On Edge Computing for Modern Mobility

Vasily Kupriyanovsky, Dmitry Namiot, Oleg Pokusaev

Abstract


Edge computing is a paradigm of distributed computing that occurs within the reach of end devices. The idea behind such architecture is quite clear – it is necessary to bring processing closer to the point of data collection, ensuring a reduction in network response time, more efficient use of network bandwidth and scaling of computing. End devices in the network are becoming more and more powerful, which allows transferring some of the computing directly to them (offloading computing). Thus, in comparison with other cloud solutions, edge computing will cover the largest number of devices. Such distributed systems are becoming an integral part of smart infrastructure. The article discusses models for using edge computing to support mobility. For example, models for using the Internet of Vehicles, the Internet of Drones and Trains.


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References


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