Aspen Mtell APM Software Scales From Health Monitoring to AI Prediction

AspenTech's Aspen Mtell uses AI-powered insights to automatically group and prioritize alerts based on severity, risk, and historical data.
March 13, 2026
2 min read

AspenTech's Aspen Mtell is an AI-enabled asset performance management (APM) platform that supports enterprise reliability programs, scaling from foundational asset health monitoring to failure prediction and continuous operational improvement.

Industry and asset-specific templates and analytics enable faster deployment of asset health monitoring across the enterprise, with a pathway to AI-driven failure prediction. AI-powered insights automatically group and prioritize alerts based on severity, risk, and historical data. Embedded failure mode and effects analysis (FMEA) prescribes corrective action to streamline risk resolution.

The platform connects directly with vibration monitoring solutions AMS Machine Works and AMS Device Manager, and integrates with enterprise asset management (EAM) systems to deliver actionable insights into existing enterprise resource planning (ERP) workflows.

Features:

  • Industry and asset-specific templates for faster enterprise deployment
  • AI-powered alert grouping and prioritization by severity, risk, and historical data
  • Embedded FMEA with prescribed corrective actions
  • Direct integration with AMS Machine Works and AMS Device Manager vibration monitoring
  • Deep integration with EAM and ERP systems

AspenTech (Aspen Technology) | an Emerson subsidiary
Bedford, MA
Local: (781) 221-6400
Toll-free: (855) 882-7736
[email protected]
aspentech.com

Request More Information

By clicking above, I agree to Endeavor Business Media's Terms of Service and consent to receive promotional communications from Endeavor, its affiliates, and partners per its Privacy Notice. I also understand my personal information will be shared with the sponsor of this content, who may contact me about their offerings per their privacy policy. I can unsubscribe anytime.