La integración de los datos en el fútbol de élite. Un nuevo paradigma de investigación

  1. Felipe, José Luis 1
  2. Alonso-Callejo, Antonio 2
  1. 1 Universidad de Castilla-La Mancha y Unión Deportiva Las Palmas
  2. 2 Universidad de Castilla-La Mancha
    info

    Universidad de Castilla-La Mancha

    Ciudad Real, España

    ROR https://ror.org/05r78ng12

Revista:
Cuadernos económicos de ICE

ISSN: 0210-2633

Año de publicación: 2023

Número: 106

Páginas: 55-66

Tipo: Artículo

DOI: 10.32796/CICE.2023.106.7695 DIALNET GOOGLE SCHOLAR lock_openAcceso abierto editor

Otras publicaciones en: Cuadernos económicos de ICE

Resumen

La tecnología se ha consolidado en el deporte de élite en los últimos años y se utilizade forma rutinaria, especialmente en el fútbol de élite. Es preciso destacar que,mientras que los procesos subyacentes a las tácticas en el fútbol de élite han mejoradoa lo largo de los años, los enfoques científicos no han evolucionado con la misma rapidez.La solución ante este problema es la integración de las nuevas tecnologías y elbig data en el día a día de los cuerpos técnicos del fútbol de élite. De este modo, elmundo del fútbol debe aprender a registrar, almacenar, analizar y aplicar toda la variedady volumen de datos disponibles en aras de la mejora del juego y del espectáculo.Así, los tres grandes retos que se perfilan en el mundo del fútbol en los próximosaños son: la prevención de lesiones, la orientación de las tareas de entrenamiento y eldesarrollo técnico-táctico. Los nuevos sistemas y técnicas de big data aplicadas almundo del fútbol permiten implementar el ciclo PDCA (Plan, Do, Check, y Act), considerándoseuna herramienta válida y fiable para implementar un modelo de resoluciónde problemas en el contexto del fútbol de élite.

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