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The Industrial Internet of Things has really taken off!

The Industrial Internet of Things has really taken off!

Our CEO, Tor Jakob Ramsøy, was interviewed by Kapital, Norway's leading business magazine.The article discusses the beginning of Arundo and how the company is not selling a technology that the operators themselves have to understand how to use. In reality, a business use case is being presented as a delivery where one can present much of the solution before ever installing anything.

Tor Jakob wanted to not only devise solutions and ideas, as he did while in the consulting realm, he wanted to create something. The connectivity of the industrial internet, coupled with the existing mass amounts of data in the oil and gas sector truly makes the possibilities for learning endless. He met with the Lead Environment Advisor who has been tasked with improving productivity on the British Continental Shelf (pictured above outside of 10 Downing Street.)

The original article is in Norwegian and one must be a subscriber to Kapital to view the article. For more information on this article, please contact communications [at] arundo.com

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