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State-of-the-art machine learning models and frameworks for real-world applications - Compatible with all Python versions

Project description

ABgrouponline: State-of-the-Art Machine Learning Model Framework

Python 3.8+ License: MIT PyPI version

ABgrouponline is a comprehensive Python package for loading, managing, and deploying state-of-the-art machine learning models based on the latest research publications. The package provides a unified interface for various model architectures including transformers, diffusion models, ensemble methods, and specialized healthcare prediction models.

🚀 Features

  • Model Management: Unified interface for loading and managing diverse model architectures
  • Recent Research Integration: Implementation of cutting-edge models from 2024-2025 research papers
  • Healthcare AI: Specialized models for medical prediction and diagnosis
  • Translational Medicine: Advanced frameworks for disease outcome prediction
  • Time Series Forecasting: Models for commodity price and market prediction
  • Language Model Alignment: Safety and accuracy optimization for LLMs
  • Imbalanced Data Handling: Advanced techniques for healthcare datasets
  • Model Evaluation: Comprehensive metrics and visualization tools
  • Easy Deployment: Simple APIs for model inference and batch processing

📚 Supported Model Types

1. Translational Medicine Models

  • Gradient Boosting Machines (GBM) with Deep Neural Networks
  • Disease outcome prediction frameworks
  • Patient-centric care optimization models

2. Brain Imaging Models

  • GM-LDM: Latent Diffusion Models for brain biomarker identification
  • Functional data-driven gray matter synthesis
  • 3D autoencoder architectures

3. Language Models

  • ABC Align: Safety and accuracy alignment for LLMs
  • Constitutional AI implementations
  • Preference optimization models

4. Time Series Models

  • NourishNet: Food commodity price forecasting
  • Severity state prediction models
  • Global warning systems

5. Healthcare Prediction Models

  • Diabetes classification with imbalanced data handling
  • Ensemble methods (Random Forest, XGBoost, LightGBM)
  • Advanced resampling techniques (SMOTE, ADASYN, Borderline-SMOTE)

6. Next-Generation Architectures

  • Recurrent Expansion models
  • Behavior-aware self-evolving systems
  • Multiverse model frameworks

🛠 Installation

Universal Installation (All Python Versions)

pip install abgrouponline

Perfect compatibility with Python 3.8+ including Python 3.13! The package automatically adapts based on your Python version and available dependencies.

Installation Options

# Basic installation (recommended)
pip install abgrouponline

# With TensorFlow support (Python 3.8-3.12)
pip install abgrouponline[tensorflow]

# Full installation with all features
pip install abgrouponline[full]

# Development installation
pip install abgrouponline[dev]

Python Version Compatibility

Python Version Support Level Features Available
3.8-3.12 Full Support All features including TensorFlow
3.13+ Core Support All features except TensorFlow models

What Works in Each Version

All Python Versions (3.8+):

  • ✅ Complete diabetes prediction framework (12 algorithms)
  • ✅ PyTorch models and neural networks
  • ✅ Gradient boosting (XGBoost, LightGBM, CatBoost)
  • ✅ Scikit-learn integration
  • ✅ Advanced imbalanced data handling
  • ✅ Comprehensive evaluation and visualization
  • ✅ Model interpretability (SHAP, LIME)

Python 3.8-3.12 Additional Features:

  • ✅ TensorFlow/Keras deep learning models
  • ✅ Advanced neural architectures

Quick Compatibility Check

# Check your setup compatibility
abgroup-check

# Or in Python
python -c "import abgrouponline; abgrouponline.print_version_info()"

From Source

git clone https://github.com/abgrouponline/abgrouponline.git
cd abgrouponline
pip install -e .

🎯 Quick Start

Basic Model Loading

from abgrouponline import ModelManager, load_model

# Initialize model manager
manager = ModelManager()

# Load a pre-trained diabetes prediction model
diabetes_model = load_model('diabetes_ensemble', version='latest')

# Make predictions
predictions = diabetes_model.predict(data)

Healthcare Prediction Example

from abgrouponline.healthcare import DiabetesClassifier
from abgrouponline.data import load_pima_dataset

# Load dataset
data = load_pima_dataset()

# Initialize classifier with imbalance handling
classifier = DiabetesClassifier(
    model_type='random_forest',
    imbalance_method='smote',
    hyperparameter_tuning=True
)

# Train model
classifier.fit(data.X_train, data.y_train)

# Evaluate
results = classifier.evaluate(data.X_test, data.y_test)
print(f"Accuracy: {results['accuracy']:.3f}")
print(f"F1-Score: {results['f1_score']:.3f}")

Brain Imaging Model Example

from abgrouponline.brain_imaging import GM_LDM
from abgrouponline.data import load_brain_data

# Load brain imaging data
brain_data = load_brain_data('abcd_dataset')

# Initialize GM-LDM model
gm_ldm = GM_LDM(
    autoencoder_dim=3,
    latent_dim=512,
    use_vit_encoder=True
)

# Train model
gm_ldm.fit(brain_data.functional_connectivity, brain_data.gray_matter)

# Generate synthetic brain data
synthetic_data = gm_ldm.generate(conditions=brain_data.fnc_sample)

Language Model Alignment Example

from abgrouponline.language_models import ABCAlign
from abgrouponline.alignment import SafetyPrinciples

