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Autonomic performance management of cloud server based on adaptive control method

机译:基于自适应控制方法的云服务器自主性能管理

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Cloud computing provides a promising approach for efficiently managing the performance of servers via advanced resource management, hence it becomes one of the important hotspots in high-performance computing field recently. For the existing performance management solutions of cloud servers, they always show inefficiency issues when dealing with the dynamic and burst web workloads. In this paper, we propose an autonomic performance management of cloud servers, which adopt the linear quadratic Gaussian with stochastic method (LQGwS). In the face of dynamic and burst web workloads, it guarantees the workload balance between different Web applications by adaptively adjusting the amount of resource allocation to each virtual machine. Furthermore, in order to deal with the unknown disturbances in the Web system, the LQGwS describes the Web system as a coupled multiple-input-multiple-output system and uses the Autoregressive moving-average model with exogenous inputs model (ARMAX) firstly, and then constructs the optimal resource allocation scheme based on minimizing an average cost function among a set of models, which are generated according to a Gauss distribution. Through the test of real network load, the results of this experiment on the XEN-based platform show that the proposed control strategy has better performance than existing solutions under dynamical workloads in terms of control accuracy and stability.
机译:云计算为通过高级资源管理有效管理服务器性能提供了一种有前途的方法,因此,云计算已成为近年来高性能计算领域的重要热点之一。对于现有的云服务器性能管理解决方案,它们在处理动态和突发Web工作负载时始终显示效率低下的问题。在本文中,我们提出了一种云服务器的自主性能管理,它采用带有随机方法的线性二次高斯算法(LQGwS)。面对动态和突发的Web工作负载,它通过自适应地调整分配给每个虚拟机的资源数量来确保不同Web应用程序之间的工作负载平衡。此外,为了处理Web系统中的未知干扰,LQGwS将Web系统描述为耦合的多输入多输出系统,并首先使用带有外源输入模型(ARMAX)的自回归移动平均模型,以及然后基于最小化根据高斯分布生成的一组模型中的平均成本函数,构造最优资源分配方案。通过对实际网络负载的测试,在基于XEN的平台上进行的实验结果表明,在动态工作负载下,所提出的控制策略在控制精度和稳定性方面都比现有解决方案具有更好的性能。

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