Spaces:
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| license: afl-3.0 | |
| title: Spaces Readme | |
| sdk: gradio | |
| emoji: π | |
| colorFrom: yellow | |
| Check out the configuration reference at https://huggingface.co/docs/hub/spaces-config-reference | |
| # Lighting DavidNet over Spaces | |
| ### Gradio Integration for Interactive Model Predictions: | |
| Develop a Gradio interface that envelops the model for seamless interactive predictions. This setup includes the following user-driven functionalities: | |
| **GradCAM Visualizations**: | |
| - Users can opt to visualize GradCAM images. | |
| - Flexibility to choose the number of GradCAM images for display. | |
| - Selection of the specific layer for generating GradCAM visualizations. | |
| - Ability to adjust opacity of the overlaid GradCAM images. | |
| **Misclassified Images**: | |
| - Users have the choice to review misclassified images. | |
| - Option to determine the quantity of misclassified images to be presented. | |
| **Image Upload**: | |
| - Users can upload their own images for predictions. | |
| - A set of 10 example images is available for experimentation. | |
| **Class Preferences**: | |
| - Users can specify the number of top predicted classes they want to see. | |
| - A limit of 10 classes ensures a manageable display. | |
| ### Deployment on Hugging Face Spaces: | |
| The Gradio application, featuring the integrated model, is deployed on Hugging Face Spaces. The Spaces README encompasses the following elements: | |
| - A comprehensive overview of the Spaces app's functionality. | |
| - Exclusion of any training-related code from the README. | |
| - Inclusion of links to the Lightning codebase on GitHub, ensuring a clear separation of model training specifics from deployment details. | |
| ### GitHub Repository for Lightning Training Code: | |
| The Lightning training code resides in a distinct GitHub repository. The repository's detailed README incorporates: | |
| - A comprehensive log detailing the training progression. | |
| - Graphs illustrating the training epochs' loss function. | |
| - Showcasing of 10 instances of misclassified images, complete with actual and predicted labels. | |
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