MIT 6.S191 (2023): Deep Generative Modeling

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  • Опубликовано: 12 май 2024
  • MIT Introduction to Deep Learning 6.S191: Lecture 4
    Deep Generative Modeling
    Lecturer: Ava Amini
    2023 Edition
    For all lectures, slides, and lab materials: introtodeeplearning.com​
    Lecture Outline
    0:00​ - Introduction
    5:48 - Why care about generative models?
    7:33​ - Latent variable models
    9:30​ - Autoencoders
    15:03​ - Variational autoencoders
    21:45 - Priors on the latent distribution
    28:16​ - Reparameterization trick
    31:05​ - Latent perturbation and disentanglement
    36:37 - Debiasing with VAEs
    38:55​ - Generative adversarial networks
    41:25​ - Intuitions behind GANs
    44:25 - Training GANs
    50:07 - GANs: Recent advances
    50:55 - Conditioning GANs on a specific label
    53:02 - CycleGAN of unpaired translation
    56:39​ - Summary of VAEs and GANs
    57:17 - Diffusion Model sneak peak
    Subscribe to stay up to date with new deep learning lectures at MIT, or follow us @MITDeepLearning on Twitter and Instagram to stay fully-connected!!
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Комментарии • 127

  • @MrJ3
    @MrJ3 Год назад +112

    What's great about this instructor is that they are very careful and particular about what they say, and how they phrase it. There's no fluff, nothing that could cause confusion. Straight to the point and very intentional.

    • @chucksgarage-us
      @chucksgarage-us 9 месяцев назад +2

      Teaching is an art/science of itself.

  • @thankyouthankyou1172
    @thankyouthankyou1172 7 месяцев назад +22

    don't know why, but i could not breath listening to this lecture. she's so clear without any redundancy, without any hmmm, urgggg,... how come. she is so amaizing . i would have practiced 1000 times to be able to lecture like this

  • @maazkattangere8690
    @maazkattangere8690 Год назад +7

    This series is coming out right after I want to learn more about theory! Thanks for this 🙏

  • @arfakarim9906
    @arfakarim9906 11 месяцев назад +9

    A lot of appreciations from my side to your Team who build such a excellent course on Deep Learning

  • @vikrambhutani
    @vikrambhutani Год назад +22

    Highly recommended series for AI enthusiasts. This MIT series is by far the most intuitive videos covering all aspects of deep learning. Well done on that.

  • @sarahamiri2309
    @sarahamiri2309 Год назад +45

    Honestly, you two are the best speakers for this subject and beyond. I am so thrilled these lectures are opensource and exist for data science communities outside of MIT!

  • @codingWorld709
    @codingWorld709 Год назад +4

    Thanks a lot for all the wonderful content on deep learning. These are very helpful to me.

  • @MaksimsMatulenko
    @MaksimsMatulenko Год назад +25

    Thank you for doing this! We all are grateful❤

  • @aefieefnvhas
    @aefieefnvhas 10 месяцев назад +2

    Wow, such clarity of thought and ideas. I guess that's the MIT advantage! Well done :)

  • @ersbay5970
    @ersbay5970 Год назад +1

    Thank you all so very much! Many greetings from Germany.

  • @jamesgambrah58
    @jamesgambrah58 Год назад +12

    This is excellent, so grateful to learn a lot from this channel. Kudos to our presenters for laying a solid foundation in deep learning.

  • @EGlobalKnowledge
    @EGlobalKnowledge 6 месяцев назад +2

    Very well presented with intuition behind deep generative modeling, its architecture and how it is being trained, Well done

  • @shovonpal4539
    @shovonpal4539 Год назад +8

    The lectures are top of notch. But in this lecture, I got my track out when she explained GAN with mathematical notions. I had to put some more effort on those again.

