Assessment on LSPU-SPCC Students Readiness towards M-learning
- URL: http://arxiv.org/abs/2204.01332v1
- Date: Mon, 4 Apr 2022 09:07:11 GMT
- Title: Assessment on LSPU-SPCC Students Readiness towards M-learning
- Authors: Joanna E. De Torres
- Abstract summary: The Commission on Higher Education said that colleges and universities following the new school calendar will no longer require students to attend face-to-face classes.
This study aims to determine the readiness of the students in shifting to m-learning.
It was determined that almost all of the students own mobile devices, are fully equipped with applications, have high technological skills and are quite ready in terms of psychological readiness.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Today, the use of technology is a powerful advantage in every field in the
society. With the advent of development in information and communications
technology (ICT), the process of learning and acquiring new knowledge had
undergone a shift marked by a transition from desktop computing to the
widespread use of mobile technology. In light of the COVID-19 pandemic, the
Commission on Higher Education said that colleges and universities following
the new school calendar will no longer require students to attend face-to-face
classes. One of the state universities that had been affected by this
inevitable situation is the Laguna State Polytechnic University. This study
aims to determine the readiness of the students in shifting to m-learning.
Specifically, it aims to determine the availability of mobile devices,
equipment readiness, technological skills readiness and psychological
readiness. A survey-based methodology was used to obtain the data and
descriptive statistics to analyze the results. It was determined that almost
all of the students own mobile devices, are fully equipped with applications,
have high technological skills and are quite ready in terms of psychological
readiness.
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