Tuesday, October 21, 2014

Phases of Data Intelligence: An Update

A couple of weeks ago, I wrote about the Phases of Data Intelligence.  I just came across Benedict Evans' presentation at GE's Mind + Machines event.  He had a more simple yet similar version of the same idea.

His version is:
  • Build the data stream
  • Ingest the data within the enterprise
  • Do something useful
He has a plethora of "3-bullet" nuggets on the Industrial Internet. Worth a watch if you are in to that sort of thing:


4 comments:

markson said...

Tell him and go head to head what difficulties you face and how would you experience them. machine learning course in pune

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pg said...

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pg said...

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