deit-gravit-b2 / README.md
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metadata
license: apache-2.0
tags:
  - vision-transformer
  - image-classification
  - pytorch
  - timm
  - deit
  - gravitational-lensing
  - strong-lensing
  - astronomy
  - astrophysics
datasets:
  - J24
metrics:
  - accuracy
  - auc
  - f1
model-index:
  - name: DeiT-b2
    results:
      - task:
          type: image-classification
          name: Strong Gravitational Lens Discovery
        dataset:
          type: common-test-sample
          name: Common Test Sample (More et al. 2024)
        metrics:
          - type: accuracy
            value: 0.8209
            name: Average Accuracy
          - type: auc
            value: 0.7743
            name: Average AUC-ROC
          - type: f1
            value: 0.4887
            name: Average F1-Score

🌌 deit-gravit-b2

πŸ”­ This model is part of GraViT: Transfer Learning with Vision Transformers and MLP-Mixer for Strong Gravitational Lens Discovery

πŸ”— GitHub Repository: https://github.com/parlange/gravit

πŸ›°οΈ Model Details

  • πŸ€– Model Type: DeiT
  • πŸ§ͺ Experiment: B2 - J24-half
  • 🌌 Dataset: J24
  • πŸͺ Fine-tuning Strategy: half

πŸ’» Quick Start

import torch
import timm

# Load the model directly from the Hub
model = timm.create_model(
    'hf-hub:parlange/deit-gravit-b2',
    pretrained=True
)
model.eval()

# Example inference
dummy_input = torch.randn(1, 3, 224, 224)
with torch.no_grad():
    output = model(dummy_input)
    predictions = torch.softmax(output, dim=1)
print(f"Lens probability: {predictions[0][1]:.4f}")

⚑️ Training Configuration

Training Dataset: J24 (Jaelani et al. 2024)
Fine-tuning Strategy: half

πŸ”§ Parameter πŸ“ Value
Batch Size 192
Learning Rate AdamW with ReduceLROnPlateau
Epochs 100
Patience 10
Optimizer AdamW
Scheduler ReduceLROnPlateau
Image Size 224x224
Fine Tune Mode half
Stochastic Depth Probability 0.1

πŸ“ˆ Training Curves

Combined Training Metrics

🏁 Final Epoch Training Metrics

Metric Training Validation
πŸ“‰ Loss 0.0216 0.0633
🎯 Accuracy 0.9925 0.9845
πŸ“Š AUC-ROC 0.9996 0.9973
βš–οΈ F1 Score 0.9925 0.9844

β˜‘οΈ Evaluation Results

ROC Curves and Confusion Matrices

Performance across all test datasets (a through l) in the Common Test Sample (More et al. 2024):

ROC + Confusion Matrix - Dataset A ROC + Confusion Matrix - Dataset B ROC + Confusion Matrix - Dataset C ROC + Confusion Matrix - Dataset D ROC + Confusion Matrix - Dataset E ROC + Confusion Matrix - Dataset F ROC + Confusion Matrix - Dataset G ROC + Confusion Matrix - Dataset H ROC + Confusion Matrix - Dataset I ROC + Confusion Matrix - Dataset J ROC + Confusion Matrix - Dataset K ROC + Confusion Matrix - Dataset L

πŸ“‹ Performance Summary

Average performance across 12 test datasets from the Common Test Sample (More et al. 2024):

Metric Value
🎯 Average Accuracy 0.8209
πŸ“ˆ Average AUC-ROC 0.7743
βš–οΈ Average F1-Score 0.4887

πŸ“˜ Citation

If you use this model in your research, please cite:

@misc{parlange2025gravit,
      title={GraViT: Transfer Learning with Vision Transformers and MLP-Mixer for Strong Gravitational Lens Discovery}, 
      author={RenΓ© Parlange and Juan C. Cuevas-Tello and Octavio Valenzuela and Omar de J. Cabrera-Rosas and TomΓ‘s Verdugo and Anupreeta More and Anton T. Jaelani},
      year={2025},
      eprint={2509.00226},
      archivePrefix={arXiv},
      primaryClass={cs.CV},
      url={https://arxiv.org/abs/2509.00226}, 
}

Model Card Contact

For questions about this model, please contact the author through: https://github.com/parlange/