Accommodation of Big Data technology in business integration processes
https://doi.org/10.21869/2223-1552-2025-15-1-65-81
Abstract
Relevance. One of the preventive measures to improve the efficiency of any enterprise is the integration of various business components. At the same time, the development of cross-cutting technologies contributes to the gradual involvement of different business sectors in the digital space. The implementation of such technologies within companies necessitates the reorganization of business processes. The key issue is the exploration of the littlestudied process of consolidating Big Data technology as the foundation for integrating business components.
The purpose of the study is to determine the adaptive properties of Big Data technology in the context of business process integration.
Objectives. The research objectives involve studying the specifics of the business integration process; investigating the principle of big data functioning in the context of processing continuously growing information flows; identifying the main tools for integrating business processes associated with Big Data technologies; determining a comprehensive assessment of the effectiveness of business process integration in production with the subsequent introduction of big data.
Methodology. The study is based on theoretical analysis, synthesis, generalization, data systematization, economic-statistical methods, and graphical data processing techniques.
Results. The authors established that business integration in the current stage of digital economy development is a crucial factor in strengthening market positions by improving product quality and reducing costs. A review and analysis of the Russian Big Data and BI systems market were conducted. To determine the adaptation process of advanced Big Data technology in integrated business processes, business process integration tools linked with Big Data technologies were identified. A comprehensive assessment of business process integration efficiency in production was performed, demonstrating an increase in efficiency due to Big Data implementation.
Conclusions. The study demonstrated the effectiveness of implementing Big Data technologies in consolidation-oriented business processes, revealing the specifics of their adaptation.
About the Authors
S. V. KolmykovaRussian Federation
Svetlana V. Kolmykova, Lecturer of the Multidisciplinary College
106/5 Sovetskaya Str., Tambov 392000, Russian Federation
R. Yu. Cherkashnev
Russian Federation
Roman Yu. Cherkashnev, Candidate of Sciences (Economics), Associate Professor of the Department of Strategic Economic Development
33 Internatsionalnaya Str., Tambov 392000, Russian Federation
A. V. Bazhanov
Russian Federation
Artem V. Bazhanov, Undergraduate of the Department of Mathematical Modeling and Information Technologies
33 Internatsionalnaya Str., Tambov 392000, Russian Federation
References
1. Selezneva M.V. Approaches to the assessment of economic development factors. Aktual'nye voprosy sovremennoi ekonomiki = Current Issues of the Modern Economy. 2024;(9):216-218. (In Russ.)
2. Plakhin A.E., Selezneva M.V. Fundamentals of business integration strategy. In: Uraldraiver neoindustrial'nogo i innovatsionnogo razvitiya Rossii: sbornik trudov konferentsii = Uralthe driver of neoindustrial and innovative development of Russia: Proceedings of the Conference. Ekaterinburg: Ural'skii gosudarstvennyi ekonomicheskii universitet; 2021. P. 268-271. (In Russ.)
3. Nigai E.A. The process of digitalization of business: from point digitization of business processes to digital transformation. ETAP: ekonomicheskaya teoriya, analiz, praktika = STAGE: Economic Theory, Analysis, Practice. 2022;(2):134-145. (In Russ.)
4. Gruzdenko P.V. The relevance of the introduction of CRM systems into the practice of Russian companies. In: Derzhavinskie chteniya: materialy XXII Vserossiiskoi nauchnoi konferentsii. = Derzhavin readings: Proceedings of the XXII All-Russian Scientific Conference. Pt. 2. Tambov: Tambovskii gosudarstvennyi universitet; 2017. P. 90-96. (In Russ.)
5. Gabidullina G., Gizatulin R., Mirsayapov A. Substantiation and selection of criteria for the effectiveness of the personnel management system of the enterprise. Ekonomika i upravlenie: nauchno-prakticheskii zhurnal = Economics and Management: a Scientific and Practical Journal. 2022;(1):163. (In Russ.)
6. Sulumov I.O., Magomadov M.M., Uspaeva M.G. Managerial characteristics of organizations implementing radical innovative projects. In: Ekonomika i menedzhment v XXI veke: informatsionnye tekhnologii, biotekhnologii, fizkul'tura i sport: sbornik nauchnykh statei po itogam rabot IV Mnzhdunarodnogo kruglogostola = Economics and management in the 21st century: information technologies, biotechnologies, physical education and sports: A collection of scientific articles based on the results of the IV International Round Table. Moscow: Konvert; 2020. P. 150-153. (In Russ.)
7. Ilesaliev D. Recommendations for the organization and management of a warehouse from A to Z. Logistika = Logistics. 2018;(1):18-20. (In Russ.)
8. Interesting facts. The fact room. (In Russ.) Available at: https://www.factroom.ru/facts/1430/ (accessed 18.11.2024).
9. Five examples of how BigData is changing our lives. TACC.ru. (In Russ.) Available at: https://tass.ru/obschestvo/16108007 (accessed 18.11.2024).
