These are some of the most common interview questions for Deep Learning Engineer
PART 5/5
- What is RNN?
- When RNN and when CNN?
- What are GRU?
- What is LSTM?
- What are forget and update gates in LSTM?
- What is BiRNN?
- What are word embeddings?
- What is Beam Search?
- What is Bleu Score?
- What are Attention Models and how do we build them?
- What are Auto-Encoders?
- What is Binary Cross Entropy?
- What are the different Classification Losses?
- What is Negative Log Likelihood?
- What is Margin Loss?
- What is Soft Margin Loss?
- What are the different Regression Losses?
- What is L1 Loss?
- What is MSE loss?
- What is KL Divergence?
- What is GAN's?
- What are Adversarial Networks?
- How do we do weights reuse in GAN's?
- What is the Discriminator and Generator Loss in a GAN?
- Why is a CNN better than Dense Layers?
- How is the computation efficiency of CNN compared to a Simple NN?
- How do we calculate the number of learnable parameters in the network?
- What is Tensorboard? Why is it useful?
- What is Grid Search?
- Is it necessary to have the activation functions differentiable?
The Best Books recommended to improve your Machine Learning skills:
The links to the initial 4 parts are here:
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For Machine Learning Interview Questions check this series: Machine Learning
#MachineLearning #DeepLearning #ArtificialIntelligence #AI
For Machine Learning Interview Questions check this series: Machine Learning
#MachineLearning #DeepLearning #ArtificialIntelligence #AI