reader.py 81.1 KB
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# Copyright (c) 2019 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.

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from . import core
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import sys
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import six
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import numpy as np
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import threading
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import paddle
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import time
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import copy
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from .framework import Program, Variable, program_guard, default_main_program, default_startup_program, _non_static_mode, cpu_places, _current_expected_place, _in_eager_without_dygraph_check
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from .executor import global_scope
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from .data_feeder import DataFeeder, BatchedTensorProvider
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from .multiprocess_utils import multiprocess_queue_set, CleanupFuncRegistrar, _cleanup_mmap, _cleanup, _set_SIGCHLD_handler
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from .dataloader import BatchSampler, Dataset, IterableDataset, Subset
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from .dataloader.dataloader_iter import _DataLoaderIterSingleProcess, _DataLoaderIterMultiProcess, _DatasetKind, default_collate_fn
from .dataloader.batch_sampler import _InfiniteIterableSampler
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from .layers.io import monkey_patch_reader_methods, _copy_reader_var_, double_buffer
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from .unique_name import UniqueNameGenerator
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from .framework import _get_paddle_place, _get_paddle_place_list
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from paddle.fluid.framework import _set_expected_place, _current_expected_place
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import logging
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import warnings
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### Dygraph DataLoader configs ###
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import os
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import multiprocessing
import signal
# NOTE: queue has a different name in python2 and python3
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import queue
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# NOTE: [ avoid hanging & failed quickly ] These value is used in getting data from another process
QUEUE_GET_TIMEOUT = 60

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__all__ = ['PyReader', 'DataLoader', 'default_collate_fn']
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data_loader_unique_name_generator = UniqueNameGenerator()
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KEEP_DATA_LOADER_ORDER = True
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USE_PINNED_MEMORY = None
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# AutoTune Flags
USE_AUTOTUNE = False
TUNING_STEPS = 500


def set_autotune_config(use_autotune, tuning_steps=500):
    global USE_AUTOTUNE
    USE_AUTOTUNE = use_autotune
    global TUNING_STEPS
    TUNING_STEPS = tuning_steps
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def keep_data_loader_order(*args):
    global KEEP_DATA_LOADER_ORDER
    if len(args) == 0:
        return KEEP_DATA_LOADER_ORDER
    else:
        assert len(args) == 1 and isinstance(args[0], bool)
        KEEP_DATA_LOADER_ORDER = args[0]

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def use_pinned_memory(*args):
    global USE_PINNED_MEMORY
    if len(args) == 0:
        return USE_PINNED_MEMORY
    else:
        assert len(args) == 1 and isinstance(args[0], bool)
        USE_PINNED_MEMORY = args[0]


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def _convert_places(places):
    if not isinstance(places, (list, tuple)):
        places = [places]

    ret = []
    for p in places:
        if not isinstance(p, core.Place):
            tmp = core.Place()
            tmp.set_place(p)
            p = tmp

        ret.append(p)
    return ret


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# NOTE(chenweihang): _reader_process_loop must be top level method to be pickled
def _reader_process_loop(batch_reader, data_queue):
    try:
        # set signal handler
        core._set_process_signal_handler()

        # NOTE: [ mmap files clear ] When the child process exits unexpectedly,
        # some shared memory objects may have been applied for but have not yet
        # been put into the inter-process Queue. This part of the object needs
        # to be cleaned up when the process ends.
        CleanupFuncRegistrar.register(_cleanup_mmap)

        for batch in batch_reader():
            tensor_list = core._convert_to_tensor_list(batch)
            data_queue.put(tensor_list)
            core._remove_tensor_list_mmap_fds(tensor_list)
        data_queue.put(None)
    except KeyboardInterrupt:
        # NOTE: Main process will raise KeyboardInterrupt anyways, ignore it in child process
        pass
    except:
        six.reraise(*sys.exc_info())


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class DataLoaderBase(object):
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    def __init__(self):
        self._places = None
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    def __call__(self):
        return self
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    def next(self):
        '''
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        Get the next item in the DataLoader object. This method
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        should not be called by users directly. It is used for
        implementing iterator protocol of Python 2.x inside
        PaddlePaddle framework.
        '''
        return self.__next__()

    def __iter__(self):
        raise NotImplementedError()

    def __next__(self):
        raise NotImplementedError()

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    @classmethod
    def _check_input_array(cls, item):
        arr = np.asarray(item)
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        if arr.dtype == np.object_:
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            raise TypeError(
                "\n\tFaild to convert input data to a regular ndarray :\n\t* Usually "
                "this means the input data contains nested lists with different lengths. "
                "\n\t* Check the reader function passed to 'decorate_batch_generator'"
                " to locate the data causes this issue.\n\t* Please consider using "
                "'fluid.create_lod_tensor' to convert it to a LoD-Tensor.")
        return arr

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class AuToTune(object):
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    def __init__(self, loader):
        self.loader = loader
        self.max_num_worker = multiprocessing.cpu_count() / 2

    def __call__(self):
        # use default loader
        if (not USE_AUTOTUNE) or (not self.need_autotune()):
            return self.loader.num_workers

        # get autotune loader
        auto_tune_loader = self.get_autotune_loader()
        if auto_tune_loader is None:
            return self.loader.num_workers

        # pick the best num_workers
        auto_tune_start = time.time()
        logging.debug("========= DataLoader Auto Tune =========")
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        logging.debug("User config for DataLoader: " +
                      str(self.loader.num_workers))
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        best_num_workers = 0
        min_cost = float("inf")
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        logging.debug("Tuning Range for num_workers: 0 ~ " +
                      str(self.max_num_worker))
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        num_workers = 0
        while num_workers < self.max_num_worker:
            auto_tune_loader.num_workers = num_workers
            avg_cost = self.evaluate_reader_cost(auto_tune_loader)
            if min_cost * 0.75 > avg_cost:
                min_cost = avg_cost
                best_num_workers = num_workers
            else:
                update_num = self.is_best(auto_tune_loader, best_num_workers,
                                          min_cost, self.max_num_worker)
                if update_num == best_num_workers:
                    break
                else:
                    best_num_workers = update_num
            logging.debug("num_workers: " + str(num_workers) + " avg_cost: " +
                          str(avg_cost))
            num_workers += 2
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        logging.info("auto_tune dataLoader best_num_workers: " +
                     str(best_num_workers))
        logging.debug("AutoTuning Cost for DataLoader: " +
                      str(time.time() - auto_tune_start) + ' seconds')
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        # tune the default loader's num_workers
        return best_num_workers

    def need_autotune(self):
        if (sys.platform == 'darwin' or sys.platform == 'win32'):
            return False
        else:
            return True

    def get_sub_dataset(self, dataset, batch_size):
        num_samples = min(batch_size * TUNING_STEPS, len(dataset))
        sub_dataset = Subset(dataset, indices=list(range(num_samples)))
        return sub_dataset

    def get_autotune_loader(self):
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        loader = copy.copy(self.loader)
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        batch_size = self.loader.batch_sampler.batch_size
        if isinstance(self.loader.batch_sampler,
                      paddle.io.DistributedBatchSampler):
            dataset = self.loader.batch_sampler.dataset
            sub_dataset = self.get_sub_dataset(dataset, batch_size)
            loader.batch_sampler = paddle.io.DistributedBatchSampler(
                dataset=sub_dataset,
                batch_size=batch_size,
                num_replicas=self.loader.batch_sampler.nranks,
                rank=self.loader.batch_sampler.local_rank,
                shuffle=self.loader.batch_sampler.shuffle,
                drop_last=self.loader.batch_sampler.drop_last)
        elif isinstance(self.loader.batch_sampler, paddle.io.BatchSampler):
            dataset = self.loader.batch_sampler.sampler.data_source
            sub_dataset = self.get_sub_dataset(dataset, batch_size)
            loader.batch_sampler = paddle.io.BatchSampler(
                dataset=sub_dataset,
                batch_size=batch_size,
                drop_last=self.loader.batch_sampler.drop_last)
        else:
            loader = None
        return loader

    def evaluate_reader_cost(self, reader):
        costs = []
        avg_cost = 0
        start = time.time()
        for i, data in enumerate(reader):
            costs.append(time.time() - start)
            start = time.time()
        if len(costs) > 2:
            avg_cost = sum(costs[2:]) / len(costs[2:])
        else:
            avg_cost = sum(costs[0:]) / len(costs[0:])
        return avg_cost

    def is_best(self, reader, best_workers, best_time, num_work_boundary):
        step = 0
        num_workers = best_workers + 1
        boundary = 1
        while num_workers < num_work_boundary and step < 5:
            self.loader.num_workers = num_workers
            time = self.evaluate_reader_cost(reader)
            logging.debug("for back num_workers: " + str(num_workers) +
                          " avg_cost: " + str(time))
            step += 1
            if (time < best_time * 0.70 * boundary):
                return num_workers
            else:
                num_workers += 1
            boundary *= 0.80
        return best_workers


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class DataLoader(object):
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    """
    DataLoader prodives an iterator which iterates given dataset
    once by the batch_sampler.

