Deep learning for SDN-enabled campus networks: proposed solutions, challenges and future directions

被引:0
作者
Chanhemo, Wilson Charles [1 ]
Mohsini, Mustafa H. [1 ]
Mjahidi, Mohamedi M. [1 ]
Rashidi, Florence U. [1 ]
机构
[1] Univ Dodoma, Coll Informat & Virtual Educ, Dodoma, Tanzania
关键词
SDN; Campus network; Deep learning; Artificial intelligence; Machine learning; SOFTWARE; ALGORITHM; SECURITY;
D O I
10.1108/IJICC-12-2022-0312
中图分类号
TP3 [计算技术、计算机技术];
学科分类号
0812 ;
摘要
Purpose - This study explores challenges facing the applicability of deep learning (DL) in software-defined networks (SDN) based campus networks. The study intensively explains the automation problem that exists in traditional campus networks and how SDN and DL can provide mitigating solutions. It further highlights some challenges which need to be addressed in order to successfully implement SDN and DL in campus networks to make them better than traditional networks. Design/methodology/approach - The study uses a systematic literature review. Studies on DL relevant to campus networks have been presented for different use cases. Their limitations are given out for further research. Findings - Following the analysis of the selected studies, it showed that the availability of specific training datasets for campus networks, SDN and DL interfacing and integration in production networks are key issues that must be addressed to successfully deploy DL in SDN-enabled campus networks. Originality/value - This study reports on challenges associated with implementation of SDN and DL models in campus networks. It contributes towards further thinking and architecting of proposed SDN-based DL solutions for campus networks. It highlights that single problem-based solutions are harder to implement and unlikely to be adopted in production networks.
引用
收藏
页码:697 / 726
页数:30
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