Global Multidisciplinary Journal

Open Access Peer Review International
Open Access

AI-Driven Decision Intelligence and Data-Centric Business Transformation: Reconfiguring Analytical Roles, Governance, And Cyber-Physical Ecosystems in The Age of Intelligent Automation

4 Department of Information Systems and Digital Innovation, University of Ljubljana, Slovenia

Abstract

The rapid proliferation of artificial intelligence technologies has fundamentally transformed organizational decision-making, operational structures, and the nature of professional analytical roles across industries. In particular, the convergence of big data analytics, machine learning, and generative intelligence has reshaped how organizations manage information, evaluate risks, optimize supply chains, and design digital infrastructures. This study investigates the emergence of AI-driven decision intelligence as a unifying paradigm that integrates financial analytics, business intelligence, cyber-physical systems, and digital governance. Drawing on an extensive interdisciplinary literature base that includes research on machine learning, business intelligence, AI-enabled business models, digital twins, and organizational transformation, this article develops a comprehensive conceptual framework explaining how AI technologies are redefining analytical labor, enterprise decision structures, and data-centric ecosystems.

The research explores the relationship between data availability, algorithmic analytics, and organizational competitiveness, emphasizing how intelligent automation transforms knowledge work traditionally performed by analysts and strategic decision-makers. It also examines how the integration of generative AI, sensor fusion, and digital twin ecosystems extends AI-driven decision intelligence into cyber-physical infrastructures, enabling real-time analytics and predictive management. Additionally, the study addresses governance concerns including algorithmic fairness, privacy protection, and data integrity, which are increasingly critical as organizations rely more heavily on automated decision systems.

Methodologically, the study adopts a qualitative conceptual synthesis approach, integrating theoretical insights from prior research in finance, supply chain management, artificial intelligence, and information systems. Through systematic analytical reasoning and thematic integration, the study identifies core drivers shaping AI-enabled business ecosystems, including data-centric architectures, algorithmic governance, and emerging human-AI collaboration models.

The findings suggest that AI-driven decision intelligence fundamentally restructures the knowledge economy by augmenting human analytical capabilities while simultaneously reshaping professional skill requirements, corporate governance structures, and digital infrastructure design. Organizations adopting these technologies experience enhanced predictive capability, operational resilience, and strategic agility. However, the transformation also introduces new risks related to algorithmic bias, workforce displacement, and cybersecurity vulnerabilities.

The study contributes to the growing literature on artificial intelligence and organizational transformation by proposing an integrative framework that bridges financial analytics, digital governance, and cyber-physical ecosystems. The research highlights the need for interdisciplinary strategies that combine technological innovation, ethical oversight, and human capital development to ensure that AI-driven decision systems deliver sustainable and equitable outcomes.

