IDP
AI
ML

Automated Data Extraction for Component Manufacturing Drawings

Want to win more RFPs without adding to your team? This case study reveals how a manufacturing firm boosted its RFP win rate by 40%—all with its existing lean team.
Reduced time to process
90
%
Extraction accuracy improved
Provides feedback API
SHARED BY
We work with a lot of technology companies but Infrrd has established itself as a true innovation partner for us. They help us tackle the most complicated automation problems around automated data extraction.

A Manufacturer Used Automation to Drastically Cut the Time Needed to Extract Data from Complex Panels

An industrial manufacturer grows revenue by winning RFPs issued by construction companies. A typical RFP document is 200 pages long, with multiple tables, engineering drawings, and text.

Extracting the information from the RFPs necessary to bid on projects was a labor-intensive, manual process -- you can’t just automate the ability to read data from a complex table and validate that data against a master catalog.

But the firm was able to remove the manual processing bottleneck and automate the data extraction process.

Read the use case and see how the firm:

  • Increased RFP win rate by 40%.
  • Increased accuracy and reduced need for human corrections.
  • Decreased processing time from weeks to minutes.

Infrrd. Redefine Possible.

Fill the form

Got Questions?

Talk to an AI Expert!

Get a free 15-minute consultation with our specialists. Whether you want to explore pricing or test our platform with your own documents, we’re here to help!

4.2
4.4