ExamGecko
Home Home / Salesforce / Certified AI Associate

Salesforce Certified AI Associate Practice Test - Questions Answers, Page 9

Question list
Search
Search

What is a Key consideration regarding data quality in AI implementation?

A.
Techniques from customizing AI features in Salesforce
A.
Techniques from customizing AI features in Salesforce
Answers
B.
Data's role in training and fine-tuning Salesforce AI models
B.
Data's role in training and fine-tuning Salesforce AI models
Answers
C.
Integration process of AI models with Salesforce workflows
C.
Integration process of AI models with Salesforce workflows
Answers
Suggested answer: B

Explanation:

''Data's role in training and fine-tuning Salesforce AI models is a key consideration regarding data quality in AI implementation. 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's role in training and fine-tuning Salesforce AI models means understanding how data is used to build, train, test, and improve AI models in Salesforce, such as Einstein Prediction Builder or Einstein Discovery.''

Cloud Kicks wants to use AI to enhance its sales processes and customer support.

Which capacity should they use?

A.
Dashboard of Current Leads and Cases
A.
Dashboard of Current Leads and Cases
Answers
B.
Sales path and Automaton Case Escalations
B.
Sales path and Automaton Case Escalations
Answers
C.
Einstein Lead Scoring and Case Classification
C.
Einstein Lead Scoring and Case Classification
Answers
Suggested answer: C

Explanation:

''Einstein Lead Scoring and Case Classification are the capabilities that Cloud Kicks should use to enhance its sales processes and customer support. Einstein Lead Scoring and Case Classification are features that use AI to optimize sales and service processes by providing insights and recommendations based on data. Einstein Lead Scoring can help prioritize leads based on their likelihood to convert, while Einstein Case Classification can help categorize and route cases based on their attributes.''

Which statement exemplifies Salesforces honesty guideline when training AI models?

A.
Minimize the AI models carbon footprint and environment impact during training.
A.
Minimize the AI models carbon footprint and environment impact during training.
Answers
B.
Ensure appropriate consent and transparency when using AI-generated responses.
B.
Ensure appropriate consent and transparency when using AI-generated responses.
Answers
C.
Control bias, toxicity, and harmful content with embedded guardrails and guidance.
C.
Control bias, toxicity, and harmful content with embedded guardrails and guidance.
Answers
Suggested answer: B

Explanation:

''Ensuring appropriate consent and transparency when using AI-generated responses is a statement that exemplifies Salesforce's honesty guideline when training AI models. Salesforce's honesty guideline is one of the Trusted AI Principles that states that AI systems should be designed and developed with respect for honesty and integrity in how they work and what they produce. Ensuring appropriate consent and transparency means respecting and honoring the choices and preferences of users regarding how their data is used or generated by AI systems. Ensuring appropriate consent and transparency also means providing clear and accurate information and documentation about the AI systems and their outputs.''

What Is a benefit of data quality and transparency as it pertains to bias in generated AI?

A.
Chances of bIas and mitigated
A.
Chances of bIas and mitigated
Answers
B.
Chances of bias are aggravated
B.
Chances of bias are aggravated
Answers
C.
Chances of bias are remove
C.
Chances of bias are remove
Answers
Suggested answer: A

Explanation:

A benefit of data quality and transparency as it pertains to bias in generated AI is that the chances of bias are mitigated. High data quality ensures that AI models are trained on accurate and representative data, reducing the risk of biased outcomes. Transparency in AI processes helps stakeholders understand how decisions are made, allowing for the identification and correction of potential biases. Together, these practices contribute to the development of fairer and more accountable AI systems. Salesforce highlights the importance of these principles in its AI practices, particularly through its ethical AI framework, which advocates for fairness and accountability. More on Salesforce's commitment to promoting unbiased AI can be found in their AI ethics guidelines at Salesforce AI Ethics.

A business analyst (BA) wants to improve business by enhancing their sales processes and customer..

Which AI application should the BA use to meet their needs?

A.
Sales data cleansing and customer support data governance
A.
Sales data cleansing and customer support data governance
Answers
B.
Machine learning models and chatbot predictions
B.
Machine learning models and chatbot predictions
Answers
C.
Lead scoring, opportunity forecasting, and case classification
C.
Lead scoring, opportunity forecasting, and case classification
Answers
Suggested answer: C

Explanation:

''Lead scoring, opportunity forecasting, and case classification are AI applications that can help a business analyst improve their sales processes and customer support. Lead scoring can help prioritize leads based on their likelihood to convert, opportunity forecasting can help predict future sales or revenue based on historical data and trends, and case classification can help categorize and route cases based on their attributes.''