  • @VijayasarathyMuthu
    @VijayasarathyMuthu Год назад +12

    Plato's myth of cave Latent Variable example was not intuitive for me (sorry), so I asked a similar example but simpler one to chatGPT. It gave me this:
    Imagine that you have a box filled with different types of candies, but you cannot see what's inside. Instead, you can only touch the box and feel the shape and texture of the candies inside. Based on how they feel, you might be able to guess what type of candy is inside the box. For example, if a candy feels round and has a hole in the middle, you might guess that it's a donut-shaped candy. In this example, the shape and texture of the candies are the observed variables, while the type of candy inside the box is the latent variable that we are trying to learn from the observed data. By observing and feeling the candies inside the box, we can learn the different types of candies that are hidden inside, even though we cannot see them directly.
    You guys are awesome :) Thank you for sharing these lectures. 🙏

  • @natalialidmarvonranke8475
    @natalialidmarvonranke8475 Год назад +3

    Perfect lecture! Congratulations

  • @rrtt1995
    @rrtt1995 Год назад +3

    Thank you for such valuable lecture. 🙌

  • @reinhardts-entropica
    @reinhardts-entropica Год назад +2

    Brilliant presentation. World-class.

  • @Savedbygrace952
    @Savedbygrace952 Месяц назад

    The knowledge, the passion and clarity of presentation are out of this world! God bless you guys!

  • @jensk9564
    @jensk9564 Год назад +7

    wonderful. Very dense and hugely interesting and informative lecture; MIT-style! 60 minutes in a latentspace kind of compression of a hugely complex and multidimensional topic which under reallife conditions takes weeks to understand and "digest". I am really looking forward to the "diffusion model" lecture! Hope it will be online soon!

  • @saikatnextd
    @saikatnextd Год назад +1

    Thank you so much Alexander and Amini.......

  • @AndyLee-xq8wq
    @AndyLee-xq8wq 10 месяцев назад

    Wow! Can't wait to learn the coming lectures!

  • @yousufmamsa
    @yousufmamsa 11 месяцев назад +1

    Greatly appreciate the knowledge sharing.

  • @technocrat827
    @technocrat827 Год назад +1

    quite supportive. Thanks a lot!

  • @giyaseddinbayrak5828
    @giyaseddinbayrak5828 Год назад +2

    I opened to just watch 2 min of the video, and didn't realize untill the lecture is over 😅. Freaking awesome 😎

  • @skhapijulhossen6499
    @skhapijulhossen6499 Год назад +2

    This series is Treasure for me.

  • @AliHaider-wu4wt
    @AliHaider-wu4wt Год назад +2

    Thank you. I was waiting for 1 week.

  • @rishighosh6238
    @rishighosh6238 9 месяцев назад +2

    Hey, I was going through this video with a beautiful explanation on working of GANS. I just want to ask that whether we can say that idea behind working of GANs is to have some sort of overfitting which is usually avoided in traditional ML approaches. Not exactly overfitting but in a way we want to overfit it in a sense that the points are in the probability distribution region of actual points???

  • @frankhofmann5819
    @frankhofmann5819 6 дней назад

    I now feel like a fully connected neural network bye myself now because I've watched hundreds of videos at night that concern deep learning. Best regards from Berlin!

  • @gapsongg
    @gapsongg Год назад +1

    Great! Love these Videos. They help me alot.

  • @TomHutchinson5
    @TomHutchinson5 Год назад

    I love the slide at 57:00. I would enjoy hearing this connection explicitly. How is a discriminator an encoder?

  • @mPajuhaan
    @mPajuhaan Год назад +1

    Perfect to refer, it clearly shows how much you extensively know the subject that you can easily explain.

  • @herlim6927
    @herlim6927 Год назад +1

    Thankyou sir for uploading this , love from India

  • @kirankumar31
    @kirankumar31 Год назад +2

    Learned a lot from this video. One question: Where does styleGAN fit in?

  • @jennifergo2024
    @jennifergo2024 5 месяцев назад

    Thanks for sharing!

  • @sachinknight19
    @sachinknight19 9 месяцев назад

    Thank you for sharing the info... ❤❤

  • @shahnewazchowdhury4175
    @shahnewazchowdhury4175 8 месяцев назад +2

    Hi Alexander & Ava, thanks for this video.
    Thousands of people watch these videos and learn from them. So any mistakes you make will impact them directly. If/when you do find errors or someone points them out to you, it is your utmost responsibility to update about it to your viewers. Please look into the loss functions for GAN. They are incorrect.

