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One of the primary challenges arose from the general use of businessintelligence tools for data prep and management. This issue often resulted in either time-consuming collaboration between our team and clients or disappointing results in production if not addressed appropriately.
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Attendees left with a clear understanding of how AI can enhance data analysis workflows and improve decision-making in businessintelligence applications. The session emphasized the importance of associative intelligence in AI systems, enabling more nuanced reasoning and better decision-making.
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