Servebase, a global provider of multi-channel payment solutions for the hospitality industry, is going into partnership with information security company Foregenix in order to improve, simplify and facilitate PCI compliance for hospitality companies. Foregenix is the creator of FScout Enterprise, a multi-platform cardholder data discovery software which acts to pinpoint and erase vulnerable card data in business systems and hence ensure data is never left unprotected. As part of the deal Servebase, which processes around $15 billion worth of transactions per year, will trial the FScout software, providing its clients a new customer cardholder data security health check service. Cardholder data theft is a significant issue in the hospitality industry and both parties hope that this partnership will bring greater security, brand protection and peace of mind to customers.
Servebase CEO, Ritz Steytler said that “By partnering with Foregenix we can offer our customers an additional layer of security in order to protect their data and to ensure that they are fully PCI DSS compliant.”
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