Notice: This page requires JavaScript to function properly.
Please enable JavaScript in your browser settings or update your browser.
Course Overview | Introduction to Generative Networks
Image Synthesis Through Generative Networks
course content

Course Content

Image Synthesis Through Generative Networks

Image Synthesis Through Generative Networks

1. Introduction to Generative Networks
2. VAE implementation
3. GAN Implementation

bookCourse Overview

Image Synthesis Through Generative Networks is an immersive course meticulously crafted to explore advanced techniques in generative networks, with a keen focus on creating lifelike images from raw data.

Throughout the course, participants will be shown practical coding examples using Colab notebooks, with detailed explanations to reinforce key concepts. Additionally, comprehensive video presentations will offer in-depth explanations and invaluable insights, enhancing understanding and mastery of the material.

Course Overview

1. Introduction to Generative Networks

  • Unveil the foundational concepts of generative networks;
  • Explore the transformative capabilities of autoencoders in transforming and compressing data;
  • Dive into the principles behind VAEs, CVAEs, GANs, and diffusion models, understanding their unique approaches to image generation.

2. VAE Implementation

  • Hands-on implementation of VAEs using the MNIST dataset;
  • Understand the encoder-decoder principle and its role in latent space representation;
  • Explore the intricacies of latent space and its distribution in VAEs.

3. GAN Implementation

  • Implement GANs to generate images and compare results with VAEs;
  • Gain proficiency in the generator-discriminator principle and its application in adversarial training.

Everything was clear?

How can we improve it?

Thanks for your feedback!

Section 1. Chapter 1
some-alt