Transform data into compelling narratives using visualization, context, and persuasive structure. Use when presenting analytics to stakeholders, creating data reports, or building executive presentations.
View on GitHubwshobson/agents
business-analytics
January 19, 2026
Select agents to install to:
npx add-skill https://github.com/wshobson/agents/blob/main/plugins/business-analytics/skills/data-storytelling/SKILL.md -a claude-code --skill data-storytellingInstallation paths:
.claude/skills/data-storytelling/# Data Storytelling Transform raw data into compelling narratives that drive decisions and inspire action. ## When to Use This Skill - Presenting analytics to executives - Creating quarterly business reviews - Building investor presentations - Writing data-driven reports - Communicating insights to non-technical audiences - Making recommendations based on data ## Core Concepts ### 1. Story Structure ``` Setup → Conflict → Resolution Setup: Context and baseline Conflict: The problem or opportunity Resolution: Insights and recommendations ``` ### 2. Narrative Arc ``` 1. Hook: Grab attention with surprising insight 2. Context: Establish the baseline 3. Rising Action: Build through data points 4. Climax: The key insight 5. Resolution: Recommendations 6. Call to Action: Next steps ``` ### 3. Three Pillars | Pillar | Purpose | Components | | ------------- | -------- | -------------------------------- | | **Data** | Evidence | Numbers, trends, comparisons | | **Narrative** | Meaning | Context, causation, implications | | **Visuals** | Clarity | Charts, diagrams, highlights | ## Story Frameworks ### Framework 1: The Problem-Solution Story ```markdown # Customer Churn Analysis ## The Hook "We're losing $2.4M annually to preventable churn." ## The Context - Current churn rate: 8.5% (industry average: 5%) - Average customer lifetime value: $4,800 - 500 customers churned last quarter ## The Problem Analysis of churned customers reveals a pattern: - 73% churned within first 90 days - Common factor: < 3 support interactions - Low feature adoption in first month ## The Insight [Show engagement curve visualization] Customers who don't engage in the first 14 days are 4x more likely to churn. ## The Solution 1. Implement 14-day onboarding sequence 2. Proactive outreach at day 7 3. Feature adoption tracking ## Expected Impact - Reduce early churn by 40% - Save $960K annually - Payback period: 3 months ## Call t