What are GANs (Generative Adversarial Networks)?

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  • Опубликовано: 31 май 2024
  • Learn more about watsonx: ibm.biz/BdvxDJ
    Generative Adversarial Networks (GANs) pit two different deep learning models against each other in a game. In this lightboard video, Martin Keen with IBM, explains how this competition between the generator and discriminator can be utilized to both create and detect how you can benefit from the competition.
    #GAN #GenerativeAdversarialNetworks #AI #watsonX
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Комментарии • 127

  • @baqirhussein1109
    @baqirhussein1109 2 года назад +24

    I like the way he smiles and the calm talking

  • @julesnzietchueng6671
    @julesnzietchueng6671 2 года назад +23

    He clearly loves his job and its communicative ^^

  • @ahmedaj2000
    @ahmedaj2000 11 месяцев назад +12

    loved it. simple enough to be understood yet complex enough to get the important details

  • @canaldot.5243
    @canaldot.5243 Месяц назад +3

    Wow, this is the first time I really understand the concept of GAN. Well explained. Loved it

  • @KW-md1bq
    @KW-md1bq Год назад +6

    I don't think it's very nice to talk about someone else's amazing invention without mentioning their name. (Ian Goodfellow created GANs in 2014)

  • @TheAkdzyn
    @TheAkdzyn Месяц назад

    This was excellent. Came across gans a while back but some of the explanations i got were deeply technically complicated so I couldn't quite understand them properly but this was very precise yet relatively concise for the amount of information it conveyed. Well done. I'll look for more from you!

  • @shubha07m
    @shubha07m Год назад +5

    Just one sentence: The easiest yet more powerful explanation of GAN!

  • @AishaKyes
    @AishaKyes 2 года назад +10

    this was so easy to understand and interesting, thank you!

  • @aryamahima3
    @aryamahima3 Год назад +6

    Just loved his attitude and way of explaining the concepts.. 😊😊😊

  • @tanezcorvideos
    @tanezcorvideos Год назад +1

    Really perfect explanation of GAN, well done!!

  • @robertdTO
    @robertdTO Месяц назад

    Excellent, clear, to the point in introducing GAN.

  • @nokostunes
    @nokostunes Год назад +4

    kudos for the clear explanation + writing all those diagrams backwards :]

  • @jayanthmankavil
    @jayanthmankavil 5 месяцев назад +2

    Thank you, IBM, for these videos!!

  • @suvidhibanthia212
    @suvidhibanthia212 Год назад

    You made it so easy to understand. Thank you!

  • @lethane11
    @lethane11 2 года назад +2

    Superbly explained. Thank you

  • @saharghassabi
    @saharghassabi Месяц назад

    Thank you very much... It was so intresting way of teaching this network

  • @deyon4521
    @deyon4521 2 года назад +31

    How is he writing with his left hand, from right to left and mirrored so that i can understand.🧐 Or is this just his secret talent.

    • @IBMTechnology
      @IBMTechnology  2 года назад +11

      If you want to find out we shared some backstage "secrets" on our Community page, you can check it out here 👉 ibm.co/3pT41d5

    • @toenytv7946
      @toenytv7946 2 года назад +1

      Elementary my dear Deyon nice one.

    • @sc1ss0r1ng
      @sc1ss0r1ng 2 года назад +15

      He's writing it normally in front of himself and then they have mirrored the video, so we see what he actually saw when they made the video.

    • @SheSweetLikSugarNSavage
      @SheSweetLikSugarNSavage Год назад

      😆

    • @recursosmusicales399
      @recursosmusicales399 Год назад

      Is a fake 😱🤣

  • @vrundraval6878
    @vrundraval6878 7 месяцев назад +3

    this is what you call a clear explanation, thanks

  • @usamazahid1
    @usamazahid1 Год назад +2

    elegant explanation .....great job

  • @huynhphanngockhang5733
    @huynhphanngockhang5733 3 месяца назад +1

    oh i like his voice so much, he teach very very easy to aproach

  • @MasoodOfficial
    @MasoodOfficial Год назад +2

    Excellent Explanation!

  • @sapnilpatel1645
    @sapnilpatel1645 Год назад

    Very Informative video.Thanks for making it.

