Inteligencia artificial en la educación: Explorando los beneficios y riesgos potenciales

Contenido principal del artículo

Mario Fabricio Ayala-Pazmiño

Resumen

La inteligencia artificial (IA) tiene el potencial de transformar la educación al mejorar los resultados de la enseñanza y el aprendizaje. Sin embargo, como con cualquier nueva tecnología, también existen riesgos asociados con su uso. Este documento explora los beneficios y riesgos potenciales de la IA en la educación, incluido el aprendizaje personalizado, la evaluación mejorada, la reducción del tiempo de planificación para los maestros, y el riesgo de hacer trampa. Basándose en una variedad de estudios y perspectivas, el documento argumenta que, si bien existen ciertos riesgos asociados con la IA, los beneficios que ofrece a la educación son significativos. El documento concluye sugiriendo la necesidad de más investigación empírica sobre el impacto de la IA en la educación y la importancia de preparar a los estudiantes para un futuro en el que las máquinas desempeñarán un papel de liderazgo.

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Cómo citar
Ayala-Pazmiño , M. (2023). Inteligencia artificial en la educación: Explorando los beneficios y riesgos potenciales. 593 Digital Publisher CEIT, 8(3), 892-899. https://doi.org/10.33386/593dp.2023.3.1827
Sección
Educación
Biografía del autor/a

Mario Fabricio Ayala-Pazmiño , Universidad del Pacífico - Ecuador

http://orcid.org/0000-0002-3344-8931

Dr. Ayala has Computer Science, Business Administration, and Education Sciences degrees. He received his Ph.D. in Education from the University of Melbourne in Australia, in 2018, with his highest concentration in foreign language teaching and learning, pedagogy, educational management, and higher education. He is an educator and has experience as an Academic Coordinator. His previous experience includes working as head of Humanities and Community and Service departments. In addition, he was a professor at Monash University in Melbourne, Australia, Universidad de las Americas in Quito, and Universidad de Guayaquil. Dr. Ayala is a Monash University Hispanic Studies Teachers Association, Australia member. 

Citas

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