QoS-aware SFC Migration Scheduling Based on Encoder-Decoder RNN for Cloud-Native Platform

Takahiro Hirayama, M. Jibiki, T. Miyazawa, Ved P. Kafle
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引用次数: 1

Abstract

Service function chaining (SFC) provides the plat-form for flexible resource management by dynamically allocating resources to virtual and/or container network functions (VNFs/CNFs). To meet the quality of service (QoS) requirements while facing increasing resource demands, the sys-tem will require the migration of the VNFs/CNFs from the current server to the others that offer sufficient resources. In this study, we formulate an integer linear programming (ILP) based optimization model to solve the function migration scheduling problem so that it meets QoS requirements of each service function (SF) chain. The remarkable points of this work are the following two points. The one is that we consider latency between VNFs/CNFs belonging to an SF chain, avoiding overhead due to their unnecessary migration and resource shortage. And the other is that we consider the case in which each VNF/CNF must be to be deployed strictly to a designated virtual machine (or container). To reduce complexity, we apply an encoder-decoder recurrent neural network (ED-RNN) as a machine learning model to the function migration scheduling problem. Performance evaluations show that the ED-RNN based approach achieves a similar performance as the ILP, while adding the benefits of very low complexity.
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基于云原生平台编码器-解码器RNN的qos感知SFC迁移调度
SFC (Service function chains)通过将资源动态分配给虚拟和/或容器网络功能(VNFs/ cnf),为灵活的资源管理提供了平台。为了满足服务质量(QoS)要求,同时面对日益增长的资源需求,系统将需要将VNFs/CNFs从当前服务器迁移到提供足够资源的其他服务器。在本研究中,我们建立了一个基于整数线性规划(ILP)的优化模型来解决功能迁移调度问题,使其满足每个业务功能链(SF)的QoS要求。这项工作的突出之处在于以下两点。一个是我们考虑了属于一个SF链的VNFs/CNFs之间的延迟,避免了由于不必要的迁移和资源短缺而造成的开销。另一种是我们考虑每个VNF/CNF必须严格部署到指定的虚拟机(或容器)的情况。为了降低复杂性,我们将编码器-解码器递归神经网络(ED-RNN)作为机器学习模型应用于函数迁移调度问题。性能评估表明,基于ED-RNN的方法实现了与ILP相似的性能,同时增加了非常低的复杂性的好处。
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