International Transactions on Education Technology (ITEE)
https://journal.pandawan.id/itee
<div><a href="https://journal.pandawan.id/itee/index"><strong>International Transactions on Education Technology (ITEE)</strong></a>, p-ISSN: <strong><a href="https://issn.brin.go.id/terbit/detail/20221223261642359" target="_blank" rel="noopener">2963-6078</a></strong> e-ISSN: <strong><a href="https://issn.brin.go.id/terbit/detail/20221223411446800" target="_blank" rel="noopener">2963-1947</a> </strong>is an interdisciplinary publication dedicated to education technology and related fields. It presents original scientific articles and writings on learning methodologies, gamification, learning platforms, education technology, and management education, catering to scholars and experts worldwide. Each published article is assigned a Digital Object Identifier The journal aims to disseminate knowledge and foster intellectual exchange among academics and professionals in the realm of education technology. ITEE issued <strong><a>2 (two) times on May and November</a></strong>. </div>Pandawan Sejahtera Indonesiaen-USInternational Transactions on Education Technology (ITEE)2963-6078Predictive Analytics in Attendance Systems for Employee Productivity and Accountability
https://journal.pandawan.id/itee/article/view/718
<p class="p1">The integration of predictive analytics in attendance systems is becoming a critical approach to improving employee productivity and accountability. However, its impact on technology readiness, employee engagement, and attendance regularity remains underexplored, particularly in educational and professional settings. This study aims to evaluate how Predictive Analytics Utilization (PAU) influences Technology Readiness (TR) and Employee Engagement (EE), and how these variables contribute to Attendance Regularity (AR) and overall employee satisfaction. A quantitative approach was employed using Structural Equation Modeling (SEM) with SmartPLS 4.1. Data were gathered via 40 item questionnaires distributed to Information Systems students at Raharja University. Each variable PAU, TR, EE, and AR was measured through 10 questions to ensure robust data collection and analysis. The findings demonstrate a strong model fit, with R² values of 0.895 for AR, 0.701 for EE, and 0.847 for TR. PAU significantly influences TR and EE, which in turn positively affect AR. Higher levels of technology readiness and engagement enhance attendance regularity, reflecting the effectiveness of predictive analytics. This study highlights the pivotal role of predictive analytics in fostering technological readiness, enhancing employee engagement, and improving attendance regularity. Organizations can leverage these findings to optimize their systems and achieve a more productive workforce. Future research should explore diverse population samples, different organizational contexts, and the integration of advanced analytics tools, such as AI and IoT, to further enhance attendance systems and employee outcomes.</p>Indri Mariska PutriDestania Putri RamadhaniPifin IndriyaniElsa Nur AidahAfifah Putri Cahyani
Copyright (c) 2025 International Transactions on Education Technology (ITEE)
2025-01-302025-01-303210411310.33050/itee.v3i2.718Transforming Learning Experiences With Advanced Educational Technology Solutions
https://journal.pandawan.id/itee/article/view/721
<p class="p1">The rapid advancements in educational technology have transformed the landscape of learning, necessitating innovative solutions to enhance learner engagement and accessibility. This study examines the development and application of advanced educational technology solutions aimed at revolutionizing learning experiences. The objective is to explore how cutting-edge tools, including adaptive learning systems, artificial intelligence, and virtual reality, can address traditional educational challenges and foster personalized learning environments. Employing a mixed-methods research approach, this study integrates quantitative analysis of learner outcomes with qualitative feedback from educators and students to evaluate the effectiveness of these solutions. The findings reveal significant improvements in learner engagement, comprehension, and retention when utilizing technology-enhanced platforms compared to conventional methods. Furthermore, the integration of real-time analytics enables educators to tailor instructional strategies effectively, promoting inclusivity and accessibility across diverse learning communities. The research concludes that advanced educational technology solutions are pivotal in bridging the gap between traditional education models and the evolving demands of modern learners, offering scalable, efficient, and learner-centric approaches to education. This study contributes to the growing body of knowledge in educational software engineering by highlighting the potential of technology-driven innovations to reshape the future of education, providing actionable insights for stakeholders in academia, industry, and policy-making.</p>Janu Ilham SaputroLailatus Ferahma Sa'adahYasyfiyani Syifa Kinanti Dara RamadhantiMuhamad Fikri Gojali
Copyright (c) 2025 International Transactions on Education Technology (ITEE)
2025-01-312025-01-313211412410.33050/itee.v3i2.721Opportunities and Challenges in Implementing Circular Economy within Digital Platforms
https://journal.pandawan.id/itee/article/view/765
<p>The rapid advancement of digital platforms has opened new avenues for integrating circular economy practices, particularly in optimizing resource use, reducing waste, and fostering sustainable growth. This study aims to investigate both the opportunities and challenges that organizations encounter when implementing circular economy principles within digital environments, focusing on how these platforms can drive more sustainable operations. Adopting a mixed-methods approach, the research gathers quantitative data from digital platform users through surveys and qualitative insights from in-depth interviews with industry experts and business owners across various sectors. The findings indicate that digital platforms present significant opportunities for enhancing resource efficiency, promoting product life extension through recycling and reuse options, and enabling collaborative networks that support circular practices. However, substantial challenges are identified, including high initial investment costs, technical and regulatory barriers, and a lack of widespread digital literacy, especially among small and medium-sized enterprises. Additionally, the research highlights issues related to data privacy and technological compatibility, which can limit broader adoption and effective implementation of circular strategies. The study concludes that while digital platforms hold transformative potential for advancing circular economy goals, success depends on developing supportive policies, fostering collaborative ecosystems, and enhancing digital skills across industries to overcome these obstacles. This research provides valuable insights for policymakers, business leaders, and technology providers seeking to leverage digital tools in the shift toward a sustainable circular economy.</p>Nolan Liam Arthur SimanjuntakHenry NewellWei Xiang Tan
