AI-Driven Management of Dynamic Multi-Tenant Cloud Networks

Publication Date

1-1-2023

Document Type

Conference Proceeding

Publication Title

Conference Proceedings - IEEE SOUTHEASTCON

Volume

2023-April

DOI

10.1109/SoutheastCon51012.2023.10115110

First Page

716

Last Page

717

Abstract

To find a solution for the increased complexity of managing load and dynamic change of virtual network topology in data centers, this article considers and advocates the use of artificial intelligence (AI) and machine-learning-based approaches. This approach would meet the service requirements for virtual machine (VM) assignments and their communications scenarios. We show an analysis that the time required to reconfigure a virtual network of a tenant is successfully decreased when AI assisted method is used. We compare the effectiveness of multi-tenancy structures of cloud networks both with and without AI option at the load balancer segment of a cloud data center.

Keywords

artificial intelligence (AI), cloud computing, multi-tenancy, network virtualization, neural networks, software-defined networking (SDN), virtualization, VLAN, VxLAN

Department

Electrical Engineering

Share

COinS