10. Koishibekov M.B., Gordeyeva Ye.A. Big data and how businesses can use it. Nauchnyi al'manakh tsentral'nogo chernozem'ya = Scientific Almanac of the Central Chernozem Region. 2022;(3-7):19-25. (In Russ.)
11. Big Data. ТADVISER. (In Russ.) Available at: https://clck.ru/3HRsET (accessed 24.11.2024).
12. Leading countries by number of date crnters as of March 2024. Statista. Available at: https://www.statista.com/statistics/1228433/data-centers-worldwide-by-country/ (accessed 27.11.2024).
13. Kyyakhmetov Zh., Mohamed A.H. Big data and benefits in informed decision making in firms. Universum: tekhnicheskie nauki = Universum: Technical Sciences. 2022;(4):51-55. (In Russ.)
14. Data in digital marketing. Andata. (In Russ.) Available at: https://andata.ru/blog/data/ (accessed 29.11.2024).
15. Zimovets A.V., Klimachev T.D. Digital transformation of production at Russian enterprises in the context of import substitution policy. Voprosy innovatsionnoi ekonomiki = Issues of Innovative Economics. 2022;12(3):1409-1426. (In Russ.)
16. Sokolova M.A., Zotova A.A. Characteristics of modern BI-systems. Finansovye rynki i banki = Financial Markets and Banks. 2022;(11):44-48. (In Russ.)
17. Novotna I.A., Ivanchuk O.V. BI-systems: an analysis of the concept and functionality. Teoriya i praktika obshchestvennogo razvitiya = Theory and Practice of Social Development. 2023;(2):90-94. (In Russ.)
18. Golovko A.A., Hirnaya A.V. Business analyst as a modern sought-after specialist in the labor market. In: Nauchnyi debyut 2023: sbornik statei Mezhdunarodnogo nauchnoissledovatel'skogo konkursa = Scientific debut 2023: Collection of articles of the International Research Competition. Petrazavodsk: Novaya nauka; 2023. P. 61-68. (In Russ.)
19. Almukhametov A.I., Dmitriev A.G. Flexible project management methodologies. Uchenye zapiski Rossiiskoi akademii predprinimatel'stva = Scientific Notes of the Russian Academy of Entrepreneurship. 2023;22(2):11-17. (In Russ.)
20. Maltsev N.A., Frolov N.S. Application of a platform based on artificial intelligence for analyzing the flow of media data in real time. Trudy Krylovskogo gosudarstvennogo nauchnogo tsentra = Proceedings of the Krylov State Scientific Center. 2023;(1):26-32. (In Russ.)
21. Baijanova G.N., Garadzhaeva D.Ya. Principles of NoSQL BASE databases. Vsemirnyi uchenyi = World Scientist. 2023;1(11):48-53. (In Russ.)
22. Chernyakhovsky D.A., Vasiliev S.D., Urvachev P.M. Research and development of algorithms for parallel programming. In: IV Mezhdunarodnaya nauchnaya konferentsiya po mezhdistsiplinarnym issledovaniyam: sbornik statei = IV International Scientific Conference on Interdisciplinary Research: Collection of articles. Ekaterinburg: Institut tsifrovoi ekonomiki i prava; 2023. P. 367. (In Russ.)
23. Dubachev D.V., Panarin S.V. Principles of data synchronization in distributed systems. System requirements. Designing the system structure. Aktual'nye issledovaniya = Current research. 2023;(48):41-49. (In Russ.)
24. Gorlova V.V. Technologies of application and creation of chatbots. In: Sovremennye nauchnye issledovaniya: aktual'nye voprosy, dostizheniya i innovatsii: sbornik statei XXXV Mezhdunarodnoi nauchno-prakticheskoi konferentsii = Modern scientific research: current issues, achievements and innovations: Collection of articles of the XXXV International Scientific and Practical Conference. Penza: Nauka i Prosveshchenie; 2023. P. 16-18. (In Russ.)
25. About us. Just AI. (In Russ.) Available at: https://just-ai.com/o-kompanii (accessed 02.11.2024).
26. Roth-Dietrich G., Gröschel M., Reiner B. Comparison of Machine Learning Functionalities of Business Intelligence and Analytics Tools. Apply Data Science: Introduction, Applications and Projects. Wiesbaden: Springer Fachmedien Wiesbaden; 2023. P. 95-118.
Review
For citations:
Kolmykova S.V., Cherkashnev R.Yu., Bazhanov A.V. Accommodation of Big Data technology in business integration processes. Proceedings of the Southwest State University. Series: Economics. Sociology. Management. 2025;15(1):65-81. (In Russ.) https://doi.org/10.21869/2223-1552-2025-15-1-65-81