Knowledge Management Strategies and Emerging Technologies -- An Overview
Of the Underpinning Concepts
- URL: http://arxiv.org/abs/2205.01100v1
- Date: Tue, 3 May 2022 14:33:31 GMT
- Title: Knowledge Management Strategies and Emerging Technologies -- An Overview
Of the Underpinning Concepts
- Authors: Siddhartha Paul Tiwari
- Abstract summary: Knowledge management plays an increasingly important role in global economic development.
Numerous leading social scientists in this field have asserted that organisational knowledge should be regarded as a strategic asset.
In order to remain relevant in the modern world, organisations should not ignore knowledge management and emerging technologies.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-sa/4.0/
- Abstract: Among the essential elements of knowledge management is the use of
information and data, as well as the knowledge, skills, and abilities inherent
within communities, as well as their ideas, commitments, and motivations for
making good decisions as emerging technologies become more prevalent. Numerous
leading social scientists in this field have asserted that organisational
knowledge should be regarded as a strategic asset. There is a growing awareness
of the importance of gathering, locating, capturing, and sharing collective
knowledge and expertise of societies, and societies are urged to develop
effective and efficient methods of gathering, locating, capturing, and sharing
that knowledge in order to deal with problems and to benefit from
opportunities. People living in many countries and regions are interested in
implementing knowledge management processes and technologies, and many of them
have included knowledge management as an integral part of their overall
development strategies. The management of knowledge plays an increasingly
important role in global economic development (Bell, 1973, 1978). In order to
remain relevant in the modern world, organisations should not ignore knowledge
management and emerging technologies.
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