Neural Networks from Scratch - P.3 The Dot Product

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  • čas přidán 2. 06. 2024
  • Neural Networks from Scratch book: nnfs.io
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    #nnfs #python #neuralnetworks

Komentáře • 914

  • @clementsiow176
    @clementsiow176 Před 4 lety +308

    When I search how to do machine learning from scratch:
    The videos: So you first do import tensor flow
    Me: closes video
    Me finds you tutorial series: I like this one

    • @farenhite4329
      @farenhite4329 Před 3 lety +31

      This is my main problem with virtually every ML tutorial on CZcams that is not a basic introduction. They don’t explain how it works, they just tell you to import a library.

    • @clementsiow176
      @clementsiow176 Před 3 lety +3

      @@farenhite4329 yep exactly

    • @georgemunyoro
      @georgemunyoro Před 3 lety +22

      @@farenhite4329 Its because they themselves dont understand how it works

    • @zendr0
      @zendr0 Před 2 lety

      yes..so true. Now a days u will find tons of tutorials about DL and ML and all of them focuses on the importing and application of diff frameworks and libraries, rather than proper deep level intuitions.

  • @yoghurtgrinch1040
    @yoghurtgrinch1040 Před 4 lety +668

    The animations are so helpful!

    • @sentdex
      @sentdex  Před 4 lety +49

      Glad you like em!

    • @Kawabolole
      @Kawabolole Před 4 lety +7

      @@sentdex I was thinking the same thing, also they look pretty cool! What tool are you using to do them ? I have a friend who is a physics teacher and might be interested in that :)
      (edit) Maaaan every time I ask a question i have to remove it because you answer it later in the vid or in the next one, awesome ^_^

    • @ulissemini5492
      @ulissemini5492 Před 3 lety +9

      @@Kawabolole he is using maim by 3b1b

    • @elimiNator345
      @elimiNator345 Před 3 lety +2

      This comment are so not helpful

    • @muhammadiqbalbazmi9275
      @muhammadiqbalbazmi9275 Před 3 lety +1

      @@sentdex How do you do this?

  • @trophieboi1820
    @trophieboi1820 Před 4 lety +205

    i knew u would upload in 7 days.
    I kinda counted days left like a child.

    • @sentdex
      @sentdex  Před 4 lety +43

      We tried so hard to upload faster. Still trying xD

    • @IsfhanAhmed
      @IsfhanAhmed Před 4 lety +6

      @@sentdex i think its good so we can feel the value

    • @adjbutler
      @adjbutler Před 4 lety

      i second this. my only complaint is that these videos are comming out too slowly. pls help us!

    • @mab3431
      @mab3431 Před 4 lety

      @@sentdex 4 days break will be good for a video.

    • @leeschmalz6365
      @leeschmalz6365 Před 4 lety +1

      @@adjbutler I like the post rate right now. Really lets you mull over the new information, which will be especially helpful when we get to the more complicated parts of nn's. Especially considering Harrison is writing his book alongside making this, it's a great amount of content and builds anticipation for each release (something that lacks when I go back through his old playlists and binge them all at once) :D

  • @jacobroling2287
    @jacobroling2287 Před 4 lety +76

    Please don't abandon this series! CZcams is begging for a tutorial this clear and concise about neural networks! Thankyou!

    • @sentdex
      @sentdex  Před 4 lety +9

      Wouldnt think of it!

    • @aaaa1111muffin
      @aaaa1111muffin Před 11 měsíci +1

      @@sentdex pls pls pls finish it

    • @slyperior8716
      @slyperior8716 Před 9 měsíci +1

      @@sentdex you will make great contributions to society if you continue this series

    • @m1520n
      @m1520n Před 9 měsíci +1

      ​@@sentdex are you planning to add new episodes? 🙏

    • @Cecil_Augus
      @Cecil_Augus Před 8 měsíci +2

      @@sentdex you not only thought of it, you made it :'(

  • @samgdotson
    @samgdotson Před 4 lety +113

    The moment you mentioned the "shape" problem you became the MVP of youtube machine learning.
    You clearly remember what it was like to be a first time learner and it shows in your communication style, well done.

  • @toneking972
    @toneking972 Před 4 lety +81

    Sentdex drops a new vid. “Wife grab the kids I have a work emergency”

  • @jbelisario001
    @jbelisario001 Před 4 lety +72

    I, along with every other viewer following along with this series, want to thank you for making this series. Such a painless way to learn an intricate and exciting topic. The visuals are a great bonus.