    • @sergiogonzalez6597
      @sergiogonzalez6597 5 месяцев назад

      Yes, the formulas for the loss funcition of the GAN are wrong and it was giving me a very hard time. Look here for a full math development of the formulation
      fleuret.org/dlc/materials/dlc-handout-11-1-GAN.pdf

  • @ABHIK-dq7rk
    @ABHIK-dq7rk 17 дней назад

    00:04 Foundations of deep generative modeling for brand new data generation
    02:43 Generative modeling uncovers underlying data structure.
    07:53 Latent variables are unobservable features that explain observed differences in data.
    10:25 Training deep generative models using autoencoders
    15:43 Variational autoencoders introduce randomness for generating new data instances.
    18:07 Optimizing VAE network weights with loss functions
    22:44 Understanding KL Divergence in latent encoding
    24:51 Regularization enforces continuity and completeness in the latent space.
    29:41 Reparametrization allows training VAEs end to end without worrying about stochasticity in latent variables.
    31:57 Understanding latent variables and their impact on generated features.
    36:36 Understanding latent variable learning and its application in facial detection.
    38:52 Generative Adversarial Network (GAN) aims to generate new instances similar to existing data.
    43:30 Generative Adversarial Networks (GANs) involve the competition between the generator and discriminator to create and distinguish between real and fake data.
    45:44 GANs involve a dual competing objective for the generator and discriminator.
    50:44 Extending GAN architecture for specific tasks
    53:14 Cycle GANs enable translation of data distribution across domains.
    57:58 Diffusion models can generate new instances beyond training data

  • @user-bw7gh3vq6q
    @user-bw7gh3vq6q 6 месяцев назад +2

    The GAN discriminator loss is wrong, I think it should be: log(1-D(G(z))) + log (D(x)).

    • @yizhong2544
      @yizhong2544 2 месяца назад

      What a pity, the lecture is perfect but this mistake would mislead a lot of people

    • @aojing
      @aojing 2 месяца назад

      😁Not really. It depends on how you label Fake vs. Real.

  • @germainUX
    @germainUX 18 дней назад

    thanks for this!

  • @nikteshy9131
    @nikteshy9131 Год назад +2

    Thank you))
    Спасибо вам большое 😊🙏🦿

  • @benjaminpagel4241
    @benjaminpagel4241 Месяц назад

    I agree with everyone here... I think those two presenters are just a joy to listen to. Wish I had those profs in my university back then... I'm not an expert, but even I get the fundamental concepts through these sessions. 🙏

  •  Год назад +1

    Incroyable !!!

  • @hilbertcontainer3034
    @hilbertcontainer3034 Год назад +1

    Wow ~another world latest Lecture

  • @sidindian1982
    @sidindian1982 10 месяцев назад

    Excellent Content Ma'am Truly unnbelievable 😊😊😊😊😊

  • @johnpaily
    @johnpaily Месяц назад

    This also seems to explain sudden awakening transformation many people are experiencing

  • @theneumann7
    @theneumann7 Год назад +1

    Never disappointing👌🏻

  • @andreasholzinger7056
    @andreasholzinger7056 7 месяцев назад

    I really like this lecture, what keeps me sleepless is the question: "Can we learn the true (if so) explanatory factors from purely observational data ?"

  • @debanjandas7738
    @debanjandas7738 Год назад +2

    In the GAN objective function we have 2 conflicting objectives. How are we ensuring that it's the generator's goal that is achieved and not the discriminator's?

  • @carlhopkinson
    @carlhopkinson 8 месяцев назад

    Ingenious.

  • @prashantkowshik5637
    @prashantkowshik5637 Год назад

    Thanks a lot.

