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Detecting and diagnosing application misbehaviors in #x2018;on-demand#x2019; virtual computing infrastructures

机译:在“按需”虚拟计算基础架构中检测和诊断应用不端行为

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Numerous automated anomaly detection and application performance modeling and management tools are available to detect and diagnose faulty application behavior. However, these tools have limited utility in ‘on-demand’ virtual computing infrastructures because of the increased tendencies for the applications in virtual machines to migrate across un-comparable hosts in virtualized environments and the unusually long latency associated with the training phase. The relocation of the application subsequent to the training phase renders the already collected data meaningless and the tools need to re-initiate the learning process on the new host afresh. Further, data on several metrics need to be correlated and analyzed in real time to infer application behavior. The multivariate nature of this problem makes detection and diagnosis of faults in real time all the more challenging as any suggested approach must be scalable. In this paper, we provide an overview of a system architecture for detecting and diagnosing anomalous application behaviors even as applications migrate from one host to another and discuss a scalable approach based on Hotelling's T2 statistic and MYT decomposition. We show that unlike existing methods, the computations in the proposed fault detection and diagnosis method is parallelizable and hence scalable.
机译:可以使用许多自动化异常检测和应用性能建模和管理工具来检测和诊断有错误的应用行为。然而,这些工具在“按需”虚拟计算基础架构中具有有限的实用程序,因为虚拟机中的应用程序的趋势增加,以跨虚拟化环境中的不可比较的主机迁移以及与训练阶段相关联的异常长期延迟。在培训阶段之后的应用程序的重新定位呈现出已经收集的数据毫无意义,并且工具需要重新启动新主机上的学习过程。此外,有关几个度量的数据需要实时相关并分析以推断应用行为。此问题的多变量性质使得实时对故障的检测和诊断变得更具挑战性,因为任何建议的方法都必须可扩展。在本文中,我们还提供了一种系统架构,用于检测和诊断异常应用行为,即使应用程序从一个主机迁移到另一个主机并讨论了基于Hotling的T 2 统计和Myt分解的可扩展方法。我们表明,与现有方法不同,所提出的故障检测和诊断方法中的计算是平行化的,因此可扩展。

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