
AI Security Podcast Why AI Agents Fail in Production: Governance, Trust & The "Undo" Button
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Jan 23, 2026 Dev Rishi, GM of AI at Rubrik and former Predibase CEO, shares lessons from building and deploying generative AI for enterprises. He discusses why agents stall in read-only mode, the three top IT fears—shadow agents, governance, and the need to undo damage—and the concept of Agent Rewind. The conversation also covers real-time policy enforcement, using small language models as judges, and protocol debates like MCP vs A2A.
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Early Practical Agent Use Cases
- Dev describes enterprise agent use cases like coding agents that run tests and file PRs and small automation across tools.
- He gives examples: background-check extraction and call-center analytics as high-value production deployments.
Three Fears Blocking Agent Adoption
- Enterprises fear agent sprawl, weak governance, and lack of remediation which block write-mode adoption.
- Dev Rishi argues trust will come from controls and the ability to undo agent actions, not trusting agents themselves.
Agent Rewind Using Backups
- Rubrik uses backups to enable an "Agent Rewind" that restores production to a previous healthy snapshot.
- Dev cites a Valley coding agent that deleted a production database as an example where rewind saves the day.




