{ "model_name": "Physics-Informed UNet++", "task": "Disaster Risk Segmentation", "architecture": { "backbone": "UNet++", "encoder": "resnet34", "in_channels": 32, "out_channels": 1, "film_dim": 32, "dropout_p": 0.016687189127500446 }, "training": { "best_val_iou": 1.0, "optimizer": "AdamW", "learning_rate": 4.7031995111855064e-05, "weight_decay": 0.00025303130757493825, "batch_size": 8, "epochs": 50, "mixed_precision": "FP16" }, "inference": { "input_shape": [ 1, 32, 512, 512 ], "output": "probability_map", "recommended_threshold": 0.000175 }, "framework": { "library": "PyTorch", "torch_version": "2.x", "export_formats": [ "TorchScript", "ONNX" ] }, "license": "Apache-2.0", "author": "Lokesh Reddy Poreddy", "repository": "https://huggingface.co/loki200519/urop" }