I watched this video when I was studying in grade 11. Had no clue what he was talking about but I tried to understand as much as possible. Now I watch it again as a university student, it is so satisfying to understand everything now.
It happens to me several time. Sometime you just stumble on a knowledge and can't understand a single thing about it then suddenly 1 or 2 years later you completely understand it without any try.
Took a Machine Learning course in university and this is what we did the whole semester in Matlab. Tensorflow was introduced right at the end for the final project.
I'm so glad you actually went in depth with the math explanation. So often people will just explain surface layer and then "alright lets jump into the code".
Most of the videos are titled “how to create a blabla” when they’re actually teaching how to use… so I really appreciate your video! This really contributes to knowledge 🥰
@@nathanwycoff4627 matrices and linear algebra are really useful for math and engineering less so for general programming. Different languages focusing on different usability concerns quite interesting.
I don't like it. I wish people stopped being overly-lazy with Numpy and just wrote their own libraries so they'd understand what they are actually doing. No, scratch that, if they can't accomplish the same thing using only Assembly, they're a total noob, should put down their keyboard, and get an MBA instead...
Hey guys, a reply would be highly appreciated. I want to plot the cost vs the number of iterations but I am not able to figure which parameter to plot ? I am a beginner and I would really appreciate the help. Thank you
In case any beginners to ML came here wondering why they are really confused, this video isn't really for beginners and he doesn't really explain that. Its "from scratch" in the sense of not using any prebuilt models in the code. Its a good explanation for people who are already familiar with neural networks, prebuilt layers, loss functions, etc. not for people starting their understanding "from scratch."
actually im new to ML, (2-3 months in) and this helped me understand a lot, i am implementing it on my own now, without even using numpy so i can code out stuff like transpose on my own and learn more. Random is tricky tho lol
@@OT-tn7ciyes but he doesn’t explain the math or why it works. It’s meant for people that already know why the math works, and who want to know how to put it all together
I've never heard any of this explained before. After watching this once, I understand the mathematics behind neural networks and why the functions are used. Great job with the explanation here. Many thanks.
If you make more deep learning videos with numpy and math(without any framework) just like in this video, it would be great for begginers to learn basics!!! Do you think to keep continue??
Hey guys, a reply would be highly appreciated. I want to plot the cost vs the number of iterations but I am not able to figure which parameter to plot ? I am a beginner and I would really appreciate the help. Thank you
Here's a course you'll need. Face Mask Detection Using Deep Learning and Neural Networks. It's paid but it's worth it. khadymschool.thinkific.com/courses/data-science-hands-on-covid-19-face-mask-detection-cnn-open-cv
@@anishojha1020 you're probably not a beginner anymore so I hope you found your answer! Unfortunately, youtube comment section isn't a forum and a lot of people disable notifications(including me) so an actual forum although people are sometimes really rude and condescending, is your best bet for future questions.
This is pure gold, MSc in Data Science and Artificial Intelligence, no professor ever gave me the answer to "what is the code inside the libraries we use", until I found you. Thank you
I don't want to sound too catchy and annoying but the NN's in Tensorflow and PyTorch are not actually implemented like this. They don't store functions to compute gradients for every single option rather they use AutoGradient which does all backpropogation job. I would highly recommend to watch Andrej Karpathy's tutorial on micrograd (mini AutoGradient which you will implement)
I got a master in physics and statistics but I do know how to code a lot of "machine learning" techniques from scratch. Yet human resources look at my degree and think I am incapable, so they rather hire master in AI. I can also code CFD, SPH and FEA from scratch but HR say I am dumber than engineer who just uses third party software (ansys).
@@michaelpieters1844 welcome to recruitment in 2024... you need to feed the recruiters what they want to hear, so that you can then get to the guy who you actually want to talk to about your stuff.
Just your intro alone in your motivations was so capturing. You laid out everything so clearly, including creating those row and column matrices in the early steps. Thank you.
I am so glad, that whenever some teacher just skips the tricky part, a friendly+capable asian guy jumps out of nowhere to casually explain higher math in depth to you.
this type of learning is honestly the best, i implemented k means clustering by myself in c (pretty easy stuff but still) , and i can never forget it now, makes me happy that i can do stuff too
When I was in high-school algebra I programmed an algebra calculator to do my homework for me, and for some reason I never actually needed it. Programming something really is a great way of learning it, even if it does take significantly longer than just some p-sets or flashcards.
I remember when I tried to implement a decision tree on paper !! With a very small data dimensions (maybe 5x6 dim? Can't remember). I spent all the night doing the math but after 5-6 hours I realized I made a mistake in an iteration 😂😂 that's when I realized that we're lucky to have computers to help do it because a human mind can't build completely without doing mistakes in the process (can't stay focus for long time)... I also remember when I implemented a PCA from scratch on excel ( still have the Excel 😂)...😮
Most tutorials I watch online about ML, you can just tell that the instructor doens't know whats happening. They've just memorized libraries and tensorflow syntax, and I don't want that to be me! This is exactly what i've been looking for! THANK YOU!!!
What an impressive speed run! Just nitpicking: 15:45 `rand` is for a uniform dist U(0,1) and `randn` is for the standard normal distribution N(0,1), therefore unbounded, not U(-0.5, 0.5)
Hi! I did a recreation of your code with more hidden layers and noticed what I think is a bug in the db calculation. Changing it to db = 1 / m * np.sum(dZ, axis=1).reshape(-1, 1) was able to get me better results. I think the old db = 1 / m * np.sum(dZ) sums the entire dZ to one float. Very good video though!
noticed the same thing. The way it was implemented here returns db to a float and thus b will always be "similar" to the random initialization, only shifted up/down by a constant.
