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Which statement about Data Cloud's Web and Mobile Application Connector is true?

A.
A standard schema containing event, profile, and transaction data is created at the time the connector is configured.
A.
A standard schema containing event, profile, and transaction data is created at the time the connector is configured.
Answers
B.
The Tenant Specific Endpoint is auto-generated in Data Cloud when setting the connector.
B.
The Tenant Specific Endpoint is auto-generated in Data Cloud when setting the connector.
Answers
C.
Any data streams associated with the connector will be automatically deleted upon deleting the app from Data Cloud Setup.
C.
Any data streams associated with the connector will be automatically deleted upon deleting the app from Data Cloud Setup.
Answers
D.
The connector schema can be updated to delete an existing field.
D.
The connector schema can be updated to delete an existing field.
Answers
Suggested answer: B

Explanation:

The Web and Mobile Application Connector allows you to ingest data from your websites and mobile apps into Data Cloud. To use this connector, you need to set up a Tenant Specific Endpoint (TSE) in Data Cloud, which is a unique URL that identifies your Data Cloud org. The TSE is auto-generated when you create a connector app in Data Cloud Setup. You can then use the TSE to configure the SDKs for your websites and mobile apps, which will send data to Data Cloud through the TSE.

A consultant needs to package Data Cloud components from one organization to another.

Which two Data Cloud components should the consultant include in a data kit to achieve this goal?

Choose 2 answers

A.
Data model objects
A.
Data model objects
Answers
B.
Segments
B.
Segments
Answers
C.
Calculated insights
C.
Calculated insights
Answers
D.
Identity resolution rulesets
D.
Identity resolution rulesets
Answers
Suggested answer: A, D

Explanation:

To package Data Cloud components from one organization to another, the consultant should include the following components in a data kit:

Data model objects: These are the custom objects that define the data model for Data Cloud, such as Individual, Segment, Activity, etc.They store the data ingested from various sources and enable the creation of unified profiles and segments1.

Identity resolution rulesets: These are the rules that determine how data from different sources are matched and merged to create unified profiles.They specify the criteria, logic, and priority for identity resolution2.

1: Data Model Objects in Data Cloud

2: Identity Resolution Rulesets in Data Cloud

A customer has a calculated insight about lifetime value.

What does the consultant need to be aware of if the calculated insight. needs to be modified?

A.
Mew dimensions can be added.
A.
Mew dimensions can be added.
Answers
B.
Existing dimensions can be removed.
B.
Existing dimensions can be removed.
Answers
C.
Existing measures can be removed.
C.
Existing measures can be removed.
Answers
D.
Mew measures can be added.
D.
Mew measures can be added.
Answers
Suggested answer: B

Explanation:

: A calculated insight is a multidimensional metric that is defined and calculated from data using SQL expressions. A calculated insight can include dimensions and measures. Dimensions are the fields that are used to group or filter the data, such as customer ID, product category, or region. Measures are the fields that are used to perform calculations or aggregations, such as revenue, quantity, or average order value. A calculated insight can be modified by editing the SQL expression or changing the data space.However, the consultant needs to be aware of the following limitations and considerations when modifying a calculated insight12:

Existing dimensions cannot be removed. If a dimension is removed from the SQL expression, the calculated insight will fail to run and display an error message. This is because the dimension is used to create the primary key for the calculated insight object, and removing it will cause a conflict with the existing data. Therefore, the correct answer is B.

New dimensions can be added. If a dimension is added to the SQL expression, the calculated insight will run and create a new field for the dimension in the calculated insight object. However, the consultant should be careful not to add too many dimensions, as this can affect the performance and usability of the calculated insight.

Existing measures can be removed. If a measure is removed from the SQL expression, the calculated insight will run and delete the field for the measure from the calculated insight object. However, the consultant should be aware that removing a measure can affect the existing segments or activations that use the calculated insight.

New measures can be added. If a measure is added to the SQL expression, the calculated insight will run and create a new field for the measure in the calculated insight object. However, the consultant should be careful not to add too many measures, as this can affect the performance and usability of the calculated insight.

A user has built a segment in Data Cloud and is in the process of creating an activation. When selecting related attributes, they cannot find a specific set of attributes they know to be related to the individual.

Which statement explains why these attributes are not available?

