Campaign

Ship AI agents that actually work in production

If your current workflows pass in demos but fail with real users, this course gives you the controls to ship reliably.

Pain points this campaign solves

  • You can demo an agent quickly, but it breaks under real traffic and real edge cases.
  • Output drifts over time with no clear way to monitor or test behavior.
  • You are forced to choose between shipping fast and shipping safely.

Outcomes for this campaign

  • Learn production architecture patterns for contracts, memory, and state handling.
  • Build evaluation, fallback, and recovery loops that keep agents predictable.
  • Ship with observability, security, and cost controls so reliability scales.

Course objectives

Design agent contracts, roles, and runtime boundaries that stop behavior drift.
Implement tool use with strict schemas and retry/recovery strategies.
Set up evaluation harnesses that catch regressions before users do.
Apply memory and orchestration patterns for multi-step workflows.
Track cost, latency, and quality so systems stay trustworthy at scale.

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