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You're reading from  Machine Learning with the Elastic Stack - Second Edition

Product typeBook
Published inMay 2021
Reading LevelBeginner
PublisherPackt
ISBN-139781801070034
Edition2nd Edition
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Authors (3):
Rich Collier
Rich Collier
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Rich Collier

Rich Collier is a solutions architect at Elastic. Joining the Elastic team from the Prelert acquisition, Rich has over 20 years' experience as a solutions architect and pre-sales systems engineer for software, hardware, and service-based solutions. Rich's technical specialties include big data analytics, machine learning, anomaly detection, threat detection, security operations, application performance management, web applications, and contact center technologies. Rich is based in Boston, Massachusetts.
Read more about Rich Collier

Camilla Montonen
Camilla Montonen
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Camilla Montonen

Camilla Montonen is a Senior Machine Learning Engineer at Elastic.
Read more about Camilla Montonen

Bahaaldine Azarmi
Bahaaldine Azarmi
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Bahaaldine Azarmi

Bahaaldine Azarmi, Global VP Customer Engineering at Elastic, guides companies as they leverage data architecture, distributed systems, machine learning, and generative AI. He leads the customer engineering team, focusing on cloud consumption, and is passionate about sharing knowledge to build and inspire a community skilled in AI.
Read more about Bahaaldine Azarmi

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What this book covers

Chapter 1, Machine Learning for IT, acts as an introductory and background primer on the historical challenges of manual data analysis in IT and security operations. This chapter also provides a comprehensive overview of the theory of operation of Elastic machine learning in order to get an intrinsic understanding of what is happening under the hood.

Chapter 2, Enabling and Operationalization, explains enabling the capabilities of machine learning in the Elastic Stack, and also details the theory of operation of the Elastic machine learning algorithms. Additionally, a detailed explanation of the logistical operation of Elastic machine learning is explained.

Chapter 3, Anomaly Detection, goes into detail regarding the unsupervised automated anomaly detection techniques that are at the heart of time series analysis.

Chapter 4, Forecasting, explains how Elastic machine learning's sophisticated time series models can be used for more than just anomaly detection. Forecasting capabilities enable users to extrapolate trends and behaviors into the future so as to assist with use cases such as capacity planning.

Chapter 5, Interpreting Results, explains how to fully understand the results of anomaly detection and forecasting and use them to your advantage in visualizations, dashboards, and infographics.

Chapter 6, Alerting on ML Analysis, explains the different techniques for integrating the proactive notification capability of Elastic alerting with the insights uncovered by machine learning in order to make anomaly detection even more actionable.

Chapter 7, AIOps and Root Cause Analysis, explains how leveraging Elastic machine learning to holistically inspect and analyze data from disparate data sources into correlated views gives the analyst a leg up in terms of legacy approaches.

Chapter 8, Anomaly Detection in other Elastic Stack Apps, explains how anomaly detection is leveraged by other apps within the Elastic Stack to bring added value to data analysis.

Chapter 9, Introducing Data Frame Analysis, covers the concepts of data frame analytics, how it is different from time series anomaly detection, and what tools are available to the user to load, prepare, transform, and analyze data with Elastic machine learning.

Chapter 10, Outlier Detection covers the outlier detection analysis capabilities of data frame analytics along with Elastic machine learning.

Chapter 11, Classification Analysis, covers the classification analysis capabilities of data frame analytics along with Elastic machine learning.

Chapter 12, Regression covers the regression analysis capabilities of data frame analytics along with Elastic machine learning.

Chapter 13, Inference, covers the usage of trained machine learning models for "inference" – to actually predict output values in an operationalized manner.

Appendix: Anomaly Detection Tips, includes a variety of practical advice topics that didn't quite fit in other chapters. These useful tidbits will help you to get the most out of Elastic ML.

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Machine Learning with the Elastic Stack - Second Edition
Published in: May 2021Publisher: PacktISBN-13: 9781801070034

Authors (3)

author image
Rich Collier

Rich Collier is a solutions architect at Elastic. Joining the Elastic team from the Prelert acquisition, Rich has over 20 years' experience as a solutions architect and pre-sales systems engineer for software, hardware, and service-based solutions. Rich's technical specialties include big data analytics, machine learning, anomaly detection, threat detection, security operations, application performance management, web applications, and contact center technologies. Rich is based in Boston, Massachusetts.
Read more about Rich Collier

author image
Camilla Montonen

Camilla Montonen is a Senior Machine Learning Engineer at Elastic.
Read more about Camilla Montonen

author image
Bahaaldine Azarmi

Bahaaldine Azarmi, Global VP Customer Engineering at Elastic, guides companies as they leverage data architecture, distributed systems, machine learning, and generative AI. He leads the customer engineering team, focusing on cloud consumption, and is passionate about sharing knowledge to build and inspire a community skilled in AI.
Read more about Bahaaldine Azarmi