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Machine Learning with the Elastic Stack

You're reading from   Machine Learning with the Elastic Stack Gain valuable insights from your data with Elastic Stack's machine learning features

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Product type Paperback
Published in May 2021
Publisher Packt
ISBN-13 9781801070034
Length 450 pages
Edition 2nd Edition
Languages
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Authors (3):
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Camilla Montonen Camilla Montonen
Author Profile Icon Camilla Montonen
Camilla Montonen
Rich Collier Rich Collier
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Rich Collier
Bahaaldine Azarmi Bahaaldine Azarmi
Author Profile Icon Bahaaldine Azarmi
Bahaaldine Azarmi
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Toc

Table of Contents (19) Chapters Close

Preface 1. Section 1 – Getting Started with Machine Learning with Elastic Stack
2. Chapter 1: Machine Learning for IT FREE CHAPTER 3. Chapter 2: Enabling and Operationalization 4. Section 2 – Time Series Analysis – Anomaly Detection and Forecasting
5. Chapter 3: Anomaly Detection 6. Chapter 4: Forecasting 7. Chapter 5: Interpreting Results 8. Chapter 6: Alerting on ML Analysis 9. Chapter 7: AIOps and Root Cause Analysis 10. Chapter 8: Anomaly Detection in Other Elastic Stack Apps 11. Section 3 – Data Frame Analysis
12. Chapter 9: Introducing Data Frame Analytics 13. Chapter 10: Outlier Detection 14. Chapter 11: Classification Analysis 15. Chapter 12: Regression 16. Chapter 13: Inference 17. Other Books You May Enjoy Appendix: Anomaly Detection Tips

Results index schema details

As we have already hinted, inside the results index, there are a variety of different documents, each with their own usefulness with respect to understanding the results of the anomaly detection jobs. The ones we will discuss in this section are the ones that directly relate to the three levels of abstraction that we discussed previously in this chapter. They are aptly named as follows:

  • result_type:bucket: To give bucket-level results
  • result_type:record: To give record-level results
  • result_type:influencer: To give influencer-level results

The distribution of these document types will depend on the ML job configuration and the characteristics of the dataset being analyzed. These document types are written with the following heuristic:

  • result_type:bucket: One document is written for every bucket span's worth of time. In other words, if the bucket span is 15 minutes, then there will be one document of this type being written...
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