Evolution of IoT & Data Analytics using Deep Learning

Ratik Tiwari, Nikhil Sharma, I. Kaushik, Archit Tiwari, B. Bhushan
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引用次数: 25

Abstract

In today’s world, we are surrounded by enormous devices that sense some sort of data and gives a particular output. To track the record and manage that data by connecting all devices in a network in such an efficient manner that it can be utilized in favour of mankind, this is what we call as Internet of Things. It is very difficult task to manage such a huge amount of data with great efficiency, but here the Internet of Things along with concepts of Deep Learning plays a vital role in successful completion of the task. In this paper, you are about see an absolute overview about the analytics that are used to maintain and process huge amount of input data using the concepts of Deep Learning in the very domain of Internet of Things. Firstly, we start by giving a brief description about Internet of Things and some characteristics and requirements possessed by it. We will also explain some major key factors that make deep learning a good choice for implementation of Internet of Things. Also, we have discussed about the concept of Big Data and what role it has in Internet of Things. We have evaluated some research attempts made in the very domain of Internet of Things and Deep Learning. Finally, we have explained some real-life applications and the concept behind them in this paper.
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使用深度学习的物联网和数据分析的演变
在当今世界,我们被巨大的设备所包围,这些设备可以感知某种数据并给出特定的输出。通过将网络中的所有设备以有效的方式连接起来,跟踪记录并管理这些数据,从而使其能够为人类所用,这就是我们所说的物联网。高效地管理如此庞大的数据是一项非常困难的任务,但在这里,物联网以及深度学习的概念在成功完成任务中起着至关重要的作用。在本文中,您将看到关于在物联网领域使用深度学习概念来维护和处理大量输入数据的分析的绝对概述。首先,我们对物联网进行了简单的描述,以及物联网所具有的一些特点和要求。我们还将解释一些主要的关键因素,使深度学习成为物联网实施的一个很好的选择。此外,我们还讨论了大数据的概念以及它在物联网中的作用。我们已经评估了一些在物联网和深度学习领域的研究尝试。最后,我们在本文中解释了一些实际应用及其背后的概念。
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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