farhanashraf4/CNN-Based-Detection-of-DDoS-Threats-in-Software-Defined-Networks
Develop a DDoS attack detection system for SDN using machine learning and deep learning, leveraging SDN datasets for binary and multi-class classification. Implement CNN models with preprocessing, data balancing, and comprehensive evaluation for enhanced network security.
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