Litcius/Paper detail

QuAsyncFL: Asynchronous Federated Learning With Quantization for Cloud–Edge–Terminal Collaboration Enabled AIoT

Ye Liu, Peishan Huang, Fan Yang, Kai Huang, Lei Shu

2023IEEE Internet of Things Journal24 citationsDOI

Abstract

Federated Learning is a promising technique that facilitates cloud–edge–terminal collaboration in Artificial Intelligence of Things (AIoT). It will enable model training without centralizing data, addressing privacy, and security concerns. However, when applied to AIoT, this technique faces several challenges, such as low communication efficiency among terminal devices, edges, and cloud platforms. In this article, we propose a novel approach called asynchronous federated learning with quantization (QuAsyncFL), which combines asynchronous federated learning with an unbiased nonuniform quantizer to address the issue of low communication efficiency. Moreover, we provide a detailed theoretical analysis of convergence with quantized gradients proving that the model could converge to a certain bound. Our experiments demonstrate that QuAsyncFL outperforms the original approach, achieving significant improvements in terms of communication efficiency. The research results represent a further step toward developing cloud–edge–terminal collaboration enabled AIoT.

Topics & Concepts

Computer scienceCloud computingAsynchronous communicationQuantization (signal processing)Terminal (telecommunication)Enhanced Data Rates for GSM EvolutionDistributed computingEdge deviceFederated learningTerminal equipmentTheoretical computer scienceArtificial intelligenceComputer networkAlgorithmTelecommunicationsOperating systemTransmission (telecommunications)Privacy-Preserving Technologies in DataStochastic Gradient Optimization TechniquesAdvanced Wireless Communication Technologies