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Salesforce Certified AI Associate Practice Test - Questions Answers

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What is a possible outcome of poor data quality?

A.
AI models maintain accuracy but have slower response times.
A.
AI models maintain accuracy but have slower response times.
Answers
B.
Biases in data can be inadvertently learned and amplified by AI systems.
B.
Biases in data can be inadvertently learned and amplified by AI systems.
Answers
C.
AI predictions become more focused and less robust.
C.
AI predictions become more focused and less robust.
Answers
Suggested answer: B

Explanation:

''A possible outcome of poor data quality is that biases in data can be inadvertently learned and amplified by AI systems. Poor data quality means that the data is inaccurate, incomplete, inconsistent, irrelevant, or outdated for the AI task.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 systems, as they may not have enough or correct information to learn from or make accurate predictions. Poor data quality can also introduce or exacerbate biases in data, such as human bias, societal bias, or confirmation bias, which can affect the fairness and ethics of AI systems.''

To avoid introducing unintended bias to an AI model, which type of data should be omitted?

A.
Transactional
A.
Transactional
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B.
Engagement
B.
Engagement
Answers
C.
Demographic
C.
Demographic
Answers
Suggested answer: C

Explanation:

''Demographic data should be omitted to avoid introducing unintended bias to an AI model. 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.''

What is an implication of user consent in regard to AI data privacy?

A.
AI ensures complete data privacy by automatically obtaining user consent.
A.
AI ensures complete data privacy by automatically obtaining user consent.
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B.
AI infringes on privacy when user consent is not obtained.
B.
AI infringes on privacy when user consent is not obtained.
Answers
C.
AI operates Independently of user privacy and consent.
C.
AI operates Independently of user privacy and consent.
Answers
Suggested answer: B

Explanation:

''AI infringes on privacy when user consent is not obtained. User consent is the permission or agreement given by a user to allow their personal data to be collected, used, shared, or stored by others. User consent is an important aspect of data privacy, which is the right of individuals to control how their personal data is handled by others. AI infringes on privacy when user consent is not obtained because it violates the user's rights and preferences regarding their personal data.''

How does data quality impact the trustworthiness of Al-driven decisions?

A.
The use of both low-quality and high-quality data can improve the accuracy and reliability of AI-driven decisions.
A.
The use of both low-quality and high-quality data can improve the accuracy and reliability of AI-driven decisions.
Answers
B.
High-quality data improves the reliability and credibility of Al-driven decisions, fostering trust among users.
B.
High-quality data improves the reliability and credibility of Al-driven decisions, fostering trust among users.
Answers
C.
Low-quality data reduces the risk of overfitting the model, improving the trustworthiness of the predictions.
C.
Low-quality data reduces the risk of overfitting the model, improving the trustworthiness of the predictions.
Answers
Suggested answer: B

Explanation:

''High-quality data improves the reliability and credibility of AI-driven decisions, fostering trust among users. High-quality data means that the data is accurate, complete, consistent, relevant, and timely for the AI task. High-quality data can improve the performance and reliability of AI systems, as they have enough and correct information to learn from and make accurate predictions. High-quality data can also improve the trustworthiness of AI-driven decisions, as users can have more confidence and satisfaction in using AI systems.''

Cloud Kicks learns of complaints from customers who are receiving too many sales calls and emails.

Which data quality dimension should be assessed to reduce these communication Inefficiencies?

A.
Duplication
A.
Duplication
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B.
Usage
B.
Usage
Answers
C.
Consent
C.
Consent
Answers
Suggested answer: A

Explanation:

''Duplication is the data quality dimension that should be assessed to reduce communication inefficiencies. Duplication means that the data contains multiple copies or instances of the same record or value. Duplication can cause confusion, errors, or waste in data analysis and processing. For example, duplication can lead to communication inefficiencies if customers receive multiple calls or emails from different sources for the same purpose.''

A developer is tasked with selecting a suitable dataset for training an AI model in Salesforce to accurately predict current customer behavior.

What Is a crucial factor that the developer should consider during selection?

A.
Number of variables ipn the dataset
A.
Number of variables ipn the dataset
Answers
B.
Size of the dataset
B.
Size of the dataset
Answers
C.
Age of the dataset
C.
Age of the dataset
Answers
Suggested answer: B

Explanation:

''The size of the dataset is a crucial factor that the developer should consider during selection. The size of the dataset refers to the amount or volume of data available for training an AI model. The size of the dataset can affect the feasibility and quality of the AI model, as well as the choice of AI techniques and tools. The size of the dataset should be large enough to provide sufficient information for the AI model to learn from and generalize well to new data.''

What is a benefit of a diverse, balanced, and large dataset?

A.
Training time
A.
Training time
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B.
Data privacy
B.
Data privacy
Answers
C.
Model accuracy
C.
Model accuracy
Answers
Suggested answer: C

Explanation:

''Model accuracy is a benefit of a diverse, balanced, and large dataset. A diverse dataset can capture a variety of features and patterns that are relevant for the AI task. A balanced dataset can avoid overfitting or underfitting the model to a specific subset of data. A large dataset can provide enough information for the model to learn from and generalize well to new data.''

What are the three commonly used examples of AI in CRM?

A.
Predictive scoring, reporting, Image classification
A.
Predictive scoring, reporting, Image classification
Answers
B.
Predictive scoring, forecasting, recommendations
B.
Predictive scoring, forecasting, recommendations
Answers
C.
Einstein Bots, face recognition, recommendations
C.
Einstein Bots, face recognition, recommendations
Answers
Suggested answer: B

Explanation:

''Predictive scoring, forecasting, and recommendations are three commonly used examples of AI in CRM. Predictive scoring can help prioritize leads, opportunities, and customers based on their likelihood to convert, churn, or buy. Forecasting can help predict future sales, revenue, or demand based on historical data and trends. Recommendations can help suggest the best products, services, or actions for each customer based on their preferences, behavior, and needs.''

Cloud Kicks wants to optimize its business operations by incorporating AI into its CRM.

What should the company do first to prepare its data for use with AI?

A.
Remove biased data.
A.
Remove biased data.
Answers
B.
Determine data availability.
B.
Determine data availability.
Answers
C.
Determine data outcomes.
C.
Determine data outcomes.
Answers
Suggested answer: B

Explanation:

Before using AI to optimize business operations, the company should first assess the availability and quality of its data. Data is the fuel for AI, and without sufficient and relevant data, AI cannot produce accurate and reliable results. Therefore, the company should identify what data it has, where it is stored, how it is accessed, and how it is maintained. This will help the company understand the feasibility and scope of its AI projects.

A healthcare company implements an algorithm to analyze patient data and assist in medical diagnosis.

Which primary role does data Quality play In this AI application?

A.
Enhanced accuracy and reliability of medical predictions and diagnoses
A.
Enhanced accuracy and reliability of medical predictions and diagnoses
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B.
Ensured compatibility of AI algorithms with the system's Infrastructure
B.
Ensured compatibility of AI algorithms with the system's Infrastructure
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C.
Reduced need for healthcare expertise in interpreting AI outouts
C.
Reduced need for healthcare expertise in interpreting AI outouts
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Suggested answer: A

Explanation:

''Data quality plays a crucial role in enhancing the accuracy and reliability of medical predictions and diagnoses. Poor data quality can lead to inaccurate or misleading results, which can have serious consequences for patients' health and well-being. Therefore, it is important to ensure that the data used for AI applications in healthcare is accurate, complete, consistent, and relevant.''

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