CRE Intelligence MCP
Provides live commercial real estate data (rates, demographics) and analysis tools (DCF, rent roll parsing, lease abstraction, IC memo generation) within Claude Desktop.
README
CRE Intelligence MCP
Live market data for commercial real estate analysis — inside Claude.
Connect this MCP to Claude Desktop and instantly access Federal Reserve interest rates, Census Bureau demographics, DCF modeling, rent roll parsing, lease abstraction, and IC memo generation — all from a single prompt.
"Analyze this deal: 2201 South Blvd, Charlotte NC. NOI $400k, asking $6M, retail strip."
→ Pulls live SOFR from the Fed. Pulls Census demographics for that exact block. Builds a full levered 10-year DCF. Writes an institutional-quality IC memo. 30 seconds.
Why this exists
The #1 problem with AI in CRE: 66% of professionals use it daily, but only 5% trust it for actual deal decisions.
The reason? AI guesses at rates and demographics. A DCF built on a hallucinated SOFR rate is worthless.
This MCP fixes that. Every number comes from a verified public source:
- Interest rates → Federal Reserve (FRED API)
- Demographics → US Census Bureau ACS
- Document analysis → Claude AI with structured output
Zero data licensing fees. Zero hallucinations on financial inputs.
Tools
| Tool | What it does | Data source |
|---|---|---|
get_current_rates |
Live SOFR, 10yr Treasury, Fed Funds + implied cap ranges by property type | FRED |
get_inflation_data |
CPI, shelter inflation, rent CPI + DCF rent growth guidance | FRED |
get_cre_market_data |
CRE price index, C&I loan trends, delinquency rates, credit spreads | FRED |
get_market_demographics |
Median income, employment, vacancy, rents for any US address | Census Bureau |
get_radius_demographics |
1/3/5-mile trade-area rings: population, weighted income, renter share, rents | Census Bureau |
analyze_rent_roll |
Paste PDF text → structured JSON: tenant, SF, rent, dates, expirations | Claude AI |
abstract_lease |
Paste lease text → term, rent schedule, TI, options, red flags | Claude AI |
flag_lease_risks |
Rent roll JSON → rollover risk, concentration risk, due diligence checklist | Claude AI |
build_dcf_model |
Full levered 10-year DCF with live rates auto-fetched from FRED | Python + FRED |
generate_deal_memo |
Address + NOI + price → full IC memo with live rates and demographics | Claude AI + FRED + Census |
Example output
Prompt: "Get me current interest rates"
SOFR: 3.63% (June 8, 2026)
SOFR 30-day: 3.59%
10yr Treasury: 4.55%
5yr Treasury: 4.29%
Fed Funds: 3.63%
Implied cap rates (spread over 10yr T):
Core Multifamily: 5.30% – 6.05%
Core Industrial: 5.55% – 6.30%
Core Office: 6.05% – 7.05%
Value-Add: 6.05% – 7.05%
Loan rate guidance:
Floating: SOFR + 150–250bps = ~5.38%–5.88%
Fixed: 10yr T + 150–200bps = ~6.05%–6.55%
Prompt: "Analyze this deal: 2201 South Blvd Charlotte NC, NOI $400k, asking $6M, retail strip"
The MCP automatically chains get_current_rates + get_market_demographics + build_dcf_model + generate_deal_memo and returns a full IC memo including:
Entry Cap Rate: 6.67% (+212bps over 10yr Treasury)
Loan Rate: 5.38% (derived from live SOFR 3.63% + 175bps)
Year 1 DSCR: 1.53x
IRR: 14.6%
Equity Multiple: 3.11x
Census Tract demographics (2023 ACS):
Median HHI: $141,419
Employment rate: 97.2%
College educated: 64.9%
Vacancy rate: 8.6%
Recommendation: GO — subject to rent roll review and comp analysis.
Setup
Option A — Hosted (fastest, no API keys)
Add this to your claude_desktop_config.json and restart Claude Desktop:
{
"mcpServers": {
"cre-intelligence": {
"type": "streamable-http",
"url": "https://cre-intelligence-mcp.onrender.com/mcp"
}
}
}
If your MCP client only supports stdio servers, use the mcp-remote bridge instead:
{
"mcpServers": {
"cre-intelligence": {
"command": "npx",
"args": ["-y", "mcp-remote", "https://cre-intelligence-mcp.onrender.com/mcp"]
}
}
}
Free during beta. All data fetching runs server-side.
Option B — Self-hosted
Prerequisites
- Claude Desktop
- Python 3.11+
- Free API keys (takes ~2 minutes total):
- FRED: fred.stlouisfed.org/docs/api/api_key.html
- Census: api.census.gov/data/key_signup.html
- Anthropic: console.anthropic.com
Install
git clone https://github.com/Zwondra/cre-intelligence-mcp
cd cre-intelligence-mcp
python3.11 -m venv venv
venv/bin/pip install -r requirements.txt
cp .env.example .env
# Add your API keys to .env
Connect to Claude Desktop
Add to ~/Library/Application Support/Claude/claude_desktop_config.json:
{
"mcpServers": {
"cre-intelligence": {
"command": "/path/to/cre-intelligence-mcp/venv/bin/python3",
"args": ["/path/to/cre-intelligence-mcp/server.py"],
"env": {
"ANTHROPIC_API_KEY": "sk-ant-...",
"FRED_API_KEY": "your_fred_key",
"CENSUS_API_KEY": "your_census_key"
}
}
}
}
Restart Claude Desktop. The tools will appear automatically.
Test it
Open Claude Desktop and say:
"Get me current interest rates"
You should see it call get_current_rates and return live Federal Reserve data.
Document analysis
The document tools (analyze_rent_roll, abstract_lease) work by pasting PDF text directly into the prompt. In Claude Desktop:
- Open your rent roll or lease PDF
- Copy all the text
- Say: "Analyze this rent roll: [paste text]"
The tool extracts every tenant, suite, SF, rent, lease dates, and expiration into structured JSON — then flag_lease_risks can immediately analyze it for rollover and concentration risk.
Data sources
| Source | What | Cost |
|---|---|---|
| FRED (Federal Reserve) | SOFR, Treasury yields, Fed Funds, CPI, CRE price index | Free |
| Census Bureau ACS | Income, employment, housing, rents by census tract | Free |
| Anthropic Claude | Document parsing, risk analysis, memo generation | Pay per use |
Roadmap
- [ ] Comparable sales search (CREXI public listings)
- [ ] Multi-property portfolio analysis
- [ ] Sensitivity table generation (cap rate / NOI / LTV scenarios)
- [ ] Export to Excel / Word
- [ ] Deal history / comparison across sessions
License
MIT
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