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MDP and Machine Learning-Based Cost-Optimization of Dynamic Resource Allocation for Network Function Virtualization

机译:基于MDP和基于机器学习的网络功能虚拟化动态资源分配的成本优化

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The introduction of Network Functions Virtualization (NFV) enables service providers to offer software-defined network functions with elasticity and flexibility. Its core technique, dynamic allocation procedure of NFV components onto cloud resources requires rapid response to changes on-demand to remain cost and QoS effective. In this paper, Markov Decision Process (MDP) is applied to the NP-hard problem to dynamically allocate cloud resources for NFV components. In addition, Bayesian learning method is applied to monitor the historical resource usage in order to predict future resource reliability. Experimental results show that our proposed strategy outperforms related approaches.
机译:网络功能虚拟化(NFV)的引入使服务提供商能够灵活且灵活地提供软件定义的网络功能。其核心技术,即将NFV组件动态分配到云资源的过程,需要对按需更改做出快速响应,以保持成本和QoS的有效性。本文将马尔可夫决策过程(MDP)应用于NP难问题,为NFV组件动态分配云资源。此外,贝叶斯学习方法用于监视历史资源使用情况,以预测未来的资源可靠性。实验结果表明,我们提出的策略优于相关方法。

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