基于异构客户端的资源自适应联邦学习

Fatih Ilhan, Gong Su, Ling Liu
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引用次数: 4

摘要

联邦学习(FL)是一种有吸引力的分布式学习范式,默认情况下支持实时连续学习和客户端隐私。在大多数FL方法中,假设所有边缘客户端都具有足够的计算能力来参与深度神经网络(DNN)模型的学习。然而,在实际应用中,一些客户可能拥有非常有限的资源,只能训练一个小得多的本地模型。ScaleFL是一种新颖的FL方法,具有两种不同的机制来处理资源异质性,并为所有客户端提供公平的FL框架。首先,ScaleFL通过利用早期退出来找到最适合分布式客户端上资源感知本地训练的模型,自适应地沿着宽度和深度维度缩小DNN模型。通过这种方式,ScaleFL提供了一种有效的平衡,在保留各种大小的局部模型分割的基本特征和复杂特征进行联合训练的同时,为模型部署提供了快速推理。其次,ScaleFL在训练过程中利用出口预测之间的自蒸馏,通过子网之间的知识转移来提高聚合。我们在基准CV (CIFAR-10/100, ImageNet)和NLP数据集(SST-2, AgNews)上进行了广泛的实验。我们证明ScaleFL在全局/局部模型性能方面优于现有的代表性异构FL方法,并提供推理效率,延迟高达2倍,模型大小减少4倍,性能下降低于2%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ScaleFL: Resource-Adaptive Federated Learning with Heterogeneous Clients
Federated learning (FL) is an attractive distributed learning paradigm supporting real-time continuous learning and client privacy by default. In most FL approaches, all edge clients are assumed to have sufficient computation capabilities to participate in the learning of a deep neural network (DNN) model. However, in real-life applications, some clients may have severely limited resources and can only train a much smaller local model. This paper presents ScaleFL, a novel FL approach with two distinctive mechanisms to handle resource heterogeneity and provide an equitable FL framework for all clients. First, ScaleFL adaptively scales down the DNN model along width and depth dimensions by leveraging early exits to find the best-fit models for resource-aware local training on distributed clients. In this way, ScaleFL provides an efficient balance of preserving basic and complex features in local model splits with various sizes for joint training while enabling fast inference for model deployment. Second, ScaleFL utilizes self-distillation among exit predictions during training to improve aggregation through knowledge transfer among subnetworks. We conduct extensive experiments on benchmark CV (CIFAR-10/100, ImageNet) and NLP datasets (SST-2, AgNews). We demonstrate that ScaleFL outperforms existing representative heterogeneous FL approaches in terms of global/local model performance and provides inference efficiency, with up to 2x latency and 4x model size reduction with negligible performance drop below 2%.
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