A Critical Analysis of DDoS Mitigation with AI
Keywords:
adaptive response, AI, traffic analysis, machine learningAbstract
DDoS attacks still harm many businesses, government, and critical infrastructure as these attacks’ complexity needs expert countermeasures. AI based predictive algorithms can stop these attacks before they can escalate. SDN centralisation offers real time network traffic monitoring and adaptive mitigation. This paper focuses on AI powered SDN driven networks which can prevent DDoS attacks. These AI models can deal with real time data processing and network resilience boosting adaptive response strategies.
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