# Training SANA Sprint Diffuser This README explains how to use the provided bash script commands to download a pre-trained teacher diffuser model and train it on a specific dataset, following the [SANA Sprint methodology](https://huggingface.co/papers/2503.09641). ## Setup ### 1. Define the local paths Set a variable for your desired output directory. This directory will store the downloaded model and the training checkpoints/results. ```bash your_local_path='output' # Or any other path you prefer mkdir -p $your_local_path # Create the directory if it doesn't exist ``` ### 2. Download the pre-trained model Download the SANA Sprint teacher model from Hugging Face Hub. The script uses the 1.6B parameter model. ```bash huggingface-cli download Efficient-Large-Model/SANA_Sprint_1.6B_1024px_teacher_diffusers --local-dir $your_local_path/SANA_Sprint_1.6B_1024px_teacher_diffusers ``` *(Optional: You can also download the 0.6B model by replacing the model name: `Efficient-Large-Model/Sana_Sprint_0.6B_1024px_teacher_diffusers`)* ### 3. Acquire the dataset shards The training script in this example uses specific `.parquet` shards from a randomly selected `brivangl/midjourney-v6-llava` dataset instead of downloading the entire dataset automatically via `dataset_name`. The script specifically uses these three files: * `data/train_000.parquet` * `data/train_001.parquet` * `data/train_002.parquet` You can either: Let the script download the dataset automatically during first run Or download it manually **Note:** The full `brivangl/midjourney-v6-llava` dataset is much larger and contains many more shards. This script example explicitly trains *only* on the three specified shards. ## Usage Once the model is downloaded, you can run the training script. ```bash your_local_path='output' # Ensure this variable is set python train_sana_sprint_diffusers.py \ --pretrained_model_name_or_path=$your_local_path/SANA_Sprint_1.6B_1024px_teacher_diffusers \ --output_dir=$your_local_path \ --mixed_precision=bf16 \ --resolution=1024 \ --learning_rate=1e-6 \ --max_train_steps=30000 \ --dataloader_num_workers=8 \ --dataset_name='brivangl/midjourney-v6-llava' \ --file_path data/train_000.parquet data/train_001.parquet data/train_002.parquet \ --checkpointing_steps=500 --checkpoints_total_limit=10 \ --train_batch_size=1 \ --gradient_accumulation_steps=1 \ --seed=453645634 \ --train_largest_timestep \ --misaligned_pairs_D \ --gradient_checkpointing \ --resume_from_checkpoint="latest" \ ``` ### Explanation of parameters * `--pretrained_model_name_or_path`: Path to the downloaded pre-trained model directory. * `--output_dir`: Directory where training logs, checkpoints, and the final model will be saved. * `--mixed_precision`: Use BF16 mixed precision for training, which can save memory and speed up training on compatible hardware. * `--resolution`: The image resolution used for training (1024x1024). * `--learning_rate`: The learning rate for the optimizer. * `--max_train_steps`: The total number of training steps to perform. * `--dataloader_num_workers`: Number of worker processes for loading data. Increase for faster data loading if your CPU and disk can handle it. * `--dataset_name`: The name of the dataset on Hugging Face Hub (`brivangl/midjourney-v6-llava`). * `--file_path`: **Specifies the local paths to the dataset shards to be used for training.** In this case, `data/train_000.parquet`, `data/train_001.parquet`, and `data/train_002.parquet`. * `--checkpointing_steps`: Save a training checkpoint every X steps. * `--checkpoints_total_limit`: Maximum number of checkpoints to keep. Older checkpoints will be deleted. * `--train_batch_size`: The batch size per GPU. * `--gradient_accumulation_steps`: Number of steps to accumulate gradients before performing an optimizer step. * `--seed`: Random seed for reproducibility. * `--train_largest_timestep`: A specific training strategy focusing on larger timesteps. * `--misaligned_pairs_D`: Another specific training strategy to add misaligned image-text pairs as fake data for GAN. * `--gradient_checkpointing`: Enable gradient checkpointing to save GPU memory. * `--resume_from_checkpoint`: Allows resuming training from the latest saved checkpoint in the `--output_dir`.