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All Things VQGAN - Variational AutoEncoder and VQ-VAE with Codebook Explanations - Part 2

Offered By: Prodramp via YouTube

Tags

Machine Learning Courses Deep Learning Courses Computer Vision Courses Neural Networks Courses Variational Autoencoders Courses Generative Models Courses

Course Description

Overview

Dive into the second part of a comprehensive three-part video series on VQGAN, focusing on Variational AutoEncoders (VAE) and Vector Quantized VAE (VQ-VAE). Explore the limitations of traditional autoencoders and how VAEs address these issues. Gain a deep understanding of VQ-VAE, including its introduction, key concepts, and the crucial role of codebooks in vector quantization. Learn how codebooks are created and their features, with a thorough summary of VQ-VAE principles. Access GitHub resources for hands-on practice and benefit from a detailed recap to solidify your knowledge of these advanced machine learning concepts.

Syllabus

- Topic Introduction
- Part 1/3 Recap
- Part 2/3 Content
- VAE Introduction
- Two issues with AutoEncoder
- Ho.w VAE solve both the problems
- VAE Summary
- Why do we need VQ-VAE?
- VQ-VAE Intro
- Understanding VQ-VAE
- Understanding Codebook in VQ
- How codebook is created?
- VQ-VAE Summary
- Features inside the Codebook
- VQ-VAE Summary complete
- GitHub Resources
- Recap and Conclusion


Taught by

Prodramp

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