International Payout Systems, a global pay-in-payout solution provider, is to provide payment processing services to WorldVentures’ representatives around the world (view press release). WorldVentures, a Texas based lifestyle company in the leisure travel industry, is employing i-Payout.com for the global payment processing of incoming payments, commission payment distribution and prepaid card services for its representatives.
Through the i-Payout pay-in-payout platform, WorldVenture’s reps, in 21 markets worldwide, will be able to access their funds online or through their mobile phone 24/7. They also have access to reloadable prepaid cards which can be used at ATMs or to make purchases globally. i-Payout provides eWallet solutions in around 240 countries through a network of 140 banks and processing relationships.
“WorldVentures wanted the most flexible, robust, full-featured eWallet solution on the market,” said Kyle Lowe, WorldVentures vice president of international. “A key factor in our decision was the speed with which i-Payout.com fulfils the transfer of funds to our representatives no matter where they are in the world, and no matter the currency they require.”
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