Intelligent system in the context of business process modelling

Authors

  • Svetlana A. Yaremko Kyiv National University of Trade and Economics
  • Elena M. Kuzmina Kyiv National University of Trade and Economics
  • Nataliia B. Savina National University of Water and Environmental Engineering, Rivne
  • Konrad Gromaszek Lublin University of Technology
  • Bakhyt Yeraliyeva Taraz State University after M.Kh.Dulaty
  • Gauhar Borankulova L.N. Gumilyov Eurasian National University

Abstract

The article deals with the features and characteristics of intelligent systems for modelling business processes. Their classification was made and criteria for comparison were developed. According to the comparative analysis of existing expert systems for intelligent analysis, a reasonable choice of system for modelling business processes of a particular enterprise has been carried out. In general, it was found that the introduction of intelligent systems for modelling business processes of the enterprise and forecasting its activities for future allows management of the company to obtain relevant and necessary information for the adoption of effective management decisions and the development of a strategic plan

Author Biographies

Elena M. Kuzmina, Kyiv National University of Trade and Economics

Vinnytsia Institute of Trade and Economics

Konrad Gromaszek, Lublin University of Technology

Department of Electronics nad Information technology, univeristy profesor

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Published

2024-04-19

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