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Chief Product Officer, Tableau. Earlier this year, we introduced Tableau for Slack to put data in the flow of work—and at the center of every conversation. Now, we’re putting artificialintelligence (AI) in the flow of work, too. And we’re not stopping there: We’re bringing the full power of Tableau within Slack.
Chief Product Officer, Tableau. Earlier this year, we introduced Tableau for Slack to put data in the flow of work—and at the center of every conversation. Now, we’re putting artificialintelligence (AI) in the flow of work, too. And we’re not stopping there: We’re bringing the full power of Tableau within Slack.
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Senior Manager, Product Marketing, Tableau. Instead of centralizing data stores, data fabrics establish a federated environment and use artificialintelligence and metadata automation to intelligently secure data management. . Augmentedanalytics. The analytics-first approach. Karen Madera.
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