Facilitating Deep Learning for Edge Computing: A Case Study on Data Classification

A. Alsalemi, A. Amira, H. Malekmohamadi, Kegong Diao
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引用次数: 1

Abstract

Deep Learning (DL) is increasingly empowering technology and engineering in a plethora of ways, especially when big data processing is a core requirement. Many challenges, however, arise when solely depending on cloud computing for Artificial Intelligence (AI), such as data privacy, communication latency, and power consumption. Despite the elevating popularity of edge computing, its overarching issue is not the lack of technical specifications in many edge computing platforms but the sparsity of comprehensive documentation on how to correct utilize hardware to run ML and DL algorithms. Due to its specialized nature, installing the full version of TensorFlow, a common ML library, on an edge device is a complicated procedure that is seldom successful, due to the many dependent software libraries needed to be compatible with varying architectures of edge computing devices. Henceforth, in this paper, we present a novel technical guide on setting up the TensorFlow Lite, a lightweight version of TensorFlow, and demonstrate a complete workflow of model training, validation, and testing on the ODROID-XU4. Results are presented for a case study on energy data classification using the outlined model show almost 7 times higher computational performance compared to cloud-based AI.
促进边缘计算的深度学习:数据分类的案例研究
深度学习(DL)正以多种方式日益增强技术和工程的能力,尤其是当大数据处理成为核心需求时。然而,当人工智能(AI)完全依赖云计算时,会出现许多挑战,例如数据隐私、通信延迟和功耗。尽管边缘计算越来越受欢迎,但其首要问题不是许多边缘计算平台缺乏技术规范,而是关于如何正确利用硬件运行ML和DL算法的综合文档的稀疏性。由于其特殊性,在边缘设备上安装完整版本的TensorFlow(一个通用的ML库)是一个复杂的过程,很少成功,因为许多依赖的软件库需要与边缘计算设备的不同架构兼容。因此,在本文中,我们提出了一个关于设置TensorFlow Lite (TensorFlow的轻量级版本)的新技术指南,并在ODROID-XU4上演示了一个完整的模型训练、验证和测试工作流。使用概述模型进行能源数据分类的案例研究结果显示,与基于云的人工智能相比,计算性能提高了近7倍。
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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