  • @parasjain3211
    @parasjain3211 Před 4 lety +52

    Never been so excited after seeing a CZcams notification! P3 nnfs, BOOM!

  • @reallyunsocial
    @reallyunsocial Před rokem +27

    Anyone who stumbled upon these lectures in 2023?

    • @MultiWarrr
      @MultiWarrr Před 5 měsíci +2

      Entered the black hole of trying to do this in a programming language other than python.

    • @techdiyer5290
      @techdiyer5290 Před 5 měsíci +7

      Im in 2024 actuallly

    • @BetaTester704
      @BetaTester704 Před 4 měsíci

      Just found it myself

  • @DoomSkullYT
    @DoomSkullYT Před 4 lety +25

    This is possibly one of the few times I'm glad I took further maths in sixth form, because without going to uni I have covered and understood matrices and vectors in 3D

  • @arturasdruteika2628
    @arturasdruteika2628 Před 4 lety +27

    I wish game of thrones seasons 7 and especially 8 were as good as this tutorial

  • @blackburn116
    @blackburn116 Před 4 lety +21

    Never been so exited for a video to come out on CZcams.

  • @DiegoMarquesTV
    @DiegoMarquesTV Před 3 lety +8

    Man, the animations are in my opinion fundamental for the full understanding of the content. Huge thanks to Daniel who's done them.

  • @TheCianJoseph
    @TheCianJoseph Před 3 lety +14

    Dude this is legit one of the most helpful and intuitive coding tutorials I've ever seen! Some tutorials are really hard to watch but yours is very comprehensive thanks for that I appreciate it.

  • @illyshaieb
    @illyshaieb Před 4 lety +1

    Never have I wanted the next episode more in a series. Thank you for these videos.

  • @Zerksis79
    @Zerksis79 Před 3 lety +1

    This series has been amazing. Also, being a highly visual learner ... the animations really take things to the next level for me! Thank you both!

  • @gustavodemendoncafreire4005

    *The answer is of course to use loops*
    Laughs in functional programming

  • @detskysade2581
    @detskysade2581 Před 4 lety +6

    Watching this tutorial at the same time as I go through your pytorch tutorial. My head blows up of all the new things

    • @sentdex
      @sentdex  Před 4 lety

      Hah, good luck sir :D

  • @tptshepo
    @tptshepo Před 4 lety

    Love the teaching approach with animations. I have been learning the same subject from different sources and your approach just made some concepts I was struggling with a lot clearer.

  • @sourabha05as73
    @sourabha05as73 Před 4 lety +1

    Great work man! Seriously, became a huge fan of your work, your way of making things understandable is one which is the most admirable...ev'rything just gets clearer if one has the understanding of basic mathematics...and if not, that's what you're there for...you videos really are a treat👏.

  • @Zack_MD
    @Zack_MD Před 4 lety +4

    21:00 - 22:00 the best minute I've watched on youtube since long time ago

  • @iAmTheSquidThing
    @iAmTheSquidThing Před 4 lety +23

    This might just confuse some people, but it helped me: The bias is essentially just another weight, for an imaginary input whose value is always 1.0

    • @MegaGutemusik
      @MegaGutemusik Před 2 lety

      well in my mind 1.0 represents something in its full form where any 0.x number would be something partial. so 1.0 is like saying its a full neuron. bit i have no idea what i am talking haha

    • @Ruhrpottpatriot
      @Ruhrpottpatriot Před 2 lety

      @@MegaGutemusik The input is always 1 for the bias because 1 is the neutral element of multiplication. This means that you can put the bias into the weights array (usually at index 0) and therefore learn the bias alongside the weights.

    • @FPChris
      @FPChris Před 2 lety

      The animation at the end is most helpful

  • @barbabillios6180
    @barbabillios6180 Před 4 lety

    I am so hyped for the series. Indeed the animations are very helpful for understanding the concepts. Looking forward to watching the sexy part!

  • @KanagawaMarcos
    @KanagawaMarcos Před 4 lety +1

    Those animation are being freaking awesome and truly helping me to understand what's happening in the code.

  • @lahirulowe4752
    @lahirulowe4752 Před 4 lety +19

    Almost a 1000 views in 30 minutes, shows how much we love this🔥❤️

  • @JoeLopezNJ
    @JoeLopezNJ Před 4 lety +8

    How is anyone down voting these? These are fantastic and animations are so incredibly helpful.

