La inteligencia artificial y sus aplicaciones en ciencias e ingenierías

Authors

DOI:

https://doi.org/10.19136/jeeos.a9n2.6423

Keywords:

Inteligencia artificial, redes neuronales artificiales, ciencias e ingenierías.

Abstract

El término inteligencia artificial (IA) es cada vez más común en la conversación diaria, generando opiniones diversas sobre su uso, así como temores en torno a su implementación en escala global. Sin embargo, en ocasiones no se tiene completa claridad acerca del significado del término, las ramificaciones que existen dentro de la IA, así como la manera en que se implementan las técnicas existentes. Este artículo describe estos conceptos. Asimismo, se discute la gran diversidad de aplicaciones que tiene la IA en ciencias e ingenierías, con énfasis particular en la Ingeniería de Procesos, una de las ramas de mayor relevancia en la Ingeniería Química. Finalmente, se discuten las perspectivas y áreas de oportunidad que se perciben para las diversas aplicaciones de la IA.

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Published

2025-07-31

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Section

ARTÍCULO DE REVISIÓN

How to Cite

Mosqueda-Huerta, Z. J., Salgado-Rodríguez, T. G., Hernández-Camacho, N. V., Alba-Robles, E., Lara-Montaño, O. D., & Gómez Castro, F. I. (2025). La inteligencia artificial y sus aplicaciones en ciencias e ingenierías. Journal of Energy, Engineering Optimization and Sustainability, 9(2), 11-28. https://doi.org/10.19136/jeeos.a9n2.6423