Apr-2026 Free Data-Con-101 Test Questions Real Practice Test Questions [Q53-Q75]

Share

Apr-2026 Free Data-Con-101 Test Questions Real Practice Test Questions

Data-Con-101 Dumps Updated Apr 05, 2026 WIith 170 Questions

NEW QUESTION # 53
What is the role of artificial intelligence (AI) in Data Cloud?

  • A. Creating dynamic data-driven management dashboards
  • B. Automating data validation
  • C. Enhancing customer interactions through insights and predictions
  • D. Generating email templates for use cases

Answer: C

Explanation:
Role of AI in Data Cloud: Artificial intelligence (AI) plays a crucial role in Salesforce Data Cloud by leveraging data to generate insights and predictions that enhance customer interactions.
Insights and Predictions:
AI Algorithms: Use machine learning algorithms to analyze vast amounts of customer data.
Predictive Analytics: Provide predictive insights, such as customer behavior trends, preferences, and potential future actions.
Enhancing Customer Interactions:
Personalization: AI helps in creating personalized experiences by predicting customer needs and preferences.
Efficiency: Enables proactive customer service by predicting issues and suggesting solutions before customers reach out.
Marketing: Improves targeting and segmentation, ensuring that marketing efforts are directed towards the most promising leads and customers.
Use Cases:
Recommendation Engines: Suggest products or services based on past behavior and preferences.
Churn Prediction: Identify customers at risk of leaving and engage them with retention strategies.
References:
Salesforce Data Cloud AI Capabilities
Salesforce AI for Customer Interaction


NEW QUESTION # 54
A customer wants to create segments of users based on their Customer Lifetime Value.
However, the source data that will be brought into Data Cloud does not include that key performance indicator (KPI).
Which sequence of steps should the consultant follow to achieve this requirement?

  • A. Create Calculated Insight > Ingest Data > Map Data to Data Model> Use in Segmentation
  • B. Create Calculated Insight > Map Data to Data Model> Ingest Data > Use in Segmentation
  • C. Ingest Data > Map Data to Data Model > Create Calculated Insight > Use in Segmentation
  • D. Ingest Data > Create Calculated Insight > Map Data to Data Model > Use in Segmentation

Answer: C

Explanation:
To create segments of users based on their Customer Lifetime Value (CLV), the sequence of steps that the consultant should follow is Ingest Data > Map Data to Data Model > Create Calculated Insight > Use in Segmentation. This is because the first step is to ingest the source data into Data Cloud using data streams1. The second step is to map the source data to the data model, which defines the structure and attributes of the data2. The third step is to create a calculated insight, which is a derived attribute that is computed based on the source or unified data3. In this case, the calculated insight would be the CLV, which can be calculated using a formula or a query based on the sales order data4. The fourth step is to use the calculated insight in segmentation, which is the process of creating groups of individuals or entities based on their attributes and behaviors. By using the CLV calculated insight, the consultant can segment the users by their predicted revenue from the lifespan of their relationship with the brand. The other options are incorrect because they do not follow the correct sequence of steps to achieve the requirement. Option B is incorrect because it is not possible to create a calculated insight before ingesting and mapping the data, as the calculated insight depends on the data model objects3. Option C is incorrect because it is not possible to create a calculated insight before mapping the data, as the calculated insight depends on the data model objects3. Option D is incorrect because it is not recommended to create a calculated insight before mapping the data, as the calculated insight may not reflect the correct data model structure and attributes3. References: Data Streams Overview, Data Model Objects Overview, Calculated Insights Overview, Calculating Customer Lifetime Value (CLV) With Salesforce, [Segmentation Overview]


NEW QUESTION # 55
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
  • B. Individual
  • C. Unified Individual
  • D. Unified Contact

Answer: C

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. References:
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


NEW QUESTION # 56
A customer needs to integrate in real time with Salesforce CRM.
Which feature accomplishes this requirement?

