Litcius/Paper detail

A review on offloading in fog-based Internet of Things: Architecture, machine learning approaches, and open issues

Kalimullah Lone, Shabir Ahmad Sofi

2023High-Confidence Computing23 citationsDOIOpen Access PDF

Abstract

There is an exponential increase in the number of smart devices, generating helpful information and posing a serious challenge while processing this huge data. The processing is either done at fog level or cloud level depending on the size and nature of the task. Offloading data to fog or cloud adds latency, which is less in fog and more in the cloud. The methods of processing data and tasks at fog level or cloud are mostly machine learning based. In this paper, we will discuss all three levels in terms of architecture, starting from the internet of things to fog and fog to cloud. Specifically, we will describe machine learning-based offloading from the internet of things to fog and fog to cloud. Finally, we will come up with current research directions, issues, and challenges in the IoT–fog–cloud environment.

Topics & Concepts

Cloud computingFog computingComputer scienceInternet of ThingsArchitectureThe InternetArtificial intelligenceMachine learningDistributed computingWorld Wide WebOperating systemArtVisual artsIoT and Edge/Fog ComputingMobile Crowdsensing and CrowdsourcingContext-Aware Activity Recognition Systems