Exploratory Data Analysis
by jackspace
Analyze datasets to discover patterns, anomalies, and relationships. Use when exploring data files, generating statistical summaries, checking data quality, or creating visualizations. Supports CSV, Excel, JSON, Parquet, and more.
Skill Details
Repository Files
3 files in this skill directory
name: exploratory-data-analysis description: "Analyze datasets to discover patterns, anomalies, and relationships. Use when exploring data files, generating statistical summaries, checking data quality, or creating visualizations. Supports CSV, Excel, JSON, Parquet, and more."
Exploratory Data Analysis
Discover patterns, anomalies, and relationships in tabular data through statistical analysis and visualization.
Supported formats: CSV, Excel (.xlsx, .xls), JSON, Parquet, TSV, Feather, HDF5, Pickle
Standard Workflow
- Run statistical analysis:
python scripts/eda_analyzer.py <data_file> -o <output_dir>
- Generate visualizations:
python scripts/visualizer.py <data_file> -o <output_dir>
-
Read analysis results from
<output_dir>/eda_analysis.json -
Create report using
assets/report_template.mdstructure -
Present findings with key insights and visualizations
Analysis Capabilities
Statistical Analysis
Run scripts/eda_analyzer.py to generate comprehensive analysis:
python scripts/eda_analyzer.py sales_data.csv -o ./output
Produces output/eda_analysis.json containing:
- Dataset shape, types, memory usage
- Missing data patterns and percentages
- Summary statistics (numeric and categorical)
- Outlier detection (IQR and Z-score methods)
- Distribution analysis with normality tests
- Correlation matrices (Pearson and Spearman)
- Data quality metrics (completeness, duplicates)
- Automated insights
Visualizations
Run scripts/visualizer.py to generate plots:
python scripts/visualizer.py sales_data.csv -o ./output
Creates high-resolution (300 DPI) PNG files in output/eda_visualizations/:
- Missing data heatmaps and bar charts
- Distribution plots (histograms with KDE)
- Box plots and violin plots for outliers
- Correlation heatmaps
- Scatter matrices for numeric relationships
- Categorical bar charts
- Time series plots (if datetime columns detected)
Automated Insights
Access generated insights from the "insights" key in the analysis JSON:
- Dataset size considerations
- Missing data warnings (when exceeding thresholds)
- Strong correlations for feature engineering
- High outlier rate flags
- Skewness requiring transformations
- Duplicate detection
- Categorical imbalance warnings
Reference Materials
Statistical Interpretation
See references/statistical_tests_guide.md for detailed guidance on:
- Normality tests (Shapiro-Wilk, Anderson-Darling, Kolmogorov-Smirnov)
- Distribution characteristics (skewness, kurtosis)
- Correlation methods (Pearson, Spearman)
- Outlier detection (IQR, Z-score)
- Hypothesis testing and data transformations
Use when interpreting statistical results or explaining findings.
Methodology
See references/eda_best_practices.md for comprehensive guidance on:
- 6-step EDA process framework
- Univariate, bivariate, multivariate analysis approaches
- Visualization and statistical analysis guidelines
- Common pitfalls and domain-specific considerations
- Communication strategies for different audiences
Use when planning analysis or handling specific scenarios.
Report Template
Use assets/report_template.md to structure findings. Template includes:
- Executive summary
- Dataset overview
- Data quality assessment
- Univariate, bivariate, and multivariate analysis
- Outlier analysis
- Key insights and recommendations
- Limitations and appendices
Fill sections with analysis JSON results and embed visualizations using markdown image syntax.
Example: Complete Analysis
User request: "Explore this sales_data.csv file"
# 1. Run analysis
python scripts/eda_analyzer.py sales_data.csv -o ./output
# 2. Generate visualizations
python scripts/visualizer.py sales_data.csv -o ./output
# 3. Read results
import json
with open('./output/eda_analysis.json') as f:
results = json.load(f)
# 4. Build report from assets/report_template.md
# - Fill sections with results
# - Embed images: 
# - Include insights from results['insights']
# - Add recommendations
Special Cases
Dataset Size Strategy
If < 100 rows: Note sample size limitations, use non-parametric methods
If 100-1M rows: Standard workflow applies
If > 1M rows: Sample first for quick exploration, note sample size in report, recommend distributed computing for full analysis
Data Characteristics
High-dimensional (>50 columns): Focus on key variables first, use correlation analysis to identify groups, consider PCA or feature selection. See references/eda_best_practices.md for guidance.
Time series: Datetime columns auto-detected, temporal visualizations generated automatically. Consider trends, seasonality, patterns.
Imbalanced: Categorical analysis flags imbalances automatically. Report distributions prominently, recommend stratified sampling if needed.
Output Guidelines
Format findings as markdown:
- Use headers, tables, and lists for structure
- Embed visualizations:
 - Include code blocks for suggested transformations
- Highlight key insights
Make reports actionable:
- Provide clear recommendations
- Flag data quality issues requiring attention
- Suggest next steps (modeling, feature engineering, further analysis)
- Tailor communication to user's technical level
Error Handling
Unsupported formats: Request conversion to supported format (CSV, Excel, JSON, Parquet)
Files too large: Recommend sampling or chunked processing
Corrupted data: Report specific errors, suggest cleaning steps, attempt partial analysis
Empty columns: Flag in data quality section, recommend removal or investigation
Resources
Scripts (handle all formats automatically):
scripts/eda_analyzer.py- Statistical analysis enginescripts/visualizer.py- Visualization generator
References (load as needed):
references/statistical_tests_guide.md- Test interpretation and methodologyreferences/eda_best_practices.md- EDA process and best practices
Template:
assets/report_template.md- Professional report structure
Key Points
- Run both scripts for complete analysis
- Structure reports using the template
- Provide actionable insights, not just statistics
- Use reference guides for detailed interpretations
- Document data quality issues and limitations
- Make clear recommendations for next steps
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