K3s: Difference between revisions

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K3s is a simplified version of [[Kubernetes]]. It bundles all components for a kubernetes cluster into a few of small binaries.
[https://k3s.io/ K3s] is a simplified Kubernetes version that bundles Kubernetes cluster components into a few small binaries optimized for Edge and IoT devices.  


== Single node setup ==


<syntaxHighlight lang=nix>
NixOS's K3s documentation is available at:
{
  networking.firewall.allowedTCPPorts = [
    6443 # k3s: required so that pods can reach the API server (running on port 6443 by default)
    # 2379 # k3s, etcd clients: required if using a "High Availability Embedded etcd" configuration
    # 2380 # k3s, etcd peers: required if using a "High Availability Embedded etcd" configuration
  ];
  networking.firewall.allowedUDPPorts = [
    # 8472 # k3s, flannel: required if using multi-node for inter-node networking
  ];
  services.k3s.enable = true;
  services.k3s.role = "server";
  services.k3s.extraFlags = toString [
    # "--kubelet-arg=v=4" # Optionally add additional args to k3s
  ];
  environment.systemPackages = [ pkgs.k3s ];
}
</syntaxHighlight>


After enabling, you can access your cluster through <code>sudo k3s kubectl</code> i.e. <code>sudo k3s kubectl cluster-info</code>, or by using the generated kubeconfig file in <code>/etc/rancher/k3s/k3s.yaml</code>
https://github.com/NixOS/nixpkgs/blob/master/pkgs/applications/networking/cluster/k3s/README.md


== Multi-node setup ==
[[Category:Container]]
 
it is simple to create a cluster of multiple nodes in a highly available setup (all nodes are in the control-plane and are a part of the etcd cluster).
 
The first node is configured like this:
 
<syntaxHighlight lang=nix>
{
  services.k3s = {
    enable = true;
    role = "server";
    token = "<randomized common secret>";
    clusterInit = true;
  };
}
</syntaxHighlight>
 
Any other subsequent nodes can be added with a slightly different config:
 
<syntaxHighlight lang=nix>
{
  services.k3s = {
    enable = true;
    role = "server";
    token = "<randomized common secret>";
    serverAddr = "https://<ip of first node>:6443";
  };
}
</syntaxHighlight>
 
For this to work you need to open the aforementioned API, etcd, and flannel ports in the firewall. Note that it is [https://etcd.io/docs/v3.3/faq/#why-an-odd-number-of-cluster-members recommended] to use an odd number of nodes in such a cluster.
 
Or see this [https://github.com/Mic92/doctor-cluster-config/tree/master/modules/k3s real world example]. You might want to ignore some parts of it i.e. the monitoring as this is specific to our setup.
The K3s server needs to import <code>modules/k3s/server.nix</code> and an agent <code>modules/k3s/agent.nix</code>.
Tip: You might run into issues with coredns not being reachable from agent nodes. Right now, we disable the NixOS firewall all together until we find a better solution.
 
== ZFS support ==
 
K3s's builtin containerd does not support the zfs snapshotter. However, it is possible to configure it to use an external containerd:
 
<syntaxHighlight lang=nix>
  virtualisation.containerd = {
    enable = true;
    settings =
      let
        fullCNIPlugins = pkgs.buildEnv {
          name = "full-cni";
          paths = with pkgs;[
            cni-plugins
            cni-plugin-flannel
          ];
        };
      in {
        plugins."io.containerd.grpc.v1.cri".cni = {
          bin_dir = "${fullCNIPlugins}/bin";
          conf_dir = "/var/lib/rancher/k3s/agent/etc/cni/net.d/";
        };
        # Optionally set private registry credentials here instead of using /etc/rancher/k3s/registries.yaml
        # plugins."io.containerd.grpc.v1.cri".registry.configs."registry.example.com".auth = {
        #  username = "";
        #  password = "";
        # };
      };
  };
  # TODO describe how to enable zfs snapshotter in containerd
  services.k3s.extraFlags = toString [
    "--container-runtime-endpoint unix:///run/containerd/containerd.sock"
  ];
</syntaxHighlight>
 
== Nvidia support ==
To use Nvidia GPU in the cluster the nvidia-container-runtime and runc are needed. To get the two components it suffices to add the following to the configuration
 
<syntaxHighlight lang=nix>
virtualisation.docker = {
  enable = true;
  enableNvidia = true;
};
environment.systemPackages = with pkgs; [ docker runc ];
</syntaxHighlight>
 
Note, using docker here is a workaround, it will install nvidia-container-runtime and that will cause it to be accessible via  <code>/run/current-system/sw/bin/nvidia-container-runtime</code>, currently its not directly accessible in nixpkgs.
 
You now need to create a new file in  <code>/var/lib/rancher/k3s/agent/etc/containerd/config.toml.tmpl</code> with the following
 
<syntaxHighlight lang=toml>
{{ template "base" . }}
 
[plugins."io.containerd.grpc.v1.cri".containerd.runtimes.nvidia]
  privileged_without_host_devices = false
  runtime_engine = ""
  runtime_root = ""
  runtime_type = "io.containerd.runc.v2"
 
[plugins."io.containerd.grpc.v1.cri".containerd.runtimes.nvidia.options]
  BinaryName = "/run/current-system/sw/bin/nvidia-container-runtime"
</syntaxHighlight>
 
Update:
As of 12/03/2024 It appears that the last two lines above are added by default, and if the two lines are present (as shown above) it will refuse to start the server. You will need to remove the two lines from that point onward.
 
