Teaching Machines to Learn: Inside the Training of Neural Networks - Level 1
Description
We break down how neural networks learn from data, starting with forward and backward passes, loss functions, and optimization methods like gradient descent.
We cover common hurdles—including vanishing and exploding gradients—and explore strategies like careful initialization, dropout, and early stopping. Finally, we highlight specialized architectures (CNNs, RNNs, LSTMs), clever training techniques (transfer learning, multitask learning), and cutting-edge models like GANs.
Whether you’re new to deep learning or refining your craft, this concise guide offers valuable insights into the art of training neural networks.
Highly recommend the Deep Learning Specialization from deeplearning.ai if you want to go deeper.
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