Configuration¶
Plugin maintains the configuration in the conf/base/airflow-k8s.yaml
file.
# Base url of the Apache Airflow, should include the schema (http/https)
host: https://airflow.example.com
# Directory from where Apache Airflow is reading DAGs definitions
output: gs://airflow-bucket-example-com
# Configuration used to run the pipeline
run_config:
# Name of the image to run as the pipeline steps
image: airflow-k8s-plugin-demo
# Pull policy to be used for the steps. Use Always if you push the images
# on the same tag, or Never if you use only local images
image_pull_policy: IfNotPresent
# Pod startup timeout in seconds - if timeout passes the pipeline fails, default to 600
startup_time: 600
# Namespace for Airflow pods to be created
namespace: airflow
# Name of the Airflow experiment to be created
experiment_name: Airflow K8S Plugin Demo
# Name of the dag as it's presented in Airflow
run_name: airflow-k8s-plugin-demo
# Apache Airflow cron expression for scheduled runs
cron_expression: "@daily"
# Optional pipeline description
description: "Very Important Pipeline"
# Optional volume specification
volume:
# Storage class - use null (or no value) to use the default storage
# class deployed on the Kubernetes cluster
storageclass: # default
# The size of the volume that is created. Applicable for some storage
# classes
size: 1Gi
# Access mode of the volume used to exchange data. ReadWriteMany is
# preferred, but it is not supported on some environements (like GKE)
# Default value: ReadWriteOnce
#access_modes: [ReadWriteMany]
# Flag indicating if the data-volume-init step (copying raw data to the
# fresh volume) should be skipped
skip_init: False
# Allows to specify fsGroup executing pipelines within containers
# Default: root user group (to avoid issues with volumes in GKE)
owner: 0
# If set to True, shared persistent volume will not be created at all and all other parameters under
# `volume` are discarded
disabled: False
# Optional resources specification
resources:
# Default configuration used by all nodes that do not declare the
# resource configuration. It's optional. If node does not declare the resource
# configuration, __default__ is assigned by default, otherwise cluster defaults
# will be used.
__default__:
# Optional labels to be put into pod node selector
labels:
#Labels are user provided key value pairs
node_pool_label/k8s.io: example_value
requests:
#Optional amount of cpu resources requested from k8s
cpu: "1"
Optional amount of memory resource requested from k8s
memory: "1Gi"
limits:
#Optional amount of cpu resources limit on k8s
cpu: "1"
#Optional amount of memory resource limit on k8s
memory: "1Gi"
# Other arbitrary configurations to use, for example to indicate some exception resources
huge_machines:
labels:
big_node_pool: huge.10x
requests:
cpu: "16"
memory: "128Gi"
limits:
cpu: "32"
memory: "256Gi"
Indicate resources in pipeline nodes¶
Every node declared in kedro
pipelines is executed inside pod. Pod definition declares resources to be used based
on provided plugin configuration and presence of the tag resources
in kedro
node definition.
If no such tag is present, plugin will assign __default__
from plugin resources
configuration.
If no __default__
is given in plugin resources
configuration or no resources
configuration is given, pod
definition will not be given any information on how to allocate resources to pod, thus default k8s cluster values
will be used.
# train_model node is assigned resources from `huge_machines` configuration, if no such configuration exists,
# `__default__` is used, and if __default__ does not exist, k8s cluster default values are used
node(func=train_model, inputs=["X_train", "y_train"], outputs="regressor", name='train_model', tags=['resources:huge_machines'])
# evaluate_model node is assigned resources `__default__` configuration and if it does not exist,
# k8s cluster default values are used
node(func=evaluate_model, inputs=["X_train", "y_train"], outputs="regressor", name='evaluate_model')
Dynamic configuration support¶
kedro-airflow-k8s contains hook that enables TemplatedConfigLoader. It allows passing environment variables to
configuration files. It reads all environment variables following KEDRO_CONFIG_
There are two special variables KEDRO_CONFIG_COMMIT_ID, KEDRO_CONFIG_BRANCH_NAME with support specifying default when variable is not set, e.g. ${commit_id|dirty}