This should be recommended as the 1st video to watch when it comes to learn neural networks
@DR-bq4ph Жыл бұрын
Yes
@ckpioo8 ай бұрын
yes I agree but for simplicity sake he should have done a 0 to 1, 0 being black 1 being white and 0.5 being grey, because almost everyone follows that pattern, and for new learners its a bit harder for them to switch from thinking about -1 to 1 to 0 to 1
@heyasmusic7553 Жыл бұрын
I watched your videos 3 years ago. It'salmost nostalgic. You may not see this. But you're one of the reasons I kept moving through with Machine Learning
@BrandonRohrer Жыл бұрын
I legit cried a little bit. Thank you for this.
@danklabunde4 жыл бұрын
I've been struggling to wrap my head around this topic for a few days, now. You went through everything very slowly and thoroughly and I'm now ready to dive into more complex lessons on this. Thank you so much, Brandon!
@BrandonRohrer2 жыл бұрын
I'm very happy to hear it :)
@biokult78287 жыл бұрын
"Connections are weighted, MEANING".... Holy fuck.....after viewing numerous videos from youtube, online courses and google talks.... (often with comments below saying "thanks for the clear explanation")....This is the FIRST person i have EVER seen that has actually explained what the purpose of weights are....
@Tremor2447 жыл бұрын
I feel the same, even though I still can't completely understand how weighting works :/
@garretthart48837 жыл бұрын
Tremor244 I am by no means an expert but weighting is what makes the network "learn" to be correct. By changing the weights it changes the output of each neuron and eventually the output of the network. If you tune the weights enough you will eventually get an output that is what it is supposed to be. i hope this helps
@LuxSolari7 жыл бұрын
I don't work with neural networks but with other types of machine learning. But weighting is more or less the same in all these fields of mathematics. You want a system that, provided with an input (an image, for instance), achieves its classification as the output. For instance you have a scenery (input) and you want to know if it's from vacations at the mountains or at the beach (a classification, ie. the output). So you pass the image trough a set of filters: (1) does the image have umbrellas? (2) does it have clouds? (3) is there a lot of blue? (4) is there a lot of brown?, etc. If the image passes a specific combination of filters, there is a greater probability that the image is of a specific type (for instance, if the image (1) have umbrellas, (3) is blueish and isn't (4) brownish, it's more likely to be from the BEACH). But how much more likely? That's when the WEIGHTING comes into play. Through machine learning we want to calculate some coefficients (weights) that state a sort of likelihood of an image to pass a filter, given its type (for instance, if it has umbrellas there's a probability of 0.9 out of 1 (90%) that it is from the beach and not from a mountain, but if there's a lot of blue maybe only 0.6 of those images are from the beach, and so the WEIGHT IS LIGHTER. That means that, if the image passes a filter of COLOR BLUE it is likely to be from a BEACH, but if it passes a filter of UMBRELLAS it is EVEN MORE LIKELY). Weights, then, are a parameter of RELEVANCE of each of the selected filters to achieve the correct classification. So we make the machine learn from LOTS (thousands, perhaps) of images that we KNOW are from the beach or the mountain. One image from the beach has umbrellas, so the classification through the filters was correct and then the WEIGHT for the umbrellas is increased. But if there is an image of the mountains with umbrellas and the program says it's from the beach, the weight goes down for the umbrellas. When we did this with a lot of images, the weights are FINE TUNED to classify correctly most of the time (if the filters are any good... if we chose wrong filters from the beginning, then there's a chance the dictionary won't get any better even fed with lots of images. That could also happen if the training images are biased: ie. if they don't represent the real set of images that we want to classify). I hope this works better for you!
@anselmoufc7 жыл бұрын
If you have had a course on linear regression, you will recognize weights are equivalent to parameters. They are just "free variables" you adjust in order to match inputs with outputs. In one-dimensional linear regression, the parameters are the slope and offset of a line, you adjust them so that the distance between the line and your points (your training examples) is the least. Neural networks use the same idea as statistical regression. The main difference is that neural networks use a lot of weights (parameters), and for this reason you have to care about overfitting. This in general does not happen in linear regression, since the models are way more parsimonious (use only a few parameters). The use of a lot of weights is also the reason why neural networks are good general approximators, the large amount of weights give them high flexibility. They are like bazookas, while statistical regression is more like a small gun. The point is that most of the times you need only a small gun. However, people like to apply neural networks to problems where linear regression would do a good job since NN are "sexier".
