GVIF: A Governed Vector Intelligence Framework for AI-Driven Cloud Data Modernization in Regulated Financial Systems

Authors

  • Hirenkumar N. Dholariya

DOI:

https://doi.org/10.22399/ijcesen.4797

Keywords:

AI-Driven Modernization, Semantic Intelligence, Vector Embeddings, Cloud-Native Lakehouse, Regulatory Compliance, Governed Vector Intelligence Framework

Abstract

Financial institutions face unprecedented challenges from evolving fraud tactics, exploding data volumes, and increasingly stringent regulatory requirements that legacy batch-processing systems cannot adequately address. This article presents the Governed Vector Intelligence Framework (GVIF), a novel cloud-native architecture specifically designed by the author to transform financial data operations through three proprietary innovations: the Regulatory-Aligned Semantic Fabric (RASF), the Financial Vector Intelligence Core (FVIC), and the Human-Verified Adaptive Decisioning Loop (HVADL). Unlike conventional cloud modernization approaches that focus solely on infrastructure migration or basic data lake implementations, the author’s framework uniquely integrates semantic reasoning, vector-based pattern recognition, and human–AI collaborative governance directly into the processing architecture.The GVIF addresses critical industry gaps by enabling sub-second fraud detection with up to a 67% reduction in false positives, automating compliance documentation with up to a 73% reduction in compliance operating costs, and supporting real-time decisioning at sub-50 millisecond latency when compared with rule-based decision engines and batch-oriented ETL pipelines. Results are drawn from controlled pilot deployments and phased production implementations across payment processing, lending decisioning, and regulatory compliance operations, with metrics reflecting measured outcomes where instrumentation was available and conservative lower-bound estimates over defined evaluation windows. Industry deployments demonstrate quantified outcomes including average annual operational cost savings of approximately $4.2 million, an estimated 82% reduction in manual investigation workload, and a 58% decrease in fraud-related losses.The author’s contributions advance both national financial system resilience and institutional competitive positioning through scalable, audit-ready architectures that meet stringent regulatory requirements while preserving operational velocity. This document provides a repeatable, governance first approach to building a financial services organisation that will succeed in balancing AI driven innovation with regulatory compliance in a highly regulated, high stakes environment.

References

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Published

2026-01-21

How to Cite

Hirenkumar N. Dholariya. (2026). GVIF: A Governed Vector Intelligence Framework for AI-Driven Cloud Data Modernization in Regulated Financial Systems. International Journal of Computational and Experimental Science and Engineering, 12(1). https://doi.org/10.22399/ijcesen.4797

Issue

Section

Research Article