5 datasets found
  1. Delhi -NCR real estate data

    • kaggle.com
    zip
    Updated Sep 12, 2023
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    Luv00679 (2023). Delhi -NCR real estate data [Dataset]. https://www.kaggle.com/datasets/luv00679/delhi-ncr-real-estate-data
    Explore at:
    zip(126391 bytes)Available download formats
    Dataset updated
    Sep 12, 2023
    Authors
    Luv00679
    License

    http://opendatacommons.org/licenses/dbcl/1.0/http://opendatacommons.org/licenses/dbcl/1.0/

    Area covered
    National Capital Region
    Description

    Description

    Welcome to the "Real Estate Market Insights: Magic Bricks Web Scraped Dataset" available on Kaggle! This comprehensive dataset provides a wealth of information on real estate properties extracted from the popular real estate portal, Magic Bricks. With this dataset, you can explore and analyze the dynamic and ever-changing landscape of the real estate market.

    Dataset Overview:

    This dataset comprises meticulously scraped data from Magic Bricks, a prominent platform for buying, selling, and renting real estate properties in various regions. The dataset is regularly updated to ensure it reflects the most current market conditions and trends.

    Key Features:

    • Property Details: Gain access to a wide range of property details, including property type (apartment, house, commercial, etc.), location, size, and more.
    • Price Information: Explore property prices, including listing price, area-based pricing, and price trends.
    • Property Amenities: Discover the amenities and features associated with each property, from the number of bedrooms and bathrooms to parking availability and more.
    • Property Status: Determine whether a property is available for sale, rent, or lease.

    Use Cases:

    • Market Analysis: Use this dataset to perform in-depth market analysis to understand price trends, property demand, and supply dynamics.
    • Investment Opportunities: Identify potential investment opportunities in different regions based on price trends and property types.
    • Location-Based Insights: Explore how property prices and amenities vary across different localities and cities.
    • Real Estate Research: Use this dataset for academic research, business strategies, or data-driven decision-making.

    Data Collection Method:

    The dataset was collected using web scraping techniques, ensuring that it captures a wide array of properties listed on the Magic Bricks platform. Data integrity and accuracy are maintained through regular updates and quality checks.

    Data Format:

    The dataset is provided in a CSV format, making it easy to import and analyze using various data analysis tools and programming languages.

    Disclaimer:

    Please note that this dataset is for research and analytical purposes only. It is advisable to verify the data with Magic Bricks or other reliable sources before making any real estate transactions or investment decisions.

  2. 🏠 France Total Real Estate Sales 2022

    • kaggle.com
    zip
    Updated Sep 21, 2023
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    fgjspaceman (2023). 🏠 France Total Real Estate Sales 2022 [Dataset]. https://www.kaggle.com/datasets/franoisgeorgesjulien/france-total-real-estate-sales-2022
    Explore at:
    zip(64200652 bytes)Available download formats
    Dataset updated
    Sep 21, 2023
    Authors
    fgjspaceman
    License

    https://creativecommons.org/publicdomain/zero/1.0/https://creativecommons.org/publicdomain/zero/1.0/

    Area covered
    France
    Description

    Dear Scientists,

    I am sharing with you this gold mine, a descriptive listing of all the Real Estate sales in France for 2022. The dataset comes from Gouvernemental website data.gouv.fr where you can access for free the past 5 years of sales of the Real Estate market.

    I removed dead columns with 99% missing values and did not apply any kind of features engineering. Some columns have missing values but not worth dropping since the rows has valuable information.

    Feel free to ask in comments if you need additional information concerning the French RE market, or about features meanings.

    To give you some context, with the data available you can find out: - The real address of sold properties in France - The price of sold properties - The date the transaction occured - The description of sold properties (type, size, number of rooms) - The nature of the mutation (sale, swap, VEFA (Vente en l'état futur d'achèvement) etc..)

    "DVF" stands for "Demande de Valeur Foncière," which translates to "Request for Property Value" in English. DVF is a system used in France to provide information about real estate transactions, particularly property sales and their associated prices.

    The DVF system was established to enhance transparency in the French real estate market and make property transaction data accessible to the public. It allows individuals to inquire about property sale prices in specific areas or regions of France. This information can be valuable for various purposes, including:

    Property Valuation: Homebuyers and sellers can use DVF data to get an idea of property values in a particular area, helping them make informed decisions about buying or selling real estate.

    Market Analysis: Real estate professionals and analysts use DVF data to assess market trends and fluctuations in property prices. This information can inform investment decisions and market research.

    Taxation: Local authorities and tax authorities use DVF data to assess property taxes, as property values are a key factor in determining tax rates.

    Urban Planning: Municipalities and urban planners may use DVF data to gain insights into property transactions and trends within their regions, helping them make decisions about development and infrastructure.

    It's important to note that DVF data typically includes information about the sale price, the date of the transaction, the property's location, and other relevant details. However, personal information about buyers and sellers is generally not disclosed in the publicly available DVF dataset.

