Questions
- Why should we convert integer inputs into float values during training?
 - What are the methods used to reshape a tensor object?
 - Why is computation faster with tensor objects than with NumPy arrays?
 - What constitutes the init magic function in a neural network class?
 - Why do we perform zero gradients before performing backpropagation?
 - What magic functions constitute the dataset class?
 - How do we make predictions on new data points?
 - How do we fetch the intermediate layer values of a neural network?
 - How does the 
Sequentialmethod help simplify the definition of the architecture of a neural network? - While updating 
loss_history, we appendloss.item()instead ofloss. What does this accomplish, and why is it useful to appendloss.item()instead of justloss? - What are the advantages of using 
torch.save(model.state_dict())? 
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