@madsbjerg81867 жыл бұрын
+Esteban Lucas Solari I want to let you know that I love you for everything you just wrote.
@mikewen82167 жыл бұрын
I've watched many videos and read many blogs and articles, you are literally the best explainer at making these intuitive to understand
@behrampatel35637 жыл бұрын
I agree.Penny dropped for me today with this Video. Thank you so much Brandon
@a.yashwanth4 жыл бұрын
3blue1brown
@MatthewKleinsmith7 жыл бұрын
Great video. Here are my notes: 7:54: The edges going into the bottom right node should be white instead of black. This small error repeats throughout the video. 10:47: You fixed the color error. 11:15: Man, this video feels good. 21:41: Man, this video feels really good. An extension for the interested: Sometimes we calculate the error of a network not by comparing its output to labels immediately, but by first putting its output through a function, and comparing that new output to something we consider to be the truth. That function could be another neural network. For example, in real-time style transfer (Johnson et al.), the network we train takes an image and transforms it into another image; we then take that generated image and analyze it with another neural network, comparing the new output with something we consider to be the truth. The point of the second neural network is to assess the error in the generated image in a deeper way than just calculating errors pixel by pixel with respect to an image we consider to be the truth. The authors of the real-time style transfer paper call this higher-level error "perceptual loss", as opposed to "per-pixel loss". I know this was outside the scope of this video, but it was helpful to me to write it, and I hope it will help someone who reads it.
@humanity3.0907 жыл бұрын
Good to know that I'm not the only one who caught the logical mistakes. 9:14 Bottom second squash should be vertically inverted, if I'm not mistaken.
@ganondorfchampin6 жыл бұрын
I had the idea of doing perceptual loss before I even knew the term for it, seems like it would work better for warp transforms and the like versus level transforms.
@hozelda5 жыл бұрын
Alternatively, the edges are correct but the corresponding picture should be flipped. Regardless, the final step (output perceptron at the bottom indicating horizontal) works with either the white white edges or the black black edges scenario.
@oz4594 жыл бұрын
thanks :)
@sali-math-arts27692 жыл бұрын
YES - thanks , I saw that tiny error too 🙂
@klaudialustig32597 жыл бұрын
I already knew how neural networks work, but next time someone asks me, I'll consider showing him or her this video! Your explanation is visualized really nicely.
@andrewschroeder41677 жыл бұрын
I hate how many people try to explain complicated concepts that require math without using math. Because you used clear mathematical notation, you made this much easier to understand. Thank you so much.
@claireanderson59035 жыл бұрын
Brilliant! I was involved 50 years ago in a very early AI project and was exposed to simple neural nets back then. Of course, having no need for neural nets, I forgot most of what I ever knew about them during the interval. And, wow, has the field expanded since then. You have given a very clear and accessible explanation of deep networks and their workings. Will happily subscribe and hope to find further edification on Reinforcement Learning from you. THANK YOU.
@sirnate90657 жыл бұрын
Who else paused the video at 15:10, went and did a semester of calculus, then came back and finished watching?
@muhammedsalih48467 жыл бұрын
Nobody
@danielschwegler52206 жыл бұрын
:)
@danielschwegler52206 жыл бұрын
Muhammed Sahli's mother
@safesploit5 жыл бұрын
SirNate I still remember most of my calculus and have notes from prior study 😜
@SreenikethanI5 жыл бұрын
lol
@cloudywithachanceofparticl23217 жыл бұрын
A physics guy coming into coding, this video completely clarified the topic. Your treatment of this topic is perfect!
4 жыл бұрын
Don't worry people I asked this guy if he was a physicist
@Mau365PP4 жыл бұрын
@ thanks bro
@mukulbarai14414 жыл бұрын
I've watched many videos on KZbin but non of the videos explained the concepts as intuitively as you did. Thought I have to watch it again as I've failed to grasp some concepts, I am sure that it will be clear as I watch more.
