Skip to main content
Glama
chadru

assessor-lookup-mcp

by chadru

assessor-lookup

Automated county assessor public-records search for real-estate appraisers.

License: MIT Python MCP

Look up a property's public record — owner of record, legal description, above/below-grade square footage, beds/baths, year built, taxes, assessed and market value, lat/lon, and a link to the assessor card — straight from the county assessor. Then diff those records against your MLS data to flag discrepancies before the report goes out.

Built from an appraiser's workflow, for appraisers: the check command takes your MLS export (subject + comps) and prints a field-by-field discrepancy report (GLA, beds, baths, year built, basement sqft) in seconds instead of a county-website tab per property.

Comp 2: 123 Example Ave  **
  GLA:      MLS 2792     | Assessor 2846     | DIFF +54
  Beds:     MLS 4        | Assessor 4        | OK
  Year:     MLS 1998     | Assessor 1998     | OK

Features

  • One record model, many counties — Spatialest, Tyler EagleWeb, Aumentum, and ArcGIS platforms all normalize to the same dict.

  • MLS discrepancy check — reads standard MLS CSV exports (PPMLS and RESO/REColorado column names both understood) and flags GLA/beds/baths/year/ basement differences.

  • Auto-discovery — point it at a county it doesn't know and it maps the county for you, API-first, then caches the result.

  • No API keys — these are the same public endpoints the county's own property-search website uses.

  • Agent-ready — ships an MCP server so an AI agent can drive the whole thing.

  • Regression + benchmark harness — pins golden records per county and catches the day a county website changes. Packaged live fixtures use only government or institutional properties; user-onboarded records stay in the user's local config directory and are never added to the package.

Related MCP server: mcp-server-attom

Requirements

  • Python 3.9+ (the MCP server needs 3.10+).

  • Standard library only for the core — no runtime dependencies. Optional extras pull in Playwright ([card]) and the MCP SDK ([mcp]).

Installation

pip install assessor-lookup

# optional extras
pip install "assessor-lookup[card]"   # print an assessor card to PDF (Playwright)
pip install "assessor-lookup[mcp]"    # run the MCP server for AI agents

# one-time browser install for the card/PDF feature
playwright install chromium

Or from source:

git clone https://github.com/chadru/assessor-lookup-public && cd assessor-lookup-public
pip install -e ".[dev]"

Quick start (CLI)

# Single property
assessor-lookup lookup "123 Main St" --county "El Paso"
assessor-lookup lookup --parcel 0156931101001 --county Adams --json

# List supported counties
assessor-lookup counties

# Auto-detect + cache an assessor source for a new county
assessor-lookup discover "Clear Creek"

# Diff your MLS export against public records (subject + comps)
assessor-lookup check subject.csv comps.csv --county "El Paso"

# Save the assessor property card as a PDF (needs the [card] extra)
assessor-lookup card "https://property.spatialest.com/co/elpaso/#/property/..." card.pdf

Quick start (Python)

from assessor_lookup import lookup, check_public_records

rec = lookup("123 Main St", county="El Paso")
if rec["status"] == "success":
    print(rec["owner"], rec["above_grade_sqft"], rec["year_built"])

results = check_public_records(subject_row, comp_rows, county="Adams")
flagged = [r for r in results if r["has_any_discrepancy"]]

Every lookup returns a dict with a status key (success, not_found, ambiguous, timeout, api_error, parse_error, …). On success it carries the standard record fields: owner, legal, parcel_number, above_grade_sqft, basement_sqft, beds, baths, year_built, tax_amount, assessed_value, market_value, latitude, longitude, assessor_url, and more (availability varies by platform).

