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Research on Online Learning Platform Based on Cloud Computing and Big Data Technology

  • Guan-Qun CaiEmail author
  • Qing-Hua Wang
Conference paper
  • 22 Downloads
Part of the Communications in Computer and Information Science book series (CCIS, volume 1227)

Abstract

The online learning platform is the key category of online education research, cloud computing and big data technology combined with the form of online learning, points out the new direction of development, had a great change and to enhance the online learning platform of the traditional operation mode and method of data analysis. Aiming at the problems of online learning platform, the use of cloud computing and big data technology, the design and implementation of online learning platform, improve the interaction effect between teachers and learners online.

Keywords

Cloud computing Big data Online learning Hadoop MapReduce1 

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Copyright information

© Springer Nature Singapore Pte Ltd. 2020

Authors and Affiliations

  1. 1.Office of Educational AdministrationXuan Cheng Vocational and Technical CollegeXuanchengChina
  2. 2.Training CenterXuan Cheng Vocational and Technical CollegeXuanchengChina

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