# LoRA fine-tuning for Cosmos Predict 2.5 This example shows how to fine-tune [Cosmos Predict 2.5](https://huggingface.co/nvidia/Cosmos-Predict2.5-2B) using LoRA on a custom video dataset. ## Requirements Install the library from source and the example-specific dependencies: ```bash git clone https://github.com/huggingface/diffusers cd diffusers pip install -e ".[dev]" cd examples/cosmos pip install -r requirements.txt ``` ## Data preparation The training script expects a dataset directory with the following layout: ``` / ├── videos/ # .mp4 files └── metas/ # one .txt prompt file per video (same stem) ├── 0.txt ├── 1.txt └── ... ``` ### GR1 dataset (quick start) The `download_and_preprocess_datasets.sh` script downloads the GR1-100 training set and the EVAL-175 test set, then runs the preprocessing script to create the per-video prompt files. ```bash bash download_and_preprocess_datasets.sh ``` This produces: - `gr1_dataset/train/` — training videos + prompts - `gr1_dataset/test/` — evaluation images + prompts ## Training Launch LoRA training with `accelerate`: ```bash export MODEL_NAME="nvidia/Cosmos-Predict2.5-2B" export DATA_DIR="gr1_dataset/train" export OUT_DIR="lora-output" accelerate launch --mixed_precision="bf16" train_cosmos_predict25_lora.py \ --pretrained_model_name_or_path=$MODEL_NAME \ --revision diffusers/base/post-trained \ --train_data_dir=$DATA_DIR \ --output_dir=$OUT_DIR \ --train_batch_size=1 \ --num_train_epochs=500 \ --checkpointing_epochs=100 \ --seed=0 \ --height 432 --width 768 \ --allow_tf32 \ --gradient_checkpointing \ --lora_rank 32 --lora_alpha 32 \ --report_to=wandb ``` Or use the provided shell script: ```bash bash train_lora.sh ``` ## Evaluation Run inference with the trained LoRA adapter: ```bash export DATA_DIR="gr1_dataset/test" export LORA_DIR="lora-output" export OUT_DIR="eval-output" python eval_cosmos_predict25_lora.py \ --data_dir $DATA_DIR \ --output_dir $OUT_DIR \ --lora_dir $LORA_DIR \ --revision diffusers/base/post-trained \ --height 432 --width 768 \ --num_output_frames 93 \ --num_steps 36 \ --seed 0 ``` Or use the provided shell script: ```bash bash eval_lora.sh ```