Wise and Complex Enterprise Architecture for FMIS

Authors

  • Sara Bourbour * Faculty of Industrial and Systems Engineering, Tarbiat Modares University, Tehran, Iran.
  • Mohammad Reza Besharati Faculty of Computer Engineering, Sharif University of Technology, Tehran, Iran. https://orcid.org/0000-0003-3190-411X

https://doi.org/10.48314/apem.vi.52

Abstract

Digital transformation, compliance to requirements and regulations, smart cyber-security, agility, data and information mesh, integration with convergent technologies, skill development and adapting to the socio-technical dynamics, Everyone benefits from a "adequately and sufficiently" sophisticated and complex platform of data-driven wisdom and its interaction with human experts. The realization of all these good goals and needs requires a good and innovative theory, method, framework, solution, and generally a good and innovative paradigm for enterprise architecture in the coming years, which seems to be slowly being experienced, evolving, and emerging. With such an approach and in this paper, a proposed conceptual architecture for the problem of "integrated and intelligent government Financial Management Information System (FMIS) " is presented (from the perspective of enterprise architecture and hybrid wisdom). This conceptual architecture establishes a dynamic and adjustable balance between centralization and distributedness, and with the help of the combination of computational data-driven and human wisdom, it is possible to improve the effectiveness of government resources, operational transparency, program adherence, and operational agility. It facilitates dynamic adaptability, in-depth reporting, support for analytical intelligence, and support for resolving budget discrepancies and disharmonies. Achieving the wisdom of cyber-human thinking in a systematic way in the field of FMIS will be one of the most distinctive achievements of such a conceptual architecture.

Keywords:

Enterprise architecture, Computational wisdom, Hybrid wisdom, Government integrated financial system, Financial management information system, Complexity

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Published

2025-11-24

How to Cite

Bourbour, S., & Besharati, M. R. (2025). Wise and Complex Enterprise Architecture for FMIS. Annals of Process Engineering and Management, 2(4), 246-252. https://doi.org/10.48314/apem.vi.52

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