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README.md
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- Texture classification may not generalize to all cheese types
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- Performance may vary with different lighting conditions or image quality
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## Citation
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If you use this model, please cite both the model and the original dataset:
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- Texture classification may not generalize to all cheese types
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- Performance may vary with different lighting conditions or image quality
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## AI Usage
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This notebook was developed with the assistance of AI as a coding co-pilot. AI tools were used to:
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- **Suggest code snippets**: AI provided suggestions for implementing various parts of the code, such as the dataset class, model architecture, training loops, and data preprocessing steps.
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- **Debug and refactor code**: AI helped identify potential errors and suggest ways to refactor code for improved readability and efficiency.
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- **Generate documentation**: AI assisted in generating explanations for code sections and creating the model card for Hugging Face.
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- **Explore potential issues**: AI provided insights into potential challenges, such as handling small batch sizes and implementing early stopping, and suggested strategies to address them.
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The AI served as a valuable partner throughout the development process, accelerating coding and improving code quality.
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## Citation
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If you use this model, please cite both the model and the original dataset:
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