    DataLoader supports single-process and multi-prcess data loading,
    multi-process workers will be used to load data asynchronously if
    :attr:`num_workers` is set as a positive number.

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    DataLoader supports map-style dataset and iterable-style dataset.
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    For map-style datast(can get a sample from dataset with a given
    index), please see :code:`paddle.io.Dataset`.

    For iterable-style datast(get samples from dataset iteratively,
    like a Python iterator), please see :code:`paddle.io.IterableDataset`.

    For :code:`batch_sampler` please see :code:`paddle.io.BatchSampler`
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    .. note::
        GPU tensor operation is not supported in subprocess currently,
        please don't use GPU tensor operations in pipeline which will
        be performed in subprocess, such as dataset transforms, collte_fn,
        etc. Numpy array and CPU tensor operation is supported.

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    **Disable automatic batching**

    In certain cases such as some NLP tasks, instead of automatic batching,
    handling batching manually in dataset is needed by users. For these
    cases, automatic batching is disabled if both :attr:`batch_size` and
    :attr:`batch_sampler` is set as None, each data got from :attr:`dataset`
    should be batched data and will be processed with function define by
    :attr:`collate_fn` or :attr:`default_collate_fn`.


    .. note::
        When automatic batching is disabled, :attr:`default_collate_fn` will
        do nothing to data from dataset.


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    Args:
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        dataset(Dataset): the dataset to load data from, should be an
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            instance of subclass of :code:`paddle.io.Dataset` or
            :code:`paddle.io.IterableDataset`.
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        feed_list (list(Tensor)|tuple(Tensor), optional): feed Tensor list.
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            The Tensors should be created by :code:`paddle.static.data()`.
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            :attr:`feed_list` must be set if :attr:`return_list` is
            False. Default None.
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        places(list(Place)|tuple(Place)|list(str), optional): a list of Place,
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            to put data onto, :attr:`places` can be None, if
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            :attr:`places` is None, default place(CPUPlace or CUDAPlace(0))
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            will be used. Default None. If ``places`` is list of string,
            the string in the list can be ``cpu``, ``gpu:x`` and ``gpu_pinned``,
            where ``x`` is the index of the GPUs.
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        return_list (bool, optional): whether the return value on each device is
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            presented as a list. If :attr:`return_list=False`, the return
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            value on each device would be a dict of str -> Tensor, where
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            the key of the dict is the name of each fed Tensors. If
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            :attr:`return_list=True`, the return value on each device would
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            be a list(Tensor). :attr:`return_list` can only be True
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            in dynamic graph mode. Default True.
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        batch_sampler(BatchSampler, optional): an instance of `paddle.io.BatchSampler`
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            to generate batch indices to draw samples from :attr:`dataset`
            and combine a batch. Default None.
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        batch_size(int|None, optional): sample number in a mini-batch, a substitution
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            parameter for :attr:`batch_sampler`, if :attr:`batch_sampler`
            is not set, a default `paddle.io.BatchSampler` will be used
            and initialize by :attr:`batch_size`, :attr:`shuffle` and
            :attr:`drop_last`. Default 1.
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        shuffle(bool, optional): whther to shuffle indices order before genrate
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            batch indices, a substitution parameter for :attr:`batch_sampler`
            see :attr:`batch_size`. Default False.
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        drop_last(bool, optional): whether drop the last incomplete batch dataset size
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            is not divisible by the batch size, a substitution parameter
            for :attr:`batch_sampler`, see :attr:`batch_size`. Default False
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        collate_fn(callable, optional): function to generate mini-batch data by merging
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            the sample list, None for only stack each fields of sample in axis
            0(same as :attr::`np.stack(..., axis=0)`). Default None
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        num_workers(int, optional): the number of subprocess to load data, 0 for no
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            subprocess used and loading data in main process. Default 0
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        use_buffer_reader (bool, optional): whether to use bufferred reader.
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            If use_buffer_reader=True, the DataLoader would prefetch
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            batch data asynchronously, so it would speed up data feeding
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            and occupies a little more CPU or GPU memory, i.e., the memory
            of one batch input data. Default True.
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        prefetch_factor (int, optional): Number of batch data the DataLoader would prefetch
            if use_buffer_reader=True. Default 2.
        use_shared_memory (bool, optional): whether to use shared memory to speed up
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            putting data into inter-process queue, set :attr:`use_shared_memory`
            as True only when the shared memory space on your machine(e.g.
            space of '/dev/shm' on Linux operating sysytem) is large enough.
            Shared memory will only be enabled in multi-process mode(num_workers
            > 0). Default True.
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        timeout(int, optional): the timeout value for getting data form output queue
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            of subprocesses. Default 0.
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        worker_init_fn(callable, optional): init function which will be called with
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            worker id on each subproces starting if not set as None. Default
            None.

    Returns:
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        DataLoader: an iterable object for data iterating, each elemnet of the generated data is a Tensor.
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    Examples:
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        .. code-block:: python

            import numpy as np
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            import paddle
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            import paddle.nn as nn
            import paddle.nn.functional as F
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            from paddle.io import Dataset, BatchSampler, DataLoader

            BATCH_NUM = 20
            BATCH_SIZE = 16
            EPOCH_NUM = 4

            IMAGE_SIZE = 784
            CLASS_NUM = 10

            # define a random dataset
            class RandomDataset(Dataset):
                def __init__(self, num_samples):
                    self.num_samples = num_samples

                def __getitem__(self, idx):
                    image = np.random.random([IMAGE_SIZE]).astype('float32')
                    label = np.random.randint(0, CLASS_NUM - 1, (1, )).astype('int64')
                    return image, label

                def __len__(self):
                    return self.num_samples

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            dataset = RandomDataset(BATCH_NUM * BATCH_SIZE)

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            class SimpleNet(nn.Layer):
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                def __init__(self):
                    super(SimpleNet, self).__init__()
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                    self.fc = nn.Linear(IMAGE_SIZE, CLASS_NUM)
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                def forward(self, image, label=None):
                    return self.fc(image)

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            simple_net = SimpleNet()
            opt = paddle.optimizer.SGD(learning_rate=1e-3,
                                      parameters=simple_net.parameters())
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            loader = DataLoader(dataset,
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                                batch_size=BATCH_SIZE,
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                                shuffle=True,
                                drop_last=True,
                                num_workers=2)

            for e in range(EPOCH_NUM):
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                for i, (image, label) in enumerate(loader()):
                    out = simple_net(image)
                    loss = F.cross_entropy(out, label)
                    avg_loss = paddle.mean(loss)
                    avg_loss.backward()
                    opt.minimize(avg_loss)
                    simple_net.clear_gradients()
                    print("Epoch {} batch {}: loss = {}".format(e, i, np.mean(loss.numpy())))
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    .. note::
        For reading iterable dataset with multiprocess Dataloader,
        please see :code:`paddle.io.IterableDataset`

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    """

    def __init__(self,
                 dataset,
                 feed_list=None,
                 places=None,
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                 return_list=True,
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                 batch_sampler=None,
                 batch_size=1,
                 shuffle=False,
                 drop_last=False,
                 collate_fn=None,
                 num_workers=0,
                 use_buffer_reader=True,
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                 prefetch_factor=2,
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                 use_shared_memory=True,
                 timeout=0,
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                 worker_init_fn=None,
                 persistent_workers=False):
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        self.return_list = return_list
        self.collate_fn = collate_fn
        self.use_buffer_reader = use_buffer_reader
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        self.prefetch_factor = prefetch_factor
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        self.worker_init_fn = worker_init_fn

        self.dataset = dataset

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        if not return_list and not _non_static_mode():
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            assert feed_list is not None, \
                    "feed_list should be set when return_list=False"
        self.feed_list = feed_list

