探索使用仿真的边缘到云应用程序的任务放置

André Luckow, Kartik Rattan, S. Jha
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引用次数: 5

摘要

越来越多的物联网应用连接物理设备,如科学仪器、技术设备、机器和相机,跨越从边缘到云的异构基础设施,提供响应迅速的智能服务,同时符合隐私和安全要求。然而,异构物联网、边缘和云技术的集成以及跨多层和多种基础设施无缝工作的端到端应用程序的设计是具有挑战性的。一个重要的问题是资源管理,需要确保在每一层上分配正确类型和规模的资源,以满足应用程序的处理需求。随着边缘层和云层越来越紧密地集成,不平衡的资源分配和次优的任务放置会迅速降低整个系统的性能。本文提出了一种仿真方法来研究跨边缘到云连续体的任务布置。我们演示了模拟可以解决问题的复杂性和许多自由度,允许我们调查基本的部署模式和权衡。我们使用基于机器学习的工作负载来评估我们的方法,通过比较仿真和现实世界的实验来证明其有效性。此外,我们表明,正确的任务放置策略对性能有显著影响——在我们的实验中,根据场景的不同,影响在5%到65%之间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploring Task Placement for Edge-to-Cloud Applications using Emulation
A vast and growing number of IoT applications connect physical devices, such as scientific instruments, technical equipment, machines, and cameras, across heterogenous infrastructure from the edge to the cloud to provide responsive, intelligent services while complying with privacy and security requirements. However, the integration of heterogeneous IoT, edge, and cloud technologies and the design of end-to-end applications that seamlessly work across multiple layers and types of infrastructures is challenging. A significant issue is resource management and the need to ensure that the right type and scale of resources is allocated on every layer to fulfill the application’s processing needs. As edge and cloud layers are increasingly tightly integrated, imbalanced resource allocations and sub-optimally placed tasks can quickly deteriorate the overall system performance. This paper proposes an emulation approach for the investigation of task placements across the edge-to-cloud continuum. We demonstrate that emulation can address the complexity and many degrees-of-freedom of the problem, allowing us to investigate essential deployment patterns and trade-offs. We evaluate our approach using a machine learning-based workload, demonstrating the validity by comparing emulation and real-world experiments. Further, we show that the right task placement strategy has a significant impact on performance – in our experiments, between 5% and 65% depending on the scenario.
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