--- license: apache-2.0 base_model: - lambda/miniSD-diffusers - stabilityai/stable-diffusion-3-medium-diffusers library_name: diffusers pipeline_tag: text-to-image tags: - diffusion - stable-diffusion - stable-diffusion-3 - controlnet - causal-inference - counterfactual-generation - causal-adapter --- # Causal-Adapter Pretrained Weights ## Model Overview This repository provides pretrained Causal-Adapter weights across four benchmark settings. The released checkpoints include Causal-Adapter models built on both SD1.5-style and SD3-style diffusion structures. Causal-Adapter is designed to inject structured causal semantics into pretrained text-to-image diffusion models for controllable and causally consistent counterfactual image generation. Detailed usage examples are available in our notebook benchmarks: [Notebook Benchmarks](https://github.com/LeiTong02/Causal-Adapter/tree/main/notebook_benchmarks) An example configuration can be found in: ```text notebook_benchmarks/counterfactuals_celeba.ipynb ``` ## Base Models The released checkpoints are based on the following pretrained diffusion backbones: - **SD1.5-style structure:** `lambda/miniSD-diffusers` - **SD3-style structure:** `stabilityai/stable-diffusion-3-medium-diffusers` ## Benchmark Resources The released weights are evaluated on benchmark settings built from the following resources: - **Pendulum dataset generation:** [CausalVAE Pendulum](https://github.com/huawei-noah/trustworthyAI/blob/master/research/CausalVAE/causal_data/pendulum.py) - **CelebA and ADNI benchmark configuration:** [counterfactual-benchmark](https://github.com/gulnazaki/counterfactual-benchmark) - **CelebA-HQ dataset:** [CelebAMask-HQ](https://github.com/switchablenorms/CelebAMask-HQ) ## Example Configuration The following example shows the main paths required for running the CelebA counterfactual generation notebook. ```python import os # Shared roots # 1) Frozen SD1.5 backbone. # For example: "lambda/miniSD-diffusers" BASE_MODEL_PATH = "" # 2) Causal-Adapter ControlNet checkpoint and the matching MCPL learned pseudo-tokens. # Example ControlNet checkpoint: # https://huggingface.co/LeiTong/Causal-Adapter/tree/main/celeba/controlnet/controlnet-steps-200000.safetensors CONTROLNET_PATH = "" # Example learned text embeddings: # https://huggingface.co/LeiTong/Causal-Adapter/tree/main/celeba/controlnet/learned_embeds-steps-200000.safetensors TEXT_EMBEDDING_PATH = "" # 3) Optional pretrained SCM head from SCM_modeling/. # Example SCM checkpoint: # https://huggingface.co/LeiTong/Causal-Adapter/tree/main/celeba/scm/best_model.pt SCM_PATH = "" # 4) CelebA root expected by torchvision.datasets.CelebA(root=...). DATA_ROOT = os.environ.get("DATA_ROOT", "") DATASET = "celeA_complex" SIZE = 256 ``` ## Repository Structure The checkpoint files are organized by benchmark and model component. A typical setting may include: - Causal-Adapter / ControlNet weights - Learned pseudo-token embeddings - Optional pretrained SCM head - Example notebooks for counterfactual image generation ## Usage Please refer to the notebook examples for loading the pretrained weights and running counterfactual generation: [Notebook Benchmarks](https://github.com/LeiTong02/Causal-Adapter/tree/main/notebook_benchmarks) ## License This repository is released under the Apache-2.0 license.