[BibTeX] [RIS]
On the Limit Performance of Floating Gossip
Type of publication: Article
Citation: IEEE INFOCOM 2023
Journal: IEEE INFOCOM 2023
Year: 2023
Month: May
Abstract: In this paper we investigate the limit performance of Floating Gossip, a new, fully distributed Gossip Learning scheme which relies on Floating Content to implement location-based probabilistic storage of machine learning models in an infrastructure-less manner. We consider dynamic scenarios where continuous learning is necessary, and we adopt a mean field approach to investigate the limit performance of Floating Gossip in terms of amount of data that users can incorporate into their models, as a function of the main system parameters. Differently from existing approaches in which either communication or computing aspects of Gossip Learning are analyzed and optimized, our approach accounts for the compound impact of both aspects. We validate our results through detailed simulations, proving good accuracy. Our model shows that Floating Gossip can be very effective in implementing continuous training and update of machine learning models in a cooperative manner, based on opportunistic exchanges among moving users.
Keywords: AI, artificial intelligence, Distributed Learning, Gossip Learning, machine learning
Authors Rizzo, Gianluca
Added by: []
Total mark: 0
Attachments
  • FC_Computing.pdf
  • Presentation slides.pdf
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