  • @chucksgarage-us
    @chucksgarage-us 9 месяцев назад

    Random making connections between potentially unrelated things here... at 49:57 and a bit before (that's just where I paused to write this comment) the series of pictures combining a goose and a (other bird, I would classify it as a red breasted robin, but I'm trained on red breasted robins where I'm from) ... I'll call it a robin, while also transitioning aspect from left to right, really reminds me of the transitions from one animal to another done in the movie Willow with the sorceress, Fin Raziel.

  • @aevishh
    @aevishh Год назад +1

    this is great

  • @richarddow8967
    @richarddow8967 Год назад +3

    Euler proved there is a limit to how complex a model can become and still be meaningful. In particular, Euler said that models could become so complex that thet could never be validated, never be calibrated, and yet piecewise seem to be completely reasonable.
    If anyone is familiar with discussions into this area, who are the researchers taking this into account? Just curious., I would like to read more on practical limitations. Based on good math like Euler developed, and not hand waving about piecewise.

    • @richarddow8967
      @richarddow8967 9 месяцев назад

      He was doing fundamental basic theoretical research in today's parlance. Historically, there is long lag in finding applications in such basic knowledge. What is certain, he demonstrated their exists limitations. And we would be unable to discern if the model was properly calibrated or not- ever. I recall reading an opinion by the head of Belgium's national weather service or some such title pointing out that he had concerns the Oceans are such a model. @@RM-gc8lx

  • @andrea-mj9ce
    @andrea-mj9ce Год назад +1

    Is there a lecture that deals with generative language models ?

  • @nicolasg.b.1728
    @nicolasg.b.1728 Год назад +1

    Where can I find the papers mentioned at 35:06?

  • @Gabcikovo
    @Gabcikovo Год назад +1

    Skvelé, ďakujeme!

  • @Peter_Telling
    @Peter_Telling Год назад +1

    I'd like to see something about AI that can adjust its code and observe how it changes its functioning.

  • @davidguthrie3739
    @davidguthrie3739 Год назад +2

    I really appreciate these lectures, but I never could absorb lectures that are simply a script read aloud. I can read the material myself. She's MUCH more effective when she explains concepts from memory without reading from a text.

  • @Ducerobot
    @Ducerobot 10 месяцев назад

    Pure engineering.

  • @edgararakelyan9326
    @edgararakelyan9326 Год назад

    Is there a non-intro deep learning course after this course?

  • @bohanwang-nt7qz
    @bohanwang-nt7qz 3 месяца назад

    🎯Course outline for quick navigation:
    [00:04-01:25]Deep generative modeling
    -[00:04-00:48]Exciting lecture on deep generative modeling in the age of generative ai, a subset of deep learning.
    [01:26-08:45]Generative modeling
    -[03:06-04:04]Generative modeling encompasses density estimation and sample generation for learning data distribution.
    -[04:27-04:51]Learning model approximates true data distribution for density estimation and sample generation.
    -[05:36-06:03]Generative models identify biased features in training data automatically.
    -[06:49-07:17]Generative models can identify rare events like deer in front of a car using density estimation.
    [08:46-23:16]Autoencoders and variational autoencoders
    -[10:07-10:50]Goal: train model to predict latent variables, z, in low-dimensional space.
    -[14:33-15:35]Unsupervised learning uses autoencoders to create compact data representations and generate new examples, such as vaes.
    -[15:59-17:13]Variational autoencoders introduce randomness to generate similar but not strict reconstructions, using means and standard deviations for probability distributions.
    -[17:54-18:37]Encoder and decoder in vae use separate weights to compute and learn probability distributions of latent variables and input data.
    -[20:22-22:45]Regularization term enforces latent variables to follow standard normal gaussian distributions during vae training.
    -[20:57-21:21]Enforcing a latent space following a prior distribution to aid network
    -[22:46-23:16]Kl divergence measures difference between prior and latent encoding.
    [23:17-37:47]Regularization and latent variable learning in vaes
    -[25:19-25:46]Regularization minimizes term to achieve continuity and completeness.
    -[28:08-28:35]Vaes trained end-to-end with re-parameterization for gradient descent and backpropagation success.
    -[32:10-32:45]Network learns to interpret and make sense of latent variables by perturbing them individually.
    -[34:16-35:40]Beta vaes use beta parameter to control regularization term, promoting disentanglement for more efficient encoding.
    -[36:31-36:59]The lecture covers the core architecture of vaes and their application to facial detection.
    [37:47-52:53]Vaes and gans: generative models
    -[37:47-38:15]Vaes compress data into a compact representation to generate unsupervised reconstructions.
    -[38:40-39:43]Transitioning from vaes to gans to focus on generating high-quality samples from complex data distribution.
    -[39:57-41:21]Train a generator network to mimic real data using gans for realistic output.
    -[47:53-48:20]Generator synthesizes data to fool best discriminator, creating new data instances.
    -[50:37-51:30]Using gan to generate synthetic faces, extending gan architecture for specific tasks and data translation.
    [52:55-59:47]Unpaired translation and cycle gan
    -[52:55-53:51]Cyclegan enables unpaired image translation, e.g. horse to zebra, using cyclic dependency.
    -[54:13-54:43]Cycle gan enables flexible translation across different data distributions, including images, speech, and audio.
    -[55:13-55:36]Developed a model to synthesize audio behind obama's voice using cyclegan and alexander's voice data.
    -[57:20-57:48]Diffusion modeling drives tremendous advances in generative ai, seen in the past year, particularly with vaes and gans.
    -[59:06-59:39]Cutting-edge generative ai models making transformative advances across various fields.
    offered by Coursnap

