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Cumulus Financial wants to be able to track the daily transaction volume of each of its customers in real time and send out a notification as soon as it detects volume outside a customer's normal range.

What should a consultant do to accommodate this request?

A.
Use a calculated insight paired with a flow.
A.
Use a calculated insight paired with a flow.
Answers
B.
Use streaming data transform with a flow.
B.
Use streaming data transform with a flow.
Answers
C.
Use a streaming insight paired with a data action
C.
Use a streaming insight paired with a data action
Answers
D.
Use streaming data transform combined with a data action.
D.
Use streaming data transform combined with a data action.
Answers
Suggested answer: C

Explanation:

: A streaming insight is a type of insight that analyzes streaming data in real time and triggers actions based on predefined conditions. A data action is a type of action that executes a flow, a data action target, or a data action script when an insight is triggered. By using a streaming insight paired with a data action, a consultant can accommodate Cumulus Financial's request to track the daily transaction volume of each customer and send out a notification when the volume is outside the normal range. A calculated insight is a type of insight that performs calculations on data in a data space and stores the results in a data extension. A streaming data transform is a type of data transform that applies transformations to streaming data in real time and stores the results in a data extension. A flow is a type of automation that executes a series of actions when triggered by an event, a schedule, or another flow. None of these options can achieve the same functionality as a streaming insight paired with a data action.

Cumulus Financial uses calculated insights to compute the total banking value per branch for its high net worth customers. In the calculated insight, 'banking value' is a metric, 'branch' is a dimension, and 'high net worth' is a filter.

What can be included as an attribute in activation?

A.
'high net worth' (filter)
A.
'high net worth' (filter)
Answers
B.
'branch' (dimension) and 'banking metric)
B.
'branch' (dimension) and 'banking metric)
Answers
C.
'banking value' (metric)
C.
'banking value' (metric)
Answers
D.
'branch' (dimension)
D.
'branch' (dimension)
Answers
Suggested answer: D

Explanation:

According to the Salesforce Data Cloud documentation, an attribute is a dimension or a measure that can be used in activation. A dimension is a categorical variable that can be used to group or filter data, such as branch, region, or product. A measure is a numerical variable that can be used to calculate metrics, such as revenue, profit, or count. A filter is a condition that can be applied to limit the data that is used in a calculated insight, such as high net worth, age range, or gender. In this question, the calculated insight uses ''banking value'' as a metric, which is a measure, and ''branch'' as a dimension. Therefore, only ''branch'' can be included as an attribute in activation, since it is a dimension. The other options are either measures or filters, which are not attributes.

Cloud Kicks wants to be able to build a segment of customers who have visited its website within the previous 7 days.

Which filter operator on the Engagement Date field fits this use case?

A.
Is Between
A.
Is Between
Answers
B.
Greater than Last Number of
B.
Greater than Last Number of
Answers
C.
Next Number of Days
C.
Next Number of Days
Answers
D.
Last Number of Days
D.
Last Number of Days
Answers
Suggested answer: D

Explanation:

: The filter operatorLast Number of Daysallows you to filter on date fields using a relative date range that specifies the number of days before today. For example, you can use this operator to filter on customers who have visited your website in the last 7 days, or the last 30 days, or any number of days you want.This operator is useful for creating dynamic segments that update automatically based on the current date12.

Relative Date Filter Reference

Create Filtered Segments

The Salesforce CRM Connector is configured and the Case object data stream is set up. Subsequently, a new custom field named Business Priority is created on the Case object in Salesforce CRM. However, the new field is not available when trying to add it to the data stream.

Which statement addresses the cause of this issue?

A.
The Salesforce Integration User Is missing Rad permissions on the newly created field.
A.
The Salesforce Integration User Is missing Rad permissions on the newly created field.
Answers
B.
The Salesforce Data Loader application should be used to perform a bulk upload from a desktop.
B.
The Salesforce Data Loader application should be used to perform a bulk upload from a desktop.
Answers
C.
Custom fields on the Case object are not supported for ingesting into Data Cloud.
C.
Custom fields on the Case object are not supported for ingesting into Data Cloud.
Answers
D.
After 24 hours when the data stream refreshes it will automatically include any new fields that were added to the Salesforce CRM.
D.
After 24 hours when the data stream refreshes it will automatically include any new fields that were added to the Salesforce CRM.
Answers
Suggested answer: A

Explanation:

The Salesforce CRM Connector uses the Salesforce Integration User to access the data from the Salesforce CRM org. The Integration User must have the Read permission on the fields that are included in the data stream. If the Integration User does not have the Read permission on the newly created field, the field will not be available for selection in the data stream configuration. To resolve this issue, the administrator should assign the Read permission on the new field to the Integration User profile or permission set.

