Which of the following is NOT a correct situation to use Agile?
A.
When the final product isn’t clearly defined
B.
When clients/stakeholders need to be able to change the scope
C.
When changes need to be implemented during the entire process
D.
None of the above
The Answer Is:
D
This question includes an explanation.
Explanation:
Agile methodology is widely adopted in data science projects because these projects often involve uncertain goals, exploratory analysis, and changing requirements. Agile thrives in environments where iteration, collaboration, and adaptability are necessary.
Option A: True for Agile. If the final product is unclear (common in data science), Agile works well because it allows incremental discovery and iterative prototyping.
Option B: True for Agile. Agile frameworks (Scrum, Kanban) emphasize flexibility, which means the scope can evolve as stakeholders learn more from data and models.
Option C: True for Agile. Agile welcomes continuous changes through iterative sprints and feedback loops. This adaptability is crucial in machine learning model development where data insights often reshape project direction.
Since all three situations are valid for Agile, the correct answer to “Which is NOT correct?” is None of the above (Option D).
[Reference:, DASCA Data Scientist Knowledge Framework (DSKF) – Business Applications of Data Science & Agile Methodologies in Data Projects., ]
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