You can use the Job Details page to explore details about successful or failed jobs, including outputs, dependency graph, and other metadata. Download results to your local desktop or, if enabled, explore a visual profile of the data in the results for further iteration on your recipe.
Cancel job: Click this button to cancel your job while it is still in progress.
NOTE: This option may not be available for all running environments. Job cancellation is not supported in high availability deployments.
Delete job: Delete the job and its results.
Deleting a job cannot be undone.
NOTE: This feature may not be enabled in your environment. For more information, see Miscellaneous Configuration.
Download logs: Download the log files associated with this job.
Tip: When jobs fail, the downloaded package includes additional configuration files and service logs to assist in debugging job execution issues. For more information, see Support Bundle Contents.
Download profile as JSON: If visual profiling was enabled for the job, you can download a JSON representation of the profile to your desktop.
In the Overview tab, you can review the job status, its sources, and the details of the job run.
NOTE: If your job failed, you may be prompted with an error message indicating a job ID that differs from the listed one. This job ID refers to the sub-job that is part of the job listed in the Job summary.
You can review a snapshot of the results of your job.
NOTE: If you chose to generate a profile of your job results, the transformation and profiling tasks may be combined into a single task, depending on your environment. If they are combined and profiling fails, any publishing tasks defined in the job are not launched. You may be able to ad-hoc publish the generated results. See below.
You can hover over the status of each stage of a job to review breakdowns for individual phases of each stage:
Tip: Depending on the operation, you may be able to monitor transfer rate performance for larger datasets.
Connect: The platform is attempting to connect to the datastore hosting the asset sources for the datasets.
Request: The platform is requesting the set of assets to deliver.
Ingesting: Depending on the type of source data, some jobs ingest data to the base storage layer in a converted format before processing begins. This ingested data is purged after job completion.
Prepare: (Publishing only) Depending on the destination, the Prepare phase includes the creation of temporary tables, generation of manifest files, and the fetching of extra connections for parallel data transfer.
Transfer: Assets are transferred to the target, which can be the platform or to the output datastore.
Process: Cleanup after data transfer, including the dropping of temporary tables or copying data within the instance.
For more information, see Overview of Job Monitoring.
You can also review the outputs generated as a result of your job. To review and export any of the generated results, click View all. See Outputs Destinations tab below.
Job ID: Unique identifier for the job
Tip: If you are using the REST APIs, this value can be used to retrieve and modify specifics related to this job. For more information, see API Reference.
Queued:Job has been queued for execution.
Running:Job is in progress.
Completed: Job has successfully executed.
NOTE: Invalid steps in a recipe are skipped, and it's still possible for the job to be executed successfully.
Failed: Job failed to complete.
NOTE: You can re-run a failed job from the Transformer page. If you have since modified the recipe, those changes are applied during the second run. See Transformer Page.
Canceled: Job was canceled by the user.
Manual - Job was executed through the application interface.
Scheduled - Job was executed according to a predefined schedule. See Add Schedule Dialog.
For jobs sourced from relational datasets, you can optionally enable SQL-based optimizations, which apply some of the steps specified in your recipe back in the datasource, where they can be executed before the data is transferred to the running environment for execution. Using these optimizations means faster performance based on a lower volume of data transfer.
When optimizations have been applied to your flow, they are listed on the Overview tab:
If an optimization is disabled or was not applied to the job run, it is not listed.
If the job has successfully completed, you can review the set of generated outputs and export results.
Output Destinations tab
For each output, you can do the following:
View details: View details about the generated output in the side bar.
Tip: The View details panel contains breakdowns for each phase of a job. If the job fails, you can review error messages, which correspond to entries in the Data Service log file.
Download result: Download the generated output to your local desktop.
NOTE: Some file formats may not be downloadable to your desktop. See below.
Create imported dataset: Use the generated output to create a new imported dataset for use in your flows. See below.
NOTE: This option is not available for all file formats.
Click one of the provided links to download the file through your browser to your local desktop.
NOTE: If these options are not available, data download may have been disabled by an administrator.
HYPER: You can download HYPER formatted outputs to your desktop.
If you have generated output in a Tableau format and have configured a connection to Tableau Server, you can publish directly to the server. See Publishing Dialog.
Optionally, you can turn your generated results into new datasets for immediate use in . For the generated output, select Create imported dataset from its context menu.
NOTE: If you generated results in Parquet format only, you cannot create a dataset from it, even if the Create button is present. This is a known issue.
NOTE: When you create a new dataset from your job results, the file or files that were written to the designated output location are used as the source. Depending on your backend datastore permissions are configured, this location may not be accessible to other users.
After the new output has been written, you can create new recipes from it. See Build Sequence of Datasets.
If is connected to an external storage system, you may publish your job results to it. Requirements:
For more information, see Publishing Dialog.
Review the visual profile of your generated results in the Profile tab. Visual profiling can assist in identifying issues in your dataset that require further attention, including outlier values.
NOTE: This tab appears only if you selected to profile results in your job definition. See Run Job Page.
In particular, you should pay attention to the mismatched values and missing values counts, which identify the approximate percentage of affected values across the entire dataset. For more information, see Overview of Visual Profiling.
NOTE: The computational cost of generating exact visual profiling measurements on large datasets in interactive visual profiles severely impacts performance. As a result, visual profiles across an entire dataset represent statistically significant approximations.
NOTE: treats null values as missing values. Imported values that are null are generated as missing values in job results (represented in the gray bar). See Manage Null Values.
Tip: Mouse over the color bars to see counts of values in the category.
Tip: Use the horizontal scroll bar to see profiles of all columns in wide datasets.
In the lower section, you can explore details of the transformations of individual columns. Use this area to explore mismatched or missing data elements in individual columns.
Depending on the data type of the column, varying information is displayed. For more information, see Column Statistics Reference.
Tip: You should review the type information for each column, which is indicated by the icon to the left of the column.
In this tab, you can review a simplified representation of the flow from which the job was executed. This flow view displays only the recipes and datasets that contributed to the generated results.
Tip: To open the full flow, you can click its name in the upper-left corner.
Dependency graph tab
You can zoom the dependency graph canvas to display areas of interest in the flow graph.
The zoom control options are available at the top-right corner of the dependency graph canvas. The following are the available zoom options:
Tip: You can use the keyboard shortcuts listed in the zoom options menu to make quick adjustments to the zoom level.
In the Data sources tab, you can review all of the sources of data for the executing recipe.
Data sources tab
NOTE: If a flow is unshared with you, you cannot see or access the datasources for any jobs that you have already run on the flow, including any PDF profiles that you generated. You can still access the job results. This is a known issue.
If your flow references parameters, you can review the state of the parameters at the time of job execution.
NOTE: This tab appears only if the job is sourced from a flow that references parameters. For more information, see Overview of Parameterization.
When a webhook task has been triggered for this job, you can review the status of its delivery to the target system.
NOTE: Webhook notifications may need to be enabled in your environment. See Workspace Settings Page.
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