Advanced Elasticsearch 7.0: A practical guide to designing, indexing, and querying advanced distributed search engines

Master the intricacies of Elasticsearch 7.0 and use it to create flexible and scalable search solutions




Key Features



  • Master the latest distributed search and analytics capabilities of Elasticsearch 7.0


  • Perform searching, indexing, and aggregation of your data at scale


  • Discover tips and techniques for speeding up your search query performance



Book Description



Building enterprise-grade distributed applications and executing systematic search operations call for a strong understanding of Elasticsearch and expertise in using its core APIs and latest features. This book will help you master the advanced functionalities of Elasticsearch and understand how you can develop a sophisticated, real-time search engine confidently. In addition to this, you'll also learn to run machine learning jobs in Elasticsearch to speed up routine tasks.






You'll get started by learning to use Elasticsearch features on Hadoop and Spark and make search results faster, thereby improving the speed of query results and enhancing the customer experience. You'll then get up to speed with performing analytics by building a metrics pipeline, defining queries, and using Kibana for intuitive visualizations that help provide decision-makers with better insights. The book will later guide you through using Logstash with examples to collect, parse, and enrich logs before indexing them in Elasticsearch.






By the end of this book, you will have comprehensive knowledge of advanced topics such as Apache Spark support, machine learning using Elasticsearch and scikit-learn, and real-time analytics, along with the expertise you need to increase business productivity, perform analytics, and get the very best out of Elasticsearch.




What you will learn



  • Pre-process documents before indexing in ingest pipelines


  • Learn how to model your data in the real world


  • Get to grips with using Elasticsearch for exploratory data analysis


  • Understand how to build analytics and RESTful services


  • Use Kibana, Logstash, and Beats for dashboard applications


  • Get up to speed with Spark and Elasticsearch for real-time analytics


  • Explore the basics of Spring Data Elasticsearch, and understand how to index, search, and query in a Spring application



Who this book is for



This book is for Elasticsearch developers and data engineers who want to take their basic knowledge of Elasticsearch to the next level and use it to build enterprise-grade distributed search applications. Prior experience of working with Elasticsearch will be useful to get the most out of this book.

1133208369
Advanced Elasticsearch 7.0: A practical guide to designing, indexing, and querying advanced distributed search engines

Master the intricacies of Elasticsearch 7.0 and use it to create flexible and scalable search solutions




Key Features



  • Master the latest distributed search and analytics capabilities of Elasticsearch 7.0


  • Perform searching, indexing, and aggregation of your data at scale


  • Discover tips and techniques for speeding up your search query performance



Book Description



Building enterprise-grade distributed applications and executing systematic search operations call for a strong understanding of Elasticsearch and expertise in using its core APIs and latest features. This book will help you master the advanced functionalities of Elasticsearch and understand how you can develop a sophisticated, real-time search engine confidently. In addition to this, you'll also learn to run machine learning jobs in Elasticsearch to speed up routine tasks.






You'll get started by learning to use Elasticsearch features on Hadoop and Spark and make search results faster, thereby improving the speed of query results and enhancing the customer experience. You'll then get up to speed with performing analytics by building a metrics pipeline, defining queries, and using Kibana for intuitive visualizations that help provide decision-makers with better insights. The book will later guide you through using Logstash with examples to collect, parse, and enrich logs before indexing them in Elasticsearch.






By the end of this book, you will have comprehensive knowledge of advanced topics such as Apache Spark support, machine learning using Elasticsearch and scikit-learn, and real-time analytics, along with the expertise you need to increase business productivity, perform analytics, and get the very best out of Elasticsearch.




What you will learn



  • Pre-process documents before indexing in ingest pipelines


  • Learn how to model your data in the real world


  • Get to grips with using Elasticsearch for exploratory data analysis


  • Understand how to build analytics and RESTful services


  • Use Kibana, Logstash, and Beats for dashboard applications


  • Get up to speed with Spark and Elasticsearch for real-time analytics


  • Explore the basics of Spring Data Elasticsearch, and understand how to index, search, and query in a Spring application



Who this book is for



This book is for Elasticsearch developers and data engineers who want to take their basic knowledge of Elasticsearch to the next level and use it to build enterprise-grade distributed search applications. Prior experience of working with Elasticsearch will be useful to get the most out of this book.