Northern Trail Outfitters unifies individuals in its Data Cloud instance.

Which three features ca e consultant use to validate the data on a unified profile?

Choose 3 answers

A.
Identity Resolution
A.
Identity Resolution
Answers
B.
Query APL
B.
Query APL
Answers
C.
Data Explorer
C.
Data Explorer
Answers
D.
Profile Explorer
D.
Profile Explorer
Answers
E.
Data Actions
E.
Data Actions
Answers
Suggested answer: A, C, D

Explanation:

To validate the data on a unified profile, the consultant can use the following features:

Identity Resolution: This feature allows the consultant to view and edit the identity resolution rulesets that determine how individuals are unified from different data sources1.

Data Explorer: This feature allows the consultant to browse and filter the unified profiles and view their attributes, segments, and activities2.

Profile Explorer: This feature allows the consultant to drill down into a specific unified profile and view its details, such as source records, identity graph, calculated insights, and data actions3.

1: Identity Resolution in Data Cloud

2: Data Explorer in Data Cloud

3: Profile Explorer in Data Cloud

A Data Cloud consultant recently discovered that their identity resolution process is matching individuals that share email addresses or phone numbers, but are not actually the same individual.

What should the consultant do to address this issue?

A.
Modify the existing ruleset with stricter matching criteria, run the ruleset and review the updated results, then adjust as needed until the individuals are matching correctly.
A.
Modify the existing ruleset with stricter matching criteria, run the ruleset and review the updated results, then adjust as needed until the individuals are matching correctly.
Answers
B.
Create and run a new rules fewer matching rules, compare the two rulesets to review and verify the results, and then migrate to the new ruleset once approved.
B.
Create and run a new rules fewer matching rules, compare the two rulesets to review and verify the results, and then migrate to the new ruleset once approved.
Answers
C.
Create and run a new ruleset with stricter matching criteria, compare the two rulesets to review and verify the results, and then migrate to the new ruleset once approved.
C.
Create and run a new ruleset with stricter matching criteria, compare the two rulesets to review and verify the results, and then migrate to the new ruleset once approved.
Answers
D.
Modify the existing ruleset with stricter matching criteria, compare the two rulesets to review and verify the results, and then migrate to the new ruleset once approved.
D.
Modify the existing ruleset with stricter matching criteria, compare the two rulesets to review and verify the results, and then migrate to the new ruleset once approved.
Answers
Suggested answer: C

Explanation:

: Identity resolution is the process of linking source profiles from different data sources into unified individual profiles based on match and reconciliation rules. If the identity resolution process is matching individuals that share email addresses or phone numbers, but are not actually the same individual, it means that the match rules are too loose and need to be refined. The best way to address this issue is to create and run a new ruleset with stricter matching criteria, such as adding more attributes or increasing the match score threshold. Then, the consultant can compare the two rulesets to review and verify the results, and see if the new ruleset reduces the false positives and improves the accuracy of the identity resolution. Once the new ruleset is approved, the consultant can migrate to the new ruleset and delete the old one. The other options are incorrect because modifying the existing ruleset can affect the existing unified profiles and cause data loss or inconsistency. Creating and running a new ruleset with fewer matching rules can increase the false negatives and reduce the coverage of the identity resolution.

A retail customer wants to bring customer data from different sources and wants to take advantage of identity resolution so that it can be used in segmentation.

On which entity should this be segmented for activation membership?

A.
Subscriber
A.
Subscriber
Answers
B.
Unified Individual
B.
Unified Individual
Answers
C.
Unified Contact
C.
Unified Contact
Answers
D.
Individual
D.
Individual
Answers
Suggested answer: B

Explanation:

: The correct answer is B, Unified Individual. A Unified Individual is a record that represents a customer across different data sources, created by applying identity resolution rulesets. Identity resolution rulesets are sets of match and reconciliation rules that define how to link and merge data from different sources based on common attributes.Data Cloud uses identity resolution rulesets to resolve data across multiple data sources and helps you create one record for each customer, regardless of where the data came from1. A retail customer who wants to bring customer data from different sources and use identity resolution for segmentation should segment on the Unified Individual entity, which contains the resolved and consolidated customer data. The other options are incorrect because they do not represent the resolved customer data across different sources. A Subscriber is a record that represents a customer who has opted in to receive marketing communications. A Unified Contact is a record that represents a customer who has a relationship with a specific business unit. An Individual is a record that represents a customer's profile data from a single data source.

Identity Resolution Ruleset Processing Results

Consider Data Implications for Segmentation

Prepare for your Salesforce Data Cloud Consultant Credential

AI-based Identity Resolution: Linking Diverse Customer Data

A consultant is reviewing a recent activation using engagement-based related attributes but is not seeing any related attributes in their payload for the majority of their segment members.

