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You're reading from  Hands-On Industrial Internet of Things

Product typeBook
Published inNov 2018
PublisherPackt
ISBN-139781789537222
Edition1st Edition
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Authors (2):
Giacomo Veneri
Giacomo Veneri
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Giacomo Veneri

Giacomo Veneri graduated in computer science from the University of Siena. He holds a PhD in neuroscience context with various scientific publications. He is Predix Cloud certified and an influencer, as well as SCRUM and Oracle Java certified. He has 18 years' experience as an IT architect and team leader. He has been an expert on IoT in the fields of oil and gas and transportation since 2013. He lives in Tuscany, where he loves cycling.
Read more about Giacomo Veneri

Antonio Capasso
Antonio Capasso
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Antonio Capasso

Antonio Capasso graduated in computer automation in 1999 and computer science in 2003 from the University of Naples. He has been working for twenty years on large and complex IT projects related to the industrial world in a variety of fields (automotive, pharma, food and beverage, and oil and gas), in a variety of roles (programmer, analyst, architect, and team leader) with different technologies and software. Since 2011, he has been involved in building and securing industrial IoT infrastructure. He currently lives in Tuscany, where he loves trekking and swimming.
Read more about Antonio Capasso

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Deploying analytics

Although analytics should be agnostic with regard to how the data is fed to the platform, we have to consider several potential pitfalls that can affect the efficiency of the analytics. There are several strategies that we can use to feed I-IoT data to the platform:

  • Bulk ingestion, for example, one file daily
  • ­Small portion, for example, one file every five minutes
  • Data streams, where files are fed continuously with a small latency

Data is also affected by several issues:

  • ­ It might be in the wrong order. For example, a data point at 18:00 might be sent at 18:10 and a data point at 17:59 might be sent at 18:11.
  • ­It might be of a bad quality.
  • It might have holes in it.
  • It might have anomalous spikes in it.
  • ­It might be frozen. This refers to a situation where you have a suspiciously flat number for a long time.

These issues are illustrated...

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Hands-On Industrial Internet of Things
Published in: Nov 2018Publisher: PacktISBN-13: 9781789537222

Authors (2)

author image
Giacomo Veneri

Giacomo Veneri graduated in computer science from the University of Siena. He holds a PhD in neuroscience context with various scientific publications. He is Predix Cloud certified and an influencer, as well as SCRUM and Oracle Java certified. He has 18 years' experience as an IT architect and team leader. He has been an expert on IoT in the fields of oil and gas and transportation since 2013. He lives in Tuscany, where he loves cycling.
Read more about Giacomo Veneri

author image
Antonio Capasso

Antonio Capasso graduated in computer automation in 1999 and computer science in 2003 from the University of Naples. He has been working for twenty years on large and complex IT projects related to the industrial world in a variety of fields (automotive, pharma, food and beverage, and oil and gas), in a variety of roles (programmer, analyst, architect, and team leader) with different technologies and software. Since 2011, he has been involved in building and securing industrial IoT infrastructure. He currently lives in Tuscany, where he loves trekking and swimming.
Read more about Antonio Capasso