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Salesforce Certified AI Associate Practice Test - Questions Answers, Page 8

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What are predictive analytics, machine learning, natural language processing (NLP), and computer vision?

A.
Different types of data models used in Salesforce
A.
Different types of data models used in Salesforce
Answers
B.
Different types of automation tools used in Salesforce
B.
Different types of automation tools used in Salesforce
Answers
C.
Different types of AI that can be applied in Salesforce
C.
Different types of AI that can be applied in Salesforce
Answers
Suggested answer: C

Explanation:

Predictive analytics, machine learning, natural language processing (NLP), and computer vision are all types of artificial intelligence technologies that can be applied in Salesforce to enhance various aspects of business operations and customer interactions. Predictive analytics uses historical data to make predictions about future events. Machine learning involves algorithms that can learn from and make decisions based on data. NLP is concerned with the interactions between computers and humans using natural language, and computer vision interprets and processes visual information from the world to make sense of it in the way humans do. Salesforce harnesses these AI technologies, particularly through its Einstein platform, to provide powerful tools that help businesses automate tasks, make better decisions, and offer more personalized services. For more on how Salesforce utilizes these AI technologies, you can explore the Einstein AI services documentation at Salesforce Einstein.

What does the term 'data completeness' refer to in the context of data quality?

A.
The degree to which all required data points are present in the dataset
A.
The degree to which all required data points are present in the dataset
Answers
B.
The process of aggregating multiple datasets from various databases
B.
The process of aggregating multiple datasets from various databases
Answers
C.
The ability to access data from multiple sources in real time
C.
The ability to access data from multiple sources in real time
Answers
Suggested answer: A

Explanation:

Data completeness is a measure of data quality that assesses whether all required data points are present in a dataset. It checks for missing values or gaps in data necessary for accurate analysis and decision-making. In the context of Salesforce, ensuring data completeness is crucial for the effectiveness of CRM operations, reporting, and AI-driven applications like Salesforce Einstein, which rely on complete data to function optimally. Salesforce provides various tools and features, such as data validation rules and batch data import processes, that help maintain data completeness across its platform. Detailed guidance on managing data quality in Salesforce can be found in the Salesforce Help documentation on data management at Salesforce Help Data Management.

Cloud Kicks plans to use automated chat as its primary support channel.

Which Einstein feature should they use?

A.
Discovery
A.
Discovery
Answers
B.
Bots
B.
Bots
Answers
C.
Next Best Action
C.
Next Best Action
Answers
Suggested answer: B

Explanation:

For Cloud Kicks, using automated chat as the primary support channel, the recommended Einstein feature is Bots. Einstein Bots are designed to automate customer interactions on common issues through chat and messaging platforms. They can handle routine requests, provide quick answers to frequently asked questions, and escalate more complex issues to human agents. Using Einstein Bots helps improve customer service efficiency and speed, leading to enhanced customer satisfaction. To learn more about setting up and optimizing Einstein Bots for a business, you can visit the Salesforce documentation on Einstein Bots at Salesforce Einstein Bots.

Cloud Kicks' latest email campaign is struggling to attract new customers.

How can AI increase the company's customer email engagement?

A.
Create personalized emails
A.
Create personalized emails
Answers
B.
Resend emails to inactive recipients
B.
Resend emails to inactive recipients
Answers
C.
Remove invalid email addresses
C.
Remove invalid email addresses
Answers
Suggested answer: A

Explanation:

AI can significantly increase customer email engagement by creating personalized emails. Salesforce Einstein AI enhances email marketing campaigns by analyzing customer data and past interactions to tailor the content, timing, and recommendations within emails. This personalization leads to higher engagement rates as emails resonate more closely with individual preferences and behaviors. Salesforce Marketing Cloud provides tools to leverage AI for crafting personalized email campaigns, ensuring that emails are relevant and appealing to recipients. For more insights into how AI can be used to enhance email marketing, see the Salesforce Marketing Cloud page at Salesforce Marketing Cloud Email Studio.

What is the significance of explainability of trusted AI systems?

A.
Increases the complexity of AI models
A.
Increases the complexity of AI models
Answers
B.
Enhances the security and accuracy of AI models
B.
Enhances the security and accuracy of AI models
Answers
C.
Describes how Al models make decisions
C.
Describes how Al models make decisions
Answers
Suggested answer: C

Explanation:

The significance of the explainability of trusted AI systems is that it describes how AI models make decisions. Explainability is crucial for building trust and accountability in AI systems, ensuring that users and stakeholders understand the decision-making processes and outcomes generated by AI. This is particularly important in scenarios where AI decisions impact personal or financial status, such as in credit scoring or healthcare diagnostics. Salesforce emphasizes the importance of explainable AI through its ethical AI practices, aiming to make AI systems more transparent and understandable. More details about Salesforce's approach to ethical and explainable AI can be found in Salesforce AI ethics resources at Salesforce AI Ethics.

