Part 1: Foundations of LLM Security
This part builds the foundation for understanding and securing large language models (LLMs). It begins by explaining the basics of AI, machine learning, and deep learning, then introduces how LLMs work and why their security poses unique challenges. It goes on to describe the idea of AI-native security, showing how it extends traditional cybersecurity by adding protection at every stage of an AI system’s life cycle. The chapters also cover the main types of LLM risks, both those built into the models and those created by attackers, and explain how to identify and manage trust boundaries to protect data and systems. The section ends by linking LLM security with business goals, governance, and compliance, creating ...
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