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# Advanced diffusion training examples | |
## Train Dreambooth LoRA with Flux.1 Dev | |
> [!TIP] | |
> 💡 This example follows some of the techniques and recommended practices covered in the community derived guide we made for SDXL training: [LoRA training scripts of the world, unite!](https://huggingface.co/blog/sdxl_lora_advanced_script). | |
> As many of these are architecture agnostic & generally relevant to fine-tuning of diffusion models we suggest to take a look 🤗 | |
[DreamBooth](https://arxiv.org/abs/2208.12242) is a method to personalize text-to-image models like flux, stable diffusion given just a few(3~5) images of a subject. | |
LoRA - Low-Rank Adaption of Large Language Models, was first introduced by Microsoft in [LoRA: Low-Rank Adaptation of Large Language Models](https://arxiv.org/abs/2106.09685) by *Edward J. Hu, Yelong Shen, Phillip Wallis, Zeyuan Allen-Zhu, Yuanzhi Li, Shean Wang, Lu Wang, Weizhu Chen* | |
In a nutshell, LoRA allows to adapt pretrained models by adding pairs of rank-decomposition matrices to existing weights and **only** training those newly added weights. This has a couple of advantages: | |
- Previous pretrained weights are kept frozen so that the model is not prone to [catastrophic forgetting](https://www.pnas.org/doi/10.1073/pnas.1611835114) | |
- Rank-decomposition matrices have significantly fewer parameters than the original model, which means that trained LoRA weights are easily portable. | |
- LoRA attention layers allow to control to which extent the model is adapted towards new training images via a `scale` parameter. | |
[cloneofsimo](https://github.com/cloneofsimo) was the first to try out LoRA training for Stable Diffusion in | |
the popular [lora](https://github.com/cloneofsimo/lora) GitHub repository. | |
The `train_dreambooth_lora_flux_advanced.py` script shows how to implement dreambooth-LoRA, combining the training process shown in `train_dreambooth_lora_flux.py`, with | |
advanced features and techniques, inspired and built upon contributions by [Nataniel Ruiz](https://twitter.com/natanielruizg): [Dreambooth](https://dreambooth.github.io), [Rinon Gal](https://twitter.com/RinonGal): [Textual Inversion](https://textual-inversion.github.io), [Ron Mokady](https://twitter.com/MokadyRon): [Pivotal Tuning](https://arxiv.org/abs/2106.05744), [Simo Ryu](https://twitter.com/cloneofsimo): [cog-sdxl](https://github.com/replicate/cog-sdxl), | |
[ostris](https://x.com/ostrisai):[ai-toolkit](https://github.com/ostris/ai-toolkit), [bghira](https://github.com/bghira):[SimpleTuner](https://github.com/bghira/SimpleTuner), [Kohya](https://twitter.com/kohya_tech/): [sd-scripts](https://github.com/kohya-ss/sd-scripts), [The Last Ben](https://twitter.com/__TheBen): [fast-stable-diffusion](https://github.com/TheLastBen/fast-stable-diffusion) ❤️ | |
> [!NOTE] | |
> 💡If this is your first time training a Dreambooth LoRA, congrats!🥳 | |
> You might want to familiarize yourself more with the techniques: [Dreambooth blog](https://huggingface.co/blog/dreambooth), [Using LoRA for Efficient Stable Diffusion Fine-Tuning blog](https://huggingface.co/blog/lora) | |
## Running locally with PyTorch | |
### Installing the dependencies | |
Before running the scripts, make sure to install the library's training dependencies: | |
**Important** | |
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: | |
```bash | |
git clone https://github.com/huggingface/diffusers | |
cd diffusers | |
pip install -e . | |
``` | |
Then cd in the `examples/advanced_diffusion_training` folder and run | |
```bash | |
pip install -r requirements.txt | |
``` | |
And initialize an [🤗Accelerate](https://github.com/huggingface/accelerate/) environment with: | |
```bash | |
accelerate config | |
``` | |
Or for a default accelerate configuration without answering questions about your environment | |
```bash | |
accelerate config default | |
