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Oct, 2023
FedSplitX: 计算受限异构客户的联邦分割学习
FedSplitX: Federated Split Learning for Computationally-Constrained Heterogeneous Clients
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Jiyun Shin, Jinhyun Ahn, Honggu Kang, Joonhyuk Kang
TL;DR
提出了FedSplitX,一种面对异构系统的新型联合学习框架,能够有效地利用服务器资源来训练大模型,从而在模型性能上优于基准方法。
Abstract
foundation models
(FMs) have demonstrated remarkable performance in machine learning but demand extensive training data and computational resources.
federated learning
(FL) addresses the challenges posed by FMs,
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