VolcanoJob
Introduction
VolcanoJob, referred to as vcjob, is a CRD object for Volcano. Different from a Kubernetes job, it provides more advanced features such as specified scheduler, minimum number of members, task definition, lifecycle management, specific queue, and specific priority. VolcanoJob is ideal for high performance computing scenarios such as machine learning, big data applications, and scientific computing.
Example
apiVersion: batch.volcano.sh/v1alpha1
kind: Job
metadata:
name: test-job
spec:
minAvailable: 3
schedulerName: volcano
priorityClassName: high-priority
policies:
- event: PodEvicted
action: RestartJob
plugins:
ssh: []
env: []
svc: []
maxRetry: 5
queue: default
volumes:
- mountPath: "/myinput"
- mountPath: "/myoutput"
volumeClaimName: "testvolumeclaimname"
volumeClaim:
accessModes: [ "ReadWriteOnce" ]
storageClassName: "my-storage-class"
resources:
requests:
storage: 1Gi
tasks:
- replicas: 6
name: "default-nginx"
template:
metadata:
name: web
spec:
containers:
- image: nginx
imagePullPolicy: IfNotPresent
name: nginx
resources:
requests:
cpu: "1"
restartPolicy: OnFailure
Key Fields
schedulerName
schedulerName
indicates the scheduler that will schedule the job. Currently, the value can be volcano
or default-scheduler, with
volcano` selected by default.
minAvailable
minAvailable
represents the minimum number of running pods required to run the job. Only when the number of running pods is not less than minAvailable
can the job be considered as running
.
volumes
volumes
indicates the configuration of the volume to which the job is mounted. It complies with the volume configuration requirements in Kubernetes.
tasks.replicas
tasks.replicas
indicates the number of pod replicas in a task.
tasks.template
tasks.template
defines the pod configuration of a task. It is the same as a pod template in Kubernetes.
tasks.policies
tasks.policies
defines the lifecycle policy of a task.
policies
policies
defines the default lifecycle policy for all tasks when tasks.policies
is not set.
plugins
plugins
indicates the plugins used by Volcano when the job is scheduled.
queue
queue
indicates the queue to which the job belongs.
priorityClassName
priorityClassName
indicates the priority of the job. It is used in preemptive scheduling.
maxRetry
maxRetry
indicates the maximum number of retries allowed by the job.
Status
pending
pending
indicates that the job is waiting to be scheduled.
aborting
aborting
indicates that the job is being aborted because of some external factors.
aborted
aborted
indicates that the job has already been aborted because of some external factors.
running
running
indicates that there are at least minAvailable
pods running.
restarting
restarting
indicates that the job is restarting.
completing
completing
indicates that there are at least minAvailable
pods in the completing
state. The job is doing cleanup.
completed
completed
indicates that there are at least minAvailable
pods in the completed
state. The job has completed cleanup.
terminating
terminating
indicates that the job is being terminated because of some internal factors. The job is waiting pods to release resources.
terminated
terminated
indicates that the job has already been terminated because of some internal factors.
failed
failed
indicates that the job still cannot start after maxRetry
tries.
Usage
TensorFlow Workload
Create a tensorflow workload with a ps and three workers.
apiVersion: batch.volcano.sh/v1alpha1
kind: Job
metadata:
name: tensorflow-dist-mnist
spec:
minAvailable: 3 // There must be at least 3 available pods.
schedulerName: volcano // Scheduler specified
plugins:
env: []
svc: []
policies:
- event: PodEvicted // Restart the job when a pod is evicted.
action: RestartJob
tasks:
- replicas: 1 // One ps pod specified
name: ps
template: // Definition of the ps pod
spec:
containers:
- command:
- sh
- -c
- |
PS_HOST=`cat /etc/volcano/ps.host | sed 's/$/&:2222/g' | sed 's/^/"/;s/$/"/' | tr "\n" ","`;
WORKER_HOST=`cat /etc/volcano/worker.host | sed 's/$/&:2222/g' | sed 's/^/"/;s/$/"/' | tr "\n" ","`;
export TF_CONFIG={\"cluster\":{\"ps\":[${PS_HOST}],\"worker\":[${WORKER_HOST}]},\"task\":{\"type\":\"ps\",\"index\":${VK_TASK_INDEX}},\"environment\":\"cloud\"};
python /var/tf_dist_mnist/dist_mnist.py
image: volcanosh/dist-mnist-tf-example:0.0.1
name: tensorflow
ports:
- containerPort: 2222
name: tfjob-port
resources: {}
restartPolicy: Never
- replicas: 2 // Two worker pods specified
name: worker
policies:
- event: TaskCompleted // The job will be marked as completed when two worker pods finish tasks.
