Search Results for author: Rehmat Ullah

Found 3 papers, 2 papers with code

FedFly: Towards Migration in Edge-based Distributed Federated Learning

1 code implementation2 Nov 2021 Rehmat Ullah, Di wu, Paul Harvey, Peter Kilpatrick, Ivor Spence, Blesson Varghese

Our empirical results on the CIFAR10 dataset, with both balanced and imbalanced data distribution, support our claims that FedFly can reduce training time by up to 33% when a device moves after 50% of the training is completed, and by up to 45% when 90% of the training is completed when compared to state-of-the-art offloading approach in FL.

Federated Learning Privacy Preserving

FedAdapt: Adaptive Offloading for IoT Devices in Federated Learning

1 code implementation9 Jul 2021 Di wu, Rehmat Ullah, Paul Harvey, Peter Kilpatrick, Ivor Spence, Blesson Varghese

Further, FedAdapt adopts reinforcement learning based optimization and clustering to adaptively identify which layers of the DNN should be offloaded for each individual device on to a server to tackle the challenges of computational heterogeneity and changing network bandwidth.

Federated Learning

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