Attention
June 2024 Status Update: Removing DataPipes and DataLoader V2
We are re-focusing the torchdata repo to be an iterative enhancement of torch.utils.data.DataLoader. We do not plan on continuing development or maintaining the [DataPipes] and [DataLoaderV2] solutions, and they will be removed from the torchdata repo. We’ll also be revisiting the DataPipes references in pytorch/pytorch. In release torchdata==0.8.0 (July 2024) they will be marked as deprecated, and in 0.9.0 (Oct 2024) they will be deleted. Existing users are advised to pin to torchdata==0.8.0 or an older version until they are able to migrate away. Subsequent releases will not include DataPipes or DataLoaderV2. Please reach out if you suggestions or comments (please use this issue for feedback)
IterableWrapper¶
- class torchdata.datapipes.iter.IterableWrapper(iterable, deepcopy=True)¶
Wraps an iterable object to create an IterDataPipe.
- Parameters:
iterable – Iterable object to be wrapped into an IterDataPipe
deepcopy – Option to deepcopy input iterable object for each iterator. The copy is made when the first element is read in
iter()
.
Note
If
deepcopy
is explicitly set toFalse
, users should ensure that the data pipeline doesn’t contain any in-place operations over the iterable instance to prevent data inconsistency across iterations.Example
>>> # xdoctest: +SKIP >>> from torchdata.datapipes.iter import IterableWrapper >>> dp = IterableWrapper(range(10)) >>> list(dp) [0, 1, 2, 3, 4, 5, 6, 7, 8, 9]