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phuryn/pm-skills1.7k installs

ab-test-analysis

Analyze A/B test results with statistical significance, sample size validation, confidence intervals, and ship/extend/stop recommendations. Use when evaluating experiment results, checking if a test reached significance, interpreting split test data, or deciding whether to ship a variant.

How do I install this agent skill?

npx skills add https://github.com/phuryn/pm-skills --skill ab-test-analysis
view source ↗

Is this agent skill safe to install?

  • Gen Agent Trust Hubpass

    This skill is designed for A/B test analysis and includes instructions to generate and execute Python scripts for statistical calculations. While this is necessary for its primary function, it introduces a potential risk if malicious instructions are embedded in the data files it processes.

  • Socketpass

    No alerts

  • Snykpass

    Risk: LOW · No issues

  • Runlayerpass

    1 file scanned · No issues

  • ZeroLeakspass

    Score: 93/100 · 2 sections analyzed

What does this agent skill do?

A/B Test Analysis

Evaluate A/B test results with statistical rigor and translate findings into clear product decisions.

Context

You are analyzing A/B test results for $ARGUMENTS.

If the user provides data files (CSV, Excel, or analytics exports), read and analyze them directly. Generate Python scripts for statistical calculations when needed.

Instructions

  1. Understand the experiment:

    • What was the hypothesis?
    • What was changed (the variant)?
    • What is the primary metric? Any guardrail metrics?
    • How long did the test run?
    • What is the traffic split?
  2. Validate the test setup:

    • Sample size: Is the sample large enough for the expected effect size?
      • Use the formula: n = (Z²α/2 × 2 × p × (1-p)) / MDE²
      • Flag if the test is underpowered (<80% power)
    • Duration: Did the test run for at least 1-2 full business cycles?
    • Randomization: Any evidence of sample ratio mismatch (SRM)?
    • Novelty/primacy effects: Was there enough time to wash out initial behavior changes?
  3. Calculate statistical significance:

    • Conversion rate for control and variant
    • Relative lift: (variant - control) / control × 100
    • p-value: Using a two-tailed z-test or chi-squared test
    • Confidence interval: 95% CI for the difference
    • Statistical significance: Is p < 0.05?
    • Practical significance: Is the lift meaningful for the business?

    If the user provides raw data, generate and run a Python script to calculate these.

  4. Check guardrail metrics:

    • Did any guardrail metrics (revenue, engagement, page load time) degrade?
    • A winning primary metric with degraded guardrails may not be a true win
  5. Interpret results:

    OutcomeRecommendation
    Significant positive lift, no guardrail issuesShip it — roll out to 100%
    Significant positive lift, guardrail concernsInvestigate — understand trade-offs before shipping
    Not significant, positive trendExtend the test — need more data or larger effect
    Not significant, flatStop the test — no meaningful difference detected
    Significant negative liftDon't ship — revert to control, analyze why
  6. Provide the analysis summary:

    ## A/B Test Results: [Test Name]
    
    **Hypothesis**: [What we expected]
    **Duration**: [X days] | **Sample**: [N control / M variant]
    
    | Metric | Control | Variant | Lift | p-value | Significant? |
    |---|---|---|---|---|---|
    | [Primary] | X% | Y% | +Z% | 0.0X | Yes/No |
    | [Guardrail] | ... | ... | ... | ... | ... |
    
    **Recommendation**: [Ship / Extend / Stop / Investigate]
    **Reasoning**: [Why]
    **Next steps**: [What to do]
    

Think step by step. Save as markdown. Generate Python scripts for calculations if raw data is provided.


Further Reading

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/phuryn/pm-skills/ab-test-analysis">View ab-test-analysis on skillZs</a>