frnsys / Ml101
intro to machine learning - reverse engineering phenomena
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This is a collection of "Machine Learning 101" workshops, tailored for different audiences. All the workshops aim to introduce a solid intuition about what machine learning is, how it works, and understand how it can be applied.
π₯π€
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