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Exploratory data analysis of Airbnb bookings in New York City to gain insights into the travel industries and Uncovers trends, patterns, user preferences and behavior. Utilizes Python libraries for data exploration, data cleaning, manipulation, and visualization. Provides valuable insights for travelers, hosts, and the Airbnb business.

SarangGami/Capstone-EDA-project-Airbnb-bookings-analysis

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Capstone-EDA-project-1-Airbnb-bookings-analysis

AirBnb

Table Of Contents

Introduction of Airbnb

  • Airbnb is a popular online platform that allows individuals to list, discover, and book unique accommodations around the world. It was founded in 2008 by Brian Chesky, Joe Gebbia and Nathan Blecharczyk, and has since become the largest and most successful home-sharing companies in the world.

  • Airbnb allows hosts to list their homes, apartments, or other properties for short-term rentals, and provides a platform for travelers to search for and book these accommodations. The platform includes a variety of listing types, including entire homes, private rooms, and shared rooms, and offers a wide range of price points to suit different budgets.

  • Airbnb has also become a popular choice for travelers who want to experience a destination like a local, rather than as a tourist. With more than four million listings in over 100,000 cities.

About the Dataset – AIRBNB BOOKINGS

Dataset Information

  • Number of instances: 48895

  • Number of attributes: 16

  • The Data includes both categorical and numeric values, providing a diverse range of information about the listings.

  • This Dataset may be useful for analyzing trends and patterns in the Airbnb market in New York and also gain insights into the preferences and behavior of Airbnb users in the area.

  • This dataset contains information about Airbnb bookings in New York City in 2019. By analyzing this data, you may be able to understand the trends and patterns of Airbnb use in the NYC.

Different Python libraries used to complete this EDA:

  • Pandas

  • NumPy

  • Matplotlib.Pyplot

  • Seaborn

Project Work flow

  1. Importing Libraries

  2. Loading the Dataset

  3. explore Dataset

  4. Data Cleaning and manipulate

  5. Handling Outliers

  6. Data Visualization

  7. Conclusion

The purpose of the analysis

understanding the factors that influence Airbnb prices in New York City, or identifying patterns of all variables and Our analysis provides useful information for travelers and hosts in the city and also provides some best insights for Airbnb business.

CERTIFICATE

49605559346846

Click here to view the solution of Airbnb Bookings EDA Analysis!

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Exploratory data analysis of Airbnb bookings in New York City to gain insights into the travel industries and Uncovers trends, patterns, user preferences and behavior. Utilizes Python libraries for data exploration, data cleaning, manipulation, and visualization. Provides valuable insights for travelers, hosts, and the Airbnb business.

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