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Advanced Elasticsearch 7.0

You're reading from   Advanced Elasticsearch 7.0 A practical guide to designing, indexing, and querying advanced distributed search engines

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Product type Paperback
Published in Aug 2019
Publisher Packt
ISBN-13 9781789957754
Length 560 pages
Edition 1st Edition
Languages
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Author (1):
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Wai Tak Wong Wai Tak Wong
Author Profile Icon Wai Tak Wong
Wai Tak Wong
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Toc

Table of Contents (25) Chapters Close

Preface 1. Section 1: Fundamentals and Core APIs FREE CHAPTER
2. Overview of Elasticsearch 7 3. Index APIs 4. Document APIs 5. Mapping APIs 6. Anatomy of an Analyzer 7. Search APIs 8. Section 2: Data Modeling, Aggregations Framework, Pipeline, and Data Analytics
9. Modeling Your Data in the Real World 10. Aggregation Frameworks 11. Preprocessing Documents in Ingest Pipelines 12. Using Elasticsearch for Exploratory Data Analysis 13. Section 3: Programming with the Elasticsearch Client
14. Elasticsearch from Java Programming 15. Elasticsearch from Python Programming 16. Section 4: Elastic Stack
17. Using Kibana, Logstash, and Beats 18. Working with Elasticsearch SQL 19. Working with Elasticsearch Analysis Plugins 20. Section 5: Advanced Features
21. Machine Learning with Elasticsearch 22. Spark and Elasticsearch for Real-Time Analytics 23. Building Analytics RESTful Services 24. Other Books You May Enjoy

Spark and Elasticsearch for Real-Time Analytics

In the previous chapter, we looked at the machine learning feature of Elastic Stack. We used a single metric job to track one-dimensional data (with the volume field of the cf_rfem_hist_price index) to detect anomalies by using Kibana. We also introduced the scikit-learn Python package and performed the same anomaly detection, but with three-dimensional data (with two more fields: changePercent and changeOverTime) by using Python programming.

In this chapter, we will look at another advanced feature, which is known as Elasticsearch for Apache Hadoop (ES-Hadoop). The ES-Hadoop feature contains two major areas. The first area is the integration of Elasticsearch with Hadoop distributed computing environments, such as Apache Spark, Apache Storm, and Hive. The second area is the integration of Elasticsearch to use the Hadoop filesystem...

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