AI for Cyber Security | Defend Smarter, Not Harder
In today’s high-stakes cyber landscape, artificial intelligence (AI) and machine learning (ML) are no longer futuristic add-ons—they are essential pillars of a modern cyber defence strategy. This course is your hands-on, practitioner-focused guide to understanding how AI and ML are being used to detect, disrupt, and defend against cyber threats in real time. 🔐 Smarter Threat Detection. Stronger Defences. Real-World Readiness. Built by Macquarie University’s Cyber Skills Academy—ranked in the top 1% of universities globally and recognised as Australia’s leading cyber security school—this course has been co-designed with industry to ensure practical, real-world impact. It brings together technical depth and tactical awareness, with a focus on applications that are relevant, actionable, and urgently needed by today’s organisations. Key topics include: • Build foundational knowledge of AI and ML concepts, tasks (classification/regression), accuracy trade-offs, and the unique risks they face in cyber contexts. • Apply ML tools and models to real-world security problems, including malware analysis, fraud detection, deep packet inspection, and network monitoring. • Analyse network traffic using anomaly detection techniques powered by supervised and unsupervised ML methods, such as k-nearest neighbours and one-class SVM. • Unpack malware behaviour and experiment with ML-driven analysis to identify malicious binaries, understand malware types, and apply artificial neural networks to detection tasks. Dive deep into adversarial machine learning, learning how attackers manipulate models with poisoning and evasion attacks—and how to defend against them by building more robust, resilient systems. ⚙️ Important Note: While no prior AI/ML experience is required, some basic familiarity with Python programming is recommended to get the most out of the practical activities and hands-on labs. 🧠 Building Models That Fight Back This course is designed for cyber security professionals, SOC analysts, engineers, data scientists, and tech leaders looking to future-proof their security strategies with intelligent automation and machine-driven defence techniques.