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A customer has a requirement to be able to view the last time each segment was published within their Data Cloud org.

Which two features should the consultant recommend to best address this requirement?

Choose 2 answers

A.
Profile Explorer
A.
Profile Explorer
Answers
B.
Calculated insight
B.
Calculated insight
Answers
C.
Dashboard
C.
Dashboard
Answers
D.
Report
D.
Report
Answers
Suggested answer: C, D

Explanation:

: A customer who wants to view the last time each segment was published within their Data Cloud org can use the dashboard and report features to achieve this requirement. A dashboard is a visual representation of data that can show key metrics, trends, and comparisons. A report is a tabular or matrix view of data that can show details, summaries, and calculations. Both dashboard and report features allow the user to create, customize, and share data views based on their needs and preferences. To view the last time each segment was published, the user can create a dashboard or a report that shows the segment name, the publish date, and the publish status fields from the segment object. The user can also filter, sort, group, or chart the data by these fields to get more insights and analysis. The user can also schedule, refresh, or export the dashboard or report data as needed.

Which information is provided in a .csv file when activating to Amazon S3?

A.
An audit log showing the user who activated the segment and when it was activated
A.
An audit log showing the user who activated the segment and when it was activated
Answers
B.
The activated data payload
B.
The activated data payload
Answers
C.
The metadata regarding the segment definition
C.
The metadata regarding the segment definition
Answers
D.
The manifest of origin sources within Data Cloud
D.
The manifest of origin sources within Data Cloud
Answers
Suggested answer: B

Explanation:

When activating to Amazon S3, the information that is provided in a .csv file is the activated data payload.The activated data payload is the data that is sent from Data Cloud to the activation target, which in this case is an Amazon S3 bucket1.The activated data payload contains the attributes and values of the individuals or entities that are included in the segment that is being activated2.The activated data payload can be used for various purposes, such as marketing, sales, service, or analytics3. The other options are incorrect because they are not provided in a .csv file when activating to Amazon S3.Option A is incorrect because an audit log is not provided in a .csv file, but it can be viewed in the Data Cloud UI under the Activation History tab4.Option C is incorrect because the metadata regarding the segment definition is not provided in a .csv file, but it can be viewed in the Data Cloud UI under the Segmentation tab5. Option D is incorrect because the manifest of origin sources within Data Cloud is not provided in a .csv file, but it can be viewed in the Data Cloud UI under the Data Sources tab.

Which operator should a consultant use to create a segment for a birthday campaign that is evaluated daily?

A.
Is Today
A.
Is Today
Answers
B.
Is Birthday
B.
Is Birthday
Answers
C.
Is Between
C.
Is Between
Answers
D.
Is Anniversary Of
D.
Is Anniversary Of
Answers
Suggested answer: D

Explanation:

To create a segment for a birthday campaign that is evaluated daily, the consultant should use the Is Anniversary Of operator. This operator compares a date field with the current date and returns true if the month and day are the same, regardless of the year. For example, if the date field is 1990-01-01 and the current date is 2023-01-01, the operator returns true. This way, the consultant can create a segment that includes all the customers who have their birthday on the same day as the current date, and the segment will be updated daily with the new birthdays. The other options are not the best operators to use for this purpose because:

A . The Is Today operator compares a date field with the current date and returns true if the date is the same, including the year. For example, if the date field is 1990-01-01 and the current date is 2023-01-01, the operator returns false. This operator is not suitable for a birthday campaign, as it will only include the customers who were born on the same day and year as the current date, which is very unlikely.

B . The Is Birthday operator is not a valid operator in Data Cloud. There is no such operator available in the segment canvas or the calculated insight editor.

C . The Is Between operator compares a date field with a range of dates and returns true if the date is within the range, including the endpoints. For example, if the date field is 1990-01-01 and the range is 2022-12-25 to 2023-01-05, the operator returns true. This operator is not suitable for a birthday campaign, as it will only include the customers who have their birthday within a fixed range of dates, and the segment will not be updated daily with the new birthdays.

Luxury Retailers created a segment targeting high value customers that it activates through Marketing Cloud for email communication. The company notices that the activated count is smaller than the segment count.

What is a reason for this?

A.
Data Cloud enforces the presence of Contact Point for Marketing Cloud activations. If the individual does not have a related Contact Point, it will not be activated.
A.
Data Cloud enforces the presence of Contact Point for Marketing Cloud activations. If the individual does not have a related Contact Point, it will not be activated.
Answers
B.
Marketing Cloud activations automatically suppress individuals who are unengaged and have not opened or clicked on an email in the last six months.
B.
Marketing Cloud activations automatically suppress individuals who are unengaged and have not opened or clicked on an email in the last six months.
Answers
C.
Marketing Cloud activations only activate those individuals that already exist in Marketing Cloud. They do not allow activation of new records.
C.
Marketing Cloud activations only activate those individuals that already exist in Marketing Cloud. They do not allow activation of new records.
Answers
D.
Marketing Cloud activations apply a frequency cap and limit the number of records that can be sent in an activation.
D.
Marketing Cloud activations apply a frequency cap and limit the number of records that can be sent in an activation.
Answers
Suggested answer: A

