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Neural Networks and Deep Learning

Course can be found in Coursera

Quiz and answers are collected for quick search in my blog SSQ

  • Week 1:
    • Understand the major trends driving the rise of deep learning.
    • Be able to explain how deep learning is applied to supervised learning.
    • Understand what are the major categories of models (such as CNNs and RNNs), and when they should be applied.
    • Be able to recognize the basics of when deep learning will (or will not) work well.
  • Week 2:
    • Build a logistic regression model, structured as a shallow neural network
    • Implement the main steps of an ML algorithm, including making predictions, derivative computation, and gradient descent.
    • Implement computationally efficient, highly vectorized, versions of models.
    • Understand how to compute derivatives for logistic regression, using a backpropagation mindset.
    • Become familiar with Python and Numpy
    • Work with iPython Notebooks
    • Be able to implement vectorization across multiple training examples
    • Python Basics with Numpy (optional assignment)
    • Logistic Regression with a Neural Network mindset
  • Week 3:
    • Understand hidden units and hidden layers
    • Be able to apply a variety of activation functions in a neural network.
    • Build your first forward and backward propagation with a hidden layer
    • Apply random initialization to your neural network
    • Become fluent with Deep Learning notations and Neural Network Representations
    • Build and train a neural network with one hidden layer.
    • Build a 2-class classification complete neural network with a hidden layer
  • Week 4:

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Build logistic regression, neural network models for classification

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