Data di Pubblicazione:
2020
Abstract:
During the last decade, the Internet of Things acted as catalyst for the big data phenomenon.
As result, modern edge devices can access a huge amount of data that can be exploited to build
useful services. In such a context, artificial intelligence has a key role to develop intelligent
systems (e.g., intelligent cyber physical systems) that create a connecting bridge with the physical
world. However, as time goes by, machine and deep learning applications are becoming more
complex, requiring increasing amounts of data and training time, which makes the use of centralized
approaches unsuitable. Federated learning is an emerging paradigm which enables the cooperation
of edge devices to learn a shared model (while keeping private their training data), thereby abating
the training time. Although federated learning is a promising technique, its implementation is
difficult and brings a lot of challenges. In this paper, we present an extension of Stack4Things, a cloud
platform developed in our department; leveraging its functionalities, we enabled the deployment of
federated learning on edge devices without caring their heterogeneity. Experimental results show a
comparison with a centralized approach and demonstrate the effectiveness of the proposed approach
in terms of both training time and model accuracy.
Tipologia CRIS:
14.a.1 Articolo su rivista
Keywords:
federated learning, intelligent cyber physical systems, stack4things
Elenco autori:
De Vita, Fabrizio; Bruneo, Dario
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