Book Image

ElasticSearch Cookbook

By : Alberto Paro
Book Image

ElasticSearch Cookbook

By: Alberto Paro

Overview of this book

ElasticSearch is one of the most promising NoSQL technologies available and is built to provide a scalable search solution with built-in support for near real-time search and multi-tenancy. This practical guide is a complete reference for using ElasticSearch and covers 360 degrees of the ElasticSearch ecosystem. We will get started by showing you how to choose the correct transport layer, communicate with the server, and create custom internal actions for boosting tailored needs. Starting with the basics of the ElasticSearch architecture and how to efficiently index, search, and execute analytics on it, you will learn how to extend ElasticSearch by scripting and monitoring its behaviour. Step-by-step, this book will help you to improve your ability to manage data in indexing with more tailored mappings, along with searching and executing analytics with facets. The topics explored in the book also cover how to integrate ElasticSearch with Python and Java applications. This comprehensive guide will allow you to master storing, searching, and analyzing data with ElasticSearch.
Table of Contents (19 chapters)
ElasticSearch Cookbook
Credits
About the Author
About the Reviewers
www.PacktPub.com
Preface
Index

Executing a search


ElasticSearch was born as a search engine. Its main work is to process queries and give results. As we'll see in this recipe, search in ElasticSearch is not only limited to match some documents, but also to calculate additional information required to improve user experience.

Getting ready

You need a working ElasticSearch cluster and an index populated with the script available in the online code.

How to do it...

For searching and evaluating the results, we will perform the steps given as follows:

  1. From command line, we can execute a search using the following command:

    curl -XGET 'http://127.0.0.1:9200/test-index/test-type/_search' -d '{"query":{"match_all":{}}}'

    In this case we have used a match_all query that means "return all the documents". We'll discuss this kind of query in the Matching all documents recipe in this chapter.

  2. The command, if everything is all right, will return the following result:

    {
      "took" : 0,
      "timed_out" : false,
      "_shards" : {
        "total" : 5,
       ...