I created this notebook to training my datascience skills, ssing different automatic learning models
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Updated
May 6, 2020 - Jupyter Notebook
I created this notebook to training my datascience skills, ssing different automatic learning models
Explore ML mini-projects with Jupyter notebooks. Discover predictive analysis for commercial sales, leveraging regression models such as linear regression, decision trees, random forests, lasso, ridge, and extra-trees regressor.
A collection of machine learning implementations for regression and classification tasks using Python and scikit-learn. Each model is detailed in Jupyter notebooks with explanations, code, and visualizations.
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