model_tracer / RAR /1d-tokenizer /data /webdataset_reader.py
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"""This file contains the definition of data loader using webdataset.
This file may have been modified by Bytedance Ltd. and/or its affiliates (“Bytedance's Modifications”).
All Bytedance's Modifications are Copyright (year) Bytedance Ltd. and/or its affiliates.
Reference:
https://github.com/mlfoundations/open_clip/blob/main/src/training/data.py
https://github.com/huggingface/open-muse/blob/main/training/data.py
"""
import math
from typing import List, Union, Text
import webdataset as wds
import numpy as np
import torch
from torch.utils.data import default_collate
from torchvision import transforms
from torch.utils.data import Dataset
import linecache
import json
from PIL import Image
import random
Image.MAX_IMAGE_PIXELS = None
def load_json(sample):
sample['json'] = json.loads(sample['json'].decode('utf-8'))
return sample
def filter_keys(key_set):
def _f(dictionary):
return {k: v for k, v in dictionary.items() if k in key_set}
return _f
def filter_by_res_ratio(min_res=256, min_ratio=0.5, max_ratio=2.0):
def _f(sample):
cfg = sample['json']
h, w = cfg['original_height'], cfg['original_width']
ratio = h/w
longer_side = max(h, w)
return ratio >= min_ratio and ratio <= max_ratio and longer_side >= min_res
return _f
def process_recap_text(p):
def _f(dictionary):
if "recap_txt" in dictionary:
if random.random() < p:
recap_prefixes = ["The image " + v for v in ['depicts', "displays", 'showcases', 'features', 'shows']]
# Convert input to string and strip whitespace
text = dictionary["recap_txt"].decode("utf-8").strip()
# Check if text starts with any of the phrases
for phrase in recap_prefixes:
if text.startswith(phrase):
# Remove the phrase and any leading/trailing whitespace
text = text[len(phrase):].strip()
# Capitalize the first letter
text = text[0].upper() + text[1:] if text else ""
break
dictionary["text"] = text.encode("utf-8")
return dictionary
return _f
def identity(x):
return x
class ImageTransform:
def __init__(self,
resize_shorter_edge: int = 256,
crop_size: int = 256,
random_crop: bool = True,
random_flip: bool = True,
normalize_mean: List[float] = [0., 0., 0.],
normalize_std: List[float] = [1., 1., 1.]):
"""Initializes the WebDatasetReader with specified augmentation parameters.
Args:
resize_shorter_edge: An integer, the shorter edge size to resize the input image to.
crop_size: An integer, the size to crop the input image to.
random_crop: A boolean, whether to use random crop augmentation during training.
random_flip: A boolean, whether to use random flipping augmentation during training.
normalize_mean: A list of float, the normalization mean used to normalize the image tensor.
normalize_std: A list of float, the normalization std used to normalize the image tensor.
Raises:
NotImplementedError: If the interpolation mode is not one of ["bicubic", "bilinear"].
"""
train_transform = []
interpolation = transforms.InterpolationMode.BICUBIC
train_transform.append(
transforms.Resize(resize_shorter_edge, interpolation=interpolation, antialias=True))
if random_crop:
train_transform.append(transforms.RandomCrop(crop_size))
else:
train_transform.append(transforms.CenterCrop(crop_size))
if random_flip:
train_transform.append(transforms.RandomHorizontalFlip())
train_transform.append(transforms.ToTensor())
# normalize_mean = [0, 0, 0] and normalize_std = [1, 1, 1] will normalize images into [0, 1],
# normalize_mean = [0.5, 0.5, 0.5] and normalize_std = [0.5, 0.5, 0.5] will normalize images into [-1, 1].
train_transform.append(transforms.Normalize(normalize_mean, normalize_std))
self.train_transform = transforms.Compose(train_transform)
self.eval_transform = transforms.Compose(
[
# Note that we always resize to crop_size during eval to ensure the results
# can be compared against reference numbers on ImageNet etc.
transforms.Resize(crop_size, interpolation=interpolation, antialias=True),
transforms.CenterCrop(crop_size),
transforms.ToTensor(),
transforms.Normalize(normalize_mean, normalize_std)
]
)
print(f"self.train_transform: {self.train_transform}")
print(f"self.eval_transform: {self.eval_transform}")
class SimpleImageDataset:
def __init__(
self,
train_shards_path: Union[Text, List[Text]],
eval_shards_path: Union[Text, List[Text]],
num_train_examples: int,
per_gpu_batch_size: int,
global_batch_size: int,
num_workers_per_gpu: int = 12,
resize_shorter_edge: int = 256,
crop_size: int = 256,
random_crop = True,
random_flip = True,
normalize_mean: List[float] = [0., 0., 0.],
normalize_std: List[float] = [1., 1., 1.],
dataset_with_class_label: bool = True,
dataset_with_text_label: bool = False,
res_ratio_filtering = False,
):
"""Initializes the WebDatasetReader class.
