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Machine Learning Tableau supports Python machine learning features. Supports numerous data sources It connects to and fetches data from a variety of data sources using Tableau and supports a wide range of data sources, including local files, spreadsheets, relational and non-relationaldatabases, data warehouses, big data, and on-cloud data.
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