Apply Deep Learning for Cyber Defense
Acquire expertise in using deep learning algorithms for advanced applications like malware analysis, phishing detection, and predictive threat modeling.
The AI+ Security Level 3™ course provides a comprehensive exploration of the intersection between AI and cybersecurity, focusing on advanced topics critical to modern security engineering. It covers foundational concepts in AI and machine learning for security, delving into areas like threat detection, response mechanisms, and the use of deep learning for security applications. The course addresses the challenges of adversarial AI, network and endpoint security, and secure AI system engineering, along with emerging topics such as AI for cloud, container security, and blockchain integration. Key subjects also include AI in identity and access management (IAM), IoT security, and physical security systems, culminating in a hands-on capstone project that tasks learners with designing and engineering AI-driven security solutions.
Our training approach is human‑centred and outcomes‑driven. We focus on what learners can apply confidently.
Acquire expertise in using deep learning algorithms for advanced applications like malware analysis, phishing detection, and predictive threat modeling.
Understand the use of AI for securing cloud-based platforms and containerized applications, focusing on scalability and automation in threat mitigation.
Learn to apply AI techniques to streamline identity verification, manage access control systems, and secure authentication processes.
Explore how AI can be used to address unique IoT security challenges, including detecting compromised devices and protecting communication protocols.
Develop Al-powered IAM solutions to improve access control, and identity verification processes for large-scale organizations.
Advise on implementing AI-driven security technologies, offering best practices and system integration for optimal protection.
Use Al to protect IoT devices and networks, ensuring the security of interconnected systems in industries like healthcare, manufacturing, and smart cities.
Leverage Al to enhance cloud security, focusing on areas like container security, threat detection, and incident response in cloud environments.
70%
50 multiple-choice/multiple-response questions
| Foundations of AI and Machine Learning for Security Engineering | 5% |
| Machine Learning for Threat Detection and Response | 7% |
| Deep Learning for Security Applications | 7% |
| Adversarial AI in Security | 7% |
| AI in Network Security | 7% |
| AI in Endpoint Security | 7% |
| Secure AI System Engineering | 10% |
| AI for Cloud and Container Security | 10% |
| AI and Blockchain for Security | 10% |
| AI in Identity and Access Management (IAM) | 10% |
| AI for Physical and IoT Security | 10% |
| Capstone Project - Engineering AI Security Systems | 10% |
Splunk User Behavior Analytics (UBA)
Microsoft Defender for Endpoint
Microsoft Azure AD Conditional Access
Adversarial Robustness Toolbox (ART)