Intelligent Cloud Native AI Architectures for Secure Enterprise Data Management and Scalable Financial Systems
Abstract
The rapid advancement of cloud computing, artificial intelligence, big data engineering, and intelligent financial technologies has transformed enterprise data management and digital financial ecosystems across global industries. Modern enterprises and financial institutions continuously generate massive volumes of structured and unstructured data from cloud platforms, transactional systems, IoT devices, digital banking services, enterprise applications, cybersecurity infrastructures, and customer interaction environments. Traditional centralized architectures often struggle to support scalability, intelligent analytics, operational resilience, cybersecurity protection, and real-time financial processing requirements in highly dynamic digital ecosystems. Intelligent cloud-native AI architectures have emerged as transformative solutions for secure enterprise data management and scalable financial systems by integrating distributed cloud infrastructure, machine learning optimization, cybersecurity intelligence, intelligent automation, and predictive analytics. This research presents a comprehensive framework for intelligent cloud-native AI architectures supporting secure enterprise operations and scalable financial infrastructures. The proposed framework incorporates microservices orchestration, distributed data engineering, AI-driven analytical models, blockchain-supported governance, intelligent cybersecurity mechanisms, and adaptive automation systems to improve scalability, operational intelligence, financial reliability, and data security. Experimental evaluation demonstrates improvements in predictive financial analytics, intelligent fraud detection, distributed scalability, operational efficiency, cybersecurity resilience, and cloud resource optimization. The findings indicate that cloud-native AI architectures provide secure, adaptive, intelligent, and scalable solutions for future enterprise and financial computing ecosystems.
Article Information
Journal |
International Journal of Science, Research and Technology |
|---|---|
Volume (Issue) |
Vol. 5 No. 6 (2022): International Journal of Science, Research and Technology (IJSRAT) |
DOI |
|
Pages |
8930-8944 |
Published |
December 13, 2022 |
| Copyright |
All rights reserved |
Open Access |
This work is licensed under a Creative Commons Attribution 4.0 International License. |
How to Cite |
Jerrin Varghese (%2022). Intelligent Cloud Native AI Architectures for Secure Enterprise Data Management and Scalable Financial Systems. International Journal of Science, Research and Technology , Vol. 5 No. 6 (2022): International Journal of Science, Research and Technology (IJSRAT) , pp. 8930-8944. https://doi.org/10.15662/IJSRAT.2022.0506007 |
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