利用深度强化学习实现自主VNF自动缩放

Paola Soto, D. De Vleeschauwer, M. Camelo, Yorick De Bock, K. De Schepper, Chia-Yu Chang, P. Hellinckx, J. F. Botero, Steven Latré
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引用次数: 4

摘要

网络功能虚拟化(NFV)是第五代(5G)网络时代承诺的改进背后的主要推动者之一。由于这个概念,网络功能(NFs)正在演变成软件组件(例如,虚拟网络功能(VNFs)),可以按照基于云的方法部署在通用服务器中。通过这种方式,NFs可以大规模部署,满足各种各样的服务需求。不幸的是,由于越来越多的网络服务的不同需求,基于nfv的网络管理和编排的复杂性增加了。这种复杂性需要一种自动化和自治的解决方案,该解决方案可以自适应这些网络服务的需求。在本文中,我们提出并比较了一种深度强化学习(DRL)代理、一种经典的比例-积分-导数(PID)控制器和一种基于阈值(THD)的算法,用于在不知道或预测预期需求的情况下自主确定满足服务延迟需求的VNF实例数量。最后,我们在创建VNFs和在离散事件模拟器中执行峰值延迟方面对三种方法进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards Autonomous VNF Auto-scaling using Deep Reinforcement Learning
Network Function Virtualization (NFV) is one of the main enablers behind the promised improvements in the Fifth Generation (5G) networking era. Thanks to this concept, Network Functions (NFs) are evolving into software components (e.g., Vir-tual Network Functions (VNFs)) that can be deployed in general-purpose servers following a cloud-based approach. In this way, NFs can be deployed at scale, fulfilling a great variety of service requirements. Unfortunately, the complexity in the management and orchestration of NFV-based networks has increased due to the diverse demands from a growing number of network services. Such complexity calls for an automated and autonomous solution that self adapts to the needs of those network services. In this paper, we propose and compare a Deep Reinforcement Learning (DRL) agent, a classical Proportional-Integral-Derivative (PID) controller, and a Threshold (THD)-based algorithm for autonomously determining the amount of VNF instances to fulfill a service latency requirement without knowing or predicting the expected demand. Finally, we present a comparison of the three approaches in terms of created VNFs and peak latency performed in a discrete event simulator.
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