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import bisect |
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import warnings |
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import math |
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from typing import ( |
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Generic, |
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Iterable, |
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Iterator, |
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List, |
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Optional, |
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Sequence, |
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Tuple, |
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TypeVar, |
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Union |
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) |
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from torch import default_generator, randperm |
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from torch._utils import _accumulate |
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from ... import Generator, Tensor |
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__all__ = [ |
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"Dataset", |
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"IterableDataset", |
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"TensorDataset", |
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"ConcatDataset", |
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"ChainDataset", |
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"Subset", |
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"random_split", |
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] |
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T_co = TypeVar('T_co', covariant=True) |
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T = TypeVar('T') |
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class Dataset(Generic[T_co]): |
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r"""An abstract class representing a :class:`Dataset`. |
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All datasets that represent a map from keys to data samples should subclass |
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it. All subclasses should overwrite :meth:`__getitem__`, supporting fetching a |
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data sample for a given key. Subclasses could also optionally overwrite |
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:meth:`__len__`, which is expected to return the size of the dataset by many |
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:class:`~torch.utils.data.Sampler` implementations and the default options |
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of :class:`~torch.utils.data.DataLoader`. |
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.. note:: |
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:class:`~torch.utils.data.DataLoader` by default constructs a index |
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sampler that yields integral indices. To make it work with a map-style |
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dataset with non-integral indices/keys, a custom sampler must be provided. |
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""" |
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def __getitem__(self, index) -> T_co: |
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raise NotImplementedError |
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def __add__(self, other: 'Dataset[T_co]') -> 'ConcatDataset[T_co]': |
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return ConcatDataset([self, other]) |
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class IterableDataset(Dataset[T_co]): |
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r"""An iterable Dataset. |
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All datasets that represent an iterable of data samples should subclass it. |
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Such form of datasets is particularly useful when data come from a stream. |
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All subclasses should overwrite :meth:`__iter__`, which would return an |
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iterator of samples in this dataset. |
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When a subclass is used with :class:`~torch.utils.data.DataLoader`, each |
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item in the dataset will be yielded from the :class:`~torch.utils.data.DataLoader` |
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iterator. When :attr:`num_workers > 0`, each worker process will have a |
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different copy of the dataset object, so it is often desired to configure |
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each copy independently to avoid having duplicate data returned from the |
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workers. :func:`~torch.utils.data.get_worker_info`, when called in a worker |
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process, returns information about the worker. It can be used in either the |
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dataset's :meth:`__iter__` method or the :class:`~torch.utils.data.DataLoader` 's |
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:attr:`worker_init_fn` option to modify each copy's behavior. |
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Example 1: splitting workload across all workers in :meth:`__iter__`:: |
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>>> class MyIterableDataset(torch.utils.data.IterableDataset): |
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... def __init__(self, start, end): |
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... super(MyIterableDataset).__init__() |
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... assert end > start, "this example code only works with end >= start" |
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... self.start = start |
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... self.end = end |
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... |
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... def __iter__(self): |
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... worker_info = torch.utils.data.get_worker_info() |
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... if worker_info is None: # single-process data loading, return the full iterator |
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... iter_start = self.start |
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... iter_end = self.end |
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... else: # in a worker process |
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... # split workload |
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... per_worker = int(math.ceil((self.end - self.start) / float(worker_info.num_workers))) |
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... worker_id = worker_info.id |
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... iter_start = self.start + worker_id * per_worker |
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... iter_end = min(iter_start + per_worker, self.end) |
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... return iter(range(iter_start, iter_end)) |
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... |
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>>> # should give same set of data as range(3, 7), i.e., [3, 4, 5, 6]. |
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>>> ds = MyIterableDataset(start=3, end=7) |
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>>> # Single-process loading |
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>>> print(list(torch.utils.data.DataLoader(ds, num_workers=0))) |
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[tensor([3]), tensor([4]), tensor([5]), tensor([6])] |
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>>> # xdoctest: +REQUIRES(POSIX) |
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>>> # Mult-process loading with two worker processes |
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>>> # Worker 0 fetched [3, 4]. Worker 1 fetched [5, 6]. |
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>>> # xdoctest: +IGNORE_WANT("non deterministic") |
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>>> print(list(torch.utils.data.DataLoader(ds, num_workers=2))) |
