Search icon CANCEL
Subscription
0
Cart icon
Your Cart (0 item)
Close icon
You have no products in your basket yet
Arrow left icon
Explore Products
Best Sellers
New Releases
Books
Videos
Audiobooks
Learning Hub
Free Learning
Arrow right icon
Arrow up icon
GO TO TOP
Learning Elastic Stack 6.0

You're reading from   Learning Elastic Stack 6.0 A beginner's guide to distributed search, analytics, and visualization using Elasticsearch, Logstash and Kibana

Arrow left icon
Product type Paperback
Published in Dec 2017
Publisher Packt
ISBN-13 9781787281868
Length 434 pages
Edition 1st Edition
Arrow right icon
Authors (2):
Arrow left icon
Sharath Kumar Sharath Kumar
Author Profile Icon Sharath Kumar
Sharath Kumar
Pranav Shukla Pranav Shukla
Author Profile Icon Pranav Shukla
Pranav Shukla
Arrow right icon
View More author details
Toc

Table of Contents (12) Chapters Close

Preface 1. Introducing Elastic Stack FREE CHAPTER 2. Getting Started with Elasticsearch 3. Searching-What is Relevant 4. Analytics with Elasticsearch 5. Analyzing Log Data 6. Building Data Pipelines with Logstash 7. Visualizing data with Kibana 8. Elastic X-Pack 9. Running Elastic Stack in Production 10. Building a Sensor Data Analytics Application 11. Monitoring Server Infrastructure

Use cases of Elastic Stack

Elastic Stack components have a variety of practical use cases, and new use cases are emerging as more plugins are added to existing components. As mentioned earlier, you may use a subset of the components for your use case. The following example use cases are by no means exhaustive, but are some of the most common ones:

  • Log and security analytics
  • Product search
  • Metrics analytics
  • Web search and website search

Let us look at each use case.

Log and security analytics

The Elasticsearch, Logstash, and Kibana trio was very popular as an ELK stack previously. The presence of Elasticsearch, Logstash, and Kibana (also known as ELK) makes Elastic Stack an excellent stack for aggregating and analyzing logs in a central place.

The application support teams face a great challenge administering and managing large numbers of applications deployed across tens or hundreds of servers. The application infrastructure could have the following components:

  • Web servers
  • Application servers
  • Database servers
  • Message brokers

Typically, enterprise applications have all or most of the types of servers which were explained earlier, and there are multiple instances of each server. In the event of an error or production issue, the support team has to log in to individual servers and look at the errors. It is quite inefficient to log in to individual servers and look at the raw log files. Elastic Stack provides a complete tool set to collect, centralize, analyze, visualize, alert, and report the errors as they occur. Here is how each component can be used to solve this problem:

  • The Beats framework, Filebeat in particular, can run as a lightweight agent to collect and forward the logs.
  • Logstash can centralize the events received from Beats, and parse and transform each log entry before sending it to the Elasticsearch cluster.
  • Elasticsearch indexes the logs. It enables both search and analytics on the parsed logs.
  • Kibana then lets you create visualizations based on errors, warnings, and other information logs. It lets you create dashboards where you can centrally monitor events as they occur, in real time.
  • With X-Pack, you can secure the solution, configure alerts, get reports, and analyze relationships in the data.

As you can see, you can get a complete log aggregation and monitoring solution using Elastic Stack.

A security analytics solution would be very similar to this; the logs and events being fed into the system would pertain to firewalls, switches, and other key network elements.

Product search

Product search involves searching for the most relevant product from thousands or tens of thousands of products and presenting the most relevant products at the top of the list before the other less relevant products. You can directly relate this problem to e-commerce websites which sell huge numbers of products sold by many vendors or resellers.

Elasticsearch's full-text and relevance search capabilities can find the best matching results. Presenting the best matches on the first page has great value as it increases the chances of the customer actually buying the product. Imagine a customer searching for the iPhone 7, and the results on the first page showing different cases, chargers, and accessories for previous iPhone versions. The text analysis capabilities backed by Lucene, and innovations added by Elasticsearch, ensure that you get iPhone 7 chargers and cases after the best match.

This problem, however, is not limited to e-commerce websites. Any application that needs to find the most relevant item from millions or billions of items can use Elasticsearch to solve this problem.

Metrics analytics

Elastic Stack has excellent analytics capabilities thanks to the rich aggregations API in Elasticsearch. This makes it a perfect tool for analyzing data with lots of metrics. Metric data consists of numeric values as opposed to unstructured text such as documents and web pages. Some examples are data generated by sensors, IoT devices, metrics generated by mobile devices, servers, virtual machines, network routers, switches, and so on. The list is endless.

Metric data is typically also of the time series nature, that is, values or measures are recorded over the period of time. The metrics that are recorded are usually related to some entity. For example, a temperature reading (which is a metric) is recorded for a particular sensor device with a certain identifier. The type, name of the building, department, floor, and so on are the dimensions associated with the metric. The dimensions may also include the location of the sensor device, that is, the longitude and latitude.

Elasticsearch and Kibana allow for the slicing and dicing of metric data along different dimensions to provide deep insight about your data. Elasticsearch is very powerful at handling time-series and geo-spatial data, which means you can plot your metrics on line charts and area charts aggregating millions of metrics. You can also do geo-spatial analysis on a map.

We will build a metrics analytics application using Elastic Stack in Chapter 9, Building a Sensor Data Analytics Application.

Web search and website search

Elasticsearch can serve as a search engine for your website and perform a Google-like search across the entire contents of your site. GitHub, Wikipedia, and many other platforms power their searches using Elasticsearch.

Elasticsearch can be leveraged to build content aggregation platforms. What is a content aggregator or a content aggregation platform? Content aggregators scrape/crawl multiple websites, index the web pages, and provide a search functionality on the underlying content. This is a powerful way to build domain specific aggregated platforms. 

Apache Nutch, an open source, large scale web crawler, was created by Doug Cutting, the original creator of Apache Lucene. Apache Nutch crawls the web, parses the HTML pages, stores them, and also builds indexes to make the content searchable. Apache Nutch supports indexing into Elasticsearch or Apache Solr for its search engine.

As it is evident, Elasticsearch and Elastic Stack have many practical use cases. Elastic Stack is a platform with a complete set of tools to build end-to-end search and analytics solutions. It is a very approachable platform for developers, architects, business intelligence analysts, and system administrators. It is possible to put together an Elastic Stack solution with almost zero coding and with only configuration. At the same time, Elasticsearch is very customizable, that is, developers and programmers can build powerful applications using its rich programming language support and the REST API.

You have been reading a chapter from
Learning Elastic Stack 6.0
Published in: Dec 2017
Publisher: Packt
ISBN-13: 9781787281868
Register for a free Packt account to unlock a world of extra content!
A free Packt account unlocks extra newsletters, articles, discounted offers, and much more. Start advancing your knowledge today.
Unlock this book and the full library FREE for 7 days
Get unlimited access to 7000+ expert-authored eBooks and videos courses covering every tech area you can think of
Renews at $19.99/month. Cancel anytime
Banner background image