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Elasticsearch 8.x Cookbook

You're reading from   Elasticsearch 8.x Cookbook Over 180 recipes to perform fast, scalable, and reliable searches for your enterprise

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Product type Paperback
Published in May 2022
Publisher Packt
ISBN-13 9781801079815
Length 750 pages
Edition 5th Edition
Languages
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Author (1):
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Alberto Paro Alberto Paro
Author Profile Icon Alberto Paro
Alberto Paro
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Table of Contents (20) Chapters Close

Preface 1. Chapter 1: Getting Started 2. Chapter 2: Managing Mappings FREE CHAPTER 3. Chapter 3: Basic Operations 4. Chapter 4: Exploring Search Capabilities 5. Chapter 5: Text and Numeric Queries 6. Chapter 6: Relationships and Geo Queries 7. Chapter 7: Aggregations 8. Chapter 8: Scripting in Elasticsearch 9. Chapter 9: Managing Clusters 10. Chapter 10: Backups and Restoring Data 11. Chapter 11: User Interfaces 12. Chapter 12: Using the Ingest Module 13. Chapter 13: Java Integration 14. Chapter 14: Scala Integration 15. Chapter 15: Python Integration 16. Chapter 16: Plugin Development 17. Chapter 17: Big Data Integration 18. Chapter 18: X-Pack 19. Other Books You May Enjoy

Mapping arrays

Array or multi-value fields are very common in data models (such as multiple phone numbers, addresses, names, aliases, and so on), but they're not natively supported in traditional SQL solutions.

In SQL, multi-value fields require you to create accessory tables that must be joined to gather all the values, leading to poor performance when the cardinality of the records is huge.

Elasticsearch, which works natively in JSON, provides support for multi-value fields transparently.

Getting ready

You will need an up-and-running Elasticsearch installation, as we described in the Downloading and installing Elasticsearch recipe of Chapter 1, Getting Started.

To execute the commands in this recipe, you can use any HTTP client, such as curl (https://curl.haxx.se/), Postman (https://www.getpostman.com/), or similar. I suggest using the Kibana console, which provides code completion and better character escaping for Elasticsearch.

How to do it…

To use an Array type in our mapping, perform the following steps:

  1. Every field is automatically managed as an array. For example, to store tags for a document, the mapping would be as follows:
    {  "properties" : {
          "name" : {"type" : "keyword"},
          "tag" : {"type" : "keyword", "store" : true},
          ...
    }
  2. This mapping is valid for indexing both documents. The following is the code for document1:
    {"name": "document1", "tag": "awesome"}
  3. The following is the code for document2:
    {"name": "document2", "tag": ["cool", "awesome", "amazing"] }

How it works…

Elasticsearch transparently manages the array: there is no difference if you declare a single value or a multi-value due to its Lucene core nature.

Multi-values for fields are managed in Lucene, so you can add them to a document with the same field name. For people with a SQL background, this behavior may be quite strange, but this is a key point in the NoSQL world as it reduces the need for a join query and creates different tables to manage multi-values. An array of embedded objects has the same behavior as simple fields.

You have been reading a chapter from
Elasticsearch 8.x Cookbook - Fifth Edition
Published in: May 2022
Publisher: Packt
ISBN-13: 9781801079815
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