FedSLoP reduces communication and memory costs in federated learning through stochastic low-rank gradient projections, with a nonconvex convergence rate of O(1/sqrt(NT)) and competitive accuracy on heterogeneous MNIST data.
Neulite: Memory-efficient federated learning via elastic progressive training.arXiv e-prints, pages arXiv–2408, 2024
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FedSLoP: Memory-Efficient Federated Learning with Low-Rank Gradient Projection
FedSLoP reduces communication and memory costs in federated learning through stochastic low-rank gradient projections, with a nonconvex convergence rate of O(1/sqrt(NT)) and competitive accuracy on heterogeneous MNIST data.