Explanation:

The reason for the activated count being smaller than the segment count is A. Data Cloud enforces the presence of Contact Point for Marketing Cloud activations. If the individual does not have a related Contact Point, it will not be activated. A Contact Point is a data model object that represents a channel or method of communication with an individual, such as email, phone, or social media. For Marketing Cloud activations, Data Cloud requires that the individual has a related Contact Point of type Email, which contains a valid email address. If the individual does not have such a Contact Point, or if the Contact Point is missing or invalid, the individual will not be activated and will not receive the email communication. Therefore, the activated count may be lower than the segment count, depending on how many individuals in the segment have a valid email Contact Point.

A Data Cloud consultant recently added a new data source and mapped some of the data to a new custom data model object (DMO) that they want to use for creating segments. However, they cannot view the newly created DMO when trying to create a new segment.

What is the cause of this issue?

A.
Data has not yes been ingested into the DMO.
A.
Data has not yes been ingested into the DMO.
Answers
B.
The new DMO is not of category Profile.
B.
The new DMO is not of category Profile.
Answers
C.
The new DMO does not have a relationship to the individual DMO
C.
The new DMO does not have a relationship to the individual DMO
Answers
D.
Segmentation is only supported for the Individual and Unified Individual DMOs.
D.
Segmentation is only supported for the Individual and Unified Individual DMOs.
Answers
Suggested answer: B

Explanation:

The cause of this issue is that the new custom data model object (DMO) is not of category Profile. A category is a property of a DMO that defines its purpose and functionality in Data Cloud. There are three categories of DMOs: Profile, Event, and Other. Profile DMOs are used to store attributes of individuals or entities, such as name, email, address, etc. Event DMOs are used to store actions or interactions of individuals or entities, such as purchases, clicks, visits, etc. Other DMOs are used to store any other type of data that does not fit into the Profile or Event categories, such as products, locations, categories, etc. Only Profile DMOs can be used for creating segments in Data Cloud, as segments are based on the attributes of individuals or entities. Therefore, if the new custom DMO is not of category Profile, it will not appear in the segmentation canvas. The other options are not correct because they are not the cause of this issue. Data ingestion is not a prerequisite for creating segments, as segments can be created based on the data model schema without actual data. The new DMO does not need to have a relationship to the individual DMO, as segments can be created based on any Profile DMO, regardless of its relationship to other DMOs. Segmentation is not only supported for the Individual and Unified Individual DMOs, as segments can be created based on any Profile DMO, including custom ones.

Cumulus Financial wants to segregate Salesforce CRM Account data based on Country for its Data Cloud users.

What should the consultant do to accomplish this?

A.
Use streaming transforms to filter out Account data based on Country and map to separate data model objects accordingly.
A.
Use streaming transforms to filter out Account data based on Country and map to separate data model objects accordingly.
Answers
B.
Use the data spaces feature and applying filtering on the Account data lake object based on Country.
B.
Use the data spaces feature and applying filtering on the Account data lake object based on Country.
Answers
C.
Use Salesforce sharing rules on the Account object to filter and segregate records based on Country.
C.
Use Salesforce sharing rules on the Account object to filter and segregate records based on Country.
Answers
D.
Use formula fields based on the account Country field to filter incoming records.
D.
Use formula fields based on the account Country field to filter incoming records.
Answers
Suggested answer: B

Explanation:

Data spaces are a feature that allows Data Cloud users to create subsets of data based on filters and permissions. Data spaces can be used to segregate data based on different criteria, such as geography, business unit, or product line. In this case, the consultant can use the data spaces feature and apply filtering on the Account data lake object based on Country. This way, the Data Cloud users can access only the Account data that belongs to their respective countries.

How does Data Cloud handle an individual's Right to be Forgotten?

A.
Deletes the records from all data source objects, and any downstream data model objects are updated at the next scheduled ingestion
A.
Deletes the records from all data source objects, and any downstream data model objects are updated at the next scheduled ingestion
Answers
B.
Deletes the specified Individual record and its Unified Individual Link record.
B.
Deletes the specified Individual record and its Unified Individual Link record.
Answers
C.
Deletes the specified Individual and records from any data source object mapped to the Individual data model object.
C.
Deletes the specified Individual and records from any data source object mapped to the Individual data model object.
Answers
D.
Deletes the specified Individual and records from any data model object/data lake object related to the Individual.
D.
Deletes the specified Individual and records from any data model object/data lake object related to the Individual.
Answers
Suggested answer: D

Explanation:

Data Cloud handles an individual's Right to be Forgotten by deleting the specified Individual and records from any data model object/data lake object related to the Individual. This means that Data Cloud removes all the data associated with the individual from the data space, including the data from the source objects, the unified individual profile, and any related objects. Data Cloud also deletes the Unified Individual Link record that links the individual to the source records. Data Cloud uses the Consent API to process the Right to be Forgotten requests, which are reprocessed at 30, 60, and 90 days to ensure a full deletion.

