Big data processing, microservices, and cloud-native technology are a match made in computing heaven, enabling microservices to be used to build a flexible, scalable, and distributed system of loosely coupled data processing tasks, called data services.
Mario-Leander Reimer explores key JEE technologies that can be used to build JEE-powered data services and walks you through implementing the individual data processing tasks of a simplified showcase application. You’ll then deploy and orchestrate the individual data services using OpenShift, illustrating the scalability of the overall processing pipeline. The context and content is taken from a real-world project for a major German car manufacturer, implementing a microservices-based processing pipeline that uses car-related event data (sensor data, traffic events, and other real-time data) for a traffic information management and route optimization system.
M.-Leander Reimer is a principal software architect, passionate developer and #CloudNativeNerd working for QAware GmbH. He is continuously looking for innovations in software engineering and ways to combine and apply state-of-the-art technology in real-world projects. Currently he is responsible for several projects concerned with the cloud native evolution of legacy applications. He is a regular speaker at national and international conferences and he is teaching cloud computing and software quality assurance as a part time lecturer.
©2018, O'Reilly Media, Inc. • (800) 889-8969 or (707) 827-7019 • Monday-Friday 7:30am-5pm PT • All trademarks and registered trademarks appearing on oreilly.com are the property of their respective owners. • firstname.lastname@example.org