基于集成无监督和半监督学习的可靠云系统主动故障管理

Qiang Guan, Ziming Zhang, Song Fu
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引用次数: 48

摘要

云计算系统的规模和复杂性在持续增长。由于系统组件的添加和删除、执行环境的变化、频繁的更新和升级、在线维修等原因,它们也在动态变化。在这种大型复杂动态系统中,故障是常见的。在本文中,我们提出了一种利用无监督和半监督学习技术构建可靠云计算系统的故障预测机制。无监督故障检测方法使用贝叶斯模型的集合。它描述系统的正常执行状态并检测异常行为。经过系统管理员验证后,有标签的数据可用。然后,我们应用基于决策树分类器的监督学习来预测云中的未来故障发生。在一个研究院级云计算系统中的实验结果表明,该方法能够较准确地预测故障动态。
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Proactive Failure Management by Integrated Unsupervised and Semi-Supervised Learning for Dependable Cloud Systems
Cloud computing systems continue to grow in their scale and complexity. They are changing dynamically as well due to the addition and removal of system components, changing execution environments, frequent updates and upgrades, online repairs and more. In such large-scale complex and dynamic systems, failures are common. In this paper, we present a failure prediction mechanism exploiting both unsupervised and semi-supervised learning techniques for building dependable cloud computing systems. The unsupervised failure detection method uses an ensemble of Bayesian models. It characterizes normal execution states of the system and detects anomalous behaviors. After the anomalies are verified by system administrators, labeled data are available. Then, we apply supervised learning based on decision tree classier to predict future failure occurrences in the cloud. Experimental results in an institute-wide cloud computing system show that our proposed method can forecast failure dynamics with high accuracy.
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