Zillow MCP Server

Created By
sap156a year ago
Zillow MCP Server for real estate data access via the Model Context Protocol
Overview

What is Zillow MCP Server?

Zillow MCP Server is a Model Context Protocol (MCP) server that provides real-time access to Zillow real estate data, built with Python and FastMCP.

How to use Zillow MCP Server?

To use the Zillow MCP Server, clone the repository, install the dependencies, set up your Zillow API key in a .env file, and run the server using Python or Docker.

Key features of Zillow MCP Server?

  • 🏠 Property Search: Search for properties by location, price range, and features.
  • 💰 Property Details: Get detailed information about specific properties.
  • 📊 Zestimates: Access Zillow's proprietary home valuation data.
  • 📈 Market Trends: View real estate market trends for any location.
  • 🧮 Mortgage Calculator: Calculate mortgage payments based on various inputs.
  • 🔍 Health Check: Verify API connectivity and monitor performance.

Use cases of Zillow MCP Server?

  1. Searching for properties in a specific area.
  2. Obtaining detailed information about a property.
  3. Accessing market trends for real estate analysis.
  4. Calculating mortgage payments for potential buyers.

FAQ from Zillow MCP Server?

  • Can I use Zillow MCP Server without an API key?

No, you need a Zillow Bridge API key to access the data.

  • Is there a limit on API requests?

Yes, Zillow's API has usage limits, typically 1,000 requests per day per dataset.

  • Can I store data locally?

No, Zillow's terms of service prohibit storing data locally; all requests must be dynamic.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
sap156
Star
0
Language
Python
License
MIT license

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