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Exam Databricks-Machine-Learning-Associate All Questions
Exam Databricks-Machine-Learning-Associate All Questions

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Databricks ML Data Scientist Databricks-Machine-Learning-Associate Question # 18 Topic 2 Discussion

Databricks-Machine-Learning-Associate Exam Topic 2 Question 18 Discussion:
Question #: 18
Topic #: 2

A data scientist learned during their training to always use 5-fold cross-validation in their model development workflow. A colleague suggests that there are cases where a train-validation split could be preferred over k-fold cross-validation when k > 2.

Which of the following describes a potential benefit of using a train-validation split over k-fold cross-validation in this scenario?


A.

A holdout set is not necessary when using a train-validation split


B.

Reproducibility is achievable when using a train-validation split


C.

Fewer hyperparameter values need to be tested when usinga train-validation split


D.

Bias is avoidable when using a train-validation split


E.

Fewer models need to be trained when using a train-validation split


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