@BrandonRohrer4 жыл бұрын
Thanks Mukul!
@InsaneAssassin247 жыл бұрын
As a chemist who just recently took Physical Chemistry, back propagation makes SOOO much more sense to me when you put it into a calculus description, rather than a qualitative one as I've been seeing elsewhere. So THANK YOU!
@abhimanyusingh42817 жыл бұрын
I have been trying develop a DNN for a week. I have seen almost a 100 videos, forums, blogs. Of all those this is the only one with calculus that made complete sense to me. You sir are the real MVP
@intros18547 жыл бұрын
Finally! You are the only one on the internet who explained this properly!
@jones13512 жыл бұрын
Fantastic description of what these networks do. I've gone thru a few of these explainers and all they demonstrated was the person knew their subject, they just couldn't teach it. They talk in jargon, that quickly loses those unfamiliar. IOW they're not teaching, they're having a 'conversation' with those who are already versed and have background in the field. Einstein is to have said, 'If you can't explain it simply, then you don't understand it yourself' Thanks, again. I walk away feeling like I actually learned something. You Can Teach.
@BrandonRohrer2 жыл бұрын
Hey thanks! I really appreciate this. It's the highest compliment.
@bowbert23 Жыл бұрын
I always had trouble intuitvely understanding how a derivate works and how practically its calculation is reflected in simple terms. Little did I know starting this video, that I'll finally understand it. Thank you! I'm relieved and feel less stupid now.
@BrandonRohrer Жыл бұрын
I'm really happy to hear that Bowbert. Thank you for the note.
@fghj-zh6cv7 жыл бұрын
This simple lecture truly makes all viewers fully understand the logic behind neural networks. I strongly recommend this video clip to my colleagues participated in data driven industry. Thanks.
@FlashKenTutorials7 жыл бұрын
Clean, concise, informative, astonishingly helpful, you have my deepest gratitude.
@BrandonRohrer7 жыл бұрын
You are most welcome
@marioeraso36743 ай бұрын
Awesome description of what neural networks are!
@rickiehatchell86374 жыл бұрын
Clean, concise, informative, astonishingly helpful, you have my deepest gratitude. I've never seen anyone explain backprop as well as you just did, great job!
@jabrilsdev7 жыл бұрын
this is probably the best breakdown ive came across, very dense, you've left no spaces in between your explanations! Thanks for the great lesson! Onward to a calculus class!
@NewMediaServicesDe5 жыл бұрын
30 years ago, I studied computer science. we were into pattern-recognition and stuff, and I was always interested in learning machines, but couldn't get the underlying principle. now, I got it. that was simply brilliant. thanks a lot.
@salmamohsen82085 жыл бұрын
Easiest most elaborate explanation I have found on that matter
@alignedbyprinciple6 жыл бұрын
I have seen many many videos regarding NN but this is by far the best; Brandon understands the relationship between the NN and the backbone of the NN, which is the underlining math. He clearly presented them in a very intuitive way. Hats off for you sir. Keep up the good job.
@thehoxgenre5 жыл бұрын
i was amazed by the way you talk, and explain very slowly as well you remain slow until the end and you dont rush things. bravo
@user-kr6dk7bq6b4 жыл бұрын
It's the first time I get to understand how neural networks work. Thank you.
@SunyangFu7 жыл бұрын
The best and easily understandable neural net video I have seen
@DeltaTrader7 жыл бұрын
Possibly one of the best explanations about NN out there... Congratulations!
@vipinsingh-dj2ty7 жыл бұрын
literally THE best explanation i found on the internet.
@Toonfish_7 жыл бұрын
I've never seen anyone explain backprop as well as you just did, great job!
@ViralKiller Жыл бұрын
I never understood backprop properly until this video...this was the light bulb
@radioactium7 жыл бұрын
Wow, this is a very simple explanation, and it helped me understand the concept of neural networks. Thank you.
@tomryan98275 жыл бұрын
Great video. A single clear, concrete example is more useful than 100 articles full of abstract equations and brushed-over details. Speaking as someone who's read 100 articles full of abstract equations and brushed-over details.
