Description
Deep learning systems have gotten really great at identifying patterns in text, images, and video. But applications that create realistic images, natural sentences and paragraphs, or native-quality translations have proven elusive. Generative Adversarial Networks, or GANs, offer a promising solution to these challenges by pairing two competing neural networks' one that generates content and the other that rejects samples that are of poor quality. GANs in Action: Deep learning with Generative Adversarial Networks teaches you how to build and train your own generative adversarial networks. First, you'll get an introduction to generative modelling and how GANs work, along with an overview of their potential uses. Then, you'll start building your own simple adversarial system, as you explore the foundation of GAN architecture: the generator and discriminator networks. Purchase of the print book includes a free eBook in PDF, Kindle, and ePub formats from Manning Publications.
Author: Jakub Langr, Vladimir Bok
Publisher: Manning Publications
Published: 10/07/2019
Pages: 276
Binding Type: Paperback
Weight: 0.90lbs
Size: 9.20h x 7.40w x 0.40d
ISBN13: 9781617295560
ISBN10: 1617295566
BISAC Categories:
- Computers | Data Science | Neural Networks
- Computers | Artificial Intelligence | General
- Computers | Optical Data Processing
Author: Jakub Langr, Vladimir Bok
Publisher: Manning Publications
Published: 10/07/2019
Pages: 276
Binding Type: Paperback
Weight: 0.90lbs
Size: 9.20h x 7.40w x 0.40d
ISBN13: 9781617295560
ISBN10: 1617295566
BISAC Categories:
- Computers | Data Science | Neural Networks
- Computers | Artificial Intelligence | General
- Computers | Optical Data Processing
About the Author
Jakub Langr graduated from Oxford University where he also taught at OU Computing Services. He has worked in data science since 2013, most recently as a data science Tech Lead at Filtered.com and as a data science consultant at Mudano. Jakub also designed and teaches Data Science courses at the University of Birmingham and is a fellow of the Royal Statistical Society.