  • A. Streaming transforms
  • B. Data actions and Lightning web components
  • C. Data model triggers
  • D. Sales and Service bundle

Answer: A

Explanation:
The correct answer is A. Streaming transforms. Streaming transforms are a feature of Data Cloud that allows real-time data integration with Salesforce CRM. Streaming transforms use the Data Cloud Streaming API to synchronize micro-batches of updates between the CRM data source and Data Cloud in near-real time1. Streaming transforms enable Data Cloud to have the most current and accurate CRM data for segmentation and activation2.
The other options are incorrect for the following reasons:
B). Data model triggers. Data model triggers are a feature of Data Cloud that allows custom logic to be executed when data model objects are created, updated, or deleted3. Data model triggers do not integrate data with Salesforce CRM, but rather manipulate data within Data Cloud.
C). Sales and Service bundle. Sales and Service bundle is a feature of Data Cloud that allows pre-built data streams, data model objects, segments, and activations for Sales Cloud and Service Cloud data sources4. Sales and Service bundle does not integrate data in real time with Salesforce CRM, but rather ingests data at scheduled intervals.
D). Data actions and Lightning web components. Data actions and Lightning web components are features of Data Cloud that allow custom user interfaces and workflows to be built and embedded in Salesforce applications5. Data actions and Lightning web components do not integrate data with Salesforce CRM, but rather display and interact with data within Salesforce applications.
1: Load Data into Data Cloud
2: [Data Streams in Data Cloud]
3: [Data Model Triggers in Data Cloud] unit on Trailhead
4: [Sales and Service Bundle in Data Cloud] unit on Trailhead
5: [Data Actions and Lightning Web Components in Data Cloud] unit on Trailhead
[Data Model in Data Cloud] unit on Trailhead
[Create a Data Model Object] article on Salesforce Help
[Data Sources in Data Cloud] unit on Trailhead
[Connect and Ingest Data in Data Cloud] article on Salesforce Help
[Data Spaces in Data Cloud] unit on Trailhead
[Create a Data Space] article on Salesforce Help
[Segments in Data Cloud] unit on Trailhead
[Create a Segment] article on Salesforce Help
[Activations in Data Cloud] unit on Trailhead
[Create an Activation] article on Salesforce Help


NEW QUESTION # 57
A bank collects customer data for its loan applicants and high net worth customers. A customer can be both a load applicant and a high net worth customer, resulting in duplicate data.
How should a consultant ingest and map this data in Data Cloud?

  • A. Ingest the data into one DLO and then map to one custom DMO.
  • B. Use a data transform to consolidate the data into one DLO and them map it to the individual and Contact Point Email DMOs.
  • C. Ingest the data into two DLOs and then map to two custom DMOs.
  • D. Ingest the data into two DLOs and map each to the individual and Contact point Email DMOs.

Answer: D

Explanation:
To handle duplicate data for customers who are both loan applicants and high net worth individuals, the consultant should ingest the data into two separate Data Lake Objects (DLOs) and map them to the Individual and Contact Point Email Data Model Objects (DMOs). Here's why and how this works:
Understanding the Problem :
Customers may exist in both datasets (loan applicants and high net worth individuals), leading to potential duplication.
To avoid redundancy while maintaining data integrity, the data must be ingested and mapped carefully.
Why Two DLOs?
By ingesting the data into two DLOs, you can maintain separation between the two datasets while still leveraging shared attributes (e.g., email addresses).
Mapping both DLOs to the Individual and Contact Point Email DMOs ensures that identity resolution can consolidate duplicate records based on shared identifiers like email.
Steps to Implement This Solution :
Step 1: Create two DLOs-one for loan applicants and another for high net worth customers.
Step 2: Map both DLOs to the Individual DMO to consolidate customer profiles.
Step 3: Map the email fields from both DLOs to the Contact Point Email DMO to enable identity resolution based on email addresses.
Step 4: Configure identity resolution rules to merge duplicate records based on shared attributes like email.
Why Not Other Options?
A). Use a data transform to consolidate the data into one DLO: Consolidating into a single DLO before mapping would lose the distinction between the two datasets and make it harder to manage updates or changes.
C). Ingest the data into two DLOs and then map to two custom DMOs: Creating custom DMOs is unnecessary complexity when the standard Individual and Contact Point Email DMOs can handle this scenario.
D). Ingest the data into one DLO and then map to one custom DMO: Using a single DLO would result in data loss or confusion, as the distinction between loan applicants and high net worth customers would be lost.
By using two DLOs and mapping them to the standard DMOs, the consultant ensures clean data ingestion and effective identity resolution.


