The XAI-Cloud Nexus: Building Transparent and Governed Data Architectures for Compliance in High-Frequency Finance

Authors

  • Deepak Reddy Suram Senior Software Engineer & Cloud Data Architect, USA Author

DOI:

https://doi.org/10.15662/IJRAI.2025.0801008

Keywords:

Finance, Data Architecture, XAI Cloud, Governance

Abstract

The traditional AI frameworks on the clouds are usually fast and yet scale-centric but unable to provide explicit decision-making rationale and audit services. The current paper proposes XAI-Cloud Nexus, which is a cloud architecture, proposed to include explainable AI and governance functionality in data pipelines and inference layers. The quantitative measure of the research proves that it is more precise in identifying fraud and the false positives are lower, and it will explain more and there is a good audit trail, and the system latency is acceptable. The results favor that clarifiable-based structures endorse trustful and control financial AI structures.

References

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Published

2025-02-27

How to Cite

The XAI-Cloud Nexus: Building Transparent and Governed Data Architectures for Compliance in High-Frequency Finance. (2025). International Journal of Research and Applied Innovations, 8(1), 11710-11719. https://doi.org/10.15662/IJRAI.2025.0801008