    DVF data has become increasingly accessible through online platforms and government websites, making it a valuable resource for those interested in the French real estate market. It provides transparency and aids in making informed decisions related to property transactions and investments.

    Features (Columns):

    • Date mutation (Mutation Date): The date on which the property mutation or transaction occurred.
    • Nature mutation (Mutation Nature): The nature or type of property mutation, such as sale, inheritance, etc.
    • Valeur fonciere (Property Value): The value of the property.
    • No voie (Street Number): The street number of the property.
    • Type voie (Street Type): The type of street (e.g., avenue, boulevard) where the property is located.
    • Code voie (Street Code): A code associated with the street where the property is located.
    • Code postal (Postal Code): The postal code of the property's location.
    • Commune (Town/City): The town or city where the property is located.
    • Code departement (Department Code): The code of the department where the property is situated.
    • Code commune (Commune Code): A code specific to the commune where the property is located.
    • Section (Section): Information about the property section.
    • No plan (Plan Number): The plan number associated with the property.
    • Nombre de lots (Number of Lots): The total number of lots or portions in the property.
    • Type local (Local Type): The type of local or property (e.g., residential, commercial).
    • Surface reelle (Actual Built Area): The actual built area of the property.
    • Nombre pieces principales (Number of Main Rooms): The number of main rooms in the property.
    • Surface terrain (Land Area): The total land area associated with the property.
  3. UK House Price Index: data downloads December 2021

    • gov.uk
    • s3.amazonaws.com
    Updated Feb 16, 2022
    + more versions
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    HM Land Registry (2022). UK House Price Index: data downloads December 2021 [Dataset]. https://www.gov.uk/government/statistical-data-sets/uk-house-price-index-data-downloads-december-2021
    Explore at:
    Dataset updated
    Feb 16, 2022
    Dataset provided by
    GOV.UKhttp://gov.uk/
    Authors
    HM Land Registry
    Area covered
    United Kingdom
    Description

    The UK House Price Index is a National Statistic.

    Create your report

    Download the full UK House Price Index data below, or use our tool to https://landregistry.data.gov.uk/app/ukhpi?utm_medium=GOV.UK&utm_source=datadownload&utm_campaign=tool&utm_term=9.30_16_02_22" class="govuk-link">create your own bespoke reports.

    Download the data

    Datasets are available as CSV files. Find out about republishing and making use of the data.

    Google Chrome is blocking downloads of our UK HPI data files (Chrome 88 onwards). Please use another internet browser while we resolve this issue. We apologise for any inconvenience caused.

    Full file

    This file includes a derived back series for the new UK HPI. Under the UK HPI, data is available from 1995 for England and Wales, 2004 for Scotland and 2005 for Northern Ireland. A longer back series has been derived by using the historic path of the Office for National Statistics HPI to construct a series back to 1968.

    Download the full UK HPI background file:

    Individual attributes files

    If you are interested in a specific attribute, we have separated them into these CSV files:

  4. Analysis of Spanish Apartment Pricing and Size

    • kaggle.com
    zip
    Updated Jan 16, 2023
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    The Devastator (2023). Analysis of Spanish Apartment Pricing and Size [Dataset]. https://www.kaggle.com/datasets/thedevastator/analysis-of-spanish-apartment-pricing-and-size-p/discussion
    Explore at:
    zip(65331467 bytes)Available download formats
    Dataset updated
    Jan 16, 2023
    Authors
    The Devastator
    License

    https://creativecommons.org/publicdomain/zero/1.0/https://creativecommons.org/publicdomain/zero/1.0/

    Description

    Analysis of Spanish Apartment Pricing and Size Post-COVID-19

    Investigating the Impact of the Pandemic

    By [source]

    About this dataset

    This dataset provides an in-depth insight into Spanish apartment prices, locations and sizes, offering a comprehensive view of the effects of the Covid-19 crisis in this market. By exploring the data you can gain valuable knowledge on how different variables such as number of rooms, bathrooms, square meters and photos influence pricing, as well as key details such as description and whether or not they are recommended by reviews. Furthermore, by comparing average prices per square meter regionally between different areas you can get a better understanding of individual apartment value changes over time. Whether you are looking for your dream home or simply seeking to understand current trends within this sector this dataset is here to provide all the information necessary for both people either starting or already familiar with this industry

    More Datasets

    For more datasets, click here.

    Featured Notebooks

    • 🚨 Your notebook can be here! 🚨!

    How to use the dataset

    This dataset includes a comprehensive collection of Spanish apartments that are currently up for sale. It provides valuable insight into the effects of the Covid-19 pandemic on pricing and size. With this guide, you can take advantage of all the data to explore how different factors like housing surface area, number of rooms and bathrooms, location, number of photos associated with an apartment, type and recommendations affect price.

    • First off, you should start by taking a look at summary column which summarizes in one or two lines what each apartment is about. You can quickly search some patterns which could give important information about the market current situation during COVID-19 crisis.

    • Explore more in depth each individual apartment by looking at its description section for example if it refers to particular services available like swimming pool or gymnasiums . Consequently those extra features usually bumps up the prices higher since buyers are keen to have such luxury items included in their purchase even if it’s not so affordable sometimes..