NEW QUESTION # 58
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 custom fields on the standard Individual DMO.
  • B. Create a custom DMO from scratch that has all fields that are needed.
  • C. Create a custom DMO with only the additional fields and map it to the standard Individual DMO.
  • D. Duplicate the standard Individual DMO and add the additional fields.

Answer: A

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. References:
1: Data Model Objects in Data Cloud


NEW QUESTION # 59
Northern Trail Outfitters wants to use some of its Marketing Cloud data in Data Cloud.
Which engagement channel data will require custom integration?

  • A. Mobile push
  • B. CloudPage
  • C. SMS
  • D. Email

Answer: B

Explanation:
CloudPage is a web page that can be personalized and hosted by Marketing Cloud. It is not one of the standard engagement channels that Data Cloud supports out of the box. To use CloudPage data in Data Cloud, a custom integration is required. The other engagement channels (SMS, email, and mobile push) are supported by Data Cloud and can be integrated using the Marketing Cloud Connector or the Marketing Cloud API. References: Data Cloud Overview, Marketing Cloud Connector, Marketing Cloud API


NEW QUESTION # 60
What does the Ignore Empty Value option do in identity resolution?

  • A. Ignores empty fields when running any custom match rules
  • B. Ignores empty fields when running the standard match rules
  • C. Ignores Individual object records with empty fields when running identity resolution rules
  • D. Ignores empty fields when running reconciliation rules

Answer: D

Explanation:
The Ignore Empty Value option in identity resolution allows customers to ignore empty fields when running reconciliation rules. Reconciliation rules are used to determine the final value of an attribute for a unified individual profile, based on the values from different sources. The Ignore Empty Value option can be set to true or false for each attribute in a reconciliation rule. If set to true, the reconciliation rule will skip any source that has an empty value for that attribute and move on to the next source in the priority order. If set to false, the reconciliation rule will consider any source that has an empty value for that attribute as a valid source and use it to populate the attribute value for the unified individual profile.
The other options are not correct descriptions of what the Ignore Empty Value option does in identity resolution. The Ignore Empty Value option does not affect the custom match rules or the standard match rules, which are used to identify and link individuals across different sources based on their attributes. The Ignore Empty Value option also does not ignore individual object records with empty fields when running identity resolution rules, as identity resolution rules operate on the attribute level, not the record level.
Data Cloud Identity Resolution Reconciliation Rule Input
Configure Identity Resolution Rulesets
Data and Identity in Data Cloud


NEW QUESTION # 61
Which two common use cases can be addressed with Data Cloud?
Choose 2 answers

  • A. Safeguard critical business data by serving as a centralized system for backup and disasterrecovery.
  • B. Govern enterprise data lifecycle through a centralized set of policies and processes.
  • C. Understand and act upon customer data to drive more relevant experiences.
  • D. Harmonize data from multiple sources with a standardized and extendable data model.

Answer: C,D

Explanation:
Data Cloud is a data platform that can help customers connect, prepare, harmonize, unify, query, analyze, and act on their data across various Salesforce and external sources. Some of the common use cases that can be addressed with Data Cloud are:
Understand and act upon customer data to drive more relevant experiences. Data Cloud can help customers gain a 360-degree view of their customers by unifying data from different sources and resolving identities across channels. Data Cloud can also help customers segment their audiences, create personalized experiences, and activate data in any channel using insights and AI.
Harmonize data from multiple sources with a standardized and extendable data model. Data Cloud can help customers transform and cleanse their data before using it, and map it to a common data model that can be extended and customized. Data Cloud can also help customers create calculated insights and related attributes to enrich their data and optimize identity resolution.
The other two options are not common use cases for Data Cloud. Data Cloud does not provide data governance or backup and disaster recovery features, as these are typically handled by other Salesforce or external solutions.
Learn How Data Cloud Works
About Salesforce Data Cloud
Discover Use Cases for the Platform
Understand Common Data Analysis Use Cases


NEW QUESTION # 62
Cloud Kicks received a Request to be Forgotten by a customer.
In which two ways should a consultant use Data Cloud to honor this request?
Choose 2 answers

  • A. Delete the data from the incoming data stream and perform a full refresh.
  • B. Use the Consent API to suppress processing and delete the Individual and related records fromsource data streams.
  • C. Add the Individual ID to a headerless file and use the delete from file functionality.
  • D. Use Data Explorer to locate and manually remove the Individual.

