Jupyter Notebook operator for Kubeflow Pipelines
Project description
KFP-Notebook is an operator that enable running notebooks as part of a Kubeflow Pipeline.
Building kfp-notebook
make clean install
Usage
The example below can easily be added to a python script
or jupyter notebook
for testing purposes.
import os
import kfp
from notebook.pipeline import NotebookOp
from kubernetes.client.models import V1EnvVar
# KubeFlow Pipelines API Endpoint
kfp_url = 'http://dataplatform.ibm.com:32488/pipeline'
# S3 Object Storage
cos_endpoint = 'http://s3.us-south.cloud-object-storage.appdomain.cloud'
cos_bucket = 'test-bucket'
cos_username = 'test'
cos_password = 'test123'
cos_directory = 'test-directory'
cos_pull_archive = 'test-archive.tar.gz'
# Inputs and Outputs
inputs = []
outputs = []
# Container Image
image = 'tensorflow/tensorflow:latest'
def run_notebook_op(op_name, notebook_path):
notebook_op = NotebookOp(name=op_name,
notebook=op_name,
cos_endpoint=cos_endpoint,
cos_bucket=cos_bucket,
cos_directory=cos_directory,
cos_pull_archive=cos_pull_archive,
pipeline_outputs=outputs,
pipeline_inputs=inputs,
image=image)
notebook_op.container.add_env_variable(V1EnvVar(name='AWS_ACCESS_KEY_ID', value=cos_username))
notebook_op.container.add_env_variable(V1EnvVar(name='AWS_SECRET_ACCESS_KEY', value=cos_password))
notebook_op.container.set_image_pull_policy('Always')
return op
def demo_pipeline():
stats_op = run_notebook_op('stats', 'generate-community-overview')
contributions_op = run_notebook_op('contributions', 'generate-community-contributions')
run_notebook_op('overview', 'overview').after(stats_op, contributions_op)
# Compile the new pipeline
kfp.compiler.Compiler().compile(demo_pipeline,'pipelines/pipeline.tar.gz')
# Upload the compiled pipeline
client = kfp.Client(host=kfp_url)
pipeline_info = client.upload_pipeline('pipelines/pipeline.tar.gz',pipeline_name='pipeline-demo')
# Create a new experiment
experiment = client.create_experiment(name='demo-experiment')
# Create a new run associated with experiment and our uploaded pipeline
run = client.run_pipeline(experiment.id, 'demo-run', pipeline_id=pipeline_info.id)
Generated Kubeflow Pipelines
Project details
Release history Release notifications | RSS feed
Download files
Download the file for your platform. If you're not sure which to choose, learn more about installing packages.
Source Distribution
kfp-notebook-0.10.1.tar.gz
(9.0 kB
view hashes)
Built Distribution
Close
Hashes for kfp_notebook-0.10.1-py3-none-any.whl
Algorithm | Hash digest | |
---|---|---|
SHA256 | 86da4482082b0acb1fa3bbf3205699f26ef3476ee90f276fbe7c1b63621fe8d2 |
|
MD5 | a4a821387262a270304732c3f37cd22b |
|
BLAKE2b-256 | 102b0c66cbd555ccd018454f1ec3aef0581da1dfe3b54c681320a4fd85861f2b |