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PMI Certified Professional in Managing AI Sample Questions (Q87-Q92):

NEW QUESTION # 87
A project team is using a prompt engineering approach to improve AI/machine learning (ML) model outputs.
They started with broad questions and then narrowed down the specific elements. If the team had provided insufficient context, what would be the result?

Answer: D

Explanation:
PMI guidance on prompts and prompt engineering states that prompts "supply the system with context and guidance as well as constraints," and that the value of a GenAI system "can only be realized through the instructions provided to it." PMI further explains that while an AI system can respond to very short inputs,
"the less specific a prompt, the more likely the results will be vague or unhelpful," explicitly linking insufficient specificity/context to degraded usefulness. In PMI's recommended "diverge and converge" prompt approach, teams begin broad, then progressively refine, adding details such as industry, region, project type, intended use, and examples-because "the granularity of the input will be directly proportional to the utility of the output received." Therefore, if the team provides insufficient context, the model must "guess" what is intended, which most directly manifests as answers that are not aligned to the actual task needs (i.e., lacking relevance), rather than being more accurate or more efficient.


NEW QUESTION # 88
A government agency is operationalizing a new AI tool for predictive policing. The project manager needs to identify data subject matter experts (SMEs) to ensure data quality and relevance. The project team has access to historical crime data, socioeconomic data, and real-time incident reports.
Which method will help in determining the data SMEs for this project?

Answer: C

Explanation:
In CPMAI's Data Understanding phase, the methodology emphasizes identifying data sources, ownership, quality, and the people who truly understand those data assets. Data subject matter experts (SMEs) are not defined purely by generic analytics skills or by having worked on AI before; they are defined by deep familiarity with the specific datasets and domain context that drive the AI solution.
For predictive policing, the key datasets are historical crime data, socioeconomic data, and real-time incident reports. CPMAI guidance stresses that teams must understand how these datasets are generated, what biases they may contain, their limitations, and how they relate to the real-world processes they represent. Therefore, the best way to identify appropriate data SMEs is to evaluate who on the team (or in the wider organization) already has strong familiarity with these concrete data sources, their structures, and usage history.
Options focusing on prior AI tools, workshops on a single data stream, or generic analytics certifications do not guarantee deep, source-specific knowledge. Aligning with CPMAI's data-centric approach, evaluating the team's familiarity with historical crime and socioeconomic data is the most appropriate method, making option C correct.


NEW QUESTION # 89
A project manager needs to address potential ethical concerns related to data misuse within a new AI system.
The AI system will handle large volumes of personal data. In addition, the project manager needs to ensure the data is used responsibly.
Which action should the project manager take?

Answer: B

Explanation:
The best answer is B. Create a detailed data usage policy. In PMI's CPMAI framework, trustworthy AI requires more than technical security controls. It also requires clear rules for how data may be collected, accessed, shared, retained, and used responsibly, especially when personal data is involved. PMI's official exam content outline includes establishing governance protocols for personally identifiable information, monitoring regulatory and policy compliance, coordinating with legal and compliance teams, and ensuring privacy and secure handling across the AI lifecycle.
A detailed data usage policy directly addresses the core issue in the question: ethical concerns about misuse. It defines acceptable and unacceptable uses of personal data, clarifies accountability, and supports responsible behavior by everyone involved in the AI system. PMI's trustworthy AI guidance also emphasizes governance, responsibility, transparency, and ethics as foundational elements for building AI systems people can trust.
Option A is important, but access controls mainly restrict who can reach the data; they do not fully define responsible use. Option C is useful but too broad and ongoing rather than the most direct action. Option D improves visibility, but reporting alone does not prevent misuse. A clear data usage policy is the strongest first control for ethical and responsible data use.


NEW QUESTION # 90
A telecommunications company is preparing data for an AI tool. The project team needs to ensure the data is in the right shape and format for model training. In addition, they are working with a mix of structured and unstructured data.
Which method will address the project team's objectives?

Answer: A

Explanation:
According to PMI-CPMAI, preparing data for AI models involves ensuring that data from multiple sources and of multiple types is brought into a consistent, machine-readable, and model-ready form. The guidance highlights that AI projects frequently work with both structured (tables, records) and unstructured data (text, logs, documents) and that "standardization and transformation pipelines are required so that downstream models receive inputs with well-defined schemas, formats, and encodings." Employing a data transformation tool to standardize formats supports exactly this objective. Such tools can normalize date/time formats, unify encoding, align units and categorical labels, and transform unstructured content into structured features or embeddings, all within controlled and repeatable pipelines. PMI emphasizes establishing these pipelines as part of the data readiness and MLOps practices so that the training and inference stages both see data in the same standardized shape. While converting unstructured data into structured form is often part of this process, the broader requirement is end-to-end standardization rather than one-off conversions. A transformation tool also supports governance and traceability by documenting how raw data is transformed. For these reasons, the method that best addresses the project team's stated objective-ensuring that data is in the right shape and format for model training across mixed data types-is employing a data transformation tool to standardize formats.


NEW QUESTION # 91
A hospital wants to develop a medical records system with the primary goal of minimizing or eliminating paper records. They have identified where the cognitive AI solution will be applied. In addition, business objectives have been quantified and key performance indicators (KPIs) have been determined.
What else needs to be done to progress to the next Cognitive Project Management for AI (CPMAI) phase?

Answer: C

Explanation:
CPMAI's Phase I - Business Understanding focuses on clearly defining the business problem, aligning AI efforts with organizational goals, and establishing measurable success criteria including ROI expectations.
PMI's own overview of CPMAI notes that in this phase, teams should "set success criteria" and define both KPIs and ROI expectations so that everyone understands what success and failure look like before moving on Other CPMAI-oriented resources describe Phase I artefacts such as a problem statement, AI pattern fit, stakeholder analysis, and a preliminary ROI sheet that quantifies expected benefits and costs. In the scenario, the hospital has already identified where the cognitive solution will be applied, quantified business objectives, and defined KPIs. What is still missing from the core Phase I deliverables is a clear view of the project's expected ROI, linking reduced paper records and process improvements to financial and operational value.
Beginning prototype development (B) belongs to later modeling phases, exploring external data sources (D) is part of Data Understanding, and interdepartmental strategies (C) are broader organizational actions rather than a specific Phase I gating item. To progress to the next CPMAI phase in a way that matches the methodology, the team must determine the project ROI, making option A the correct answer.


NEW QUESTION # 92
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