Intelligent Multi Agent Artificial Intelligence Architecture for Secure Cloud Native Digital Transformation and Infrastructure Automation
DOI:
https://doi.org/10.15662/IJARCST.2025.0805028Keywords:
Multi Agent Artificial Intelligence, Cloud Native Architecture, Digital Transformation, Infrastructure Automation, Autonomous Enterprise Systems, Cybersecurity Intelligence, DevOps Automation, Intelligent Cloud PlatformsAbstract
Digital transformation across enterprises has accelerated the adoption of cloud native architectures artificial intelligence driven automation and secure infrastructure platforms. However managing complex distributed environments requires intelligent autonomous systems capable of monitoring optimizing and protecting digital ecosystems. This paper proposes an Intelligent Multi Agent Artificial Intelligence Architecture designed to support secure cloud native digital transformation and automated infrastructure management. The architecture integrates AI agents machine learning analytics cybersecurity intelligence and cloud orchestration frameworks to enable autonomous decision making predictive operations and resilient enterprise systems. The proposed framework utilizes distributed intelligent agents responsible for workload orchestration resource optimization threat detection compliance governance and operational automation. Each agent collaborates through a coordinated decision layer supported by data driven analytics and real time monitoring. The system is designed to integrate with container orchestration platforms microservices infrastructure and enterprise cloud platforms such as AWS Azure and hybrid cloud environments. The research highlights how multi agent AI architectures enhance scalability operational efficiency cybersecurity resilience and intelligent infrastructure management in modern enterprises. Experimental evaluation and conceptual modeling demonstrate that the proposed architecture significantly improves infrastructure reliability reduces operational overhead and strengthens cyber defense mechanisms. The findings contribute to the development of autonomous enterprise platforms capable of supporting next generation digital transformation initiatives across finance healthcare manufacturing and government sectors.
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