物联网应用边缘感知资源编排的机器学习

Manar Jammal, M. Abusharkh
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引用次数: 0

摘要

市场正在经历物联网(IoT)设备数量及其从可穿戴个人设备到智能企业应用程序的数据流量的巨大雪崩。这些感官数据在我们的日常生活、企业产品和商业决策过程中发挥着至关重要的作用。尽管这些数据提供了有希望的业务见解,并可以增强应用程序的性能,但它也带来了不同的挑战,包括连接性、动态资源需求、隐私等。因此,物联网应用的基础设施必须精心编排,并考虑到智能,以扩展,自组织和处理巨大的数据量和传输。智能平台有望在运行时自主探索工作负载并自主分配计算资源,以帮助物联网系统实现其最佳内在价值。因此,本文介绍了一个由各种机器学习(ML)技术和优化模型组成的新平台,用于预测物联网应用程序的行为,并在边缘上动态部署这些应用程序,以满足和提高整体端到端应用程序的性能。对比分析表明,随机森林模型在资源预测方面具有良好的效果。此外,提出的部署优化模型显示了在计算、延迟/传输速率和计算卸载约束之间提供权衡的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning for Edge-Aware Resource Orchestration for IoT Applications
The market is experiencing a huge avalanche on the Internet-of-Thing (IoT) devices count and their data traffic from wearable personal devices to smart enterprise applications. This sensory data is playing a crucial role in our day-to-day life and enterprise’s products and business decision-making process. Although this data provides promising business insights and can enhance applications’ performance, it comes with different challenges including connectivity, dynamic resource demands, privacy, and others. Therefore, the infrastructure of the IoT applications must be well-orchestrated and accompanied with intelligence in mind to scale, self-organize, and handle the huge data volume and transmission. The intelligent platform is expected to self-explore workloads and autonomously allocate computing resources at runtime to assist the IoT system in achieving its best intrinsic value. Hence, this paper introduces a novel platform consisting of various machine learning (ML) techniques and optimization model to forecast the IoT applications’ behavior and best deploy such applications dynamically on the edge to meet and enhance the overall end-to-end application performance. The comparative analysis has shown that the Random Forest model has promising results for resource forecasting. Also, the proposed deployment optimization model shows the importance of providing a tradeoff between computing, delay/transmission rate, and computational offloading constraints.
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