action: CompleteJob
template: // Definition of worker pods
spec:
containers:
- command:
- sh
- -c
- |
PS_HOST=`cat /etc/volcano/ps.host | sed 's/$/&:2222/g' | sed 's/^/"/;s/$/"/' | tr "\n" ","`;
WORKER_HOST=`cat /etc/volcano/worker.host | sed 's/$/&:2222/g' | sed 's/^/"/;s/$/"/' | tr "\n" ","`;
export TF_CONFIG={\"cluster\":{\"ps\":[${PS_HOST}],\"worker\":[${WORKER_HOST}]},\"task\":{\"type\":\"worker\",\"index\":${VK_TASK_INDEX}},\"environment\":\"cloud\"};
python /var/tf_dist_mnist/dist_mnist.py
image: volcanosh/dist-mnist-tf-example:0.0.1
name: tensorflow
ports:
- containerPort: 2222
name: tfjob-port
resources: {}
restartPolicy: Never
Argo Workload
Create an argo workload with two pod replicas. The workload is considered normal when at least one pod replica works normally.
apiVersion: argoproj.io/v1alpha1
kind: Workflow
metadata:
generateName: volcano-step-job-
spec:
entrypoint: volcano-step-job
serviceAccountName: argo
templates:
- name: volcano-step-job
steps:
- - name: hello-1
template: hello-tmpl
arguments:
parameters: [{name: message, value: hello1}, {name: task, value: hello1}]
- - name: hello-2a
template: hello-tmpl
arguments:
parameters: [{name: message, value: hello2a}, {name: task, value: hello2a}]
- name: hello-2b
template: hello-tmpl
arguments:
parameters: [{name: message, value: hello2b}, {name: task, value: hello2b}]
- name: hello-tmpl
inputs:
parameters:
- name: message
- name: task
resource:
action: create
successCondition: status.state.phase = Completed
failureCondition: status.state.phase = Failed
manifest: | // Definition of the VolcanoJob
apiVersion: batch.volcano.sh/v1alpha1
kind: Job
metadata:
generateName: step-job-{{inputs.parameters.task}}-
ownerReferences:
- apiVersion: argoproj.io/v1alpha1
blockOwnerDeletion: true
kind: Workflow
name: "{{workflow.name}}"
uid: "{{workflow.uid}}"
spec:
minAvailable: 1
schedulerName: volcano
policies:
- event: PodEvicted
action: RestartJob
plugins:
ssh: []
env: []
svc: []
maxRetry: 1
queue: default
tasks:
- replicas: 2
name: "default-hello"
template:
metadata:
name: helloworld
spec:
containers:
- image: docker/whalesay
imagePullPolicy: IfNotPresent
command: [cowsay]
args: ["{{inputs.parameters.message}}"]
name: hello
resources:
requests:
cpu: "100m"
restartPolicy: OnFailure
MindSpore Workload
Create a Mindspore workload with eight pod replicas. The workload is considered normal when at least one pod replica works normally.
apiVersion: batch.volcano.sh/v1alpha1
kind: Job
metadata:
name: mindspore-cpu
spec:
minAvailable: 1
schedulerName: volcano
policies:
- event: PodEvicted
action: RestartJob
plugins:
ssh: []
env: []
svc: []
maxRetry: 5
queue: default
tasks:
- replicas: 8
name: "pod"
template:
spec:
containers:
- command: ["/bin/bash", "-c", "python /tmp/lenet.py"]
image: lyd911/mindspore-cpu-example:0.2.0
imagePullPolicy: IfNotPresent
name: mindspore-cpu-job
resources:
limits:
cpu: "1"
requests:
cpu: "1"
restartPolicy: OnFailure
Note
Supported Frameworks
Volcano supports almost all mainstream computing frameworks including:
- TensorFlow
- PyTorch
- MindSpore
- PaddlePaddle
- Spark
- Flink
- Open MPI
- Horovod
- MXNet
- Kubeflow
- Argo
- KubeGene
volcano or default-scheduler
Volcano has been enhanced in batch computing when compared with default-scheduler. It is ideal for high performance computing scenarios such as machine learning, big data applications, and scientific computing.