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--- |
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license: mit |
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datasets: |
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- cifar10 |
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library_name: keras |
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pipeline_tag: image-classification |
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--- |
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### Model Name: `Enhanced-CIFAR10-CNN` |
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**Description:** |
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Introducing `Enhanced-CIFAR10-CNN`, a state-of-the-art Convolutional Neural Network (CNN) trained on the CIFAR dataset. Based on extensive research, with an impressive accuracy of 89%, this model sets a new benchmark in image classification tasks. What sets it apart? |
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- **High Performance**: Achieves an accuracy rate of 86%, surpassing standard benchmarks. |
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- **Fast Inference**: Optimized for speed, this model ensures quick predictions without compromising on accuracy. |
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- **Compact Size**: Its small footprint makes it ideal for edge deployments and integration into existing systems. |
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- **Transfer Learning Ready**: The model's architecture and pre-trained weights make it an excellent candidate for fine-tuning and further development in various applications. |
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**Usage Examples:** |
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```python |
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from keras.models import load_model |
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# Load the model |
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model = load_model('path/to/enhancedCIFAR-10-CNN.h5') |
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# Perform inference |
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result = model.predict(input_data) |
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``` |
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**Dependencies:** |
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- Keras >= 2.4.0 |
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- TensorFlow >= 2.5.0 |
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**Citation:** |
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Ogundokun, Roseline Oluwaseun, et al. "Improved CNN based on batch normalization and adam optimizer." International Conference on Computational Science and Its Applications. Cham: Springer International Publishing, 2022. |
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If you find this model useful, please cite our work. |