Artificial Intelligence (AI) is fundamentally defined to the use of advanced technologies - including machine learning (ML), natural language processing (NLP) and generative AI - to mimic human intelligence for analysing data, automating processes and enhancing decision-making in the financial services industry. This research paper provides a comprehensive and critical examination of AI applications across banking sector, insurance sector, capital markets and financial technology (FinTech). The study integrates theoretical insights with empirical evidence obtained through a structured primary survey and descriptive through secondary data. Advanced statistical techniques, including reliability testing, factor analysis, regression modelling, and hypothesis testing are employed to assess the impact of AI adoption on operational efficiency, customer satisfaction and risk management for a comprehensive and analytical study. A pilot study was conducted to ensure the reliability and validity of the instrument, with Cronbach’s alpha confirming strong internal consistency. The findings reveal that AI significantly enhances efficiency, reduces operational costs, improves fraud detection accuracy and strengthens customer engagement. However, challenges related to ethical considerations, algorithmic bias, regulatory frameworks and data privacy remain substantial barriers. The study contributes to the growing body of literature by offering empirical evidence from a developing economy context and providing actionable implications for policymakers, financial institutions and researchers.
Ekta Anand (Wed,) studied this question.