首页> 外文会议>International Conference on Service-Oriented Computing(ICSOC 2007); 20070917-20; Vienna(AT) >Grid Application Fault Diagnosis Using Wrapper Services and Machine Learning
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Grid Application Fault Diagnosis Using Wrapper Services and Machine Learning

机译:包装服务和机器学习的网格应用故障诊断

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With increasing size and complexity of Grids manual diagnosis of individual application faults becomes impractical and time-consuming. Quick and accurate identification of the root cause of failures is an important prerequisite for building reliable systems. We describe a pragmatic model-based technique for application-specific fault diagnosis based on indicators, symptoms and rules. Customized wrapper services then apply this knowledge to reason about root causes of failures. In addition to user-provided diagnosis models we show that given a set of past classified fault events it is possible to extract new models through learning that are able to diagnose new faults. We investigated and compared algorithms of supervised classification learning and cluster analysis. Our approach was implemented as part of the Otho Toolkit that 'service-enables' legacy applications based on synthesis of wrapper service.
机译:随着网格的大小和复杂性的增加,对各个应用程序故障进行手动诊断变得不切实际且耗时。快速准确地确定故障的根本原因是构建可靠系统的重要先决条件。我们描述了一种基于实用模型的技术,用于基于指标,症状和规则的专用故障诊断。然后,定制包装服务将这些知识应用于有关故障根本原因的原因。除了用户提供的诊断模型外,我们还表明,给定一组过去分类的故障事件,可以通过学习提取能够诊断新故障的新模型。我们研究并比较了监督分类学习和聚类分析的算法。我们的方法是作为Otho Toolkit的一部分实施的,该工具包基于包装服务的综合功能“启用服务”旧版应用程序。

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