核心概念
Efficiently accelerating federated learning on resource-constrained edge devices through adaptive model partitioning and bandwidth allocation.
统计
"Comprehensive tests conducted with a range of DNN models and datasets demonstrate that EdgeSplit not only facilitates the training of large models on resource-restricted edge devices but also surpasses existing baselines in performance."
"Our proposed EdgeSplit can achieve up to 5.5x training speed improvement."