Front-end deep learning web apps development and deployment: a review.

Hock-Ann Goh, Chin-Kuan Ho, Fazly Salleh Abas
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引用次数: 4

Abstract

Machine learning and deep learning models are commonly developed using programming languages such as Python, C++, or R and deployed as web apps delivered from a back-end server or as mobile apps installed from an app store. However, recently front-end technologies and JavaScript libraries, such as TensorFlow.js, have been introduced to make machine learning more accessible to researchers and end-users. Using JavaScript, TensorFlow.js can define, train, and run new or existing, pre-trained machine learning models entirely in the browser from the client-side, which improves the user experience through interaction while preserving privacy. Deep learning models deployed on front-end browsers must be small, have fast inference, and ideally be interactive in real-time. Therefore, the emphasis on development and deployment is different. This paper aims to review the development and deployment of these deep-learning web apps to raise awareness of the recent advancements and encourage more researchers to take advantage of this technology for their own work. First, the rationale behind the deployment stack (front-end, JavaScript, and TensorFlow.js) is discussed. Then, the development approach for obtaining deep learning models that are optimized and suitable for front-end deployment is then described. The article also provides current web applications divided into seven categories to show deep learning potential on the front end. These include web apps for deep learning playground, pose detection and gesture tracking, music and art creation, expression detection and facial recognition, video segmentation, image and signal analysis, healthcare diagnosis, recognition, and identification.

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前端深度学习web应用程序的开发和部署:综述。
机器学习和深度学习模型通常使用Python、C++或R等编程语言开发,并部署为从后端服务器交付的web应用程序或从应用商店安装的移动应用程序。然而,最近引入了前端技术和JavaScript库,如TensorFlow.js,以使研究人员和最终用户更容易访问机器学习。使用JavaScript,TensorFlow.js可以从客户端完全在浏览器中定义、训练和运行新的或现有的预先训练的机器学习模型,这在保护隐私的同时通过交互改善了用户体验。部署在前端浏览器上的深度学习模型必须很小,推理速度快,最好是实时交互。因此,对开发和部署的重视程度有所不同。本文旨在回顾这些深度学习网络应用程序的开发和部署,以提高人们对最新进展的认识,并鼓励更多的研究人员利用这项技术开展自己的工作。首先,讨论了部署堆栈(前端、JavaScript和TensorFlow.js)背后的基本原理。然后,描述了获得优化并适合前端部署的深度学习模型的开发方法。文章还提供了当前的网络应用程序,分为七类,以显示前端的深度学习潜力。其中包括用于深度学习游乐场、姿势检测和手势跟踪、音乐和艺术创作、表情检测和面部识别、视频分割、图像和信号分析、医疗诊断、识别和识别的网络应用程序。
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