Generative Adversarial Networks (GANs) Specialization | Coursera [Update 07/2024]
English | Size: 702 MB
Genre: eLearning[/center]
Break into the GANs space. Master cutting-edge GANs techniques through three hands-on courses!
What you'll learn
Understand GAN components, build basic GANs using PyTorch and advanced DCGANs using convolutional layers, control your GAN and build conditional GAN
Compare generative models, use FID method to assess GAN fidelity and diversity, learn to detect bias in GAN, and implement StyleGAN techniques
Use GANs for data augmentation and privacy preservation, survey GANs applications, and examine and build Pix2Pix and CycleGAN for image translation
Specialization - 3 course series
About GANs
Generative Adversarial Networks (GANs) are powerful machine learning models capable of generating realistic image, video, and voice outputs.
Rooted in game theory, GANs have wide-spread application: from improving cybersecurity by fighting against adversarial attacks and anonymizing data to preserve privacy to generating state-of-the-art images, colorizing black and white images, increasing image resolution, creating avatars, turning 2D images to 3D, and more.
About this Specialization
The DeepLearning.AI Generative Adversarial Networks (GANs) Specialization provides an exciting introduction to image generation with GANs, charting a path from foundational concepts to advanced techniques through an easy-to-understand approach. It also covers social implications, including bias in ML and the ways to detect it, privacy preservation, and more.
Build a comprehensive knowledge base and gain hands-on experience in GANs. Train your own model using PyTorch, use it to create images, and evaluate a variety of advanced GANs.
About you
This Specialization is for software engineers, students, and researchers from any field, who are interested in machine learning and want to understand how GANs work.
This Specialization provides an accessible pathway for all levels of learners looking to break into the GANs space or apply GANs to their own projects, even without prior familiarity with advanced math and machine learning research.
Applied Learning Project
Course 1: In this course, you will understand the fundamental components of GANs, build a basic GAN using PyTorch, use convolutional layers to build advanced DCGANs that processes images, apply W-Loss function to solve the vanishing gradient problem, and learn how to effectively control your GANs and build conditional GANs.
Course 2: In this course, you will understand the challenges of evaluating GANs, compare different generative models, use the Fréchet Inception Distance (FID) method to evaluate the fidelity and diversity of GANs, identify sources of bias and the ways to detect it in GANs, and learn and implement the techniques associated with the state-of-the-art StyleGAN.
Course 3: In this course, you will use GANs for data augmentation and privacy preservation, survey more applications of GANs, and build Pix2Pix and CycleGAN for image translation.
[align=center]
download скачать FROM RAPIDGATOR
https://rapidgator.net/file/6554221a01886967cd1c33024df81328/CA-ApplyGenerativeAdversarialNetworksGANs2024-7.rar.html https://rapidgator.net/file/1422bac9d17b5208a37a8c5a3d1d424b/CA-BuildBasicGenerativeAdversarialNetworksGANs2024-7.rar.html https://rapidgator.net/file/eeb448af3702d4b778cb13a71b811fbf/CA-BuildBetterGenerativeAdversarialNetworksGANs2024-7.rar.html
download скачать FROM TURBOBIT
https://tbit.to/dub0jz3cfs6b/CA-ApplyGenerativeAdversarialNetworksGANs2024-7.rar.html https://tbit.to/95fdfqre23tr/CA-BuildBasicGenerativeAdversarialNetworksGANs2024-7.rar.html https://tbit.to/uzt5smtgxd98/CA-BuildBetterGenerativeAdversarialNetworksGANs2024-7.rar.html
download скачать FROM NITROFLARE
https://nitroflare.com/view/A59466E16AAACEB/CA-ApplyGenerativeAdversarialNetworksGANs2024-7.rar https://nitroflare.com/view/F89E75A423F2175/CA-BuildBasicGenerativeAdversarialNetworksGANs2024-7.rar https://nitroflare.com/view/F0C329B7FC533A7/CA-BuildBetterGenerativeAdversarialNetworksGANs2024-7.rar
If any links die or problem unrar, send request to
https://forms.gle/e557HbjJ5vatekDV9