Machine Learning Engineer Interviews

Machine Learning Engineer Interview Questions

Companies rely on machine learning engineers to help design and improve the systems that allow their software to improve on its own, rather than being specifically programmed. During the interview process, be prepared to be tested heavily on both computer science and data science knowledge with an emphasis on recognizing patterns and trends. A bachelor's degree in computer science or a related field will be required.

Top Machine Learning Engineer Interview Questions & How to Answer

Question 1

Question #1: What are the most important algorithms, programming terms, and theories to understand as a machine learning engineer?

How to answer
How to answer: Be prepared to talk about things like Type I and Type II errors, supervised and unsupervised machine learning, ROC curves, and other key parts of machine learning. Employers want to know you have a strong knowledge of the technical aspects of the job position.
Question 2

Question #2: How would you explain machine learning to someone who doesn't understand it?

How to answer
How to answer: Sometimes machine learning engineers have to work with people who aren't familiar with the technical aspects of the job. Use this interview question as an opportunity to show your strong knowledge of the position and your communication abilities.
Question 3

Question #3: How do you stay up to date with the latest news and trends in machine learning?

How to answer
How to answer: By talking about how you're up to date with the latest news and trends in machine learning, you can show an employer that you're engaged in the industry, a skilled researcher, and self-motivated.

8,195 machine learning engineer interview questions shared by candidates

The phone interview was generally non-technical. The 2nd takehome exercise task was to write a script that processes a CSV file of customer transactions, keeps a running mean and standard deviation of transactions by customer ID, observes large deviations of individual transaction amounts from the running mean and, when such deviations are observed, generates alerts. This was to be done by implementing just one method, for which they had written a header definition. The instructions stated certain requirements: scalability, readability and code structure, logging and testing, and how simple it is to run and evaluate the code. Observe that some of these involve a large element of subjectivity. There was no mention of persistence, or function naming conventions.
avatar

Machine Learning Engineer

Interviewed at Featurespace

4.3
Mar 11, 2020

The phone interview was generally non-technical. The 2nd takehome exercise task was to write a script that processes a CSV file of customer transactions, keeps a running mean and standard deviation of transactions by customer ID, observes large deviations of individual transaction amounts from the running mean and, when such deviations are observed, generates alerts. This was to be done by implementing just one method, for which they had written a header definition. The instructions stated certain requirements: scalability, readability and code structure, logging and testing, and how simple it is to run and evaluate the code. Observe that some of these involve a large element of subjectivity. There was no mention of persistence, or function naming conventions.

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