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2022 Vol.5 March.No1

  • Title: Design of online monitoring data management platform based on big data algorithm
  • Name: Zheng-yujie
  • Company: Department of Computer and Information Engineering, Guangxi Vocational Normal University
  • Abstract:

    Aiming at the problem that the current real-time monitoring and management effect of massive data is poor, a design method of online monitoring data management platform based on big data algorithm is proposed. Firstly, the structural framework of online monitoring data management platform is optimized, the online monitoring data management steps are simplified combined with big data technology, and the online monitoring data management evaluation algorithm and evaluation system are constructed. Finally, it is confirmed by experiments, The online monitoring data management platform based on big data algorithm has high practicability in the process of practical application and fully meets the research requirements.


  • Keyword: big data algorithm; Online monitoring; Data management;
  • DOI: 10.12250/jpciams2021090406
  • Citation form: Zheng-yujie.Design of online monitoring data management platform based on big data algorithm [J]. Computer Informatization and Mechanical System,2021,Vol.4,pp.34-41
Reference:

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