  • @SudarshanVatturkar
    @SudarshanVatturkar Год назад

    I did not understand the latent variable exaple. One can see easily the holding bars in shadow.

  • @nksbits
    @nksbits Год назад +1

    Is there a Q&A forum associated with the lecture series?

    • @nksbits
      @nksbits Год назад +4

      Would be cool if you can transcribe the lecture series and introduce a chatbot trained on the transcript, that can answer any questions we have.

    • @MyzIcyBeatz
      @MyzIcyBeatz Год назад +1

      @@nksbits gigabrain idea

  • @AnujSharma-wy8hv
    @AnujSharma-wy8hv 6 месяцев назад

    Really it's very deep need time to pick it

  • @johnpaily
    @johnpaily Месяц назад

    What exalon constant . . Is it conscious is it dynamic and capable of reversing time.

  • @andrea-mj9ce
    @andrea-mj9ce Год назад +1

    Is it still relevant to teach GANs and autoencoders, instead on just focusing on diffusion models?

  • @Sebastiandst
    @Sebastiandst Год назад +1

    I love you so much thank you for actually reading the myth of the cave

  • @Mathin3D
    @Mathin3D 8 месяцев назад

    Yum, yum, gimme some!
    - Bud Bundy

  • @sovrappensiero1
    @sovrappensiero1 Год назад +2

    I'm sorry for the dumb question but can somebody tell me what's the name of the "E-like" symbol in the reconstruction term at 35:57? It is some kind of norm? How do I make this symbol in LaTeX? (I'm taking notes and I want to write out this equation in my notes.) Thank you!

    • @fstermann
      @fstermann Год назад +2

      That symbol indicates the expected value, you can use it in latex with \mathbb{E} (loading \usepackage{amssymb} is required)

    • @sovrappensiero1
      @sovrappensiero1 Год назад +1

      @@fstermann Ah - of course! I never saw expected value written that way, but yes that makes sense. Thanks so much, I appreciate your help.

    • @binaryquantum
      @binaryquantum Год назад

      @@sovrappensiero1
      That's always how expected value is written. How else have you seen expected value?

    • @sovrappensiero1
      @sovrappensiero1 Год назад +2

      @@binaryquantum I don’t think I’ve ever seen it typed. All my math classes, etc., were handwritten. On homework questions it was typed but a regular E was used…not the special “math E.”

  • @johnpaily
    @johnpaily Месяц назад

    Salutes

  • @johnpaily
    @johnpaily Месяц назад

    Is it taking us non linear thinking of origin from a little perturbation

  • @abhisheksuryavanshi979
    @abhisheksuryavanshi979 Год назад +1

    Any intern opportunities in ML/AI?

