Machine learning-driven implementation of workflow optimization in cloud computing for IoT applications

IF 0.9 Q4 TELECOMMUNICATIONS
Md Khalid Jamal, Mohammad Faisal
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引用次数: 0

Abstract

The optimization of workflow scheduling in Internet of Things (IoT) environments presents significant challenges due to the dynamic and heterogeneous nature of these systems. Traditional techniques must often adapt to fluctuating network conditions and varying data loads. To address these limitations, we propose a novel approach that leverages Automated Machine Learning (AutoML) integrated with cloud computing to optimize workflow scheduling for IoT applications. Our solution automates machine learning model selection, training, and tuning, significantly enhancing computational efficiency and adaptability. Through extensive experimentation, we demonstrate that our AutoML-driven approach surpasses conventional algorithms across several key metrics, including accuracy, computational efficiency, adaptability to dynamic environments, and communication efficiency. Specifically, our method achieves a scheduling accuracy improvement of up to 25%, a reduced computational overhead by 30%, and a 40% enhancement in adaptability under dynamic conditions. Furthermore, the scalability of our solution is critical in cloud computing contexts, enabling efficient handling of large-scale IoT deployments by leveraging cloud resources for distributed processing. This scalability ensures that our approach can effectively manage increasing data volumes and device heterogeneity inherent in modern IoT systems.

在云计算中以机器学习为驱动实现工作流程优化,用于物联网应用
由于物联网系统的动态性和异构性,物联网环境下工作流调度的优化提出了重大挑战。传统技术通常必须适应波动的网络条件和变化的数据负载。为了解决这些限制,我们提出了一种新的方法,利用集成了云计算的自动化机器学习(AutoML)来优化物联网应用的工作流调度。我们的解决方案自动化了机器学习模型的选择、训练和调整,显著提高了计算效率和适应性。通过广泛的实验,我们证明了我们的automl驱动方法在几个关键指标上优于传统算法,包括准确性、计算效率、对动态环境的适应性和通信效率。具体来说,我们的方法使调度精度提高了25%,计算开销减少了30%,动态条件下的适应性提高了40%。此外,我们解决方案的可扩展性在云计算环境中至关重要,通过利用云资源进行分布式处理,可以有效地处理大规模物联网部署。这种可扩展性确保我们的方法可以有效地管理现代物联网系统中不断增加的数据量和设备异构性。
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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CiteScore
3.10
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0.00%
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