``` | |
Or if your environment doesn't support an interactive shell e.g. a notebook | |
```python | |
from accelerate.utils import write_basic_config | |
write_basic_config() | |
``` | |
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>=0.6.0` installed in your environment. | |
### Target Modules | |
When LoRA was first adapted from language models to diffusion models, it was applied to the cross-attention layers in the Unet that relate the image representations with the prompts that describe them. | |
More recently, SOTA text-to-image diffusion models replaced the Unet with a diffusion Transformer(DiT). With this change, we may also want to explore | |
applying LoRA training onto different types of layers and blocks. To allow more flexibility and control over the targeted modules we added `--lora_layers`- in which you can specify in a comma seperated string | |
the exact modules for LoRA training. Here are some examples of target modules you can provide: | |
- for attention only layers: `--lora_layers="attn.to_k,attn.to_q,attn.to_v,attn.to_out.0"` | |
- to train the same modules as in the fal trainer: `--lora_layers="attn.to_k,attn.to_q,attn.to_v,attn.to_out.0,attn.add_k_proj,attn.add_q_proj,attn.add_v_proj,attn.to_add_out,ff.net.0.proj,ff.net.2,ff_context.net.0.proj,ff_context.net.2"` | |
- to train the same modules as in ostris ai-toolkit / replicate trainer: `--lora_blocks="attn.to_k,attn.to_q,attn.to_v,attn.to_out.0,attn.add_k_proj,attn.add_q_proj,attn.add_v_proj,attn.to_add_out,ff.net.0.proj,ff.net.2,ff_context.net.0.proj,ff_context.net.2,norm1_context.linear, norm1.linear,norm.linear,proj_mlp,proj_out"` | |
> [!NOTE] | |
> `--lora_layers` can also be used to specify which **blocks** to apply LoRA training to. To do so, simply add a block prefix to each layer in the comma seperated string: | |
> **single DiT blocks**: to target the ith single transformer block, add the prefix `single_transformer_blocks.i`, e.g. - `single_transformer_blocks.i.attn.to_k` | |
> **MMDiT blocks**: to target the ith MMDiT block, add the prefix `transformer_blocks.i`, e.g. - `transformer_blocks.i.attn.to_k` | |
> [!NOTE] | |
> keep in mind that while training more layers can improve quality and expressiveness, it also increases the size of the output LoRA weights. | |
### Pivotal Tuning (and more) | |
**Training with text encoder(s)** | |
Alongside the Transformer, LoRA fine-tuning of the text encoders is also supported. In addition to the text encoder optimization | |
available with `train_dreambooth_lora_flux_advanced.py`, in the advanced script **pivotal tuning** is also supported. | |
[pivotal tuning](https://huggingface.co/blog/sdxl_lora_advanced_script#pivotal-tuning) combines Textual Inversion with regular diffusion fine-tuning - | |
we insert new tokens into the text encoders of the model, instead of reusing existing ones. | |
We then optimize the newly-inserted token embeddings to represent the new concept. | |
To do so, just specify `--train_text_encoder_ti` while launching training (for regular text encoder optimizations, use `--train_text_encoder`). | |
Please keep the following points in mind: | |
* Flux uses two text encoders - [CLIP](https://huggingface.co/docs/diffusers/main/en/api/pipelines/flux#diffusers.FluxPipeline.text_encoder) & [T5](https://huggingface.co/docs/diffusers/main/en/api/pipelines/flux#diffusers.FluxPipeline.text_encoder_2) , by default `--train_text_encoder_ti` performs pivotal tuning for the **CLIP** encoder only. | |
To activate pivotal tuning for both encoders, add the flag `--enable_t5_ti`. | |
* When not fine-tuning the text encoders, we ALWAYS precompute the text embeddings to save memory. | |
* **pure textual inversion** - to support the full range from pivotal tuning to textual inversion we introduce `--train_transformer_frac` which controls the amount of epochs the transformer LoRA layers are trained. By default, `--train_transformer_frac==1`, to trigger a textual inversion run set `--train_transformer_frac==0`. Values between 0 and 1 are supported as well, and we welcome the community to experiment w/ different settings and share the results! | |
