Book Image

Learning Elastic Stack 6.0

By : Pranav Shukla, Sharath Kumar M N
Book Image

Learning Elastic Stack 6.0

By: Pranav Shukla, Sharath Kumar M N

Overview of this book

The Elastic Stack is a powerful combination of tools for distributed search, analytics, logging, and visualization of data from medium to massive data sets. The newly released Elastic Stack 6.0 brings new features and capabilities that empower users to find unique, actionable insights through these techniques. This book will give you a fundamental understanding of what the stack is all about, and how to use it efficiently to build powerful real-time data processing applications. After a quick overview of the newly introduced features in Elastic Stack 6.0, you’ll learn how to set up the stack by installing the tools, and see their basic configurations. Then it shows you how to use Elasticsearch for distributed searching and analytics, along with Logstash for logging, and Kibana for data visualization. It also demonstrates the creation of custom plugins using Kibana and Beats. You’ll find out about Elastic X-Pack, a useful extension for effective security and monitoring. We also provide useful tips on how to use the Elastic Cloud and deploy the Elastic Stack in production environments. On completing this book, you’ll have a solid foundational knowledge of the basic Elastic Stack functionalities. You’ll also have a good understanding of the role of each component in the stack to solve different data processing problems.
Table of Contents (19 chapters)
Title Page
Credits
Disclaimer
About the Authors
About the Reviewer
www.PacktPub.com
Customer Feedback
Preface

 Deploymezs architecture


The following diagram depicts commonly used Elastic Stack deployment architecture:

The diagram depicts three possible architectures:

  • Ship the operation metrics directly to Elasticsearch: As seen in the preceding diagram, one will install various types of Beats such as Metricbeat, Filebeat, Packetbeat, and so on, on the edge servers from which they would like to ship the operation metrics/logs. If no further processing of events is required, then the generated events can be shipped directly to the Elasticsearch cluster. Once the data is present in Elasticsearch, it can then be visualized/analyzed using Kibana. In this architecture, the flow of events would be Beats → Elasticsearch → Kibana
  • Ship the operation metrics to Logstash: The operation metrics/logs captured by the Beats and installed on edge servers is sent to Logstash for further processing such as, for instance, parsing the logs or enriching log events. Then the parsed/enriched events are pushed to Elasticsearch...