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EFEKTIVITAS HISAB HAKIKI TADQIQI SEBAGAI METODE PENENTUAN AWAL BULAN KAMARIAH TERHADAP IMKANURRUKYAT Indah Amaliah; Mahyuddin Latuconsina
HISABUNA: Jurnal Ilmu Falak Vol 2 No 3 (2021): November 2021
Publisher : Universitas Islam Negeri Alauddin Makassar

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.24252/hisabuna.v2i3.24780

Abstract

The calendar has become an important part of society, especially when it comes to matters of worship, it is necessary to have a definite calculation related to the provisions of the time which are closely related to the implementation of worship. One simple method is Hisab Hakiki, which is a method of reckoning in determining the beginning of the Lunar month. This method is one of the simplest methods in determining the beginning of the lunar month. The advancement of astronomy today allows anyone to determine the position of celestial bodies using science so that the determination of the beginning of the lunar month will be very easy to determine.This study aims to determine the effectiveness of the intrinsic reckoning method in determining the beginning of the lunar month. This research is a library research which is studied systematically and is relevant to the object that is the subject of the problem. In answering these problems, this study uses normative research and uses ephemeral data in its calculations.Keywords : Effectivity, Hisab Hakiki, Beginning of the Lunar Moon
Artificial Intelligence Interaction in Higher Education: A Life-Course Perspective on Digital Well-Being, Learning Outcomes, Motivation, and Ethical Awareness Ikrananda; Indah Amaliah; Annajmi Rauf; Muh. Yusril Anam; Irwansyah Suwahyu
Artificial Intelligence in Lifelong and Life-Course Education Vol 1 No 1 (2026): Artificial Intelligence in Lifelong and Life-Course Education
Publisher : PT. Academic Bright Collaboration

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.66053/aillce.v1i1.2

Abstract

Purpose – The increasing integration of artificial intelligence (AI) in higher education offers significant opportunities to enhance learning effectiveness, yet it also raises concerns related to digital well-being, learner motivation, and ethical awareness. From a life-course education perspective, early adulthood represents a critical transitional phase in which patterns of interaction with AI may shape long-term learning habits and readiness for lifelong learning. However, empirical evidence examining how AI interaction influences learning outcomes through psychological and instructional mechanisms remains limited. This study examines the effects of student interaction with AI on learning outcomes, learning motivation, and ethical awareness, with digital well-being and instructional design quality positioned as mediating variables.Design/methods/approach – A quantitative cross-sectional survey was conducted with 145 undergraduate students at a public university in Indonesia. Data were analyzed using Partial Least Squares Structural Equation Modeling (PLS-SEM) to examine direct and mediating relationships among the proposed constructs.Findings – The results indicate that student interaction with AI has a significant positive effect on digital well-being, instructional design quality, learning motivation, and learning outcomes. Digital well-being and instructional design quality serve as important mediating mechanisms through which AI interaction enhances motivation and academic achievement. However, interaction with AI does not directly improve students’ ethical awareness, suggesting that ethical sensitivity does not emerge automatically through AI use without explicit pedagogical intervention.Research implications/limitations – These findings underscore the importance of designing AI-supported learning environments that promote cognitive engagement, digital well-being, and pedagogical quality while deliberately integrating ethical instruction. The study is limited by its cross-sectional design, single-institution context, and reliance on self-reported data.Originality/value – This study contributes to the literature on artificial intelligence in education by integrating digital well-being and instructional design quality as mediating mechanisms within a life-course framework, offering insights into how AI interaction during early adulthood may influence sustainable and responsible lifelong learning.