AI-Enhanced Workflow Optimization in Retail and Insurance: A Comparative Study
Keywords:
artificial intelligence, workflow optimizationAbstract
Efficiency of artificial intelligence affects retail and insurance. This paper investigates industrial process efficiency artificial intelligence technology. It assesses artificial intelligence models that improve production, reduce expenses, and automate tedious tasks. This paper investigates retail and insurance artificial intelligence adoption and consequences to highlight how AI might improve operational performance and process management.
Using artificial intelligence, retailers streamline processes, customer service, and inventory. Demand estimate, customer service, marketing customization, and demand automation powered by artificial intelligence and natural language processing Actually, artificial intelligence has improved cost efficiency and operational agility of retailers. Recommendation systems and chatbots increase income and customer happiness.
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