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2015 개정교육과정에 따른 초등학교 교과서의 SW·AI 요소 분석 연구

An Analysis Study of SW·AI elements of Primary Textbooks based on the 2015 Revised National Curriculum

  • 박선주 (광주교육대학교 컴퓨터교육과)
  • Park, SunJu (Dept. of Computer Science Education.Gwangju National University of Education)
  • 투고 : 2021.04.05
  • 심사 : 2021.04.10
  • 발행 : 2021.04.30

초록

본 논문에서는 2015 개정교육과정에 기반한 초등학교 국어, 사회, 도덕, 수학, 과학 교과서 총 44종의 교과서를 대상으로 SW·AI 요소와 CT 요소의 반영 정도를 조사·분석하였다. 분석결과, ICT 요소인 자료수집, 자료분석, 자료표현 활동이 대부분이었으며, SW·AI 내용요소중 알고리즘, 프로그래밍 요소는 반영되지 않았고, CT 요소중 추상화, 자동화, 일반화 요소도 없었다. 그러므로 초등 교과에서 SW·AI 융합교육이 효과적으로 이루어지기 위해 ICT 활용 활동을 SW·AI 활용 활동으로 확대하고, 현장 교사를 대상으로 SW·AI 융합교육의 이해와 SW·AI를 활용한 교수학습방법 개선에 대한 연수가 필요하다. 그리고 내실 있는 SW·AI 교육을 위해 정보교과 신설 및 별도 시수 확보가 필요하다.

In this paper, the degree of reflection of SW·AI elements and CT elements was investigated and analyzed for a total of 44 textbooks of Korean, social, moral, mathematics and science textbooks based on the 2015 revised curriculum. As a result of the analysis, most of the activities of data collection, data analysis, and data presentation, which are ICT elements, were not reflected, and algorithm and programming elements were not reflected among SW·AI content elements, and there were no abstraction, automation, and generalization elements among CT elements. Therefore, in order to effectively implement SW·AI convergence education in elementary school subjects, we will expand ICT utilization activities to SW·AI utilization activities. Training on the understanding of SW·AI convergence education and improvement of teaching and learning methods using SW·AI is needed for teachers. In addition, it is necessary to establish an information curriculum and secure separate class hours for substantial SW·AI education.

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