Unadjusted Langevin Algorithm | Generative AI Animated

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  • เผยแพร่เมื่อ 14 ม.ค. 2025

ความคิดเห็น • 64

  • @Deepia-ls2fo
    @Deepia-ls2fo  19 วันที่ผ่านมา +2

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    • @MeetWithMR
      @MeetWithMR 18 วันที่ผ่านมา

      Amazing video👍.
      I have request to you, can you make a video on text-to-image generation models (Stable Diffusion, DALL·E) to help us understand how they work, from basic to advanced, including deep mathematical operations ?

    • @Deepia-ls2fo
      @Deepia-ls2fo  18 วันที่ผ่านมา

      @MeetWithMR Thanks, that's something I'd love to cover ! There are other high priority topics that I'll focus on though. :)

  • @duartepombo551
    @duartepombo551 19 วันที่ผ่านมา +29

    This is the optimal amount of math in my opinion, I feel there are a lot of videos going through the intuition but there are a lot of important details missing when we dont look into the math. It is similar to learning about a data structure or an algorithm without actually programming it. I think it is an essential part of understanding more deeply a subject

    • @macchiato_1881
      @macchiato_1881 13 วันที่ผ่านมา

      Research presenters often times really suck at connecting the math in their work with intuition. I'm glad 3b1b has set the standard in math communication, that's why more and more people are up to this level of communicating difficult topics

  • @monsterkillerxzx8766
    @monsterkillerxzx8766 16 วันที่ผ่านมา +1

    I completely agree that this amount of math is perfect. Lots of channels don't go in depth/technical and it's useless to watch. I like when the videos are less hand wavy in their description. Keep up the good work with more math videos like this!!

  • @clickbaitking6770
    @clickbaitking6770 19 วันที่ผ่านมา +11

    Amazing video - love that you don’t ignore the maths! I find the math helps my intuition a lot

  • @MachineLearningStreetTalk
    @MachineLearningStreetTalk 17 วันที่ผ่านมา

    Awesome job man - really enjoyed watching

    • @Deepia-ls2fo
      @Deepia-ls2fo  17 วันที่ผ่านมา +1

      Thanks, love your work too :)

  • @julianchan210
    @julianchan210 15 วันที่ผ่านมา

    Wow honestly i been struggling to find a good deep learning channel which balances rigor with the right amount of intuition, this is perfect! Looking forward to the videos !!

  • @myliu6
    @myliu6 18 วันที่ผ่านมา +1

    Absolute cinema!! Everything from the smooth animations, clear explanations, and music.

  • @StratosFair
    @StratosFair 16 วันที่ผ่านมา

    I'm a grad student working on theoretical machine learning and i have to say this was a perfect explanation of the Langevin algorithm and score matching. You really found the sweet spot between mathematical rigour and conceptual intuition, and the gorgeous manim animations make it all super easy to visualise. Your channel will blow up soon, trust me

  • @dissolvingkarma5081
    @dissolvingkarma5081 12 วันที่ผ่านมา

    Great tutorial! Clear and precise explanation of underlying mathematics without too many jargon.

  • @any9912
    @any9912 16 วันที่ผ่านมา

    Thank you for showing the math derivations as well, this is absolutely one of the best channels on TH-cam. Thanks a lot

  • @sebastiengrand2777
    @sebastiengrand2777 18 วันที่ผ่านมา +2

    Amazing explanations with great animations as usual ! Thanks a lot for your work. Can't wait to see more.

  • @GumRamm
    @GumRamm 9 วันที่ผ่านมา

    Excellent video! great depth, explanations, and visualizations, keep it up!

  • @priyanshu2655
    @priyanshu2655 18 วันที่ผ่านมา +2

    Amazing video! Hats off! Please try to upload videos more frequently.

  • @Jesusrhivan
    @Jesusrhivan 16 วันที่ผ่านมา

    Incredible animations and amazing explanations. Really thanksss

  • @luke.perkin.online
    @luke.perkin.online 14 วันที่ผ่านมา

    Great video! Sorry if my comment on your previous video was a little harsh, I've edited it now. Hope it was constructive, and you've done a fantastic job diving a bit deeper! Looking forward to part 3! There's some interesting parallels in the maths to compressive sensing too!

