Skip to main content

A Python package to submit and manage Apache Spark applications on Kubernetes.

Project description

Spark On Kubernetes

Spark on Kubernetes is a python package that makes it easy to submit and manage spark apps on Kubernetes. It provides a Python client that can be used to submit apps in your API or scheduler of choice, and a CLI that can be used to submit apps from the command line, instead of using spark-submit.

It also provides an optional REST API with a web UI that can be used to list and manage apps, and access the spark UI through the reverse proxy.

Installation

To install the core python package (only the Python client and the helpers), run:

pip install spark-on-k8s

If you want to use the REST API and the web UI, you will also need to install the api package:

pip install spark-on-k8s[api]

You can also install the package from source with pip or poetry:

# With pip
pip install . # For the core package
pip install ".[api]" # For the API package

# With poetry
poetry install # For the core package
poetry install -E api # For the API package

Usage

Setup the Kubernetes namespace

When submitting a Spark application to Kubernetes, we only create the driver pod, which is responsible for creating and managing the executors pods. To give the driver pod the permissions to create the executors pods, we can give it a service account with the required permissions. To simplify this process, we provide a helper function that creates a namespace if needed, and a service account with the required permissions:

With Python:

from spark_on_k8s.utils.setup_namespace import SparkOnK8SNamespaceSetup

spark_on_k8s_setuper = SparkOnK8SNamespaceSetup()
spark_on_k8s_setuper.setup_namespace(namespace="<namespace name>")

With the CLI:

spark-on-k8s namespace setup -n <namespace name>

Python Client

The Python client can be used to submit apps from your Python code, instead of using spark-submit:

from spark_on_k8s.client import SparkOnK8S

client = SparkOnK8S()
client.submit_app(
    image="my-registry/my-image:latest",
    app_path="local:///opt/spark/work-dir/my-app.py",
    app_arguments=["arg1", "arg2"],
    app_name="my-app",
    namespace="spark-namespace",
    service_account="spark-service-account",
    app_waiter="log",
    image_pull_policy="Never",
    ui_reverse_proxy=True,
)

CLI

The CLI can be used to submit apps from the command line, instead of using spark-submit, it can also be used to manage apps submitted with the Python client (list, get, delete, logs, etc.):

Submit a app:

spark-on-k8s app submit \
  --image my-registry/my-image:latest \
  --path local:///opt/spark/work-dir/my-app.py \
  -n spark \
  --name my-app \
  --image-pull-policy Never \
  --ui-reverse-proxy \
  --log \
  param1 param2

Kill a app:

spark-on-k8s app kill -n spark-namespace --app-id my-app

List apps:

spark-on-k8s apps list -n spark-namespace

You can check the help for more information:

spark-on-k8s --help
spark-on-k8s app --help
spark-on-k8s apps --help

REST API

The REST API implements some of the same functionality as the CLI but in async way, and also provides a web UI that can be used to list the apps in the cluster and access the spark UI through a reverse proxy. The UI will be improved in the future and more functionality will be added to both UI and API.

To run the API, you can use the CLI:

spark-on-k8s api start \
    --host "0.0.0.0" \
    --port 8080 \
    --workers 4 \
    --log-level error \
    --limit-concurrency 100

To list the apps, you can use the API:

curl -X 'GET' \
  'http://0.0.0.0:8080/apps/list_apps/spark-namespace' \
  -H 'accept: application/json'

To access the spark UI of the app APP_ID, in the namespace NAMESPACE, you can use the web UI link: http://0.0.0.0:8080/webserver/ui/NAMESPACE/APP_ID, or getting all the application and then clicking on the button Open Spark UI from the link http://0.0.0.0:8080/webserver/apps?namespace=NAMESPACE.

API in production

To deploy the API in production, you can use the project helm chart, that setups all the required resources in the cluster, including the API deployment, the service, the ingress and the RBAC resources. The API has a configuration class that loads the configuration from environment variables, so you can use the helm chart env values to configure the API and its Kubernetes client.

To install the helm chart, you can run:

helm install spark-on-k8s chart --values examples/helm/values.yaml

Configuration

The Python client and the CLI can be configured with environment variables to avoid passing the same arguments every time if you have a common configuration for all your apps. The environment variables are the same for both the client and the CLI. Here is a list of the available environment variables:

