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In his famous blog post ArtificialIntelligence The Revolution Hasnt Happened Yet , Michael Jordan (the AI researcher, not the one you probably thought of first) tells a story about how he might have almost lost his unborn daughter due to a faulty AI prediction. we might not know how fast the parade moves).
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a leading provider of the popular source code for artificialintelligence (AI), machine learning (ML) and data science platform, to empower Lenovo’s high performance data science workstations. Lenovo™ announced a strategic partnership with Anaconda® Inc.,
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Powering solutions from within both the public platform and its market-leading SaaS product, Stack Overflow for Teams, these AI/ML solutions will offer users a series of new capabilities that will ensure they get to solutions faster within their workflow.
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