Stays Pricing Transparency and Cancellation Impact

Company:Airbnb
Dawn AI

Welcome to Interview Master! 👋

I'm here to help you practice Stays Pricing Transparency and Cancellation Impact - a Data interview question from Airbnb.

Problem Overview

You are a Data Scientist on the Airbnb Stays team, focusing on analyzing guest booking behaviors. Your team is investigating how pricing transparency and cancellation policies influence booking completion rates and daily booking volume. The goal is to provide insights into how these factors impact booking conversions and inform strategies to optimize guest satisfaction and booking success.

This problem will test your SQL or Python skills in:

  • Writing and optimizing code
  • Data analysis and manipulation
  • Real-world database scenarios used in Airbnb interviews

What You'll Learn

By solving this Airbnb interview question, you'll gain experience with:

  • Writing efficient SQL queries or Python code for production databases
  • Understanding complex data relationships and schema design
  • Applying SQL or Python (your choice!) in a Airbnb-style technical interview setting
  • Problem-solving techniques used by data scientists and analysts at top tech companies

Getting Started

Use the code editor on the right to:

  1. Explore the database schema and table structures
  2. Write and test your SQL or Python (your choice!) queries in a real coding environment
  3. Get instant feedback on your query results
  4. Learn from hints and detailed explanations

Ready to practice this Airbnb Data challenge? Let's dive in! 🚀

I'm ready to work on this Airbnb interview problem. Can you break down the requirements for me?

Dawn AI

Excellent! Let's break down "Stays Pricing Transparency and Cancellation Impact" step by step.

Problem Analysis

Company: Airbnb
Problem Type: Data Science Interview Question
Skill Level: Professional interview preparation

Key Requirements

You are a Data Scientist on the Airbnb Stays team, focusing on analyzing guest booking behaviors. Your team is investigating how pricing transparency and cancellation policies influence booking completion rates and daily booking volume. The goal is to provide insights into how these factors impact booking conversions and inform strategies to optimize guest satisfaction and booking success.

Approach Strategy

For this Airbnb interview question, consider:

  1. Data Exploration: Start by examining the table schemas to understand the data relationships
  2. Query Planning: Think about which tables you'll need to JOIN and what conditions to apply
  3. Code Optimization: Consider performance implications for large datasets (important for Airbnb scale)
  4. Edge Cases: Think about NULL values, duplicate data, and boundary conditions

Next Steps

  1. Click on the "Schema" tab in the code editor to examine the table structures
  2. Review the sample data to understand the data patterns
  3. Start with a basic SELECT statement and build complexity gradually
  4. Test your query and iterate based on the results

This type of problem is commonly asked in Airbnb technical interviews for data analyst, data scientist, and software engineer positions. Take your time to understand the problem thoroughly before writing your solution.

Ready to start coding? 💻

Interview Master can make mistakes. If you encounter a mistake

Current Question

1
2
3
What is the average booking completion rate for properties with 'low' and 'high' pricing transparency levels during April 2024? Use a 7-day rolling window to capture short-term trends. This analysis will help us understand the impact of pricing transparency on booking conversions.

Tables

?
fct_bookings (booking_id, property_id, booking_date, completion_status, pricing_transparency_level, cancellation_policy)
Ready to start practicing?