Glide Visit Asia Application Based Learning Application Development About Tourism In Asia
Kata Kunci:
Application, Development, Glide Visit Asia, TourismAbstrak
Tourism has become the largest industry and has shown consistent growth from year to year, accelerated by the process of globalization and the development of information technology. However, the COVID-19 pandemic has presented major challenges for the global tourism industry, including in Asia. This study aims to develop a learning application about tourism in Asia based on Glide Apps called "Visit Asia". The research method used is Research and Development (R&D) by adapting the ADDIE model (Analysis, Design, Development, Implementation, Evaluation). Data collection was carried out through quantitative techniques using questionnaires given to 25 respondents from various professional backgrounds. Respondents were selected by purposive sampling to assess the feasibility of the application based on aspects of presentation, feasibility, language, application, and graphics. The results showed that the "Visit Asia" application obtained a final average percentage of 89.8% with very valid criteria based on practicality. The presentation and language aspects received the highest assessment with a percentage of 91%, while the application aspect received the lowest assessment with a percentage of 88%. It can be concluded that the "Visit Asia" application is very valid based on practicality and is suitable for use as a learning medium about tourism in Asia. The implication of this research is the need for further development to enrich the application features, such as adding video content, to increase interactivity and learning effectiveness.
Keywords: Application, Development. Glide Visit Asia, Tourism
Unduhan
Referensi
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