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Reverse Engineering Technique (RET) to Predict Resource Allocation in a Google Cloud System

机译:逆向工程技术(RET)预测Google Cloud系统中的资源分配

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摘要

This paper presents a reverse engineering machine learning technique for resource allocation in cloud computing system. Efficient and timely resource allocation is a crucial task for complex operations in a large scale distributed system like cloud computing. Furthermore, to support Service Level Agreement (SLA) like priority, latency, and efficiency, the resource provisioning should be highly influenced by SLA requirements of the system. Therefore in this paper, we propose the Reverse Engineering Technique (RET) which highly influence by priority to improve resource allocation accuracy. The paper used neural network based deep learning and Levenberg-Marquardt training algorithm for resource allocation prediction. The dataset of Google cloud computing system, which is publicly available dataset for research, is used to test the proposed RET. Our experiment shows that the proposed technique improves resource provisioning accuracy for cloud based systems.
机译:本文提出了一种用于云计算系统中资源分配的逆向工程机器学习技术。对于像云计算这样的大型分布式系统中的复杂操作,高效及时的资源分配是至关重要的任务。此外,为了支持优先级,延迟和效率之类的服务级别协议(SLA),资源供应应受到系统SLA要求的高度影响。因此,在本文中,我们提出了一种逆向工程技术(RET),该技术受优先级的影响很大,以提高资源分配的准确性。本文将基于神经网络的深度学习和Levenberg-Marquardt训练算法用于资源分配预测。 Google云计算系统的数据集是公开可用的研究数据集,用于测试提出的RET。我们的实验表明,所提出的技术提高了基于云的系统的资源供应准确性。

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