
Teaming up with PAY.ON
ReD, has announced that it is teaming up with PAY.ON to offer card-not-present payment fraud prevention services to PAY.ON’s global network of PSPs.
ReD’s real-time fraud prevention service will be integrated into PAY.ON´s white label Platform-as-a-Service, PaySourcing, and PayPipe, the independent payment routing gateway. This will enable payment providers as ISOs, or other service providers, acquirers and financial institutions to become fully equipped PSPs in 48 hours or to outsource their entire PSP business into the cloud – in a PCI-DSS-certified environment.
Markus Rinderer, CEO of PAY.ON AG, commented: “Our decision to integrate ReD Shield into our white label PSP payment platform builds on the strong, long-term relationship we have with ReD.”
Manish Patel, president of ReD’s operations in EMEA, commented, “PAY.ON has a deep understanding of the services that ReD provides and we are delighted that the company has chosen to expand its relationship with us. Merchants and PSPs utilising PAY.ON’s payment solutions will now be able to benefit from a fully integrated payment processing and fraud solution.”
Whitepapers
Related reading
Central banks best suited to issue digital currencies
By Aaran Fronda A recent report by the Official Monetary and Financial Institutions Forum (OMFIF) said that central banks rather than private ... read more
Instant payments: innovations inbound for corporates
In 2020, instant payments look set to continue their current trajectory to become the biggest trend in payments. While these schemes already offer numerous benefits to corporates, leveraging innovations such as APIs and request to pay will go some way to unlocking their full potential, argues Michael Knetsch
Obstacles exist for banks to meet ECB’s instant payments goal
The cost of joining instant payment platforms will be one of many hurdles banks and payment services providers must overcome to meet ... read more
Banks must be aware of “biases” in data used to train ML models
Financial institutions need to be conscious of biases in the historical data that is being used to train machine learning (ML) models, ... read more