Autoscraping's Latin America Real Estate Listings: 100K+ Properties with Geolocation, Pricing, and Detailed Metadata (2024)
# | id_ml |
status |
property_type |
operation |
address |
total_surface |
built_surface |
bedrooms |
ambiances |
bathrooms |
price |
title |
description |
maps_url |
url |
currency |
stop_time |
condition_ml |
city |
state |
country |
seller_id |
seller_url |
real_estate_agency |
telephone_line |
image1 |
image2 |
image3 |
image4 |
image5 |
image6 |
image7 |
image8 |
image9 |
image10 |
image11 |
image12 |
image13 |
image14 |
image15 |
phone1 |
phone2 |
phone3 |
email1 |
email2 |
email3 |
furnished |
parking |
has_balcony |
has_bedroom_suite |
has_breakfast_bar |
has_closet |
has_dinning_room |
has_dressing_room |
has_grill |
has_half_bath |
has_kitchen |
has_laundry |
has_living_room |
has_maid_room |
has_patio |
has_playroom |
has_gym |
has_swimming_pool |
latitude |
longitude |
maintenance_fee |
name |
start_time |
date_created |
created |
updated |
edificio_id |
deleted_at |
previous_price |
price_variation_date |
price_variation_percentage |
---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
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Data Dictionary
Attribute | Type | Example | Mapping |
---|---|---|---|
id_ml
|
String | MLU690266952 | |
status
|
String | active | |
property_type
|
String | Casa | |
operation
|
String | Alquiler temporada | |
address
|
String | Alquiler de Verano casa de 3 dormiotiros o 2 y monoambiente | |
total_surface
|
String | 1 m² | |
built_surface
|
String | 1 m² | |
bedrooms
|
Integer | 3 | |
ambiances
|
Integer | 4 | |
bathrooms
|
Integer | 2 | |
price
|
Integer | 1700 | |
title
|
String | Apartamento En Venta En Punta Del Este | |
description
|
String | ** El precio publicado corresponde a 2a.Quincena Febrero ... | |
maps_url
|
|||
url
|
String | https://casa.mercadolibre.com.uy/MLU-690266952-apartament... | |
currency
|
String | USD | |
stop_time
|
DateTime | 2025-08-14T04:00:00+00:00 | |
condition_ml
|
String | used | |
city
|
String | Punta del Este | |
state
|
String | Maldonado | |
country
|
String | Uruguay | |
seller_id
|
Integer | 1942485289 | |
seller_url
|
String | https://www.mercadolibre.com.uy/perfil/RP20240813083103 | |
real_estate_agency
|
Boolean | f | |
telephone_line
|
|||
image1
|
String | MLU690266952_1.jpg | |
image2
|
String | MLU690266952_2.jpg | |
image3
|
String | MLU690266952_3.jpg | |
image4
|
String | MLU690266952_4.jpg | |
image5
|
String | MLU690266952_5.jpg | |
image6
|
String | MLU690266952_6.jpg | |
image7
|
String | MLU690266952_7.jpg | |
image8
|
String | MLU690266952_8.jpg | |
image9
|
String | MLU690266952_9.jpg | |
image10
|
String | MLU690266952_10.jpg | |
image11
|
String | MLU690266952_11.jpg | |
image12
|
String | MLU690266952_12.jpg | |
image13
|
String | MLU690266952_13.jpg | |
image14
|
String | MLU690266952_14.jpg | |
image15
|
String | MLU690266952_15.jpg | |
phone1
|
|||
phone2
|
|||
phone3
|
|||
email1
|
|||
email2
|
|||
email3
|
|||
furnished
|
|||
parking
|
Integer | 1 | |
has_balcony
|
|||
has_bedroom_suite
|
String | Sí | |
has_breakfast_bar
|
|||
has_closet
|
|||
has_dinning_room
|
|||
has_dressing_room
|
|||
has_grill
|
|||
has_half_bath
|
|||
has_kitchen
|
String | Sí | |
has_laundry
|
String | Sí | |
has_living_room
|
|||
has_maid_room
|
|||
has_patio
|
|||
has_playroom
|
|||
has_gym
|
|||
has_swimming_pool
|
|||
latitude
|
|||
longitude
|
|||
maintenance_fee
|
|||
name
|
|||
start_time
|
|||
date_created
|
DateTime | 2024-08-14T20:55:21+00:00 | |
created
|
DateTime | 2024-08-15T07:39:55+00:00 | |
updated
|
DateTime | 2024-08-15T07:39:55+00:00 | |
edificio_id
|
String | punta del este | |
deleted_at
|
|||
previous_price
|
|||
price_variation_date
|
|||
price_variation_percentage
|
Description
Country Coverage
Volume
100,000 | records |
Pricing
License | Starts at |
---|---|
One-off purchase |
$2,500 / purchase |
Monthly License |
$200 / month |
Yearly License | Not available |
Usage-based | Not available |
Suitable Company Sizes
Delivery
Use Cases
Categories
Related Products
Frequently asked questions
What is Autoscraping’s Latin America Real Estate Listings: 100K+ Properties with Geolocation, Pricing, and Detailed Metadata (2024)?