  • @CarlosRodriguez-fr7ro
    @CarlosRodriguez-fr7ro Před 4 lety

    Sentdex, you are awesome. I love this tutorials and im saving money to buy your book. I never tought that i could learn AI for myself but now im in love with this part of the programing world

  • @christopherberg4778
    @christopherberg4778 Před 4 lety +1

    I'm not normally a fan of animations, but yours are clean and not too colorful, it makes it very helpful to digest the concepts that you're explaining.

  • @zog8482
    @zog8482 Před 4 lety +4

    this has been really helpful so far but i really need to wait until the series is done because i forget everything in-between episodes

  • @anonymouspyro2820
    @anonymouspyro2820 Před 4 lety +11

    These are purely my understanding of weights and biases....
    For Example,
    y = x1 * w1 + x2 * w2 + b
    x1, x2 => Inputs
    w1, w2 => Weights
    b => Biases
    w1 => Denotes the contribution of x1 to the output
    w2 => Denotes the contribution of x2 to the output
    b => Acts as an offset...
    This is just a Linear Equation,
    when activation functions are applied => Non Linearity is introduced
    Why we apply activation functions,
    Every data can't be just explained by a Linear equation, so we apply activation functions to make them non linear.

    • @taran7954
      @taran7954 Před 4 lety

      Dumb question what does non linearity mean

    • @sidesplitter9497
      @sidesplitter9497 Před 4 lety +1

      @@taran7954 something that can't be fit by a straight line

    • @puppergump4117
      @puppergump4117 Před 2 lety

      @@taran7954 non (not) linear (line) means it's not a line

  • @gregggo
    @gregggo Před 2 lety

    The best neural network guides ever! Thank you! I always look at some videos and people are just so ignorant to explaining some 'basic' (as they think) stuff that may seem obvious to them... but if someone is starting from the scratch it is super helpful and saves TONS of time that would have to be spend to research all of it on a side. Again thanks, you're awesome

  • @taralsarvagod9099
    @taralsarvagod9099 Před 4 lety

    Recently subscribed to 3b1b and you. Glad to see you appreciating each others work and its feeling proud to learn from amazing teachers like you.

  • @99Shahab
    @99Shahab Před 4 lety +3

    Man I just want to watch all the videos since i have so much free time during quarantine. Might have to go to the book

    • @sentdex
      @sentdex  Před 4 lety +1

      Wish we could make these videos faster, doing our best :D... but yes, book should keep you busy for a while!

  • @coding1016
    @coding1016 Před 4 lety +3

    Will you implement some sort of autograd later on in the series? Loving the videos btw

  • @DMBalchemy
    @DMBalchemy Před 4 lety +2

    Super excited about these videos. You're excellent at explaining things, and I'm happy to preorder the book to support you creating these tutorials! Keep at it, we're all learning leaps and bounds because of you.

    • @sentdex
      @sentdex  Před 4 lety +2

      Thank you for the support!

  • @firdovsihasanzada
    @firdovsihasanzada Před 2 lety

    So far these are the best video series about Neural Network. The great thing about these videos is that each time you do the same task but with a different and advanced code. For me it's the best way of teaching and I really enjoy watching your videos. Thanks!

  • @MrDrjaay
    @MrDrjaay Před 4 lety +4

    these animations are awesome ive been thinking that the whole time.

    •  Před 4 lety +4

      Thank you

    • @kl11414
      @kl11414 Před 4 lety

      @ they are very helpful to visualize the concept. Keep it up. Kudos to both of you.

    • @mrahman09
      @mrahman09 Před 4 lety

      @ what kind of software do you use for animation?

  • @rokassl7024
    @rokassl7024 Před 4 lety +3

    video_value = True
    while (video_value):
    print("Finally! I bought the book also!")

  • @biuku
    @biuku Před 3 lety +1

    These videos are incredible. Working through Andrew Ng's older intro to ML Course, but in Python not Octave. Not much background in linear algebra, but stronger in Python. Building from the ground up -- learning math by coding -- this is the best way to learn.

  • @tobystupp2976
    @tobystupp2976 Před 3 lety

    Love your videos. Find them really helpful and love the way you've divided each part into a digestible parts. Really enjoying them and will definitely share them, just as my son-in-law shared this one with me

  • @lajosfidy3785
    @lajosfidy3785 Před rokem +4

    I think its worth mentioning how the calculus behind dot product works. If you have 2 matrices (in the shapes: n*p, p*m), then the resulting matrix will be the shape of n*m after the dot product (see how p = p), and the number of "columns" of the first matrix has be equal to the number of "rows" of the second matrix.

