Pipeline Run#

Pipeline Run is the execution instance of a pipeline. Each pipeline run includes its step runs. A pipeline run can be configured to override some of the pipeline’s defaults before starting the execution.

With a PipelineRun instance, you can watch the status of the run and stream logs for the pipeline run and the step runs.

Watch status#

Use the show() method of the PipelineRun instance to watch the status of pipeline run.

The show() method takes the following optional parameter:

  • mode: (str, optional). Defaults to graph. The allowed values are text or graph. This parameter renders the current status of pipeline run as either text or graph.

  • wait: (bool, optional). Defaults to False and it only renders the current status of each step run in graph. If set to True, it renders the current status of each step run until the entire pipeline is complete.

  • rankdir: (str, optional). Defaults to TB. The allowed values are TB or LR. This parameter is applicable only for graph mode and it renders the direction of the graph as either top to bottom (TB) or left to right (LR).

To watch the live update of each step run status in text until the entire pipeline is complete

pipeline_run.show(mode="text", wait=True)
Step                Status
------------------  ---------
PipelineStepOne:    Succeeded
PipelineStepTwo:    Succeeded
PipelineStepThree:  Succeeded
PipelineStepFour:   In Progress
PipelineStepFive:   Accepted

To watch the live update of each step run status in graph mode

pipeline_run.show(wait=True)

Below is an example of the output.

../../_images/pipeline_video1_4.gif

Monitor Logs#

Use the watch() method on the PipelineRun instance to stream the service, custom, or consolidated log of the pipeline run. The watch() method takes the following optional parameters:

  • steps: (list, optional). Defaults to None and streams the log of the pipeline run. If a list of the step names is provided, the method streams the log of the specified pipeline step runs.

  • log_type: (str, optional). Defaults to None. The allowed values are custom_log, service_log, or None. If None is provided, the method streams both service and custom logs.

  • interval: (float, optional). Defaults value is 3. Time interval in seconds between each request to update the logs.

Stream the consolidated log of the pipeline run.

pipeline_run.watch()
[S] - service log, [C] - custom log
[S] - 2022-10-31 08:54:47 - Step PipelineStepOne is starting.
[S] - 2022-10-31 08:55:36 - Step PipelineStepOne is ACCEPTED, lifecycle details: Infrastructure provisioning.
[S] - 2022-10-31 08:56:39 - Step PipelineStepOne is ACCEPTED, lifecycle details: Step run bootstrap starting.
[C] - 2022-10-31 08:57:18 - This is a custom log for PipelineStepOne.
[S] - 2022-10-31 08:57:39 - Step PipelineStepOne is IN_PROGRESS, lifecycle details: Step run artifact execution in progress.
[S] - 2022-10-31 08:58:39 - Step PipelineStepOne is SUCCEEDED.
[S] - 2022-10-31 08:59:54 - Step PipelineStepThree is starting.
[S] - 2022-10-31 09:00:15 - Step PipelineStepTwo is starting.
[S] - 2022-10-31 09:00:44 - Step PipelineStepThree is ACCEPTED, lifecycle details: Infrastructure provisioning.
[S] - 2022-10-31 09:00:53 - Step PipelineStepTwo is ACCEPTED, lifecycle details: Infrastructure provisioning.
[S] - 2022-10-31 09:02:46 - Step PipelineStepThree is ACCEPTED, lifecycle details: Step run bootstrap starting.
[S] - 2022-10-31 09:02:54 - Step PipelineStepTwo is ACCEPTED, lifecycle details: Step run bootstrap starting.
[C] - 2022-10-31 09:03:13 - This is a custom log for PipelineStepThree.
[C] - 2022-10-31 09:03:13 - This is a custom log for PipelineStepTwo.
...

Stream the service log of the pipeline run.

pipeline_run.watch(log_type="service_log")
[S] - service log
[S] - 2022-10-31 08:54:47 - Step PipelineStepOne is starting.
[S] - 2022-10-31 08:55:36 - Step PipelineStepOne is ACCEPTED, lifecycle details: Infrastructure provisioning.
[S] - 2022-10-31 08:56:39 - Step PipelineStepOne is ACCEPTED, lifecycle details: Step run bootstrap starting.
[S] - 2022-10-31 08:57:39 - Step PipelineStepOne is IN_PROGRESS, lifecycle details: Step run artifact execution in progress.
[S] - 2022-10-31 08:58:39 - Step PipelineStepOne is SUCCEEDED.
[S] - 2022-10-31 08:59:54 - Step PipelineStepThree is starting.
[S] - 2022-10-31 09:00:15 - Step PipelineStepTwo is starting.
...

Stream the custom log of the specified steps.

pipeline_run.watch(steps=['<step_name1>', '<step_name2>'], log_type="custom_log")

Load#

Use the from_ocid() method from the PipelineRun class to load an existing pipeline run with its OCID provided. The method returns a PipelineRun instance.

from ads.pipeline import PipelineRun

pipeline_run = PipelineRun.from_ocid("ocid1.datasciencepipelinerun..<unique_id>")

Cancel#

Use the cancel() method on the PipelineRun instance to cancel a pipeline run.

Pipeline Runs can only be canceled when they are in the ACCEPTED or IN_PROGRESS state.

pipeline_run.cancel()

Delete#

Use the delete() method on the PipelineRun instance to delete a pipeline run. It takes the following optional parameter:

  • delete_related_job_runs: (bool, optional). Specify whether to delete related JobRuns or not. Defaults to True.

  • max_wait_seconds: (int, optional). The maximum time to wait in seconds. Defaults to 1800.

Pipeline runs can only be deleted when they are already in a SUCCEEDED, FAILED, or CANCELED state.

pipeline_run.delete()