Scalable AI Driven Cloud Native Systems for Secure Adaptive and Self Optimizing Enterprise Intelligence
Abstract
The rapid evolution of enterprise ecosystems demands intelligent systems that are scalable, secure, adaptive, and capable of continuous optimization. AI-driven cloud-native architectures have emerged as a transformative solution, enabling enterprises to process vast amounts of data while maintaining agility and resilience. This paper explores the design and implementation of scalable AI-driven cloud-native systems tailored for enterprise intelligence. By leveraging microservices, containerization, and orchestration technologies, these systems ensure flexibility and efficient resource utilization. Artificial intelligence techniques, including machine learning and reinforcement learning, enhance system adaptability and enable predictive decision-making. Security is integrated through zero-trust architectures, encryption, and AI-based threat detection mechanisms, ensuring data integrity and privacy. Furthermore, self-optimizing capabilities allow systems to dynamically adjust performance parameters, reducing operational costs and improving efficiency. The study examines architectural frameworks, enabling technologies, and deployment strategies while addressing challenges such as system complexity, data governance, and interoperability. The proposed approach demonstrates how enterprises can achieve intelligent automation, real-time insights, and sustainable scalability. This research contributes to the advancement of enterprise intelligence systems by integrating AI and cloud-native paradigms into a unified, adaptive, and secure infrastructure model.
Article Information
Journal |
International Journal of Advanced Engineering Science and Information Technology (IJAESIT) |
|---|---|
Volume (Issue) |
Vol. 8 No. 6 (2025): International Journal of Advanced Engineering Science and Information Technology (IJAESIT) |
DOI |
|
Pages |
17781-17789 |
Published |
April 3, 2026 |
| Copyright | |
Open Access |
This work is licensed under a Creative Commons Attribution 4.0 International License. |
How to Cite |
Prof.Usha M (2026). Scalable AI Driven Cloud Native Systems for Secure Adaptive and Self Optimizing Enterprise Intelligence. International Journal of Advanced Engineering Science and Information Technology (IJAESIT) , Vol. 8 No. 6 (2025): International Journal of Advanced Engineering Science and Information Technology (IJAESIT) , pp. 17781-17789. https://doi.org/10.15662/IJAESIT.2025.0806010 |
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