APM 4.0 with Predictive and Prescriptive Analytics

Using Sensor Data to Maximise Your Return on Investment (ROI)

Sensor-Based Decision Making with True Lead Performance Indicators

The more in-depth data sensors are able to capture, the greater the visibility and insight for Owner Operators.

True digital transformation requires enhancing the asset-oriented APM approach to a system that holistically connects Engineering, Operations and Maintenance. APM 4.0 creates a single integrated digital thread across the whole asset life cycle, in which connectivity among assets and workers and real-time decisions based on sensors and intelligent data play a pivotal role. While APM 4.0 maintains the asset-oriented approach, it is focused on achieving your critical business results. It will accomplish Asset Excellence with an increase in safety, profitability and sustainability.

In this whitepaper you will learn:

  • How predictive alerts and prescriptive actions need to work together to fully unlock the value that APM 4.0 promises
  • How they work together to help you better manage your assets
  • What potential challenges to avoid when implementing predictive and prescriptive analytics
  • What role predictive and prescriptive analytics play in your decision-making process
  • How to create sensor-based decision making with true lead performance indicators in your organization that will have a direct positive impact on your asset’s ROI

Register to download the whitepaper!

Download Now
















Which of the following would you like to improve within your organisation the most?
Would you like a product demo?

By downloading this content, you expressly opt-in and give consent for your name and contact information to be shared with AVEVA who may contact you regarding the content. I agree to communications and processing of personal data according to AVEVA's Privacy Policy.

I would like to request an immediate call from an AVEVA consultant.


All Rights Reserved . © 2021 Intent Amplify Privacy Policy or Unsubscribe.