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Learn how to apply proven DevSecOps security practices to the emerging field of MLSecOps in this conference talk from KubeCon + CloudNativeCon. Explore the evolution from DevOps to DevSecOps and understand why traditional security approaches fall short when applied to AI/ML applications due to their dynamic behavior, inherent complexity, and opaque decision-making processes. Discover how ML models' continuous evolution requires adaptive and ongoing security strategies specifically tailored to AI/ML challenges. Examine MLSecOps methodology that integrates security practices throughout the ML development lifecycle, establishing security as a shared responsibility among ML developers, security practitioners, and operations teams. Gain insights into early identification and mitigation of security risks in ML environments, enabling the development of secure and trustworthy ML models that address the unique security gaps present in AI/ML applications.
Syllabus
Applying DevSecOps Lessons To MLSecOps - Sarah Evans, Dell Technologies
Taught by
CNCF [Cloud Native Computing Foundation]