| # DreamBooth training example for HiDream Image |
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| [DreamBooth](https://huggingface.co/papers/2208.12242) is a method to personalize text2image models like stable diffusion given just a few (3~5) images of a subject. |
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| The `train_dreambooth_lora_hidream.py` script shows how to implement the training procedure with [LoRA](https://huggingface.co/docs/peft/conceptual_guides/adapter#low-rank-adaptation-lora) and adapt it for [HiDream Image](https://huggingface.co/docs/diffusers/main/en/api/pipelines/). |
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| This will also allow us to push the trained model parameters to the Hugging Face Hub platform. |
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| ## Running locally with PyTorch |
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| ### Installing the dependencies |
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| Before running the scripts, make sure to install the library's training dependencies: |
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| **Important** |
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| To make sure you can successfully run the latest versions of the example scripts, we highly recommend **installing from source** and keeping the install up to date as we update the example scripts frequently and install some example-specific requirements. To do this, execute the following steps in a new virtual environment: |
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| ```bash |
| git clone https://github.com/huggingface/diffusers |
| cd diffusers |
| pip install -e . |
| ``` |
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| Then cd in the `examples/dreambooth` folder and run |
| ```bash |
| pip install -r requirements_hidream.txt |
| ``` |
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| And initialize an [🤗Accelerate](https://github.com/huggingface/accelerate/) environment with: |
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| ```bash |
| accelerate config |
| ``` |
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| Or for a default accelerate configuration without answering questions about your environment |
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| ```bash |
| accelerate config default |
| ``` |
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| Or if your environment doesn't support an interactive shell (e.g., a notebook) |
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| ```python |
| from accelerate.utils import write_basic_config |
| write_basic_config() |
| ``` |
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| When running `accelerate config`, if we specify torch compile mode to True there can be dramatic speedups. |
| Note also that we use PEFT library as backend for LoRA training, make sure to have `peft>=0.14.0` installed in your environment. |
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| ### 3d icon example |
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| For this example we will use some 3d icon images: https://huggingface.co/datasets/linoyts/3d_icon. |
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| This will also allow us to push the trained LoRA parameters to the Hugging Face Hub platform. |
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| Now, we can launch training using: |
| > [!NOTE] |
| > The following training configuration prioritizes lower memory consumption by using gradient checkpointing, |
| > 8-bit Adam optimizer, latent caching, offloading, no validation. |
| > all text embeddings are pre-computed to save memory. |
| ```bash |
| export MODEL_NAME="HiDream-ai/HiDream-I1-Dev" |
| export INSTANCE_DIR="linoyts/3d_icon" |
| export OUTPUT_DIR="trained-hidream-lora" |
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| accelerate launch train_dreambooth_lora_hidream.py \ |
| --pretrained_model_name_or_path=$MODEL_NAME \ |
| --dataset_name=$INSTANCE_DIR \ |
| --output_dir=$OUTPUT_DIR \ |
| --mixed_precision="bf16" \ |
| --instance_prompt="3d icon" \ |
| --caption_column="prompt"\ |
| --validation_prompt="a 3dicon, a llama eating ramen" \ |
| --resolution=1024 \ |
| --train_batch_size=1 \ |
| --gradient_accumulation_steps=4 \ |
| --use_8bit_adam \ |
| --rank=8 \ |
| --learning_rate=2e-4 \ |
| --report_to="wandb" \ |
| --lr_scheduler="constant_with_warmup" \ |
| --lr_warmup_steps=100 \ |
| --max_train_steps=1000 \ |
| --cache_latents\ |
| --gradient_checkpointing \ |
| --validation_epochs=25 \ |
| --seed="0" \ |
| --push_to_hub |
| ``` |
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| For using `push_to_hub`, make you're logged into your Hugging Face account: |
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| ```bash |
| hf auth login |
| ``` |
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| To better track our training experiments, we're using the following flags in the command above: |
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| * `report_to="wandb` will ensure the training runs are tracked on [Weights and Biases](https://wandb.ai/site). To use it, be sure to install `wandb` with `pip install wandb`. Don't forget to call `wandb login <your_api_key>` before training if you haven't done it before. |
| * `validation_prompt` and `validation_epochs` to allow the script to do a few validation inference runs. This allows us to qualitatively check if the training is progressing as expected. |
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| ## Notes |
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| Additionally, we welcome you to explore the following CLI arguments: |
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| * `--lora_layers`: The transformer modules to apply LoRA training on. Please specify the layers in a comma separated. E.g. - "to_k,to_q,to_v" will result in lora training of attention layers only. |
| * `--rank`: The rank of the LoRA layers. The higher the rank, the more parameters are trained. The default is 16. |
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| We provide several options for optimizing memory optimization: |
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| * `--offload`: When enabled, we will offload the text encoder and VAE to CPU, when they are not used. |
| * `cache_latents`: When enabled, we will pre-compute the latents from the input images with the VAE and remove the VAE from memory once done. |
| * `--use_8bit_adam`: When enabled, we will use the 8bit version of AdamW provided by the `bitsandbytes` library. |
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| Refer to the [official documentation](https://huggingface.co/docs/diffusers/main/en/api/pipelines/) of the `HiDreamImagePipeline` to know more about the model. |
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| ## Using quantization |
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| You can quantize the base model with [`bitsandbytes`](https://huggingface.co/docs/bitsandbytes/index) to reduce memory usage. To do so, pass a JSON file path to `--bnb_quantization_config_path`. This file should hold the configuration to initialize `BitsAndBytesConfig`. Below is an example JSON file: |
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| ```json |
| { |
| "load_in_4bit": true, |
| "bnb_4bit_quant_type": "nf4" |
| } |
| ``` |
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| Below, we provide some numbers with and without the use of NF4 quantization when training: |
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| ``` |
| (with quantization) |
| Memory (before device placement): 9.085089683532715 GB. |
| Memory (after device placement): 34.59585428237915 GB. |
| Memory (after backward): 36.90267467498779 GB. |
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| (without quantization) |
| Memory (before device placement): 0.0 GB. |
| Memory (after device placement): 57.6400408744812 GB. |
| Memory (after backward): 59.932212829589844 GB. |
| ``` |
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| The reason why we see some memory before device placement in the case of quantization is because, by default bnb quantized models are placed on the GPU first. |