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ClaudeWave
Skill292 estrellas del repoactualizado 2d ago

measure-experiment-results

measure-experiment-results documents the statistical outcomes, segment analysis, and business implications of completed A/B tests and experiments. Use this skill after an experiment reaches statistical significance or concludes early to communicate findings to stakeholders, support shipping or iteration decisions, and convert experimental evidence into organizational knowledge that improves future product decisions.

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git clone --depth 1 https://github.com/product-on-purpose/pm-skills /tmp/measure-experiment-results && cp -r /tmp/measure-experiment-results/skills/measure-experiment-results ~/.claude/skills/measure-experiment-results
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SKILL.md

<!-- PM-Skills | https://github.com/product-on-purpose/pm-skills | Apache 2.0 -->
# Experiment Results

An experiment results document captures what happened when you tested a hypothesis, including statistical outcomes, segment analysis, learnings, and clear recommendations. Good results documentation turns individual experiments into organizational knowledge that improves future decision-making.

## When to Use

- After an A/B test or experiment reaches statistical significance
- When an experiment is ended early (for any reason)
- To communicate findings to stakeholders who weren't involved
- During decision-making about whether to ship, iterate, or kill a feature
- To build a repository of learnings that inform future experiments

## When NOT to Use

- The experiment is not designed or run yet -> use `measure-experiment-design`
- The results demand a direction decision -> use `iterate-pivot-decision`; this skill reports the evidence, that one decides
- You want the transferable learning banked for the organization -> follow up with `iterate-lessons-log`
- Your data is survey responses, not a controlled experiment -> use `measure-survey-analysis`

## Instructions

When asked to document experiment results, follow these steps:

1. **Summarize the Experiment**
   Provide context: what was tested, when it ran, how much traffic it received. Link to the original experiment design document if one exists.

2. **Restate the Hypothesis**
   Remind readers what you believed would happen and why. This frames the results interpretation.

3. **Present Primary Results**
   Show the primary metric outcome clearly: what were the values for control and treatment? Include statistical significance (p-value), confidence intervals, and sample sizes. Be honest about whether results are conclusive.

4. **Analyze Secondary Metrics**
   Present guardrail metrics that ensure you didn't cause unintended harm. Note any secondary metrics that moved unexpectedly.both positive and negative.

5. **Segment the Data**
   Look for differential effects across user segments (platform, tenure, plan type, etc.). Sometimes overall results mask important segment-level insights.

6. **Extract Learnings**
   What did you learn beyond the numbers? Include surprising findings, questions raised, and implications for the product hypothesis. Negative results are valuable learnings.

7. **Make a Recommendation**
   Be clear: should we ship, iterate, or kill? Support the recommendation with the evidence. If the decision is nuanced, explain the trade-offs.

8. **Define Next Steps**
   Specify what happens now.engineering work to ship, follow-up experiments, metrics to continue monitoring, or documentation to update.

## Output Format

Use the template in `references/TEMPLATE.md` to structure the output. A complete readout fills every template section: Summary; Hypothesis Recap; Results; Segment Analysis; Visualization; Learnings; Recommendation; Next Steps; and Appendix.

## Quality Checklist

Before finalizing, verify:

- [ ] Statistical methods and significance are clearly stated
- [ ] Confidence intervals are included (not just p-values)
- [ ] Segment analysis checked for differential effects
- [ ] Secondary/guardrail metrics are reported
- [ ] Learnings go beyond just the numbers
- [ ] Recommendation is clear and actionable
- [ ] Negative or inconclusive results are reported honestly

## Examples

See `references/EXAMPLE.md` for a completed example.