As a crucial component of the modern, sophisticated Internet backbone, Cloudflare offers exhaustive web performance and security solutions. This research study examines the complex task of balancing high-level security with optimal performance by introducing an artificial intelligence (AI)-driven security orchestration system. The proposed system utilizes sophisticated machine learning (ML) models to rapidly optimize Web Application Firewall (WAF) access rules and detect anomalies in real-time applied scenarios, resulting in adaptable and scalable cyber threat mitigation. The importance of this investigation is highlighted by its ability to increase cyber threat response precision by 92% while decreasing latency by 18%, thus providing uninterrupted user interaction. The societal impact includes enhanced digital reliability and mitigated cybersecurity threats for both businesses and users. The study’s methodology utilizes supervised and unsupervised learning methods to implement effective and well-organized security measures. This innovative approach incorporates AI driven into the Cloudflare ecosystem, enabling resilient content delivery networks (CDNs). Future research initiatives involve exploring advanced deep learning methods to further enhance scalability and performance across distinct digital landscapes.
© 2025 Kusumakumari Daram, P. Senthilkumar, published by Professor Subhas Chandra Mukhopadhyay
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