Harnessing Artificial Intelligence for Enhanced Security in Cloud-Based Fintech Applications
Abstract
Financial technology (Fintech) applications are rapidly migrating to the cloud, offering agility and scalability. However, security remains a paramount concern. This paper conducts a comprehensive examination of the advantages that Artificial Intelligence (AI) brings to bolster security in cloud-based Fintech applications. From fraud detection and risk assessment to anomaly detection and biometric authentication, this research elucidates how AI empowers Fintech companies to fortify their security posture and protect sensitive financial data.
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