Imagine a point-and-click tool for wiring together a broad swath of capabilities, to create just about any money movement solution you may need. No coding required, deploy in one day.
This is the purpose of Money Fabric. The following are the capabilities which may be configured
Configure many stores for a single merchant.
Provide rewards based upon SKU, tender type, store location, customer type, and more.
Automated sweep of funds from store location virtual accounts to merchant virtual accounts.
The Money Fabric team has built Global Payment's Vital POS platform, as well as Bluetooth-enabled POS for unattended payments. We can work with you to integrate your POS to Money Fabric without changing your processor or MID.
An airport store will have different prices than a suburban store. Price profiles allows for managing prices, which may then be applied to specific stores.
Product Variants and SKUs, implemented just as you see on Amazon's web site.
We are prototyping an LLM trained with Money Fabric rules, money movement data, support tickets, prices, users, and more. The result is a chatbot capable of automating customer support & research.
We are using Machine Learning to compare the latest laws, regulations, and rules, with large volumes of Money Fabric rules and money movement data.
The wealth of money movement data maintained by the Money Fabric platform provides the basis for leveraging AI to better predict potentially fraudulent transactions.
Set optimal prices by SKU, channel, product portfolio, point of sale, and also by customer.
We are applying AI to introduce real-time pricing, real-time offers, real-time rewards, and other customer benefits.
Predict which new customer will return after redeeming an offer, then convert to long term customers. With the right setup Machine Learning can also help you to find out what defines those special shoppers.
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