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Video interview: Use cases for predictive maintenance & the Big Data impact

Listen to our interview at Big Data LDN with Wael Elrifai, Director of Enterprise Solutions at Pentaho.

Wael will talk through some use cases for predictive maintenance and how Big Data has impacted these models.

He will also share some tips for people still struggling with Hadoop and will also go over the different ways to embark on an IoT strategy for your organisation.
Recorded Nov 10 2016 7 mins
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Presented by
Wael Elrifai, Director of Enterprise Solutions (Pentaho)
Presentation preview: Video interview: Use cases for predictive maintenance & the Big Data impact

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  • Title: Video interview: Use cases for predictive maintenance & the Big Data impact
  • Live at: Nov 10 2016 3:00 pm
  • Presented by: Wael Elrifai, Director of Enterprise Solutions (Pentaho)
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