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Data Flow and Distributed Deep Neural Network based low latency IoT-Edge computation model for big data environment

机译:基于数据流和分布式深神经网络的大数据环境的低延迟IOT边缘计算模型

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摘要

The trillion-fold increase in computing power brings the accessibility of deep learning to everyone. Deep learning offers precise information almost all the time when compared to other learning algorithms. On the other hand, the popularity of Internet of Things (IoT) has increased in various areas such as Smart City, Oil Mining, and Transportation. Edge/Fog computing environment helps to handle significant challenges faced by the IoT, viz. latency, bandwidth consumption, and everlasting network connectivity. For analytics in Edge computing, which is distributed in nature, the trend is more towards distributed machine learning. This research work is focused on the integration of data flow and distributed deep learning in the IoT-Edge environment to bring down the latency and increase accuracy starting from the data generation phase. To this end, a novel Data Flow and Distributed Deep Neural Network (DF-DDNN) based IoT-Edge model for big data environment has been proposed. Our proposed method has resulted in latency reduction of up to 33% when compared to the existing traditional IoT-Cloud model.
机译:计算能力的万亿倍增增加为每个人提供深度学习的可访问性。与其他学习算法相比,深度学习几乎所有时间都提供了精确的信息。另一方面,智能城市,石油采矿和运输等各个领域的东西(物联网)的普及增加。边缘/雾计算环境有助于处理IOT,VIZ面临的重大挑战。延迟,带宽消耗和永久性网络连接。对于在自然界分发的边缘计算中的分析,趋势更为分布式机器学习。这项研究工作主要集中在IoT边缘环境中的数据流和分布式深度学习的集成,以降低延迟并从数据生成阶段开始提高准确性。为此,已经提出了一种新的数据流和分布式深度神经网络(DF-DDNN)的大数据环境的IOT边缘模型。与现有的传统IOT云模型相比,我们所提出的方法导致延迟降低高达33%。

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