Unconditional Image Generation
Diffusers
Safetensors
English
bitdance
imagenet
class-conditional
custom-pipeline
Instructions to use BiliSakura/BitDance-ImageNet-diffusers with libraries, inference providers, notebooks, and local apps. Follow these links to get started.
- Libraries
- Diffusers
How to use BiliSakura/BitDance-ImageNet-diffusers with Diffusers:
pip install -U diffusers transformers accelerate
import torch from diffusers import DiffusionPipeline # switch to "mps" for apple devices pipe = DiffusionPipeline.from_pretrained("BiliSakura/BitDance-ImageNet-diffusers", dtype=torch.bfloat16, device_map="cuda") prompt = "Astronaut in a jungle, cold color palette, muted colors, detailed, 8k" image = pipe(prompt).images[0] - Notebooks
- Google Colab
- Kaggle
| import contextlib | |
| import io | |
| import math | |
| import os | |
| import pickle | |
| import tarfile | |
| from functools import lru_cache | |
| import numpy as np | |
| import torch | |
| from PIL import Image | |
| from torch.utils.data import Dataset | |
| from torchvision.datasets import ImageFolder | |
| import torchvision.datasets as datasets | |
| def numpy_seed(seed, *addl_seeds): | |
| """Context manager which seeds the NumPy PRNG with the specified seed and | |
| restores the state afterward""" | |
| if seed is None: | |
| yield | |
| return | |
| def check_seed(s): | |
| assert type(s) == int or type(s) == np.int32 or type(s) == np.int64 | |
| check_seed(seed) | |
| if len(addl_seeds) > 0: | |
| for s in addl_seeds: | |
| check_seed(s) | |
| seed = int(hash((seed, *addl_seeds)) % 1e8) | |
| state = np.random.get_state() | |
| np.random.seed(seed) | |
| try: | |
| yield | |
| finally: | |
| np.random.set_state(state) | |
| def build_flat_index(outer_path: str, idx_path: str): | |
| if os.path.exists(idx_path): | |
| print(f"Index file {idx_path} already exists. Skipping index building.") | |
| return pickle.load(open(idx_path, "rb")) | |
| entries = [] # (offset, size, label) | |
| cats = set() | |
| idx = 0 | |
| with tarfile.open(outer_path, "r:") as outer: | |
| for sub in outer.getmembers(): | |
| if not sub.isfile() or not sub.name.endswith(".tar"): | |
| continue | |
| outer_off = sub.offset_data | |
| sub_fobj = outer.extractfile(sub) | |
| with tarfile.open(fileobj=sub_fobj, mode="r:") as inner: | |
| for m in inner.getmembers(): | |
| if not m.isfile(): | |
| continue | |
| cat = m.name.split("_", 1)[0] | |
| cats.add(cat) | |
| abs_off = outer_off + m.offset_data | |
| entries.append((abs_off, m.size, cat)) | |
| if idx % 1000 == 1: | |
| print(idx, m.name, abs_off, m.size, cat) | |
| idx += 1 | |
| sorted_cats = sorted(cats) | |
| cat2idx = {c: i for i, c in enumerate(sorted_cats)} | |
| flat = [(off, size, cat2idx[c]) for off, size, c in entries] | |
| os.makedirs(os.path.dirname(idx_path), exist_ok=True) | |
| with open(idx_path, "wb") as f: | |
| pickle.dump( | |
| flat, | |
| f, | |
| ) | |
| print(f"Built flat index with {len(flat)} images.") | |
| return flat | |
| class ImageNetTarDataset(Dataset): | |
| """ | |
| ImageNet dataset stored in a tar file, avoid to decompress the whole dataset. | |
| You can direct use the original downloaded tar file (ILSVRC2012_img_train.tar) from official ImageNet website. | |
| The best practice is to copy the tar file to node's local disk or ramdisk (like /dev/shm/) first, to avoid remote I/O bottleneck. | |
| """ | |
| def __init__( | |
| self, | |
| tar_file, | |
| ): | |
| self.tar_file = tar_file | |
| self.tar_handle = None | |
| self.files = build_flat_index(tar_file, tar_file + ".index") | |
| self.num_examples = len(self.files) | |
| def __len__(self): | |
| return self.num_examples | |
| def get_raw_image(self, index): | |
| if self.tar_handle is None: | |
| self.tar_handle = open(self.tar_file, "rb") | |
| offset, size, label = self.files[index] | |
| self.tar_handle.seek(offset) | |
| data = self.tar_handle.read(size) | |
| image = Image.open(io.BytesIO(data)).convert("RGB") | |
| return image, label | |
