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International Journal of Sports Technology, 2021, 2(2); doi: 10.38007/IJST.2021.020202.

Teaching and Training Methods of Table Tennis in Colleges and Universities at the time of Big Data (BD)

Author(s)

Li Zhang

Corresponding Author:
Li Zhang
Affiliation(s)

Nanchang Institute of ST, Jiangxi 330108, China

Abstract

In up-to-date epoch, on account of the fast progress of science and skill(ST), hence in this aspect of computer skill, has been a huge progress, because modern henceciety is based on the progress of computer skill, hence in up-to-date henceciety, material life is basically satisfied, hence people began to pursue physical and mental enjoyment and exercise. And in up-to-date henceciety, because the rules of the International Table Tennis Fedepochtion have been transformd, and so as to stabilize the status of table tennis in our country, we need to increase the training of table tennis. Hence, the goal of this text is to probe the fine management of teaching management through BD procedure technic. In this text, after consulting the algorithm of BD skill, the algorithm is used to model and deal with the ping-pong culture system, and then the trial data are derived, and then the trial results are integrated into the statistics. The trial results show that the enhanced GPA can be used to better help BD skill to enhance the training methods of table tennis and come up with better methods.

Keywords

BD, Granule Collectivity Algorithms (GPA), Table Tennis, Training Methods ReseekC

Cite This Paper

Li Zhang. Teaching and Training Methods of Table Tennis in Colleges and Universities at the time of Big Data (BD). International Journal of Sports Technology (2021), Vol. 2, Issue 2: 9-13. https://doi.org/10.38007/IJST.2021.020202.

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