Chart Generation
by michaelboeding
>
Skill Details
Repository Files
7 files in this skill directory
name: chart-generation description: > Use this skill for generating data-driven charts and visualizations using Python. Triggers: "create chart", "generate graph", "plot data", "visualize data", "bar chart", "line chart", "pie chart", "comparison chart", "positioning matrix", "trend chart", "market size chart", "TAM SAM SOM", "growth chart", "data visualization" Outputs: PNG/SVG chart images with accurate data representation. Used by: competitive-intel-agent, market-researcher-agent, pitch-deck-agent, review-analyst-agent
Chart Generation Skill
Generate accurate, data-driven charts and visualizations using Python (matplotlib/plotly).
Use this for real data. For concept art and illustrations, use image-generation instead.
What It Produces
| Chart Type | Use Case | Script |
|---|---|---|
| Bar Chart | Compare values across categories | bar_chart.py |
| Line Chart | Show trends over time | line_chart.py |
| Pie Chart | Show proportions/percentages | pie_chart.py |
| Positioning Matrix | 2x2 competitive positioning | positioning_matrix.py |
| Comparison Table | Feature comparison grid | comparison_table.py |
| TAM/SAM/SOM | Market size visualization | tam_sam_som.py |
Prerequisites
pip install matplotlib numpy pillow
No API keys required - runs locally.
When to Use This vs Image Generation
| Scenario | Use This | Use image-generation |
|---|---|---|
| Real data from analysis | ✅ | ❌ |
| Accurate numbers/labels | ✅ | ❌ |
| Reproducible charts | ✅ | ❌ |
| Concept/mockup visuals | ❌ | ✅ |
| Artistic illustrations | ❌ | ✅ |
| Icons and graphics | ❌ | ✅ |
Chart Types
1. Bar Chart
Compare values across categories.
python3 ${SKILL_PATH}/skills/chart-generation/scripts/bar_chart.py \
--labels '["Product A", "Product B", "Product C"]' \
--values '[85, 62, 45]' \
--title "Feature Comparison" \
--ylabel "Score" \
--output bar_chart.png
Options:
--horizontal- Horizontal bars instead of vertical--colors- Custom colors:'["#4CAF50", "#2196F3", "#FF9800"]'--show-values- Display values on bars
2. Line Chart
Show trends over time or progression.
python3 ${SKILL_PATH}/skills/chart-generation/scripts/line_chart.py \
--x '["Jan", "Feb", "Mar", "Apr", "May", "Jun"]' \
--y '[100, 150, 180, 220, 310, 450]' \
--title "Monthly Revenue Growth" \
--xlabel "Month" \
--ylabel "Revenue ($K)" \
--output growth_chart.png
Options:
--multi- Multiple lines:--y '[[100,150,200], [80,120,180]]' --legend '["Product A", "Product B"]'--fill- Fill area under line--markers- Show data point markers
3. Pie Chart
Show proportions and percentages.
python3 ${SKILL_PATH}/skills/chart-generation/scripts/pie_chart.py \
--labels '["Engineering", "Marketing", "Sales", "Operations"]' \
--values '[40, 25, 20, 15]' \
--title "Use of Funds" \
--output pie_chart.png
Options:
--donut- Donut chart (hollow center)--explode- Explode a slice:--explode 0(first slice)--show-percent- Show percentages on slices
4. Positioning Matrix (2x2)
Competitive positioning on two axes.
python3 ${SKILL_PATH}/skills/chart-generation/scripts/positioning_matrix.py \
--companies '["Your Product", "Competitor A", "Competitor B", "Competitor C"]' \
--x-values '[70, 90, 50, 30]' \
--y-values '[80, 85, 60, 45]' \
--x-label "Price (Low → High)" \
--y-label "Features (Basic → Advanced)" \
--title "Competitive Positioning" \
--output positioning.png
Options:
--quadrant-labels- Label quadrants:'["Niche", "Leaders", "Laggards", "Challengers"]'--highlight- Highlight your position:--highlight 0--sizes- Bubble sizes for market share
5. Comparison Table
Feature comparison grid as an image.
python3 ${SKILL_PATH}/skills/chart-generation/scripts/comparison_table.py \
--features '["Feature A", "Feature B", "Feature C", "Feature D"]' \
--companies '["You", "Comp A", "Comp B"]' \
--data '[["✓", "✓", "✗"], ["✓", "✗", "✓"], ["✓", "✓", "✓"], ["✓", "✗", "✗"]]' \
--title "Feature Comparison" \
--output comparison.png
Options:
--highlight-column- Highlight your column:--highlight-column 0--colors- Use colors instead of symbols
6. TAM/SAM/SOM Chart
Market size visualization (concentric circles).
python3 ${SKILL_PATH}/skills/chart-generation/scripts/tam_sam_som.py \
--tam 50 \
--sam 8 \
--som 0.5 \
--unit "B" \
--title "Market Opportunity" \
--output market_size.png
Options:
--unit- "B" for billions, "M" for millions--labels- Custom labels:'["Total Market", "Serviceable", "Obtainable"]'
Usage by Other Skills
competitive-intel-agent
# Generate positioning matrix from analysis
positioning_matrix.py \
--companies '["You", "Salesforce", "HubSpot"]' \
--x-values '[30, 95, 70]' \
--y-values '[75, 90, 60]'
market-researcher-agent
# Generate TAM/SAM/SOM from research
tam_sam_som.py --tam 120 --sam 15 --som 2.5 --unit "B"
pitch-deck-agent
# Generate traction chart
line_chart.py \
--x '["Q1", "Q2", "Q3", "Q4"]' \
--y '[50, 120, 280, 500]' \
--title "Revenue Growth"
review-analyst-agent
# Generate sentiment distribution
pie_chart.py \
--labels '["Positive", "Neutral", "Negative"]' \
--values '[65, 20, 15]' \
--title "Review Sentiment"
Output Formats
All scripts support:
--output file.png- PNG image (default)--output file.svg- SVG vector--output file.pdf- PDF document
Styling Options
All scripts support these common options:
| Option | Description | Example |
|---|---|---|
--title |
Chart title | "Monthly Revenue" |
--width |
Width in inches | 12 |
--height |
Height in inches | 8 |
--dpi |
Resolution | 150 |
--style |
Matplotlib style | "seaborn", "dark_background" |
--colors |
Custom color palette | '["#4CAF50", "#2196F3"]' |
--font-size |
Base font size | 12 |
Integration Pattern
Higher-level skills call chart-generation like this:
## In competitive-intel-agent workflow:
1. Analyze competitors (gather data)
2. Structure data as JSON
3. Call chart-generation script with data
4. Embed resulting PNG in report
Example flow:
# 1. Analysis produces this data
data = {
"companies": ["You", "Competitor A", "Competitor B"],
"features": [8, 6, 5],
"prices": [29, 49, 39]
}
# 2. Generate chart
python3 bar_chart.py \
--labels '["You", "Competitor A", "Competitor B"]' \
--values '[8, 6, 5]' \
--title "Feature Count Comparison" \
--output features.png
# 3. Embed in report

Example Prompts
Direct chart creation:
"Create a bar chart comparing our features to competitors"
As part of analysis:
"Analyze these companies and generate a positioning matrix"
Data visualization:
"Plot our monthly revenue growth from this data: [100, 150, 220, 350]"
Market sizing:
"Create a TAM/SAM/SOM chart: TAM $50B, SAM $5B, SOM $500M"
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