Radar Chart Creator
Visualize multi-variable data with customizable radar/spider charts
Templates
Axes
Add or remove chart dimensions
Datasets
Add or remove data series
Actions
Radar Chart
2 datasets β’ 5 axes
Employee A
Employee B
Edit Values
Adjust values for each dataset and axis
| Dataset | Communication | Technical Skills | Leadership | Problem Solving | Creativity |
|---|---|---|---|---|---|
| Employee A | |||||
| Employee B |
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About Radar Charts
What is a Radar Chart?
A radar chart (also called spider chart or star chart) displays multivariate data on a two-dimensional chart with three or more quantitative variables. Each variable is represented on an axis starting from the same point, making it easy to compare multiple datasets across different dimensions.
Common Use Cases
- Skills Assessment: Evaluate employee competencies across multiple skill areas
- Performance Metrics: Compare performance across different KPIs
- Product Comparison: Analyze products based on features, price, quality, etc.
- Team Analysis: Compare team strengths and weaknesses
- Survey Results: Visualize multi-question survey responses
Best Practices
- Use 3-8 axes for optimal readability
- Keep scales consistent across all axes
- Limit to 3-4 datasets to avoid visual clutter
- Use contrasting colors for different datasets
- Label axes clearly and concisely