Hey, I know you posted this a while ago, but I noticed the same thing and saw your comment. I am still not sure how to solve this, dZ is still a 1D array (1 by 10) so in your solution, what does axis=1 do? won't .sum*() just turn the 1D array into a scalar regardless, and then you are back with the same problem of updating all your biases the same way?
Numpy requires some strange things when you have only 1 dimension: Verfied that without this change the final biases weights aren't being updated. With it, training works better. Didn't verify the details of David's solution, just that it was needed, and that it seemed to work. def backward_prop(Z1, A1, Z2, A2, W1, W2, X, Y): one_hot_Y = one_hot(Y) dZ2 = A2 - one_hot_Y dW2 = 1 / m * dZ2.dot(A1.T) db2 = 1 / m * np.sum(dZ2, axis=1).reshape(-1, 1) dZ1 = W2.T.dot(dZ2) * ReLU_deriv(Z1) dW1 = 1 / m * dZ1.dot(X.T) db1 = 1 / m * np.sum(dZ1, axis=1).reshape(-1, 1) return dW1, db1, dW2, db2
I see the same. Also, either this is old enough that something has changed in Python or numpy, or he hasn’t included other things as well. Using his code line for line and the same data set, I get a divide by zero error on the softmax function.
Hi Samson! I'm a developer and trying to learn the basics of ML. Much of the beginner stuff I see is using pre-trained models and frameworks which might be convenient to get things going. However, for me this is something completely new and I really what to understand what happens behind the scenes. Thank you for posting this! /Kevin from Sweden
Really excellent breakdown of a Neural Network, especially the math explanation in the beginning. I also want to say how much I appreciate you leaving in your first attempt at coding it and the mistakes you made. Coding is hard, and spending an hour debugging your code just because of one little number is so real. Great video
This was interesting, it certainly made neural networks far more approachable to me as someone who's never needed to/been inclined to try making one, but encounters them frequently by being involved in STEM. Your explanations coupled with my familiarity with numpy as opposed to dedicated libraries for neural networks really helped - thanks!
Thanks so much for providing the notebook. I tested with different learning rates and lo and behold, 0.50 gives 91% accuracy on test data. And by setting the number of neurons in the deep layer to 20. The accuracy of 93% was achieved.
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I had many Machine Learning seminars in University and saw a lot of videos online on this topic. This is definitelly one of the best i ever saw. All relevant information in such short time, explained with such a high didactic quality. Wish i've had such docents at University. You should go teaching in MIT.
Just 1 minute in the video and I can easily tell that you're gonna own a multi-billion company within a few years. You've got the IQ, the voice, the clarity, the confidence, and the right personality. Best of luck Mr. Zhang
An excellent nice video with abundant mathematical insight. It may be worth to note that instead of partial derivatives one can work with derivatives as the linear transformations they really are, and also looking at the networks in a more structured manner thus making clear how the basic ideas of BPP apply to much more general cases. Several steps are involved. 1.- More general processing units. Any continuously differentiable function of inputs and weights will do; these inputs and weights can belong, beyond Euclidean spaces, to any Hilbert space. Derivatives are linear transformations and the derivative of a neural processing unit is the direct sum of its partial derivatives with respect to the inputs and with respect to the weights; this is a linear transformation expressed as the sum of its restrictions to a pair of complementary subspaces. 2.- More general layers (any number of units). Single unit layers can create a bottleneck that renders the whole network useless. Putting together several units in a unique layer is equivalent to taking their product (as functions, in the sense of set theory). The layers are functions of the of inputs and of the weights of the totality of the units. The derivative of a layer is then the product of the derivatives of the units; this is a product of linear transformations. 3.- Networks with any number of layers. A network is the composition (as functions, and in the set theoretical sense) of its layers. By the chain rule the derivative of the network is the composition of the derivatives of the layers; this is a composition of linear transformations. 4.- Quadratic error of a function. ... --- Since this comment is becoming too long I will stop here. The point is that a very general viewpoint clarifies many aspects of BPP. If you are interested in the full story and have some familiarity with Hilbert spaces please google for papers dealing with backpropagation in Hilbert spaces. A related article with matrix formulas for backpropagation on semilinear networks is also available. For a glimpse into a completely new deep learning algorithm which is orders of magnitude more efficient, controllable and faster than BPP search in this platform for a video about deep learning without backpropagation; in its description there are links to a demo software. The new algorithm is based on the following very general and powerful result (google it): Polyhedrons and perceptrons are functionally equivalent. For the elementary conceptual basis of NNs see the article Neural Network Formalism. Daniel Crespin
i have no idea what your were really saying but at the same time i do because you explained how the math is used and implemented for the code. thank you !
Another thing that would be helpful for those of us that want to copy what you did and experiment with it is to have all the code together instead of separated as it is using Kaggle - this way you can put in some comments with the code explaining the different features. Again, very good video.
Just learned basics around the neural networks and saw this video. So satisfied to all the math formulas are laid out clearly in numpy and real-world coding and training neural network with back propagation. It really helps beginners like me. Thank you so much!
Great video! I did the same thing in python about a year ago, but I didn’t like relying on numpy so much. Your video gave me the motivation to write both a matrix manipulator and neural network from scratch in Java
Good start. Some points: 1. The article on the link in summary is no more available. 2. It would be nice to pay more attention to backpropagation, since it is tricky; just a simple question how to choose between adjusting bias and weight? 3. It would be nice to compare this NN with a simple checking against average "blurred" weighted maps for all numbers on pictures; just blur all 1's, blur separately all 2'th and then compare cosine distance. If the results would be the same as with the NN, the question would be about the Occam's Razor.
@@Agorith_ , so what? I just giving the update tho the author so that he could update the description or bring back the materials. It is not a complain, just a feedback.
