云基础设施故障自动诊断

Qian Zhu, Teresa Tung, Qing Xie
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引用次数: 15

摘要

有了云计算,故障诊断和恢复的循环成为常态。有大量的监视数据和日志事件可用,但是很难确定哪些事件或度量在故障诊断中是关键的。其他方法将故障建模为对正常行为的偏离,因此不太适用于云中,因为环境的变化可能会影响被认为是正常的。在这项工作中,我们提出了一个自适应的、灵活的故障诊断框架来自动识别关键故障指标和检测故障模式。利用来自社交媒体的想法,我们代表了指标和事件之间的层次关系,以及它们与错误的关系。我们应用EdgeRank算法来确定导致故障的关键事件。我们的方法适用于不同的环境,以检测潜在的故障。我们使用基于云的企业系统来评估我们的框架,使用注入故障列表,这些故障从环境(例如虚拟机或网络)到应用程序退化都有所不同。我们考虑了私有云和公共云。我们的解决方案以适度的开销实现了超过90%的检测精度。我们的方法的比较表明,它比文献中的替代方法更准确。
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Automatic Fault Diagnosis in Cloud Infrastructure
With cloud computing, a cycle of fault diagnosis and recovery becomes the norm. There is a large amount of monitoring data and log events available, but it is hard to figure out which events or metrics are critical in fault diagnosis. Other approaches model faults as a deviation from normal behaviors, and thus are less applicable in cloud where changes in the environment may impact what is considered normal. In this work, we propose an adaptive and flexible fault diagnosis framework to automatically identify the key fault indicators and detect fault patterns. Leveraging ideas from social media, we represent the hierarchical relationships among metrics and events as well as how they relate to faults. We apply the EdgeRank algorithm to decide the key events that contribute to a fault. Our approach works across different environments to detect the potential faults. We evaluated our framework using a cloud-based enterprise system using a list of injected faults that vary from environmental (e.g. virtual machine or network) to application degradation. We considered both private and public clouds. Our solution achieves over 90% detection accuracy with modest overhead. A comparison of our approach shows it is more accurate than alternative approaches in the literature.
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