Practice Databricks Databricks-Machine-Learning-Professional Exam Questions
Page: 1/12 Total 60 Questions
Question No 1
Which of the following describes concept drift?
Question No 2
A machine learning engineer is monitoring categorical input variables for a production machine
learning application. The engineer believes that missing values are becoming more prevalent in more
recent data for a particular value in one of the categorical input variables.
Which of the following tools can the machine learning engineer use to assess their theory?
Question No 3
A data scientist is using MLflow to track their machine learning experiment. As a part of each MLflow
run, they are performing hyperparameter tuning. The data scientist would like to have one parent
run for the tuning process with a child run for each unique combination of hyperparameter values.
They are using the following code block:
The code block is not nesting the runs in MLflow as they expected.
Which of the following changes does the data scientist need to make to the above code block so that
it successfully nests the child runs under the parent run in MLflow?
Question No 4
A machine learning engineer wants to log feature importance data from a CSV file at path
importance_path with an MLflow run for model model.
Which of the following code blocks will accomplish this task inside of an existing MLflow run block?
A.
B.
Page 5
C. mlflow.log_data(importance_path, "feature - importance.csv")
D. mlflow.log_artifact(importance_path, "feature - importance.csv")
E. None of these code blocks tan accomplish the task.
Question No 5
Which of the following is a simple, low - cost method of monitoring numeric feature drift?
Page: 1/12 Total 60 Questions
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