A.
The segment is not segmenting on profile data.
A.
The segment is not segmenting on profile data.
Answers
B.
The attributes are being used in another activation.
B.
The attributes are being used in another activation.
Answers
C.
The desired attributes reside on different related paths.
C.
The desired attributes reside on different related paths.
Answers
D.
Activations can only include 1-to-1 attributes.
D.
Activations can only include 1-to-1 attributes.
Answers
Suggested answer: C

Explanation:

The correct answer is C, the desired attributes reside on different related paths. When creating an activation in Data Cloud, you can select related attributes from data model objects that are linked to the segment entity. However, not all related attributes are available for every activation. The availability of related attributes depends on the container path, which is the sequence of data model objects that connects the segment entity to the related entity. For example, if you segment on the Unified Individual entity, you can select related attributes from the Order Product entity, but only if the container path is Unified Individual > Order > Order Product. If the container path is Unified Individual > Order Line Item > Order Product, then the related attributes from Order Product are not available for activation. This is because Data Cloud only supports one-to-many relationships for related attributes, and Order Line Item is a many-to-many junction object between Order and Order Product. Therefore, you need to ensure that the desired attributes reside on the same related path as the segment entity, and that the path does not include any many-to-many junction objects. The other options are incorrect because they do not explain why the related attributes are not available. The segment entity can be any data model object, not just profile data. The attributes are not restricted by being used in another activation. Activations can include one-to-many attributes, not just one-to-one attributes.

Related Attributes in Activation

Considerations for Selecting Related Attributes

Salesforce Launches: Data Cloud Consultant Certification

Create a Segment in Data Cloud

A consultant wants to build a new audience in Data Cloud.

Which three criteria can the consultant include when building a segment?

Choose 3 answers

A.
Direct attributes
A.
Direct attributes
Answers
B.
Data stream attributes
B.
Data stream attributes
Answers
C.
Calculated Insights
C.
Calculated Insights
Answers
D.
Related attributes
D.
Related attributes
Answers
E.
Streaming insights
E.
Streaming insights
Answers
Suggested answer: A, C, D

Explanation:

A segment is a subset of individuals who meet certain criteria based on their attributes and behaviors. A consultant can use different types of criteria when building a segment in Data Cloud, such as:

Direct attributes: These are attributes that describe the characteristics of an individual, such as name, email, gender, age, etc. These attributes are stored in the Profile data model object (DMO) and can be used to filter individuals based on their profile data.

Calculated Insights: These are insights that perform calculations on data in a data space and store the results in a data extension. These insights can be used to segment individuals based on metrics or scores derived from their data, such as customer lifetime value, churn risk, loyalty tier, etc.

Related attributes: These are attributes that describe the relationships of an individual with other DMOs, such as Email, Engagement, Order, Product, etc. These attributes can be used to segment individuals based on their interactions or transactions with different entities, such as email opens, clicks, purchases, etc.

The other two options are not valid criteria for building a segment in Data Cloud. Data stream attributes are attributes that describe the streaming data that is ingested into Data Cloud from various sources, such as Marketing Cloud, Commerce Cloud, Service Cloud, etc. These attributes are not directly available for segmentation, but they can be transformed and stored in data extensions using streaming data transforms. Streaming insights are insights that analyze streaming data in real time and trigger actions based on predefined conditions. These insights are not used for segmentation, but for activation and personalization.

A consultant is planning the ingestion of a data stream that has profile information including a mobile phone number.

To ensure that the phone number can be used for future SMS campaigns, they need to confirm the phone number field is in the proper E164 Phone Number format. However, the phone numbers in the file appear to be in varying formats.

What is the most efficient way to guarantee that the various phone number formats are standardized?

A.
Create a formula field to standardize the format.
A.
Create a formula field to standardize the format.
Answers
B.
Edit and update the data in the source system prior to sending to Data Cloud.
B.
Edit and update the data in the source system prior to sending to Data Cloud.
Answers
C.
Assign the PhoneNumber field type when creating the data stream.
C.
Assign the PhoneNumber field type when creating the data stream.
Answers
D.
Create a calculated insight after ingestion.
D.
Create a calculated insight after ingestion.
Answers
Suggested answer: C

Explanation:

The most efficient way to guarantee that the various phone number formats are standardized is to assign the PhoneNumber field type when creating the data stream. The PhoneNumber field type is a special field type that automatically converts phone numbers into the E164 format, which is the international standard for phone numbers. The E164 format consists of a plus sign (+), the country code, and the national number. For example, +1-202-555-1234 is the E164 format for a US phone number. By using the PhoneNumber field type, the consultant can ensure that the phone numbers are consistent and can be used for future SMS campaigns. The other options are either more time-consuming, require manual intervention, or do not address the formatting issue.

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

What is causing this issue?

A.
Value suggestion will only return results for the first 50 values of a specific attribute,
A.
Value suggestion will only return results for the first 50 values of a specific attribute,
Answers
B.
Value suggestion can only work on direct attributes and not related attributes.
B.
Value suggestion can only work on direct attributes and not related attributes.
Answers
C.
Value suggestion requires Data Aware Specialist permissions at a minimum.
C.
Value suggestion requires Data Aware Specialist permissions at a minimum.
Answers
D.
Value suggestion is still processing and takes up to 24 hours to be available.
D.
Value suggestion is still processing and takes up to 24 hours to be available.
Answers
Suggested answer: D

Explanation:

The most likely cause of this issue is that value suggestion is still processing and takes up to 24 hours to be available. Value suggestion is a feature that enables you to see suggested values for data model object (DMO) fields when creating segment filters.However, this feature needs to be enabled for each DMO field, and it can take up to 24 hours for the suggested values to appear after enabling the feature1. Therefore, if a user is not seeing suggested values from newly-modeled data, it could be that the data has not been processed yet by the value suggestion feature.

