
Sign up to save your podcasts
Or
Streamlining banking technology to help smaller banks and credit unions thrive among financial giants is top of mind for Bobby Calderwood (Founder, Evident Systems), who started out in programming, transitioned to banking, and recently launched Evident Real-Time Payments.
Payments leverages Confluent Cloud to help banks of all sizes transform to real-time banking services from traditionally batch-oriented, bankers’ hours operational mode. This is achieved through Apache Kafka® and the Kafka Streams and Kafka Connect APIs with Clojure using functional programming paradigms like transducers.
Bobby also shares about his efforts to help financial services companies build their next-generation platforms on top of streaming events, including interesting use cases, addressing hard problems that come up in payments, and identifying solutions that make event streaming technology easy to use within established banking structures.
EPISODE LINKS
4.8
4444 ratings
Streamlining banking technology to help smaller banks and credit unions thrive among financial giants is top of mind for Bobby Calderwood (Founder, Evident Systems), who started out in programming, transitioned to banking, and recently launched Evident Real-Time Payments.
Payments leverages Confluent Cloud to help banks of all sizes transform to real-time banking services from traditionally batch-oriented, bankers’ hours operational mode. This is achieved through Apache Kafka® and the Kafka Streams and Kafka Connect APIs with Clojure using functional programming paradigms like transducers.
Bobby also shares about his efforts to help financial services companies build their next-generation platforms on top of streaming events, including interesting use cases, addressing hard problems that come up in payments, and identifying solutions that make event streaming technology easy to use within established banking structures.
EPISODE LINKS
30,913 Listeners
285 Listeners
586 Listeners
631 Listeners
201 Listeners
268 Listeners
12 Listeners
93 Listeners
20 Listeners
2 Listeners
32 Listeners