    • Start studying locationwise since it might gives hint as to what kind preof city we have eirther active market in terms equity investment , home stay rental business activities that suggest opportunities for considerable return on investment (ROI). Even further detailed analysis such as comparing net change over time energy efficient ratings electrical or fuel efficiency , transport facilities , educational level may be conducted when choosing between several apartments located close one another ..

    • Consider multiple column ranging from price value provided (price/m2 )to size sqm surface area measure and count number of rooms & bathrooms . Doing so will help allot better understanding whether purchasing an unit is worth expenditure once overall costs per advantages estimated –as previously acknowledged apps features could increase prices significantly- don’t forget security aspect major item critical home choice making process affording protection against Intruders ..

    • An interesting but tricky part is Num Photos how many were included –possibly indicates quality build high end projects appreciate additional gallery mentioning quite informative panorama around property itself - while recomendation customarily assumes certain guarantees warranties unique promise provided providing aside prospective buyer safety issues impose trustworthiness matters shared among other future residents …

    • Finally type & region column should be taken into account reason enough different categories identifies houses versus flats diversely built outside suburban villas contained inside specially designed mansion areas built upon special requests .. Therefore usage those two complementary field help finding right desired environment accompaniments beach lounge bar attract nature lovers adjacent mountainside

    Research Ideas

    • Creating an interactive mapping tool that showcases the average prices per square meter of different cities or regions in Spain, enabling potential buyers to identify the most affordable areas for their desired budget and size.
    • Developing a comparison algorithm that recommends the best options available depending on various criteria such as cost, rooms/bathrooms, recommended status, etc., helping users make informed decisions when browsing for apartments online.
    • Constructing a model that predicts sale prices based on existing data trends and analyses of photos and recommendations associated wit...
  5. p

    Form D2.1—Claim a home, first home or first home (new home) transfer duty...

    • publications.qld.gov.au
    Updated Dec 3, 2014
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    (2014). Form D2.1—Claim a home, first home or first home (new home) transfer duty concession - Dataset - Publications | Queensland Government [Dataset]. https://www.publications.qld.gov.au/dataset/form-osr-d2-1-claim-home-first-home-concession
    Explore at:
    Dataset updated
    Dec 3, 2014
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Area covered
    Queensland
    Description

    Complete this form if you want to claim a concession when acquiring a residence that you will occupy as your home, first home or first home (new home).

  6. Not seeing a result you expected?
    Learn how you can add new datasets to our index.

Share
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Email
Click to copy link
Link copied
Close
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Luv00679 (2023). Delhi -NCR real estate data [Dataset]. https://www.kaggle.com/datasets/luv00679/delhi-ncr-real-estate-data
Organization logo

Delhi -NCR real estate data

Unveiling Real Estate Market Trends Through Magic Bricks Web Scraping

Explore at:
zip(126391 bytes)Available download formats
Dataset updated
Sep 12, 2023
Authors
Luv00679
License

http://opendatacommons.org/licenses/dbcl/1.0/http://opendatacommons.org/licenses/dbcl/1.0/

Area covered
National Capital Region
Description

Description

Welcome to the "Real Estate Market Insights: Magic Bricks Web Scraped Dataset" available on Kaggle! This comprehensive dataset provides a wealth of information on real estate properties extracted from the popular real estate portal, Magic Bricks. With this dataset, you can explore and analyze the dynamic and ever-changing landscape of the real estate market.

Dataset Overview:

This dataset comprises meticulously scraped data from Magic Bricks, a prominent platform for buying, selling, and renting real estate properties in various regions. The dataset is regularly updated to ensure it reflects the most current market conditions and trends.

Key Features:

  • Property Details: Gain access to a wide range of property details, including property type (apartment, house, commercial, etc.), location, size, and more.
  • Price Information: Explore property prices, including listing price, area-based pricing, and price trends.
  • Property Amenities: Discover the amenities and features associated with each property, from the number of bedrooms and bathrooms to parking availability and more.
  • Property Status: Determine whether a property is available for sale, rent, or lease.

Use Cases:

  • Market Analysis: Use this dataset to perform in-depth market analysis to understand price trends, property demand, and supply dynamics.
  • Investment Opportunities: Identify potential investment opportunities in different regions based on price trends and property types.
  • Location-Based Insights: Explore how property prices and amenities vary across different localities and cities.
  • Real Estate Research: Use this dataset for academic research, business strategies, or data-driven decision-making.

Data Collection Method:

The dataset was collected using web scraping techniques, ensuring that it captures a wide array of properties listed on the Magic Bricks platform. Data integrity and accuracy are maintained through regular updates and quality checks.

Data Format:

The dataset is provided in a CSV format, making it easy to import and analyze using various data analysis tools and programming languages.

Disclaimer:

Please note that this dataset is for research and analytical purposes only. It is advisable to verify the data with Magic Bricks or other reliable sources before making any real estate transactions or investment decisions.

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