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STRATEGIC MANUAL Application of Artificial Intelligence in INSURANCE INDUSTRY operations
McKinsey estimates that 1.1 trillion USD/year is the potential added value if AI technology is thoroughly applied to the Insurance sector.
The explosion of Artificial Intelligence (AI) application solutions has created momentum to promote the entire digital transformation process in the Insurance sector, spanning the industry’s value chain, including from Sales, Marketing, Risk Management, Operations, Finance & IT.
FPT.AI is pleased to launch the handbook “APPLICATION OF ARTIFICIAL INTELLIGENCE IN INSURANCE INDUSTRY OPERATIONS”, to summarize analysis and strategic comments from leading AI experts in the process of implementing solutions. for leading Insurance businesses in Vietnam.
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