Advanced ECHMM-Based Machine Learning Tools for Complex Big Data Applications

A. Cuzzocrea, E. Mumolo, G. Vercelli
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Abstract

We present a novel approach for accurate characterization of workloads, which is relevant in the context of complex big data applications.Workloads are generally described with statistical models and are based on the analysis of resource requests measurements of a running program. In this paper we propose to consider the sequence of virtual memory references generated from a program during its execution as a temporal series, and to use spectral analysis principles to process the sequence. However, the sequence is time-varying, so we employed processing approaches based on Ergodic Continuous Hidden Markov Models (ECHMMs) which extend conventional stationary spectral analysis approaches to the analysis of time-varying sequences. In this work, we describe two applications of the proposed approach: the on-line classification of a running process and the generation of synthetic traces of a given workload. The first step was to show that ECHMMs accurately describe virtual memory sequences; to this goal a different ECHMM was trained for each sequence and the related run-time average process classification accuracy, evaluated using trace driven simulations over a wide range of traces of SPEC2000, was about 82%. Then, a single ECHMM was trained using all the sequences obtained from a given running application; again, the classification accuracy has been evaluated using the same traces and it resulted about 76%. As regards the synthetic trace generation, a single ECHMM characterizing a given application has been used as a stochastic generator to produce benchmarks for spanning a large application space.
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用于复杂大数据应用的先进的基于echmm的机器学习工具
我们提出了一种准确表征工作负载的新方法,这与复杂的大数据应用相关。工作负载通常用统计模型来描述,并基于对正在运行的程序的资源请求度量的分析。在本文中,我们建议将程序在执行过程中产生的虚拟内存引用序列视为一个时间序列,并使用谱分析原理来处理该序列。然而,序列是时变的,因此我们采用了基于遍历连续隐马尔可夫模型(echmm)的处理方法,将传统的平稳谱分析方法扩展到时变序列的分析。在这项工作中,我们描述了所提出方法的两种应用:运行过程的在线分类和给定工作负载的合成轨迹的生成。第一步是证明echmm准确地描述了虚拟内存序列;为了实现这一目标,每个序列都训练了不同的ECHMM,相关的运行时平均过程分类精度(在SPEC2000的大范围轨迹上使用轨迹驱动模拟进行评估)约为82%。然后,使用从给定运行应用程序中获得的所有序列训练单个ECHMM;同样,使用相同的轨迹评估了分类精度,结果约为76%。至于合成跟踪生成,表征给定应用程序的单个ECHMM已被用作随机生成器,以生成跨越大型应用程序空间的基准。
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