Analysis of flexible traffic control method in SDN

Marta Szymczyk
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Abstract

The aim of this paper is to analyze methods of flexible control in SDN networks and to propose a self-developed solution that will enable intelligent adaptation of SDN controller performance. This work aims not only to review existing solutions, but also to develop an approach that will increase the efficiency and adaptability of network management. The project uses a modern type of machine learning, Reinforcement Learning, which allows autonomous decisions of a network that learns based on its choices in a dynamically changing environment, which is most similar to the way humans learn. The solution aims not only to improve the network's performance, but also its flexibility and real-time adaptability - flexible traffic control.
SDN 中的灵活流量控制方法分析
本文旨在分析 SDN 网络中的灵活控制方法,并提出一种自主开发的解决方案,以实现 SDN 控制器性能的智能适应。这项工作的目的不仅在于回顾现有的解决方案,还在于开发一种能够提高网络管理效率和适应性的方法。该项目使用了一种现代机器学习类型--强化学习,它允许网络根据其在动态变化环境中的选择进行自主决策,这与人类的学习方式最为相似。该解决方案的目的不仅在于提高网络的性能,还在于提高其灵活性和实时适应性--灵活的交通控制。
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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