County coverage

County (CO)

Platform

Notes

El Paso

Spatialest

Denver

Spatialest

Douglas

Spatialest

Jefferson

Aumentum (jeffco.us)

Arapahoe

ArcGIS MapServer

multi-layer lookup; use responsibly

Adams

ArcGIS FeatureServer

Clear Creek

Tyler EagleWeb

scraped; full building data

~40 more CO counties

statewide parcel API

baseline via auto-discovery (no building data)

Auto-discovery (new counties)

Point the tool at a county it doesn't know and it tries to map it for you, API-first, best-data-first:

  1. Spatialest (JSON, national) or EagleWeb (Tyler's JSP app, scraped) — full building data (GLA, beds, baths, year built).

  2. Colorado statewide parcel API (ArcGIS) — a baseline for any of ~40 CO counties: owner, legal, land, assessed/market value. This layer has no building characteristics, so GLA/beds/baths/year come back as N/A until a real county client is added.

assessor-lookup discover "Gilpin"     # probe, then cache the hit

Discovered counties are cached in ~/.config/assessor-lookup/county_registry.json (override with ASSESSOR_LOOKUP_HOME) and reused automatically. A lookup or check for an unknown county runs the same discovery inline. Counties still not matched fall back to Spatialest using the county name as the slug.

MCP server (agent-ready)

The repo ships an all-inclusive MCP server so an AI agent can pull down the repo, spin it up, and use county records with zero extra glue. It exposes the lookup/check/discover/harness functionality as tools, the repo's architecture and registry as resources, ready-made workflows as prompts, and a coordinator operating manual as the server instructions.

git clone https://github.com/chadru/assessor-lookup-public && cd assessor-lookup-public
pip install -e ".[mcp]"          # needs Python 3.10+ (lookup core is 3.9+)

assessor-lookup-mcp              # run the server (stdio)

The MCP is a trusted local stdio service, not an authenticated network server. check_mls_csv can read only .csv files beneath the directory where the server starts. To use a different MLS folder, opt in explicitly:

ASSESSOR_LOOKUP_MCP_DATA_DIR=/path/to/mls assessor-lookup-mcp

Resolved paths and symlinks are kept inside that directory. Do not expose the stdio server through an unauthenticated HTTP/SSE bridge.

Register it with Claude Code (or drop the bundled .mcp.json into your project — Claude Code auto-discovers it):

claude mcp add assessor-lookup -- assessor-lookup-mcp

What the agent gets on connect:

Kind

Name

Purpose

tool

lookup_property

one property's record by address or parcel

tool

check_mls_csv

diff an MLS subject+comps export vs public records

tool

list_counties

current coverage (defaults + discovered)

tool

discover_county

auto-map an unknown county (API-first)

tool

probe_county

ping a county live; report field coverage + check-readiness

tool

onboard_county

configure a county for repeated use (discover, probe, pin golden)

tool

run_regression

golden-record regression + latency benchmark

tool

benchmark

offline parser micro-benchmark

resource

assessor://operating-manual

coordinator role, agent topology, data policy

resource

assessor://architecture

live architecture (CLAUDE.md + README)

resource

assessor://counties

the registry as JSON

resource

assessor://golden-records

pinned records the harness checks

resource

assessor://harness-guide

how to run/read the harness

prompt

appraisal_check

run a discrepancy check end-to-end

prompt

onboard_locale

configure all the counties in the user's area

prompt

add_new_county

coordinator workflow to add a county, verified

The server instructions double as the agent's playbook: act as coordinator, read the architecture, and follow the one rule — API-first, scrape only when the API lacks building data (GLA/beds/baths/year).

Predefined agents & skills

The source repository ships auto-discovered definitions for both Claude Code and Codex, so an agent that opens the clone picks up named roles and workflows instead of improvising:

  • Agents (.claude/agents/): coordinator (entry point — routes the work), explorer (maps a new county's site, API-first), reviewer (verifies a new client against the live site + golden), county-onboarder (probes and onboards your counties).

  • Skills (.claude/skills/): onboard-locale, appraisal-check, add-county.

  • Codex agents (.codex/agents/) and shared skills (.agents/skills/): the equivalent coordinator, explorer, reviewer, county-onboarder, and three county/appraisal workflows.

