Digital Media and Information Literacy: A way to Paperless Society
- URL: http://arxiv.org/abs/2210.09349v1
- Date: Fri, 14 Oct 2022 06:01:29 GMT
- Title: Digital Media and Information Literacy: A way to Paperless Society
- Authors: Subaveerapandiyan A and Anuradha Maurya
- Abstract summary: The study's main objective was to find out the possibility of a paperless library and society with particular reference to Top 60 Universities from QS world University ranking 2021.
ICT knowledge and skills of these LIS professionals and evaluated their digital literacy skills was another aim of this study.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Purpose - The study's main objective was to find out the possibility of a
paperless library and society with particular reference to Top 60 Universities
from QS world University ranking 2021 and their library professionals. ICT
knowledge and skills of these LIS professionals and evaluated their digital
literacy skills was another aim of this study.
Design/methodology/approach - The researchers used the survey method for this
study using a structured questionnaire, distributed through the google form to
library professionals of world-famous universities, ranked as top 60 in QS
World University Ranking. 206 responses were received. The information
collected from the respondents has been analyzed using an Excel sheet and SPSS
software.
Findings - Most professionals are interested in digital learning and adopting
paperless learning to contribute to a paperless society. They go for online
ways to answer reference queries of users and work in a refined atmosphere.
They are learning from digital resources and have support from online platforms
if they suffer. Also, they are actively engaging with the digital environment
and promoting it too.
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