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Supervised Learning Based Resource Allocation with Network Slicing

机译:网络切片监督基于学习的资源分配

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With the fast growth of wireless network technologies(e.g., 5G, data center networks) and increasing demand for services with high Quality of Services(QoS), efficient management of network resources becomes more and more important. Network slicing is a effective method for reducing computing time through parallel computing and improve QoS of services. However, determining in which slice a request should be deployed on the premise of ensuring the success rate of transmission is difficult. To this end, we propose a slicing model and a resource allocation scheme in network slices. We make several contributions: i) a slice model that help us reduce the time it takes to calculate routes by parallel computing, and the formulation of resource allocation problem in network slices which aims at maximizing the amount of data transmitted successfully, and ii) a supervised-learning based model to quickly determine in which slices requests should be deployed, that can improve the success rate of transmission. Experimental results show that our proposed approach can achieve a good performance in network slicing environment.
机译:随着无线网络技术的快速增长(例如,5G,数据中心网络)和对具有高质量服务(QoS)的服务需求增加,网络资源的高效管理变得越来越重要。网络切片是通过并行计算来减少计算时间的有效方法,并提高服务QoS。但是,确定应在确保传输成功率的前提下部署哪个切片。为此,我们提出了一个切片模型和网络切片的资源分配方案。我们做出了几个贡献:i)切片模型,帮助我们减少通过并行计算计算路线所需的时间,以及网络切片中的资源分配问题的制定,其旨在最大化成功传输的数据量,而ii)a基于监督的学习模型,快速确定应部署哪些切片请求,可以提高传输的成功率。实验结果表明,我们所提出的方法可以在网络切片环境中实现良好的性能。

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