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Big data and Machine Learning in Healthcare – Actual experience, actual results

Hear first hand from one of the nation’s leading healthcare providers, Intermountain Healthcare, on what is actually being accomplished with big data and machine learning (cognitive computing, artificial intelligence, deep learning, etc.) by leading healthcare providers.

Intermountain has evaluated between 300 and 400 big data and analytic solutions and actively collaborates with the other leading healthcare providers in the United States to implement the solutions that are delivering improved healthcare outcomes and cost reductions.
Recorded Dec 7 2016 63 mins
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Presented by
Lonny Northrup, Sr. Medical Informaticist – Office of Chief Data Officer, Intermountain Healthcare
Presentation preview: Big data and Machine Learning in Healthcare – Actual experience, actual results

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  • Title: Big data and Machine Learning in Healthcare – Actual experience, actual results
  • Live at: Dec 7 2016 7:00 pm
  • Presented by: Lonny Northrup, Sr. Medical Informaticist – Office of Chief Data Officer, Intermountain Healthcare
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