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# -*- coding: utf-8 -*-
"""beths butterfly training.ipynb
Automatically generated by Colab.
Original file is located at
https://colab.research.google.com/drive/1SbxWXhffEnCJ6tVT6ZfTDbY2-cxb063U
# Train a diffusion model
Unconditional image generation is a popular application of diffusion models that generates images that look like those in the dataset used for training. Typically, the best results are obtained from finetuning a pretrained model on a specific dataset. You can find many of these checkpoints on the [Hub](https://huggingface.co/search/full-text?q=unconditional-image-generation&type=model), but if you can't find one you like, you can always train your own!
This tutorial will teach you how to train a [UNet2DModel](https://huggingface.co/docs/diffusers/main/en/api/models/unet2d#diffusers.UNet2DModel) from scratch on a subset of the [Smithsonian Butterflies](https://huggingface.co/datasets/huggan/smithsonian_butterflies_subset) dataset to generate your own π¦ butterflies π¦.
<Tip>
π‘ This training tutorial is based on the [Training with 𧨠Diffusers](https://colab.research.google.com/github/huggingface/notebooks/blob/main/diffusers/training_example.ipynb) notebook. For additional details and context about diffusion models like how they work, check out the notebook!
</Tip>
Before you begin, make sure you have π€ Datasets installed to load and preprocess image datasets, and π€ Accelerate, to simplify training on any number of GPUs. The following command will also install [TensorBoard](https://www.tensorflow.org/tensorboard) to visualize training metrics (you can also use [Weights & Biases](https://docs.wandb.ai/) to track your training).
"""
# uncomment to install the necessary libraries in Colab
#!pip install diffusers[training]
"""We encourage you to share your model with the community, and in order to do that, you'll need to login to your Hugging Face account (create one [here](https://hf.co/join) if you don't already have one!). You can login from a notebook and enter your token when prompted:"""
from huggingface_hub import notebook_login
notebook_login()
#!sudo apt -qq install git-lfs
#!git config --global credential.helper store
"""Or login in from the terminal:
```bash
huggingface-cli login
```
Since the model checkpoints are quite large, install [Git-LFS](https://git-lfs.com/) to version these large files:
```bash
!sudo apt -qq install git-lfs
!git config --global credential.helper store
```
## Training configuration
For convenience, create a `TrainingConfig` class containing the training hyperparameters (feel free to adjust them):
"""
from dataclasses import dataclass
@dataclass
class TrainingConfig:
image_size = 256 # the generated image resolution
train_batch_size = 10
eval_batch_size = 16 # how many images to sample during evaluation
num_epochs = 2000
gradient_accumulation_steps = 1
learning_rate = 1e-4
lr_warmup_steps = 250
save_image_epochs = 500
save_model_epochs = 500
mixed_precision = "fp16" # `no` for float32, `fp16` for automatic mixed precision
output_dir = "Inner1730_10Real" # the model name locally and on the HF Hub
push_to_hub = True # whether to upload the saved model to the HF Hub
hub_private_repo = False
overwrite_output_dir = False # KEEP THIS AS FALSE
seed = 0
config = TrainingConfig()
"""## Load the dataset
You can easily load the [Smithsonian Butterflies](https://huggingface.co/datasets/huggan/smithsonian_butterflies_subset) dataset with the π€ Datasets library:
"""
from datasets import load_dataset
config.dataset_name = "GaumlessGraham/Inner10Real"
dataset = load_dataset(config.dataset_name, split="train")
"""<Tip>
π‘ You can find additional datasets from the [HugGan Community Event](https://huggingface.co/huggan) or you can use your own dataset by creating a local [`ImageFolder`](https://huggingface.co/docs/datasets/image_dataset#imagefolder). Set `config.dataset_name` to the repository id of the dataset if it is from the HugGan Community Event, or `imagefolder` if you're using your own images.
</Tip>
π€ Datasets uses the [Image](https://huggingface.co/docs/datasets/main/en/package_reference/main_classes#datasets.Image) feature to automatically decode the image data and load it as a [`PIL.Image`](https://pillow.readthedocs.io/en/stable/reference/Image.html) which we can visualize:
"""
import matplotlib.pyplot as plt
fig, axs = plt.subplots(1, 4, figsize=(16, 4))
for i, image in enumerate(dataset[:4]["image"]):
axs[i].imshow(image)
axs[i].set_axis_off()
fig.show()
"""<div class="flex justify-center">
<img src="https://huggingface.co/datasets/huggingface/documentation-images/resolve/main/diffusers/butterflies_ds.png"/>
</div>
The images are all different sizes though, so you'll need to preprocess them first:
* `Resize` changes the image size to the one defined in `config.image_size`.
