ABSTRACT
This study aims to develop a Heutadigital learning model in Indonesian Web-based language learning. In this context, heutadigital is developed as an Indonesian web-based independent language learning model. The research method used is research and development with the Thiagarajan model which includes the following steps: Define, Design, Development, and Dissemination. However, this research stage has only reached the design stage. The results of the study explain that the Heutadigital learning model in web-based Indonesian learning has four activities: lecturer notes, activity, discussion forums and video conferences, and checkpoints and final tests. The learning materials include topics (1) Functions, Variety, and Position of Indonesian Language, topics (2) Indonesian Spelling and Diction, topics (3) Effective Sentences and Coherent Paragraphs, topics (4) Plagiarism, topics (5) Scientific Articles and Popular Scientific Essays, topics (6) Research Proposals, Citation Techniques, and Bibliography, and topics (7) Academic Communication.
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