As the relevance of distributed learning to vehicular services grows, it becomes more important to perform such learning in the most effective possible manner. In this paper, we investigate the benefits stemming from a learning controller considering multiple learning tasks at the same time. Our performance evaluation shows that this new paradigm, which also enables model reusage across learning tasks, yields up to 60% savings on model training costs.
Distributed Learning with Memory: Optimizing Model Usage Across Training Tasks / Malandrino, F.; Chiasserini, C. F.. - ELETTRONICO. - (2024). (Intervento presentato al convegno 2024 22st Mediterranean Communication and Computer Networking Conference (MedComNet) tenutosi a Nice (France) nel June 2024).
Distributed Learning with Memory: Optimizing Model Usage Across Training Tasks
C. F. Chiasserini
2024
Abstract
As the relevance of distributed learning to vehicular services grows, it becomes more important to perform such learning in the most effective possible manner. In this paper, we investigate the benefits stemming from a learning controller considering multiple learning tasks at the same time. Our performance evaluation shows that this new paradigm, which also enables model reusage across learning tasks, yields up to 60% savings on model training costs.File | Dimensione | Formato | |
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https://hdl.handle.net/11583/2987704