# Copyright (c) 2022 PaddlePaddle Authors. All Rights Reserved. # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License import abc import numpy as np import paddle from paddle.io import BatchSampler, IterableDataset from paddle.fluid.dataloader.batch_sampler import _InfiniteIterableSampler from paddle.fluid.dataloader.dataloader_iter import _DatasetKind, default_collate_fn, default_convert_fn class DistributedDataLoader(metaclass=abc.ABCMeta): def __init__(self, dataset, batch_size=1, epochs=1, drop_last=False): if isinstance(dataset, IterableDataset): self.dataset_kind = _DatasetKind.ITER else: self.dataset_kind = _DatasetKind.MAP self.dataset = dataset self.epochs = epochs self.drop_last = drop_last if batch_size is None: self.batch_size = None self.batch_sampler = None else: self.batch_size = batch_size if isinstance(dataset, IterableDataset): self.batch_sampler = _InfiniteIterableSampler( dataset, batch_size) else: self.batch_sampler = BatchSampler(dataset, batch_size=batch_size, shuffle=False, drop_last=drop_last) self.auto_collate_batch = self.batch_sampler is not None self.sampler_iter = iter(self.index_sampler) @abc.abstractmethod def __iter__(self): raise NotImplementedError @abc.abstractmethod def __next__(self): raise NotImplementedError @property def index_sampler(self): if self.auto_collate_batch: return self.batch_sampler else: if self.dataset_kind == _DatasetKind.MAP: return list(range(len(self.dataset))) else: return _InfiniteIterableSampler(self.dataset, 1) class NonIterableGeneratorLoader(DistributedDataLoader): def __init__(self, dataset, feed_list, places, batch_size=1, epochs=1, steps_per_epoch=None, collate_fn=None, data_parallel_world_size=[], data_parallel_rank=[], drop_last=False, split_data=True): self.feed_list = feed_list self.places = places self.steps_per_epoch = steps_per_epoch assert len(data_parallel_world_size) == len(feed_list) assert len(data_parallel_rank) == len(feed_list) self.dp_world_sizes = data_parallel_world_size self.dp_ranks = data_parallel_rank self.split_data = split_data super(NonIterableGeneratorLoader, self).__init__(dataset, batch_size, epochs, drop_last) if self.auto_collate_batch: self.collate_fn = collate_fn or default_collate_fn else: self.collate_fn = collate_fn or default_convert_fn self.dataset_fetcher = _DatasetKind.create_fetcher( self.dataset_kind, self.dataset, self.auto_collate_batch, self.collate_fn, self.drop_last) self._steps = self._infer_steps() self._inner_dataloader = self._create_inner_dataloader() def __iter__(self): self._cur_step = 0 self._inner_dataloader.start() return self def __next__(self): if not self._steps: self._cur_step += 1 elif self._cur_step < self._steps: self._cur_step += 1 else: self._inner_dataloader.reset() self.sampler_iter = iter(self.index_sampler) raise StopIteration def _infer_steps(self): if self.steps_per_epoch is not None: return self.steps_per_epoch try: if isinstance(self.dataset, IterableDataset): steps_per_epoch = None elif self.batch_size is None: steps_per_epoch = len(self.dataset) else: steps_per_epoch = len(self.dataset) // self.batch_size except: raise ValueError( "Pleace set `steps_per_epoch` or implement `__len__` methond in dataset class." ) return steps_per_epoch def _create_inner_dataloader(self): def data_generator(): while True: try: indices = next(self.sampler_iter) batch = self.dataset_fetcher.fetch(indices) if batch is None: break except StopIteration: self.dataset_fetcher = _DatasetKind.create_fetcher( self.dataset_kind, self.dataset, self.auto_collate_batch, self.collate_fn, self.drop_last) break partial_data = [] for i, d in enumerate(batch): array = np.array(d) if not self.split_data: partial_data.append(array) continue batch_size = array.shape[0] assert batch_size % self.dp_world_sizes[i] == 0, \ "batch_size [{}] is not divisible by dp_world_size [{}]".format(str(batch_size), str(self.dp_world_sizes[i])) partial_data.append( np.split(array, self.dp_world_sizes[i])[self.dp_ranks[i]]) yield partial_data dataloader = paddle.fluid.io.DataLoader.from_generator( feed_list=self.feed_list, capacity=70, iterable=False) dataloader.set_batch_generator(data_generator, self.places) return dataloader