Use Value Suggestions in Segmentation

A customer has outlined requirements to trigger a journey for an abandoned browse behavior. Based on the requirements, the consultant determines they will use streaming insights to trigger a data action to Journey Builder every hour.

How should the consultant configure the solution to ensure the data action is triggered at the cadence required?

A.
Set the activation schedule to hourly.
A.
Set the activation schedule to hourly.
Answers
B.
Configure the data to be ingested in hourly batches.
B.
Configure the data to be ingested in hourly batches.
Answers
C.
Set the journey entry schedule to run every hour.
C.
Set the journey entry schedule to run every hour.
Answers
D.
Set the insights aggregation time window to 1 hour.
D.
Set the insights aggregation time window to 1 hour.
Answers
Suggested answer: D

Explanation:

Streaming insights are computed from real-time engagement events and can be used to trigger data actions based on pre-set rules. Data actions are workflows that send data from Data Cloud to other systems, such as Journey Builder. To ensure that the data action is triggered every hour, the consultant should set the insights aggregation time window to 1 hour. This means that the streaming insight will evaluate the events that occurred within the last hour and execute the data action if the conditions are met. The other options are not relevant for streaming insights and data actions.

A consultant is helping a beauty company ingest its profile data into Data Cloud. The company's source data includes several fields, such as eye color, skin type, and hair color, that are not fields in the standard Individual data model object (DMO).

What should the consultant recommend to map this data to be used for both segmentation and identity resolution?

A.
Create a custom DMO from scratch that has all fields that are needed.
A.
Create a custom DMO from scratch that has all fields that are needed.
Answers
B.
Create a custom DMO with only the additional fields and map it to the standard Individual DMO.
B.
Create a custom DMO with only the additional fields and map it to the standard Individual DMO.
Answers
C.
Create custom fields on the standard Individual DMO.
C.
Create custom fields on the standard Individual DMO.
Answers
D.
Duplicate the standard Individual DMO and add the additional fields.
D.
Duplicate the standard Individual DMO and add the additional fields.
Answers
Suggested answer: C

Explanation:

The best option to map the data to be used for both segmentation and identity resolution is to create custom fields on the standard Individual DMO.This way, the consultant can leverage the existing fields and functionality of the Individual DMO, such as identity resolution rulesets, calculated insights, and data actions, while adding the additional fields that are specific to the beauty company's data1. Creating a custom DMO from scratch or duplicating the standard Individual DMO would require more effort and maintenance, and might not be compatible with the existing features of Data Cloud. Creating a custom DMO with only the additional fields and mapping it to the standard Individual DMO would create unnecessary complexity and redundancy, and might not allow the use of the custom fields for identity resolution.

1:Data Model Objects in Data Cloud

The recruiting team at Cumulus Financial wants to identify which candidates have browsed the jobs page on its website at least twice within the last 24 hours. They want the information about these candidates to be available for segmentation in Data Cloud and the candidates added to their recruiting system.

Which feature should a consultant recommend to achieve this goal?

A.
Streaming data transform
A.
Streaming data transform
Answers
B.
Streaming insight
B.
Streaming insight
Answers
C.
Calculated insight
C.
Calculated insight
Answers
D.
Batch bata transform
D.
Batch bata transform
Answers
Suggested answer: B

Explanation:

A streaming insight is a feature that allows users to create and monitor real-time metrics from streaming data sources, such as web and mobile events. A streaming insight can also trigger data actions, such as sending notifications, creating records, or updating fields, based on the metric values and conditions. Therefore, a streaming insight is the best feature to achieve the goal of identifying candidates who have browsed the jobs page on the website at least twice within the last 24 hours, and adding them to the recruiting system. The other options are incorrect because:

A streaming data transform is a feature that allows users to transform and enrich streaming data using SQL expressions, such as filtering, joining, aggregating, or calculating values. However, a streaming data transform does not provide the ability to monitor metrics or trigger data actions based on conditions.

A calculated insight is a feature that allows users to define and calculate multidimensional metrics from data using SQL expressions, such as LTV, CSAT, or average order value. However, a calculated insight is not suitable for real-time data analysis, as it runs on a scheduled basis and does not support data actions.

A batch data transform is a feature that allows users to create and schedule complex data transformations using a visual editor, such as joining, aggregating, filtering, or appending data. However, a batch data transform is not suitable for real-time data analysis, as it runs on a scheduled basis and does not support data actions.

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