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A/B Test Statistical Analyzer

// Performs statistical analysis for A/B testing experiments

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stars:384
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updated:March 4, 2026
SKILL.mdreadonly
SKILL.md Frontmatter
nameA/B Test Statistical Analyzer
descriptionPerforms statistical analysis for A/B testing experiments
version1.0.0
categoryAnalytics
skillIdSK-DEA-014
allowed-toolsRead,Write,Edit,Glob,Grep,Bash

A/B Test Statistical Analyzer

Overview

Performs statistical analysis for A/B testing experiments. This skill provides rigorous statistical methods to determine experiment validity and significance.

Capabilities

  • Sample size calculation
  • Statistical significance testing
  • Bayesian analysis
  • Sequential testing
  • Multi-armed bandit analysis
  • Segment analysis
  • Novelty/primacy effect detection
  • SRM (Sample Ratio Mismatch) detection
  • Confidence interval calculation
  • Power analysis

Input Schema

{
  "experimentData": {
    "control": "object",
    "variants": ["object"]
  },
  "metrics": [{
    "name": "string",
    "type": "conversion|continuous|ratio"
  }],
  "analysisType": "frequentist|bayesian|sequential"
}

Output Schema

{
  "results": [{
    "metric": "string",
    "controlValue": "number",
    "variantValues": ["number"],
    "pValue": "number",
    "confidenceInterval": "object",
    "significant": "boolean"
  }],
  "srmCheck": "object",
  "recommendation": "string"
}

Target Processes

  • A/B Testing Pipeline
  • Feature Store Setup

Usage Guidelines

  1. Provide complete experiment data for control and variants
  2. Define metrics with appropriate types
  3. Select analysis methodology based on requirements
  4. Review SRM checks before interpreting results

Best Practices

  • Always check for sample ratio mismatch before analysis
  • Use appropriate statistical tests for metric types
  • Consider practical significance alongside statistical significance
  • Account for multiple comparison corrections
  • Document assumptions and limitations