Architecting for Cloud Native Data: Data Microservices Done Right Using Spring Cloud

August 10, 2016
SpringOne Platform 2016 Speaker: Fred Melo; Technical Director, Pivotal Microservices are definitely offering best practice guidance for those architecting cloud native applications. The ability to quickly create small services that can be individually deployed, configured and scaled, as building blocks for scalable, highly distributed and fault-tolerant systems has been causing every company to rethink on how to architect modern systems and making Spring Boot shine in popularity. In the same perspective, in order to achieve the same level of resilience, scalability and flexibility for stateful systems we need to start building our data components over the concepts of Data Microservices. This session will introduce Spring Cloud Stream from a Data Microservices perspective. We’ll explore its architecture model, highlighting the scalability, high availability, importance of dynamic transport biding layer and different options for orchestration / cloud deployment. We’ll then give an architecture walk-through on how Spring Cloud Data Flow orchestrates those Data Microservices into an advanced data pipelining solution, exemplified by a live demo.
Previous
Spinnaker: Land of a 1000 Builds
Spinnaker: Land of a 1000 Builds

SpringOne Platform 2016 Speaker: Greg Turnquist; Spring Team Member, Pivotal. How do big shops like Netfli...

Next Presentation
Cloud Native Streaming and Event-Driven Microservices
Cloud Native Streaming and Event-Driven Microservices

SpringOne Platform 2016 Speaker: Marius Bogoevici; Spring Cloud Stream Lead, Pivotal The future of scalabl...