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You're reading from  Kibana 8.x – A Quick Start Guide to Data Analysis

Product typeBook
Published inFeb 2024
PublisherPackt
ISBN-139781803232164
Edition1st Edition
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Author (1)
Krishna Shah
Krishna Shah
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Krishna Shah

Krishna Shah is a data architect from Melbourne, Australia with 9+ years of experience, and she knows how to make data work. She's been an official trainer for Elasticsearch and Kibana, crafting the courses that empower people to unlock the secrets of data. Prior to that, she worked for a start-up in India as the data engineer behind building and maintaining data engineering pipelines, then transforming that raw information into stunning visuals and insights using Kibana and other data engineering technologies. Today, she's an advocate, a mentor, and a bridge-builder, inviting everyone to find their own rhythm in the data's dance. Whether you're a novice or seasoned analyst, brace yourself for her infectious enthusiasm and knack for making the driest of datasets sing!
Read more about Krishna Shah

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Understanding anomaly detection in time series data

Anomaly detection is the process of identifying the points in data that don’t fit the normal data behavioral patterns. To make this effective, we can automate the whole process. The important point to note here is that this process will be more efficient when the size of the data has increased. The Elastic Stack supports several data analysis use cases that use supervised and unsupervised machine learning, as follows:

  • Anomaly detection
  • Outlier detection
  • Fraud detection
  • Forecasting
  • Language detection

Our main intention behind putting various techniques to use is to bring out the insights from the most normal-looking data. When we look into anomaly detection, we identify patterns and unusual behavior in the near real-time current and historical data. An unusual data point can be seen in the form of a high spike or very low data behavior, as shown here:

Figure 6.1 – A spike (unusual data behavior) in a sample anomaly detection job in the machine learning app, Kibana

Figure 6.1 –...

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Kibana 8.x – A Quick Start Guide to Data Analysis
Published in: Feb 2024Publisher: PacktISBN-13: 9781803232164

Author (1)

author image
Krishna Shah

Krishna Shah is a data architect from Melbourne, Australia with 9+ years of experience, and she knows how to make data work. She's been an official trainer for Elasticsearch and Kibana, crafting the courses that empower people to unlock the secrets of data. Prior to that, she worked for a start-up in India as the data engineer behind building and maintaining data engineering pipelines, then transforming that raw information into stunning visuals and insights using Kibana and other data engineering technologies. Today, she's an advocate, a mentor, and a bridge-builder, inviting everyone to find their own rhythm in the data's dance. Whether you're a novice or seasoned analyst, brace yourself for her infectious enthusiasm and knack for making the driest of datasets sing!
Read more about Krishna Shah