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DoorDash Data Scientist Mock Interview

To help you prepare for a Data Scientist interview at DoorDash, here are 30 interview questions and answer examples.

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Question 1 of 30

The work of a Data Scientist can have a large impact on the strategy, and ultimately success, of Doordash's business. Is there a time you felt your work impacted your company's strategy development? Explain your role and contribution.

Organizations generally hire workers for one reason: their ability to contribute to attaining the company's business objectives. This question is meant to determine if you understand your role's impact on the organizations you work for. It will also help the Doordash interviewer learn about your contributions to your previous employers. You should provide specific examples and quantify the benefits.

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DoorDash Data Scientist Interview Questions & Answers

Below is a list of our Doordash interview questions. Click on any interview question to view our answer advice and answer examples. You may view six answer examples before our paywall loads. Afterwards, you'll be asked to upgrade to view the rest of our answers.

  • Accomplishment

    1. The work of a Data Scientist can have a large impact on the strategy, and ultimately success, of Doordash's business. Is there a time you felt your work impacted your company's strategy development? Explain your role and contribution.

  • Behavioral

    2. How do you deal with an unbalanced binary classification when analyzing a data set?

  • Behavioral

    3. Do you perform data wrangling and data cleaning before applying machine learning algorithms to your data analysis?

  • Behavioral

    4. Describe to me a data project you worked on in the past that you would do differently with the knowledge/experience you have acquired up to this point and/or new technology that was not available at the original time of the project.

  • Behavioral

    5. Describe a time when you had to present findings/recommendations to a non-technical audience. What strategies did you use to ensure the audience did not get confused and clearly understood the message?

  • Behavioral

    6. Can you describe some of the steps you take to ensure that a regression model fits the data?

  • Behavioral

    7. A a Data Scientist, how do you employ statistics to analyze data and develop business recommendations?

  • Behavioral

    8. Describe a project where you had a surprisingly difficult time dealing with unstructured data. How did you overcome the obstacles and what tools did you use?

  • Behavioral

    9. Data Scientists do a lot of exploring and testing of hypotheses. Tell me about a time where you were given freedom to explore a business problem with very few parameters. What was your initial approach in attacking this project?

  • Creative Thinking

    10. What are some of the differences between a histogram and a box plot?

  • Creative Thinking

    11. Can you discuss some of the weaknesses of a linear analysis model?

  • Creative Thinking

    12. Can you describe how Data Analysis is used by businesses and other organizations like Doordash?

  • Creative Thinking

    13. Data visualization is an important skill that will be used often here at Doordash when communicating results with stakeholders. Describe to me one of your most innovative data visualization ideas that went beyond pie and bar charts.

  • Creative Thinking

    14. Many companies rely on Data Scientists to tell them what analysis is possible with the data available. Talk about a time when you took the initiative to recommend a new business measure for the company to track.

  • Education

    15. Can you define cross-validation and describe how you will use this process when analyzing a data set if hired by Doordash?

  • Education

    16. Here at Doordash, we use several programming languages to create our software. Can you compare SAS, R, and Python programming tools and describe their use in Data Analytics?

  • Education

    17. When your job requires you to be immersed in data, you can discover some interesting patterns or trends. What is the most interesting learning you discovered through the mining/exploration of data?

  • Education

    18. To be a successful Data Scientist, many in the industry believe it is important to keep up-to-date on the newest technologies and methodologies. What new data-related technology/methodology have you heard of that you wish you could learn more about?

  • Experience

    19. How have past positions, unrelated to data analysis, helped you in your current profession as a Data Scientist? How will this help you to be successful here at Doordash?

  • Experience

    20. What experience do you have conducting text analytics? Describe a project you worked on that required text analytics.

  • Experience

    21. What is Data Cleansing and why is it important in Data Analysis?

  • Experience

    22. In your past positions, have you had experience contributing to the improvement of data analysis processes, database management, data infrastructure, or anything along those lines? If so, please explain your contributions.

  • Experience

    23. Doordash is in the process of implementing machine learning in our applications. Describe to me your experience with machine learning methods. Is there a particular method you have more experience with than others?

  • Experience

    24. What is a decision tree, and how do you use this in your job as a data scientist here at Doordash?

  • Experience

    25. What are some of the assumptions required to accurately perform a linear regression analysis?

  • Experience

    26. What data visualization tools do you have experience using? Which one is your favorite to use and why?

  • Experience

    27. Here at Doordash, we use several programming languages to create our software. What programming languages do you have experience using? Of these, which do you have the most experience with? Which do you have the least experience with?

  • Experience

    28. What statistical software programs do you have experience using in past positions in this field? Which one do have you the most experience with or feel the most confident using?

  • Personal

    29. Do you follow the hypothesis that many small decision trees are more accurate than one large one?

  • Personal

    30. In your opinion, is mean square error a good or bad measure of model performance?