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Optoelectronic Task Processing based on Multilevel Collaborative Computing Networks: An Optimization-based Approach

Published:18 April 2024Publication History

ABSTRACT

This paper explores the problem of optoelectronic task processing based on multilevel collaborative computing networks. The core keywords of the research include optoelectronic task processing, edge computing, cloud computing, and computational offloading. The aim of the article is to investigate how to efficiently process optoelectronic tasks in a multilevel collaborative computing network through an optimization approach. We propose a distribution-based algorithm to solve the minimum overhead of optoelectronic task processing. Further, we propose an entropy decision-based algorithm to improve existing algorithms to avoid falling into local optimal solutions.

References

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            ICCNS '23: Proceedings of the 2023 13th International Conference on Communication and Network Security
            December 2023
            363 pages
            ISBN:9798400707964
            DOI:10.1145/3638782

            Copyright © 2023 ACM

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            Publication History

            • Published: 18 April 2024

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