Answer: B,C

Explanation:
To honor a Request to be Forgotten by a customer, a consultant should use Data Cloud in two ways:
Add the Individual ID to a headerless file and use the delete from file functionality. This option allows the consultant to delete multiple Individuals from Data Cloud by uploading a CSV file with their IDs1. The deletion process is asynchronous and can take up to 24 hours to complete1.
Use the Consent API to suppress processing and delete the Individual and related records from source data streams. This option allows the consultant to submit a Data Deletion request for an Individual profile in Data Cloud using the Consent API2. A Data Deletion request deletes the specified Individual entity and any entities where a relationship has been defined between that entity's identifying attribute and the Individual ID attribute2. The deletion process is reprocessed at 30, 60, and 90 days to ensure a full deletion2. The other options are not correct because:
Deleting the data from the incoming data stream and performing a full refresh will not delete the existing data in Data Cloud, only the new data from the source system3.
Using Data Explorer to locate and manually remove the Individual will not delete the related records from the source data streams, only the Individual entity in Data Cloud. References:
Delete Individuals from Data Cloud
Requesting Data Deletion or Right to Be Forgotten
Data Refresh for Data Cloud
[Data Explorer]


NEW QUESTION # 63
An organization wants to enable users with the ability to identify and select text attributes from a picklist of options.
Which Data Cloud feature should help with this use case?

  • A. Data harmonization
  • B. Value suggestion
  • C. Transformation formulas
  • D. Global picklists

Answer: B

Explanation:
Value suggestion is a Data Cloud feature that allows users to see and select the possible values for a text field when creating segment filters. Value suggestion can be enabled or disabled for each data model object (DMO) field in the DMO record home. Value suggestion can help users to identify and select text attributes from a picklist of options, without having to type or remember the exact values. Value suggestion can also reduce errors and improve data quality by ensuring consistent and valid values for the segment filters. References: Use Value Suggestions in Segmentation, Considerations for Selecting Related Attributes


NEW QUESTION # 64
Where is value suggestion for attributes in segmentation enabled when creating the DMO?

  • A. Segment Setup
  • B. Data Stream Setup
  • C. Data Mapping
  • D. Data Transformation

Answer: A

Explanation:
Value suggestion for attributes in segmentation is a feature that allows you to see and select the possible values for a text field when creating segment filters. You can enable or disable this feature for each data model object (DMO) field in the DMO record home. Value suggestion can be enabled for up to 500 attributes for your entire org. It can take up to 24 hours for suggested values to appear. To use value suggestion when creating segment filters, you need to drag the attribute onto the canvas and start typing in the Value field for an attribute. You can also select multiple values for some operators. Value suggestion is not available for attributes with more than 255 characters or for relationships that are one-to-many (1:N). References: Use Value Suggestions in Segmentation, Considerations for Selecting Related Attributes


NEW QUESTION # 65
Cumulus Financial wants to create a segment of individuals based on transaction history data. This data has been mapped in the data model and is accessible via multiple container paths for segmentation.
What happens if the optimal container path for this use case is not selected?

  • A. Data Cloud segmentation will automatically select the optimal container path.
  • B. The resulting segment may be smaller or larger than expected.
  • C. The resulting segment will not be generated.
  • D. Alternate container paths will be suggested before the segment is published.

Answer: B

Explanation:
In Salesforce Data Cloud, when segmenting individuals based on transaction history data, there may be multiple paths to the same data through different objects in the data model. If the wrong container path is selected:
The segment may pull in too many or too few individuals because different container paths may define relationships differently.
Some records may be unintentionally excluded or duplicated, affecting segmentation accuracy.
Identity resolution and relationships between objects might not behave as expected.
Why Not A? Data Cloud does not suggest alternate container paths automatically. The user must choose the correct path.
Why Not C? Data Cloud does not automatically select the optimal path; it relies on the user's selection.
Why Not D? The segment will still be generated but may have inaccurate results.
# Salesforce Data Cloud Reference:
Salesforce Help Documentation - Data Model and Segmentation Best Practices Trailhead Module: Segmentation in Data Cloud Salesforce Knowledge Base - Using Container Paths for Segmentation


NEW QUESTION # 66
During a privacy law discussion with a customer, the customer indicates they need to honor requests for the right to be forgotten. The consultant determines that Consent API will solve this business need.
Which two considerations should the consultant inform the customer about?
Choose 2 answers

  • A. Data deletion requests are reprocessed at 30, 60, and 90 days.
  • B. Data deletion requests are processed within 1 hour.
  • C. Data deletion requests are submitted for Individual profiles.
  • D. Data deletion requests submitted to Data Cloud are passed to all connected Salesforce clouds.

