Senseye, the Uptime as a Service leader today announced that it has reached a significant prognostics-at-scale milestone of automatically monitoring over 1,000 machines at a single customer site for early signs of mechanical damage and failure; using machine learning to help the client to avoid unplanned downtime, without relying on expensive consultants.
Senseye is based in the cloud and has been able to rapidly scale with client demands after quickly proving its capabilities on a small cluster of machines. Rather than relying on preventative maintenance, the client is now automatically notified of current issues as well as the Remaining Useful Life of industrial machinery, enabling its maintenance teams to implement effective predictive maintenance.
“Senseye is designed to make condition monitoring and prognostics analysis at scale accessible and affordable. Automatically monitoring the future health of over 1,000 machines 24/7, has traditionally been out of reach both technically and financially. We’re proud to have broken a significant milestone in making prognostics accessible to all!” said Robert Russell, CTO of Senseye.
Trusted by a number of Fortune 100 companies, Senseye is the leading automated cloud-based condition monitoring and prognostics product. The award-winning solution is usable from day one and available as a simple subscription service, enabling customers to rapidly start and expand their predictive maintenance programs.
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About Senseye Ltd. Leading Uptime-as-a-Service company Senseye develops cloud-based software that automates condition monitoring and prognostics, enabling subscribers to predict failures in machinery months in advance. Senseye harnesses data science, machine learning and real-world industry know-how to provide a robust and scalable approach to reducing machine downtime and its operational costs. www.senseye.io
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