ISSN: 2222-6990
Open access
A significant advancement in the field of sports talent identification is the Sports Talent Identification Support System (STIDSS). This synopsis encapsulates the methodology employed, the results attained, the suggestions for pragmatic execution, and the possible implications for subsequent investigations. Utilising a data-driven approach, STIDSS gathers comprehensive data from numerous sports disciplines. Machine learning algorithms are used to process this data, enabling real-time tracking and assessment of athletic potential. This all-encompassing method offers accuracy and early talent identification. STIDSS has improved the accuracy and efficacy of talent detection. Early talent identification is a historic achievement that could transform young sports initiatives. Integration with training courses and collaboration with educational institutions are recommended to maximise STIDSS. These steps will support athletes' development and academic well-being. The launch of STIDSS sets the groundwork for further in-depth study in the future. Scholars have the ability to explore its relevance across many sports domains, adjust its formulas, and scrutinise its enduring impact on the growth of athletes. The discovery and study of athletic talent has the potential to be completely transformed by STIDSS.
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(Soeed & Anuar, 2023)
Soeed, K., & Anuar, N. (2023). The Development of a Talent Identification Support System (STIDSS) for Sports Talent at School. International Journal of Academic Research in Business and Social Sciences, 13(12), 3705–3712.
Copyright: © 2023 The Author(s)
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