An Energy-Efficient Online Parallel Scheduling Algorithm for Cloud Data Centers

Wenhong Tian, Ruini Xue, Jun Cao, Qin Xiong, Yunjun Hu
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引用次数: 4

Abstract

This paper considers online energy-efficient scheduling of real-time virtual machines (VMs) for Cloud data centers. Each request is associated with a starttime, a end-time, a processing time and demand for a Physical Machine (PM) capacity. The goal is to schedule all of the requests non-preemptively in their start-timeend- time windows, subjecting to PM capacity constraints, such that total busy time of all used PMs is minimized (called MinTBT-ON for abbreviation). This problem is a fundamental scheduling problem for parallel jobs allocation on mutliple machines, it has important applications in power-aware scheduling in cloud computing, optical network design and customer service systems and other related areas. Offline scheduling to minimize busy time is NP-hard already in the special case where all jobs have the same processing time and can be scheduled in a fixed time interval. One best-known result for MinTBT-ON problem is a g-competitive algorithm for general instances using First-Fit algorithm for unit-size jobs, where g is the total capacity of a PM. In this paper, a B-competitive algorithm, GRID is proposed and proved for general case, where B is a natural number and 1 <; B <; g. More results are obtained and applied to Cloud computing to improve energy-efficiency.
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一种高效节能的云数据中心在线并行调度算法
研究了云数据中心实时虚拟机的在线节能调度问题。每个请求都与开始时间、结束时间、处理时间和对物理机(PM)容量的需求相关联。目标是在它们的start-timeend- time窗口中非抢占性地调度所有请求,服从PM容量限制,这样所有使用的PM的总忙时间就最小化了(简称为MinTBT-ON)。该问题是多台机器上并行作业分配的基本调度问题,在云计算、光网络设计和客户服务系统等相关领域的功耗感知调度中有着重要的应用。在所有作业都具有相同的处理时间并且可以在固定的时间间隔内调度的特殊情况下,最小化繁忙时间的脱机调度已经是NP-hard了。对于MinTBT-ON问题,一个最著名的结果是对一般实例使用First-Fit算法的g竞争算法,其中g是PM的总容量。本文提出了一种B竞争算法GRID,并对B为自然数且1 <;B <;g.获得更多结果并应用于云计算以提高能源效率。
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