  • @Rajibuzzaman_STEM_Rajibuzzaman

    HOW YOU WILL DRIVE A SYSTEM WHEN MAXIMUM STRIVE TO ATTAIN MINIMUM TO BALANCE ENTROPY?

  • @codingWorld709
    @codingWorld709 Год назад +2

    Sir, please provide us one lecture on Faster R-CNN for object detection, please please please please
    🙏🙏🙏🙏

  • @johnpaily
    @johnpaily Месяц назад

    Is this talk taking the line of self organization from a single point or big bang.

  • @omaralkhasawneh1968
    @omaralkhasawneh1968 7 месяцев назад

    Can you give me extra resources

  • @forheuristiclifeksh7836
    @forheuristiclifeksh7836 16 дней назад +1

    22:40

  • @shahidulislamzahid
    @shahidulislamzahid Год назад +1

    wow

  • @forheuristiclifeksh7836
    @forheuristiclifeksh7836 16 дней назад +1

    3:40

  • @DoctorM934
    @DoctorM934 14 дней назад

    15:00

  • @ayushkumarprasad6832
    @ayushkumarprasad6832 9 месяцев назад

    Where to find code for this?

  • @locNguyen-jb1vt
    @locNguyen-jb1vt Год назад

    You can fine underling leadership

  • @johnpaily
    @johnpaily Месяц назад

    Low dimensional data. I see parallel in the big bang origin from point source

  • @nosaaikodon4953
    @nosaaikodon4953 Год назад

    I love how she apologizes when displaying math...😂😂. Its as if she understands the math struggles we all go through. Nevertheless, Its apparent that math is an important aspect of understanding the architecture of machine learning models and developing new ones.

  • @johnpaily
    @johnpaily Месяц назад

    Parallel world information male and female ¿??¿¿

  • @shojintam4206
    @shojintam4206 10 месяцев назад

    24:27

  • @lakshmiprabhakarkoppolu9100
    @lakshmiprabhakarkoppolu9100 10 месяцев назад +1

    RUclips suggested me to watch this.

  • @hussienalsafi1149
    @hussienalsafi1149 Год назад +1

    😁😁😁😁😁☺️☺️☺️☺️❤️❤️❤️❤️

  • @smftrsddvjiou6443
    @smftrsddvjiou6443 5 месяцев назад

    So we don't have labels at the data. Instead we use the input itself as the label. Lol.

  • @locNguyen-jb1vt
    @locNguyen-jb1vt Год назад +1

    Gen folding

  • @johnpaily
    @johnpaily Месяц назад

    Now I understand the projection of God AI emerging in the cloud

  • @johnpaily
    @johnpaily Месяц назад

    Everything spoken here has parallel in living system

  • @johnpaily
    @johnpaily Месяц назад

    The Great attractor of non linear science and explanation to the victory of the good over evil ?¿?¿?????^^^^↑°°′

  • @arifulislamleeton
    @arifulislamleeton Год назад +1

    Introduce myself my name is Ariful Islam leeton im software engineer and software developer and website development and data analytics

  • @johnpaily
    @johnpaily Месяц назад

    Plato's cave. That is what we are in. I am interested in AI because of the projection of evolution AI to bring the Mind of God in the cloud.

  • @locNguyen-jb1vt
    @locNguyen-jb1vt Год назад

    Zip drive

  • @johnpaily
    @johnpaily Месяц назад

    The speaker has entered the spiritual realm and what is happening. The evil thriving along with good trying to hide truth

  • @katateo328
    @katateo328 Год назад +1

    haha, tao noi roi, so AI lam, cao sieu lam, tao ko du kha nang dau, bien di cho khac

  • @maestbobo
    @maestbobo 2 месяца назад

    She did a really poor job of explaining the relatively straightforward and core concept of VAEs.
    Really shallow and difficult to follow, which is a rare combination.
    Plus, her speaking style is way too theatrical and distracting. There are better resources or there on the same topic.

  • @taedhall7253
    @taedhall7253 Год назад +1

    Good night tutor. lovely dress love taed h.