Databricks Machine Learning Professional Exam Dumps – Pass with Valid Resources to Boost Your Career Prospects

The Databricks Certified Machine Learning Professional is a popular Databricks exam, which is designed to assess your ability to utilize Databricks Machine Learning and its capabilities effectively. Passing the Databricks Certified Machine Learning Professional certification can boost your career prospects. Today, you can pass this exam with the latest Databricks Machine Learning Professional exam dumps of DumpsBase. DumpsBase makes you confident and this increases your chances of Databricks Machine Learning Professional exam success on your first attempt. DumpsBase comes up with the latest Databricks Machine Learning Professional exam dumps for the Databricks Certified Machine Learning Professional exam preparation. Our dumps questions and answers follow the most recent Databricks Machine Learning Professional certification exam content and format, ensuring that you crack the Databricks Machine Learning Professional exam on the first try with DumpsBase’s Databricks Machine Learning Professional exam dumps.

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1. Which of the following describes concept drift?

2. Which of the following tools can the machine learning engineer use to assess their theory?

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?

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?

5. Which of the following is a simple, low-cost method of monitoring numeric feature drift?

6. A data scientist has developed a model to predict ice cream sales using the expected temperature and expected number of hours of sun in the day. However, the expected temperature is dropping beneath the range of the input variable on which the model was trained.

Which of the following types of drift is present in the above scenario?

7. A data scientist wants to remove the star_rating column from the Delta table at the location path. To do this, they need to load in data and drop the star_rating column.

Which of the following code blocks accomplishes this task?

8. Which of the following operations in Feature Store Client fs can be used to return a Spark DataFrame of a data set associated with a Feature Store table?

9. Run a statistical test to determine if there are changes over time

Which of the following should be completed as Step #3?

10. Which of the following is a reason for using Jensen-Shannon (JS) distance over a Kolmogorov-Smirnov (KS) test for numeric feature drift detection?

11. A data scientist is utilizing MLflow to track their machine learning experiments. After completing a series of runs for the experiment with experiment ID exp_id, the data scientist wants to programmatically work with the experiment run data in a Spark DataFrame. They have an active MLflow Client client and an active Spark session spark.

Which of the following lines of code can be used to obtain run-level results for exp_id in a Spark DataFrame?

12. A data scientist has developed and logged a scikit-learn random forest model model, and then they ended their Spark session and terminated their cluster. After starting a new cluster, they want to review the feature_importances_ of the original model object.

Which of the following lines of code can be used to restore the model object so that feature_importances_ is available?

13. Which of the following is a simple statistic to monitor for categorical feature drift?

14. Which of the following is a probable response to identifying drift in a machine learning application?

15. A data scientist has computed updated feature values for all primary key values stored in the Feature Store table features. In addition, feature values for some new primary key values have also been computed. The updated feature values are stored in the DataFrame features_df. They want to replace all data in features with the newly computed data.

Which of the following code blocks can they use to perform this task using the Feature Store Client fs?

A)

B)

C)

D)

E)

16. After a data scientist noticed that a column was missing from a production feature set stored as a Delta table, the machine learning engineering team has been tasked with determining when the column was dropped from the feature set.

Which of the following SQL commands can be used to accomplish this task?

17. Which of the following describes label drift?

18. Which of the following machine learning model deployment paradigms is the most common for machine learning projects?

19. A data scientist would like to enable MLflow Autologging for all machine learning libraries used in a notebook. They want to ensure that MLflow Autologging is used no matter what version of the Databricks Runtime for Machine Learning is used to run the notebook and no matter what workspace-wide configurations are selected in the Admin Console.

Which of the following lines of code can they use to accomplish this task?

20. A data scientist has developed a model model and computed the RMSE of the model on the test set. They have assigned this value to the variable rmse. They now want to manually store the RMSE value with the MLflow run.

They write the following incomplete code block:

Which of the following lines of code can be used to fill in the blank so the code block can successfully complete the task?


 

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