Book Image

Enterprise DevOps for Architects

By : Jeroen Mulder
4 (1)
Book Image

Enterprise DevOps for Architects

4 (1)
By: Jeroen Mulder

Overview of this book

Digital transformation is the new paradigm in enterprises, but the big question remains: is the enterprise ready for transformation using native technology embedded in Agile/DevOps? With this book, you'll see how to design, implement, and integrate DevOps in the enterprise architecture while keeping the Ops team on board and remaining resilient. The focus of the book is not to introduce the hundreds of different tools that are available for implementing DevOps, but instead to show you how to create a successful DevOps architecture. This book provides an architectural overview of DevOps, AIOps, and DevSecOps – the three domains that drive and accelerate digital transformation. Complete with step-by-step explanations of essential concepts, practical examples, and self-assessment questions, this DevOps book will help you to successfully integrate DevOps into enterprise architecture. You'll learn what AIOps is and what value it can bring to an enterprise. Lastly, you will learn how to integrate security principles such as zero-trust and industry security frameworks into DevOps with DevSecOps. By the end of this DevOps book, you'll be able to develop robust DevOps architectures, know which toolsets you can use for your DevOps implementation, and have a deeper understanding of next-level DevOps by implementing Site Reliability Engineering (SRE).
Table of Contents (21 chapters)
1
Section 1: Architecting DevOps for Enterprises
7
Section 2: Creating the Shift Left with AIOps
13
Section 3: Bridging Security with DevSecOps

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...