Conditional Generative Adversarial Network Based Workload Generation for Cloud Cluster

Jun Xu, Junwei Liu, Jun Yao, Ao Ma, Lei Xu, Xinghua Zhao
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Abstract

Improving cluster utilization by scheduling and decision-making is a long-standing research problem for cloud vendors. The workload models can improve decision-making by providing a provision of the future workload for the public cloud scheduler. However, capturing the correlations in real traces was proven to be hard in former research. In this paper, we introduce a conditional generative adversarial network (CGAN) based model, which can provide a long-time provision for the cloud cluster. In the proposed approach, the workload model is generated by three-stage training with conditional GAN, which is not limited by the assumption of Poisson distribution. Besides, the conditional representation is redesigned based on Time2Vec, which makes the inter-job correlations among virtual machines (VMs) can be modeled accurately. According to our validation, the job arrival model accuracy is raised from 52.7% to 80.3% compared with the Poisson regression method, which indicated that the proposed CGAN-based model is a more universal and accurate generative model for large-scale cloud clusters.
基于条件生成对抗网络的云集群工作负载生成
通过调度和决策来提高集群利用率是云供应商长期研究的问题。工作负载模型可以通过为公共云调度器提供未来的工作负载来改进决策。然而,在以前的研究中,捕捉真实轨迹中的相关性被证明是困难的。本文介绍了一种基于条件生成对抗网络(CGAN)的模型,该模型可以为云集群提供长期供应。该方法不受泊松分布假设的限制,通过条件GAN的三阶段训练生成工作负荷模型。此外,基于Time2Vec对条件表示进行了重新设计,使得虚拟机之间的作业间相关性能够准确建模。通过验证,与泊松回归方法相比,作业到达模型的准确率从52.7%提高到80.3%,表明本文提出的基于cgan的模型是一种更通用、更准确的大规模云集群生成模型。
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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