Mario-Leander Reimer
Fifty Shades of Kubernetes Autoscaling
#1about 4 minutes
Why cloud-native systems require multi-layered elasticity
Modern applications need to be anti-fragile and support hyperscale, which requires elasticity at the workload level (horizontal/vertical) and the infrastructure level (cluster scaling).
#2about 5 minutes
How metrics and events drive Kubernetes autoscaling decisions
Autoscaling relies on events for cluster-level actions and a multi-layered metrics API for workload scaling based on resource, custom, or external data sources.
#3about 5 minutes
Implementing horizontal pod autoscaling with different metrics
The Horizontal Pod Autoscaler (HPA) can scale pods based on simple resource metrics like CPU, custom pod metrics, or external metrics from Prometheus.
#4about 2 minutes
Using the vertical pod autoscaler for right-sizing workloads
The Vertical Pod Autoscaler (VPA) can automatically adjust pod resources, but its recommendation mode is most useful for determining optimal CPU and memory settings.
#5about 4 minutes
How the default cluster autoscaler works on GKE
The default cluster autoscaler automatically provisions new nodes when it detects unschedulable pods due to resource constraints, as demonstrated on Google Kubernetes Engine.
#6about 5 minutes
Using Carpenter for fast and flexible cluster scaling on AWS
Carpenter provides a fast and flexible cluster autoscaling solution for AWS EKS, enabling cost optimization by using spot instances for scaled-out nodes.
#7about 1 minute
Exploring KEDA for advanced event-driven autoscaling
KEDA (Kubernetes Event-driven Autoscaling) enables scaling workloads, including to zero, based on events from various sources like message queues or databases.
#8about 1 minute
Summary of Kubernetes autoscaling tools and techniques
A recap of essential autoscaling components including the metric server, HPA, VPA, cluster autoscalers like Carpenter, KEDA, and the descheduler for cluster optimization.
#9about 2 minutes
Q&A on autoscaler reliability and graceful shutdown
Discussion on the production-readiness of autoscalers, the importance of observability, and how to achieve graceful pod termination during scale-down events.
Related jobs
Jobs that call for the skills explored in this talk.
Matching moments
18:42 MIN
Why autoscaling gRPC services can be challenging
gRPC Load Balancing Deep Dive
00:25 MIN
Understanding the challenges of scaling Kubernetes with confidence
5 steps for running a Kubernetes environment at scale
26:31 MIN
Scaling inference with Kubernetes and smart routing
Unveiling the Magic: Scaling Large Language Models to Serve Millions
16:58 MIN
Live demo of an auto-scaling event-driven application
Serverless Java in Action: Cloud Agnostic Design Patterns and Tips
22:57 MIN
Case study on optimizing a GKE cluster
Minimising the Carbon Footprint of Workloads
57:16 MIN
How application scaling works in Cloud Foundry
CD2CF - Continuous Deployment to Cloud Foundry
26:00 MIN
Managing containers at scale with Kubernetes
#90DaysOfDevOps - The DevOps Learning Journey
50:52 MIN
Common challenges when scaling self-hosted runners
A deep dive into ARC the Kubernetes operator to scale self-hosted runners
Featured Partners
Related Videos
Operating etcd for Managed Kubernetes
Mario Valderrama
Mastering Kubernetes – Beginner Edition
Hannes Norbert Göring
Chaos in Containers - Unleashing Resilience
Maish Saidel-Keesing
Kubernetes Maestro: Dive Deep into Custom Resources to Unleash Next-Level Orchestration Power!
Um e Habiba
5 steps for running a Kubernetes environment at scale
Stijn Polfliet
Containers in the cloud - State of the Art in 2022
Federico Fregosi
The Future of Cloud is Abstraction - Why Kubernetes is not the Endgame for STACKIT
Dominik Kress
Kubernetes Security - Challenge and Opportunity
Marc Nimmerrichter
Related Articles
View all articles


.gif?w=240&auto=compress,format)
From learning to earning
Jobs that call for the skills explored in this talk.

DevOps Engineer - Kubernetes (w/m/d)
smartclip Europe GmbH
Hamburg, Germany
Intermediate
Senior
GIT
Linux
Python
Kubernetes

Senior Infrastructure Engineer (m/w/d) - (short_version)
Mittwald CM Service GmbH & Co. KG
Espelkamp, Germany
Intermediate
Senior
Linux
Docker
DevOps
Kubernetes

(Senior) DevOps/Cloud Engineer with Google Cloud Experience (all genders) - 100 % Remote
iits-consulting GmbH
Munich, Germany
Intermediate
Go
Docker
DevOps
Kubernetes


Kubernetes Linux engineer 90k plus auto
Multiplied
Utrecht, Netherlands
Remote
Linux
Puppet
Docker
Ansible
+2