You should continue making video similar to this maybe something a training course for machine learning and reinforcement learning AI. You have a real talent for explaining it in the best way possible then from what most videos I’d watched. 👍
Super cool! Would also recommend the series from The Coding Train about creating a neural network from scratch, going a little more into the details of math and what is a perceptron and so.
This is great. Built a backprop in C thirty years ago to solve the same problem. Just for a goof. It worked well before I finished debugging. These things are awesome and now I want to take another look. Thanks for posting this.
This was a really good video. I’ve never build a neural network but it was interesting seeing how the fundamentals add up to build something a little more complexed.
Maaan, I am so happy you made this video. I was looking for somebody to train the Neural Network from scratch. I will go through it several times to get into the subject. Your English is excellent! Many, many thanks!
bro, I am watching NN course from online platform for 1 months, but still difficult to get grasp on it. But you made me understand it in just 30 mins. many thanks
This was really neat. The math explanation was frustrating the first time around but really made sense after working through the code. Thanks for sharing.
VERY helpful! I could never understand the weightings when I watched (lots and lots) of other videos, but this did it for me - I get it now (as much as I am capable of!). Thanks again!!
Samson, i am extremelly sarcastic and devastatingly critical when i make comments, but i have to give you kudos for having the brightest idea i've seen , to just split the screen between the content and yourself, i really liked your idea, everyone should do this. 👍
(as for the content of your video, so far (@7min), i've found it really good also, so i'm just adding it to my AI playlist, when i finish watching it i'll probally subscribe)
Amazing video for beginners to gain an insight in how neural networks work. You just have to have programmed a simple neural net from scratch once to have a good basic understanding.
This is a great way to teach ANN - congrats. However, I would like to suggest you to not worry too much about the time to finish the implementation. Double-checking all steps will avoid coding errors.
I’m always too intimidated to try some of these things. But seeing your process makes it really seem feasible. Need to brush up on my linear algebra again tho 😆
Haven’t finished video yet, but this looks like the missing piece of my experience learning about neural networks at a high level…I probably lacked the linear algebra skills I have now though. Whoa! This could be incredibly exciting! I can’t wait!
What an awesome video! Thank you for sharing this insightful walkthrough, it was really helpful in getting a better understanding of how neural nets works. Thank you!
Here's a course you'll need. Face Mask Detection Using Deep Learning and Neural Networks. It's paid but it's worth it. khadymschool.thinkific.com/courses/data-science-hands-on-covid-19-face-mask-detection-cnn-open-cv
About a week ago I started giving myself a machine learning crash course and I'm surprised to say I'm starting to understand this stuff. It's not as complicated as I thought.
I have learned this back in 1988, when visiting lectures by Prof. Rechenberg at Technical University. So inspiring. Today I am trying this with my new M1 max and its neural network😝😝
The yt algorithm only recommends me this now, 1 year after i've encountered a similar discontent with neural network tutorials. Still very interresting to see how someone else does it. I did give myself a bit of help by using a library called Eigen for the matrixes calculations. Very well done nice video
I've found that educators EVERYWHERE make things more complicated than they really are. The attitude goes something like this, if I explained it so a toddler could understand it. (Which they're capable of doing) I would be out of a job or people would think less of me. True of people talking about music, true of programming and of portrait painting as well. None of this is complicated, just explained poorly or not at all. Number one rule of educator, don't assume the student knows what you're talking about.
@@doords What, I've been through the grind I know what I'm talking about. Music theory in particular is more than any other discipline guilty of this, programming to a lesser extent. There's a community of underachievers that need to boost their ego by making it seem harder than it is. Usually by using made up lingo instead of two words everyone are familiar with, or made up quirky symbols instead of something that visually makes sense to everyone. What could be explained in 20 minutes takes 3 years to "teach". It does annoy me, fragile egos that need to prove themselves and hammer down at anyone that doesn't suck up to their sense of...moral superiority or superiority in any way. If you want to teach something, stop messing about damn soy boy.
It is more complicated if it's supposed to work with arbitrary amounts of layers. But yeah I think coding up something like this can be very helpful, because it shows you what information is actually available and typically not used by practitioners. You don't just have the gradients of batch-averages of losses - you have much more.
Perhaps I overcomplicated matters compared to your approach when I did this a couple of years ago, but like you, I wanted to program it "from scratch". My language of choice: java. I actually simulated "neurons" which were a class that stored its activation data value, and its connections to the next layer, so that it "looked" like a K_m,n graph, and the connection was an array which stored the biases along each "synapse" so to speak. Then when the hidden layers activated, I had each neuron simply sum the outputs from each synapse connecting to it from the previous layer, which was just the product of its activation value and its bias, then sigmoided this to get its own activation value. Note that while each neuron's activation was only in (-1,1), I let the biases be free parameters. When I programmed the backprop algo, I did the gradient descent the same as you, but effectively set that alpha parameter to one. It didn't occur to me to mess with that. Starting the network out with random parameters, then training it on randomly chosen sets of 10,000 images five or six times seemed to work pretty well. I saw 93% accuracy on the test data. And just for fun, I put the network on a discord bot so my friends could feed it images of the same size and see its guess. Two interesting results came out. The network fails on inverted colors: i.e., drawing white on black using MS paint or something wouldn't get reliable predictions. Secondly, using MS paint to give it new data did work, but at a much lower rate. Our best guess for why this happened was due to the sharpness of the lines between the number and backgrounds.
I really am like you, as you said you learn better when you dive deep into the scratch with equations you understand better. But, now I think that's the case with most of the people.
