Agentic AI for Mobile Network RAN Management and Optimization

arXiv — cs.LGWednesday, November 5, 2025 at 5:00:00 AM

Agentic AI for Mobile Network RAN Management and Optimization

Agentic AI is transforming mobile network management by utilizing Large AI Models to automate complex systems, as detailed in recent research published on arXiv. This approach allows AI to execute tasks with human-like cognitive abilities, significantly improving operational efficiency in 5G and emerging 6G networks. The technology's capacity to manage and optimize Radio Access Networks (RAN) demonstrates its potential to handle intricate network functions autonomously. By integrating agentic AI, mobile networks can achieve enhanced performance and adaptability, addressing the increasing demands of modern communication infrastructures. This development aligns with ongoing advancements in AI-driven network solutions, highlighting a shift towards more intelligent and self-sufficient network management systems. The evidence supports the claim that agentic AI is revolutionizing mobile network management, marking a notable progression in telecommunications technology.

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