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pytorch-image-models/timm/data/readers/reader_tfds.py

346 lines
17 KiB

""" Dataset reader that wraps TFDS datasets
Wraps many (most?) TFDS image-classification datasets
from https://github.com/tensorflow/datasets
https://www.tensorflow.org/datasets/catalog/overview#image_classification
Hacked together by / Copyright 2020 Ross Wightman
"""
import math
import os
from typing import Optional
import torch
import torch.distributed as dist
from PIL import Image
try:
import tensorflow as tf
tf.config.set_visible_devices([], 'GPU') # Hands off my GPU! (or pip install tensorflow-cpu)
import tensorflow_datasets as tfds
try:
tfds.even_splits('', 1, drop_remainder=False) # non-buggy even_splits has drop_remainder arg
has_buggy_even_splits = False
except TypeError:
print("Warning: This version of tfds doesn't have the latest even_splits impl. "
"Please update or use tfds-nightly for better fine-grained split behaviour.")
has_buggy_even_splits = True
# NOTE uncomment below if having file limit issues on dataset build (or alter your OS defaults)
# import resource
# low, high = resource.getrlimit(resource.RLIMIT_NOFILE)
# resource.setrlimit(resource.RLIMIT_NOFILE, (high, high))
except ImportError as e:
print(e)
print("Please install tensorflow_datasets package `pip install tensorflow-datasets`.")
exit(1)
from .reader import Reader
from .shared_count import SharedCount
MAX_TP_SIZE = int(os.environ.get('TFDS_TP_SIZE', 8)) # maximum TF threadpool size, for jpeg decodes and queuing activities
SHUFFLE_SIZE = int(os.environ.get('TFDS_SHUFFLE_SIZE', 8192)) # samples to shuffle in DS queue
PREFETCH_SIZE = int(os.environ.get('TFDS_PREFETCH_SIZE', 2048)) # samples to prefetch
@tfds.decode.make_decoder()
def decode_example(serialized_image, feature, dct_method='INTEGER_ACCURATE'):
return tf.image.decode_jpeg(
serialized_image,
channels=3,
dct_method=dct_method,
)
def even_split_indices(split, n, num_samples):
partitions = [round(i * num_samples / n) for i in range(n + 1)]
return [f"{split}[{partitions[i]}:{partitions[i + 1]}]" for i in range(n)]
def get_class_labels(info):
if 'label' not in info.features:
return {}
class_label = info.features['label']
class_to_idx = {n: class_label.str2int(n) for n in class_label.names}
return class_to_idx
class ReaderTfds(Reader):
""" Wrap Tensorflow Datasets for use in PyTorch
There several things to be aware of:
* To prevent excessive samples being dropped per epoch w/ distributed training or multiplicity of
dataloader workers, the train iterator wraps to avoid returning partial batches that trigger drop_last
https://github.com/pytorch/pytorch/issues/33413
* With PyTorch IterableDatasets, each worker in each replica operates in isolation, the final batch
from each worker could be a different size. For training this is worked around by option above, for
validation extra samples are inserted iff distributed mode is enabled so that the batches being reduced
across replicas are of same size. This will slightly alter the results, distributed validation will not be
100% correct. This is similar to common handling in DistributedSampler for normal Datasets but a bit worse
since there are up to N * J extra samples with IterableDatasets.
* The sharding (splitting of dataset into TFRecord) files imposes limitations on the number of
replicas and dataloader workers you can use. For really small datasets that only contain a few shards
you may have to train non-distributed w/ 1-2 dataloader workers. This is likely not a huge concern as the
benefit of distributed training or fast dataloading should be much less for small datasets.
* This wrapper is currently configured to return individual, decompressed image samples from the TFDS
dataset. The augmentation (transforms) and batching is still done in PyTorch. It would be possible
to specify TF augmentation fn and return augmented batches w/ some modifications to other downstream
components.
