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[General] PMI-CPMAI Free Sample & PMI-CPMAI Online Bootcamps

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【General】 PMI-CPMAI Free Sample & PMI-CPMAI Online Bootcamps

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PMI PMI-CPMAI Exam Syllabus Topics:
TopicDetails
Topic 1
  • Iterating Development and Delivery of AI Projects (Phase IV): This section of the exam measures the skills of an AI Developer and covers the practical stages of model creation, training, and refinement. It introduces how iterative development improves accuracy, whether the project involves machine learning models or generative AI solutions. The section ensures that candidates understand how to experiment, validate results, and move models toward production readiness with continuous feedback loops.
Topic 2
  • Matching AI with Business Needs (Phase I): This section of the exam measures the skills of a Business Analyst and covers how to evaluate whether AI is the right fit for a specific organizational problem. It focuses on identifying real business needs, checking feasibility, estimating return on investment, and defining a scope that avoids unrealistic expectations. The section ensures that learners can translate business objectives into AI project goals that are clear, achievable, and supported by measurable outcomes.
Topic 3
  • Operationalizing AI (Phase VI): This section of the exam measures the skills of an AI Operations Specialist and covers how to integrate AI systems into real production environments. It highlights the importance of governance, oversight, and the continuous improvement cycle that keeps AI systems stable and effective over time. The section prepares learners to manage long term AI operation while supporting responsible adoption across the organization.
Topic 4
  • Identifying Data Needs for AI Projects (Phase II): This section of the exam measures the skills of a Data Analyst and covers how to determine what data an AI project requires before development begins. It explains the importance of selecting suitable data sources, ensuring compliance with policy requirements, and building the technical foundations needed to store and manage data responsibly. The section prepares candidates to support early data planning so that later AI development is consistent and reliable.
Topic 5
  • Managing Data Preparation Needs for AI Projects (Phase III): This section of the exam measures the skills of a Data Engineer and covers the steps involved in preparing raw data for use in AI models. It outlines the need for quality validation, enrichment techniques, and compliance safeguards to ensure trustworthy inputs. The section reinforces how prepared data contributes to better model performance and stronger project outcomes.

PMI Certified Professional in Managing AI Sample Questions (Q93-Q98):NEW QUESTION # 93
A government agency is planning to implement a new AI-driven public service system. The project manager needs to develop a business case to secure funding. The agency's goals are to improve service delivery and reduce response times.
Which method will provide the results that meet the project manager's objective?
  • A. Creating a detailed ROI projection
  • B. Conducting a pilot program
  • C. Analyzing case studies from other agencies
  • D. Holding stakeholder workshops
Answer: B
Explanation:
Within the PMI-CPMAI guidance, developing a strong business case for AI requires evidence-based justification that the proposed solution will deliver measurable value, not just theoretical benefits. For a government agency whose stated goals are improving service delivery and reducing response times, the most convincing way to support a funding request is to demonstrate these improvements in a realistic environment. A pilot program or proof-of-concept allows the project team to implement the AI-driven public service system on a limited scale, collect operational data, and compare key performance indicators (KPIs) such as response time, throughput, user satisfaction, and error rates before and after AI adoption.
PMI-CPMAI emphasizes that pilots help validate assumptions about feasibility, scalability, and stakeholder acceptance while revealing hidden risks and integration issues early. They provide concrete, context-specific metrics that can be used directly in the business case, strengthening arguments around public value, efficiency gains, and cost-effectiveness. By contrast, case studies and workshops are indirect and qualitative, and ROI projections alone remain hypothetical without empirical evidence. Therefore, conducting a pilot program best meets the project manager's objective of producing robust, measurable results that support a compelling AI business case for funding approval.

NEW QUESTION # 94
An AI project team with a manufacturing company needs to ensure data integrity before moving to model development. They discovered some data inconsistencies due to manual entry errors.
What is an effective method that helps to ensure data integrity?
  • A. Implementing real-time data validation rules
  • B. Conducting regular audits of manually entered data
  • C. Using machine learning algorithms to detect and correct errors
  • D. Automating data entry processes
Answer: A,D
Explanation:
In AI data management, PMI-CPMAI highlights data integrity as the property that data remains accurate, consistent, and reliable over its lifecycle. When the team discovers inconsistencies due to manual entry errors, the most direct and effective control is to prevent bad data at the point of capture. This is achieved by implementing real-time data validation rules-for example, enforcing allowed ranges, formats, mandatory fields, cross-field consistency checks, and lookup constraints before a record is accepted.
PMI's AI data practices emphasize that "controls at data entry" are preferable to downstream correction because they reduce rework, lower the risk of propagating errors into models, and create cleaner training datasets from the outset. Although automating data entry (option B) can also reduce manual errors, it does not, by itself, guarantee integrity if upstream systems or processes are flawed. Regular audits (option C) are useful as a monitoring mechanism, but they are periodic and reactive rather than preventive. Using ML algorithms to detect and correct errors (option D) adds complexity and itself relies on having sufficiently good data.
Thus, in alignment with PMI-style AI governance and quality management, real-time data validation rules are the most effective method named here to ensure data integrity before moving to model development.

