一种基于随机贪婪的人工智能应用设计时间工具,用于计算连续体中的组件放置和资源选择

Hamta Sedghani, Federica Filippini, D. Ardagna
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引用次数: 1

摘要

人工智能(AI)和深度学习(DL)如今已经无处不在,应用范围从个人助理到医疗保健。如今,随着向移动计算和物联网的加速迁移,大量数据由广泛的终端设备产生,这决定了边缘计算范式的兴起,计算资源分布在具有高度异构能力的设备之间。在这种分散的场景中,有效的组件放置和资源分配算法对于协调计算连续体资源至关重要。在本文中,我们提出了一个工具来有效地解决AI应用程序在设计时的组件放置问题。通过随机贪心算法,我们的方法确定了在异构资源(包括边缘设备、基于云gpu的虚拟机和功能即服务解决方案)上提供性能保证的最低成本的位置。最后,我们将随机贪婪方法与HyperOpt框架进行了比较,并证明了我们提出的方法收敛到接近最优解的速度要快得多,特别是在大规模系统中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Random Greedy based Design Time Tool for AI Applications Component Placement and Resource Selection in Computing Continua
Artificial Intelligence (AI) and Deep Learning (DL) are pervasive today, with applications spanning from personal assistants to healthcare. Nowadays, the accelerated migration towards mobile computing and Internet of Things, where a huge amount of data is generated by widespread end devices, is determining the rise of the edge computing paradigm, where computing resources are distributed among devices with highly heterogeneous capacities. In this fragmented scenario, efficient component placement and resource allocation algorithms are crucial to orchestrate at best the computing continuum resources. In this paper, we propose a tool to effectively address the component placement problem for AI applications at design time. Through a randomized greedy algorithm, our approach identifies the placement of minimum cost providing performance guar-antees across heterogeneous resources including edge devices, cloud GPU-based Virtual Machines and Function as a Service solutions. Finally, we compare the random greedy method with the HyperOpt framework and demonstrate that our proposed approach converges to a near-optimal solution much faster, especially in large scale systems.
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