  • @AntonVictorin
    @AntonVictorin 9 วันที่ผ่านมา

    Fantastic channel man! This is pure gold!

  • @mepalash
    @mepalash 9 วันที่ผ่านมา

    Great video series! Would be very nice if you could add videos dealing with timeseries data as well e.g. RNNs!

  • @sunaxes
    @sunaxes 18 วันที่ผ่านมา

    I love your videos, they are the perfect blend!

  • @tommyliao5508
    @tommyliao5508 18 วันที่ผ่านมา

    This is phenomenal, thanks for this dude!

  • @parsakhavarinejad
    @parsakhavarinejad 16 วันที่ผ่านมา

    I really enjoyed watching. It is so great that you include math❤

  • @33gbm
    @33gbm 17 วันที่ผ่านมา

    Again a fantastic video! And again, I got interested in the songs you use. Could you please add the names of the songs you use in your videos?

  • @ai_outline
    @ai_outline 18 วันที่ผ่านมา +3

    I love computer science and math!

  • @woowooNeedsFaith
    @woowooNeedsFaith 17 วันที่ผ่านมา +1

    3:19 - I don't understand the justifications for the simplification of distributed equation. It seems to require E[x^ | y] == x^. This would happen if you interpret x^ as a constant, but how would you justify it?

    • @StratosFair
      @StratosFair 16 วันที่ผ่านมา

      Which part specifically do you think requires E[x^ | y] == x^ ? I rewatched the deruvations at that time stamp but i can't see what you're referring to

    • @woowooNeedsFaith
      @woowooNeedsFaith 16 วันที่ผ่านมา

      @@StratosFair Equation is expanded and simplified at one step just next. It is visible at 3:22. For example term ||x^||^2 has already lost its E[... | y] part.

    • @StratosFair
      @StratosFair 16 วันที่ผ่านมา

      @@woowooNeedsFaith ok I see, actually this is justified because x^ is implicitly assumed to be a function of y, i.e. we have x^ = f(y) for some (unknown) measurable function f (this makes sense if you look at how the algorithm works). Then the equality E[x^ | y] = x^ follows from some basic properties of conditional expectation.
      If this doesn't feel right to you, try to look up a proof of why the conditional expectation minimizes the L2 loss, i think you should be able to find one on wikipedia.

  • @chainetravail2439
    @chainetravail2439 15 วันที่ผ่านมา

    Thank you so much !!!
    You just saved me a lot of time for doing the state of the art of my master thesis

    • @Deepia-ls2fo
      @Deepia-ls2fo  15 วันที่ผ่านมา

      Glad it helps ! Don't hesitate to share the channel around to other students :)

    • @chainetravail2439
      @chainetravail2439 15 วันที่ผ่านมา

      @Deepia-ls2fo I shared it with the teacher

  • @serkanhamdigugul9790
    @serkanhamdigugul9790 19 วันที่ผ่านมา +2

    Amazing video ❤

  • @majesticwalrus46
    @majesticwalrus46 17 วันที่ผ่านมา

    8:00 wouldn't applying integration by parts to the second term give xp(y)-xp(y)=0?

  • @romaing.1510
    @romaing.1510 15 วันที่ผ่านมา

    At 4:16, shouldn't it be x instead of y marked in orange on the horizontal axis? Since p(y|x) is (according to thd gaussian hypothesis) gaussian centered at x.

    • @Deepia-ls2fo
      @Deepia-ls2fo  14 วันที่ผ่านมา

      x is varying on the horizontal axis so p(y|x) is centered on y (the gaussian likelihood is symmetric) !
      But to be fair this is just for the intuition and not meant as a rigorous representation :)

  • @MutigerBriefkasten
    @MutigerBriefkasten 19 วันที่ผ่านมา

    Thank you for the great content, keep going 🎉😊

  • @pastorofmuppets7654
    @pastorofmuppets7654 18 วันที่ผ่านมา

    3:54 where have we assumed gaussian noise so far?

  • @akmalmaksumov9738
    @akmalmaksumov9738 5 วันที่ผ่านมา

    The audio is weak, couldn't hear anything (just heads up for future videos)

    • @Deepia-ls2fo
      @Deepia-ls2fo  5 วันที่ผ่านมา

      Thanks I'll increase everything !

