Enabling the next generation of fatigue management for the safest and most productive workforces

Vancouver, BC – September 29, 2020 

Fatigue Science, the global leader in providing human fatigue and performance predictive analytics and fatigue management information systems to heavy industry, military, and elite sports teams, is pleased to announce the launch of 14-Day Fatigue Forecasting. This breakthrough advancement in fatigue management technology is a powerful new addition to the company’s Readi™ Enterprise Suite software platform.

Readi Enterprise Suite, the Fatigue Management Information System from Fatigue Science, is widely relied upon for its ability to provide objective historical and real-time visibility into workforce fatigue. Now, the release of 14-Day Fatigue Forecasting expands this visibility, providing the world’s first “360º view of fatigue – past, present, and future.” With this advancement, proactive planning measures and proactive safety critical actions that were previously impossible are now achievable.

With 14-Day Fatigue Forecasting, supervisors and management teams can now view future fatigue hotspots showing the “who, when, and where” of workforce fatigue far enough in advance to take meaningful action to mitigate both routine and mission critical fatigue risks. Authorized supervisors can view scientifically-validated “heat maps” of worker fatigue, revealing at-a-glance any workers in their crew who are likely to face significant fatigue on the next two weeks of duty, and on which specific days. Supervisors can then reach out to individuals, sharing data-backed guidance to focus on sleep on certain days and to be particularly cautious at work when those days arrive. Moreover, supervisors can plan critical tasks for the times of least fatigue, choosing the right worker for the right task, at the right time. 14-Day Fatigue Forecasting is built on top of FAST®, the trusted fatigue modeling technology that has been widely used for decades by flight schedulers, mission planners, and elite sports teams to model fatigue in schedule simulations.

“As fatigue plays a key role in the effectiveness of our immune systems and as workforces continue to face strain from the impacts of COVID-19, the need to reduce fatigue in the workplace is a more prominent C-Suite concern than ever. Planning workplace processes and tasks with greater confidence around fatigue is now fundamental to today’s reality”, says Fatigue Science CEO Andrew Morden. “Fatigue forecasting is akin to predictive maintenance, which enables operations teams to plan the future with greater certainty, before critical needs arise.”

About Fatigue Science

Fatigue Science is the leading provider of predictive human performance data in heavy industry, elite sports, and military. Headquartered in Vancouver, Canada, we build software that leverages scientifically-validated biomathematical models in order to quantify and predict the cumulative effects of sleep disruption on human reaction time and cognitive effectiveness. Our solutions enable organizations to optimize operations, reduce risk, and drive performance and productivity improvements — both at an individual- and enterprise-level. With proven impact, return on investment, and significant and growing traction in heavy industry, military, and elite sports, Fatigue Science serves cutting-edge organizations who understand the importance of sleep as well as the value of data-driven decision-making.

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