What You Always Wanted to Know About Deep Learning, but Were Afraid to Ask

What You Always Wanted to Know About Deep Learning, but Were Afraid to Ask

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A walkthrough

21 of 26

21 of 26

A walkthrough

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Classroom Contents

What You Always Wanted to Know About Deep Learning, but Were Afraid to Ask

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  1. 1 Intro
  2. 2 Agenda
  3. 3 AI, Machine Learning, and Deep Learning
  4. 4 What is Deep Learning?
  5. 5 Implementing Deep Learning using Neural Networks Outputs
  6. 6 Inputs and Outputs in a Neural Network
  7. 7 Hidden Layer(s)
  8. 8 Weights and Biases
  9. 9 Calculating the Result of a Node (Forward Propagation)
  10. 10 Feeding the Result of a Node to an Activation Function
  11. 11 Categories of Activation Functions
  12. 12 Binary Step Function
  13. 13 Analogy
  14. 14 Use of Sigmoid Activation
  15. 15 Non-Linear Activation
  16. 16 Evaluating Performance
  17. 17 Cross Entropy
  18. 18 In Summary Activation Function and Loss Function
  19. 19 Using an Optimizer
  20. 20 Back Propagation
  21. 21 A walkthrough
  22. 22 Initializing the Weights
  23. 23 Significance of the Partial Differentials
  24. 24 Updating the Weights using Stochastic Gradient Descent
  25. 25 In Summary Activation Function, Optimizer, and Loss Function
  26. 26 TensorFlow and Keras

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