Abstract | ||
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Virtualization technologies provide solutions of cloud computing. Virtual resource scheduling is a crucial task in data centers, and the power consumption of virtual resources is a critical foundation of virtualization scheduling. Containers are the smallest unit of virtual resource scheduling and migration. Although many effective models for estimating power consumption of virtual machines (VM) have been proposed, few power estimation models of containers have been put forth. In this paper, we offer a fast-training piecewise regression model based on decision tree to build a VM power estimation model and estimate the containers' power by treating the container as a group of processes on the VM. In our model, we characterize the nonlinear relationship between power and features and realize the effective estimation of the containers on the VM. We evaluate the proposed model on 13 workloads in PARSEC and compare it with several models. The experimental results prove the effectiveness of our proposed model on most workloads. Moreover, the estimated power of the containers is in line with expectations. |
Year | DOI | Venue |
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2020 | 10.1109/CLUSTER49012.2020.00039 | 2020 IEEE International Conference on Cluster Computing (CLUSTER) |
Keywords | DocType | ISSN |
power estimation,containers,virtual machines,data centers | Conference | 1552-5244 |
ISBN | Citations | PageRank |
978-1-7281-6678-0 | 0 | 0.34 |
References | Authors | |
12 | 5 |