What is the rile of data quality in achieving AI business Objectives?

A.
Data quality is unnecessary because AI can work with all data types.
A.
Data quality is unnecessary because AI can work with all data types.
Answers
B.
Data quality is required to create accurate AI data insights.
B.
Data quality is required to create accurate AI data insights.
Answers
C.
Data quality is important for maintain Ai data storage limits
C.
Data quality is important for maintain Ai data storage limits
Answers
Suggested answer: B

Explanation:

''Data quality is required to create accurate AI data insights. Data quality is the degree to which data is accurate, complete, consistent, relevant, and timely for the AI task. Data quality can affect the performance and reliability of AI systems, as they depend on the quality of the data they use to learn from and make predictions. Data quality can also affect the accuracy and validity of AI data insights, as they reflect the quality of the data used or generated by AI systems.''

What is a potential outcome of using poor-quality data in AI application?

A.
AI model training becomes slower and less efficient
A.
AI model training becomes slower and less efficient
Answers
B.
AI models may produce biased or erroneous results.
B.
AI models may produce biased or erroneous results.
Answers
C.
AI models become more interpretable
C.
AI models become more interpretable
Answers
Suggested answer: B

Explanation:

''A potential outcome of using poor-quality data in AI applications is that AI models may produce biased or erroneous results. Poor-quality data means that the data is inaccurate, incomplete, inconsistent, irrelevant, or outdated for the AI task. Poor-quality data can affect the performance and reliability of AI models, as they may not have enough or correct information to learn from or make accurate predictions. Poor-quality data can also introduce or exacerbate biases or errors in AI models, such as human bias, societal bias, confirmation bias, or overfitting or underfitting.''

The Cloud technical team is assessing the effectiveness of their AI development processes?

Which established Salesforce Ethical Maturity Model should the team use to guide the development of trusted AI solution?

A.
Ethical AI Prediction Maturity Model
A.
Ethical AI Prediction Maturity Model
Answers
B.
Ethical AI Process Maturity Model
B.
Ethical AI Process Maturity Model
Answers
C.
Ethical AI practice Maturity Model
C.
Ethical AI practice Maturity Model
Answers
Suggested answer: B

Explanation:

''The Ethical AI Process Maturity Model is the established Salesforce Ethical Maturity Model that the Cloud technical team should use to guide the development of trusted AI solutions. The Ethical AI Process Maturity Model is a framework that helps assess and improve the ethical and responsible practices and processes involved in developing and deploying AI systems. The Ethical AI Process Maturity Model consists of five levels of maturity: Ad Hoc, Aware, Defined, Managed, and Optimized. The Ethical AI Process Maturity Model can help guide the development of trusted AI solutions by providing a roadmap and best practices for achieving higher levels of ethical maturity.''

Which data does Salesforce automatically exclude from marketing Cloud Einstein engagement model training to mitigate bias and ethic...

A.
Geographic
A.
Geographic
Answers
B.
Geographic
B.
Geographic
Answers
C.
Cryptographic
C.
Cryptographic
Answers
Suggested answer: B

Explanation:

''Demographic data is the data that Salesforce automatically excludes from Marketing Cloud Einstein engagement model training to mitigate bias and ethical concerns. Demographic data is data that describes the characteristics of a population or a group of people, such as age, gender, race, ethnicity, income, education, or occupation. Demographic data can lead to bias if it is used to discriminate or treat people differently based on their identity or attributes. Demographic data can also reflect existing biases or stereotypes in society or culture, which can affect the fairness and ethics of AI systems. Salesforce excludes demographic data from Marketing Cloud Einstein engagement model training to mitigate bias and ethical concerns by ensuring that the models are based on behavioral data rather than personal data.''

How does a data quality assessment impact business outcome for companies using AI?

A.
Improves the speed of AI recommendations
A.
Improves the speed of AI recommendations
Answers
B.
Accelerates the delivery of new AI solutions
B.
Accelerates the delivery of new AI solutions
Answers
C.
Provides a benchmark for AI predictions
C.
Provides a benchmark for AI predictions
Answers
Suggested answer: C

Explanation:

''A data quality assessment impacts business outcomes for companies using AI by providing a benchmark for AI predictions. A data quality assessment is a process that measures and evaluates the quality of data for a specific purpose or task. A data quality assessment can help identify and address any issues or gaps in the data quality dimensions, such as accuracy, completeness, consistency, relevance, and timeliness. A data quality assessment can impact business outcomes for companies using AI by providing a benchmark for AI predictions, as it can help ensure that the predictions are based on high-quality data that reflects the true state or condition of the target population or domain.''

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