Deep Reinforcement Learning Driven Aggregate Flow Entries Eviction in Software Defined Networking

Junhan Zang, S. M. Raza, Hyunseung Choo, Gyurin Byun, Moonseong Kim
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Abstract

Software-Defined Networking (SDN) separates control from network elements and logically centralizes it in SDN controller to provide global view and control of the network. Network elements, such as switches, only forward data using entries in the flow tables that are installed by the controller. The capacity of flow tables is limited and requires continuous management. Several studies have proposed eviction strategies to make space for new entries in the flow tables, but they assume 1:1 mapping between entries and incoming flows. This assumption is a major limitation, as in real networks many incoming flows can be handled by a single Aggregate Flow Entry (AFE). This paper handles this limitation by proposing Deep Reinforcement Learning (DRL) framework for eviction of AFEs. The proposed framework calculates the degree of AFEs (i.e., how many flows it entertains) along with other parameters to select AFE for eviction, where main objective is to minimize flow table overflows. The experiment results show that the proposed framework reduces the number of overflows by 37%, flow reinstallation by 87%, and the control signaling overhead by 45 % compared to the Random and Least Recently Used Algorithm (LRU).
软件定义网络中深度强化学习驱动的聚合流项抽取
软件定义网络(SDN)将控制从网元中分离出来,在逻辑上集中在SDN控制器中,提供对网络的全局视图和控制。网络元素(如交换机)仅使用控制器安装的流表中的条目转发数据。流量表的容量有限,需要持续管理。一些研究提出了驱逐策略,为流表中的新条目腾出空间,但他们假设条目和进入流之间的映射为1:1。这个假设是一个主要的限制,因为在实际网络中,许多传入流可以由单个聚合流入口(AFE)处理。本文通过提出深度强化学习(DRL)框架来解决这一限制。提议的框架计算AFE的程度(即,它容纳多少流量)以及其他参数来选择AFE进行驱逐,其主要目标是最小化流表溢出。实验结果表明,与随机和最近最少使用算法(LRU)相比,该框架减少了37%的溢出次数,减少了87%的流量重新安装,减少了45%的控制信令开销。
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