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Cost Minimization for Big Data Processing in Geo-Distributed Data Centers

机译:地理分布数据中心中大数据处理的成本最小化

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摘要

The explosive growth of demands on big data processing imposes a heavy burden on computation, storage, and communication in data centers, which hence incurs considerable operational expenditure to data center providers. Therefore, cost minimization has become an emergent issue for the upcoming big data era. Different from conventional cloud services, one of the main features of big data services is the tight coupling between data and computation as computation tasks can be conducted only when the corresponding data are available. As a result, three factors, i.e., task assignment, data placement, and data movement, deeply influence the operational expenditure of data centers. In this paper, we are motivated to study the cost minimization problem via a joint optimization of these three factors for big data services in geo-distributed data centers. To describe the task completion time with the consideration of both data transmission and computation, we propose a 2-D Markov chain and derive the average task completion time in closed-form. Furthermore, we model the problem as a mixed-integer nonlinear programming and propose an efficient solution to linearize it. The high efficiency of our proposal is validated by extensive simulation-based studies.
机译:大数据处理需求的爆炸性增长给数据中心的计算,存储和通信带来了沉重负担,因此给数据中心提供商带来了可观的运营支出。因此,在即将到来的大数据时代,成本最小化已成为一个紧急问题。与传统的云服务不同,大数据服务的主要特征之一是数据与计算之间的紧密耦合,因为只有当相应的数据可用时才能执行计算任务。结果,三个因素,即任务分配,数据放置和数据移动,深刻影响数据中心的运营支出。本文旨在通过对这三个因素的联合优化来研究地理分布数据中心大数据服务的成本最小化问题。为了描述同时考虑数据传输和计算的任务完成时间,我们提出了二维马尔可夫链,并以封闭形式得出平均任务完成时间。此外,我们将该问题建模为混合整数非线性规划,并提出了将其线性化的有效解决方案。我们的建议的高效率已通过广泛的基于仿真的研究得到验证。

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