Args:
train_shards_path: A string or list of string, path to the training data shards in webdataset format.
eval_shards_path: A string or list of string, path to the evaluation data shards in webdataset format.
num_train_examples: An integer, total number of training examples.
per_gpu_batch_size: An integer, number of examples per GPU batch.
global_batch_size: An integer, total number of examples in a batch across all GPUs.
num_workers_per_gpu: An integer, number of workers per GPU.
resize_shorter_edge: An integer, the shorter edge size to resize the input image to.
crop_size: An integer, the size to crop the input image to.
random_crop: A boolean, whether to use random crop augmentation during training.
random_flip: A boolean, whether to use random flipping augmentation during training.
normalize_mean: A list of float, the normalization mean used to normalize the image tensor.
normalize_std: A list of float, the normalization std used to normalize the image tensor.
"""
transform = ImageTransform(
resize_shorter_edge, crop_size, random_crop, random_flip,
normalize_mean, normalize_std)
if dataset_with_class_label:
train_processing_pipeline = [
wds.decode(wds.autodecode.ImageHandler("pil", extensions=["webp", "png", "jpg", "jpeg"])),
wds.rename(
image="jpg;png;jpeg;webp",
class_id="cls",
handler=wds.warn_and_continue,
),
wds.map(filter_keys(set(["image", "class_id", "filename"]))),
wds.map_dict(
image=transform.train_transform,
class_id=lambda x: int(x),
handler=wds.warn_and_continue,
),
]
elif dataset_with_text_label:
train_processing_pipeline = [
wds.map(load_json),
wds.select(filter_by_res_ratio()) if res_ratio_filtering else wds.map(identity),
wds.decode(wds.autodecode.ImageHandler("pil", extensions=["webp", "png", "jpg", "jpeg"]),only=["webp", "png", "jpg", "jpeg", "txt"]),
wds.rename(
image="jpg;png;jpeg;webp",
text="txt",
handler=wds.warn_and_continue,
),
wds.map(filter_keys(set(["image", "text", "__key__"]))),
wds.map_dict(
image=transform.train_transform,
handler=wds.warn_and_continue,
),
]
else:
raise NotImplementedError
test_processing_pipeline = [
wds.decode(wds.autodecode.ImageHandler("pil", extensions=["webp", "png", "jpg", "jpeg"])),
wds.rename(
image="jpg;png;jpeg;webp",
class_id="cls",
handler=wds.warn_and_continue,
),
wds.map(filter_keys(set(["image", "class_id", "filename"]))),
wds.map_dict(
image=transform.eval_transform,
class_id=lambda x: int(x),
handler=wds.warn_and_continue,
),
]
# Create train dataset and loader.
pipeline = [
wds.ResampledShards(train_shards_path),
wds.tarfile_to_samples(handler=wds.warn_and_continue),
wds.shuffle(bufsize=5000,
initial=1000),
*train_processing_pipeline,
wds.batched(per_gpu_batch_size, partial=False, collation_fn=default_collate),
]
num_batches = math.ceil(num_train_examples / global_batch_size)
num_worker_batches = math.ceil(num_train_examples /
(global_batch_size * num_workers_per_gpu))
num_batches = num_worker_batches * num_workers_per_gpu
num_samples = num_batches * global_batch_size
# Each worker is iterating over the complete dataset.
self._train_dataset = wds.DataPipeline(*pipeline).with_epoch(num_worker_batches)
self._train_dataloader = wds.WebLoader(
self._train_dataset,
batch_size=None,
shuffle=False,
num_workers=num_workers_per_gpu,
pin_memory=True,
persistent_workers=True,
)