Comprehensive Latin American real estate dataset featuring detailed property info, pricing, and geolocation. Ideal for market analysis and investment research. High-quality, up-to-date data with wide coverage across multiple countries
What is Autoscraping’s Latin America Real Estate Listings: 100K+ Properties with Geolocation, Pricing, and Detailed Metadata (2024) used for?
This product has 5 key use cases. AutoScraping recommends using the data for Real Estate Analytics, Real Estate Investment, Real Estate Agencies, Real Estate Intelligence, and Real Estate Insights. Global businesses and organizations buy Real Estate Market Data from AutoScraping to fuel their analytics and enrichment.
Who can use Autoscraping’s Latin America Real Estate Listings: 100K+ Properties with Geolocation, Pricing, and Detailed Metadata (2024)?
This product is best suited if you’re a Small Business, Medium-sized Business, or Enterprise looking for Real Estate Market Data. Get in touch with AutoScraping to see what their data can do for your business and find out which integrations they provide.
Which countries does Autoscraping’s Latin America Real Estate Listings: 100K+ Properties with Geolocation, Pricing, and Detailed Metadata (2024) cover?
This product includes data covering 7 countries like Brazil, Argentina, Colombia, Chile, and Ecuador. AutoScraping is headquartered in Argentina.
How much does Autoscraping’s Latin America Real Estate Listings: 100K+ Properties with Geolocation, Pricing, and Detailed Metadata (2024) cost?
Pricing for Autoscraping’s Latin America Real Estate Listings: 100K+ Properties with Geolocation, Pricing, and Detailed Metadata (2024) starts at USD200 per month. Connect with AutoScraping to get a quote and arrange custom pricing models based on your data requirements.
How can I get Autoscraping’s Latin America Real Estate Listings: 100K+ Properties with Geolocation, Pricing, and Detailed Metadata (2024)?
Depending on your data requirements and subscription budget, AutoScraping can deliver this product in .json, .xml, .csv, .xls, and .sql format.
What is the data quality of Autoscraping’s Latin America Real Estate Listings: 100K+ Properties with Geolocation, Pricing, and Detailed Metadata (2024)?
You can compare and assess the data quality of AutoScraping using Datarade’s data marketplace.
What are similar products to Autoscraping’s Latin America Real Estate Listings: 100K+ Properties with Geolocation, Pricing, and Detailed Metadata (2024)?
This Tabular Data has 3 related products. These alternatives include Autoscraping’s Mexico Real Estate Data: 150K+ Property Listings from 5 Major Platforms - Comprehensive Pricing, Geolocation, and Amenities (2024), CrawlBee Realtor.com Dataset Property Listings MLS Data Real Estate Data Residential Data Realtime Real Estate Market Data, and Grepsr Real Estate Products, Property Listing, Sold Properties, Rankings, Agent Datasets Global Coverage with Custom and On-demand Datasets. You can compare the best Real Estate Market Data providers and products via Datarade’s data marketplace and get the right data for your use case.