ARTIFICIAL INTELLIGENCE FOR BUSINESS EFFICIENCY AND CIVIL DEFENCE FOSTERING

Keywords: artificial intelligence, economic efficiency, civil protection, decision-making, disruptive technologies, bibliometric analysis

Abstract

In today's high-tech society, artificial intelligence technologies are used to increase the efficiency of business operations and facilitate the management of social and economic systems. In the conditions of unforeseen consequences of climate change and regional military conflicts, artificial intelligence technologies are becoming useful for improving civil security. This article explores using artificial intelligence technologies to improve economic efficiency and civil protection levels. Based on the VOSviewer bibliometric tool, the article highlights eight blocks of scientific research related to artificial intelligence and civil protection. The results prove that artificial intelligence, civil defence (along with risk management and preparedness) are separate building blocks for all other connections. As part of the empirical survey, it was found that there is no significant relationship between the integration of artificial intelligence and the accuracy of business decisions. Organisations may need to examine other factors contributing to the accuracy of business decisions, as AI integration alone may not be the deciding factor. Artificial intelligence can be used for civil protection purposes such as forecasting, warning, management of emergencies, and formation of an information base and emergency response scenarios. The article states that one of the advantages of using artificial intelligence is access to "big data" and the possibility of online analysis "in the cloud", forming almost instantaneous information support for management decisions. However, it should not be forgotten that all responsibility for using artificial intelligence technologies, including ethical components and related consequences, rests with the person. The principles of efficiency embedded in the technological aspects of the use of artificial intelligence may not coincide with universal human values, creating challenges and clear threats to the use of such technologies in social practice.

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Published
2024-03-29
How to Cite
Kubatko, O., Ozims, S., Voronenko, V., & Konovalenko, I. (2024). ARTIFICIAL INTELLIGENCE FOR BUSINESS EFFICIENCY AND CIVIL DEFENCE FOSTERING. Economic Scope, (190), 141-147. https://doi.org/10.32782/2224-6282/190-27
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