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[tensor([3]), tensor([5]), tensor([4]), tensor([6])] |
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>>> # With even more workers |
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>>> # xdoctest: +IGNORE_WANT("non deterministic") |
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>>> print(list(torch.utils.data.DataLoader(ds, num_workers=12))) |
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[tensor([3]), tensor([5]), tensor([4]), tensor([6])] |
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Example 2: splitting workload across all workers using :attr:`worker_init_fn`:: |
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>>> class MyIterableDataset(torch.utils.data.IterableDataset): |
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... def __init__(self, start, end): |
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... super(MyIterableDataset).__init__() |
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... assert end > start, "this example code only works with end >= start" |
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... self.start = start |
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... self.end = end |
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... |
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... def __iter__(self): |
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... return iter(range(self.start, self.end)) |
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... |
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>>> # should give same set of data as range(3, 7), i.e., [3, 4, 5, 6]. |
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>>> ds = MyIterableDataset(start=3, end=7) |
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>>> # Single-process loading |
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>>> print(list(torch.utils.data.DataLoader(ds, num_workers=0))) |
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[3, 4, 5, 6] |
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>>> |
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>>> # Directly doing multi-process loading yields duplicate data |
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>>> print(list(torch.utils.data.DataLoader(ds, num_workers=2))) |
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[3, 3, 4, 4, 5, 5, 6, 6] |
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>>> # Define a `worker_init_fn` that configures each dataset copy differently |
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>>> def worker_init_fn(worker_id): |
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... worker_info = torch.utils.data.get_worker_info() |
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... dataset = worker_info.dataset # the dataset copy in this worker process |
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... overall_start = dataset.start |
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... overall_end = dataset.end |
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... # configure the dataset to only process the split workload |
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... per_worker = int(math.ceil((overall_end - overall_start) / float(worker_info.num_workers))) |
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... worker_id = worker_info.id |
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... dataset.start = overall_start + worker_id * per_worker |
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... dataset.end = min(dataset.start + per_worker, overall_end) |
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... |
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>>> # Mult-process loading with the custom `worker_init_fn` |
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>>> # Worker 0 fetched [3, 4]. Worker 1 fetched [5, 6]. |
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>>> print(list(torch.utils.data.DataLoader(ds, num_workers=2, worker_init_fn=worker_init_fn))) |
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[3, 5, 4, 6] |
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>>> # With even more workers |
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>>> print(list(torch.utils.data.DataLoader(ds, num_workers=12, worker_init_fn=worker_init_fn))) |
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[3, 4, 5, 6] |
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""" |
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def __iter__(self) -> Iterator[T_co]: |
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raise NotImplementedError |
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def __add__(self, other: Dataset[T_co]): |
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return ChainDataset([self, other]) |
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class TensorDataset(Dataset[Tuple[Tensor, ...]]): |
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r"""Dataset wrapping tensors. |
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Each sample will be retrieved by indexing tensors along the first dimension. |
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Args: |
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*tensors (Tensor): tensors that have the same size of the first dimension. |
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""" |
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tensors: Tuple[Tensor, ...] |
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def __init__(self, *tensors: Tensor) -> None: |
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assert all(tensors[0].size(0) == tensor.size(0) for tensor in tensors), "Size mismatch between tensors" |
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self.tensors = tensors |
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def __getitem__(self, index): |
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return tuple(tensor[index] for tensor in self.tensors) |
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def __len__(self): |
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return self.tensors[0].size(0) |
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class ConcatDataset(Dataset[T_co]): |
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r"""Dataset as a concatenation of multiple datasets. |
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This class is useful to assemble different existing datasets. |
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Args: |
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datasets (sequence): List of datasets to be concatenated |
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""" |
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datasets: List[Dataset[T_co]] |
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cumulative_sizes: List[int] |
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@staticmethod |
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def cumsum(sequence): |
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r, s = [], 0 |
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for e in sequence: |
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l = len(e) |
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r.append(l + s) |
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s += l |
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return r |
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def __init__(self, datasets: Iterable[Dataset]) -> None: |
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super(ConcatDataset, self).__init__() |
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self.datasets = list(datasets) |
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assert len(self.datasets) > 0, 'datasets should not be an empty iterable' |
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for d in self.datasets: |
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assert not isinstance(d, IterableDataset), "ConcatDataset does not support IterableDataset" |
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self.cumulative_sizes = self.cumsum(self.datasets) |
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def __len__(self): |
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return self.cumulative_sizes[-1] |
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def __getitem__(self, idx): |
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if idx < 0: |
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if -idx > len(self): |
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raise ValueError("absolute value of index should not exceed dataset length") |
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idx = len(self) + idx |
