Tabi Connect Launches AI-Powered Dynamic Business Rules Engine

AI Dynamic Business Rules Engine enables freight brokers to build, manage, and adjust complex pricing logic using plain English, without code.

Marina M Headshot
Lern Seng Adobe Stock 1755996790
lern seng AdobeStock_1755996790

Tabi Connect launched its AI Dynamic Business Rules Engine, which enables freight brokers to build, manage, and adjust complex pricing logic using plain English, without code, allowing teams to respond instantly to market changes while maintaining full auditability and control.

“Freight brokers operate in highly dynamic markets, yet most pricing systems still depend on static rules and heavy manual input,” says Ricardo Gonzalez, CEO and co-founder of Tabi Connect. “We’ve already helped one $4B+ brokerage generate over $100 million in new revenue with a small team managing pricing logic. Now, with AI-powered Dynamic Business Rules, that same impact becomes simpler and more powerful. Brokers can update strategy in real time using plain English and scale quoting without adding headcount.”

Key takeaways:

 

·        Tabi Connect replaces manual workflows and tribal knowledge with an AI-driven decision layer that turns pricing strategy into automated business logic.

·        Compared with rate engines built around fixed logic or IT-led configuration, Tabi Connect’s Dynamic Business Rules Engine allows users to stack multiple parameters, including lane, customer, equipment type, accessorials, or market conditions, into flexible, non-destructive rules. Changes can be implemented across workflows without overwriting existing logic, reducing risk while increasing speed and consistency.

·        The Dynamic Business Rules engine is powered by Tabi Connect’s embedded AI Assistant, which translates plain-English instructions into structured business logic, accelerating onboarding and reducing configuration errors. Built-in versioning, permissions, and rollback capabilities ensure every change is traceable, reversible, and governed, which is critical for teams operating at scale.

 

Page 1 of 172
Next Page