Please use this identifier to cite or link to this item: https://hdl.handle.net/10321/4596
Title: Machine learning and stem education : challenges and possibilities
Authors: Fomunyam, Kehdinga George 
Keywords: STEM;STEM education;Machine learning
Issue Date: 1-Apr-2022
Publisher: Research India Publications
Source: Fomunyam, K.G. 2022. Machine learning and stem education : challenges and possibilities. International Journal of Difference Equations. 17(2): 165-176 (12).
Journal: International Journal of Difference Equations; Vol. 17, Issue 2 
Abstract: 
Science, technology, engineering, and mathematics (STEM) fields are
important in national and international economies in driving innovation and
improving the economy and workforce pattern to meet 21st century realities.
For this goal to be achieved, there is a need for innovation that will drive the
economy of the future, which can only be acquired from advances in science
and technology. The major rationale behind STEM education is to foster critical
thinking skills, which would result in our having more creative problem-solvers
in the workforce. The world is gravitating towards a knowledge-based
economy, therefore having creative problem-solvers will provide answers to the
complex problems of the future. This paper relied on literature review to
critically address the topic under consideration. A theoretical analysis of STEM
education and machine learning was conducted to clarify the nexus between the
two. The key point of this study is the impact of machine learning on STEM
education, as properly enacted. Findings from this research revealed that, with
the current changes manifested in the global sphere, generally, it is important to
leverage STEM education. With more focus on some emerging technologies.
such as artificial intelligence and machine learning, the multi-versatility of
machine learning has been brought to fore in many areas of computing. This
includes spam filtering, and optical character recognition. There are thus ample
benefits of STEM education, in that it increases innovation and creativity.
STEM reduces the time and stress associated with the rigours of teaching, by
providing a better standardization system. STEM education also minimises the
stress associated with scoring students, predicting future behaviour and
performance of students, and changing the old methods of education. The study
recommended that adequate support be provided to stakeholders in the
educational value chain, such as teachers, students, policymakers, etc. to
familiarise themselves more with machine learning as a concept and a practice.
Capacity-building workshops should also be provided for these stakeholders to ensure that they are properly oriented to adopt machine-learning approaches in
their classrooms, with minimal rigour and stress.
URI: https://hdl.handle.net/10321/4596
ISSN: 0973-6069
Appears in Collections:Research Publications (Engineering and Built Environment)

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