DY0-001 Dumps (V8.02) – Pass the CompTIA DataX Certification Exam with Confidence Using the Latest Exam Questions and Answers

The CompTIA DataX Certification Exam (DY0-001) is a new addition to the CompTIA Xpert series, serving as the premier certification for experienced professionals who want to validate their competency in data science, a rapidly evolving field. If you are aiming to pass the DY0-001 exam, making the right preparation choice can determine your success. DumpsBase offers the latest DY0-001 dumps (V8.02), which is one of the most reliable ways to ensure you’re ready. There are 85 practice exam questions and answers in the dumps, giving you a practical and effective method to excel on your first attempt. Plus, the DY0-001 exam dumps (V8.02) come with a secure and assured preparation plan. If you’re not satisfied or don’t pass, there’s a money-back guarantee to back you up.

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1. SIMULATION

A client has gathered weather data on which regions have high temperatures. The client would like a visualization to gain a better understanding of the data.

INSTRUCTIONS

Part 1

Review the charts provided and use the drop-down menu to select the most appropriate way to standardize the data.

Part 2

Answer the questions to determine how to create one data set.

Part 3

Select the most appropriate visualization based on the data set that represents what the client is looking for.

If at any time you would like to bring back the initial state of the simulation, please click the Reset All button.

2. SIMULATION

A data scientist needs to determine whether product sales are impacted by other contributing factors. The client has provided the data scientist with sales and other variables in the data set.

The data scientist decides to test potential models that include other information.

INSTRUCTIONS

Part 1

Use the information provided in the table to select the appropriate regression model.

Part 2

Review the summary output and variable table to determine which variable is statistically significant.

If at any time you would like to bring back the initial state of the simulation, please click the Reset All button.

3. A data scientist is building an inferential model with a single predictor variable. A scatter plot of the independent variable against the real-number dependent variable shows a strong relationship between them. The predictor variable is normally distributed with very few outliers.

Which of the following algorithms is the best fit for this model, given the data scientist wants the model to be easily interpreted?

4. A data scientist wants to evaluate the performance of various nonlinear models.

Which of the following is best suited for this task?

5. Which of the following is the layer that is responsible for the depth in deep learning?

6. Which of the following modeling tools is appropriate for solving a scheduling problem?

7. Which of the following environmental changes is most likely to resolve a memory constraint error when running a complex model using distributed computing?

8. A data analyst wants to save a newly analyzed data set to a local storage option.

The data set must meet the following requirements:

- Be minimal in size

- Have the ability to be ingested quickly

- Have the associated schema, including data types, stored with it

Which of the following file types is the best to use?

9. Which of the following is a key difference between KNN and k-means machine-learning techniques?

10. A data scientist needs to:

Build a predictive model that gives the likelihood that a car will get a flat tire.

Provide a data set of cars that had flat tires and cars that did not.

All the cars in the data set had sensors taking weekly measurements of tire pressure similar to the sensors that will be installed in the cars consumers drive.

Which of the following is the most immediate data concern?

11. The term "greedy algorithms" refers to machine-learning algorithms that:

12. A data scientist is deploying a model that needs to be accessed by multiple departments with minimal development effort by the departments.

Which of the following APIs would be best for the data scientist to use?

13. Which of the following compute delivery models allows packaging of only critical dependencies while developing a reusable asset?

14. A data analyst is analyzing data and would like to build conceptual associations.

Which of the following is the best way to accomplish this task?

15. Which of the following belong in a presentation to the senior management team and/or C-suite executives? (Choose two.)

16. During EDA, a data scientist wants to look for patterns, such as linearity, in the data.

Which of the following plots should the data scientist use?

17. Which of the following distribution methods or models can most effectively represent the actual arrival times of a bus that runs on an hourly schedule?

18. A data scientist has constructed a model that meets the minimum performance requirements specified in the proposal for a prediction project. The data scientist thinks the model's accuracy should be improved, but the proposed deadline is approaching.

Which of the following actions should the data scientist take first?

19. Which of the following best describes the minimization of the residual term in a ridge linear regression?

20. A statistician notices gaps in data associated with age-related illnesses and wants to further aggregate these observations.

Which of the following is the best technique to achieve this goal?

21. A data scientist needs to analyze a company's chemical businesses and is using the master database of the conglomerate company. Nothing in the data differentiates the data observations for the different businesses.

Which of the following is the most efficient way to identify the chemical businesses' observations?

22. Which of the following distance metrics for KNN is best described as a straight line?

23. A data scientist is building a forecasting model for the price of copper. The only input in this model is the daily price of copper for the last ten years.

Which of the following forecasting techniques is the most appropriate for the data scientist to use?

24. An analyst wants to show how the component pieces of a company's business units contribute to the company's overall revenue.

Which of the following should the analyst use to best demonstrate this breakdown?

25. Which of the following does k represent in the k-means model?

26. Which of the following techniques enables automation and iteration of code releases?

27. In a modeling project, people evaluate phrases and provide reactions as the target variable for the model.

Which of the following best describes what this model is doing?

28. A computer vision model is trained to identify cats on a training set that is composed of both cat and

dog images. The model predicts a picture of a cat is a dog.

Which of the following describes this error?

29. Which of the following JOINS would generate the largest amount of data?

30. A data scientist built several models that perform about the same but vary in the number of features.

Which of the following models should the data scientist recommend for production according to Occam's razor?


 

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