Enhancement Programming Skills and Transforming Knowledge of Programming
through Neuroeducation Approaches
- URL: http://arxiv.org/abs/2105.09779v1
- Date: Wed, 19 May 2021 06:26:30 GMT
- Title: Enhancement Programming Skills and Transforming Knowledge of Programming
through Neuroeducation Approaches
- Authors: Spyridon Doukakis, Panagiotis Vlamos
- Abstract summary: programming digital devices and developing software is an important professional qualification, which contributes to employment opportunities.
Recent development of brain imaging techniques have provided additional opportunity for neuroscientists to explore the functional organization of the human brain.
This research is an approach to supporting learning in the field of learning and teaching computer programming.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Programming digital devices and developing software is an important
professional qualification, which contributes to employment opportunities.
Despite this fact, there is a remarkable shortage in suitable human resources.
In this context, research studies focus on issues of programming didactic,
teaching models, programming paradigms, which are meant to enhance and optimize
programmers' skills. Recent development of brain imaging techniques such as
electroencephalography and the functional magnetic resonance imaging, have
provided additional opportunity for neuroscientists to explore the functional
organization of the human brain. With the use of these techniques, this
research is an approach to supporting learning in the field of learning and
teaching computer programming. On one hand, there is an attempt to connect
theoretical neurosciences with cognitive science; on the other hand, the
obtained research data will contribute to the identification of practices that
can be applied to formal and informal programming education.
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