Optimization.Experiment_Analysis
by edwardmonteiro
Audience for the analysis (e.g., execs, squad).
Skill Details
Repository Files
1 file in this skill directory
name: optimization.experiment_analysis phase: optimization roles:
- Data Analyst
- Product Manager
description: Analyze completed experiments and craft executive-ready summaries with insights and recommendations.
variables:
required:
- name: experiment_name description: Identifier for the experiment.
- name: primary_metric description: Primary metric evaluated. optional:
- name: secondary_metrics description: Additional metrics tracked.
- name: audience description: Audience for the analysis (e.g., execs, squad). outputs:
- Results summary with statistical interpretation.
- Customer and business impact assessment.
- Recommendations and decision rationale.
Purpose
Accelerate experiment readouts by combining statistical rigor with storytelling tailored to executive stakeholders.
Pre-run Checklist
- ✅ Export experiment results (variant metrics, significance, sample sizes).
- ✅ Gather qualitative feedback or session notes if applicable.
- ✅ Align on rollout decisions pending the analysis.
Invocation Guidance
codex run --skill optimization.experiment_analysis \
--input data/{{experiment_name}}-results.csv \
--vars "experiment_name={{experiment_name}}" \
"primary_metric={{primary_metric}}" \
"secondary_metrics={{secondary_metrics}}" \
"audience={{audience}}"
Recommended Input Attachments
- Experiment tracking sheet or stats engine export.
- Screenshots of variants.
- Customer feedback related to the experiment.
Claude Workflow Outline
- Summarize experiment purpose, setup, and success criteria.
- Present results for primary and secondary metrics with statistical significance.
- Interpret findings, including customer behavior shifts and operational considerations.
- Recommend decisions (ship, iterate, stop) with supporting rationale.
- Highlight next steps, follow-up analyses, and knowledge base updates.
Output Template
# Experiment Analysis — {{experiment_name}}
## Overview
- Objective:
- Dates:
- Audience:
## Results Summary
| Metric | Control | Variant | Δ | Significance | Notes |
| --- | --- | --- | --- | --- | --- |
## Interpretation
- Customer Impact:
- Business Impact:
- Operational Considerations:
## Recommendation
- Decision:
- Rationale:
- Dependencies:
## Next Steps
- Action:
- Owner:
- Timeline:
Follow-up Actions
- Present findings in the growth or optimization forum.
- Update experiment backlog with learnings and links to artifacts.
- Coordinate rollout or rollback actions per recommendation.
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