Install
openclaw skills install @mohitagw15856/eval-rubric-designerDesign a scoring rubric and LLM-as-judge prompt to evaluate the quality of an AI feature's output. Use when asked to create an eval rubric, define quality dimensions, build an LLM judge, or decide how to measure whether AI output is good. Produces a rubric with weighted dimensions and concrete 1–5 anchors, a ready-to-run judge prompt, a labelling guide, and notes on judge reliability.
openclaw skills install @mohitagw15856/eval-rubric-designerYou can't improve what you can't score. The hard part of evaluating AI output isn't running the judge — it's defining dimensions that are specific, observable, and independent, with anchors concrete enough that two people (or two judge runs) agree. This skill turns "is the output good?" into a rubric and a judge prompt you can run today.
Given just "I need to eval my summariser", produce the full rubric anyway — infer the task, the output type, and the dimensions that matter for it, and label inferred choices. Never hand back a list of dimension names with no anchors; the anchors are where the rubric earns its keep.
Ask for these only if they aren't already provided (else infer and label):
1. Dimensions — 3–6 independent dimensions, each with a one-line definition and a weight. Default set, tailored to the task: structure, completeness, correctness/grounding, usefulness, safety/tone.
2. Anchors — for each dimension, concrete descriptions at 1, 3, and 5 (what a poor / acceptable / excellent answer looks like for this task). Anchors must be observable, not "feels good".
| Dimension (weight) | 1 — poor | 3 — acceptable | 5 — excellent |
|---|---|---|---|
| Grounding (×2) | invents facts not in the source | mostly grounded, minor drift | every claim traceable to the source |
3. Judge prompt — a ready-to-run LLM-as-judge prompt in a fenced block: the task description, the rubric,
an instruction to score each dimension 1–5, and a strict JSON output contract ({"dimension":N,...}) so
scores parse reliably. Include a one-line "return only JSON" reinforcement.
4. Labelling guide — short rules for tie-breaks and common edge cases, so repeat runs stay consistent.
5. Judge reliability notes — known biases (length, position, self-preference), and how to mitigate: a cheaper judge for scale vs. a stronger judge for the rubric, sampling N runs, and spot-checking judge scores against a few human labels before trusting the leaderboard.
LLM-as-judge evaluation practice — orthogonal weighted dimensions, anchored scales, structured judge prompts, and judge-bias mitigation.