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        if places is None:
            places = _current_expected_place()
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        if isinstance(places, (list, tuple)):
            places = _get_paddle_place_list(places)
        else:
            places = _get_paddle_place(places)
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        self.places = _convert_places(places)

        assert num_workers >= 0, "num_workers should be a non-negative value"
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        if num_workers > 0 and (sys.platform == 'darwin'
                                or sys.platform == 'win32'):
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            warnings.warn(
                "DataLoader with multi-process mode is not supported on MacOs and Windows currently." \
                " Please use signle-process mode with num_workers = 0 instead")
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            num_workers = 0
        self.num_workers = num_workers

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        assert prefetch_factor > 0, "prefetch_factor should be a positive value"

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        self.use_shared_memory = use_shared_memory
        if use_shared_memory and num_workers == 0:
            self.use_shared_memory = False

        assert timeout >= 0, "timeout should be a non-negative value"
        self.timeout = timeout

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        if isinstance(dataset, IterableDataset):
            self.dataset_kind = _DatasetKind.ITER
            if shuffle:
                raise ValueError(
                    "IterableDataset not support shuffle, but got shuffle={}".
                    format(shuffle))
            if batch_sampler is not None:
                raise ValueError(
                    "IterableDataset expect unspecified batch_sampler")
        else:
            self.dataset_kind = _DatasetKind.MAP

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        if batch_sampler is not None:
            assert batch_size == 1 and not shuffle and not drop_last, \
                "batch_size/shuffle/drop_last should not be set when " \
                "batch_sampler is given"
            self.batch_sampler = batch_sampler
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            self.batch_size = None
        elif batch_size is None:
            self.batch_sampler = None
            self.batch_size = None
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        else:
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            assert batch_size > 0, \
                "batch_size should be None or a positive value when " \
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                "batch_sampler is not given"
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            self.batch_size = batch_size
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            if isinstance(dataset, IterableDataset):
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                self.batch_sampler = _InfiniteIterableSampler(
                    dataset, batch_size)
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            else:
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                self.batch_sampler = BatchSampler(dataset=dataset,
                                                  batch_size=batch_size,
                                                  shuffle=shuffle,
                                                  drop_last=drop_last)
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        self.drop_last = drop_last
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        self.auto_collate_batch = self.batch_sampler is not None

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        self.pin_memory = False
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        if _non_static_mode():
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            self.pin_memory = True if use_pinned_memory(
            ) is None else use_pinned_memory()

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        self._persistent_workers = persistent_workers
        self._iterator = None
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        self.num_workers = AuToTune(self).__call__()
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    def __len__(self):
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        if self.dataset_kind == _DatasetKind.ITER:
            raise ValueError("length of IterableDataset not supported")
        else:
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            if self.auto_collate_batch:
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                return len(self.batch_sampler)
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            else:
                return len(self.dataset)
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    def __iter__(self):
        if self.num_workers == 0:
            return _DataLoaderIterSingleProcess(self)
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        elif self._persistent_workers:
            if self._iterator is None:
                self._iterator = _DataLoaderIterMultiProcess(self)
            else:
                self._iterator._reset()
            return self._iterator
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        else:
            return _DataLoaderIterMultiProcess(self)

    def __call__(self):
        return self.__iter__()

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    @staticmethod
    def from_generator(feed_list=None,
                       capacity=None,
                       use_double_buffer=True,
                       iterable=True,
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                       return_list=False,
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                       use_multiprocess=False,
                       drop_last=True):
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        """
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        .. warning::
          This API will be deprecated in the future, it is recommended to use
          :code:`paddle.io.DataLoader` which supports multi-processes acceleration.

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        .. note::
          **The framework ensures that the data loading order of DataLoader is exactly the same as the user-defined data source.**

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        Create a DataLoader object for loading data from Python generator.
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        Data would be prefetched using Python thread and be pushed
        into a queue asynchronously.

        The created DataLoader object provides 3 methods to set the data source
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        :code:`set_sample_generator` , :code:`set_sample_list_generator` and
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        :code:`set_batch_generator` . Please see the following example codes
        to know their usages.
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        If iterable = True, the created DataLoader object is a Python generator
        object, which is iterable using for-range loop.

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        If iterable = False, the created DataLoader object provides
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        :code:`start()` and :code:`reset()` method to control the data reading
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        process.
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        Args:
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            feed_list (list(Tensor)|tuple(Tensor)): feed Tensor list.
                The Tensors should be created by :code:`fluid.data()`.
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            capacity (int): capacity of the queue maintained in DataLoader.
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                The unit is batch number. Set larger capacity if your reader
                is fast.
            use_double_buffer (bool): whether to use double_buffer_reader.
                If use_double_buffer=True, the DataLoader would prefetch next
                batch data asynchronously, so it would speed up data feeding
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                and occupies a little more CPU or GPU memory, i.e., the memory
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                of one batch input data.
            iterable (bool): whether the created DataLoader is iterable.
            return_list (bool): whether the return value on each device is
                presented as a list. It is only valid when iterable=True.
                If return_list=False, the return value on each device would
                be a dict of str -> LoDTensor, where the key of the dict is
                the name of each fed Tensors. If return_list=True, the
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                return value on each device would be a list(LoDTensor). It is
                recommended to use return_list=False in static graph mode and
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                use return_list=True in dygraph mode.
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            use_multiprocess (bool): whether to use multi-process to speed up
                the data loading process in dygraph. Note: this parameter only
                can be used in the dygraph mode. In the static graph mode,
                whether this parameter is set or not has no effect.
                The Default value is False.
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            drop_last (bool): whether to drop the last batches whose number is
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                less than the CPU core/GPU card number. The default value is
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                True. In training phase, users should not set drop_last=False,
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                because all CPU cores/GPU cards must read data from DataLoader.
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                In inference phase, users can set drop_last=False, so that the
                last batches whose number is less than the CPU core/GPU card
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                number can be tested.
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        Returns:
            loader (DataLoader): the created DataLoader object.

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        Examples 1:
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            .. code-block:: python
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                '''
                Example in static graph mode
                '''
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                import numpy as np
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                import paddle
                import paddle.static as static
                import paddle.nn.functional as F


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                BATCH_NUM = 10
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                BATCH_SIZE = 16
                EPOCH_NUM = 4

                CLASS_NUM = 10

                ITERABLE = True # whether the created DataLoader object is iterable
                USE_GPU = False # whether to use GPU

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                DATA_FORMAT = 'batch_generator' # data format of data source user provides
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                paddle.enable_static()

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                def simple_net(image, label):
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                    fc_tmp = static.nn.fc(image, size=CLASS_NUM)
                    cross_entropy = F.softmax_with_cross_entropy(image, label)
                    loss = paddle.mean(cross_entropy)
                    sgd = paddle.optimizer.SGD(learning_rate=1e-3)
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                    sgd.minimize(loss)
                    return loss

                def get_random_images_and_labels(image_shape, label_shape):
                    image = np.random.random(size=image_shape).astype('float32')
                    label = np.random.random(size=label_shape).astype('int64')
                    return image, label

                # If the data generator yields one sample each time,
                # use DataLoader.set_sample_generator to set the data source.
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                def sample_generator_creator():
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                    def __reader__():
                        for _ in range(BATCH_NUM * BATCH_SIZE):
                            image, label = get_random_images_and_labels([784], [1])
                            yield image, label

                    return __reader__

                # If the data generator yield list of samples each time,
                # use DataLoader.set_sample_list_generator to set the data source.
                def sample_list_generator_creator():
                    def __reader__():
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                        for _ in range(BATCH_NUM):
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                            sample_list = []
                            for _ in range(BATCH_SIZE):
                                image, label = get_random_images_and_labels([784], [1])
                                sample_list.append([image, label])

