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Machine-Learning-Interviews

Prepare for Machine Learning Engineering interviews by accessing insights from personal experiences and structured modules. Offers resources for coding, system design, and behavioral interview preparation targeted at success in ML roles.

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Machine-Learning-Interviews logo

ajay-sai

MIT License

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Last Updated 2026-02-19

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interviewsinterviewengineeringlearning interviewsengineering interviewslearning engineering

Machine Learning Technical Interviews :robot:

This repo aims to serve as a guide to prepare for Machine Learning (AI) Engineering interviews for relevant roles at big tech companies (in particular FAANG). It has compiled based on the author's personal experience and notes from his own interview preparation, when he received offers from Meta (ML Specialist), Google (ML Engineer), Amazon (Applied Scientist), Apple (Applied Scientist), and Roku (ML Engineer).

The following components are the most commonly used interview modules for technical ML roles at different companies. We will go through them one by one and share how one can prepare:

Chapter Content
Chapter 1 General Coding (Algos and Data Structures)
Chapter 2 ML Coding
Chapter 3 ML System Design (Updated in 2023)
Chapter 4 ML Fundamentals/Breadth
Chapter 5 Behavioral

Notes:

  • At the time I'm putting these notes together, machine learning interviews at different companies do not follow a unique structure unlike software engineering interviews. However, I found some of the components very similar to each other, although under different naming.

  • The guide here is mostly focused on Machine Learning Engineer (and Applied Scientist) roles at big companies. Although relevant roles such as "Data Science" or "ML research scientist" have different structures in interviews, some of the modules reviewed here can be still useful. For more understanding about different technical roles within ML umbrella you can refer to [Link]

  • As a supplementary resource, you can also refer to my Production Level Deep Learning repo for further insights on how to design deep learning systems for production.

Contribution

  • Feedback and contribution are very welcome :blush: If you'd like to contribute, please make a pull request with your suggested changes).

See Also

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