  • @yasithudawatte8924
    @yasithudawatte8924 Год назад +2

    Very well explained😇, thank you.

  • @Surya25398
    @Surya25398 Год назад +2

    It is really helpful, thanks for your video

  • @user-xn8wg6yw7g
    @user-xn8wg6yw7g 2 месяца назад

    Good explanations. Thanks.

  • @somuchtech9864
    @somuchtech9864 8 месяцев назад

    Very well explained. Thanks for sharing

  • @sathirawijeratne7872
    @sathirawijeratne7872 4 месяца назад +1

    Love this explanation!

  • @mhmoudkhadija3839
    @mhmoudkhadija3839 Год назад

    Very nice explanation! Thanks sir

  • @kitrt
    @kitrt 2 года назад +9

    How far are we from networks that generate networks, I wonder.
    Like a network that tries to produce the most efficient neural network structure to achieve a good enough result in the shortest amount of time (or cloud resources) in a given use case. Or it's more efficient to just use genetic algorithms?

  • @xmlviking
    @xmlviking 5 месяцев назад +1

    I absolutely love this topic. The advances in human medicine could be incredible with this. A sample "input" from a bio organism...and then a model "of you're target cell types"...and then prediction on outcomes...and then further samples of "feedback agent" and then training you're human cell model. Then we introduce the GAN and think about our models accuracy. The future state possibilities of identifying interactions "trainings" with various drugs etc. This type of interaction could lead to identifying bio organisms not just humans and potential outcomes of interactions with them. Extrapolate that with humans and food allergies, diseases etc. It's mind boggling. When he is talking about CNN's and the use of alternate examples with Discriminators and Generators with Encryption my mind exploded. You could, hypothesize a Hedy Lamar like frequency agility but apply that to encryption and use an encryption agile chain. Good lord, super computationally expensive but man that would be nearly unusable from theft point of view. Would take you forever to crack that..as all the data could change from one form to another over time of transmission.

    • @TWHICH
      @TWHICH 4 месяца назад

      damn

  • @petchpaitoon
    @petchpaitoon 2 года назад +3

    Thank you, It is informative

  • @Democracy_Manifest
    @Democracy_Manifest Год назад +1

    Great video, perfect presentation. Was this artificially generated?

  • @aryanarya72
    @aryanarya72 3 месяца назад

    I loved the way he said in the end - "turn a young, impressionable, and unchanged generator to a master of forgery".🦊🦊

  • @taqiadenal-shameri3800
    @taqiadenal-shameri3800 Год назад

    Amazing explanation

  • @syedmuhammadsameer8299
    @syedmuhammadsameer8299 Год назад

    For the image upscale problem, would we still feed the generator random noise or will we give it the lower res image?

  • @sitrakaforler8696
    @sitrakaforler8696 Год назад

    Dam.... thanks for sharing it so clearly !!!

  • @GigaMarou
    @GigaMarou 2 года назад +3

    well explained sir! but i don't get the application of GANs in the context of video.

  • @yuvrajanand1991
    @yuvrajanand1991 9 месяцев назад

    Simply Loved it

  • @gauravpoudel7288
    @gauravpoudel7288 4 месяца назад +1

    Appreciate the effort put into generating such great content.
    BTW I don't quite understand how generator and discriminator concept can be applied to :
    predicting the next video frame OR
    creating higher resolution image
    These were discussed in the video at 07:15

    • @parteeks9012
      @parteeks9012 23 дня назад

      It can be used as a discriminator. As we can feed some part of the video and ask him what the person is going to do next? if the prediction is correct then feed more hard questions otherwise discriminator has to improve its weight.

  • @abdurrouf4159
    @abdurrouf4159 4 месяца назад

    Well explained.

  • @usama57926
    @usama57926 Год назад +1

    good explanation

  • @subodhi6
    @subodhi6 2 года назад +2

    Thank you..!

  • @debayanguha3026
    @debayanguha3026 2 года назад +1

    thank you ,it's great ...!

