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Enterprise DevOps for Architects

You're reading from   Enterprise DevOps for Architects Leverage AIOps and DevSecOps for secure digital transformation

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Product type Paperback
Published in Nov 2021
Publisher Packt
ISBN-13 9781801812153
Length 288 pages
Edition 1st Edition
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Authors (2):
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Jeroen Mulder Jeroen Mulder
Author Profile Icon Jeroen Mulder
Jeroen Mulder
Jeroen Mulder Jeroen Mulder
Author Profile Icon Jeroen Mulder
Jeroen Mulder
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Toc

Table of Contents (21) Chapters Close

Preface 1. Section 1: Architecting DevOps for Enterprises
2. Chapter 1: Defining the Reference Architecture for Enterprise DevOps FREE CHAPTER 3. Chapter 2: Managing DevOps from Architecture 4. Chapter 3: Architecting for DevOps Quality 5. Chapter 4: Scaling DevOps 6. Chapter 5: Architecting Next-Level DevOps with SRE 7. Section 2: Creating the Shift Left with AIOps
8. Chapter 6: Defining Operations in Architecture 9. Chapter 7: Understanding the Impact of AI on DevOps 10. Chapter 8: Architecting AIOps 11. Chapter 9: Integrating AIOps in DevOps 12. Chapter 10: Making the Final Step to NoOps 13. Section 3: Bridging Security with DevSecOps
14. Chapter 11: Understanding Security in DevOps 15. Chapter 12: Architecting for DevSecOps 16. Chapter 13: Working with DevSecOps Using Industry Security Frameworks 17. Chapter 14: Integrating DevSecOps with DevOps 18. Chapter 15: Implementing Zero Trust Architecture 19. Assessments 20. Other Books You May Enjoy

Summary

This chapter was a deep dive into AIOps. This is a rather new domain, but very promising. We've learned how AIOps platforms are built and learn as they are implemented in enterprises. It's important to understand that you need a logical architecture to have a complete overview of how systems fulfill functionality and how they are related to other systems, without already knowing the full technical details of these systems.

Next, we defined the key components of AIOps, being big data and machine or deep learning. AI only performs if it has access to enough relevant data on which it can execute analytic models. These models will teach the platform how to detect issues, anomalies, and other events, predict the impact on the IT landscape, find root causes faster, and eventually trigger actions. These actions can be automated. AIOps platforms will avoid a lot of tedious, repetitive work for operators, something that is called toil in SRE.

We've learned what...

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