@coolcasper37 жыл бұрын
This is the most intuitive explanation of neutral nets that I've seen, keep up the great content!
@PierreThierryKPH7 жыл бұрын
Very slowly and clearly gets to the point, nice and accessible video on the subject.
@AnkitSharma-ir8ud6 жыл бұрын
Really great explanation Brandon. Also, I greatly appreciate that you share your slides as well and that too in raw (PPT) format. Great work.
@Sascha8a7 жыл бұрын
This is a really good video! For me as a complete beginner this really help me understand the basics of neural networks, thanks!
@AviPars7 жыл бұрын
Artem Kovera lovely book , just downloaded. for the lazy people : amzn.to/2ntC9Zm
@Mr_AciD7 жыл бұрын
At 7:48, the bottom right receptive field should be Black black white white, not White white black black :) Congratulations on the explanation!
@yhr40527 жыл бұрын
Yes, there is a mistake.
@BrandonRohrer7 жыл бұрын
It is true! Good catch both of you.
@lucazarts257 жыл бұрын
OMG it's even harder then I expected! Thank you very much for the thorough and thoughtful explanation!
@lucazarts257 жыл бұрын
it goes without saying that I became a subscriber as well ;)
@AashishKumar17 жыл бұрын
This is one of the best explanation of neural network I have seen
@bestoonhussien28517 жыл бұрын
I'm in love with the way you explain things! So professional yet simple and easy to follow. Keep it up!
@technoultimategaming29993 жыл бұрын
I understand every topic. From computer enginerring to calculus and AI basics, but put them all together and working to make a digital functioning brain is magic
@OtRatsaphong5 жыл бұрын
Thank you Brandon for taking the time to explain the logic behind neural networks. You have given me enough information to take the next steps towards building one of my own... and thank you KZbin algo for bringing this video to my attention.
@yashsharma61128 ай бұрын
Very very rare way to explain a neural network in such a great depth. Loved the way you explained it ❤
@abhijeetbhowmik22647 жыл бұрын
The best Back Propagation explanation on you tube. Thank you sir.
@abubakar2055 жыл бұрын
one of the best teacher you cleared all my doubts for neural networks thanks sir let me click an ad for you
@Gunth0r7 жыл бұрын
My kind of teacher! Subscribed! Nice voice, nice face, nice tempo, nice amount of information, nice visuals. You'd almost start to believe this video was produced with the concepts you've talked about. And my mind was just blown. I realized that we could make a lot more types of virtual neurons and in that way outclass our own brains (at even a fraction of the informational capacity) with a multitude of task-specific sub-brains forming a higher brain that may or may not develop personality.
@mdellertson7 жыл бұрын
Yours was a very easy explanation of deep neural networks. Each step in the process was broken down into bite-sized chunks, making it very clear what's going on inside a deep neural network. Thanks so much!
@antwonmccadney59945 жыл бұрын
Holy shit! Now I... I actually get it! Thank you! Clean, concise, informative, astonishingly helpful, you have my deepest gratitude.
@cveja697 жыл бұрын
I almost never post comments, but this one deserve it :D Truly great :D
@cheaterman497 жыл бұрын
I totally want to implement this now. Can't be that hard - won't be the best approach, just trying to see how close it can "naturally" get to the ideal solution you displayed and how many iterations of training it takes!
@BrandonRohrer7 жыл бұрын
Give it a go! Although I would love to get a sticker for my laptop that says "Can't be that hard." I'll put it right above the one that says "What could possibly go wrong?"
@fulanomengano88957 жыл бұрын
I've been trying to implement the full network as seen (@ 25:30) in python but hit a roadblock. Have you done it?
@liamdev4855 Жыл бұрын
The *Best* Video for beginners!
@BrandonRohrer Жыл бұрын
Thanks!
@yassinelamarti41574 жыл бұрын
the best explanation for Neural Networks ever !
@Vermilicious7 жыл бұрын
Nice intro. Fairly easy to grasp the essence.
@WilsonMar17 жыл бұрын
I've seen a lot of videos and this is the most clear explanation. Exceptional graphics too.
@opeller3 жыл бұрын
Thank you so much, really helped me understand several things that were hard to understand during class.
