Back to Search View Original Cite This Article

Abstract

<jats:p>Contemporary risk management must evolve beyond reactive frameworks to adapt to changing economic, technical, and environmental ecosystems. The chapter discusses AI-driven risk intelligence and its transformation of predictive governance and strategic decision-making. AI systems rely on ML, DL, NLP, and real-time analytics. These tools allow businesses to monitor financial, operational, cybersecurity, supply chain, and climatic sectors for early warning signals, assess multidimensional risk exposures, and simulate impact scenarios. This chapter covers system designs, analytical methods, industry-specific applications, data quality, model bias, interpretability, and regulatory compliance. AI-driven risk intelligence in uncertain and fast-changing environments improves organisational resilience, agility, and long-term sustainability. Technological innovation, ethical governance, and model risk management are highlighted.</jats:p>

Show More

Keywords

risk management chapter aidriven intelligence

Related Articles

PORE

About

Connect