Genetic-based optimization in Fog Computing: current trends and research opportunities
Carlos Guerrero, Isaac Lera, Carlos Juiz

TL;DR
This paper systematically reviews recent research on genetic-based optimization techniques in fog computing, highlighting current trends, challenges, and future research opportunities in resource management and algorithm design.
Contribution
It provides the first comprehensive classification and analysis of genetic optimization methods applied to fog computing, identifying gaps and proposing future directions.
Findings
Genetic algorithms are increasingly used for resource optimization in fog computing.
Hybrid and parallel genetic algorithms show promise for handling heterogeneity.
Current challenges include data management, workflow scheduling, and service placement.
Abstract
Fog computing is a new computational paradigm that emerged from the need to reduce network usage and latency in the Internet of Things (IoT). Fog can be considered as a continuum between the cloud layer and IoT users that allows the execution of applications or storage/processing of data in network infrastructure devices. The heterogeneity and wider distribution of fog devices are the key differences between cloud and fog infrastructure. Genetic-based optimization is commonly used in distributed systems; however, the differentiating features of fog computing require new designs, studies, and experimentation. The growing research in the field of genetic-based fog resource optimization and the lack of previous analysis in this field have encouraged us to present a comprehensive, exhaustive, and systematic review of the most recent research works. Resource optimization techniques in fog…
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