Prospects And Challenges In Digitization: The Case Study Of Federal
Parliament Of Nepal
- URL: http://arxiv.org/abs/2108.07726v1
- Date: Thu, 12 Aug 2021 06:57:09 GMT
- Title: Prospects And Challenges In Digitization: The Case Study Of Federal
Parliament Of Nepal
- Authors: Arun Kishor Sharma and Sandeep Kautish
- Abstract summary: The performance of the parliament, secretariat, parliamentarians as well as employees working procedure should be fully digitalized.
The overall activities of parliament, committees, and its secretariats records are managed systematically through tailored software.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Digitization means the use of digital technology to modify a business model
to create new possibilities for sales to value creation. The main purpose of
the study is to identify the effects of digitization in the federal parliament
of Nepal. The performance of the parliament, secretariat, parliamentarians as
well as employees working procedure should be fully digitalized based different
prescribed different modules. Quantitative and quantitative method were
followed. This research included a series of well-structured questionnaires,
mainly directed at MPs and employees, and structured interviews with key
persons of the organizations. The raw data were processed and analyzed by SPSS.
Cochran's Q test, Chi-Square test and Friedman tests were applied to show the
present status and need of digitization tools in Federal Parliament of Nepal.
The system becomes automated, interlinked, based on the database and there
should be a mutual understanding among committees on different issues. The
overall activities of parliament, committees, and its secretariats records are
managed systematically through tailored software. We would also intend to
discuss the limits on the usage of different tools and recommendations for
parliamentary application. The holistic framework is a digital framework for
FPN. This will be helpful for a digitized workplace. The FPN will start the new
era of digital transformation. Keywords - Federal Parliament, Digitalization,
Secretariat, Parliamentarian, Legislature, Information, and Communication
Technology
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