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Mindset: Encouraging data exploration and curiosity for everyone . Commitment: Realizing value from data, not just using it . Data-leading companies were 3x more likely than data-aware organizations to require new hires to know how to persuasively present data.”. Something had to change.
Mindset: Encouraging data exploration and curiosity for everyone. Commitment: Realizing value from data, not just using it. Data-leading companies were 3x more likely than data-aware organizations to require new hires to know how to persuasively present data.”. This caused extra work for IT and unreliable results.
I grew up in financial services, so it can’t be off by a penny who wants their bank account to be randomly decremented by pennies or dollars or more. So it has to be right. And so we’re dealing with these constraints that it has to be right, at least has to be delivered on time. So AI is kind of the current big goal.
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