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Leverage Enterprise Investments for Predictive Analytics and Gain Numerous Advantages! Gartner has predicted that, ‘predictive and prescriptiveanalytics will attract 40% of net new enterprise investment in the overall business intelligence and analytics market.’ Why the focus on predictive analytics? It’s simple!
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Note that there’s not enough room in an article to cover these presentations adequately so I’ll highlight the keynotes plus a few of my favorites. Nick Elprin, CEO and co-founder of Domino Data Lab. She had much to say to leaders of data science teams, coming from perspectives of data engineering at scale. Rev 2 wrap up.
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Gartner defines a citizen data scientist as a person who creates or generates models that leverage predictive or prescriptiveanalytics, but […] Since then, the idea has grown in popularity, and the role has grown in importance and prominence.
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