  • @TrackLab
    @TrackLab Před 4 lety +6

    I would very much love the physical book, sadly my money situation is pretty much nothing at the moment, so I can't buy it...but even if I finish this series before buying the book, I still plan to purchase it at some point.

    • @sentdex
      @sentdex  Před 4 lety +1

      Hope your situation improves!

    • @mohuasikder1971
      @mohuasikder1971 Před 4 lety

      @@sentdex please share the link to the book

  • @anirbansarkar6306
    @anirbansarkar6306 Před 2 lety

    The way you highlighted the bias, weight and activation function through animation is just extraordinary, kind of enlightenment. Thank you so much. It was deeply helpful

  • @sadhananarayanan1031
    @sadhananarayanan1031 Před rokem

    The best videos on neural networks in youtube. Simple explanation and super easy to grasp. 'Enlightenment' is the word after watching this. Thank you so very much :)

  • @jessehe9286
    @jessehe9286 Před 4 lety +15

    I'm a bit confused -- here, weights is a 3x4 matrix, and inputs is a 1x4 matrix. Strictly speaking, wouldn't the dot product only work if inputs is an n-by-m matrix (4x1 in this case), where m is the number of samples, as opposed to what's shown here? Looks like NumPy is smart enough to perform the dot product to a rank 1 vector even when the shape mismatches.

    • @sentdex
      @sentdex  Před 4 lety +20

      Your confusion starts @ shape. First, the input shape is not 1x4, it's of shape (4,). Also, it's not a matrix. I think you might want to watch that shape section again.
      Also, you can always confirm shapes in numpy. You might want to tinker about until you feel solid at knowing something's shape.
      For example:
      >>> import numpy as np
      >>> x = np.array([1,2,3,4])
      >>> x
      array([1, 2, 3, 4])
      >>> x.shape
      (4,)
      >>> y = np.array([[1,2,3,4],[5,6,7,8]])
      >>> y.shape
      (2, 4)
      >>>

    • @jessehe9286
      @jessehe9286 Před 4 lety +4

      @@sentdex Your explanation makes perfect sense!! The example really helps clarify. Thanks!

    • @mohitjain4943
      @mohitjain4943 Před 4 lety

      I have the Same Question

    • @kevinvaishnav1672
      @kevinvaishnav1672 Před 4 lety +4

      Weights is (3, 4) and inputs is (4, ), so the product becomes (3, ).Hope it helps!

    • @theip7556
      @theip7556 Před 4 lety +2

      In numpy when you say a vector it by default takes column vector.So input vector shape is (4,1) as per numpy even we have declared it as a row vector whose shape is (1,4).

  • @industrialdonut7681
    @industrialdonut7681 Před 4 lety +5

    I've never heard that a "list of lists" is a "lol" before, lol!

  • @samkhanjar8486
    @samkhanjar8486 Před 26 dny

    I have that much joy for a while learning something with that much CLARITY on CZcams! thank you so much for all the efforts you guys have put in to this, its awsome!

  • @paltakis
    @paltakis Před 3 lety +2

    Incredibly clear, amazing teacher, when you can simplify to that level means you have true mastery of your material, thank you!

  • @benasin1724
    @benasin1724 Před 4 lety +9

    The moment I have been waiting for: "Watching sentdex's latest video" .

  • @shrideepgaddad8721
    @shrideepgaddad8721 Před 4 lety +18

    smh, there is no spot for assembly in the github

    • @sentdex
      @sentdex  Před 4 lety +9

      Sounds like you need to make the assembly version! I'll wait for your PR :)

    • @shrideepgaddad8721
      @shrideepgaddad8721 Před 4 lety

      @@sentdex Lol, I would if I knew enough assembly. I'll stick to contributing in Kotlin for now. P.S: Jeez your fast at merging pull requests, I assumed it would take like a day cause you would be busy.

    • @shrideepgaddad8721
      @shrideepgaddad8721 Před 4 lety

      And just like that someone made a PR for assembly

  • @pavan64pavan
    @pavan64pavan Před 2 lety

    Awesome work on the Animations Daniel. Harrison, you got heart man. The way you explain by taking so much of time ensuring that every little things are conveyed, simply amazing. Respect and ton of Thanks with all my heart.