38.99 In Stock
Advanced Elasticsearch 7.0: A practical guide to designing, indexing, and querying advanced distributed search engines

Advanced Elasticsearch 7.0: A practical guide to designing, indexing, and querying advanced distributed search engines

by Wai Tak Wong
Advanced Elasticsearch 7.0: A practical guide to designing, indexing, and querying advanced distributed search engines

Advanced Elasticsearch 7.0: A practical guide to designing, indexing, and querying advanced distributed search engines

by Wai Tak Wong

eBook

$38.99 

Available on Compatible NOOK devices, the free NOOK App and in My Digital Library.
WANT A NOOK?  Explore Now

Related collections and offers


Overview

Master the intricacies of Elasticsearch 7.0 and use it to create flexible and scalable search solutions




Key Features



  • Master the latest distributed search and analytics capabilities of Elasticsearch 7.0


  • Perform searching, indexing, and aggregation of your data at scale


  • Discover tips and techniques for speeding up your search query performance



Book Description



Building enterprise-grade distributed applications and executing systematic search operations call for a strong understanding of Elasticsearch and expertise in using its core APIs and latest features. This book will help you master the advanced functionalities of Elasticsearch and understand how you can develop a sophisticated, real-time search engine confidently. In addition to this, you'll also learn to run machine learning jobs in Elasticsearch to speed up routine tasks.






You'll get started by learning to use Elasticsearch features on Hadoop and Spark and make search results faster, thereby improving the speed of query results and enhancing the customer experience. You'll then get up to speed with performing analytics by building a metrics pipeline, defining queries, and using Kibana for intuitive visualizations that help provide decision-makers with better insights. The book will later guide you through using Logstash with examples to collect, parse, and enrich logs before indexing them in Elasticsearch.






By the end of this book, you will have comprehensive knowledge of advanced topics such as Apache Spark support, machine learning using Elasticsearch and scikit-learn, and real-time analytics, along with the expertise you need to increase business productivity, perform analytics, and get the very best out of Elasticsearch.




What you will learn



  • Pre-process documents before indexing in ingest pipelines


  • Learn how to model your data in the real world


  • Get to grips with using Elasticsearch for exploratory data analysis


  • Understand how to build analytics and RESTful services


  • Use Kibana, Logstash, and Beats for dashboard applications


  • Get up to speed with Spark and Elasticsearch for real-time analytics


  • Explore the basics of Spring Data Elasticsearch, and understand how to index, search, and query in a Spring application



Who this book is for



This book is for Elasticsearch developers and data engineers who want to take their basic knowledge of Elasticsearch to the next level and use it to build enterprise-grade distributed search applications. Prior experience of working with Elasticsearch will be useful to get the most out of this book.


Product Details

ISBN-13: 9781789956566
Publisher: Packt Publishing
Publication date: 08/23/2019
Sold by: Barnes & Noble
Format: eBook
Pages: 560
File size: 79 MB
Note: This product may take a few minutes to download.

About the Author

Wai Tak Wong is a faculty member in the Department of Computer Science at Kean University, NJ, USA. He has more than 15 years professional experience in cloud software design and development. His PhD in computer science was obtained at NJIT, NJ, USA. Wai Tak has served as an associate professor in the Information Management Department of Chung Hua University, Taiwan. A co-founder of Shanghai Shellshellfish Information Technology, Wai Tak acted as the Chief Scientist of the R&D team, and he has published more than a dozen algorithms in prestigious journals and conferences. Wai Tak began his search and analytics technology career with Elasticsearch in the real estate market and later applied this to data management and FinTech data services.

Table of Contents

Table of Contents
  1. Overview of Elasticsearch 7
  2. Index APIs
  3. Document APIs
  4. Mapping APIs
  5. Anatomy of an Analyzer
  6. Search APIs
  7. Modeling Your Data in the Real World
  8. Aggregations Frameworks
  9. Preprocessing Documents in Ingest Pipelines
  10. Using ElasticSearch for Exploratory Data Analysis
  11. Elasticsearch from Java Programming
  12. Elasticsearch from Python Programming
  13. Using Kibana, Logstash and Beats
  14. Working with Elasticsearch SQL
  15. Working with Elasticsearch Analysis Plugins
  16. Machine Learning with Elasticsearch
  17. Spark and Elasticsearch for Real-Time Analytics
  18. Building Analytics RESTful Services
From the B&N Reads Blog

Customer Reviews