A communication efficient distributed learning framework for smart environments
Lorenzo Valerio, Andrea Passarella, Marco Conti

TL;DR
This paper proposes a distributed learning framework for smart environments that performs data analytics at the network edge, reducing network overhead while maintaining accuracy comparable to centralized cloud solutions.
Contribution
It introduces a general distributed learning framework for edge analytics in smart environments and compares two algorithms, demonstrating efficiency and effectiveness.
Findings
Distributed learning reduces network overhead significantly.
Performance comparable to cloud-based analytics in accuracy.
Different algorithms are preferable depending on data distribution.
Abstract
Due to the pervasive diffusion of personal mobile and IoT devices, many ``smart environments'' (e.g., smart cities and smart factories) will be, among others, generators of huge amounts of data. Currently, this is typically achieved through centralised cloud-based data analytics services. However, according to many studies, this approach may present significant issues from the standpoint of data ownership, and even wireless network capacity. One possibility to cope with these shortcomings is to move data analytics closer to where data is generated. In this paper, we tackle this issue by proposing and analyzing a distributed learning framework, whereby data analytics are performed at the edge of the network, i.e., on locations very close to where data is generated. Specifically, in our framework, partial data analytics are performed directly on the nodes that generate the data, or on…
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