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By Huggingface Hub [source]
This dataset offers a unique and comprehensive look into the expansive Airbnb industry in New York City. We capture 20,000+ Airbnbs with its associated data such as descriptions, rates, reviews and availability. Professionals researching this industry will find it an invaluable resource in providing insight to the ever popular Airbnb market that can be used for their advantage.
This dataset showcases some of the most important attributes for each listing: host name, neighborhood group, location (latitude/longitude coordinates), room type, price per night, minimum nights required to book a stay at this listing , total number of reviews and ratings received by guests over time (including reviews per month and last review date), calculated host listing count (indicates how many listings are offered by each host) along with 365 days worth of availability score. With all these parameters one can understand dynamics of demand & supply & further utilize them accordingly to maximize returns or occupancy greeting never before seen transparency into NYC’s Airbnb scene
For more datasets, click here.
- 🚨 Your notebook can be here! 🚨!
This dataset can be used to gain a comprehensive understanding of the Airbnb market in New York City. The data offers descriptions, rates, reviews and availability for over 20,000 Airbnbs in NYC.
Here are few tips on how to use this dataset: - Use the latitude and longitude coordinates to visualize the variety of Airbnbs located across all five boroughs of New York City using mapping programs like Google Maps or ArcGIS. - Determine the versatile price ranges offered by Airbnb listings by looking at the “price” column available for each listing . - Analyze reviews scored by guests who have used an Airbnb in order to better understand customer experience with different services through columns such as “number_of_reviews” and “last_review.
4 Understand how often properties are made available for booking based on their popularity through columns like “availability_365 and reviews_per_month. . 5 Investigate listing host data by looking into their description (host name) as well as number of listings they have booked (calculated host listing count)
- Determining the listings with the highest satisfaction ratings for potential customers to book.
- Analyzing neighborhood trends in prices, availability, and reviews to identify hot areas of competition within the Airbnb market.
- Predicting future prices throughput examining properties such as review scores and availability rate to provide forecast information to AirBnB owners
If you use this dataset in your research, please credit the original authors. Data Source
License: CC0 1.0 Universal (CC0 1.0) - Public Domain Dedication No Copyright - You can copy, modify, distribute and perform the work, even for commercial purposes, all without asking permission. See Other Information.
File: train.csv | Column name | Description | |:-----------------------------------|:------------------------------------------------------------------------------------| | name | The name of the Airbnb listing. (String) | | host_name | The name of the host of the Airbnb listing. (String) | | neighbourhood_group | The neighbourhood group the Airbnb listing is located in. (String) | | latitude | The latitude coordinate of the Airbnb listing. (Float) | | longitude | The longitude coordinate of the Airbnb listing. (Float) | | room_type | The type of room offered by the Airbnb listing. (String) | | price | The price per night of the Airbnb listing. (Integer) | | minimum_nights | The minimum number of nights required for booking the Airbnb listing. (Integer) | | number_of_reviews | T...
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The majority of guests on Airbnb are women. Most Airbnb guests are aged 25 to 34.
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Data Description There are 2 datasets
searches.tsv - Contains a row for each set of searches that a user does for Dublin contacts.tsv - Contains a row for every time that an assigned visitor makes an inquiry for a stay in a listing in Dublin
searches dataset contains the following columns:
ds - Date of the search id_user - Alphanumeric user_id ds_checkin - Date stamp of the check-in date of the search ds_checkout - Date stamp of the check-out date of the search n_searches - Number of searches in the search set n_nights - The number of nights the search was for n_guests_min - The minimum number of guests selected in a search set n_guests_max - The maximum number of guests selected in a search set origin_country - The country the search was from filter_price_min - The value of the lower bound of the price filter, if the user used it filter_price_max - The value of the upper bound of the price filter, if the user used it filter_room_types - The room types that the user filtered by, if the user used the room_types filter filter_neighborhoods - The neighborhood types that the user filtered by, if the user used the neighborhoods filter
contacts dataset contains the following columns:
id_guest - Alphanumeric user_id of the guest making the inquiry id_host - Alphanumeric user_id of the host of the listing to which the inquiry is made id_listing - Alphanumeric identifier for the listing to which the inquiry is made ts_contact_at - UTC timestamp of the moment the inquiry is made. ts_reply_at - UTC timestamp of the moment the host replies to the inquiry, if so ts_accepted_at - UTC timestamp of the moment the host accepts the inquiry, if so ts_booking_at - UTC timestamp of the moment the booking is made, if so ds_checkin - Date stamp of the check-in date of the inquiry ds_checkout - Date stamp of the check-out date of the inquiry n_guests - The number of guests the inquiry is for n_messages - The total number of messages that were sent around this inquiry
Practicalities Analyze the provided data and answer the questions to the best of your abilities. Include the relevant tables/graphs/visualization to explain what you have learnt about the market. Make sure that the solution reflects your entire thought process including the preparation of data - it is more important how the code is structured rather than just the final result or plot. You are expected to spend no more than 3-6 hours on this project.
