ARTIFICIAL INTELLIGENCE IN MEGAPROJECT FINANCIAL GOVERNANCE
DOI:
https://doi.org/10.18623/rvd.v23.6227Palavras-chave:
Artificial Intelligence, Infrastructure Finance, Mega Projects, Risk Monitoring, Predictive AnalyticsResumo
Mega infrastructure programs implemented under national economic transformation strategies such as Saudi Vision 2030 require advanced financial risk monitoring mechanisms capable of supporting real-time decision-making across complex project environments. This study proposes an artificial intelligence–enabled financial risk monitoring framework designed to enhance early warning capability through integration of ERP-based financial indicators and predictive analytics models. The framework strengthens institutional governance, transparency, and fiscal sustainability in infrastructure investment programs.
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