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ClaudeWave
Skill693 estrellas del repoactualizado 12d ago

user-research

This skill guides users through planning, conducting, and analyzing user research studies using established methods like interviews, usability testing, surveys, and card sorting. Use it when designing research studies, creating interview guides, synthesizing findings into actionable insights, or determining which research method best answers specific questions about user needs and behaviors.

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git clone --depth 1 https://github.com/openyak/openyak /tmp/user-research && cp -r /tmp/user-research/backend/app/data/plugins/design/skills/user-research ~/.claude/skills/user-research
Después abre una sesión nueva de Claude Code; el skill carga automáticamente.

SKILL.md

# User Research

Help plan, execute, and synthesize user research studies.

## Research Methods

| Method | Best For | Sample Size | Time |
|--------|----------|-------------|------|
| User interviews | Deep understanding of needs and motivations | 5-8 | 2-4 weeks |
| Usability testing | Evaluating a specific design or flow | 5-8 | 1-2 weeks |
| Surveys | Quantifying attitudes and preferences | 100+ | 1-2 weeks |
| Card sorting | Information architecture decisions | 15-30 | 1 week |
| Diary studies | Understanding behavior over time | 10-15 | 2-8 weeks |
| A/B testing | Comparing specific design choices | Statistical significance | 1-4 weeks |

## Interview Guide Structure

1. **Warm-up** (5 min): Build rapport, explain the session
2. **Context** (10 min): Understand their current workflow
3. **Deep dive** (20 min): Explore the specific topic
4. **Reaction** (10 min): Show concepts or prototypes
5. **Wrap-up** (5 min): Anything we missed? Thank them.

## Analysis Framework

- **Affinity mapping**: Group observations into themes
- **Impact/effort matrix**: Prioritize findings
- **Journey mapping**: Visualize the user experience over time
- **Jobs to be done**: Understand what users are hiring your product to do

## Deliverables

- Research plan (objectives, methods, timeline, participants)
- Interview guide (questions, probes, activities)
- Synthesis report (themes, insights, recommendations)
- Highlight reel (key quotes and observations)
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