                            yield sample_list

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                    return __reader__
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                # If the data generator yields a batch each time,
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                # use DataLoader.set_batch_generator to set the data source.
                def batch_generator_creator():
                    def __reader__():
                        for _ in range(BATCH_NUM):
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                            batch_image, batch_label = get_random_images_and_labels([BATCH_SIZE, 784], [BATCH_SIZE, 1])
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                            yield batch_image, batch_label
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                    return __reader__
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                # If DataLoader is iterable, use for loop to train the network
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                def train_iterable(exe, prog, loss, loader):
                    for _ in range(EPOCH_NUM):
                        for data in loader():
                            exe.run(prog, feed=data, fetch_list=[loss])
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                # If DataLoader is not iterable, use start() and reset() method to control the process
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                def train_non_iterable(exe, prog, loss, loader):
                    for _ in range(EPOCH_NUM):
                        loader.start() # call DataLoader.start() before each epoch starts
                        try:
                            while True:
                                exe.run(prog, fetch_list=[loss])
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                        except paddle.core.EOFException:
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                            loader.reset() # call DataLoader.reset() after catching EOFException
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                def set_data_source(loader, places):
                    if DATA_FORMAT == 'sample_generator':
                        loader.set_sample_generator(sample_generator_creator(), batch_size=BATCH_SIZE, drop_last=True, places=places)
                    elif DATA_FORMAT == 'sample_list_generator':
                        loader.set_sample_list_generator(sample_list_generator_creator(), places=places)
                    elif DATA_FORMAT == 'batch_generator':
                        loader.set_batch_generator(batch_generator_creator(), places=places)
                    else:
                        raise ValueError('Unsupported data format')
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                image = static.data(name='image', shape=[None, 784], dtype='float32')
                label = static.data(name='label', shape=[None, 1], dtype='int64')
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                # Define DataLoader
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                loader = paddle.io.DataLoader.from_generator(feed_list=[image, label], capacity=16, iterable=ITERABLE)
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                # Define network
                loss = simple_net(image, label)
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                # Set data source of DataLoader
                #
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                # If DataLoader is iterable, places must be given and the number of places must be the same with device number.
                #  - If you are using GPU, call `paddle.static.cuda_places()` to get all GPU places.
                #  - If you are using CPU, call `paddle.static.cpu_places()` to get all CPU places.
                #
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                # If DataLoader is not iterable, places can be None.
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                places = static.cuda_places() if USE_GPU else static.cpu_places()
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                set_data_source(loader, places)
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                exe = static.Executor(places[0])
                exe.run(static.default_startup_program())
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                prog = static.CompiledProgram(static.default_main_program()).with_data_parallel(loss_name=loss.name)
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                if loader.iterable:
                    train_iterable(exe, prog, loss, loader)
                else:
                    train_non_iterable(exe, prog, loss, loader)


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        Examples 2:

            .. code-block:: python

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                '''
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                Example in dynamic graph mode.
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                '''
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                import numpy as np
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                import paddle
                import paddle.nn as nn
                import paddle.optimizer as opt
                import paddle.distributed as dist

                BATCH_SIZE = 16
                BATCH_NUM = 4
                EPOCH_NUM = 4

                IMAGE_SIZE = 784
                CLASS_NUM = 10

                USE_GPU = False # whether to use GPU

                def _get_random_images_and_labels(image_shape, label_shape):
                        image = np.random.random(size=image_shape).astype('float32')
                        label = np.random.random(size=label_shape).astype('int64')
                        return image, label

                def __reader__():
                        for _ in range(BATCH_NUM):
                            batch_image, batch_label = _get_random_images_and_labels(
                                [BATCH_SIZE, IMAGE_SIZE], [BATCH_SIZE, CLASS_NUM])
                            yield batch_image, batch_label

                def random_batch_reader():
                    return __reader__

                class LinearNet(nn.Layer):
                    def __init__(self):
                        super(LinearNet, self).__init__()
                        self._linear = nn.Linear(IMAGE_SIZE, CLASS_NUM)

                    @paddle.jit.to_static
                    def forward(self, x):
                        return self._linear(x)

                # set device
                paddle.set_device('gpu' if USE_GPU else 'cpu')

                # create network
                layer = LinearNet()
                dp_layer = paddle.DataParallel(layer)
                loss_fn = nn.CrossEntropyLoss()
                adam = opt.Adam(learning_rate=0.001, parameters=dp_layer.parameters())

                # create data loader
                loader = paddle.io.DataLoader.from_generator(capacity=5)
                loader.set_batch_generator(random_batch_reader())

                for epoch_id in range(EPOCH_NUM):
                    for batch_id, (image, label) in enumerate(loader()):
                        out = layer(image)
                        loss = loss_fn(out, label)

                        loss.backward()

                        adam.step()
                        adam.clear_grad()
                        print("Epoch {} batch {}: loss = {}".format(
                            epoch_id, batch_id, np.mean(loss.numpy())))

        Examples 3:
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            .. code-block:: python

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                '''
                Example of `drop_last` using in static graph multi-cards mode
                '''
                import paddle
                import paddle.static as static
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                import numpy as np
                import os

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                # We use 2 CPU cores to run inference network
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                os.environ['CPU_NUM'] = '2'

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                paddle.enable_static()

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                # The data source has only 3 batches, which can not be
                # divided evenly to each CPU core
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                def batch_generator():
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                    for i in range(3):
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                        yield np.array([i+1]).astype('float32'),
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                x = static.data(name='x', shape=[None], dtype='float32')
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                y = x * x

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                def run_inference(drop_last):
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                    loader = paddle.io.DataLoader.from_generator(feed_list=[x],
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                            capacity=8, drop_last=drop_last)
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                    loader.set_batch_generator(batch_generator, static.cpu_places())
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                    exe = static.Executor(paddle.CPUPlace())
                    prog = static.CompiledProgram(static.default_main_program())
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                    prog = prog.with_data_parallel()

                    result = []
                    for data in loader():
                        each_ret, = exe.run(prog, feed=data, fetch_list=[y])
                        result.extend(each_ret)
                    return result

                # Set drop_last to True, so that the last batch whose
                # number is less than CPU core number would be discarded.
                print(run_inference(drop_last=True)) # [1.0, 4.0]

                # Set drop_last to False, so that the last batch whose
                # number is less than CPU core number can be tested.
                print(run_inference(drop_last=False)) # [1.0, 4.0, 9.0]
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        """
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        if _non_static_mode():
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            return DygraphGeneratorLoader(feed_list, capacity,
                                          use_double_buffer, iterable,
                                          return_list, use_multiprocess)
        else:
            return GeneratorLoader(feed_list, capacity, use_double_buffer,
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                                   iterable, return_list, drop_last)
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    @staticmethod
    def from_dataset(dataset, places, drop_last=True):
        """
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        .. warning::
          This API will be deprecated in the future, it is recommended to use
          :code:`paddle.io.DataLoader` which supports multi-processes acceleration.

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        Create an iterable DataLoader object for loading data from Dataset.
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        Dataset is only supported in Linux system currently.
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        Args:
            dataset (InMemoryDataset|QueueDataset): the dataset object.
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            places (list(CUDAPlace)|list(CPUPlace)|list(str)): places where the result
                data should be converted. If places is list of string, the string in the list
                can be ``cpu``, ``gpu:x`` and ``gpu_pinned``, where x is the index of the GPUs.
            drop_last (bool): whether to drop the last batch whose sample
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                number is less than batch size. If drop_last = True, they
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                would be dropped. If drop_last = False, they would be kept.
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        Returns:
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            loader (DataLoader): the created DataLoader object, which can be
                treated as a Python generator.
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        Examples:

            .. code-block:: python
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                import paddle
                import paddle.static as static

                paddle.enable_static()
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                image = static.data(name='image', shape=[None, 784], dtype='float32')
                label = static.data(name='label', shape=[None, 1], dtype='int64')
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                dataset = paddle.distributed.QueueDataset()
                dataset.init(
                    batch_size=32,
                    pipe_command='cat',
                    use_var=[image, label])
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                dataset.set_filelist(['a.txt', 'b.txt', 'c.txt'])
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                loader = paddle.io.DataLoader.from_dataset(dataset, static.cpu_places())
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        """
        return DatasetLoader(dataset, places, drop_last)
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class DygraphGeneratorLoader(DataLoaderBase):
    """
    The GeneratorLoader of dygraph

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    The multiprocess dygraph GeneratorLoader's most functions are different from
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    static graph GeneratorLoader, Separate implementation to keep code readable.
    """

    def __init__(self,
                 feed_list=None,
                 capacity=None,
                 use_double_buffer=True,
                 iterable=True,
                 return_list=True,
                 use_multiprocess=False):
        self._batch_reader = None
        self._places = None
        self._feed_list = feed_list

        if not capacity:
            raise ValueError("Please give value to capacity.")
        self._capacity = capacity
        self._use_double_buffer = use_double_buffer

        if not iterable:
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            warnings.warn(
                "Please NOTE: DygraphGeneratorLoader supports iterable mode only. Change to iterable mode."
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            )
        self._iterable = True
        if not return_list:
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            warnings.warn(
                "Please NOTE: DygraphGeneratorLoader supports returning as list only. Change to return as list."
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            )
        self._return_list = True

