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eval-harness-first

Build the evaluation harness that gates every fine-tuning run — golden sets, per-failure-mode graders, judge calibration, and base-model baselines. Use when starting a fine-tuning effort, when converting traces into an eval set, or when calibrating a judge against human labels.

How do I install this agent skill?

npx skills add https://github.com/wshobson/agents --skill eval-harness-first
view source ↗

Is this agent skill safe to install?

  • Gen Agent Trust Hubpass

    The skill provides templates and instructions for building an evaluation harness for AI models. It includes a template for execution-based grading that runs model-generated code. Although the skill emphasizes security isolation and sandboxing, the capability for dynamic code execution and the ingestion of external agent traces (indirect prompt injection surface) represent minor security risks.

  • Socketpass

    No alerts

  • Snykpass

    Risk: LOW · No issues

What does this agent skill do?

Eval Harness First

The Phase 0 gate for the whole plugin: finetuning-method-selection and every downstream skill assume this harness exists before a training config gets written. The harness is not a run-end side artifact — it is the data-curation engine. The same labeled traces that build the goldens feed training data, minus an explicit holdout.

Input: production/agent traces if they exist, or a task spec if they don't, plus labelers willing to grade ≥100 examples. Output format: the eval/ directory below — goldens, graders, drift suite, and the base-model baseline that later phases gate on.

The Gate

No eval harness, no fine-tune. Skip to a training config and there is nothing to measure against, nothing to catch regressions, and no labeled data to train on. The flywheel:

  1. Collect traces — production/agent spans, or synthetic tasks if none exist yet.
  2. Error analysis — open coding on ≥100 traces, axial coding into 4–8 failure buckets.
  3. One grader per bucket — deterministic first; calibrated LLM-judge only for genuinely subjective criteria.
  4. Prioritize by frequency × severity × value.
  5. The labeled traces feed dataset curation, minus an explicit holdout. Every eval/goldens.jsonl ID stays excluded from training data by ID.
  6. Train.
  7. Re-run the same harness on the checkpoint — not a different, looser one.
  8. Drift detection feeds back to step 2 — new production failure modes re-open error analysis.

Steps 2–4 build the harness; steps 5–8 are why it must exist first — it is both the training data source and the checkpoint's exit gate.

Building Goldens

  • From traces, when they exist: run error analysis — open coding on ≥100 real traces (read them, tag failures in your own words, no fixed taxonomy yet), then axial coding to collapse those tags into 4–8 named failure buckets. Fewer than 4 means the coding pass was too shallow; more than 8 means buckets need merging. Exception: single-failure-surface tasks (e.g. strict-schema extraction) may land at 1–2 buckets with per-field sub-metrics inside one grader — don't invent artificial splits with no evidence behind them.
  • Synthetic, when traces don't exist yet: dimension-based generation — enumerate the axes that matter (task type, difficulty, edge case, persona) and sample the cross-product; free- generated prompts cluster around whatever's easiest to write.
  • Goldens are versioned like code — commit eval/goldens.jsonl, diff it in review, tag it per release. It doubles as the CI regression suite.

Graders

One grader per failure bucket from error analysis — not one for the whole eval set. A single blended score hides which bucket regressed.

  • Deterministic first. Regex, schema validation, or execution checks are cheaper, reproducible, and need no calibration.
  • LLM-judge only for genuinely subjective criteria — tone, faithfulness, "which response is better" — where no deterministic check can express it.
  • Binary pass/fail over Likert. A 1–5 or 1–10 scale is noisier to calibrate and harder to apply consistently; collapse to pass/fail.
  • Drift-suite MMLU-style scoring: prefer logprob over generate-and-extract — a tight token budget makes generate-and-extract parse-brittle for models that preamble, conflating format compliance with the knowledge being measured. Templates for all four grader shapes and this scoring note: references/grader-templates.md.

Judge Calibration Is a Prerequisite

Any bucket routed to an LLM-judge needs calibration before its verdicts count for anything beyond exploration — a hard prerequisite, not a nice-to-have. N/A when no bucket routes to a judge — an all-deterministic harness has nothing to calibrate; state that rather than leaving this section unaddressed.

  • Label ≥100 items, split train/dev/sealed test (report once, no re-touching after).
  • Report TPR and TNR, not one blended accuracy number — a judge can hit 90% by always saying "pass" on a skewed set.
  • Pin the judge to a fixed model snapshot and recalibrate on judge-model change, quarterly regardless.
  • The judge must come from a different model family than the model under test.
  • A judge that misses the agreed TPR/TNR bar ships advisory-only — flags for human review, never gates a promotion. Full protocol, bias correction, and recalibration checklist: references/judge-calibration.md.

The Baseline

Before Phase 1 (method selection) starts, run the full harness — goldens plus the capability-drift suite — against the unmodified base model. This is the number every later checkpoint gets compared against.

eval/baseline-<model>.json is the gate token. No baseline file, no comparison basis for checkpoint-promotion — a checkpoint that "looks better" against nothing measured isn't a finding.

Directory Contract

eval/
├── goldens.jsonl          # labeled traces + synthetic goldens, versioned
├── graders/                # one module per failure bucket
│   ├── schema_compliance.py
│   ├── exact_match.py
│   └── rubric_judge.py
├── drift-suite.yaml        # frozen benchmarks + 200-500 domain-adjacent items
└── baseline-<model>.json   # gate token: harness + drift suite vs the base model
runs/
└── <run-id>/
    └── results.json         # per-run harness output, one per checkpoint

eval/ persists across runs and lives outside runs/ — the fixed measuring stick, not a run artifact. runs/ is disposable; eval/ is not. Never let a run script write into eval/. Canonical location: every per-trace results.json — the Phase 0 baseline included — lives at runs/<run-id>/results.json, never under eval/runs/...; an instruction requesting the latter is wrong, not this contract.

Phase 0 Exit Checklist

Before finetuning-method-selection, confirm:

  1. ≥100 traces open-coded; 4–8 failure buckets (N/A floor for synthetic goldens on a single-failure- surface task — see the Building Goldens exception; bucket count then comes from post-baseline error analysis instead).
  2. eval/goldens.jsonl committed and versioned.
  3. One grader per bucket, deterministic first.
  4. Judges calibrated — TPR/TNR, snapshot pinned, different family (N/A when no bucket routes to an LLM-judge; state that explicitly).
  5. eval/drift-suite.yaml frozen.
  6. eval/baseline-<model>.json written.

Missing any of the six (or its stated N/A)? Not Phase 0 complete — /finetune checks the baseline file before a run.

Related Skills

General-purpose evaluation guidance (dashboards, A/B testing, non-fine-tuning harnesses) lives in the llm-application-dev plugin's llm-evaluation skill — this skill covers only the fine-tuning coupling: goldens that double as training data, and the baseline that gates a checkpoint.

  • finetuning-method-selection — routes here first.
  • dataset-curation — formats these traces into training rows.
  • trace-to-training-data — turns graded traces into training examples.
  • checkpoint-promotion — consumes baseline-<model>.json, re-runs this harness on each candidate checkpoint.

References

  • references/grader-templates.md — runnable grader examples per shape, plus a drift-suite.yaml example and MMLU logprob-scoring note.
  • references/judge-calibration.md — the calibration protocol, including the all- deterministic N/A path.

Add the canonical catalog link to the repository README so users can inspect current installs and available audits. The publishing guide covers the complete discovery path.

<a href="https://skillzs.dev/skills/wshobson/agents/eval-harness-first">View eval-harness-first on skillZs</a>