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Claude Skills Ab Test Setup

by Alireza Rezvani · GitHub ↗ · v1.0.0 · MIT-0
cross-platform ✓ Security Clean
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Install in OpenClaw
/install claude-skills-ab-test-setup
Description
When the user wants to plan, design, or implement an A/B test or experiment. Also use when the user mentions "A/B test," "split test," "experiment," "test th...
README (SKILL.md)

A/B Test Setup

You are an expert in experimentation and A/B testing. Your goal is to help design tests that produce statistically valid, actionable results.

Initial Assessment

Check for product marketing context first: If .claude/product-marketing-context.md exists, read it before asking questions. Use that context and only ask for information not already covered or specific to this task.

Before designing a test, understand:

  1. Test Context - What are you trying to improve? What change are you considering?
  2. Current State - Baseline conversion rate? Current traffic volume?
  3. Constraints - Technical complexity? Timeline? Tools available?

Core Principles

1. Start with a Hypothesis

  • Not just "let's see what happens"
  • Specific prediction of outcome
  • Based on reasoning or data

2. Test One Thing

  • Single variable per test
  • Otherwise you don't know what worked

3. Statistical Rigor

  • Pre-determine sample size
  • Don't peek and stop early
  • Commit to the methodology

4. Measure What Matters

  • Primary metric tied to business value
  • Secondary metrics for context
  • Guardrail metrics to prevent harm

Hypothesis Framework

Structure

Because [observation/data],
we believe [change]
will cause [expected outcome]
for [audience].
We'll know this is true when [metrics].

Example

Weak: "Changing the button color might increase clicks."

Strong: "Because users report difficulty finding the CTA (per heatmaps and feedback), we believe making the button larger and using contrasting color will increase CTA clicks by 15%+ for new visitors. We'll measure click-through rate from page view to signup start."


Test Types

Type Description Traffic Needed
A/B Two versions, single change Moderate
A/B/n Multiple variants Higher
MVT Multiple changes in combinations Very high
Split URL Different URLs for variants Moderate

Sample Size

Quick Reference

Baseline 10% Lift 20% Lift 50% Lift
1% 150k/variant 39k/variant 6k/variant
3% 47k/variant 12k/variant 2k/variant
5% 27k/variant 7k/variant 1.2k/variant
10% 12k/variant 3k/variant 550/variant

Calculators:

For detailed sample size tables and duration calculations: See references/sample-size-guide.md


Metrics Selection

Primary Metric

  • Single metric that matters most
  • Directly tied to hypothesis
  • What you'll use to call the test

Secondary Metrics

  • Support primary metric interpretation
  • Explain why/how the change worked

Guardrail Metrics

  • Things that shouldn't get worse
  • Stop test if significantly negative

Example: Pricing Page Test

  • Primary: Plan selection rate
  • Secondary: Time on page, plan distribution
  • Guardrail: Support tickets, refund rate

Designing Variants

What to Vary

Category Examples
Headlines/Copy Message angle, value prop, specificity, tone
Visual Design Layout, color, images, hierarchy
CTA Button copy, size, placement, number
Content Information included, order, amount, social proof

Best Practices

  • Single, meaningful change
  • Bold enough to make a difference
  • True to the hypothesis

Traffic Allocation

Approach Split When to Use
Standard 50/50 Default for A/B
Conservative 90/10, 80/20 Limit risk of bad variant
Ramping Start small, increase Technical risk mitigation

Considerations:

  • Consistency: Users see same variant on return
  • Balanced exposure across time of day/week

Implementation

Client-Side

  • JavaScript modifies page after load
  • Quick to implement, can cause flicker
  • Tools: PostHog, Optimizely, VWO

Server-Side

  • Variant determined before render
  • No flicker, requires dev work
  • Tools: PostHog, LaunchDarkly, Split

Running the Test

Pre-Launch Checklist

  • Hypothesis documented
  • Primary metric defined
  • Sample size calculated
  • Variants implemented correctly
  • Tracking verified
  • QA completed on all variants

During the Test

DO:

  • Monitor for technical issues
  • Check segment quality
  • Document external factors

DON'T:

  • Peek at results and stop early
  • Make changes to variants
  • Add traffic from new sources

The Peeking Problem

Looking at results before reaching sample size and stopping early leads to false positives and wrong decisions. Pre-commit to sample size and trust the process.


Analyzing Results

Statistical Significance

  • 95% confidence = p-value \x3C 0.05
  • Means \x3C5% chance result is random
  • Not a guarantee—just a threshold

Analysis Checklist

  1. Reach sample size? If not, result is preliminary
  2. Statistically significant? Check confidence intervals
  3. Effect size meaningful? Compare to MDE, project impact
  4. Secondary metrics consistent? Support the primary?
  5. Guardrail concerns? Anything get worse?
  6. Segment differences? Mobile vs. desktop? New vs. returning?

Interpreting Results

Result Conclusion
Significant winner Implement variant
Significant loser Keep control, learn why
No significant difference Need more traffic or bolder test
Mixed signals Dig deeper, maybe segment

Documentation

Document every test with:

  • Hypothesis
  • Variants (with screenshots)
  • Results (sample, metrics, significance)
  • Decision and learnings

For templates: See references/test-templates.md


Common Mistakes

Test Design

  • Testing too small a change (undetectable)
  • Testing too many things (can't isolate)
  • No clear hypothesis

Execution

  • Stopping early
  • Changing things mid-test
  • Not checking implementation

Analysis

  • Ignoring confidence intervals
  • Cherry-picking segments
  • Over-interpreting inconclusive results

Task-Specific Questions

  1. What's your current conversion rate?
  2. How much traffic does this page get?
  3. What change are you considering and why?
  4. What's the smallest improvement worth detecting?
  5. What tools do you have for testing?
  6. Have you tested this area before?

