EFFECTIVE COMPUTER MODELING IN EDUCATIONAL MANAGEMENT
DOI:
https://doi.org/10.30888/2663-5712.2024-27-00-021Keywords:
mathematical modelling, management, educationAbstract
Mathematical modeling in education management is a modern innovative tool for increasing the efficiency of management of educational processes. It allows you to create quantitative models of real processes, predict the results of decisions and optimize maMetrics
References
Hrashchenko I. and Krasniuk S. (2015). Problems of regional development of Ukraine under globaliation process. Visnyk Mizhnarodnoho humanitarnoho universytetu. Seriia: Ekonomika i menedzhment. Scientific Bulletin of the International Humanitarian University. Series: Economics and management, 2015. - №11. – pp. 26-32.
Tetiana Tsalko, Svitlana Nevmerzhytska, Svitlana Krasniuk, Svitlana Goncharenko, Liubymova Natalia (2024). Features, problems and prospects of data mining and data science application in educational management. Bulletin of Science and Education, №5(23), 2024. pp.637-657
Krasnuyk Svitlana. (2024) Data Science in educational management (2024). Dialogue of cultures in the European educational space: Proceedings of the 4th International Conference, Kyiv, May 10, 2024. Kyiv National University of Technology and Design. – Kyiv. : KNUTD, 2024. – pp. 119-124.
Mykytenko, V. V., & Hryshchenko, I. S. (2008). Adaptive management system of innovative processes at enterprises. Problems of science, 4, 32-37.
Naumenko, M. (2024). Modern concepts of innovative management at enterprises. Scientific Innovations and Advanced Technologies, No. 6(34) (2024). https://doi.org/10.52058/2786-5274-2024-6(34)-435-449
S. Illiashenko, O. Bilovodska, T. Tsalko, O. Tomchuk, S. Nevmerzhytska, N. Buhas (2022). Opportunities, threats and risks of implementation the innovative business management technologies in the post-pandemic period COVID-19. WSEAS Transactions on Business and Economics. – 2022. – Volume 19. – pp. 1215-1229. https://doi.org/10.37394/23207.2022.19.107
Naumenko, М. (2024). Innovative methodology of financial modeling as a tool for improving the efficiency of management of a competitive enterprise. No. 6(48) (2024): Scientific perspectives. https://doi.org/10.52058/2708-7530-2024-6(48)-424-447
Kulynych Y., Krasnyuk M., Krasniuk S. (2022) Efficiency of evolutionary algorithms in solving optimization problems on the example of the fintech industry. Grail of Science, №14-15, May 2022. 63-70. https://doi.org/10.36074/grail-of-science.27.05.2022
Maxim Krasnyuk, Svitlana Krasniuk (2024). Chapter 6. Evolutionary technologies and genetic algorithms in machine translation. Innovation in modern science: Education and Pedagogy, Philosophy, Philology, Art History and Culture, Medicine and Healthcare. Monographic series «European Science». Book 30. Part 3. 2024. pp. 91-98, Published by: ScientificWorld-NetAkhat AV, Lußstr. 1376227 Karlsruhe, Germany. https://desymp.promonograph.org/index.php/sge/issue/view/sge30-03/sge30-03
Naumenko, M., & Krasnyuk, M. (2024). Effective application of genetic algorithms in solving multi-extrema optimization problems in the management of a competitive enterprise. Grail of Science, (41), 65–73. https://doi.org/10.36074/grail-of-science.05.07.2024.008
Maxim Krasnyuk, Yurii Kulynych, Iryna Hrashchenko, Svitlana Goncharenko, Svitlana Krasniuk (2022). Economic and mathematical modeling of an oil and gas production company as an integrated complex specific system. Science and technology today, 2022. 399-413. https://doi.org/10.52058/2786-6025-2022-13(13)-399-414
Krasnyuk M., Kulynych Yu., Tkalenko A., Krasniuk S. (2021). Methodology of Effective Application of Economic-Mathematical Modeling as the Key Component of the Multi-Crisis Adaptive Management. Modern Economics, 29(2021), 100-106. https://doi.org/10.31521/modecon.V29(2021)-16
Krasnyuk M.T., Tsalko T.R., Nevmerzhytska S.M., Kulynych Yu.M. (2024). Economic and mathematical indicators and models in the project management of an oil and gas company. Science and technology today, March 2024. pp. 346-366. DOI: https://doi.org/10.52058/2786-6025-2024-3(31)-346-366.
