AI-Integrated Smart Infrastructure Architecture for Autonomous Data Centers Secure Networks and Intelligent Resource Management

Authors

  • Brian Hanchey PSA Airlines, Inc., United States Author

DOI:

https://doi.org/10.15662/65a0h795

Keywords:

Artificial Intelligence, Autonomous Data Centers, Smart Infrastructure, Intelligent Resource Management, Secure Networks, Predictive Analytics, Cloud Computing, Infrastructure Automation, Machine Learning, Cybersecurity

Abstract

Artificial Intelligence (AI) has emerged as a transformative technology in modern computing infrastructures, enabling intelligent automation, predictive management, and enhanced security within large-scale digital ecosystems. The increasing complexity of data centers, network infrastructures, and distributed computing environments has created the need for smart architectures capable of autonomously managing resources and maintaining operational stability. This research focuses on the development of an AI-integrated smart infrastructure architecture designed to support autonomous data centers, secure network operations, and intelligent resource management. The proposed architecture integrates machine learning algorithms, software-defined infrastructure, predictive analytics, and automated orchestration mechanisms to enhance the efficiency and resilience of digital platforms. By leveraging AI-driven analytics, the system can monitor infrastructure performance, predict workload fluctuations, detect potential failures, and optimize resource allocation in real time. Additionally, the architecture incorporates advanced cybersecurity frameworks that use intelligent threat detection and behavioral analysis to protect network environments from evolving cyber threats. The study also explores the implementation of autonomous decision-making processes within infrastructure management systems, reducing the need for manual intervention and minimizing operational errors. The findings demonstrate that AI-integrated infrastructures significantly improve scalability, operational efficiency, and system reliability while strengthening security mechanisms. This research contributes to the development of next-generation intelligent infrastructure capable of supporting the growing demands of modern digital services.

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Published

2024-12-12

How to Cite

AI-Integrated Smart Infrastructure Architecture for Autonomous Data Centers Secure Networks and Intelligent Resource Management. (2024). International Journal of Research and Applied Innovations, 7(6), 11947-11957. https://doi.org/10.15662/65a0h795