Excalidraw Diagram
by Infatoshi
Generate Excalidraw diagrams. Use when the user asks to create a diagram, visualize a concept, or illustrate technical architectures.
Skill Details
Repository Files
1 file in this skill directory
name: excalidraw-diagram description: Generate Excalidraw diagrams. Use when the user asks to create a diagram, visualize a concept, or illustrate technical architectures.
Excalidraw Diagram Generation
Workflow
- Write excalidraw JSON to
<name>.excalidraw - Render:
python -m excalidraw <name>.excalidraw -o <name>.png
File Structure
{
"type": "excalidraw",
"version": 2,
"source": "claude",
"elements": [...],
"appState": {
"viewBackgroundColor": "#ffffff"
}
}
Available Shapes
rectangle,ellipse,diamond,line,arrow,text
Shape Properties
{
"id": "unique_id",
"type": "rectangle",
"x": 100,
"y": 100,
"width": 150,
"height": 80,
"strokeColor": "#1e1e1e",
"backgroundColor": "#a5d8ff",
"fillStyle": "solid",
"strokeWidth": 2,
"strokeStyle": "solid",
"roughness": 0
}
Text Elements
{
"id": "label1",
"type": "text",
"x": 110,
"y": 110,
"width": 130,
"height": 60,
"text": "Multi-line\ntext here",
"fontSize": 16,
"fontFamily": 5,
"textAlign": "center",
"strokeColor": "#1e1e1e"
}
fontFamily: 1=hand-drawn, 2=normal, 5=monospace (use for technical diagrams)
Arrow/Line Elements
{
"id": "arrow1",
"type": "arrow",
"x": 100,
"y": 100,
"width": 0,
"height": 50,
"strokeColor": "#1971c2",
"strokeWidth": 2,
"roughness": 0,
"points": [[0, 0], [0, 50]]
}
Dashed Frames
{
"id": "frame1",
"type": "rectangle",
"strokeColor": "#2f9e44",
"backgroundColor": "transparent",
"strokeStyle": "dashed",
"roughness": 0
}
Color Palette
| Color | Stroke | Fill |
|---|---|---|
| Green | #2f9e44 | #b2f2bb |
| Orange | #f08c00 | #ffd8a8, #ffec99 |
| Red | #e03131 | #ffc9c9 |
| Blue | #1971c2 | #a5d8ff, #d0ebff |
| Purple | #9c36b5 | #e599f7, #eebefa |
| Grey | #868e96 | #dee2e6, #e9ecef |
Spacing Guidelines
- Title fontSize: 28-36
- Section headers: 20-24
- Body text: 12-16
- Minimum padding inside boxes: 10px
- Gap between sections: 20-30px
- Dashed frame padding: 20px inside content
Arrow Labeling Rules
- Arrows point AT things, not along them - perpendicular to target
- Arrow tip touches the target
- Text and arrow must not overlap
Iteration Log
- fontFamily: Use 5 (monospace) for technical diagrams, not 1 (hand-drawn).
- Text in shapes: Create separate text elements inside boxes for reliable rendering.
- roughness: Set to 0 for clean technical diagrams.
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