        # NOTE: the multiprocessing in different platform is incompatible, we will solve it later
        self._use_multiprocess = use_multiprocess
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        if self._use_multiprocess and (sys.platform == 'darwin'
                                       or sys.platform == 'win32'):
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            warnings.warn(
                "NOTE: DygraphGeneratorLoader with multiprocess mode is not currently supported on MacOs and Windows."
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            )
            self._use_multiprocess = False

        if self._use_multiprocess:
            # NOTE: the multiprocessing.Queue used to save loading data in self._process
            self._data_queue = None
            # NOTE: this process is used to load data asynchronously from self._batch_reader
            self._process = None

        # NOTE: the C++ LoDTensorBlockingQueue instance
        self._blocking_queue = None
        # NOTE: 1. In multiprocess mode, this thread is used to get next batch data from
        # self._data_queue, then push it into self._blocking_queue; 2. In singleprocess
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        # mode, this thread is used to get next batch data from self._batch_reader, then
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        # push it into self._blocking_queue
        self._thread = None
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        self._pin_memory = True if use_pinned_memory(
        ) is None else use_pinned_memory()
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    @property
    def queue(self):
        return self._blocking_queue

    @property
    def iterable(self):
        return self._iterable

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    def _clear_and_remove_data_queue(self):
        if self._data_queue is not None:
            while True:
                try:
                    self._data_queue.get_nowait()
                except queue.Empty:
                    break
            global multiprocess_queue_set
            multiprocess_queue_set.remove(self._data_queue)

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    def _wait_thread_ends(self):
        thread = self._thread
        if thread is not None:
            self._blocking_queue.close()
            thread.join()

    def _wait_process_ends(self):
        process = self._process
        if process is not None:
            process.join()
            # erase process id
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            core._erase_process_pids(id(self))
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    def _init_iterable(self):
        self._wait_thread_ends()
        if self._use_multiprocess:
            self._wait_process_ends()
        self._var_names = []
        self._shapes = []
        self._dtypes = []
        self._need_check_feed = []
        self._blocking_queue = core.init_lod_tensor_blocking_queue(
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            core.Variable(), self._capacity, False)
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        self._reader = None
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        self._reader = core.create_py_reader(self.queue, self._var_names,
                                             self._shapes, self._dtypes,
                                             self._need_check_feed,
                                             self._places,
                                             self._use_double_buffer, True,
                                             self._pin_memory)
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    def _start(self):
        if self._use_multiprocess:
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            # clear old _data_queue and remove it from multiprocess_queue_set
            self._clear_and_remove_data_queue()
            # set data_queue and process
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            self._data_queue = multiprocessing.Queue(self._capacity)
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            # add _data_queue into global queue set
            global multiprocess_queue_set
            multiprocess_queue_set.add(self._data_queue)
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            self._process = multiprocessing.Process(target=_reader_process_loop,
                                                    args=(self._batch_reader,
                                                          self._data_queue))
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            self._process.daemon = True
            self._process.start()

            # Set child process signal handler
            # NOTE: [ avoiding hang ] 1. if the child process dies due to bus error/segfault
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            # or just hang, the main process will hang waiting for data, so here need to deal
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            # with SIGSEGV and SIGBUS of child process; 2. if the main process end before child
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            # process, it shuts the all its daemonic children down with a SIGTERM (instead of
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            # joining them without a timeout), so here nedd to deal with SIGTERM.
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            core._set_process_pids(id(self), [self._process.pid])
            _set_SIGCHLD_handler()
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            # Set reader_thread
            self._thread_done_event = threading.Event()
            self._thread = threading.Thread(
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                target=self._reader_thread_loop_for_multiprocess,
                args=(_current_expected_place(), ))
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            self._thread.daemon = True
            self._thread.start()
        else:
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            self._thread = threading.Thread(
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                target=self._reader_thread_loop_for_singleprocess,
                args=(_current_expected_place(), ))
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            self._thread.daemon = True
            self._thread.start()

    def _reset(self):
        self._reader.reset()
        self._wait_thread_ends()
        if self._use_multiprocess:
            self._wait_process_ends()

    def __iter__(self):
        assert self.iterable, "DataLoader is not iterable"
        assert self._batch_reader is not None, \
            "Data source of DataLoader has not set yet"

        self._init_iterable()
        self._start()
        return self

    def __next__(self):
        try:
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            if _in_eager_without_dygraph_check():
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                return core.eager.read_next_tensor_list(
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                    self._reader.read_next_list()[0])
            else:
                return self._reader.read_next_var_list()
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        except StopIteration:
            self._reset()
            six.reraise(*sys.exc_info())

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    def _exit_thread_expectedly(self):
        self._thread_done_event.set()
        self._blocking_queue.close()

    def _exit_thread_unexpectedly(self):
        self._thread_done_event.set()
        self._blocking_queue.kill()
        logging.error("DataLoader reader thread raised an exception!")

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    def _reader_thread_loop_for_multiprocess(self, legacy_expected_place):
        # See _DataLoaderIterSingleProcess._thread_loop() for why set expected place here.
        _set_expected_place(legacy_expected_place)

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        while not self._thread_done_event.is_set():
            try:
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                # NOTE: [ avoid hanging ] Even with carefully designed data dependencies
                # (i.e., a put() always corresponding to a get()), hanging on get() can
                # still happen when data in queue is corrupted (e.g., due to
                # Queue.cancel_join_thread or unexpected exit). So we set a timeout whenever
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                # we try to get data from `data_queue`
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                # NOTE: [ avoid failed quickly ] Here, the time setting of QUEUE_GET_TIMEOUT
                # is relatively long, currently it is 60 seconds, because in some models,
                # if the reader child process starts with a heavy burden, the child process
                # has no enough time to put the data in the queue when the main process
                # start trying to get data from queue. At this time, the child thread needs
                # to wait slightly longer
                tensor_list = self._data_queue.get(timeout=QUEUE_GET_TIMEOUT)
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            except:
                # NOTE [ avoid handing ] After adding the shared memory mechanism, not only
                # the queue.Empty exception will occur here, but other exceptions will also
                # occur, such as mmap failure. If it is not handled here, it will hang.
1149
                self._exit_thread_unexpectedly()
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                logging.error(
                    "DataLoader reader thread failed to read data from the multiprocessing.Queue."
1152
                )
1153
                six.reraise(*sys.exc_info())
1154 1155

            if not self._thread_done_event.is_set():
1156
                if tensor_list is not None:
1157 1158
                    try:
                        array = core.LoDTensorArray()
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                        for tensor in tensor_list:
                            array.append(tensor)
1161 1162 1163
                        if not self._blocking_queue.push(array):
                            self._blocking_queue.close()
                    except:
1164
                        self._exit_thread_unexpectedly()
1165 1166
                        six.reraise(*sys.exc_info())
                else:
1167
                    self._exit_thread_expectedly()
1168

1169
    def _reader_thread_loop_for_singleprocess(self, legacy_expected_place):
1170
        try:
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            # See _DataLoaderIterSingleProcess._thread_loop() for why set expected place here.
            _set_expected_place(legacy_expected_place)

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            for sample in self._batch_reader():
                array = core.LoDTensorArray()
                for item in sample:
                    if not isinstance(item, core.LoDTensor):
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                        item = self._check_input_array(item)
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                        tmp = core.LoDTensor()
                        tmp.set(item, core.CPUPlace())
                        item = tmp

                    array.append(item)

                if not self._blocking_queue.push(array):
                    break

            self._blocking_queue.close()
            self._thread = None
        except Exception:
            self._blocking_queue.kill()
            self._thread = None
            logging.warning(
                "DygraphDataLoader reader thread raised an exception.")
            six.reraise(*sys.exc_info())

    def set_sample_generator(self,
                             reader,
                             batch_size,
                             drop_last=True,
                             places=None):
        assert batch_size > 0, "batch_size must be larger than 0"
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        if isinstance(places, (list, tuple)):
            places = _get_paddle_place_list(places)
        else:
            places = _get_paddle_place(places)
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        self.set_sample_list_generator(paddle.batch(reader,
                                                    batch_size=batch_size,
                                                    drop_last=drop_last),
                                       places=places)
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        return self

    def set_sample_list_generator(self, reader, places=None):
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        if isinstance(places, (list, tuple)):
            places = _get_paddle_place_list(places)
        else:
            places = _get_paddle_place(places)

