# Hunyuan3D-2.1-Shape ## Quick Inference Given a reference image `image.png`, you can run inference using the following code. The result will be saved as `demo.glb`. ```bash python3 minimal_demo.py ``` **Memory Recommendation:** For we recommend using a GPU with at least **10GB VRAM**. # Training Here we demonstrate the complete training workflow of DiT on a small dataset. ## Data Preprocessing The rendering and watertight mesh generation process is described in detail in [this document](tools/README.md). After preprocessing, the dataset directory structure should look like the following: ```yaml dataset/preprocessed/{uid} ├── geo_data │ ├── {uid}_sdf.npz │ ├── {uid}_surface.npz │ └── {uid}_watertight.obj └── render_cond ├── 000.png ├── ... ├── 023.png ├── mesh.ply └── transforms.json ``` We provide a preprocessed mini_dataset containing 8 cases (all sourced from Objaverse-XL) as `tools/mini_trainset`, which can be used directly for DiT overfitting training experiments. ## Launching Training We provide example configuration files and launch scripts for reference. By default, the training runs on a single node with 8 GPUs using DeepSpeed. Users can modify the configurations and scripts as needed to suit their environment. Configuration File ``` configs/hunyuandit-mini-overfitting-flowmatching-dinog518-bf16-lr1e4-512.yaml ``` Launch Script ``` export node_num=1 export node_rank=0 export master_ip=0.0.0.0 # set your master_ip export config=configs/hunyuandit-mini-overfitting-flowmatching-dinog518-bf16-lr1e4-512.yaml export output_dir=output_folder/dit/overfitting bash scripts/train_deepspeed.sh $node_num $node_rank $master_ip $config $output_dir ```