Infor Announces Launch of Enhanced Forecasting Engine for Infor EZRMS

  • Infor Hospitality, EzRMS
  • 11.10.16
Infor announced that it has updated Infor EzRMS with an enhanced, integrated adaptive learning and forecasting engine.

The engine introduces several new forecasting algorithms, including dynamic trend modeling, combined with the latest machine learning techniques, that help to provide improved forecasts and optimizations to the hospitality industry.

When the algorithms are applied, Infor EzRMS will recalculate a full new forecast and as the models begin to pick up and learn business trends, users will start to see the forecast adapt more quickly to unexpected changes in the market and respond accordingly.

“The hotel booking landscape is constantly evolving and in order stay on top, hotels need to have the proper back office systems in place for everything from reservations to revenue management,” said Stan Van Roij, general manager, Infor Hospitality. “Infor Hospitality is continuing to put substantial investments in growth and development to better enable our customers to operate at their highest performance. The new forecasting algorithms and improved user interface in Infor EzRMS help to take the stress away from our customers so they are able to focus on the needs of their guests.”

In addition to the updated engine, Infor EzRMS also has an enhanced user interface that enables users to easily access business critical information such as best revenue opportunities, single and multiproperty reports, applicationwide search, navigation history, data export options and direct access to key filters in reports for key metrics and time ranges.
A leading provider of business applications specialized by industry and built for the cloud, Infor has 15,000 employees and more than 90,000 customers in 200+ countries and territories.

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