* `RandomHorizontalFlip` augments the dataset by randomly mirroring the images.
* `Normalize` is important to rescale the pixel values into a [-1, 1] range, which is what the model expects.
"""
from torchvision import transforms
preprocess = transforms.Compose(
[
transforms.Resize((config.image_size, config.image_size)),
transforms.ToTensor(),
transforms.Normalize([0.5], [0.5]),
]
)
"""Use π€ Datasets' [set_transform](https://huggingface.co/docs/datasets/main/en/package_reference/main_classes#datasets.Dataset.set_transform) method to apply the `preprocess` function on the fly during training:"""
def transform(examples):
images = [preprocess(image) for image in examples["image"]]
return {"images": images}
dataset.set_transform(transform)
"""Feel free to visualize the images again to confirm that they've been resized. Now you're ready to wrap the dataset in a [DataLoader](https://pytorch.org/docs/stable/data#torch.utils.data.DataLoader) for training!"""
import torch
train_dataloader = torch.utils.data.DataLoader(dataset, batch_size=config.train_batch_size, shuffle=True)
fig.show()
"""## Create a UNet2DModel
Pretrained models in 𧨠Diffusers are easily created from their model class with the parameters you want. For example, to create a [UNet2DModel](https://huggingface.co/docs/diffusers/main/en/api/models/unet2d#diffusers.UNet2DModel):
"""
from diffusers import UNet2DModel
model = UNet2DModel(
sample_size=config.image_size, # the target image resolution
in_channels=1, # the number of input channels, 3 for RGB images
out_channels=1, # the number of output channels
layers_per_block=2, # how many ResNet layers to use per UNet block
block_out_channels=(128, 128, 256, 256, 512, 512), # the number of output channels for each UNet block
down_block_types=(
"DownBlock2D", # a regular ResNet downsampling block
"DownBlock2D",
"DownBlock2D",
"DownBlock2D",
"AttnDownBlock2D", # a ResNet downsampling block with spatial self-attention
"DownBlock2D",
),
up_block_types=(
"UpBlock2D", # a regular ResNet upsampling block
"AttnUpBlock2D", # a ResNet upsampling block with spatial self-attention
"UpBlock2D",
"UpBlock2D",
"UpBlock2D",
"UpBlock2D",
),
)
"""It is often a good idea to quickly check the sample image shape matches the model output shape:"""
sample_image = dataset[0]["images"].unsqueeze(0)
print("Input shape:", sample_image.shape)
print("Output shape:", model(sample_image, timestep=0).sample.shape)
"""Great! Next, you'll need a scheduler to add some noise to the image.
## Create a scheduler
The scheduler behaves differently depending on whether you're using the model for training or inference. During inference, the scheduler generates image from the noise. During training, the scheduler takes a model output - or a sample - from a specific point in the diffusion process and applies noise to the image according to a *noise schedule* and an *update rule*.
Let's take a look at the [DDPMScheduler](https://huggingface.co/docs/diffusers/main/en/api/schedulers/ddpm#diffusers.DDPMScheduler) and use the `add_noise` method to add some random noise to the `sample_image` from before:
"""
import torch
from PIL import Image
from diffusers import DDPMScheduler
noise_scheduler = DDPMScheduler(num_train_timesteps=1000)
noise = torch.randn(sample_image.shape)
timesteps = torch.LongTensor([50])
noisy_image = noise_scheduler.add_noise(sample_image, noise, timesteps)
#Image.fromarray(((noisy_image.permute(0, 2, 3, 1) + 1.0) * 127.5).type(torch.uint8).numpy()[0])
"""<div class="flex justify-center">
<img src="https://huggingface.co/datasets/huggingface/documentation-images/resolve/main/diffusers/noisy_butterfly.png"/>
</div>
The training objective of the model is to predict the noise added to the image. The loss at this step can be calculated by:
"""
import torch.nn.functional as F
noise_pred = model(noisy_image, timesteps).sample
loss = F.mse_loss(noise_pred, noise)
"""## Train the model
By now, you have most of the pieces to start training the model and all that's left is putting everything together.
