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Journal : Journal of Technology-Assisted Learning

Enhancing ICT Facilities in Secondary Mathematics Education: A Literature Review Niyibizi, Onesme
Journal of Technology-Assisted Learning Vol. 1 No. 2 (2025): Journal of Technology-Assisted Learning
Publisher : Scientia Publica Media

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.70232/jtal.v1i2.10

Abstract

This systematic review synthesizes findings from 43 past studies to examine the challenges and effectiveness of integrating Information and Communication Technology facilities into secondary school mathematics instruction. The primary objective was to analyze ICT’s potential to enhance the teaching and learning of mathematical concepts. Studies were selected based on publication date, relevance to secondary school mathematics, and focus on both the benefits and challenges of ICT integration. The review revealed significant benefits of ICT, including increased student motivation and improved communication. However, it also underscored that the effectiveness of ICT integration is highly dependent on implementation and support within the teaching environment. A detailed analysis of the selected literature highlighted common themes and barriers teachers face when incorporating ICT. Results indicated that while ICT tools enhance mathematical learning, successful integration linkages on factors such as teacher training, adequate infrastructure, and the ability to adapt ICT to the existing curriculum. Furthermore, the review identified a notable gap in research concerning the challenges teachers face. This suggests a critical need for future studies to investigate deeper into these obstacles. This analysis stresses the imperative for more research into the barriers to effective ICT implementation in secondary school mathematics education. Despite the documented advantages of ICT in teaching, there is a clear gap in understanding the challenges teachers encounter. Future research should not only focus on the benefits of ICT but also on strategies to overcome these obstacles, ultimately ensuring successful ICT integration to enhance teaching outcomes and student engagement in mathematics education.
Impact of Large Language Models on Personalized Learning, Assessment Automation, and Student Outcomes in Higher Learning Institution Niyibizi, Onesme
Journal of Technology-Assisted Learning Vol. 2 No. 1 (2026): Journal of Technology-Assisted Learning
Publisher : Scientia Publica Media

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.70232/jtal.v2i1.22

Abstract

This study investigated the multifaceted influence of Large Language Models (LLMs) on teaching and learning within a private higher education institution in Rwanda during the 2024–2025 academic year. A total of 658 students and 28 lecturers participated, providing a comprehensive perspective on both user experiences and professional concerns. Using a quantitative approach, the study employed Multivariate Analysis of Variance (MANOVA) to examine how the use of LLMs relates to students’ perceptions of personalized learning effectiveness, academic performance improvement, online engagement, satisfaction with assessment feedback, and motivation for lifelong learning. Findings from the student indicated that LLMs are widely perceived as beneficial across multiple dimensions of the learning process. Students reported that LLMs enhance personalized learning by providing adaptive guidance, improving academic performance through instant clarification and practice support, and increasing online engagement by offering interactive and accessible learning assistance. The results further showed that LLMs contribute to greater satisfaction with feedback mechanisms and stimulate motivation for continuous and self-directed learning. These statistically significant associations point to the strong potential of LLMs to enrich higher education outcomes. In contrast, the lecturers’ data revealed notable concerns related to data privacy, ethical use, and algorithmic bias. Lecturers expressed significant apprehension regarding students’ overreliance on LLMs, the risks associated with inaccurate or biased outputs, and the potential erosion of academic integrity. Their perceptions underscore the need for safeguards that ensure responsible and ethical use of AI in academic settings. Overall, the findings highlighted a dual reality: while LLMs hold transformative potential for improving learning experiences, their integration must be supported by robust institutional policies, targeted capacity-building initiatives, and ongoing research. Such measures are essential to promote equitable, ethical, and effective adoption of LLMs in higher education.