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Intel Device Plugins Operator

Table of Contents

Introduction

Intel Device Plugins Operator is a Kubernetes custom controller whose goal is to serve the installation and lifecycle management of Intel device plugins for Kubernetes. It provides a single point of control for GPU, QAT, SGX, FPGA, DSA and DLB devices to a cluster administrators.

Installation

The default operator deployment depends on NFD and cert-manager. Those components have to be installed to the cluster before the operator can be deployed.

Note: Operator can also be installed via Helm charts. See INSTALL.md for details.

NFD

Install NFD (if it's not already installed) and node labelling rules (requires NFD v0.13+):

# deploy NFD
$ kubectl apply -k 'https://github.com/intel/intel-device-plugins-for-kubernetes/deployments/nfd?ref=<RELEASE_VERSION>'
# deploy NodeFeatureRules
$ kubectl apply -k 'https://github.com/intel/intel-device-plugins-for-kubernetes/deployments/nfd/overlays/node-feature-rules?ref=<RELEASE_VERSION>'

Make sure both NFD master and worker pods are running:

$ kubectl get pods -n node-feature-discovery
NAME                          READY   STATUS    RESTARTS   AGE
nfd-master-599c58dffc-9wql4   1/1     Running   0          25h
nfd-worker-qqq4h              1/1     Running   0          25h

Note that labelling is not performed immediately. Give NFD 1 minute to pick up the rules and label nodes.

As a result all found devices should have correspondent labels, e.g. for Intel DLB devices the label is intel.feature.node.kubernetes.io/dlb:

$ kubectl get no -o json | jq .items[].metadata.labels |grep intel.feature.node.kubernetes.io/dlb
  "intel.feature.node.kubernetes.io/dlb": "true",

Full list of labels can be found in the deployments/operator/samples directory:

$ grep -r feature.node.kubernetes.io/ deployments/operator/samples/
deployments/operator/samples/deviceplugin_v1_dlbdeviceplugin.yaml:    intel.feature.node.kubernetes.io/dlb: 'true'
deployments/operator/samples/deviceplugin_v1_qatdeviceplugin.yaml:    intel.feature.node.kubernetes.io/qat: 'true'
deployments/operator/samples/deviceplugin_v1_sgxdeviceplugin.yaml:    intel.feature.node.kubernetes.io/sgx: 'true'
deployments/operator/samples/deviceplugin_v1_gpudeviceplugin.yaml:    intel.feature.node.kubernetes.io/gpu: "true"
deployments/operator/samples/deviceplugin_v1_fpgadeviceplugin.yaml:    intel.feature.node.kubernetes.io/fpga-arria10: 'true'
deployments/operator/samples/deviceplugin_v1_dsadeviceplugin.yaml:    intel.feature.node.kubernetes.io/dsa: 'true'

Cert-Manager

Note: The default deployment for the Intel Device Plugin operator uses self-signed certificates. For a production cluster, the certificate issuer should be properly set and not use a self-signed method.

The default operator deployment depends on cert-manager running in the cluster. See installation instructions here.

Make sure all the pods in the cert-manager namespace are up and running:

$ kubectl get pods -n cert-manager
NAME                                      READY   STATUS    RESTARTS   AGE
cert-manager-7747db9d88-bd2nl             1/1     Running   0          21d
cert-manager-cainjector-87c85c6ff-59sb5   1/1     Running   0          21d
cert-manager-webhook-64dc9fff44-29cfc     1/1     Running   0          21d

Device Plugin Operator

Finally deploy the operator itself:

$ kubectl apply -k 'https://github.com/intel/intel-device-plugins-for-kubernetes/deployments/operator/default?ref=<RELEASE_VERSION>'

Now you can deploy the device plugins by creating corresponding custom resources. The samples for them are available here.

Device Plugin Custom Resource

Deploy your device plugin by applying its custom resource, e.g. GpuDevicePlugin with

$ kubectl apply -f https://raw.githubusercontent.com/intel/intel-device-plugins-for-kubernetes/main/deployments/operator/samples/deviceplugin_v1_gpudeviceplugin.yaml

Observe it is up and running:

$ kubectl get GpuDevicePlugin
NAME                     DESIRED   READY   NODE SELECTOR   AGE
gpudeviceplugin-sample   1         1                       5s

NOTE: Intel Device Plugin Operator supports multiple custom resources per Kind (QAT, DSA, etc.). With multiple custom resources and different nodeSelectors, it is possible to customize device plugin configuration per node or per group of nodes. See also known issues.

Upgrade

The upgrade of the deployed plugins can be done by simply installing a new release of the operator.

The operator auto-upgrades operator-managed plugins (CR images and thus corresponding deployed daemonsets) to the current release of the operator.

From 0.28.0 release, each version of the operator can have a set of images in deployments/operator/manager/manager.yaml as env variables.

When env variables are set for specific plugins (and their initcontainers), plugins are upgraded to the images set as env variables and all user input is ignored.

The name of env variables is capitalized image with '_SHA' ending (e.g. in case of the image for intel-sgx-plugin, the env variable is INTEL_SGX_PLUGIN_SHA).

The value of env variables is the full path of the image (e.g. docker.io/intel/intel-sgx-plugin@sha256:<digest>).

Limiting Supported Devices

In order to limit the deployment to a specific device type, use one of kustomizations under deployments/operator/device.

For example, to limit the deployment to FPGA, use:

$ kubectl apply -k deployments/operator/device/fpga

Operator also supports deployments with multiple selected device types. In this case, create a new kustomization with the necessary resources that passes the desired device types to the operator using --device command line argument multiple times.

Known issues

Multiple Custom Resources

With multiple custom resources, nodeSelector has to be carefully set to avoid device plugin DaemonSet getting deployed multiple times on the same node, as operator does not check or prevent this. Multiple plugins managing same resource on a node can cause invalid behavior and/or duplicate device resources on node.

Cluster behind a proxy

If your cluster operates behind a corporate proxy make sure that the API server is configured not to send requests to cluster services through the proxy. You can check that with the following command:

$ kubectl describe pod kube-apiserver --namespace kube-system | grep -i no_proxy | grep "\.svc"

In case there's no output and your cluster was deployed with kubeadm open /etc/kubernetes/manifests/kube-apiserver.yaml at the control plane nodes and append .svc and .svc.cluster.local to the no_proxy environment variable:

apiVersion: v1
kind: Pod
metadata:
  ...
spec:
  containers:
  - command:
    - kube-apiserver
    - --advertise-address=10.237.71.99
    ...
    env:
    - name: http_proxy
      value: http://proxy.host:8080
    - name: https_proxy
      value: http://proxy.host:8433
    - name: no_proxy
      value: 127.0.0.1,localhost,.example.com,10.0.0.0/8,.svc,.svc.cluster.local
    ...

Note: To build clusters using kubeadm with the right no_proxy settings from the very beginning, set the cluster service names to $no_proxy before kubeadm init:

$ export no_proxy=$no_proxy,.svc,.svc.cluster.local

Leader election enabled

When the operator is run with leader election enabled, that is with the option --leader-elect, make sure the cluster is not overloaded with excessive number of pods. Otherwise a heart beat used by the leader election code may trigger a timeout and crash. We are going to use different clients for the controller and leader election code to alleviate the issue. See more details in intel#476.

In case the deployment is limited to specific device type(s), the CRDs for other device types are still created, but no controllers for them are registered.