Answer: C,D

Explanation:
When advising a customer about using the Consent API in Salesforce to comply with requests for the right to be forgotten, the consultant should focus on two primary considerations:
Data deletion requests are submitted for Individual profiles (Answer C): The Consent API in Salesforce is designed to handle data deletion requests specifically for individual profiles. This means that when a request is made to delete data, it is targeted at the personal data associated with an individual's profile in the Salesforce system. The consultant should inform the customer that the requests must be specific to individual profiles to ensure accurate processing and compliance with privacy laws.
Data deletion requests submitted to Data Cloud are passed to all connected Salesforce clouds (Answer D):
When a data deletion request is made through the Consent API in Salesforce Data Cloud, the request is not limited to the Data Cloud alone. Instead, it propagates through all connected Salesforce clouds, such as Sales Cloud, Service Cloud, Marketing Cloud, etc. This ensures comprehensive compliance with the right to be forgotten across the entire Salesforce ecosystem. The customer should be aware that the deletion request will affect all instances of the individual's data across the connected Salesforce environments.


NEW QUESTION # 67
What is a key functionality of Data Cloud?

  • A. To build insights on unified profiles
  • B. To create a master data management (MUM) strategy
  • C. To give a persistent ID for unified profiles
  • D. To help users build a heat map using their data

Answer: A

Explanation:
A key functionality of Salesforce Data Cloud is its ability to build insights on unified profiles . Here's why this is the correct answer:
Understanding the Functionality of Data Cloud
Salesforce Data Cloud is designed to aggregate, unify, and analyze customer data from multiple sources.
Its primary purpose is to provide actionable insights that drive personalized customer experiences.
Why Build Insights on Unified Profiles?
Unified Profiles :
Data Cloud creates a unified profile by combining data from various sources (e.g., CRM, Marketing Cloud, external systems).
This single view of the customer enables organizations to understand behaviors, preferences, and interactions across touchpoints.
Building Insights :
Insights derived from unified profiles help organizations make data-driven decisions.
Examples include identifying high-value customers, predicting churn, and personalizing marketing campaigns.
Other Options Are Less Relevant :
A). To create a master data management (MDM) strategy : While Data Cloud supports data unification, it is not primarily an MDM tool.
B). To give a persistent ID for unified profiles : Persistent IDs are a feature of unified profiles but not the core functionality of Data Cloud.
D). To help users build a heat map using their data : Heat maps are a visualization tool, not a core functionality of Data Cloud.
Steps to Build Insights on Unified Profiles
Step 1: Ingest Data
Bring in customer data from multiple sources into Data Cloud.
Step 2: Create Unified Profiles
Use identity resolution to merge related records into a single unified profile.
Step 3: Analyze Data
Use tools like calculated insights, segments, and dashboards to derive actionable insights.
Step 4: Activate Insights
Use the insights to personalize customer experiences in downstream systems (e.g., Marketing Cloud, Sales Cloud).
Conclusion
The key functionality of Salesforce Data Cloud is to build insights on unified profiles , enabling organizations to deliver personalized and impactful customer experiences.


NEW QUESTION # 68
Which operator should a consultant use to create a segment for a birthday campaign that is evaluated daily?

  • A. Is Birthday
  • B. Is Between
  • C. Is Today
  • D. Is Anniversary Of

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.


NEW QUESTION # 69
How does Data Cloud ensure high availability and fault tolerance for customer data?