  • @niepodam4847
    @niepodam4847 Před 4 lety +2

    I really appriciate you explaining the math behind this. I like to deeply understand what I do and why it works. Thank you for the video :D

  • @irgendeintypeiminternet781

    to who ever wrote it in assembly on github: why, why you do dis to yourself?

  • @hectorpereira2803
    @hectorpereira2803 Před 4 lety +7

    you are called "semtex" for me and i refuse to properly read your name ever again

  • @brunobmartim
    @brunobmartim Před rokem

    By far one of the best videos that I have seen in ML.
    THANK YOU VERY MUCH.

  • @nabil.hamawi
    @nabil.hamawi Před 4 lety +1

    You and Danial are the best, you are just putting the learning data inside my head omg

  • @ryanvaught7612
    @ryanvaught7612 Před 4 lety

    the way you break things down is super useful, i cant retain info if i have to many questions about it, my brain just locks up so all the high level explanation videos of neural networks just got me excited but didn't teach me at all. your clear enough you could just call this series,
    The Understanding the "Understanding Neural Networks" Videos Series!

  • @Cameron_Grey
    @Cameron_Grey Před 4 lety

    These videos are so clear and easy to understand it's crazy. My CS professors should aspire to be this good at explaining things.

  • @ulissemini5492
    @ulissemini5492 Před 4 lety +1

    what you're making here will be the definitive ML from scratch guide in a few years, calling it now

  • @cristianpal93
    @cristianpal93 Před 3 lety

    Finally somebody is starting explaining how NN work so anybody can understand and start building there own Ai thank you very much! You are a good teacher!

  • @ahmadtarawneh2990
    @ahmadtarawneh2990 Před 4 lety

    I do not know why would anyone dislike this very nice video,
    The animation is very nice and makes the explanation clearer.
    Thank you so much

  • @winnumber101
    @winnumber101 Před 4 lety

    One of the most direct explanations I've ever seen... before this, the whole time I was thinking this may be too esoteric of a predictive tool for me to learn well, wow

  • @abhrantapanigrahi3475
    @abhrantapanigrahi3475 Před 4 lety

    This series is lovely!! It feels so good to actually understand the basic mathematics along with some practical programming. There are so may other resources that either focus completely on the mathematics part (which after a certain point start to feel like jargon) or others that just focus of using the libraries like pytorch (which begin to feel like copying and pasting after a certain point). Thanks for doing this dude!

    • @sentdex
      @sentdex  Před 4 lety +1

      Glad to hear you like the style!

  • @bnkiBirbz
    @bnkiBirbz Před 4 lety

    Dude! Thank you so much for these videos. I have had such a hard time self learning machine learning and neural networks. I learn by seeing it applied. Thanks!

  • @E_rich
    @E_rich Před 2 lety

    Dude this series just makes me so happy. Thanks.

  • @claudieleung8815
    @claudieleung8815 Před rokem

    Dear Sentdex,
    You are prominent. You made us everything clear now. Thanks so so so so so much 💯👍👍👍👍👏👏👏👏

  • @RaviKiran-qd1cl
    @RaviKiran-qd1cl Před 4 lety

    Many thanks for the videos. You are the best tutor that I have come across for deep learning. The animations help us understand the concept even better.
    Looking forward for your upcoming videos.

  • @vladi1475S
    @vladi1475S Před 2 lety

    Best tutorials ever! Step by step explained and it is so clear! Thank you!

  • @koen5757
    @koen5757 Před 4 lety

    These tutorials actually help understand the need for math more because i hated it in highschool. But now that i can see how it is applied i understand how and why to use it which makes it so much more intresting to learn. Thanks a lot for these videos!

  • @josephkarianjahi1467
    @josephkarianjahi1467 Před 2 lety

    You deserve a medal for the best complex-topic-synthesizer. You don't even have to be a high school graduate to grasp the content in these initial 3 videos so far. Kudos bro

  • @Motivation-Discipline985
    @Motivation-Discipline985 Před 2 lety +1

    LOVE THIS it really taught me about python and ML I didnt know a lot about inputs and outputs until i watched these videos thx bro

  • @cassolmedia
    @cassolmedia Před 4 lety

    Thanks so much for these series! I had so much trouble jumping into neural networks without understanding everything happening "under the hood" so to speak. I just always felt like I was just assembling one of those pre-designed lego sets without understanding the thought behind it.

