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Scikit-Learn with Fed-BioMed: a step-by-step tutorial

Scikit-Learn is one of the most famous and renowned open source machine learning library in Python. It implements several classical Machine Learning algorithms such as linear regression, SVM, random forests, ...

  1. Classifying MNIST dataset using Scikit-Learn Perceptron

  2. Dealing with regression tasks using Scikit-Learn SGDRegressor

  3. Others Scikit-Learn models supported in Fed-BioMed

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