"""
def __init__(
self,
root,
name,
split='train',
is_training=False,
batch_size=None,
download=False,
repeats=0,
seed=42,
input_name='image',
input_img_mode='RGB',
target_name='label',
target_img_mode='',
prefetch_size=None,
shuffle_size=None,
max_threadpool_size=None
):
""" Tensorflow-datasets Wrapper
Args:
root: root data dir (ie your TFDS_DATA_DIR. not dataset specific sub-dir)
name: tfds dataset name (eg `imagenet2012`)
split: tfds dataset split (can use all TFDS split strings eg `train[:10%]`)
is_training: training mode, shuffle enabled, dataset len rounded by batch_size
batch_size: batch_size to use to unsure total samples % batch_size == 0 in training across all dis nodes
download: download and build TFDS dataset if set, otherwise must use tfds CLI
repeats: iterate through (repeat) the dataset this many times per iteration (once if 0 or 1)
seed: common seed for shard shuffle across all distributed/worker instances
input_name: name of Feature to return as data (input)
input_img_mode: image mode if input is an image (currently PIL mode string)
target_name: name of Feature to return as target (label)
target_img_mode: image mode if target is an image (currently PIL mode string)
prefetch_size: override default tf.data prefetch buffer size
shuffle_size: override default tf.data shuffle buffer size
max_threadpool_size: override default threadpool size for tf.data
"""
super().__init__()
self.root = root
self.split = split
self.is_training = is_training
if self.is_training:
assert batch_size is not None, \
"Must specify batch_size in training mode for reasonable behaviour w/ TFDS wrapper"
self.batch_size = batch_size
self.repeats = repeats
self.common_seed = seed # a seed that's fixed across all worker / distributed instances
# performance settings
self.prefetch_size = prefetch_size or PREFETCH_SIZE
self.shuffle_size = shuffle_size or SHUFFLE_SIZE
self.max_threadpool_size = max_threadpool_size or MAX_TP_SIZE
# TFDS builder and split information
self.input_name = input_name # FIXME support tuples / lists of inputs and targets and full range of Feature
self.input_img_mode = input_img_mode
self.target_name = target_name
self.target_img_mode = target_img_mode
self.builder = tfds.builder(name, data_dir=root)
# NOTE: the tfds command line app can be used download & prepare datasets if you don't enable download flag
if download:
self.builder.download_and_prepare()
self.class_to_idx = get_class_labels(self.builder.info) if self.target_name == 'label' else {}
self.split_info = self.builder.info.splits[split]
self.num_samples = self.split_info.num_examples
# Distributed world state
self.dist_rank = 0
self.dist_num_replicas = 1
if dist.is_available() and dist.is_initialized() and dist.get_world_size() > 1:
self.dist_rank = dist.get_rank()
self.dist_num_replicas = dist.get_world_size()
# Attributes that are updated in _lazy_init, including the tf.data pipeline itself
self.global_num_workers = 1
self.num_workers = 1
self.worker_info = None
self.worker_seed = 0 # seed unique to each work instance
self.subsplit = None # set when data is distributed across workers using sub-splits
self.ds = None # initialized lazily on each dataloader worker process
self.init_count = 0 # number of ds TF data pipeline initializations
self.epoch_count = SharedCount()
# FIXME need to determine if reinit_each_iter is necessary. I'm don't completely trust behaviour
# of `shuffle_reshuffle_each_iteration` when there are multiple workers / nodes across epochs
self.reinit_each_iter = self.is_training
def set_epoch(self, count):
self.epoch_count.value = count
def set_loader_cfg(
self,
num_workers: Optional[int] = None,
):
if self.ds is not None:
return
if num_workers is not None:
self.num_workers = num_workers
self.global_num_workers = self.dist_num_replicas * self.num_workers
def _lazy_init(self):
""" Lazily initialize the dataset.
This is necessary to init the Tensorflow dataset pipeline in the (dataloader) process that
will be using the dataset instance. The __init__ method is called on the main process,
this will be called in a dataloader worker process.
NOTE: There will be problems if you try to re-use this dataset across different loader/worker
instances once it has been initialized. Do not call any dataset methods that can call _lazy_init
before it is passed to dataloader.
"""
worker_info = torch.utils.data.get_worker_info()
# setup input context to split dataset across distributed processes
num_workers = 1
global_worker_id = 0
if worker_info is not None:
self.worker_info = worker_info
self.worker_seed = worker_info.seed
self.num_workers = worker_info.num_workers
self.global_num_workers = self.dist_num_replicas * self.num_workers
global_worker_id = self.dist_rank * self.num_workers + worker_info.id
""" Data sharding
InputContext will assign subset of underlying TFRecord files to each 'pipeline' if used.
My understanding is that using split, the underling TFRecord files will shuffle (shuffle_files=True)
between the splits each iteration, but that understanding could be wrong.
I am currently using a mix of InputContext shard assignment and fine-grained sub-splits for distributing
the data across workers. For training InputContext is used to assign shards to nodes unless num_shards
in dataset < total number of workers. Otherwise sub-split API is used for datasets without enough shards or
for validation where we can't drop samples and need to avoid minimize uneven splits to avoid padding.
