Show HN: Scan your AI agents for dangerous capabilities
THE SO WHAT
Treating agent capability scanning as a discrete tool is an early signal that “red-teaming your own agents” will become a standard control, not a niche research task. If you’re piloting agentic workflows, add automated capability checks to your pre-production checklist before you scale usage.
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