UNIVERSITIES IN THE CONTEXT OF THE PANDEMIC AND AFTER IT

Authors

  • Muxamedova Ziyoda Gafurdjanovna
  • Asatov Ergash Axadovich
  • Bakhshilloev Saidafzal Khaydarovich

Keywords:

pandemic, higher education, pandemic, online format, universities, distance learning, students, quarantine, education

Abstract

The paper presents an analysis of the preparedness of the higher education system to a pandemic situation (beginning of March 2020), the actions of universities and regulars to set up the system work, the attitude of students and teachers to online education formats and measures, their support. On the basis of this analysis, the article formulate the lessons that the higher education system can learn from this unusual situation. On the basis of the lessons of the pandemic, the Working Group has identified ideas on the prospective areas of the development of the higher education system in order to increase its contribution to the achievement of National Development Goals.

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Published

2021-10-22