100% PASS QUIZ 2025 VALID SALESFORCE LATEST DATA-CLOUD-CONSULTANT TEST PRACTICE

100% Pass Quiz 2025 Valid Salesforce Latest Data-Cloud-Consultant Test Practice

100% Pass Quiz 2025 Valid Salesforce Latest Data-Cloud-Consultant Test Practice

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Salesforce Data-Cloud-Consultant Exam Syllabus Topics:

TopicDetails
Topic 1
  • Data Cloud Setup and Administration: This topic includes applying Data Cloud permissions, permission sets, org-wide settings. It describes and configures data stream types, and data bundles. Moreover, it discusses use cases for data spaces, creating data spaces, managing and administering Data Cloud using reports, dashboards, flows, packaging, data kits, diagnosing and exploring data using Data Explorer, Profile Explorer, and APIs.
Topic 2
  • Segmentation and Insights: This topic defines basic concepts of segmentation and use cases, identifies scenarios for analyzing segment membership, configuring, refining, and maintaining segments within Data Cloud, and differentiating between calculated and streaming insights.
Topic 3
  • Identity Resolution: It describes matching and how its rule sets are applied. Furthermore, it discusses reconciling data and its rule sets, the results of identity resolution, and use cases.
Topic 4
  • Data Cloud Overview: This topic covers Data Cloud's function, key terminology, business value, typical use cases, the Data Cloud lifecycle, dependencies, and principles of data ethics. These sub-topics provide an overview of Data Cloud's capabilities and applications.
Topic 5
  • Act on Data: This topic defines activations and their basic use cases, using attributes and related attributes, identifying and analyzing timing dependencies affecting the Data Cloud lifecycle. Additionally it focuses on troubleshooting common problems with activations, and using data actions, including their requirements and intended use cases.

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Salesforce Certified Data Cloud Consultant Sample Questions (Q55-Q60):

NEW QUESTION # 55
A global fashion retailer operates online sales platforms across AMFR, FMFA, and APAC. the data formats for customer, order, and product Information vary by region, and compliance regulations require data to remain unchanged in the original data sources They also require a unified view of customer profiles for real-time personalization and analytics.
Given these requirement, which transformation approach should the company implement to standardise and cleanse incoming data streams?

  • A. Transform data before ingesting into Data Cloud.
  • B. Implement streaming data transformations.
  • C. Implement batch data transformations.
  • D. Use Apex to transform and cleanse data.

Answer: C

Explanation:
Given the requirements to standardize and cleanse incoming data streams while keeping the original data unchanged in compliance with regional regulations, the best approach is to implement batch data transformations . Here's why:
Understanding the Requirements
The global fashion retailer operates across multiple regions (AMER, EMEA, APAC), each with varying data formats for customer, order, and product information.
Compliance regulations require the original data to remain unchanged in the source systems.
The company needs a unified view of customer profiles for real-time personalization and analytics.
Why Batch Data Transformations?
Batch Transformations for Standardization :
Batch data transformations allow you to process large volumes of data at scheduled intervals.
They can standardize and cleanse data (e.g., converting different date formats, normalizing product names) without altering the original data in the source systems.
Compliance with Regulations :
Since the original data remains unchanged in the source systems, batch transformations comply with regional regulations.
The transformed data is stored in a separate layer (e.g., a new Data Lake Object or Unified Profile) for downstream use.
Unified Customer Profiles :
After transformation, the cleansed and standardized data can be used to create a unified view of customer profiles in Salesforce Data Cloud.
This enables real-time personalization and analytics across regions.
Steps to Implement This Solution
Step 1: Identify Transformation Needs
Analyze the differences in data formats across regions (e.g., date formats, currency, product IDs).
Define the rules for standardization and cleansing (e.g., convert all dates to ISO format, normalize product names).
Step 2: Create Batch Transformations
Use Data Cloud's Batch Transform feature to apply the defined rules to incoming data streams.
Schedule the transformations to run at regular intervals (e.g., daily or hourly).
Step 3: Store Transformed Data Separately
Store the transformed data in a new Data Lake Object (DLO) or Unified Profile.
Ensure the original data remains untouched in the source systems.
Step 4: Enable Unified Profiles
Use the transformed data to create a unified view of customer profiles in Salesforce Data Cloud.
Leverage this unified view for real-time personalization and analytics.
Why Not Other Options?
A . Implement streaming data transformations :
Streaming transformations are designed for real-time processing but may not be suitable for large-scale standardization and cleansing tasks. Additionally, they might not align with compliance requirements to keep the original data unchanged.
C . Transform data before ingesting into Data Cloud :
Transforming data before ingestion would require modifying the original data in the source systems, violating compliance regulations.
D . Use Apex to transform and cleanse data :
Using Apex is overly complex and resource-intensive for this use case. Batch transformations are a more efficient and scalable solution.
Conclusion
By implementing batch data transformations , the global fashion retailer can standardize and cleanse its data while complying with regional regulations and enabling a unified view of customer profiles for real-time personalization and analytics.


NEW QUESTION # 56
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. Last Modified Date
  • B. Escalation Date
  • C. Creation 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 # 57
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. Existing dimensions can be removed.
  • B. Mew measures can be added.
  • C. New dimensions can be added.
  • D. Existing measures can be removed.

Answer: A

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. Reference: Calculated Insights, Calculated Insights in a Data Space.


NEW QUESTION # 58
How does identity resolution select attributes for unified individuals when there Is conflicting information in the data model?

  • A. Leverages reconciliation rules
  • B. Creates additional contact points
  • C. Leverages match rules
  • D. Creates additional rulesets

Answer: A

Explanation:
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. References: Identity Resolution, Reconciliation Rules, Salesforce Data Cloud Exam Questions


NEW QUESTION # 59
Cumulus Financial uses Data Cloud to segment banking customers and activate them for direct mail via a Cloud File Storage activation. The company also wants to analyze individuals who have been in the segment within the last 2 years.
Which Data Cloud component allows for this?

  • A. Segment membership data model object
  • B. Nested segments
  • C. Segment exclusion
  • D. Calculated insights

Answer: A

Explanation:
Data Cloud allows customers to analyze the segment membership history of individuals using the Segment Membership data model object. This object stores information about when an individual joined or left a segment, and can be used to create reports and dashboards to track segment performance over time. Cumulus Financial can use this object to filter individuals who have been in the segment within the last 2 years and compare them with other metrics.
The other options are not Data Cloud components that allow for this analysis. Segment exclusion is a feature that allows customers to remove individuals from a segment based on another segment. Nested segments are segments that are created from other segments using logical operators. Calculated insights are derived attributes that are created from existing data using formulas.
Reference:
Segment Membership Data Model Object
Data Cloud Reports and Dashboards
Create a Segment in Data Cloud


NEW QUESTION # 60
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