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2103 Curated Machine Learning, Data Science, AI & LLMs Interview Questions
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Top 14 CNN Interview Questions

Entry Junior Mid Senior Expert
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CNN Theoretical Questions

Q1:   

How are CNNs used for Time Series Prediction?

  Related To: Time Series, Neural Networks
Add to PDF   Junior 
Q2:   

What's the difference between Convolutional Neural Networks (CNN) and Recurrent Neural Networks (RNN) and in which cases would use each one?

  Related To: RNN, Neural Networks
Add to PDF   Junior 
Q3:   

How is Convolutional Neural Networks (CNN) used in NLP?

  Related To: NLP, LLMs, Neural Networks
 Add to PDF   Mid 
Q4:   

Name some advantages of using Convolutional Neural Networks vs Dense Neural Networks for image classification

  Related To: Neural Networks
 Add to PDF   Mid 
Q5:   

In CNN, what are the pros and cons of Max Pooling vs Average Pooling?

  Related To: Neural Networks
 Add to PDF   Mid 
Q6:   

What do the fully connected layers do in CNNs?

  Related To: Neural Networks
 Add to PDF   Mid 
Q7:   

When would you use MLP, CNN, and RNN?

  Related To: RNN, Neural Networks
 Add to PDF   Mid 
Q8:   

How is the Transformer Network better than CNNs and RNNs?

  Related To: NLP, LLMs, RNN
 Add to PDF   Mid 
Q9:   

Compare the Convolutional Neural Network and Multi-layer Perceptron

  Related To: Neural Networks
 Add to PDF   Senior 
Q10:   

What is intuition behind using CNN for NLP?

  Related To: NLP, Neural Networks
 Add to PDF   Senior 
Q11:   

What's the difference between multi-headed and multi-channel CNNs?

  Related To: Neural Networks
 Add to PDF   Senior 
Q12:   

What's the difference between CNN-LSTMs and ConvLSTMs?

  Related To: Neural Networks
 Add to PDF   Senior 
Q13:   

What's the difference between Convolutional Layers vs Fully Connected Layers?

  Related To: Neural Networks
 Add to PDF   Senior 

CNN Practical Challenges

Q1:   

Describe the architecture of a typical Convolutional Neural Network (CNN)

  Related To: Neural Networks
  Add to PDF   Mid 
 

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