Samson, this was such a great walk through. Just wanted to say that if you ever made other videos recreating machine learning models from scratch, I'd 100% watch them. In any case, hope all is good and thanks for this great content :)
Hey guys, a reply would be highly appreciated. I want to plot the cost vs the number of iterations but I am not able to figure which parameter to plot ? I am a beginner and I would really appreciate the help. Thank you
It's a MLP, you easily computed the backpropagation step in closed form, but I wonder how those famous frameworks can compute any network's partial-derivatives tensors automatically
usually the partial derivatives in backpropagation are of functions specifically chosen to be convex and have nothing to do with the problem you are working on, but are just ones that work nicely for ML algos
The most sadistic thing I've made for a school project was a multi layer perceptron in C. No stdlibs either. Just raw hard math, all functions were approximated where possible e.g sigmoid, multiplication since it wasn't available. The only part I couldn't make was to generate randomness in initial weights which is important to ensure neurons train assymetrically. It was all so it would run on a custom RISC V processor (which the multiply, or M extension was sometimes unavailable). My proudest and most depressing creation.
There is one thing I do not understand. Because the derivation and chain rule stuff, shouldn't the derivative of the softmax activation function also be included somewhere?
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@23:30 you also see two errors, there is no axis argument for the np.sum(), the lines should be db2 = 1 / m * np.sum(dZ2) ... and ... db1 = 1 / m * np.sum(dZ1)
Hi, i found this video very helpful for beginners. Could you please tell how you came up the equations of dz,dw and db? That would be really helpful as well
Readers should not expect the code to work and nobody has the time to explain why it doesn't work. There are differences between the code in this video and the code in your kaggle notebook. However, thanks for showing the basic workflow! I hope this will help us understand software like TensorFlow.
Everyone praises this video for being so helpful and I'm just sitting here understanding NOTHING. :D I feel so dumb! Maybe I should've stared with something even more basic having learned in a nutshell only print("hello world") so far. I will definitely go back and watch it all again in the future after I learn more. Thank you for the video, Samson. Cheers!
I watched this video when I was studying in grade 11. Had no clue what he was talking about but I tried to understand as much as possible.
Now I watch it again as a university student, it is so satisfying to understand everything now.
Hope that will happen to me to
@@viCuber same LOL
@@CR33D404 lmao
It happens to me several time. Sometime you just stumble on a knowledge and can't understand a single thing about it then suddenly 1 or 2 years later you completely understand it without any try.
same
Making a neural network from scratch is easy, what I really want to see is how to make a neural network ON scratch.
Make the scratch cat sentient challenge (gone wrong) (humanity destroyed)
Just create a python interpreter in Scratch, easy
Ok
Lmao, understimated comment, but perfect one
lol
Took a Machine Learning course in university and this is what we did the whole semester in Matlab. Tensorflow was introduced right at the end for the final project.
sounds amazing
oh hell yea matlab
@@marshmellominiapple oh he'll yeah methlab
@@FictionHubZA LET HIM COOK
@@dumbfate no you let him cook
I'm so glad you actually went in depth with the math explanation. So often people will just explain surface layer and then "alright lets jump into the code".
dude, he literally did the same when he explained backpropagation and labelled it as "fancy maths" instead of properly explaining it.
@@Ayush-sz8ys Exactly! He should have derived it through matrix calculus.
Most of the videos are titled “how to create a blabla” when they’re actually teaching how to use… so I really appreciate your video! This really contributes to knowledge 🥰
My man really explained how a back propagated neural network works from scratch in 10 minutes
i like how numpy has become so ingrained in python that it's basically considered vanilla python at this point
interestingly much of that functionality is built into other languages used by the ml community such as R, matlab and julia.
@@nathanwycoff4627 matrices and linear algebra are really useful for math and engineering less so for general programming. Different languages focusing on different usability concerns quite interesting.
@@mattrochford6783 stop coping julia is just a better language
@@machineman8920 ???
I don't like it. I wish people stopped being overly-lazy with Numpy and just wrote their own libraries so they'd understand what they are actually doing. No, scratch that, if they can't accomplish the same thing using only Assembly, they're a total noob, should put down their keyboard, and get an MBA instead...
This video is one of the best descriptions of neural networks written in only Numpy and Python I've ever seen.
Thanks
Hey guys, a reply would be highly appreciated. I want to plot the cost vs the number of iterations but I am not able to figure which parameter to plot ? I am a beginner and I would really appreciate the help. Thank you
@@anishojha1020 Hi, try posting comment again in regular comments part, so more people see it. This is only a sub-comment.
@@KHM95 Hi, are you a bot?
@@waterspray5743 No man, I am not.
I advise looking at sendex's 'Neural Network from scratch' series
In case any beginners to ML came here wondering why they are really confused, this video isn't really for beginners and he doesn't really explain that. Its "from scratch" in the sense of not using any prebuilt models in the code. Its a good explanation for people who are already familiar with neural networks, prebuilt layers, loss functions, etc. not for people starting their understanding "from scratch."
actually im new to ML, (2-3 months in) and this helped me understand a lot, i am implementing it on my own now, without even using numpy so i can code out stuff like transpose on my own and learn more. Random is tricky tho lol
@@OT-tn7ciyes but he doesn’t explain the math or why it works. It’s meant for people that already know why the math works, and who want to know how to put it all together
I've never heard any of this explained before. After watching this once, I understand the mathematics behind neural networks and why the functions are used. Great job with the explanation here. Many thanks.
If you make more deep learning videos with numpy and math(without any framework) just like in this video, it would be great for begginers to learn basics!!! Do you think to keep continue??
Merhaba Eren!
upp!
Hey guys, a reply would be highly appreciated. I want to plot the cost vs the number of iterations but I am not able to figure which parameter to plot ? I am a beginner and I would really appreciate the help. Thank you
Here's a course you'll need.
