Scalable Federated Learning over Passive Optical Networks

10/29/2020
by   Jun Li, et al.
0

Two-step aggregation is introduced to facilitate scalable federated learning (SFL) over passive optical networks (PONs). Results reveal that the SFL keeps the required PON upstream bandwidth constant regardless of the number of involved clients, while bringing  10

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