The Mobile Apps Development of Simple Machine Content to Improve Learning Achievement of Junior High School Students

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Saprudin Saprudin
Amalia Tomia
Nurlaela Muhammad
Nurdin Abdul Rahman
Fatma Hamid
Sumarni Sahjat

Abstract

This research aims to develop the content for Mobile Apps for simple machine learning materials and to study the validity and the impact of its product on improving junior high school students learning achievement. This development research follows the stages of ADDIE (Analysis, Design, Development, Implementation, Evaluation). The instruments used in this study include Mobile Apps product validation sheets and 30 multiple-choice questions. The validation results of media experts, material experts, and language experts state that this Mobile Apps product is suitable to be used in the learning process. The results of the implementation involving 24 students of class VIII at a junior high school in Ternate city show that the use of Mobile Apps can improve students' learning achievement

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How to Cite
Saprudin, S., Tomia, A., Muhammad, N., Rahman, N. A., Hamid, F., & Sahjat, S. (2023). The Mobile Apps Development of Simple Machine Content to Improve Learning Achievement of Junior High School Students. Technium Social Sciences Journal, 40(1), 107–116. https://doi.org/10.47577/tssj.v40i1.8340
Section
Education
Author Biographies

Saprudin Saprudin, Universitas Khairun

Physics Education Study Program, Universitas Khairun

Amalia Tomia, Universitas Khairun

Physics Education Study Program, Universitas Khairun

Nurlaela Muhammad, Universitas Khairun

Physics Education Study Program

Nurdin Abdul Rahman, Universitas Khairun

Physics Education Study Program, Universitas Khairun

Fatma Hamid, Universitas Khairun

Physics Education Study Program, Universitas Khairun

Sumarni Sahjat, Universitas Khairun

Physics Education Study Program, Universitas Khairun

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