Skip to content

Latest commit

 

History

History
53 lines (30 loc) · 3 KB

README.md

File metadata and controls

53 lines (30 loc) · 3 KB

Akrobateo

Akrobateo is a universal load balancer service implementation for Kubernetes. Akrobateo can work in any environment which makes it suitable for many use cases. And it's super light-weight too. It is implemented as an operator that reacts when it sees type: LoadBalancer services in the cluster.

Akrobateo exposes in-cluster LoadBalancer services as node hostPorts using DaemonSets. The operator naturally also syncs the addresses for the services. This essentially makes the LoadBalancer type services behave pretty much like NodePort services. The drawback with NodePort services is that we're not able to use additional components such as ExternalDNS and others.

The node-port proxy Pods utilize iptables to do the actual traffic forwarding.

Inspiration

This operator draws heavy inspiration from K3S servicelb controller: https://github.com/rancher/k3s/blob/master/pkg/servicelb/controller.go

As K3S controller is fully and tightly integrated into K3S, with good reasons, we thought we'd separate the concept into generic operator usable in any Kubernetes cluster.

Why DaemonSets?

Running the "proxies" as DaemonSets makes the proxy not to be a single-point-of-failure. So once you've exposed the service you can safely e.g. push the services external addresses into your DNS. This does have the drawback that a given port can be exposed only in one service throughout the cluster.

Building

Use the included build.sh script. There's naturally also a Dockerfile for putting everything into an image.

Build automation takes care of building all the release artifacts. So just create a tag for the release and everything will be build. The current build also produces multiarch images for both the operator and the LB image itself.

Running locally

Either use operator-sdk to run it like so:

operator-sdk up local

Or use the locally built binary:

WATCH_NAMESPACE="default" ./output/akrobateo_darwin_amd64

LB_IMAGE env variable can be set to define a custom LB image to be used.

Deploying

To deploy to live cluster, use manifests in deploy directory. It sets up the operator in kube-system namespace with proper service-account and RBAC to allow access to only needed resources.

Future

Some ideas how to make things more configurable and/or future-proof

DaemonSet vs. Deployment

The original Klippy controller creates Deployments. Maybe user could put some annotation on the service whether he/she wants a deployment or a daemonset created. Operator SDK SHOULD be able to handle the different kinds of objects as long as there's proper owner references set.

Node selection

There should be some way for the user to select which nodes should act as LBs. So something like a node selector is needed on the services as annotation. That probably also means we'd need to support also tolerations.