How does Agile methodology differ in its application in data projects compared to traditional software development projects?
- Agile is more iterative and adaptable, allowing for continuous feedback and adjustments based on evolving data requirements.
- Agile is only applicable to small-scale data projects, not suitable for large datasets.
- Agile places less emphasis on collaboration and communication, which is crucial in data projects.
- Agile strictly follows a fixed plan and timeline, making it less suitable for the dynamic nature of data projects.
Agile methodology in data projects is characterized by its adaptability and iterative nature, allowing for continuous adjustments based on evolving data requirements. This flexibility contrasts with the more rigid structure of traditional software development projects.
Loading...
Related Quiz
- In a healthcare setting, what performance metric would be most suitable for assessing patient care quality?
- Effective storytelling in data analysis is important because it:
- In ETL processes, what does the acronym ETL stand for?
- In graph theory, what algorithm is used to find the minimum spanning tree for a connected weighted graph?
- In a relational database, a ________ is a set of data values of a particular simple type, one for each row of the table.