A Vision For Hierarchical Federated Learning in Dynamic Service Chaining
Author
Abstract

We have seen the tremendous expansion of machine learning (ML) technology in Artificial Intelligence (AI) applications, including computer vision, voice recognition, and many others. The availability of a vast amount of data has spurred the rise of ML technologies, especially Deep Learning (DL). Traditional ML systems consolidate all data into a central location, usually a data center, which may breach privacy and confidentiality rules. The Federated Learning (FL) concept has recently emerged as a promising solution for mitigating data privacy, legality, scalability, and unwanted bandwidth loss problems. This paper outlines a vision for leveraging FL for better traffic steering predictions. Specifically, we propose a hierarchical FL framework that will dynamically update service function chains in a network by predicting future user demand and network state using the FL method.

Year of Publication
2022
Date Published
nov
Publisher
IEEE
Conference Location
Phoenix, AZ, USA
ISBN Number
978-1-66547-334-7
URL
https://ieeexplore.ieee.org/document/9974900/
DOI
10.1109/NFV-SDN56302.2022.9974900
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