An Evaluation of Low Overhead Time Series Preprocessing Techniques for Downstream Machine Learning

Matthew L. Weiss, Joseph McDonald, David Bestor, Charles Yee, Daniel Edelman, Michael Jones, Andrew Prout, Andrew Bowne, Lindsey McEvoy, V. Gadepally, S. Samsi
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Abstract

In this paper we address the application of pre-processing techniques to multi-channel time series data with varying lengths, which we refer to as the alignment problem, for downstream machine learning. The misalignment of multi-channel time series data may occur for a variety of reasons, such as missing data, varying sampling rates, or inconsistent collection times. We consider multi-channel time series data collected from the MIT SuperCloud High Performance Computing (HPC) center, where different job start times and varying run times of HPC jobs result in misaligned data. This misalignment makes it challenging to build AI/ML approaches for tasks such as compute workload classification. Building on previous supervised classification work with the MIT SuperCloud Dataset, we address the alignment problem via three broad, low overhead approaches: sampling a fixed subset from a full time series, performing summary statistics on a full time series, and sampling a subset of coefficients from time series mapped to the frequency domain. Our best performing models achieve a classification accuracy greater than 95%, outperforming previous approaches to multi-channel time series classification with the MIT SuperCloud Dataset by 5 %. These results indicate our low overhead approaches to solving the alignment problem, in conjunction with standard machine learning techniques, are able to achieve high levels of classification accuracy, and serve as a baseline for future approaches to addressing the alignment problem, such as kernel methods.
用于下游机器学习的低开销时间序列预处理技术评价
在本文中,我们讨论了预处理技术在多通道时间序列数据中的应用,这些数据具有不同的长度,我们称之为对齐问题,用于下游机器学习。多通道时间序列数据的不对齐可能是由于多种原因造成的,例如数据丢失、采样率变化或收集时间不一致。我们考虑从MIT SuperCloud高性能计算(HPC)中心收集的多通道时间序列数据,其中不同的作业启动时间和不同的HPC作业运行时间导致数据不一致。这种偏差使得为计算工作负载分类等任务构建AI/ML方法变得具有挑战性。在之前MIT SuperCloud数据集的监督分类工作的基础上,我们通过三种广泛的、低开销的方法来解决校准问题:从完整时间序列中采样固定子集,在完整时间序列上执行汇总统计,以及从映射到频域的时间序列中采样系数子集。我们表现最好的模型实现了超过95%的分类精度,比以前使用MIT SuperCloud数据集进行多通道时间序列分类的方法高出5%。这些结果表明,我们解决对齐问题的低开销方法,与标准机器学习技术相结合,能够实现高水平的分类精度,并作为解决对齐问题的未来方法(如核方法)的基线。
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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