The other options are not correct descriptions of how Data Cloud handles an individual's Right to be Forgotten. Data Cloud does not delete the records from all data source objects, as this would affect the data integrity and availability of the source systems. Data Cloud also does not delete only the specified Individual record and its Unified Individual Link record, as this would leave the source records and the related records intact. Data Cloud also does not delete only the specified Individual and records from any data source object mapped to the Individual data model object, as this would leave the related records intact.

Requesting Data Deletion or Right to Be Forgotten

Data Deletion for Data Cloud

Use the Consent API with Data Cloud

Data and Identity in Data Cloud

A healthcare client wants to make use of identity resolution, but does not want to risk unifying profiles that may share certain personally identifying information (PII).

Which matching rule criteria should a consultant recommend for the most accurate matching results?

A.
Party Identification on Patient ID
A.
Party Identification on Patient ID
Answers
B.
Exact Last Name and Emil
B.
Exact Last Name and Emil
Answers
C.
Email Address and Phone
C.
Email Address and Phone
Answers
D.
Fuzzy First Name, Exact Last Name, and Email
D.
Fuzzy First Name, Exact Last Name, and Email
Answers
Suggested answer: A

Explanation:

Identity resolution is the process of linking data from different sources into a unified profile of a customer or an individual. Identity resolution uses matching rules to compare the attributes of different records and determine if they belong to the same person. Matching rules can be based on exact or fuzzy matching of various attributes, such as name, email, phone, address, or custom identifiers. A healthcare client who wants to use identity resolution, but does not want to risk unifying profiles that may share certain personally identifying information (PII), such as name or email, should use a matching rule criteria that is based on a unique and reliable identifier that is specific to the healthcare domain. One such identifier is the patient ID, which is a unique number assigned to each patient by a healthcare provider or system. By using the party identification on patient ID as a matching rule criteria, the healthcare client can ensure that only records that have the same patient ID are matched and unified, and avoid false positives or false negatives that may occur due to common or similar names or emails. The party identification on patient ID is also a secure and compliant way of handling sensitive healthcare data, as it does not expose or share any PII that may be subject to data protection regulations or standards.

A user is not seeing suggested values from newly-modeled data when building a segment.

What is causing this issue?

A.
Value suggestion is still processing and to be available.
A.
Value suggestion is still processing and to be available.
Answers
B.
Value suggestion requires Data Aware Specialist permissions at a minimum.
B.
Value suggestion requires Data Aware Specialist permissions at a minimum.
Answers
C.
Value suggestion can only work on direct attributes and not related attributes.
C.
Value suggestion can only work on direct attributes and not related attributes.
Answers
D.
Value suggestion will only return result for the first 50 values of a specific attribute.
D.
Value suggestion will only return result for the first 50 values of a specific attribute.
Answers
Suggested answer: A

Explanation:

: Value suggestion is a feature that allows users to see suggested values for data model object (DMO) fields when creating segment filters. However, this feature can take up to 24 hours to process and display the values for newly-modeled data. Therefore, if a user is not seeing suggested values from newly-modeled data, it is likely that the value suggestion is still processing and will be available soon. The other options are incorrect because value suggestion does not require any specific permissions, can work on both direct and related attributes, and can return more than 50 values for a specific attribute, depending on the data type and frequency of the values.

A consultant is building a segment to announce a new product launch for customers that have previously purchased black pants.

How should the consultant place attributes for product color and product type from the Order Product object to meet this criteria?

A.
Place the attribute for product color in one container and the attribute for product type in another container.
A.
Place the attribute for product color in one container and the attribute for product type in another container.
Answers
B.
Place an attribute for the 'black' calculated insight to dynamically apply
B.
Place an attribute for the 'black' calculated insight to dynamically apply
Answers
C.
Place the attributes for product and product type as direct attributes.
C.
Place the attributes for product and product type as direct attributes.
Answers
D.
Place the attributes for product color and product type in a single container.
D.
Place the attributes for product color and product type in a single container.
Answers
Suggested answer: D

Explanation:

: To create a segment based on the product color and product type from the Order Product object, the consultant should place the attributes for product color and product type in a single container. This way, the segment will include only the customers who have purchased black pants, and not those who have purchased black shirts or blue pants. A container is a grouping of attributes that defines a segment of individuals based on a logical AND operation. Placing the attributes in separate containers would result in a segment that includes customers who have purchased any black product or any pants product, which is not the desired criteria. Placing an attribute for the ''black'' calculated insight would not work, because calculated insights are based on aggregated data and not individual-level data. Placing the attributes as direct attributes would not work, because direct attributes are used to filter individuals based on their profile data, not their order data.

Create a Segment in Data Cloud

Learn About Segmentation Tools

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