A communication efficient distributed learning framework for smart environments

09/27/2021
by   Lorenzo Valerio, et al.
0

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 nodes close by (e.g., some of the data generators can take this role on behalf of subsets of other nodes nearby). Then, nodes exchange partial models and refine them accordingly. Our framework is general enough to host different analytics services. In the specific case analysed in the paper, we focus on a learning task, considering two distributed learning algorithms. Using an activity recognition and a pattern recognition task, both on reference datasets, we compare the two learning algorithms between each other and with a central cloud solution (i.e., one that has access to the complete datasets). Our results show that using distributed machine learning techniques, it is possible to drastically reduce the network overhead, while obtaining performance comparable to the cloud solution in terms of learning accuracy. The analysis also shows when each distributed learning approach is preferable, based on the specific distribution of the data on the nodes.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
09/23/2021

Energy efficient distributed analytics at the edge of the network for IoT environments

Due to the pervasive diffusion of personal mobile and IoT devices, many ...
research
07/17/2023

Modeling Data Analytics Architecture for Smart Cities Data-Driven Applications using DAT

Extracting valuable insights from vast amounts of information is a criti...
research
12/12/2017

Deep Learning for Reliable Mobile Edge Analytics in Intelligent Transportation Systems

Intelligent transportation systems (ITSs) will be a major component of t...
research
10/27/2020

In-situ data analytics for highly scalable cloud modelling on Cray machines

MONC is a highly scalable modelling tool for the investigation of atmosp...
research
06/17/2020

Wide-Area Data Analytics

We increasingly live in a data-driven world, with diverse kinds of data ...
research
02/23/2016

Mobile Big Data Analytics Using Deep Learning and Apache Spark

The proliferation of mobile devices, such as smartphones and Internet of...
research
02/05/2021

Network Support for High-performance Distributed Machine Learning

The traditional approach to distributed machine learning is to adapt lea...

Please sign up or login with your details

Forgot password? Click here to reset