| def __getitem__(self, idx): | |
| return self.get_raw_image(idx) | |
| def center_crop_arr(pil_image, image_size): | |
| """ | |
| Center cropping implementation from ADM. | |
| https://github.com/openai/guided-diffusion/blob/8fb3ad9197f16bbc40620447b2742e13458d2831/guided_diffusion/image_datasets.py#L126 | |
| """ | |
| while min(*pil_image.size) >= 2 * image_size: | |
| pil_image = pil_image.resize( | |
| tuple(x // 2 for x in pil_image.size), resample=Image.BOX | |
| ) | |
| scale = image_size / min(*pil_image.size) | |
| pil_image = pil_image.resize( | |
| tuple(round(x * scale) for x in pil_image.size), resample=Image.BICUBIC | |
| ) | |
| arr = np.array(pil_image) | |
| crop_y = (arr.shape[0] - image_size) // 2 | |
| crop_x = (arr.shape[1] - image_size) // 2 | |
| return Image.fromarray( | |
| arr[crop_y : crop_y + image_size, crop_x : crop_x + image_size] | |
| ) | |
| def numpy_randrange(start, end): | |
| return int(np.random.randint(start, end)) | |
| def random_crop_arr(pil_image, image_size, min_crop_frac=0.8, max_crop_frac=1.0): | |
| min_smaller_dim_size = math.ceil(image_size / max_crop_frac) | |
| max_smaller_dim_size = math.ceil(image_size / min_crop_frac) | |
| smaller_dim_size = numpy_randrange(min_smaller_dim_size, max_smaller_dim_size + 1) | |
| # We are not on a new enough PIL to support the `reducing_gap` | |
| # argument, which uses BOX downsampling at powers of two first. | |
| # Thus, we do it by hand to improve downsample quality. | |
| while min(*pil_image.size) >= 2 * smaller_dim_size: | |
| pil_image = pil_image.resize( | |
| tuple(x // 2 for x in pil_image.size), resample=Image.BOX | |
| ) | |
| scale = smaller_dim_size / min(*pil_image.size) | |
| pil_image = pil_image.resize( | |
| tuple(round(x * scale) for x in pil_image.size), resample=Image.BICUBIC | |
| ) | |
| arr = np.array(pil_image) | |
| crop_y = numpy_randrange(0, arr.shape[0] - image_size + 1) | |
| crop_x = numpy_randrange(0, arr.shape[1] - image_size + 1) | |
| return Image.fromarray( | |
| arr[crop_y : crop_y + image_size, crop_x : crop_x + image_size] | |
| ) | |
| def crop(pil_image, left, top, right, bottom): | |
| """ | |
| Crop the image to the specified box. | |
| """ | |
| return pil_image.crop((left, top, right, bottom)) | |
| class ImageCropDataset(Dataset): | |
| def __init__( | |
| self, | |
| raw_dataset, | |
| resolution, | |
| patch_size, | |
| seed=42, | |
| ): | |
| self.raw_dataset = raw_dataset | |
| self.resolution = resolution | |
| self.patch_size = patch_size | |
| self.aug_ratio = 1.0 | |
| self.seed = seed | |
| self.epoch = None | |
| def set_epoch(self, epoch): | |
| self.epoch = epoch | |
| def set_aug_ratio(self, aug_ratio): | |
| self.aug_ratio = aug_ratio | |
| def __len__(self): | |
| return len(self.raw_dataset) | |
| def crop_and_flip(self, image): | |
| is_aug = np.random.rand() < self.aug_ratio | |
| if not is_aug: | |
| image = center_crop_arr(image, self.resolution) | |
| else: | |
| image = random_crop_arr(image, self.resolution) | |
| arr = np.asarray(image) | |
| is_flip = int(np.random.randint(0, 2)) | |
| if is_flip == 1: | |
| # horizontal flip | |
| arr = arr[:, ::-1, :] | |
| return arr.transpose(2, 0, 1) # HWC to CHW | |
| def __getitem__(self, idx): | |
| with numpy_seed(self.seed, self.epoch, idx): | |
| image, label = self.raw_dataset[idx] | |
| samples = self.crop_and_flip(image) | |
| # to [-1, 1] | |
| samples = (samples.astype(np.float32) / 255.0 - 0.5) * 2.0 | |
| samples = torch.from_numpy(samples).float() | |
| return ( | |
| samples, | |
| torch.tensor(label).long(), | |
| ) | |
| def build_dataset(args): | |
| # use tarred imagenet dataset if data_path ends with .tar | |
| raw_dataset = ( | |
| ImageNetTarDataset(args.data_path) | |
| if args.data_path.endswith(".tar") | |
| else ImageFolder(args.data_path) | |
| ) | |
| return ImageCropDataset( | |
| raw_dataset, | |
| args.image_size, | |
| args.patch_size, | |
| seed=args.global_seed if hasattr(args, "global_seed") else 42, | |
| ) |