Copyright (c) 2024 International Transactions on Education Technology (ITEE)
2025-03-032025-03-033212513310.33050/itee.v3i2.765Creating Educational Solutions for Optimizing Learning Factory Operations and Outcomes
https://journal.pandawan.id/itee/article/view/790
<p>The rapid development of industrial education has prompted a growing need for effective Learning Factory (LF) management systems that integrate educational principles with industrial practices. This paper investigates the development of educational information systems tailored to optimize learning factory operations. The study aims to design an innovative information system and e-learning platform that streamlines the operational management of learning factories, ensuring effective resource allocation and maximizing the educational value of these settings. A mixed-methods approach, combining qualitative interviews with industry experts and quantitative surveys from educational institutions, was used to gather data on the needs and effectiveness of current management tools. Additionally, a prototype system was developed using agile software development methodologies. The findings reveal that the proposed system significantly improves the management of resources, enhances the learning experience, and bridges the gap between theoretical education and practical industrial applications. Moreover, the e-learning platform supports continuous knowledge transfer and facilitates real-time decision-making in the factory environment. The study concludes that the integration of tailored information systems and e-learning platforms in learning factories not only optimizes operational efficiency but also enriches the educational outcomes for students. This research offers valuable insights for educational institutions and industries aiming to align their training programs with the latest industrial advancements.</p>HenrySarah BrownJack Jones
Copyright (c) 2025 International Transactions on Education Technology (ITEE)
2025-04-082025-04-083213414610.33050/itee.v3i2.790Utilizing Wearable Technologies to Foster Outcome-Based Education in Learning Factories
https://journal.pandawan.id/itee/article/view/793
<p>The integration of wearable technologies into educational settings has opened new avenues for enhancing experiential and outcome-based learning, particularly in practice-oriented environments such as learning factories. This study investigates how wearable devices such as smart glasses, biometric trackers, and haptic feedback systems can be effectively utilized to support real-time performance monitoring, contextual learning, and continuous skill assessment in engineering and manufacturing training. The objective of this research is to explore the potential of these technologies in reinforcing the principles of outcome-based education (OBE), where learner competence is measured through demonstrable performance rather than passive knowledge acquisition. A mixed-method approach was adopted, combining qualitative field observations and interviews with quantitative data collected through controlled experiments involving wearable technology use in a simulated learning factory environment. The findings reveal that wearables significantly contribute to increased learner engagement, improved task efficiency, and enhanced feedback mechanisms, leading to better alignment between learning outcomes and industrial competency demands. Moreover, the results suggest that wearable-assisted learning environments foster reflective learning and support personalized instruction by capturing granular data on learner behaviors and outcomes. This research concludes that integrating wearable technologies into learning factories not only enhances the quality and relevance of vocational and technical education but also supports broader sustainable development goals by promoting inclusive, adaptive, and technologically enriched learning systems. The study provides a foundation for future research into scalable, data-driven educational models and the role of emerging technologies in transforming skill-based education.</p>SofiyanLucas LawrenceLily Maria EvansKhaizure MirdadChen Yu
Copyright (c) 2025 International Transactions on Education Technology (ITEE)
2025-04-082025-04-083214715710.33050/itee.v3i2.793Data-Driven Approaches to Optimize Learning Experiences in Learning Factories
https://journal.pandawan.id/itee/article/view/796
<p>This research investigates the application of data-driven approaches to optimize learning experiences in learning factories, a key area for advancing industrial and educational integration. The background of the study highlights the increasing relevance of data science in educational settings, particularly in learning factories, which combine practical learning environments with industrial technologies. The objective of this research is to explore how data science techniques, such as machine learning and predictive analytics, can be utilized to improve learning outcomes, efficiency, and engagement within these settings. The method involves a comprehensive analysis of student performance data collected from learning factory environments, employing statistical tools and data visualization techniques to identify patterns, trends, and areas for improvement. The results reveal that the integration of data-driven methodologies leads to enhanced learning experiences by tailoring content delivery, improving resource allocation, and providing real-time feedback to learners. The study concludes that data science can significantly optimize learning processes in learning factories by providing actionable insights that support both instructors and students in achieving better educational outcomes. These findings underscore the practical applicability of data science in real-world educational scenarios, suggesting that the use of data analytics in learning factories can bridge the gap between theory and practice, fostering a more effective and personalized learning experience.</p>Christian Haposan PangaribuanAdele ValerryStephanie
Copyright (c) 2025 International Transactions on Education Technology (ITEE)
2025-04-082025-04-083215817010.33050/itee.v3i2.796