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Increase your confidence to perform datacleaning with a broader perspective of what datasets typically look like, and follow this toolbox of code snipets to make your datacleaning process faster and more efficient.
Ryan Cairnes Senior Manager, Product Management, Tableau Hannah Kuffner July 28, 2020 - 10:43pm March 20, 2023 Tableau Prep is a citizen datapreparation tool that brings analytics to anyone, anywhere. With Prep, users can easily and quickly combine, shape, and cleandata for analysis with just a few clicks.
Ryan Cairnes Senior Manager, Product Management, Tableau Hannah Kuffner July 28, 2020 - 10:43pm March 20, 2023 Tableau Prep is a citizen datapreparation tool that brings analytics to anyone, anywhere. With Prep, users can easily and quickly combine, shape, and cleandata for analysis with just a few clicks.
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Customers must acquire large amounts of data and prepare it. This typically involves a lot of manual work cleaningdata, removing duplicates, enriching and transforming it. It’s also not easy to run these models cost-effectively.
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