Order-To-Cash Tech Showcase: AI Agents that Automate, Accelerate & Collect Faster

The Order-to-Cash Tech Showcase, featuring industry luminaries Kevin Appleby from GrowCFO, Dylan Rushe of Stutt, Apurv Bansal from Zenskar, Nathaniel Hobson of Agicap, and David Mandeno of Revving, represents a pivotal exploration of the transformative potential of artificial intelligence in financial operations. As businesses confront increasingly complex financial workflows, AI-driven technologies are emerging as critical solutions for automating accounts receivable, revenue management, and cash collection processes. The showcase demonstrates how intelligent agents can dramatically reduce manual interventions, minimize errors, and accelerate cash flow with unprecedented efficiency and accuracy.

The event brought together these technology innovators to provide a comprehensive view of AI’s revolutionary impact on order-to-cash workflows. Each presenter offered unique insights into solving traditional financial challenges through cutting-edge AI technologies. From automated collections and intelligent invoicing to advanced revenue recognition and working capital optimization, the presentations underscored the rapid technological evolution and AI’s potential to fundamentally reshape financial operations across diverse industries and business models.

Highlights:

  • Stutt: AI agents can autonomously manage accounts receivable tasks through intelligent phone calls and email communications, reducing manual intervention
  • Zenskar: Advanced platforms enable real-time contract interpretation and automated revenue recognition for complex SaaS billing scenarios
  • Agicap: Intelligent cash flow forecasting provides accurate, data-driven insights by centralizing cash management and collections processes
  • Revving: AI-powered working capital funding solutions leverage transaction data to assess credit risk in digital economy marketplaces

Watch Back on Demand

Related Articles

Responses

Your email address will not be published. Required fields are marked *