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These are the Airbnb statistics on gross revenue by country.
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The Airbnb business model has revolutionized the hospitality and tourism industry by leveraging the power of the sharing economy. Established in 2008, Airbnb provides a platform for homeowners to monetize their extra space by renting it out to travelers seeking unique lodging experiences. This innovative approach no
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This dataset, titled 'Airbnb Market Analysis and Real Estate Sales Data (2019),' comprises a comprehensive collection of information pertaining to the Airbnb rental market and property sales in two distinct areas within California: Big Bear and Joshua Tree, along with their associated zip codes (92314, 92315, 92284, and 92252). The dataset provides monthly aggregated data, allowing for an in-depth analysis of rental and real estate market trends in these regions. It includes the following files:
This file contains listing-level information from 2019, aggregated on a monthly basis. It encompasses various metrics, such as unique property codes (unified_id), generated revenue, availability (openness), occupancy ratios, nightly rates, lead times, and average length of stay for reservations made each month. Additionally, it provides insights into property amenities.
This file indicates whether a listing has specific amenities, denoting their presence with a value of 1 or their absence with a value of 0. Notably, it identifies the availability of a pool or hot tub in each listing.
This file contains latitude and longitude coordinates for each listing, enabling precise spatial analysis and visualization.
This dataset provides information concerning properties available for sale within the study areas. In the Joshua Tree region (zip codes 92284 and 92252), there are two separate files—one presenting the overall information about sales properties and the other focusing on properties with pools.
This dataset is a valuable resource for researchers and analysts interested in gaining insights into the real estate and Airbnb rental markets in California, particularly within the specified regions."
This dataset provides a strong foundation for Power BI reporting, enabling the creation of insightful reports and dashboards. Analysts can utilize joins on unique IDs to extract key factors and KPIs, facilitating data-driven decision-making. Whether it's optimizing Airbnb listings, making informed real estate investments, or shaping policies, this dataset serves as a valuable resource for Power BI users seeking to gain deeper insights and drive data-driven strategies in the California real estate market
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This is the complete breakdown of how much revenue Airbnb makes in commission from listings in each region.
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Comprehensive Airbnb dataset for Curitiba, Brazil providing detailed vacation rental analytics including property listings, pricing trends, host information, review sentiment analysis, and occupancy rates for short-term rental market intelligence and investment research.
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Discover the booming short-term vacation rental market! This in-depth analysis reveals key trends, growth drivers, and regional market share, including insights into major players like Airbnb and Booking.com. Learn about the lucrative opportunities and challenges in this rapidly expanding industry, covering everything from 1-3 day rentals to longer business trips. Explore the future of STRs and unlock valuable strategic insights.
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Discover the booming vacation rental market! Explore key trends, growth drivers, and regional insights for 2025-2033. Learn about leading companies like Airbnb and Booking.com and understand the future of short-term rentals. Get the data-driven analysis you need to succeed.
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Comprehensive Airbnb dataset for Tokyo, Japan providing detailed vacation rental analytics including property listings, pricing trends, host information, review sentiment analysis, and occupancy rates for short-term rental market intelligence and investment research.
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Leverage our Airbnb dataset to gain comprehensive insights into global short-term rental markets. Track property details, pricing trends, reviews, availability, and amenities to optimize pricing strategies, conduct market research, or enhance travel-related applications. Data points may include listing ID, host ID, property type, price, number of reviews, ratings, availability, and more. The dataset is available as a full dataset or a customized subset tailored to your specific needs.
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Discover the booming short-term rental market! Our analysis reveals a $150 billion market in 2025, projected to reach $450 billion by 2033, driven by Airbnb, Booking.com, and other major players. Explore market trends, growth forecasts, and key challenges in this comprehensive report.
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TwitterAirbnb® is an American company operating an online marketplace for lodging, primarily for vacation rentals. The purpose of this study is to perform an exploratory data analysis of the two datasets containing Airbnb® listings and across 10 major cities. We aim to use various data visualizations to gain valuable insight on the effects of pricing, covid, and more!