Maxim Krasnyuk, Svitlana Nevmerzhytska, Tetiana Tsalko. (2024). Processing, analysis & analytics of big data for the innovative management. Grail of Science, (38), 75–83. https://doi.org/10.36074/grail-of-science.12.04.2024.011
Maxim Krasnyuk, Dmytro Elishys (2024). Perspectives and problems of big data analysis & analytics for effective marketing of tourism industry. Science and technology today, #4 (32) 2024. pp. 833-857. https://doi.org/10.52058/2786-6025-2024-4(32)-833-857
Krasnyuk M., Krasnuik I. (2024) Big data analysis and analytics for marketing and retail. Proceedings of the International Scientific Conference "Artificial Intelligence in Science and Education" (AISE). – Kyiv, March 2024.
Naumenko, M. (2024). Analysis and analytics of big data in marketing and trade of a competitive enterprise. Grail of Science, (40), 117–128. https://doi.org/10.36074/grail-of-science.07.06.2024.013
Kulynych Y., Krasnyuk M., Krasniuk S. (2022). Knowledge discovery and data mining of structured and unstructured business data: problems and prospects of implementation and adaptation in crisis conditions. Grail of Science. 2022. (12-13). pp. 63-70.
Krasnyuk M.T., Hrashchenko I.S., Kustarovskiy O.D., Krasniuk S.O. (2018). Methodology of effective application of Big Data and Data Mining technologies as an important anti-crisis component of the complex policy of logistic business optimization. Economies’ Horizons. 2018. No. 3(6). pp. 121–136. https://doi.org/10.31499/2616-5236.3(6).2018.156317
Krasnyuk, M., & Krasniuk, S. (2021). Modern practice of machine learning in the aviation transport industry. Collection of Scientific Papers ΛΌГOΣ. https://doi.org/10.36074/logos-30.04.2021.v1.63.
Krasnyuk, M., & Krasniuk, S. (2020). Comparative characteristics of machine learning for predicative financial modelling. Collection of Scientific Papers ΛΌГOΣ, 55-57. https://doi.org/10.36074/26.06.2020.v1.21
Krasnyuk M., Tkalenko A., Krasniuk S. (2021). Results of analysis of machine learning practice for training effective model of bankruptcy forecasting in emerging markets. Collection of Scientific Papers ΛΌГOΣ. https://doi.org/10.36074/logos-09.04.2021.v1.07
Naumenko, M. (2024). Effective application of classic machine learning algorithms when making adaptive management decisions. Scientific perspectives, 2024, #5 (47). https://doi.org/10.52058/2708-7530-2024-5(47)-855-875
Naumenko, M., & Grashchenko, I. (2024). Modern artificial intelligence in anti-crisis management of competitive enterprises and companies.Grail of Science, (42), 120–137. https://doi.org/10.36074/grail-of-science.02.08.2024.015
Naumenko, M. (2024). Optimal use of deep machine learning algorithms in efficient enterprise management. Successes and achievements in science, No. 4(4) (2024). https://doi.org/10.52058/3041-1254-2024-4(4)-776-794
Maxim Krasnyuk, Svitlana Krasniuk, Svitlana Goncharenko, Liudmyla Roienko, Vitalina Denysenko, Liubymova Natalia (2023). Features, problems and prospects of the application of deep machine learning in linguistics. Bulletin of Science and Education, №11(17), 2023. 19-34. https://doi.org/10.52058/2786-6165-2023-11(17)-19-34
Downloads
Published
How to Cite
Issue
Section
License
Copyright (c) 2024 Authors
This work is licensed under a Creative Commons Attribution 4.0 International License.