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Brillio Expands Capability in Big Data Analytics for Asset Intensive Industries with Arundo Investment

Brillio Expands Capability in Big Data Analytics for Asset Intensive Industries with Arundo Investment

Brillio announces expansion into Big Data analytics with investment in Arundo.

Santa Clara, CA. – October 13, 2015 – Brillio, a global technology consulting and business solutions company focused on digital technologies and big data analytics, today announced its investment in and partnership with Arundo, a predictive analytics software company for asset intensive industries.  Arundo leverages deep industry expertise and advanced machine learning technologies to analyze real time data from complex industrial installations such as an oilrig that could have more than 100,000 sensors from 100s of different suppliers.

We are very happy to have Brillio as an investor and partner for Arundo. Arundo has an ambition to bring the best of big data and advanced analytics to assets intensive industries. Part of our strategy is to have offices in locations that are conducive to our current and future client base including Silicon Valley, Houston, and Oslo.  Brillio will be instrumental for us in the delivery of end-to-end solutions for our industrial customers,” said Tor Jakob Ramsoy, CEO of Arundo Analytics.

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