An online auction framework for dynamic resource provisioning in cloud computing

Weijie Shi, Linquan Zhang, Chuan Wu, Zongpeng Li, F. Lau
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引用次数: 172

Abstract

Auction mechanisms have recently attracted substantial attention as an efficient approach to pricing and resource allocation in cloud computing. This work, to the authors' knowledge, represents the first online combinatorial auction designed in the cloud computing paradigm, which is general and expressive enough to both (a) optimize system efficiency across the temporal domain instead of at an isolated time point, and (b) model dynamic provisioning of heterogeneous Virtual Machine (VM) types in practice. The final result is an online auction framework that is truthful, computationally efficient, and guarantees a competitive ratio ~ e+ 1 over e-1 ~ 3.30 in social welfare in typical scenarios. The framework consists of three main steps: (1) a tailored primal-dual algorithm that decomposes the long-term optimization into a series of independent one-shot optimization problems, with an additive loss of 1 over e-1 in competitive ratio, (2) a randomized auction sub-framework that applies primal-dual optimization for translating a centralized co-operative social welfare approximation algorithm into an auction mechanism, retaining a similar approximation ratio while adding truthfulness, and (3) a primal-dual update plus dual fitting algorithm for approximating the one-shot optimization with a ratio λ close to e. The efficacy of the online auction framework is validated through theoretical analysis and trace-driven simulation studies. We are also in the hope that the framework, as well as its three independent modules, can be instructive in auction design for other related problems.
云计算中动态资源配置的在线拍卖框架
拍卖机制最近作为云计算中定价和资源分配的有效方法引起了大量关注。据作者所知,这项工作代表了在云计算范式中设计的第一个在线组合拍卖,它具有通用性和表现力,足以(a)跨时间域而不是在孤立的时间点优化系统效率,以及(b)在实践中对异构虚拟机(VM)类型的动态配置进行建模。最终的结果是一个真实的、计算效率高的在线拍卖框架,并保证在典型场景下社会福利的竞争比为~ e+ 1 / e-1 ~ 3.30。该框架包括三个主要步骤:(1)一个定制的原始对偶算法,将长期优化分解为一系列独立的一次性优化问题,竞争比损失为1 / e-1;(2)一个随机拍卖子框架,应用原始对偶优化将集中式合作社会福利近似算法转化为拍卖机制,在保持近似比的同时增加真实性;(3)采用原始-对偶更新+对偶拟合算法,使比值λ接近于e,逼近单次优化。通过理论分析和轨迹驱动仿真研究,验证了在线拍卖框架的有效性。我们也希望这个框架以及它的三个独立模块能够对其他相关问题的拍卖设计起到指导作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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