The Amazon S3 Connector for PyTorch delivers high throughput for PyTorch training jobs that access or store data in Amazon S3. Using the S3 Connector for PyTorch automatically optimizes performance when downloading training data from and writing checkpoints to Amazon S3, eliminating the need to write your own code to list S3 buckets and manage concurrent requests.
Amazon S3 Connector for PyTorch provides implementations of PyTorch's dataset primitives that you can use to load training data from Amazon S3. It supports both map-style datasets for random data access patterns and iterable-style datasets for streaming sequential data access patterns. The S3 Connector for PyTorch also includes a checkpointing interface to save and load checkpoints directly to Amazon S3, without first saving to local storage.
- Python 3.8 or greater is installed (Note: Using 3.12+ is not recommended as PyTorch does not support).
- PyTorch >= 2.0 (TODO: Check with PyTorch 1.x)
pip install s3torchconnector
Amazon S3 Connector for PyTorch supports only Linux via Pip for now. For other platforms, see DEVELOPMENT for build instructions.
To use s3torchconnector
, AWS credentials must be provided through one of the following methods:
- If you are using this library on an EC2 instance, specify an IAM role and then give the EC2 instance access to that role.
- Install and configure
awscli
and runaws configure
. - Set credentials in the AWS credentials profile file on the local system, located at:
~/.aws/credentials
on Unix or macOS. - Set the
AWS_ACCESS_KEY_ID
andAWS_SECRET_ACCESS_KEY
environment variables.
API docs are showing API of the public components.
End to end example of how to use s3torchconnector
can be found under the
examples directory.
The simplest way to use the S3 Connector for PyTorch is to construct a dataset, either a map-style or iterable-style dataset, by specifying an S3 URI (a bucket and optional prefix) and the region the bucket is located in:
from s3torchconnector import S3MapDataset, S3IterableDataset
# You need to update <BUCKET> and <PREFIX>
DATASET_URI="s3://<BUCKET>/<PREFIX>"
REGION = "us-east-1"
iterable_dataset = S3IterableDataset.from_prefix(DATASET_URI, region=REGION)
# Datasets are also iterators.
for item in iterable_dataset:
print(item.key)
# S3MapDataset eagerly lists all the objects under the given prefix
# to provide support of random access.
# S3MapDataset builds a list of all objects at the first access to its elements or
# at the first call to get the number of elements, whichever happens first.
# This process might take some time and may give the impression of being unresponsive.
map_dataset = S3MapDataset.from_prefix(DATASET_URI, region=REGION)
# Randomly access to an item in map_dataset.
item = map_dataset[0]
# Learn about bucket, key, and content of the object
bucket = item.bucket
key = item.key
content = item.read()
len(content)
In addition to data loading primitives, the S3 Connector for PyTorch also provides an interface for saving and loading model checkpoints directly to and from an S3 bucket.
from s3torchconnector import S3Checkpoint
import torchvision
import torch
CHECKPOINT_URI="s3://<BUCKET>/<KEY>/"
REGION = "us-east-1"
checkpoint = S3Checkpoint(region=REGION)
model = torchvision.models.resnet18()
# Save checkpoint to S3
with checkpoint.writer(CHECKPOINT_URI + "epoch0.ckpt") as writer:
torch.save(model.state_dict(), writer)
# Load checkpoint from S3
with checkpoint.reader(CHECKPOINT_URI + "epoch0.ckpt") as reader:
state_dict = torch.load(reader)
model.load_state_dict(state_dict)
Using datasets or checkpoints with
Amazon S3 Express One Zone
directory buckets requires only to update the URI, following base-name--azid--x-s3
bucket name format.
For example, assuming the following directory bucket name my-test-bucket--usw2-az1--x-s3
with the Availability Zone ID
usw2-az1, then the URI used will look like: s3://my-test-bucket--usw2-az1--x-s3/<PREFIX>
(please note that the
prefix for Amazon S3 Express One Zone should end with '/'), paired with region us-west-2.
Amazon S3 Connector for PyTorch includes an integration for PyTorch Lightning, featuring S3LightningCheckpoint, an implementation of Lightning's CheckpointIO. This allows users to make use of Amazon S3 Connector for PyTorch's S3 checkpointing functionality with Pytorch Lightning.
pip install s3torchconnector[lightning]
End to end examples for the Pytorch Lightning integration can be found in the examples/lightning directory
from lightning import Trainer
from s3torchconnector.lightning import S3LightningCheckpoint
...
s3_checkpoint_io = S3LightningCheckpoint("us-east-1")
trainer = Trainer(
plugins=[s3_checkpoint_io],
default_root_dir="s3://bucket_name/key_prefix/"
)
trainer.fit(model)
When working with model checkpoints, you can use the S3 Versioning feature to preserve, retrieve, and restore every version of your checkpoint objects. With versioning, you can recover more easily from unintended overwrites or deletions of existing checkpoint files due to incorrect configuration or multiple hosts accessing the same storage path.
When versioning is enabled on an S3 bucket, deletions insert a delete marker instead of removing the object permanently. The delete marker becomes the current object version. If you overwrite an object, it results in a new object version in the bucket. You can always restore the previous version. See Deleting object versions from a versioning-enabled bucket for more details on managing object versions.
To enable versioning on an S3 bucket, see Enabling versioning on buckets. Normal Amazon S3 rates apply for every version of an object stored and transferred. To customize your data retention approach and control storage costs for earlier versions of objects, use object versioning with S3 Lifecycle.
S3 Versioning and S3 Lifecycle are not supported by S3 Express One Zone.
We welcome contributions to Amazon S3 Connector for PyTorch. Please see CONTRIBUTING For more information on how to report bugs or submit pull requests.
See DEVELOPMENT for information about code style, development process, and guidelines.
S3 Connector for PyTorch delivers high throughput for PyTorch training jobs that access or store data in Amazon S3. While it may be functional against other storage services that use S3-like APIs, they may inadvertently break when we make changes to better support Amazon S3. We welcome contributions of minor compatibility fixes or performance improvements for these services if the changes can be tested against Amazon S3.
If you discover a potential security issue in this project we ask that you notify AWS Security via our vulnerability reporting page.
This project has adopted the Amazon Open Source Code of Conduct. See CODE_OF_CONDUCT.md for more details.
Amazon S3 Connector for PyTorch has a BSD 3-Clause License, as found in the LICENSE file.