0

Using the code bellow it is possible to create a dask kubernetes cluster in azure aks.

It uses a remote scheduler (dask.config.set({"kubernetes.scheduler-service-type": "LoadBalancer"})) and works perfectly.

To use virtual nodes, uncomment the line extra_pod_config=virtual_config (which follows this official example).

It doesn't work, with the following error:

ACI does not support providing args without specifying the command. Please supply both command and args to the pod spec.

This is tied to passing containers: args: [dask-scheduler]

Which containers: command: should I supply to fix this issue?

Thank you

import dask
from dask.distributed import Client
from dask_kubernetes import KubeCluster, KubeConfig, make_pod_spec

image = "daskdev/dask"
cluster = "aks-cluster1"
dask.config.set({"kubernetes.scheduler-service-type": "LoadBalancer"})
dask.config.set({"distributed.comm.timeouts.connect": 180})
virtual_config = {
    "nodeSelector": {
        "kubernetes.io/role": "agent",
        "beta.kubernetes.io/os": "linux",
        "type": "virtual-kubelet",
    },
    "tolerations": [
        {"key": "virtual-kubelet.io/provider", "operator": "Exists"},
    ],
}

pod_spec = make_pod_spec(
    image=image,
    # extra_pod_config=virtual_config,
    memory_limit="2G",
    memory_request="2G",
    cpu_limit=1,
    cpu_request=1,
    threads_per_worker=1,  # same as cpu
)

# az aks get-credentials --name aks-cluster1 --resource-group resource_group1
# cp ~/.kube/config ./aksconfig.yaml
auth = KubeConfig(config_file="./aksconfig.yaml", context=cluster,)
cluster = KubeCluster(
    pod_spec, auth=auth, deploy_mode="remote", scheduler_service_wait_timeout=180
)
client = Client(cluster)

1 Answer 1

0

the reason comes from this virtual kubelet protection: in the pod configuration, dask uses args to start a scheduler or worker, but no command is supplied.

So I explicitly added the entrypoint command command_entrypoint_explicit and it works: pods are created sucessfully.

Second problem: network names resolution. workers fail to connect to the scheduler by network name: tcp://{name}.{namespace}:{port}

Although tcp://{name}.{namespace}.svc.cluster.local:{port} works. I edited this in dask_kubernetes.core.Scheduler.start and it works.

Another option is the virtual_config bellow. Code bellow is a complete solution.

import dask
from dask.distributed import Client
from dask_kubernetes import KubeCluster, KubeConfig, make_pod_spec

dask.config.set({"kubernetes.scheduler-service-type": "LoadBalancer"})
dask.config.set({"distributed.comm.timeouts.connect": 180})
image = "daskdev/dask"
cluster = "aks-cluster-prod3"
virtual_config = {
    "nodeSelector": {
        "kubernetes.io/role": "agent",
        "beta.kubernetes.io/os": "linux",
        "type": "virtual-kubelet",
    },
    "tolerations": [
        {"key": "virtual-kubelet.io/provider", "operator": "Exists"},
        {"key": "azure.com/aci", "effect": "NoSchedule"},
    ],
    "dnsConfig": {
        "options": [{"name": "ndots", "value": "5"}],
        "searches": [
            "default.svc.cluster.local",
            "svc.cluster.local",
            "cluster.local",
        ],
    },
}

# copied from: https://github.com/dask/dask-docker/blob/master/base/Dockerfile#L25
command_entrypoint_explicit = {
    "command": ["tini", "-g", "--", "/usr/bin/prepare.sh"],
}

pod_spec = make_pod_spec(
    image=image,
    extra_pod_config=virtual_config,
    extra_container_config=command_entrypoint_explicit,
    memory_limit="2G",
    memory_request="2G",
    cpu_limit=1,
    cpu_request=1,
    threads_per_worker=1,  # same as cpu
)

# az aks get-credentials --name aks-cluster1 --resource-group resource_group1
# cp ~/.kube/config ./aksconfig.yaml
auth = KubeConfig(config_file="./aksconfig.yaml", context=cluster,)
cluster = KubeCluster(
    pod_spec,
    auth=auth,
    deploy_mode="remote",
    scheduler_service_wait_timeout=180,
    n_workers=1,
)
client = Client(cluster)
0

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.