Pass the PMI CPMAI CPMAI_v7 Questions and answers with CertsForce

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Questions # 1:

During which phase of an AI project should you consider Trustworthy AI considerations?

Options:

A.

Phase I: Business Understanding


B.

Phase II: Data Understanding


C.

Phase VI: Model Operationalization


D.

Every Phase of the AI project


Questions # 2:

Your organization has just rolled out a new image recognition system and is asking all employees to use it. It was trained using images from the ImageNet test set. After a few weeks, users are finding the results are not as expected and are asking for visibility into all the aspects of what went into building an AI system. What area of Trustworthy AI is being addressed here?

Options:

A.

Governed AI


B.

Transparent AI


C.

Explainable AI


D.

AI Systemic Transparency


E.

Responsible AI


Questions # 3:

You need to hire a data scientist to join your team. What skill sets should you be looking for when hiring and interviewing this person? (Select all that apply.)

Options:

A.

Prompt engineering skills


B.

Understanding of tools and technologies for manipulating, collecting, and preparing large data sets


C.

Critical thinking skills


D.

Understanding of algorithms


E.

Automation skills, especially around creating RPA bots


F.

Strong math skills, especially in calculus and statistics


Questions # 4:

You are leading a project to develop a new predictive maintenance solution. Together with your project team you determine your data needs, see if you have access to the data, and then begin working on the project.

Which phase best describes the work you are performing?

Options:

A.

Phase I


B.

Phase II


C.

Phase III


D.

Phase IV


E.

Phase V


F.

Phase VI


Questions # 5:

During CPMAI Phase IV: Model Development, which of the following is not done during this phase?

Options:

A.

Algorithm Selection


B.

Model training


C.

Model tuning


D.

Model Selection


Questions # 6:

The growth of Big Data has led to a desire to be able to do more to process and extract more value from Big Data. Simply storing data and providing analytics is no longer enough anymore to remain competitive.

To keep your organization competitive, you need to:

Options:

A.

Make sure the technical team has deep understanding of big data and how best to extract value from big data to unleash it for competitive advantage.


B.

Make sure senior management has deep understanding of big data and how best to extract value from big data to unleash it for competitive advantage.


C.

Make sure all senior leadership is data literate, understands the V’s of big data, data’s connections to your specific team, and how to extract value from big data to unleash it for competitive advantage.


D.

Make sure everyone on the team has an understanding of data, its connections to the organization, and how to extract value from big data to unleash it for competitive advantage.


Questions # 7:

Senior management has tasked your group to analyze a data set to uncover insights into the data. What is the best approach to use to do this?

Options:

A.

Data Governance


B.

Data Integration


C.

Data preparation


D.

Data Mining or Data Analytics


Questions # 8:

You have an Anomaly Detection project you’re working on and you need a simple approach of clustering data into classified groups. Which algorithm is the best choice given this situation?

Options:

A.

K-Means Clustering


B.

Neural Network


C.

Decision Tree


D.

Hidden Markov Model


Questions # 9:

You’re working on a project and are working with personally identifiable information (PII). What’s the best approach to take when it comes to collecting and using this data?

Options:

A.

Use noise reduction techniques to reduce all forms of data noise


B.

Implement a new data privacy policy


C.

Store the data in a data warehouse


D.

If this data is not needed, use Data anonymization techniques to remove it before feeding to models


Questions # 10:

Major factors for the project you are currently working on are around the training time, cost, and complexity of training your models. Which algorithm is not the best choice given these constraints?

Options:

A.

Support Vector Machines (SVM)


B.

Neural Networks


C.

Naive Bayes


D.

Gaussian Mixture


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