
SKILLSHARE Modern Generative Adversarial Networks-iLLiTERATE
English | Size: 1.20 GB
Category: Tutorial
How to generate high-quality images from noise? Is it really possible?
Generative Adversarial Networks were invented in 2014 and since that time it is a breakthrough in the Deep Learning for generation of new objects. Now, in 2019, there exists around a thousand of different types of Generative Adversarial Networks. And it seems impossible to study them all.
I work with GANs for several years, since 2015. And now I can share with you all my experience, going from the classical algorithm to the advanced techniques and state of the art models. I also added a section with different application of GANs: super-resolution, text to image translation, image to image translation and others.
This course has rather strong prerequisites:
Deep Learning and Machine Learning
Matrix Calculus
Probability Theory and Statistics
Here are tips for taking most from the course:
If you don’t understand something, ask questions. In case of common questions I will make a new video for everybody.
Use handwritten notes. Not bookmarks and keyboard typing! Handwritten notes!
Don’t try to remember all, try to analyse the material.
DOWNLOAD:
https://rapidgator.net/file/33574c1ef3f32cef6e1a2a52662d72be/SKILLSHARE.MODERN.GENERATIVE.ADVERSARIAL.NETWORKS-iLLiTERATE.part1.rar.html
https://rapidgator.net/file/706aff4fa3972137fe1f484c8baef3fa/SKILLSHARE.MODERN.GENERATIVE.ADVERSARIAL.NETWORKS-iLLiTERATE.part2.rar.html
http://nitroflare.com/view/4EF71456CA278EF/SKILLSHARE.MODERN.GENERATIVE.ADVERSARIAL.NETWORKS-iLLiTERATE.part1.rar
http://nitroflare.com/view/EB092CE6707C302/SKILLSHARE.MODERN.GENERATIVE.ADVERSARIAL.NETWORKS-iLLiTERATE.part2.rar
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