Keywords

References

📄 Agarwal, S., Gans, J. S., & Goldfarb, A. (2019). The role of data in the age of AI: Reassessing the contribution of information to financial forecasting. Journal of Financial Data Science, 1(1), 14-28.
📄 Agrawal, R., & Srikant, R. (1994). Fast algorithms for mining association rules. Proceedings of the 20th International Conference on Very Large Data Bases, 487-499.
📄 Arntz, M., Gregory, T., & Zierahn, U. (2016). The risk of automation for jobs in OECD countries: A comparative analysis. OECD Social, Employment and Migration Working Papers.
📄 Bholat, D., Choudhry, M., & Svirydzenka, K. (2018). Machine learning in finance: A review of the literature. Bank of England Staff Working Paper.
📄 Binns, R. (2018). Fairness in machine learning: Lessons from political philosophy. Proceedings of the Conference on Fairness, Accountability, and Transparency.
📄 Büyüköztürk, S. (2020). Streaming analytics for real-time big data processing. IEEE Transactions on Knowledge and Data Engineering, 32(3), 547-559.
📄 Chae, B. (2019). Supply chain management in the era of big data: A literature review and future research directions. Journal of Supply Chain Management, 55(3), 48-72.
📄 Chen, H., Chiang, R. H. L., & Storey, V. C. (2012). Business intelligence and analytics: From big data to big impact. MIS Quarterly, 36(4), 1165-1188.
📄 Cloarec, J. (2022). Privacy controls as an information source to reduce data poisoning in artificial intelligence-powered personalization. Journal of Business Research, 152, 144-153.
📄 Cohen, M. A., & Lee, H. L. (2021). Operations and supply chain management in the era of COVID-19: Challenges and opportunities. International Journal of Production Economics, 231, 107859.
📄 Cui, X., Xu, B., & Razzaq, A. (2022). Can application of artificial intelligence in enterprises promote corporate governance? Frontiers in Environmental Science, 10.
📄 Dash, S. P., & Roy, S. (2020). Performance evaluation under human capital perspective: An empirical evidence. International Journal of Productivity and Performance Management, 70(6), 1336-1360.
📄 de Blasio, G., D’Ignazio, A., & Letta, M. (2022). Predicting corrupted municipalities with machine learning. Technological Forecasting and Social Change, 184.
📄 Detwal, P. K., Agrawal, R., Samadhiya, A., & Kumar, A. (2023). Metaheuristics in circular supply chain intelligent systems: A review of applications journey and forging a path to the future. Engineering Applications of Artificial Intelligence, 126.
📄 Dev, D., Sharma, G. D., Gupta, M., & Tiwari, A. K. (2025). Sustainable finance in action: A comprehensive framework for policy and practice integration. International Review of Economics and Finance, 103.
📄 Dey, P., Chowdhury, S., Abadie, A., Yaroson, E. V., Sarkar, S., & Author, C. (2024). Artificial intelligence-driven supply chain resilience in Vietnamese manufacturing small-and medium-sized enterprises. International Journal of Production Research, 62(15), 5417-5456.
📄 Fadhel, M. A., Duhaim, A. M., Albahri, A. S., Al-Qaysi, Z. T., Aktham, M. A., Chyad, M. A., Abd-Alaziz, W., Albahri, O. S., Alamoodi, A. H., Alzubaidi, L., Gupta, A., & Gu, Y. (2024). Navigating the metaverse: Unraveling the impact of artificial intelligence—a comprehensive review and gap analysis. Artificial Intelligence Review, 57(10).
📄 Fan, S., Liu, G., Tu, Y., Zhu, J., Zhang, P., & Tian, Z. (2023). Improved multi-criteria decision making method integrating machine learning for patent competitive potential evaluation: A case study in water pollution abatement technology. Journal of Cleaner Production, 403.
📄 Faqihi, A., & Miah, S. J. (2023). Artificial intelligence-driven talent management system: Exploring the risks and options for constructing a theoretical foundation. Journal of Risk and Financial Management, 16(1).
📄 M. A. Hussain, V. B. Meruga, A. K. Rajamandrapu, S. R. Varanasi, S. S. S. Valiveti and A. G. Mohapatra, "Generative AI Sensor Fusion for Secure Digital Twin Ecosystems: A Standardization-Aligned Framework for Cyber-Physical Systems," in IEEE Communications Standards Magazine, doi: 10.1109/MCOMSTD.2026.3660106
📄 Shounik, S. . (2025). Redefining Entry-Level Analyst Roles in M&A: Essential Skillsets in the Age of AI-Powered Diligence. The American Journal of Applied Sciences, 7(07), 101-110. https://doi.org/10.37547/tajas/Volume07Issue07-11

How to Cite

Dr. Kristine Markovic. (2026). AI-Driven Decision Intelligence and Data-Centric Business Transformation: Reconfiguring Analytical Roles, Governance, And Cyber-Physical Ecosystems in The Age of Intelligent Automation. Global Multidisciplinary Journal, 5(02), 60-67. https://www.grpublishing.org/journals/index.php/gmj/article/view/351

Most read articles by the same author(s)

<< < 3 4 5 6 7 8 9 10 11 12 > >> 

Similar Articles

1-10 of 84

You may also start an advanced similarity search for this article.