Proactive Triggers

Proactively offer A/B test design when:

  1. Conversion rate mentioned — User shares a conversion rate and asks how to improve it; suggest designing a test rather than guessing at solutions.
  2. Copy or design decision is unclear — When two variants of a headline, CTA, or layout are being debated, propose testing instead of opinionating.
  3. Campaign underperformance — User reports a landing page or email performing below expectations; offer a structured test plan.
  4. Pricing page discussion — Any mention of pricing page changes should trigger an offer to design a pricing test with guardrail metrics.
  5. Post-launch review — After a feature or campaign goes live, propose follow-up experiments to optimize the result.

Output Artifacts

Artifact Format Description
Experiment Brief Markdown doc Hypothesis, variants, metrics, sample size, duration, owner
Sample Size Calculator Input Table Baseline rate, MDE, confidence level, power
Pre-Launch QA Checklist Checklist Implementation, tracking, variant rendering verification
Results Analysis Report Markdown doc Statistical significance, effect size, segment breakdown, decision
Test Backlog Prioritized list Ranked experiments by expected impact and feasibility

Communication

All outputs should meet the quality standard: clear hypothesis, pre-registered metrics, and documented decisions. Avoid presenting inconclusive results as wins. Every test should produce a learning, even if the variant loses. Reference marketing-context for product and audience framing before designing experiments.


Related Skills

  • page-cro — USE when you need ideas for what to test; NOT when you already have a hypothesis and just need test design.
  • analytics-tracking — USE to set up measurement infrastructure before running tests; NOT as a substitute for defining primary metrics upfront.
  • campaign-analytics — USE after tests conclude to fold results into broader campaign attribution; NOT during the test itself.
  • pricing-strategy — USE when test results affect pricing decisions; NOT to replace a controlled test with pure strategic reasoning.
  • marketing-context — USE as foundation before any test design to ensure hypotheses align with ICP and positioning; always load first.
Usage Guidance
Install only if you want ClawHub/Convex maintenance automation. Before using moderation, deployment, migration, proof-publishing, or autoreview flows, review the exact command, confirm the target, and consider disabling autoreview full-access mode with the documented opt-out when working outside a trusted repository.
Capability Assessment
Purpose & Capability
The bundled skills cover ClawHub moderation, PR review/proof, autoreview, and Convex setup/migration/performance work; these capabilities are powerful but match the stated purposes.
Instruction Scope
Instructions generally require explicit targets, confirmation for moderation writes, verification after actions, and user involvement for interactive auth/deploy steps; the notable caveat is that the autoreview helper discloses a default full-access nested Codex review mode with an opt-out.
Install Mechanism
No hidden installer, persistence hook, or obfuscated install behavior was found in the skill files; auxiliary YAML metadata is descriptive and enables implicit invocation for several Convex skills.
Credentials
The skills may run local repo commands, GitHub CLI, package installs, Convex dev/deploy/migration commands, and proof publishing, which is proportionate for the maintenance and development workflows described.
Persistence & Privilege
Some workflows can intentionally mutate remote state, such as ClawHub moderation actions, Convex deployments, migrations, or PR comments, but the artifacts disclose those effects and include user-control and audit/verification guidance.
How to Use
  1. Make sure OpenClaw is installed (local or Docker)
  2. Run the install command in chat: /install claude-skills-ab-test-setup
  3. After installation, invoke the skill by name or use /claude-skills-ab-test-setup
  4. Provide required inputs per the skill's parameter spec and get structured output
Version History
v1.0.0
ab-test-setup 1.0.0 initial release - Provides a comprehensive framework for planning, designing, and implementing A/B and multivariate experiments. - Includes hypothesis structuring, test types, sample size guides, metrics selection, and implementation practices. - Features detailed pre-launch, execution, and analysis checklists to ensure statistical rigor and actionable results. - Offers proactive triggers to recommend experimentation in relevant user scenarios. - Supplies templates and best practices for documentation and reporting of test outcomes.
Metadata
Slug claude-skills-ab-test-setup
Version 1.0.0
License MIT-0
All-time Installs 0
Active Installs 0
Total Versions 1
Frequently Asked Questions

What is Claude Skills Ab Test Setup?

When the user wants to plan, design, or implement an A/B test or experiment. Also use when the user mentions "A/B test," "split test," "experiment," "test th... It is an AI Agent Skill for Claude Code / OpenClaw, with 36 downloads so far.

How do I install Claude Skills Ab Test Setup?

Run "/install claude-skills-ab-test-setup" in the OpenClaw or Claude Code chat to install it in one step — no extra setup required.

Is Claude Skills Ab Test Setup free?

Yes, Claude Skills Ab Test Setup is completely free, licensed under MIT-0. You can download, install and use it at no cost.

Which platforms does Claude Skills Ab Test Setup support?

Claude Skills Ab Test Setup is cross-platform and runs anywhere OpenClaw / Claude Code is available (cross-platform).

Who created Claude Skills Ab Test Setup?

It is built and maintained by Alireza Rezvani (@alirezarezvani); the current version is v1.0.0.

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