Journal of Intelligence Science in Local Research Volume 1 Issue 2
published_at 2025-03-31
A Quasi-Experimental Study of Parallel Python-R Learning in Data Science Education: Implementation and Assessment in a BYOD Environment
This study aims to verify the effectiveness of a parallel learning approach for Python and R programming languages in data science education and to develop a practical learning environment using the Windows Subsystem for Linux (WSL) and Jupyter Notebook in a Bring Your Own Device (BYOD) setting. Additionally, it measures and analyzes the educational impact of this method on specialized courses in business and healthcare. The research methodology includes implementing a curriculum for simultaneous learning of both languages in the first-year "DS Programming Introduction" course, with effectiveness measured through language comprehension tests, problem-solving ability tests, and student language preference surveys. Furthermore, the study evaluates the efficacy of the BYOD environment using the WSL and Jupyter Notebook and optimizes programming education methods for specific fields. The findings of this study are expected to contribute to the development of highly skilled data science professionals by establishing new best practices in data science education.
Creator Keywords
データサイエンス教育
並行学習
Python
R言語
BYOD
WSL
Jupyter Notebook
ビジネス
ヘルスケア
プログラミング教育
Data Science Education
Parallel Learning
Python
R Language
BYOD
WSL
Jupyter Notebook
Business
Healthcare
Programming Education