


This tutorial will explore how to use Python’s requests library to scrape real estate data from an API. We'll also learn how to apply filters to retrieve potentially bargain properties that have recently had their prices reduced.
Introduction
When looking for great real estate investment opportunities, recent price reductions are often one of the most important indicators. Having a tool that displays these properties quickly can save a lot of time and may help you get a head start before anyone else notices!
In this article we will:
- Discuss the basics of interacting with the real estate API using requests.
- Learn how to use query parameters to filter results—especially focusing on price change queries.
- Parse and display returned data in a concise format.
Requirements
- InstalledPython 3
- Terminal or command line prompt
- Familiar with the basics of the Python requests library
- API key (if required by API)
Step 1: Understand the API
The API we use may return the following data:
- Property ID
- Title or address
- Price
- Location
- Historical Price Changes
- Other related information
Key query parameters
This API supports multiple query parameters that help us filter results:
參數(shù) | 類型 | 描述 |
---|---|---|
**includedDepartments[]** | 數(shù)組 | 按部門過濾。示例:departments/77 |
**fromDate** | 日期 | 僅檢索在此日期之后列出(或更新)的房產(chǎn)。 |
**propertyTypes[]** | 數(shù)組 | 按房產(chǎn)類型過濾。示例:0代表公寓,1代表房屋,等等。 |
**transactionType** | 字符串 | 0代表出售,1代表出租,等等。 |
**withCoherentPrice** | 布爾值 | 僅檢索價格與市場價格一致的房產(chǎn)。 |
**budgetMin** | 數(shù)字 | 最低預算閾值。 |
**budgetMax** | 數(shù)字 | 最高預算閾值。 |
**eventPriceVariationFromCreatedAt** | 日期 | 創(chuàng)建價格類型事件的日期——包含在內(nèi)。 |
**eventPriceVariationMin** | 數(shù)字 | 價格變化的最小百分比(負數(shù)或正數(shù))。 |
Step 2: Create Request
The following is an example script for querying an endpoint using Python's requests library. Adjust parameters and headers as needed, especially if X-API-KEY is required.
import requests import json # 1. 定義端點URL url = "https://api.stream.estate/documents/properties" # 2. 創(chuàng)建參數(shù) params = { 'includedDepartments[]': 'departments/77', 'fromDate': '2025-01-10', 'propertyTypes[]': '1', # 1可能代表“公寓” 'transactionType': '0', # 0可能代表“出售” 'withCoherentPrice': 'true', 'budgetMin': '100000', 'budgetMax': '500000', # 關(guān)注價格變化 'eventPriceVariationFromCreatedAt': '2025-01-01', # 從年初開始 'eventPriceVariationMin': '-10', # 至少下降10% } # 3. 使用API密鑰定義標頭 headers = { 'Content-Type': 'application/json', 'X-API-KEY': '<your_api_key_here>' } # 4. 發(fā)出GET請求 response = requests.get(url, headers=headers, params=params) # 5. 處理響應 if response.status_code == 200: data = response.json() print(json.dumps(data, indent=2)) else: print(f"請求失敗,狀態(tài)碼為{response.status_code}")
Important parameter description
eventPriceVariationMin = '-10'
This means you are looking for a price drop of at least 10%.
eventPriceVariationMax = '0'
Setting this to 0 ensures that you do not include properties that have experienced price increases or any changes above 0%. Essentially, you are capturing negative or zero change.
? Tip: Adjust the min/max values ??to suit your strategy. For example, -5 and 5 would include price changes within ±5%.
Potential pitfalls and precautions
- Authentication: Always make sure you use a valid API key. Some APIs also have rate limits or usage quotas.
- Error handling: Handle situations where API is down or parameters are invalid.
- Data Validation: The API may return incomplete data for some lists. Always check for missing fields.
- Date Format: Make sure your fromDate and toDate are in a format recognized by the API (e.g., YYYY-MM-DD).
- Large Datasets: If the API returns hundreds or thousands of lists, pagination may be required. Check whether paging parameters such as page or limit exist in the API document.
Summary
Now you have a basic Python script to crawl real estate data, focusing on properties that have dropped in price. This method can be very powerful if you want to invest in real estate, or just want to track market trends.
As always, please adjust the parameters to your specific needs. You can extend this script to sort results by price, integrate advanced analytics, and even plug data into a machine learning model for deeper insights.
Happy hunting and may you find hidden gems!
Further reading
- Python Requests Documentation
- Real Estate Data API Comparison
- Stream Estate API
- Key Points of Real Estate Data API
The above is the detailed content of Scraping real estate data with Python to find opportunities. For more information, please follow other related articles on the PHP Chinese website!

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