Prof. Shwethashree G CR TanushaP HarshithaDhyan Ganesh SNS Dheeraj Gowda
Abstract: In the dynamic realm of networking, Software Defined Networking (SDN) emerges as a transformative force, offering centralized control and programmable capabilities that empower network administrators to efficiently manage and secure network infrastructures. However, amidst the ever-present threat of distributed denial-of-service (DDoS) attacks, the need for robust detection mechanisms is imperative. This research proposes a machine learning-based approach to enhance DDoS attack detection and classification within SDN environments. Leveraging the SelectKBest algorithm for feature selection and employing various classifiers such as Decision tree, KMeans++, XGBoost, etc.. with a focus on Random Forest as the most effective, the project aims to bolster detection accuracy and efficiency. Through comprehensive experimentation and comparative analysis, the efficacy of the proposed methodology in identifying DDoS threats is demonstrated, contributing to the ongoing efforts in fortifying cybersecurity defenses against sophisticated adversarial tactics.
Swati NaikSushma SushmaUllal Mohammed AdhifN. Selva KumarVidya
Olga UssatovaAidana ZhumabekovaYenlik BegimbayevaEric T. MatsonNikita Ussatov
Riya JavaliDhanya KulkarniT. ArunaRohan KulkarniShamshuddin K. GoruwaleSuneeta V. Budihal
Brahma Naidu NalluriAditya MandapakaRaja Salih MohammedHemanth Reddy NagireddyInduja Poonati