{ "model_type": "diffusion", "architectures": ["UNet"], "model_name": "conditional_diffusion_medical", "description": "Conditional diffusion model for medical image generation", "version": "1.0.0", "author": "Your Name", "license": "MIT", "tags": ["diffusion", "medical", "image-generation", "conditional"], "model_config": { "input_channels": 4, "output_channels": 4, "image_size": 256, "embed_dim": 256, "embed_dim_mask": 256, "input_dim_mask": 262144, "channels": [32, 64, 128, 256, 512], "lambda": 25.0, "num_steps": 250, "eps": 0.001 }, "training_config": { "learning_rate": 2e-4, "batch_size": 1, "epochs": 5000, "optimizer": "Adam", "loss": "score_matching", "scheduler": "LambdaLR" }, "dataset": { "name": "medical_ct_scans", "train_samples": 3346, "input_shape": [4, 256, 256], "conditioning_shape": [4, 256, 256] }, "inference": { "device": "cuda", "sampler": "Euler_Maruyama", "num_steps": 250, "eps": 0.001 } }