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首页> 外文期刊>International Journal of Distributed Sensor Networks >On dynamic performance estimation of fault-prone Infrastructure-as-a-Service clouds
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On dynamic performance estimation of fault-prone Infrastructure-as-a-Service clouds

机译:易于故障发生的基础设施即服务云的动态性能估计

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摘要

The cloud computing paradigm enables elastic resources to be scaled at run time satisfy customers’ demand. Cloud computing provisions on-demand service to users based on a pay-as-you-go manner. This novel paradigm enables cloud users or tenant users to afford computational resources in the form of virtual machines as utilities, just like electricity, instead of paying for and building computing infrastructures by their own. Performance usually specified through service level agreement performance commitment of clouds is one of key research challenges and draws great research interests. Thus, performance issues of cloud infrastructures have been receiving considerable interest by both researchers and practitioners as a prominent activity for improving cloud quality. This work develops an analytical approach to dynamic performance modeling and trend prediction of fault-prone Infrastructure-as-a-Service clouds. The proposed analytical approach is based on a time-series and stochastic-process-based model. It is capable of predicting the expected system responsiveness and request rejection rate under variable load intensities, fault frequencies, multiplexing abilities, and instantiation processing times. A comparative study between theoretical and measured performance results through a real-world campus cloud is carried out to prove the correctness and accuracy of the proposed prediction approach.
机译:云计算范例使弹性资源可以在运行时进行扩展,以满足客户的需求。云计算基于按需付费的方式向用户提供按需服务。这种新颖的范例使云用户或租户用户能够以虚拟机的形式像公用事业一样以实用程序的形式提供计算资源,而不必自己付费和构建计算基础架构。通常通过服务级别协议指定的性能是云的性能承诺,这是关键的研究挑战之一,并引起了极大的研究兴趣。因此,作为提高云质量的重要活动,研究人员和从业人员都对云基础设施的性能问题产生了浓厚的兴趣。这项工作开发了一种分析方法,用于对易错基础架构即服务云进行动态性能建模和趋势预测。所提出的分析方法基于时间序列和基于随机过程的模型。它能够在可变的负载强度,故障频率,多路复用能力和实例化处理时间下预测预期的系统响应速度和请求拒绝率。通过真实的校园云对理论和实测性能结果进行了比较研究,以证明所提出的预测方法的正确性和准确性。

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