Fiserv Inc., the global provider of financial services technology solutions, has announced they have selected, Aconite’s Smart EMV Manager solution to enhance its EMV card processing systems with advanced capability.
Fiserv needed a single solution that could be deployed in a standard way to provide a consistent EMV migration experience for their thousands of card issuing clients in the U.S. Aconite’s Smart EMV Manager provides a configurable solution that reduces risk and complexity, but incorporating a package of advanced EMV features. Aconite’s Smart EMV Manager will help Fiserv lead the field in EMV capability and introduce value-added EMV services in future.
Bruce Hopkins, General Manager, Card Services at Fiserv commented: “Fiserv is renowned for bringing innovative solutions to the financial services marketplace, and for partnering with leading solution providers. Aconite’s Smart EMV Manager is an extremely deep and robust solution. Combined with the value-add EMV expertise and partnership approach brought to Fiserv by the Aconite team, Aconite is our clear choice to assist in bringing our EMV solution to our clients.”
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