Which two areas should the consultant review to help troubleshoot this issue?

Choose 2 answers

A.
The related engagement events occurred within the last 90 days.
A.
The related engagement events occurred within the last 90 days.
Answers
B.
The activations are referencing segments that segment on profile data rather than engagement data.
B.
The activations are referencing segments that segment on profile data rather than engagement data.
Answers
C.
The correct path is selected for the related attributes.
C.
The correct path is selected for the related attributes.
Answers
D.
The activated profiles have a Unified Contact Point. Engagement-based related attributes are attributes that describe the interactions of a person with an email message, such as opens, clicks, unsubscribes, etc. These attributes are stored in the Engagement data model object (DMO) and can be added to an activation to send more personalized communications. However, there are some considerations and limitations when using engagement-based related attributes, such as: For engagement data, activation supports a90-day lookback window. This means that only the attributes from the engagement events that occurred within the last 90 days are considered for activation. Any records outside of this window are not included in the activation payload. Therefore, the consultant should review the event time of the related engagement events and make sure they are within the lookback window. The correctpathto the related attributes must be selected for the activation. A path is a sequence of DMOs that are connected by relationships in the data model. For example, the path from Individual to Engagement is Individual -> Email -> Engagement. The path determines which related attributes are available for activation and how they are filtered. Therefore, the consultant should review the path selection and make sure it matches the desired related attributes and filters. The other two options are not relevant for this issue. The activations can reference segments that segment on profile data rather than engagement data, as long as the activation target supports related attributes. The activated profiles do not need to have a Unified Contact Point, which is a unique identifier for a person across different data sources, to activate engagement-based related attributes.
D.
The activated profiles have a Unified Contact Point. Engagement-based related attributes are attributes that describe the interactions of a person with an email message, such as opens, clicks, unsubscribes, etc. These attributes are stored in the Engagement data model object (DMO) and can be added to an activation to send more personalized communications. However, there are some considerations and limitations when using engagement-based related attributes, such as: For engagement data, activation supports a90-day lookback window. This means that only the attributes from the engagement events that occurred within the last 90 days are considered for activation. Any records outside of this window are not included in the activation payload. Therefore, the consultant should review the event time of the related engagement events and make sure they are within the lookback window. The correctpathto the related attributes must be selected for the activation. A path is a sequence of DMOs that are connected by relationships in the data model. For example, the path from Individual to Engagement is Individual -> Email -> Engagement. The path determines which related attributes are available for activation and how they are filtered. Therefore, the consultant should review the path selection and make sure it matches the desired related attributes and filters. The other two options are not relevant for this issue. The activations can reference segments that segment on profile data rather than engagement data, as long as the activation target supports related attributes. The activated profiles do not need to have a Unified Contact Point, which is a unique identifier for a person across different data sources, to activate engagement-based related attributes.
Answers
Suggested answer: A, C

How does identity resolution select attributes for unified individuals when there Is conflicting information in the data model?

A.
Creates additional contact points
A.
Creates additional contact points
Answers
B.
Leverages reconciliation rules
B.
Leverages reconciliation rules
Answers
C.
Creates additional rulesets
C.
Creates additional rulesets
Answers
D.
Leverages match rules
D.
Leverages match rules
Answers
Suggested answer: B

Explanation:

Identity resolution is the process of creating unified profiles of individuals by matching and merging data from different sources. When there is conflicting information in the data model, such as different names, addresses, or phone numbers for the same person, identity resolution leverages reconciliation rules to select the most accurate and complete attributes for the unified profile. Reconciliation rules are configurable rules that define how to resolve conflicts based on criteria such as recency, frequency, source priority, or completeness. For example, a reconciliation rule can specify that the most recent name or the most frequent phone number should be selected for the unified profile. Reconciliation rules can be applied at the attribute level or the contact point level.

A consultant is setting up a data stream with transactional data,

Which field type should the consultant choose to ensure that leading zeros in the purchase order number are preserved?

A.
Text
A.
Text
Answers
B.
Number
B.
Number
Answers
C.
Decimal
C.
Decimal
Answers
D.
Serial
D.
Serial
Answers
Suggested answer: A

Explanation:

The field typeTextshould be chosen to ensure that leading zeros in the purchase order number are preserved. This is because text fields store alphanumeric characters as strings, and do not remove any leading or trailing characters.On the other hand, number, decimal, and serial fields store numeric values as numbers, and automatically remove any leading zeros when displaying or exporting the data123. Therefore, text fields are more suitable for storing data that needs to retain its original format, such as purchase order numbers, zip codes, phone numbers, etc.

Zeros at the start of a field appear to be omitted in Data Exports

Keep First '0' When Importing a CSV File

Import and export address fields that begin with a zero or contain a plus symbol

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