Face Mask Detection Using Deep Learning and Neural Networks. It's paid but it's worth it.
khadymschool.thinkific.com/courses/data-science-hands-on-covid-19-face-mask-detection-cnn-open-cv
@@anishojha1020 you're probably not a beginner anymore so I hope you found your answer! Unfortunately, youtube comment section isn't a forum and a lot of people disable notifications(including me) so an actual forum although people are sometimes really rude and condescending, is your best bet for future questions.
00:51 Problem statement
01:18 Math explanation
11:18 Coding it up
27:43 Result's
Thank you
Thank you
Thank you
Thank you
Thank you
This is pure gold, MSc in Data Science and Artificial Intelligence, no professor ever gave me the answer to "what is the code inside the libraries we use", until I found you. Thank you
thats sad
I don't want to sound too catchy and annoying but the NN's in Tensorflow and PyTorch are not actually implemented like this. They don't store functions to compute gradients for every single option rather they use AutoGradient which does all backpropogation job. I would highly recommend to watch Andrej Karpathy's tutorial on micrograd (mini AutoGradient which you will implement)
I got a master in physics and statistics but I do know how to code a lot of "machine learning" techniques from scratch. Yet human resources look at my degree and think I am incapable, so they rather hire master in AI. I can also code CFD, SPH and FEA from scratch but HR say I am dumber than engineer who just uses third party software (ansys).
@@michaelpieters1844 welcome to recruitment in 2024... you need to feed the recruiters what they want to hear, so that you can then get to the guy who you actually want to talk to about your stuff.
@@michaelpieters1844 You are dumb compared to a ML engineer.Masters in Physics is far too easy
Just your intro alone in your motivations was so capturing. You laid out everything so clearly, including creating those row and column matrices in the early steps. Thank you.
I am so glad, that whenever some teacher just skips the tricky part, a friendly+capable asian guy jumps out of nowhere to casually explain higher math in depth to you.
this type of learning is honestly the best, i implemented k means clustering by myself in c (pretty easy stuff but still) , and i can never forget it now, makes me happy that i can do stuff too
When I was in high-school algebra I programmed an algebra calculator to do my homework for me, and for some reason I never actually needed it. Programming something really is a great way of learning it, even if it does take significantly longer than just some p-sets or flashcards.
@@Emily-fm7pt dude are you serious ??? SAME SAME lmao
I remember when I tried to implement a decision tree on paper !! With a very small data dimensions (maybe 5x6 dim? Can't remember). I spent all the night doing the math but after 5-6 hours I realized I made a mistake in an iteration 😂😂 that's when I realized that we're lucky to have computers to help do it because a human mind can't build completely without doing mistakes in the process (can't stay focus for long time)...
I also remember when I implemented a PCA from scratch on excel ( still have the Excel 😂)...😮
Most tutorials I watch online about ML, you can just tell that the instructor doens't know whats happening. They've just memorized libraries and tensorflow syntax, and I don't want that to be me! This is exactly what i've been looking for! THANK YOU!!!
Excellent tutorial and example. Reveals the magic that most don't know about NNs and I love how you go about it.
You sir, are my hero. You are the first person to actually explain this properly to me. Thank you so much for that.
What an impressive speed run! Just nitpicking: 15:45 `rand` is for a uniform dist U(0,1) and `randn` is for the standard normal distribution N(0,1), therefore unbounded, not U(-0.5, 0.5)
Musician, filmmaker, data scientist, and etc. bro maxed out on skill trees. 😂
Samson Zhang is the BEST Cinematographer, editor, musician& tech geek in the WORLD
I love it when I learn more from a YT video than my computer science courses.
did you get why he subtracted 0.5??
Hi! I did a recreation of your code with more hidden layers and noticed what I think is a bug in the db calculation. Changing it to db = 1 / m * np.sum(dZ, axis=1).reshape(-1, 1) was able to get me better results. I think the old db = 1 / m * np.sum(dZ) sums the entire dZ to one float. Very good video though!
noticed the same thing. The way it was implemented here returns db to a float and thus b will always be "similar" to the random initialization, only shifted up/down by a constant.
Hey, I know you posted this a while ago, but I noticed the same thing and saw your comment. I am still not sure how to solve this, dZ is still a 1D array (1 by 10) so in your solution, what does axis=1 do? won't .sum*() just turn the 1D array into a scalar regardless, and then you are back with the same problem of updating all your biases the same way?
Actually, nevermind, dZ is 10 by m so this does make sense
Numpy requires some strange things when you have only 1 dimension:
Verfied that without this change the final biases weights aren't being updated.
With it, training works better. Didn't verify the details of David's solution, just that it was needed, and that it seemed to work.
def backward_prop(Z1, A1, Z2, A2, W1, W2, X, Y):
one_hot_Y = one_hot(Y)
dZ2 = A2 - one_hot_Y
dW2 = 1 / m * dZ2.dot(A1.T)
db2 = 1 / m * np.sum(dZ2, axis=1).reshape(-1, 1)
dZ1 = W2.T.dot(dZ2) * ReLU_deriv(Z1)
dW1 = 1 / m * dZ1.dot(X.T)
db1 = 1 / m * np.sum(dZ1, axis=1).reshape(-1, 1)
return dW1, db1, dW2, db2
I see the same. Also, either this is old enough that something has changed in Python or numpy, or he hasn’t included other things as well. Using his code line for line and the same data set, I get a divide by zero error on the softmax function.
the fact he actually shows the first overconfident of its memory programer stage is actually so real.
