This user guide provides instructions on performing common actions when working with datasets within Adobe Experience Platform user interface.
This user guide requires a working understanding of the following components of Adobe Experience Platform:
In the Experience Platform UI, select Datasets in the left-navigation to open the Datasets dashboard. The dashboard lists all available datasets for your organization. Details are displayed for each listed dataset, including its name, the schema the dataset adheres to, and status of the most recent ingestion run.
Select the name of a dataset from the Browse tab to access its Dataset activity screen and see details of the dataset you selected. The activity tab includes a graph visualizing the rate of messages being consumed as well as a list of successful and failed batches.
You can Delete or Enable a dataset for Profile from the Dataset details view. To see the available actions, select … More in the top right of the UI. The drop-down menu appears.
If you select Enable a dataset for Profile, a confirmation dialog appears. Select Enable to confirm your choice.
To enable a dataset for Profile, the schema that the dataset adheres to must be compatible for use in Real-Time Customer Profile. See the Enable a dataset for profile section for more information.
If you select Delete, the Delete dataset confirmation dialog appears. Select Delete to confirm your choice.
You cannot delete system datasets.
You can also delete a dataset or add a dataset for use with Real-Time Customer Profile from the inline actions found on the Browse tab. See the inline actions section for more information.
The datasets UI now offers a collections of inline actions for each available dataset. Select the ellipsis (…) of a dataset that you want to manage to see the available options in a pop-up menu. The available actions include;
More information on these available actions can be found in their respective sections. To learn how to manage large numbers of datasets simultaneously, refer to the bulk actions section.
You can preview dataset sample data from both the inline options of the Browse tab and also the Dataset activity view. From the Browse tab, select the ellipses (…) next to the dataset name you wish to preview. A menu list of options appears. Next, select Preview dataset from the list of available options. If the dataset is empty, the preview link will be deactivated and will instead say that the preview is not available.
This opens the preview window, where the hierarchical view of the schema for the dataset is shown on the right.
The schema diagram on the left side of the view only displays fields that contain data. Fields without data are automatically hidden to streamline the UI and focus on relevant information.
Alternatively, from the Dataset activity screen, select Preview dataset near the top-right corner of your screen to preview up to 100 rows of data.
For more robust methods to access your data, Experience Platform provides downstream services such as Query Service and JupyterLab to explore and analyze data. See the following documents for more information:
You can manage the data governance labels for a dataset by selecting the inline options of the Browse tab. Select the ellipses (…) next to the dataset name you wish to manage, followed by Manage data and access labels from the dropdown menu.
Data usage labels, applied at the schema level, allow you to categorize datasets and fields according to usage policies that apply to that data. See the Data Governance overview to learn more about labels, or refer to the data usage labels user guide for instructions on how to apply labels to schemas for propagation to datasets.
Every dataset has the ability to enrich customer profiles with its ingested data. To do so, the schema that the dataset adheres to must be compatible for use in Real-Time Customer Profile. A compatible schema satisfies the following requirements:
For more information on enabling a schema for Profile, see the Schema Editor user guide.
You can enable a dataset for Profile from both the inline options of the Browse tab and also the Dataset activity view. From the Browse tab of the Datasets workspace, select the ellipsis of a dataset that you want to enable for Profile. A menu list of options appears. Next, select Enable unified profile from the list of available options.
Alternatively, from the dataset’s Dataset activity screen, select the Profile toggle within the Properties column. Once enabled, data that is ingested into the dataset will also be used to populate customer profiles.
If a dataset already contains data and is then enabled for Profile, the existing data is not automatically consumed by Profile. After a dataset is enabled for Profile, it is recommended that you re-ingest any existing data to have it contribute to customer profiles.
Datasets that have been enabled for Profile can also be filtered on this criteria. See the section on how to filter Profile enabled datasets for more information.
Add custom created tags to organize datasets and improve search, filtering, and sorting capabilities. From the Browse tab of the Datasets workspace, select the ellipsis of a dataset that you want to manage followed by Manage tags from the dropdown menu.
The Manage tags dialog appears. Enter a short description to create a custom tag, or choose from a pre-existing tag to label your dataset. Select Save to confirm your settings.
The Manage tags dialog can also remove existing tags from a dataset. Simply select the ‘x’ next to the tag you wish to remove and select Save.
