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language: en |
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tags: |
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- image-classification |
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- computer-vision |
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- pytorch |
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- cnn |
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- cifar10 |
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license: mit |
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datasets: |
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- cifar10 |
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model-index: |
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- name: SimpleCNN CIFAR-10 Classifier |
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results: [] |
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--- |
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# π§ SimpleCNN CIFAR-10 Classifier |
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π A simple Convolutional Neural Network (CNN) model trained on the [CIFAR-10 dataset](https://www.cs.toronto.edu/~kriz/cifar.html), capable of recognizing 10 classes of common objects. The model was trained using PyTorch and is suitable for educational and prototyping purposes. |
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## π·οΈ Classes |
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- Airplane |
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- Automobile |
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- Bird |
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- Cat |
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- Deer |
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- Dog |
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- Frog |
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- Horse |
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- Ship |
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- Truck |
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## π§° Training Procedure |
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1. Built a custom CNN model with 3 convolutional layers and 2 fully connected layers. |
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2. Used MaxPooling after each conv layer and dropout for regularization. |
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3. Resized all input images to 32x32 and applied normalization: `(mean=0.5, std=0.5)`. |
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4. Training/validation split: |
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- 80% Training |
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- 20% Validation |
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5. Training setup: |
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- Optimizer: Adam |
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- Loss Function: CrossEntropyLoss |
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- Batch size: 64 |
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- Learning rate: 0.001 |
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- Epochs: 10 |
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6. Saved the best-performing model as `pytorch_model.bin`. |
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## π Performance |
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| Metric | Value | |
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|----------------------|-----------| |
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| Best Validation Accuracy | 88.76% | |
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## βοΈ Framework & Environment |
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- Python: 3.11 |
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- PyTorch: 2.x (Colab) |
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- Torchvision: 0.15.x |
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- Platform: Google Colab (GPU enabled) |
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## π§ͺ Hyperparameters |
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| Parameter | Value | |
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|-----------------|--------------| |
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| Epochs | 10 | |
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| Batch Size | 64 | |
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| Optimizer | Adam | |
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| Learning Rate | 0.001 | |
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| Loss Function | CrossEntropy | |
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| Image Size | 32x32 | |
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| Data Split | 80% Train / 20% Val | |
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