Install
openclaw skills install @mohitagw15856/ab-test-readoutAnalyse a finished A/B test and write the readout — the result, whether it's statistically and practically significant, what it means, and the ship/no-ship call. Use when asked to analyse experiment results, write an A/B test readout, interpret test data, or decide whether to ship a variant. Produces a clear verdict with the lift and confidence, segment cuts, the risks (peeking, novelty, sample), and a recommendation. Distinct from planning a test — this reads results.
openclaw skills install @mohitagw15856/ab-test-readoutThe hard part of an experiment is the readout: not "B won" but "is this real, is it big enough to matter, and should we ship?" This skill turns results into an honest decision — and flags the ways A/B results lie.
Given results (even partial), write the full readout anyway. If significance isn't provided, reason about it from the numbers and flag what's needed to confirm. Mark assumed figures. Never declare a winner without addressing significance and sample.
Ask for (if not already provided):
Ship / Don't ship / Inconclusive — keep running — with the headline number.
| Metric | Control | Variant | Relative lift | Significant? |
|---|---|---|---|---|
| Primary | p / CI | |||
| Guardrail(s) |
State statistical significance (p-value / confidence interval) and practical significance (is the lift big enough to matter given the cost?).
Address the ways A/B tests mislead:
Where the effect is strong vs flat vs negative (new vs returning, platform, geography).
Ship / iterate / re-run, plus what to monitor post-launch or what the follow-up test should isolate.