Source code for mindspore.train.dataset_helper

# Copyright 2020 Huawei Technologies Co., Ltd
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# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
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# http://www.apache.org/licenses/LICENSE-2.0
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"""Dataset help for minddata dataset"""
import math
import os

from mindspore._checkparam import check_bool, check_int
from .. import context, nn
from ._utils import _exec_datagraph, _get_types_and_shapes, _construct_tensor_list
from ..nn.wrap import GetNextSingleOp
from ..parallel._utils import _get_device_num, _get_global_rank, _need_to_full, _to_full_shapes
from ..ops import operations as P


def _send_data(dataset, epoch_num):
    """Engine dataset to write data to tdt queue."""
    if not hasattr(dataset, '__has_sent__'):
        exec_dataset = dataset.__TRANSFER_DATASET__
        exec_dataset.send(epoch_num)
        dataset.__has_sent__ = True

def _send_data_no_flag(dataset, epoch_num):
    """Engine dataset to write data to tdt queue directly."""
    exec_dataset = dataset.__TRANSFER_DATASET__
    exec_dataset.send(epoch_num)


[docs]def connect_network_with_dataset(network, dataset_helper): """ Connect the `network` with dataset in `dataset_helper`. This function wraps the input network with 'GetNext' so that the data can be fetched automatically from the data channel corresponding to the 'queue_name' and passed to the input network during forward computation. Note: In the case of running the network on Ascend in graph mode, this function will wrap the input network with 'GetNext', in other cases, the input network will be returned with no change. The 'GetNext' is required to get data only in sink mode, so this function is not applicable to no-sink mode. Args: network (Cell): The training network for dataset. dataset_helper(DatasetHelper): A class to process the MindData dataset, it provides the type, shape and queue name of the dataset to wrap the `GetNext`. Outputs: Cell, a new network wrapped with 'GetNext' in the case of running the task on Ascend in graph mode, otherwise it is the input network. Examples: >>> # call create_dataset function to create a regular dataset, refer to mindspore.dataset >>> train_dataset = create_dataset() >>> dataset_helper = mindspore.DatasetHelper(train_dataset, dataset_sink_mode=True) >>> net = Net() >>> net_with_get_next = connect_network_with_dataset(net, dataset_helper) """ class _DataWrapper(nn.Cell): """ Wraps the input network with a dataset which automatically fetches data with 'GetNext' function from the dataset channel 'queue_name' and performs the forward computation. """ def __init__(self, network, dataset_types, dataset_shapes, queue_name): super(_DataWrapper, self).__init__(auto_prefix=False, flags=network.get_flags()) # Also copy the flag in `network` construct flags = getattr(network.__class__.construct, "_mindspore_flags", {}) self.add_flags(**flags) self.get_next = P.GetNext(dataset_types, dataset_shapes, len(dataset_types), queue_name) self.network = network def construct(self): outputs = self.get_next() return self.network(*outputs) dataset_iter = dataset_helper.iter dataset = dataset_iter.dataset if isinstance(dataset_iter, _DatasetIterNormal): raise RuntimeError("Dataset should be connected with network only in sink mode.") if not hasattr(dataset, '__ME_INITED__') and context.get_context("device_target") == "Ascend" and \ not context.get_context("enable_ge"): dataset.__ME_INITED__ = True dataset_types, dataset_shapes = dataset_helper.types_shapes() queue_name = dataset.__TRANSFER_DATASET__.queue_name network = _DataWrapper(network, dataset_types, dataset_shapes, queue_name) return network
[docs]class DatasetHelper: """ DatasetHelper is a class to process the MindData dataset and it provides the information of dataset. According to different contexts, change the iterations of dataset and use the same iteration for loop in different contexts. Note: The iteration of DatasetHelper will provide one epoch data. Args: dataset (DataSet): The training dataset iterator. dataset_sink_mode (bool): If true use GetNext to fetch the data, or else feed the data from host. Default: True. sink_size (int): Control the amount of data in each sink. If sink_size=-1, sink the complete dataset for each epoch. If sink_size>0, sink sink_size data for each epoch. Default: -1. epoch_num (int): Control the number of epoch data to send. Default: 1. Examples: >>> dataset_helper = DatasetHelper(dataset) >>> for inputs in dataset_helper: >>> outputs = network(*inputs) """ def __init__(self, dataset, dataset_sink_mode=True, sink_size=-1, epoch_num=1): check_bool(dataset_sink_mode) check_int(sink_size) if sink_size < -1 or sink_size == 0: raise ValueError("The sink_size must be -1 or positive, but got sink_size {}.".format(sink_size)) if dataset_sink_mode: if context.get_context("enable_ge"): iterclass = _DatasetIterGE else: if context.get_context("device_target") == "Ascend": iterclass = _DatasetIterMSLoopSink elif context.get_context("device_target") == "GPU": ms_role = os.getenv("MS_ROLE") if ms_role in ("MS_PSERVER", "MS_SCHED"): iterclass = _DatasetIterPSLite else: iterclass = _DatasetIterMS elif context.get_context("device_target") == "CPU": raise RuntimeError("Currently dataset sink mode is not supported when the device target is CPU.") self.iter = iterclass(dataset, sink_size, epoch_num) else: iterclass = _DatasetIterNormal self.iter = iterclass(dataset) def __iter__(self): return self.iter.__iter__() # A temp solution for loop sink. Delete later
