Furnished Finder Scraper avatar

Furnished Finder Scraper

Pricing

from $20.00 / 1,000 results

Go to Apify Store
Furnished Finder Scraper

Furnished Finder Scraper

Extract mid-term rental locations, monthly prices, property types, and host details from Furnished Finder by city or zip code. Built with robust anti-bot bypasses to ensure reliable, scalable real estate data extraction.

Pricing

from $20.00 / 1,000 results

Rating

0.0

(0)

Developer

Brian

Brian

Maintained by Community

Actor stats

0

Bookmarked

2

Total users

1

Monthly active users

20 hours ago

Last modified

Share

A powerful Apify Actor allowing users to extract high-quality, normalized mid-term rental records from Furnished Finder.

Perfect for real estate researchers, traveling nurses, corporate housing locators, and rental arbitrage analysis. This actor bypasses Cloudflare anti-bot systems via Apify Residential Proxies and performs automated human-like location queries.

Features Let’s Do This

  • City-Level Extraction: Specify any city or zip code supported by Furnished Finder (e.g. Austin, TX).
  • Anti-Bot Built-in: Fully integrates with Apify's Residential Proxy network to bypass Cloudflare 500 blocks.
  • Seamless Extraction: Pulls monthly prices, property types (condos, houses, apartments), landlord names, and deep links.

Output Structure

The Actor will store its results in the default dataset. Example record:

{
"url": "https://www.furnishedfinder.com/property/695420_1",
"title": "East Austin Gem",
"monthlyRent": "$2,500/month",
"location": "Austin, TX",
"propertyType": "House",
"details": "3 Bed, 2 Bath",
"availableDate": "Available Oct 1",
"hostName": "John Doe",
"scrapedAt": "2026-03-03T21:00:00.000Z"
}

How to use

Ensure you execute this Actor with Residential Proxies enabled to prevent getting blocked by the host server.

  1. Select Residential under the Proxy configuration in the Apify UI.
  2. Input your target searchLocations in the JSON parameter block.
  3. Click Start and wait for the results to populate in your Dataset.