iterative MapReduce computing on many Spark workers. Each Spark worker learns a partial deep model on a partition of the overall mobile, and a master deep model is then built by averaging the parameters of all partial models. This Spark-based framework speeds up the learning of deep models consisting of many hidden layers and millions of parameters. We use a context-aware activity recognition application with a real-world dataset containing millions of samples to validate our framework and assess its speedup effectiveness.
机译:智能手机和物联网小工具等移动设备的激增导致了最近的移动大数据时代。除非使用适当的分析和学习方法从数据中提取有意义的信息和隐藏模式,否则收集移动大数据是无利可图的。本文提供了有关移动大数据分析中的深度学习的概述和简短教程,并讨论了基于Apache Spark的可扩展学习框架。具体来说,分布式深度学习是作为许多Spark工作者上的迭代MapReduce计算执行的。每个Spark工作者都在整个移动设备的分区上学习局部深度模型,然后通过平均所有局部模型的参数来构建主深度模型。这个基于Spark的框架加快了对包含许多隐藏层和数百万个参数的深度模型的学习。我们将上下文感知活动识别应用程序与包含数百万个样本的真实数据集结合使用,以验证我们的框架并评估其加速效果。

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