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LeNet-5 CNN Architecture Explained | The Network That Started Deep Learning
In this video, we break down the LeNet-5 convolutional neural network architecture layer by layer.
We cover convolutions, pooling, sparse connectivity, activation functions, and compute the exact number of parameters.
Link for the animation codes:- https://github.com/ByteQuest0/Animation_codes/tree/main/2025/Lenet5
Links for Important videos ✅ :-
Neural Networks:- https://youtu.be/sE6OaMndGZg
Gradient descent :- https://youtu.be/jL2G8DG-qmI
BackPropagation:- https://youtu.be/nAMkcgxKwfA
Momemtum Gradient descent:- https://youtu.be/Q_sHSpRBbtw
Data Normalization:- https://youtu.be/W2vqsTg-rDU
📚 Welcome to the Channel!
If you're passionate about learning complex concepts in the simplest way possible, you're in the right place. I create visual explanations using animations to make topics more intuitive and engaging—especially in Algorithms, AI, machine learning, and beyond.
🎥 Animations created using Manim:
Manim is an open-source Python library for creating mathematical animations. Learn more or try it yourself:
🔗 https://www.manim.community
Let's Connect:-
GitHub:- https://github.com/ByteQuest0
Reddit:- https://www.reddit.com/r/ByteQuest/
#LeNet #LeNet5 #CNN #DeepLearning #ComputerVision
#NeuralNetworks #MachineLearning #AI #CNNArchitecture
#YannLeCun #AlexNet #DeepLearningHistory #MNIST
Видео LeNet-5 CNN Architecture Explained | The Network That Started Deep Learning канала ByteQuest
We cover convolutions, pooling, sparse connectivity, activation functions, and compute the exact number of parameters.
Link for the animation codes:- https://github.com/ByteQuest0/Animation_codes/tree/main/2025/Lenet5
Links for Important videos ✅ :-
Neural Networks:- https://youtu.be/sE6OaMndGZg
Gradient descent :- https://youtu.be/jL2G8DG-qmI
BackPropagation:- https://youtu.be/nAMkcgxKwfA
Momemtum Gradient descent:- https://youtu.be/Q_sHSpRBbtw
Data Normalization:- https://youtu.be/W2vqsTg-rDU
📚 Welcome to the Channel!
If you're passionate about learning complex concepts in the simplest way possible, you're in the right place. I create visual explanations using animations to make topics more intuitive and engaging—especially in Algorithms, AI, machine learning, and beyond.
🎥 Animations created using Manim:
Manim is an open-source Python library for creating mathematical animations. Learn more or try it yourself:
🔗 https://www.manim.community
Let's Connect:-
GitHub:- https://github.com/ByteQuest0
Reddit:- https://www.reddit.com/r/ByteQuest/
#LeNet #LeNet5 #CNN #DeepLearning #ComputerVision
#NeuralNetworks #MachineLearning #AI #CNNArchitecture
#YannLeCun #AlexNet #DeepLearningHistory #MNIST
Видео LeNet-5 CNN Architecture Explained | The Network That Started Deep Learning канала ByteQuest
LeNet LeNet-5 CNN convolutional neural network deep learning computer vision Yann LeCun CNN architecture LeNet explained convolution pooling parameter calculation sparse connectivity tanh activation MNIST handwritten digit recognition neural networks basics deep learning history AlexNet classic CNNs AI fundamentals
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26 декабря 2025 г. 16:28:47
00:05:39
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