Federated Learning with flower and pytorch using a metaheuristic based on the beta distribution
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Updated
Jun 28, 2022 - Python
Federated Learning with flower and pytorch using a metaheuristic based on the beta distribution
federated learning standalone modeling environment
We utilize the Adversarial Model Perturbations (AMP) regularizer to regularize clients’ models. The AMP regulzaizer is based on perturbing the model parameters so as to get a more generalized model. The claim of AMP regularizer is to reach flat minima and therefore is expected to reach flat minima in FL settings as well.
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