Hedge Your Bets: Optimizing Long-term Cloud Costs by Mixing VM Purchasing Options

Pradeep Ambati, Noman Bashir, D. Irwin, M. Hajiesmaili, P. Shenoy
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引用次数: 3

Abstract

Cloud platforms offer the same VMs under many purchasing options that specify different costs and time commitments, such as on-demand, reserved, sustained-use, scheduled reserve, transient, and spot block. In general, the stronger the commitment, i.e., longer and less flexible, the lower the price. However, longer and less flexible time commitments can increase cloud costs for users if future workloads cannot utilize the VMs they committed to buying. Large cloud customers often find it challenging to choose the right mix of purchasing options to reduce their long-term costs, while retaining the ability to adjust capacity up and down in response to workload variations.To address the problem, we design policies to optimize long-term cloud costs by selecting a mix of VM purchasing options based on short- and long-term expectations of workload utilization. We consider a batch trace spanning 4 years from a large shared cluster for a major state University system that includes 14k cores and 60 million job submissions, and evaluate how these jobs could be judiciously executed using cloud servers using our approach. Our results show that our policies incur a cost within 41% of an optimistic optimal offline approach, and 50% less than solely using on-demand VMs.
对冲您的赌注:通过混合虚拟机购买选项优化长期云成本
云平台提供相同的vm下许多购买选项,指定不同的成本和时间的承诺,如需保留,持续使用,计划储备,瞬态,现货。一般来说,承诺越强,即时间越长,灵活性越差,价格就越低。但是,如果未来的工作负载不能利用用户承诺购买的虚拟机,那么更长的时间和更少的灵活性可能会增加用户的云成本。大型云计算客户经常发现,选择正确的购买选项组合来降低长期成本,同时保留根据工作负载变化上下调整容量的能力是一项挑战。为了解决这个问题,我们设计策略,根据工作负载利用率的短期和长期预期,通过选择虚拟机购买选项的组合来优化长期云成本。我们考虑对一个大型州立大学系统的大型共享集群进行为期4年的批处理跟踪,该系统包括14k个核心和6000万个作业提交,并评估如何使用云服务器使用我们的方法明智地执行这些作业。我们的结果表明,我们的政策招致成本在41%的乐观的离线优化方法,并使用随需应变的vm比仅低50%。
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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