This paper presents a two-tier architecture for creating online user recommendations through web usage mining (WUM), aiming to enhance user experience by predicting navigation patterns based on historical web log data. The system processes raw web logs, cleanses them, and generates a list of recommended pages for users by analyzing their session data and comparing it with similar user profiles. The implementation demonstrates improved accuracy in recommendations, showcasing the potential of WUM in web personalization and user engagement.