Book Image

Learning Apache Apex

By : Thomas Weise, Ananth Gundabattula, Munagala V. Ramanath, David Yan, Kenneth Knowles
Book Image

Learning Apache Apex

By: Thomas Weise, Ananth Gundabattula, Munagala V. Ramanath, David Yan, Kenneth Knowles

Overview of this book

Apache Apex is a next-generation stream processing framework designed to operate on data at large scale, with minimum latency, maximum reliability, and strict correctness guarantees. Half of the book consists of Apex applications, showing you key aspects of data processing pipelines such as connectors for sources and sinks, and common data transformations. The other half of the book is evenly split into explaining the Apex framework, and tuning, testing, and scaling Apex applications. Much of our economic world depends on growing streams of data, such as social media feeds, financial records, data from mobile devices, sensors and machines (the Internet of Things - IoT). The projects in the book show how to process such streams to gain valuable, timely, and actionable insights. Traditional use cases, such as ETL, that currently consume a significant chunk of data engineering resources are also covered. The final chapter shows you future possibilities emerging in the streaming space, and how Apache Apex can contribute to it.
Table of Contents (17 chapters)
Title Page
Credits
About the Authors
About the Reviewer
www.PacktPub.com
Customer Feedback
Preface

Elasticity


As described in the preceding section, the number of desired partitions of each operator that is likely to be a bottleneck can be specified as part of the application configuration and the platform will ensure that the desired partitions are created at application start time. However, this is not possible when the volume of data flows can fluctuate unpredictably since we cannot forecast the number of required partitions.

The platform has the required elasticity to support such scenarios via dynamic scaling: the application writer can implement the Partitioner interface along with the related StatsListener interface, either directly in the operator or in a separate object that is set on the operator as an attribute. These interfaces allow the operator to periodically examine current metrics such as throughput, latency, or even custom metrics, and, based on those values, create new partitions or remove existing partitions, or both. All the resource allocation and deallocation is...