Clone the repo, open it in Claude Code, and say what you want ("set up my counties", "check these comps", "add Teller County") — the coordinator picks up the ball and drives it with the MCP tools.

Development

git clone https://github.com/chadru/assessor-lookup-public && cd assessor-lookup-public
python -m venv .venv && source .venv/bin/activate
pip install -e ".[dev]"

pytest -m "not network"      # fast unit tests (no network)
pytest -m network            # live integration tests (hit real county sites)

Regression + benchmark harness

The operational risk of this project is county websites changing silently. The harness pins known properties per county as golden records and re-checks them.

python tests/harness.py            # full: regression + latency + discovery + parser bench
python tests/harness.py --offline  # parser micro-bench only (no network)
python tests/harness.py --capture  # (re)pin golden records after legitimate data changes

Stable fields (parcel, GLA, basement, beds, baths, year) fail on drift; volatile fields (owner, values, taxes) only warn. Exit codes: 0 pass / 1 hard regression / 2 warnings only.

Point it at your own counties

Working in a different area? Probe a county to see how it reacts and what it returns, then onboard it so it's configured once and re-checked every run:

# See the platform, latency, and exactly which fields a county returns
python tests/harness.py --probe "El Paso" --address "1675 W Garden of the Gods Rd"

# Configure a county for repeated use (discover, probe, pin a golden record)
python tests/harness.py --onboard "El Paso" --parcel 0000000001

--probe reports a coverage line like building 5/5 | check-ready: YES — a county is check-ready when the building fields (GLA/beds/baths/year) come through, which is what the discrepancy check needs. Onboarded counties are saved to ~/.config/assessor-lookup/ (user_cases.json + user_golden.json) and run alongside the packaged defaults on every python tests/harness.py.

An AI agent driving the MCP server does the same via the probe_county / onboard_county tools and the onboard_locale prompt — point it at your area and it configures everything for you.

Contributing

New counties and platforms are welcome. To add a county:

  1. Check whether auto-discovery already resolves it: assessor-lookup discover "Your County" --state xx.

  2. If not, look for a JSON API first (county/state ArcGIS, or a vendor JSON platform). Confirm it carries the building fields (GLA/beds/baths/year) — if it doesn't, scrape the assessor's HTML front-end instead.

  3. Add a client assessor_<county>.py whose lookup(address) (and ideally lookup_by_parcel(parcel_id)) returns the standard record dict with a status key. assessor_adams.py is a compact ArcGIS example; assessor_eagleweb.py is the reference for a scraped platform.

  4. Wire the platform into checker._get_client and add a county_registry.json entry.

  5. Add a golden case in assessor_lookup/harness.py and capture it (python tests/harness.py --capture --filter <id>), then confirm pytest -m "not network" is green.

Open an issue if a county breaks — include the address you searched and the error output. See CLAUDE.md for the full architecture.

Disclaimers

  • Public data only. This tool reads the same public endpoints the county's own property-search website uses. Respect each county's terms of use and rate limits; the regression harness spaces live cases, but individual platform clients do not promise automatic retry or throttling.

  • Records can lag reality (recent sales, new construction). Verify anything material — this is a time-saver, not a substitute for appraiser diligence.

  • Not affiliated with any county government, MLS, or a la mode/CoreLogic.

License

MIT

A
license - permissive license
-
quality - not tested
B
maintenance

Maintenance

Maintainers
Response time
Release cycle
1Releases (12mo)
Commit activity

Resources

Unclaimed servers have limited discoverability.

Looking for Admin?

If you are the server author, to access and configure the admin panel.

Latest Blog Posts

MCP directory API

We provide all the information about MCP servers via our MCP API.

curl -X GET 'https://glama.ai/api/mcp/v1/servers/chadru/assessor-lookup-public'

If you have feedback or need assistance with the MCP directory API, please join our Discord server