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Intro Hook Explore Explain Apply Share Evaluate
#GAN
you do it?
Expand
Hook Explore Explain Apply Share Evaluate
Intro
#Supervised_Unsupervised Learning
Expand
Hook Explore Explain Apply Share Evaluate
Intro
● Machine learning networks
that simulate the neural
structure of the brain
● Consist of:
○ Node/Neuron
○ Weights
○ Bias
○ Activation function
What are #neural_networks?
Expand
Hook Explore Explain Apply Share Evaluate
Intro
What is #ComputerVision?
CV is a type of AI that enables computers and systems to derive meaningful
information from images and videos.
Expand
Hook Explore Explain Apply Share Evaluate
Intro
An introduction to #CNN
CNNs are crucial in the field of neural networks because they help in recognizing patterns
They consist of:
1.Convolutional Layer.
2.Activation operation following each convolutional layer.
3.Pooling layer especially Max Pooling layer and also others based on the requirement.
4.Finally Fully Connected Layer.
Expand
Hook Explore Explain Apply Share Evaluate
Intro
Parameters:
tf.keras.layers.Conv2D(
filters,
kernel_size,
padding="valid",
activation=None )
Expand
Hook Explore Explain Apply Share Evaluate
Intro
WHAT IS A GAN ?
● Generative Adversarial Networks is approach to generative modeling using deep
learning methods, such as convolutional neural networks
● Generative modeling is an unsupervised learning task in machine learning
● GANs train generative models by framing the problem as a supervised learning
problem with two sub-models : generator and discriminator
● The generator model generates new examples and the discriminator model tries to
classify generated examples as either real (from the domain) or fake (generated)
Expand
Hook Explore Explain Apply Share Evaluate
Intro
GENERATOR ARCHITECTURE
Expand
Hook Explore Explain Apply Share Evaluate
Intro
DISCRIMINATOR ARCHITECTURE
Expand
Hook Explore Explain Apply Share Evaluate
Intro
SOME USE CASES OF GANS
https://thispersondoesnotexist.com/
WHAT HAPPENS INSIDE THE GENERATOR
AND DISCRIMINATOR?
TRAINING GANS
UPSAMPLING
VS
DOWNSAMPLING
IMPLEMENTATION AND EXPLANATION
USING CODE
FEEDBACK

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GAN you do it?

  • 1. Expand Intro Hook Explore Explain Apply Share Evaluate #GAN you do it?
  • 2. Expand Hook Explore Explain Apply Share Evaluate Intro #Supervised_Unsupervised Learning
  • 3. Expand Hook Explore Explain Apply Share Evaluate Intro ● Machine learning networks that simulate the neural structure of the brain ● Consist of: ○ Node/Neuron ○ Weights ○ Bias ○ Activation function What are #neural_networks?
  • 4. Expand Hook Explore Explain Apply Share Evaluate Intro What is #ComputerVision? CV is a type of AI that enables computers and systems to derive meaningful information from images and videos.
  • 5. Expand Hook Explore Explain Apply Share Evaluate Intro An introduction to #CNN CNNs are crucial in the field of neural networks because they help in recognizing patterns They consist of: 1.Convolutional Layer. 2.Activation operation following each convolutional layer. 3.Pooling layer especially Max Pooling layer and also others based on the requirement. 4.Finally Fully Connected Layer.
  • 6. Expand Hook Explore Explain Apply Share Evaluate Intro Parameters: tf.keras.layers.Conv2D( filters, kernel_size, padding="valid", activation=None )
  • 7. Expand Hook Explore Explain Apply Share Evaluate Intro WHAT IS A GAN ? ● Generative Adversarial Networks is approach to generative modeling using deep learning methods, such as convolutional neural networks ● Generative modeling is an unsupervised learning task in machine learning ● GANs train generative models by framing the problem as a supervised learning problem with two sub-models : generator and discriminator ● The generator model generates new examples and the discriminator model tries to classify generated examples as either real (from the domain) or fake (generated)
  • 8. Expand Hook Explore Explain Apply Share Evaluate Intro GENERATOR ARCHITECTURE
  • 9. Expand Hook Explore Explain Apply Share Evaluate Intro DISCRIMINATOR ARCHITECTURE
  • 10. Expand Hook Explore Explain Apply Share Evaluate Intro SOME USE CASES OF GANS https://thispersondoesnotexist.com/
  • 11. WHAT HAPPENS INSIDE THE GENERATOR AND DISCRIMINATOR?