2023
DOI: 10.3233/scs-230005
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Resilient edge machine learning in smart city environments

Andreas Vrachimis,
Stella Gkegka,
Kostas Kolomvatsos

Abstract: Distributed Machine Learning (DML) has emerged as a disruptive technology that enables the execution of Machine Learning (ML) and Deep Learning (DL) algorithms in proximity to data generation, facilitating predictive analytics services in Smart City environments. However, the real-time analysis of data generated by Smart City Edge Devices (EDs) poses significant challenges. Concept drift, where the statistical properties of data streams change over time, leads to degraded prediction performance. Moreover, the … Show more

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