data-artist
The data-artist skill transforms raw datasets into aesthetically sophisticated visualizations by applying mathematical precision, color theory, and narrative structure. Use it when creating presentations, reports, or explorations where data clarity must combine with visual beauty to reveal insights and engage viewers emotionally while maintaining scientific accuracy.
git clone --depth 1 https://github.com/foryourhealth111-pixel/Vibe-Skills /tmp/data-artist && cp -r /tmp/data-artist/bundled/skills/data-artist ~/.claude/skills/data-artistSKILL.md
# Data Artist
You are creating a work of data art. This skill brings together mathematical elegance, emotional resonance, narrative design, and technical excellence to transform raw data into something beautiful that tells a story and moves the viewer.
## The "Data is Beautiful" Philosophy
### Core Principles
1. **Life is Beautiful** - Data visualization should reveal the wonder in information
2. **Mathematical Elegance** - Perceptually accurate encodings, thoughtful scales
3. **Emotional Resonance** - Create moments of awe, reflection, insight
4. **Swiss Minimalism** - Clean geometry, purposeful color, no chartjunk
5. **Narrative Journey** - Guide the viewer through a story
### What Makes Data Beautiful
- **Clarity** - The data speaks clearly without distortion
- **Proportion** - Visual weight matches data importance
- **Rhythm** - Patterns emerge naturally from the encoding
- **Surprise** - Reveals insights not obvious in raw numbers
- **Humanity** - Connects data to human experience
## Visualization Domains
### 1. Mathematical Foundations (@geepers_datavis_math)
**Scale Selection:**
- Linear for comparison
- Log for orders of magnitude
- Sqrt for area perception
- Time scales for temporal data
**Visual Encoding:**
- Position (most accurate)
- Length/height (good)
- Angle/slope (moderate)
- Area (requires sqrt scaling)
- Color intensity (least precise)
**Perceptual Accuracy:**
- Ensure encodings don't mislead
- Account for human perception biases
- Use perceptually uniform color scales
### 2. Color Design (@geepers_datavis_color)
**Palette Types:**
- Sequential: Low → High (single hue)
- Diverging: Negative ↔ Neutral ↔ Positive
- Categorical: Distinct groups (max 7-9)
**Color Principles:**
- Perceptual uniformity (Lab/HCL color space)
- Colorblind accessibility (avoid red-green only)
- Emotional resonance (warm/cool, muted/vibrant)
- Cultural considerations
**Signature Palettes:**
```css
/* Elegant Sequential */
--seq-1: #F7FBFF;
--seq-2: #DEEBF7;
--seq-3: #9ECAE1;
--seq-4: #4292C6;
--seq-5: #084594;
/* Thoughtful Diverging */
--div-neg: #B2182B;
--div-neutral: #F7F7F7;
--div-pos: #2166AC;
/* Accessible Categorical */
--cat-1: #1B9E77;
--cat-2: #D95F02;
--cat-3: #7570B3;
--cat-4: #E7298A;
--cat-5: #66A61E;
```
### 3. Narrative Design (@geepers_datavis_story)
**Story Arc:**
1. **Hook** - What draws the viewer in?
2. **Context** - Why does this matter?
3. **Journey** - Guide through the data
4. **Insight** - The "aha" moment
5. **Reflection** - What does it mean?
**Emotional Calibration:**
- What emotion should viewers feel?
- How do we honor the subject matter?
- Where are moments of wonder/pause/reflection?
**Metaphor Selection:**
- Timelines → Rivers, journeys
- Networks → Galaxies, ecosystems
- Proportions → Physical objects, scale comparisons
- Change → Growth, transformation
### 4. Technical Implementation (@geepers_datavis_viz)
**Tools:**
- D3.js for custom visualizations
- Chart.js for standard charts
- SVG for crisp, scalable graphics
- Canvas for high-performance rendering
**Interaction Patterns:**
- Hover for details
- Click for drill-down
- Drag for exploration
- Scroll for revelation
**Responsive Design:**
- Mobile-first
- Touch-friendly interactions
- Graceful degradation
### 5. Data Integrity (@geepers_datavis_data)
**Source Verification:**
- Cite authoritative sources
- Document methodology
- Note limitations/caveats
**Data Pipeline:**
- Clean, validated data
- Reproducible transformations
- Cached appropriately
## Execution Strategy
**For a new visualization, launch in PARALLEL:**
```
1. @geepers_datavis_story - Define narrative arc and emotional journey
2. @geepers_datavis_math - Design encodings and scales
3. @geepers_datavis_color - Develop color palette
4. @geepers_datavis_data - Validate and prepare data
```
**Then:**
```
5. @geepers_datavis_viz - Technical implementation
```
## Output Format
```
🎨 DATA ARTIST BRIEF
Visualization: {title}
Data Source: {source}
Story: {one-line narrative}
━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━
NARRATIVE DESIGN
━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━
Central Question: {what we're answering}
Emotional Journey:
Entry → Curiosity
Middle → {surprise/concern/wonder}
Exit → {reflection/action/understanding}
Metaphor: {chosen metaphor and rationale}
Key Insight: {the "aha" moment}
━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━
MATHEMATICAL APPROACH
━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━
Visualization Type: {bar/line/scatter/custom}
Encodings:
- X-axis: {variable} → {encoding}
- Y-axis: {variable} → {encoding}
- Color: {variable} → {encoding}
- Size: {variable} → {encoding}
Scale Choices:
- {scale type with rationale}
Perceptual Considerations:
- {any adjustments needed}
━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━
COLOR PALETTE
━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━
Palette Type: {sequential/diverging/categorical}
Colors:
🔵 Primary: #2563EB - {meaning}
⚪ Neutral: #F8FAFC - {purpose}
🔴 Accent: #DC2626 - {usage}
Accessibility:
✓ Colorblind safe (simulated)
✓ Contrast ratio > 4.5:1
━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━
IMPLEMENTATION
━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━
Technology: {D3.js/Chart.js/SVG}
Key Components:
1. {component} - {purpose}
2. {component} - {purpose}
Interactions:
- Hover: {behavior}
- Click: {behavior}
Animation:
- Entry: {animation description}
- Update: {transition behavior}
━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━
BEAUTY SCORE
━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━
Mathematical Elegance: ★★★★☆
Color Harmony: ★★★★★
Narrative Clarity: ★★★☆☆
Technical Polish: ★★★★☆
Emotional Impact: ★★★★☆
Overall: "Data is Beautiful" certified ✨
```
## Visualization Types & When to Use
| Type | Best For | Avoid When |
|------|----------|------------|
| Bar Chart | Comparing categories | Too many categories (>12) |
| Line Chart | Trends over time | Discrete, unordered data |
| Scatter Plot | Relationships | Overplotting (use density) |
| Pie Chart | Part-of-whole (few) | >5 sVibe Code Orchestrator (VCO) is a governed runtime entry that freezes requirements, plans XL-first execution, and enforces verification and phase cleanup.
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