Skip to content Skip to sidebar Skip to footer

Deep Learning: Introduction to GANs


Deep Learning: Introduction to GANs


Deep Learning: Introduction to GANs Generative Adversarial Networks with Python and Tensorflow

What you'll learn

  • Understand the principles of GANs and how they work internally
  • The mathematics behind four loss functions: Minimax, Non-Saturating, Least Squares, and Wasserstein
  • How to determine the quality of the data a GAN produces
  • How to generate numbers from the MNIST Dataset
  • Apply GAN to new datasets


  • It is recommended that you know Python and the basics of Tensorflow
  • You need to have an intermediate understanding on Neural Networks and the math behind them


PyTorch: Deep Learning and Artificial Intelligence

Recommender Systems and Deep Learning in Python

In this course you will learn from scratch how to implement GANs to any of your projects. We will start with by breaking down a GAN into its parts and analyzing them. Then we will look at the loss functions we will be using and the Frechet Inception Distance. Finally we will take all this new information and apply it using Python and Tensorflow to the MNIST dataset. The code will be written such that you can use it for any of your image-based projects.

 Generative adversarial networks (GANs) are an exciting recent innovation in machine learning. GANs are generative models: they create new

 An overview of Generative Adversarial Networks; What makes this class of machine learning algorithms special; Some of the exciting GAN

   Deep Learning: Introduction to GANs | Udemy

Online Course CoupoNED
Online Course CoupoNED I am very happy that there are bloggers who can help my business

Post a Comment for "Deep Learning: Introduction to GANs "

Subscribe via Email