user-research-analysis

Analyze user research data to uncover insights, identify patterns, and inform design decisions. Synthesize qualitative and quantitative research into actionable recommendations.

About user-research-analysis

user-research-analysis is a Claude AI skill developed by aj-geddes. Analyze user research data to uncover insights, identify patterns, and inform design decisions. Synthesize qualitative and quantitative research into actionable recommendations. This powerful Claude Code plugin helps developers automate workflows and enhance productivity with intelligent AI assistance.

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2025-11-08

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nameuser-research-analysis
descriptionAnalyze user research data to uncover insights, identify patterns, and inform design decisions. Synthesize qualitative and quantitative research into actionable recommendations.

User Research Analysis

Overview

Effective research analysis transforms raw data into actionable insights that guide product development and design.

When to Use

  • Synthesis of user interviews and surveys
  • Identifying patterns and themes
  • Validating design assumptions
  • Prioritizing user needs
  • Communicating insights to stakeholders
  • Informing design decisions

Instructions

1. Research Synthesis Methods

# Analyze qualitative and quantitative data class ResearchAnalysis: def synthesize_interviews(self, interviews): """Extract themes and insights from interviews""" return { 'interviews_analyzed': len(interviews), 'methodology': 'Thematic coding and affinity mapping', 'themes': self.identify_themes(interviews), 'quotes': self.extract_key_quotes(interviews), 'pain_points': self.identify_pain_points(interviews), 'opportunities': self.identify_opportunities(interviews) } def identify_themes(self, interviews): """Find recurring patterns across interviews""" themes = {} theme_frequency = {} for interview in interviews: for statement in interview['statements']: theme = self.categorize_statement(statement) theme_frequency[theme] = theme_frequency.get(theme, 0) + 1 # Sort by frequency return sorted(theme_frequency.items(), key=lambda x: x[1], reverse=True) def analyze_survey_data(self, survey_responses): """Quantify and analyze survey results""" return { 'response_rate': self.calculate_response_rate(survey_responses), 'sentiment': self.analyze_sentiment(survey_responses), 'key_findings': self.find_key_findings(survey_responses), 'segment_analysis': self.segment_responses(survey_responses), 'statistical_significance': self.calculate_significance(survey_responses) } def triangulate_findings(self, interviews, surveys, analytics): """Cross-check findings across sources""" return { 'confirmed_insights': self.compare_sources([interviews, surveys, analytics]), 'conflicting_data': self.identify_conflicts([interviews, surveys, analytics]), 'confidence_level': self.assess_confidence(), 'recommendations': self.generate_recommendations() }

2. Affinity Mapping

Affinity Mapping Process: Step 1: Data Preparation - Print or write user quotes on cards (one per card) - Include source (interview name, survey #) - Include relevant demographic info Step 2: Grouping - Place cards on wall or digital board - Group related insights together - Allow overlapping if relevant - Move cards as relationships become clear Step 3: Theme Identification - Name each grouping with theme - Move up one level of abstraction - Create meta-themes grouping clusters Step 4: Synthesis - Describe each theme in 1-2 sentences - Capture key insight - Note supporting evidence Example Output: Theme: Discovery & Onboarding Sub-themes: - Learning curve too steep - Documentation unclear - Need guided onboarding Quote: "I didn't know where to start, wish there was a tutorial" Frequency: 8 of 12 users mentioned Theme: Performance Issues Sub-themes: - App is slow - Loading times unacceptable - Mobile particularly bad Quote: "I just switched to competitor, too slow" Frequency: 6 of 12 users mentioned

3. Insight Documentation

// Document and communicate insights class InsightDocumentation { createInsightStatement(insight) { return { title: insight.name, description: insight.detailed_description, evidence: { quotes: insight.supporting_quotes, frequency: `${insight.frequency_count} of ${insight.total_participants} participants`, data_sources: ['Interviews', 'Surveys', 'Analytics'] }, implications: { for_design: insight.design_implications, for_product: insight.product_implications, for_strategy: insight.strategy_implications }, recommended_actions: [ { action: 'Redesign onboarding flow', priority: 'High', owner: 'Design team', timeline: '2 sprints' } ], confidence: 'High (8/12 users mentioned, consistent pattern)' }; } createResearchReport(research_data) { return { title: 'User Research Synthesis Report', executive_summary: 'Key findings in 2-3 sentences', methodology: 'How research was conducted', key_insights: [ 'Insight 1 with supporting evidence', 'Insight 2 with supporting evidence', 'Insight 3 with supporting evidence' ], personas_informed: ['Persona 1', 'Persona 2'], recommendations: ['Design recommendation 1', 'Product recommendation 2'], appendix: ['Raw data', 'Quotes', 'Demographic breakdown'] }; } presentInsights(insights) { return { format: 'Presentation + Report', audience: 'Product team, stakeholders', duration: '30 minutes', structure: [ 'Research overview (5 min)', 'Key findings (15 min)', 'Supporting evidence (5 min)', 'Recommendations (5 min)' ], handout: 'One-page insight summary' }; } }

4. Research Validation Matrix

Validation Matrix: Research Finding: "Onboarding is too complex" Supporting Evidence: Source 1: Interviews - 8 of 12 users mentioned difficulty - Average time to first value: 45 min vs target 10 min - 3 users abandoned before completing setup Source 2: Analytics - Drop-off at step 3 of onboarding: 35% - Bounce rate on onboarding page: 28% vs site avg 12% Source 3: Support Tickets - 15% of support tickets about onboarding - Most common: "How do I get started?" Confidence Level: HIGH (consistent across 3 sources) Action: Prioritize onboarding redesign in next quarter

Best Practices

✅ DO

  • Use multiple research methods
  • Triangulate findings across sources
  • Document quotes and evidence
  • Look for patterns and frequency
  • Separate findings from interpretation
  • Validate findings with users
  • Share insights across team
  • Connect to design decisions
  • Document methodology
  • Iterate research approach based on learnings

❌ DON'T

  • Over-interpret small samples
  • Ignore conflicting data
  • Base decisions on single data point
  • Skip documentation
  • Cherry-pick quotes that support assumptions
  • Present without supporting evidence
  • Forget to note limitations
  • Analyze without involving participants
  • Create insights without actionable recommendations
  • Let research sit unused

Research Analysis Tips

  • Use affinity mapping for qualitative synthesis
  • Quantify qualitative findings (frequency counts)
  • Create insight posters for sharing
  • Use direct quotes to support findings
  • Cross-check insights across data sources
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