C
content-experimentation-best-practices
by @sanity-iov1.0.0
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Content A/B testing and experimentation workflows
A/B TestingContent ExperimentationConversion Rate Optimization (CRO)Marketing AnalyticsHypothesis TestingGitHub
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npx skills add sanity-io/agent-toolkit --skill content-experimentation-best-practicescompare_arrows
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name: content-experimentation-best-practices description: Content experimentation and A/B testing guidance covering experiment design, hypotheses, metrics, sample size, statistical foundations, CMS-managed variants, and common analysis pitfalls. Use this skill when planning experiments, setting up variants, choosing success metrics, interpreting statistical results, or building experimentation workflows in a CMS or frontend stack.
Content Experimentation Best Practices
Principles and patterns for running effective content experiments to improve conversion rates, engagement, and user experience.
When to Apply
Reference these guidelines when:
- Setting up A/B or multivariate testing infrastructure
- Designing experiments for content changes
- Analyzing and interpreting test results
- Building CMS integrations for experimentation
- Deciding what to test and how
Core Concepts
A/B Testing
Comparing two variants (A vs B) to determine which performs better.
Multivariate Testing
Testing multiple variables simultaneously to find optimal combinations.
Statistical Significance
The confidence level that results aren't due to random chance.
Experimentation Culture
Making decisions based on data rather than opinions (HiPPO avoidance).
Resources
Start with the resource that matches the current problem, such as design, statistics, CMS integration, or pitfalls. See resources/ for detailed guidance:
resources/experiment-design.md— Hypothesis framework, metrics, sample size, and what to testresources/statistical-foundations.md— p-values, confidence intervals, power analysis, Bayesian methodsresources/cms-integration.md— CMS-managed variants, field-level variants, external platformsresources/common-pitfalls.md— 17 common mistakes across statistics, design, execution, and interpretation
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版本1.0.0
更新日期2026年3月16日
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🔧Claude Code
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创建2026年3月16日
最后更新2026年3月16日