S3FileLoader¶
- class torchdata.datapipes.iter.S3FileLoader(source_datapipe: IterDataPipe[str], request_timeout_ms=- 1, region='', buffer_size=None, multi_part_download=None)¶
Iterable DataPipe that loads Amazon S3 files from the given S3 URLs (functional name:
load_files_by_s3
).S3FileLoader
iterates all given S3 URLs inBytesIO
format with(url, BytesIO)
tuples.Note
source_datapipe
must contain a list of valid S3 URLs.request_timeout_ms
andregion
will overwrite settings in the configuration file or environment variables.The lack of AWS proper configuration can lead empty response. For more details related to S3 IO DataPipe setup and AWS config, please see the README file.
- Parameters:
source_datapipe – a DataPipe that contains URLs to s3 files
request_timeout_ms – timeout setting for each reqeust (3,000ms by default)
region – region for access files (inferred from credentials by default)
buffer_size – buffer size of each chunk to download large files progressively (128Mb by default)
multi_part_download – flag to split each chunk into small packets and download those packets in parallel (enabled by default)
Example:
from torchdata.datapipes.iter import IterableWrapper, S3FileLoader dp_s3_urls = IterableWrapper(['s3://bucket-name/folder/', ...]).list_files_by_s3() # In order to make sure data are shuffled and sharded in the # distributed environment, `shuffle` and `sharding_filter` # are required. For detail, please check our tutorial in: # https://pytorch.org/data/main/tutorial.html#working-with-dataloader sharded_s3_urls = dp_s3_urls.shuffle().sharding_filter() dp_s3_files = S3FileLoader(sharded_s3_urls) for url, fd in dp_s3_files: # Start loading data data = fd.read() # Functional API dp_s3_files = sharded_s3_urls.load_files_by_s3(buffer_size=256) for url, fd in dp_s3_files: data = fd.read()