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Tableau has been helping people and organizations to see and understand data for almost two decades, bringing exciting innovations to the landscape of businessintelligence with every product release. Four reference lines on the x-axis indicate key events in Tableau’s almost two-decade history: The first Tableau Conference in 2008.
Tableau has been helping people and organizations to see and understand data for almost two decades, bringing exciting innovations to the landscape of businessintelligence with every product release. Four reference lines on the x-axis indicate key events in Tableau’s almost two-decade history: The first Tableau Conference in 2008.
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