  • @engin-hearing5978
    @engin-hearing5978 2 года назад +13

    Very nice video and super clear explanation. I would like to ask a question, staying on the architecture of GANs, one could believe that their results would periodically improve. If this is a possibility, are we measuring how much deep fakes improved from one year (for instance) to another? I think would be interesting to know it to understand if one day we will still be able to detect them through digital forensics algorithms.

    • @Arne_Boeses
      @Arne_Boeses 2 года назад +4

      With better and better Deepfakes generated, also the tech to detect deepfakes gets better and better.

    • @reggaemarley4617
      @reggaemarley4617 Год назад +1

      @@Arne_Boeses But will detection technology ever be able to outpace generation technology? Based on this video is sounds like discriminator type systems are destined to lose.

  • @alaad1009
    @alaad1009 6 месяцев назад

    Excellent video

  • @heidikeller50
    @heidikeller50 Год назад

    Super- thank you :)

  • @betrunkenerbierkutscher
    @betrunkenerbierkutscher Год назад +3

    Thank you very much for this video it was very helpful and comprehensive. ☺
    I have two questions regarding the image generation. Maybe you can help me:)
    1.Taking your example of generating a picture of a flower; does the generator have any kind of "knowledge" of how a flower roughly looks in the beginning? Or does it randomly give a pattern of pixels to the discriminator and learns by the rejection it gets?
    2. How do GANs work in the text-to-image generators? For example, I wanted to have an image of a blue banana and my GAN gets this input as a text prompt, how would Discriminator and Generator tackle this? Would the input be relevant only to the discriminator?
    Thank you!

    • @praneeththota5459
      @praneeththota5459 Год назад +7

      I think I can answer to your questions
      1. Yes generators learn to map random input vectors to fake flowers without any prior knowledge of how flowers generally look, however one can use a pretrained encoder from Image encoder and decoder neural network that has been trained to encode and decode flower images. This way the generator would have some prior knowledge on where to look in a given input of random vector to generate flowers thus making the convergence faster
      2. In GANs just like how we pass on random input vector, while converting text to images, one can make use of an encoder network to map the input text into embeddings (something that's called word embeddings in the NLP domain). Now these embeddings can be passed to GANs inplace of the random input vector. But in this case the descriminator has to have knowledge to perform multi-class classification, as text-to-images might involve generating multiple objects/entities unlike in GANs alone where we try to generate only one particular entity like flowers, or faces or cats etc

  • @user-bs4vu6mw7f
    @user-bs4vu6mw7f Год назад

    I want to generate images through GAN from MIAS dataset. Which GAN architecture is most suitable?

  • @EmpoweredWithZarathos2314
    @EmpoweredWithZarathos2314 7 месяцев назад

    Loved it😅

  • @BintAlAbla1999
    @BintAlAbla1999 2 года назад +3

    Great video, very well done, thank you. I can see it can generate amazing imagery etc.. Allow me to ask a dumb question. What is the point of GANS? How does it enhance learning, for example? I just don't get 'the point'.

    • @Behdad47
      @Behdad47 Год назад

      Have you found your answer yet?

  • @andyjc9558
    @andyjc9558 Год назад +1

    Can I use GANs to generate a lot of Fake defects images of a product and use to train a 1st model?

  • @fundatamdogan
    @fundatamdogan Год назад +1

    I loved the lesson.But GANs more :)

  • @animanaut
    @animanaut Год назад

    what is the difference between a discriminator and a classifier? or are these synonyms. reason i am asking is: classifiers are sometimes mentioned when it comes to detection of generated content. but, if a discriminator in the endstages of many iterations is basically no better than guessing it does not seem a viable solution for this problem

  • @MdAbdullah-gn6uj
    @MdAbdullah-gn6uj Месяц назад

    Nice video

  • @Aimeecroft
    @Aimeecroft 3 месяца назад

    I dont know if your still responding to comments, but ill give it a try!. Im currently looking at deepfakes for undergraduate project. With the GANs updating everytime they lose does this refer to the deeplearning?

