THE TRANSFORMATIONAL ROLE OF ARTIFICIAL INTELLIGENCE AND INDUSTRIAL MATHEMATICS IN THE COGNITIVE ECONOMY

Authors

DOI:

https://doi.org/10.32689/2523-4536/81-1

Keywords:

industrial mathematics, algorithmic capital

Abstract

The results obtained consist in revealing the functional role of industrial mathematics as the formal backbone of the cognitive infrastructure, interpreting artificial intelligence (AI) as algorithmic capital, and describing the «cognitive value chains» that permeate production, logistics, finance, public governance, and the social sphere. Thanks to an interdisciplinary approach that combines economic theory, industrial mathematics, artificial intelligence studies, and politico-institutional analysis, these results make it possible to coherently explain how the integration of AI and industrial mathematics transforms productivity, the structure of employment, cognitive and economic inequality, as well as the requirements for education, science, innovation, and social policy. The explanation of the results is grounded in the concept of algorithmic capital, a systemic view of cognitive infrastructure, and empirical evidence on the impact of AI on productivity, innovation, and global value chains. The conclusions obtained can be applied in practice under conditions of institutional capacity to develop an industrial-mathematical ecosystem, invest in cognitive capital, build national data infrastructure, and implement policies aimed at ensuring fair access to algorithmic capital and democratic control over cognitive infrastructure.

References

Shkurat, M. (2024). Hlobalna konkurentospromozhnist v umovakh didzhytalizatsii: analiz biznes-stratehii mizhnarodnykh kompanii. Ekonomika i orhanizatsiia upravlinnia, pp. 59-71. DOI: https://doi.org/10.31558/2307-2318.2023.4.7

Adekunle, B. I., Chukwuma-Eke, E. C., Balogun, E. D., & Ogunsola, K. O. (2021). Machine Learning for Automation: Developing Data-Driven Solutions for Process Optimization and Accuracy Improvement. International Journal of Multidisciplinary Research and Growth Evaluation, no. 3(1), pp. 800–808. DOI: https://doi.org/10.54660/.IJMRGE.2021.2.1.800-808

Dankevych, A. Ye., Nitsenko, V. S., Shpak, A. D., & Lypovyi, D. V. (2025). Profesiina etyka ekonomista ta sotsialna vidpovidalnist biznesu v umovakh innovatsiinykh zmin: korporatyzatsiia, tsyfrovizatsiia, yevrointehratsiia ta kreatyvna ekonomika. Mizhnarodnyi naukovyi zhurnal "Internauka". Seriia: "Ekonomichni nauky", no. 4. DOI; https://doi.org/10.25313/2520-2294-2025-4-10847

Dankevych, A., Levchenko, Y., Dankevych, V., Nitsenko, V., & Ingram, K. (2025). Neo-Economic Doctrine of Innovative Economic Transformation: Digital, Creative, and Socio-Ethical Aspects of Business. Financial and Sredit Systems: Prospects for Development, no. 2(17), pp. 180-191. DOI: https://doi.org/10.26565/2786-4995-2025-2-15

Buhrimenko, R. M., Smirnova, P. V., & Smokova, L. M. (2025). Upravlinnia stratehichnym potentsialom pidpryiemstva v umovakh tsyfrovoi transformatsii. Ekonomichnyi prostir. no. 197. pp. 15-19. DOI: https://doi.org/10.30838/EP.197.15-19

Al Khatib, A. M. G. (2025). Beyond linearity: A critical review of the finance– growth nexus. Cogent Economics & Finance, no. 13(1), 2514690. DOI: https://doi.org/10.1080/23322039.2025.2514690

Chhibber, S., Rajkumar, S. R., & Dassanayake, S. (2025). Will Artificial Intelligence Reshape the Global Workforce by 2030? A Cross-Sectoral Analysis of Job Displacement and Transformation. Blockchain, Artificial Intelligence, and Future Research, no. 1(1), pp. 35–51. DOI: https://doi.org/10.70211/bafr.v1i1.178

Corrado, C., Haskel, J., Iommi, M., & Jona Lasinio, C. S. (2022). The value of data in digital-based business models: Measurement and economic policy implications. OECD Economics Department Working Papers, No. 1723, OECD Publishing, Paris. DOI: https://doi.org/10.1787/d960a10c-en

Dang, H. (2025). AI-Driven Productivity and Economic Growth with an Evaluation of the Contemporary Machinery Question. Social Science Research Network, 5319956. DOI: https://doi.org/10.2139/ssrn.5319956

Fariz, F., & Winarsih, T. (2025). A Conceptual Framework for Intellectual Capital to Drive Digital Transformation in Indonesias Transportation Sector. APMBA (Asia Pacific Management and Business Application), no. 13(3), pp. 189-208. DOI: https://doi.org/10.21776/ub.apmba.2025.013.03.1

George, D. A. S. (2024). Automated Futures: Examining the Promise and Peril of AI on Jobs, Productivity, and Work-Life Balance. Partners Universal Innovative Research Publication, no. 2(6), pp. 1–17. DOI: https://doi.org/10.5281/zenodo.14544519