  • A. By distributing data across multiple regions and data centers
  • B. By Implementing automatic data recovery procedures
  • C. By using a data center with robust backups
  • D. By limiting data access to essential personnel

Answer: A

Explanation:
Ensuring High Availability and Fault Tolerance:
High availability refers to systems that are continuously operational and accessible, while fault tolerance is the ability to continue functioning in the event of a failure.
Reference: Salesforce High Availability and Fault Tolerance Whitepaper
Data Distribution Across Multiple Regions and Data Centers:
Salesforce Data Cloud ensures high availability by replicating data across multiple geographic regions and data centers. This distribution mitigates risks associated with localized failures.
If one data center goes down, data and services can continue to be served from another location, ensuring uninterrupted service.
Reference: Salesforce Infrastructure Overview
Benefits of Regional Data Distribution:
Redundancy: Having multiple copies of data across regions provides redundancy, which is critical for disaster recovery.
Load Balancing: Traffic can be distributed across data centers to optimize performance and reduce latency.
Regulatory Compliance: Storing data in different regions helps meet local data residency requirements.
Reference: Salesforce Data Center Locations and Regional Data Hosting
Implementation in Salesforce Data Cloud:
Salesforce utilizes a robust architecture involving data replication and failover mechanisms to maintain data integrity and availability.
This architecture ensures that even in the event of a regional outage, customer data remains secure and accessible.
Reference: Salesforce Trust and Compliance Documentation


NEW QUESTION # 70
A company stores customer data in Marketing Cloud and uses the Marketing Cloud Connector to ingest data into Data Cloud.
Where does a request for data deletion or right to be forgotten get submitted?

  • A. In Marketing Cloud settings
  • B. through Consent API
  • C. In Data Cloud settings
  • D. On the individual data profile in Data Cloud

Answer: B


NEW QUESTION # 71
Northern Trail Outfitters asks its consultant to extract the runner profiles and activity logs from its Track My Run mobile app and load them into Data Cloud. The marketing department also indicates that they need the last 90 days of historical data and want all new and updated data as it becomes available on a go-forward basis.
As best practice, which sequence of actions should the consultant use to implement this request?

  • A. Use bulk ingestion to first load the last 90 days of data, and also subsequently use bulk ingestion to synchronize the future data as It becomes available.
  • B. Use streaming ingestion to first load the last 90 days of data, and also subsequently use streaming ingestion synchronize future data as It becomes available.
  • C. Use streaming ingestion to first load the last 90 days of data, and then use bulk Ingestion to synchronize future data as It becomes available.
  • D. Use bulk ingestion to first load the last 90 days of data, and then use streaming ingestion to synchronize future data as It becomes available.

Answer: D

Explanation:
Initial Data Load: For loading large volumes of historical data, such as the last 90 days of runner profiles and activity logs, bulk ingestion is the most efficient method. It allows for high-throughput data transfer.
Bulk Ingestion: Use Salesforce Data Cloud's bulk ingestion tools to load the historical data quickly and efficiently.
Ongoing Data Synchronization: To keep the Data Cloud updated with new and modified records as they become available in the Track My Run mobile app, streaming ingestion is appropriate. It ensures near-real- time data updates.
Streaming Ingestion: Configure streaming ingestion to continuously update the Data Cloud with new and updated data from the mobile app.
Sequence of Actions:
Step 1: Perform bulk ingestion to import the last 90 days of historical data into Data Cloud.
Step 2: Set up streaming ingestion to handle ongoing updates and new data as it becomes available.
Best Practice: This approach ensures that the initial large data load is handled efficiently, and ongoing updates are processed in near real-time, providing the marketing department with the most up-to-date data.
References:
Salesforce Data Cloud Ingestion Methods
Salesforce Bulk Data Ingestion
Salesforce Streaming Data Ingestion


NEW QUESTION # 72
A Data Cloud Consultant Is in the process of setting up data streams for a new service-based data source.
When ingesting Case data, which field is recommended to be associated with the Event Time field?

