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Showing posts with the label Learning Rate Decay

Deep Learning: UNIT-1 : Deep Learning Fundamentals- Short Answer Questions

  UNIT-1 Deep Learning: Fundamentals Short Answer Questions ----------------------------------------------------------------------------------------------------------------------------- 1.      Define Artificial Neural Network. 2.      Define Neuron. 3.      List the operations performed by ANN layers. 4.      List the different applications of Deep Learning. 5.      Define Deep Learning. 6.      List the different applications of Artificial Neural Network. 7.      List the Building Block of Neural Networks. 8.      Define Dense layer. 9.      What is loss function. 10.   Identify the different layers in ANN. 11.   Explain Forward Pass. 12.   Explain Backward Pass. 13.   List the different optimizers. 14.   How to overcome vanishing and exploding gradient problems 15.   List the difficulties in convergence. 16.   Define Preprocessing. 17.   Define Momentum. 18.   What is Learning Rate Decay? 19.   What is the purpose of weight initialization? 2

Deep Learning: UNIT 1 : Deep Learning Fundamentals

   Deep Learning UNIT   I Deep Learning:   Fundamentals Introduction Building Block of Neural Networks Layers MLPs Forward   pass backward   pass class trainer   and   optimizer The   Vanishing   and   Exploding   Gradient   Problems Difficulties in Convergence Local and Spurious Optima Preprocessing Momentum learning rate Decay Weight Initialization Regularization Dropout SoftMax Cross Entropy loss   function Activation   Functions 👉 Deep Learning: UNIT 1 (A) Notes: Deep Learning: Fundamentals Part 1 Notes 👉 Deep Learning: UNIT 1 (A) PPTs: Deep Learning Fundamentals Part 1 PPTs 👉 Deep Learning: Unit 1 (B) Notes: Deep Learning Fundamentals Part 2 Notes 👉 Deep Learning: UNIT 1 (B): Deep Learning: Fundamentals Part2 PPTs 👉 Deep Learning: UNIT 1: Deep Learning Fundamentals -Long Answer Questions 👉 Deep Learning: UNIT 1: Deep Learning Fundamentals - Short Answer Questions

Deep Learning: UNIT 1 (B): Deep Learning: Fundamentals Part2 PPTs

                                                                                                 UNIT-1 B Deep Learning: Fundamentals 1.      The Softmax Function 2.      Cross-Entropy Loss Function 3.      Activation Functions 4.      Preprocessing 5.      Momentum 6.      Learning Rate Decay 7.      Weight Initialization 8.      Regularization 9.      Dropout

Deep Learning: Unit 1 (B) Notes: Deep Learning Fundamentals Part2 Notes

  UNIT-1 B Deep Learning: Fundamentals 1.      The Softmax Function 2.      Cross-Entropy Loss Function 3.      Activation Functions 4.      Preprocessing 5.      Momentum 6.      Learning Rate Decay 7.      Weight Initialization 8.      Regularization 9.      Dropout