ANALYSIS OF IMPACT OF DATA SCIENCE AND ARTIFICIAL INTELLIGENCE EDUCATION ON MOTIVATION AND CAREER DEVELOPMENT

Hirotaka Takahashi, Shigeki Ojima, Takazumi Kawai, Atsuko Yamaguchi, Yuto Omae

Research output: Contribution to journalArticlepeer-review

Abstract

As social expectations of data science and Artificial Intelligence (AI) in-crease and their application to various industrial fields advances, greater emphasis is being placed on data science and AI related education. In this study, we ascertained the impact of data science and AI education on learners’ motivation and career development by analyzing a lecture-style course offered as part of mathematical and data science education at Tokyo City University, Japan. The course analyzed was Data Science Literacy 1 (DS1). The analysis period spanned three academic years, from 2020 to 2022. The analyzed items were three motivational factors derived from expectancy-value theory, namely intrinsic value, attainment utility value, and expectations for success. A fourth factor, career development, was also analyzed. We collected data pertaining to the four factors, that is, the three above mentioned motivational factors and career development, through questionnaires administered to DS1 learners. Regarding data analysis, learners were clas-sified according to the values (high vs. low) they reported for each of the four factors of interest at the beginning of the course. These were compared to the values reported at the end of the course. Results showed increases in all the motivation factors. The increasing trend was particularly pronounced among learners who initially reported low values. Although trends differed from year to year, the results suggest that data science and AI education can positively impact motivational factors and related career development.

Original languageEnglish
Pages (from-to)1273-1283
Number of pages11
JournalICIC Express Letters, Part B: Applications
Volume14
Issue number12
DOIs
Publication statusPublished - Dec 2023

Keywords

  • Career development
  • Data science and AI education
  • Expectancy-value theory
  • Motivation
  • Questionnaire survey

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