Technological Challenge for Massive Open Online Sustainability
PDF (Spanish)

Keywords

MOOC
education
technology
sustainability.

How to Cite

Technological Challenge for Massive Open Online Sustainability. (2016). Panorama, 9(17), 51-60. https://doi.org/10.15765/pnrm.v9i17.791

Abstract

Technology is without a doubt one of the decisive elements for sustainability and the future of the MOOC model. The principles on which the movement is based are hard to guarantee without the support of technological tools and resources. It would be impossible to ensure the correct pedagogical, tutorial, and evaluative treatment of the courses if we didn’t have a strong technological model. Besides, the principle of massiveness would still be a utopia from acceptable educational quality parameters. This article analyzes future technological models and their application to MOOC courses. In an immediate future, it will be necessary to keep into account new digital learning strategies through content curators, online notes, categorization programs, information filters (proposing systems), learning algorithms, and intelligent and self-adaptive tutorial systems.

PDF (Spanish)

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