  • A. Creation Date
  • B. Last Modified Date
  • C. Escalation Date
  • D. Resolution Date

Answer: A

Explanation:
The Event Time field is a special field type that captures the timestamp of an event in a data stream. It is used to track the chronological order of events and to enable time-based segmentation and activation. When ingesting Case data, the recommended field to be associated with the Event Time field is the Last Modified Date field. This field reflects the most recent update to the case and can be used to measure the case duration, resolution time, and customer satisfaction. The other fields, such as Resolution Date, Escalation Date, or Creation Date, are not as suitable for the Event Time field, as they may not capture the latest status of the case or may not be applicable for all cases. References: Data Stream Field Types, Salesforce Data Cloud Exam Questions


NEW QUESTION # 73
Which two requirements must be met for a calculated insight to appear in the segmentation canvas?
Choose 2 answers

  • A. The primary key of the segmented table must be a dimension in the calculated insight.
  • B. The calculated insight must contain a dimension including the Individual or Unified Individual Id.
  • C. The primary key of the segmented table must be a metric in the calculated insight.
  • D. The metrics of the calculated insights must only contain numeric values.

Answer: A,B

Explanation:
A calculated insight is a custom metric or measure that is derived from one or more data model objects or data lake objects in Data Cloud. A calculated insight can be used in segmentation to filter or group the data based on the calculated value. However, not all calculated insights can appear in the segmentation canvas. There are two requirements that must be met for a calculated insight to appear in the segmentation canvas:
The calculated insight must contain a dimension including the Individual or Unified Individual Id. A dimension is a field that can be used to categorize or group the data, such as name, gender, or location. The Individual or Unified Individual Id is a unique identifier for each individual profile in Data Cloud. The calculated insight must include this dimension to link the calculated value to the individual profile and to enable segmentation based on the individual profile attributes.
The primary key of the segmented table must be a dimension in the calculated insight. The primary key is a field that uniquely identifies each record in a table. The segmented table is the table that contains the data that is being segmented, such as the Customer or the Order table. The calculated insight must include the primary key of the segmented table as a dimension to ensure that the calculated value is associated with the correct record in the segmented table and to avoid duplication or inconsistency in the segmentation results.
Create a Calculated Insight, Use Insights in Data Cloud, Segmentation


NEW QUESTION # 74
What is the primary purpose of Data Cloud?

  • A. Providing a golden record of a customer
  • B. Analyzing marketing data results
  • C. Integrating and unifying customer data
  • D. Managing sales cycles and opportunities

Answer: C

Explanation:
Primary Purpose of Data Cloud:
Salesforce Data Cloud's main function is to integrate and unify customer data from various sources, creating a single, comprehensive view of each customer.
Reference: Salesforce Data Cloud Overview
Benefits of Data Integration and Unification:
Golden Record: Providing a unified, accurate view of the customer.
Enhanced Analysis: Enabling better insights and analytics through comprehensive data.
Improved Customer Engagement: Facilitating personalized and consistent customer experiences across channels.
Reference: Salesforce Data Cloud Benefits Documentation
Steps for Data Integration:
Ingest data from multiple sources (CRM, marketing, service platforms).
Use data harmonization and reconciliation processes to unify data into a single profile.
Reference: Salesforce Data Integration and Unification Guide
Practical Application:
Example: A retail company integrates customer data from online purchases, in-store transactions, and customer service interactions to create a unified customer profile.
This unified data enables personalized marketing campaigns and improved customer service.
Reference: Salesforce Unified Customer Profile Case Studies


NEW QUESTION # 75
......


Salesforce Data-Con-101 Exam Syllabus Topics:

TopicDetails
Topic 1
  • Data Ingestion and Modeling: This domain addresses bringing data into Data Cloud and structuring it properly through transformation, ingestion from various sources, and data mapping. It emphasizes best practices for modeling data to support identity resolution and validating ingested data using available tools.
Topic 2
  • Data Cloud Setup and Administration: This domain focuses on configuring and managing Data Cloud environments through permissions, data streams, data bundles, and data spaces. It also covers administrative tools and techniques for diagnosing and exploring data using reports, dashboards, flows, APIs, and explorer tools.
Topic 3
  • Act on Data: This domain focuses on leveraging Data Cloud data for downstream actions through activations and data actions. It covers working with attributes, managing timing dependencies, troubleshooting activation issues like errors and rejected counts, and understanding requirements for triggering automated processes.

 

View All Data-Con-101 Actual Free Exam Questions Updated: https://www.prepawayete.com/Salesforce/Data-Con-101-practice-exam-dumps.html

Contact Us

If you have any question please leave me your email address, we will reply and send email to you in 12 hours.

Our Working Time: ( GMT 0:00-15:00 )
From Monday to Saturday

Support: Contact now