Hi Samson! I'm a developer and trying to learn the basics of ML. Much of the beginner stuff I see is using pre-trained models and frameworks which might be convenient to get things going. However, for me this is something completely new and I really what to understand what happens behind the scenes. Thank you for posting this! /Kevin from Sweden
Exactly!
try jeremy howard part2 of 2022 courses
Really excellent breakdown of a Neural Network, especially the math explanation in the beginning. I also want to say how much I appreciate you leaving in your first attempt at coding it and the mistakes you made. Coding is hard, and spending an hour debugging your code just because of one little number is so real. Great video
I need to come back to this after learning some more preliminaries but you are a very natural teacher and good at presenting. Keep it up 👍
I know the Maths and Programming behind it and listening this guy doing all that on his own is pure respect from my side.
This was interesting, it certainly made neural networks far more approachable to me as someone who's never needed to/been inclined to try making one, but encounters them frequently by being involved in STEM. Your explanations coupled with my familiarity with numpy as opposed to dedicated libraries for neural networks really helped - thanks!
Thanks so much for providing the notebook. I tested with different learning rates and lo and behold, 0.50 gives 91% accuracy on test data. And by setting the number of neurons in the deep layer to 20. The accuracy of 93% was achieved.
try changing the epoch too
@@nithinsai2250 Yeah I tried 1000, it did improve it. But I wanted to benchmark the inference against the same epochs.
Here's a course you'll need.
Face Mask Detection Using Deep Learning and Neural Networks. It's paid but it's worth it.
khadymschool.thinkific.com/courses/data-science-hands-on-covid-19-face-mask-detection-cnn-open-cv
Better lecture and example for understanding and building NN than any in my math and stats MSc
I had many Machine Learning seminars in University and saw a lot of videos online on this topic. This is definitelly one of the best i ever saw. All relevant information in such short time, explained with such a high didactic quality. Wish i've had such docents at University. You should go teaching in MIT.
Just 1 minute in the video and I can easily tell that you're gonna own a multi-billion company within a few years. You've got the IQ, the voice, the clarity, the confidence, and the right personality. Best of luck Mr. Zhang
I've been looking for this video for 6 years.
It's worth noting that softmax IS actually very similar to sigmoid. But it essentially does a sigmoid over multiple classes.
An excellent nice video with abundant mathematical insight.
It may be worth to note that instead of partial derivatives one can work with derivatives as the linear transformations they really are, and also looking at the networks in a more structured manner thus making clear how the basic ideas of BPP apply to much more general cases. Several steps are involved.
1.- More general processing units.
Any continuously differentiable function of inputs and weights will do; these inputs and weights can belong, beyond Euclidean spaces, to any Hilbert space. Derivatives are linear transformations and the derivative of a neural processing unit is the direct sum of its partial derivatives with respect to the inputs and with respect to the weights; this is a linear transformation expressed as the sum of its restrictions to a pair of complementary subspaces.
2.- More general layers (any number of units).
Single unit layers can create a bottleneck that renders the whole network useless. Putting together several units in a unique layer is equivalent to taking their product (as functions, in the sense of set theory). The layers are functions of the of inputs and of the weights of the totality of the units. The derivative of a layer is then the product of the derivatives of the units; this is a product of linear transformations.
3.- Networks with any number of layers.
A network is the composition (as functions, and in the set theoretical sense) of its layers. By the chain rule the derivative of the network is the composition of the derivatives of the layers; this is a composition of linear transformations.
4.- Quadratic error of a function.
...
---
Since this comment is becoming too long I will stop here. The point is that a very general viewpoint clarifies many aspects of BPP.
If you are interested in the full story and have some familiarity with Hilbert spaces please google for papers dealing with backpropagation in Hilbert spaces. A related article with matrix formulas for backpropagation on semilinear networks is also available.
For a glimpse into a completely new deep learning algorithm which is orders of magnitude more efficient, controllable and faster than BPP search in this platform for a video about deep learning without backpropagation; in its description there are links to a demo software.
The new algorithm is based on the following very general and powerful result (google it): Polyhedrons and perceptrons are functionally equivalent.
For the elementary conceptual basis of NNs see the article Neural Network Formalism.
Daniel Crespin
i have no idea what your were really saying but at the same time i do because you explained how the math is used and implemented for the code. thank you !
Another thing that would be helpful for those of us that want to copy what you did and experiment with it is to have all the code together instead of separated as it is using Kaggle - this way you can put in some comments with the code explaining the different features. Again, very good video.
Just learned basics around the neural networks and saw this video. So satisfied to all the math formulas are laid out clearly in numpy and real-world coding and training neural network with back propagation. It really helps beginners like me. Thank you so much!
Great video! I did the same thing in python about a year ago, but I didn’t like relying on numpy so much. Your video gave me the motivation to write both a matrix manipulator and neural network from scratch in Java
I did it in assembly, easy
Good start. Some points:
1. The article on the link in summary is no more available.
2. It would be nice to pay more attention to backpropagation, since it is tricky; just a simple question how to choose between adjusting bias and weight?
3. It would be nice to compare this NN with a simple checking against average "blurred" weighted maps for all numbers on pictures; just blur all 1's, blur separately all 2'th and then compare cosine distance. If the results would be the same as with the NN, the question would be about the Occam's Razor.
You can just use the wayback machine since its 3 years old vid.
@@Agorith_ б, how is it related to my post?
@@doctorshadow2482 umm I said it for your first point-"The article on the link in summary is no more available."
@@Agorith_ , so what? I just giving the update tho the author so that he could update the description or bring back the materials. It is not a complain, just a feedback.
@@doctorshadow2482 I am just making awareness to people who look your comment on where to look and which year to look into.
You should continue making video similar to this maybe something a training course for machine learning and reinforcement learning AI. You have a real talent for explaining it in the best way possible then from what most videos I’d watched. 👍
This solved a lot of doubts and brought up mu confidence levels to deep dive into AI/ML. Thanks for the explanation.
