In this DataHour, explore with Anuj the various ways to construct the machine learning pipeline using scikit-learn. He will walk you through the different use cases where you can enable an end to end machine learning pipeline that involves data cleaning, preprocessing and modeling steps. Moreover, the way to chain all steps of the workflow together for a more streamlined procedure for code construction will be explained in detail.
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