@BrandonRohrer3 жыл бұрын
I'm glad to hear it!
@ViralKiller Жыл бұрын
That was incredible...watched 7 videos so far and every day my brain understands a bit more...I recently learning Houdini VEX code which is 3D graphics programming, and that took 1 year of watching a whole bunch of stuff and not getting it...until I did...so I know I will grasp this soon....Im sticking to these simple examples for now, until I can code it from scratch in Python
@GAV327 жыл бұрын
Thank you so much! I have been trying to create a neural network of my own for simple tasks, and I haven't been able to learn how until now. Thank you!
@TanNguyen-vm2fc7 жыл бұрын
Gavin Haynes please teach me how to start. im a beginner of this field. thank you
@GAV327 жыл бұрын
I haven't made one of my own yet, sorry for the confusion. The difference is that now, I understand how one works, so I can start structuring my information.
@Prof_C4 жыл бұрын
Thanks for making this creative commons. I am going to adapt and use for my class, with attribution. I have a number of project management resources that are creative commons if you need.
@BrandonRohrer4 жыл бұрын
Thanks Scott. I hope this one serves you and your class well.
@jacolansac5 жыл бұрын
The internet needed a video like this one. Thanks a lot!
@antoinedorman4 жыл бұрын
This is gold if your looking to learn neural networks!! Well done
@Jojooo647 жыл бұрын
Best video explaining neural networks i found so far. Thank you a lot!
@Thejosiphas7 жыл бұрын
I like how much effort you put into making these ideas accessible
@zw05034 жыл бұрын
It took me trhee goes in excel to replicate the idea, but ... after eliminating my mistakes i now have a working model . my next step will be to generalise this to make any network 2X2 3X3 or 5X6 . thanks your explanation is/was very clear
@BrandonRohrer4 жыл бұрын
Awesome Robert. I love to hear it.
@hankil817 жыл бұрын
Great example with even greater explanation.
@slayemin7 жыл бұрын
This explanation of back propagation was exactly what I needed. This is very clear and I now have higher confidence in my ability to create my own ANN from scratch.
@mehranmemnai6 жыл бұрын
Same here. My vision is clear
@brendawilliams80622 жыл бұрын
I just enjoy numbers. Anything to do with them is a fantastic thing.
@DanielMoleGuacamole2 жыл бұрын
Holy thank you!! ive watched like 50+ ich tutorials on neural networks but all of em explained things poorly or too fast. But you went through everything slowly and actually explained all the info clearly!!
@BrandonRohrer2 жыл бұрын
Thank you so much! I'm happy to hear how helpful it was, and it means a lot that you would send me a note saying so.
@tobiaskarl49394 жыл бұрын
Excellently explained ! Automatic subtitle feature enabled would have been nice.
@BrandonRohrer4 жыл бұрын
Thanks Tobias! Subtitles for English (and a dozen other languages!) are enabled. I hope they work for you now.
@tobiaskarl49394 жыл бұрын
@@BrandonRohrer yes, thx a lot.
@srinivasabugada27266 жыл бұрын
You explained How Neural Networks in very simple and easy to understand manner. thanks for sharing!
@dexmoe7 жыл бұрын
Very detailed and clear explanation. Thank you for sharing! :)
@alfakannan3 жыл бұрын
You are a gifted teacher. Even I could understand.
@MadScientist267 Жыл бұрын
Finally a useful approach... A "real" (complete) network. The query mechanism makes perfect sense now. Finally. Lol Now if I could just get there with the backward stuff. It makes enough sense to know it will eventually make perfect sense but still struggling a little there. You've got one of the best explanations for beginners out there tho. I'm the type that has to see what the hell is actually going on... Don't need it later when a functioning whatever is running, but early on broken down like this is perfect because then the scale is just scale.
@BrandonRohrer Жыл бұрын
Thanks! If you haven't had a look yet, this may help with the backprop: kzbin.info/www/bejne/bHOwqJypib95qJY
@shahidmahmood72527 жыл бұрын
Superb!! The best explanation of DL that I have come across after completing the Andrew NG's Stanford ML course. I am a follower now.