  • @Callmejz.ai01
    @Callmejz.ai01 7 месяцев назад

    if this is unsupervised, how does the discriminator "know better be able to tell where we have a fake sample coming in"?
    thank you for your theory, and the flower example! #creatoreconomy

  • @golamrob
    @golamrob 8 дней назад

    excellent

  • @Has_Le_India13
    @Has_Le_India13 11 месяцев назад

    if we are giving the discriminator a domain for learning shapes of flower isnt is supervised learning how it is unsupervised since we are providing a domain to learn

  • @user-uw1bb6rr8i
    @user-uw1bb6rr8i 3 месяца назад

    Hey there, I am writing my bachelor thesis about how safe facial recognition authenticators will be with improving AI image creation. Would you say that GANs can oppose a risk to facial recognition authenticators?
    Thank you

  • @apdy1095
    @apdy1095 Год назад +1

    can someone tell me wht the core idea behind DDQN and GAN is same

  • @AixinJiangIvy
    @AixinJiangIvy 4 месяца назад

    It‘s helpful. Finally know what GANs are, appreciate it.

  • @blumehao
    @blumehao Год назад +1

    you use right hand?

  • @prateekkatiyar9532
    @prateekkatiyar9532 2 года назад +2

    Great

  • @basedmatt
    @basedmatt Год назад

    Could somebody explain to me the difference between a GAN and Zero-Shot Learning?

  • @jasonchen7758
    @jasonchen7758 Год назад +2

    He is either a lefty that can write mirror image sentences from right to left in real time, or the video was post processed?

  • @uurv
    @uurv 2 года назад +1

    is this possible to make a one image into different poses, variations. Can anyone reply to this image

    • @hassanbinali1999
      @hassanbinali1999 2 года назад +1

      Yes udaya it is possible. We call this method "data augmentation". You can find a lot of techniques on internet related to this.

  • @Krunkbitmos
    @Krunkbitmos 2 месяца назад

    the discrimator is trained a normal way with real flower pictures? how is the generator trained to make the first flower? like how does it know to output certain data in certain size and colors etc? i understand how it can update if wrong but how is the generator actually generating?

  • @MdAbdullah-gn6uj
    @MdAbdullah-gn6uj Месяц назад

    Nice

  • @Zackemcee1
    @Zackemcee1 Год назад

    Is this what Nvidia is using for its new frame generation technique in the RTX 40 series? I'm just guessing before checking the internet

  • @keshavmiglani2697
    @keshavmiglani2697 8 месяцев назад

    Did DALL-E 2 use GAN?

  • @MdAbdullah-gn6uj
    @MdAbdullah-gn6uj Месяц назад

    😊Nice

  • @Evokus
    @Evokus Год назад

    Are we just going to ignore the fact that he's writing backwards??? That thing is skill man

    • @uday3350
      @uday3350 Год назад +1

      Relax, he would have flipped the video left to right so that you don't see the text backwards.

    • @tudorrad5933
      @tudorrad5933 Год назад

      I literally spent the entire video not listening to him and asking myself what wizardry he uses to write mirrored.

    • @Billy-sm3uu
      @Billy-sm3uu Год назад +1

      he wrote with his right hand then mirrored the video

  • @storytimewithme2
    @storytimewithme2 10 месяцев назад

    why don't you have a link to the CNN video that he mentions?

  • @drakefruit
    @drakefruit Год назад +2

    how do you write backwards so well lol

  • @DavOlek_ua
    @DavOlek_ua 2 года назад +2

    picture is mirrored? my brain is glitching and I don't know why lol

    • @IBMTechnology
      @IBMTechnology  2 года назад +1

      Hey there! We shared some behind the scenes of our videos on the Community page, check it out here 👉 ibm.co/3dLyfaN 😉

    • @DavOlek_ua
      @DavOlek_ua 2 года назад +1

      @@IBMTechnology haha I knew it is exactly like that!)

  • @THEMATT222
    @THEMATT222 2 года назад +1

    Noice 👍 Doice 👍 Ice 👍

  • @RuiMartins
    @RuiMartins Год назад +1

    I hope the host understands that he could write normally, instead of reflected, since he just needs to mirror the video in the end and everything would be correct from the viewers view.

  • @erikschiegg68
    @erikschiegg68 2 года назад +1

    Gimme Ampere 100 Now! (GAN)
    Just for StyleGAN3, please, sir.

