Authors: Aarav Mehta
Abstract: The growing complexity of modern networks, driven by cloud computing, IoT, and distributed systems, has made traditional network monitoring approaches increasingly inadequate. Intelligent systems for network performance monitoring leverage advanced technologies such as artificial intelligence (AI), machine learning (ML), and data analytics to provide proactive, adaptive, and real-time insights into network behavior. This study explores the design, implementation, and benefits of intelligent monitoring systems that can analyze vast volumes of network data, detect anomalies, and predict potential performance issues before they impact users. The paper examines key techniques including anomaly detection, traffic analysis, predictive analytics, and automated fault diagnosis. It highlights the role of ML models such as supervised learning, unsupervised clustering, and deep learning in identifying patterns and optimizing network performance. Integration with cloud-based platforms and edge computing is also discussed, enabling scalable and low-latency monitoring solutions. Furthermore, the study addresses challenges such as data heterogeneity, scalability, model accuracy, and real-time processing requirements. Solutions including distributed data processing, model optimization, and automated feedback loops are analyzed. The findings suggest that intelligent network monitoring systems significantly enhance network reliability, reduce downtime, and improve overall quality of service. These systems are essential for managing modern, high-performance networks and supporting the increasing demands of digital applications.
International Journal of Science, Engineering and Technology