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Production AI agents need trajectory evaluation, not just output checks

Teams evaluating AI agents in production typically check only final outputs, missing entire classes of failures like duplicate calls, loops, and cost overruns that occur during execution.

1 min read

Production AI agent evaluation requires a fundamental shift in how teams think about testing. Most organizations focus exclusively on whether an agent produces the correct final answer, but this approach misses critical failure modes that occur during execution.

The core insight is straightforward:...

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Primary publication (lab/vendor blog) — our analysis + implication
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r/ai-agents
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UTC
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By the gotcontext.ai team (editorial standards)
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Production AI agents need trajectory evaluation, not just output checks — gotcontext.ai