面向云计算基础设施的自适应异常检测系统

H. Pannu, Jianguo Liu, Song Fu
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引用次数: 50

摘要

由于用户无需拥有和维护复杂的计算基础设施,云计算变得越来越流行。然而,生产云计算系统由于其固有的复杂性和庞大的规模,容易出现各种硬件和软件故障导致的运行时问题。自主故障检测是一项关键技术,用于理解突发的、云范围现象和自管理云资源,以保证系统级的可靠性。为了检测故障,我们需要监视云执行并收集运行时性能数据。这些数据通常是未标记的,因此以前的故障历史记录在生产云中并不总是可用的,特别是对于新管理或部署的系统。本文提出了一种用于云可靠性保证的自适应异常检测(AAD)框架。采用超球数据描述进行自适应故障检测。AAD根据云性能数据检测可能出现的故障,并由云运营商进行验证。它们被确认为具有故障类型或正常状态的真故障。该算法通过递归学习这些新验证的检测结果来改进未来的检测。同时,它利用云运营商报告的观察到但未检测到的故障记录来识别新的故障类型。我们已经实现了该算法的原型,并在校园云计算环境中进行了实验。实验结果表明,与现有的故障检测方案相比,AAD能够实现更高效、更准确的故障检测。
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AAD: Adaptive Anomaly Detection System for Cloud Computing Infrastructures
Cloud computing has become increasingly popular by obviating the need for users to own and maintain complex computing infrastructure. However, due to their inherent complexity and large scale, production cloud computing systems are prone to various runtime problems caused by hardware and software failures. Autonomic failure detection is a crucial technique for understanding emergent, cloudwide phenomena and self-managing cloud resources for system-level dependability assurance. To detect failures, we need to monitor the cloud execution and collect runtime performance data. These data are usually unlabeled, and thus a prior failure history is not always available in production clouds, especially for newly managed or deployed systems. In this paper, we present an Adaptive Anomaly Detection (AAD) framework for cloud dependability assurance. It employs data description using hypersphere for adaptive failure detection. Based on the cloud performance data, AAD detects possible failures, which are verified by the cloud operators. They are confirmed as either true failures with failure types or normal states. The algorithm adapts itself by recursively learning from these newly verified detection results to refine future detections. Meanwhile, it exploits the observed but undetected failure records reported by the cloud operators to identify new types of failures. We have implemented a prototype of the algorithm and conducted experiments in an on-campus cloud computing environment. Our experimental results show that AAD can achieve more efficient and accurate failure detection than other existing scheme.
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