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        def __batch_reader_impl__():
            for batch in reader():
                slots = []
                for items in batch:
                    for i, item in enumerate(items):
                        if len(slots) < len(items):
                            slots.append([item])
                        else:
                            slots[i].append(item)
                yield slots

        self.set_batch_generator(__batch_reader_impl__, places)
        return self

    def set_batch_generator(self, reader, places=None):
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        if isinstance(places, (list, tuple)):
            places = _get_paddle_place_list(places)
        else:
            places = _get_paddle_place(places)
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        self._batch_reader = reader
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        if places is None:
            places = _current_expected_place()
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        self._places = _convert_places(places)
        assert len(self._places) == 1, \
1243
            "Number of places must be 1 in imperative mode"
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        return self


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class GeneratorLoader(DataLoaderBase):
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    def __init__(self,
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                 feed_list=None,
                 capacity=None,
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                 use_double_buffer=True,
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                 iterable=True,
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                 return_list=False,
                 drop_last=True):
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        self._tensor_reader = None
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        self._places = None
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        self._thread = None
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        self._queue = None
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        self._feed_list = feed_list
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        self._exited = False
        self._drop_last = drop_last
        self._keep_order = keep_data_loader_order()
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        if not capacity:
            raise ValueError("Please give value to capacity.")
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        self._iterable = iterable
        self._return_list = return_list
        if not self._feed_list:
            raise Exception("Feed list must be given under static mode.")
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        self._use_double_buffer = use_double_buffer
        self._capacity = capacity
        if not self._iterable:
            self._init_non_iterable()
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    def _wait_thread_ends(self):
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        # Get self._thread first to prevent data race, because __thread_main__
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        # would set self._thread be None at the end
        thread = self._thread
        if thread is not None and self._iterable:
            self._queue.close()
            thread.join()

    def _init_iterable(self):
        self._wait_thread_ends()
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        self._var_names = [v.name for v in self._feed_list]
        self._shapes = [v.shape for v in self._feed_list]
        self._dtypes = [v.dtype for v in self._feed_list]
        self._need_check_feed = [
            v.desc.need_check_feed() for v in self._feed_list
        ]
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        self._queue = core.init_lod_tensor_blocking_queue(
            core.Variable(), self._capacity, self._keep_order)
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        self._reader = None
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        self._reader = core.create_py_reader(self.queue, self._var_names,
                                             self._shapes, self._dtypes,
                                             self._need_check_feed,
                                             self._places,
                                             self._use_double_buffer,
                                             self._drop_last, False)
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    def _init_non_iterable(self):
        lod_levels = []
        dtypes = []
        shape_concat = []
        ranks = []
        shapes = []
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        need_check_feed = []
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        for feed_data in self._feed_list:
            dtypes.append(feed_data.dtype)
            shape_concat.extend(feed_data.shape)
            ranks.append(len(feed_data.shape))
            shapes.append(feed_data.shape)
            lod_levels.append(feed_data.lod_level)
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            need_check_feed.append(int(feed_data.desc.need_check_feed()))
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        queue_name = data_loader_unique_name_generator(
            'lod_tensor_blocking_queue')
        reader_name = data_loader_unique_name_generator('create_py_reader')
        double_buffer_name = data_loader_unique_name_generator('double_buffer')
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        var = global_scope().var(queue_name)
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        self._queue = core.init_lod_tensor_blocking_queue(
            var, self._capacity, self._keep_order)
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        if self._keep_order:
            block = default_main_program().current_block()
        else:
            block = default_startup_program().current_block()
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        reader_var = block.create_var(name=reader_name)
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        dtype_int = [int(t) for t in dtypes]
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        block.append_op(type='create_py_reader',
                        inputs={'blocking_queue': [queue_name]},
                        outputs={'Out': [reader_var]},
                        attrs={
                            'shape_concat': shape_concat,
                            'lod_levels': lod_levels,
                            'dtypes': dtype_int,
                            'need_check_feed': need_check_feed,
                            'ranks': ranks
                        })
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        reader_var.desc.set_dtypes(dtypes)
        reader_var.persistable = True
        reader_var.stop_gradient = True
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        if self._keep_order:
            main_prog_var = reader_var
            reader = main_prog_var
            reader.reset = self._queue.reset
        else:
            main_prog_var = _copy_reader_var_(
                default_main_program().current_block(), reader_var)

            main_prog_var.stop_gradient = True
            main_prog_var.persistable = True
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            reader = monkey_patch_reader_methods(main_prog_var)
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        if self._use_double_buffer:
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            double_buffer_reader = double_buffer(reader,
                                                 name=double_buffer_name)
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            # we return a double buffer reader. However, the reset method comes from
            # py_reader.
            double_buffer_reader.reset = reader.reset
            reader = double_buffer_reader

        self._reader = reader

        default_main_program().current_block().append_op(
            type='read',
            inputs={'Reader': [self._reader]},
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            outputs={'Out': self._feed_list},
            attrs={'drop_last': self._drop_last})
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    @property
    def queue(self):
        return self._queue

    @property
    def iterable(self):
        return self._iterable
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    def __iter__(self):
        assert self.iterable, "DataLoader is not iterable"
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        assert self._tensor_reader is not None, \
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            "Data source of DataLoader has not set yet"
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        self._init_iterable()
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        self._start()
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        return self

    def __next__(self):
        try:
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            if self._return_list:
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                data = self._reader.read_next_list()
                for i in range(len(data)):
                    data[i] = data[i]._move_to_list()
                return data
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            else:
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                return self._reader.read_next()
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        except StopIteration:
            self._queue.close()
            self._reset()
            six.reraise(*sys.exc_info())

    def start(self):
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        assert not self._iterable, "start() cannot be called when DataLoader is iterable"
        self._start()
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    def reset(self):
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        assert not self._iterable, "reset() cannot be called when DataLoader is iterable"
        self._reset()
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    def _start(self):
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        def __thread_main__(legacy_expected_place):
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            try:
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                # See _DataLoaderIterSingleProcess._thread_loop() for why set expected place here.
                _set_expected_place(legacy_expected_place)

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                while not self._queue.wait_for_inited(1):
                    if self._exited:
                        return

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                for tensors in self._tensor_reader():
                    array = core.LoDTensorArray()
                    for item in tensors:
                        if not isinstance(item, core.LoDTensor):
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                            item = self._check_input_array(item)
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                            tmp = core.LoDTensor()
                            tmp.set(item, core.CPUPlace())
                            item = tmp

                        array.append(item)

                    if not self._queue.push(array):
                        break

                self._queue.close()
                self._thread = None
            except Exception as ex:
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                self._queue.kill()
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                self._thread = None
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                logging.warning('Your reader has raised an exception!')
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                six.reraise(*sys.exc_info())

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        self._thread = threading.Thread(target=__thread_main__,
                                        args=(_current_expected_place(), ))
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        self._thread.daemon = True
        self._thread.start()
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    def _reset(self):
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        self._queue.close()
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        self._exited = True
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        thread = self._thread
        if thread is not None:
            thread.join()

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        self._exited = False
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        self._reader.reset()

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    def set_sample_generator(self,
                             reader,
                             batch_size,
                             drop_last=True,
                             places=None):
        assert batch_size > 0, "batch_size must be larger than 0"
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        if isinstance(places, (list, tuple)):
            places = _get_paddle_place_list(places)
        else:
            places = _get_paddle_place(places)
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        has_lod = False
        for f in self._feed_list:
            if f.lod_level != 0:
                has_lod = True
                break

        if has_lod:
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            self.set_sample_list_generator(paddle.batch(reader,
                                                        batch_size=batch_size,
                                                        drop_last=drop_last),
                                           places=places)
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        else:
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            reader = BatchedTensorProvider(feed_list=self._feed_list,
                                           place=core.CPUPlace(),
                                           batch_size=batch_size,
                                           generator=reader,
                                           drop_last=drop_last)
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            self.set_batch_generator(reader, places=places)
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        return self

    def set_sample_list_generator(self, reader, places=None):
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        if isinstance(places, (list, tuple)):
            places = _get_paddle_place_list(places)
        else:
            places = _get_paddle_place(places)
1500
        with program_guard(Program(), Program()):
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            feeder = DataFeeder(feed_list=self._feed_list,
                                place=core.CPUPlace())
1503
            paddle_reader = feeder.decorate_reader(reader, multi_devices=False)
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        def __tensor_reader_impl__():
            for slots in paddle_reader():
                yield [slots[var.name] for var in self._feed_list]
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        self.set_batch_generator(__tensor_reader_impl__, places)
        return self

    def set_batch_generator(self, reader, places=None):
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        if isinstance(places, (list, tuple)):
            places = _get_paddle_place_list(places)
        else:
            places = _get_paddle_place(places)
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        self._tensor_reader = reader
        if self._iterable:
            assert places is not None, "Places cannot be None when DataLoader is iterable"
            self._places = _convert_places(places)
        else:
            if places is not None:
                logging.info(
                    'places would be ommited when DataLoader is not iterable')
        return self


class PyReader(DataLoaderBase):
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    r"""
1530
    Create a reader object for data feeding in Python.
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    Data would be prefetched using Python thread and be pushed
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    into a queue asynchronously. Data in the queue would be extracted
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    automatically when `Executor.run(...)` is called.

