Kusic Dara, Kandasamy Nagarajan, Jiang Guofei
Electrical and Computer Engineering Department, DrexelUniversity, Philadelphia, PA 19104, USA.
IEEE Trans Syst Man Cybern B Cybern. 2008 Oct;38(5):1221-33. doi: 10.1109/TSMCB.2008.925756.
A promising method of automating management tasks in computing systems is to formulate them as control or optimization problems in terms of performance metrics. For an online optimization scheme to be of practical value in a distributed setting, however, it must successfully tackle the curses of dimensionality and modeling. This paper develops a hierarchical control framework to solve performance management problems in distributed computing systems operating in a data center. Concepts from approximation theory are used to reduce the computational burden of controlling such large-scale systems. The relevant approximations are made in the construction of the dynamical models to predict system behavior and in the solution of the associated control equations. Using a dynamic resource-provisioning problem as a case study, we show that a computing system managed by the proposed control framework with approximation models realizes profit gains that are, in the best case, within 1% of a controller using an explicit model of the system.
在计算系统中,一种很有前景的自动化管理任务的方法是根据性能指标将其表述为控制或优化问题。然而,要使在线优化方案在分布式环境中具有实际价值,它必须成功应对维度灾难和建模问题。本文开发了一种分层控制框架,以解决在数据中心运行的分布式计算系统中的性能管理问题。近似理论中的概念被用于减轻控制此类大规模系统的计算负担。在构建用于预测系统行为的动态模型以及求解相关控制方程时进行了相关近似。以动态资源供应问题为例,我们表明,由具有近似模型的所提出的控制框架管理的计算系统实现的利润增益,在最佳情况下,与使用系统显式模型的控制器相差不到1%。