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首页> 外文期刊>International Journal of Network Management >Graph neural network-based virtual network function deployment optimization
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Graph neural network-based virtual network function deployment optimization

机译:图形基于神经网络的虚拟网络功能部署优化

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摘要

Software-defined networking (SDN) and network function virtualization (NFV) help reduce the operating expenditure (OPEX) and capital expenditure (CAPEX) as well as increase the network flexibility and agility. However, since the network is more dynamic and heterogeneous than before, operators have problems to cope with the increased complexity of managing virtual networks and machines. This complexity is paired with strict time requirements for making management decisions; traditional mechanisms that rely on, for example, integer linear programming (ILP) models are no longer feasible. Machine learning has emerged as one of the possible solution to address network management problems to get near-optimal solutions in a short time. However, applying machine learning to network management is also not simple and has many challenges. Especially, understanding the network environment is an important problem for designing a machine learning model. In this paper, we proposed to use graph neural network (GNN) for virtual network function (VNF) management. The proposed model solves the complex VNF management problem in a short time and gets near-optimal solutions. We developed a model by taking into account various network environment conditions so that it can be applied in the actual network environment. Also, through in-depth experiments, we suggested the direction of the machine learning-based network management method.
机译:软件定义的网络(SDN)和网络功能虚拟化(NFV)有助于降低运营支出(OPEX)和资本支出(CAPEX),以及增加网络灵活性和敏捷性。然而,由于网络比以前更具动态和异构,因此运营商有问题需要应对管理虚拟网络和机器的增加的复杂性。这种复杂性与严格的时间要求进行管理决策;依赖于例如整数线性编程(ILP)模型的传统机制不再可行。机器学习被出现为解决网络管理问题的可能解决方案之一,在短时间内解决近乎最佳的解决方案。但是,将机器学习应用于网络管理也不简单,有很多挑战。特别是,了解网络环境是设计机器学习模型的重要问题。在本文中,我们建议使用图形神经网络(GNN)进行虚拟网络功能(VNF)管理。该模型在短时间内解决了复杂的VNF管理问题,并获得了近最佳解决方案。我们通过考虑各种网络环境条件,开发了一种模型,以便它可以应用于实际网络环境。此外,通过深入的实验,我们建议了基于机器学习的网络管理方法的方向。

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