  • @Arkonis1
    @Arkonis1 15 วันที่ผ่านมา

    Awesome!

  • @triforce42
    @triforce42 17 วันที่ผ่านมา +1

    I do not get it, to be honest. I get it a little more than I ever have. But I still don't get it. I understood some of the other vids more. Here, my trouble is probably to do with statistics: prior, posterior, likelihood. Maybe I'd be best off returning to this after learning those concepts.

    • @Deepia-ls2fo
      @Deepia-ls2fo  17 วันที่ผ่านมา

      Many statistics concepts (such as the MAP, MMSE, maximum likelihood, EM, etc..) are everywhere in machine learning, so it'll be well worth it to learn about those

    • @AntonVictorin
      @AntonVictorin 9 วันที่ผ่านมา

      Can say that learning the math behind these things are suuuuper helpful. Have spent the last year in statistics and probability theory. Before it, I did not grasp things like this, now I can (if I really try)

  • @any9912
    @any9912 16 วันที่ผ่านมา

    Amazing!!

  • @mylittleheartscar
    @mylittleheartscar 18 วันที่ผ่านมา

    Emma langevin getting un adjusted with this one

  • @nicolaiverheul
    @nicolaiverheul 16 วันที่ผ่านมา

    More bayesian deep learning!

  • @aloysius_music
    @aloysius_music 16 วันที่ผ่านมา

    Brilliant! The biggest disappointment was checking your channel and seeing the diffusion model video is yet-to-come

  • @szinifer6040
    @szinifer6040 18 วันที่ผ่านมา +1

    Damn I'm dumb as hell

    • @keeperofthelight9681
      @keeperofthelight9681 18 วันที่ผ่านมา

      Incorrect! We ARE Groot!

    • @Deepia-ls2fo
      @Deepia-ls2fo  18 วันที่ผ่านมา +4

      @@szinifer6040 Just know that it took me one full year of reading papers and doing actual research, just to understand these topics.
      And I'm sure there are still a lot of things that I don't understand.
      So it's ok if you don't get everything after a 20min video, it's more of an invitation to dive deeper. :)

    • @szinifer6040
      @szinifer6040 17 วันที่ผ่านมา

      @@Deepia-ls2fo thx bro

  • @MennosMiss
    @MennosMiss 18 วันที่ผ่านมา

    You're doing a fantastic job! I have a quick question: I have a SafePal wallet with USDT, and I have the seed phrase. (alarm fetch churn bridge exercise tape speak race clerk couch crater letter). Could you explain how to move them to Binance?

  • @milosbijanic2282
    @milosbijanic2282 19 วันที่ผ่านมา

    gg

  • @optozorax_en
    @optozorax_en 19 วันที่ผ่านมา +1

    I love your content, but sometimes there is too much math, and I skip it 😓. I personally prefer the ideas, resulting solution and concrete performance examples with loss graphs, instead of derivation

    • @Deepia-ls2fo
      @Deepia-ls2fo  19 วันที่ผ่านมา +2

      Finding the balance between the math and animations is always the most difficult part.
      This time I might have added too much math :C

    • @optozorax_en
      @optozorax_en 19 วันที่ผ่านมา

      @@Deepia-ls2fo btw, I'm some sort of youtuber myself, and I you want free review of your script or rendered video, you can ask me, since I'm going to watch your video anyway

    • @serkanhamdigugul9790
      @serkanhamdigugul9790 19 วันที่ผ่านมา +8

      With due respect to commenter's thought, I want to say that I love the math inclusion in your videos and I really think this makes your channel really stands out. As a suggestion maybe splitting videos into parts with some of which includes heavy math and others explains intiutions be a possible good approach.

    • @StratosFair
      @StratosFair 16 วันที่ผ่านมา +3

      Respectfully, i think your opinion is in the minority (looking at the other comments). There are so many channels out there giving hand wavy and purely intuition based intro to those ml algorithms, so it's nice having someone explaining some of the maths behind (and trust me he could have added a looooot more maths if he wanted). Also if you don't want the mathy stuff you can just skip that part and focus on the other explanations and visualizations ;)

    • @AndreiIhanus
      @AndreiIhanus 13 วันที่ผ่านมา +1

      @@Deepia-ls2foplease keep the math in, I want to understand the actual proscess not just idea of it.