model-comparison-tool

Use when asked to compare multiple ML models, perform cross-validation, evaluate metrics, or select the best model for a classification/regression task.

$ 安裝

git clone https://github.com/dkyazzentwatwa/chatgpt-skills /tmp/chatgpt-skills && cp -r /tmp/chatgpt-skills/model-comparison-tool ~/.claude/skills/chatgpt-skills

// tip: Run this command in your terminal to install the skill


name: model-comparison-tool description: Use when asked to compare multiple ML models, perform cross-validation, evaluate metrics, or select the best model for a classification/regression task.

Model Comparison Tool

Compare multiple machine learning models systematically with cross-validation, metric evaluation, and automated model selection.

Purpose

Model comparison for:

  • Algorithm selection and benchmarking
  • Hyperparameter tuning comparison
  • Model performance validation
  • Feature engineering evaluation
  • Production model selection

Features

  • Multi-Model Comparison: Test 5+ algorithms simultaneously
  • Cross-Validation: K-fold, stratified, time-series splits
  • Comprehensive Metrics: Accuracy, F1, ROC-AUC, RMSE, MAE, R²
  • Statistical Testing: Paired t-tests for significance
  • Visualization: Performance charts, ROC curves, learning curves
  • Auto-Selection: Recommend best model based on criteria

Quick Start

from model_comparison_tool import ModelComparisonTool

# Compare classifiers
comparator = ModelComparisonTool()
comparator.load_data(X_train, y_train, task='classification')

results = comparator.compare_models(
    models=['rf', 'gb', 'lr', 'svm'],
    cv_folds=5
)

best_model = comparator.get_best_model(metric='f1')

CLI Usage

# Compare models on CSV data
python model_comparison_tool.py --data data.csv --target target --task classification

# Custom model comparison
python model_comparison_tool.py --data data.csv --target price --task regression --models rf,gb,lr --cv 10

# Export results
python model_comparison_tool.py --data data.csv --target y --output comparison_report.html

Limitations

  • Requires sufficient data for meaningful cross-validation
  • Large datasets may have long comparison times
  • Deep learning models not included (use dedicated frameworks)
  • Feature engineering must be done beforehand