# Add meta-data to dataloader instance for convenience.
self._train_dataloader.num_batches = num_batches
self._train_dataloader.num_samples = num_samples
# Create eval dataset and loader.
pipeline = [
wds.SimpleShardList(eval_shards_path),
wds.split_by_worker,
wds.tarfile_to_samples(handler=wds.ignore_and_continue),
*test_processing_pipeline,
wds.batched(per_gpu_batch_size, partial=True, collation_fn=default_collate),
]
self._eval_dataset = wds.DataPipeline(*pipeline)
self._eval_dataloader = wds.WebLoader(
self._eval_dataset,
batch_size=None,
shuffle=False,
num_workers=num_workers_per_gpu,
pin_memory=True,
persistent_workers=True,
)
@property
def train_dataset(self):
return self._train_dataset
@property
def train_dataloader(self):
return self._train_dataloader
@property
def eval_dataset(self):
return self._eval_dataset
@property
def eval_dataloader(self):
return self._eval_dataloader
class PretoeknizedDataSetJSONL(Dataset):
def __init__(self, data_path):
super().__init__()
self.jsonl_file = data_path
self.num_lines = sum(1 for _ in open(self.jsonl_file))
# Ensure the file is cached
linecache.checkcache(self.jsonl_file)
print("Number of data:", self.num_lines)
def __len__(self):
return self.num_lines
def __getitem__(self, idx):
line = linecache.getline(self.jsonl_file, idx + 1).strip()
data = json.loads(line)
return torch.tensor(data["class_id"]), torch.tensor(data["tokens"])
class PretokenizedWebDataset(SimpleImageDataset):
def __init__ (
self,
train_shards_path: Union[Text, List[Text]],
eval_shards_path: Union[Text, List[Text]],
num_train_examples: int,
per_gpu_batch_size: int,
global_batch_size: int,
num_workers_per_gpu: int,
resize_shorter_edge: int = 256,
crop_size: int = 256,
random_crop = True,
random_flip = True,
normalize_mean: List[float] = [0., 0., 0.],
normalize_std: List[float] = [1., 1., 1.],
process_recap = False,
use_recap_prob = 0.95,
):
"""Initializes the PretokenizedWebDataset class.
Text-to-image datasets are pretokenized with careful filtering (Tab. 7 in Supp.) to speed up the training
"""
transform = ImageTransform(
resize_shorter_edge, crop_size, random_crop, random_flip,
normalize_mean, normalize_std)
def decode_npy(x):
arr = np.frombuffer(x, dtype=np.float16)
ret = torch.tensor(arr)
return ret
def decode_text(x):
ret = x.decode("utf-8")
return ret
train_processing_pipeline = [
wds.rename(
tokens="token.npy",
text="txt",
handler=wds.warn_and_continue,
),
wds.map(process_recap_text(use_recap_prob) if process_recap else wds.map(identity)),
wds.map(filter_keys(set(["tokens", "text", "aes_score", "__key__"]))),
wds.map_dict(
tokens=decode_npy,
text=decode_text,
handler=wds.warn_and_continue,
),
]
test_processing_pipeline = [
wds.decode(wds.autodecode.ImageHandler("pil", extensions=["webp", "png", "jpg", "jpeg"])),
wds.rename(
image="jpg;png;jpeg;webp",
handler=wds.warn_and_continue,
),
wds.map_dict(
image=transform.eval_transform,
handler=wds.warn_and_continue,
),
]
# Create train dataset and loader.
pipeline = [
wds.ResampledShards(train_shards_path),
wds.tarfile_to_samples(handler=wds.warn_and_continue),
wds.shuffle(bufsize=5000,
initial=1000),
*train_processing_pipeline,
wds.batched(per_gpu_batch_size, partial=False, collation_fn=default_collate),
]
num_batches = math.ceil(num_train_examples / global_batch_size)
num_worker_batches = math.ceil(num_train_examples /
(global_batch_size * num_workers_per_gpu))
num_batches = num_worker_batches * num_workers_per_gpu
num_samples = num_batches * global_batch_size
# Each worker is iterating over the complete dataset.
self._train_dataset = wds.DataPipeline(*pipeline).with_epoch(num_worker_batches)
self._train_dataloader = wds.WebLoader(
self._train_dataset,
batch_size=None,
shuffle=False,
num_workers=num_workers_per_gpu,
pin_memory=True,
persistent_workers=True,
)
# Add meta-data to dataloader instance for convenience.
self._train_dataloader.num_batches = num_batches
self._train_dataloader.num_samples = num_samples
# Create eval dataset and loader.
pipeline = [
wds.SimpleShardList(eval_shards_path),
wds.split_by_worker,
wds.tarfile_to_samples(handler=wds.ignore_and_continue),
*test_processing_pipeline,
wds.batched(per_gpu_batch_size, partial=True, collation_fn=default_collate),
]
self._eval_dataset = wds.DataPipeline(*pipeline)
self._eval_dataloader = wds.WebLoader(
self._eval_dataset,
batch_size=None,
shuffle=False,
num_workers=num_workers_per_gpu,
pin_memory=True,
persistent_workers=False,
)