Environment Variable Description Default
SPARK_ON_K8S_DOCKER_IMAGE The docker image to use for the spark pods
SPARK_ON_K8S_APP_PATH The path to the app file
SPARK_ON_K8S_NAMESPACE The namespace to use default
SPARK_ON_K8S_SERVICE_ACCOUNT The service account to use spark
SPARK_ON_K8S_SPARK_CONF The spark configuration to use {}
SPARK_ON_K8S_CLASS_NAME The class name to use
SPARK_ON_K8S_APP_ARGUMENTS The arguments to pass to the app []
SPARK_ON_K8S_APP_WAITER The waiter to use to wait for the app to finish no_wait
SPARK_ON_K8S_IMAGE_PULL_POLICY The image pull policy to use IfNotPresent
SPARK_ON_K8S_UI_REVERSE_PROXY Whether to use a reverse proxy to access the spark UI false
SPARK_ON_K8S_DRIVER_CPU The driver CPU 1
SPARK_ON_K8S_DRIVER_MEMORY The driver memory 1024
SPARK_ON_K8S_DRIVER_MEMORY_OVERHEAD The driver memory overhead 512
SPARK_ON_K8S_EXECUTOR_CPU The executor CPU 1
SPARK_ON_K8S_EXECUTOR_MEMORY The executor memory 1024
SPARK_ON_K8S_EXECUTOR_MEMORY_OVERHEAD The executor memory overhead 512
SPARK_ON_K8S_EXECUTOR_MIN_INSTANCES The minimum number of executor instances
SPARK_ON_K8S_EXECUTOR_MAX_INSTANCES The maximum number of executor instances
SPARK_ON_K8S_EXECUTOR_INITIAL_INSTANCES The initial number of executor instances
SPARK_ON_K8S_CONFIG_FILE The path to the config file
SPARK_ON_K8S_CONTEXT The context to use
SPARK_ON_K8S_CLIENT_CONFIG The sync Kubernetes client configuration to use
SPARK_ON_K8S_ASYNC_CLIENT_CONFIG The async Kubernetes client configuration to use
SPARK_ON_K8S_IN_CLUSTER Whether to use the in cluster Kubernetes config false
SPARK_ON_K8S_API_DEFAULT_NAMESPACE The default namespace to use for the API default
SPARK_ON_K8S_API_HOST The host to use for the API 127.0.0.1
SPARK_ON_K8S_API_PORT The port to use for the API 8000
SPARK_ON_K8S_API_WORKERS The number of workers to use for the API 4
SPARK_ON_K8S_API_LOG_LEVEL The log level to use for the API info
SPARK_ON_K8S_API_LIMIT_CONCURRENCY The limit concurrency to use for the API 1000

Examples

Here are some examples of how to package and submit spark apps with this package. In the examples, the base image is built with the spark image tool, as described in the spark documentation.

Python

First, build the docker image and push it to a registry accessible by your cluster, or load it into your cluster's local registry if you're using minikube or kind:

docker build -t pyspark-job examples/python

# For minikube
minikube image load pyspark-job
# For kind
kind load docker-image pyspark-job
# For remote clusters, you will need to change the image name to match your registry,
# and then push it to that registry
docker push pyspark-job

Then, submit the job:

python examples/python/submit.py

Or via the bash script:

./examples/python/submit.sh

Java

Same as above, but with the java example:

docker build -t java-spark-job examples/java

# For minikube
minikube image load java-spark-job
# For kind
kind load docker-image java-spark-job
# For remote clusters, you will need to change the image name to match your registry,
# and then push it to that registry
docker push java-spark-job

Then, submit the job:

python examples/java/submit.py

Or via the bash script:

./examples/java/submit.sh

What's next

You can check the TODO list for the things that we will work on in the future. All contributions are welcome!

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

spark_on_k8s-0.2.0.tar.gz (30.9 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

spark_on_k8s-0.2.0-py3-none-any.whl (37.9 kB view details)

Uploaded Python 3

File details

Details for the file spark_on_k8s-0.2.0.tar.gz.

File metadata

  • Download URL: spark_on_k8s-0.2.0.tar.gz
  • Upload date:
  • Size: 30.9 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? Yes
  • Uploaded via: twine/4.0.2 CPython/3.11.8

File hashes

Hashes for spark_on_k8s-0.2.0.tar.gz
Algorithm Hash digest
SHA256 a6a0cb1177d19ed8e7a09cffef7e23132263fa13f54e46fd94a75fbe2d6534b0
MD5 2b8d0831680fc81f9acd6dc1a768091a
BLAKE2b-256 1f6206bc41d77007bca487c299603986085fe84153b2dd77e153b027541be46c

See more details on using hashes here.

File details

Details for the file spark_on_k8s-0.2.0-py3-none-any.whl.

File metadata

  • Download URL: spark_on_k8s-0.2.0-py3-none-any.whl
  • Upload date:
  • Size: 37.9 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? Yes
  • Uploaded via: twine/4.0.2 CPython/3.11.8

File hashes

Hashes for spark_on_k8s-0.2.0-py3-none-any.whl
Algorithm Hash digest
SHA256 c0c5abb04b9c73489347f647a37f46fb89b6f5f757e98e6ec94c1a5df58058ee
MD5 fb5c84d64e49bbee237e9a7d5caa444c
BLAKE2b-256 82b6656c8e804183bf8f43e4e14f033b7130be7b9bbf492015ae0756f17e1e75

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page