After you've created a pipeline, you can publish a REST endpoint through which the pipeline can be initiated. This enables you to run the pipeline on-demand or at scheduled times.
Before you start this lab, ensure that you have completed Lab 1A and Lab 1B, which include tasks to create the Azure Machine Learning workspace and other resources used in this lab; and Lab 6A in which you create the pipeline you will publish in this lab.
In this task, you'll create a pipeline to train and register a model.
- In Azure Machine Learning studio, view the Compute page for your workspace; and on the Compute Instances tab, start your compute instance.
- When the compute instance is running, refresh the Azure Machine Learning studio web page in your browser to ensure your authenticated session has not expired. Then click the Jupyter link to open the Jupyter home page in a new browser tab.
- In the Jupyter home page, in the Users/DP100 folder, open the 06B - Publishing a Pipeline.ipynb notebook. Then read the notes in the notebook, running each code cell in turn.
- When you have finished running the code in the notebook, on the File menu, click Close and Halt to close it and shut down its Python kernel. Then close all Jupyter browser tabs.
- If you're finished working with Azure Machine Learning for the day, in Azure Machine Learning studio, on the Compute page, on the Compute Instances tab, select your compute instance and click Stop to shut it down. Otherwise, leave it running for the next lab.