Super cool! Would also recommend the series from The Coding Train about creating a neural network from scratch, going a little more into the details of math and what is a perceptron and so.
This is great. Built a backprop in C thirty years ago to solve the same problem. Just for a goof. It worked well before I finished debugging.
These things are awesome and now I want to take another look. Thanks for posting this.
Just discovered this channel. Very cool stuff. Much respect for doing something challenging like this.
After Andrew Ng's course, this is the first time I'm watching math functions, thanks buddy, it was a nice refresher for me.
This was a really good video. I’ve never build a neural network but it was interesting seeing how the fundamentals add up to build something a little more complexed.
you got a face of child but wisdom and heart of a man! Love the video
this man appeared, released an absolute banger of a programming video, and proceeded to never posted any cs content again. sigma mentality tbh
Maaan, I am so happy you made this video. I was looking for somebody to train the Neural Network from scratch. I will go through it several times to get into the subject. Your English is excellent! Many, many thanks!
Bro, that is exactly how I study! I found out your channel and I am so glad I did. Instantly subscribed!
I see you have learnt from Andrew Ng
yeah the notations reminded me of Andrew Ng
@@rishikeshkanabar4650 usage of the word called "intuition" reminds me of him saying ..."to get a better intuition" in his lectures
Subscribed at 0:05 seconds because you look smart AF kid. Thanks for teaching.
Smart 😂😂
bro, I am watching NN course from online platform for 1 months, but still difficult to get grasp on it. But you made me understand it in just 30 mins. many thanks
This was really neat. The math explanation was frustrating the first time around but really made sense after working through the code. Thanks for sharing.
VERY helpful! I could never understand the weightings when I watched (lots and lots) of other videos, but this did it for me - I get it now (as much as I am capable of!). Thanks again!!
Understood nothing but wow
This is the first ASMR NN video that I have ever seen. Well done.
Amazing. Needed to see the low end and finally found it. Thank you for the amazing video!
Samson, i am extremelly sarcastic and devastatingly critical when i make comments, but i have to give you kudos for having the brightest idea i've seen , to just split the screen between the content and yourself, i really liked your idea, everyone should do this. 👍
(as for the content of your video, so far (@7min), i've found it really good also, so i'm just adding it to my AI playlist, when i finish watching it i'll probally subscribe)
Samson, Keep doing this kind of videos please!! Very intelligent and understandable video
Amazing video for beginners to gain an insight in how neural networks work. You just have to have programmed a simple neural net from scratch once to have a good basic understanding.
This is a great way to teach ANN - congrats. However, I would like to suggest you to not worry too much about the time to finish the implementation. Double-checking all steps will avoid coding errors.
finally someone who actually respects the craft
I’m always too intimidated to try some of these things. But seeing your process makes it really seem feasible. Need to brush up on my linear algebra again tho 😆
Brilliant. Kind of the Hello World of neural nets. It shed a lot of light for me on how back propagation works.
Haven’t finished video yet, but this looks like the missing piece of my experience learning about neural networks at a high level…I probably lacked the linear algebra skills I have now though. Whoa! This could be incredibly exciting! I can’t wait!
Nobody cares what you have to say
Am I the only one who sees Andrew Ng Junior? Good work man! Keep it up!
What an awesome video! Thank you for sharing this insightful walkthrough, it was really helpful in getting a better understanding of how neural nets works. Thank you!
Here's a course you'll need.
Face Mask Detection Using Deep Learning and Neural Networks. It's paid but it's worth it.
khadymschool.thinkific.com/courses/data-science-hands-on-covid-19-face-mask-detection-cnn-open-cv
About a week ago I started giving myself a machine learning crash course and I'm surprised to say I'm starting to understand this stuff. It's not as complicated as I thought.
It's a shame it isn't taught this way in courses. Excellent video!
I have learned this back in 1988, when visiting lectures by Prof. Rechenberg at Technical University. So inspiring. Today I am trying this with my new M1 max and its neural network😝😝
Helpful, thanks. Made my own from scratch in bare C++. From image to 32 to 16 to 10 outputs, using leaky ReLU. 96% accuracy on the test set. 🥳
Wow nice
The yt algorithm only recommends me this now, 1 year after i've encountered a similar discontent with neural network tutorials. Still very interresting to see how someone else does it. I did give myself a bit of help by using a library called Eigen for the matrixes calculations.
Very well done nice video
Man this video is a masterpiece. I learned a lot and I love your thorough, calm style. Please keep doing similar content!! Best wishes
I am going to do the same over the next two weeks , at the end I'm coming back to see any differences between our code, thanks for sharing :)
Thank you so much Mr. Samson!!
This was so informative and enlightening
would love to watch this but after the first 5 minutes I realized I have not reached this kind of level of math so see you in 3 years :)
I've found that educators EVERYWHERE make things more complicated than they really are. The attitude goes something like this, if I explained it so a toddler could understand it. (Which they're capable of doing) I would be out of a job or people would think less of me. True of people talking about music, true of programming and of portrait painting as well. None of this is complicated, just explained poorly or not at all. Number one rule of educator, don't assume the student knows what you're talking about.
I see people in youtube videos just types for 5 minutes without saying a thing or suddenly start to rewrite things.
Spot on
@@doords What, I've been through the grind I know what I'm talking about.
Music theory in particular is more than any other discipline guilty of this, programming to a lesser extent. There's a community of underachievers that need to boost their ego by making it seem harder than it is.
Usually by using made up lingo instead of two words everyone are familiar with, or made up quirky symbols instead of something that visually makes sense to everyone.
What could be explained in 20 minutes takes 3 years to "teach". It does annoy me, fragile egos that need to prove themselves and hammer down at anyone that doesn't suck up to their sense of...moral superiority or superiority in any way.
