-
Autoscale Kubernetes workloads and infrastructure using KEDA and Karpenter
-
Improve performance, reduce cloud costs, and eliminate resource waste with smarter scaling
-
Work with hands-on labs, real-world use cases, and step-by-step guidance from the creator of Karpenter Blueprints
-
Free with your book: PDF Copy, AI Assistant, and Next-Gen Reader
Kubernetes is the backbone of modern containerized infrastructure, but scaling it efficiently remains a challenge. Kubernetes Autoscaling equips cloud professionals with this comprehensive guide to dynamically scaling applications and infrastructure using the powerful combination of Kubernetes Event-Driven Autoscaler (KEDA) and Karpenter, AWS’s next-generation cluster autoscaler.
You’ll begin with autoscaling fundamentals, move through HPA and VPA, and then get hands-on KEDA for event-driven workloads and Karpenter for data plane scaling. With the help of real-world use cases, best practices, and detailed patterns, you’ll deploy resilient, scalable, and cost-effective Kubernetes clusters across production environments.
By the end of this book, you’ll be able to implement practical autoscaling strategies to improve performance, reduce cloud costs, and eliminate over-provisioning.
This book is ideal for DevOps engineers, SREs, cloud architects, and Kubernetes professionals who want to optimize resource usage and improve scalability. A basic understanding of Kubernetes concepts and cloud environments, i.e., AWS, GCP, and Azure, is assumed.
-
Gain a solid foundation in Kubernetes autoscaling and its components
-
Scale deployments, jobs, and StatefulSets using KEDA's CRDs
-
Configure event-based scaling strategies using metrics and schedules
-
Deploy and manage Karpenter for on-demand infrastructure provisioning
-
Explore advanced node disruption and lifecycle techniques
-
Combine KEDA and Karpenter to implement full-stack autoscaling
-
Optimize costs using Spot Instances, scale-to-zero, and workload placement
-
Apply real-world patterns and monitor autoscaling performance in production