CSV Data Visualizer
Overview
This skill enables comprehensive data visualization and analysis for CSV files. It provides three main capabilities: (1) creating individual interactive visualizations using Plotly, (2) automatic data profiling with statistical summaries, and (3) generating multi-plot dashboards. The skill is optimized for exploratory data analysis, statistical reporting, and creating presentation-ready visualizations.
When to Use This Skill
Invoke this skill when users request:
- •"Visualize this CSV data"
- •"Create a histogram/scatter plot/box plot from this data"
- •"Show me the distribution of [column]"
- •"Generate a dashboard for this dataset"
- •"Profile this CSV file" or "Analyze this data"
- •"Create a correlation heatmap"
- •"Show trends over time"
- •"Compare [variable] across [categories]"
Core Capabilities
1. Individual Visualizations
Create specific chart types for detailed analysis using the visualize_csv.py script.
Available Chart Types:
Statistical Plots:
# Histogram - distribution of numeric data python3 scripts/visualize_csv.py data.csv --histogram column_name --bins 30 # Box plot - show quartiles and outliers python3 scripts/visualize_csv.py data.csv --boxplot column_name # Box plot grouped by category python3 scripts/visualize_csv.py data.csv --boxplot salary --group-by department # Violin plot - distribution with probability density python3 scripts/visualize_csv.py data.csv --violin column_name --group-by category
Relationship Analysis:
# Scatter plot with automatic trend line python3 scripts/visualize_csv.py data.csv --scatter height weight # Scatter plot with color and size encoding python3 scripts/visualize_csv.py data.csv --scatter x y --color category --size value # Correlation heatmap for all numeric columns python3 scripts/visualize_csv.py data.csv --correlation
Time Series:
# Line chart for single variable python3 scripts/visualize_csv.py data.csv --line date sales # Multiple variables on same chart python3 scripts/visualize_csv.py data.csv --line date "sales,revenue,profit"
Categorical Data:
# Bar chart (counts categories automatically) python3 scripts/visualize_csv.py data.csv --bar category # Pie chart for composition python3 scripts/visualize_csv.py data.csv --pie region
Output Formats: Specify output file with desired format extension:
# Interactive HTML (default) python3 scripts/visualize_csv.py data.csv --histogram age -o output.html # Static image formats python3 scripts/visualize_csv.py data.csv --scatter x y -o plot.png python3 scripts/visualize_csv.py data.csv --correlation -o heatmap.pdf python3 scripts/visualize_csv.py data.csv --bar category -o chart.svg
2. Automatic Data Profiling
Generate comprehensive data quality and statistical reports using the data_profile.py script.
Text Report (default):
python3 scripts/data_profile.py data.csv
HTML Report:
python3 scripts/data_profile.py data.csv -f html -o report.html
JSON Report:
python3 scripts/data_profile.py data.csv -f json -o profile.json
What the Profiler Provides:
- •File information (size, dimensions)
- •Dataset overview (shape, memory usage, duplicates)
- •Column-by-column analysis (types, missing data, unique values)
- •Missing data patterns and completeness
- •Statistical summary for numeric columns (mean, std, quartiles, skewness, kurtosis)
- •Categorical column analysis (frequency counts, most/least common values)
- •Data quality checks (high missing data, duplicate rows, constant columns, high cardinality)
When to Use Profiling: Always recommend running data profiling BEFORE creating visualizations when:
- •User is unfamiliar with the dataset
- •Data quality is unknown
- •Need to identify appropriate visualization types
- •Exploring a new dataset for the first time
3. Multi-Plot Dashboards
Create comprehensive dashboards with multiple visualizations using the create_dashboard.py script.
