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A Package for wrapping Python classes into Scikit-Learn estimators

Project description

Sklearn-Wrap

Python Version License PyPI Version Conda Version codecov

What is Sklearn-Wrap?

Sklearn-wrap enables you to wrap any Python class into a scikit-learn compatible estimator without rewriting your code. Whether you're integrating XGBoost's Booster API, custom gradient descent algorithms, or third-party machine learning libraries, sklearn-wrap provides the glue layer that makes them work seamlessly with sklearn's ecosystem.

With sklearn-wrap, you gain immediate access to GridSearchCV for hyperparameter tuning, Pipeline for composable workflows, and joblib for serialization—all while maintaining your original implementation. Perfect for data scientists who want sklearn compatibility without sacrificing custom logic or performance.

What are the features of Sklearn-Wrap?

  • Minimal boilerplate: 10-15 lines to wrap any Python class into a full sklearn estimator
  • Auto-parameter discovery: Constructor parameters automatically exposed for GridSearchCV/RandomizedSearchCV
  • Nested parameters: Support sklearn's double-underscore syntax for nested estimator hierarchies
  • Full ecosystem compatibility: Works seamlessly with Pipeline, cross-validation, and joblib serialization
  • Built-in validation: Optional parameter constraints with automatic type/value checking before fit

How to install Sklearn-Wrap?

Install the Sklearn-Wrap package using pip:

pip install sklearn_wrap

or using uv:

uv pip install sklearn_wrap

or using conda:

conda install -c conda-forge sklearn_wrap

or using mamba:

mamba install -c conda-forge sklearn_wrap

or alternatively, add sklearn_wrap to your requirements.txt or pyproject.toml file.

How to get started with Sklearn-Wrap?

Here's a minimal example wrapping a custom polynomial regression class:

import numpy as np
from sklearn_wrap.base import BaseClassWrapper, _fit_context
from sklearn.base import RegressorMixin
from sklearn.model_selection import GridSearchCV

# Your custom class (unchanged)
class PolynomialRegressor:
    def __init__(self, degree=2, learning_rate=0.01, n_iterations=1000):
        self._degree = degree
        self._learning_rate = learning_rate
        self._n_iterations = n_iterations

    def fit_model(self, X, y):
        # ... your implementation ...
        return self

    def predict_output(self, X):
        # ... your implementation ...
        pass

# Wrapper (just 10 lines!)
class PolynomialWrapper(BaseClassWrapper, RegressorMixin):
    _estimator_name = "regressor"
    _estimator_base_class = object

    @_fit_context(prefer_skip_nested_validation=True)
    def fit(self, X, y):
        self.instance_.fit_model(X, y)  # Delegate to wrapped instance
        return self

    def predict(self, X):
        return self.instance_.predict_output(X)

# Use with sklearn tools
wrapper = PolynomialWrapper(
    estimator_class=PolynomialRegressor,
    degree=2,
    learning_rate=0.01
)

# Immediate GridSearchCV compatibility
param_grid = {'degree': [1, 2, 3], 'learning_rate': [0.001, 0.01, 0.1]}
grid_search = GridSearchCV(wrapper, param_grid, cv=5)
grid_search.fit(X, y)

How do I use Sklearn-Wrap?

Full documentation is available at https://sklearn-wrap.readthedocs.io/.

Interactive examples are available in the examples/ directory:

Can I contribute?

We welcome contributions, feedback, and questions:

If you are interested in becoming a maintainer or taking a more active role, please reach out to Guillaume Tauzin on stateful-y.io.

Where can I learn more?

For questions and discussions, you can also open a discussion.

License

This project is licensed under the terms of the Apache-2.0 License.

Acknowledgements

Sklearn-Wrap is developed and maintained by stateful-y.

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