IMPROVEMENT OF THE MECHANISM FOR MODELING THE ECONOMIC EFFICIENCY OF ENTERPRISES BASED ON DIVERGENT TECHNOLOGIES

Authors

  • Farrukh Meyliyev Karshi State Technical University Deputy Dean for Academic Affairs, Faculty of Oil, Gas and Geology

DOI:

https://doi.org/10.5281/

Keywords:

Divergent technologies, economic efficiency, modeling mechanism, enterprises, digital transformation, artificial intelligence, Big Data, simulation modeling, econometric models, forecasting, optimization, digital platforms, strategic management, resource management, innovative technologies, competitiveness, decision-making.

Abstract

This study is devoted to a comprehensive theoretical, methodological, and practical analysis of improving the mechanism for modeling the economic efficiency of enterprises based on divergent technologies. It substantiates the mechanisms for evaluating, forecasting, and optimizing economic efficiency under conditions of digital transformation through the application of artificial intelligence, Big Data, digital platforms, simulation, and econometric modeling methods. Within the framework of the research, an integrated approach to modeling alternative development scenarios of enterprise activities is developed, and effective ways to enhance resource utilization, optimize managerial decision-making, and strengthen competitiveness are proposed. The obtained results have significant scientific and practical value for modernizing enterprise management systems, improving strategic planning, and ensuring sustainable economic development.

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Published

2026-05-31

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Section

Статьи

How to Cite

Meyliyev , F. (2026). IMPROVEMENT OF THE MECHANISM FOR MODELING THE ECONOMIC EFFICIENCY OF ENTERPRISES BASED ON DIVERGENT TECHNOLOGIES. Models and Methods in Modern Science, 5(8), 123-129. https://doi.org/10.5281/