Litcius/Paper detail

A Systematic Literature Review on Distributed Machine Learning in Edge Computing

Carlos Poncinelli Filho, Elias L. Marques, Victor Chang, Leonardo dos Santos, Flávia Bernardini, Paulo F. Pires, Luiz Satoru Ochi, Flávia C. Delicato

2022Sensors85 citationsDOIOpen Access PDF

Abstract

Distributed edge intelligence is a disruptive research area that enables the execution of machine learning and deep learning (ML/DL) algorithms close to where data are generated. Since edge devices are more limited and heterogeneous than typical cloud devices, many hindrances have to be overcome to fully extract the potential benefits of such an approach (such as data-in-motion analytics). In this paper, we investigate the challenges of running ML/DL on edge devices in a distributed way, paying special attention to how techniques are adapted or designed to execute on these restricted devices. The techniques under discussion pervade the processes of caching, training, inference, and offloading on edge devices. We also explore the benefits and drawbacks of these strategies.

Topics & Concepts

Computer scienceEnhanced Data Rates for GSM EvolutionEdge computingCloud computingEdge deviceInferenceAnalyticsArtificial intelligenceDeep learningDistributed computingMachine learningApplications of artificial intelligenceData scienceHuman–computer interactionOperating systemIoT and Edge/Fog ComputingAdvanced Neural Network ApplicationsPrivacy-Preserving Technologies in Data