选择合适的支持人工智能的边缘设备,而不是昂贵的设备

Ziyang Zhang, Feng Li, Changyao Lin, Shihui Wen, Xiangyu Liu, Jie Liu
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引用次数: 0

摘要

边缘人工智能的进步使得在边缘实时实现智能交通和智慧城市等新兴应用的推理深度学习成为可能。如今,不同的行业公司开发了几种具有不同架构的边缘人工智能设备。然而,由于缺乏专门用于评估这些边缘人工智能系统性能的基准测试结果和测试平台,应用程序用户很难证明如何选择适当的边缘人工智能。在本文中,我们尝试为边缘AI设备设计一个基准测试平台,并评估六种主流边缘设备,这些设备配备了不同的计算能力和AI芯片架构。选择吞吐量、功耗比和成本效益作为评估过程的性能指标。采用了三种经典的深度学习工作负载:对象检测、图像分类和自然语言处理,并采用了不同的批处理规模。结果表明,在不同批量下,与传统边缘设备相比,搭载AI芯片的边缘设备在吞吐量、功耗比和成本效益方面分别高出134倍、57倍和32倍。从系统的角度来看,我们的工作不仅展示了这些边缘人工智能设备的有效人工智能能力,而且为边缘人工智能优化提供了详细的建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Choosing Appropriate AI-enabled Edge Devices, Not the Costly Ones
Advances in Edge AI make it possible to achieve inference deep learning for emerging applications, e.g., smart transportation and smart city on the edge in real-time. Nowadays, different industry companies have developed several edge AI devices with various architectures. However, it is hard for application users to justify how to choose the appropriate edge-AI, due to the lack of benchmark testing results and testbeds specifically used to evaluate the system performance for those edge-AI systems. In this paper, we attempt to design a benchmark test platform for the edge-AI devices and evaluate six mainstream edge devices that are equipped with different computing powers and AI chip architectures. Throughput, power consumption ratio, and cost-effectiveness are chosen as the performance metrics for the evaluation process. Three classic deep learning workloads: object detection, image classification, and natural language processing are adopted with different batch sizes. The results show that under different batch sizes, compared with traditional edge devices, edge devices equipped with AI chips have out-performance in throughput, power consumption ratio, and cost-effectiveness by 134×, 57×, and 32×, respectively. From system perspective, our work not only demonstrates the effective AI capabilities of those edge AI devices, but also provide suggestions for AI optimization at edge in details.
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