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Arundo to attend the 10th McKinsey Innovation Forum in Singapore on October 25, 2016

Arundo to attend the 10th McKinsey Innovation Forum in Singapore on October 25, 2016

Arundo to attend the 10th McKinsey Innovation Forum in Singapore on October 25, 2016

PALO ALTO, California -- Arundo to attend the 10th McKinsey Innovation Forum in Singapore on October 25, 2016. Arundo CEO, Tor Jakob Ramsøy, will present Arundo’s machine learning and data science solution as part of a showcase on predictive maintenance analytics and Industry 4.0.  Arundo will also be featured in the McKinsey’s Experience Lounge as further opportunity for audience members to experience Arundo’s capabilities . Click on the link below to learn more about the Forum.

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