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      <title>Tableau and Databricks part 1 – getting started</title>
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      <description>&lt;p&gt;Two data tools I really enjoy working with are Tableau and Databricks. Tableau lets you visually explore and communicate your data. And Databricks is a cloud-based data and AI platform. If you’ve started to learn about or work with Tableau Next, then you’ll be aware that it reboots the Tableau product stack on the power of data cloud and agentic AI (a data and AI platform). But if you’re not fortunate enough to be there yet, or you already work with Databricks, then this series of blog posts could be for you!&lt;/p&gt;</description>
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