Conversation
|
The docs for this PR live here. All of your documentation changes will be reflected on that endpoint. The docs are available until 30 days after the last update. |
This file contains hidden or bidirectional Unicode text that may be interpreted or compiled differently than what appears below. To review, open the file in an editor that reveals hidden Unicode characters.
Learn more about bidirectional Unicode characters
Sign up for free
to join this conversation on GitHub.
Already have an account?
Sign in to comment
Add this suggestion to a batch that can be applied as a single commit.This suggestion is invalid because no changes were made to the code.Suggestions cannot be applied while the pull request is closed.Suggestions cannot be applied while viewing a subset of changes.Only one suggestion per line can be applied in a batch.Add this suggestion to a batch that can be applied as a single commit.Applying suggestions on deleted lines is not supported.You must change the existing code in this line in order to create a valid suggestion.Outdated suggestions cannot be applied.This suggestion has been applied or marked resolved.Suggestions cannot be applied from pending reviews.Suggestions cannot be applied on multi-line comments.Suggestions cannot be applied while the pull request is queued to merge.Suggestion cannot be applied right now. Please check back later.
Will be useful for robotics dataset to batch samples by episode cc @pkooij
example of usage:
It's implemented using efficient Arrow functions for substantial speed up for Dataset and for Parquet IterableDataset.
It also supports lossless state_dict() / load_state_dict().
It works by accumulating Arrow data and grouping the batches together using
pyarrow.ListArrayin an arrow map() function.Multiprocessing is not supported because it could split batches in two or more when distributing shards to processes (batches can overlap multiple shards). This is fine IMO since multiprocessing is only for Dataset.batch() and since the operation is unlikely to be CPU bound thanks to Arrow functions. Though this could be useful for very large datasets and clusters.