AI paradox in Nepalese banking: operational efficiency vs. ethical and regulatory risks
Abstract
The rapid integration of artificial intelligence (AI) in Nepal's banking sector presents a critical paradox. While
adopted to enhance operational efficiency, its implementation often outpaces the development of essential ethical
and regulatory frameworks. This empirical study of 400 banking professionals across 28 commercial banks
identifies a four-construct framework—AI infrastructure, model governance, service integration, and ethics
capacity—that influences performance. Regression analysis reveals that ethics training (β = 0.216, p < 0.001) and
AI-enabled services (β = 2.012, p < 0.001) significantly boost operational performance. Conversely, opaque model
governance (β = -0.860) and subpar infrastructure (β = -0.788) detrimentally affect efficiency. The findings suggest
that hybrid governance systems and regulatory sandboxes can bridge this implementation gap by striking a balance
between innovation and responsibility. This study contributes to the understanding of AI adoption in resource-constrained environments, offering critical insights for financial institutions and policymakers.
