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  4. Resource-Constrained On-Device Learning by Dynamic Averaging
 
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2020
Conference Paper
Title

Resource-Constrained On-Device Learning by Dynamic Averaging

Abstract
The communication between data-generating devices is partially responsible for a growing portion of the worlds power consumption. Thus reducing communication is vital, both, from an economical and an ecological perspective. For machine learning, on-device learning avoids sending raw data, which can reduce communication substantially. Furthermore, not centralizing the data protects privacy-sensitive data. However, most learning algorithms require hardware with high computation power and thus high energy consumption. In contrast, ultra-low-power processors, like FPGAs or micro-controllers, allow for energy-efficient learning of local models. Combined with communication-efficient distributed learning strategies, this reduces the overall energy consumption and enables applications that were yet impossible due to limited energy on local devices. The major challenge is then, that the low-power processors typically only have integer processing capabilities. This paper investigates an approach to communication-efficient on-device learning of integer exponential families that can be executed on low-power processors, is privacy-preserving, and effectively minimizes communication. The empirical evaluation shows that the approach can reach a model quality comparable to a centrally learned regular model with an order of magnitude less communication. Comparing the overall energy consumption, this reduces the required energy for solving the machine learning task by a significant amount.
Author(s)
Heppe, Lukas
TU Dortmund
Kamp, Michael  
Monash University, Melbourne, Australia
Adilova, Linara  
Fraunhofer-Institut für Intelligente Analyse- und Informationssysteme IAIS  
Heinrich, Danny
TU Dortmund
Piatkowski, Nico  
Fraunhofer-Institut für Intelligente Analyse- und Informationssysteme IAIS  
Morik, Katharina
TU Dortmund
Mainwork
ECML PKDD 2020 Workshops. Proceedings  
Project(s)
ML2R
Funder
Bundesministerium für Bildung und Forschung BMBF (Deutschland)  
Conference
European Conference on Machine Learning and Principles and Practice of Knowledge Discovery in Databases (ECML PKDD) 2020  
Workshop on Parallel, Distributed and Federated Learning (PDFL) 2020  
DOI
10.1007/978-3-030-65965-3_9
Language
English
Fraunhofer-Institut für Intelligente Analyse- und Informationssysteme IAIS  
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