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dataset_idx = bisect.bisect_right(self.cumulative_sizes, idx) |
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if dataset_idx == 0: |
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sample_idx = idx |
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else: |
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sample_idx = idx - self.cumulative_sizes[dataset_idx - 1] |
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return self.datasets[dataset_idx][sample_idx] |
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@property |
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def cummulative_sizes(self): |
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warnings.warn("cummulative_sizes attribute is renamed to " |
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"cumulative_sizes", DeprecationWarning, stacklevel=2) |
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return self.cumulative_sizes |
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class ChainDataset(IterableDataset): |
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r"""Dataset for chaining multiple :class:`IterableDataset` s. |
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This class is useful to assemble different existing dataset streams. The |
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chaining operation is done on-the-fly, so concatenating large-scale |
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datasets with this class will be efficient. |
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Args: |
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datasets (iterable of IterableDataset): datasets to be chained together |
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""" |
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def __init__(self, datasets: Iterable[Dataset]) -> None: |
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super(ChainDataset, self).__init__() |
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self.datasets = datasets |
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def __iter__(self): |
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for d in self.datasets: |
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assert isinstance(d, IterableDataset), "ChainDataset only supports IterableDataset" |
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for x in d: |
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yield x |
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def __len__(self): |
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total = 0 |
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for d in self.datasets: |
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assert isinstance(d, IterableDataset), "ChainDataset only supports IterableDataset" |
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total += len(d) |
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return total |
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class Subset(Dataset[T_co]): |
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r""" |
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Subset of a dataset at specified indices. |
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Args: |
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dataset (Dataset): The whole Dataset |
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indices (sequence): Indices in the whole set selected for subset |
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""" |
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dataset: Dataset[T_co] |
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indices: Sequence[int] |
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def __init__(self, dataset: Dataset[T_co], indices: Sequence[int]) -> None: |
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self.dataset = dataset |
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self.indices = indices |
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def __getitem__(self, idx): |
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if isinstance(idx, list): |
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return self.dataset[[self.indices[i] for i in idx]] |
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return self.dataset[self.indices[idx]] |
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def __len__(self): |
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return len(self.indices) |
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def random_split(dataset: Dataset[T], lengths: Sequence[Union[int, float]], |
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generator: Optional[Generator] = default_generator) -> List[Subset[T]]: |
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r""" |
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Randomly split a dataset into non-overlapping new datasets of given lengths. |
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If a list of fractions that sum up to 1 is given, |
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the lengths will be computed automatically as |
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floor(frac * len(dataset)) for each fraction provided. |
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After computing the lengths, if there are any remainders, 1 count will be |
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distributed in round-robin fashion to the lengths |
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until there are no remainders left. |
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Optionally fix the generator for reproducible results, e.g.: |
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>>> random_split(range(10), [3, 7], generator=torch.Generator().manual_seed(42)) |
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>>> random_split(range(30), [0.3, 0.3, 0.4], generator=torch.Generator( |
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... ).manual_seed(42)) |
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Args: |
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dataset (Dataset): Dataset to be split |
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lengths (sequence): lengths or fractions of splits to be produced |
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generator (Generator): Generator used for the random permutation. |
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""" |
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if math.isclose(sum(lengths), 1) and sum(lengths) <= 1: |
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subset_lengths: List[int] = [] |
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for i, frac in enumerate(lengths): |
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if frac < 0 or frac > 1: |
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raise ValueError(f"Fraction at index {i} is not between 0 and 1") |
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n_items_in_split = int( |
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math.floor(len(dataset) * frac) |
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) |
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subset_lengths.append(n_items_in_split) |
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remainder = len(dataset) - sum(subset_lengths) |
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for i in range(remainder): |
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idx_to_add_at = i % len(subset_lengths) |
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subset_lengths[idx_to_add_at] += 1 |
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lengths = subset_lengths |
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for i, length in enumerate(lengths): |
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if length == 0: |
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warnings.warn(f"Length of split at index {i} is 0. " |
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f"This might result in an empty dataset.") |
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if sum(lengths) != len(dataset): |
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raise ValueError("Sum of input lengths does not equal the length of the input dataset!") |
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indices = randperm(sum(lengths), generator=generator).tolist() |
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return [Subset(dataset, indices[offset - length : offset]) for offset, length in zip(_accumulate(lengths), lengths)] |
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