"""
should_subsplit = self.global_num_workers > 1 and (
self.split_info.num_shards < self.global_num_workers or not self.is_training)
if should_subsplit:
# split the dataset w/o using sharding for more even samples / worker, can result in less optimal
# read patterns for distributed training (overlap across shards) so better to use InputContext there
if has_buggy_even_splits:
# my even_split workaround doesn't work on subsplits, upgrade tfds!
if not isinstance(self.split_info, tfds.core.splits.SubSplitInfo):
subsplits = even_split_indices(self.split, self.global_num_workers, self.num_samples)
self.subsplit = subsplits[global_worker_id]
else:
subsplits = tfds.even_splits(self.split, self.global_num_workers)
self.subsplit = subsplits[global_worker_id]
input_context = None
if self.global_num_workers > 1 and self.subsplit is None:
# set input context to divide shards among distributed replicas
input_context = tf.distribute.InputContext(
num_input_pipelines=self.global_num_workers,
input_pipeline_id=global_worker_id,
num_replicas_in_sync=self.dist_num_replicas # FIXME does this arg have any impact?
)
read_config = tfds.ReadConfig(
shuffle_seed=self.common_seed + self.epoch_count.value,
shuffle_reshuffle_each_iteration=True,
input_context=input_context,
)
ds = self.builder.as_dataset(
split=self.subsplit or self.split,
shuffle_files=self.is_training,
decoders=dict(image=decode_example()),
read_config=read_config,
)
# avoid overloading threading w/ combo of TF ds threads + PyTorch workers
options = tf.data.Options()
thread_member = 'threading' if hasattr(options, 'threading') else 'experimental_threading'
getattr(options, thread_member).private_threadpool_size = max(1, self.max_threadpool_size // self.num_workers)
getattr(options, thread_member).max_intra_op_parallelism = 1
ds = ds.with_options(options)
if self.is_training or self.repeats > 1:
# to prevent excessive drop_last batch behaviour w/ IterableDatasets
# see warnings at https://pytorch.org/docs/stable/data.html#multi-process-data-loading
ds = ds.repeat() # allow wrap around and break iteration manually
if self.is_training:
ds = ds.shuffle(min(self.num_samples, self.shuffle_size) // self.global_num_workers, seed=self.worker_seed)
ds = ds.prefetch(min(self.num_samples // self.global_num_workers, self.prefetch_size))
self.ds = tfds.as_numpy(ds)
self.init_count += 1
def _num_samples_per_worker(self):
num_worker_samples = \
max(1, self.repeats) * self.num_samples / max(self.global_num_workers, self.dist_num_replicas)
if self.is_training or self.dist_num_replicas > 1:
num_worker_samples = math.ceil(num_worker_samples)
if self.is_training and self.batch_size is not None:
num_worker_samples = math.ceil(num_worker_samples / self.batch_size) * self.batch_size
return int(num_worker_samples)
def __iter__(self):
if self.ds is None or self.reinit_each_iter:
self._lazy_init()
# Compute a rounded up sample count that is used to:
# 1. make batches even cross workers & replicas in distributed validation.
# This adds extra samples and will slightly alter validation results.
# 2. determine loop ending condition in training w/ repeat enabled so that only full batch_size
# batches are produced (underlying tfds iter wraps around)
target_sample_count = self._num_samples_per_worker()
# Iterate until exhausted or sample count hits target when training (ds.repeat enabled)
sample_count = 0
for sample in self.ds:
input_data = sample[self.input_name]
if self.input_img_mode:
input_data = Image.fromarray(input_data, mode=self.input_img_mode)
target_data = sample[self.target_name]
if self.target_img_mode:
target_data = Image.fromarray(target_data, mode=self.target_img_mode)
yield input_data, target_data
sample_count += 1
if self.is_training and sample_count >= target_sample_count:
# Need to break out of loop when repeat() is enabled for training w/ oversampling
# this results in extra samples per epoch but seems more desirable than dropping
# up to N*J batches per epoch (where N = num distributed processes, and J = num worker processes)
break
# Pad across distributed nodes (make counts equal by adding samples)
if not self.is_training and self.dist_num_replicas > 1 and self.subsplit is not None and \
0 < sample_count < target_sample_count:
# Validation batch padding only done for distributed training where results are reduced across nodes.
# For single process case, it won't matter if workers return different batch sizes.
# If using input_context or % based splits, sample count can vary significantly across workers and this
# approach should not be used (hence disabled if self.subsplit isn't set).
while sample_count < target_sample_count:
yield input_data, target_data # yield prev sample again
sample_count += 1
def __len__(self):
num_samples = self._num_samples_per_worker() * self.num_workers
return num_samples
def _filename(self, index, basename=False, absolute=False):
assert False, "Not supported" # no random access to samples
def filenames(self, basename=False, absolute=False):
""" Return all filenames in dataset, overrides base"""
if self.ds is None:
self._lazy_init()
names = []
for sample in self.ds:
if len(names) > self.num_samples:
break # safety for ds.repeat() case
if 'file_name' in sample:
name = sample['file_name']
elif 'filename' in sample:
name = sample['filename']
elif 'id' in sample:
name = sample['id']
else:
assert False, "No supported name field present"
names.append(name)
return names