  • @Levinsam
    @Levinsam Před 2 lety

    Thank you very much! Great visuals, especially the ReLU!

  • @ssasdaftt3
    @ssasdaftt3 Před 4 lety

    The animation really clear concept especially of weight and biases! Thank You.

  • @bradley1995
    @bradley1995 Před 10 měsíci

    I seriously cannot thank you enough. I'm a java programmer but you have made this so simple to understand I'm able to implement it and I'm not getting lost. Hats off to you good sir... thank you for these videos!! You are truly doing a great Public service!

  • @arnob2712
    @arnob2712 Před 4 lety +1

    Was eagerly waiting for this video.
    I checked my CZcams so many times since past 2 days.

  • @MrGreen-bw7fs
    @MrGreen-bw7fs Před rokem

    Thankyou 3Blue1Brown and Daniel and especially to you sentdex. Really apreciatte work you are putting here!!!

  • @rahilshiraz2247
    @rahilshiraz2247 Před 4 lety

    Animations are super helpful for understanding the concept!! Waiting for the next part!! 🔥

  • @raulcatacoragrundy5334

    you would see clearly why the problem with dimension if you revisit some of linear algebra stuff but i just dig how you are able to explain things as simple as possible, thanks man you're great

  • @Sich97
    @Sich97 Před 4 lety

    The animations are really helpful!
    And this is some great educational stuff. Really appreciate it!

  • @kinwong6383
    @kinwong6383 Před 4 lety +1

    Have been visiting your channel every day since Part 2, was not disappointed today haha
    Thanks sentdex!

  • @daveys
    @daveys Před rokem

    Brilliant videos! The level of instruction here is fabulous. I was going to compliment the animations but you already covered it at 23:58. Thanks for posting!!

  • @carteri246
    @carteri246 Před 4 lety

    Been waiting for this all week. Thanks!

  • @LuxurioMusic
    @LuxurioMusic Před 4 lety

    It took me 10 minutes of googling to figure out how to deal with pip, but I got it in the end. Once again these videos are incredibly inspiring.

  • @michaelcarnevale5620
    @michaelcarnevale5620 Před 10 měsíci

    i can't praise you enough, your visuals are great

  • @pushkarajpalnitkar1695

    Amazing video as always!!! Great Job!! Yes, animation makes it much more clear to understand the flow of vectors.

  • @syedasim6813
    @syedasim6813 Před 8 měsíci

    absolutely loving it, thank you so much for explaining NN in such an easy way

  • @cromi4194
    @cromi4194 Před 2 lety

    You are doing such an amazing job. I really hope that I will have a good understanding of how neural networks actually work at the end of this series. I don't want to stupidly copy code from other people and hope that it works for my data.

  • @darshanadagha7550
    @darshanadagha7550 Před 2 lety

    Thank you so much for creating this series, just cleared all the doubts that I had and yes shout out for the animation.

  • @tomkimdotnet650
    @tomkimdotnet650 Před 4 lety

    This is the best series I've seen on this topic, thank you

  • @judedavis92
    @judedavis92 Před 4 lety

    Love your videos. Please make more of these!!

  • @prettiestthing
    @prettiestthing Před 3 lety

    This are the best series EVER, keep them coming please 👩‍💻🤓💪!!!!

  • @tusharfaroque3406
    @tusharfaroque3406 Před 3 lety

    Thanks for the lecture series.
    Man its really easy to understand with these awesome animation ❤️

  • @BiranchiNarayanNayak
    @BiranchiNarayanNayak Před 4 lety

    Excellent. Crystal clear explanation of Neural networks. Thanks

  • @henryhsueh3553
    @henryhsueh3553 Před 4 lety +1

    The animation really helps with learning the concepts!

  • @bamitsmanas
    @bamitsmanas Před 4 lety

    This is just so awesome! I love learning from first principles

  • @photorealm
    @photorealm Před rokem

    You are helping a ton of people (like me) who can write working code but don't quite understand the granular workings. I will buy gladly your book to glean some more details. Thank you for sharing this amigo.🙂

  • @akiratoriyama1320
    @akiratoriyama1320 Před 4 lety

    Excellent sir!!! I can understand the tremendous work you have been doing. Thank you very much!!!!

  • @busek.1063
    @busek.1063 Před rokem

    Finally, I started to understand what is neural networkss!!!!!Thank you for the videos

  • @rohithsai7632
    @rohithsai7632 Před 3 lety +1

    The animations are so helpful! Its really nice danial