Data Visualization Studio

v1.0.0

Create interactive and static data visualizations from datasets. Supports charts, graphs, dashboards, and statistical plots with multiple output formats (PNG...

1· 761· 1 versions· 5 current· 5 all-time· Updated 4h ago· MIT-0

Install

openclaw skills install data-visualization-studio

Data Visualization Studio

Create professional data visualizations from raw data or existing datasets.

When to Use

  • Creating charts and graphs from CSV, JSON, or database data
  • Building interactive dashboards for data exploration
  • Generating statistical plots and visual analytics
  • Exporting visualizations in multiple formats (PNG, SVG, HTML, PDF)
  • Creating publication-ready figures and reports

Quick Start

Basic Chart Creation

# Example: Create a simple bar chart
import pandas as pd
import matplotlib.pyplot as plt

data = pd.read_csv('data.csv')
plt.bar(data['category'], data['values'])
plt.savefig('chart.png', dpi=300, bbox_inches='tight')

Interactive Dashboard

# Example: Create interactive plot with Plotly
import plotly.express as px

df = pd.read_csv('data.csv')
fig = px.scatter(df, x='x_column', y='y_column', color='category')
fig.write_html('dashboard.html')

Supported Libraries

  • Matplotlib: Static plots, publication-quality figures
  • Plotly: Interactive visualizations, web dashboards
  • Seaborn: Statistical graphics, beautiful default styles
  • Bokeh: Interactive web plots, streaming data support
  • Altair: Declarative visualization, Vega-Lite integration

Output Formats

  • PNG/JPEG: High-resolution static images
  • SVG: Scalable vector graphics for web/print
  • HTML: Interactive web pages with embedded JavaScript
  • PDF: Publication-ready documents
  • JSON: Data export for further processing

Best Practices

  1. Data Preparation: Clean and validate data before visualization
  2. Color Schemes: Use accessible color palettes (avoid red-green)
  3. Labels: Always include clear axis labels and titles
  4. Resolution: Use appropriate DPI for intended use (72 for web, 300+ for print)
  5. File Size: Optimize file sizes for web delivery when needed

Advanced Features

  • Animation: Create animated transitions and time-series visualizations
  • Geospatial: Map-based visualizations with geographic data
  • 3D Plots: Three-dimensional data representation
  • Custom Styling: Brand-consistent themes and styling
  • Real-time: Live updating visualizations from streaming data

References

For detailed examples and advanced usage patterns, see the bundled reference files:

  • references/chart-types.md - Complete catalog of supported chart types
  • references/styling-guide.md - Customization and branding guidelines
  • references/performance.md - Optimization for large datasets

Version tags

latestvk972fw1k0jwy4jqs27hfkwckfh82cxje