MIT 6.S191: Deep Generative Modeling

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  • čas přidán 16. 06. 2024
  • MIT Introduction to Deep Learning 6.S191: Lecture 4
    Deep Generative Modeling
    Lecturer: Ava Amini
    New 2024 Edition
    For all lectures, slides, and lab materials: introtodeeplearning.com​
    Lecture Outline
    0:00​ - Introduction
    6:10- Why care about generative models?
    8:16​ - Latent variable models
    10:50​ - Autoencoders
    17:02​ - Variational autoencoders
    23:25 - Priors on the latent distribution
    32:31​ - Reparameterization trick
    34:36​ - Latent perturbation and disentanglement
    37:40 - Debiasing with VAEs
    39:37​ - Generative adversarial networks
    42:09​ - Intuitions behind GANs
    44:57 - Training GANs
    48:28 - GANs: Recent advances
    50:57 - CycleGAN of unpaired translation
    55:03 - Diffusion Model sneak peak
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Komentáře • 20

  • @freddybrou405
    @freddybrou405 Před 27 dny +4

    Thank you so much for the course. So much interesting.

  • @ML-DS-AI-Projects
    @ML-DS-AI-Projects Před 23 dny +1

    First thank you Alexander and Ava for sharing the knowledge
    After watching these videos, I realized that learning machine learning is not just a skill; teaching is a much bigger skill.

  • @erikkim4739
    @erikkim4739 Před 28 dny +2

    so excited for this!

  • @pradyumnanimbkar8011
    @pradyumnanimbkar8011 Před 20 dny +2

    Cool and well-sorted.

  • @civilengineeringonlinecour7143

    Awesome lecture. 🎉

  • @catalinmanea1560
    @catalinmanea1560 Před 27 dny +1

    awesome, many thanks for your initiative !
    keep up the great work

  • @arpandas2758
    @arpandas2758 Před 26 dny

    thank you for the amazing content, please add the slides for this lecture in the website, its still not there, cheers :)

  • @ahmedelsafty6654
    @ahmedelsafty6654 Před 20 dny

    First thank you Ava for sharing the knowledge.
    I'm not able to understand, why the standard auto-encoder does a deterministic operation?

  • @4threich166
    @4threich166 Před 26 dny +2

    Beauty with brain ❤

  • @shakshamkarki7061
    @shakshamkarki7061 Před 25 dny +1

    Not a MITian but learning in MIT

  • @4threich166
    @4threich166 Před 26 dny +1

    Queen

  • @geoffreyporto
    @geoffreyporto Před 27 dny

    I have a dataset of 120 images of cell phone photographs of the skin of dogs sick with 12 types of skin diseases, with a distribution of 10 images for each dog.
    What type of Generative Adversarial Network (GAN) is most suitable to increase my dataset with quality and be able to train my DL model? DcGAN, ACGAN, StyleGAN3, CGAN?

  • @genkideska4486
    @genkideska4486 Před 27 dny +2

    5 mins more let's gooooo

  • @Lima3578user
    @Lima3578user Před 26 dny

    Spellbound by the lecture, great insights. Is she Indian

  • @aurabless7552
    @aurabless7552 Před 28 dny

    when gpt 4o lectures :D

  • @gapcreator726
    @gapcreator726 Před 27 dny

    Nice amini teaching❤ and your curly hair nice😮