Integration of Convolutional Neural Networks in Mobile Applications

Roger Creus Castanyer, Silverio Mart'inez-Fern'andez, Xavier Franch
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引用次数: 9

Abstract

When building Deep Learning (DL) models, data scientists and software engineers manage the trade-off between their accuracy, or any other suitable success criteria, and their complexity. In an environment with high computational power, a common practice is making the models go deeper by designing more sophisticated architectures. However, in the context of mobile devices, which possess less computational power, keeping complexity under control is a must. In this paper, we study the performance of a system that integrates a DL model as a trade-off between the accuracy and the complexity. At the same time, we relate the complexity to the efficiency of the system. With this, we present a practical study that aims to explore the challenges met when optimizing the performance of DL models becomes a requirement. Concretely, we aim to identify: (i) the most concerning challenges when deploying DL-based software in mobile applications; and (ii) the path for optimizing the performance trade-off. We obtain results that verify many of the identified challenges in the related work such as the availability of frameworks and the software-data dependency. We provide a documentation of our experience when facing the identified challenges together with the discussion of possible solutions to them. Additionally, we implement a solution to the sustainability of the DL models when deployed in order to reduce the severity of other identified challenges. Moreover, we relate the performance trade-off to a new defined challenge featuring the impact of the complexity in the obtained accuracy. Finally, we discuss and motivate future work that aims to provide solutions to the more open challenges found.
卷积神经网络在移动应用中的集成
在构建深度学习(DL)模型时,数据科学家和软件工程师需要在其准确性(或任何其他合适的成功标准)与复杂性之间进行权衡。在具有高计算能力的环境中,常见的做法是通过设计更复杂的体系结构使模型更深入。然而,在计算能力较弱的移动设备环境中,保持复杂性是必须的。在本文中,我们研究了一个集成深度学习模型的系统的性能,作为精度和复杂性之间的权衡。同时,我们将复杂性与系统的效率联系起来。因此,我们提出了一项实践研究,旨在探索优化深度学习模型性能成为一种需求时遇到的挑战。具体来说,我们的目标是确定:(i)在移动应用程序中部署基于dl的软件时最关心的挑战;(ii)优化性能权衡的路径。我们获得的结果验证了相关工作中许多已确定的挑战,例如框架的可用性和软件-数据依赖性。我们提供了我们在面对已确定的挑战时的经验文档,并讨论了可能的解决方案。此外,我们在部署DL模型时实现了可持续性的解决方案,以降低其他已确定挑战的严重性。此外,我们将性能权衡与新定义的挑战联系起来,该挑战的特征是复杂性对获得的准确性的影响。最后,我们讨论并激励未来的工作,旨在为发现的更开放的挑战提供解决方案。
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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