    • @sc1ss0r1ng
      @sc1ss0r1ng 2 года назад

      no, you give me 100 amperes now and also 1500 volt, madam. I will not ask twice, hand it over, or you will be shocked, by the consequences.

  • @leif1075
    @leif1075 Год назад

    Didn't most everyone else think that is not what zeromsum game meant..inthoight if there is an advantage for one player that would not be a zero sum game..

  • @saifshaikh8679
    @saifshaikh8679 21 день назад

    Are Generators used for creating deep fakes?

  • @IshanJawade
    @IshanJawade 18 дней назад

    How can he write upside down

  • @java2379
    @java2379 Год назад

    I don't get that the discriminator should be updated if the generator succeeds. The image was 'fake' ( i would say synthesized ) and the whole point of the game beeing to teach the generator how to synthesize image that are as far as possible close to the 'real data' dataset. There is no failure per say.
    It all depends on what you means by fake:
    1- Fake means even if its a realistic flower but does not belong to the 'real' dataset it a fake.
    2- Fake means its not a flower ,its a car , or garbage so the discriminator is unhappy of the generator's job.
    You seem to define fake as per definition 1 ; in this case , you can directly compare image pixels by pixels and calculate euclidian distance for the error to backpropagate on the generator, you don't need a neural network for the discriminator , do you?
    So i think the correct definition is 2. Hence the discriminator never has to learn from the generator.
    >> I know you work for IBM , so its likely that i missed a point , kindly let met know 🙂

  • @--Dipanshu--
    @--Dipanshu-- 4 месяца назад

    how is he writing backwards?

    • @aryanarya72
      @aryanarya72 3 месяца назад

      He's not writing backwards. It appears as if he is. He is writing normally like you would on a board or a notebook.

  • @mewtu5817
    @mewtu5817 10 месяцев назад

    A gan is a speedcube

  • @ShaliqAbu
    @ShaliqAbu Месяц назад

    Avengers need you ,pls go back....

  • @techwithbube
    @techwithbube 2 года назад +3

    First to comment .

  • @Steppinonshii
    @Steppinonshii 5 месяцев назад

    what type of magis is this . he is writing backwards

    • @IBMTechnology
      @IBMTechnology  5 месяцев назад +1

      See ibm.biz/write-backwards for the backstory

    • @Steppinonshii
      @Steppinonshii 5 месяцев назад

      @@IBMTechnology omg 🤣🤦‍♂️

  • @SheSweetLikSugarNSavage
    @SheSweetLikSugarNSavage Год назад

    I've had a few supervisors that I'm sure were fake samples.😐

  • @RudreshSisodiya
    @RudreshSisodiya Месяц назад

    If IBM don't have money for mirror marker, send me the bank details, I'll pay for it.

  • @mariusulmer1932
    @mariusulmer1932 Год назад

    superb backwards writing

  • @ChaojianZhang
    @ChaojianZhang 2 месяца назад +1

    Feels like talking something but didn't tell much.

  • @hi_dude_im_a_man
    @hi_dude_im_a_man Год назад

    No it’s a cubing company

  • @zlygerda
    @zlygerda Год назад

    He's not really left handed, you know.

  • @nikolakalev4914
    @nikolakalev4914 Год назад

    Are you really writing all of this backwards?

  • @petteruvdal3353
    @petteruvdal3353 9 месяцев назад

    Yo he writing backwards

  • @jonobvious
    @jonobvious 3 месяца назад

    isn't it weird how all these glass whiteboard people are left handed. like usually about 10% of people are left handed but these guys I swear are like 90%, weird

    • @albertxcastro
      @albertxcastro 2 месяца назад +1

      Isn't the video mirrored horizontally? Otherwise I can't explain why we can see in the right direction what he's writing

    • @chintanshah6234
      @chintanshah6234 2 месяца назад

      They're right handed..it is horizontally mirrored

  • @thechoosen4240
    @thechoosen4240 8 месяцев назад

    Good job bro, JESUS IS COMING BACK VERY SOON; WATCH AND PREPARE

  • @jotatd4038
    @jotatd4038 7 месяцев назад

    Bro just kept talking and said nothing

  • @MdAbdullah-gn6uj
    @MdAbdullah-gn6uj Месяц назад

    Nice