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autosai

AutoML for scientific research tasks

autosai is a Python library that simplifies the process of AutoML model selection and hyperparameter tuning using Bayesian optimization. It supports various deep learning architectures including Dense, CNN, LSTM, Transformer, and TabNet.

Installation

Installation

To install autosai, you can use Poetry, a dependency management and packaging tool for Python projects.

poetry add autosai

This will add autosai to your Poetry project.

Running Tests

poetry run pytest

Usage

Prepare Data

from autosai import DataPreprocessor

data_path = 'your_dataset.csv'
target_column = 'target_column'
X_train, X_val, y_train, y_val = DataPreprocessor.prepare_data(data_path, target_column)

Optimize Hyperparameters

from autosai import ModelSelector

model_selector = ModelSelector()
best_params = model_selector.optimize_hyperparameters(X_train, y_train, X_val, y_val, n_trials=50)
print(f"Best hyperparameters: {best_params}")

Create and Train Model

best_model_type = best_params.pop('model_type')
best_model = model_selector.create_model(best_model_type, best_params, X_train.shape[1])
best_model.fit(X_train, y_train, validation_data=(X_val, y_val), epochs=50, batch_size=32, verbose=0)

Save Model

from autosai import ModelSaver

ModelSaver.save_model(best_model, best_model_type, 'best_model')

Example

Refer to the examples/example_usage.py file for a complete example.

This version of the autosai library uses classes to organize the code in a more extensible and maintainable manner. Each model type is encapsulated in its own class, and the optimization process is handled by the BayesianOptimization class. The data preprocessing and model saving functionalities are also encapsulated in their respective classes.