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Bump lightning from 2.0.9.post0 to 2.1.0 #36

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Oct 23, 2023

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@dependabot dependabot bot commented on behalf of github Oct 20, 2023

Bumps lightning from 2.0.9.post0 to 2.1.0.

Release notes

Sourced from lightning's releases.

Lightning 2.1: Train Bigger, Better, Faster

Lightning AI is excited to announce the release of Lightning 2.1 ⚡ It's the culmination of work from 79 contributors who have worked on features, bug-fixes, and documentation for a total of over 750+ commits since v2.0.

The theme of 2.1 is "bigger, better, faster": Bigger because training large multi-billion parameter models has gotten even more efficient thanks to FSDP, efficient initialization and sharded checkpointing improvements, better because it's easier than ever to scale models without making substantial code changes or installing third-party packages and faster because it leverages the latest hardware features to speed up training in low-bit precision thanks to new precision plugins like bitsandbytes and transformer engine. And of course, as the name implies, this release fully leverages the latest features in PyTorch 2.1 🎉

Highlights

Improvements To Large-Scale Training With FSDP

The FSDP strategy for training large billion-parameter models gets substantial improvements and new features in Lightning 2.1, both in Trainer and Fabric (in case you didn't know, Fabric is the latest addition to the Lightning family of tools to scale models without the boilerplate code). FSDP is now more user-friendly to configure, has memory management and speed improvements, and we have a brand new end-to-end user guide with best practices (Trainer, Fabric).

Efficient Saving and Loading of Large Checkpoints

When training large billion-parameter models with FSDP, saving and resuming training, or even just loading model parameters for finetuning can be challenging, as users are are often plagued by out-of-memory errors and speed bottlenecks.

In 2.1, we made several improvements. Starting with saving checkpoints, we added support for distributed/sharded checkpoints, enabled through the setting state_dict_type in the strategy (#18364, #18358):

Trainer:

import lightning as L
from lightning.pytorch.strategies import FSDPStrategy
Default used by the strategy
strategy = FSDPStrategy(state_dict_type="full")
Enable saving distributed checkpoints
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@dependabot dependabot bot added the dependencies Pull requests that update a dependency file label Oct 20, 2023
Bumps [lightning](https://github.com/Lightning-AI/lightning) from 2.0.9.post0 to 2.1.0.
- [Release notes](https://github.com/Lightning-AI/lightning/releases)
- [Commits](Lightning-AI/pytorch-lightning@2.0.9.post0...2.1.0)

---
updated-dependencies:
- dependency-name: lightning
  dependency-type: direct:production
  update-type: version-update:semver-minor
...

Signed-off-by: dependabot[bot] <[email protected]>
@dependabot dependabot bot force-pushed the dependabot/pip/lightning-2.1.0 branch from 6bf3234 to 25462f3 Compare October 23, 2023 07:42
@BerndDoser BerndDoser merged commit 1acc5d7 into main Oct 23, 2023
6 checks passed
@dependabot dependabot bot deleted the dependabot/pip/lightning-2.1.0 branch October 23, 2023 07:53
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