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[Preprint]. 2024 Feb 12:2023.10.04.560604. Originally published 2023 Oct 6. [Version 3] doi: 10.1101/2023.10.04.560604

Figure 2: Federated architecture and training summary.

Figure 2:

The FL architecture used in the study also illustrates 1 round of FL training for the case of N=3 clients. The aggregation server aggregates trained local learner parameters from clients and computing a global model. Client Sites contain their own siloed dataset, each with different samples. The trained client parameters are represented by the blue, orange, and green weights; the black weights represent the aggregated global model. Client model aggregation implemented by the federated learning strategy is denoted by f. Once global weights are computed, a copy is sent to each client; the global model is used to initialize the local learner model weights in subsequent FL training rounds.