data-storytelling
This skill transforms raw data into compelling narratives using visualization, context, and persuasive structure. It's ideal for presenting analytics to stakeholders, creating data reports, or building executive presentations, enabling clear communication of insights to non-technical audiences and driving informed decisions.
npx skills add https://github.com/wshobson/agents --skill data-storytellingBefore / After Comparison
1 组Faced with raw data and complex charts, non-technical audiences often struggle to quickly grasp core insights, leading to slow or misguided decisions. Data reports frequently become mere data dumps, lacking persuasive power.
By applying data storytelling techniques, complex data is transformed into engaging narratives, clearly presenting key insights. Audiences quickly understand and trust data conclusions, accelerating decision-making and boosting report impact.
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 |
Detailed patterns and worked examples
Detailed pattern documentation lives in references/details.md. Read that file when the navigation tier above is insufficient.
Best Practices
Do's
- Start with the "so what" - Lead with insight
- Use the rule of three - Three points, three comparisons
- Show, don't tell - Let data speak
- Make it personal - Connect to audience goals
- End with action - Clear next steps
Don'ts
- Don't data dump - Curate ruthlessly
- Don't bury the insight - Front-load key findings
- Don't use jargon - Match audience vocabulary
- Don't show methodology first - Context, then method
- Don't forget the narrative - Numbers need meaning
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