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The simplest implementation of LeNet5 with mnist in PyTorch. Accuracy: ~99%

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ChawDoe/LeNet5-MNIST-PyTorch

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LeNet5-MNIST-PyTorch

This is the simplest implementation of the paper "Gradient-based learning applied to document recognition" in PyTorch.

Have a try with artificial intelligence!

Feel free to ask anything!

image

Activation Difference!

Note that this repo's implementation uses MaxPooling and ReLU instead of AvgPooling and Sigmoid activation. image

Requirments

Python3
PyTorch >= 0.4.0
torchvision >= 0.1.8

Usage

$git clone https://github.com/ChawDoe/LeNet-5-MNIST-PyTorch.git  
$cd LeNet5-MNIST-PyTorch  
$python3 train.py  

model will now run on GPU if available

Hint

This repo includes the mnist dataset.

Accuracy

Average precision on test set: 99%

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The simplest implementation of LeNet5 with mnist in PyTorch. Accuracy: ~99%

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