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    Args:
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        feed_list (list(Variable)|tuple(Variable)): feed variable list.
            The variables should be created by :code:`fluid.layers.data()`.
        capacity (int): capacity of the queue maintained in PyReader.
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            The unit is batch number. Set larger capacity if your reader
            is fast.
        use_double_buffer (bool): whether to use double_buffer_reader.
            If use_double_buffer=True, PyReader would prefetch next
            batch data asynchronously, so it would speed up data feeding
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            and occupies a little more CPU or GPU memory, i.e., the memory
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            of one batch input data.
        iterable (bool): whether the created PyReader is iterable.
        return_list (bool): whether the return value on each device is
            presented as a list. It is only valid when iterable=True.
            If return_list=False, the return value on each device would
            be a dict of str -> LoDTensor, where the key of the dict is
            the name of each fed variables. If return_list=True, the
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            return value on each device would be a list(LoDTensor). It is
            recommended to use return_list=False in static graph mode and
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            use return_list=True in dygraph mode.
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    Returns:
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        the created reader object.

    Return type:
        reader(Reader)
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    Examples:
        1. If iterable = False, the created PyReader object is almost the
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           same as :code:`fluid.layers.py_reader()`. Operators would be
           inserted into the program. User should call :code:`start()`
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           before each epoch and catch :code:`fluid.core.EOFException`
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           thrown by :code:`Executor.run()` when epoch ends. Once the
           exception is caught, user should call :code:`reset()` to reset
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           the reader manually.

        .. code-block:: python

           import paddle
           import paddle.fluid as fluid
           import numpy as np

           EPOCH_NUM = 3
           ITER_NUM = 5
           BATCH_SIZE = 3
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           def network(image, label):
               # User-defined network, here is an example of softmax regression.
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               predict = fluid.layers.fc(input=image, size=10, act='softmax')
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               return fluid.layers.cross_entropy(input=predict, label=label)
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           def reader_creator_random_image_and_label(height, width):
               def reader():
                   for i in range(ITER_NUM):
                       fake_image = np.random.uniform(low=0,
                                                      high=255,
                                                      size=[height, width])
                       fake_label = np.ones([1])
                       yield fake_image, fake_label
               return reader

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           image = fluid.data(name='image', shape=[None, 784, 784], dtype='float32')
           label = fluid.data(name='label', shape=[None, 1], dtype='int64')
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           reader = fluid.io.PyReader(feed_list=[image, label],
                                      capacity=4,
                                      iterable=False)

           user_defined_reader = reader_creator_random_image_and_label(784, 784)
           reader.decorate_sample_list_generator(
               paddle.batch(user_defined_reader, batch_size=BATCH_SIZE))
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           loss = network(image, label)
           executor = fluid.Executor(fluid.CPUPlace())
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           executor.run(fluid.default_startup_program())
           for i in range(EPOCH_NUM):
               reader.start()
               while True:
                   try:
                       executor.run(feed=None)
                   except fluid.core.EOFException:
                       reader.reset()
                       break

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        2. If iterable=True, the created PyReader object is decoupled with
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           the program. No operator would be inserted into the program.
           In this case, the created reader is a Python generator, which
           is iterable. User should feed the data yielded from PyReader
           object into :code:`Executor.run(feed=...)`.
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        .. code-block:: python

           import paddle
           import paddle.fluid as fluid
           import numpy as np

           EPOCH_NUM = 3
           ITER_NUM = 5
           BATCH_SIZE = 10

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           def network(image, label):
               # User-defined network, here is an example of softmax regression.
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               predict = fluid.layers.fc(input=image, size=10, act='softmax')
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               return fluid.layers.cross_entropy(input=predict, label=label)

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           def reader_creator_random_image(height, width):
               def reader():
                   for i in range(ITER_NUM):
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                       fake_image = np.random.uniform(low=0, high=255, size=[height, width])
                       fake_label = np.ones([1])
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                       yield fake_image, fake_label
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               return reader

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           image = fluid.data(name='image', shape=[None, 784, 784], dtype='float32')
           label = fluid.data(name='label', shape=[None, 1], dtype='int64')
           reader = fluid.io.PyReader(feed_list=[image, label], capacity=4, iterable=True, return_list=False)
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           user_defined_reader = reader_creator_random_image(784, 784)
           reader.decorate_sample_list_generator(
               paddle.batch(user_defined_reader, batch_size=BATCH_SIZE),
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                   fluid.core.CPUPlace())
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           loss = network(image, label)
           executor = fluid.Executor(fluid.CPUPlace())
           executor.run(fluid.default_startup_program())
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           for _ in range(EPOCH_NUM):
               for data in reader():
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                   executor.run(feed=data, fetch_list=[loss])
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        3. If return_list=True, the return values would be presented as list instead of dict.
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           This is usually used in dygraph mode.

        .. code-block:: python

           import paddle
           import paddle.fluid as fluid
           import numpy as np

           ITER_NUM = 5
           BATCH_SIZE = 10

           def reader_creator_random_image(height, width):
               def reader():
                   for i in range(ITER_NUM):
                       yield np.random.uniform(low=0, high=255, size=[height, width]), \
                           np.random.random_integers(low=0, high=9, size=[1])
               return reader

           place = fluid.CPUPlace()
           with fluid.dygraph.guard(place):
               py_reader = fluid.io.PyReader(capacity=2, return_list=True)
               user_defined_reader = reader_creator_random_image(784, 784)
               py_reader.decorate_sample_list_generator(
                   paddle.batch(user_defined_reader, batch_size=BATCH_SIZE),
                   place)
               for image, label in py_reader():
                   relu = fluid.layers.relu(image)
    """

    def __init__(self,
                 feed_list=None,
                 capacity=None,
                 use_double_buffer=True,
                 iterable=True,
                 return_list=False):
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        self._loader = DataLoader.from_generator(feed_list, capacity,
                                                 use_double_buffer, iterable,
                                                 return_list)
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    @property
    def queue(self):
        return self._loader.queue

    @property
    def iterable(self):
        return self._loader.iterable

    def __iter__(self):
        return self._loader.__iter__()

    def __next__(self):
        return self._loader.__next__()
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    def start(self):
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        '''
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        Start the data feeding thread.
        Can only call when the reader object is not iterable.

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	Example:
	    .. code-block:: python
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                import paddle
                import paddle.fluid as fluid
                import numpy as np

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                BATCH_SIZE = 10

                def generator():
                    for i in range(5):
                        yield np.random.uniform(low=0, high=255, size=[784, 784]),

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                image = fluid.data(name='image', shape=[None, 784, 784], dtype='float32')
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                reader = fluid.io.PyReader(feed_list=[image], capacity=4, iterable=False)
                reader.decorate_sample_list_generator(
                    paddle.batch(generator, batch_size=BATCH_SIZE))

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                executor = fluid.Executor(fluid.CPUPlace())
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                executor.run(fluid.default_startup_program())
                for i in range(3):
                    reader.start()
                    while True:
                        try:
                            executor.run(feed=None)
                        except fluid.core.EOFException:
                            reader.reset()
                            break

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	    '''
        self._loader.start()
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    def reset(self):
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        '''
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        Reset the reader object when :code:`fluid.core.EOFException` raises.
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        Can only call when the reader object is not iterable.
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        Example:
            .. code-block:: python

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                import paddle
                import paddle.fluid as fluid
                import numpy as np

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                BATCH_SIZE = 10

                def generator():
                    for i in range(5):
                        yield np.random.uniform(low=0, high=255, size=[784, 784]),

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                image = fluid.data(name='image', shape=[None, 784, 784], dtype='float32')
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                reader = fluid.io.PyReader(feed_list=[image], capacity=4, iterable=False)
                reader.decorate_sample_list_generator(
                    paddle.batch(generator, batch_size=BATCH_SIZE))

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                executor = fluid.Executor(fluid.CPUPlace())
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                executor.run(fluid.default_startup_program())
                for i in range(3):
                    reader.start()
                    while True:
                        try:
                            executor.run(feed=None)
                        except fluid.core.EOFException:
                            reader.reset()
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                            break
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        '''
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        self._loader.reset()
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    def decorate_sample_generator(self,
                                  sample_generator,
                                  batch_size,
                                  drop_last=True,
                                  places=None):
        '''
        Set the data source of the PyReader object.
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        The provided :code:`sample_generator` should be a Python generator,
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        which yields list(numpy.ndarray)-typed data of each sample.
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        :code:`places` must be set when the PyReader object is iterable.

