Vision Financial Systems, a provider of turnkey solutions including money orders, vendor drafts, bill payments and anti-money laundering, is collaborating with PreCash, a payment services and transaction processing provider (view press release). Through the agreement, the companies will integrate PreCash walk-in bill payments into the Vision Financial Cloud for retailers and money service businesses (MSBs). Vision Financial merchants will also be able to provide consumers with cash payments for utility and other bills, prepaid wireless, prepaid long distance, international top-up and prepaid energy. The PreCash payment suite will be available to all of Vision Financial’s existing merchant locations and new merchant partners.
“Adding PreCash walk-in bill payments to the Vision Financial Cloud gives us a total financial services solution for check cashers and other merchants,” said Kevin Wayne, president of Vision Financial Systems. “They can now manage all of their MSB functions in one place, simplify their point of sale, reduce costs and attract more consumers to their stores with affordable ways to pay cash for bills and other services.”
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