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Performance-Based Pricing in Multi-Core Geo-Distributed Cloud Computing

机译:基于性能的多核地理分布式云计算定价

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摘要

New pricing policies are emerging where cloud providers charge resource provisioning based on the allocated CPU frequencies. As a result, resources are offered to users as combinations of different performance levels and prices which can be configured at runtime. With such new pricing schemes and the increasing energy costs in data centres, balancing energy savings with performance and revenue losses is a challenging problem for cloud providers. CPU frequency scaling can be used to reduce power dissipation, but also impacts virtual machine (VM) performance and therefore revenue. In this paper, we first propose a non-linear power model that estimates power dissipation of a multi-core CPU physical machine (PM) and second a pricing model that adjusts the pricing based on the VM's CPU-boundedness characteristics. Finally, we present a cloud controller that uses these models to allocate VM and scale CPU frequencies of the physical machine (PM) to achieve energy cost savings that exceed service revenue losses. We evaluate the proposed approach using simulations with realistic VM workloads, electricity price and temperature traces and estimate energy savings of up to 14.57 percent.
机译:新定价策略正在出现云提供商基于分配的CPU频率充电资源配置的地方。因此,向用户提供资源作为不同性能水平和价格的组合,可以在运行时配置。通过这种新的定价计划和数据中心的能源成本提高,平衡节能与绩效和收入损失是云提供商有挑战性的问题。 CPU频率缩放可用于降低功耗,但也影响虚拟机(VM)性能,从而影响收入。在本文中,我们首先提出了一种非线性功率模型,估计多核CPU物理机器(PM)的功耗和第二种定价模型,该价格基于VM的CPU界性特征调整定价。最后,我们展示了一个云控制器,它使用这些模型来分配物理机器(PM)的VM和比例CPU频率,以实现超过服务收入损失的能源成本节省。我们使用实际VM工作负载,电价和温度痕迹的模拟评估所提出的方法,并估算能节省高达14.57%。

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