Assessing risk in Grids at resource level considering Grid resources as repairable using two state Semi Markov model

Asif Sangrasi, K. Djemame
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引用次数: 1

Abstract

Service Level Agreements in Grids improve upon the Best Effort Approach which provides no guarantees for provision of any Quality of Service (QoS) between the End User and the Resource Provider. Risk Assessment in Grids improves upon SLA by provision of Risk information to resource provider. Most of the previous studies of Risk Assessment in Grids work at node level. As a node failure can be a failure of any component such as Disk, CPU, Memory, Software, etcetera, the risk assessment at component level in Grids was introduced. In this work, we propose a Risk Assessment Model at component level while considering Grid resources as repairable. This work can be differentiated from the other works by the fact that the past efforts in Risk Assessment in Grids consider Grid Resources as replaceable rather than repairable. This Semi Markov model relies on the distribution fitting for both time to Failure and Time to Repair, extracted from the Grid Failure data during the data analysis section. By using Grid Failure data, the utilization of this Grid model is demonstrated by providing (Probability of Failure) PoF and (Probability of Repair) PoR values for different components. The experimental results indicate the PoF and PoR behave vary differently with the latter showing considerably times required for repair as compared to expectance of a failure. The risk information provided by this Risk Assessment Model will help Resource provider to use the Grid Resources efficiently and achieve effective scheduling.
基于两态半马尔可夫模型的网格资源可修复风险评估
网格中的服务水平协议改进了“最佳努力”方法,后者不保证在最终用户和资源提供者之间提供任何服务质量(QoS)。网格风险评估通过向资源提供者提供风险信息来改进SLA。以往的网格风险评估研究大多是在节点层面进行的。由于节点故障可能是磁盘、CPU、内存、软件等任何组件的故障,因此引入了网格中组件级别的风险评估。在这项工作中,我们提出了一个组件级别的风险评估模型,同时考虑网格资源是可修复的。这项工作与其他工作的区别在于,过去的网格风险评估工作认为网格资源是可替换的,而不是可修复的。该半马尔可夫模型依赖于从数据分析部分提取的电网故障数据中提取的故障时间和修复时间的分布拟合。利用网格故障数据,通过提供不同部件的故障概率PoF和修复概率PoR值来证明该网格模型的有效性。实验结果表明,PoF和PoR的行为不同,后者显示修复所需的时间与预期故障相比相当大。该风险评估模型提供的风险信息有助于资源提供者有效地利用网格资源,实现有效的调度。
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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