Skip to main content

Extract structured property data from assessment card PDFs using LLM-powered text extraction

Project description

landrecords-card-reader

Extract structured property data from assessment card PDFs using LLM-powered text extraction.

Property cards (also called land cards or assessment cards) are PDF documents produced by county tax assessors.

Installation

pip install landrecords-card-reader

With optional extras:

# LangGraph wiring (only needed if you want to use the graph node)
pip install landrecords-card-reader[graph]

# Everything
pip install landrecords-card-reader[all]

System dependencies

  • Ollama running locally or on a remote host with a text model loaded (e.g. gemma4:26b-a4b-it-q8_0)
  • wkhtmltopdf for HTML→PDF conversion of property pages that aren't served as PDFs:
    # macOS
    brew install --cask wkhtmltopdf
    # Debian/Ubuntu
    sudo apt-get install wkhtmltopdf
    

OCR (docTR + PyTorch) ships as a Python dependency; the model weights (~100MB) are downloaded to ~/.cache/doctr/ on first call.

Quick start

from landrecords_card_reader import read_property_card

data, photo = read_property_card("https://example.com/card.pdf")

print(data["ownername"])    # "SMITH, JOHN A"
print(data["totalvalue"])   # 285000
print(data["parceladdr"])   # "123 MAIN ST"

# photo is raw image bytes of the first property photo, or None
if photo:
    with open("photo.jpg", "wb") as f:
        f.write(photo)

Use analyze_photo=True to send the property photo (if it exists) to the vision model, filling in missing building details (exterior walls, roof style, number of floors, etc.):

data, photo = read_property_card(url, analyze_photo=True)

If you already have the PDF bytes, pass them directly to skip the download:

data, photo = read_property_card(url, pdf_bytes=raw_bytes)

For URLs that might be HTML property report pages (e.g. Beacon, Tyler, or other county assessment sites), use read_property_card_from_url. It fetches the URL, detects whether the response is a PDF or HTML, and converts HTML pages to PDF via pdfkit (wkhtmltopdf) automatically:

from landrecords_card_reader import read_property_card_from_url

data, photo = read_property_card_from_url(
    "https://www.webgis.net/LinkedFiles/va/pulaski/pc/cards/PC17759.htm"
)

CLI

landrecords-card-reader https://example.com/card.pdf --dry-run -v

Configuration

Set via environment variables or a .env file:

Variable Default Description
CARD_READER_OLLAMA_HOST http://localhost:11434 Ollama server URL
CARD_READER_EXTRACTION_MODEL gemma4:26b-a4b-it-q8_0 Model for structured extraction
CARD_READER_PHOTO_CLASSIFICATION_MODEL gemma4:e2b Lightweight vision model for photo classification

Extracted fields

The extraction prompt maps over 80 property card fields including:

  • Identity: parcelid, taxacctnum, taxyear
  • Owner: ownername, owneraddr, ownercity, ownerstate, ownerzip
  • Location: parceladdr, parcelcity, parcelstate, parcelzip, legaldesc
  • Valuation: landvalue, imprvalue, totalvalue, assessedvalue, appraisedvalue
  • Building: yearbuilt, bldgsqft, bedrooms, fullbaths, halfbaths, bldgtype
  • Construction: foundation, roofcover, extwall, heating, heatfuel, cooling
  • Sale: saleamt, saledate
  • Zoning: zoningcode, zoningdesc, zoningtype

How it works

  1. Download the PDF (or accept pre-downloaded bytes)
  2. In parallel:
    • OCR every page via docTR — PDF bytes are passed straight to DocumentFile.from_pdf (rasterised internally via pypdfium2) and run through docTR's deep-learning detection + recognition models in a single batched inference call. The predictor uses assume_straight_pages=True and runs on CUDA when available
    • Extract & classify property photos — candidate images are filtered by size/aspect ratio, then sent to a vision model to keep only actual photographs (discarding sketches, floorplans, maps, etc.)
  3. Extract structured data by sending the raw OCR text to an Ollama LLM
  4. Reconcile values — verifies landvalue + imprvalue == totalvalue and computes any single missing value arithmetically
  5. Targeted retries — if parcelid is too short, re-asks; if a heat-fuel label is present but heatfuel is empty, runs a deterministic regex fallback then a focused LLM retry; if any registered field's label is in the OCR text but the value is empty, batches them into one LLM retry

License

MIT

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

landrecords_card_reader-0.3.4.tar.gz (33.2 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

landrecords_card_reader-0.3.4-py3-none-any.whl (39.6 kB view details)

Uploaded Python 3

File details

Details for the file landrecords_card_reader-0.3.4.tar.gz.

File metadata

  • Download URL: landrecords_card_reader-0.3.4.tar.gz
  • Upload date:
  • Size: 33.2 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.2.0 CPython/3.13.7

File hashes

Hashes for landrecords_card_reader-0.3.4.tar.gz
Algorithm Hash digest
SHA256 ea90ebcfb1f1ce2e6f61ad401765f6c8565125e8e8e4ebfb018ffdf2795c2a91
MD5 4772d9804ac3628fa92268e886aaa87d
BLAKE2b-256 62637944076109065ad62436b52424077fe4e6d927c70cb58c0a95fb99d36f18

See more details on using hashes here.

File details

Details for the file landrecords_card_reader-0.3.4-py3-none-any.whl.

File metadata

File hashes

Hashes for landrecords_card_reader-0.3.4-py3-none-any.whl
Algorithm Hash digest
SHA256 3b7dae3c6cda16fcc9ab413d20d4f0a7e5900ddc7c028e10265c62eb9d143a45
MD5 a3e65378c9438170b3e213602d19e653
BLAKE2b-256 48af933f6e5eaecf882da4e1a41030cf84eb08715bfd3658a618c479c02c17e0

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page