State-of-the-Art Cifar-100 Classifier in Pytorch (resnet-50, 84% Accuracy)
Postedabout 2 months ago
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PytorchImage ClassificationDeep LearningCifar-100
Key topics
Pytorch
Image Classification
Deep Learning
Cifar-100
The author shares a PyTorch implementation of a ResNet-50 CIFAR-100 image classifier with advanced features, receiving a positive response from the community.
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Nov 14, 2025 at 3:49 AM EST
about 2 months ago
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Key features include:
- Advanced data augmentation (Mixup, CutMix, AutoAugment)
- Optimized schedulers (CosineAnnealing, OneCycleLR)
- Regularization techniques (Label Smoothing, Gradient Clipping)
- Full training logs with accuracy/loss charts
The model achieves 84% accuracy, surpassing standard baselines. Feedback and technical suggestions are highly appreciated.