基于模糊模型预测控制的qos驱动云资源管理

Lixi Wang, Jing Xu, H. Duran-Limon, Ming Zhao
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引用次数: 22

摘要

诸如公共云和私有云之类的虚拟化系统正在成为重要的新型计算平台,具有在Internet上方便地交付计算和有效利用通过虚拟化整合的资源方面的巨大潜力。虚拟化系统中的资源管理仍然是一个关键的挑战,因为它们本质上是动态和复杂的,其中应用程序具有动态变化的工作负载,虚拟机(vm)以复杂的方式竞争共享资源。针对这一挑战,本文提出了一种新的资源管理方法,该方法通过模糊建模有效地捕捉虚拟机资源使用中的非线性行为,并通过预测控制快速适应系统的变化。由此产生的模糊模型预测控制(FMPC)方法能够根据应用程序的QoS目标优化虚拟机资源分配。这种方法被整合到一个两级云资源管理框架中,其中在VM主机级别,节点控制器使用FMPC来优化单个主机内的动态VM资源分配,在云区域级别,全局调度器协调节点控制器,通过动态VM迁移来优化跨主机的资源利用。所提出的方法在基于xen的虚拟化系统中实现,并在具有100多个并发vm的测试台上使用典型基准(RUBiS、Free Bench)进行评估。结果表明,FMPC可以准确地模拟动态应用程序的资源需求,并优化具有复杂竞争的虚拟机的资源分配。它大大优于传统的基于线性建模的预测控制方法。两级资源管理可以有效地利用VM迁移,从而在主机级负载随时间变化时进一步提高跨主机的性能。
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QoS-Driven Cloud Resource Management through Fuzzy Model Predictive Control
Virtualized systems such as public and private clouds are emerging as important new computing platforms with great potential to conveniently deliver computing across the Internet and efficiently utilize resources consolidated via virtualization. Resource management in virtualized systems remains a key challenge because of their intrinsically dynamic and complex nature, where the applications have dynamically changing workloads and virtual machines (VMs) compete for the shared resources in a convolved manner. To address this challenge, this paper proposes a new resource management approach that can effectively capture the nonlinear behaviors in VM resource usages through fuzzy modeling and quickly adapt to the changes in the system through predictive control. The resulting fuzzy-model-predictive-control (FMPC) approach is capable of optimizing the VM resource allocations to applications according to their QoS targets. This approach is incorporated in a two-level cloud resource management framework where at the VM host level the node controllers employ FMPC to optimize dynamic VM resource allocations within individual hosts, and at the cloud zone level the global scheduler coordinates the node controllers to optimize resource utilization across hosts through dynamic VM migrations. The proposed approaches were implemented for Xen-based virtualized systems and evaluated using typical benchmarks (RUBiS, Free Bench) on a test bed with over 100 concurrent VMs. The results demonstrate that FMPC can accurately model the resource demands for dynamic applications and optimize the resource allocations to VMs with complex contentions. It substantially outperforms the traditional linear modeling based predictive control approach. The two-level resource management can make effective use of VM migrations to further improve performance across hosts as the host-level loads vary over time.
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