2026
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This innovation introduces an AI-driven framework designed to strengthen data quality, privacy protection, and regulatory compliance across large-scale financial data ecosystems. The framework addresses a critical challenge in modern financial technology: ensuring accuracy, trust, and auditability in distributed platforms that support capital reporting, risk assessment, and financial decision-making at scale.
By integrating machine learning–based anomaly detection, intelligent validation rules, automated privacy controls, and AI-assisted root cause analysis, the framework proactively identifies data quality defects, privacy risks, and regulatory exposure that traditional rule-based approaches often fail to detect. The solution adapts to evolving data patterns and complex financial transformations, improving detection precision while significantly reducing false positives and investigation timelines.
Deployed in production financial environments, the framework has supported sustained regulatory compliance, near-elimination of material audit findings, and an approximately 85% reduction in privacy-related incidents. This work demonstrates how responsible, explainable AI can function as core financial infrastructure—enhancing trust, operational stability, and regulatory confidence across mission-critical financial systems.
Credits
Entrant
PREM KUMAR SHOLAPURAPU
Category
Technology Innovation - Financial Technology (FinTech)
Country / Region
United States
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Sri Harsha Konda
Category
Technology Innovation - Artificial Intelligence (AI)
Country / Region
United States
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4flow
Category
Technology Innovation - Artificial Intelligence (AI)
Country / Region
United States
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Benchmark Gensuite®
Category
Technology Innovation - Artificial Intelligence (AI)
Country / Region
United States