Course Description
Learn to generate synthetic yet photorealistic human faces using GAN
Build a strong foundation in GANwith this tutorial for intermediate developers.
Understanding of GAN
Learn DCGANand CNN from scratch
Learn Applications of GAN
Learn to code a Generator network using Tensorflow
Learn to code the Discriminator network using Tensorflow
Learn to code training of DCGAN model
User Jupyter Notebook for programming
Build a realistic photo generator using DCGAN
A Powerful Skill at Your FingertipsLearning the fundamentals of GAN puts a powerful and very useful tool at your fingertips. Python and Jupyter are free, easy to learn, has excellent documentation.
No prior knowledge of CNN or GAN is assumed. I'll be covering topics like CNN, Generator, GAN, and DCGAN from scratch.
Jobs in the GAN area are plentiful, and being able to learn it with Python and Tensorflow will give you a strong edge. BERTis state of art language model and surpasses all prior techniques in natural language processing.
GAN is becoming very popular. Google, Yahoo, Bing and Youtube are few famous examples of GAN systems in action. GAN engines are vital in synthetic image generation. Learning GAN with Tensorflowwill help you become a Computer Vision Machine learning engineer which is in high demand.
Content and Overview
This course teaches you on how to build GAN using open source Tensorflow, Python, and Jupyterframework. You will work along with me step by step to build following answers
What am I going to get from this course?
Learn GAN and build a human face generator from a professional trainer from your own desk.
Over 10lecturesteaching you how to build a human face generator
Suitable for intermediate programmers and ideal for users who learn faster when shown.
Visual training method, offering users increased retention and accelerated learning.
Breaks even the most complex applications down into simplistic steps.
Offers challenges to studentsto enable reinforcement of concepts. Also solutions are described to validate the challenges.