* **token initializer** - similar to the original textual inversion work, you can specify a concept of your choosing as the starting point for training. By default, when enabling `--train_text_encoder_ti`, the new inserted tokens are initialized randomly. You can specify a token in `--initializer_concept` such that the starting point for the trained embeddings will be the embeddings associated with your chosen `--initializer_concept`. | |
## Training examples | |
Now let's get our dataset. For this example we will use some cool images of 3d rendered icons: https://huggingface.co/datasets/linoyts/3d_icon. | |
Let's first download it locally: | |
```python | |
from huggingface_hub import snapshot_download | |
local_dir = "./3d_icon" | |
snapshot_download( | |
"LinoyTsaban/3d_icon", | |
local_dir=local_dir, repo_type="dataset", | |
ignore_patterns=".gitattributes", | |
) | |
``` | |
Let's review some of the advanced features we're going to be using for this example: | |
- **custom captions**: | |
To use custom captioning, first ensure that you have the datasets library installed, otherwise you can install it by | |
```bash | |
pip install datasets | |
``` | |
Now we'll simply specify the name of the dataset and caption column (in this case it's "prompt") | |
``` | |
--dataset_name=./3d_icon | |
--caption_column=prompt | |
``` | |
You can also load a dataset straight from by specifying it's name in `dataset_name`. | |
Look [here](https://huggingface.co/blog/sdxl_lora_advanced_script#custom-captioning) for more info on creating/loadin your own caption dataset. | |
- **optimizer**: for this example, we'll use [prodigy](https://huggingface.co/blog/sdxl_lora_advanced_script#adaptive-optimizers) - an adaptive optimizer | |
- **pivotal tuning** | |
### Example #1: Pivotal tuning | |
**Now, we can launch training:** | |
```bash | |
export MODEL_NAME="black-forest-labs/FLUX.1-dev" | |
export DATASET_NAME="./3d_icon" | |
export OUTPUT_DIR="3d-icon-Flux-LoRA" | |
accelerate launch train_dreambooth_lora_flux_advanced.py \ | |
--pretrained_model_name_or_path=$MODEL_NAME \ | |
--dataset_name=$DATASET_NAME \ | |
--instance_prompt="3d icon in the style of TOK" \ | |
--output_dir=$OUTPUT_DIR \ | |
--caption_column="prompt" \ | |
--mixed_precision="bf16" \ | |
--resolution=1024 \ | |
--train_batch_size=1 \ | |
--repeats=1 \ | |
--report_to="wandb"\ | |
--gradient_accumulation_steps=1 \ | |
--gradient_checkpointing \ | |
--learning_rate=1.0 \ | |
--text_encoder_lr=1.0 \ | |
--optimizer="prodigy"\ | |
--train_text_encoder_ti\ | |
--train_text_encoder_ti_frac=0.5\ | |
--lr_scheduler="constant" \ | |
--lr_warmup_steps=0 \ | |
--rank=8 \ | |
--max_train_steps=700 \ | |
--checkpointing_steps=2000 \ | |
--seed="0" \ | |
--push_to_hub | |
``` | |
To better track our training experiments, we're using the following flags in the command above: | |
* `report_to="wandb` will ensure the training runs are tracked on Weights and Biases. To use it, be sure to install `wandb` with `pip install wandb`. | |
* `validation_prompt` and `validation_epochs` to allow the script to do a few validation inference runs. This allows us to qualitatively check if the training is progressing as expected. | |
Our experiments were conducted on a single 40GB A100 GPU. | |
### Example #2: Pivotal tuning with T5 | |
Now let's try that with T5 as well, so instead of only optimizing the CLIP embeddings associated with newly inserted tokens, we'll optimize | |
the T5 embeddings as well. We can do this by simply adding `--enable_t5_ti` to the previous configuration: | |
```bash | |
export MODEL_NAME="black-forest-labs/FLUX.1-dev" | |
export DATASET_NAME="./3d_icon" | |
export OUTPUT_DIR="3d-icon-Flux-LoRA" | |