Once a tag has been aded to a dataset, the datasets can be filtered based on the corresponding tag. See the section on how to filter datasets by tags for more information.
For more information on how to classify business objects for easier discovery and categorization, see the guide on managing metadata taxonomies. This guide details how a user with appropriate permissions can create pre-defined tags, assigning categories to tags, and perform all related CRUD operations on tags and tag categories in the Platform UI.
Data retention settings are currently in beta and available only in a limited release for select organizations. Your UI might not reflect the feature described below.
Manage dataset expiration and retention policies at the dataset level from the Browse tab of the Datasets workspace. You can use this feature to configure retention policies for data already ingested into data lake and Profile services. The expiration date is based on when data was ingested into Platform and your retention rules.
To open the Set data retention dialog, select the ellipsis next to the dataset followed by Set data retention policy from the dropdown menu.
The Set data retention dialog appears. The dialog shows the sandbox level license usage metrics , dataset-level details, and data lake settings. These metrics show your usage compared to your entitlements. The dataset details include the dataset name, type, Profile enablement status, and current data lake storage usage.
The sandbox-level licensed data lake storage metrics is still in development and not available.
Before you configure the dataset retention policy, the dialog shows recommended retention settings. One month is the default recommended retention period. To adjust the standard retention policy, select and update the number, then choose the desired time period (days, months, years). You can configure your retention settings for the data lake and Profile Service independently.
The minimum data retention duration for data lake is 30 days. The minimum data retention duration for Profile Service is one day.
See the frequently asked questions page for more information on the rules that define dataset expirations date ranges and best practices for configuring your data retention policy.
Four new columns are available to beta users that provide greater visibility into your data management: Data Lake Storage, Data Lake Retention, Profile Storage, and Profile Retention. These metrics show how much storage your data consumes and its retention duration in both data lake and Profile services. These details help you optimize retention policies, track usage against entitlements, and ensure compliance with organizational and regulatory standards. This increased visibility empowers you to make informed decisions, manage costs, streamline governance, and clearly understand your data landscape.
The following table provides an overview of the new retention and storage metrics available in the beta release. It details each column’s purpose and how it aids in managing data retention and storage within the Platform UI.
Column title | Description |
---|---|
Data lake retention | Shows the current retention duration for each dataset. This value can be modified in each dataset’s retention settings. The data lake retention policy sets rules for how long data is stored and when it should be deleted in different services. |
Data Lake Storage | Displays the current storage usage for each dataset in the data lake. This metric helps track how much space each dataset occupies, aiding in managing storage limits and optimizing usage. |
Profile Storage | Shows the current storage usage for each dataset within Profile services. Use this information to monitor storage consumption and ensure it aligns with your data management goals. |
Profile Retention | Indicates the retention duration for each Profile dataset. This value can be adjusted in the dataset’s retention settings, helping you control how long Profile data is stored before deletion. |
You can place datasets within folders for better dataset management. To move a dataset into a folder, select the ellipses (…) next to the dataset name you wish to manage, followed by Move to folder from the dropdown menu.
The Move dataset to folder dialog appears. Select the folder you want to move the audience to, then select Move. A popup notification informs you that the dataset move has been successful.
You can also create folders directly from the Move dataset dialog. To create a folder, select the create folder icon () in the top right of the dialog.
Once the dataset is in a folder, you can choose to only display datasets that belong to a specific folder. To open your folder structure, select the show folders icon (). Next, select your chosen folder to see all associated datasets.
You can delete a dataset from either the dataset inline actions in the Browse tab or the top right of the Dataset activity view. From the Browse view, select the ellipses (…) next to the dataset name you wish to delete. A menu list of options appears. Next, select Delete from the dropdown menu.
A confirmation dialog appears. Select Delete to confirm.
Alternatively, select Delete dataset from the Dataset activity screen.
Datasets created and utilized by Adobe applications and services (such as Adobe Analytics, Adobe Audience Manager, or Offer Decisioning) cannot be deleted.
A confirmation box appears. Select Delete to confirm the deletion of the dataset.
If a dataset is enabled for Profile, deleting that dataset through the UI will delete it from the data lake, Identity Service, and also any profile data associated with that dataset in the Profile store.
You can delete profile data associated with a dataset from the Profile store (leaving the data in the data lake) using the Real-Time Customer Profile API. For more information, see the profile system jobs API endpoint guide.
