Utilizing Artificial Intelligence to Develop Machine Learning Techniques for Enhancing Academic Performance and Education Delivery
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Date
2024
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University of Technology Sydney
Abstract
Artificial Intelligence (AI) and particularly the related sub-discipline of Machine Learning (ML), have
impacted many industries, and the education industry is no exception because of its high-level data
handling capacities. This paper discusses the various AI technologies coupled with ML models that
enhance learners' performance and the delivery of education systems. The research aims to help solve
the current problems of the growing need for individualized education interventions arising from
student needs, high dropout rates and fluctuating academic performance. AI and ML can then analyze
large data sets to recognize students who are at risk academically, gauge course completion and
learning retention rates, and suggest interventions to students who may require them.
The study occurs in a growing Computer-Enhanced Learning (CED) environment characterized by elearning,
blended learning, and intelligent tutelage. These technologies present innovative concepts to
enhance administrative procedures, deliver individualized tutorials, and capture students' attention.
Using predictive analytics and intelligent tutors, AI tools can bring real-time student data into the
classroom so that educators can enhance the yields by reducing dropout rates while increasing
performance.
Not only does this research illustrate the current hope and promise of AI/ML in the context of
education, but it also includes relevant problems that arise in data privacy and ethics, as well as
technology equality. To eliminate the social imbalance in its use, the study seeks to build efficient and
accountable AI models and architectures to make these available to all students as a foundation of
practical education. The students’ ideas also indicate that to prepare the learning environments of
schools for further changes, it is necessary to increase the use of AI/ML in learning processes
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Keywords
Artificial Intelligence, Machine Learning, Academic Performance, Education Delivery, Personalized Learning