ISBN 9798624728158 is currently unpriced. Please contact us for pricing.
Available options are listed below:
Available options are listed below:
Make Your First GAN With PyTorch
| AUTHOR | Rashid, Tariq |
| PUBLISHER | Independently Published (03/14/2020) |
| PRODUCT TYPE | Paperback (Paperback) |
Description
A gentle introduction to Generative Adversarial Networks, and a practical step-by-step tutorial on making your own with PyTorch.
This beginner-friendly guide will give you hands-on experience:
This beginner-friendly guide will give you hands-on experience:
- learning PyTorch basics
- developing your first PyTorch neural network
- exploring neural network refinements to improve performance
- introduce CUDA GPU acceleration
- introducing the concept step-by-step, in plain English
- coding the simplest GAN to develop a good workflow
- growing our confidence with an MNIST GAN
- progressing to develop a GAN to generate full-colour human faces
- experiencing how GANs fail, exploring remedies and improving GAN performance and stability
- convolutional GANs for generated higher quality images
- conditional GANs for generated images of a desired class
- calculating ideal loss values for balanced GANs
- probability distributions and sampling them to create images
- carefully chosen examples illustrating how convolutions work
- a brief explanation of why gradient descent isn't suited to adversarial machine learning
Show More
Product Format
Product Details
ISBN-13:
9798624728158
Binding:
Paperback or Softback (Trade Paperback (Us))
Content Language:
English
More Product Details
Page Count:
208
Carton Quantity:
15
Product Dimensions:
8.50 x 0.54 x 11.00 inches
Weight:
1.50 pound(s)
Country of Origin:
US
Subject Information
BISAC Categories
Computers | Data Science - Neural Networks
Descriptions, Reviews, Etc.
publisher marketing
A gentle introduction to Generative Adversarial Networks, and a practical step-by-step tutorial on making your own with PyTorch.
This beginner-friendly guide will give you hands-on experience:
This beginner-friendly guide will give you hands-on experience:
- learning PyTorch basics
- developing your first PyTorch neural network
- exploring neural network refinements to improve performance
- introduce CUDA GPU acceleration
- introducing the concept step-by-step, in plain English
- coding the simplest GAN to develop a good workflow
- growing our confidence with an MNIST GAN
- progressing to develop a GAN to generate full-colour human faces
- experiencing how GANs fail, exploring remedies and improving GAN performance and stability
- convolutional GANs for generated higher quality images
- conditional GANs for generated images of a desired class
- calculating ideal loss values for balanced GANs
- probability distributions and sampling them to create images
- carefully chosen examples illustrating how convolutions work
- a brief explanation of why gradient descent isn't suited to adversarial machine learning
Show More
