Becky Gandillon

Hacking Your Vacation: Using Data for Fun

To get the perfect Disney hotel room, the final step is sending a fax. Here's the data science that gets you there.

Hacking Your Vacation: Using Data for Fun
#1about 4 minutes

Introduction to data-driven vacation planning

The core goals for a successful Disney vacation are to avoid crowds, save money, and maximize enjoyment by using a data-driven approach.

#2about 5 minutes

Why planning a Disney vacation is a complex data problem

Manually planning a trip is nearly impossible due to the vast number of variables like park capacity, attendance, ticket costs, and attraction popularity.

#3about 6 minutes

Identifying key data sources for vacation optimization

Effective predictions rely on diverse data sources including school calendars, economic trends, scraped wait times, and user-submitted feedback.

#4about 8 minutes

How to predict park crowds and attraction wait times

A crowd calendar provides a high-level view, but the core predictions are granular wait time curves for every attraction on five-minute increments.

#5about 7 minutes

Creating a step-by-step optimized park itinerary

A live demo shows how to use a web tool to generate an optimized touring plan that minimizes waiting by sequencing attractions intelligently.

#6about 2 minutes

Why a mobile app is crucial for real-time optimization

A static printed plan is fragile, so a mobile app is used to re-optimize the itinerary throughout the day using real-time wait time data.

#7about 6 minutes

Using data to decide if Genie+ is worth the cost

By analyzing time saved versus cost, you can determine the actual value of upcharges like Genie+ and Individual Lightning Lane for different parks and crowd levels.

#8about 7 minutes

Choosing hotels and restaurants based on cost vs satisfaction

Scatter plots comparing user satisfaction ratings against average cost help identify the best value hotels and restaurants, avoiding expensive disappointments.

#9about 2 minutes

Future ideas for personalized vacation planning

The presentation concludes by exploring future possibilities, such as a recommendation engine that learns user preferences in real-time to suggest the next attraction.

Related jobs
Jobs that call for the skills explored in this talk.

Featured Partners

From learning to earning

Jobs that call for the skills explored in this talk.

Data Scientist


Charing Cross, United Kingdom

Remote
Python
Core Data
Machine Learning

Data Scientist

Wizeline
Barcelona, Spain

Remote
R
ETL
NumPy
SciPy
+5

Data Scientist


Municipality of Madrid, Spain

40-60K
Azure
Python
Data Lake
Computer Vision
+2