Touchless AP Invoice Processing

Eliminate manual data entry and feed clean, coded bills into your accounting system.

>75% Faster

Cut down time from receipt-of-bill to ready-to-pay.

Remove Manual Data Entry

Self-learning AI Optical Character Recognition (OCR) extracts Accounts Payable data from PDFs.

Reduce Errors

Advanced Document AI OCR parses your invoices with up to 99.9% accuracy

The Problem:

Manually entering bills is slow and error-prone.

The Solution:

Unity + Document AI OCR

  • Auto-Capture:

    Document AI OCR extracts key information for AP and other ancillary data types, e.g. vendor, PO, dates, interest penalties, special charges.

  • Auto-Code:

    AI suggestions for vendors, GL expense codes, cost centers, business unit / properties.

  • API Post & Pay:

    Post data and image to downstream invoice register automatically for approvals and payment using your own ERP accounting system, e.g. Yardi, MRI, NexusPayables, AppFolio and others.

How it Works:

The Results:

“This is what we were totally hoping for. Anytime we talked about OCR technology, this is the point we were hoping to reach eventually. This is a big jump.”
Debbie R.
Senior Manager for Fortune 500 REIT
Achievable accuracy
0 %
Document throughput
0 x
Reduction in training time
0 %

Frequently Asked Questions:

Does Unity Document AI OCR require extensive training?

No. Unlike traditional OCR solutions, our proprietary underlying extraction model can achieve 94%+ accuracy after training on metadata from just one document, bypassing the previous limitation of requiring metadata from five documents. The accuracy naturally increases within minutes as humans uplevel the model.

Does the OCR work with various formats?

Yes. Our OCR uses a unique metadata tagging dataset and a custom extract-transform-load (ETL) algorithm, ensuring the data is transformed into a format optimized for neural model training. It currently supports PDF, JPG, PNG and TIFF, with additional formats being added.  

What if the OCR misses a field?

The user has a chance to review missing fields, and with a simple click they can capture the missing data. Upon saving the work, the self-learning capabilities remember the addition and ensures the model captures the missing field on the next encounter. 

How does GL matching work?

Unity uses an internal AI Cross Referencing Agent uses an auto-GL coding process based on learned behavior and metadata from both the bill and vendor profiles.

StackDC delivers an AI-first, no-code workflow-automation platform plus vertically focused modules that remove manual data work for real-estate and other ops-heavy enterprises.