Optimal Cloud Instance Acquisition via IaaS Cloud Brokerage with Volume Discount

Ning Wang, Jie Wu
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引用次数: 4

Abstract

Commercial cloud providers, e.g., Amazon EC2, offer the volume discount for large instance reservation in a time slot, and the majority of cloud jobs are delay-tolerant and do not need to be processed intermittently. These two features create an opportunity for the cloud brokerage service which aggregates and schedules cloud users' rental requests to earn volume discounts from cloud providers and sell to cloud users at a cheap price. A challenge for the broker is to properly schedule delay-tolerant jobs in order to maximize the volume discount amount over time. The scheduling idea is to generate several job bundles so each job bundle can get discount. In this paper, we discuss this problem from the homogeneous model first, where each job has the same processing time and delay-tolerant time, and we propose a dynamic programming approach. Then, we extend the model into the heterogeneous model, where the job processing time and the job deadline can be arbitrary values. In the heterogeneous scenario, we prove that the proposed problem is NP-hard even when the job processing time is unit. Then, we propose a greedy approach which turns out to have an approximation of $O(\ln n)$, where $n$ is the total job number. Extensive trace-driven experiments from Google cluster trace demonstrates that our schemes achieve good performances.
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通过IaaS云经纪获得最佳云实例,并提供批量折扣
商业云提供商,例如Amazon EC2,在一个时间段内为大型实例预订提供批量折扣,并且大多数云作业是延迟容忍的,不需要间歇处理。这两个特性为云经纪服务创造了机会,该服务可以聚合和安排云用户的租赁请求,从而从云提供商那里获得批量折扣,并以低廉的价格出售给云用户。经纪人面临的一个挑战是如何合理地安排可容忍延迟的作业,以便随着时间的推移使批量折扣金额最大化。调度思想是生成多个作业包,使每个作业包都能获得折扣。本文首先从具有相同加工时间和容忍延迟时间的同构模型出发,讨论了这一问题,并提出了一种动态规划方法。然后,我们将该模型扩展为异构模型,其中作业处理时间和作业截止日期可以是任意值。在异构场景下,我们证明了即使作业处理时间是单位的,所提出的问题也是np困难的。然后,我们提出了一种贪心方法,该方法的近似值为$O(\ lnn)$,其中$n$为总作业数。Google集群跟踪的大量跟踪驱动实验表明,我们的方案具有良好的性能。
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