Cloud Kicks uses Einstein to generate predictions out is not seeing accurate results?

What to a potential mason for this?

A.
Poor data quality
A.
Poor data quality
Answers
B.
The wrong product
B.
The wrong product
Answers
C.
Too much data
C.
Too much data
Answers
Suggested answer: A

Explanation:

''Poor data quality is a potential reason for not seeing accurate results from an AI model. Poor data quality means that the data is inaccurate, incomplete, inconsistent, irrelevant, or outdated for the AI task. Poor data quality 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.''

What is a key challenge of human AI collaboration in decision-making?

A.
Leads to move informed and balanced decision-making
A.
Leads to move informed and balanced decision-making
Answers
B.
Creates a reliance on AI, potentially leading to less critical thinking and oversight
B.
Creates a reliance on AI, potentially leading to less critical thinking and oversight
Answers
C.
Reduce the need for human involvement in decision-making processes
C.
Reduce the need for human involvement in decision-making processes
Answers
Suggested answer: B

Explanation:

''A key challenge of human-AI collaboration in decision-making is that it creates a reliance on AI, potentially leading to less critical thinking and oversight. Human-AI collaboration is a process that involves humans and AI systems working together to achieve a common goal or task. Human-AI collaboration can have many benefits, such as leveraging the strengths and complementing the weaknesses of both humans and AI systems. However, human-AI collaboration can also pose some challenges, such as creating a reliance on AI, potentially leading to less critical thinking and oversight. For example, human-AI collaboration can create a reliance on AI if humans blindly trust or follow the AI recommendations without questioning or verifying their validity or rationale.''

A system admin recognizes the need to put a data management strategy in place.

What is a key component of data management strategy?

A.
Naming Convention
A.
Naming Convention
Answers
B.
Data Backup
B.
Data Backup
Answers
C.
Color Coding
C.
Color Coding
Answers
Suggested answer: B

Explanation:

Data Backup is a key component of a data management strategy. A data backup is a process of creating and storing copies of data in a separate location or device to prevent data loss or damage in case of a disaster, accident, or malicious attack. A data backup can help ensure data availability, reliability, and security by allowing data to be restored or recovered in the event of a data breach, corruption, or deletion. A data management strategy should include a data backup plan that defines the frequency, scope, method, and location of data backups, as well as the roles and responsibilities of the data backup team.

What is a societal implication of excluding ethics in AI development?

A.

Faster and cheaper development

A.

Faster and cheaper development

Answers
B.

More innovation and creativity

B.

More innovation and creativity

Answers
C.

Harm to marginalized communities

C.

Harm to marginalized communities

Answers
Suggested answer: C

Explanation:

Excluding ethics in AI development can lead to societal implications such as harm to marginalized communities. When ethical considerations are not integrated into AI development, the resulting technologies may perpetuate or amplify biases, leading to unfair treatment or discrimination against certain groups. This can reinforce existing social inequalities and prevent these communities from benefiting equally from the advancements in AI technology. Salesforce is committed to responsible AI development and emphasizes the importance of ethical considerations in their development practices to prevent such outcomes. Details on Salesforce's approach to ethical AI and its importance can be found at Salesforce Ethical AI.

Cloud Kicks wants to evaluate the quality of its sales data.

Which first step should they take for the data quality assessment?

A.

Plan and align territories,

A.

Plan and align territories,

Answers
B.

Run a new report or dashboard.

B.

Run a new report or dashboard.

Answers
C.

Identify business objectives.

C.

Identify business objectives.

Answers
Suggested answer: C

Explanation:

The first step Cloud Kicks should take for data quality assessment is toidentify business objectives.This is crucial because understanding how the company uses customer data to support its business objectives will guide the assessment process1. By identifying the business objectives, Cloud Kicks can determine what customer data is required to support those objectives and how that data is being used. This foundational step is essential before moving on to other aspects of data quality assessment, such as running reports or planning territories.It aligns the data quality initiatives with the company's goals and ensures that the assessment is focused on areas that will drive business value

Total 102 questions
Go to page: of 11