From pm-advanced
Designs statistically rigorous A/B tests and interprets experiment results with ship/iterate/kill recommendations. Calculates sample size, run time, and flags design risks.
How this skill is triggered — by the user, by Claude, or both
Slash command
/pm-advanced:experiment-designerThe summary Claude sees in its skill listing — used to decide when to auto-load this skill
Produce rigorous experiment designs from product hypotheses, and interpret results with statistical and practical significance — so you can defend every decision to a sceptical engineering lead or data scientist.
Produce rigorous experiment designs from product hypotheses, and interpret results with statistical and practical significance — so you can defend every decision to a sceptical engineering lead or data scientist.
Ask the user for these if not provided: For experiment design:
For results interpretation:
[Design or Results header based on phase]
Hypothesis: "If we [change], we expect [metric] to [move by X%] because [reason]"
Primary metric: [One metric only] Guardrail metrics: [2-3 max] Required sample size: [n per variant] Estimated run time: [days] Pre-defined success threshold: [specific number] Design risk flags: [any concerns]
Results (Phase 2 only): Statistical significance: [p-value and conclusion] Practical significance: [lift size vs. business threshold] Recommendation: Ship / Iterate / Kill / Follow-up — [rationale]
npx claudepluginhub mohitagw15856/pm-claude-skills --plugin pm-advancedDesigns statistically rigorous A/B tests with hypothesis, sample size, duration, and results interpretation guide. Activates on experiment design or test setup requests.
Designs controlled experiments (A/B, multivariate, quasi) with hypothesis, success metrics, sample size, and statistical power. For validating features via /design-experiment or phrases like 'design experiment'.
Designs experiments (A/B tests, multivariate, holdouts) with hypothesis writing, sample size, duration, segment analysis, and interpretation. Use before running or when interpreting an experiment.