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        If all inputs have no lods, this method is faster than
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        :code:`decorate_sample_list_generator(paddle.batch(sample_generator, ...))` .
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        Args:
            sample_generator (generator): Python generator that yields
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                list(numpy.ndarray)-typed sample data.
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            batch_size (int): batch size. Must be larger than 0.
            drop_last (bool): Whether to drop the last batch when sample number
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                is less than batch_size.
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            places (None|list(CUDAPlace)|list(CPUPlace)): place list. Must
                be provided when PyReader is iterable.
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        Example:
            .. code-block:: python

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                import paddle.fluid as fluid
                import numpy as np

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                EPOCH_NUM = 3
                ITER_NUM = 15
                BATCH_SIZE = 3
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                def network(image, label):
                    # User-defined network, here is an example of softmax regression.
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                    predict = fluid.layers.fc(input=image, size=10, act='softmax')
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                    return fluid.layers.cross_entropy(input=predict, label=label)
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                def random_image_and_label_generator(height, width):
                    def generator():
                        for i in range(ITER_NUM):
                            fake_image = np.random.uniform(low=0,
                                                           high=255,
                                                           size=[height, width])
                            fake_label = np.array([1])
                            yield fake_image, fake_label
                    return generator

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                image = fluid.data(name='image', shape=[None, 784, 784], dtype='float32')
                label = fluid.data(name='label', shape=[None, 1], dtype='int64')
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                reader = fluid.io.PyReader(feed_list=[image, label], capacity=4, iterable=True)

                user_defined_generator = random_image_and_label_generator(784, 784)
                reader.decorate_sample_generator(user_defined_generator,
                                                 batch_size=BATCH_SIZE,
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                                                 places=[fluid.CPUPlace()])
                loss = network(image, label)
                executor = fluid.Executor(fluid.CPUPlace())
                executor.run(fluid.default_startup_program())
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                for _ in range(EPOCH_NUM):
                    for data in reader():
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                        executor.run(feed=data, fetch_list=[loss])
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        '''
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        self._loader.set_sample_generator(sample_generator, batch_size,
                                          drop_last, places)
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    def decorate_sample_list_generator(self, reader, places=None):
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        '''
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        Set the data source of the PyReader object.
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        The provided :code:`reader` should be a Python generator,
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        which yields list(numpy.ndarray) typed batched data.

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        :code:`places` must be set when the PyReader object is iterable.

        Args:
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            reader (generator): Python generator that yields
                list(numpy.ndarray)-typed batched data.
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            places (None|list(CUDAPlace)|list(CPUPlace)): place list. Must
                be provided when PyReader is iterable.
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        Example:
            .. code-block:: python

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                import paddle
                import paddle.fluid as fluid
                import numpy as np

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                EPOCH_NUM = 3
                ITER_NUM = 15
                BATCH_SIZE = 3

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                def network(image, label):
                    # User-defined network, here is an example of softmax regression.
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                    predict = fluid.layers.fc(input=image, size=10, act='softmax')
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                    return fluid.layers.cross_entropy(input=predict, label=label)

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                def random_image_and_label_generator(height, width):
                    def generator():
                        for i in range(ITER_NUM):
                            fake_image = np.random.uniform(low=0,
                                                           high=255,
                                                           size=[height, width])
                            fake_label = np.ones([1])
                            yield fake_image, fake_label
                    return generator

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                image = fluid.data(name='image', shape=[None, 784, 784], dtype='float32')
                label = fluid.data(name='label', shape=[None, 1], dtype='int64')
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                reader = fluid.io.PyReader(feed_list=[image, label], capacity=4, iterable=True)

                user_defined_generator = random_image_and_label_generator(784, 784)
                reader.decorate_sample_list_generator(
                    paddle.batch(user_defined_generator, batch_size=BATCH_SIZE),
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                    fluid.core.CPUPlace())
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                loss = network(image, label)
                executor = fluid.Executor(fluid.core.CPUPlace())
                executor.run(fluid.default_startup_program())
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                for _ in range(EPOCH_NUM):
                    for data in reader():
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                        executor.run(feed=data, fetch_list=[loss])
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        '''
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        self._loader.set_sample_list_generator(reader, places)
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    def decorate_batch_generator(self, reader, places=None):
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        '''
        Set the data source of the PyReader object.

        The provided :code:`reader` should be a Python generator,
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        which yields numpy.ndarray-typed or LoDTensor-typed batched data.
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        :code:`places` must be set when the PyReader object is iterable.

        Args:
            reader (generator): Python generator that yields LoDTensor-typed
                batched data.
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            places (None|list(CUDAPlace)|list(CPUPlace)): place list. Must
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                be provided when PyReader is iterable.
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        Example:
            .. code-block:: python

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                import paddle.fluid as fluid
                import numpy as np

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                EPOCH_NUM = 3
                ITER_NUM = 15
                BATCH_SIZE = 3
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                def network(image, label):
                    # User-defined network, here is an example of softmax regression.
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                    predict = fluid.layers.fc(input=image, size=10, act='softmax')
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                    return fluid.layers.cross_entropy(input=predict, label=label)
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                def random_image_and_label_generator(height, width):
                    def generator():
                        for i in range(ITER_NUM):
                            batch_image = np.random.uniform(low=0,
                                                            high=255,
                                                            size=[BATCH_SIZE, height, width])
                            batch_label = np.ones([BATCH_SIZE, 1])
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                            batch_image = batch_image.astype('float32')
                            batch_label = batch_label.astype('int64')
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                            yield batch_image, batch_label
                    return generator

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                image = fluid.data(name='image', shape=[None, 784, 784], dtype='float32')
                label = fluid.data(name='label', shape=[None, 1], dtype='int64')
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                reader = fluid.io.PyReader(feed_list=[image, label], capacity=4, iterable=True)

                user_defined_generator = random_image_and_label_generator(784, 784)
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                reader.decorate_batch_generator(user_defined_generator, fluid.CPUPlace())
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                loss = network(image, label)
                executor = fluid.Executor(fluid.CPUPlace())
                executor.run(fluid.default_startup_program())
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                for _ in range(EPOCH_NUM):
                    for data in reader():
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                        executor.run(feed=data, fetch_list=[loss])
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        '''
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        self._loader.set_batch_generator(reader, places)


class DatasetLoader(DataLoaderBase):
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    def __init__(self, dataset, places, drop_last):
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        assert isinstance(dataset, paddle.distributed.fleet.dataset.DatasetBase
                          ), "dataset must be type of DatasetBase"
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        assert not _non_static_mode(
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        ), "DatasetLoader is not supported in dygraph mode yet"
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        if isinstance(places, (list, tuple)):
            places = _get_paddle_place_list(places)
        else:
            places = _get_paddle_place(places)
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        thread_num = len(places)

        assert len(dataset.filelist) >= thread_num, \
            "Filelist number of dataset {} must be not less than place number {}".format(len(dataset.filelist), thread_num)

        if dataset.thread_num != 0 and dataset.thread_num != thread_num:
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            logging.warn(
                'thread_num {} which is set in Dataset is ignored'.format(
                    dataset.thread_num))
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        dataset._set_thread(thread_num)
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        if isinstance(dataset, paddle.distributed.fleet.dataset.InMemoryDataset
                      ) and dataset.queue_num > thread_num:
            logging.warn(
                "queue_num {} which is set in Dataset is ignored".format(
                    dataset.queue_num))
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            dataset._set_queue_num(thread_num)
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        self._dataset = dataset
        use_slots = [
            slot.name for slot in dataset.proto_desc.multi_slot_desc.slots
            if slot.is_used
        ]

        self._iterable_dataset = core.IterableDatasetWrapper(
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            dataset.dataset, use_slots, _convert_places(places),
            dataset.proto_desc.batch_size, drop_last)
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    def __iter__(self):
        self._dataset._finish_to_run()
        self._dataset._prepare_to_run()
        self._iterable_dataset._start()
        return self

    def __next__(self):
        return self._iterable_dataset._next()