MACS: Deep Reinforcement Learning based SDN Controller Synchronization Policy Design

Ziyao Zhang, Liang Ma, Konstantinos Poularakis, K. Leung, J. Tucker, A. Swami
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引用次数: 12

Abstract

In distributed software-defined networks (SDN), multiple physical SDN controllers, each managing a network domain, are implemented to balance centralised control, scalability, and reliability requirements. In such networking paradigms, controllers synchronize with each other, in attempts to maintain a logically centralised network view. Despite the presence of various design proposals for distributed SDN controller architectures, most existing works only aim at eliminating anomalies arising from the inconsistencies in different controllers’ network views. However, the performance aspect of controller synchronization designs with respect to given SDN applications are generally missing. To fill this gap, we formulate the controller synchronization problem as a Markov decision process (MDP) and apply reinforcement learning techniques combined with deep neural networks (DNNs) to train a smart, scalable, and fine-grained controller synchronization policy, called the Multi-Armed Cooperative Synchronization (MACS), whose goal is to maximise the performance enhancements brought by controller synchronizations. Evaluation results confirm the DNN’s exceptional ability in abstracting latent patterns in the distributed SDN environment, rendering significant superiority to MACS-based synchronization policy, which are 56% and 30% performance improvements over ONOS and greedy SDN controller synchronization heuristics.
基于深度强化学习的SDN控制器同步策略设计
在分布式软件定义网络(SDN)中,实现了多个物理SDN控制器,每个控制器管理一个网络域,以平衡集中控制、可扩展性和可靠性要求。在这样的网络范例中,控制器彼此同步,试图保持逻辑上集中的网络视图。尽管存在各种针对分布式SDN控制器架构的设计建议,但大多数现有工作仅针对消除不同控制器的网络视图不一致所引起的异常。然而,相对于给定的SDN应用,控制器同步设计的性能方面通常是缺失的。为了填补这一空白,我们将控制器同步问题制定为马尔可夫决策过程(MDP),并应用强化学习技术与深度神经网络(dnn)相结合来训练智能,可扩展和细粒度的控制器同步策略,称为多臂协作同步(MACS),其目标是最大限度地提高控制器同步带来的性能增强。评估结果证实了DNN在分布式SDN环境中抽象潜在模式的卓越能力,与基于mac的同步策略相比具有显著优势,比ONOS和贪婪SDN控制器同步启发式性能提高56%和30%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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