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Local Regression Based Box-Cox Transformations for Resource Management in Cloud Networks

机译:基于局部回归的Box-Cox变换用于云网络中的资源管理

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Understanding and implementing approaches to efficiently manage the infrastructure resources of cloud data centers has become essential. Energy consumption and disorganized resource usage can expensively produce an impressive increase in the operational cost of cloud services. This increase turns to a remarkable rise in the cloud customers' invoices. Providing an exceptional quality of service running on well-organized resources with efficient energy is a critical issue that needs to be carefully considered by both industrial and academics. Although, the cloud providers are trying to deliver sufficient quality of services to their customers with a comparatively proper cost. One of the effective techniques to address these issues in cloud data centers is a dynamic virtual machine consolidation. This technique intends to improve energy efficiency and resource utilization by reallocating multiple virtual machines including various workload among available hosts and turning the unutilized hosts to an ideal state. However, consolidating the virtual machines due to fluctuating workload in cloud application can cause a violation in service level agreement. In this paper, we propose a host overload detection algorithm based on the Box-Cox transformations and the local regression model to predict overloaded hosts. This algorithm transforms the historical data of the host workload by using the Box-Cox transformations technique, and it also applies the local regression to predict the future state of the selected host. The experiments and simulation results based on dynamic workloads show the proposed algorithm outperforms the other competitive host overload detection algorithms.
机译:了解和实施有效管理云数据中心基础架构资源的方法已经变得至关重要。能源消耗和混乱的资源使用可能使云服务的运营成本显着增加。这种增加导致云客户的发票显着增加。在组织良好的资源上以高效的能源运行提供卓越的服务质量是一个至关重要的问题,工业界和学术界都需要认真考虑。虽然,云提供商正在尝试以相对适当的成本为他们的客户提供足够的服务质量。动态虚拟机整合是解决云数据中心中这些问题的有效技术之一。该技术旨在通过在可用主机之间重新分配多个虚拟机(包括各种工作负载)并将未使用的主机转变为理想状态,从而提高能源效率和资源利用率。但是,由于云应用程序中工作负载的波动而合并虚拟机可能会导致违反服务级别协议。在本文中,我们提出了一种基于Box-Cox变换和局部回归模型的主机过载检测算法,以预测过载的主机。该算法使用Box-Cox转换技术转换主机工作负载的历史数据,并且还应用局部回归来预测所选主机的未来状态。基于动态工作负载的实验和仿真结果表明,该算法优于其他竞争性主机过载检测算法。

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