AI-Driven Cloud Integration and Orchestration for Next-Generation Enterprise Systems

Authors

  • Siva Kantha Rao Vanama Cloud Solution Architect. Author

DOI:

https://doi.org/10.63282/3050-9246.IJETCSIT-V6I4P105

Keywords:

Cloud Computing, Artificial Intelligence, Enterprise Orchestration, Federated Learning, Microservices Architecture

Abstract

The combination of AI and cloud is revolutionizing enterprise architecture, empowering businesses to automate processes at an unprecedented scale while benefiting from immense cost savings. This study explores AI-enabled cloud integration and orchestration in the next-generation enterprise systems, considering their effects on resource optimization, security reinforcement and predictive analytics. With systematic analysis of the recent cases in healthcare, finance and manufacturing sectors, this work shows that AI integrated cloud orchestration contributes significant performance gains to deployment efficiency, cost reduction and system reliability. The study design is a mixed-methods approach, integrating quantitative performance data with qualitative analysis of factors affecting implementation. As per data, organizations deploying AI based cloud solutions benefit from a reduction in deployment time by 53-70%, a cut down in infrastructure costs up to 28-42%

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Published

2025-10-14

Issue

Section

Articles

How to Cite

1.
Vanama SKR. AI-Driven Cloud Integration and Orchestration for Next-Generation Enterprise Systems. IJETCSIT [Internet]. 2025 Oct. 14 [cited 2025 Nov. 21];6(4):30-6. Available from: https://ijetcsit.org/index.php/ijetcsit/article/view/477

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