rakibnsajib/DDoS-Defense-A-Multiclass-and-Multidimensional-Detection-System-with-Diverse-Machine-Learning-Models
DDoS Attack Detection and Classification using Machine Learning. A multiclass and multidimensional approach with models like Random Forest, XGBoost, MLP, KNN, and Extra Trees, trained on the CICDDoS2019 dataset. Includes model evaluation, feature engineering, and performance visualization.
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Dec 23, 2024
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