learning management

M-Learning Management Tool Development in Campus-Wide Environment




learning management

Using a Learning Management System to Foster Independent Learning in an Outcome-Based University: A Gulf Perspective




learning management

A Model Predicting Student Engagement and Intention with Mobile Learning Management Systems

Aim/Purpose: The aim of this study is to develop and evaluate a comprehensive model that predicts students’ engagement with and intent to continue using mobile-Learning Management Systems (m-LMS). Background: m-LMS are increasingly popular tools for delivering course content in higher education. Understanding the factors that affect student engagement and continuance intention can help educational institutions to develop more effective and user-friendly m-LMS platforms. Methodology: Participants with prior experience with m-LMS were employed to develop and evaluate the proposed model that draws on the Technology Acceptance Model (TAM), Task-Technology Fit (TTF), and other related models. Partial Least Squares-Structural Equation Modeling (PLS-SEM) was used to evaluate the model. Contribution: The study provides a comprehensive model that takes into account a variety of factors affecting engagement and continuance intention and has a strong predictive capability. Findings: The results of the study provide evidence for the strong predictive capability of the proposed model and supports previous research. The model identifies perceived usefulness, perceived ease of use, interactivity, compatibility, enjoyment, and social influence as factors that significantly influence student engagement and continuance intention. Recommendations for Practitioners: The findings of this study can help educational institutions to effectively meet the needs of students for interactive, effective, and user-friendly m-LMS platforms. Recommendation for Researchers: This study highlights the importance of understanding the antecedents of students’ engagement with m-LMS. Future research should be conducted to test the proposed model in different contexts and with different populations to further validate its applicability. Impact on Society: The engagement model can help educational institutions to understand how to improve student engagement and continuance intention with m-LMS, ultimately leading to more effective and efficient mobile learning. Future Research: Additional research should be conducted to test the proposed model in different contexts and with different populations to further validate its applicability.




learning management

Implementing Technological Change at Schools: The Impact of Online Communication with Families on Teacher Interactions through Learning Management System




learning management

Quantitative Aspects about the Interactions of Professors in the Learning Management System during a Final Undergraduate Project Distance Discipline




learning management

Learning Management Done Right | Opigno LMS | Drupal e-learning distribution

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learning management

WordPress - WPLMS Learning Management System | ThemeForest

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learning management

Channel Partner.TV Channel Video News Network Adds Learning Management System (LMS) to its Award-Winning Content Management System (CMS)

Adding a Powerful Learning Management System to Multi-channel Live and OnDemand Video Streaming Service Delivers Corporate University Performance gains.




learning management

Learning Management Through Matching: A Field Experiment Using Mechanism Design [electronic journal].

National Bureau of Economic Research




learning management

NEO LMS Wins the 2018 Tech Edvocate Award for Best Learning Management System

NEO, the learning management system (LMS) for schools and universities created by CYPHER LEARNING, has been announced as the winner of the Tech Edvocate Award for "Best Learning Management System", for a second year running.