Component level risk assessment in Grids: A probablistic risk model and experimentation

Asif Sangrasi, K. Djemame
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引用次数: 16

Abstract

The current approaches to manage risk in Grid computing are a major step towards the provision of Quality of Service (QoS) to the end-user. However these approaches are based on node or machine level Assessment. As a node may contain CPU(s), storage devices, connections for communication and software resource, a node failure may actually be a failure of any of these components. This paper proposes a probabilistic risk model at the component level; the probabilistic risk model encompasses series and parallel model(s). Our approach towards risk assessment is aimed at a granularity level of individual components as compared to previous efforts at node level. The benefits of this probabilistic approach is the provision of a detailed risk assessment to the Grid resource provider leading to risk aware scheduling and an efficient usage of resources. Grid failure data was analyzed and experimentation was conducted based the proposed risk model. The results of the experiments provide detailed risk information at component level for the nodes required in the SLA (Service Level Agreement).
网格中组件级风险评估:一个概率风险模型与实验
目前在网格计算中管理风险的方法是向最终用户提供服务质量(QoS)的重要一步。然而,这些方法都是基于节点或机器级别的评估。由于节点可能包含CPU、存储设备、通信连接和软件资源,因此节点故障实际上可能是这些组件中的任何一个的故障。本文提出了一种构件层次的概率风险模型;概率风险模型包括串联模型和并行模型。我们的风险评估方法针对的是单个组件的粒度级别,而不是之前在节点级别的工作。这种概率方法的好处是向网格资源提供者提供详细的风险评估,从而实现风险感知调度和资源的有效使用。基于所提出的风险模型对电网失效数据进行了分析和实验。实验结果为SLA(服务水平协议)中要求的节点提供组件级别的详细风险信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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