Data analytics enables energy-efficiency and robustness: from mobile to manycores, datacenters, and networks (special session paper)

S. Pasricha, J. Doppa, K. Chakrabarty, Saideep Tiku, D. Dauwe, Shi Jin, P. Pande
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引用次数: 2

Abstract

The amount of data generated and collected across computing platforms every day is not only enormous, but growing at an exponential rate. Advanced data analytics and machine-learning techniques have become increasingly essential to analyze and extract meaning from such "Big Data". These techniques can be very useful to detect patterns and trends to improve the operational behavior of computing platforms, but they also introduce a number of outstanding challenges: (1) How can we design and deploy data analytics and learning mechanisms to improve energy-efficiency in IoT and mobile devices, without introducing significant software overheads? (2) How to use machine learning and analytics techniques for effective designspace exploration during manycore chip design? (3) How can data analytics and learning improve the reliability and energy-efficiency of large-scale cloud datacenters, to cost-effectively support connected embedded and IoT platforms? (4) How can data analytics detect anomalies and increase robustness in the network backbone of emerging cloud datacenter networks? In this paper, we discuss these outstanding problems and describe far-reaching solutions applicable across the interconnected ecosystem of IoT and mobile devices, manycore chips, datacenters, and networks.
数据分析使能源效率和健壮性:从移动到多核、数据中心和网络(特别会议论文)
每天跨计算平台生成和收集的数据量不仅是巨大的,而且还在以指数级的速度增长。先进的数据分析和机器学习技术对于从“大数据”中分析和提取意义变得越来越重要。这些技术对于检测模式和趋势以改善计算平台的操作行为非常有用,但它们也引入了许多突出的挑战:(1)我们如何设计和部署数据分析和学习机制来提高物联网和移动设备的能源效率,而不引入重大的软件开销?(2)在多核芯片设计过程中,如何使用机器学习和分析技术进行有效的设计空间探索?(3)数据分析和学习如何提高大型云数据中心的可靠性和能效,从而经济高效地支持互联嵌入式和物联网平台?(4)在新兴的云数据中心网络中,数据分析如何检测异常并增加网络骨干的鲁棒性?在本文中,我们讨论了这些突出的问题,并描述了适用于物联网和移动设备、多核芯片、数据中心和网络的互联生态系统的深远解决方案。
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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