case study

Cognitive Document Processing

Banking & Financial Services BFSI

Business Impacts

40%

In potential savings

80%

Model accuracy

12,000+

Documents processed per hour

Client Key Facts

  • Location : North America
  • Industry : Information Technology & Services

Problem Context

The client, a provider of artificial intelligence and machine learning to the Financial Services industry, wanted to develop an Virtual Assistant that enables automated classification and extraction of content from scanned financial documents. This was aimed at eliminating manual dependency in Business Process Outsourcing for reviewing documents.

Challenges

 

  • Processing new loans is time-consuming due to the manual review of documents and involves over 400 different document types
  • Volume and size of documents together with fluctuations make the traditional client server computing model cost prohibitive
  • Unstandardized and disparate documents prevent the use of regular expressions for extraction

Technologies Used

AWS Lambda

AWS Lambda

AWS Step Functions

AWS Step Functions

Amazon EC2

Amazon EC2

Amazon DynamoDB

Amazon DynamoDB

Amazon Elasticsearch Service

Amazon Elasticsearch Service

AI Processing Assistant for Loan Document Processing

Solution

Quantiphi developed a Virtual Assistant that automated the classification and extraction of content from scanned financial documents ranging to about 400 different types; thereby removing manual dependency out of business process outsourcing.

Result

  • Successfully digitized the processing of 12,000 pages per hour with an accuracy of 80 percent, leading to a significant reduction in human effort required for manual extraction of data
  • Serverless architecture helped reduce infrastructure cost by 30 percent

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