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license: mit
metrics:
- accuracy
library_name: keras
---
# Malaria Detection - Custom CNN Model
## Model Description
This is a custom Convolutional Neural Network (CNN) trained to detect malaria parasites in cell images. The model classifies blood cell images as either **Parasitized** or **Uninfected**.
## Model Architecture
- 3 Convolutional layers with ReLU activation
- MaxPooling layers for downsampling
- Dropout layer (0.5) for regularization
- Dense layers for classification
- Binary output with sigmoid activation
## Training Details
- **Dataset**: Cell Images for Detecting Malaria
- **Input Size**: 150x150x3
- **Optimizer**: Adam
- **Loss Function**: Binary Crossentropy
- **Epochs**: 10
- **Validation Split**: 20%
## Performance
- **Validation Accuracy**: {history.history['val_accuracy'][-1]:.4f}
- **Validation Loss**: {history.history['val_loss'][-1]:.4f} |