On the Performance of Deep Learning in the Full Edge and the Full Cloud Architectures

Tajeddine Benbarrad, Marouane Salhaoui, M. Arioua
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引用次数: 1

Abstract

Deep learning today surpasses various machine learning approaches in performance and is widely used for variety of different tasks. Deep learning has increased accuracy compared to other approaches for tasks like language translation and image recognition. However, training a deep learning model on a large dataset is a challenging and expensive task that can be time consuming and require large computational resources. Therefore, Different architectures have been proposed for the implementation of deep learning models in machine vision systems to deal with this problem. Currently, the application of deep learning in the cloud is the most common and typical method. Nevertheless, the challenge of having to move the data from where it is generated to a cloud data center so that it can be used to prepare and develop machine learning models represents a major limitation of this approach. As a result, it is becoming increasingly important to consider moving aspects of deep learning to the edge, instead of the cloud, especially with the rapid increase in data volumes and the growing need to act in real time. From this perspective, a comparative study between the full edge and the full cloud architectures based on the performance of the deep learning models implemented in both architectures is elaborated. The results of this study lead us to specify the strengths of both the cloud and the edge for deploying deep learning models, and to choose the optimal architecture to deal with the rapid increase in data volumes and the growing need for real-time action.
全边缘和全云架构下深度学习的性能研究
今天,深度学习在性能上超越了各种机器学习方法,并被广泛用于各种不同的任务。与语言翻译和图像识别等任务的其他方法相比,深度学习提高了准确性。然而,在大型数据集上训练深度学习模型是一项具有挑战性且昂贵的任务,既耗时又需要大量的计算资源。因此,人们提出了不同的架构来实现机器视觉系统中的深度学习模型来处理这个问题。目前,深度学习在云端的应用是最常见、最典型的方法。然而,必须将数据从生成位置移动到云数据中心,以便用于准备和开发机器学习模型的挑战是这种方法的主要限制。因此,考虑将深度学习的各个方面转移到边缘而不是云端变得越来越重要,特别是随着数据量的快速增长和实时行动需求的增长。从这个角度出发,基于在两种架构中实现的深度学习模型的性能,对全边缘和全云架构进行了比较研究。这项研究的结果使我们明确了部署深度学习模型的云计算和边缘计算的优势,并选择最佳架构来处理数据量的快速增长和对实时行动日益增长的需求。
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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