In this course, Sam Sehgal—a cloud and application security leader—provides a thorough guide to building secure AI products, focusing on the unique security challenges in machine learning (ML) and large language models (LLMs). Learn how to safeguard AI systems across all stages of development, from data protection and secure coding to model and deployment security. Explore essential security frameworks, threat modeling, and mitigation strategies that can help you anticipate and defend against potential attacks. Dive into industry best practices for securing AI deployments, infrastructure, and the software supply chain. By the end of the course, you’ll be equipped to apply logging, monitoring, and auditing techniques to maintain ongoing system security and compliance. Whether you’re a developer, product manager, or security professional, this course prepares you with the skills to secure your AI products end-to-end.
Learn More