Revenue ![]() |
Hours Open ![]() |
Customers ![]() |
Average Check ![]() |
Seat Occupancy* ![]() |
RevPASH ![]() |
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Day 30 | $
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Day 31 | $
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Overall | $ | $ | % | $ |
Revenue ![]() |
Hours Open ![]() |
Customers ![]() |
Average Check ![]() |
Seat Occupancy* ![]() |
RevPASH ![]() |
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Week 1 | $
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Week 2 | $
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Week 3 | $
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Week 4 | $
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Overall | $ | $ | % | $ |
Revenue ![]() |
Hours Open ![]() |
Customers ![]() |
Average Check ![]() |
Seat Occupancy* ![]() |
RevPASH ![]() |
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Month 1 | $
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% | $ | |
Month 2 | $
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Month 3 | $
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Month 11 | $
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Month 12 | $
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Overall | $ | $ | % | $ |
RevPASH (Revenue Per Available Seat Hour) - is an important measure that helps restaurant operators understand how
well each seat in a restaurant generates revenue. This RevPASH app is a great tool that provides an operator with a
quick way to input a few relevant numbers and calculate RevPASH.
The application allows the user to edit the various variables that are used in calculating RevPASH and see the
resulting change. There are two methods of calculating RevPASH,
In order for the user to understand the relationship between different variables, the RevPASH application allows you to lock various fields. The locking mechanism enables you to pick which variables are affected by a change in the data input.
Let's say we manage a 100-seat restaurant. The following information for Day 1 (Daily calculation) has been collected. The revenue generated for the entire day was $6,000. The restaurant was open for 8 hours. Assume that 400 customers dined in the restaurant and the average amount each guest spent was $15. The percentage of available seats occupied over the day was 50%.
According to the first formula, as specified below, RevPASH is $7.50 that is 6,000 / (100 Seats x 8 Hours Open). Alternatively, by applying the second formula, the same figure can be arrived by multiplying 0.50 x 15.
Method 1: RevPASH = Revenue/(Seats available x Hours Open)
Method 2: RevPASH = Average Check x Seat Occupancy %
Consider that we would like to understand how a change in Revenue ($7,000) will impact other variables.
Consider that we would like to understand how a change in the number of Customers (500) will impact other variables.
Consider that we would like to understand how a change in the Average Check amount ($20) will impact other variables.
Dr. Peter Szende is a full time faculty member at Boston University School's of Hospitality Administration. He
earned a doctorate in business administration with an emphasis in hotel marketing.
He has gained over 25 years of management experience in the hospitality industry both in Europe and North America.
Peter joined BU as an assistant professor in 2003 and was promoted to Associate Professor of the Practice in 2010.
Since his arrival he has taught five different courses including Introduction to Hospitality Management &
Marketing, Human Resources and Food & Beverage Management. Dr. Szende has written two books, "Hospitality
Marketing" and "Case Scenarios in Hospitality Supervision". In 2011 he developed a new educational concept serving
as the lead author and Series Editor of "Hospitality Management Learning Modules", published by Pearson Prentice
Hall.
Kristin V. Rohlfs is an independent consultant and researcher based in Rochester, New York. She holds a Ph.D. in Service Operations Management and an M.M.H. from the School of Hotel Administration at Cornell University, as well as a B.B.A. from The University of Texas at Austin. Her research interests focus on small-business application of operations management and revenue management and customer reactions to revenue management practices. Authored works include a dissertation, The Role of Space in Revenue Management (2009), and an article, "Best Available Rate Pricing," published in the Cornell Quarterly (2005). A 2011 article coauthored with Breffni Noone and Kelly McGuire, "Social Media Meets Hotel Revenue Management: Opportunities, Issues, and Unanswered Questions, can be found in the Journal of Revenue and Pricing Management.
Roy Madhok graduated from Boston University's School of Hospitality Administration. He has co-authored two chapters in Pearson Prentice Hall's Hospitality Learning Modules: "An introduction to Menu Performance Analysis" and "Crafting a Restaurant Business Plan". Roy is currently a Director of Revenue Management with Highgate Hotels.
Send an email to RevPASHhelp@gmail.com
Version: 1.0 (Updated on: August 11th, 2013)
© Peter Szende, Kristin Rohlfs, Roy Madhok
Developed by Robert Fera and Andrew Bauer, of the Boston University IS&T Web Team