Artificial Intelligence and Learning: Exploring its Potential among Biology Education Students in Nigerian Colleges of Education
Abstract
AI has appeared as a groundbreaking power in science education worldwide, making adaptive learning, intelligent tutoring and data driven decision making. Nevertheless, its consolidation into life science education especially in higher institutions remains underexplored. This paper examined the Artificial Intelligence and Learning: Exploring its Potential among Biology Education Students in Nigerian Colleges of Education. AI's Potential to Enhance Learning among Students of Biology in Education in Nigerian College of Education. The study outlines five aims, poses five research questions and test five hypotheses. A quantitative survey was explored. The target population consisted of 1,568 Biology students, from which a sample of 306 was randomly selected using Krejcie and Morgan’s formula. Data were collected using a researcher-developed structured questionnaire (QAITEBIOS). The instrument was validated by subject experts from biology department, Federal University of Education, Zaria and tested for reliability (r = 0.78). Descriptive statistics and independent t-test were employed using SPSS version 23 at 0.05 level of significance. Findings revealed significant adoption of AI tools for biology learning (t= 28.595 < 0.05) and positive perception of their usefulness in enhancing content delivery and student engagement (t=22.123, p< 0.05). AI integration significantly improved students’ performance and motivation (t= 23.435, p< 0.05). However, infrastructural deficits including unreliable electricity, poor internet connectivity and limited devices were major barriers to effective implementation (t=10.436, p< 0.05). Key recommendations include strengthen IT infrastructure (stable electricity, high-speed internet, cloud platforms) and provide continuous training for Biology lecturers and students on AI literacy, ethics, and pedagogy.
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