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Master GANs from Scratch: Implement 11 Game-Changing Models

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Maxime Vandegar

18:14:22

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  • 1 -Introduction.mp4
    20:32
  • 1 -Paper review.mp4
    19:35
  • 2 -Implementation from scratch Generator and Discriminator.mp4
    15:31
  • 3 -Implementation from scratch Training loop.mp4
    18:39
  • 4 -Implementation from scratch Better gradient signal for the Generator.mp4
    06:26
  • 5 -Implementation from scratch Helpers.mp4
    09:54
  • 6 -Implementation from scratch Main.mp4
    02:26
  • 7 -Implementation from scratch Results.mp4
    06:06
  • 8 -Final code walk-through.mp4
    11:46
  • 1 -Paper review.mp4
    08:23
  • 2 -Implementation from scratch Generator and Discriminator.mp4
    14:39
  • 3 -Implementation from scratch Helpers.mp4
    04:37
  • 4 -Implementation from scratch Schedulers.mp4
    04:22
  • 5 -Implementation from scratch Results.mp4
    06:58
  • 6 -Final code walk-through.mp4
    09:06
  • 1 -Paper review.mp4
    18:19
  • 2 -Implementation from scratch Generator.mp4
    11:00
  • 3 -Implementation from scratch Discriminator.mp4
    08:20
  • 4 -Implementation from scratch Dataset part1.mp4
    12:38
  • 5 -Implementation from scratch Dataset part2.mp4
    09:30
  • 6 -Implementation from scratch DataLoader.mp4
    16:22
  • 7 -Implementation from scratch Weight initialization.mp4
    06:08
  • 8 -Implementation from scratch Training loop.mp4
    06:09
  • 9 -Implementation from scratch Main.mp4
    03:16
  • 10 -Implementation from scratch Results after 1 epoch.mp4
    15:47
  • 11 -Implementation from scratch Results after 5 epoch.mp4
    01:54
  • 12 -Final code walk-through.mp4
    22:09
  • 1 -Paper review.mp4
    18:18
  • 2 -Paper review results.mp4
    07:38
  • 3 -Paper review semi-supervised learning.mp4
    09:39
  • 4 -Implementation from scratch Generator.mp4
    07:59
  • 5 -Implementation from scratch Discriminator.mp4
    13:30
  • 6 -Implementation from scratch Training loop part1.mp4
    17:33
  • 7 -Implementation from scratch Training loop part2.mp4
    09:18
  • 8 -Implementation from scratch The Log-Sum-Exp Trick.mp4
    05:20
  • 9 -Implementation from scratch Training loop part3.mp4
    12:48
  • 10 -Implementation from scratch Training loop part4.mp4
    05:32
  • 11 -Implementation from scratch Testing.mp4
    08:02
  • 12 -Implementation from scratch Helpers.mp4
    17:01
  • 13 -Implementation from scratch Main part1.mp4
    15:13
  • 14 -Implementation from scratch Main part2.mp4
    07:48
  • 15 -Implementation from scratch Results.mp4
    03:50
  • 16 -Final code walk-through.mp4
    24:23
  • 1 -Paper review.mp4
    15:28
  • 2 -Implementation from scratch Generator.mp4
    02:20
  • 3 -Implementation from scratch Discriminator.mp4
    01:53
  • 4 -Implementation from scratch Training loop.mp4
    07:43
  • 5 -Implementation from scratch Helpers part1.mp4
    12:34
  • 6 -Implementation from scratch Helpers part2.mp4
    04:01
  • 7 -Implementation from scratch Helpers part3.mp4
    05:28
  • 8 -Implementation from scratch Helpers part4.mp4
    03:58
  • 9 -Implementation from scratch Results part1.mp4
    09:11
  • 10 -Implementation from scratch Results part2.mp4
    01:52
  • 11 -Final code walk-through.mp4
    08:45
  • 1 -Paper review.mp4
    24:07
  • 2 -Implementation from scratch Generator part1.mp4
    18:30
  • 3 -Implementation from scratch Generator part2.mp4
    08:06
  • 4 -Implementation from scratch PatchGAN.mp4
    09:00
  • 5 -Implementation from scratch PatchGAN part2.mp4
    02:34
  • 6 -Implementation from scratch Training loop.mp4
    09:57
  • 7 -Implementation from scratch Dataset.mp4
    01:44
  • 8 -Implementation from scratch Dataloader.mp4
    12:39
  • 9 -Implementation from scratch Weight initialization.mp4
    01:33
  • 10 -Implementation from scratch Main part1.mp4
    11:08
  • 11 -Implementation from scratch Main part2.mp4
    04:24
  • 12 -Implementation from scratch Results.mp4
    12:14
  • 13 -Final code walk-through.mp4
    17:07
  • 1 -Paper review.mp4
    18:32
  • 2 -Implementation from scratch Generator.mp4
    04:45
  • 3 -Implementation from scratch Discriminator.mp4
    01:56
  • 4 -Implementation from scratch Training loop part1.mp4
    11:58
  • 5 -Implementation from scratch Training loop part2.mp4
    04:03
  • 6 -Implementation from scratch Main.mp4
    04:41
  • 7 -Implementation from scratch Results.mp4
    17:34
  • 8 -Final code walk-through.mp4
    12:12
  • 1 -Paper review.mp4
    14:04
  • 2 -Implementation from scratch Generator part1.mp4
    08:27
  • 3 -Implementation from scratch Generator part2.mp4
    13:43
  • 4 -Implementation from scratch Discriminator part1.mp4
    04:32
  • 5 -Implementation from scratch Discriminator part2.mp4
    04:27
  • 6 -Implementation from scratch Training loop.mp4
    16:17
  • 7 -Implementation from scratch Main.mp4
    02:10
  • 8 -Implementation from scratch Results.mp4
    04:20
  • 9 -Final code walk-through.mp4
    17:45
  • 1 -Paper review.mp4
    15:38
  • 2 -Implementation from scratch Generator Inference Network.mp4
    16:17
  • 3 -Implementation from scratch Generator Generation Network.mp4
    08:03
  • 4 -Implementation from scratch Discriminator.mp4
    10:30
  • 5 -Implementation from scratch Training loop.mp4
    10:01
  • 6 -Implementation from scratch Helpers.mp4
    06:35
  • 7 -Implementation from scratch Main.mp4
    11:11
  • 8 -Implementation from scratch Results.mp4
    04:23
  • 9 -Final code walk-through.mp4
    13:12
  • 1 -Paper review.mp4
    13:21
  • 2 -Implementation from scratch Generator Generation Network.mp4
    07:39
  • 3 -Implementation from scratch Generator Inference Network.mp4
    02:58
  • 4 -Implementation from scratch Discriminator.mp4
    02:35
  • 5 -Implementation from scratch Training loop.mp4
    04:53
  • 6 -Implementation from scratch Main.mp4
    08:33
  • 7 -Implementation from scratch Results.mp4
    11:07
  • 8 -Final code walk-through.mp4
    09:04
  • 1 -Paper review.mp4
    17:39
  • 2 -Implementation from scratch Generator part1.mp4
    15:18
  • 3 -Implementation from scratch Generator part2.mp4
    08:59
  • 4 -Implementation from scratch Generator part3.mp4
    02:45
  • 5 -Implementation from scratch Discriminator.mp4
    05:24
  • 6 -Implementation from scratch Training loop part1.mp4
    11:12
  • 7 -Implementation from scratch Training loop part2.mp4
    07:09
  • 8 -Implementation from scratch Dataset part1.mp4
    07:36
  • 9 -Implementation from scratch Dataset part2.mp4
    05:22
  • 10 -Implementation from scratch Buffer.mp4
    05:59
  • 11 -Implementation from scratch Main.mp4
    08:53
  • Description


