Book Image

Mastering Kubernetes - Fourth Edition

By : Gigi Sayfan
3.3 (3)
Book Image

Mastering Kubernetes - Fourth Edition

3.3 (3)
By: Gigi Sayfan

Overview of this book

The fourth edition of the bestseller Mastering Kubernetes includes the most recent tools and code to enable you to learn the latest features of Kubernetes 1.25. This book contains a thorough exploration of complex concepts and best practices to help you master the skills of designing and deploying large-scale distributed systems on Kubernetes clusters. You’ll learn how to run complex stateless and stateful microservices on Kubernetes, including advanced features such as horizontal pod autoscaling, rolling updates, resource quotas, and persistent storage backends. In addition, you’ll understand how to utilize serverless computing and service meshes. Further, two new chapters have been added. “Governing Kubernetes” covers the problem of policy management, how admission control addresses it, and how policy engines provide a powerful governance solution. “Running Kubernetes in Production” shows you what it takes to run Kubernetes at scale across multiple cloud providers, multiple geographical regions, and multiple clusters, and it also explains how to handle topics such as upgrades, capacity planning, dealing with cloud provider limits/quotas, and cost management. By the end of this Kubernetes book, you’ll have a strong understanding of, and hands-on experience with, a wide range of Kubernetes capabilities.
Table of Contents (21 chapters)
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Index

Understanding observability

Observability is a big word. What does it mean in practice? There are different definitions out there and big debates about how monitoring and observability are similar and different. I take the stance that observability is the property of the system that defines what we can tell about the state and behavior of the system right now and historically. In particular, we are interested in the health of the system and its components. Monitoring is the collection of tools, processes, and techniques that we use to increase the observability of the system.

There are different facets of information that we need to collect, record, and aggregate in order to get a good sense of what our system is doing. Those facets include logs, metrics, distributed traces, and errors. The monitoring or observability data is multidimensional and crosses many levels. Just collecting it doesn’t help much. We need to be able to query it, visualize it, and alert other systems...