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bpfman-operator

The bpfman-operator repository exists to deploy and manage bpfman within a Kubernetes cluster. This operator was built using some great tooling provided by the operator-sdk library. A great first step in understanding some of the functionality can be to just run make help.

license Project maturity: alpha Go report card

Deploy bpfman Operator

The bpfman-operator is running as a Deployment with a ReplicaSet of one. It runs on the control plane and is composed of the containers bpfman-operator and kube-rbac-proxy. The operator is responsible for launching the bpfman Daemonset, which runs on every node. The bpfman Daemonset is composed of the containers bpfman, bpfman-agent, and node-driver-registrar.

Deploy Locally via KIND

After reviewing the possible make targets it's quick and easy to get bpfman deployed locally on your system via a KIND cluster, run:

make run-on-kind

NOTE: By default, bpfman-operator deploys bpfman with CSI enabled. CSI requires Kubernetes v1.26 due to a PR (kubernetes/kubernetes#112597) that addresses a gRPC Protocol Error that was seen in the CSI client code and it doesn't appear to have been backported. It is recommended to install kind v0.20.0 or later.

Deploy To Openshift Cluster

First deploy the operator with one of the following two options:

1. Manually with Kustomize

To manually install with Kustomize and raw manifests, execute the following commands. The Openshift cluster needs to be up and running and specified in ~/.kube/config file.

make deploy-openshift

To clean up at a later time, run:

make undeploy-openshift

2. Via the OLM bundle

The other option for installing the bpfman-operator is through the OLM bundle.

Use operator-sdk to install the bundle like so:

operator-sdk run bundle quay.io/bpfman/bpfman-operator-bundle:latest --namespace bpfman

To clean up at a later time, execute:

operator-sdk cleanup bpfman-operator

3. Deploy as a bundle from the Console's OperatorHub page

This mode is recommended when you want to test the customer experience of navigating through the operators' catalog and installing/configuring it manually through the UI, prior to committing the bundle to either: -

or

export BUNDLE_IMG=quay.io/$USER/bpfman-operator-bundle:developement
make bundle bundle-build bundle-push
export CATALOG_IMG=quay.io/$USER/bpfman-operator-catalog:developement
make catalog-build catalog-push catalog-deploy

To clean up at a later time, execute:

make catalog-undeploy

Verify the Installation

Regardless of the deployment method, if the bpfman-operator was deployed successfully, you will see the bpfman-daemon and bpfman-operator pods running without errors:

kubectl get pods -n bpfman
NAME                             READY   STATUS    RESTARTS   AGE
bpfman-daemon-w24pr                3/3     Running   0          130m
bpfman-operator-78cf9c44c6-rv7f2   2/2     Running   0          132m

Deploy an eBPF Program to the cluster

To test the deployment simply deploy one of the sample xdpPrograms:

kubectl apply -f config/samples/bpfman.io_v1alpha1_xdp_pass_xdpprogram.yaml

If loading of the XDP Program to the selected nodes was successful, it will be reported back to the user via the xdpProgram's status field:

kubectl get xdpprogram xdp-pass-all-nodes -o yaml
apiVersion: bpfman.io/v1alpha1
kind: XdpProgram
metadata:
  annotations:
    kubectl.kubernetes.io/last-applied-configuration: |
      {"apiVersion":"bpfman.io/v1alpha1","kind":"XdpProgram","metadata":{"annotations":{},"labels":{"app.kubernetes.io/name":"xdpprogram"},"name":"xdp-pass-all-nodes"},"spec":{"bpffunctionname":"pass","bytecode":{"image":{"url":"quay.io/bpfman-bytecode/xdp_pass:latest"}},"globaldata":{"GLOBAL_u32":[13,12,11,10],"GLOBAL_u8":[1]},"interfaceselector":{"primarynodeinterface":true},"nodeselector":{},"priority":0}}
  creationTimestamp: "2023-11-07T19:16:39Z"
  finalizers:
  - bpfman.io.operator/finalizer
  generation: 2
  labels:
    app.kubernetes.io/name: xdpprogram
  name: xdp-pass-all-nodes
  resourceVersion: "157187"
  uid: 21c71a61-4e73-44eb-9b49-07af2866d25b
spec:
  bpffunctionname: pass
  bytecode:
    image:
      imagepullpolicy: IfNotPresent
      url: quay.io/bpfman-bytecode/xdp_pass:latest
  globaldata:
    GLOBAL_u8: AQ==
    GLOBAL_u32: DQwLCg==
  interfaceselector:
    primarynodeinterface: true
  mapownerselector: {}
  nodeselector: {}
  priority: 0
  proceedon:
  - pass
  - dispatcher_return
status:
  conditions:
  - lastTransitionTime: "2023-11-07T19:16:42Z"
    message: bpfProgramReconciliation Succeeded on all nodes
    reason: ReconcileSuccess
    status: "True"
    type: ReconcileSuccess

