Statswork

Role of machine learning in sports for enhancing performance

SW- Promotional image- Role of machine learning in sports for enhancing performance

In brief:

Role of machine learning for enhancing performance in sports

Following are some aspects of sport field in which performance can be enhanced by applying machine learning and artificial intelligence

1. Selection of the players by using machine learning.

Figure 1 Use of machine learning in high performing player in football game

2. Helps in keeping a good check on the health of players

Figure 3 wearable wrist watch embedded with AI

3. Can act as personal virtual coach or trainer

Figure 3 Train by virtual coaches in virtual reality

4. Enhancing decision making by umpires and judges

Figure 4 depicting third umpire decision

5. Intensify audiences watching experience

Figure 4 depicting a shot at tennis court

6. Facility to use experiences to augment performance

7. Analysis of statistical data and patterns

           Figure 6 depicting the bowling pattern of a bowler by using machine learning & AI

Summary

Machine learning and AI can be used in many more ways to enhance the performance in sports and it is also got implemented significantly in this. However, the potential is there to make an in – depth analysis into different aspects and create new strategy that will further enhances the performances in future.

References

  1. Brown, M. (2012). Data mining techniques. [Online]. Available from: https://developer.ibm.com/technologies/analytics/articles/ba-data-mining-techniques/.
  2. Deep Prakash, C. (2016). A New Team Selection Methodology using Machine Learning and Memetic Genetic Algorithm for IPL-9. International Journal of Electronics,Electrical and Computational System. [Online]. Available from: https://www.researchgate.net/publication/309040318_A_New_Team_Selection_Methodology_using_Machine_Learning_and_Memetic_Genetic_Algorithm_for_IPL-9.
  3. Van Haaren, J. & Van den Broeck, G. (2014). Relational Learning for Football-Related Predictions. In: Latest Advances in Inductive Logic Programming. [Online]. IMPERIAL COLLEGE PRESS, pp. 237–244. Available from: https://www.worldscientific.com/doi/abs/10.1142/9781783265091_0025.
  4. Malukani, K., Keswani, B., Chaturvedi, S. & Nandedkar, S. (2013). Impact of Informational and Social Support Services on Patient ’ s Perceived Satisfaction from Virtual Pathology Communities. [Online]. (6). pp. 477–482. Available from: https://www.ijbamr.com/pdf/477-482.pdf.
  5. Obenshain, M.K. (2004). Application of Data Mining Techniques to Healthcare Data. Infection Control & Hospital Epidemiology. [Online]. 25 (8). pp. 690–695. Available from: https://citeseerx.ist.psu.edu/viewdoc/download?doi=10.1.1.534.9014&rep=rep1&type=pdf.
  6. S.H, M.I. & S.A., S. (2013). Intelligent heart disease prediction system using data mining techniques. International Journal of Healthcare & Biomedical Research. [Online]. 1. pp. 94–101. Available from: https://ijhbr.com/pdf/94-101.pdf.
Exit mobile version