Analysis of educational trends related to the development of digital skills
Supporting Agencies
- Agradecimientos a Colombia Científica por financiar parte de esta investigación
Abstract
The crisis caused by COVID19 brought with it a new paradigm in the educational field. Plans became necessary to adequately take advantage of all the benefits offered by technology in this field, but it also highlighted the huge training gaps that limited the good performance of some academic activities. The effect of this has attracted the interest of public and private institutions to investigate and promote the digital competencies of this generation. This article will analyze some of the main educational trends that have been generated in recent years such as: Artificial Intelligence, Mixed and Hybrid Educational Models, Open Educational Resources and Extended Reality. The analysis of each of them shows how, some references cited in the literature, allow highlighting the essential characteristics that must be developed in the digital competences required in professionals for the future in each of these technological trends. The results of this analysis describe the incidence of the good use of technological resources for mediation in the teaching-learning processes, from the perspective of teachers and students, as well as the possibility of building knowledge through the permeabilization of new technological resources.
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