/AirBnB-Case-Study-Using-Tableau

This repository provides an in-depth analysis of Airbnb's revenue decline and proposes strategies to capitalize on the lifting of travel restrictions.The repository includes Python code for data cleaning and EDA, as well as Tableau visualizations, offering comprehensive insights and actionable strategies for revenue growth at Airbnb.

Primary LanguageJupyter NotebookMIT LicenseMIT

AirBnB Case Study Using Tableau

This repository presents an analysis of Airbnb's revenue decline and strategies to capitalize on the lifting of travel restrictions. The analysis begins with data cleaning and exploratory data analysis (EDA) conducted in Python. The cleaned dataset was then imported into Tableau for visualizations and addressing the following objectives:

1. Host Acquisition Strategy:

Identify the optimal types of hosts to acquire and determine their preferred locations for recruitment.

2. Customer Segmentation:

Categorize customers based on their preferences to gain insights such as:

  • Targeted neighborhoods for marketing efforts.
  • Preferred pricing ranges for different customer segments.
  • Various property types that align with customer preferences.
  • Recommendations for property adjustments to enhance customer satisfaction.

3. Popular Locations and Properties:

Visualize the current popular localities and properties in New York to leverage their success.

4. Boosting Property Traction:

Explore visualizations and insights to develop strategies for increasing visibility and traction for less popular properties.

This repository provides the Python code used for data cleaning and EDA, as well as Tableau visualizations that offer a comprehensive understanding of the revenue analysis at Airbnb. You can refer to the code and visualizations to gain insights and implement actionable strategies for revenue growth.