We’re excited to share with you our latest video that explains how Readi’s ML Engine predicts fatigue in just 3 minutes.

Drawing on years of scientific research and a massive dataset of over 5 million anonymized sleeps by shift workers, Readi’s Machine Learning engine is an incredibly powerful tool for predicting worker fatigue.

In this video, you’ll learn how the ML engine works, and how major mining companies around the world are using Readi to predict fatigue – without requiring the use of wearables.

Discover how cutting-edge technology is transforming how mining firms manage fatigue, ultimately leading to a $6M annual average benefit to mine sites and 13% reduction in lost-time incidents.

 
 
 
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