case study

Automated Invoice Processing

Banking & Financial Services

Business Impacts

Increased Efficiency

20%

Improvement in Model Accuracy

Reduced Time & Effort

Customer Key Facts

  • Location : United Kingdom
  • Industry : Accounting

Problem Context

The customer, one of the largest professional services firms in the world, used a third-party tool for processing customer invoices. It only worked on previously-seen invoice templates and provided very low accuracy of ~50 percent. They wanted to build a template-independent solution for efficient invoice processing.

Challenges

 

  • Accurately extracting entities from completely unseen template invoices is challenging
  • A huge quantity of labeled data is needed to get good results

Technologies Used

AWS Comprehend

AWS Comprehend

AWS Textract

AWS Textract

AWS S3

AWS S3

AWS S3 Glacier

AWS S3 Glacier

TensorFlow

TensorFlow

Convolutional Neural Networks

Convolutional Neural Networks

Siamese Networks

Siamese Networks

Custom Named Entity Recognition Model

Custom Named Entity Recognition Model

Developing an Automated Template-free Invoice Processing Solution For a Large Accounting Firm

Solution

Leveraging best-in-class deep learning and OCR techniques, Quantiphi developed a template-independent invoice processing solution that achieved 20% improvement in accuracy as compared to the customer’s existing model. The solution helped the customer minimize time and effort, which in turn improved cost effectiveness, efficiency gain, and ease of operation with great accuracy and lower error rates.

Result

  • Automated invoice processing via a deep learning based template-independent OCR solution
  • High model accuracy in relevant entity extraction

Start Your Next Gen AI Journey Today

Discover how Quantiphi’s AI-powered solutions can transform your business. Fill out the form, and we’ll help you explore tailored AI strategies to unlock new opportunities for growth.

Thank you for reaching out to us!

Our experts will be in touch with you shortly.

In the meantime, explore our insightful blogs and case studies.

Something went wrong!

Please try it again.

Share