Overview
Embark on a transformative journey into the world of Generative Adversarial Networks (GANs) with the DeepLearning.AI GANs Specialization, available on Coursera. This comprehensive course is designed to guide learners of all levels through the exciting field of image generation using GANs. From foundational principles to cutting-edge techniques, the program offers an accessible and thorough exploration of GANs.
Participants will dive deep into the applications of GANs, including data augmentation, enhancing privacy and anonymity, and more. The course covers the image-to-image translation framework extensively, allowing learners to apply this knowledge to various modalities beyond simple images. You'll get hands-on experience implementing Pix2Pix, a model that masterfully adapts satellite imagery into detailed map routes, and vice versa.
The curriculum also delves into the distinctions between paired and unpaired image-to-image translation, illustrating the necessity for different GAN architectures. Through implementing CycleGAN, students will learn to convert images of horses into zebras (and the reverse), showcasing the power of utilizing two GANs in a singular framework.
Moreover, this Specialization addresses the social implications of GAN technology, such as potential bias in machine learning, methods for bias detection, and strategies for preserving privacy. With a focus on hands-on learning, you'll train your models using PyTorch, create new images, and evaluate various advanced GAN architectures.
Whether you're new to the scene or looking to refine your skills, the Generative Adversarial Networks (GANs) Specialization offers a rich learning experience. Boost your knowledge base, gain practical experience, and apply GANs to your projects with this outstanding course, categorized under Machine Learning, Generative Adversarial Networks (GAN), and PyTorch Courses on Coursera.
Syllabus
Taught by
Tags