Spatiotemporal Carbon-aware Scheduling in the Cloud: Limits and Benefits

Thanathorn Sukprasert, Abel Souza, Noman Bashir, David E. Irwin, P. Shenoy
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引用次数: 1

Abstract

As the demand for computing continues to grow exponentially and datacenters are already highly optimized, many have suggested leveraging computing workload's spatiotemporal flexibility. However, different workloads may have different degrees of flexibility, including execution deadlines, data protection laws, or latency requirements. These constraints, along with many others, limit the potential benefits of carbon-aware spatiotemporal workload shifting; the achievable benefits of these approaches are unclear-an aspect not addressed by prior research. Accurately quantifying the achievable benefits of carbon-aware spatiotemporal workload scheduling is critically important, as many in research and industry are already devoting significant time and resources to realize these benefits. To address the problem, we conduct a large-scale longitudinal analysis of carbon-aware spatiotemporal workload shifting to answer the following research question: What are the maximum carbon emission reductions that can be achieved due to temporal and spatial workload shifting for different types of cloud workloads and in different parts of the world?
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云中的时空碳感知调度:限制和好处
随着对计算的需求持续呈指数级增长,数据中心已经得到了高度优化,许多人建议利用计算工作负载的时空灵活性。但是,不同的工作负载可能具有不同程度的灵活性,包括执行截止日期、数据保护法或延迟要求。这些限制以及许多其他限制限制了对碳敏感的时空工作量转移的潜在好处;这些方法的可实现的好处尚不清楚,这是先前研究没有涉及的一个方面。准确量化具有碳意识的时空工作负载调度的可实现效益至关重要,因为许多研究和行业已经投入了大量时间和资源来实现这些效益。为了解决这一问题,我们对碳意识的时空工作负载转移进行了大规模的纵向分析,以回答以下研究问题:对于不同类型的云工作负载和世界不同地区,由于时空工作负载转移可以实现的最大碳减排是什么?
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