Prediction of University Network Traffic Using Deep Learning Method

Jihoon Lee
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Abstract

The paper goes over what would happen when deep learning methods are implemented for University Network Traffic. In order to predict the outcome, the paper will compare the network before the implementation of deep learning and after the implementation of deep learning. If the results show an increase in data transfer speed after the implementation of deep learning, it suggests that the implementation of deep learning in any network system will most likely improve the data transfer speed. The paper first defines what deep learning is. It then utilizes different methods of deep learning in order to train the system. The system will go through the training phase, testing phase, and the prediction phase in order to familiarize it with the current network system. Once it understands the network system, it will find the optimized network system in order to improve the speed of network connection.
基于深度学习方法的大学网络流量预测
本文讨论了当深度学习方法在大学网络流量中实施时会发生什么。为了预测结果,本文将比较实施深度学习之前和实施深度学习之后的网络。如果结果显示实施深度学习后数据传输速度有所提高,则表明在任何网络系统中实施深度学习都很可能提高数据传输速度。本文首先定义了什么是深度学习。然后,它利用不同的深度学习方法来训练系统。该系统将经过训练阶段、测试阶段和预测阶段,以使其熟悉当前的网络系统。一旦了解了网络系统,它就会找到优化的网络系统,以提高网络连接的速度。
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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