PMI-CP/CPMAI emphasizes that scoping AI projects is fundamentally aboutfocus and feasibility: selecting a small number of high-value, achievable objectives rather than attempting to cover every conceivable pattern or use case at once. When a project manager has identified multiple cognitive patterns (for example, anomaly detection, predictive scoring, and document understanding) for fraud detection, the next discipline step isprioritization.
The framework recommends ranking candidate patterns based on criteria such as business impact (fraud loss reduction, improved detection rate, reduced false positives), implementation complexity (data availability, technical difficulty, integration effort), risk, and time-to-value. By doing this, the team can select one or two patterns that deliver strong benefits quickly and can be iterated on, while deferring or discarding lower-value or high-complexity ideas.
Attempting to implement all identified patterns in parallel expands scope, increases coordination overhead, and raises delivery risk; rotating through them without prioritization delays concrete value. Comparing against noncognitive requirements helps with design but doesn’t itself narrow the scope. The method that explicitlynarrowsscope in line with CPMAI guidance isprioritizing patterns based on their potential impact and complexity, and choosing a focused subset to implement first.