Senseye PdM for EcoStruxure™ Plant

Cloud-based Predictive Maintenance software
Published by Senseye


  • Proven
  • Scalable
  • ROI < 3 months


The founders of Senseye honed their condition monitoring expertise in the Aerospace and Defense industries, using that learning to lead the growth of Senseye PdM to over 15,000 machines globally, ingesting more than 1 million data points per minute, across hundreds of different machine-types. Senseye helps Fortune 500 organizations across a wide variety of industries to save tens of millions of dollars in unplanned downtime and maintenance efficiency every week.


Senseye PdM uses the latest developments in Machine-Learning to achieve Predictive Maintenance 4.0; leveraging the cloud to provide an enterprise-scale yet easy to use Operational Technology (OT) tool which automates the analysis of detection, diagnostics and prognostics (Remaining Useful Life). This gives you and your team on the shop floor accurate and relevant machine health insights to improve maintenance efficiency across tens to thousands of assets, without requiring in-house data science expertise.

ROI < 3 months

Senseye PdM is entirely focused on Scalable Predictive Maintenance for industry. It is a specifically engineered product requiring no customization or extensive setup by the end user, with training typically needing less than an hour. For organizations already on the Industry 4.0 journey, deployment is near-instant and actionable results are delivered in a maximum of 14 days, enabling return on investment to be achieved in less than 3 months. Eligible customers can also benefit from ROI Lock. This world-first for industrial and manufacturing companies delivers an insurance backed guarantee of achieving 100% return on investment within 12 months.
ROI < 3 months
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