How To Build And Deploy A Reproducible Machine Learning Pipeline

As companies and researches rush to implement more and more machine learning practices into their organizations, occasionally they sacrifice understanding the complexities of statistics practices in order to achieve results faster. People rush to implement statistical methods without fully understanding the intricacies of the methods themselves, or what they sacrifice by rushing…

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Lead Data Scientist, author of “Python Feature Engineering Cookbook”, instructor of machine learning at www.trainindata.com and developer of Python open-source.

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Sole from Train in Data

Sole from Train in Data

Lead Data Scientist, author of “Python Feature Engineering Cookbook”, instructor of machine learning at www.trainindata.com and developer of Python open-source.

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