TY - JOUR
T1 - Ten Essential Pillars in Artificial Intelligence for University Science Education
T2 - A Scoping Review
AU - Deroncele-Acosta, Angel
AU - Bellido-Valdiviezo, Omar
AU - Sánchez-Trujillo, María de los Ángeles
AU - Palacios-Núñez, Madeleine Lourdes
AU - Rueda-Garcés, Hernán
AU - Brito-Garcías, José Gregorio
N1 - Publisher Copyright:
© The Author(s) 2024.
PY - 2024/7/1
Y1 - 2024/7/1
N2 - Although Artificial Intelligence (AI) is notable in education, the studies on its specific application in university science education are still incipient. At the same time, the research demonstrates a critical need to systematize AI pillars to provide a coherent and clear structure to guide the development, implementation, and understanding of this technology in various fields, but very little progress has been made in the field of university science education. Therefore, the present study was aimed at exploring the essential pillars of AI for university science education. This scoping review followed the Arksey and O’Malley methodology, which unfolds five stages; based on established criteria 89 texts were finally selected and included in the study. Ten pillars were found: (1) AI Ethics, (2) AI Didactic Integration (AI-DI), (3) Machine Learning (ML), (4) Deep Learning (DL), (5) Active Learning (AL), (6) Intelligent Prediction (AI-IP), (7) Natural Language Processing (NLP), (8) Augmented reality and Virtual reality (AR/VR), (9) Artificial Neural Network (ANN), and (10) Intelligent Tutoring System (ITS). The study provides a comprehensive synthesis of current trends and advances in this field, highlighting good practices that provide empirical evidence, highlighting ethical, pedagogical, and technical challenges associated with the application of AI in science education, which can contribute to the formation of an aware and ethical educational community in the use of AI.
AB - Although Artificial Intelligence (AI) is notable in education, the studies on its specific application in university science education are still incipient. At the same time, the research demonstrates a critical need to systematize AI pillars to provide a coherent and clear structure to guide the development, implementation, and understanding of this technology in various fields, but very little progress has been made in the field of university science education. Therefore, the present study was aimed at exploring the essential pillars of AI for university science education. This scoping review followed the Arksey and O’Malley methodology, which unfolds five stages; based on established criteria 89 texts were finally selected and included in the study. Ten pillars were found: (1) AI Ethics, (2) AI Didactic Integration (AI-DI), (3) Machine Learning (ML), (4) Deep Learning (DL), (5) Active Learning (AL), (6) Intelligent Prediction (AI-IP), (7) Natural Language Processing (NLP), (8) Augmented reality and Virtual reality (AR/VR), (9) Artificial Neural Network (ANN), and (10) Intelligent Tutoring System (ITS). The study provides a comprehensive synthesis of current trends and advances in this field, highlighting good practices that provide empirical evidence, highlighting ethical, pedagogical, and technical challenges associated with the application of AI in science education, which can contribute to the formation of an aware and ethical educational community in the use of AI.
KW - artificial intelligence
KW - higher education
KW - machine learning
KW - science education
KW - teaching science
UR - http://www.scopus.com/inward/record.url?scp=85201427999&partnerID=8YFLogxK
U2 - 10.1177/21582440241272016
DO - 10.1177/21582440241272016
M3 - Review article
AN - SCOPUS:85201427999
SN - 2158-2440
VL - 14
JO - SAGE Open
JF - SAGE Open
IS - 3
ER -