Security & Compliance · Application SecuritystructuralAgentsSelf HostedAI Powered

No Sandboxed Execution Boundary for Untrusted AI Agents

AI agents running locally have unrestricted access to host system resources, creating dual risks of accidental damage and data exfiltration. There is no standardized lightweight hypervisor layer that constrains agent execution without requiring full VM overhead. This gap becomes critical as agentic AI workflows expand into local environments.

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5.15

Signal

Visibility

7

Leverage

Impact

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Problem descriptions, scores, analysis, and solution blueprints may be updated as new community data becomes available.