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Algorithm Analysis for Big Data in Education Based on Depth Learning

机译:基于深度学习的教育大数据算法分析

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The construction of campus network has provided an advanced comprehensive information environment for teaching, scientific research and management of colleges. In the process of digitization and intelligentization, the data produced by all kinds of application systems in college are growing, and the large data environment of campus has been formed. Big data of college contain abundant information, so we need to use new data storage and analysis tools to store and analyze huge amounts of college data and get useful information from them. In this paper, a depth learning analysis algorithm based on Map Reduce is proposed to deal with college data. Using Map Reduce parallel computing framework to achieve campus data computing, we studied the analysis and application systems of campus big data in different themes and levels and dug out valuable information hidden behind college data. The experimental results show that the high school data mining algorithm based on Map Reduce is effective. It provides new research ideas for large data mining in colleges and provides technical reference for the construction of smart campus.
机译:校园网络建设为高校教学,科学研究和管理提供了先进的综合信息环境。在数字化和智能化过程中,大学各种应用系统产生的数据正在增长,并且已经形成了校园的大数据环境。大学的大数据包含丰富的信息,因此我们需要使用新的数据存储和分析工具来存储和分析大量的大学数据并从中获取有用的信息。本文提出了一种基于地图减少的深度学习分析算法来处理大学数据。使用地图减少并行计算框架来实现校园数据计算,我们研究了不同主题和水平的校园大数据的分析和应用系统,并挖出了大学数据背后隐藏的有价值的信息。实验结果表明,基于地图的高中数据挖掘算法减少是有效的。它为高校大型数据挖掘提供了新的研究思路,为智能校园建设提供了技术参考。

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