The Acceptance of Learning Management Systems and Video Conferencing Technologies: Lessons Learned from COVID-19

Technology, Knowledge and Learning - Tập 27 Số 4 - Trang 1311-1333 - 2022
Mark Anthony Camilleri1, Adriana Caterina Camilleri2
1Department of Corporate Communication, Faculty of Media and Knowledge Management, University of Malta, Msida, MSD2080, Malta
2Curriculum Department, Malta College of Arts, Science and Technology, Paola, PLA9032, Malta

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