MNIST Classification Model

An improved CNN model for handwritten digit recognition, trained on the MNIST dataset.

Model Architecture

  • Uses Convolutional layers (CNN)
  • Data Augmentation for improved performance
  • Batch Normalization
  • Dropout for preventing Overfitting
  • Dense layers with ReLU activation

Parameters

  • Optimizer: Adam (lr=0.001)
  • Loss: Sparse Categorical Crossentropy
  • Metrics: Accuracy
  • Epochs: 20 (with Early Stopping)
  • Batch Size: 32

Performance

Test Accuracy: 0.9884

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Dataset used to train GiladtheFixer/my_Mnist_Model

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