一种用于租户域中多租户问题检测的机器学习审计模型

Cleverton Vicentini, A. Santin, E. Viegas, Vilmar Abreu
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引用次数: 10

摘要

云计算本质上是基于多租户的,这使得物理主机可以在多个租户(客户)之间共享。在这种情况下,由于几个原因,云提供商可能会通过托管更多的租户而使物理机器过载。在这种情况下,租户可能会遇到应用程序性能问题。但是,租户无法确定原因,因为大多数云提供商不提供用于客户监控的性能指标,或者当他们提供性能指标时,这些指标可能存在偏差。本研究提出了一个两层审计模型,用于识别租户域中的多租户问题。我们的建议依赖于与应用程序和虚拟资源度量(在租户域中收集)一起提供的机器学习技术,以识别分布式应用程序上下文中的过载资源。使用Apache Storm作为案例研究的评估表明,无论受影响的资源如何,我们的建议都能够识别出经历至少6%多租户干扰的节点,假阳性或假阴性率低于1%。尽管如此,我们的模型还是能够针对不同的硬件配置,基于私有云测试平台监控推广多租户干扰行为。因此,系统管理员可以监视公共云提供商中的应用程序,而无需拥有任何硬件级性能指标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Machine Learning Auditing Model for Detection of Multi-Tenancy Issues Within Tenant Domain
Cloud computing is intrinsically based on multi-tenancy, which enables a physical host to be shared amongst several tenants (customers). In this context, for several reasons, a cloud provider may overload the physical machine by hosting more tenants that it can adequately handle. In such a case, a tenant may experience application performance issues. However, the tenant is not able to identify the causes, since most cloud providers do not provide performance metrics for customer monitoring, or when they do, the metrics can be biased. This study proposes a two-tier auditing model for the identification of multi-tenancy issues within the tenant domain. Our proposal relies on machine learning techniques fed with application and virtual resource metrics, gathered within the tenant domain, for identifying overloading resources in a distributed application context. The evaluation using Apache Storm as a case study, has shown that our proposal is able to identify a node experiencing multi-tenancy interference of at least 6%, with less than 1% false-positive or false-negative rates, regardless of the affected resource. Nonetheless, our model was able to generalize the multi-tenancy interference behavior based on private cloud testbed monitoring, for different hardware configurations. Thus, a system administrator can monitor an application in a public cloud provider, without possessing any hardware-level performance metrics.
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