Enhancing Data Integrity and Cybersecurity in FinTech with AI Driven Cloud Solution

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© 2025 by IJCTT Journal
Volume-73 Issue-6
Year of Publication : 2025
Authors : Gaurav Sharma, Veeramani Sampathkumar, Krishaa Veeras
DOI :  10.14445/22312803/IJCTT-V73I6P103

How to Cite?

Gaurav Sharma, Veeramani Sampathkumar, Krishaa Veeras, "Enhancing Data Integrity and Cybersecurity in FinTech with AI Driven Cloud Solution," International Journal of Computer Trends and Technology, vol. 73, no. 6, pp. 16-25, 2025. Crossref, https://doi.org/10.14445/22312803/IJCTT-V73I6P103

Abstract
FinTech is completely changing how it deals with financial services by making everything much faster and easier. The Fintech Industry is connecting new technologies to the daily operations of every day. Still, since the process keeps moving faster than usual, risks and problems occur just as quickly. Cyber threats keep getting more advanced, and one data breach can easily destroy customer trust in a company. Even though cloud infrastructure is being used more by FinTech firms, the usual security techniques are no longer enough. At this stage, artificial intelligence helps out. In addition to making businesses more competitive, AI will be the foundation for stronger and more trustworthy financial systems.
This area completely changes the financial world by speeding up transactions, providing more services and making ordinary innovations. Nevertheless, quick technological progress makes things riskier since hackers are finding more advanced ways to attack and a sudden breakdown in trust after a data breach is possible. Because cloud computing is so important in FinTech, old security methods are insufficient. Smart financial systems depend on and profit from AI, which ensures they function safely.

Keywords
AI-driven cloud computing, Behavioral Biometrics, Cybersecurity, Data Integrity, Fintech Security, Fraud detection.

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