Towards Efficient Prediction of Computing Resource Usage Using Deep Learning Techniques

Ioan Cristian Schuszter, M. Cioca
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Abstract

In this paper we present the benefit of using deep learning time-series analysis techniques in order to reduce computing resource usage, with the goal of having more sustainable data centers. Modern enterprises and agile ways-of-working have led to a complete revolution of the way that software engineers develop and deploy software, with the proliferation of container-based technology such as Kubernetes and Docker. Modern systems tend to use up a large amount of resources even when idle, and intelligent scaling is one of the methods that could be used to prevent waste. We present several methods of predicting computer resource usage based on historical data of real production distributed software systems at the European Organization for Nuclear Research (CERN), enabling down-scaling the number of machines running a certain service during periods that have been identified as idle. The method leverages recurring neural network architectures in order to accurately predict the CPU future usage of a software system given its past activity.
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利用深度学习技术实现计算资源使用的有效预测
在本文中,我们介绍了使用深度学习时间序列分析技术的好处,以减少计算资源的使用,目标是拥有更可持续的数据中心。随着Kubernetes和Docker等基于容器的技术的扩散,现代企业和敏捷的工作方式已经导致软件工程师开发和部署软件的方式发生了彻底的革命。现代系统即使在空闲时也会消耗大量资源,而智能扩展是可以用来防止浪费的方法之一。我们根据欧洲核子研究组织(CERN)真实生产分布式软件系统的历史数据,提出了几种预测计算机资源使用情况的方法,使在确定为空闲期间运行特定服务的机器数量得以缩减。该方法利用循环神经网络架构,以便准确预测软件系统过去活动的CPU未来使用情况。
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