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Arundo awared "Most promising Data Analytics Solution Provider"

Honored with prestigious Industry Award by CIO review: Most promising data analytics solution provider 2022. We're thrilled to share that Arundo Analytics has been awarded a prestigious industry award for our pioneering work in advanced analytics and AI-driven software for industrial operations.

Arundo has been recognized as the "Most Promising Data Analytics Solution Provider 2022" by CIO review. We're delighted about the award; it's a testament to the dedication and innovation that drive us every day.

We're proud to have come a long way from identifying problems to offering cutting-edge analytics solutions.

This award acknowledges the excellence of our products, including Marathon, Energy Optimizer, ArundoEdge & EdgeManager, DataSeer, and SPYRO® for Asset Management, which have been reconized for their ability to streamline operations, extend equipment lifespan, optimize performance, and save costs.

At the heart of our mission is creating a world where equipment failures are preventable and industrial operations are seamless.

We look forward to the journey ahead, as we continue to empower industries and enable smarter, data-driven decisions. Thank you for being a part of this incredible journey with us.

Read more at: https://www.cioreview.com/arundo

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