If you want to teach something, stop messing about damn soy boy.
It is more complicated if it's supposed to work with arbitrary amounts of layers.
But yeah I think coding up something like this can be very helpful, because it shows you what information is actually available and typically not used by practitioners. You don't just have the gradients of batch-averages of losses - you have much more.
Skill issue
Your Notes are exceptionally written. Leonardo Davinci did that. Some of the smartest people take beautiful notes. coorelation
Perhaps I overcomplicated matters compared to your approach when I did this a couple of years ago, but like you, I wanted to program it "from scratch". My language of choice: java. I actually simulated "neurons" which were a class that stored its activation data value, and its connections to the next layer, so that it "looked" like a K_m,n graph, and the connection was an array which stored the biases along each "synapse" so to speak. Then when the hidden layers activated, I had each neuron simply sum the outputs from each synapse connecting to it from the previous layer, which was just the product of its activation value and its bias, then sigmoided this to get its own activation value. Note that while each neuron's activation was only in (-1,1), I let the biases be free parameters. When I programmed the backprop algo, I did the gradient descent the same as you, but effectively set that alpha parameter to one. It didn't occur to me to mess with that. Starting the network out with random parameters, then training it on randomly chosen sets of 10,000 images five or six times seemed to work pretty well. I saw 93% accuracy on the test data.
And just for fun, I put the network on a discord bot so my friends could feed it images of the same size and see its guess. Two interesting results came out. The network fails on inverted colors: i.e., drawing white on black using MS paint or something wouldn't get reliable predictions. Secondly, using MS paint to give it new data did work, but at a much lower rate. Our best guess for why this happened was due to the sharpness of the lines between the number and backgrounds.
I really am like you, as you said you learn better when you dive deep into the scratch with equations you understand better. But, now I think that's the case with most of the people.
Samson, this was such a great walk through. Just wanted to say that if you ever made other videos recreating machine learning models from scratch, I'd 100% watch them. In any case, hope all is good and thanks for this great content :)
this video deserves at least 1 million views
I actually did this exact same thing for my German a level project. Same database. :D good times
No other video about neural networks can explain neural networks better than this one
Hey guys, a reply would be highly appreciated. I want to plot the cost vs the number of iterations but I am not able to figure which parameter to plot ? I am a beginner and I would really appreciate the help. Thank you
It's a MLP, you easily computed the backpropagation step in closed form, but I wonder how those famous frameworks can compute any network's partial-derivatives tensors automatically
usually the partial derivatives in backpropagation are of functions specifically chosen to be convex and have nothing to do with the problem you are working on, but are just ones that work nicely for ML algos
The most sadistic thing I've made for a school project was a multi layer perceptron in C. No stdlibs either. Just raw hard math, all functions were approximated where possible e.g sigmoid, multiplication since it wasn't available.
The only part I couldn't make was to generate randomness in initial weights which is important to ensure neurons train assymetrically.
It was all so it would run on a custom RISC V processor (which the multiply, or M extension was sometimes unavailable). My proudest and most depressing creation.
There is one thing I do not understand. Because the derivation and chain rule stuff, shouldn't the derivative of the softmax activation function also be included somewhere?
Samson, we need more videos like this from you. Great content, more visuals would be nice, too 🙂
Timestaps if you forgot
0:51 Problem Statement
1:18 Math Explanation
11:18 Coding It up
27:43 Results
Here's a course you'll need.
Face Mask Detection Using Deep Learning and Neural Networks. It's paid but it's worth it.
khadymschool.thinkific.com/courses/data-science-hands-on-covid-19-face-mask-detection-cnn-open-cv
@18:07 is the time stamp where the other error was made, a2 = softmax(a1) which should be
a2 = softmax(z2)
@23:30 you also see two errors, there is no axis argument for the np.sum(), the lines should be
db2 = 1 / m * np.sum(dZ2) ... and ... db1 = 1 / m * np.sum(dZ1)
And @23:00 ReLU_deriv(z) should really be return np.array(zn > 0, dtype=float) if you are aiming for good typing practice.
I don't understand anything but wow
It feels like it took me months to understand programming feedforward neural networks but I finally understand it. Thanks for the video.
Hi, i found this video very helpful for beginners. Could you please tell how you came up the equations of dz,dw and db? That would be really helpful as well
watch andrew ng he copied every single equation from his course
@@aryamankukal1056 I wouldn’t say he copied every equation. These equations are taught in all ML/AI courses and it is just mathematics
@@Beyond_b1 andrew's notation is a very specific and if u watch carefully he uses all of the same conventions
Its crazy how i understand this now, years ago i didn't know what was going on. when I watched this video
Thank you for your time and effort, Samson, this tutorial is a treasure.
Readers should not expect the code to work and nobody has the time to explain why it doesn't work. There are differences between the code in this video and the code in your kaggle notebook. However, thanks for showing the basic workflow! I hope this will help us understand software like TensorFlow.
I agree with you. I also did this by scratch. It was a lot of fun! What’s the point of masters math degree if I am not going to use it lol. Nice work!
bro can you help i also wanna learn can you tell us resources which you use to learn this neural network
@@Pk-tw6li study some basic linear algebra, just with that you'll understand at least 85% of whats going on with the algorithm
Thank you. I'm doing this in class right now and your explanations were super helpful!
Everyone praises this video for being so helpful and I'm just sitting here understanding NOTHING. :D I feel so dumb! Maybe I should've stared with something even more basic having learned in a nutshell only print("hello world") so far. I will definitely go back and watch it all again in the future after I learn more. Thank you for the video, Samson. Cheers!
defintely pick up a book on algorithims and data structures first!