Building payment processing engine with Stateful Functions and Spring Boot
The cost of an error in the Fintech industry is enormous, especially regarding the payment processing engine. While such software products must support multiple independent payment processing flows, it's pretty easy to transform requirements into a highly complex system that is hard to maintain. During this talk, I'll build a payment processing engine powered by Stateful Functions in Java. I'll explain the tradeoff between embedded and remote modules and implement a remote one with two separate namespaces. You'll see how to integrate Stateful Functions with Spring Boot to build next-gen event-driven systems.
Видео Building payment processing engine with Stateful Functions and Spring Boot канала Flink Forward
Видео Building payment processing engine with Stateful Functions and Spring Boot канала Flink Forward
Показать
Комментарии отсутствуют
Информация о видео
Другие видео канала
Build a Table-centric Apache Flink Ecosystem - Shaoxuan WangFinding Bad Acorns - Andrew Gao & Jeff SharpeMulti-tenanted streams @Workday - Enrico Agnoli & Leire Fernandez#FlinkForward SF 2017: Ufuk Celebi - The Stream Processor as a DatabaseImproving throughput and latency with Flink's network stack - Nico KruberStreaming for Enterprises - Srikanth SatyaBuilding Unified Streaming Platform at UberAnalytics for the masses - Aslam TajwalaWriting an interactive streaming SQL engine and pre-parser using Flink - Kenny GormanInterview with Gyula Fóra, Data Warehouse Engineer at KingAdventures in Scaling from Zero to 5 Billion Data Points per Day - Dave TorokSplunk Data Stream ProcessorOne SQL to Rule Them All - Fabian HueskeBuilding an open-source ML feature store with Apache FlinkData Pipeline Lifecycle: SQL EverywhereCEP platform handling millions of users - lessons from 3 years in productionWhat turns stream processing from a tool into a platform? - Stephan EwenScotty: Efficient Window Aggregation with General Stream Slicing - Jonas Traub & Philipp GrulichKeeping Redditors safe in real-time with Flink Stateful FunctionsDistributed Processing for Machine Learning Production Pipelines - Altay, Crowe, RokniFlink Forward Berlin 2018 Highlights