University of California, Irvine, USA.
World Journal of Advanced Engineering Technology and Sciences, 2025, 15(03), 1580–1589
Article DOI: 10.30574/wjaets.2025.15.3.1087
Received on 06 May 2025; revised on 14 June 2025; accepted on 16 June 2025
This article presents a comprehensive theoretical framework for adaptive AI-driven network orchestration in enterprise data platforms, addressing the growing complexity and dynamic nature of modern data environments. The article introduces a self-evolving architectural construct that leverages advanced machine learning methodologies, specifically multi-agent reinforcement learning with proximal policy optimization, transformer-based anomaly detection, and temporal graph attention networks, to continuously monitor, predict, and optimize system resources without human intervention. The theoretical model demonstrates significant performance coefficients across multiple dimensions: latency minimization (response time optimization), resilience integrity during stochastic demand fluctuations (maintaining operational continuity during 6x traffic anomalies), operational efficiency enhancement (reduction in alert saturation phenomena), and resource allocation optimization (quantifiable decrease in cloud infrastructure expenditure). The proposed framework employs a layered theoretical approach with distributed sensor networks, real-time analytical processing, hierarchical decision-making algorithms, and dynamic resource allocation mechanisms that function across heterogeneous computational environments spanning hybrid cloud and on-premise infrastructures. Despite promising theoretical validation, the article identifies critical challenges including domain-specific security considerations, regulatory compliance constraints, technical implementation barriers, and ethical dimensions that require careful consideration as these self-evolving systems progress toward widespread implementation. The article's theoretical findings suggest that adaptive orchestration represents a significant paradigm advancement over traditional automation methodologies, particularly in environments characterized by unpredictable workload distributions and complex system interdependencies.
Adaptive AI Orchestration; Self-Evolving Data Platforms; Network Resource Optimization; Predictive Infrastructure Management; Enterprise System Resilience
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Sahil Yadav. Adaptive AI-Driven Network Orchestration for Self-Evolving Enterprise Data Platforms. World Journal of Advanced Engineering Technology and Sciences, 2025, 15(03), 1580-1589. Article DOI: https://doi.org/10.30574/wjaets.2025.15.3.1087.