Automatic Dashboard: Analyzes data types and automatically creates appropriate visualizations:
python3 scripts/create_dashboard.py data.csv
Custom output location:
python3 scripts/create_dashboard.py data.csv -o my_dashboard.html
Control number of plots:
python3 scripts/create_dashboard.py data.csv --max-plots 9
Custom Dashboard from Config: Create a JSON configuration file specifying exact plots:
python3 scripts/create_dashboard.py data.csv --config config.json
Dashboard Config Format:
{
"title": "Sales Analysis Dashboard",
"plots": [
{"type": "histogram", "column": "revenue"},
{"type": "box", "column": "revenue", "group_by": "region"},
{"type": "scatter", "column": "advertising", "group_by": "revenue"},
{"type": "bar", "column": "product_category"},
{"type": "correlation"}
]
}
Dashboard Plot Types:
- •
histogram: Distribution of numeric column - •
box: Box plot, optionally grouped by category - •
scatter: Relationship between two numeric columns - •
bar: Count of categorical values - •
correlation: Heatmap of numeric correlations
Workflow Decision Tree
Use this decision tree to determine the appropriate approach:
User provides CSV file
│
├─ "Profile this data" / "Analyze this data" / Unfamiliar dataset
│ └─> Run data_profile.py first
│ Then offer visualization options based on findings
│
├─ "Create dashboard" / "Overview of the data" / Multiple visualizations needed
│ ├─ User knows exact plots wanted
│ │ └─> Create JSON config → run create_dashboard.py with config
│ └─ User wants automatic dashboard
│ └─> Run create_dashboard.py (auto mode)
│
└─ Specific visualization requested ("histogram", "scatter plot", etc.)
└─> Use visualize_csv.py with appropriate flag
Best Practices
Starting Analysis
- •Always profile first for unfamiliar datasets:
python3 scripts/data_profile.py data.csv - •Review the profiling output to understand:
- •Column data types and ranges
- •Missing data patterns
- •Data quality issues
- •Statistical distributions
Choosing Visualizations
Consult references/visualization_guide.md for detailed guidance. Quick reference:
- •Distribution: Histogram, box plot, violin plot
- •Relationship: Scatter plot, correlation heatmap
- •Time series: Line chart
- •Categories: Bar chart (preferred) or pie chart (use sparingly)
- •Comparison: Box plot grouped by category
Creating Dashboards
- •Automatic dashboard: Good for initial exploration
- •Custom dashboard: Better for presentations or specific analysis goals
- •Limit plots: Keep to 6-9 plots maximum for readability
- •Logical grouping: Group related visualizations together
Output Considerations
- •HTML: Best for interactive exploration (zoom, pan, hover tooltips)
- •PNG/PDF: Best for reports and presentations
- •SVG: Best for publications requiring vector graphics
Dependencies
The scripts require these Python packages:
pip install pandas plotly numpy
For static image export (PNG, PDF, SVG), also install:
pip install kaleido
Example Workflows
Exploratory Data Analysis
# 1. Profile the data python3 scripts/data_profile.py sales_data.csv -f html -o profile.html # 2. Create automatic dashboard python3 scripts/create_dashboard.py sales_data.csv -o dashboard.html # 3. Dive deeper with specific plots python3 scripts/visualize_csv.py sales_data.csv --scatter price sales --color region python3 scripts/visualize_csv.py sales_data.csv --boxplot revenue --group-by product
Report Generation
# Create specific visualizations for report python3 scripts/visualize_csv.py data.csv --histogram age -o fig1_distribution.png python3 scripts/visualize_csv.py data.csv --scatter income age -o fig2_correlation.png python3 scripts/visualize_csv.py data.csv --bar category -o fig3_categories.png # Generate data summary python3 scripts/data_profile.py data.csv -f html -o data_summary.html
Interactive Dashboard
# Create custom dashboard for presentation # 1. First, create config.json with desired plots # 2. Generate dashboard python3 scripts/create_dashboard.py data.csv --config config.json -o presentation_dashboard.html
Troubleshooting
"Column not found" errors:
- •Run data profiling to see exact column names
- •CSV columns are case-sensitive
- •Check for leading/trailing spaces in column names
Empty or incorrect visualizations:
- •Verify data types (numeric vs categorical)
- •Check for missing data in plotted columns
- •Ensure sufficient non-null values exist
Script execution errors:
- •Verify dependencies are installed:
pip list | grep plotly - •Check Python version: Python 3.6+ required
- •For image export issues, install kaleido:
pip install kaleido
Resources
scripts/
- •
visualize_csv.py: Main visualization script with all chart types - •
data_profile.py: Automatic data profiling and quality analysis - •
create_dashboard.py: Multi-plot dashboard generator
references/
- •
visualization_guide.md: Comprehensive guide for choosing appropriate chart types, best practices, and common patterns