Analytical Study of Task Offloading Techniques using Deep Learning

Almelu, S. Veenadhari, K. Maheshwar
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Abstract

The Internet of Things (IoT) systems create a large amount of sensing information. The consistency of this information is an essential problem for ensuring the quality of IoT services. The IoT data, however, generally suffers due to a variety of factors such as collisions, unstable network communication, noise, manual system closure, incomplete values and equipment failure. Due to excessive latency, bandwidth limitations, and high communication costs, transferring all IoT data to the cloud to solve the missing data problem may have a detrimental impact on network performance and service quality. As a result, the issue of missing information should be addressed as soon as feasible by offloading duties like data prediction or estimations closer to the source. As a result, the issue of incomplete information must be addressed as soon as feasible by offloading duties such as predictions or assessment to the network’s edge devices. In this work, we show how deep learning may be used to offload tasks in IoT applications.
基于深度学习的任务卸载技术分析研究
物联网(IoT)系统会产生大量的传感信息。这些信息的一致性是确保物联网服务质量的关键问题。然而,物联网数据通常会受到各种因素的影响,如碰撞、网络通信不稳定、噪音、人工关闭系统、不完整的值和设备故障。由于延迟过大、带宽限制、通信成本高,将物联网数据全部传输到云端解决数据丢失问题,可能会对网络性能和服务质量造成不利影响。因此,应该尽快解决缺少信息的问题,方法是将数据预测或估计等工作转移到更接近来源的地方。因此,必须尽快解决信息不完整的问题,将预测或评估等任务转移到网络的边缘设备上。在这项工作中,我们展示了如何使用深度学习来卸载物联网应用中的任务。
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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