- How to handle difficult situations - How to handle different opinions between colleagues - How a CNN works - How a RNN works - Did you work with Transformers? What is Attention? - Summary metrics for NLP - CODING: Two sum but with multiplication actually - How a BiLSTM works - Metrics for regression BONUS INTERVIEW WITH OTHER TEAM (more friendly) -Bagging and boosting -Forecasting example -Computational difference between XGBoost and Random Forest
Applied Scientist Interview Questions
1,160 applied scientist interview questions shared by candidates
Explain gradient descent, batch norm, how to accelerate, how to parallel, how to change the batch size when parallel and how to save memory for running.
Q: Questions related to my published paper.
Why Amazon? Mention one challenge.
Science depth Science breath Leadership principals Coding
What is variance and bias tradeoff
Star methods for Leadership principles, use examples.
what are the differences between cross-entropy loss and contrastive loss?
ML: 1. how do you deal with overfitting. 2. special token. 3. the components of transformers 4. attention mechanism 5. complexity of transformers 6. what is boosting 7. what is a p value
Q: L S T M structure
Viewing 871 - 880 interview questions
See Interview Questions for Similar Jobs
Deep Learning ScientistMl EngineerData Scientist NlpSenior Machine Learning ScientistDeep Learning Data ScientistApplied Research ScientistNlp Data ScientistAi Machine Learning EngineerDeep Learning Research EngineerApplied ResearchJr Data ScientistArtificial Intelligence ScientistData Scientist TraineeDeep Learning / Machine Learning ResearcherJunior Machine Learning EngineerApplied Machine Learning EngineerSenior Machine Learning EngineerMachine Learning Researcher