Pretrained models on CIFAR10/100 in PyTorch
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Updated
Mar 3, 2023 - Python
Pretrained models on CIFAR10/100 in PyTorch
Implementation of Deep-learning techniques in pytorch
A Collection of Jupyter Notebooks with Deep Learning Models created using Pytorch for Computer Vision (Image Classification) problems trained on GPU.
Small and easily modifiable notebook to extract embeddings from pre trained resnet50
Compilation of activities and projects given to members of the Computer Vision Group
Watso StudioのJupyter NotebookでCIFAR-10を使った画像分類モデルを作成
Using TensorFlow backend, multiple methods and their results to achieve best classification for CIFAR10 image dataset. Edit: I have also included a complete keras guide (Colab Notebook) to build CNN-single Layer, CNN-Multi Layer and Transfer learning based CIFAR10 classification.
Notes and Jupyter notebooks exploring deep learning and Tensorflow framework
Implementing an ANN using PyTorch (under 800,000 parameters) to achieve +92% accuracy in under 100 epochs.
This GitHub laboratory contains PyTorch classification loss functions, Jupyter notebooks, and documentation for researchers and machine learning enthusiasts interested in deep learning and PyTorch.
CNN applied on Cifar-10 database.
Train Basic Model on CIFAR10 Dataset - 🎨🖥️ Utilizes CIFAR-10 dataset with 60000 32x32 color images in 10 classes. Demonstrates loading using torchvision and training with pretrained models like ResNet18, AlexNet, VGG16, DenseNet161, and Inception. Notebook available for experimentation.
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