Large Language Models (LLMs), such as GPT-4, Claude, and Gemini, are reshaping the cyber threat landscape, particularly in the domain of social engineering. These models empower adversaries to automate, personalize, and scale phishing, impersonation, and business email compromise (BEC) attacks with unprecedented realism. Unlike traditional social engineering techniques, LLM-driven threats can adapt to contextual cues, simulate executive communication patterns, and generate deepfake audio or video to enhance credibility. As such, conventional security awareness programs and static detection mechanisms are proving insufficient against the sophistication and speed of these AI-enabled attacks. This paper investigates the role of generative AI in enabling next-generation social engineering threats and introduces a multi-layered defense strategy. The proposed framework spans technical solutions such as behavioral anomaly detection, AI-driven phishing simulation, and real-time synthetic media analysis as well as human-centric and policy-based countermeasures. Additionally, the study explores adversarial AI, data poisoning, and red teaming as both offensive and defensive mechanisms. Grounded in emerging trends, case studies, and explainable AI (XAI) techniques, this research emphasizes the urgency of adopting adaptive, intelligence-driven cybersecurity practices. The findings aim to inform practitioners and policymakers on building resilient systems capable of detecting, mitigating, and responding to AI-powered social engineering attacks in real time..
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Prassanna Rao Rajgopal
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Prassanna Rao Rajgopal (Sat,) studied this question.
www.synapsesocial.com/papers/68af5407ad7bf08b1eadacac — DOI: https://doi.org/10.55640/ijiot-05-02-03