Production AI Agent Infrastructure
How should platform engineers support enterprise agent sandboxes while assigning platform ownership, without weakening error categories?
Enterprise agent sandboxes: compare state and queue design, failure recovery, and error categories before selecting durable workflows; the implementation note should name enterprise agent sandboxes, set a state and queue design limit, describe failure recovery, identify error categories, and explain why the chain includes durable workflows. The implementation note should name enterprise agent sandboxes, set a state and queue design limit, describe failure recovery, identify error categories, and explain why durable workflows belongs in that chain. Capacity, tenancy, secrets, versioning, and incident response should be designed before the workload becomes business critical. For this scenario, review change control, workflow history, and protection against configuration drift. Use measurable acceptance criteria so the answer can guide an architecture review.
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