The massive amount of data collected in the Internet of Things (IoT) asks for effective, intelligent analytics. A recent trend supporting the use of Artificial Intelligence (AI) solutions in IoT domains is to move the computation closer to the data, i.e., from cloud-based services to edge devices. Federated learning (FL) is the primary approach adopted in this scenario to train AI-based solutions. In this work, we investigate the introduction of quantization techniques in FL to improve the efficiency of data exchange between edge servers and a cloud node. We focus on learning recurrent neural network models fed by edge data producers using the most widely adopted neural networks for time-series prediction. Experiments on public datasets show that the proposed quantization techniques in FL reduces up to 19× the volume of data exchanged between each edge server and a cloud node, with a minimal impact of around 5% on the test loss of the final model.

Neural network quantization in federated learning at the edge

Gotta A;Nardini FM;
2021

Abstract

The massive amount of data collected in the Internet of Things (IoT) asks for effective, intelligent analytics. A recent trend supporting the use of Artificial Intelligence (AI) solutions in IoT domains is to move the computation closer to the data, i.e., from cloud-based services to edge devices. Federated learning (FL) is the primary approach adopted in this scenario to train AI-based solutions. In this work, we investigate the introduction of quantization techniques in FL to improve the efficiency of data exchange between edge servers and a cloud node. We focus on learning recurrent neural network models fed by edge data producers using the most widely adopted neural networks for time-series prediction. Experiments on public datasets show that the proposed quantization techniques in FL reduces up to 19× the volume of data exchanged between each edge server and a cloud node, with a minimal impact of around 5% on the test loss of the final model.
2021
Istituto di Scienza e Tecnologie dell'Informazione "Alessandro Faedo" - ISTI
Inglese
575
417
436
https://www.sciencedirect.com/science/article/abs/pii/S0020025521006307
Sì, ma tipo non specificato
Federated learning
Quantization
Artificial neural networks
Internet of things
This work is partially supported by the Italian Ministry of Education and Research (MIUR) in the framework of the CrossLab project (Departments of Excellence), by the BIGDATAGRAPES and the TEACHING projects funded by the EU Horizon 2020 research and innovation program under grant agreements No. 780751 and No. 871385, respectively, and by the OK-INSAID project funded by the Italian Ministry of Education and Research (MIUR) under grant agreement No. ARS01_00917. This work is partially carried out in the framework of the project AUTENS (Sustainable Energy Autarky) funded by the University of Pisa (PRA 2020 program).
5
info:eu-repo/semantics/article
262
Tonellotto, N; Gotta, A; Nardini, Fm; Gadler, D; Silvestri, F
01 Contributo su Rivista::01.01 Articolo in rivista
partially_open
   Big Data to Enable Global Disruption of the Grapevine-powered Industries
   BigDataGrapes
   H2020
   780751
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Descrizione: This is the Author Accepted Manuscript (postprint) of the following paper: Tonellotto N. et al. “Neural network quantization in federated learning at the edge”, published in “Information Sciences” Vol. 575, pp. 417-436, 2021. DOI: 10.1016/j.ins.2021.06.039.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/397895
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