What are the best ways to split data for machine learning models?

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Data is the fuel of machine learning, but not all data is created equal. To train and test your models effectively, you need to split your data into different subsets that reflect the real-world scenarios and challenges. In this article, you will learn about the best ways to split data for machine learning models, including the common methods, the benefits and drawbacks, and the tips and tools to help you.

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