First, you'll need an optimizer and a learning rate scheduler:
"""
from diffusers.optimization import get_cosine_schedule_with_warmup
optimizer = torch.optim.AdamW(model.parameters(), lr=config.learning_rate)
lr_scheduler = get_cosine_schedule_with_warmup(
optimizer=optimizer,
num_warmup_steps=config.lr_warmup_steps,
num_training_steps=(len(train_dataloader) * config.num_epochs),
)
"""Then, you'll need a way to evaluate the model. For evaluation, you can use the [DDPMPipeline](https://huggingface.co/docs/diffusers/main/en/api/pipelines/ddpm#diffusers.DDPMPipeline) to generate a batch of sample images and save it as a grid:"""
from diffusers import DDPMPipeline
import math
import os
def make_grid(images, rows, cols):
w, h = images[0].size
grid = Image.new("RGB", size=(cols * w, rows * h))
for i, image in enumerate(images):
grid.paste(image, box=(i % cols * w, i // cols * h))
return grid
def evalfirst(config, epoch, pipeline):
# Sample some images from random noise (this is the backward diffusion process).
# The default pipeline output type is `List[PIL.Image]`
images = pipeline(
batch_size=config.eval_batch_size,
generator=torch.manual_seed(config.seed),
).images
# Make a grid out of the images
image_grid = make_grid(images, rows=4, cols=4)
# Save the images
test_dir = os.path.join(config.output_dir, "samples")
os.makedirs(test_dir, exist_ok=True)
image_grid.save(f"{test_dir}/{epoch:04d}.png")
def evaluate(config, epoch, pipeline):
import random
import sys
# Sample some images from random noise (this is the backward diffusion process).
# The default pipeline output type is `List[PIL.Image]`
for k in range(1, 20):
images = pipeline(
batch_size=config.eval_batch_size,
generator=torch.manual_seed(config.seed),
).images
# Save the images
#test_dir = os.path.join(config.output_dir, "samples"+config.time_started)
test_dir = os.path.join(config.output_dir, "samples_generated")
if not os.path.exists(test_dir):
os.makedirs(test_dir)
for i, image in enumerate(images):
image.save(f"{test_dir}/{(i+((k-1)*16)):04d}.png")
config.seed = random.randint(1, 1000)
"""Now you can wrap all these components together in a training loop with π€ Accelerate for easy TensorBoard logging, gradient accumulation, and mixed precision training. To upload the model to the Hub, write a function to get your repository name and information and then push it to the Hub.
<Tip>
π‘ The training loop below may look intimidating and long, but it'll be worth it later when you launch your training in just one line of code! If you can't wait and want to start generating images, feel free to copy and run the code below. You can always come back and examine the training loop more closely later, like when you're waiting for your model to finish training. π€
</Tip>
"""
from accelerate import Accelerator
from huggingface_hub import HfFolder, Repository, whoami
from tqdm.auto import tqdm
from pathlib import Path
import os
def get_full_repo_name(model_id: str, organization: str = None, token: str = None):
if token is None:
token = HfFolder.get_token()
if organization is None:
username = whoami(token)["name"]
return f"{username}/{model_id}"
else:
return f"{organization}/{model_id}"
def train_loop(config, model, noise_scheduler, optimizer, train_dataloader, lr_scheduler):
import sys
# Initialize accelerator and tensorboard logging
accelerator = Accelerator(
mixed_precision=config.mixed_precision,
gradient_accumulation_steps=config.gradient_accumulation_steps,
log_with="tensorboard",
project_dir=os.path.join(config.output_dir, "logs"),
)
if accelerator.is_main_process:
if config.push_to_hub:
repo_name = get_full_repo_name(Path(config.output_dir).name)
repo = Repository(config.output_dir, clone_from=repo_name)
elif config.output_dir is not None:
os.makedirs(config.output_dir, exist_ok=True)
accelerator.init_trackers("train_example")