accelerate launch train_dreambooth_lora_flux_advanced.py \ | |
--pretrained_model_name_or_path=$MODEL_NAME \ | |
--dataset_name=$DATASET_NAME \ | |
--instance_prompt="3d icon in the style of TOK" \ | |
--output_dir=$OUTPUT_DIR \ | |
--caption_column="prompt" \ | |
--mixed_precision="bf16" \ | |
--resolution=1024 \ | |
--train_batch_size=1 \ | |
--repeats=1 \ | |
--report_to="wandb"\ | |
--gradient_accumulation_steps=1 \ | |
--gradient_checkpointing \ | |
--learning_rate=1.0 \ | |
--text_encoder_lr=1.0 \ | |
--optimizer="prodigy"\ | |
--train_text_encoder_ti\ | |
--enable_t5_ti\ | |
--train_text_encoder_ti_frac=0.5\ | |
--lr_scheduler="constant" \ | |
--lr_warmup_steps=0 \ | |
--rank=8 \ | |
--max_train_steps=700 \ | |
--checkpointing_steps=2000 \ | |
--seed="0" \ | |
--push_to_hub | |
``` | |
### Example #3: Textual Inversion | |
To explore a pure textual inversion - i.e. only optimizing the text embeddings w/o training transformer LoRA layers, we | |
can set the value for `--train_transformer_frac` - which is responsible for the percent of epochs in which the transformer is | |
trained. By setting `--train_transformer_frac == 0` and enabling `--train_text_encoder_ti` we trigger a textual inversion train | |
run. | |
```bash | |
export MODEL_NAME="black-forest-labs/FLUX.1-dev" | |
export DATASET_NAME="./3d_icon" | |
export OUTPUT_DIR="3d-icon-Flux-LoRA" | |
accelerate launch train_dreambooth_lora_flux_advanced.py \ | |
--pretrained_model_name_or_path=$MODEL_NAME \ | |
--dataset_name=$DATASET_NAME \ | |
--instance_prompt="3d icon in the style of TOK" \ | |
--output_dir=$OUTPUT_DIR \ | |
--caption_column="prompt" \ | |
--mixed_precision="bf16" \ | |
--resolution=1024 \ | |
--train_batch_size=1 \ | |
--repeats=1 \ | |
--report_to="wandb"\ | |
--gradient_accumulation_steps=1 \ | |
--gradient_checkpointing \ | |
--learning_rate=1.0 \ | |
--text_encoder_lr=1.0 \ | |
--optimizer="prodigy"\ | |
--train_text_encoder_ti\ | |
--enable_t5_ti\ | |
--train_text_encoder_ti_frac=0.5\ | |
--train_transformer_frac=0\ | |
--lr_scheduler="constant" \ | |
--lr_warmup_steps=0 \ | |
--rank=8 \ | |
--max_train_steps=700 \ | |
--checkpointing_steps=2000 \ | |
--seed="0" \ | |
--push_to_hub | |
``` | |
### Inference - pivotal tuning | |
Once training is done, we can perform inference like so: | |
1. starting with loading the transformer lora weights | |
```python | |
import torch | |
from huggingface_hub import hf_hub_download, upload_file | |
from diffusers import AutoPipelineForText2Image | |
from safetensors.torch import load_file | |
username = "linoyts" | |
repo_id = f"{username}/3d-icon-Flux-LoRA" | |
pipe = AutoPipelineForText2Image.from_pretrained("black-forest-labs/FLUX.1-dev", torch_dtype=torch.bfloat16).to('cuda') | |
pipe.load_lora_weights(repo_id, weight_name="pytorch_lora_weights.safetensors") | |
``` | |
2. now we load the pivotal tuning embeddings | |
> [!NOTE] #1 if `--enable_t5_ti` wasn't passed, we only load the embeddings to the CLIP encoder. | |
> [!NOTE] #2 the number of tokens (i.e. <s0>,...,<si>) is either determined by `--num_new_tokens_per_abstraction` or by `--initializer_concept`. Make sure to update inference code accordingly :) | |
```python | |
text_encoders = [pipe.text_encoder, pipe.text_encoder_2] | |
tokenizers = [pipe.tokenizer, pipe.tokenizer_2] | |
embedding_path = hf_hub_download(repo_id=repo_id, filename="3d-icon-Flux-LoRA_emb.safetensors", repo_type="model") | |
state_dict = load_file(embedding_path) | |
# load embeddings of text_encoder 1 (CLIP ViT-L/14) | |
pipe.load_textual_inversion(state_dict["clip_l"], token=["<s0>", "<s1>"], text_encoder=pipe.text_encoder, tokenizer=pipe.tokenizer) | |
# load embeddings of text_encoder 2 (T5 XXL) - ignore this line if you didn't enable `--enable_t5_ti` | |
pipe.load_textual_inversion(state_dict["t5"], token=["<s0>", "<s1>"], text_encoder=pipe.text_encoder_2, tokenizer=pipe.tokenizer_2) | |
``` | |
3. let's generate images | |
