--- tags: - autogluon - multimodal - image-classification - resnet18 --- license: mit language: - en pipeline_tag: image-classification tags: - images datasets: - aedupuga/cards-image-dataset metrics: - accuracy - f1 library_name: autogluon Training Details: -The model was trained using AutoGluon's MultiModalPredictor with the following configuration: -Problem Type: Classification -Evaluation Metric: Accuracy -Presets: medium_quality -Hyperparameters: -model.names: ["timm_image"] -model.timm_image.checkpoint_name: "resnet18" -The training data used was the 'augmented' split of the dataset, with a 80/20 train/test split for tuning. Evaluation: -The model was evaluated on the 'original' split of the dataset. -Accuracy: 1.0000 -Weighted F1: 1.0000 -Note: These results are based on the evaluation performed in the provided Colab notebook.