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WorleyParsons and Arundo Analytics to deliver machine learning to the energy and resources industry

WorleyParsons and Arundo Analytics to deliver machine learning to the energy and resources industry

WorleyParsons Group announces a collaboration with Arundo Analytics (Arundo), a software company enabling advanced machine learning. Advisian Digital (Advisian), the digital strategy and technology consulting arm of WorleyParsons, will  drive the collaboration for WorleyParsons.

HOUSTON AND OSLO, NORWAY -- Bradley Andrews, Advisian Digital President, noted, “The industries we serve are in the process of a once-in-a-generation digital shift. Capabilities related to machine learning, big data, and the Industrial Internet of Things are becoming core to a number of industrial processes and the bespoke challenges they bring. Arundo brings a unique mix of world-class software, data science, and domain expertise to these issues, allowing WorleyParsons to deliver ongoing value to our customers.”

The companies are currently working on assisting customers in the global oil and gas, power and mining sectors.

Tor Jakob Ramsøy, Arundo’s CEO, said, “For almost 50 years, WorleyParsons has provided exceptional EPC and advisory services to its customers. Now it is engaged in an energetic pursuit of best-in-class digital capabilities to build on its engineering and technical legacy businesses. We are excited to help WorleyParsons deploy machine learning and advanced analytics at global scale, in order to assist its customers in new and better ways.”

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Join other leading industrial companies and discover how Arundo’s AI Foundation adds insight and intelligence to your operations

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