@TheExpression6387 жыл бұрын
Very clear cut explanation
@petraiondan4669 Жыл бұрын
excellent presentation! Congrats! and many thanks!
@BrianKeeganMusic6 жыл бұрын
This makes sense and all, but how do neural networks make sense in terms of prediction modeling for say a regression problem? Not image classification. Like housing prices for example?
@Ivan_17915 жыл бұрын
Best explanation I have seen so far man. Congratulations!
@nilaier1430 Жыл бұрын
Watching this video on my 4 pixel screen phone. Really informative.
@dbiswas3 жыл бұрын
You explanation is so far the best. I am sure you are the best teacher so far. Thanks for uploading such a informative video.
@MarcusHammarberg Жыл бұрын
Math, baby! It’s cool
@ismajim7 жыл бұрын
What a great explanation for back-propagation!
@davidguaita7 жыл бұрын
You're the man at explaining these things. Thank you so much.
@kademmohammed68367 жыл бұрын
by far the best video about ANN i've watched, thank you so much, really clear
@jhwblender7 жыл бұрын
I've been wanting to make a neural network for some time. I knew it required calculus, and I have taken calculus. The mathematics others have explained seemed way over my head. But you have made it very clear. Thank you!
@brendawilliams80622 жыл бұрын
I must know calculas now. Yes!
@nirbhaythacker66627 жыл бұрын
The function shown at 4:39 and 20:33 are both referred to as being the same function, but the graph on 4:39 is actually 2*(o(a)-0.5) , here o(a) is the sigmoid function.
@寻蔡7 жыл бұрын
Detailed and easy to understand
@shivamkeshri4877 жыл бұрын
wow awesome i never find a video like this with the simple example and clarity of neural network and its a though topic to explain but you make it easy... thanks
@ziaurrehman21802 жыл бұрын
After wasting too much time finally I found the right place , excellent explanation 👏👏👏💯
@Kino-Imsureq6 жыл бұрын
18:40 thats quite the same way of expressing error/weight since you can rlly just do cancelling
@snehotoshbanerjee19387 жыл бұрын
Your all videos on NN are excellent!
@garretthart48837 жыл бұрын
This video is hands down the best intro to neural networks I've ever seen! fantastic job. And thank you for putting links to learn more and not just leaving us hanging. I think it also just solidifies that you know what your talking about. I look forward to more content from you. Good work!
@RichaChauhandreams4 жыл бұрын
@Brandon Rohrer To each neuron 1. First a number is assigned 2. Then a weight is assigned 3. Then it is squashed using sigmoid and then the values are summed up! Right ? My question is whether each weighted neuron is squashed or the sum of weighted neurons is squashed , why is sqaushing done?
@BrandonRohrer4 жыл бұрын
Good question Richa, and it will take a bit longer to answer. There's a deeper dive into this material at e2eml.school/312
@jonathanfowler29327 жыл бұрын
Congratulations! You've earned a subscriber.
@MilanNedic947 жыл бұрын
Another one!
@akostrikov7 жыл бұрын
Another one
@MegaLovinglight7 жыл бұрын
another one :)
@nightshadefns7 жыл бұрын
Another one! This is old :D
@tonyxing99257 жыл бұрын
one more
@Silmerano6 жыл бұрын
My brain cant handle this. Gonna add to a playlist for later.
@junepark1003 Жыл бұрын
This is one of the best explanations I’ve come across. Thank you! And subscribed :)
@nakitumizajashi40477 жыл бұрын
Thanks for quick and simple explanation!
@PotatoMan14912 ай бұрын
Really helped me contextualise the matrix procedure in practical sense. Thank you!
@thangvu-uj7qi Жыл бұрын
I watched this video in very early days of my PhD. Now, it appears in my recommendation list when i have just graduated. Such a nice memory ❤
@BrandonRohrer Жыл бұрын
That is such a good story. Thanks thắng.
@Anujkumar-my1wi4 жыл бұрын
at 4:32 this isn't a sigmoid function .sigmoid squashes the value to between 0 - 1
@tobimayr7 жыл бұрын
Thank you for this clear and understandable tutorial!
@emotional_stuff Жыл бұрын
Absolutely cool video. That's i would like to see when Just started learning about N networks