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| Report Attribute/Metric | Details |
|---|---|
| Market Size 2024 | 5.7 billion USD |
| Market Size in 2025 | USD 6.1 billion |
| Market Size 2030 | 8.2 billion USD |
| Report Coverage | Market Size for past 5 years and forecast for future 10 years, Competitive Analysis & Company Market Share, Strategic Insights & trends |
| Segments Covered | Property Type, Pricing Tier, Length of Stay, User Demographics |
| Regional Scope | North America, Europe, Asia Pacific, Latin America and Middle East & Africa |
| Country Scope | U.S., Canada, Mexico, UK, Germany, France, Italy, Spain, China, India, Japan, South Korea, Brazil, Mexico, Argentina, Saudi Arabia, UAE and South Africa |
| Top 5 Major Countries and Expected CAGR Forecast | U.S., France, Italy, Spain, UK - Expected CAGR 4.0% - 6.0% (2025 - 2034) |
| Top 3 Emerging Countries and Expected Forecast | Vietnam, Morocco, Colombia - Expected Forecast CAGR 7.1% - 8.6% (2025 - 2034) |
| Companies Profiled | Airbnb Luxe, Booking.com, Expedia, Villas of Distinction, Luxury Retreats, HomeAway, Vacasa, Turnkey Vacation Rentals, James Villa Holidays, Zillow, Vrbo and RedAwning |
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TwitterGlobal short-term rental intelligence sourced from leading Online Travel Agencies (OTAs). The OTA Real Estate Dataset provides a comprehensive view of the global vacation rental market by combining verified OTA property listings with valuation, tax, and physical asset data. Each record includes unique property identifiers, geolocation details, pricing indicators, and occupancy metrics—enabling robust market analysis and investment-grade insights.
Continuously sourced from major OTA platforms and refined through proprietary data-cleaning models, this dataset ensures accuracy, consistency, and comparability across regions. Available globally with flexible delivery via API or flat files, it serves as a foundational dataset for those analyzing market performance, forecasting development potential, or conducting housing research.
Key Highlights: Granular Real Estate Intelligence: Combines OTA listing data with valuation, tax, and property attributes for a holistic view of market activity.
Global and Standardized: Harmonized schema and coverage across countries, cities, and neighborhoods for cross-market comparability.
High-Fidelity Data: Proprietary normalization removes duplicates and outliers to ensure analytical precision.
Flexible Access: Delivered through API or CSV, updated regularly for timely decision-making.
Ideal For: Real Estate Investors: Identify high-performing short-term rental markets and assess yield potential.
Developers & Urban Planners: Evaluate spatial demand patterns and inform development feasibility studies.
Financial Institutions: Integrate standardized OTA data into underwriting, risk, and valuation models.
Tourism Economists & Market Researchers: Quantify the impact of vacation rentals on local housing and tourism dynamics.
Use It To: Benchmark short-term rental performance by region or property type.
Analyze shifts in rental demand and pricing over time.
Support market-entry, site-selection, and feasibility studies with real OTA-backed data.
Enhance research and policy analysis with consistent, globally comparable property-level insights.
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Discover the booming vacation rental market! This in-depth analysis reveals key trends, growth drivers, and leading companies shaping the future of short-term rentals. Learn about market size, CAGR, and regional insights for informed investment decisions.
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The dataset used in this project is a publicly available dataset containing Airbnb listing data for New York City. It provides comprehensive details about various aspects of Airbnb listings, such as neighborhood, room types, prices, availability, and host information.
Key Features of the Dataset Here are some of the main columns included in the dataset and what they represent:
id: A unique identifier for each listing. name: The name or title of the Airbnb listing. host_id: The unique ID of the host. host_name: The name of the host. neighbourhood_group: The borough where the listing is located (e.g., Manhattan, Brooklyn, Queens, Bronx, Staten Island). neighbourhood: The specific neighborhood within the borough. latitude and longitude: The geographic coordinates of the listing. room_type: The type of room being offered: Entire home/apt Private room Shared room price: The price per night to stay at the listing. minimum_nights: The minimum number of nights required for booking. number_of_reviews: The total number of reviews received by the listing. reviews_per_month: The average number of reviews the listing receives each month. availability_365: The number of days the listing is available for booking in a year. calculated_host_listings_count: The total number of listings managed by a host. Dataset Characteristics Timeframe: The dataset represents a snapshot of listings and reviews within a specific time period (usually the latest available at the time of collection). Geography: Includes all five boroughs of New York City: Manhattan Brooklyn Queens Bronx Staten Island Diversity: The dataset captures a diverse set of listings, from luxury apartments in Manhattan to budget-friendly shared rooms in the Bronx. Why This Dataset? This dataset is ideal for analysis because:
It allows us to explore trends in NYC's Airbnb market, such as pricing patterns, popular room types, and host activity. It offers valuable insights into neighborhood preferences and pricing strategies for hosts. It helps identify potential areas of improvement, such as boosting listings in underrepresented neighborhoods like Staten Island and Queens. Dataset Source This dataset is commonly hosted on platforms like Kaggle or Inside Airbnb, a project that compiles publicly available information on Airbnb listings. It is designed to provide transparency and insight into Airbnb activity across cities.