To view information in listing form simply run:

kubectl get xdpprogram -o wide
NAME                 BPFFUNCTIONNAME   NODESELECTOR   PRIORITY   INTERFACESELECTOR               PROCEEDON
xdp-pass-all-nodes   pass              {}             0          {"primarynodeinterface":true}   ["pass","dispatcher_return"]

API Types Overview

Refer to api-spec.md for a detailed description of all the bpfman Kubernetes API types.

Multiple Program CRDs

The multiple *Program CRDs are the bpfman Kubernetes API objects most relevant to users. They express how and where eBPF programs are to be deployed within a Kubernetes cluster. Currently, bpfman supports:

  • fentryProgram
  • fexitProgram
  • kprobeProgram
  • tcProgram
  • tracepointProgram
  • uprobeProgram
  • xdpProgram

BpfApplication CRD

The BpfApplication CRD is designed for managing eBPF programs at an application level within a Kubernetes cluster. This CRD allows Kubernetes users to define which eBPF programs are essential for an application's operations and specify how these programs should be deployed across the cluster.

BpfProgram CRD

The BpfProgram CRD is used internally by the bpfman-deployment to keep track of per-node bpfman state, such as map pinpoints, and to report node-specific errors back to the user. Kubernetes' users/controllers are only allowed to view these objects, NOT create or edit them.

Applications wishing to use bpfman to deploy/manage their eBPF programs in Kubernetes will make use of this object to find references to the bpfMap pinpoints (spec.maps) to configure their eBPF programs.

Developer

For more architecture details about bpfman-operator, refer to Developing the bpfman-operator

Bpfman-agent profiling

bpfman-agent process use port 6060 for Golang profiling to be able to get the different profiles

1- Set port-forward rule in a different terminal

oc get pods -n bpfman
NAME                               READY   STATUS    RESTARTS   AGE
bpfman-daemon-76v57                3/3     Running   0          14m
bpfman-operator-7f67bc7c57-ww52z   2/2     Running   0          14m

oc -n bpfman port-forward bpfman-daemon-76v57 6060

2- Download the required profiles:

curl -o <profile> http://localhost:6060/debug/pprof/<profile>

Where can be:

profile description
allocs A sampling of all memory allocations
block Stack traces that led to blocking on synchronization primitives
cmdline The command line invocation of the current program
goroutine Stack traces of all current goroutines
heap A sampling of memory allocations of live objects.
You can specify the gc GET parameter to run GC before taking the heap sample.
mutex Stack traces of holders of contended mutexes
profile CPU profile.
You can specify the duration in the seconds GET parameter.
threadcreate Stack traces that led to the creation of new OS threads
trace A trace of execution of the current program.
You can specify the duration in the seconds GET parameter.

Example:

curl "http://localhost:6060/debug/pprof/trace?seconds=20" -o trace
curl "http://localhost:6060/debug/pprof/profile?duration=20" -o cpu
curl "http://localhost:6060/debug/pprof/heap?gc" -o heap
curl "http://localhost:6060/debug/pprof/allocs" -o allocs
curl "http://localhost:6060/debug/pprof/goroutine" -o goroutine

3- Use go tool pprof to dig into the profiles (go tool trace for the trace profile) or use web interface for example go tool pprof -http=:8080 cpu