1. Introduce your self? 2. Explain your Previously completed projects and your role? 3. What is Convolution Layer, activation function and max pooling? 4. Explain some parts of the code in uploaded code in github repo? 5. why don't you use choose other classification model instead of vit model? 6. Are your worked FastAI and Hugging face transformers? 7. Explain SQL Joins?
Ml Engineer Interview Questions
1,782 ml engineer interview questions shared by candidates
Asked for job expertise and experience level of different AI tools.
Motivação de estar buscando oportunidades
Tell me about your self
asked no. of islands problem. both dfs and bfs approach.
Behaviour questions. Past experience. Languages and technology I used in the past.
Why do you want to work at amazon
How would you design a cost-efficient, scalable system to predict user review scores based on their data?
since the job role required ML, they asked a binomial theorem-based probability question
1. Online Assessment (OA) The process often begins with an online test if you’re applying through campus recruitment or general hiring platforms. Typical components: Coding challenges on platforms like Codility or HackerRank (e.g., data structures, algorithms, problem-solving). Machine learning questions, such as: Model evaluation (precision, recall, F1-score, AUC) Data preprocessing and feature engineering Bias-variance tradeoff Sometimes, a case-based or applied AI problem, e.g., “How would you detect spam messages?” 2. Technical Screening / Recruiter Call A recruiter or technical interviewer gives you an overview of the role and checks your alignment. What to expect: Discussion of your AI/ML projects, especially real implementations or research. Questions about your experience with frameworks (PyTorch, TensorFlow, Azure ML). Basic checks on your knowledge of Azure AI services, since Microsoft focuses heavily on Azure. 3. Technical Interviews (1–2 rounds) You’ll meet with engineers or data scientists who will dive deeper into your technical capabilities. Topics Covered: Coding & Problem Solving: Writing clean, efficient Python code; using libraries like NumPy or Pandas. Machine Learning & Deep Learning: Understanding of ML algorithms (e.g., regression, decision trees, clustering). Neural network concepts (CNNs, RNNs, Transformers). Model evaluation and optimization techniques. AI System Design: How you’d design an end-to-end ML pipeline. Handling data at scale using Azure tools (Data Lake, Blob Storage, ML Studio, etc.). Case Study Example: “You’re asked to build an AI system that detects product placement in images (object detection). How would you collect data, train the model, evaluate results, and deploy it?” They’ll look for clarity, structured reasoning, and awareness of trade-offs. 4. Technical Discussion / Team Interview This is often a deep dive into one of your projects — for example, something on your CV. You might be asked: Why you chose a certain model architecture (e.g., YOLO vs. Faster R-CNN). How you handled data preprocessing, imbalance, or evaluation. How you ensured efficiency and scalability (e.g., using async I/O or chunking large datasets). They might also discuss your approach to experimentation and reproducibility in ML workflows.
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