NEW QUESTION # 95
A project involves integrating AI systems across multiple departments, each with different access levels. This complex AI project has presented the project manager with significant issues related to data misuse. The project team has been focused on their ethics guidelines but continues to experience data misuse. The project involves different regional data protection regulations which further increases the complexity.
What issue will cause these challenges to occur?
  • A. Overlooking algorithmic bias and fairness concerns
  • B. Limited awareness of explainability requirements
  • C. Lack of a detailed plan addressing a governance strategy
  • D. Failure to implement robust encryption for data security
Answer: C
Explanation:
In PMI-CPMAI, persistent issues like data misuse across departments and jurisdictions point directly to weaknesses in AI and data governance, not just ethics awareness. While ethics guidelines are important, they are only one element of a complete governance framework. PMI's AI governance view stresses the need for a detailed, actionable governance strategy that defines roles (owners, stewards, custodians), access controls, data classification, data use policies, approval workflows, and compliance processes that consider regional regulations (e.g., differing data protection laws).
Without such a governance plan, teams may unintentionally share or use data in ways that conflict with internal policies or external regulations, even if they know and care about ethics. Algorithmic bias (option C) and explainability (option A) are important but do not directly address cross-department access management and regional regulatory differences. Failure to implement robust encryption (option D) concerns technical security of data in transit/at rest; it does not, by itself, prevent misuse by authorized but improperly governed users.
Therefore, the root issue causing these challenges is the lack of a detailed plan addressing a governance strategy (option B), which should integrate ethics, regulatory requirements, and operational controls for data use across departments and regions.

NEW QUESTION # 96
A financial services firm is implementing AI models to automate fraud detection. The project manager needs to ensure the models comply with regulatory standards and ethical guidelines while maintaining performance and accuracy.
Which action should the project manager take?
  • A. Assume compliance without formal verification
  • B. Implement bias detection and mitigation strategies
  • C. Use any available data without checking for consent
  • D. Focus solely on model accuracy, ignoring compliance
Answer: B
Explanation:
PMI-CPMAI places responsible AI, regulatory compliance, and ethical alignment on equal footing with performance and accuracy, especially in highly regulated sectors like financial services. Fraud detection models often operate on sensitive financial and personal data and can materially impact customers if they are biased or systematically unfair.
The PMI-CPMAI guidance on risk, ethics, and governance emphasizes that project managers must ensure AI systems are evaluated not only on predictive quality but also on fairness, bias, transparency, and explainability. A core expectation is that teams implement bias detection and mitigation strategies across the AI lifecycle: examining training data for representational bias, testing model outputs for disparate impact across customer segments, and applying corrective techniques such as rebalancing, re-weighting, or constraint-based training.
Focusing solely on accuracy (option A) contradicts responsible AI principles and can institutionalize harmful patterns. Using any available data without consent (option C) violates data protection and ethical standards. Assuming compliance without formal verification (option D) fails governance and auditability requirements. By contrast, implementing bias detection and mitigation strategies directly addresses regulatory and ethical concerns, while also supporting robust, trustworthy performance. It operationalizes responsible AI practices in line with PMI-CPMAI expectations, ensuring the fraud models are both effective and compliant.

NEW QUESTION # 97
A healthcare provider had physicians review a potential diagnostic AI application. During their final review, the project team, along with the physicians, discovered that the AI model exhibits a higher than acceptable false-positive rate.
Before making the go/no-go AI decision, which next step should be performed by the team?
  • A. Focus on the model's ethical implications
  • B. Adjust the hyperparameters for better generalization
  • C. Increase the training data volume
  • D. Reevaluate the business objectives and outcomes
Answer: D
Explanation:
In PMI's AI project management view, model evaluation must always be tied back to business and domain objectives, especially in high-risk domains like healthcare. A high false-positive rate in a diagnostic system directly affects clinical workflow, patient anxiety, and cost. Before deciding to proceed or invest in further model tuning, PMI recommends confirming whether the observed performance actually meets or fails the agreed success criteria and risk thresholds.
The PMI-CPMAI approach to AI risk and value alignment stresses that teams should "evaluate model performance in the context of stakeholder needs, risk tolerance, and expected outcomes, revisiting objectives and requirements when discrepancies emerge" (paraphrased from PMI AI risk and value guidance). In this scenario, the team and physicians have identified that the false-positive rate is higher than acceptable. The next step, before a go/no-go decision, is to reassess the business and clinical objectives, trade-offs, and acceptable error rates: e.g., whether increased sensitivity justifies more false positives, or whether the system must be redesigned or repositioned (decision support vs. primary screener).
Technical options like hyperparameter tuning or more data may eventually be used, but they come after confirming what level of performance and error trade-off is required. Therefore, the appropriate next step is to reevaluate the business objectives and outcomes.

NEW QUESTION # 98
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