A Vision For Hierarchical Federated Learning in Dynamic Service Chaining | |
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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
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Date Published |
nov
|
Publisher |
IEEE
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Conference Location |
Phoenix, AZ, USA
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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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