There is so much data that a hotel has or can have access to... but in most cases, there's no one who understands how to translate these data into actionable insights on a hotel's current and future business. A vast array of external and publically available data can influence a hotel's performance, its offering and allows the hotel to be better at what it delivers to its guests and its shareholder. Years of underutilized data are sitting in PMS, POS, CRM, and other systems. More than ever hotels need to justify investments and budgets. So will a data scientist be able to give these answers?

Lyle  Worthington
Lyle Worthington
Technology Executive and Consultant & Past President of HFTP Global

This is a valuable position for all businesses that want to make the shift to data-driven decision making, but is certainly a critical position for any medium or large business. Quite often, though, the role of a data scientist is misunderstood. Data scientists are not "report writers" - they need a deep understanding of your entire business and must be able to interpret the data in all your disparate systems. They should be well-versed in database design, math, statistics, and programming - languages like python and R are critical, as is the ability to write complex SQL queries.

A good data scientist is comfortable working with both structured and unstructured data, can implement and operate ETL systems, and can build and use machine learning models based on guest behaviors to provide predictive analytics. As data currently sits in silos with no easy way to link it together, they also need to be able to properly cleanse, standardize, and link data.

Their goal should be to first get access to all of the data, get it clean, properly linked, and enriched with additional valuable data sources - including behavioral data like visits to websites, views of ads, clicks on email links, service requests, chats, and social interactions with your business. Only once that is in progress should your data science team start doing data analysis.

Properly implemented, you will have much greater insight into the key segments of your guests, how to interact with them, who you are at risk of losing, and what you should offer them next. This is the type of personalized service your guests are used to now, so ignore this at your own risk!

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