Analysis of Deep Learning in Real-World Applications: Challenges and Progress

Q3 Engineering 推进技术 Pub Date : 2023-07-24 DOI:10.52783/tjjpt.v44.i2.150
Vivek Velayutham, Gunjan Chhabra, Sanjay Kumar, Avinash Kumar, Shrinwantu Raha, Gonesh Chandra Sah
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Abstract

Deep Learning (DL), a subset of machine learning (ML) based on artificial neural networks, has experienced significant advancements in recent years. While it has demonstrated remarkable capabilities in various domains, the true potential of DL shines when it is applied to real-world problems. This article delves into the fascinating world of deep learning in real-world applications, highlighting its impact, challenges, and future prospects. the translation of DL research into real-world applications presents a unique set of challenges. While DL models exhibit remarkable performance in controlled environments, their practical deployment is often impeded by issues related to data availability, model interpretability, ethical considerations, and computational requirements. This paper aims to provide a comprehensive analysis of the progress and challenges associated with deploying deep learning in real-world scenarios. Deep learning is the subset of man-made intelligence technique where there are number of layers of data which are tended to as neurons and helps with understanding the data gainfully. Computer based intelligence helps the machines and structures to fathom the human exercises themselves and subsequently reply in a way that is controlled successfully close to the end client of that particular application, system, etc. Different significant learning computations are used to complete the thought where the significant acquiring starts the cycle by taking data from one layer and give it to the accompanying layer of data. A lot of information and data is taken care of as layers and moderate framework where they are related with each other by association of neurons which go about as information of interest for each layer. The meaning of significant learning will be gotten a handle on in this paper which will figure out the uses of significant learning thought. The fundamental or low-level layers of significant learning will endeavour to recognize fundamental components and the middle layer will endeavour to perceive the thing and the critical level layers will distinguish the real deal. There are numerous significant learning frameworks which are used across various spaces to basic and work on the task of the business.
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深度学习在现实世界中的应用分析:挑战与进展
深度学习(DL)是基于人工神经网络的机器学习(ML)的一个子集,近年来取得了重大进展。虽然它已经在各个领域展示了非凡的能力,但当它应用于现实世界的问题时,它的真正潜力才会发光。本文深入探讨了深度学习在现实应用中的迷人世界,重点介绍了它的影响、挑战和未来前景。将深度学习研究转化为现实世界的应用呈现出一系列独特的挑战。虽然深度学习模型在受控环境中表现出卓越的性能,但它们的实际部署经常受到与数据可用性、模型可解释性、伦理考虑和计算需求相关的问题的阻碍。本文旨在全面分析在现实场景中部署深度学习的进展和挑战。深度学习是人工智能技术的子集,其中有许多层的数据,这些数据被视为神经元,并有助于有效地理解数据。基于计算机的智能帮助机器和结构自己理解人类的练习,然后以一种接近特定应用程序、系统等的最终客户端成功控制的方式做出回应。不同的重要学习计算被用来完成这个思想,在这个思想中,重要获取通过从一层获取数据并将其提供给伴随的数据层来开始循环。大量的信息和数据被处理成层和适度的框架,其中它们通过神经元的关联相互关联,神经元作为每层感兴趣的信息传播。重要学习的基础或低层次将努力识别基本组成部分,中间层将努力感知事物,关键层次将区分真实的事物。有许多重要的学习框架在不同的空间中用于基础和处理业务任务。
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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来源期刊
推进技术
推进技术 Engineering-Aerospace Engineering
CiteScore
1.40
自引率
0.00%
发文量
6610
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