```python | |
instance_token = "<s0><s1>" | |
prompt = f"a {instance_token} icon of an orange llama eating ramen, in the style of {instance_token}" | |
image = pipe(prompt=prompt, num_inference_steps=25, cross_attention_kwargs={"scale": 1.0}).images[0] | |
image.save("llama.png") | |
``` | |
### Inference - pure textual inversion | |
In this case, we don't load transformer layers as before, since we only optimize the text embeddings. The output of a textual inversion train run is a | |
`.safetensors` file containing the trained embeddings for the new tokens either for the CLIP encoder, or for both encoders (CLIP and T5) | |
1. starting with loading the embeddings. | |
💡note that here too, if you didn't enable `--enable_t5_ti`, you only load the embeddings to the CLIP encoder | |
```python | |
import torch | |
from huggingface_hub import hf_hub_download, upload_file | |
from diffusers import AutoPipelineForText2Image | |
from safetensors.torch import load_file | |
username = "linoyts" | |
repo_id = f"{username}/3d-icon-Flux-LoRA" | |
pipe = AutoPipelineForText2Image.from_pretrained("black-forest-labs/FLUX.1-dev", torch_dtype=torch.bfloat16).to('cuda') | |
text_encoders = [pipe.text_encoder, pipe.text_encoder_2] | |
tokenizers = [pipe.tokenizer, pipe.tokenizer_2] | |
embedding_path = hf_hub_download(repo_id=repo_id, filename="3d-icon-Flux-LoRA_emb.safetensors", repo_type="model") | |
state_dict = load_file(embedding_path) | |
# load embeddings of text_encoder 1 (CLIP ViT-L/14) | |
pipe.load_textual_inversion(state_dict["clip_l"], token=["<s0>", "<s1>"], text_encoder=pipe.text_encoder, tokenizer=pipe.tokenizer) | |
# load embeddings of text_encoder 2 (T5 XXL) - ignore this line if you didn't enable `--enable_t5_ti` | |
pipe.load_textual_inversion(state_dict["t5"], token=["<s0>", "<s1>"], text_encoder=pipe.text_encoder_2, tokenizer=pipe.tokenizer_2) | |
``` | |
2. let's generate images | |
```python | |
instance_token = "<s0><s1>" | |
prompt = f"a {instance_token} icon of an orange llama eating ramen, in the style of {instance_token}" | |
image = pipe(prompt=prompt, num_inference_steps=25, cross_attention_kwargs={"scale": 1.0}).images[0] | |
image.save("llama.png") | |
``` | |
### Comfy UI / AUTOMATIC1111 Inference | |
The new script fully supports textual inversion loading with Comfy UI and AUTOMATIC1111 formats! | |
**AUTOMATIC1111 / SD.Next** \ | |
In AUTOMATIC1111/SD.Next we will load a LoRA and a textual embedding at the same time. | |
- *LoRA*: Besides the diffusers format, the script will also train a WebUI compatible LoRA. It is generated as `{your_lora_name}.safetensors`. You can then include it in your `models/Lora` directory. | |
- *Embedding*: the embedding is the same for diffusers and WebUI. You can download your `{lora_name}_emb.safetensors` file from a trained model, and include it in your `embeddings` directory. | |
You can then run inference by prompting `a y2k_emb webpage about the movie Mean Girls <lora:y2k:0.9>`. You can use the `y2k_emb` token normally, including increasing its weight by doing `(y2k_emb:1.2)`. | |
**ComfyUI** \ | |
In ComfyUI we will load a LoRA and a textual embedding at the same time. | |
- *LoRA*: Besides the diffusers format, the script will also train a ComfyUI compatible LoRA. It is generated as `{your_lora_name}.safetensors`. You can then include it in your `models/Lora` directory. Then you will load the LoRALoader node and hook that up with your model and CLIP. [Official guide for loading LoRAs](https://comfyanonymous.github.io/ComfyUI_examples/lora/) | |
- *Embedding*: the embedding is the same for diffusers and WebUI. You can download your `{lora_name}_emb.safetensors` file from a trained model, and include it in your `models/embeddings` directory and use it in your prompts like `embedding:y2k_emb`. [Official guide for loading embeddings](https://comfyanonymous.github.io/ComfyUI_examples/textual_inversion_embeddings/). | |