Lineup Adds New Machine Learning Capabilities to PAR Technology’s Brink POS Ecosystem

Lineup-Adds-New-Machine-Learning-Capabilities-to-PAR-Technology’s-Brink-POS®-Ecosystem

ParTech, Inc. (“ParTech”), a leading global provider of point of sale (POS) software and integrated technical solutions to the restaurant and retail industries, has added Lineup, a sales and labor forecasting solution powered by artificial intelligence, to its Brink POS integration ecosystem.

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Lineup puts the power of artificial intelligence into restaurant operators’ hands, allowing them to make more consistent and profit-focused decisions about labor and food. With best-in-class prediction capability and easy-to-use features, Lineup gives restaurant operators timely, actionable, and accurate insights using continuously improving prediction algorithms.

“Quality insights are critical for restaurants in today’s fast-changing world, and Lineup’s ability to use machine learning to drive quicker, more informed decisions, make it a wonderful fit for our Brink POS integration ecosystem,” said Stephen Lee, Director of Strategic Partnerships at ParTech.

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Through the power of machine learning, every restaurant on the Lineup platform receives its own custom predictive sales model that is updated daily, driving continuous accuracy improvement, and the ability to rapidly evolve as external factors change.

Lineup’s features have never been more important than they are now, given the uncertainty surrounding COVID-19 and the likely continued impact it will have on restaurants in the future. In fact, Lineup’s predictive capabilities have already returned to pre-COVID-19 accuracy levels and will continue to automatically evolve over time.

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