# Prepare everything
# There is no specific order to remember, you just need to unpack the
# objects in the same order you gave them to the prepare method.
model, optimizer, train_dataloader, lr_scheduler = accelerator.prepare(
model, optimizer, train_dataloader, lr_scheduler
)
global_step = 0
# Now you train the model
for epoch in range(config.num_epochs):
progress_bar = tqdm(total=len(train_dataloader), disable=not accelerator.is_local_main_process)
progress_bar.set_description(f"Epoch {epoch}")
for step, batch in enumerate(train_dataloader):
clean_images = batch["images"]
# Sample noise to add to the images
noise = torch.randn(clean_images.shape).to(clean_images.device)
bs = clean_images.shape[0]
# Sample a random timestep for each image
timesteps = torch.randint(
0, noise_scheduler.config.num_train_timesteps, (bs,), device=clean_images.device
).long()
# Add noise to the clean images according to the noise magnitude at each timestep
# (this is the forward diffusion process)
noisy_images = noise_scheduler.add_noise(clean_images, noise, timesteps)
with accelerator.accumulate(model):
# Predict the noise residual
noise_pred = model(noisy_images, timesteps, return_dict=False)[0]
loss = F.mse_loss(noise_pred, noise)
accelerator.backward(loss)
accelerator.clip_grad_norm_(model.parameters(), 1.0)
optimizer.step()
lr_scheduler.step()
optimizer.zero_grad()
progress_bar.update(1)
logs = {"loss": loss.detach().item(), "lr": lr_scheduler.get_last_lr()[0], "step": global_step}
progress_bar.set_postfix(**logs)
accelerator.log(logs, step=global_step)
global_step += 1
# After each epoch you optionally sample some demo images with evaluate() and save the model
if accelerator.is_main_process:
pipeline = DDPMPipeline(unet=accelerator.unwrap_model(model), scheduler=noise_scheduler)
if ((epoch + 1) % config.save_image_epochs == 0 or epoch == config.num_epochs - 1) and epoch > 195: #Change if want to not evaluate before a certain epoch
evalfirst(config, epoch, pipeline)
model_dir = os.path.join(config.output_dir, str(epoch))
os.makedirs(model_dir, exist_ok=True)
repo.push_to_hub(commit_message=f"Sample Images Epoch {epoch}", blocking=True)
if (epoch + 1) % config.save_model_epochs == 0 or epoch == config.num_epochs - 1:
if config.push_to_hub:
evaluate(config, epoch, pipeline)
model_dir = os.path.join(config.output_dir, str(epoch))
os.makedirs(model_dir, exist_ok=True)
pipeline.save_pretrained(model_dir)
repo.push_to_hub(commit_message=f"Epoch {epoch}", blocking=True)
sys.exit(0)
else:
pipeline.save_pretrained(config.output_dir)
"""Phew, that was quite a bit of code! But you're finally ready to launch the training with π€ Accelerate's [notebook_launcher](https://huggingface.co/docs/accelerate/main/en/package_reference/launchers#accelerate.notebook_launcher) function. Pass the function the training loop, all the training arguments, and the number of processes (you can change this value to the number of GPUs available to you) to use for training:"""
#!/usr/local/cuda/bin/nvcc --version
#!nvidia-smi
from accelerate import notebook_launcher
args = (config, model, noise_scheduler, optimizer, train_dataloader, lr_scheduler)
#print(model)
notebook_launcher(train_loop, args, num_processes=1)
"""Once training is complete, take a look at the final π¦ images π¦ generated by your diffusion model!"""
import glob
sample_images = sorted(glob.glob(f"{config.output_dir}/samples/*.png"))
Image.open(sample_images[-1])
"""<div class="flex justify-center">
<img src="https://huggingface.co/datasets/huggingface/documentation-images/resolve/main/diffusers/butterflies_final.png"/>
</div>
## Next steps
Unconditional image generation is one example of a task that can be trained. You can explore other tasks and training techniques by visiting the [𧨠Diffusers Training Examples](https://huggingface.co/docs/diffusers/main/en/tutorials/../training/overview) page. Here are some examples of what you can learn:
* [Textual Inversion](https://huggingface.co/docs/diffusers/main/en/tutorials/../training/text_inversion), an algorithm that teaches a model a specific visual concept and integrates it into the generated image.
* [DreamBooth](https://huggingface.co/docs/diffusers/main/en/tutorials/../training/dreambooth), a technique for generating personalized images of a subject given several input images of the subject.
* [Guide](https://huggingface.co/docs/diffusers/main/en/tutorials/../training/text2image) to finetuning a Stable Diffusion model on your own dataset.
* [Guide](https://huggingface.co/docs/diffusers/main/en/tutorials/../training/lora) to using LoRA, a memory-efficient technique for finetuning really large models faster.
""" |