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The Bed and Breakfast Accommodation industry has grown modestly over the five years through 2025-26, with revenue expected to have increased at an annualised 1.8%. The pandemic heavily disrupted the industry’s performance, pushing demand to historic lows in 2020-21 and driving the industry’s profitability into negative territory. Extended border closures, state lockdowns and weak domestic travel activity left many providers with unsustainable occupancy rates and rising fixed costs. However, the industry’s recovery has gained traction as domestic and inbound visitor nights have normalised, underpinning stronger demand for boutique and regional accommodation. In 2025-26, industry revenue is expected to increase 1.8%, reaching $99.7 million. The rebound reflects improved household sentiment and rising demand for short-break leisure travel. However, cost-of-living pressures and intense competition from hotels and short-term rental providers have tempered growth. Online platforms like Airbnb and online travel agencies (OTAs) remain a structural challenge, as they intensify price competition and erode providers’ capacity to lift room rates in line with rising input costs. Operators that differentiate through premium breakfasts, curated experiences and local partnerships have captured a more stable customer base, helping to lift revenue and rebuild profitability. Industry profitability has been positive, consolidating the recovery from deep losses in 2020-21. Higher average revenue per booking and the use of owner labour to contain staffing costs have upheld higher profit margins. While rising utilities and wage expenses will present challenges over the coming years, providers focusing on authentic experiences and regional positioning are set to sustain healthy earnings in a competitive market environment. Industry revenue is forecast to rise at an annualised 2.3% over the five years through 2030-31 to reach $111.6 million. Growth will be underpinned by steady increases in domestic leisure demand and the gradual recovery of discretionary spending as inflation eases and household incomes improve. However, ongoing cost-of-living pressures and strong competition from hotels, short-term rentals and aggregator platforms will constrain operators’ ability to lift prices, capping overall growth.
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Explore the booming Vacation Rental market analysis, revealing key insights, market size, CAGR, drivers, and future trends for 2025-2033. Discover growth opportunities in apartment rentals and private home rentals.
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By Huggingface Hub [source]
This dataset offers a unique and comprehensive look into the expansive Airbnb industry in New York City. We capture 20,000+ Airbnbs with its associated data such as descriptions, rates, reviews and availability. Professionals researching this industry will find it an invaluable resource in providing insight to the ever popular Airbnb market that can be used for their advantage.
This dataset showcases some of the most important attributes for each listing: host name, neighborhood group, location (latitude/longitude coordinates), room type, price per night, minimum nights required to book a stay at this listing , total number of reviews and ratings received by guests over time (including reviews per month and last review date), calculated host listing count (indicates how many listings are offered by each host) along with 365 days worth of availability score. With all these parameters one can understand dynamics of demand & supply & further utilize them accordingly to maximize returns or occupancy greeting never before seen transparency into NYC’s Airbnb scene
For more datasets, click here.
- 🚨 Your notebook can be here! 🚨!
This dataset can be used to gain a comprehensive understanding of the Airbnb market in New York City. The data offers descriptions, rates, reviews and availability for over 20,000 Airbnbs in NYC.
Here are few tips on how to use this dataset: - Use the latitude and longitude coordinates to visualize the variety of Airbnbs located across all five boroughs of New York City using mapping programs like Google Maps or ArcGIS. - Determine the versatile price ranges offered by Airbnb listings by looking at the “price” column available for each listing . - Analyze reviews scored by guests who have used an Airbnb in order to better understand customer experience with different services through columns such as “number_of_reviews” and “last_review.
4 Understand how often properties are made available for booking based on their popularity through columns like “availability_365 and reviews_per_month. . 5 Investigate listing host data by looking into their description (host name) as well as number of listings they have booked (calculated host listing count)
- Determining the listings with the highest satisfaction ratings for potential customers to book.
- Analyzing neighborhood trends in prices, availability, and reviews to identify hot areas of competition within the Airbnb market.
- Predicting future prices throughput examining properties such as review scores and availability rate to provide forecast information to AirBnB owners
If you use this dataset in your research, please credit the original authors. Data Source
License: CC0 1.0 Universal (CC0 1.0) - Public Domain Dedication No Copyright - You can copy, modify, distribute and perform the work, even for commercial purposes, all without asking permission. See Other Information.
File: train.csv | Column name | Description | |:-----------------------------------|:------------------------------------------------------------------------------------| | name | The name of the Airbnb listing. (String) | | host_name | The name of the host of the Airbnb listing. (String) | | neighbourhood_group | The neighbourhood group the Airbnb listing is located in. (String) | | latitude | The latitude coordinate of the Airbnb listing. (Float) | | longitude | The longitude coordinate of the Airbnb listing. (Float) | | room_type | The type of room offered by the Airbnb listing. (String) | | price | The price per night of the Airbnb listing. (Integer) | | minimum_nights | The minimum number of nights required for booking the Airbnb listing. (Integer) | | number_of_reviews | T...