Note here we are pointing the nvidia runtime to  "/run/current-system/sw/bin/nvidia-container-runtime".
 
Now apply the following runtime class to k3s cluster:
 
<syntaxHighlight lang=yaml>
apiVersion: node.k8s.io/v1
handler: nvidia
kind: RuntimeClass
metadata:
  labels:
    app.kubernetes.io/component: gpu-operator
  name: nvidia
</syntaxHighlight>
 
Following [https://github.com/NVIDIA/k8s-device-plugin#deployment-via-helm k8s-device-plugin] install the helm chart with  <code>runtimeClassName: nvidia</code> set. In order to passthrough the nvidia card into the container, your deployments spec must contain
- runtimeClassName: nvidia
- env:
    - name: NVIDIA_VISIBLE_DEVICES
      value: all
    - name: NVIDIA_DRIVER_CAPABILITIES
      value: all
to test its working exec onto a pod and run  <code>nvidia-smi</code>. For more configurability of nvidia related matters in k3s look in [https://docs.k3s.io/advanced#nvidia-container-runtime-support k3s-docs]
 
== Storage ==
 
=== Longhorn ===
 
NixOS configuration required for Longhorn:
 
<syntaxHighlight lang=nix>
environment.systemPackages = [ pkgs.nfs-utils ];
services.openiscsi = {
  enable = true;
  name = "${config.networking.hostName}-initiatorhost";
};
</syntaxHighlight>
 
Longhorn container has trouble with NixOS path. Solution is to override PATH environment variable, such as:
 
<syntaxHighlight lang=bash>
PATH: /usr/local/sbin:/usr/local/bin:/usr/sbin:/usr/bin:/sbin:/bin:/run/wrappers/bin:/nix/var/nix/profiles/default/bin:/run/current-system/sw/bin
</syntaxHighlight>
 
==== Kyverno Policy for Fixing Longhorn Container for NixOS ====
 
<syntaxHighlight lang=yaml>
---
apiVersion: v1
kind: ConfigMap
metadata:
  name: longhorn-nixos-path
  namespace: longhorn-system
data:
  PATH: /usr/local/sbin:/usr/local/bin:/usr/sbin:/usr/bin:/sbin:/bin:/run/wrappers/bin:/nix/var/nix/profiles/default/bin:/run/current-system/sw/bin
---
apiVersion: kyverno.io/v1
kind: ClusterPolicy
metadata:
  name: longhorn-add-nixos-path
  annotations:
    policies.kyverno.io/title: Add Environment Variables from ConfigMap
    policies.kyverno.io/subject: Pod
    policies.kyverno.io/category: Other
    policies.kyverno.io/description: >-
      Longhorn invokes executables on the host system, and needs
      to be aware of the host systems PATH. This modifies all
      deployments such that the PATH is explicitly set to support
      NixOS based systems.
spec:
  rules:
    - name: add-env-vars
      match:
        resources:
          kinds:
            - Pod
          namespaces:
            - longhorn-system
      mutate:
        patchStrategicMerge:
          spec:
            initContainers:
              - (name): "*"
                envFrom:
                  - configMapRef:
                      name: longhorn-nixos-path
            containers:
              - (name): "*"
                envFrom:
                  - configMapRef:
                      name: longhorn-nixos-path
---
</syntaxHighlight>
 
=== NFS  ===
 
NixOS configuration required for NFS:
 
<syntaxHighlight lang=nix>
boot.supportedFilesystems = [ "nfs" ];
services.rpcbind.enable = true;
</syntaxHighlight>
 
== Troubleshooting ==
 
=== Raspberry Pi not working ===
 
If the k3s.service/k3s server does not start and gives you the error <code>FATA[0000] failed to find memory cgroup (v2)</code> Here's the github issue: https://github.com/k3s-io/k3s/issues/2067 .
 
To fix the problem, you can add these things to your configuration.nix.
 
<source lang="nix">  boot.kernelParams = [
    "cgroup_enable=cpuset" "cgroup_memory=1" "cgroup_enable=memory"
  ];
</source>
 
=== FailedKillPod: failed to get network "cbr0" cached result ===
 
> KillPodSandboxError: failed to get network "cbr0" cached result: decoding version from network config: unexpected end of JSON input
 
This can happen after a reboot, that fails to persist state to disk.
 
Workaround: https://github.com/k3s-io/k3s/issues/6185#issuecomment-1581245331
 
Unconfirmed solution: https://github.com/flannel-io/flannel/issues/1662#issuecomment-1562523621
 
== Release support ==
 
Documented [https://github.com/NixOS/nixpkgs/tree/master/pkgs/applications/networking/cluster/k3s#upstream-release-cadence-and-support here].
 
[[Category:Applications]]
[[Category:Server]]
[[Category:orchestration]]

Latest revision as of 21:54, 18 June 2024

K3s is a simplified Kubernetes version that bundles Kubernetes cluster components into a few small binaries optimized for Edge and IoT devices.


NixOS's K3s documentation is available at:

https://github.com/NixOS/nixpkgs/blob/master/pkgs/applications/networking/cluster/k3s/README.md