For the best experience, try the new Microsoft Edge browser recommended by Microsoft (version 87 or above) or switch to another browser � Google Chrome / Firefox / Safari
OK

Improve Speed and Operational Efficiency of Enterprise Invoice Processing

invoice uses Amazon Textract to simplify invoice processing and reconciliation with high accuracy. Powered by Adaptive Deep Learning models which improve processing accuracy over time, the solution seamlessly integrates with workflows and systems across Finance, ERP and Procurement.

Now, easily automate capture of invoices and free-form expense reports. Ensure your payables are paid faster, with fewer exceptions and lower costs. Free your teams from manual drudgery, for higher value tasks.

Accelerate your invoice processing with smart automation.

invoice on AWS

X-Celerate Invoice workflow
X-Celerate Invoice workflow Mobile
Testimonial Background
Testimonials_BG_0

Simplify Invoice Processing With

invoice

Save Time, Lower Cost

X.CELERATE Invoice Icon1

Lower your costs through automated invoice processing.

Automated Learning

X.CELERATE Invoice Icon1

Human guided training happens automatically during invoice review and correction.

Easy to Customize

X.CELERATE Invoice Icon2

Low-code customization, role-based workflows, and integration with your existing systems.

Flexible Deployment Options

X.CELERATE Invoice Icon3

Deployed in your AWS cloud or data center (hybrid cloud).

slides
Framework Title
Learn About the Xoriant-AWS Partnership
Resources Image 1
Video

Deep dive into our X·CELERATE Invoice solution built on Amazon Textract can help automate invoice processing at scale.

Resources Image 2
Brochure

X.CELERATE Invoice automatically processes and reconciles invoices using Amazon Textract. It integrates with your current workflow, procurement, ERP and finance software and leverages an intuitive User Interface that learns from human oversight.

Resources Image 3
Video

Deep dive into the solution details and how this solution can automate invoice processing at scale.