Agents Without Labels: Dimension-Based Scoring Replaces Reference Answers
Teams evaluating multi-turn agent outputs without golden-answer baselines are moving away from LLM-as-judge black boxes toward dimension-specific rubrics that isolate failure modes and track tool-step correctness.
Agent evaluation in production hits a wall when there is no reference answer to compare against. Multi-turn conversations, tool calls, and multiple valid paths to success make the traditional diff-against-a-reference approach impossible. The question teams face is stark: how do you know if a given a...
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