Abstract

With the rapid development, different information relating to sports may now be recorded forms of useful big data through wearable and sensing technology. Big data technology has become a pressing challenge to tackle in the present basketball training, which improves the effect of baseball analysis. In this study, we propose the Spark framework based on in-memory computing for big data processing. First, we use a new swarm intelligence optimization cuckoo search algorithm because the algorithm has fewer parameters, powerful global search ability, and support of fast convergence. Second, we apply the traditional K-clustering algorithm to improve the final output using clustering means in Spark distributed environment. Last, we examine the aspects that could lead to high-pressure game circumstances to study professional athletes' defensive performance. Both recruiters and trainers may use our technique to better understand essential player's qualities and eventually, to assess and improve a team's performance. The experimental findings reveal that the suggested approach outperforms previous methods in terms of clustering performance and practical utility. It has the greatest influence on the shooting training impact when moving, yielding complimentary outcomes in the training effect.

Highlights

  • Basketball is a sport that takes into account both individual skills and team collaboration [1,2,3]. e individual level of skill and team tactics are important in the game [4, 5]

  • When a computing task is executed on a cluster, the WorkNode starts an executor for the task

  • We show how to measure the performance of the suggested model. e confusion metrics are amongst the most extensively utilized techniques for identifying performance results by numerous academics

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Summary

Introduction

Basketball is a sport that takes into account both individual skills and team collaboration [1,2,3]. e individual level of skill and team tactics are important in the game [4, 5]. Hadoop is an application platform for storing computing data It consists of HDFS, YARN [24], MapReduce [25], and other components. MLib is a Spark machine learning component that makes machine learning easier and easier to implement, and it facilitates the processing of larger-scale basketball sports data. Cluster analysis techniques are being used to import large data processing frameworks such as Hadoop, Spark, and others, and analysis and research are growing year after year. Spark’s usage of memory decreases the number of disc reads and writes during a calculation, making it significantly more computationally efficient than MapReduce, which is largely reliant on I/O. e current research trend is to apply the classic clustering method using the Spark distributed computing framework. Alleviate the inadequacies of conventional clustering analysis by using the processing power of the cluster environment

Evaluation Method
Experiments and Results
TB 250 GB Intel Core Tm Ubuntu 18 LTS
Full Text
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