To search or filter the list of available datasets, select the filter icon () at the top left of the workspace. A set of filter options in the left rail appears. There are several methods to filter your available datasets. These include: Show System Datasets, Included in profile, Tags, Creation date, Modified date, Created by, and Schema.
The list of applied filters is displayed above the filtered results.
By default, only datasets that you have ingested data into are shown. If you want to see the system-generated datasets, select the Yes checkbox in the Show system datasets section. System-generated datasets are only used to process other components. For example, the system-generated profile export dataset is used to process the profile dashboard.
The datasets that have been enabled for Profile data are used to populate customer profiles after data has been ingested. See the section on enabling datasets for Profile to learn more.
To filter your dataset based on whether they have been enabled for Profile, select the Yes check box from the filter options.
Enter your custom tag name in the Tags input, then select your tag from the list of available options to search and filter datasets that correspond to that tag.
Datasets can be filtered by creation date over a custom time period. This can be used to exclude historic data or to generate specific chronological data insights and reporting. Choose a Start date and an End date by selecting the calendar icon for each field. After which, only datasets that conform to that criteria will appear in the Browse tab.
Similar to the filter for creation date, you can filter your datasets based on the date they were last modified. In the Modified date section, Choose a Start date and an End date by selecting the calendar icon for each field. After which, only datasets that were modified during that period will appear in the Browse tab.
You can filter datasets based on the schema that defines their structure. Either select the dropdown icon or input the schema name into the text field. A list of potential matches appears. Select the appropriate schema from the list.
Use bulk actions to enhance your operational efficiency and perform multiple actions on numerous datasets simultaneously. You can save time and maintain an organized data structure with bulk actions such as Move to folder, Edit tags, and Delete datasets.
To act on more than one dataset at a time, select individual datasets with the checkbox on each row, or select an entire page with the column header checkbox. Once selected, the bulk action bar appears.
When you apply bulk actions to datasets, the following conditions apply:
Datasets in the Browse tab can be sorted by either ascending or descending dates. Select the Created or Last updated column headings to alternate between ascending and descending. Once selected, the column indicates this with either an up or down arrow to the side of the column header.
To create a new dataset, start by selecting Create dataset in the Datasets dashboard.
In the next screen, you are presented with the following two options for creating a new dataset:
In the Create dataset screen, select Create dataset from schema to create a new empty dataset.
The Select schema step appears. Browse the schema listing and select the schema that the dataset will adhere to before selecting Next.
The Configure dataset step appears. Provide the dataset with a name and optional description, then select Finish to create the dataset.
Datasets can be filtered from the list of available datasets in the UI with the schema filter. See the section on how to filter datasets by schema for more information.
When a dataset is created using a CSV file, an ad hoc schema is created to provide the dataset with a structure that matches the provided CSV file. In the Create dataset screen, select Create dataset from CSV file.
The Configure step appears. Provide the dataset with a name and optional description, then select Next.
The Add data step appears. Upload the CSV file by either dragging and dropping it onto the center of your screen, or select Browse to explore your file directory. The file can be up to ten gigabytes in size. Once the CSV file is uploaded, select Save to create the dataset.
CSV column names must start with alphanumeric characters, and can contain only letters, numbers, and underscores.
In the Experience Platform UI, select Monitoring in the left-navigation. The Monitoring dashboard lets you view the statuses of inbound data from either batch or streaming ingestion. To view the statuses of individual batches, select either Batch end-to-end or Streaming end-to-end. The dashboards list all batch or streaming ingestion runs, including those that are successful, failed, or still in progress. Each listing provides details of the batch, including the batch ID, the name of the target dataset, and the number of records ingested. If the target dataset is enabled for Profile, the number of ingested identity and profile records is also displayed.
You can select on an individual Batch ID to access the Batch overview dashboard and see details for the batch, including error logs should the batch fail to ingest.
If you wish to delete the batch, select Delete batch near the top right of the dashboard. Deleting a batch also removes its records from the dataset that the batch was originally ingested to.
If the ingested data has been enabled for Profile and processed, then deleting a batch does not delete that data from the Profile store.
This user guide provided instructions for performing common actions when working with datasets in the Experience Platform user interface. For steps on performing common Platform workflows involving datasets, please refer to the following tutorials: