Distributed Dynamic Speed Scaling

R. Stanojevic, R. Shorten
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引用次数: 57

Abstract

In recent years we have witnessed a great interest in large distributed computing platforms, also known as clouds. While these systems offer enormous computing power, they are major energy consumers. In existing data centers CPUs are responsible for approximately half of the energy consumed by the servers. A promising technique for saving CPU energy consumption is dynamic speed scaling, in which the speed at which the processor is run is adjusted based on demand and performance constraints. In this paper we look at the problem of allocating the demand in the network of processors (each being capable to perform dynamic speed scaling) to minimize the global energy consumption/cost subject to a performance constraint. The nonlinear dependence between the energy consumption and the performance as well as the high variability in the energy prices result in a nontrivial resource allocation. The problem can be abstracted as a fully distributed convex optimization with a linear constraint. On the theoretical side, we propose two low-overhead fully decentralized algorithms for solving the problem of interest and provide closed-form conditions that ensure stability of the algorithms. Then we evaluate the efficacy of the optimal solution using simulations driven by the real-world energy prices. Our findings indicate a possible cost reduction of $10-40\%$ compared to power-oblivious $1/N$ load balancing, for a wide range of load factors.
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分布式动态速度缩放
近年来,我们见证了对大型分布式计算平台(也称为云)的极大兴趣。虽然这些系统提供了巨大的计算能力,但它们是主要的能源消耗者。在现有的数据中心中,cpu消耗的能量约占服务器消耗能量的一半。一种很有前途的节省CPU能耗的技术是动态速度缩放,即根据需求和性能约束来调整处理器的运行速度。在本文中,我们研究了在处理器网络中分配需求的问题(每个处理器都能够执行动态速度缩放),以在性能约束下最小化全局能耗/成本。能源消耗与性能之间的非线性依赖关系以及能源价格的高度可变性导致了一个非平凡的资源配置问题。该问题可以抽象为具有线性约束的全分布凸优化问题。在理论方面,我们提出了两种低开销的完全分散算法来解决感兴趣的问题,并提供了确保算法稳定性的封闭形式条件。然后,我们使用现实世界能源价格驱动的模拟来评估最优解决方案的有效性。我们的研究结果表明,对于广泛的负载因素,与功率无关的1/N负载平衡相比,成本可能降低10- 40%。
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