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A Collection of Jupyter Notebooks with Deep Learning Models created using Pytorch for Computer Vision (Image Classification) problems trained on GPU.

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Pytorch-Notebooks

A Collection of Jupyter Notebooks with Deep Learning Models created using Pytorch for Computer Vision (Image Classification) problems trained on GPU.

Following are the models created -

  • Simple Logistic Regression on MNIST dataset for Digit Recognition with accuracy of 86.2%

  • Two layered Neural Network (1 hidden and 1 output layer) on MNIST dataset, trained on GPU using Google Colab with accuracy of 96.9%

  • Convolutional Neural Network with 6 Convolutional layers (followed by ReLU activations), 3 Max Pooling layers and 3 Linear layers for CIFAR10 dataset for object classification trained on GPU using Google Colab with accuracy of 73.6%

  • A state of the art Convolutional Neural Network model with Residual blocks, ResNet9 that has 8 Convolutional blocks and 1 Linear block for CIFAR10 dataset for object classification trained on GPU using Google Colab improving the accuracy upto 90%

App Features

Datasets Used -

  • MNIST dataset for Handwritten digits.

App Features

  • CIFAR10 dataset for 10 types of Objects.

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A Collection of Jupyter Notebooks with Deep Learning Models created using Pytorch for Computer Vision (Image Classification) problems trained on GPU.

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