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Learning Apache Apex

You're reading from   Learning Apache Apex Real-time streaming applications with Apex

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Product type Paperback
Published in Nov 2017
Publisher
ISBN-13 9781788296403
Length 290 pages
Edition 1st Edition
Languages
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Authors (5):
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Munagala V. Ramanath Munagala V. Ramanath
Author Profile Icon Munagala V. Ramanath
Munagala V. Ramanath
David Yan David Yan
Author Profile Icon David Yan
David Yan
Ananth Gundabattula Ananth Gundabattula
Author Profile Icon Ananth Gundabattula
Ananth Gundabattula
Thomas Weise Thomas Weise
Author Profile Icon Thomas Weise
Thomas Weise
Kenneth Knowles Kenneth Knowles
Author Profile Icon Kenneth Knowles
Kenneth Knowles
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Toc

Table of Contents (11) Chapters Close

Preface 1. Introduction to Apex FREE CHAPTER 2. Getting Started with Application Development 3. The Apex Library 4. Scalability, Low Latency, and Performance 5. Fault Tolerance and Reliability 6. Example Project – Real-Time Aggregation and Visualization 7. Example Project – Real-Time Ride Service Data Processing 8. Example Project – ETL Using SQL 9. Introduction to Apache Beam 10. The Future of Stream Processing

The application pipeline


The application pipeline of operators and streams is illustrated by the following diagram:

Operators and streams in the application pipeline

The application reads records of phone calls, and parses, filters, and enriches them, and finally writes them out to a destination file. This application is modeled on some of the examples in the Apex Library in the examples/sql directory. I encourage you to study these examples to gain a broader understanding of the capabilities of the Apex SQL API.

The input source is a Kafka message broker from where data in the form of CDRs (short for, Call Detail Records) is fetched by the KafkaInput operator. The data is in the CSV format and looks like this:

13/10/2017 11:45:30 +0000,1,v,111-123-4567,222-987-6543,120

Here, the first field is a UTC timestamp, the second a unique record id, the third is v (voice) or d (data), denoting the type of call, the fourth and fifth fields are the origin and destination numbers, and the final field is...

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