Episode 480 June 15, 2026 β€’ 🎧 40:23

Defending MLOps Against Autonomous AI Warfare

This episode provides a comprehensive guide to understanding the unique security risks of machine learning workflows and deploying MLSecOps strategies, team personas, and open-source tooling to protect enterprise AI systems from emerging adversarial threats

Defending MLOps Against Autonomous AI Warfare

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Show Notes

In this podcast, we dive into the critical evolution of MLSecOps and how organizations must adapt to defend their dynamic machine learning pipelines against the OWASP ML Top 10 threats, including data poisoning and AI supply chain attacks. We explore actionable insights from DARPA's AI Cyber Challenge, highlighting how autonomous systems like Buttercup use multi-agent architectures and LLMs to revolutionize vulnerability discovery and automated patching. Finally, we map out the essential open-source tools, such as Sigstore and MLRun, alongside the new security personas required to build robust, secure-by-design AI applications from initial data engineering to continuous production monitoring.

Visualizing Secure MLOps (MLSecOps): A Practical Guide for Building Robust AI/ML Pipeline Security

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