Brochure: Predictive Asset Maintenance with AWS

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Predictive Asset Maintenance with Capgemini and AWS

With Capgemini’s Predictive Asset Maintenance, IoT technology and predictive analytics help organizations monitor equipment health and predict failures. The solution takes advantage of next-generation data collection, analytics, and communication with AWS artificial-intelligence and machine-learning services. As a result, you can shift from a reactive to a proactive approach to asset maintenance.

Taking advantage of predictive asset maintenance improves overall equipment effectiveness, reduces maintenance costs, and boosts customer satisfaction. Additionally, Capgemini’s pre-configured analytics can accelerate deployment by up to 50%.

With a global partnership established in 2008, Capgemini and AWS have successfully delivered for hundreds of enterprises worldwide. Our teams of architects and consultants are trained and certified by AWS and apply knowledge and experience to optimize workloads on the AWS Cloud. We have deep industry expertise and help organizations across all industries, from manufacturing to energy.

Learn more about Capgemini and AWS

Predictive Asset Maintenance...

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