Generative Adversarial Networks is a class of machine learning frameworks. They are algorithmic architecture and deep generative models that composed two neural networks. They use in video, image and voice generation. With the help of this notes you will be able to see real Examples applying generative adversarial network with help of Deep Learning.we are sharing this advance Notes with you guys you can download freely
Note : this Notes is only for Study Purpose
What is Deep Learning?
Deep Learning is a class of machine learning and artificial intelligence that imitate the way human gain certain type of knowledge. Deep learning allows machines to solve complex problem when using data set.
In this PDF notes you’ll learn basic concept of generative network to generate practical image from unlabeled data. By this notes you’ll learn how to solve real-world problems and make high quality image generation. In this PDF notes you will learn how deep learning work in semi supervised domain. This notes is very useful and helpful for researchers, developers and students.
In this notes you’ll learn that how to combine images from text. It is very useful and helpful notes. You can download this PDF notes free from here.
Notes | Generative Adversarial Networks With Help of Deep Learning |
Language | English |
Note Type | |
Size | 10 MB |
For | Fresher/Intermediate |
You Cover These Topics:
- Introduction to Deep Learning
Evolution of Deep Learning
Learning Rate Tuning
Regularization
Deep Neural Network
- Unsupervised Learning with GAN
Automating Human Task with Deep Neural Networks
Implementation of GAN
The Building Bocks of GAN
Applications of GAN
The Purpose of GAN
- Transfer Image Style Across Various Domains
Bridging the Gap Between Supervised and Unsupervised Learning
Introduction to Conditional GAN
The Training Procedure of BEGAN
Architecture of BEGAN
- Building Realistic Image From Your Text
Introduction to StackGAN
Conditional Augmentation
Architecture Details of StackGAN
Implementation of DiscoGAN
DiscoGAN Versus CycleGAN
- Using Various Generative Models to Generate Image
Introduction to Transfer Learning
The Purpose of Transfer Learning
Large Scale Deep Learning with Apache Spark
Architecture of the SRGAN
- Taking Machine Learning to Production
Building an Image Correction System Using DCGAN
Step for Building Image Correction System
Micro service Architecture Using Containers
Benefits of Using Containers
Download Now |
Leave a Comment