skills/user-research-synthesis/SKILL.md
Analyze and synthesize user research findings into structured, actionable insights. Use when given user research data, interview transcripts, survey results, or user feedback that needs to be analyzed and summarised. Produces a themed synthesis with prevalence data, supporting quotes, pain points analysis, feature request prioritisation, and recommended next steps.
npx skillsauth add mohitagw15856/pm-claude-skills user-research-synthesisInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
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This skill helps analyze user research data and transform it into actionable insights following a structured methodology.
Ask the user for these if not provided:
Organize findings into themes using this structure:
Theme Name
Aim for 4-8 major themes per research effort.
For each identified pain point:
Categorize requests:
For each request:
Document actual workflows observed:
If research reveals distinct user segments:
If users mentioned competitors or alternatives:
Prioritized recommendations based on insights:
High Priority
Medium Priority
Low Priority / Future Consideration
Research gaps identified:
When synthesizing interviews:
When analyzing quotes:
When identifying themes:
✅ Good Synthesis:
❌ Poor Synthesis:
**Theme: Information Overload During Onboarding**
**Description**: Users consistently expressed feeling overwhelmed by the amount of information presented during initial setup, leading to incomplete onboarding and delayed time-to-value.
**Prevalence**: 9 out of 12 participants mentioned this issue unprompted
**Supporting Quotes**:
- "I just wanted to get started, but it felt like I needed to read a manual first" [P3, Marketing Manager]
- "By the third screen of instructions, I started clicking 'Next' without reading" [P7, Sales Rep]
- "I wish there was a 'quick start' option for people like me who just want to try it" [P11, Product Designer]
**Implication**: Our current onboarding flow prioritizes completeness over engagement. We should consider a progressive disclosure approach where users can start using the product quickly and learn advanced features contextually.
**Recommended Action**:
- Design a "Quick Start" path that gets users to first value in <3 minutes
- Move advanced configuration to contextual help within the app
- Test with 5-10 new users before full rollout
- Expected impact: +20-30% activation rate improvement
When synthesizing research, use this structure:
# User Research Synthesis: [Research Topic]
## Research Overview
- **Date**: [Date range]
- **Methodology**: [Interview/Survey/Testing]
- **Participants**: [Number] [User types]
- **Research Questions**:
1. [Question 1]
2. [Question 2]
3. [Question 3]
## Executive Summary
[2-3 sentence overview of key findings and implications]
## Key Themes
### Theme 1: [Theme Name]
[Full theme documentation as shown in example above]
### Theme 2: [Theme Name]
[Full theme documentation]
[Continue with 4-8 themes]
## Pain Points Summary
| Pain Point | Severity | Frequency | Current Workaround |
|------------|----------|-----------|-------------------|
| [Pain 1] | High | 10/12 users | [How they cope] |
| [Pain 2] | Medium | 7/12 users | [How they cope] |
## Feature Requests
### Must-Have
1. **[Request]** - Mentioned by [X] participants
- Quote: "[Representative quote]"
- Underlying need: [Why they want this]
### High Value
[Similar structure]
### Nice-to-Have
[Similar structure]
## Recommendations
### High Priority (0-3 months)
1. **[Recommendation]**
- Supporting evidence: [Data from research]
- Expected impact: [What will improve]
- Effort estimate: [Rough sizing]
### Medium Priority (3-6 months)
[Similar structure]
### Future Consideration (6+ months)
[Similar structure]
## Open Questions
1. [Question requiring more research]
2. [Uncertainty to validate]
3. [Follow-up study needed]
## Appendix
- Interview guide used
- Full participant demographics
- Raw notes/transcripts (link)
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