Energy efficient distributed analytics at the edge of the network for IoT environments
Lorenzo Valerio, Marco Conti, Andrea Passarella

TL;DR
This paper explores energy-efficient distributed data analytics at the network edge for IoT environments using fog computing and mobile nodes, achieving significant energy savings with minimal accuracy loss.
Contribution
It introduces a novel framework combining fog computing and distributed machine learning with mobile nodes to reduce energy consumption in IoT data analysis.
Findings
Energy consumption reduced up to 94% using short-range communication technologies.
Accuracy loss compared to centralized cloud is up to 2%.
Distributed analytics perform efficiently at the network edge.
Abstract
Due to the pervasive diffusion of personal mobile and IoT devices, many "smart environments" (e.g., smart cities and smart factories) will be, generators of huge amounts of data. Currently, analysis of this data is typically achieved through centralised cloud-based services. However, according to many studies, this approach may present significant issues from the standpoint of data ownership, as well as wireless network capacity. In this paper, we exploit the fog computing paradigm to move computation close to where data is produced. We exploit a well-known distributed machine learning framework (Hypothesis Transfer Learning), and perform data analytics on mobile nodes passing by IoT devices, in addition to fog gateways at the edge of the network infrastructure. We analyse the performance of different configurations of the distributed learning framework, in terms of (i) accuracy…
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