Characterizing Impacts of Heterogeneity in Federated Learning upon Large-Scale Smartphone Data
Chengxu Yang, Qipeng Wang, Mengwei Xu, Zhenpeng Chen, Kaigui Bian, Yunxin Liu, Xuanzhe Liu
Abstract
Federated learning (FL) is an emerging, privacy-preserving machine learning paradigm, drawing tremendous attention in both academia and industry. A unique characteristic of FL is heterogeneity, which resides in the various hardware specifications and dynamic states across the participating devices. Theoretically, heterogeneity can exert a huge influence on the FL training process, e.g., causing a device unavailable for training or unable to upload its model updates. Unfortunately, these impacts have never been systematically studied and quantified in existing FL literature.
Topics & Concepts
UploadComputer scienceProcess (computing)Federated learningScale (ratio)Data scienceMachine learningHuman–computer interactionArtificial intelligenceWorld Wide WebOperating systemPhysicsQuantum mechanicsPrivacy-Preserving Technologies in DataMobile Crowdsensing and CrowdsourcingInternet Traffic Analysis and Secure E-voting