    From Theory to Application: The Ultimate Beginner’s Guide to Mastering GANs Hands-On with PyTorch

    What You'll Learn?


    • How Generative Adversarial Networks (GANs) work
    • Implementation of GANs from scratch using PyTorch
    • Deep analysis of GANs: opening the black box
    • Review of impactful research papers

    Who is this for?


  • To engineers and programmers
  • To students and researchers
  • To entrepreneurs, CEOs and CTOs
  • Machine Learning enthusiast
  • What You Need to Know?


  • Basic programming knowledge
  • Basic Machine Learning knowledge
  • More details


    Description

    While diffusion models are the current hype, Generative Adversarial Networks (GANs) remain state-of-the-art due to their speed and efficiency. Despite the buzz around diffusion, GANs are still widely used in industry, and research shows that with the same compute and data, GANs can produce samples as good as diffusion models (GigaGAN paper). This course will equip you with everything you need to master GANs, implement them from scratch using PyTorch, and stay competitive in the field of Generative AI.


    In this course, we will dive deep into 11 influential research papers that shaped the development of GANs. By building each model step by step, you’ll gain hands-on experience in creating powerful GAN architectures, from the original GAN to advanced models.


    Why Choose This GAN Course?


    • Hands-on PyTorch Implementation: Build GANs from the ground up with practical PyTorch tutorials.

    • Review 11 Key Papers: Understand and implement seminal GAN models, from the original architecture to cutting-edge variants.

    • Master GAN Loss Variants: Implement and train models using vanilla GAN, LSGAN, WGAN, WGAN-GP, and Feature Matching loss functions to solve real-world challenges.


    What You'll Achieve:


    • Implement GANs from scratch using PyTorch

    • Train and evaluate models like ALI, LSGAN, WGAN, WGAN-GP, Pix2Pix, and CycleGAN to tackle real-world challenges.

    • Master adversarial training techniques

    • Apply GANs to solve real-world AI challenges


    Enroll Today and Start Building GANs from Scratch!


    Stay ahead of the curve in Generative AI by mastering GANs—faster, and just as powerful as diffusion models when properly trained. Join us now and get hands-on with cutting-edge GAN research and implementation!

    Who this course is for:

    • To engineers and programmers
    • To students and researchers
    • To entrepreneurs, CEOs and CTOs
    • Machine Learning enthusiast

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    Maxime Vandegar
    Maxime Vandegar
    Instructor's Courses
    Ingénieur fraîchement diplômé, je suis actuellement chercheur à l'université de Stanford et scientifique collaborateur au CERN. Mes recherches combinent l'intelligence artificielle (principalement le deep learning) et la physique fondamentale.Durant mes études, j'ai été responsable de séances d'exercices dans plusieurs cours universitaires (mécanique des matériaux, électronique numérique, signaux et systèmes,...) et je donne régulièrement des séances de coaching avancées en Python.
    Students take courses primarily to improve job-related skills.Some courses generate credit toward technical certification. Udemy has made a special effort to attract corporate trainers seeking to create coursework for employees of their company.
    • language english
    • Training sessions 112
    • duration 18:14:22
    • Release Date 2024/12/21