Grineva, N., Mikhailova, S., & Kontsevaya, N. (2023). Econometric Modeling of the Companys Intellectual Capital in the Context of Digitalization. 2023 16th International Conference Management of Large-Scale System Development (MLSD), pp. 1–5. DOI: https://doi.org/10.1109/MLSD58227.2023.10303965

Kalai, M., Becha, H., & Helali, K. (2024). Effect of artificial intelligence on economic growth in European countries: A symmetric and asymmetric cointegration based on linear and non-linear ARDL approach. Journal of Economic Structures, no. 13(1), p. 22. DOI: https://doi.org/10.1186/s40008-024-00345-y

Magableh, I. K., Mahrouq, M. H., TaAmnha, M. A., & Riyadh, H. A. (2024). The Role of Marketing Artificial Intelligence in Enhancing Sustainable Financial Performance of Medium-Sized Enterprises Through Customer Engagement and Data-Driven Decision-Making. Sustainability, no. 16(24), 11279. DOI: https://doi.org/10.3390/su162411279

Mansouri, S. S., Sivaram, A., Savoie, C. J., & Gani, R. (2025). Models, modeling and model-based systems in the era of computers, machine learning and AI. Computers & Chemical Engineering, no. 194, 108957. DOI: https://doi.org/10.1016/j.compchemeng.2024.108957

Onifade, O., Sharma, A., Adekunle, B. I., Ogeawuchi, J. C., & Abayomi, A. A. (2022). Digital Upskilling for the Future Workforce: Evaluating the Impact of AI and Automation on Employment Trends. International Journal of Multidisciplinary Research and Growth Evaluation, no. 3(3), pp. 680–685. DOI: https://doi.org/10.54660/.IJMRGE.2022.3.3.680-685

Shawon, R. E. R., Rahman, A., Islam, M. R., Pravakar Debnath, P., Sumon, M. F. I., Khan, M. A., & Miah, M. N. I. (2024). AI-Driven Predictive Modeling of US Economic Trends: Insights and Innovations. Journal of Humanities and Social Sciences Studies, no. 6(10), pp. 01–15 DOI: https://doi.org/10.32996/jhsss.2024.6.10.1

Fomina, O., & Semenova, S. (2025). Otsinka intelektualnoho kapitalu v ramkakh tsyfrovoi stratehii YeS. Scientia Fructuosa, no. 160(2), pp. 60–77. DOI: https://doi.org/10.31617/1.2025(160)08

Nitsenko, V.S., Tsukanov, O.Iu. (2016). WEB-sait yak dzherelo informatsii pro kompaniiu. Marketynh i tsyfrovi tekhnolohii: zb. materialiv II Mizhnar. nauk.-prakt. konf. 26-27 travnia 2016 r., m. Odesa / H.O. Oborskyi, S.V. Filyppova, M.A. Oklander; Odesk. nats-nyi politekhnichnyi un-t. Odesa: TES. Pp. 119-121.

Nitsenko, V.S., Tsukanov, O.Iu. (2014). Marketynhovi stratehii rostu vertykalno-intehrovanykh struktur. Marketynh i tsyfrovi tekhnolohii: zb. materialiv I Mizhnar. nauk.-prakt. konf. 29-30 travnia 2014 r. / H.O. Oborskyi, S.V. Filyppova, M.A. Oklander; Odesk. nats-nyi politekhnichnyi un-t. Odesa: TES. Pp. 113-114.

Clarivate. (2026). Top 100 Global Innovators 2026: The mathematical revolution. Available at: https://clarivate.com/top-100-innovators/the-top-100/

Bean, R. (2026). 2026 AI & data leadership executive benchmark survey: Executive summary of findings. Data & AI Leadership Exchange. Available at: https://static1.squarespace.com/static/62adf3ca029a6808a6c5be30/t/6942c3cb535da44088c2dbff/1765983179572/2026+AI+%26+Data+Leadership+Executive+Benchmark+Survey.pdf

Nitsenko, V.S., Ostapenko, R.M. (2020). Suchasna transformatsiia marketynhovykh instrumentiv v umovakh tsyfrovoi ekonomiky. Marketynh KhKhI stolittia: vyklyky zmin: materialy Mizhnarodnoi naukovo-praktychnoi konferentsii, prysviachenoi 25-richchiu zasnuvannia kafedry marketynhu i komertsiinoi diialnosti KhDUKhT, 8–10 zhovtnia 2020r. / redkol.: O. I. Cherevko [ta in.]. Kh.: KhDUKhT. Pp. 86-88. Available at: https://repo.btu.kharkiv.ua/server/api/core/bitstreams/a52b709b-646b-4949-84fc-708dddbf3358/content

Nitsenko, V., Ostapenko, R. (2024). Modeliuvannia biznes-protsesiv pidpryiemstva. Biznes-modeli dlia staloho rozvytku: vyklyky ta tsyfrova transformatsiia: tezy dopovidei Mizhnar. nauk.-prakt. konf. (15-16 liutoho 2024 r., m. Kharkiv, Ukraina). Kharkiv. KhNU im. V. N. Karazina. Pp. 144-146. Available at: https://ekhnuir.karazin.ua/handle/123456789/18300

Published

2026-03-23