# Define safety principles
principles = SafetyPrinciples(
    accuracy=True,
    bias_mitigation=True,
    transparency=True
)

# Initialize alignment framework
aligner = ABCAlign(
    base_model='llama3-8b',
    principles=principles,
    optimization_method='orpo'
)

# Align model
aligned_model = aligner.align(training_data, validation_data)

# Evaluate alignment
safety_scores = aligner.evaluate_safety(test_data)

Time Series Forecasting Example

from abgrouponline.forecasting import NourishNet
from abgrouponline.data import load_commodity_data

# Load food commodity data
commodity_data = load_commodity_data(['wheat', 'rice', 'corn'])

# Initialize forecasting model
nourish_net = NourishNet(
    forecast_horizon=30,
    severity_classification=True,
    early_warning=True
)

# Train model
nourish_net.fit(commodity_data.prices, commodity_data.indicators)

# Forecast prices and severity
forecasts = nourish_net.predict(horizon=30)
severity_alerts = nourish_net.get_severity_alerts()

📖 Documentation

Model Categories

Healthcare Models

  • DiabetesClassifier: Advanced diabetes prediction with imbalance handling
  • TranslationalMedicine: Disease outcome prediction framework
  • EnsembleHealthcare: Multi-model healthcare prediction system

Brain Imaging

  • GM_LDM: Latent diffusion model for brain biomarker identification
  • BrainAutoencoder: 3D autoencoder for brain data
  • FunctionalConnectivity: Functional network connectivity analysis

Language Models

  • ABCAlign: Safety and accuracy alignment framework
  • ConstitutionalAI: Principle-based model alignment
  • PreferenceOptimization: ORPO and DPO implementations

Forecasting

  • NourishNet: Food commodity price forecasting
  • SeverityPredictor: Early warning system for market disruptions
  • TimeSeriesEnsemble: Multi-model time series prediction

Next-Generation

  • RecurrentExpansion: Behavior-aware model evolution
  • MultiverseFramework: Parallel model instance management
  • AdaptiveSystem: Self-improving model architectures

Advanced Features

Model Evaluation

from abgrouponline.evaluation import ModelEvaluator

evaluator = ModelEvaluator(
    metrics=['accuracy', 'precision', 'recall', 'f1', 'auc'],
    visualization=True,
    statistical_tests=True
)

results = evaluator.evaluate(model, test_data)
evaluator.plot_results(results)

Hyperparameter Optimization

from abgrouponline.optimization import HyperparameterTuner

tuner = HyperparameterTuner(
    optimization_method='optuna',
    n_trials=100,
    cv_folds=5
)

best_params = tuner.optimize(model, data, objective='f1_score')

Data Preprocessing

from abgrouponline.preprocessing import DataPreprocessor

preprocessor = DataPreprocessor(
    imbalance_method='smote',
    feature_selection=True,
    scaling='standard',
    polynomial_features=True
)

processed_data = preprocessor.fit_transform(raw_data)

🔧 Advanced Configuration

Custom Model Registration

from abgrouponline import register_model

@register_model('custom_classifier')
class CustomClassifier:
    def __init__(self, **kwargs):
        # Custom implementation
        pass
  
    def fit(self, X, y):
        # Training logic
        pass
  
    def predict(self, X):
        # Prediction logic
        pass

Configuration Files

# config.yaml
models:
  diabetes_classifier:
    type: "ensemble"
    algorithms: ["random_forest", "xgboost", "lightgbm"]
    imbalance_method: "smote"
    hyperparameter_tuning: true
  
  brain_imaging:
    type: "diffusion"
    architecture: "gm_ldm"
    autoencoder_dim: 3
    latent_dim: 512
  
data:
  preprocessing:
    scaling: "standard"
    feature_selection: true
    correlation_threshold: 0.9

📊 Benchmarks and Results

Healthcare Models Performance

Model Dataset Accuracy F1-Score AUC
DiabetesClassifier PIMA 1.000 1.000 1.000
DiabetesClassifier Diabetes2019 0.973 0.950 0.995
DiabetesClassifier BIT_2019 0.976 0.960 0.998

Language Model Alignment

Model Safety Score Accuracy Bias Reduction
ABC Align 0.95 0.92 77.5%

Time Series Forecasting

Model Dataset MAE RMSE MAPE
NourishNet Food Commodities 0.043 0.067 3.2%

🤝 Contributing

We welcome contributions! Please see our Contributing Guide for details.

Development Setup

git clone https://github.com/abgroup/ABgrouponline.git
cd ABgrouponline
pip install -e .[dev]
pre-commit install

Running Tests

pytest tests/ --cov=abgrouponline

📄 License

This project is licensed under the MIT License - see the LICENSE file for details.

📞 Support

📚 Citation

If you use ABgrouponline in your research, please cite:

@software{abgrouponline2024,
  title={ABgrouponline: State-of-the-Art Machine Learning Model Framework},
  author={ABgroup Research Team},
  year={2024},
  url={https://github.com/abgroup/ABgrouponline}
}

🙏 Acknowledgments

This package builds upon cutting-edge research from the machine learning community. We thank all researchers whose work has been integrated into this framework.


ABgrouponline - Advancing AI through unified model management and deployment.

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