December 2025
Intermediate to advanced
416 pages
13h 46m
English
This chapter explores how to integrate security practices and controls into each stage of the LLM development life cycle. Building secure AI systems requires a comprehensive approach that addresses vulnerabilities at every phase of development—from initial data collection to deployment and monitoring. You’ll learn practical security measures for data curation and preprocessing that prevent poisoning and bias. The chapter then examines how to protect model integrity during the training and validation phases, followed by rigorous security testing methodologies tailored specifically for LLMs. You’ll also explore secure deployment strategies and runtime ...
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