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7 Key Elements of an Enterprise AI Strategy

Artificial Intelligence (AI) is influencing every industry and decision makers are being asked: What is your AI Strategy for 2019? Most have begun thinking about how AI can be incorporated into their business strategy but the exponential growth of AI resources and offerings is making it difficult to find the right fit for one's organization. What is needed is a practical approach to AI that filters out the signal-to-noise ratio when deciding on an enterprise AI strategy. In this webinar, guest speaker and Forrester Research Vice President & Principal Analyst, Mike Gualtieri, maps out the seven key elements of an enterprise AI strategy.
Recorded Mar 26 2019 48 mins
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Presented by
Guest speaker Mike Gualtieri, Forrester Research and Ingrid Burton, H2O.ai
Presentation preview: 7 Key Elements of an Enterprise AI Strategy

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    Nicholas Png
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    SRK
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Fast, Accurate, Interpretable AI
H2O.ai is the maker of H2O, the world's best machine learning platform and Driverless AI, which automates machine learning. H2O is used by over 130,000 data scientists and more than 13,000 organizations globally. Driverless AI does auto feature engineering and can achieve 40x speed-ups on GPUs.

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  • Title: 7 Key Elements of an Enterprise AI Strategy
  • Live at: Mar 26 2019 6:00 pm
  • Presented by: Guest speaker Mike Gualtieri, Forrester Research and Ingrid Burton, H2O.ai
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