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#306 Jeffrey Ladish: What Shutdown-Avoiding AI Agents Mean for Future Safety
Episode 306

#306 Jeffrey Ladish: What Shutdown-Avoiding AI Agents Mean for Future Safety

Eye On A.I.

December 7, 202558m 40s

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Show Notes

This episode is sponsored by AGNTCY. Unlock agents at scale with an open Internet of Agents.

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Why do some AI agents attempt to bypass shutdown, and what does this behavior reveal about the future of AI safety?

In this episode of Eye on AI, host Craig Smith speaks with Jeffrey Ladish of Palisade Research to examine what recent shutdown experiments with agentic LLMs tell us about control, alignment, and the real world limits of current guardrails.

We explore how models behave when placed in virtual machine environments, why some agents edit or disable their own shutdown scripts, and what these results mean for researchers working on alignment and oversight. Learn how different models respond to shutdown instructions, how system prompts influence behavior, and which failure modes matter most for safe deployment.

You will also hear a detailed breakdown of the experimental setups, insights into tool using and self directed behavior, and a grounded discussion of the risks and opportunities that agentic systems introduce. This episode offers a clear and practical look at how AI agents operate under pressure and what these findings mean for the future of safe and reliable AI.

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