[docs] def types_shapes(self): """Get the types and shapes from dataset on the current configuration.""" return self.iter.types_shapes()
[docs] def sink_size(self): """Get sink_size for each iteration.""" return self.iter.get_sink_size()
[docs] def stop_send(self): """Free up resources about data sink.""" self.iter.stop_send()
[docs] def continue_send(self): """continue send data to device at the beginning of epoch.""" self.iter.continue_send()
class _DatasetIter: """Base iter for dataset helper""" def __init__(self, dataset, sink_size, epoch_num): self.dataset = dataset self.sink_size = sink_size self.sink_count = 1 if not hasattr(dataset, '__TRANSFER_DATASET__'): if hasattr(dataset, '__loop_size__'): self.sink_size = dataset.__loop_size__ dataset.__TRANSFER_DATASET__ = _exec_datagraph(dataset, self.sink_size) if not hasattr(dataset, '__no_send__'): _send_data(dataset, epoch_num) else: _send_data_no_flag(dataset, epoch_num) self.stop_send = dataset.__TRANSFER_DATASET__.stop_send self.continue_send = dataset.__TRANSFER_DATASET__.continue_send self.dataset_types, self.dataset_shapes = _get_types_and_shapes(dataset) def __iter__(self): self.index = 0 return self def __next__(self): if self.index >= self.sink_count: raise StopIteration() self.index += 1 return self.op() def types_shapes(self): return self.dataset_types, self.dataset_shapes def get_sink_count(self, dataset): sink_count = 1 if hasattr(dataset, '__loop_size__'): loop_size = dataset.__loop_size__ if loop_size <= dataset.get_dataset_size() and dataset.get_dataset_size() % loop_size != 0: raise ValueError(f'Dataset size {dataset.get_dataset_size()} and ' f'sink_size {loop_size} are not matched.') sink_count = math.ceil(dataset.get_dataset_size() / loop_size) return sink_count def get_sink_size(self): """get sink_size to device""" sink_size = 1 if hasattr(self.dataset, '__loop_size__'): sink_size = self.dataset.__loop_size__ else: if context.get_context("enable_ge") or context.get_context("device_target") == "Ascend": if self.sink_size > 0: sink_size = self.sink_size else: sink_size = self.dataset.get_dataset_size() return sink_size class _DatasetIterGE(_DatasetIter): """Iter for GE.""" def __init__(self, dataset, sink_size, epoch_num): super().__init__(dataset, sink_size, epoch_num) self.sink_count = self.get_sink_count(dataset) batch_expand_num = 1 if _need_to_full(): batch_expand_num = _get_device_num() tensor_list_run = _construct_tensor_list(self.dataset_types, self.dataset_shapes, batch_expand_num) def op(): return tensor_list_run self.op = op class _DatasetIterMSLoopSink(_DatasetIter): """Iter for context (device_target=Ascend)""" def __init__(self, dataset, sink_size, epoch_num): super().__init__(dataset, sink_size, epoch_num) self.sink_count = self.get_sink_count(dataset) ms_role = os.getenv("MS_ROLE") if ms_role in ("MS_PSERVER", "MS_SCHED"): self.sink_count = 1 # for self._parallel_mode equal to semi_auto_parallel or auto_parallel, and not using full_batch, # use a complete tensor to compile, and slice tensor to run. The batch dimension of tensors for # compile is device_number times the batch dimension of tensors for run. Now only support LoopSink. if _need_to_full(): device_num = _get_device_num() self.dataset_shapes = _to_full_shapes(self.dataset_shapes, device_num) def op(): return tuple() self.op = op class _DatasetIterMS(_DatasetIter): """Iter for MS(enable_loop_sink=False).""" def __init__(self, dataset, sink_size, epoch_num): super().__init__(dataset, sink_size, epoch_num) if sink_size > 0: self.sink_count = sink_size else: self.sink_count = dataset.get_dataset_size() queue_name = dataset.__TRANSFER_DATASET__.queue_name self.op = GetNextSingleOp(self.dataset_types, self.dataset_shapes, queue_name) class _DatasetIterPSLite(_DatasetIter): """Iter for context (device_target=GPU) on MS_PSERVER or MS_SCHED""" def __init__(self, dataset, sink_size, epoch_num): super().__init__(dataset, sink_size, epoch_num) self.sink_count = 1 self.sink_size = 1 self.op = None def op(): return _construct_tensor_list(self.dataset_types, self.dataset_shapes, batch_expand_num=1) self.op = op class _DatasetIterNormal: """Iter for normal(non sink) mode, feed the data from host.""" def __init__(self, dataset): self.dataset = dataset self.device_num = _get_device_num() self.global_rank = _get_global_rank() self.iter = self.dataset.create_tuple_iterator() def __iter__(self): return self def __next__(self): data = self.iter.__next__() return data __all__ = ["DatasetHelper", "connect_network_with_dataset"]