25 Machine Learning Engineer Questions d'entretien
Evaluate ML model development, MLOps practices, and production deployment expertise.
Questions d'entretien Machine Learning Engineer
25 au total- 1
Walk me through how you'd take a model from a Jupyter notebook to a production API.
- 2
How do you detect and handle model drift in production?
- 3
Describe your approach to feature engineering for a tabular dataset.
- 4
What's the difference between L1 and L2 regularization — when would you use each?
- 5
How do you decide which evaluation metric to optimize for a classification problem?
- 6
Describe a model you deployed that failed in an unexpected way. What happened?
- 7
How do you handle class imbalance in a training dataset?
- 8
What's your approach to hyperparameter tuning — grid search, random search, or Bayesian?
- 9
How would you design an A/B test to evaluate a new recommendation model?
- 10
Describe your experience with LLMs — fine-tuning, RAG, or prompt engineering.
- 11
How do you ensure reproducibility in your ML experiments?
- 12
What's your strategy for versioning models, datasets, and experiments?
- 13
How do you explain a complex model's decisions to a non-technical stakeholder?
- 14
Describe your approach to data validation before training a new model.
- 15
How would you build a real-time inference API that handles 10,000 requests per second?
- 16
What's your experience with vector databases and embedding-based search?
- 17
How do you approach model monitoring — what signals do you watch?
- 18
Describe a time you reduced model training time significantly. What did you do?
- 19
How do you handle sensitive data in ML pipelines — privacy-preserving techniques?
- 20
What's your experience with distributed training across multiple GPUs or nodes?
- 21
How would you implement a feedback loop to continuously improve a deployed model?
- 22
Describe your experience with ML frameworks — PyTorch, TensorFlow, JAX?
- 23
How do you decide when a rule-based system is better than a machine learning model?
- 24
What's your approach to shadow deployments for safely releasing new models?
- 25
How do you keep up with the pace of research in ML?
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