Integration of cloud, fog, and edge technologies for the optimization of high-load systems

Valentin Anatolyevich Cherepenin, Nikolai Olegovich Smyk, Sergei Petrovich Vorob'ev
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Abstract

The study is dedicated to analyzing methods and tools for optimizing the performance of high-load systems using cloud, fog, and edge technologies. The focus is on understanding the concept of high-load systems, identifying the main reasons for increased load on such systems, and studying the dependency of the load on the system's scalability, number of users, and volume of processed data. The introduction of these technologies implies the creation of a multi-level topological structure that facilitates the efficient operation of distributed corporate systems and computing networks. Modern approaches to load management are considered, the main factors affecting performance are investigated, and an optimization model is proposed that ensures a high level of system efficiency and resilience to peak loads while ensuring continuity and quality of service for end-users. The methodology is based on a comprehensive approach, including the analysis of existing problems and the proposal of innovative solutions for optimization, the application of architectural solutions based on IoT, cloud, fog, and edge computing to improve performance and reduce delays in high-load systems. The scientific novelty of this work lies in the development of a unique multi-level topological structure capable of integrating cloud, fog, and edge computing to optimize high-load systems. This structure allows for improved performance, reduced delays, and effective system scaling while addressing the challenges of managing large data volumes and servicing multiple requests simultaneously. The conclusions of the study highlight the significant potential of IoT technology in improving production processes, demonstrating how the integration of modern technological solutions can contribute to increased productivity, product quality, and risk management.
整合云、雾和边缘技术,优化高负荷系统
本研究致力于分析利用云、雾和边缘技术优化高负载系统性能的方法和工具。重点是理解高负载系统的概念,确定此类系统负载增加的主要原因,并研究负载对系统可扩展性、用户数量和处理数据量的依赖性。这些技术的引入意味着多层次拓扑结构的建立,有助于分布式企业系统和计算网络的高效运行。本文考虑了现代负载管理方法,研究了影响性能的主要因素,并提出了一个优化模型,以确保高水平的系统效率和对峰值负载的适应能力,同时确保终端用户服务的连续性和质量。该方法基于一种综合方法,包括分析现有问题和提出创新的优化解决方案,以及应用基于物联网、云、雾和边缘计算的架构解决方案,以提高高负荷系统的性能并减少延迟。这项工作的科学新意在于开发了一种独特的多层次拓扑结构,能够整合云、雾和边缘计算来优化高负载系统。这种结构可以提高性能、减少延迟和有效的系统扩展,同时应对管理海量数据和同时服务多个请求的挑战。研究结论强调了物联网技术在改进生产流程方面的巨大潜力,展示了现代技术解决方案的集成如何有助于提高生产率、产品质量和风险管理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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